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13 Commits

Author SHA1 Message Date
Brandon Hancock
a5f70d2307 fix unnecessary deps 2024-10-17 10:00:04 -04:00
Rip&Tear
b55fc40c83 Merge branch 'main' into feat/cli-model-selection-and-API-submission 2024-10-17 11:39:01 +08:00
Rip&Tear
d0ed4f5274 small comment cleanup 2024-10-17 11:25:37 +08:00
Rip&Tear
ee34399b71 refactor/Move functions into utils file, added new provider file and migrated fucntions thre, new constants file + general function refactor 2024-10-17 11:16:10 +08:00
Rip&Tear
39903f0c50 cleanup of comments 2024-10-13 18:14:09 +08:00
Rip&Tear
c4bf713113 refactored select_provider to have an ealry return 2024-10-13 18:13:24 +08:00
Rip&Tear
5d18c6312d refactered select_choice function for early return 2024-10-13 18:09:33 +08:00
Rip&Tear
1f9baf9b2c feat: implement crew creation CLI command
- refactor code to multiple functions
- Added ability for users to select provider and model when uing crewai create command and ave API key to .env
2024-10-13 00:04:05 +08:00
Rip&Tear
6fbc97b298 removed all unnecessary comments 2024-10-12 13:22:48 +08:00
Rip&Tear
08bacfa892 Merge branch 'feat/cli-model-selection-and-API-submission' of https://github.com/crewAIInc/crewAI into feat/cli-model-selection-and-API-submission 2024-10-12 13:06:16 +08:00
Rip&Tear
1ea8115d56 updated click prompt to remove default number 2024-10-12 13:05:55 +08:00
Brandon Hancock (bhancock_ai)
6b906f09cf Merge branch 'main' into feat/cli-model-selection-and-API-submission 2024-10-11 14:44:24 -04:00
Rip&Tear
6c29ebafea updated CLI to allow for submitting API keys 2024-10-11 23:33:49 +08:00
111 changed files with 2838 additions and 5593 deletions

19
.github/security.md vendored
View File

@@ -1,19 +0,0 @@
CrewAI takes the security of our software products and services seriously, which includes all source code repositories managed through our GitHub organization.
If you believe you have found a security vulnerability in any CrewAI product or service, please report it to us as described below.
## Reporting a Vulnerability
Please do not report security vulnerabilities through public GitHub issues.
To report a vulnerability, please email us at security@crewai.com.
Please include the requested information listed below so that we can triage your report more quickly
- Type of issue (e.g. SQL injection, cross-site scripting, etc.)
- Full paths of source file(s) related to the manifestation of the issue
- The location of the affected source code (tag/branch/commit or direct URL)
- Any special configuration required to reproduce the issue
- Step-by-step instructions to reproduce the issue (please include screenshots if needed)
- Proof-of-concept or exploit code (if possible)
- Impact of the issue, including how an attacker might exploit the issue
Once we have received your report, we will respond to you at the email address you provide. If the issue is confirmed, we will release a patch as soon as possible depending on the complexity of the issue.
At this time, we are not offering a bug bounty program. Any rewards will be at our discretion.

View File

@@ -19,5 +19,5 @@ jobs:
run: pip install bandit
- name: Run Bandit
run: bandit -c pyproject.toml -r src/ -ll
run: bandit -c pyproject.toml -r src/ -lll

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@@ -351,7 +351,7 @@ pre-commit install
### Running Tests
```bash
uv run pytest .
uvx pytest
```
### Running static type checks

View File

@@ -31,17 +31,16 @@ Think of an agent as a member of a team, with specific skills and a particular j
| **Max RPM** *(optional)* | `max_rpm` | Max RPM is the maximum number of requests per minute the agent can perform to avoid rate limits. It's optional and can be left unspecified, with a default value of `None`. |
| **Max Execution Time** *(optional)* | `max_execution_time` | Max Execution Time is the maximum execution time for an agent to execute a task. It's optional and can be left unspecified, with a default value of `None`, meaning no max execution time. |
| **Verbose** *(optional)* | `verbose` | Setting this to `True` configures the internal logger to provide detailed execution logs, aiding in debugging and monitoring. Default is `False`. |
| **Allow Delegation** *(optional)* | `allow_delegation` | Agents can delegate tasks or questions to one another, ensuring that each task is handled by the most suitable agent. Default is `False`. |
| **Allow Delegation** *(optional)* | `allow_delegation` | Agents can delegate tasks or questions to one another, ensuring that each task is handled by the most suitable agent. Default is `False`.
| **Step Callback** *(optional)* | `step_callback` | A function that is called after each step of the agent. This can be used to log the agent's actions or to perform other operations. It will overwrite the crew `step_callback`. |
| **Cache** *(optional)* | `cache` | Indicates if the agent should use a cache for tool usage. Default is `True`. |
| **System Template** *(optional)* | `system_template` | Specifies the system format for the agent. Default is `None`. |
| **Prompt Template** *(optional)* | `prompt_template` | Specifies the prompt format for the agent. Default is `None`. |
| **Response Template** *(optional)* | `response_template` | Specifies the response format for the agent. Default is `None`. |
| **Allow Code Execution** *(optional)* | `allow_code_execution` | Enable code execution for the agent. Default is `False`. |
| **Max Retry Limit** *(optional)* | `max_retry_limit` | Maximum number of retries for an agent to execute a task when an error occurs. Default is `2`. |
| **Max Retry Limit** *(optional)* | `max_retry_limit` | Maximum number of retries for an agent to execute a task when an error occurs. Default is `2`.
| **Use System Prompt** *(optional)* | `use_system_prompt` | Adds the ability to not use system prompt (to support o1 models). Default is `True`. |
| **Respect Context Window** *(optional)* | `respect_context_window` | Summary strategy to avoid overflowing the context window. Default is `True`. |
| **Code Execution Mode** *(optional)* | `code_execution_mode` | Determines the mode for code execution: 'safe' (using Docker) or 'unsafe' (direct execution on the host machine). Default is `safe`. |
## Creating an agent
@@ -84,7 +83,6 @@ agent = Agent(
max_retry_limit=2, # Optional
use_system_prompt=True, # Optional
respect_context_window=True, # Optional
code_execution_mode='safe', # Optional, defaults to 'safe'
)
```
@@ -158,4 +156,4 @@ crew = my_crew.kickoff(inputs={"input": "Mark Twain"})
## Conclusion
Agents are the building blocks of the CrewAI framework. By understanding how to define and interact with agents,
you can create sophisticated AI systems that leverage the power of collaborative intelligence. The `code_execution_mode` attribute provides flexibility in how agents execute code, allowing for both secure and direct execution options.
you can create sophisticated AI systems that leverage the power of collaborative intelligence.

View File

@@ -6,7 +6,7 @@ icon: terminal
# CrewAI CLI Documentation
The CrewAI CLI provides a set of commands to interact with CrewAI, allowing you to create, train, run, and manage crews & flows.
The CrewAI CLI provides a set of commands to interact with CrewAI, allowing you to create, train, run, and manage crews and pipelines.
## Installation
@@ -146,34 +146,3 @@ crewai run
Make sure to run these commands from the directory where your CrewAI project is set up.
Some commands may require additional configuration or setup within your project structure.
</Note>
### 9. API Keys
When running ```crewai create crew``` command, the CLI will first show you the top 5 most common LLM providers and ask you to select one.
Once you've selected an LLM provider, you will be prompted for API keys.
#### Initial API key providers
The CLI will initially prompt for API keys for the following services:
* OpenAI
* Groq
* Anthropic
* Google Gemini
When you select a provider, the CLI will prompt you to enter your API key.
#### Other Options
If you select option 6, you will be able to select from a list of LiteLLM supported providers.
When you select a provider, the CLI will prompt you to enter the Key name and the API key.
See the following link for each provider's key name:
* [LiteLLM Providers](https://docs.litellm.ai/docs/providers)

View File

@@ -22,8 +22,7 @@ A crew in crewAI represents a collaborative group of agents working together to
| **Max RPM** _(optional)_ | `max_rpm` | Maximum requests per minute the crew adheres to during execution. Defaults to `None`. |
| **Language** _(optional)_ | `language` | Language used for the crew, defaults to English. |
| **Language File** _(optional)_ | `language_file` | Path to the language file to be used for the crew. |
| **Memory** _(optional)_ | `memory` | Utilized for storing execution memories (short-term, long-term, entity memory). |
| **Memory Config** _(optional)_ | `memory_config` | Configuration for the memory provider to be used by the crew. |
| **Memory** _(optional)_ | `memory` | Utilized for storing execution memories (short-term, long-term, entity memory). Defaults to `False`. |
| **Cache** _(optional)_ | `cache` | Specifies whether to use a cache for storing the results of tools' execution. Defaults to `True`. |
| **Embedder** _(optional)_ | `embedder` | Configuration for the embedder to be used by the crew. Mostly used by memory for now. Default is `{"provider": "openai"}`. |
| **Full Output** _(optional)_ | `full_output` | Whether the crew should return the full output with all tasks outputs or just the final output. Defaults to `False`. |

View File

@@ -18,71 +18,68 @@ Flows allow you to create structured, event-driven workflows. They provide a sea
4. **Flexible Control Flow**: Implement conditional logic, loops, and branching within your workflows.
5. **Input Flexibility**: Flows can accept inputs to initialize or update their state, with different handling for structured and unstructured state management.
## Getting Started
Let's create a simple Flow where you will use OpenAI to generate a random city in one task and then use that city to generate a fun fact in another task.
### Passing Inputs to Flows
```python Code
import asyncio
Flows can accept inputs to initialize or update their state before execution. The way inputs are handled depends on whether the flow uses structured or unstructured state management.
#### Structured State Management
In structured state management, the flow's state is defined using a Pydantic `BaseModel`. Inputs must match the model's schema, and any updates will overwrite the default values.
```python
from crewai.flow.flow import Flow, listen, start
from pydantic import BaseModel
from litellm import completion
class ExampleState(BaseModel):
counter: int = 0
message: str = ""
class StructuredExampleFlow(Flow[ExampleState]):
class ExampleFlow(Flow):
model = "gpt-4o-mini"
@start()
def first_method(self):
# Implementation
def generate_city(self):
print("Starting flow")
flow = StructuredExampleFlow()
flow.kickoff(inputs={"counter": 10})
```
response = completion(
model=self.model,
messages=[
{
"role": "user",
"content": "Return the name of a random city in the world.",
},
],
)
In this example, the `counter` is initialized to `10`, while `message` retains its default value.
random_city = response["choices"][0]["message"]["content"]
print(f"Random City: {random_city}")
#### Unstructured State Management
return random_city
In unstructured state management, the flow's state is a dictionary. You can pass any dictionary to update the state.
@listen(generate_city)
def generate_fun_fact(self, random_city):
response = completion(
model=self.model,
messages=[
{
"role": "user",
"content": f"Tell me a fun fact about {random_city}",
},
],
)
```python
from crewai.flow.flow import Flow, listen, start
fun_fact = response["choices"][0]["message"]["content"]
return fun_fact
class UnstructuredExampleFlow(Flow):
@start()
def first_method(self):
# Implementation
flow = UnstructuredExampleFlow()
flow.kickoff(inputs={"counter": 5, "message": "Initial message"})
```
async def main():
flow = ExampleFlow()
result = await flow.kickoff()
Here, both `counter` and `message` are updated based on the provided inputs.
print(f"Generated fun fact: {result}")
**Note:** Ensure that inputs for structured state management adhere to the defined schema to avoid validation errors.
### Example Flow
```python
# Existing example code
asyncio.run(main())
```
In the above example, we have created a simple Flow that generates a random city using OpenAI and then generates a fun fact about that city. The Flow consists of two tasks: `generate_city` and `generate_fun_fact`. The `generate_city` task is the starting point of the Flow, and the `generate_fun_fact` task listens for the output of the `generate_city` task.
When you run the Flow, it will generate a random city and then generate a fun fact about that city. The output will be printed to the console.
**Note:** Ensure you have set up your `.env` file to store your `OPENAI_API_KEY`. This key is necessary for authenticating requests to the OpenAI API.
### @start()
The `@start()` decorator is used to mark a method as the starting point of a Flow. When a Flow is started, all the methods decorated with `@start()` are executed in parallel. You can have multiple start methods in a Flow, and they will all be executed when the Flow is started.
@@ -97,14 +94,14 @@ The `@listen()` decorator can be used in several ways:
1. **Listening to a Method by Name**: You can pass the name of the method you want to listen to as a string. When that method completes, the listener method will be triggered.
```python
```python Code
@listen("generate_city")
def generate_fun_fact(self, random_city):
# Implementation
```
2. **Listening to a Method Directly**: You can pass the method itself. When that method completes, the listener method will be triggered.
```python
```python Code
@listen(generate_city)
def generate_fun_fact(self, random_city):
# Implementation
@@ -121,7 +118,8 @@ When you run a Flow, the final output is determined by the last method that comp
Here's how you can access the final output:
<CodeGroup>
```python
```python Code
import asyncio
from crewai.flow.flow import Flow, listen, start
class OutputExampleFlow(Flow):
@@ -133,23 +131,26 @@ class OutputExampleFlow(Flow):
def second_method(self, first_output):
return f"Second method received: {first_output}"
flow = OutputExampleFlow()
final_output = flow.kickoff()
async def main():
flow = OutputExampleFlow()
final_output = await flow.kickoff()
print("---- Final Output ----")
print(final_output)
print("---- Final Output ----")
print(final_output)
asyncio.run(main())
```
```text
``` text Output
---- Final Output ----
Second method received: Output from first_method
```
</CodeGroup>
In this example, the `second_method` is the last method to complete, so its output will be the final output of the Flow.
In this example, the `second_method` is the last method to complete, so its output will be the final output of the Flow.
The `kickoff()` method will return the final output, which is then printed to the console.
#### Accessing and Updating State
In addition to retrieving the final output, you can also access and update the state within your Flow. The state can be used to store and share data between different methods in the Flow. After the Flow has run, you can access the state to retrieve any information that was added or updated during the execution.
@@ -158,7 +159,8 @@ Here's an example of how to update and access the state:
<CodeGroup>
```python
```python Code
import asyncio
from crewai.flow.flow import Flow, listen, start
from pydantic import BaseModel
@@ -179,41 +181,45 @@ class StateExampleFlow(Flow[ExampleState]):
self.state.counter += 1
return self.state.message
flow = StateExampleFlow()
final_output = flow.kickoff()
print(f"Final Output: {final_output}")
print("Final State:")
print(flow.state)
async def main():
flow = StateExampleFlow()
final_output = await flow.kickoff()
print(f"Final Output: {final_output}")
print("Final State:")
print(flow.state)
asyncio.run(main())
```
```text
``` text Output
Final Output: Hello from first_method - updated by second_method
Final State:
counter=2 message='Hello from first_method - updated by second_method'
```
</CodeGroup>
In this example, the state is updated by both `first_method` and `second_method`.
In this example, the state is updated by both `first_method` and `second_method`.
After the Flow has run, you can access the final state to see the updates made by these methods.
By ensuring that the final method's output is returned and providing access to the state, CrewAI Flows make it easy to integrate the results of your AI workflows into larger applications or systems,
By ensuring that the final method's output is returned and providing access to the state, CrewAI Flows make it easy to integrate the results of your AI workflows into larger applications or systems,
while also maintaining and accessing the state throughout the Flow's execution.
## Flow State Management
Managing state effectively is crucial for building reliable and maintainable AI workflows. CrewAI Flows provides robust mechanisms for both unstructured and structured state management,
Managing state effectively is crucial for building reliable and maintainable AI workflows. CrewAI Flows provides robust mechanisms for both unstructured and structured state management,
allowing developers to choose the approach that best fits their application's needs.
### Unstructured State Management
In unstructured state management, all state is stored in the `state` attribute of the `Flow` class.
In unstructured state management, all state is stored in the `state` attribute of the `Flow` class.
This approach offers flexibility, enabling developers to add or modify state attributes on the fly without defining a strict schema.
```python
```python Code
import asyncio
from crewai.flow.flow import Flow, listen, start
class UnstructuredExampleFlow(Flow):
class UntructuredExampleFlow(Flow):
@start()
def first_method(self):
@@ -232,8 +238,13 @@ class UnstructuredExampleFlow(Flow):
print(f"State after third_method: {self.state}")
flow = UnstructuredExampleFlow()
flow.kickoff()
async def main():
flow = UntructuredExampleFlow()
await flow.kickoff()
asyncio.run(main())
```
**Key Points:**
@@ -243,17 +254,21 @@ flow.kickoff()
### Structured State Management
Structured state management leverages predefined schemas to ensure consistency and type safety across the workflow.
Structured state management leverages predefined schemas to ensure consistency and type safety across the workflow.
By using models like Pydantic's `BaseModel`, developers can define the exact shape of the state, enabling better validation and auto-completion in development environments.
```python
```python Code
import asyncio
from crewai.flow.flow import Flow, listen, start
from pydantic import BaseModel
class ExampleState(BaseModel):
counter: int = 0
message: str = ""
class StructuredExampleFlow(Flow[ExampleState]):
@start()
@@ -272,8 +287,13 @@ class StructuredExampleFlow(Flow[ExampleState]):
print(f"State after third_method: {self.state}")
flow = StructuredExampleFlow()
flow.kickoff()
async def main():
flow = StructuredExampleFlow()
await flow.kickoff()
asyncio.run(main())
```
**Key Points:**
@@ -305,7 +325,8 @@ The `or_` function in Flows allows you to listen to multiple methods and trigger
<CodeGroup>
```python
```python Code
import asyncio
from crewai.flow.flow import Flow, listen, or_, start
class OrExampleFlow(Flow):
@@ -322,18 +343,23 @@ class OrExampleFlow(Flow):
def logger(self, result):
print(f"Logger: {result}")
flow = OrExampleFlow()
flow.kickoff()
async def main():
flow = OrExampleFlow()
await flow.kickoff()
asyncio.run(main())
```
```text
``` text Output
Logger: Hello from the start method
Logger: Hello from the second method
```
</CodeGroup>
When you run this Flow, the `logger` method will be triggered by the output of either the `start_method` or the `second_method`.
When you run this Flow, the `logger` method will be triggered by the output of either the `start_method` or the `second_method`.
The `or_` function is used to listen to multiple methods and trigger the listener method when any of the specified methods emit an output.
### Conditional Logic: `and`
@@ -342,7 +368,8 @@ The `and_` function in Flows allows you to listen to multiple methods and trigge
<CodeGroup>
```python
```python Code
import asyncio
from crewai.flow.flow import Flow, and_, listen, start
class AndExampleFlow(Flow):
@@ -360,28 +387,34 @@ class AndExampleFlow(Flow):
print("---- Logger ----")
print(self.state)
flow = AndExampleFlow()
flow.kickoff()
async def main():
flow = AndExampleFlow()
await flow.kickoff()
asyncio.run(main())
```
```text
``` text Output
---- Logger ----
{'greeting': 'Hello from the start method', 'joke': 'What do computers eat? Microchips.'}
```
</CodeGroup>
When you run this Flow, the `logger` method will be triggered only when both the `start_method` and the `second_method` emit an output.
When you run this Flow, the `logger` method will be triggered only when both the `start_method` and the `second_method` emit an output.
The `and_` function is used to listen to multiple methods and trigger the listener method only when all the specified methods emit an output.
### Router
The `@router()` decorator in Flows allows you to define conditional routing logic based on the output of a method.
The `@router()` decorator in Flows allows you to define conditional routing logic based on the output of a method.
You can specify different routes based on the output of the method, allowing you to control the flow of execution dynamically.
<CodeGroup>
```python
```python Code
import asyncio
import random
from crewai.flow.flow import Flow, listen, router, start
from pydantic import BaseModel
@@ -412,11 +445,16 @@ class RouterFlow(Flow[ExampleState]):
def fourth_method(self):
print("Fourth method running")
flow = RouterFlow()
flow.kickoff()
async def main():
flow = RouterFlow()
await flow.kickoff()
asyncio.run(main())
```
```text
``` text Output
Starting the structured flow
Third method running
Fourth method running
@@ -424,16 +462,16 @@ Fourth method running
</CodeGroup>
In the above example, the `start_method` generates a random boolean value and sets it in the state.
The `second_method` uses the `@router()` decorator to define conditional routing logic based on the value of the boolean.
If the boolean is `True`, the method returns `"success"`, and if it is `False`, the method returns `"failed"`.
In the above example, the `start_method` generates a random boolean value and sets it in the state.
The `second_method` uses the `@router()` decorator to define conditional routing logic based on the value of the boolean.
If the boolean is `True`, the method returns `"success"`, and if it is `False`, the method returns `"failed"`.
The `third_method` and `fourth_method` listen to the output of the `second_method` and execute based on the returned value.
When you run this Flow, the output will change based on the random boolean value generated by the `start_method`.
## Adding Crews to Flows
Creating a flow with multiple crews in CrewAI is straightforward.
Creating a flow with multiple crews in CrewAI is straightforward.
You can generate a new CrewAI project that includes all the scaffolding needed to create a flow with multiple crews by running the following command:
@@ -447,21 +485,22 @@ This command will generate a new CrewAI project with the necessary folder struct
After running the `crewai create flow name_of_flow` command, you will see a folder structure similar to the following:
| Directory/File | Description |
| :--------------------- | :----------------------------------------------------------------- |
| `name_of_flow/` | Root directory for the flow. |
| ├── `crews/` | Contains directories for specific crews. |
| │ └── `poem_crew/` | Directory for the "poem_crew" with its configurations and scripts. |
| │ ├── `config/` | Configuration files directory for the "poem_crew". |
| │ ├── `agents.yaml` | YAML file defining the agents for "poem_crew". |
| │ └── `tasks.yaml` | YAML file defining the tasks for "poem_crew". |
| │ ├── `poem_crew.py` | Script for "poem_crew" functionality. |
| ├── `tools/` | Directory for additional tools used in the flow. |
| │ └── `custom_tool.py` | Custom tool implementation. |
| ├── `main.py` | Main script for running the flow. |
| ├── `README.md` | Project description and instructions. |
| ├── `pyproject.toml` | Configuration file for project dependencies and settings. |
| └── `.gitignore` | Specifies files and directories to ignore in version control. |
| Directory/File | Description |
|:---------------------------------|:------------------------------------------------------------------|
| `name_of_flow/` | Root directory for the flow. |
| ├── `crews/` | Contains directories for specific crews. |
| │ └── `poem_crew/` | Directory for the "poem_crew" with its configurations and scripts.|
| │ ├── `config/` | Configuration files directory for the "poem_crew". |
| │ ├── `agents.yaml` | YAML file defining the agents for "poem_crew". |
| │ └── `tasks.yaml` | YAML file defining the tasks for "poem_crew". |
| │ ├── `poem_crew.py` | Script for "poem_crew" functionality. |
| ├── `tools/` | Directory for additional tools used in the flow. |
| │ └── `custom_tool.py` | Custom tool implementation. |
| ├── `main.py` | Main script for running the flow. |
| ├── `README.md` | Project description and instructions. |
| ├── `pyproject.toml` | Configuration file for project dependencies and settings. |
| └── `.gitignore` | Specifies files and directories to ignore in version control. |
### Building Your Crews
@@ -479,8 +518,9 @@ The `main.py` file is where you create your flow and connect the crews together.
Here's an example of how you can connect the `poem_crew` in the `main.py` file:
```python
```python Code
#!/usr/bin/env python
import asyncio
from random import randint
from pydantic import BaseModel
@@ -496,12 +536,14 @@ class PoemFlow(Flow[PoemState]):
@start()
def generate_sentence_count(self):
print("Generating sentence count")
# Generate a number between 1 and 5
self.state.sentence_count = randint(1, 5)
@listen(generate_sentence_count)
def generate_poem(self):
print("Generating poem")
result = PoemCrew().crew().kickoff(inputs={"sentence_count": self.state.sentence_count})
poem_crew = PoemCrew().crew()
result = poem_crew.kickoff(inputs={"sentence_count": self.state.sentence_count})
print("Poem generated", result.raw)
self.state.poem = result.raw
@@ -512,17 +554,18 @@ class PoemFlow(Flow[PoemState]):
with open("poem.txt", "w") as f:
f.write(self.state.poem)
def kickoff():
async def run():
"""
Run the flow.
"""
poem_flow = PoemFlow()
poem_flow.kickoff()
await poem_flow.kickoff()
def plot():
poem_flow = PoemFlow()
poem_flow.plot()
def main():
asyncio.run(run())
if __name__ == "__main__":
kickoff()
main()
```
In this example, the `PoemFlow` class defines a flow that generates a sentence count, uses the `PoemCrew` to generate a poem, and then saves the poem to a file. The flow is kicked off by calling the `kickoff()` method.
@@ -544,53 +587,17 @@ source .venv/bin/activate
After activating the virtual environment, you can run the flow by executing one of the following commands:
```bash
crewai flow kickoff
crewai flow run
```
or
```bash
uv run kickoff
uv run run_flow
```
The flow will execute, and you should see the output in the console.
### Adding Additional Crews Using the CLI
Once you have created your initial flow, you can easily add additional crews to your project using the CLI. This allows you to expand your flow's capabilities by integrating new crews without starting from scratch.
To add a new crew to your existing flow, use the following command:
```bash
crewai flow add-crew <crew_name>
```
This command will create a new directory for your crew within the `crews` folder of your flow project. It will include the necessary configuration files and a crew definition file, similar to the initial setup.
#### Folder Structure
After adding a new crew, your folder structure will look like this:
| Directory/File | Description |
| :--------------------- | :----------------------------------------------------------------- |
| `name_of_flow/` | Root directory for the flow. |
| ├── `crews/` | Contains directories for specific crews. |
| │ ├── `poem_crew/` | Directory for the "poem_crew" with its configurations and scripts. |
| │ │ ├── `config/` | Configuration files directory for the "poem_crew". |
| │ │ │ ├── `agents.yaml` | YAML file defining the agents for "poem_crew". |
| │ │ │ └── `tasks.yaml` | YAML file defining the tasks for "poem_crew". |
| │ │ └── `poem_crew.py` | Script for "poem_crew" functionality. |
| └── `name_of_crew/` | Directory for the new crew. |
| ├── `config/` | Configuration files directory for the new crew. |
| │ ├── `agents.yaml` | YAML file defining the agents for the new crew. |
| │ └── `tasks.yaml` | YAML file defining the tasks for the new crew. |
| └── `name_of_crew.py` | Script for the new crew functionality. |
You can then customize the `agents.yaml` and `tasks.yaml` files to define the agents and tasks for your new crew. The `name_of_crew.py` file will contain the crew's logic, which you can modify to suit your needs.
By using the CLI to add additional crews, you can efficiently build complex AI workflows that leverage multiple crews working together.
## Plot Flows
Visualizing your AI workflows can provide valuable insights into the structure and execution paths of your flows. CrewAI offers a powerful visualization tool that allows you to generate interactive plots of your flows, making it easier to understand and optimize your AI workflows.
@@ -607,7 +614,7 @@ CrewAI provides two convenient methods to generate plots of your flows:
If you are working directly with a flow instance, you can generate a plot by calling the `plot()` method on your flow object. This method will create an HTML file containing the interactive plot of your flow.
```python
```python Code
# Assuming you have a flow instance
flow.plot("my_flow_plot")
```
@@ -630,114 +637,13 @@ The generated plot will display nodes representing the tasks in your flow, with
By visualizing your flows, you can gain a clearer understanding of the workflow's structure, making it easier to debug, optimize, and communicate your AI processes to others.
### Conclusion
## Advanced
In this section, we explore more complex use cases of CrewAI Flows, starting with a self-evaluation loop. This pattern is crucial for developing AI systems that can iteratively improve their outputs through feedback.
### 1) Self-Evaluation Loop
The self-evaluation loop is a powerful pattern that allows AI workflows to automatically assess and refine their outputs. This example demonstrates how to set up a flow that generates content, evaluates it, and iterates based on feedback until the desired quality is achieved.
#### Overview
The self-evaluation loop involves two main Crews:
1. **ShakespeareanXPostCrew**: Generates a Shakespearean-style post on a given topic.
2. **XPostReviewCrew**: Evaluates the generated post, providing feedback on its validity and quality.
The process iterates until the post meets the criteria or a maximum retry limit is reached. This approach ensures high-quality outputs through iterative refinement.
#### Importance
This pattern is essential for building robust AI systems that can adapt and improve over time. By automating the evaluation and feedback loop, developers can ensure that their AI workflows produce reliable and high-quality results.
#### Main Code Highlights
Below is the `main.py` file for the self-evaluation loop flow:
```python
from typing import Optional
from crewai.flow.flow import Flow, listen, router, start
from pydantic import BaseModel
from self_evaluation_loop_flow.crews.shakespeare_crew.shakespeare_crew import (
ShakespeareanXPostCrew,
)
from self_evaluation_loop_flow.crews.x_post_review_crew.x_post_review_crew import (
XPostReviewCrew,
)
class ShakespeareXPostFlowState(BaseModel):
x_post: str = ""
feedback: Optional[str] = None
valid: bool = False
retry_count: int = 0
class ShakespeareXPostFlow(Flow[ShakespeareXPostFlowState]):
@start("retry")
def generate_shakespeare_x_post(self):
print("Generating Shakespearean X post")
topic = "Flying cars"
result = (
ShakespeareanXPostCrew()
.crew()
.kickoff(inputs={"topic": topic, "feedback": self.state.feedback})
)
print("X post generated", result.raw)
self.state.x_post = result.raw
@router(generate_shakespeare_x_post)
def evaluate_x_post(self):
if self.state.retry_count > 3:
return "max_retry_exceeded"
result = XPostReviewCrew().crew().kickoff(inputs={"x_post": self.state.x_post})
self.state.valid = result["valid"]
self.state.feedback = result["feedback"]
print("valid", self.state.valid)
print("feedback", self.state.feedback)
self.state.retry_count += 1
if self.state.valid:
return "complete"
return "retry"
@listen("complete")
def save_result(self):
print("X post is valid")
print("X post:", self.state.x_post)
with open("x_post.txt", "w") as file:
file.write(self.state.x_post)
@listen("max_retry_exceeded")
def max_retry_exceeded_exit(self):
print("Max retry count exceeded")
print("X post:", self.state.x_post)
print("Feedback:", self.state.feedback)
def kickoff():
shakespeare_flow = ShakespeareXPostFlow()
shakespeare_flow.kickoff()
def plot():
shakespeare_flow = ShakespeareXPostFlow()
shakespeare_flow.plot()
if __name__ == "__main__":
kickoff()
```
#### Code Highlights
- **Retry Mechanism**: The flow uses a retry mechanism to regenerate the post if it doesn't meet the criteria, up to a maximum of three retries.
- **Feedback Loop**: Feedback from the `XPostReviewCrew` is used to refine the post iteratively.
- **State Management**: The flow maintains state using a Pydantic model, ensuring type safety and clarity.
For a complete example and further details, please refer to the [Self Evaluation Loop Flow repository](https://github.com/crewAIInc/crewAI-examples/tree/main/self_evaluation_loop_flow).
Plotting your flows is a powerful feature of CrewAI that enhances your ability to design and manage complex AI workflows. Whether you choose to use the `plot()` method or the command line, generating plots will provide you with a visual representation of your workflows, aiding in both development and presentation.
## Next Steps
If you're interested in exploring additional examples of flows, we have a variety of recommendations in our examples repository. Here are five specific flow examples, each showcasing unique use cases to help you match your current problem type to a specific example:
If you're interested in exploring additional examples of flows, we have a variety of recommendations in our examples repository. Here are four specific flow examples, each showcasing unique use cases to help you match your current problem type to a specific example:
1. **Email Auto Responder Flow**: This example demonstrates an infinite loop where a background job continually runs to automate email responses. It's a great use case for tasks that need to be performed repeatedly without manual intervention. [View Example](https://github.com/crewAIInc/crewAI-examples/tree/main/email_auto_responder_flow)
@@ -747,19 +653,17 @@ If you're interested in exploring additional examples of flows, we have a variet
4. **Meeting Assistant Flow**: This flow demonstrates how to broadcast one event to trigger multiple follow-up actions. For instance, after a meeting is completed, the flow can update a Trello board, send a Slack message, and save the results. It's a great example of handling multiple outcomes from a single event, making it ideal for comprehensive task management and notification systems. [View Example](https://github.com/crewAIInc/crewAI-examples/tree/main/meeting_assistant_flow)
5. **Self Evaluation Loop Flow**: This flow demonstrates a self-evaluation loop where AI workflows automatically assess and refine their outputs through feedback. It involves generating content, evaluating it, and iterating until the desired quality is achieved. This pattern is crucial for developing robust AI systems that can adapt and improve over time. [View Example](https://github.com/crewAIInc/crewAI-examples/tree/main/self_evaluation_loop_flow)
By exploring these examples, you can gain insights into how to leverage CrewAI Flows for various use cases, from automating repetitive tasks to managing complex, multi-step processes with dynamic decision-making and human feedback.
Also, check out our YouTube video on how to use flows in CrewAI below!
<iframe
width="560"
height="315"
src="https://www.youtube.com/embed/MTb5my6VOT8"
title="YouTube video player"
frameborder="0"
allow="accelerometer; autoplay; clipboard-write; encrypted-media; gyroscope; picture-in-picture; web-share"
referrerpolicy="strict-origin-when-cross-origin"
allowfullscreen
></iframe>
<iframe
width="560"
height="315"
src="https://www.youtube.com/embed/MTb5my6VOT8"
title="YouTube video player"
frameborder="0"
allow="accelerometer; autoplay; clipboard-write; encrypted-media; gyroscope; picture-in-picture; web-share"
referrerpolicy="strict-origin-when-cross-origin"
allowfullscreen
></iframe>

