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Author SHA1 Message Date
Devin AI
3bfa1c6559 Fix issue #3454: Add proactive context length checking to prevent empty LLM responses
- Add _check_context_length_before_call() method to CrewAgentExecutor
- Proactively check estimated token count before LLM calls in _invoke_loop
- Use character-based estimation (chars / 4) to approximate token count
- Call existing _handle_context_length() when context window would be exceeded
- Add comprehensive tests covering proactive handling and token estimation
- Prevents empty responses from providers like DeepInfra that don't throw exceptions

Co-Authored-By: João <joao@crewai.com>
2025-09-05 16:05:35 +00:00
56 changed files with 1117 additions and 3452 deletions

1
.gitignore vendored
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@@ -21,4 +21,3 @@ crew_tasks_output.json
.mypy_cache
.ruff_cache
.venv
agentops.log

175
README.md
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@@ -4,7 +4,7 @@
# **CrewAI**
🤖 **CrewAI**: Production-grade framework for orchestrating sophisticated AI agent systems. From simple automations to complex real-world applications, CrewAI provides precise control and deep customization. By fostering collaborative intelligence through flexible, production-ready architecture, CrewAI empowers agents to work together seamlessly, tackling complex business challenges with predictable, consistent results.
🤖 **CrewAI**: Cutting-edge framework for orchestrating role-playing, autonomous AI agents. By fostering collaborative intelligence, CrewAI empowers agents to work together seamlessly, tackling complex tasks.
<h3>
@@ -22,17 +22,13 @@
- [Why CrewAI?](#why-crewai)
- [Getting Started](#getting-started)
- [Key Features](#key-features)
- [Understanding Flows and Crews](#understanding-flows-and-crews)
- [CrewAI vs LangGraph](#how-crewai-compares)
- [Examples](#examples)
- [Quick Tutorial](#quick-tutorial)
- [Write Job Descriptions](#write-job-descriptions)
- [Trip Planner](#trip-planner)
- [Stock Analysis](#stock-analysis)
- [Using Crews and Flows Together](#using-crews-and-flows-together)
- [Connecting Your Crew to a Model](#connecting-your-crew-to-a-model)
- [How CrewAI Compares](#how-crewai-compares)
- [Frequently Asked Questions (FAQ)](#frequently-asked-questions-faq)
- [Contribution](#contribution)
- [Telemetry](#telemetry)
- [License](#license)
@@ -40,40 +36,10 @@
## Why CrewAI?
The power of AI collaboration has too much to offer.
CrewAI is a standalone framework, built from the ground up without dependencies on Langchain or other agent frameworks. It's designed to enable AI agents to assume roles, share goals, and operate in a cohesive unit - much like a well-oiled crew. Whether you're building a smart assistant platform, an automated customer service ensemble, or a multi-agent research team, CrewAI provides the backbone for sophisticated multi-agent interactions.
CrewAI is designed to enable AI agents to assume roles, share goals, and operate in a cohesive unit - much like a well-oiled crew. Whether you're building a smart assistant platform, an automated customer service ensemble, or a multi-agent research team, CrewAI provides the backbone for sophisticated multi-agent interactions.
## Getting Started
### Learning Resources
Learn CrewAI through our comprehensive courses:
- [Multi AI Agent Systems with CrewAI](https://www.deeplearning.ai/short-courses/multi-ai-agent-systems-with-crewai/) - Master the fundamentals of multi-agent systems
- [Practical Multi AI Agents and Advanced Use Cases](https://www.deeplearning.ai/short-courses/practical-multi-ai-agents-and-advanced-use-cases-with-crewai/) - Deep dive into advanced implementations
### Understanding Flows and Crews
CrewAI offers two powerful, complementary approaches that work seamlessly together to build sophisticated AI applications:
1. **Crews**: Teams of AI agents with true autonomy and agency, working together to accomplish complex tasks through role-based collaboration. Crews enable:
- Natural, autonomous decision-making between agents
- Dynamic task delegation and collaboration
- Specialized roles with defined goals and expertise
- Flexible problem-solving approaches
2. **Flows**: Production-ready, event-driven workflows that deliver precise control over complex automations. Flows provide:
- Fine-grained control over execution paths for real-world scenarios
- Secure, consistent state management between tasks
- Clean integration of AI agents with production Python code
- Conditional branching for complex business logic
The true power of CrewAI emerges when combining Crews and Flows. This synergy allows you to:
- Build complex, production-grade applications
- Balance autonomy with precise control
- Handle sophisticated real-world scenarios
- Maintain clean, maintainable code structure
### Getting Started with Installation
To get started with CrewAI, follow these simple steps:
### 1. Installation
@@ -85,6 +51,7 @@ First, install CrewAI:
```shell
pip install crewai
```
If you want to install the 'crewai' package along with its optional features that include additional tools for agents, you can do so by using the following command:
```shell
@@ -92,22 +59,6 @@ pip install 'crewai[tools]'
```
The command above installs the basic package and also adds extra components which require more dependencies to function.
### Troubleshooting Dependencies
If you encounter issues during installation or usage, here are some common solutions:
#### Common Issues
1. **ModuleNotFoundError: No module named 'tiktoken'**
- Install tiktoken explicitly: `pip install 'crewai[embeddings]'`
- If using embedchain or other tools: `pip install 'crewai[tools]'`
2. **Failed building wheel for tiktoken**
- Ensure Rust compiler is installed (see installation steps above)
- For Windows: Verify Visual C++ Build Tools are installed
- Try upgrading pip: `pip install --upgrade pip`
- If issues persist, use a pre-built wheel: `pip install tiktoken --prefer-binary`
### 2. Setting Up Your Crew with the YAML Configuration
To create a new CrewAI project, run the following CLI (Command Line Interface) command:
@@ -313,16 +264,13 @@ In addition to the sequential process, you can use the hierarchical process, whi
## Key Features
**Note**: CrewAI is a standalone framework built from the ground up, without dependencies on Langchain or other agent frameworks.
- **Deep Customization**: Build sophisticated agents with full control over the system - from overriding inner prompts to accessing low-level APIs. Customize roles, goals, tools, and behaviors while maintaining clean abstractions.
- **Autonomous Inter-Agent Delegation**: Agents can autonomously delegate tasks and inquire amongst themselves, enabling complex problem-solving in real-world scenarios.
- **Flexible Task Management**: Define and customize tasks with granular control, from simple operations to complex multi-step processes.
- **Production-Grade Architecture**: Support for both high-level abstractions and low-level customization, with robust error handling and state management.
- **Predictable Results**: Ensure consistent, accurate outputs through programmatic guardrails, agent training capabilities, and flow-based execution control. See our [documentation on guardrails](https://docs.crewai.com/how-to/guardrails/) for implementation details.
- **Model Flexibility**: Run your crew using OpenAI or open source models with production-ready integrations. See [Connect CrewAI to LLMs](https://docs.crewai.com/how-to/LLM-Connections/) for detailed configuration options.
- **Event-Driven Flows**: Build complex, real-world workflows with precise control over execution paths, state management, and conditional logic.
- **Process Orchestration**: Achieve any workflow pattern through flows - from simple sequential and hierarchical processes to complex, custom orchestration patterns with conditional branching and parallel execution.