View File

@@ -25,148 +25,50 @@ By default, CrewAI uses the `gpt-4o-mini` model. It uses environment variables i
- `OPENAI_API_BASE`
- `OPENAI_API_KEY`
### 2. Updating YAML files
### 2. String Identifier
You can update the `agents.yml` file to refer to the LLM you want to use:
```yaml Code
researcher:
role: Research Specialist
goal: Conduct comprehensive research and analysis to gather relevant information,
synthesize findings, and produce well-documented insights.
backstory: A dedicated research professional with years of experience in academic
investigation, literature review, and data analysis, known for thorough and
methodical approaches to complex research questions.
verbose: true
llm: openai/gpt-4o
# llm: azure/gpt-4o-mini
# llm: gemini/gemini-pro
# llm: anthropic/claude-3-5-sonnet-20240620
# llm: bedrock/anthropic.claude-3-sonnet-20240229-v1:0
# llm: mistral/mistral-large-latest
# llm: ollama/llama3:70b
# llm: groq/llama-3.2-90b-vision-preview
# llm: watsonx/meta-llama/llama-3-1-70b-instruct
# ...
```python Code
agent = Agent(llm="gpt-4o", ...)
```
Keep in mind that you will need to set certain ENV vars depending on the model you are
using to account for the credentials or set a custom LLM object like described below.
Here are some of the required ENV vars for some of the LLM integrations:
### 3. LLM Instance
<AccordionGroup>
<Accordion title="OpenAI">
```python Code
OPENAI_API_KEY=<your-api-key>
OPENAI_API_BASE=<optional-custom-base-url>
OPENAI_MODEL_NAME=<openai-model-name>
OPENAI_ORGANIZATION=<your-org-id> # OPTIONAL
OPENAI_API_BASE=<openaiai-api-base> # OPTIONAL
```
</Accordion>
List of [more providers](https://docs.litellm.ai/docs/providers).
<Accordion title="Anthropic">
```python Code
ANTHROPIC_API_KEY=<your-api-key>
```
</Accordion>
```python Code
from crewai import LLM
<Accordion title="Google">
```python Code
GEMINI_API_KEY=<your-api-key>
```
</Accordion>
llm = LLM(model="gpt-4", temperature=0.7)
agent = Agent(llm=llm, ...)
```
<Accordion title="Azure">
```python Code
AZURE_API_KEY=<your-api-key> # "my-azure-api-key"
AZURE_API_BASE=<your-resource-url> # "https://example-endpoint.openai.azure.com"
AZURE_API_VERSION=<api-version> # "2023-05-15"
AZURE_AD_TOKEN=<your-azure-ad-token> # Optional
AZURE_API_TYPE=<your-azure-api-type> # Optional
```
</Accordion>
<Accordion title="AWS Bedrock">
```python Code
AWS_ACCESS_KEY_ID=<your-access-key>
AWS_SECRET_ACCESS_KEY=<your-secret-key>
AWS_DEFAULT_REGION=<your-region>
```
</Accordion>
<Accordion title="Mistral">
```python Code
MISTRAL_API_KEY=<your-api-key>
```
</Accordion>
<Accordion title="Groq">
```python Code
GROQ_API_KEY=<your-api-key>
```
</Accordion>
<Accordion title="IBM watsonx.ai">
```python Code
WATSONX_URL=<your-url> # (required) Base URL of your WatsonX instance
WATSONX_APIKEY=<your-apikey> # (required) IBM cloud API key
WATSONX_TOKEN=<your-token> # (required) IAM auth token (alternative to APIKEY)
WATSONX_PROJECT_ID=<your-project-id> # (optional) Project ID of your WatsonX instance
WATSONX_DEPLOYMENT_SPACE_ID=<your-space-id> # (optional) ID of deployment space for deployed models
```
</Accordion>
</AccordionGroup>
### 3. Custom LLM Objects
### 4. Custom LLM Objects
Pass a custom LLM implementation or object from another library.
See below for examples.
<Tabs>
<Tab title="String Identifier">
```python Code
agent = Agent(llm="gpt-4o", ...)
```
</Tab>
<Tab title="LLM Instance">
```python Code
from crewai import LLM
llm = LLM(model="gpt-4", temperature=0.7)
agent = Agent(llm=llm, ...)
```
</Tab>
</Tabs>
## Connecting to OpenAI-Compatible LLMs
You can connect to OpenAI-compatible LLMs using either environment variables or by setting specific attributes on the LLM class:
<Tabs>
<Tab title="Using Environment Variables">
```python Code
import os
1. Using environment variables:
os.environ["OPENAI_API_KEY"] = "your-api-key"
os.environ["OPENAI_API_BASE"] = "https://api.your-provider.com/v1"
```
</Tab>
<Tab title="Using LLM Class Attributes">
```python Code
from crewai import LLM
```python Code
import os
llm = LLM(
model="custom-model-name",
api_key="your-api-key",
base_url="https://api.your-provider.com/v1"
)
agent = Agent(llm=llm, ...)
```
</Tab>
</Tabs>
os.environ["OPENAI_API_KEY"] = "your-api-key"
os.environ["OPENAI_API_BASE"] = "https://api.your-provider.com/v1"
```
2. Using LLM class attributes:
```python Code
llm = LLM(
model="custom-model-name",
api_key="your-api-key",
base_url="https://api.your-provider.com/v1"
)
agent = Agent(llm=llm, ...)
```
## LLM Configuration Options
@@ -193,188 +95,43 @@ When configuring an LLM for your agent, you have access to a wide range of param
| **api_key** | `str` | Your API key for authentication. |
These are examples of how to configure LLMs for your agent.
Example:
<AccordionGroup>
<Accordion title="OpenAI">
```python Code
llm = LLM(
model="gpt-4",
temperature=0.8,
max_tokens=150,
top_p=0.9,
frequency_penalty=0.1,
presence_penalty=0.1,
stop=["END"],
seed=42,
base_url="https://api.openai.com/v1",
api_key="your-api-key-here"
)
agent = Agent(llm=llm, ...)
```
## Using Ollama (Local LLMs)
```python Code
from crewai import LLM
crewAI supports using Ollama for running open-source models locally:
llm = LLM(
model="gpt-4",
temperature=0.8,
max_tokens=150,
top_p=0.9,
frequency_penalty=0.1,
presence_penalty=0.1,
stop=["END"],
seed=42,
base_url="https://api.openai.com/v1",
api_key="your-api-key-here"
)
agent = Agent(llm=llm, ...)
```
</Accordion>
1. Install Ollama: [ollama.ai](https://ollama.ai/)
2. Run a model: `ollama run llama2`
3. Configure agent:
<Accordion title="Cerebras">
```python Code
from crewai import LLM
llm = LLM(
model="cerebras/llama-3.1-70b",
api_key="your-api-key-here"
)
agent = Agent(llm=llm, ...)
```
</Accordion>
<Accordion title="Ollama (Local LLMs)">
CrewAI supports using Ollama for running open-source models locally:
1. Install Ollama: [ollama.ai](https://ollama.ai/)
2. Run a model: `ollama run llama2`
3. Configure agent:
```python Code
from crewai import LLM
agent = Agent(
llm=LLM(
model="ollama/llama3.1",
base_url="http://localhost:11434"
),
...
)
```
</Accordion>
<Accordion title="Groq">
```python Code
from crewai import LLM
llm = LLM(
model="groq/llama3-8b-8192",
api_key="your-api-key-here"
)
agent = Agent(llm=llm, ...)
```
</Accordion>
<Accordion title="Anthropic">
```python Code
from crewai import LLM
llm = LLM(
model="anthropic/claude-3-5-sonnet-20241022",
api_key="your-api-key-here"
)
agent = Agent(llm=llm, ...)
```
</Accordion>
<Accordion title="Fireworks AI">
```python Code
from crewai import LLM
llm = LLM(
model="fireworks_ai/accounts/fireworks/models/llama-v3-70b-instruct",
api_key="your-api-key-here"
)
agent = Agent(llm=llm, ...)
```
</Accordion>
<Accordion title="Gemini">
```python Code
from crewai import LLM
llm = LLM(
model="gemini/gemini-1.5-pro-002",
api_key="your-api-key-here"
)
agent = Agent(llm=llm, ...)
```
</Accordion>
<Accordion title="Perplexity AI (pplx-api)">
```python Code
from crewai import LLM
llm = LLM(
model="perplexity/mistral-7b-instruct",
base_url="https://api.perplexity.ai/v1",
api_key="your-api-key-here"
)
agent = Agent(llm=llm, ...)
```
</Accordion>
<Accordion title="IBM watsonx.ai">
You can use IBM Watson by seeting the following ENV vars:
```python Code
WATSONX_URL=<your-url>
WATSONX_APIKEY=<your-apikey>
WATSONX_PROJECT_ID=<your-project-id>
```
You can then define your agents llms by updating the `agents.yml`
```yaml Code
researcher:
role: Research Specialist
goal: Conduct comprehensive research and analysis to gather relevant information,
synthesize findings, and produce well-documented insights.
backstory: A dedicated research professional with years of experience in academic
investigation, literature review, and data analysis, known for thorough and
methodical approaches to complex research questions.
verbose: true
llm: watsonx/meta-llama/llama-3-1-70b-instruct
```
You can also set up agents more dynamically as a base level LLM instance, like bellow:
```python Code
from crewai import LLM
llm = LLM(
model="watsonx/ibm/granite-13b-chat-v2",
base_url="https://api.watsonx.ai/v1",
api_key="your-api-key-here"
)
agent = Agent(llm=llm, ...)
```
</Accordion>
<Accordion title="Hugging Face">
```python Code
from crewai import LLM
llm = LLM(
model="huggingface/meta-llama/Meta-Llama-3.1-8B-Instruct",
api_key="your-api-key-here",
base_url="your_api_endpoint"
)
agent = Agent(llm=llm, ...)
```
</Accordion>
</AccordionGroup>
```python Code
agent = Agent(
llm=LLM(model="ollama/llama3.1", base_url="http://localhost:11434"),
...
)
```
## Changing the Base API URL
You can change the base API URL for any LLM provider by setting the `base_url` parameter:
```python Code
from crewai import LLM
llm = LLM(
model="custom-model-name",
base_url="https://api.your-provider.com/v1",

View File

@@ -18,7 +18,6 @@ reason, and learn from past interactions.
| **Long-Term Memory** | Preserves valuable insights and learnings from past executions, allowing agents to build and refine their knowledge over time. |
| **Entity Memory** | Captures and organizes information about entities (people, places, concepts) encountered during tasks, facilitating deeper understanding and relationship mapping. Uses `RAG` for storing entity information. |
| **Contextual Memory**| Maintains the context of interactions by combining `ShortTermMemory`, `LongTermMemory`, and `EntityMemory`, aiding in the coherence and relevance of agent responses over a sequence of tasks or a conversation. |
| **User Memory** | Stores user-specific information and preferences, enhancing personalization and user experience. |
## How Memory Systems Empower Agents
@@ -35,7 +34,7 @@ By default, the memory system is disabled, and you can ensure it is active by se
The memory will use OpenAI embeddings by default, but you can change it by setting `embedder` to a different model.
It's also possible to initialize the memory instance with your own instance.
The 'embedder' only applies to **Short-Term Memory** which uses Chroma for RAG.
The 'embedder' only applies to **Short-Term Memory** which uses Chroma for RAG using the EmbedChain package.
The **Long-Term Memory** uses SQLite3 to store task results. Currently, there is no way to override these storage implementations.
The data storage files are saved into a platform-specific location found using the appdirs package,
and the name of the project can be overridden using the **CREWAI_STORAGE_DIR** environment variable.
@@ -93,47 +92,6 @@ my_crew = Crew(
)
```
## Integrating Mem0 for Enhanced User Memory
[Mem0](https://mem0.ai/) is a self-improving memory layer for LLM applications, enabling personalized AI experiences.
To include user-specific memory you can get your API key [here](https://app.mem0.ai/dashboard/api-keys) and refer the [docs](https://docs.mem0.ai/platform/quickstart#4-1-create-memories) for adding user preferences.
```python Code
import os
from crewai import Crew, Process
from mem0 import MemoryClient
# Set environment variables for Mem0
os.environ["MEM0_API_KEY"] = "m0-xx"
# Step 1: Record preferences based on past conversation or user input
client = MemoryClient()
messages = [
{"role": "user", "content": "Hi there! I'm planning a vacation and could use some advice."},
{"role": "assistant", "content": "Hello! I'd be happy to help with your vacation planning. What kind of destination do you prefer?"},
{"role": "user", "content": "I am more of a beach person than a mountain person."},
{"role": "assistant", "content": "That's interesting. Do you like hotels or Airbnb?"},
{"role": "user", "content": "I like Airbnb more."},
]
client.add(messages, user_id="john")
# Step 2: Create a Crew with User Memory
crew = Crew(
agents=[...],
tasks=[...],
verbose=True,
process=Process.sequential,
memory=True,
memory_config={
"provider": "mem0",
"config": {"user_id": "john"},
},
)
```
## Additional Embedding Providers
@@ -155,42 +113,6 @@ my_crew = Crew(
}
)
```
Alternatively, you can directly pass the OpenAIEmbeddingFunction to the embedder parameter.
Example:
```python Code
from crewai import Crew, Agent, Task, Process
from chromadb.utils.embedding_functions import OpenAIEmbeddingFunction
my_crew = Crew(
agents=[...],
tasks=[...],
process=Process.sequential,
memory=True,
verbose=True,
embedder=OpenAIEmbeddingFunction(api_key=os.getenv("OPENAI_API_KEY"), model_name="text-embedding-3-small"),
)
```
### Using Ollama embeddings
```python Code
from crewai import Crew, Agent, Task, Process
my_crew = Crew(
agents=[...],
tasks=[...],
process=Process.sequential,
memory=True,
verbose=True,
embedder={
"provider": "ollama",
"config": {
"model": "mxbai-embed-large"
}
}
)
```
### Using Google AI embeddings
@@ -206,8 +128,9 @@ my_crew = Crew(
embedder={
"provider": "google",
"config": {
"api_key": "<YOUR_API_KEY>",
"model_name": "<model_name>"
"model": 'models/embedding-001',
"task_type": "retrieval_document",
"title": "Embeddings for Embedchain"
}
}
)
@@ -216,7 +139,6 @@ my_crew = Crew(
### Using Azure OpenAI embeddings
```python Code
from chromadb.utils.embedding_functions import OpenAIEmbeddingFunction
from crewai import Crew, Agent, Task, Process
my_crew = Crew(
@@ -225,20 +147,36 @@ my_crew = Crew(
process=Process.sequential,
memory=True,
verbose=True,
embedder=OpenAIEmbeddingFunction(
api_key="YOUR_API_KEY",
api_base="YOUR_API_BASE_PATH",
api_type="azure",
api_version="YOUR_API_VERSION",
model_name="text-embedding-3-small"
)
embedder={
"provider": "azure_openai",
"config": {
"model": 'text-embedding-ada-002',
"deployment_name": "your_embedding_model_deployment_name"
}
}
)
```
### Using GPT4ALL embeddings
```python Code
from crewai import Crew, Agent, Task, Process
my_crew = Crew(
agents=[...],
tasks=[...],
process=Process.sequential,
memory=True,
verbose=True,
embedder={
"provider": "gpt4all"
}
)
```
### Using Vertex AI embeddings
```python Code
from chromadb.utils.embedding_functions import GoogleVertexEmbeddingFunction
from crewai import Crew, Agent, Task, Process
my_crew = Crew(
@@ -247,12 +185,12 @@ my_crew = Crew(
process=Process.sequential,
memory=True,
verbose=True,
embedder=GoogleVertexEmbeddingFunction(
project_id="YOUR_PROJECT_ID",
region="YOUR_REGION",
api_key="YOUR_API_KEY",
model_name="textembedding-gecko"
)
embedder={
"provider": "vertexai",
"config": {
"model": 'textembedding-gecko'
}
}
)
```
@@ -270,52 +208,8 @@ my_crew = Crew(
embedder={
"provider": "cohere",
"config": {
"api_key": "YOUR_API_KEY",
"model_name": "<model_name>"
}
}
)
```
### Using HuggingFace embeddings
```python Code
from crewai import Crew, Agent, Task, Process
my_crew = Crew(
agents=[...],
tasks=[...],
process=Process.sequential,
memory=True,
verbose=True,
embedder={
"provider": "huggingface",
"config": {
"api_url": "<api_url>",
}
}
)
```
### Using Watson embeddings
```python Code
from crewai import Crew, Agent, Task, Process
# Note: Ensure you have installed and imported `ibm_watsonx_ai` for Watson embeddings to work.
my_crew = Crew(
agents=[...],
tasks=[...],
process=Process.sequential,
memory=True,
verbose=True,
embedder={
"provider": "watson",
"config": {
"model": "<model_name>",
"api_url": "<api_url>",
"api_key": "<YOUR_API_KEY>",
"project_id": "<YOUR_PROJECT_ID>",
"model": "embed-english-v3.0",
"vector_dimension": 1024
}
}
)

View File

@@ -5,14 +5,13 @@ icon: screwdriver-wrench
---
## Introduction
CrewAI tools empower agents with capabilities ranging from web searching and data analysis to collaboration and delegating tasks among coworkers.
CrewAI tools empower agents with capabilities ranging from web searching and data analysis to collaboration and delegating tasks among coworkers.
This documentation outlines how to create, integrate, and leverage these tools within the CrewAI framework, including a new focus on collaboration tools.
## What is a Tool?
A tool in CrewAI is a skill or function that agents can utilize to perform various actions.
This includes tools from the [CrewAI Toolkit](https://github.com/joaomdmoura/crewai-tools) and [LangChain Tools](https://python.langchain.com/docs/integrations/tools),
A tool in CrewAI is a skill or function that agents can utilize to perform various actions.
This includes tools from the [CrewAI Toolkit](https://github.com/joaomdmoura/crewai-tools) and [LangChain Tools](https://python.langchain.com/docs/integrations/tools),
enabling everything from simple searches to complex interactions and effective teamwork among agents.
## Key Characteristics of Tools
@@ -104,53 +103,57 @@ crew.kickoff()
Here is a list of the available tools and their descriptions:
| Tool | Description |
| :------------------------------- | :--------------------------------------------------------------------------------------------- |
| **BrowserbaseLoadTool** | A tool for interacting with and extracting data from web browsers. |
| **CodeDocsSearchTool** | A RAG tool optimized for searching through code documentation and related technical documents. |
| **CodeInterpreterTool** | A tool for interpreting python code. |
| **ComposioTool** | Enables use of Composio tools. |
| **CSVSearchTool** | A RAG tool designed for searching within CSV files, tailored to handle structured data. |
| **DALL-E Tool** | A tool for generating images using the DALL-E API. |
| **DirectorySearchTool** | A RAG tool for searching within directories, useful for navigating through file systems. |
| **DOCXSearchTool** | A RAG tool aimed at searching within DOCX documents, ideal for processing Word files. |
| **DirectoryReadTool** | Facilitates reading and processing of directory structures and their contents. |
| **EXASearchTool** | A tool designed for performing exhaustive searches across various data sources. |
| **FileReadTool** | Enables reading and extracting data from files, supporting various file formats. |
| **FirecrawlSearchTool** | A tool to search webpages using Firecrawl and return the results. |
| **FirecrawlCrawlWebsiteTool** | A tool for crawling webpages using Firecrawl. |
| **FirecrawlScrapeWebsiteTool** | A tool for scraping webpages URL using Firecrawl and returning its contents. |
| **GithubSearchTool** | A RAG tool for searching within GitHub repositories, useful for code and documentation search. |
| **SerperDevTool** | A specialized tool for development purposes, with specific functionalities under development. |
| **TXTSearchTool** | A RAG tool focused on searching within text (.txt) files, suitable for unstructured data. |
| **JSONSearchTool** | A RAG tool designed for searching within JSON files, catering to structured data handling. |
| **LlamaIndexTool** | Enables the use of LlamaIndex tools. |
| **MDXSearchTool** | A RAG tool tailored for searching within Markdown (MDX) files, useful for documentation. |
| **PDFSearchTool** | A RAG tool aimed at searching within PDF documents, ideal for processing scanned documents. |
| **PGSearchTool** | A RAG tool optimized for searching within PostgreSQL databases, suitable for database queries. |
| **Vision Tool** | A tool for generating images using the DALL-E API. |
| **RagTool** | A general-purpose RAG tool capable of handling various data sources and types. |
| **ScrapeElementFromWebsiteTool** | Enables scraping specific elements from websites, useful for targeted data extraction. |
| **ScrapeWebsiteTool** | Facilitates scraping entire websites, ideal for comprehensive data collection. |
| **WebsiteSearchTool** | A RAG tool for searching website content, optimized for web data extraction. |
| **XMLSearchTool** | A RAG tool designed for searching within XML files, suitable for structured data formats. |
| **YoutubeChannelSearchTool** | A RAG tool for searching within YouTube channels, useful for video content analysis. |
| **YoutubeVideoSearchTool** | A RAG tool aimed at searching within YouTube videos, ideal for video data extraction. |
| Tool | Description |
| :-------------------------- | :-------------------------------------------------------------------------------------------- |
| **BrowserbaseLoadTool** | A tool for interacting with and extracting data from web browsers. |
| **CodeDocsSearchTool** | A RAG tool optimized for searching through code documentation and related technical documents. |
| **CodeInterpreterTool** | A tool for interpreting python code. |
| **ComposioTool** | Enables use of Composio tools. |
| **CSVSearchTool** | A RAG tool designed for searching within CSV files, tailored to handle structured data. |
| **DALL-E Tool** | A tool for generating images using the DALL-E API. |
| **DirectorySearchTool** | A RAG tool for searching within directories, useful for navigating through file systems. |
| **DOCXSearchTool** | A RAG tool aimed at searching within DOCX documents, ideal for processing Word files. |
| **DirectoryReadTool** | Facilitates reading and processing of directory structures and their contents. |
| **EXASearchTool** | A tool designed for performing exhaustive searches across various data sources. |
| **FileReadTool** | Enables reading and extracting data from files, supporting various file formats. |
| **FirecrawlSearchTool** | A tool to search webpages using Firecrawl and return the results. |
| **FirecrawlCrawlWebsiteTool** | A tool for crawling webpages using Firecrawl. |
| **FirecrawlScrapeWebsiteTool** | A tool for scraping webpages URL using Firecrawl and returning its contents. |
| **GithubSearchTool** | A RAG tool for searching within GitHub repositories, useful for code and documentation search.|
| **SerperDevTool** | A specialized tool for development purposes, with specific functionalities under development. |
| **TXTSearchTool** | A RAG tool focused on searching within text (.txt) files, suitable for unstructured data. |
| **JSONSearchTool** | A RAG tool designed for searching within JSON files, catering to structured data handling. |
| **LlamaIndexTool** | Enables the use of LlamaIndex tools. |
| **MDXSearchTool** | A RAG tool tailored for searching within Markdown (MDX) files, useful for documentation. |
| **PDFSearchTool** | A RAG tool aimed at searching within PDF documents, ideal for processing scanned documents. |
| **PGSearchTool** | A RAG tool optimized for searching within PostgreSQL databases, suitable for database queries. |
| **Vision Tool** | A tool for generating images using the DALL-E API. |
| **RagTool** | A general-purpose RAG tool capable of handling various data sources and types. |
| **ScrapeElementFromWebsiteTool** | Enables scraping specific elements from websites, useful for targeted data extraction. |
| **ScrapeWebsiteTool** | Facilitates scraping entire websites, ideal for comprehensive data collection. |
| **WebsiteSearchTool** | A RAG tool for searching website content, optimized for web data extraction. |
| **XMLSearchTool** | A RAG tool designed for searching within XML files, suitable for structured data formats. |
| **YoutubeChannelSearchTool**| A RAG tool for searching within YouTube channels, useful for video content analysis. |
| **YoutubeVideoSearchTool** | A RAG tool aimed at searching within YouTube videos, ideal for video data extraction. |
## Creating your own Tools
<Tip>
Developers can craft `custom tools` tailored for their agents needs or
utilize pre-built options.
Developers can craft `custom tools` tailored for their agents needs or utilize pre-built options.
</Tip>
There are two main ways for one to create a CrewAI tool:
To create your own CrewAI tools you will need to install our extra tools package:
```bash
pip install 'crewai[tools]'
```
Once you do that there are two main ways for one to create a CrewAI tool:
### Subclassing `BaseTool`
```python Code
from crewai.tools import BaseTool
from crewai_tools import BaseTool
class MyCustomTool(BaseTool):
name: str = "Name of my tool"
@@ -164,7 +167,7 @@ class MyCustomTool(BaseTool):
### Utilizing the `tool` Decorator
```python Code
from crewai.tools import tool
from crewai_tools import tool
@tool("Name of my tool")
def my_tool(question: str) -> str:
"""Clear description for what this tool is useful for, your agent will need this information to use it."""
@@ -175,13 +178,11 @@ def my_tool(question: str) -> str:
### Custom Caching Mechanism
<Tip>
Tools can optionally implement a `cache_function` to fine-tune caching
behavior. This function determines when to cache results based on specific
conditions, offering granular control over caching logic.
Tools can optionally implement a `cache_function` to fine-tune caching behavior. This function determines when to cache results based on specific conditions, offering granular control over caching logic.
</Tip>
```python Code
from crewai.tools import tool
from crewai_tools import tool
@tool
def multiplication_tool(first_number: int, second_number: int) -> str:
@@ -207,6 +208,6 @@ writer1 = Agent(
## Conclusion
Tools are pivotal in extending the capabilities of CrewAI agents, enabling them to undertake a broad spectrum of tasks and collaborate effectively.
When building solutions with CrewAI, leverage both custom and existing tools to empower your agents and enhance the AI ecosystem. Consider utilizing error handling,
caching mechanisms, and the flexibility of tool arguments to optimize your agents' performance and capabilities.
Tools are pivotal in extending the capabilities of CrewAI agents, enabling them to undertake a broad spectrum of tasks and collaborate effectively.
When building solutions with CrewAI, leverage both custom and existing tools to empower your agents and enhance the AI ecosystem. Consider utilizing error handling,
caching mechanisms, and the flexibility of tool arguments to optimize your agents' performance and capabilities.

View File

@@ -6,27 +6,28 @@ icon: hammer
## Creating and Utilizing Tools in CrewAI
This guide provides detailed instructions on creating custom tools for the CrewAI framework and how to efficiently manage and utilize these tools,
incorporating the latest functionalities such as tool delegation, error handling, and dynamic tool calling. It also highlights the importance of collaboration tools,
This guide provides detailed instructions on creating custom tools for the CrewAI framework and how to efficiently manage and utilize these tools,
incorporating the latest functionalities such as tool delegation, error handling, and dynamic tool calling. It also highlights the importance of collaboration tools,
enabling agents to perform a wide range of actions.
### Prerequisites
Before creating your own tools, ensure you have the crewAI extra tools package installed:
```bash
pip install 'crewai[tools]'
```
### Subclassing `BaseTool`
To create a personalized tool, inherit from `BaseTool` and define the necessary attributes, including the `args_schema` for input validation, and the `_run` method.
To create a personalized tool, inherit from `BaseTool` and define the necessary attributes and the `_run` method.
```python Code
from typing import Type
from crewai.tools import BaseTool
from pydantic import BaseModel, Field
class MyToolInput(BaseModel):
"""Input schema for MyCustomTool."""
argument: str = Field(..., description="Description of the argument.")
from crewai_tools import BaseTool
class MyCustomTool(BaseTool):
name: str = "Name of my tool"
description: str = "What this tool does. It's vital for effective utilization."
args_schema: Type[BaseModel] = MyToolInput
def _run(self, argument: str) -> str:
# Your tool's logic here
@@ -39,7 +40,7 @@ Alternatively, you can use the tool decorator `@tool`. This approach allows you
offering a concise and efficient way to create specialized tools tailored to your needs.
```python Code
from crewai.tools import tool
from crewai_tools import tool
@tool("Tool Name")
def my_simple_tool(question: str) -> str:
@@ -65,5 +66,5 @@ def my_cache_strategy(arguments: dict, result: str) -> bool:
cached_tool.cache_function = my_cache_strategy
```
By adhering to these guidelines and incorporating new functionalities and collaboration tools into your tool creation and management processes,
By adhering to these guidelines and incorporating new functionalities and collaboration tools into your tool creation and management processes,
you can leverage the full capabilities of the CrewAI framework, enhancing both the development experience and the efficiency of your AI agents.

View File

@@ -330,4 +330,4 @@ This will clear the crew's memory, allowing for a fresh start.
## Deploying Your Project
The easiest way to deploy your crew is through [CrewAI Enterprise](http://app.crewai.com/), where you can deploy your crew in a few clicks.
The easiest way to deploy your crew is through [CrewAI Enterprise](https://www.crewai.com/crewaiplus), where you can deploy your crew in a few clicks.

View File

@@ -34,7 +34,6 @@ from crewai_tools import GithubSearchTool
# Initialize the tool for semantic searches within a specific GitHub repository
tool = GithubSearchTool(
github_repo='https://github.com/example/repo',
gh_token='your_github_personal_access_token',
content_types=['code', 'issue'] # Options: code, repo, pr, issue
)
@@ -42,7 +41,6 @@ tool = GithubSearchTool(
# Initialize the tool for semantic searches within a specific GitHub repository, so the agent can search any repository if it learns about during its execution
tool = GithubSearchTool(
gh_token='your_github_personal_access_token',
content_types=['code', 'issue'] # Options: code, repo, pr, issue
)
```
@@ -50,7 +48,6 @@ tool = GithubSearchTool(
## Arguments
- `github_repo` : The URL of the GitHub repository where the search will be conducted. This is a mandatory field and specifies the target repository for your search.
- `gh_token` : Your GitHub Personal Access Token (PAT) required for authentication. You can create one in your GitHub account settings under Developer Settings > Personal Access Tokens.
- `content_types` : Specifies the types of content to include in your search. You must provide a list of content types from the following options: `code` for searching within the code,
`repo` for searching within the repository's general information, `pr` for searching within pull requests, and `issue` for searching within issues.
This field is mandatory and allows tailoring the search to specific content types within the GitHub repository.
@@ -80,4 +77,5 @@ tool = GithubSearchTool(
),
),
)
)
)
```

View File

@@ -8,13 +8,13 @@ icon: eye
## Description
This tool is used to extract text from images. When passed to the agent it will extract the text from the image and then use it to generate a response, report or any other output.
This tool is used to extract text from images. When passed to the agent it will extract the text from the image and then use it to generate a response, report or any other output.
The URL or the PATH of the image should be passed to the Agent.
## Installation
Install the crewai_tools package
```shell
pip install 'crewai[tools]'
```
@@ -44,6 +44,7 @@ def researcher(self) -> Agent:
The VisionTool requires the following arguments:
| Argument | Type | Description |
| :----------------- | :------- | :------------------------------------------------------------------------------- |
| **image_path_url** | `string` | **Mandatory**. The path to the image file from which text needs to be extracted. |
| Argument | Type | Description |
|:---------------|:---------|:-------------------------------------------------------------------------------------------------------------------------------------|
| **image_path** | `string` | **Mandatory**. The path to the image file from which text needs to be extracted. |

6
poetry.lock generated
View File

@@ -1597,12 +1597,12 @@ files = [
google-auth = ">=2.14.1,<3.0.dev0"
googleapis-common-protos = ">=1.56.2,<2.0.dev0"
grpcio = [
{version = ">=1.33.2,<2.0dev", optional = true, markers = "python_version < \"3.11\" and extra == \"grpc\""},
{version = ">=1.49.1,<2.0dev", optional = true, markers = "python_version >= \"3.11\" and extra == \"grpc\""},
{version = ">=1.33.2,<2.0dev", optional = true, markers = "python_version < \"3.11\" and extra == \"grpc\""},
]
grpcio-status = [
{version = ">=1.33.2,<2.0.dev0", optional = true, markers = "python_version < \"3.11\" and extra == \"grpc\""},
{version = ">=1.49.1,<2.0.dev0", optional = true, markers = "python_version >= \"3.11\" and extra == \"grpc\""},
{version = ">=1.33.2,<2.0.dev0", optional = true, markers = "python_version < \"3.11\" and extra == \"grpc\""},
]
proto-plus = ">=1.22.3,<2.0.0dev"
protobuf = ">=3.19.5,<3.20.0 || >3.20.0,<3.20.1 || >3.20.1,<4.21.0 || >4.21.0,<4.21.1 || >4.21.1,<4.21.2 || >4.21.2,<4.21.3 || >4.21.3,<4.21.4 || >4.21.4,<4.21.5 || >4.21.5,<6.0.0.dev0"
@@ -4286,8 +4286,8 @@ files = [
[package.dependencies]
numpy = [
{version = ">=1.22.4", markers = "python_version < \"3.11\""},
{version = ">=1.23.2", markers = "python_version == \"3.11\""},
{version = ">=1.22.4", markers = "python_version < \"3.11\""},
{version = ">=1.26.0", markers = "python_version >= \"3.12\""},
]
python-dateutil = ">=2.8.2"

View File

@@ -1,6 +1,6 @@
[project]
name = "crewai"
version = "0.79.4"
version = "0.70.1"
description = "Cutting-edge framework for orchestrating role-playing, autonomous AI agents. By fostering collaborative intelligence, CrewAI empowers agents to work together seamlessly, tackling complex tasks."
readme = "README.md"
requires-python = ">=3.10,<=3.13"
@@ -16,19 +16,19 @@ dependencies = [
"opentelemetry-exporter-otlp-proto-http>=1.22.0",
"instructor>=1.3.3",
"regex>=2024.9.11",
"crewai-tools>=0.14.0",
"crewai-tools>=0.12.1",
"click>=8.1.7",
"python-dotenv>=1.0.0",
"appdirs>=1.4.4",
"jsonref>=1.1.0",
"agentops>=0.3.0",
"embedchain>=0.1.114",
"json-repair>=0.25.2",
"auth0-python>=4.7.1",
"litellm>=1.44.22",
"pyvis>=0.3.2",
"uv>=0.4.25",
"uv>=0.4.18",
"tomli-w>=1.1.0",
"tomli>=2.0.2",
"chromadb>=0.5.18",
]
[project.urls]
@@ -37,9 +37,8 @@ Documentation = "https://docs.crewai.com"
Repository = "https://github.com/crewAIInc/crewAI"
[project.optional-dependencies]
tools = ["crewai-tools>=0.14.0"]
tools = ["crewai-tools>=0.12.1"]
agentops = ["agentops>=0.3.0"]
mem0 = ["mem0ai>=0.1.29"]
[tool.uv]
dev-dependencies = [
@@ -53,7 +52,7 @@ dev-dependencies = [
"mkdocs-material-extensions>=1.3.1",
"pillow>=10.2.0",
"cairosvg>=2.7.1",
"crewai-tools>=0.14.0",
"crewai-tools>=0.12.1",
"pytest>=8.0.0",
"pytest-vcr>=1.0.2",
"python-dotenv>=1.0.0",

View File

@@ -14,5 +14,5 @@ warnings.filterwarnings(
category=UserWarning,
module="pydantic.main",
)
__version__ = "0.79.4"
__version__ = "0.70.1"
__all__ = ["Agent", "Crew", "Process", "Task", "Pipeline", "Router", "LLM", "Flow"]

View File

@@ -1,18 +1,15 @@
import os
import shutil
import subprocess
from typing import Any, List, Literal, Optional, Union
from inspect import signature
from typing import Any, List, Optional, Union
from pydantic import Field, InstanceOf, PrivateAttr, model_validator
from crewai.agents import CacheHandler
from crewai.agents.agent_builder.base_agent import BaseAgent
from crewai.agents.crew_agent_executor import CrewAgentExecutor
from crewai.cli.constants import ENV_VARS
from crewai.llm import LLM
from crewai.memory.contextual.contextual_memory import ContextualMemory
from crewai.tools.agent_tools.agent_tools import AgentTools
from crewai.tools import BaseTool
from crewai.tools.agent_tools import AgentTools
from crewai.utilities import Converter, Prompts
from crewai.utilities.constants import TRAINED_AGENTS_DATA_FILE, TRAINING_DATA_FILE
from crewai.utilities.token_counter_callback import TokenCalcHandler
@@ -115,19 +112,10 @@ class Agent(BaseAgent):
default=2,
description="Maximum number of retries for an agent to execute a task when an error occurs.",
)
code_execution_mode: Literal["safe", "unsafe"] = Field(
default="safe",
description="Mode for code execution: 'safe' (using Docker) or 'unsafe' (direct execution).",
)
@model_validator(mode="after")
def post_init_setup(self):
self.agent_ops_agent_name = self.role
unnacepted_attributes = [
"AWS_ACCESS_KEY_ID",
"AWS_SECRET_ACCESS_KEY",
"AWS_REGION_NAME",
]
# Handle different cases for self.llm
if isinstance(self.llm, str):
@@ -137,12 +125,8 @@ class Agent(BaseAgent):
# If it's already an LLM instance, keep it as is
pass
elif self.llm is None:
# Determine the model name from environment variables or use default
model_name = (
os.environ.get("OPENAI_MODEL_NAME")
or os.environ.get("MODEL")
or "gpt-4o-mini"
)
# If it's None, use environment variables or default
model_name = os.environ.get("OPENAI_MODEL_NAME", "gpt-4o-mini")
llm_params = {"model": model_name}
api_base = os.environ.get("OPENAI_API_BASE") or os.environ.get(
@@ -151,44 +135,9 @@ class Agent(BaseAgent):
if api_base:
llm_params["base_url"] = api_base
set_provider = model_name.split("/")[0] if "/" in model_name else "openai"
# Iterate over all environment variables to find matching API keys or use defaults
for provider, env_vars in ENV_VARS.items():
if provider == set_provider:
for env_var in env_vars:
if env_var["key_name"] in unnacepted_attributes:
continue
# Check if the environment variable is set
if "key_name" in env_var:
env_value = os.environ.get(env_var["key_name"])
if env_value:
# Map key names containing "API_KEY" to "api_key"
key_name = (
"api_key"
if "API_KEY" in env_var["key_name"]
else env_var["key_name"]
)
# Map key names containing "API_BASE" to "api_base"
key_name = (
"api_base"
if "API_BASE" in env_var["key_name"]
else key_name
)
# Map key names containing "API_VERSION" to "api_version"
key_name = (
"api_version"
if "API_VERSION" in env_var["key_name"]
else key_name
)
llm_params[key_name] = env_value
# Check for default values if the environment variable is not set
elif env_var.get("default", False):
for key, value in env_var.items():
if key not in ["prompt", "key_name", "default"]:
# Only add default if the key is already set in os.environ
if key in os.environ:
llm_params[key] = value
api_key = os.environ.get("OPENAI_API_KEY")
if api_key:
llm_params["api_key"] = api_key
self.llm = LLM(**llm_params)
else:
@@ -224,9 +173,6 @@ class Agent(BaseAgent):
if not self.agent_executor:
self._setup_agent_executor()
if self.allow_code_execution:
self._validate_docker_installation()
return self
def _setup_agent_executor(self):
@@ -238,7 +184,7 @@ class Agent(BaseAgent):
self,
task: Any,
context: Optional[str] = None,
tools: Optional[List[BaseTool]] = None,
tools: Optional[List[Any]] = None,
) -> str:
"""Execute a task with the agent.
@@ -262,11 +208,9 @@ class Agent(BaseAgent):
if self.crew and self.crew.memory:
contextual_memory = ContextualMemory(
self.crew.memory_config,
self.crew._short_term_memory,
self.crew._long_term_memory,
self.crew._entity_memory,
self.crew._user_memory,
)
memory = contextual_memory.build_context_for_task(task, context)
if memory.strip() != "":
@@ -307,9 +251,7 @@ class Agent(BaseAgent):
return result
def create_agent_executor(
self, tools: Optional[List[BaseTool]] = None, task=None
) -> None:
def create_agent_executor(self, tools=None, task=None) -> None:
"""Create an agent executor for the agent.
Returns:
@@ -366,9 +308,7 @@ class Agent(BaseAgent):
try:
from crewai_tools import CodeInterpreterTool
# Set the unsafe_mode based on the code_execution_mode attribute
unsafe_mode = self.code_execution_mode == "unsafe"
return [CodeInterpreterTool(unsafe_mode=unsafe_mode)]
return [CodeInterpreterTool()]
except ModuleNotFoundError:
self._logger.log(
"info", "Coding tools not available. Install crewai_tools. "
@@ -382,7 +322,7 @@ class Agent(BaseAgent):
tools_list = []
try:
# tentatively try to import from crewai_tools import BaseTool as CrewAITool
from crewai.tools import BaseTool as CrewAITool
from crewai_tools import BaseTool as CrewAITool
for tool in tools:
if isinstance(tool, CrewAITool):
@@ -441,42 +381,33 @@ class Agent(BaseAgent):
return description
def _render_text_description_and_args(self, tools: List[BaseTool]) -> str:
def _render_text_description_and_args(self, tools: List[Any]) -> str:
"""Render the tool name, description, and args in plain text.
Output will be in the format of:
Output will be in the format of:
.. code-block:: markdown
.. code-block:: markdown
search: This tool is used for search, args: {"query": {"type": "string"}}
calculator: This tool is used for math, \
args: {"expression": {"type": "string"}}
args: {"expression": {"type": "string"}}
"""
tool_strings = []
for tool in tools:
tool_strings.append(tool.description)
args_schema = str(tool.args)
if hasattr(tool, "func") and tool.func:
sig = signature(tool.func)
description = (
f"Tool Name: {tool.name}{sig}\nTool Description: {tool.description}"
)
else:
description = (
f"Tool Name: {tool.name}\nTool Description: {tool.description}"
)
tool_strings.append(f"{description}\nTool Arguments: {args_schema}")
return "\n".join(tool_strings)
def _validate_docker_installation(self) -> None:
"""Check if Docker is installed and running."""
if not shutil.which("docker"):
raise RuntimeError(
f"Docker is not installed. Please install Docker to use code execution with agent: {self.role}"
)
try:
subprocess.run(
["docker", "info"],
check=True,
stdout=subprocess.PIPE,
stderr=subprocess.PIPE,
)
except subprocess.CalledProcessError:
raise RuntimeError(
f"Docker is not running. Please start Docker to use code execution with agent: {self.role}"
)
@staticmethod
def __tools_names(tools) -> str:
return ", ".join([t.name for t in tools])

View File

@@ -18,7 +18,6 @@ from pydantic_core import PydanticCustomError
from crewai.agents.agent_builder.utilities.base_token_process import TokenProcess
from crewai.agents.cache.cache_handler import CacheHandler
from crewai.agents.tools_handler import ToolsHandler
from crewai.tools import BaseTool
from crewai.utilities import I18N, Logger, RPMController
from crewai.utilities.config import process_config
@@ -50,11 +49,11 @@ class BaseAgent(ABC, BaseModel):
Methods:
execute_task(task: Any, context: Optional[str] = None, tools: Optional[List[BaseTool]] = None) -> str:
execute_task(task: Any, context: Optional[str] = None, tools: Optional[List[Any]] = None) -> str:
Abstract method to execute a task.
create_agent_executor(tools=None) -> None:
Abstract method to create an agent executor.
_parse_tools(tools: List[BaseTool]) -> List[Any]:
_parse_tools(tools: List[Any]) -> List[Any]:
Abstract method to parse tools.
get_delegation_tools(agents: List["BaseAgent"]):
Abstract method to set the agents task tools for handling delegation and question asking to other agents in crew.
@@ -106,7 +105,7 @@ class BaseAgent(ABC, BaseModel):
default=False,
description="Enable agent to delegate and ask questions among each other.",
)
tools: Optional[List[BaseTool]] = Field(
tools: Optional[List[Any]] = Field(
default_factory=list, description="Tools at agents' disposal"
)
max_iter: Optional[int] = Field(
@@ -189,7 +188,7 @@ class BaseAgent(ABC, BaseModel):
self,
task: Any,
context: Optional[str] = None,
tools: Optional[List[BaseTool]] = None,
tools: Optional[List[Any]] = None,
) -> str:
pass
@@ -198,11 +197,11 @@ class BaseAgent(ABC, BaseModel):
pass
@abstractmethod
def _parse_tools(self, tools: List[BaseTool]) -> List[BaseTool]:
def _parse_tools(self, tools: List[Any]) -> List[Any]:
pass
@abstractmethod
def get_delegation_tools(self, agents: List["BaseAgent"]) -> List[BaseTool]:
def get_delegation_tools(self, agents: List["BaseAgent"]) -> List[Any]:
"""Set the task tools that init BaseAgenTools class."""
pass

View File

@@ -17,7 +17,7 @@ if TYPE_CHECKING:
class CrewAgentExecutorMixin:
crew: Optional["Crew"]
agent: Optional["BaseAgent"]
crew_agent: Optional["BaseAgent"]
task: Optional["Task"]
iterations: int
have_forced_answer: bool
@@ -33,9 +33,9 @@ class CrewAgentExecutorMixin:
"""Create and save a short-term memory item if conditions are met."""
if (
self.crew
and self.agent
and self.crew_agent
and self.task
and "Action: Delegate work to coworker" not in output.text
and "Action: Delegate work to coworker" not in output.log
):
try:
if (
@@ -43,11 +43,11 @@ class CrewAgentExecutorMixin:
and self.crew._short_term_memory
):
self.crew._short_term_memory.save(
value=output.text,
value=output.log,
metadata={
"observation": self.task.description,
},
agent=self.agent.role,
agent=self.crew_agent.role,
)
except Exception as e:
print(f"Failed to add to short term memory: {e}")
@@ -61,18 +61,18 @@ class CrewAgentExecutorMixin:
and self.crew._long_term_memory
and self.crew._entity_memory
and self.task
and self.agent
and self.crew_agent
):
try:
ltm_agent = TaskEvaluator(self.agent)
evaluation = ltm_agent.evaluate(self.task, output.text)
ltm_agent = TaskEvaluator(self.crew_agent)
evaluation = ltm_agent.evaluate(self.task, output.log)
if isinstance(evaluation, ConverterError):
return
long_term_memory = LongTermMemoryItem(
task=self.task.description,
agent=self.agent.role,
agent=self.crew_agent.role,
quality=evaluation.quality,
datetime=str(time.time()),
expected_output=self.task.expected_output,

View File

@@ -1,19 +1,22 @@
from typing import Optional, Union
from pydantic import Field
from abc import ABC, abstractmethod
from typing import List, Optional, Union
from pydantic import BaseModel, Field
from crewai.tools.base_tool import BaseTool
from crewai.agents.agent_builder.base_agent import BaseAgent
from crewai.task import Task
from crewai.utilities import I18N
class BaseAgentTool(BaseTool):
"""Base class for agent-related tools"""
class BaseAgentTools(BaseModel, ABC):
"""Default tools around agent delegation"""
agents: list[BaseAgent] = Field(description="List of available agents")
i18n: I18N = Field(
default_factory=I18N, description="Internationalization settings"
)
agents: List[BaseAgent] = Field(description="List of agents in this crew.")
i18n: I18N = Field(default=I18N(), description="Internationalization settings.")
@abstractmethod
def tools(self):
pass
def _get_coworker(self, coworker: Optional[str], **kwargs) -> Optional[str]:
coworker = coworker or kwargs.get("co_worker") or kwargs.get("coworker")
@@ -21,11 +24,27 @@ class BaseAgentTool(BaseTool):
is_list = coworker.startswith("[") and coworker.endswith("]")
if is_list:
coworker = coworker[1:-1].split(",")[0]
return coworker
def delegate_work(
self, task: str, context: str, coworker: Optional[str] = None, **kwargs
):
"""Useful to delegate a specific task to a coworker passing all necessary context and names."""
coworker = self._get_coworker(coworker, **kwargs)
return self._execute(coworker, task, context)
def ask_question(
self, question: str, context: str, coworker: Optional[str] = None, **kwargs
):
"""Useful to ask a question, opinion or take from a coworker passing all necessary context and names."""
coworker = self._get_coworker(coworker, **kwargs)
return self._execute(coworker, question, context)
def _execute(
self, agent_name: Union[str, None], task: str, context: Union[str, None]
) -> str:
):
"""Execute the command."""
try:
if agent_name is None:
agent_name = ""
@@ -38,6 +57,7 @@ class BaseAgentTool(BaseTool):
# when it should look like this:
# {"task": "....", "coworker": "...."}
agent_name = agent_name.casefold().replace('"', "").replace("\n", "")
agent = [ # type: ignore # Incompatible types in assignment (expression has type "list[BaseAgent]", variable has type "str | None")
available_agent
for available_agent in self.agents

View File

@@ -4,7 +4,6 @@ from crewai.types.usage_metrics import UsageMetrics
class TokenProcess:
total_tokens: int = 0
prompt_tokens: int = 0
cached_prompt_tokens: int = 0
completion_tokens: int = 0
successful_requests: int = 0
@@ -16,9 +15,6 @@ class TokenProcess:
self.completion_tokens = self.completion_tokens + tokens
self.total_tokens = self.total_tokens + tokens
def sum_cached_prompt_tokens(self, tokens: int):
self.cached_prompt_tokens = self.cached_prompt_tokens + tokens
def sum_successful_requests(self, requests: int):
self.successful_requests = self.successful_requests + requests
@@ -26,7 +22,6 @@ class TokenProcess:
return UsageMetrics(
total_tokens=self.total_tokens,
prompt_tokens=self.prompt_tokens,
cached_prompt_tokens=self.cached_prompt_tokens,
completion_tokens=self.completion_tokens,
successful_requests=self.successful_requests,
)