- **Role-Based Agent Design**: Customize agents with specific roles, goals, and tools.
- **Autonomous Inter-Agent Delegation**: Agents can autonomously delegate tasks and inquire amongst themselves, enhancing problem-solving efficiency.
- **Flexible Task Management**: Define tasks with customizable tools and assign them to agents dynamically.
- **Processes Driven**: Currently only supports `sequential` task execution and `hierarchical` processes, but more complex processes like consensual and autonomous are being worked on.
- **Save output as file**: Save the output of individual tasks as a file, so you can use it later.
- **Parse output as Pydantic or Json**: Parse the output of individual tasks as a Pydantic model or as a Json if you want to.
- **Works with Open Source Models**: Run your crew using Open AI or open source models refer to the [Connect CrewAI to LLMs](https://docs.crewai.com/how-to/LLM-Connections/) page for details on configuring your agents' connections to models, even ones running locally!
![CrewAI Mind Map](./docs/crewAI-mindmap.png "CrewAI Mind Map")
@@ -357,98 +305,6 @@ You can test different real life examples of AI crews in the [CrewAI-examples re
[![Stock Analysis](https://img.youtube.com/vi/e0Uj4yWdaAg/maxresdefault.jpg)](https://www.youtube.com/watch?v=e0Uj4yWdaAg "Stock Analysis")
### Using Crews and Flows Together
CrewAI's power truly shines when combining Crews with Flows to create sophisticated automation pipelines. Here's how you can orchestrate multiple Crews within a Flow:
```python
from crewai.flow.flow import Flow, listen, start, router
from crewai import Crew, Agent, Task
from pydantic import BaseModel
# Define structured state for precise control
class MarketState(BaseModel):
sentiment: str = "neutral"
confidence: float = 0.0
recommendations: list = []
class AdvancedAnalysisFlow(Flow[MarketState]):
@start()
def fetch_market_data(self):
# Demonstrate low-level control with structured state
self.state.sentiment = "analyzing"
return {"sector": "tech", "timeframe": "1W"} # These parameters match the task description template
@listen(fetch_market_data)
def analyze_with_crew(self, market_data):
# Show crew agency through specialized roles
analyst = Agent(
role="Senior Market Analyst",
goal="Conduct deep market analysis with expert insight",
backstory="You're a veteran analyst known for identifying subtle market patterns"
)
researcher = Agent(
role="Data Researcher",
goal="Gather and validate supporting market data",
backstory="You excel at finding and correlating multiple data sources"
)
analysis_task = Task(
description="Analyze {sector} sector data for the past {timeframe}",
expected_output="Detailed market analysis with confidence score",
agent=analyst
)
research_task = Task(
description="Find supporting data to validate the analysis",
expected_output="Corroborating evidence and potential contradictions",
agent=researcher
)
# Demonstrate crew autonomy
analysis_crew = Crew(
agents=[analyst, researcher],
tasks=[analysis_task, research_task],
process=Process.sequential,
verbose=True
)
return analysis_crew.kickoff(inputs=market_data) # Pass market_data as named inputs
@router(analyze_with_crew)
def determine_next_steps(self):
# Show flow control with conditional routing
if self.state.confidence > 0.8:
return "high_confidence"
elif self.state.confidence > 0.5:
return "medium_confidence"
return "low_confidence"
@listen("high_confidence")
def execute_strategy(self):
# Demonstrate complex decision making
strategy_crew = Crew(
agents=[
Agent(role="Strategy Expert",
goal="Develop optimal market strategy")
],
tasks=[
Task(description="Create detailed strategy based on analysis",
expected_output="Step-by-step action plan")
]
)
return strategy_crew.kickoff()
@listen("medium_confidence", "low_confidence")
def request_additional_analysis(self):
self.state.recommendations.append("Gather more data")
return "Additional analysis required"
```
This example demonstrates how to:
1. Use Python code for basic data operations
2. Create and execute Crews as steps in your workflow
3. Use Flow decorators to manage the sequence of operations
4. Implement conditional branching based on Crew results
## Connecting Your Crew to a Model
CrewAI supports using various LLMs through a variety of connection options. By default your agents will use the OpenAI API when querying the model. However, there are several other ways to allow your agents to connect to models. For example, you can configure your agents to use a local model via the Ollama tool.
@@ -457,13 +313,9 @@ Please refer to the [Connect CrewAI to LLMs](https://docs.crewai.com/how-to/LLM-
## How CrewAI Compares
**CrewAI's Advantage**: CrewAI combines autonomous agent intelligence with precise workflow control through its unique Crews and Flows architecture. The framework excels at both high-level orchestration and low-level customization, enabling complex, production-grade systems with granular control.
**CrewAI's Advantage**: CrewAI is built with production in mind. It offers the flexibility of Autogen's conversational agents and the structured process approach of ChatDev, but without the rigidity. CrewAI's processes are designed to be dynamic and adaptable, fitting seamlessly into both development and production workflows.
- **LangGraph**: While LangGraph provides a foundation for building agent workflows, its approach requires significant boilerplate code and complex state management patterns. The framework's tight coupling with LangChain can limit flexibility when implementing custom agent behaviors or integrating with external systems.
*P.S. CrewAI demonstrates significant performance advantages over LangGraph, executing 5.76x faster in certain cases like this QA task example ([see comparison](https://github.com/crewAIInc/crewAI-examples/tree/main/Notebooks/CrewAI%20Flows%20%26%20Langgraph/QA%20Agent)) while achieving higher evaluation scores with faster completion times in certain coding tasks, like in this example ([detailed analysis](https://github.com/crewAIInc/crewAI-examples/blob/main/Notebooks/CrewAI%20Flows%20%26%20Langgraph/Coding%20Assistant/coding_assistant_eval.ipynb)).*
- **Autogen**: While Autogen excels at creating conversational agents capable of working together, it lacks an inherent concept of process. In Autogen, orchestrating agents' interactions requires additional programming, which can become complex and cumbersome as the scale of tasks grows.
- **Autogen**: While Autogen does good in creating conversational agents capable of working together, it lacks an inherent concept of process. In Autogen, orchestrating agents' interactions requires additional programming, which can become complex and cumbersome as the scale of tasks grows.
- **ChatDev**: ChatDev introduced the idea of processes into the realm of AI agents, but its implementation is quite rigid. Customizations in ChatDev are limited and not geared towards production environments, which can hinder scalability and flexibility in real-world applications.
@@ -588,8 +440,5 @@ A: CrewAI uses anonymous telemetry to collect usage data for improvement purpose
### Q: Where can I find examples of CrewAI in action?
A: You can find various real-life examples in the [CrewAI-examples repository](https://github.com/crewAIInc/crewAI-examples), including trip planners, stock analysis tools, and more.
### Q: What is the difference between Crews and Flows?
A: Crews and Flows serve different but complementary purposes in CrewAI. Crews are teams of AI agents working together to accomplish specific tasks through role-based collaboration, delivering accurate and predictable results. Flows, on the other hand, are event-driven workflows that can orchestrate both Crews and regular Python code, allowing you to build complex automation pipelines with secure state management and conditional execution paths.