View File

@@ -2,7 +2,6 @@ import json
import re
from typing import Any, Dict, List, Union
from crewai.agents.agent_builder.base_agent import BaseAgent
from crewai.agents.agent_builder.base_agent_executor_mixin import CrewAgentExecutorMixin
from crewai.agents.parser import (
FINAL_ANSWER_AND_PARSABLE_ACTION_ERROR_MESSAGE,
@@ -30,7 +29,7 @@ class CrewAgentExecutor(CrewAgentExecutorMixin):
llm: Any,
task: Any,
crew: Any,
agent: BaseAgent,
agent: Any,
prompt: dict[str, str],
max_iter: int,
tools: List[Any],
@@ -104,8 +103,7 @@ class CrewAgentExecutor(CrewAgentExecutorMixin):
if self.crew and self.crew._train:
self._handle_crew_training_output(formatted_answer)
self._create_short_term_memory(formatted_answer)
self._create_long_term_memory(formatted_answer)
return {"output": formatted_answer.output}
def _invoke_loop(self, formatted_answer=None):
@@ -117,15 +115,6 @@ class CrewAgentExecutor(CrewAgentExecutorMixin):
callbacks=self.callbacks,
)
if answer is None or answer == "":
self._printer.print(
content="Received None or empty response from LLM call.",
color="red",
)
raise ValueError(
"Invalid response from LLM call - None or empty."
)
if not self.use_stop_words:
try:
self._format_answer(answer)
@@ -145,26 +134,25 @@ class CrewAgentExecutor(CrewAgentExecutorMixin):
formatted_answer.result = action_result
self._show_logs(formatted_answer)
if self.step_callback:
self.step_callback(formatted_answer)
if self.step_callback:
self.step_callback(formatted_answer)
if self._should_force_answer():
if self.have_forced_answer:
return AgentFinish(
thought="",
output=self._i18n.errors(
"force_final_answer_error"
).format(formatted_answer.text),
text=formatted_answer.text,
)
else:
formatted_answer.text += (
f'\n{self._i18n.errors("force_final_answer")}'
)
self.have_forced_answer = True
self.messages.append(
self._format_msg(formatted_answer.text, role="assistant")
)
if self._should_force_answer():
if self.have_forced_answer:
return AgentFinish(
output=self._i18n.errors(
"force_final_answer_error"
).format(formatted_answer.text),
text=formatted_answer.text,
)
else:
formatted_answer.text += (
f'\n{self._i18n.errors("force_final_answer")}'
)
self.have_forced_answer = True
self.messages.append(
self._format_msg(formatted_answer.text, role="assistant")
)
except OutputParserException as e:
self.messages.append({"role": "user", "content": e.error})
@@ -188,8 +176,6 @@ class CrewAgentExecutor(CrewAgentExecutorMixin):
return formatted_answer
def _show_start_logs(self):
if self.agent is None:
raise ValueError("Agent cannot be None")
if self.agent.verbose or (
hasattr(self, "crew") and getattr(self.crew, "verbose", False)
):
@@ -202,8 +188,6 @@ class CrewAgentExecutor(CrewAgentExecutorMixin):
)
def _show_logs(self, formatted_answer: Union[AgentAction, AgentFinish]):
if self.agent is None:
raise ValueError("Agent cannot be None")
if self.agent.verbose or (
hasattr(self, "crew") and getattr(self.crew, "verbose", False)
):
@@ -322,7 +306,7 @@ class CrewAgentExecutor(CrewAgentExecutorMixin):
self, result: AgentFinish, human_feedback: str | None = None
) -> None:
"""Function to handle the process of the training data."""
agent_id = str(self.agent.id) # type: ignore
agent_id = str(self.agent.id)
# Load training data
training_handler = CrewTrainingHandler(TRAINING_DATA_FILE)
@@ -355,7 +339,7 @@ class CrewAgentExecutor(CrewAgentExecutorMixin):
"initial_output": result.output,
"human_feedback": human_feedback,
"agent": agent_id,
"agent_role": self.agent.role, # type: ignore
"agent_role": self.agent.role,
}
if self.crew is not None and hasattr(self.crew, "_train_iteration"):
train_iteration = self.crew._train_iteration
@@ -386,5 +370,4 @@ class CrewAgentExecutor(CrewAgentExecutorMixin):
return CrewAgentParser(agent=self.agent).parse(answer)
def _format_msg(self, prompt: str, role: str = "user") -> Dict[str, str]:
prompt = prompt.rstrip()
return {"role": role, "content": prompt}

View File

@@ -1,6 +1,6 @@
from typing import Any, Optional, Union
from ..tools.cache_tools.cache_tools import CacheTools
from ..tools.cache_tools import CacheTools
from ..tools.tool_calling import InstructorToolCalling, ToolCalling
from .cache.cache_handler import CacheHandler

View File

@@ -1,70 +0,0 @@
from pathlib import Path
import click
from crewai.cli.utils import copy_template
def add_crew_to_flow(crew_name: str) -> None:
"""Add a new crew to the current flow."""
# Check if pyproject.toml exists in the current directory
if not Path("pyproject.toml").exists():
print("This command must be run from the root of a flow project.")
raise click.ClickException(
"This command must be run from the root of a flow project."
)
# Determine the flow folder based on the current directory
flow_folder = Path.cwd()
crews_folder = flow_folder / "src" / flow_folder.name / "crews"
if not crews_folder.exists():
print("Crews folder does not exist in the current flow.")
raise click.ClickException("Crews folder does not exist in the current flow.")
# Create the crew within the flow's crews directory
create_embedded_crew(crew_name, parent_folder=crews_folder)
click.echo(
f"Crew {crew_name} added to the current flow successfully!",
)
def create_embedded_crew(crew_name: str, parent_folder: Path) -> None:
"""Create a new crew within an existing flow project."""
folder_name = crew_name.replace(" ", "_").replace("-", "_").lower()
class_name = crew_name.replace("_", " ").replace("-", " ").title().replace(" ", "")
crew_folder = parent_folder / folder_name
if crew_folder.exists():
if not click.confirm(
f"Crew {folder_name} already exists. Do you want to override it?"
):
click.secho("Operation cancelled.", fg="yellow")
return
click.secho(f"Overriding crew {folder_name}...", fg="green", bold=True)
else:
click.secho(f"Creating crew {folder_name}...", fg="green", bold=True)
crew_folder.mkdir(parents=True)
# Create config and crew.py files
config_folder = crew_folder / "config"
config_folder.mkdir(exist_ok=True)
templates_dir = Path(__file__).parent / "templates" / "crew"
config_template_files = ["agents.yaml", "tasks.yaml"]
crew_template_file = f"{folder_name}.py" # Updated file name
for file_name in config_template_files:
src_file = templates_dir / "config" / file_name
dst_file = config_folder / file_name
copy_template(src_file, dst_file, crew_name, class_name, folder_name)
src_file = templates_dir / "crew.py"
dst_file = crew_folder / crew_template_file
copy_template(src_file, dst_file, crew_name, class_name, folder_name)
click.secho(
f"Crew {crew_name} added to the flow successfully!", fg="green", bold=True
)

View File

@@ -34,9 +34,7 @@ class AuthenticationCommand:
"scope": "openid",
"audience": AUTH0_AUDIENCE,
}
response = requests.post(
url=self.DEVICE_CODE_URL, data=device_code_payload, timeout=20
)
response = requests.post(url=self.DEVICE_CODE_URL, data=device_code_payload)
response.raise_for_status()
return response.json()
@@ -56,7 +54,7 @@ class AuthenticationCommand:
attempts = 0
while True and attempts < 5:
response = requests.post(self.TOKEN_URL, data=token_payload, timeout=30)
response = requests.post(self.TOKEN_URL, data=token_payload)
token_data = response.json()
if response.status_code == 200:

View File

@@ -3,7 +3,6 @@ from typing import Optional
import click
import pkg_resources
from crewai.cli.add_crew_to_flow import add_crew_to_flow
from crewai.cli.create_crew import create_crew
from crewai.cli.create_flow import create_flow
from crewai.cli.create_pipeline import create_pipeline
@@ -15,11 +14,11 @@ from .authentication.main import AuthenticationCommand
from .deploy.main import DeployCommand
from .evaluate_crew import evaluate_crew
from .install_crew import install_crew
from .kickoff_flow import kickoff_flow
from .plot_flow import plot_flow
from .replay_from_task import replay_task_command
from .reset_memories_command import reset_memories_command
from .run_crew import run_crew
from .run_flow import run_flow
from .tools.main import ToolCommand
from .train_crew import train_crew
from .update_crew import update_crew
@@ -33,12 +32,10 @@ def crewai():
@crewai.command()
@click.argument("type", type=click.Choice(["crew", "pipeline", "flow"]))
@click.argument("name")
@click.option("--provider", type=str, help="The provider to use for the crew")
@click.option("--skip_provider", is_flag=True, help="Skip provider validation")
def create(type, name, provider, skip_provider=False):
def create(type, name):
"""Create a new crew, pipeline, or flow."""
if type == "crew":
create_crew(name, provider, skip_provider)
create_crew(name)
elif type == "pipeline":
create_pipeline(name)
elif type == "flow":
@@ -179,16 +176,10 @@ def test(n_iterations: int, model: str):
evaluate_crew(n_iterations, model)
@crewai.command(
context_settings=dict(
ignore_unknown_options=True,
allow_extra_args=True,
)
)
@click.pass_context
def install(context):
@crewai.command()
def install():
"""Install the Crew."""
install_crew(context.args)
install_crew()
@crewai.command()
@@ -313,11 +304,11 @@ def flow():
pass
@flow.command(name="kickoff")
@flow.command(name="run")
def flow_run():
"""Kickoff the Flow."""
"""Run the Flow."""
click.echo("Running the Flow")
kickoff_flow()
run_flow()
@flow.command(name="plot")
@@ -327,13 +318,5 @@ def flow_plot():
plot_flow()
@flow.command(name="add-crew")
@click.argument("crew_name")
def flow_add_crew(crew_name):
"""Add a crew to an existing flow."""
click.echo(f"Adding crew {crew_name} to the flow")
add_crew_to_flow(crew_name)
if __name__ == "__main__":
crewai()

View File

@@ -1,38 +0,0 @@
import json
from pathlib import Path
from pydantic import BaseModel, Field
from typing import Optional
DEFAULT_CONFIG_PATH = Path.home() / ".config" / "crewai" / "settings.json"
class Settings(BaseModel):
tool_repository_username: Optional[str] = Field(None, description="Username for interacting with the Tool Repository")
tool_repository_password: Optional[str] = Field(None, description="Password for interacting with the Tool Repository")
config_path: Path = Field(default=DEFAULT_CONFIG_PATH, exclude=True)
def __init__(self, config_path: Path = DEFAULT_CONFIG_PATH, **data):
"""Load Settings from config path"""
config_path.parent.mkdir(parents=True, exist_ok=True)
file_data = {}
if config_path.is_file():
try:
with config_path.open("r") as f:
file_data = json.load(f)
except json.JSONDecodeError:
file_data = {}
merged_data = {**file_data, **data}
super().__init__(config_path=config_path, **merged_data)
def dump(self) -> None:
"""Save current settings to settings.json"""
if self.config_path.is_file():
with self.config_path.open("r") as f:
existing_data = json.load(f)
else:
existing_data = {}
updated_data = {**existing_data, **self.model_dump(exclude_unset=True)}
with self.config_path.open("w") as f:
json.dump(updated_data, f, indent=4)

View File

@@ -1,168 +1,19 @@
ENV_VARS = {
"openai": [
{
"prompt": "Enter your OPENAI API key (press Enter to skip)",
"key_name": "OPENAI_API_KEY",
}
],
"anthropic": [
{
"prompt": "Enter your ANTHROPIC API key (press Enter to skip)",
"key_name": "ANTHROPIC_API_KEY",
}
],
"gemini": [
{
"prompt": "Enter your GEMINI API key (press Enter to skip)",
"key_name": "GEMINI_API_KEY",
}
],
"groq": [
{
"prompt": "Enter your GROQ API key (press Enter to skip)",
"key_name": "GROQ_API_KEY",
}
],
"watson": [
{
"prompt": "Enter your WATSONX URL (press Enter to skip)",
"key_name": "WATSONX_URL",
},
{
"prompt": "Enter your WATSONX API Key (press Enter to skip)",
"key_name": "WATSONX_APIKEY",
},
{
"prompt": "Enter your WATSONX Project Id (press Enter to skip)",
"key_name": "WATSONX_PROJECT_ID",
},
],
"ollama": [
{
"default": True,
"API_BASE": "http://localhost:11434",
}
],
"bedrock": [
{
"prompt": "Enter your AWS Access Key ID (press Enter to skip)",
"key_name": "AWS_ACCESS_KEY_ID",
},
{
"prompt": "Enter your AWS Secret Access Key (press Enter to skip)",
"key_name": "AWS_SECRET_ACCESS_KEY",
},
{
"prompt": "Enter your AWS Region Name (press Enter to skip)",
"key_name": "AWS_REGION_NAME",
},
],
"azure": [
{
"prompt": "Enter your Azure deployment name (must start with 'azure/')",
"key_name": "model",
},
{
"prompt": "Enter your AZURE API key (press Enter to skip)",
"key_name": "AZURE_API_KEY",
},
{
"prompt": "Enter your AZURE API base URL (press Enter to skip)",
"key_name": "AZURE_API_BASE",
},
{
"prompt": "Enter your AZURE API version (press Enter to skip)",
"key_name": "AZURE_API_VERSION",
},
],
"cerebras": [
{
"prompt": "Enter your Cerebras model name (must start with 'cerebras/')",
"key_name": "model",
},
{
"prompt": "Enter your Cerebras API version (press Enter to skip)",
"key_name": "CEREBRAS_API_KEY",
},
],
'openai': ['OPENAI_API_KEY'],
'anthropic': ['ANTHROPIC_API_KEY'],
'gemini': ['GEMINI_API_KEY'],
'groq': ['GROQ_API_KEY'],
'ollama': ['FAKE_KEY'],
}
PROVIDERS = [
"openai",
"anthropic",
"gemini",
"groq",
"ollama",
"watson",
"bedrock",
"azure",
"cerebras",
]
PROVIDERS = ['openai', 'anthropic', 'gemini', 'groq', 'ollama']
MODELS = {
"openai": ["gpt-4", "gpt-4o", "gpt-4o-mini", "o1-mini", "o1-preview"],
"anthropic": [
"claude-3-5-sonnet-20240620",
"claude-3-sonnet-20240229",
"claude-3-opus-20240229",
"claude-3-haiku-20240307",
],
"gemini": [
"gemini/gemini-1.5-flash",
"gemini/gemini-1.5-pro",
"gemini/gemini-gemma-2-9b-it",
"gemini/gemini-gemma-2-27b-it",
],
"groq": [
"groq/llama-3.1-8b-instant",
"groq/llama-3.1-70b-versatile",
"groq/llama-3.1-405b-reasoning",
"groq/gemma2-9b-it",
"groq/gemma-7b-it",
],
"ollama": ["ollama/llama3.1", "ollama/mixtral"],
"watson": [
"watsonx/google/flan-t5-xxl",
"watsonx/google/flan-ul2",
"watsonx/bigscience/mt0-xxl",
"watsonx/eleutherai/gpt-neox-20b",
"watsonx/ibm/mpt-7b-instruct2",
"watsonx/bigcode/starcoder",
"watsonx/meta-llama/llama-2-70b-chat",
"watsonx/meta-llama/llama-2-13b-chat",
"watsonx/ibm/granite-13b-instruct-v1",
"watsonx/ibm/granite-13b-chat-v1",
"watsonx/google/flan-t5-xl",
"watsonx/ibm/granite-13b-chat-v2",
"watsonx/ibm/granite-13b-instruct-v2",
"watsonx/elyza/elyza-japanese-llama-2-7b-instruct",
"watsonx/ibm-mistralai/mixtral-8x7b-instruct-v01-q",
],
"bedrock": [
"bedrock/anthropic.claude-3-5-sonnet-20240620-v1:0",
"bedrock/anthropic.claude-3-sonnet-20240229-v1:0",
"bedrock/anthropic.claude-3-haiku-20240307-v1:0",
"bedrock/anthropic.claude-3-opus-20240229-v1:0",
"bedrock/anthropic.claude-v2:1",
"bedrock/anthropic.claude-v2",
"bedrock/anthropic.claude-instant-v1",
"bedrock/meta.llama3-1-405b-instruct-v1:0",
"bedrock/meta.llama3-1-70b-instruct-v1:0",
"bedrock/meta.llama3-1-8b-instruct-v1:0",
"bedrock/meta.llama3-70b-instruct-v1:0",
"bedrock/meta.llama3-8b-instruct-v1:0",
"bedrock/amazon.titan-text-lite-v1",
"bedrock/amazon.titan-text-express-v1",
"bedrock/cohere.command-text-v14",
"bedrock/ai21.j2-mid-v1",
"bedrock/ai21.j2-ultra-v1",
"bedrock/ai21.jamba-instruct-v1:0",
"bedrock/meta.llama2-13b-chat-v1",
"bedrock/meta.llama2-70b-chat-v1",
"bedrock/mistral.mistral-7b-instruct-v0:2",
"bedrock/mistral.mixtral-8x7b-instruct-v0:1",
],
'openai': ['gpt-4', 'gpt-4o', 'gpt-4o-mini', 'o1-mini', 'o1-preview'],
'anthropic': ['claude-3-5-sonnet-20240620', 'claude-3-sonnet-20240229', 'claude-3-opus-20240229', 'claude-3-haiku-20240307'],
'gemini': ['gemini-1.5-flash', 'gemini-1.5-pro', 'gemini-gemma-2-9b-it', 'gemini-gemma-2-27b-it'],
'groq': ['llama-3.1-8b-instant', 'llama-3.1-70b-versatile', 'llama-3.1-405b-reasoning', 'gemma2-9b-it', 'gemma-7b-it'],
'ollama': ['llama3.1', 'mixtral'],
}
JSON_URL = "https://raw.githubusercontent.com/BerriAI/litellm/main/model_prices_and_context_window.json"
JSON_URL = "https://raw.githubusercontent.com/BerriAI/litellm/main/model_prices_and_context_window.json"

View File

@@ -1,17 +1,8 @@
import shutil
import sys
from pathlib import Path
import click
from crewai.cli.constants import ENV_VARS, MODELS
from crewai.cli.provider import (
get_provider_data,
select_model,
select_provider,
)
from crewai.cli.utils import copy_template, load_env_vars, write_env_file
from crewai.cli.utils import copy_template,load_env_vars, write_env_file
from crewai.cli.provider import get_provider_data, select_provider, select_model, PROVIDERS
from crewai.cli.constants import ENV_VARS
def create_folder_structure(name, parent_folder=None):
folder_name = name.replace(" ", "_").replace("-", "_").lower()
@@ -22,31 +13,29 @@ def create_folder_structure(name, parent_folder=None):
else:
folder_path = Path(folder_name)
if folder_path.exists():
if not click.confirm(
f"Folder {folder_name} already exists. Do you want to override it?"
):
click.secho("Operation cancelled.", fg="yellow")
sys.exit(0)
click.secho(f"Overriding folder {folder_name}...", fg="green", bold=True)
shutil.rmtree(folder_path) # Delete the existing folder and its contents
click.secho(
f"Creating {'crew' if parent_folder else 'folder'} {folder_name}...",
fg="green",
bold=True,
)
folder_path.mkdir(parents=True)
(folder_path / "tests").mkdir(exist_ok=True)
if not parent_folder:
(folder_path / "src" / folder_name).mkdir(parents=True)
(folder_path / "src" / folder_name / "tools").mkdir(parents=True)
(folder_path / "src" / folder_name / "config").mkdir(parents=True)
if not folder_path.exists():
folder_path.mkdir(parents=True)
(folder_path / "tests").mkdir(exist_ok=True)
if not parent_folder:
(folder_path / "src" / folder_name).mkdir(parents=True)
(folder_path / "src" / folder_name / "tools").mkdir(parents=True)
(folder_path / "src" / folder_name / "config").mkdir(parents=True)
else:
click.secho(
f"\tFolder {folder_name} already exists.",
fg="yellow",
)
return folder_path, folder_name, class_name
def copy_template_files(folder_path, name, class_name, parent_folder):
package_dir = Path(__file__).parent
templates_dir = package_dir / "templates" / "crew"
@@ -65,9 +54,7 @@ def copy_template_files(folder_path, name, class_name, parent_folder):
dst_file = folder_path / file_name
copy_template(src_file, dst_file, name, class_name, folder_path.name)
src_folder = (
folder_path / "src" / folder_path.name if not parent_folder else folder_path
)
src_folder = folder_path / "src" / folder_path.name if not parent_folder else folder_path
for file_name in src_template_files:
src_file = templates_dir / file_name
@@ -81,88 +68,37 @@ def copy_template_files(folder_path, name, class_name, parent_folder):
copy_template(src_file, dst_file, name, class_name, folder_path.name)
def create_crew(name, provider=None, skip_provider=False, parent_folder=None):
def create_crew(name, parent_folder=None):
folder_path, folder_name, class_name = create_folder_structure(name, parent_folder)
env_vars = load_env_vars(folder_path)
if not skip_provider:
if not provider:
provider_models = get_provider_data()
if not provider_models:
return
existing_provider = None
for provider, env_keys in ENV_VARS.items():
if any(
"key_name" in details and details["key_name"] in env_vars
for details in env_keys
):
existing_provider = provider
break
provider_models = get_provider_data()
if not provider_models:
return
if existing_provider:
if not click.confirm(
f"Found existing environment variable configuration for {existing_provider.capitalize()}. Do you want to override it?"
):
click.secho("Keeping existing provider configuration.", fg="yellow")
return
selected_provider = select_provider(provider_models)
if not selected_provider:
return
provider = selected_provider
provider_models = get_provider_data()
if not provider_models:
return
selected_model = select_model(provider, provider_models)
if not selected_model:
return
model = selected_model
while True:
selected_provider = select_provider(provider_models)
if selected_provider is None: # User typed 'q'
click.secho("Exiting...", fg="yellow")
sys.exit(0)
if selected_provider: # Valid selection
break
click.secho(
"No provider selected. Please try again or press 'q' to exit.", fg="red"
)
if provider in PROVIDERS:
api_key_var = ENV_VARS[provider][0]
else:
api_key_var = click.prompt(
f"Enter the environment variable name for your {provider.capitalize()} API key",
type=str
)
# Check if the selected provider has predefined models
if selected_provider in MODELS and MODELS[selected_provider]:
while True:
selected_model = select_model(selected_provider, provider_models)
if selected_model is None: # User typed 'q'
click.secho("Exiting...", fg="yellow")
sys.exit(0)
if selected_model: # Valid selection
break
click.secho(
"No model selected. Please try again or press 'q' to exit.",
fg="red",
)
env_vars["MODEL"] = selected_model
env_vars = {api_key_var: "YOUR_API_KEY_HERE"}
write_env_file(folder_path, env_vars)
# Check if the selected provider requires API keys
if selected_provider in ENV_VARS:
provider_env_vars = ENV_VARS[selected_provider]
for details in provider_env_vars:
if details.get("default", False):
# Automatically add default key-value pairs
for key, value in details.items():
if key not in ["prompt", "key_name", "default"]:
env_vars[key] = value
elif "key_name" in details:
# Prompt for non-default key-value pairs
prompt = details["prompt"]
key_name = details["key_name"]
api_key_value = click.prompt(prompt, default="", show_default=False)
if api_key_value.strip():
env_vars[key_name] = api_key_value
if env_vars:
write_env_file(folder_path, env_vars)
click.secho("API keys and model saved to .env file", fg="green")
else:
click.secho(
"No API keys provided. Skipping .env file creation.", fg="yellow"
)
click.secho(f"Selected model: {env_vars.get('MODEL', 'N/A')}", fg="green")
env_vars['MODEL'] = model
click.secho(f"Selected model: {model}", fg="green")
package_dir = Path(__file__).parent
templates_dir = package_dir / "templates" / "crew"

View File

@@ -3,13 +3,12 @@ import subprocess
import click
def install_crew(proxy_options: list[str]) -> None:
def install_crew() -> None:
"""
Install the crew by running the UV command to lock and install.
"""
try:
command = ["uv", "sync"] + proxy_options
subprocess.run(command, check=True, capture_output=False, text=True)
subprocess.run(["uv", "sync"], check=True, capture_output=False, text=True)
except subprocess.CalledProcessError as e:
click.echo(f"An error occurred while running the crew: {e}", err=True)

View File

@@ -7,7 +7,7 @@ def plot_flow() -> None:
"""
Plot the flow by running a command in the UV environment.
"""
command = ["uv", "run", "plot"]
command = ["uv", "run", "plot_flow"]
try:
result = subprocess.run(command, capture_output=False, text=True, check=True)

View File

@@ -1,91 +1,67 @@
import json
import time
from collections import defaultdict
from pathlib import Path
import click
import requests
from crewai.cli.constants import JSON_URL, MODELS, PROVIDERS
from collections import defaultdict
import click
from pathlib import Path
from crewai.cli.constants import PROVIDERS, MODELS, JSON_URL
def select_choice(prompt_message, choices):
"""
Presents a list of choices to the user and prompts them to select one.
Args:
- prompt_message (str): The message to display to the user before presenting the choices.
- choices (list): A list of options to present to the user.
Returns:
- str: The selected choice from the list, or None if the user chooses to quit.
- str: The selected choice from the list, or None if the operation is aborted or an invalid selection is made.
"""
provider_models = get_provider_data()
if not provider_models:
return
click.secho(prompt_message, fg="cyan")
for idx, choice in enumerate(choices, start=1):
click.secho(f"{idx}. {choice}", fg="cyan")
click.secho("q. Quit", fg="cyan")
while True:
choice = click.prompt(
"Enter the number of your choice or 'q' to quit", type=str
)
if choice.lower() == "q":
return None
try:
selected_index = int(choice) - 1
if 0 <= selected_index < len(choices):
return choices[selected_index]
except ValueError:
pass
click.secho(
"Invalid selection. Please select a number between 1 and 6 or 'q' to quit.",
fg="red",
)
try:
selected_index = click.prompt("Enter the number of your choice", type=int) - 1
except click.exceptions.Abort:
click.secho("Operation aborted by the user.", fg="red")
return None
if not (0 <= selected_index < len(choices)):
click.secho("Invalid selection.", fg="red")
return None
return choices[selected_index]
def select_provider(provider_models):
"""
Presents a list of providers to the user and prompts them to select one.
Args:
- provider_models (dict): A dictionary of provider models.
Returns:
- str: The selected provider
- None: If user explicitly quits
- str: The selected provider, or None if the operation is aborted or an invalid selection is made.
"""
predefined_providers = [p.lower() for p in PROVIDERS]
all_providers = sorted(set(predefined_providers + list(provider_models.keys())))
provider = select_choice(
"Select a provider to set up:", predefined_providers + ["other"]
)
if provider is None: # User typed 'q'
provider = select_choice("Select a provider to set up:", predefined_providers + ['other'])
if not provider:
return None
provider = provider.lower()
if provider == "other":
if provider == 'other':
provider = select_choice("Select a provider from the full list:", all_providers)
if provider is None: # User typed 'q'
if not provider:
return None
return provider.lower() if provider else False
return provider
def select_model(provider, provider_models):
"""
Presents a list of models for a given provider to the user and prompts them to select one.
Args:
- provider (str): The provider for which to select a model.
- provider_models (dict): A dictionary of provider models.
Returns:
- str: The selected model, or None if the operation is aborted or an invalid selection is made.
"""
@@ -100,49 +76,37 @@ def select_model(provider, provider_models):
click.secho(f"No models available for provider '{provider}'.", fg="red")
return None
selected_model = select_choice(
f"Select a model to use for {provider.capitalize()}:", available_models
)
selected_model = select_choice(f"Select a model to use for {provider.capitalize()}:", available_models)
return selected_model
def load_provider_data(cache_file, cache_expiry):
"""
Loads provider data from a cache file if it exists and is not expired. If the cache is expired or corrupted, it fetches the data from the web.
Args:
- cache_file (Path): The path to the cache file.
- cache_expiry (int): The cache expiry time in seconds.
Returns:
- dict or None: The loaded provider data or None if the operation fails.
"""
current_time = time.time()
if (
cache_file.exists()
and (current_time - cache_file.stat().st_mtime) < cache_expiry
):
if cache_file.exists() and (current_time - cache_file.stat().st_mtime) < cache_expiry:
data = read_cache_file(cache_file)
if data:
return data
click.secho(
"Cache is corrupted. Fetching provider data from the web...", fg="yellow"
)
click.secho("Cache is corrupted. Fetching provider data from the web...", fg="yellow")
else:
click.secho(
"Cache expired or not found. Fetching provider data from the web...",
fg="cyan",
)
click.secho("Cache expired or not found. Fetching provider data from the web...", fg="cyan")
return fetch_provider_data(cache_file)
def read_cache_file(cache_file):
"""
Reads and returns the JSON content from a cache file. Returns None if the file contains invalid JSON.
Args:
- cache_file (Path): The path to the cache file.
Returns:
- dict or None: The JSON content of the cache file or None if the JSON is invalid.
"""
@@ -152,19 +116,18 @@ def read_cache_file(cache_file):
except json.JSONDecodeError:
return None
def fetch_provider_data(cache_file):
"""
Fetches provider data from a specified URL and caches it to a file.
Args:
- cache_file (Path): The path to the cache file.
Returns:
- dict or None: The fetched provider data or None if the operation fails.
"""
try:
response = requests.get(JSON_URL, stream=True, timeout=60)
response = requests.get(JSON_URL, stream=True, timeout=10)
response.raise_for_status()
data = download_data(response)
with open(cache_file, "w") as f:
@@ -176,42 +139,38 @@ def fetch_provider_data(cache_file):
click.secho("Error parsing provider data. Invalid JSON format.", fg="red")
return None
def download_data(response):
"""
Downloads data from a given HTTP response and returns the JSON content.
Args:
- response (requests.Response): The HTTP response object.
Returns:
- dict: The JSON content of the response.
"""
total_size = int(response.headers.get("content-length", 0))
total_size = int(response.headers.get('content-length', 0))
block_size = 8192
data_chunks = []
with click.progressbar(
length=total_size, label="Downloading", show_pos=True
) as progress_bar:
with click.progressbar(length=total_size, label='Downloading', show_pos=True) as progress_bar:
for chunk in response.iter_content(block_size):
if chunk:
data_chunks.append(chunk)
progress_bar.update(len(chunk))
data_content = b"".join(data_chunks)
return json.loads(data_content.decode("utf-8"))
data_content = b''.join(data_chunks)
return json.loads(data_content.decode('utf-8'))
def get_provider_data():
"""
Retrieves provider data from a cache file, filters out models based on provider criteria, and returns a dictionary of providers mapped to their models.
Returns:
- dict or None: A dictionary of providers mapped to their models or None if the operation fails.
"""
cache_dir = Path.home() / ".crewai"
cache_dir = Path.home() / '.crewai'
cache_dir.mkdir(exist_ok=True)
cache_file = cache_dir / "provider_cache.json"
cache_expiry = 24 * 3600
cache_file = cache_dir / 'provider_cache.json'
cache_expiry = 24 * 3600
data = load_provider_data(cache_file, cache_expiry)
if not data:
@@ -220,8 +179,8 @@ def get_provider_data():
provider_models = defaultdict(list)
for model_name, properties in data.items():
provider = properties.get("litellm_provider", "").strip().lower()
if "http" in provider or provider == "other":
if 'http' in provider or provider == 'other':
continue
if provider:
provider_models[provider].append(model_name)
return provider_models
return provider_models

View File

@@ -1,9 +1,10 @@
import subprocess
import click
import tomllib
from packaging import version
from crewai.cli.utils import get_crewai_version, read_toml
from crewai.cli.utils import get_crewai_version
def run_crew() -> None:
@@ -14,9 +15,10 @@ def run_crew() -> None:
crewai_version = get_crewai_version()
min_required_version = "0.71.0"
pyproject_data = read_toml()
with open("pyproject.toml", "rb") as f:
data = tomllib.load(f)
if pyproject_data.get("tool", {}).get("poetry") and (
if data.get("tool", {}).get("poetry") and (
version.parse(crewai_version) < version.parse(min_required_version)
):
click.secho(
@@ -24,6 +26,7 @@ def run_crew() -> None:
f"Please run `crewai update` to update your pyproject.toml to use uv.",
fg="red",
)
print()
try:
subprocess.run(command, capture_output=False, text=True, check=True)
@@ -32,7 +35,10 @@ def run_crew() -> None:
click.echo(f"An error occurred while running the crew: {e}", err=True)
click.echo(e.output, err=True, nl=True)
if pyproject_data.get("tool", {}).get("poetry"):
with open("pyproject.toml", "rb") as f:
data = tomllib.load(f)
if data.get("tool", {}).get("poetry"):
click.secho(
"It's possible that you are using an old version of crewAI that uses poetry, please run `crewai update` to update your pyproject.toml to use uv.",
fg="yellow",

View File

@@ -3,11 +3,11 @@ import subprocess
import click
def kickoff_flow() -> None:
def run_flow() -> None:
"""
Kickoff the flow by running a command in the UV environment.
Run the flow by running a command in the UV environment.
"""
command = ["uv", "run", "kickoff"]
command = ["uv", "run", "run_flow"]
try:
result = subprocess.run(command, capture_output=False, text=True, check=True)

View File

@@ -8,12 +8,9 @@ from crewai.project import CrewBase, agent, crew, task
# from crewai_tools import SerperDevTool
@CrewBase
class {{crew_name}}():
class {{crew_name}}Crew():
"""{{crew_name}} crew"""
agents_config = 'config/agents.yaml'
tasks_config = 'config/tasks.yaml'
@agent
def researcher(self) -> Agent:
return Agent(
@@ -51,4 +48,4 @@ class {{crew_name}}():
process=Process.sequential,
verbose=True,
# process=Process.hierarchical, # In case you wanna use that instead https://docs.crewai.com/how-to/Hierarchical/
)
)

View File

@@ -1,13 +1,9 @@
#!/usr/bin/env python
import sys
import warnings
from {{folder_name}}.crew import {{crew_name}}
warnings.filterwarnings("ignore", category=SyntaxWarning, module="pysbd")
from {{folder_name}}.crew import {{crew_name}}Crew
# This main file is intended to be a way for you to run your
# crew locally, so refrain from adding unnecessary logic into this file.
# crew locally, so refrain from adding necessary logic into this file.
# Replace with inputs you want to test with, it will automatically
# interpolate any tasks and agents information
@@ -18,7 +14,7 @@ def run():
inputs = {
'topic': 'AI LLMs'
}
{{crew_name}}().crew().kickoff(inputs=inputs)
{{crew_name}}Crew().crew().kickoff(inputs=inputs)
def train():
@@ -29,7 +25,7 @@ def train():
"topic": "AI LLMs"
}
try:
{{crew_name}}().crew().train(n_iterations=int(sys.argv[1]), filename=sys.argv[2], inputs=inputs)
{{crew_name}}Crew().crew().train(n_iterations=int(sys.argv[1]), filename=sys.argv[2], inputs=inputs)
except Exception as e:
raise Exception(f"An error occurred while training the crew: {e}")
@@ -39,7 +35,7 @@ def replay():
Replay the crew execution from a specific task.
"""
try:
{{crew_name}}().crew().replay(task_id=sys.argv[1])
{{crew_name}}Crew().crew().replay(task_id=sys.argv[1])
except Exception as e:
raise Exception(f"An error occurred while replaying the crew: {e}")
@@ -52,7 +48,7 @@ def test():
"topic": "AI LLMs"
}
try:
{{crew_name}}().crew().test(n_iterations=int(sys.argv[1]), openai_model_name=sys.argv[2], inputs=inputs)
{{crew_name}}Crew().crew().test(n_iterations=int(sys.argv[1]), openai_model_name=sys.argv[2], inputs=inputs)
except Exception as e:
raise Exception(f"An error occurred while replaying the crew: {e}")

View File

@@ -5,7 +5,7 @@ description = "{{name}} using crewAI"
authors = [{ name = "Your Name", email = "you@example.com" }]
requires-python = ">=3.10,<=3.13"
dependencies = [
"crewai[tools]>=0.79.4,<1.0.0"
"crewai[tools]>=0.67.1,<1.0.0"
]
[project.scripts]

View File

@@ -1,18 +1,11 @@
from crewai.tools import BaseTool
from typing import Type
from pydantic import BaseModel, Field
from crewai_tools import BaseTool
class MyCustomToolInput(BaseModel):
"""Input schema for MyCustomTool."""
argument: str = Field(..., description="Description of the argument.")
class MyCustomTool(BaseTool):
name: str = "Name of my tool"
description: str = (
"Clear description for what this tool is useful for, you agent will need this information to use it."
)
args_schema: Type[BaseModel] = MyCustomToolInput
def _run(self, argument: str) -> str:
# Implementation goes here

View File

@@ -1,53 +1,65 @@
#!/usr/bin/env python
import asyncio
from random import randint
from pydantic import BaseModel
from crewai.flow.flow import Flow, listen, start
from .crews.poem_crew.poem_crew import PoemCrew
class PoemState(BaseModel):
sentence_count: int = 1
poem: str = ""
class PoemFlow(Flow[PoemState]):
@start()
def generate_sentence_count(self):
print("Generating sentence count")
self.state.sentence_count = randint(1, 5)
# Generate a number between 1 and 5
self.state.sentence_count = randint(1, 5)
@listen(generate_sentence_count)
def generate_poem(self):
print("Generating poem")
result = (
PoemCrew()
.crew()
.kickoff(inputs={"sentence_count": self.state.sentence_count})
)
print(f"State before poem: {self.state}")
result = PoemCrew().crew().kickoff(inputs={"sentence_count": self.state.sentence_count})
print("Poem generated", result.raw)
self.state.poem = result.raw
print(f"State after generate_poem: {self.state}")
@listen(generate_poem)
def save_poem(self):
print("Saving poem")
print(f"State before save_poem: {self.state}")
with open("poem.txt", "w") as f:
f.write(self.state.poem)
print(f"State after save_poem: {self.state}")
def kickoff():
async def run_flow():
"""
Run the flow.
"""
poem_flow = PoemFlow()
poem_flow.kickoff()
await poem_flow.kickoff()
def plot():
async def plot_flow():
"""
Plot the flow.
"""
poem_flow = PoemFlow()
poem_flow.plot()
def main():
asyncio.run(run_flow())
def plot():
asyncio.run(plot_flow())
if __name__ == "__main__":
kickoff()
main()

View File

@@ -5,12 +5,14 @@ description = "{{name}} using crewAI"
authors = [{ name = "Your Name", email = "you@example.com" }]
requires-python = ">=3.10,<=3.13"
dependencies = [
"crewai[tools]>=0.79.4,<1.0.0",
"crewai[tools]>=0.67.1,<1.0.0",
"asyncio"
]
[project.scripts]
kickoff = "{{folder_name}}.main:kickoff"
plot = "{{folder_name}}.main:plot"
{{folder_name}} = "{{folder_name}}.main:main"
run_flow = "{{folder_name}}.main:main"
plot_flow = "{{folder_name}}.main:plot"
[build-system]
requires = ["hatchling"]

View File

@@ -1,13 +1,4 @@
from typing import Type
from crewai.tools import BaseTool
from pydantic import BaseModel, Field
class MyCustomToolInput(BaseModel):
"""Input schema for MyCustomTool."""
argument: str = Field(..., description="Description of the argument.")
from crewai_tools import BaseTool
class MyCustomTool(BaseTool):
@@ -15,7 +6,6 @@ class MyCustomTool(BaseTool):
description: str = (
"Clear description for what this tool is useful for, you agent will need this information to use it."
)
args_schema: Type[BaseModel] = MyCustomToolInput
def _run(self, argument: str) -> str:
# Implementation goes here

View File

@@ -6,7 +6,7 @@ authors = ["Your Name <you@example.com>"]
[tool.poetry.dependencies]
python = ">=3.10,<=3.13"
crewai = { extras = ["tools"], version = ">=0.79.4,<1.0.0" }
crewai = { extras = ["tools"], version = ">=0.70.1,<1.0.0" }
asyncio = "*"
[tool.poetry.scripts]

View File

@@ -1,18 +1,11 @@
from typing import Type
from crewai.tools import BaseTool
from pydantic import BaseModel, Field
from crewai_tools import BaseTool
class MyCustomToolInput(BaseModel):
"""Input schema for MyCustomTool."""
argument: str = Field(..., description="Description of the argument.")
class MyCustomTool(BaseTool):
name: str = "Name of my tool"
description: str = (
"Clear description for what this tool is useful for, you agent will need this information to use it."
)
args_schema: Type[BaseModel] = MyCustomToolInput
def _run(self, argument: str) -> str:
# Implementation goes here

View File

@@ -5,7 +5,7 @@ description = "{{name}} using crewAI"
authors = ["Your Name <you@example.com>"]
requires-python = ">=3.10,<=3.13"
dependencies = [
"crewai[tools]>=0.79.4,<1.0.0"
"crewai[tools]>=0.67.1,<1.0.0"
]
[project.scripts]

View File

@@ -1,18 +1,11 @@
from typing import Type
from crewai.tools import BaseTool
from pydantic import BaseModel, Field
from crewai_tools import BaseTool
class MyCustomToolInput(BaseModel):
"""Input schema for MyCustomTool."""
argument: str = Field(..., description="Description of the argument.")
class MyCustomTool(BaseTool):
name: str = "Name of my tool"
description: str = (
"Clear description for what this tool is useful for, you agent will need this information to use it."
)
args_schema: Type[BaseModel] = MyCustomToolInput
def _run(self, argument: str) -> str:
# Implementation goes here

View File

@@ -5,6 +5,6 @@ description = "Power up your crews with {{folder_name}}"
readme = "README.md"
requires-python = ">=3.10,<=3.13"
dependencies = [
"crewai[tools]>=0.79.4"
"crewai[tools]>=0.70.1"
]

View File

@@ -1,5 +1,4 @@
from crewai.tools import BaseTool
from crewai_tools import BaseTool
class {{class_name}}(BaseTool):
name: str = "Name of my tool"

View File

@@ -1,15 +1,17 @@
import base64
import os
import platform
import subprocess
import tempfile
from pathlib import Path
from netrc import netrc
import stat
import click
from rich.console import Console
from crewai.cli import git
from crewai.cli.command import BaseCommand, PlusAPIMixin
from crewai.cli.config import Settings
from crewai.cli.utils import (
get_project_description,
get_project_name,
@@ -26,6 +28,8 @@ class ToolCommand(BaseCommand, PlusAPIMixin):
A class to handle tool repository related operations for CrewAI projects.
"""
BASE_URL = "https://app.crewai.com/pypi/"
def __init__(self):
BaseCommand.__init__(self)
PlusAPIMixin.__init__(self, telemetry=self._telemetry)
@@ -151,35 +155,39 @@ class ToolCommand(BaseCommand, PlusAPIMixin):
raise SystemExit
login_response_json = login_response.json()
settings = Settings()
settings.tool_repository_username = login_response_json["credential"]["username"]
settings.tool_repository_password = login_response_json["credential"]["password"]
settings.dump()
self._set_netrc_credentials(login_response_json["credential"])
console.print(
"Successfully authenticated to the tool repository.", style="bold green"
)
def _set_netrc_credentials(self, credentials, netrc_path=None):
if not netrc_path:
netrc_filename = "_netrc" if platform.system() == "Windows" else ".netrc"
netrc_path = Path.home() / netrc_filename
netrc_path.touch(mode=stat.S_IRUSR | stat.S_IWUSR, exist_ok=True)
netrc_instance = netrc(file=netrc_path)
netrc_instance.hosts["app.crewai.com"] = (credentials["username"], "", credentials["password"])
with open(netrc_path, 'w') as file:
file.write(str(netrc_instance))
console.print(f"Added credentials to {netrc_path}", style="bold green")
def _add_package(self, tool_details):
tool_handle = tool_details["handle"]
repository_handle = tool_details["repository"]["handle"]
repository_url = tool_details["repository"]["url"]
index = f"{repository_handle}={repository_url}"
add_package_command = [
"uv",
"add",
"--index",
index,
"--extra-index-url",
self.BASE_URL + repository_handle,
tool_handle,
]
add_package_result = subprocess.run(
add_package_command,
capture_output=False,
env=self._build_env_with_credentials(repository_handle),
text=True,
check=True
add_package_command, capture_output=False, text=True, check=True
)
if add_package_result.stderr:
@@ -198,13 +206,3 @@ class ToolCommand(BaseCommand, PlusAPIMixin):
"[bold yellow]Tip:[/bold yellow] Navigate to a different directory and try again."
)
raise SystemExit
def _build_env_with_credentials(self, repository_handle: str):
repository_handle = repository_handle.upper().replace("-", "_")
settings = Settings()
env = os.environ.copy()
env[f"UV_INDEX_{repository_handle}_USERNAME"] = str(settings.tool_repository_username or "")
env[f"UV_INDEX_{repository_handle}_PASSWORD"] = str(settings.tool_repository_password or "")
return env

View File

@@ -1,9 +1,7 @@
import os
import shutil
import tomli_w
from crewai.cli.utils import read_toml
import tomllib
def update_crew() -> None:
@@ -19,9 +17,10 @@ def migrate_pyproject(input_file, output_file):
And it will be used to migrate the pyproject.toml to the new format when uv is used.
When the time comes that uv supports the new format, this function will be deprecated.
"""
poetry_data = {}
# Read the input pyproject.toml
pyproject_data = read_toml()
with open(input_file, "rb") as f:
pyproject = tomllib.load(f)
# Initialize the new project structure
new_pyproject = {
@@ -30,30 +29,30 @@ def migrate_pyproject(input_file, output_file):
}
# Migrate project metadata
if "tool" in pyproject_data and "poetry" in pyproject_data["tool"]:
poetry_data = pyproject_data["tool"]["poetry"]
new_pyproject["project"]["name"] = poetry_data.get("name")
new_pyproject["project"]["version"] = poetry_data.get("version")
new_pyproject["project"]["description"] = poetry_data.get("description")
if "tool" in pyproject and "poetry" in pyproject["tool"]:
poetry = pyproject["tool"]["poetry"]
new_pyproject["project"]["name"] = poetry.get("name")
new_pyproject["project"]["version"] = poetry.get("version")
new_pyproject["project"]["description"] = poetry.get("description")
new_pyproject["project"]["authors"] = [
{
"name": author.split("<")[0].strip(),
"email": author.split("<")[1].strip(">").strip(),
}
for author in poetry_data.get("authors", [])
for author in poetry.get("authors", [])
]
new_pyproject["project"]["requires-python"] = poetry_data.get("python")
new_pyproject["project"]["requires-python"] = poetry.get("python")
else:
# If it's already in the new format, just copy the project section
new_pyproject["project"] = pyproject_data.get("project", {})
new_pyproject["project"] = pyproject.get("project", {})
# Migrate or copy dependencies
if "dependencies" in new_pyproject["project"]:
# If dependencies are already in the new format, keep them as is
pass
elif poetry_data and "dependencies" in poetry_data:
elif "dependencies" in poetry:
new_pyproject["project"]["dependencies"] = []
for dep, version in poetry_data["dependencies"].items():
for dep, version in poetry["dependencies"].items():
if isinstance(version, dict): # Handle extras
extras = ",".join(version.get("extras", []))
new_dep = f"{dep}[{extras}]"
@@ -67,10 +66,10 @@ def migrate_pyproject(input_file, output_file):
new_pyproject["project"]["dependencies"].append(new_dep)
# Migrate or copy scripts
if poetry_data and "scripts" in poetry_data:
new_pyproject["project"]["scripts"] = poetry_data["scripts"]
elif pyproject_data.get("project", {}) and "scripts" in pyproject_data["project"]:
new_pyproject["project"]["scripts"] = pyproject_data["project"]["scripts"]
if "scripts" in poetry:
new_pyproject["project"]["scripts"] = poetry["scripts"]
elif "scripts" in pyproject.get("project", {}):
new_pyproject["project"]["scripts"] = pyproject["project"]["scripts"]
else:
new_pyproject["project"]["scripts"] = {}
@@ -87,23 +86,14 @@ def migrate_pyproject(input_file, output_file):
new_pyproject["project"]["scripts"]["run_crew"] = f"{module_name}.main:run"
# Migrate optional dependencies
if poetry_data and "extras" in poetry_data:
new_pyproject["project"]["optional-dependencies"] = poetry_data["extras"]
if "extras" in poetry:
new_pyproject["project"]["optional-dependencies"] = poetry["extras"]
# Backup the old pyproject.toml
backup_file = "pyproject-old.toml"
shutil.copy2(input_file, backup_file)
print(f"Original pyproject.toml backed up as {backup_file}")
# Rename the poetry.lock file
lock_file = "poetry.lock"
lock_backup = "poetry-old.lock"
if os.path.exists(lock_file):
os.rename(lock_file, lock_backup)
print(f"Original poetry.lock renamed to {lock_backup}")
else:
print("No poetry.lock file found to rename.")
# Write the new pyproject.toml
with open(output_file, "wb") as f:
tomli_w.dump(new_pyproject, f)

View File

@@ -6,7 +6,6 @@ from functools import reduce
from typing import Any, Dict, List
import click
import tomli
from rich.console import Console
from crewai.cli.authentication.utils import TokenManager
@@ -55,13 +54,6 @@ def simple_toml_parser(content):
return result
def read_toml(file_path: str = "pyproject.toml"):
"""Read the content of a TOML file and return it as a dictionary."""
with open(file_path, "rb") as f:
toml_dict = tomli.load(f)
return toml_dict
def parse_toml(content):
if sys.version_info >= (3, 11):
return tomllib.loads(content)

View File

@@ -27,13 +27,12 @@ from crewai.llm import LLM
from crewai.memory.entity.entity_memory import EntityMemory
from crewai.memory.long_term.long_term_memory import LongTermMemory
from crewai.memory.short_term.short_term_memory import ShortTermMemory
from crewai.memory.user.user_memory import UserMemory
from crewai.process import Process
from crewai.task import Task
from crewai.tasks.conditional_task import ConditionalTask
from crewai.tasks.task_output import TaskOutput
from crewai.telemetry import Telemetry
from crewai.tools.agent_tools.agent_tools import AgentTools
from crewai.tools.agent_tools import AgentTools
from crewai.types.usage_metrics import UsageMetrics
from crewai.utilities import I18N, FileHandler, Logger, RPMController
from crewai.utilities.constants import (
@@ -72,7 +71,6 @@ class Crew(BaseModel):
manager_llm: The language model that will run manager agent.
manager_agent: Custom agent that will be used as manager.
memory: Whether the crew should use memory to store memories of it's execution.
memory_config: Configuration for the memory to be used for the crew.
cache: Whether the crew should use a cache to store the results of the tools execution.
function_calling_llm: The language model that will run the tool calling for all the agents.
process: The process flow that the crew will follow (e.g., sequential, hierarchical).
@@ -96,7 +94,6 @@ class Crew(BaseModel):
_short_term_memory: Optional[InstanceOf[ShortTermMemory]] = PrivateAttr()
_long_term_memory: Optional[InstanceOf[LongTermMemory]] = PrivateAttr()
_entity_memory: Optional[InstanceOf[EntityMemory]] = PrivateAttr()
_user_memory: Optional[InstanceOf[UserMemory]] = PrivateAttr()
_train: Optional[bool] = PrivateAttr(default=False)
_train_iteration: Optional[int] = PrivateAttr()
_inputs: Optional[Dict[str, Any]] = PrivateAttr(default=None)
@@ -117,10 +114,6 @@ class Crew(BaseModel):
default=False,
description="Whether the crew should use memory to store memories of it's execution",
)
memory_config: Optional[Dict[str, Any]] = Field(
default=None,
description="Configuration for the memory to be used for the crew.",
)
short_term_memory: Optional[InstanceOf[ShortTermMemory]] = Field(
default=None,
description="An Instance of the ShortTermMemory to be used by the Crew",
@@ -133,12 +126,8 @@ class Crew(BaseModel):
default=None,
description="An Instance of the EntityMemory to be used by the Crew",
)
user_memory: Optional[InstanceOf[UserMemory]] = Field(
default=None,
description="An instance of the UserMemory to be used by the Crew to store/fetch memories of a specific user.",
)
embedder: Optional[dict] = Field(
default=None,
default={"provider": "openai"},
description="Configuration for the embedder to be used for the crew.",
)
usage_metrics: Optional[UsageMetrics] = Field(
@@ -249,22 +238,13 @@ class Crew(BaseModel):
self._short_term_memory = (
self.short_term_memory
if self.short_term_memory
else ShortTermMemory(
crew=self,
embedder_config=self.embedder,
)
else ShortTermMemory(crew=self, embedder_config=self.embedder)
)
self._entity_memory = (
self.entity_memory
if self.entity_memory
else EntityMemory(crew=self, embedder_config=self.embedder)
)
if hasattr(self, "memory_config") and self.memory_config is not None:
self._user_memory = (
self.user_memory if self.user_memory else UserMemory(crew=self)
)
else:
self._user_memory = None
return self
@model_validator(mode="after")
@@ -455,24 +435,22 @@ class Crew(BaseModel):
self, n_iterations: int, filename: str, inputs: Optional[Dict[str, Any]] = {}
) -> None:
"""Trains the crew for a given number of iterations."""
train_crew = self.copy()
train_crew._setup_for_training(filename)
self._setup_for_training(filename)
for n_iteration in range(n_iterations):
train_crew._train_iteration = n_iteration
train_crew.kickoff(inputs=inputs)
self._train_iteration = n_iteration
self.kickoff(inputs=inputs)
training_data = CrewTrainingHandler(TRAINING_DATA_FILE).load()
for agent in train_crew.agents:
if training_data.get(str(agent.id)):
result = TaskEvaluator(agent).evaluate_training_data(
training_data=training_data, agent_id=str(agent.id)
)
for agent in self.agents:
result = TaskEvaluator(agent).evaluate_training_data(
training_data=training_data, agent_id=str(agent.id)
)
CrewTrainingHandler(filename).save_trained_data(
agent_id=str(agent.role), trained_data=result.model_dump()
)
CrewTrainingHandler(filename).save_trained_data(
agent_id=str(agent.role), trained_data=result.model_dump()
)
def kickoff(
self,
@@ -796,9 +774,7 @@ class Crew(BaseModel):
def _log_task_start(self, task: Task, role: str = "None"):
if self.output_log_file:
self._file_handler.log(
task_name=task.name, task=task.description, agent=role, status="started"
)
self._file_handler.log(task_name=task.name, task=task.description, agent=role, status="started")
def _update_manager_tools(self, task: Task):
if self.manager_agent:
@@ -820,13 +796,7 @@ class Crew(BaseModel):
def _process_task_result(self, task: Task, output: TaskOutput) -> None:
role = task.agent.role if task.agent is not None else "None"
if self.output_log_file:
self._file_handler.log(
task_name=task.name,
task=task.description,
agent=role,
status="completed",
output=output.raw,
)
self._file_handler.log(task_name=task.name, task=task.description, agent=role, status="completed", output=output.raw)
def _create_crew_output(self, task_outputs: List[TaskOutput]) -> CrewOutput:
if len(task_outputs) != 1:
@@ -1009,19 +979,17 @@ class Crew(BaseModel):
inputs: Optional[Dict[str, Any]] = None,
) -> None:
"""Test and evaluate the Crew with the given inputs for n iterations concurrently using concurrent.futures."""
test_crew = self.copy()
self._test_execution_span = test_crew._telemetry.test_execution_span(
test_crew,
self._test_execution_span = self._telemetry.test_execution_span(
self,
n_iterations,
inputs,
openai_model_name, # type: ignore[arg-type]
) # type: ignore[arg-type]
evaluator = CrewEvaluator(test_crew, openai_model_name) # type: ignore[arg-type]
evaluator = CrewEvaluator(self, openai_model_name) # type: ignore[arg-type]
for i in range(1, n_iterations + 1):
evaluator.set_iteration(i)
test_crew.kickoff(inputs=inputs)
self.kickoff(inputs=inputs)
evaluator.print_crew_evaluation_result()