### Q: How can I contribute to CrewAI?
A: Contributions are welcome! You can fork the repository, create a new branch for your feature, add your improvement, and send a pull request. Check the Contribution section in the README for more details.

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@@ -138,7 +138,7 @@ print("---- Final Output ----")
print(final_output)
````
```text Output
``` text Output
---- Final Output ----
Second method received: Output from first_method
````

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@@ -4,6 +4,8 @@ description: What is knowledge in CrewAI and how to use it.
icon: book
---
# Using Knowledge in CrewAI
## What is Knowledge?
Knowledge in CrewAI is a powerful system that allows AI agents to access and utilize external information sources during their tasks.
@@ -34,20 +36,7 @@ CrewAI supports various types of knowledge sources out of the box:
</Card>
</CardGroup>
## Supported Knowledge Parameters
| Parameter | Type | Required | Description |
| :--------------------------- | :---------------------------------- | :------- | :---------------------------------------------------------------------------------------------------------------------------------------------------- |
| `sources` | **List[BaseKnowledgeSource]** | Yes | List of knowledge sources that provide content to be stored and queried. Can include PDF, CSV, Excel, JSON, text files, or string content. |
| `collection_name` | **str** | No | Name of the collection where the knowledge will be stored. Used to identify different sets of knowledge. Defaults to "knowledge" if not provided. |
| `storage` | **Optional[KnowledgeStorage]** | No | Custom storage configuration for managing how the knowledge is stored and retrieved. If not provided, a default storage will be created. |
## Quickstart Example
<Tip>
For file-Based Knowledge Sources, make sure to place your files in a `knowledge` directory at the root of your project.
Also, use relative paths from the `knowledge` directory when creating the source.
</Tip>
## Quick Start
Here's an example using string-based knowledge:
@@ -91,8 +80,7 @@ result = crew.kickoff(inputs={"question": "What city does John live in and how o
```
Here's another example with the `CrewDoclingSource`. The CrewDoclingSource is actually quite versatile and can handle multiple file formats including TXT, PDF, DOCX, HTML, and more.
Here's another example with the `CrewDoclingSource`
```python Code
from crewai import LLM, Agent, Crew, Process, Task
from crewai.knowledge.source.crew_docling_source import CrewDoclingSource
@@ -140,217 +128,39 @@ result = crew.kickoff(
)
```
## More Examples
Here are examples of how to use different types of knowledge sources:
### Text File Knowledge Source
```python
from crewai.knowledge.source.crew_docling_source import CrewDoclingSource
# Create a text file knowledge source
text_source = CrewDoclingSource(
file_paths=["document.txt", "another.txt"]
)
# Create crew with text file source on agents or crew level
agent = Agent(
...
knowledge_sources=[text_source]
)
crew = Crew(
...
knowledge_sources=[text_source]
)
```
### PDF Knowledge Source
```python
from crewai.knowledge.source.pdf_knowledge_source import PDFKnowledgeSource
# Create a PDF knowledge source
pdf_source = PDFKnowledgeSource(
file_paths=["document.pdf", "another.pdf"]
)
# Create crew with PDF knowledge source on agents or crew level
agent = Agent(
...
knowledge_sources=[pdf_source]
)
crew = Crew(
...
knowledge_sources=[pdf_source]
)
```
### CSV Knowledge Source
```python
from crewai.knowledge.source.csv_knowledge_source import CSVKnowledgeSource
# Create a CSV knowledge source
csv_source = CSVKnowledgeSource(
file_paths=["data.csv"]
)
# Create crew with CSV knowledge source or on agent level
agent = Agent(
...
knowledge_sources=[csv_source]
)
crew = Crew(
...
knowledge_sources=[csv_source]
)
```
### Excel Knowledge Source
```python
from crewai.knowledge.source.excel_knowledge_source import ExcelKnowledgeSource
# Create an Excel knowledge source
excel_source = ExcelKnowledgeSource(
file_paths=["spreadsheet.xlsx"]
)
# Create crew with Excel knowledge source on agents or crew level
agent = Agent(
...
knowledge_sources=[excel_source]
)
crew = Crew(
...
knowledge_sources=[excel_source]
)
```
### JSON Knowledge Source
```python
from crewai.knowledge.source.json_knowledge_source import JSONKnowledgeSource
# Create a JSON knowledge source
json_source = JSONKnowledgeSource(
file_paths=["data.json"]
)
# Create crew with JSON knowledge source on agents or crew level
agent = Agent(
...
knowledge_sources=[json_source]
)
crew = Crew(
...
knowledge_sources=[json_source]
)
```
## Knowledge Configuration
### Chunking Configuration
Knowledge sources automatically chunk content for better processing.
You can configure chunking behavior in your knowledge sources:
Control how content is split for processing by setting the chunk size and overlap.
```python
from crewai.knowledge.source.string_knowledge_source import StringKnowledgeSource
source = StringKnowledgeSource(
content="Your content here",
chunk_size=4000, # Maximum size of each chunk (default: 4000)
chunk_overlap=200 # Overlap between chunks (default: 200)
```python Code
knowledge_source = StringKnowledgeSource(
content="Long content...",
chunk_size=4000, # Characters per chunk (default)
chunk_overlap=200 # Overlap between chunks (default)
)
```
The chunking configuration helps in:
- Breaking down large documents into manageable pieces
- Maintaining context through chunk overlap
- Optimizing retrieval accuracy
## Embedder Configuration
### Embeddings Configuration
You can also configure the embedder for the knowledge store. This is useful if you want to use a different embedder for the knowledge store than the one used for the agents.
You can also configure the embedder for the knowledge store.
This is useful if you want to use a different embedder for the knowledge store than the one used for the agents.
The `embedder` parameter supports various embedding model providers that include:
- `openai`: OpenAI's embedding models
- `google`: Google's text embedding models
- `azure`: Azure OpenAI embeddings
- `ollama`: Local embeddings with Ollama
- `vertexai`: Google Cloud VertexAI embeddings
- `cohere`: Cohere's embedding models
- `bedrock`: AWS Bedrock embeddings
- `huggingface`: Hugging Face models
- `watson`: IBM Watson embeddings
Here's an example of how to configure the embedder for the knowledge store using Google's `text-embedding-004` model:
<CodeGroup>
```python Example
from crewai import Agent, Task, Crew, Process, LLM
from crewai.knowledge.source.string_knowledge_source import StringKnowledgeSource
import os
# Get the GEMINI API key
GEMINI_API_KEY = os.environ.get("GEMINI_API_KEY")
# Create a knowledge source
content = "Users name is John. He is 30 years old and lives in San Francisco."
```python Code
...
string_source = StringKnowledgeSource(
content=content,
content="Users name is John. He is 30 years old and lives in San Francisco.",
)
# Create an LLM with a temperature of 0 to ensure deterministic outputs
gemini_llm = LLM(
model="gemini/gemini-1.5-pro-002",
api_key=GEMINI_API_KEY,
temperature=0,
)
# Create an agent with the knowledge store
agent = Agent(
role="About User",
goal="You know everything about the user.",
backstory="""You are a master at understanding people and their preferences.""",
verbose=True,
allow_delegation=False,
llm=gemini_llm,
)
task = Task(
description="Answer the following questions about the user: {question}",
expected_output="An answer to the question.",
agent=agent,
)
crew = Crew(
agents=[agent],
tasks=[task],
verbose=True,
process=Process.sequential,
...
knowledge_sources=[string_source],
embedder={
"provider": "google",
"config": {
"model": "models/text-embedding-004",
"api_key": GEMINI_API_KEY,
}
}
"provider": "openai",
"config": {"model": "text-embedding-3-small"},
},
)
result = crew.kickoff(inputs={"question": "What city does John live in and how old is he?"})
```
```text Output
# Agent: About User
## Task: Answer the following questions about the user: What city does John live in and how old is he?
# Agent: About User
## Final Answer:
John is 30 years old and lives in San Francisco.
```
</CodeGroup>
## Clearing Knowledge
If you need to clear the knowledge stored in CrewAI, you can use the `crewai reset-memories` command with the `--knowledge` option.
@@ -361,58 +171,6 @@ crewai reset-memories --knowledge
This is useful when you've updated your knowledge sources and want to ensure that the agents are using the most recent information.
## Agent-Specific Knowledge
While knowledge can be provided at the crew level using `crew.knowledge_sources`, individual agents can also have their own knowledge sources using the `knowledge_sources` parameter:
```python Code
from crewai import Agent, Task, Crew
from crewai.knowledge.source.string_knowledge_source import StringKnowledgeSource
# Create agent-specific knowledge about a product
product_specs = StringKnowledgeSource(
content="""The XPS 13 laptop features:
- 13.4-inch 4K display
- Intel Core i7 processor
- 16GB RAM
- 512GB SSD storage
- 12-hour battery life""",
metadata={"category": "product_specs"}
)
# Create a support agent with product knowledge
support_agent = Agent(
role="Technical Support Specialist",
goal="Provide accurate product information and support.",
backstory="You are an expert on our laptop products and specifications.",
knowledge_sources=[product_specs] # Agent-specific knowledge
)
# Create a task that requires product knowledge
support_task = Task(
description="Answer this customer question: {question}",
agent=support_agent
)
# Create and run the crew
crew = Crew(
agents=[support_agent],
tasks=[support_task]
)
# Get answer about the laptop's specifications
result = crew.kickoff(
inputs={"question": "What is the storage capacity of the XPS 13?"}
)
```
<Info>
Benefits of agent-specific knowledge:
- Give agents specialized information for their roles
- Maintain separation of concerns between agents
- Combine with crew-level knowledge for layered information access
</Info>
## Custom Knowledge Sources
CrewAI allows you to create custom knowledge sources for any type of data by extending the `BaseKnowledgeSource` class. Let's create a practical example that fetches and processes space news articles.

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@@ -1,202 +0,0 @@
---
title: Portkey Observability and Guardrails
description: How to use Portkey with CrewAI
icon: key
---
<img src="https://raw.githubusercontent.com/siddharthsambharia-portkey/Portkey-Product-Images/main/Portkey-CrewAI.png" alt="Portkey CrewAI Header Image" width="70%" />
[Portkey](https://portkey.ai/?utm_source=crewai&utm_medium=crewai&utm_campaign=crewai) is a 2-line upgrade to make your CrewAI agents reliable, cost-efficient, and fast.
Portkey adds 4 core production capabilities to any CrewAI agent:
1. Routing to **200+ LLMs**
2. Making each LLM call more robust
3. Full-stack tracing & cost, performance analytics
4. Real-time guardrails to enforce behavior
## Getting Started
<Steps>
<Step title="Install CrewAI and Portkey">
```bash
pip install -qU crewai portkey-ai
```
</Step>
<Step title="Configure the LLM Client">
To build CrewAI Agents with Portkey, you'll need two keys:
- **Portkey API Key**: Sign up on the [Portkey app](https://app.portkey.ai/?utm_source=crewai&utm_medium=crewai&utm_campaign=crewai) and copy your API key
- **Virtual Key**: Virtual Keys securely manage your LLM API keys in one place. Store your LLM provider API keys securely in Portkey's vault
```python
from crewai import LLM
from portkey_ai import createHeaders, PORTKEY_GATEWAY_URL
gpt_llm = LLM(
model="gpt-4",
base_url=PORTKEY_GATEWAY_URL,
api_key="dummy", # We are using Virtual key
extra_headers=createHeaders(
api_key="YOUR_PORTKEY_API_KEY",
virtual_key="YOUR_VIRTUAL_KEY", # Enter your Virtual key from Portkey
)
)
```
</Step>
<Step title="Create and Run Your First Agent">
```python
from crewai import Agent, Task, Crew
# Define your agents with roles and goals
coder = Agent(
role='Software developer',
goal='Write clear, concise code on demand',
backstory='An expert coder with a keen eye for software trends.',
llm=gpt_llm
)
# Create tasks for your agents
task1 = Task(
description="Define the HTML for making a simple website with heading- Hello World! Portkey is working!",
expected_output="A clear and concise HTML code",
agent=coder
)
# Instantiate your crew
crew = Crew(
agents=[coder],
tasks=[task1],
)
result = crew.kickoff()
print(result)
```
</Step>
</Steps>
## Key Features
| Feature | Description |
|:--------|:------------|
| 🌐 Multi-LLM Support | Access OpenAI, Anthropic, Gemini, Azure, and 250+ providers through a unified interface |
| 🛡️ Production Reliability | Implement retries, timeouts, load balancing, and fallbacks |
| 📊 Advanced Observability | Track 40+ metrics including costs, tokens, latency, and custom metadata |
| 🔍 Comprehensive Logging | Debug with detailed execution traces and function call logs |
| 🚧 Security Controls | Set budget limits and implement role-based access control |
| 🔄 Performance Analytics | Capture and analyze feedback for continuous improvement |
| 💾 Intelligent Caching | Reduce costs and latency with semantic or simple caching |
## Production Features with Portkey Configs
All features mentioned below are through Portkey's Config system. Portkey's Config system allows you to define routing strategies using simple JSON objects in your LLM API calls. You can create and manage Configs directly in your code or through the Portkey Dashboard. Each Config has a unique ID for easy reference.