View File

@@ -1,20 +1,10 @@
# flow.py
import asyncio
import inspect
from typing import (
Any,
Callable,
Dict,
Generic,
List,
Optional,
Set,
Type,
TypeVar,
Union,
cast,
)
from typing import Any, Callable, Dict, Generic, List, Set, Type, TypeVar, Union
from pydantic import BaseModel, ValidationError
from pydantic import BaseModel
from crewai.flow.flow_visualizer import plot_flow
from crewai.flow.utils import get_possible_return_constants
@@ -130,7 +120,6 @@ class FlowMeta(type):
methods = attr_value.__trigger_methods__
condition_type = getattr(attr_value, "__condition_type__", "OR")
listeners[attr_name] = (condition_type, methods)
elif hasattr(attr_value, "__is_router__"):
routers[attr_value.__router_for__] = attr_name
possible_returns = get_possible_return_constants(attr_value)
@@ -170,7 +159,7 @@ class Flow(Generic[T], metaclass=FlowMeta):
def __init__(self) -> None:
self._methods: Dict[str, Callable] = {}
self._state: T = self._create_initial_state()
self._method_execution_counts: Dict[str, int] = {}
self._completed_methods: Set[str] = set()
self._pending_and_listeners: Dict[str, Set[str]] = {}
self._method_outputs: List[Any] = [] # List to store all method outputs
@@ -201,74 +190,7 @@ class Flow(Generic[T], metaclass=FlowMeta):
"""Returns the list of all outputs from executed methods."""
return self._method_outputs
def _initialize_state(self, inputs: Dict[str, Any]) -> None:
"""
Initializes or updates the state with the provided inputs.
Args:
inputs: Dictionary of inputs to initialize or update the state.
Raises:
ValueError: If inputs do not match the structured state model.
TypeError: If state is neither a BaseModel instance nor a dictionary.
"""
if isinstance(self._state, BaseModel):
# Structured state management
try:
# Define a function to create the dynamic class
def create_model_with_extra_forbid(
base_model: Type[BaseModel],
) -> Type[BaseModel]:
class ModelWithExtraForbid(base_model): # type: ignore
model_config = base_model.model_config.copy()
model_config["extra"] = "forbid"
return ModelWithExtraForbid
# Create the dynamic class
ModelWithExtraForbid = create_model_with_extra_forbid(
self._state.__class__
)
# Create a new instance using the combined state and inputs
self._state = cast(
T, ModelWithExtraForbid(**{**self._state.model_dump(), **inputs})
)
except ValidationError as e:
raise ValueError(f"Invalid inputs for structured state: {e}") from e
elif isinstance(self._state, dict):
# Unstructured state management
self._state.update(inputs)
else:
raise TypeError("State must be a BaseModel instance or a dictionary.")
def kickoff(self, inputs: Optional[Dict[str, Any]] = None) -> Any:
"""
Starts the execution of the flow synchronously.
Args:
inputs: Optional dictionary of inputs to initialize or update the state.
Returns:
The final output from the flow execution.
"""
if inputs is not None:
self._initialize_state(inputs)
return asyncio.run(self.kickoff_async())
async def kickoff_async(self, inputs: Optional[Dict[str, Any]] = None) -> Any:
"""
Starts the execution of the flow asynchronously.
Args:
inputs: Optional dictionary of inputs to initialize or update the state.
Returns:
The final output from the flow execution.
"""
if inputs is not None:
self._initialize_state(inputs)
async def kickoff(self) -> Any:
if not self._start_methods:
raise ValueError("No start method defined")
@@ -291,27 +213,17 @@ class Flow(Generic[T], metaclass=FlowMeta):
else:
return None # Or raise an exception if no methods were executed
async def _execute_start_method(self, start_method_name: str) -> None:
result = await self._execute_method(
start_method_name, self._methods[start_method_name]
)
await self._execute_listeners(start_method_name, result)
async def _execute_start_method(self, start_method: str) -> None:
result = await self._execute_method(self._methods[start_method])
await self._execute_listeners(start_method, result)
async def _execute_method(
self, method_name: str, method: Callable, *args: Any, **kwargs: Any
) -> Any:
async def _execute_method(self, method: Callable, *args: Any, **kwargs: Any) -> Any:
result = (
await method(*args, **kwargs)
if asyncio.iscoroutinefunction(method)
else method(*args, **kwargs)
)
self._method_outputs.append(result) # Store the output
# Track method execution counts
self._method_execution_counts[method_name] = (
self._method_execution_counts.get(method_name, 0) + 1
)
return result
async def _execute_listeners(self, trigger_method: str, result: Any) -> None:
@@ -319,39 +231,32 @@ class Flow(Generic[T], metaclass=FlowMeta):
if trigger_method in self._routers:
router_method = self._methods[self._routers[trigger_method]]
path = await self._execute_method(
self._routers[trigger_method], router_method
)
path = await self._execute_method(router_method)
# Use the path as the new trigger method
trigger_method = path
for listener_name, (condition_type, methods) in self._listeners.items():
for listener, (condition_type, methods) in self._listeners.items():
if condition_type == "OR":
if trigger_method in methods:
# Schedule the listener without preventing re-execution
listener_tasks.append(
self._execute_single_listener(listener_name, result)
self._execute_single_listener(listener, result)
)
elif condition_type == "AND":
# Initialize pending methods for this listener if not already done
if listener_name not in self._pending_and_listeners:
self._pending_and_listeners[listener_name] = set(methods)
# Remove the trigger method from pending methods
self._pending_and_listeners[listener_name].discard(trigger_method)
if not self._pending_and_listeners[listener_name]:
# All required methods have been executed
if listener not in self._pending_and_listeners:
self._pending_and_listeners[listener] = set()
self._pending_and_listeners[listener].add(trigger_method)
if set(methods) == self._pending_and_listeners[listener]:
listener_tasks.append(
self._execute_single_listener(listener_name, result)
self._execute_single_listener(listener, result)
)
# Reset pending methods for this listener
self._pending_and_listeners.pop(listener_name, None)
del self._pending_and_listeners[listener]
# Run all listener tasks concurrently and wait for them to complete
if listener_tasks:
await asyncio.gather(*listener_tasks)
await asyncio.gather(*listener_tasks)
async def _execute_single_listener(self, listener_name: str, result: Any) -> None:
async def _execute_single_listener(self, listener: str, result: Any) -> None:
try:
method = self._methods[listener_name]
method = self._methods[listener]
sig = inspect.signature(method)
params = list(sig.parameters.values())
@@ -360,19 +265,15 @@ class Flow(Generic[T], metaclass=FlowMeta):
if method_params:
# If listener expects parameters, pass the result
listener_result = await self._execute_method(
listener_name, method, result
)
listener_result = await self._execute_method(method, result)
else:
# If listener does not expect parameters, call without arguments
listener_result = await self._execute_method(listener_name, method)
listener_result = await self._execute_method(method)
# Execute listeners of this listener
await self._execute_listeners(listener_name, listener_result)
await self._execute_listeners(listener, listener_result)
except Exception as e:
print(
f"[Flow._execute_single_listener] Error in method {listener_name}: {e}"
)
print(f"[Flow._execute_single_listener] Error in method {listener}: {e}")
import traceback
traceback.print_exc()

View File

@@ -1,10 +1,7 @@
import io
import logging
import sys
import warnings
from contextlib import contextmanager
from typing import Any, Dict, List, Optional, Union
import logging
import warnings
import litellm
from litellm import get_supported_openai_params
@@ -12,6 +9,9 @@ from crewai.utilities.exceptions.context_window_exceeding_exception import (
LLMContextLengthExceededException,
)
import sys
import io
class FilteredStream(io.StringIO):
def write(self, s):
@@ -118,12 +118,12 @@ class LLM:
litellm.drop_params = True
litellm.set_verbose = False
self.set_callbacks(callbacks)
litellm.callbacks = callbacks
def call(self, messages: List[Dict[str, str]], callbacks: List[Any] = []) -> str:
with suppress_warnings():
if callbacks and len(callbacks) > 0:
self.set_callbacks(callbacks)
litellm.callbacks = callbacks
try:
params = {
@@ -181,15 +181,3 @@ class LLM:
def get_context_window_size(self) -> int:
# Only using 75% of the context window size to avoid cutting the message in the middle
return int(LLM_CONTEXT_WINDOW_SIZES.get(self.model, 8192) * 0.75)
def set_callbacks(self, callbacks: List[Any]):
callback_types = [type(callback) for callback in callbacks]
for callback in litellm.success_callback[:]:
if type(callback) in callback_types:
litellm.success_callback.remove(callback)
for callback in litellm._async_success_callback[:]:
if type(callback) in callback_types:
litellm._async_success_callback.remove(callback)
litellm.callbacks = callbacks

View File

@@ -1,6 +1,5 @@
from .entity.entity_memory import EntityMemory
from .long_term.long_term_memory import LongTermMemory
from .short_term.short_term_memory import ShortTermMemory
from .user.user_memory import UserMemory
__all__ = ["UserMemory", "EntityMemory", "LongTermMemory", "ShortTermMemory"]
__all__ = ["EntityMemory", "LongTermMemory", "ShortTermMemory"]

View File

@@ -1,25 +1,13 @@
from typing import Optional, Dict, Any
from typing import Optional
from crewai.memory import EntityMemory, LongTermMemory, ShortTermMemory, UserMemory
from crewai.memory import EntityMemory, LongTermMemory, ShortTermMemory
class ContextualMemory:
def __init__(
self,
memory_config: Optional[Dict[str, Any]],
stm: ShortTermMemory,
ltm: LongTermMemory,
em: EntityMemory,
um: UserMemory,
):
if memory_config is not None:
self.memory_provider = memory_config.get("provider")
else:
self.memory_provider = None
def __init__(self, stm: ShortTermMemory, ltm: LongTermMemory, em: EntityMemory):
self.stm = stm
self.ltm = ltm
self.em = em
self.um = um
def build_context_for_task(self, task, context) -> str:
"""
@@ -35,8 +23,6 @@ class ContextualMemory:
context.append(self._fetch_ltm_context(task.description))
context.append(self._fetch_stm_context(query))
context.append(self._fetch_entity_context(query))
if self.memory_provider == "mem0":
context.append(self._fetch_user_context(query))
return "\n".join(filter(None, context))
def _fetch_stm_context(self, query) -> str:
@@ -45,12 +31,7 @@ class ContextualMemory:
formatted as bullet points.
"""
stm_results = self.stm.search(query)
formatted_results = "\n".join(
[
f"- {result['memory'] if self.memory_provider == 'mem0' else result['context']}"
for result in stm_results
]
)
formatted_results = "\n".join([f"- {result}" for result in stm_results])
return f"Recent Insights:\n{formatted_results}" if stm_results else ""
def _fetch_ltm_context(self, task) -> Optional[str]:
@@ -79,26 +60,6 @@ class ContextualMemory:
"""
em_results = self.em.search(query)
formatted_results = "\n".join(
[
f"- {result['memory'] if self.memory_provider == 'mem0' else result['context']}"
for result in em_results
] # type: ignore # Invalid index type "str" for "str"; expected type "SupportsIndex | slice"
[f"- {result['context']}" for result in em_results] # type: ignore # Invalid index type "str" for "str"; expected type "SupportsIndex | slice"
)
return f"Entities:\n{formatted_results}" if em_results else ""
def _fetch_user_context(self, query: str) -> str:
"""
Fetches and formats relevant user information from User Memory.
Args:
query (str): The search query to find relevant user memories.
Returns:
str: Formatted user memories as bullet points, or an empty string if none found.
"""
user_memories = self.um.search(query)
if not user_memories:
return ""
formatted_memories = "\n".join(
f"- {result['memory']}" for result in user_memories
)
return f"User memories/preferences:\n{formatted_memories}"

View File

@@ -11,43 +11,21 @@ class EntityMemory(Memory):
"""
def __init__(self, crew=None, embedder_config=None, storage=None):
if hasattr(crew, "memory_config") and crew.memory_config is not None:
self.memory_provider = crew.memory_config.get("provider")
else:
self.memory_provider = None
if self.memory_provider == "mem0":
try:
from crewai.memory.storage.mem0_storage import Mem0Storage
except ImportError:
raise ImportError(
"Mem0 is not installed. Please install it with `pip install mem0ai`."
)
storage = Mem0Storage(type="entities", crew=crew)
else:
storage = (
storage
if storage
else RAGStorage(
type="entities",
allow_reset=True,
embedder_config=embedder_config,
crew=crew,
)
storage = (
storage
if storage
else RAGStorage(
type="entities",
allow_reset=False,
embedder_config=embedder_config,
crew=crew,
)
)
super().__init__(storage)
def save(self, item: EntityMemoryItem) -> None: # type: ignore # BUG?: Signature of "save" incompatible with supertype "Memory"
"""Saves an entity item into the SQLite storage."""
if self.memory_provider == "mem0":
data = f"""
Remember details about the following entity:
Name: {item.name}
Type: {item.type}
Entity Description: {item.description}
"""
else:
data = f"{item.name}({item.type}): {item.description}"
data = f"{item.name}({item.type}): {item.description}"
super().save(data, item.metadata)
def reset(self) -> None:

View File

@@ -1,4 +1,4 @@
from typing import Any, Dict, List
from typing import Any, Dict
from crewai.memory.long_term.long_term_memory_item import LongTermMemoryItem
from crewai.memory.memory import Memory
@@ -28,7 +28,7 @@ class LongTermMemory(Memory):
datetime=item.datetime,
)
def search(self, task: str, latest_n: int = 3) -> List[Dict[str, Any]]: # type: ignore # signature of "search" incompatible with supertype "Memory"
def search(self, task: str, latest_n: int = 3) -> Dict[str, Any]:
return self.storage.load(task, latest_n) # type: ignore # BUG?: "Storage" has no attribute "load"
def reset(self) -> None:

View File

@@ -1,6 +1,6 @@
from typing import Any, Dict, Optional, List
from typing import Any, Dict, Optional
from crewai.memory.storage.rag_storage import RAGStorage
from crewai.memory.storage.interface import Storage
class Memory:
@@ -8,7 +8,7 @@ class Memory:
Base class for memory, now supporting agent tags and generic metadata.
"""
def __init__(self, storage: RAGStorage):
def __init__(self, storage: Storage):
self.storage = storage
def save(
@@ -23,12 +23,5 @@ class Memory:
self.storage.save(value, metadata)
def search(
self,
query: str,
limit: int = 3,
score_threshold: float = 0.35,
) -> List[Any]:
return self.storage.search(
query=query, limit=limit, score_threshold=score_threshold
)
def search(self, query: str) -> Dict[str, Any]:
return self.storage.search(query)

View File

@@ -14,27 +14,13 @@ class ShortTermMemory(Memory):
"""
def __init__(self, crew=None, embedder_config=None, storage=None):
if hasattr(crew, "memory_config") and crew.memory_config is not None:
self.memory_provider = crew.memory_config.get("provider")
else:
self.memory_provider = None
if self.memory_provider == "mem0":
try:
from crewai.memory.storage.mem0_storage import Mem0Storage
except ImportError:
raise ImportError(
"Mem0 is not installed. Please install it with `pip install mem0ai`."
)
storage = Mem0Storage(type="short_term", crew=crew)
else:
storage = (
storage
if storage
else RAGStorage(
type="short_term", embedder_config=embedder_config, crew=crew
)
storage = (
storage
if storage
else RAGStorage(
type="short_term", embedder_config=embedder_config, crew=crew
)
)
super().__init__(storage)
def save(
@@ -44,20 +30,11 @@ class ShortTermMemory(Memory):
agent: Optional[str] = None,
) -> None:
item = ShortTermMemoryItem(data=value, metadata=metadata, agent=agent)
if self.memory_provider == "mem0":
item.data = f"Remember the following insights from Agent run: {item.data}"
super().save(value=item.data, metadata=item.metadata, agent=item.agent)
def search(
self,
query: str,
limit: int = 3,
score_threshold: float = 0.35,
):
return self.storage.search(
query=query, limit=limit, score_threshold=score_threshold
) # type: ignore # BUG? The reference is to the parent class, but the parent class does not have this parameters
def search(self, query: str, score_threshold: float = 0.35):
return self.storage.search(query=query, score_threshold=score_threshold) # type: ignore # BUG? The reference is to the parent class, but the parent class does not have this parameters
def reset(self) -> None:
try:

View File

@@ -1,76 +0,0 @@
from abc import ABC, abstractmethod
from typing import Any, Dict, List, Optional
class BaseRAGStorage(ABC):
"""
Base class for RAG-based Storage implementations.
"""
app: Any | None = None
def __init__(
self,
type: str,
allow_reset: bool = True,
embedder_config: Optional[Any] = None,
crew: Any = None,
):
self.type = type
self.allow_reset = allow_reset
self.embedder_config = embedder_config
self.crew = crew
self.agents = self._initialize_agents()
def _initialize_agents(self) -> str:
if self.crew:
return "_".join(
[self._sanitize_role(agent.role) for agent in self.crew.agents]
)
return ""
@abstractmethod
def _sanitize_role(self, role: str) -> str:
"""Sanitizes agent roles to ensure valid directory names."""
pass
@abstractmethod
def save(self, value: Any, metadata: Dict[str, Any]) -> None:
"""Save a value with metadata to the storage."""
pass
@abstractmethod
def search(
self,
query: str,
limit: int = 3,
filter: Optional[dict] = None,
score_threshold: float = 0.35,
) -> List[Any]:
"""Search for entries in the storage."""
pass
@abstractmethod
def reset(self) -> None:
"""Reset the storage."""
pass
@abstractmethod
def _generate_embedding(
self, text: str, metadata: Optional[Dict[str, Any]] = None
) -> Any:
"""Generate an embedding for the given text and metadata."""
pass
@abstractmethod
def _initialize_app(self):
"""Initialize the vector db."""
pass
def setup_config(self, config: Dict[str, Any]):
"""Setup the config of the storage."""
pass
def initialize_client(self):
"""Initialize the client of the storage. This should setup the app and the db collection"""
pass

View File

@@ -1,4 +1,4 @@
from typing import Any, Dict, List
from typing import Any, Dict
class Storage:
@@ -7,10 +7,8 @@ class Storage:
def save(self, value: Any, metadata: Dict[str, Any]) -> None:
pass
def search(
self, query: str, limit: int, score_threshold: float
) -> Dict[str, Any] | List[Any]:
return {}
def search(self, key: str) -> Dict[str, Any]: # type: ignore
pass
def reset(self) -> None:
pass

View File

@@ -70,7 +70,7 @@ class KickoffTaskOutputsSQLiteStorage:
task.expected_output,
json.dumps(output, cls=CrewJSONEncoder),
task_index,
json.dumps(inputs, cls=CrewJSONEncoder),
json.dumps(inputs),
was_replayed,
),
)
@@ -103,7 +103,7 @@ class KickoffTaskOutputsSQLiteStorage:
else value
)
query = f"UPDATE latest_kickoff_task_outputs SET {', '.join(fields)} WHERE task_index = ?" # nosec
query = f"UPDATE latest_kickoff_task_outputs SET {', '.join(fields)} WHERE task_index = ?"
values.append(task_index)
cursor.execute(query, tuple(values))

View File

@@ -83,7 +83,7 @@ class LTMSQLiteStorage:
WHERE task_description = ?
ORDER BY datetime DESC, score ASC
LIMIT {latest_n}
""", # nosec
""",
(task_description,),
)
rows = cursor.fetchall()

View File

@@ -1,104 +0,0 @@
import os
from typing import Any, Dict, List
from mem0 import MemoryClient
from crewai.memory.storage.interface import Storage
class Mem0Storage(Storage):
"""
Extends Storage to handle embedding and searching across entities using Mem0.
"""
def __init__(self, type, crew=None):
super().__init__()
if type not in ["user", "short_term", "long_term", "entities"]:
raise ValueError("Invalid type for Mem0Storage. Must be 'user' or 'agent'.")
self.memory_type = type
self.crew = crew
self.memory_config = crew.memory_config
# User ID is required for user memory type "user" since it's used as a unique identifier for the user.
user_id = self._get_user_id()
if type == "user" and not user_id:
raise ValueError("User ID is required for user memory type")
# API key in memory config overrides the environment variable
mem0_api_key = self.memory_config.get("config", {}).get("api_key") or os.getenv(
"MEM0_API_KEY"
)
self.memory = MemoryClient(api_key=mem0_api_key)
def _sanitize_role(self, role: str) -> str:
"""
Sanitizes agent roles to ensure valid directory names.
"""
return role.replace("\n", "").replace(" ", "_").replace("/", "_")
def save(self, value: Any, metadata: Dict[str, Any]) -> None:
user_id = self._get_user_id()
agent_name = self._get_agent_name()
if self.memory_type == "user":
self.memory.add(value, user_id=user_id, metadata={**metadata})
elif self.memory_type == "short_term":
agent_name = self._get_agent_name()
self.memory.add(
value, agent_id=agent_name, metadata={"type": "short_term", **metadata}
)
elif self.memory_type == "long_term":
agent_name = self._get_agent_name()
self.memory.add(
value,
agent_id=agent_name,
infer=False,
metadata={"type": "long_term", **metadata},
)
elif self.memory_type == "entities":
entity_name = None
self.memory.add(
value, user_id=entity_name, metadata={"type": "entity", **metadata}
)
def search(
self,
query: str,
limit: int = 3,
score_threshold: float = 0.35,
) -> List[Any]:
params = {"query": query, "limit": limit}
if self.memory_type == "user":
user_id = self._get_user_id()
params["user_id"] = user_id
elif self.memory_type == "short_term":
agent_name = self._get_agent_name()
params["agent_id"] = agent_name
params["metadata"] = {"type": "short_term"}
elif self.memory_type == "long_term":
agent_name = self._get_agent_name()
params["agent_id"] = agent_name
params["metadata"] = {"type": "long_term"}
elif self.memory_type == "entities":
agent_name = self._get_agent_name()
params["agent_id"] = agent_name
params["metadata"] = {"type": "entity"}
# Discard the filters for now since we create the filters
# automatically when the crew is created.
results = self.memory.search(**params)
return [r for r in results if r["score"] >= score_threshold]
def _get_user_id(self):
if self.memory_type == "user":
if hasattr(self, "memory_config") and self.memory_config is not None:
return self.memory_config.get("config", {}).get("user_id")
else:
return None
return None
def _get_agent_name(self):
agents = self.crew.agents if self.crew else []
agents = [self._sanitize_role(agent.role) for agent in agents]
agents = "_".join(agents)
return agents

View File

@@ -3,13 +3,9 @@ import io
import logging
import os
import shutil
import uuid
from typing import Any, Dict, List, Optional, cast
from typing import Any, Dict, List, Optional
from chromadb import Documents, EmbeddingFunction, Embeddings
from chromadb.api import ClientAPI
from chromadb.api.types import validate_embedding_function
from crewai.memory.storage.base_rag_storage import BaseRAGStorage
from crewai.memory.storage.interface import Storage
from crewai.utilities.paths import db_storage_path
@@ -21,184 +17,68 @@ def suppress_logging(
logger = logging.getLogger(logger_name)
original_level = logger.getEffectiveLevel()
logger.setLevel(level)
with (
contextlib.redirect_stdout(io.StringIO()),
contextlib.redirect_stderr(io.StringIO()),
contextlib.suppress(UserWarning),
):
with contextlib.redirect_stdout(io.StringIO()), contextlib.redirect_stderr(
io.StringIO()
), contextlib.suppress(UserWarning):
yield
logger.setLevel(original_level)
class RAGStorage(BaseRAGStorage):
class RAGStorage(Storage):
"""
Extends Storage to handle embeddings for memory entries, improving
search efficiency.
"""
app: ClientAPI | None = None
def __init__(self, type, allow_reset=True, embedder_config=None, crew=None):
super().__init__(type, allow_reset, embedder_config, crew)
super().__init__()
if (
not os.getenv("OPENAI_API_KEY")
and not os.getenv("OPENAI_BASE_URL") == "https://api.openai.com/v1"
):
os.environ["OPENAI_API_KEY"] = "fake"
agents = crew.agents if crew else []
agents = [self._sanitize_role(agent.role) for agent in agents]
agents = "_".join(agents)
self.agents = agents
config = {
"app": {
"config": {"name": type, "collect_metrics": False, "log_level": "ERROR"}
},
"chunker": {
"chunk_size": 5000,
"chunk_overlap": 100,
"length_function": "len",
"min_chunk_size": 150,
},
"vectordb": {
"provider": "chroma",
"config": {
"collection_name": type,
"dir": f"{db_storage_path()}/{type}/{agents}",
"allow_reset": allow_reset,
},
},
}
if embedder_config:
config["embedder"] = embedder_config
self.type = type
self.config = config
self.allow_reset = allow_reset
self._initialize_app()
def _set_embedder_config(self):
if self.embedder_config is None:
self.embedder_config = self._create_default_embedding_function()
if isinstance(self.embedder_config, dict):
provider = self.embedder_config.get("provider")
config = self.embedder_config.get("config", {})
model_name = config.get("model")
if provider == "openai":
from chromadb.utils.embedding_functions.openai_embedding_function import (
OpenAIEmbeddingFunction,
)
self.embedder_config = OpenAIEmbeddingFunction(
api_key=config.get("api_key") or os.getenv("OPENAI_API_KEY"),
model_name=model_name,
)
elif provider == "azure":
from chromadb.utils.embedding_functions.openai_embedding_function import (
OpenAIEmbeddingFunction,
)
self.embedder_config = OpenAIEmbeddingFunction(
api_key=config.get("api_key"),
api_base=config.get("api_base"),
api_type=config.get("api_type", "azure"),
api_version=config.get("api_version"),
model_name=model_name,
)
elif provider == "ollama":
from chromadb.utils.embedding_functions.ollama_embedding_function import (
OllamaEmbeddingFunction,
)
self.embedder_config = OllamaEmbeddingFunction(
url=config.get("url", "http://localhost:11434/api/embeddings"),
model_name=model_name,
)
elif provider == "vertexai":
from chromadb.utils.embedding_functions.google_embedding_function import (
GoogleVertexEmbeddingFunction,
)
self.embedder_config = GoogleVertexEmbeddingFunction(
model_name=model_name,
api_key=config.get("api_key"),
)
elif provider == "google":
from chromadb.utils.embedding_functions.google_embedding_function import (
GoogleGenerativeAiEmbeddingFunction,
)
self.embedder_config = GoogleGenerativeAiEmbeddingFunction(
model_name=model_name,
api_key=config.get("api_key"),
)
elif provider == "cohere":
from chromadb.utils.embedding_functions.cohere_embedding_function import (
CohereEmbeddingFunction,
)
self.embedder_config = CohereEmbeddingFunction(
model_name=model_name,
api_key=config.get("api_key"),
)
elif provider == "bedrock":
from chromadb.utils.embedding_functions.amazon_bedrock_embedding_function import (
AmazonBedrockEmbeddingFunction,
)
self.embedder_config = AmazonBedrockEmbeddingFunction(
session=config.get("session"),
)
elif provider == "huggingface":
from chromadb.utils.embedding_functions.huggingface_embedding_function import (
HuggingFaceEmbeddingServer,
)
self.embedder_config = HuggingFaceEmbeddingServer(
url=config.get("api_url"),
)
elif provider == "watson":
try:
import ibm_watsonx_ai.foundation_models as watson_models
from ibm_watsonx_ai import Credentials
from ibm_watsonx_ai.metanames import (
EmbedTextParamsMetaNames as EmbedParams,
)
except ImportError as e:
raise ImportError(
"IBM Watson dependencies are not installed. Please install them to use Watson embedding."
) from e
class WatsonEmbeddingFunction(EmbeddingFunction):
def __call__(self, input: Documents) -> Embeddings:
if isinstance(input, str):
input = [input]
embed_params = {
EmbedParams.TRUNCATE_INPUT_TOKENS: 3,
EmbedParams.RETURN_OPTIONS: {"input_text": True},
}
embedding = watson_models.Embeddings(
model_id=config.get("model"),
params=embed_params,
credentials=Credentials(
api_key=config.get("api_key"), url=config.get("api_url")
),
project_id=config.get("project_id"),
)
try:
embeddings = embedding.embed_documents(input)
return cast(Embeddings, embeddings)
except Exception as e:
print("Error during Watson embedding:", e)
raise e
self.embedder_config = WatsonEmbeddingFunction()
else:
raise Exception(
f"Unsupported embedding provider: {provider}, supported providers: [openai, azure, ollama, vertexai, google, cohere, huggingface, watson]"
)
else:
validate_embedding_function(self.embedder_config)
self.embedder_config = self.embedder_config
def _initialize_app(self):
import chromadb
from chromadb.config import Settings
from embedchain import App
from embedchain.llm.base import BaseLlm
self._set_embedder_config()
chroma_client = chromadb.PersistentClient(
path=f"{db_storage_path()}/{self.type}/{self.agents}",
settings=Settings(allow_reset=self.allow_reset),
)
class FakeLLM(BaseLlm):
pass
self.app = chroma_client
try:
self.collection = self.app.get_collection(
name=self.type, embedding_function=self.embedder_config
)
except Exception:
self.collection = self.app.create_collection(
name=self.type, embedding_function=self.embedder_config
)
self.app = App.from_config(config=self.config)
self.app.llm = FakeLLM()
if self.allow_reset:
self.app.reset()
def _sanitize_role(self, role: str) -> str:
"""
@@ -207,14 +87,11 @@ class RAGStorage(BaseRAGStorage):
return role.replace("\n", "").replace(" ", "_").replace("/", "_")
def save(self, value: Any, metadata: Dict[str, Any]) -> None:
if not hasattr(self, "app") or not hasattr(self, "collection"):
if not hasattr(self, "app"):
self._initialize_app()
try:
self._generate_embedding(value, metadata)
except Exception as e:
logging.error(f"Error during {self.type} save: {str(e)}")
self._generate_embedding(value, metadata)
def search(
def search( # type: ignore # BUG?: Signature of "search" incompatible with supertype "Storage"
self,
query: str,
limit: int = 3,
@@ -223,56 +100,31 @@ class RAGStorage(BaseRAGStorage):
) -> List[Any]:
if not hasattr(self, "app"):
self._initialize_app()
from embedchain.vectordb.chroma import InvalidDimensionException
try:
with suppress_logging():
response = self.collection.query(query_texts=query, n_results=limit)
with suppress_logging():
try:
results = (
self.app.search(query, limit, where=filter)
if filter
else self.app.search(query, limit)
)
except InvalidDimensionException:
self.app.reset()
return []
return [r for r in results if r["metadata"]["score"] >= score_threshold]
results = []
for i in range(len(response["ids"][0])):
result = {
"id": response["ids"][0][i],
"metadata": response["metadatas"][0][i],
"context": response["documents"][0][i],
"score": response["distances"][0][i],
}
if result["score"] >= score_threshold:
results.append(result)
return results
except Exception as e:
logging.error(f"Error during {self.type} search: {str(e)}")
return []
def _generate_embedding(self, text: str, metadata: Dict[str, Any]) -> None: # type: ignore
if not hasattr(self, "app") or not hasattr(self, "collection"):
def _generate_embedding(self, text: str, metadata: Dict[str, Any]) -> Any:
if not hasattr(self, "app"):
self._initialize_app()
from embedchain.models.data_type import DataType
self.collection.add(
documents=[text],
metadatas=[metadata or {}],
ids=[str(uuid.uuid4())],
)
self.app.add(text, data_type=DataType.TEXT, metadata=metadata)
def reset(self) -> None:
try:
shutil.rmtree(f"{db_storage_path()}/{self.type}")
if self.app:
self.app.reset()
except Exception as e:
if "attempt to write a readonly database" in str(e):
# Ignore this specific error
pass
else:
raise Exception(
f"An error occurred while resetting the {self.type} memory: {e}"
)
def _create_default_embedding_function(self):
from chromadb.utils.embedding_functions.openai_embedding_function import (
OpenAIEmbeddingFunction,
)
return OpenAIEmbeddingFunction(
api_key=os.getenv("OPENAI_API_KEY"), model_name="text-embedding-3-small"
)
raise Exception(
f"An error occurred while resetting the {self.type} memory: {e}"
)

View File

@@ -1,45 +0,0 @@
from typing import Any, Dict, Optional
from crewai.memory.memory import Memory
class UserMemory(Memory):
"""
UserMemory class for handling user memory storage and retrieval.
Inherits from the Memory class and utilizes an instance of a class that
adheres to the Storage for data storage, specifically working with
MemoryItem instances.
"""
def __init__(self, crew=None):
try:
from crewai.memory.storage.mem0_storage import Mem0Storage
except ImportError:
raise ImportError(
"Mem0 is not installed. Please install it with `pip install mem0ai`."
)
storage = Mem0Storage(type="user", crew=crew)
super().__init__(storage)
def save(
self,
value,
metadata: Optional[Dict[str, Any]] = None,
agent: Optional[str] = None,
) -> None:
# TODO: Change this function since we want to take care of the case where we save memories for the usr
data = f"Remember the details about the user: {value}"
super().save(data, metadata)
def search(
self,
query: str,
limit: int = 3,
score_threshold: float = 0.35,
):
results = super().search(
query=query,
limit=limit,
score_threshold=score_threshold,
)
return results

View File

@@ -1,8 +0,0 @@
from typing import Any, Dict, Optional
class UserMemoryItem:
def __init__(self, data: Any, user: str, metadata: Optional[Dict[str, Any]] = None):
self.data = data
self.user = user
self.metadata = metadata if metadata is not None else {}

View File

@@ -76,13 +76,27 @@ def crew(func) -> Callable[..., Crew]:
instantiated_agents = []
agent_roles = set()
# Use the preserved task and agent information
tasks = self._original_tasks.items()
agents = self._original_agents.items()
# Collect methods from crew in order
all_functions = [
(name, getattr(self, name))
for name, attr in self.__class__.__dict__.items()
if callable(attr)
]
tasks = [
(name, method)
for name, method in all_functions
if hasattr(method, "is_task")
]
agents = [
(name, method)
for name, method in all_functions
if hasattr(method, "is_agent")
]
# Instantiate tasks in order
for task_name, task_method in tasks:
task_instance = task_method(self)
task_instance = task_method()
instantiated_tasks.append(task_instance)
agent_instance = getattr(task_instance, "agent", None)
if agent_instance and agent_instance.role not in agent_roles:
@@ -91,7 +105,7 @@ def crew(func) -> Callable[..., Crew]:
# Instantiate agents not included by tasks
for agent_name, agent_method in agents:
agent_instance = agent_method(self)
agent_instance = agent_method()
if agent_instance.role not in agent_roles:
instantiated_agents.append(agent_instance)
agent_roles.add(agent_instance.role)

View File

@@ -34,18 +34,6 @@ def CrewBase(cls: T) -> T:
self.map_all_agent_variables()
self.map_all_task_variables()
# Preserve task and agent information
self._original_tasks = {
name: method
for name, method in cls.__dict__.items()
if hasattr(method, "is_task") and method.is_task
}
self._original_agents = {
name: method
for name, method in cls.__dict__.items()
if hasattr(method, "is_agent") and method.is_agent
}
@staticmethod
def load_yaml(config_path: Path):
try:

View File

@@ -20,7 +20,6 @@ from pydantic import (
from pydantic_core import PydanticCustomError
from crewai.agents.agent_builder.base_agent import BaseAgent
from crewai.tools.base_tool import BaseTool
from crewai.tasks.output_format import OutputFormat
from crewai.tasks.task_output import TaskOutput
from crewai.telemetry.telemetry import Telemetry
@@ -92,7 +91,7 @@ class Task(BaseModel):
output: Optional[TaskOutput] = Field(
description="Task output, it's final result after being executed", default=None
)
tools: Optional[List[BaseTool]] = Field(
tools: Optional[List[Any]] = Field(
default_factory=list,
description="Tools the agent is limited to use for this task.",
)
@@ -186,7 +185,7 @@ class Task(BaseModel):
self,
agent: Optional[BaseAgent] = None,
context: Optional[str] = None,
tools: Optional[List[BaseTool]] = None,
tools: Optional[List[Any]] = None,
) -> TaskOutput:
"""Execute the task synchronously."""
return self._execute_core(agent, context, tools)
@@ -203,7 +202,7 @@ class Task(BaseModel):
self,
agent: BaseAgent | None = None,
context: Optional[str] = None,
tools: Optional[List[BaseTool]] = None,
tools: Optional[List[Any]] = None,
) -> Future[TaskOutput]:
"""Execute the task asynchronously."""
future: Future[TaskOutput] = Future()

View File

@@ -21,7 +21,7 @@ with suppress_warnings():
from opentelemetry import trace # noqa: E402
from opentelemetry.exporter.otlp.proto.http.trace_exporter import OTLPSpanExporter # noqa: E402
from opentelemetry.exporter.otlp.proto.http.trace_exporter import OTLPSpanExporter # noqa: E402
from opentelemetry.sdk.resources import SERVICE_NAME, Resource # noqa: E402
from opentelemetry.sdk.trace import TracerProvider # noqa: E402
from opentelemetry.sdk.trace.export import BatchSpanProcessor # noqa: E402
@@ -48,10 +48,6 @@ class Telemetry:
def __init__(self):
self.ready = False
self.trace_set = False
if os.getenv("OTEL_SDK_DISABLED", "false").lower() == "true":
return
try:
telemetry_endpoint = "https://telemetry.crewai.com:4319"
self.resource = Resource(
@@ -69,7 +65,7 @@ class Telemetry:
self.provider.add_span_processor(processor)
self.ready = True
except Exception as e:
except BaseException as e:
if isinstance(
e,
(SystemExit, KeyboardInterrupt, GeneratorExit, asyncio.CancelledError),
@@ -87,33 +83,404 @@ class Telemetry:
self.ready = False
self.trace_set = False
def _safe_telemetry_operation(self, operation):
if not self.ready:
return
try:
operation()
except Exception:
pass
def crew_creation(self, crew: Crew, inputs: dict[str, Any] | None):
"""Records the creation of a crew."""
if self.ready:
try:
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Crew Created")
self._add_attribute(
span,
"crewai_version",
pkg_resources.get_distribution("crewai").version,
)
self._add_attribute(span, "python_version", platform.python_version())
self._add_attribute(span, "crew_key", crew.key)
self._add_attribute(span, "crew_id", str(crew.id))
self._add_attribute(span, "crew_process", crew.process)
self._add_attribute(span, "crew_memory", crew.memory)
self._add_attribute(span, "crew_number_of_tasks", len(crew.tasks))
self._add_attribute(span, "crew_number_of_agents", len(crew.agents))
if crew.share_crew:
self._add_attribute(
span,
"crew_agents",
json.dumps(
[
{
"key": agent.key,
"id": str(agent.id),
"role": agent.role,
"goal": agent.goal,
"backstory": agent.backstory,
"verbose?": agent.verbose,
"max_iter": agent.max_iter,
"max_rpm": agent.max_rpm,
"i18n": agent.i18n.prompt_file,
"function_calling_llm": (
agent.function_calling_llm.model
if agent.function_calling_llm
else ""
),
"llm": agent.llm.model,
"delegation_enabled?": agent.allow_delegation,
"allow_code_execution?": agent.allow_code_execution,
"max_retry_limit": agent.max_retry_limit,
"tools_names": [
tool.name.casefold()
for tool in agent.tools or []
],
}
for agent in crew.agents
]
),
)
self._add_attribute(
span,
"crew_tasks",
json.dumps(
[
{
"key": task.key,
"id": str(task.id),
"description": task.description,
"expected_output": task.expected_output,
"async_execution?": task.async_execution,
"human_input?": task.human_input,
"agent_role": (
task.agent.role if task.agent else "None"
),
"agent_key": task.agent.key if task.agent else None,
"context": (
[task.description for task in task.context]
if task.context
else None
),
"tools_names": [
tool.name.casefold()
for tool in task.tools or []
],
}
for task in crew.tasks
]
),
)
self._add_attribute(span, "platform", platform.platform())
self._add_attribute(span, "platform_release", platform.release())
self._add_attribute(span, "platform_system", platform.system())
self._add_attribute(span, "platform_version", platform.version())
self._add_attribute(span, "cpus", os.cpu_count())
self._add_attribute(
span, "crew_inputs", json.dumps(inputs) if inputs else None
)
else:
self._add_attribute(
span,
"crew_agents",
json.dumps(
[
{
"key": agent.key,
"id": str(agent.id),
"role": agent.role,
"verbose?": agent.verbose,
"max_iter": agent.max_iter,
"max_rpm": agent.max_rpm,
"function_calling_llm": (
agent.function_calling_llm.model
if agent.function_calling_llm
else ""
),
"llm": agent.llm.model,
"delegation_enabled?": agent.allow_delegation,
"allow_code_execution?": agent.allow_code_execution,
"max_retry_limit": agent.max_retry_limit,
"tools_names": [
tool.name.casefold()
for tool in agent.tools or []
],
}
for agent in crew.agents
]
),
)
self._add_attribute(
span,
"crew_tasks",
json.dumps(
[
{
"key": task.key,
"id": str(task.id),
"async_execution?": task.async_execution,
"human_input?": task.human_input,
"agent_role": (
task.agent.role if task.agent else "None"
),
"agent_key": task.agent.key if task.agent else None,
"tools_names": [
tool.name.casefold()
for tool in task.tools or []
],
}
for task in crew.tasks
]
),
)
span.set_status(Status(StatusCode.OK))
span.end()
except Exception:
pass
def operation():
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Crew Created")
self._add_attribute(
span,
"crewai_version",
pkg_resources.get_distribution("crewai").version,
)
self._add_attribute(span, "python_version", platform.python_version())
self._add_attribute(span, "crew_key", crew.key)
self._add_attribute(span, "crew_id", str(crew.id))
self._add_attribute(span, "crew_process", crew.process)
self._add_attribute(span, "crew_memory", crew.memory)
self._add_attribute(span, "crew_number_of_tasks", len(crew.tasks))
self._add_attribute(span, "crew_number_of_agents", len(crew.agents))
if crew.share_crew:
def task_started(self, crew: Crew, task: Task) -> Span | None:
"""Records task started in a crew."""
if self.ready:
try:
tracer = trace.get_tracer("crewai.telemetry")
created_span = tracer.start_span("Task Created")
self._add_attribute(created_span, "crew_key", crew.key)
self._add_attribute(created_span, "crew_id", str(crew.id))
self._add_attribute(created_span, "task_key", task.key)
self._add_attribute(created_span, "task_id", str(task.id))
if crew.share_crew:
self._add_attribute(
created_span, "formatted_description", task.description
)
self._add_attribute(
created_span, "formatted_expected_output", task.expected_output
)
created_span.set_status(Status(StatusCode.OK))
created_span.end()
span = tracer.start_span("Task Execution")
self._add_attribute(span, "crew_key", crew.key)
self._add_attribute(span, "crew_id", str(crew.id))
self._add_attribute(span, "task_key", task.key)
self._add_attribute(span, "task_id", str(task.id))
if crew.share_crew:
self._add_attribute(span, "formatted_description", task.description)
self._add_attribute(
span, "formatted_expected_output", task.expected_output
)
return span
except Exception:
pass
return None
def task_ended(self, span: Span, task: Task, crew: Crew):
"""Records task execution in a crew."""
if self.ready:
try:
if crew.share_crew:
self._add_attribute(
span,
"task_output",
task.output.raw if task.output else "",
)
span.set_status(Status(StatusCode.OK))
span.end()
except Exception:
pass
def tool_repeated_usage(self, llm: Any, tool_name: str, attempts: int):
"""Records the repeated usage 'error' of a tool by an agent."""
if self.ready:
try:
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Tool Repeated Usage")
self._add_attribute(
span,
"crewai_version",
pkg_resources.get_distribution("crewai").version,
)
self._add_attribute(span, "tool_name", tool_name)
self._add_attribute(span, "attempts", attempts)
if llm:
self._add_attribute(span, "llm", llm.model)
span.set_status(Status(StatusCode.OK))
span.end()
except Exception:
pass
def tool_usage(self, llm: Any, tool_name: str, attempts: int):
"""Records the usage of a tool by an agent."""
if self.ready:
try:
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Tool Usage")
self._add_attribute(
span,
"crewai_version",
pkg_resources.get_distribution("crewai").version,
)
self._add_attribute(span, "tool_name", tool_name)
self._add_attribute(span, "attempts", attempts)
if llm:
self._add_attribute(span, "llm", llm.model)
span.set_status(Status(StatusCode.OK))
span.end()
except Exception:
pass
def tool_usage_error(self, llm: Any):
"""Records the usage of a tool by an agent."""
if self.ready:
try:
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Tool Usage Error")
self._add_attribute(
span,
"crewai_version",
pkg_resources.get_distribution("crewai").version,
)
if llm:
self._add_attribute(span, "llm", llm.model)
span.set_status(Status(StatusCode.OK))
span.end()
except Exception:
pass
def individual_test_result_span(
self, crew: Crew, quality: float, exec_time: int, model_name: str
):
if self.ready:
try:
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Crew Individual Test Result")
self._add_attribute(
span,
"crewai_version",
pkg_resources.get_distribution("crewai").version,
)
self._add_attribute(span, "crew_key", crew.key)
self._add_attribute(span, "crew_id", str(crew.id))
self._add_attribute(span, "quality", str(quality))
self._add_attribute(span, "exec_time", str(exec_time))
self._add_attribute(span, "model_name", model_name)
span.set_status(Status(StatusCode.OK))
span.end()
except Exception:
pass
def test_execution_span(
self,
crew: Crew,
iterations: int,
inputs: dict[str, Any] | None,
model_name: str,
):
if self.ready:
try:
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Crew Test Execution")
self._add_attribute(
span,
"crewai_version",
pkg_resources.get_distribution("crewai").version,
)
self._add_attribute(span, "crew_key", crew.key)
self._add_attribute(span, "crew_id", str(crew.id))
self._add_attribute(span, "iterations", str(iterations))
self._add_attribute(span, "model_name", model_name)
if crew.share_crew:
self._add_attribute(
span, "inputs", json.dumps(inputs) if inputs else None
)
span.set_status(Status(StatusCode.OK))
span.end()
except Exception:
pass
def deploy_signup_error_span(self):
if self.ready:
try:
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Deploy Signup Error")
span.set_status(Status(StatusCode.OK))
span.end()
except Exception:
pass
def start_deployment_span(self, uuid: Optional[str] = None):
if self.ready:
try:
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Start Deployment")
if uuid:
self._add_attribute(span, "uuid", uuid)
span.set_status(Status(StatusCode.OK))
span.end()
except Exception:
pass
def create_crew_deployment_span(self):
if self.ready:
try:
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Create Crew Deployment")
span.set_status(Status(StatusCode.OK))
span.end()
except Exception:
pass
def get_crew_logs_span(self, uuid: Optional[str], log_type: str = "deployment"):
if self.ready:
try:
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Get Crew Logs")
self._add_attribute(span, "log_type", log_type)
if uuid:
self._add_attribute(span, "uuid", uuid)
span.set_status(Status(StatusCode.OK))
span.end()
except Exception:
pass
def remove_crew_span(self, uuid: Optional[str] = None):
if self.ready:
try:
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Remove Crew")
if uuid:
self._add_attribute(span, "uuid", uuid)
span.set_status(Status(StatusCode.OK))
span.end()
except Exception:
pass
def crew_execution_span(self, crew: Crew, inputs: dict[str, Any] | None):
"""Records the complete execution of a crew.
This is only collected if the user has opted-in to share the crew.
"""
self.crew_creation(crew, inputs)
if (self.ready) and (crew.share_crew):
try:
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Crew Execution")
self._add_attribute(
span,
"crewai_version",
pkg_resources.get_distribution("crewai").version,
)
self._add_attribute(span, "crew_key", crew.key)
self._add_attribute(span, "crew_id", str(crew.id))
self._add_attribute(
span, "crew_inputs", json.dumps(inputs) if inputs else None
)
self._add_attribute(
span,
"crew_agents",
@@ -129,15 +496,8 @@ class Telemetry:
"max_iter": agent.max_iter,
"max_rpm": agent.max_rpm,
"i18n": agent.i18n.prompt_file,
"function_calling_llm": (
agent.function_calling_llm.model
if agent.function_calling_llm
else ""
),
"llm": agent.llm.model,
"delegation_enabled?": agent.allow_delegation,
"allow_code_execution?": agent.allow_code_execution,
"max_retry_limit": agent.max_retry_limit,
"tools_names": [
tool.name.casefold() for tool in agent.tools or []
],
@@ -152,15 +512,12 @@ class Telemetry:
json.dumps(
[
{
"key": task.key,
"id": str(task.id),
"description": task.description,
"expected_output": task.expected_output,
"async_execution?": task.async_execution,
"human_input?": task.human_input,
"agent_role": (
task.agent.role if task.agent else "None"
),
"agent_role": task.agent.role if task.agent else "None",
"agent_key": task.agent.key if task.agent else None,
"context": (
[task.description for task in task.context]
@@ -175,433 +532,78 @@ class Telemetry:
]
),
)
self._add_attribute(span, "platform", platform.platform())
self._add_attribute(span, "platform_release", platform.release())
self._add_attribute(span, "platform_system", platform.system())
self._add_attribute(span, "platform_version", platform.version())
self._add_attribute(span, "cpus", os.cpu_count())
return span
except Exception:
pass
def end_crew(self, crew, final_string_output):
if (self.ready) and (crew.share_crew):
try:
self._add_attribute(
span, "crew_inputs", json.dumps(inputs) if inputs else None
crew._execution_span,
"crewai_version",
pkg_resources.get_distribution("crewai").version,
)
else:
self._add_attribute(
span,
"crew_agents",
crew._execution_span, "crew_output", final_string_output
)
self._add_attribute(
crew._execution_span,
"crew_tasks_output",
json.dumps(
[
{
"key": agent.key,
"id": str(agent.id),
"role": agent.role,
"verbose?": agent.verbose,
"max_iter": agent.max_iter,
"max_rpm": agent.max_rpm,
"function_calling_llm": (
agent.function_calling_llm.model
if agent.function_calling_llm
else ""
),
"llm": agent.llm.model,
"delegation_enabled?": agent.allow_delegation,
"allow_code_execution?": agent.allow_code_execution,
"max_retry_limit": agent.max_retry_limit,
"tools_names": [
tool.name.casefold() for tool in agent.tools or []
],
}
for agent in crew.agents
]
),
)
self._add_attribute(
span,
"crew_tasks",
json.dumps(
[
{
"key": task.key,
"id": str(task.id),
"async_execution?": task.async_execution,
"human_input?": task.human_input,
"agent_role": (
task.agent.role if task.agent else "None"
),
"agent_key": task.agent.key if task.agent else None,
"tools_names": [
tool.name.casefold() for tool in task.tools or []
],
"description": task.description,
"output": task.output.raw_output,
}
for task in crew.tasks
]
),
)
span.set_status(Status(StatusCode.OK))
span.end()
self._safe_telemetry_operation(operation)
def task_started(self, crew: Crew, task: Task) -> Span | None:
"""Records task started in a crew."""
def operation():
tracer = trace.get_tracer("crewai.telemetry")
created_span = tracer.start_span("Task Created")
self._add_attribute(created_span, "crew_key", crew.key)
self._add_attribute(created_span, "crew_id", str(crew.id))
self._add_attribute(created_span, "task_key", task.key)
self._add_attribute(created_span, "task_id", str(task.id))
if crew.share_crew:
self._add_attribute(
created_span, "formatted_description", task.description
)
self._add_attribute(
created_span, "formatted_expected_output", task.expected_output
)
created_span.set_status(Status(StatusCode.OK))
created_span.end()
span = tracer.start_span("Task Execution")
self._add_attribute(span, "crew_key", crew.key)
self._add_attribute(span, "crew_id", str(crew.id))
self._add_attribute(span, "task_key", task.key)
self._add_attribute(span, "task_id", str(task.id))
if crew.share_crew:
self._add_attribute(span, "formatted_description", task.description)
self._add_attribute(
span, "formatted_expected_output", task.expected_output
)
return span
return self._safe_telemetry_operation(operation)
def task_ended(self, span: Span, task: Task, crew: Crew):
"""Records task execution in a crew."""
def operation():
if crew.share_crew:
self._add_attribute(
span,
"task_output",
task.output.raw if task.output else "",
)
span.set_status(Status(StatusCode.OK))
span.end()
self._safe_telemetry_operation(operation)
def tool_repeated_usage(self, llm: Any, tool_name: str, attempts: int):
"""Records the repeated usage 'error' of a tool by an agent."""
def operation():
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Tool Repeated Usage")
self._add_attribute(
span,
"crewai_version",
pkg_resources.get_distribution("crewai").version,
)
self._add_attribute(span, "tool_name", tool_name)
self._add_attribute(span, "attempts", attempts)
if llm:
self._add_attribute(span, "llm", llm.model)
span.set_status(Status(StatusCode.OK))
span.end()
self._safe_telemetry_operation(operation)
def tool_usage(self, llm: Any, tool_name: str, attempts: int):
"""Records the usage of a tool by an agent."""
def operation():
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Tool Usage")
self._add_attribute(
span,
"crewai_version",
pkg_resources.get_distribution("crewai").version,
)
self._add_attribute(span, "tool_name", tool_name)
self._add_attribute(span, "attempts", attempts)
if llm:
self._add_attribute(span, "llm", llm.model)
span.set_status(Status(StatusCode.OK))
span.end()
self._safe_telemetry_operation(operation)
def tool_usage_error(self, llm: Any):
"""Records the usage of a tool by an agent."""
def operation():
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Tool Usage Error")
self._add_attribute(
span,
"crewai_version",
pkg_resources.get_distribution("crewai").version,
)
if llm:
self._add_attribute(span, "llm", llm.model)
span.set_status(Status(StatusCode.OK))
span.end()
self._safe_telemetry_operation(operation)
def individual_test_result_span(
self, crew: Crew, quality: float, exec_time: int, model_name: str
):
def operation():
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Crew Individual Test Result")
self._add_attribute(
span,
"crewai_version",
pkg_resources.get_distribution("crewai").version,
)
self._add_attribute(span, "crew_key", crew.key)
self._add_attribute(span, "crew_id", str(crew.id))
self._add_attribute(span, "quality", str(quality))
self._add_attribute(span, "exec_time", str(exec_time))
self._add_attribute(span, "model_name", model_name)
span.set_status(Status(StatusCode.OK))
span.end()
self._safe_telemetry_operation(operation)
def test_execution_span(
self,
crew: Crew,
iterations: int,
inputs: dict[str, Any] | None,
model_name: str,
):
def operation():
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Crew Test Execution")
self._add_attribute(
span,
"crewai_version",
pkg_resources.get_distribution("crewai").version,
)
self._add_attribute(span, "crew_key", crew.key)
self._add_attribute(span, "crew_id", str(crew.id))
self._add_attribute(span, "iterations", str(iterations))
self._add_attribute(span, "model_name", model_name)
if crew.share_crew:
self._add_attribute(
span, "inputs", json.dumps(inputs) if inputs else None
)
span.set_status(Status(StatusCode.OK))
span.end()
self._safe_telemetry_operation(operation)
def deploy_signup_error_span(self):
def operation():
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Deploy Signup Error")
span.set_status(Status(StatusCode.OK))
span.end()
self._safe_telemetry_operation(operation)
def start_deployment_span(self, uuid: Optional[str] = None):
def operation():
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Start Deployment")
if uuid:
self._add_attribute(span, "uuid", uuid)
span.set_status(Status(StatusCode.OK))
span.end()
self._safe_telemetry_operation(operation)
def create_crew_deployment_span(self):
def operation():
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Create Crew Deployment")
span.set_status(Status(StatusCode.OK))
span.end()
self._safe_telemetry_operation(operation)
def get_crew_logs_span(self, uuid: Optional[str], log_type: str = "deployment"):
def operation():
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Get Crew Logs")
self._add_attribute(span, "log_type", log_type)
if uuid:
self._add_attribute(span, "uuid", uuid)
span.set_status(Status(StatusCode.OK))
span.end()
self._safe_telemetry_operation(operation)
def remove_crew_span(self, uuid: Optional[str] = None):
def operation():
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Remove Crew")
if uuid:
self._add_attribute(span, "uuid", uuid)
span.set_status(Status(StatusCode.OK))
span.end()
self._safe_telemetry_operation(operation)
def crew_execution_span(self, crew: Crew, inputs: dict[str, Any] | None):
"""Records the complete execution of a crew.
This is only collected if the user has opted-in to share the crew.
"""
self.crew_creation(crew, inputs)
def operation():
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Crew Execution")
self._add_attribute(
span,
"crewai_version",
pkg_resources.get_distribution("crewai").version,
)
self._add_attribute(span, "crew_key", crew.key)
self._add_attribute(span, "crew_id", str(crew.id))
self._add_attribute(
span, "crew_inputs", json.dumps(inputs) if inputs else None
)
self._add_attribute(
span,
"crew_agents",
json.dumps(
[
{
"key": agent.key,
"id": str(agent.id),
"role": agent.role,
"goal": agent.goal,
"backstory": agent.backstory,
"verbose?": agent.verbose,
"max_iter": agent.max_iter,
"max_rpm": agent.max_rpm,
"i18n": agent.i18n.prompt_file,
"llm": agent.llm.model,
"delegation_enabled?": agent.allow_delegation,
"tools_names": [
tool.name.casefold() for tool in agent.tools or []
],
}
for agent in crew.agents
]
),
)
self._add_attribute(
span,
"crew_tasks",
json.dumps(
[
{
"id": str(task.id),
"description": task.description,
"expected_output": task.expected_output,
"async_execution?": task.async_execution,
"human_input?": task.human_input,
"agent_role": task.agent.role if task.agent else "None",
"agent_key": task.agent.key if task.agent else None,
"context": (
[task.description for task in task.context]
if task.context
else None
),
"tools_names": [
tool.name.casefold() for tool in task.tools or []
],
}
for task in crew.tasks
]
),
)
return span
if crew.share_crew:
return self._safe_telemetry_operation(operation)
return None
def end_crew(self, crew, final_string_output):
def operation():
self._add_attribute(
crew._execution_span,
"crewai_version",
pkg_resources.get_distribution("crewai").version,
)
self._add_attribute(
crew._execution_span, "crew_output", final_string_output
)
self._add_attribute(
crew._execution_span,
"crew_tasks_output",
json.dumps(
[
{
"id": str(task.id),
"description": task.description,
"output": task.output.raw_output,
}
for task in crew.tasks
]
),
)
crew._execution_span.set_status(Status(StatusCode.OK))
crew._execution_span.end()
if crew.share_crew:
self._safe_telemetry_operation(operation)
crew._execution_span.set_status(Status(StatusCode.OK))
crew._execution_span.end()
except Exception:
pass
def _add_attribute(self, span, key, value):
"""Add an attribute to a span."""
def operation():
try:
return span.set_attribute(key, value)
self._safe_telemetry_operation(operation)
except Exception:
pass
def flow_creation_span(self, flow_name: str):
def operation():
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Flow Creation")
self._add_attribute(span, "flow_name", flow_name)
span.set_status(Status(StatusCode.OK))
span.end()
self._safe_telemetry_operation(operation)
if self.ready:
try:
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Flow Creation")
self._add_attribute(span, "flow_name", flow_name)
span.set_status(Status(StatusCode.OK))
span.end()
except Exception:
pass
def flow_plotting_span(self, flow_name: str, node_names: list[str]):
def operation():
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Flow Plotting")
self._add_attribute(span, "flow_name", flow_name)
self._add_attribute(span, "node_names", json.dumps(node_names))
span.set_status(Status(StatusCode.OK))
span.end()
self._safe_telemetry_operation(operation)
if self.ready:
try:
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Flow Plotting")
self._add_attribute(span, "flow_name", flow_name)
self._add_attribute(span, "node_names", json.dumps(node_names))
span.set_status(Status(StatusCode.OK))
span.end()
except Exception:
pass
def flow_execution_span(self, flow_name: str, node_names: list[str]):
def operation():
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Flow Execution")
self._add_attribute(span, "flow_name", flow_name)
self._add_attribute(span, "node_names", json.dumps(node_names))
span.set_status(Status(StatusCode.OK))
span.end()
self._safe_telemetry_operation(operation)
if self.ready:
try:
tracer = trace.get_tracer("crewai.telemetry")
span = tracer.start_span("Flow Execution")
self._add_attribute(span, "flow_name", flow_name)
self._add_attribute(span, "node_names", json.dumps(node_names))
span.set_status(Status(StatusCode.OK))
span.end()
except Exception:
pass