<Frame>
<img src="https://raw.githubusercontent.com/Portkey-AI/docs-core/refs/heads/main/images/libraries/libraries-3.avif"/>
</Frame>
### 1. Use 250+ LLMs
Access various LLMs like Anthropic, Gemini, Mistral, Azure OpenAI, and more with minimal code changes. Switch between providers or use them together seamlessly. [Learn more about Universal API](https://portkey.ai/docs/product/ai-gateway/universal-api)
Easily switch between different LLM providers:
```python
# Anthropic Configuration
anthropic_llm = LLM(
model="claude-3-5-sonnet-latest",
base_url=PORTKEY_GATEWAY_URL,
api_key="dummy",
extra_headers=createHeaders(
api_key="YOUR_PORTKEY_API_KEY",
virtual_key="YOUR_ANTHROPIC_VIRTUAL_KEY", #You don't need provider when using Virtual keys
trace_id="anthropic_agent"
)
)
# Azure OpenAI Configuration
azure_llm = LLM(
model="gpt-4",
base_url=PORTKEY_GATEWAY_URL,
api_key="dummy",
extra_headers=createHeaders(
api_key="YOUR_PORTKEY_API_KEY",
virtual_key="YOUR_AZURE_VIRTUAL_KEY", #You don't need provider when using Virtual keys
trace_id="azure_agent"
)
)
```
### 2. Caching
Improve response times and reduce costs with two powerful caching modes:
- **Simple Cache**: Perfect for exact matches
- **Semantic Cache**: Matches responses for requests that are semantically similar
[Learn more about Caching](https://portkey.ai/docs/product/ai-gateway/cache-simple-and-semantic)
```py
config = {
"cache": {
"mode": "semantic", # or "simple" for exact matching
}
}
```
### 3. Production Reliability
Portkey provides comprehensive reliability features:
- **Automatic Retries**: Handle temporary failures gracefully
- **Request Timeouts**: Prevent hanging operations
- **Conditional Routing**: Route requests based on specific conditions
- **Fallbacks**: Set up automatic provider failovers
- **Load Balancing**: Distribute requests efficiently
[Learn more about Reliability Features](https://portkey.ai/docs/product/ai-gateway/)
### 4. Metrics
Agent runs are complex. Portkey automatically logs **40+ comprehensive metrics** for your AI agents, including cost, tokens used, latency, etc. Whether you need a broad overview or granular insights into your agent runs, Portkey's customizable filters provide the metrics you need.
- Cost per agent interaction
- Response times and latency
- Token usage and efficiency
- Success/failure rates
- Cache hit rates
<img src="https://github.com/siddharthsambharia-portkey/Portkey-Product-Images/blob/main/Portkey-Dashboard.png?raw=true" width="70%" alt="Portkey Dashboard" />
### 5. Detailed Logging
Logs are essential for understanding agent behavior, diagnosing issues, and improving performance. They provide a detailed record of agent activities and tool use, which is crucial for debugging and optimizing processes.
Access a dedicated section to view records of agent executions, including parameters, outcomes, function calls, and errors. Filter logs based on multiple parameters such as trace ID, model, tokens used, and metadata.
<details>
<summary><b>Traces</b></summary>
<img src="https://raw.githubusercontent.com/siddharthsambharia-portkey/Portkey-Product-Images/main/Portkey-Traces.png" alt="Portkey Traces" width="70%" />
</details>
<details>
<summary><b>Logs</b></summary>
<img src="https://raw.githubusercontent.com/siddharthsambharia-portkey/Portkey-Product-Images/main/Portkey-Logs.png" alt="Portkey Logs" width="70%" />
</details>
### 6. Enterprise Security Features
- Set budget limit and rate limts per Virtual Key (disposable API keys)
- Implement role-based access control
- Track system changes with audit logs
- Configure data retention policies
For detailed information on creating and managing Configs, visit the [Portkey documentation](https://docs.portkey.ai/product/ai-gateway/configs).
## Resources
- [📘 Portkey Documentation](https://docs.portkey.ai)
- [📊 Portkey Dashboard](https://app.portkey.ai/?utm_source=crewai&utm_medium=crewai&utm_campaign=crewai)
- [🐦 Twitter](https://twitter.com/portkeyai)
- [💬 Discord Community](https://discord.gg/DD7vgKK299)

View File

@@ -100,8 +100,7 @@
"how-to/conditional-tasks",
"how-to/agentops-observability",
"how-to/langtrace-observability",
"how-to/openlit-observability",
"how-to/portkey-observability"
"how-to/openlit-observability"
]
},
{

View File

@@ -8,39 +8,28 @@ authors = [
{ name = "Joao Moura", email = "joao@crewai.com" }
]
dependencies = [
# Core Dependencies
"pydantic>=2.4.2",
"openai>=1.13.3",
"litellm>=1.44.22",
"instructor>=1.3.3",
# Text Processing
"pdfplumber>=0.11.4",
"regex>=2024.9.11",
# Telemetry and Monitoring
"opentelemetry-api>=1.22.0",
"opentelemetry-sdk>=1.22.0",
"opentelemetry-exporter-otlp-proto-http>=1.22.0",
# Data Handling
"chromadb>=0.5.23",
"openpyxl>=3.1.5",
"pyvis>=0.3.2",
# Authentication and Security
"auth0-python>=4.7.1",
"python-dotenv>=1.0.0",
# Configuration and Utils
"instructor>=1.3.3",
"regex>=2024.9.11",
"click>=8.1.7",
"python-dotenv>=1.0.0",
"appdirs>=1.4.4",
"jsonref>=1.1.0",
"json-repair>=0.25.2",
"auth0-python>=4.7.1",
"litellm>=1.44.22",
"pyvis>=0.3.2",
"uv>=0.4.25",
"tomli-w>=1.1.0",
"tomli>=2.0.2",
"blinker>=1.9.0"
"chromadb>=0.5.23",
"pdfplumber>=0.11.4",
"openpyxl>=3.1.5",
"blinker>=1.9.0",
]
[project.urls]
@@ -49,10 +38,7 @@ Documentation = "https://docs.crewai.com"
Repository = "https://github.com/crewAIInc/crewAI"
[project.optional-dependencies]
tools = ["crewai-tools>=0.25.5"]
embeddings = [
"tiktoken~=0.7.0"
]
tools = ["crewai-tools>=0.17.0"]
agentops = ["agentops>=0.3.0"]
fastembed = ["fastembed>=0.4.1"]
pdfplumber = [

View File

@@ -112,6 +112,8 @@ class CrewAgentExecutor(CrewAgentExecutorMixin):
try:
while not isinstance(formatted_answer, AgentFinish):
if not self.request_within_rpm_limit or self.request_within_rpm_limit():
self._check_context_length_before_call()
answer = self.llm.call(
self.messages,
callbacks=self.callbacks,
@@ -327,6 +329,19 @@ class CrewAgentExecutor(CrewAgentExecutorMixin):
)
]
def _check_context_length_before_call(self) -> None:
total_chars = sum(len(msg.get("content", "")) for msg in self.messages)
estimated_tokens = total_chars // 4
context_window_size = self.llm.get_context_window_size()
if estimated_tokens > context_window_size:
self._printer.print(
content=f"Estimated token count ({estimated_tokens}) exceeds context window ({context_window_size}). Handling proactively.",
color="yellow",
)
self._handle_context_length()
def _handle_context_length(self) -> None:
if self.respect_context_window:
self._printer.print(

View File

@@ -726,7 +726,11 @@ class Crew(BaseModel):
# Determine which tools to use - task tools take precedence over agent tools
tools_for_task = task.tools or agent_to_use.tools or []
tools_for_task = self._prepare_tools(agent_to_use, task, tools_for_task)
tools_for_task = self._prepare_tools(
agent_to_use,
task,
tools_for_task
)
self._log_task_start(task, agent_to_use.role)
@@ -793,18 +797,14 @@ class Crew(BaseModel):
return skipped_task_output
return None
def _prepare_tools(
self, agent: BaseAgent, task: Task, tools: List[Tool]
) -> List[Tool]:
def _prepare_tools(self, agent: BaseAgent, task: Task, tools: List[Tool]) -> List[Tool]:
# Add delegation tools if agent allows delegation
if agent.allow_delegation:
if self.process == Process.hierarchical:
if self.manager_agent:
tools = self._update_manager_tools(task, tools)
else:
raise ValueError(
"Manager agent is required for hierarchical process."
)
raise ValueError("Manager agent is required for hierarchical process.")
elif agent and agent.allow_delegation:
tools = self._add_delegation_tools(task, tools)
@@ -823,9 +823,7 @@ class Crew(BaseModel):
return self.manager_agent
return task.agent
def _merge_tools(
self, existing_tools: List[Tool], new_tools: List[Tool]
) -> List[Tool]:
def _merge_tools(self, existing_tools: List[Tool], new_tools: List[Tool]) -> List[Tool]:
"""Merge new tools into existing tools list, avoiding duplicates by tool name."""
if not new_tools:
return existing_tools
@@ -841,9 +839,7 @@ class Crew(BaseModel):
return tools
def _inject_delegation_tools(
self, tools: List[Tool], task_agent: BaseAgent, agents: List[BaseAgent]
):
def _inject_delegation_tools(self, tools: List[Tool], task_agent: BaseAgent, agents: List[BaseAgent]):
delegation_tools = task_agent.get_delegation_tools(agents)
return self._merge_tools(tools, delegation_tools)
@@ -860,9 +856,7 @@ class Crew(BaseModel):
if len(self.agents) > 1 and len(agents_for_delegation) > 0 and task.agent:
if not tools:
tools = []
tools = self._inject_delegation_tools(
tools, task.agent, agents_for_delegation
)
tools = self._inject_delegation_tools(tools, task.agent, agents_for_delegation)
return tools
def _log_task_start(self, task: Task, role: str = "None"):
@@ -876,9 +870,7 @@ class Crew(BaseModel):
if task.agent:
tools = self._inject_delegation_tools(tools, task.agent, [task.agent])
else:
tools = self._inject_delegation_tools(
tools, self.manager_agent, self.agents
)
tools = self._inject_delegation_tools(tools, self.manager_agent, self.agents)
return tools
def _get_context(self, task: Task, task_outputs: List[TaskOutput]):

View File

@@ -30,47 +30,7 @@ from crewai.telemetry import Telemetry
T = TypeVar("T", bound=Union[BaseModel, Dict[str, Any]])
def start(condition: Optional[Union[str, dict, Callable]] = None) -> Callable:
"""
Marks a method as a flow's starting point.
This decorator designates a method as an entry point for the flow execution.
It can optionally specify conditions that trigger the start based on other
method executions.
Parameters
----------
condition : Optional[Union[str, dict, Callable]], optional
Defines when the start method should execute. Can be:
- str: Name of a method that triggers this start
- dict: Contains "type" ("AND"/"OR") and "methods" (list of triggers)
- Callable: A method reference that triggers this start
Default is None, meaning unconditional start.
Returns
-------
Callable
A decorator function that marks the method as a flow start point.
Raises
------
ValueError
If the condition format is invalid.
Examples
--------
>>> @start() # Unconditional start
>>> def begin_flow(self):
... pass
>>> @start("method_name") # Start after specific method
>>> def conditional_start(self):
... pass
>>> @start(and_("method1", "method2")) # Start after multiple methods
>>> def complex_start(self):
... pass
"""
def start(condition=None):
def decorator(func):
func.__is_start_method__ = True
if condition is not None:
@@ -95,42 +55,8 @@ def start(condition: Optional[Union[str, dict, Callable]] = None) -> Callable:
return decorator
def listen(condition: Union[str, dict, Callable]) -> Callable:
"""
Creates a listener that executes when specified conditions are met.
This decorator sets up a method to execute in response to other method
executions in the flow. It supports both simple and complex triggering
conditions.
Parameters
----------
condition : Union[str, dict, Callable]
Specifies when the listener should execute. Can be:
- str: Name of a method that triggers this listener
- dict: Contains "type" ("AND"/"OR") and "methods" (list of triggers)
- Callable: A method reference that triggers this listener
Returns
-------
Callable
A decorator function that sets up the method as a listener.
Raises
------
ValueError
If the condition format is invalid.
Examples
--------
>>> @listen("process_data") # Listen to single method
>>> def handle_processed_data(self):
... pass
>>> @listen(or_("success", "failure")) # Listen to multiple methods
>>> def handle_completion(self):
... pass
"""
def listen(condition):
def decorator(func):
if isinstance(condition, str):
func.__trigger_methods__ = [condition]
@@ -154,49 +80,10 @@ def listen(condition: Union[str, dict, Callable]) -> Callable:
return decorator
def router(condition: Union[str, dict, Callable]) -> Callable:
"""
Creates a routing method that directs flow execution based on conditions.
This decorator marks a method as a router, which can dynamically determine
the next steps in the flow based on its return value. Routers are triggered
by specified conditions and can return constants that determine which path
the flow should take.
Parameters
----------
condition : Union[str, dict, Callable]
Specifies when the router should execute. Can be:
- str: Name of a method that triggers this router
- dict: Contains "type" ("AND"/"OR") and "methods" (list of triggers)
- Callable: A method reference that triggers this router
Returns
-------
Callable
A decorator function that sets up the method as a router.
Raises
------
ValueError
If the condition format is invalid.
Examples
--------
>>> @router("check_status")
>>> def route_based_on_status(self):
... if self.state.status == "success":
... return SUCCESS
... return FAILURE
>>> @router(and_("validate", "process"))
>>> def complex_routing(self):
... if all([self.state.valid, self.state.processed]):
... return CONTINUE
... return STOP
"""
def router(condition):
def decorator(func):
func.__is_router__ = True
# Handle conditions like listen/start
if isinstance(condition, str):
func.__trigger_methods__ = [condition]
func.__condition_type__ = "OR"
@@ -218,39 +105,8 @@ def router(condition: Union[str, dict, Callable]) -> Callable:
return decorator
def or_(*conditions: Union[str, dict, Callable]) -> dict:
"""
Combines multiple conditions with OR logic for flow control.
Creates a condition that is satisfied when any of the specified conditions
are met. This is used with @start, @listen, or @router decorators to create
complex triggering conditions.
Parameters
----------
*conditions : Union[str, dict, Callable]
Variable number of conditions that can be:
- str: Method names
- dict: Existing condition dictionaries
- Callable: Method references
Returns
-------
dict
A condition dictionary with format:
{"type": "OR", "methods": list_of_method_names}
Raises
------
ValueError
If any condition is invalid.
Examples
--------
>>> @listen(or_("success", "timeout"))
>>> def handle_completion(self):
... pass
"""
def or_(*conditions):
methods = []
for condition in conditions:
if isinstance(condition, dict) and "methods" in condition:
@@ -264,39 +120,7 @@ def or_(*conditions: Union[str, dict, Callable]) -> dict:
return {"type": "OR", "methods": methods}
def and_(*conditions: Union[str, dict, Callable]) -> dict:
"""
Combines multiple conditions with AND logic for flow control.
Creates a condition that is satisfied only when all specified conditions
are met. This is used with @start, @listen, or @router decorators to create
complex triggering conditions.