View File

@@ -1 +0,0 @@
from .base_tool import BaseTool, tool

View File

@@ -0,0 +1,25 @@
from crewai.agents.agent_builder.utilities.base_agent_tool import BaseAgentTools
class AgentTools(BaseAgentTools):
"""Default tools around agent delegation"""
def tools(self):
from langchain.tools import StructuredTool
coworkers = ", ".join([f"{agent.role}" for agent in self.agents])
tools = [
StructuredTool.from_function(
func=self.delegate_work,
name="Delegate work to coworker",
description=self.i18n.tools("delegate_work").format(
coworkers=coworkers
),
),
StructuredTool.from_function(
func=self.ask_question,
name="Ask question to coworker",
description=self.i18n.tools("ask_question").format(coworkers=coworkers),
),
]
return tools

View File

@@ -1,32 +0,0 @@
from crewai.tools.base_tool import BaseTool
from crewai.agents.agent_builder.base_agent import BaseAgent
from crewai.utilities import I18N
from .delegate_work_tool import DelegateWorkTool
from .ask_question_tool import AskQuestionTool
class AgentTools:
"""Manager class for agent-related tools"""
def __init__(self, agents: list[BaseAgent], i18n: I18N = I18N()):
self.agents = agents
self.i18n = i18n
def tools(self) -> list[BaseTool]:
"""Get all available agent tools"""
coworkers = ", ".join([f"{agent.role}" for agent in self.agents])
delegate_tool = DelegateWorkTool(
agents=self.agents,
i18n=self.i18n,
description=self.i18n.tools("delegate_work").format(coworkers=coworkers),
)
ask_tool = AskQuestionTool(
agents=self.agents,
i18n=self.i18n,
description=self.i18n.tools("ask_question").format(coworkers=coworkers),
)
return [delegate_tool, ask_tool]

View File

@@ -1,26 +0,0 @@
from crewai.tools.agent_tools.base_agent_tools import BaseAgentTool
from typing import Optional
from pydantic import BaseModel, Field
class AskQuestionToolSchema(BaseModel):
question: str = Field(..., description="The question to ask")
context: str = Field(..., description="The context for the question")
coworker: str = Field(..., description="The role/name of the coworker to ask")
class AskQuestionTool(BaseAgentTool):
"""Tool for asking questions to coworkers"""
name: str = "Ask question to coworker"
args_schema: type[BaseModel] = AskQuestionToolSchema
def _run(
self,
question: str,
context: str,
coworker: Optional[str] = None,
**kwargs,
) -> str:
coworker = self._get_coworker(coworker, **kwargs)
return self._execute(coworker, question, context)

View File

@@ -1,29 +0,0 @@
from crewai.tools.agent_tools.base_agent_tools import BaseAgentTool
from typing import Optional
from pydantic import BaseModel, Field
class DelegateWorkToolSchema(BaseModel):
task: str = Field(..., description="The task to delegate")
context: str = Field(..., description="The context for the task")
coworker: str = Field(
..., description="The role/name of the coworker to delegate to"
)
class DelegateWorkTool(BaseAgentTool):
"""Tool for delegating work to coworkers"""
name: str = "Delegate work to coworker"
args_schema: type[BaseModel] = DelegateWorkToolSchema
def _run(
self,
task: str,
context: str,
coworker: Optional[str] = None,
**kwargs,
) -> str:
coworker = self._get_coworker(coworker, **kwargs)
return self._execute(coworker, task, context)

View File

@@ -1,186 +0,0 @@
from abc import ABC, abstractmethod
from typing import Any, Callable, Type, get_args, get_origin
from langchain_core.tools import StructuredTool
from pydantic import BaseModel, ConfigDict, Field, validator
from pydantic import BaseModel as PydanticBaseModel
class BaseTool(BaseModel, ABC):
class _ArgsSchemaPlaceholder(PydanticBaseModel):
pass
model_config = ConfigDict()
name: str
"""The unique name of the tool that clearly communicates its purpose."""
description: str
"""Used to tell the model how/when/why to use the tool."""
args_schema: Type[PydanticBaseModel] = Field(default_factory=_ArgsSchemaPlaceholder)
"""The schema for the arguments that the tool accepts."""
description_updated: bool = False
"""Flag to check if the description has been updated."""
cache_function: Callable = lambda _args=None, _result=None: True
"""Function that will be used to determine if the tool should be cached, should return a boolean. If None, the tool will be cached."""
result_as_answer: bool = False
"""Flag to check if the tool should be the final agent answer."""
@validator("args_schema", always=True, pre=True)
def _default_args_schema(
cls, v: Type[PydanticBaseModel]
) -> Type[PydanticBaseModel]:
if not isinstance(v, cls._ArgsSchemaPlaceholder):
return v
return type(
f"{cls.__name__}Schema",
(PydanticBaseModel,),
{
"__annotations__": {
k: v for k, v in cls._run.__annotations__.items() if k != "return"
},
},
)
def model_post_init(self, __context: Any) -> None:
self._generate_description()
super().model_post_init(__context)
def run(
self,
*args: Any,
**kwargs: Any,
) -> Any:
print(f"Using Tool: {self.name}")
return self._run(*args, **kwargs)
@abstractmethod
def _run(
self,
*args: Any,
**kwargs: Any,
) -> Any:
"""Here goes the actual implementation of the tool."""
def to_langchain(self) -> StructuredTool:
self._set_args_schema()
return StructuredTool(
name=self.name,
description=self.description,
args_schema=self.args_schema,
func=self._run,
)
@classmethod
def from_langchain(cls, tool: StructuredTool) -> "BaseTool":
if cls == Tool:
if tool.func is None:
raise ValueError("StructuredTool must have a callable 'func'")
return Tool(
name=tool.name,
description=tool.description,
args_schema=tool.args_schema,
func=tool.func,
)
raise NotImplementedError(f"from_langchain not implemented for {cls.__name__}")
def _set_args_schema(self):
if self.args_schema is None:
class_name = f"{self.__class__.__name__}Schema"
self.args_schema = type(
class_name,
(PydanticBaseModel,),
{
"__annotations__": {
k: v
for k, v in self._run.__annotations__.items()
if k != "return"
},
},
)
def _generate_description(self):
args_schema = {
name: {
"description": field.description,
"type": BaseTool._get_arg_annotations(field.annotation),
}
for name, field in self.args_schema.model_fields.items()
}
self.description = f"Tool Name: {self.name}\nTool Arguments: {args_schema}\nTool Description: {self.description}"
@staticmethod
def _get_arg_annotations(annotation: type[Any] | None) -> str:
if annotation is None:
return "None"
origin = get_origin(annotation)
args = get_args(annotation)
if origin is None:
return (
annotation.__name__
if hasattr(annotation, "__name__")
else str(annotation)
)
if args:
args_str = ", ".join(BaseTool._get_arg_annotations(arg) for arg in args)
return f"{origin.__name__}[{args_str}]"
return origin.__name__
class Tool(BaseTool):
func: Callable
"""The function that will be executed when the tool is called."""
def _run(self, *args: Any, **kwargs: Any) -> Any:
return self.func(*args, **kwargs)
def to_langchain(
tools: list[BaseTool | StructuredTool],
) -> list[StructuredTool]:
return [t.to_langchain() if isinstance(t, BaseTool) else t for t in tools]
def tool(*args):
"""
Decorator to create a tool from a function.
"""
def _make_with_name(tool_name: str) -> Callable:
def _make_tool(f: Callable) -> BaseTool:
if f.__doc__ is None:
raise ValueError("Function must have a docstring")
if f.__annotations__ is None:
raise ValueError("Function must have type annotations")
class_name = "".join(tool_name.split()).title()
args_schema = type(
class_name,
(PydanticBaseModel,),
{
"__annotations__": {
k: v for k, v in f.__annotations__.items() if k != "return"
},
},
)
return Tool(
name=tool_name,
description=f.__doc__,
func=f,
args_schema=args_schema,
)
return _make_tool
if len(args) == 1 and callable(args[0]):
return _make_with_name(args[0].__name__)(args[0])
if len(args) == 1 and isinstance(args[0], str):
return _make_with_name(args[0])
raise ValueError("Invalid arguments")

View File

@@ -6,14 +6,14 @@ from difflib import SequenceMatcher
from textwrap import dedent
from typing import Any, List, Union
import crewai.utilities.events as events
from crewai.agents.tools_handler import ToolsHandler
from crewai.task import Task
from crewai.telemetry import Telemetry
from crewai.tools import BaseTool
from crewai.tools.tool_calling import InstructorToolCalling, ToolCalling
from crewai.tools.tool_usage_events import ToolUsageError, ToolUsageFinished
from crewai.utilities import I18N, Converter, ConverterError, Printer
import crewai.utilities.events as events
agentops = None
if os.environ.get("AGENTOPS_API_KEY"):
@@ -50,7 +50,7 @@ class ToolUsage:
def __init__(
self,
tools_handler: ToolsHandler,
tools: List[BaseTool],
tools: List[Any],
original_tools: List[Any],
tools_description: str,
tools_names: str,
@@ -299,7 +299,19 @@ class ToolUsage:
"""Render the tool name and description in plain text."""
descriptions = []
for tool in self.tools:
descriptions.append(tool.description)
args = {
k: {k2: v2 for k2, v2 in v.items() if k2 in ["description", "type"]}
for k, v in tool.args.items()
}
descriptions.append(
"\n".join(
[
f"Tool Name: {tool.name.lower()}",
f"Tool Description: {tool.description}",
f"Tool Arguments: {args}",
]
)
)
return "\n--\n".join(descriptions)
def _function_calling(self, tool_string: str):

View File

@@ -8,7 +8,6 @@ class UsageMetrics(BaseModel):
Attributes:
total_tokens: Total number of tokens used.
prompt_tokens: Number of tokens used in prompts.
cached_prompt_tokens: Number of cached prompt tokens used.
completion_tokens: Number of tokens used in completions.
successful_requests: Number of successful requests made.
"""
@@ -17,9 +16,6 @@ class UsageMetrics(BaseModel):
prompt_tokens: int = Field(
default=0, description="Number of tokens used in prompts."
)
cached_prompt_tokens: int = Field(
default=0, description="Number of cached prompt tokens used."
)
completion_tokens: int = Field(
default=0, description="Number of tokens used in completions."
)
@@ -36,6 +32,5 @@ class UsageMetrics(BaseModel):
"""
self.total_tokens += usage_metrics.total_tokens
self.prompt_tokens += usage_metrics.prompt_tokens
self.cached_prompt_tokens += usage_metrics.cached_prompt_tokens
self.completion_tokens += usage_metrics.completion_tokens
self.successful_requests += usage_metrics.successful_requests

View File

@@ -2,14 +2,13 @@ from datetime import datetime, date
import json
from uuid import UUID
from pydantic import BaseModel
from decimal import Decimal
class CrewJSONEncoder(json.JSONEncoder):
def default(self, obj):
if isinstance(obj, BaseModel):
return self._handle_pydantic_model(obj)
elif isinstance(obj, UUID) or isinstance(obj, Decimal):
elif isinstance(obj, UUID):
return str(obj)
elif isinstance(obj, datetime) or isinstance(obj, date):

View File

@@ -16,11 +16,7 @@ class FileHandler:
def log(self, **kwargs):
now = datetime.now().strftime("%Y-%m-%d %H:%M:%S")
message = (
f"{now}: "
+ ", ".join([f'{key}="{value}"' for key, value in kwargs.items()])
+ "\n"
)
message = f"{now}: " + ", ".join([f"{key}=\"{value}\"" for key, value in kwargs.items()]) + "\n"
with open(self._path, "a", encoding="utf-8") as file:
file.write(message + "\n")
@@ -67,7 +63,7 @@ class PickleHandler:
with open(self.file_path, "rb") as file:
try:
return pickle.load(file) # nosec
return pickle.load(file)
except EOFError:
return {} # Return an empty dictionary if the file is empty or corrupted
except Exception:

View File

@@ -1,5 +1,5 @@
from litellm.integrations.custom_logger import CustomLogger
from litellm.types.utils import Usage
from crewai.agents.agent_builder.utilities.base_token_process import TokenProcess
@@ -11,11 +11,8 @@ class TokenCalcHandler(CustomLogger):
if self.token_cost_process is None:
return
usage : Usage = response_obj["usage"]
self.token_cost_process.sum_successful_requests(1)
self.token_cost_process.sum_prompt_tokens(usage.prompt_tokens)
self.token_cost_process.sum_completion_tokens(usage.completion_tokens)
if usage.prompt_tokens_details:
self.token_cost_process.sum_cached_prompt_tokens(
usage.prompt_tokens_details.cached_tokens
)
self.token_cost_process.sum_prompt_tokens(response_obj["usage"].prompt_tokens)
self.token_cost_process.sum_completion_tokens(
response_obj["usage"].completion_tokens
)

View File

@@ -5,6 +5,7 @@ from unittest import mock
from unittest.mock import patch
import pytest
from crewai_tools import tool
from crewai import Agent, Crew, Task
from crewai.agents.cache import CacheHandler
@@ -13,7 +14,6 @@ from crewai.agents.parser import AgentAction, CrewAgentParser, OutputParserExcep
from crewai.llm import LLM
from crewai.tools.tool_calling import InstructorToolCalling
from crewai.tools.tool_usage import ToolUsage
from crewai.tools import tool
from crewai.tools.tool_usage_events import ToolUsageFinished
from crewai.utilities import RPMController
from crewai.utilities.events import Emitter
@@ -277,10 +277,9 @@ def test_cache_hitting():
"multiplier-{'first_number': 12, 'second_number': 3}": 36,
}
with (
patch.object(CacheHandler, "read") as read,
patch.object(Emitter, "emit") as emit,
):
with patch.object(CacheHandler, "read") as read, patch.object(
Emitter, "emit"
) as emit:
read.return_value = "0"
task = Task(
description="What is 2 times 6? Ignore correctness and just return the result of the multiplication tool, you must use the tool.",
@@ -605,7 +604,7 @@ def test_agent_respect_the_max_rpm_set(capsys):
def test_agent_respect_the_max_rpm_set_over_crew_rpm(capsys):
from unittest.mock import patch
from crewai.tools import tool
from crewai_tools import tool
@tool
def get_final_answer() -> float:
@@ -643,7 +642,7 @@ def test_agent_respect_the_max_rpm_set_over_crew_rpm(capsys):
def test_agent_without_max_rpm_respet_crew_rpm(capsys):
from unittest.mock import patch
from crewai.tools import tool
from crewai_tools import tool
@tool
def get_final_answer() -> float:
@@ -697,7 +696,7 @@ def test_agent_without_max_rpm_respet_crew_rpm(capsys):
def test_agent_error_on_parsing_tool(capsys):
from unittest.mock import patch
from crewai.tools import tool
from crewai_tools import tool
@tool
def get_final_answer() -> float:
@@ -740,7 +739,7 @@ def test_agent_error_on_parsing_tool(capsys):
def test_agent_remembers_output_format_after_using_tools_too_many_times():
from unittest.mock import patch
from crewai.tools import tool
from crewai_tools import tool
@tool
def get_final_answer() -> float:
@@ -864,16 +863,11 @@ def test_agent_function_calling_llm():
from crewai.tools.tool_usage import ToolUsage
with (
patch.object(
instructor, "from_litellm", wraps=instructor.from_litellm
) as mock_from_litellm,
patch.object(
ToolUsage,
"_original_tool_calling",
side_effect=Exception("Forced exception"),
) as mock_original_tool_calling,
):
with patch.object(
instructor, "from_litellm", wraps=instructor.from_litellm
) as mock_from_litellm, patch.object(
ToolUsage, "_original_tool_calling", side_effect=Exception("Forced exception")
) as mock_original_tool_calling:
crew.kickoff()
mock_from_litellm.assert_called()
mock_original_tool_calling.assert_called()
@@ -900,7 +894,7 @@ def test_agent_count_formatting_error():
@pytest.mark.vcr(filter_headers=["authorization"])
def test_tool_result_as_answer_is_the_final_answer_for_the_agent():
from crewai.tools import BaseTool
from crewai_tools import BaseTool
class MyCustomTool(BaseTool):
name: str = "Get Greetings"
@@ -930,7 +924,7 @@ def test_tool_result_as_answer_is_the_final_answer_for_the_agent():
@pytest.mark.vcr(filter_headers=["authorization"])
def test_tool_usage_information_is_appended_to_agent():
from crewai.tools import BaseTool
from crewai_tools import BaseTool
class MyCustomTool(BaseTool):
name: str = "Decide Greetings"

View File

@@ -3,7 +3,7 @@
import pytest
from crewai.agent import Agent
from crewai.tools.agent_tools.agent_tools import AgentTools
from crewai.tools.agent_tools import AgentTools
researcher = Agent(
role="researcher",
@@ -11,14 +11,12 @@ researcher = Agent(
backstory="You're an expert researcher, specialized in technology",
allow_delegation=False,
)
tools = AgentTools(agents=[researcher]).tools()
delegate_tool = tools[0]
ask_tool = tools[1]
tools = AgentTools(agents=[researcher])
@pytest.mark.vcr(filter_headers=["authorization"])
def test_delegate_work():
result = delegate_tool.run(
result = tools.delegate_work(
coworker="researcher",
task="share your take on AI Agents",
context="I heard you hate them",
@@ -32,8 +30,8 @@ def test_delegate_work():
@pytest.mark.vcr(filter_headers=["authorization"])
def test_delegate_work_with_wrong_co_worker_variable():
result = delegate_tool.run(
coworker="researcher",
result = tools.delegate_work(
co_worker="researcher",
task="share your take on AI Agents",
context="I heard you hate them",
)
@@ -46,7 +44,7 @@ def test_delegate_work_with_wrong_co_worker_variable():
@pytest.mark.vcr(filter_headers=["authorization"])
def test_ask_question():
result = ask_tool.run(
result = tools.ask_question(
coworker="researcher",
question="do you hate AI Agents?",
context="I heard you LOVE them",
@@ -60,8 +58,8 @@ def test_ask_question():
@pytest.mark.vcr(filter_headers=["authorization"])
def test_ask_question_with_wrong_co_worker_variable():
result = ask_tool.run(
coworker="researcher",
result = tools.ask_question(
co_worker="researcher",
question="do you hate AI Agents?",
context="I heard you LOVE them",
)
@@ -74,8 +72,8 @@ def test_ask_question_with_wrong_co_worker_variable():
@pytest.mark.vcr(filter_headers=["authorization"])
def test_delegate_work_withwith_coworker_as_array():
result = delegate_tool.run(
coworker="[researcher]",
result = tools.delegate_work(
co_worker="[researcher]",
task="share your take on AI Agents",
context="I heard you hate them",
)
@@ -88,8 +86,8 @@ def test_delegate_work_withwith_coworker_as_array():
@pytest.mark.vcr(filter_headers=["authorization"])
def test_ask_question_with_coworker_as_array():
result = ask_tool.run(
coworker="[researcher]",
result = tools.ask_question(
co_worker="[researcher]",
question="do you hate AI Agents?",
context="I heard you LOVE them",
)
@@ -101,7 +99,7 @@ def test_ask_question_with_coworker_as_array():
def test_delegate_work_to_wrong_agent():
result = ask_tool.run(
result = tools.ask_question(
coworker="writer",
question="share your take on AI Agents",
context="I heard you hate them",
@@ -114,7 +112,7 @@ def test_delegate_work_to_wrong_agent():
def test_ask_question_to_wrong_agent():
result = ask_tool.run(
result = tools.ask_question(
coworker="writer",
question="do you hate AI Agents?",
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View File

@@ -2,7 +2,6 @@ import hashlib
from typing import Any, List, Optional
from crewai.agents.agent_builder.base_agent import BaseAgent
from crewai.tools.base_tool import BaseTool
from pydantic import BaseModel
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self,
task: Any,
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tools: Optional[List[BaseTool]] = None,
tools: Optional[List[Any]] = None,
) -> str:
return ""
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def _parse_tools(self, tools: List[Any]) -> List[Any]:
return []
def get_delegation_tools(self, agents: List["BaseAgent"]): ...

View File

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View File

@@ -1,9 +1,7 @@
from pathlib import Path
from unittest import mock
import pytest
from click.testing import CliRunner
from crewai.cli.cli import (
deploy_create,
deploy_list,
@@ -11,7 +9,6 @@ from crewai.cli.cli import (
deploy_push,
deploy_remove,
deply_status,
flow_add_crew,
reset_memories,
signup,
test,
@@ -280,42 +277,3 @@ def test_deploy_remove_no_uuid(command, runner):
assert result.exit_code == 0
mock_deploy.remove_crew.assert_called_once_with(uuid=None)
@mock.patch("crewai.cli.add_crew_to_flow.create_embedded_crew")
@mock.patch("pathlib.Path.exists", return_value=True) # Mock the existence check
def test_flow_add_crew(mock_path_exists, mock_create_embedded_crew, runner):
crew_name = "new_crew"
result = runner.invoke(flow_add_crew, [crew_name])
# Log the output for debugging
print(result.output)
assert result.exit_code == 0, f"Command failed with output: {result.output}"
assert f"Adding crew {crew_name} to the flow" in result.output
# Verify that create_embedded_crew was called with the correct arguments
mock_create_embedded_crew.assert_called_once()
call_args, call_kwargs = mock_create_embedded_crew.call_args
assert call_args[0] == crew_name
assert "parent_folder" in call_kwargs
assert isinstance(call_kwargs["parent_folder"], Path)
def test_add_crew_to_flow_not_in_root(runner):
# Simulate not being in the root of a flow project
with mock.patch("pathlib.Path.exists", autospec=True) as mock_exists:
# Mock Path.exists to return False when checking for pyproject.toml
def exists_side_effect(self):
if self.name == "pyproject.toml":
return False # Simulate that pyproject.toml does not exist
return True # All other paths exist
mock_exists.side_effect = exists_side_effect
result = runner.invoke(flow_add_crew, ["new_crew"])
assert result.exit_code != 0
assert "This command must be run from the root of a flow project." in str(
result.output
)

View File

@@ -1,109 +0,0 @@
import unittest
import json
import tempfile
import shutil
from pathlib import Path
from crewai.cli.config import Settings
class TestSettings(unittest.TestCase):
def setUp(self):
self.test_dir = Path(tempfile.mkdtemp())
self.config_path = self.test_dir / "settings.json"
def tearDown(self):
shutil.rmtree(self.test_dir)
def test_empty_initialization(self):
settings = Settings(config_path=self.config_path)
self.assertIsNone(settings.tool_repository_username)
self.assertIsNone(settings.tool_repository_password)
def test_initialization_with_data(self):
settings = Settings(
config_path=self.config_path,
tool_repository_username="user1"
)
self.assertEqual(settings.tool_repository_username, "user1")
self.assertIsNone(settings.tool_repository_password)
def test_initialization_with_existing_file(self):
self.config_path.parent.mkdir(parents=True, exist_ok=True)
with self.config_path.open("w") as f:
json.dump({"tool_repository_username": "file_user"}, f)
settings = Settings(config_path=self.config_path)
self.assertEqual(settings.tool_repository_username, "file_user")
def test_merge_file_and_input_data(self):
self.config_path.parent.mkdir(parents=True, exist_ok=True)
with self.config_path.open("w") as f:
json.dump({
"tool_repository_username": "file_user",
"tool_repository_password": "file_pass"
}, f)
settings = Settings(
config_path=self.config_path,
tool_repository_username="new_user"
)
self.assertEqual(settings.tool_repository_username, "new_user")
self.assertEqual(settings.tool_repository_password, "file_pass")
def test_dump_new_settings(self):
settings = Settings(
config_path=self.config_path,
tool_repository_username="user1"
)
settings.dump()
with self.config_path.open("r") as f:
saved_data = json.load(f)
self.assertEqual(saved_data["tool_repository_username"], "user1")
def test_update_existing_settings(self):
self.config_path.parent.mkdir(parents=True, exist_ok=True)
with self.config_path.open("w") as f:
json.dump({"existing_setting": "value"}, f)
settings = Settings(
config_path=self.config_path,
tool_repository_username="user1"
)
settings.dump()
with self.config_path.open("r") as f:
saved_data = json.load(f)
self.assertEqual(saved_data["existing_setting"], "value")
self.assertEqual(saved_data["tool_repository_username"], "user1")
def test_none_values(self):
settings = Settings(
config_path=self.config_path,
tool_repository_username=None
)
settings.dump()
with self.config_path.open("r") as f:
saved_data = json.load(f)
self.assertIsNone(saved_data.get("tool_repository_username"))
def test_invalid_json_in_config(self):
self.config_path.parent.mkdir(parents=True, exist_ok=True)
with self.config_path.open("w") as f:
f.write("invalid json")
try:
settings = Settings(config_path=self.config_path)
self.assertIsNone(settings.tool_repository_username)
except json.JSONDecodeError:
self.fail("Settings initialization should handle invalid JSON")
def test_empty_config_file(self):
self.config_path.parent.mkdir(parents=True, exist_ok=True)
self.config_path.touch()
settings = Settings(config_path=self.config_path)
self.assertIsNone(settings.tool_repository_username)

View File

@@ -75,14 +75,13 @@ def test_install_success(mock_get, mock_subprocess_run):
[
"uv",
"add",
"--index",
"sample-repo=https://example.com/repo",
"--extra-index-url",
"https://app.crewai.com/pypi/sample-repo",
"sample-tool",
],
capture_output=False,
text=True,
check=True,
env=unittest.mock.ANY
)
assert "Succesfully installed sample-tool" in output

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