Parameters
----------
*conditions : Union[str, dict, Callable]
Variable number of conditions that can be:
- str: Method names
- dict: Existing condition dictionaries
- Callable: Method references
Returns
-------
dict
A condition dictionary with format:
{"type": "AND", "methods": list_of_method_names}
Raises
------
ValueError
If any condition is invalid.
Examples
--------
>>> @listen(and_("validated", "processed"))
>>> def handle_complete_data(self):
... pass
"""
def and_(*conditions):
methods = []
for condition in conditions:
if isinstance(condition, dict) and "methods" in condition:
@@ -462,23 +286,6 @@ class Flow(Generic[T], metaclass=FlowMeta):
return final_output
async def _execute_start_method(self, start_method_name: str) -> None:
"""
Executes a flow's start method and its triggered listeners.
This internal method handles the execution of methods marked with @start
decorator and manages the subsequent chain of listener executions.
Parameters
----------
start_method_name : str
The name of the start method to execute.
Notes
-----
- Executes the start method and captures its result
- Triggers execution of any listeners waiting on this start method
- Part of the flow's initialization sequence
"""
result = await self._execute_method(
start_method_name, self._methods[start_method_name]
)
@@ -499,28 +306,6 @@ class Flow(Generic[T], metaclass=FlowMeta):
return result
async def _execute_listeners(self, trigger_method: str, result: Any) -> None:
"""
Executes all listeners and routers triggered by a method completion.
This internal method manages the execution flow by:
1. First executing all triggered routers sequentially
2. Then executing all triggered listeners in parallel
Parameters
----------
trigger_method : str
The name of the method that triggered these listeners.
result : Any
The result from the triggering method, passed to listeners
that accept parameters.
Notes
-----
- Routers are executed sequentially to maintain flow control
- Each router's result becomes the new trigger_method
- Normal listeners are executed in parallel for efficiency
- Listeners can receive the trigger method's result as a parameter
"""
# First, handle routers repeatedly until no router triggers anymore
while True:
routers_triggered = self._find_triggered_methods(
@@ -550,33 +335,6 @@ class Flow(Generic[T], metaclass=FlowMeta):
def _find_triggered_methods(
self, trigger_method: str, router_only: bool
) -> List[str]:
"""
Finds all methods that should be triggered based on conditions.
This internal method evaluates both OR and AND conditions to determine
which methods should be executed next in the flow.
Parameters
----------
trigger_method : str
The name of the method that just completed execution.
router_only : bool
If True, only consider router methods.
If False, only consider non-router methods.
Returns
-------
List[str]
Names of methods that should be triggered.
Notes
-----
- Handles both OR and AND conditions:
* OR: Triggers if any condition is met
* AND: Triggers only when all conditions are met
- Maintains state for AND conditions using _pending_and_listeners
- Separates router and normal listener evaluation
"""
triggered = []
for listener_name, (condition_type, methods) in self._listeners.items():
is_router = listener_name in self._routers
@@ -605,33 +363,6 @@ class Flow(Generic[T], metaclass=FlowMeta):
return triggered
async def _execute_single_listener(self, listener_name: str, result: Any) -> None:
"""
Executes a single listener method with proper event handling.
This internal method manages the execution of an individual listener,
including parameter inspection, event emission, and error handling.
Parameters
----------
listener_name : str
The name of the listener method to execute.
result : Any
The result from the triggering method, which may be passed
to the listener if it accepts parameters.
Notes
-----
- Inspects method signature to determine if it accepts the trigger result
- Emits events for method execution start and finish
- Handles errors gracefully with detailed logging
- Recursively triggers listeners of this listener
- Supports both parameterized and parameter-less listeners
Error Handling
-------------
Catches and logs any exceptions during execution, preventing
individual listener failures from breaking the entire flow.
"""
try:
method = self._methods[listener_name]

View File

@@ -1,14 +1,12 @@
# flow_visualizer.py
import os
from pathlib import Path
from pyvis.network import Network
from crewai.flow.config import COLORS, NODE_STYLES
from crewai.flow.html_template_handler import HTMLTemplateHandler
from crewai.flow.legend_generator import generate_legend_items_html, get_legend_items
from crewai.flow.path_utils import safe_path_join, validate_path_exists
from crewai.flow.utils import calculate_node_levels
from crewai.flow.visualization_utils import (
add_edges,
@@ -18,56 +16,12 @@ from crewai.flow.visualization_utils import (
class FlowPlot:
"""Handles the creation and rendering of flow visualization diagrams."""
def __init__(self, flow):
"""
Initialize FlowPlot with a flow object.
Parameters
----------
flow : Flow
A Flow instance to visualize.
Raises
------
ValueError
If flow object is invalid or missing required attributes.
"""
if not hasattr(flow, '_methods'):
raise ValueError("Invalid flow object: missing '_methods' attribute")
if not hasattr(flow, '_listeners'):
raise ValueError("Invalid flow object: missing '_listeners' attribute")
if not hasattr(flow, '_start_methods'):
raise ValueError("Invalid flow object: missing '_start_methods' attribute")
self.flow = flow
self.colors = COLORS
self.node_styles = NODE_STYLES
def plot(self, filename):
"""
Generate and save an HTML visualization of the flow.
Parameters
----------
filename : str
Name of the output file (without extension).
Raises
------
ValueError
If filename is invalid or network generation fails.
IOError
If file operations fail or visualization cannot be generated.
RuntimeError
If network visualization generation fails.
"""
if not filename or not isinstance(filename, str):
raise ValueError("Filename must be a non-empty string")
try:
# Initialize network
net = Network(
directed=True,
height="750px",
@@ -93,85 +47,34 @@ class FlowPlot:
)
# Calculate levels for nodes
try:
node_levels = calculate_node_levels(self.flow)
except Exception as e:
raise ValueError(f"Failed to calculate node levels: {str(e)}")
# Compute positions
try:
node_positions = compute_positions(self.flow, node_levels)
except Exception as e:
raise ValueError(f"Failed to compute node positions: {str(e)}")
# Add nodes to the network
try:
add_nodes_to_network(net, self.flow, node_positions, self.node_styles)
except Exception as e:
raise RuntimeError(f"Failed to add nodes to network: {str(e)}")
# Add edges to the network
try:
add_edges(net, self.flow, node_positions, self.colors)
except Exception as e:
raise RuntimeError(f"Failed to add edges to network: {str(e)}")
# Generate HTML
try:
network_html = net.generate_html()
final_html_content = self._generate_final_html(network_html)
except Exception as e:
raise RuntimeError(f"Failed to generate network visualization: {str(e)}")
# Save the final HTML content to the file
try:
with open(f"{filename}.html", "w", encoding="utf-8") as f:
f.write(final_html_content)
print(f"Plot saved as {filename}.html")
except IOError as e:
raise IOError(f"Failed to save flow visualization to {filename}.html: {str(e)}")
except (ValueError, RuntimeError, IOError) as e:
raise e
except Exception as e:
raise RuntimeError(f"Unexpected error during flow visualization: {str(e)}")
finally:
self._cleanup_pyvis_lib()
def _generate_final_html(self, network_html):
"""
Generate the final HTML content with network visualization and legend.
Parameters
----------
network_html : str
HTML content generated by pyvis Network.
Returns
-------
str
Complete HTML content with styling and legend.
Raises
------
IOError
If template or logo files cannot be accessed.
ValueError
If network_html is invalid.
"""
if not network_html:
raise ValueError("Invalid network HTML content")
try:
# Extract just the body content from the generated HTML
current_dir = os.path.dirname(__file__)
template_path = safe_path_join("assets", "crewai_flow_visual_template.html", root=current_dir)
logo_path = safe_path_join("assets", "crewai_logo.svg", root=current_dir)
if not os.path.exists(template_path):
raise IOError(f"Template file not found: {template_path}")
if not os.path.exists(logo_path):
raise IOError(f"Logo file not found: {logo_path}")
template_path = os.path.join(
current_dir, "assets", "crewai_flow_visual_template.html"
)
logo_path = os.path.join(current_dir, "assets", "crewai_logo.svg")
html_handler = HTMLTemplateHandler(template_path, logo_path)
network_body = html_handler.extract_body_content(network_html)
@@ -183,44 +86,19 @@ class FlowPlot:
network_body, legend_items_html
)
return final_html_content
except Exception as e:
raise IOError(f"Failed to generate visualization HTML: {str(e)}")
def _cleanup_pyvis_lib(self):
"""
Clean up the generated lib folder from pyvis.
This method safely removes the temporary lib directory created by pyvis
during network visualization generation.
"""
# Clean up the generated lib folder
lib_folder = os.path.join(os.getcwd(), "lib")
try:
lib_folder = safe_path_join("lib", root=os.getcwd())
if os.path.exists(lib_folder) and os.path.isdir(lib_folder):
import shutil
shutil.rmtree(lib_folder)
except ValueError as e:
print(f"Error validating lib folder path: {e}")
except Exception as e:
print(f"Error cleaning up lib folder: {e}")
print(f"Error cleaning up {lib_folder}: {e}")
def plot_flow(flow, filename="flow_plot"):
"""
Convenience function to create and save a flow visualization.
Parameters
----------
flow : Flow
Flow instance to visualize.
filename : str, optional
Output filename without extension, by default "flow_plot".
Raises
------
ValueError
If flow object or filename is invalid.
IOError
If file operations fail.
"""
visualizer = FlowPlot(flow)
visualizer.plot(filename)

View File

@@ -1,53 +1,26 @@
import base64
import re
from pathlib import Path
from crewai.flow.path_utils import safe_path_join, validate_path_exists
class HTMLTemplateHandler:
"""Handles HTML template processing and generation for flow visualization diagrams."""
def __init__(self, template_path, logo_path):
"""
Initialize HTMLTemplateHandler with validated template and logo paths.
Parameters
----------
template_path : str
Path to the HTML template file.
logo_path : str
Path to the logo image file.
Raises
------
ValueError
If template or logo paths are invalid or files don't exist.
"""
try:
self.template_path = validate_path_exists(template_path, "file")
self.logo_path = validate_path_exists(logo_path, "file")
except ValueError as e:
raise ValueError(f"Invalid template or logo path: {e}")
self.template_path = template_path
self.logo_path = logo_path
def read_template(self):
"""Read and return the HTML template file contents."""
with open(self.template_path, "r", encoding="utf-8") as f:
return f.read()
def encode_logo(self):
"""Convert the logo SVG file to base64 encoded string."""
with open(self.logo_path, "rb") as logo_file:
logo_svg_data = logo_file.read()
return base64.b64encode(logo_svg_data).decode("utf-8")
def extract_body_content(self, html):
"""Extract and return content between body tags from HTML string."""
match = re.search("<body.*?>(.*?)</body>", html, re.DOTALL)
return match.group(1) if match else ""
def generate_legend_items_html(self, legend_items):
"""Generate HTML markup for the legend items."""
legend_items_html = ""
for item in legend_items:
if "border" in item:
@@ -75,7 +48,6 @@ class HTMLTemplateHandler:
return legend_items_html
def generate_final_html(self, network_body, legend_items_html, title="Flow Plot"):
"""Combine all components into final HTML document with network visualization."""
html_template = self.read_template()
logo_svg_base64 = self.encode_logo()

View File

@@ -1,4 +1,3 @@
def get_legend_items(colors):
return [
{"label": "Start Method", "color": colors["start"]},

View File

@@ -1,135 +0,0 @@
"""
Path utilities for secure file operations in CrewAI flow module.
This module provides utilities for secure path handling to prevent directory
traversal attacks and ensure paths remain within allowed boundaries.
"""
import os
from pathlib import Path
from typing import List, Union
def safe_path_join(*parts: str, root: Union[str, Path, None] = None) -> str:
"""
Safely join path components and ensure the result is within allowed boundaries.
Parameters
----------
*parts : str
Variable number of path components to join.
root : Union[str, Path, None], optional
Root directory to use as base. If None, uses current working directory.
Returns
-------
str
String representation of the resolved path.
Raises
------
ValueError
If the resulting path would be outside the root directory
or if any path component is invalid.
"""
if not parts:
raise ValueError("No path components provided")
try:
# Convert all parts to strings and clean them
clean_parts = [str(part).strip() for part in parts if part]
if not clean_parts:
raise ValueError("No valid path components provided")
# Establish root directory
root_path = Path(root).resolve() if root else Path.cwd()
# Join and resolve the full path
full_path = Path(root_path, *clean_parts).resolve()
# Check if the resolved path is within root
if not str(full_path).startswith(str(root_path)):
raise ValueError(
f"Invalid path: Potential directory traversal. Path must be within {root_path}"
)
return str(full_path)
except Exception as e:
if isinstance(e, ValueError):
raise
raise ValueError(f"Invalid path components: {str(e)}")
def validate_path_exists(path: Union[str, Path], file_type: str = "file") -> str:
"""
Validate that a path exists and is of the expected type.
Parameters
----------
path : Union[str, Path]
Path to validate.
file_type : str, optional
Expected type ('file' or 'directory'), by default 'file'.
Returns
-------
str
Validated path as string.
Raises
------
ValueError
If path doesn't exist or is not of expected type.
"""
try:
path_obj = Path(path).resolve()
if not path_obj.exists():
raise ValueError(f"Path does not exist: {path}")
if file_type == "file" and not path_obj.is_file():
raise ValueError(f"Path is not a file: {path}")
elif file_type == "directory" and not path_obj.is_dir():
raise ValueError(f"Path is not a directory: {path}")
return str(path_obj)
except Exception as e:
if isinstance(e, ValueError):
raise
raise ValueError(f"Invalid path: {str(e)}")
def list_files(directory: Union[str, Path], pattern: str = "*") -> List[str]:
"""
Safely list files in a directory matching a pattern.
Parameters
----------
directory : Union[str, Path]
Directory to search in.
pattern : str, optional
Glob pattern to match files against, by default "*".
Returns
-------
List[str]
List of matching file paths.
Raises
------
ValueError
If directory is invalid or inaccessible.
"""
try:
dir_path = Path(directory).resolve()
if not dir_path.is_dir():
raise ValueError(f"Not a directory: {directory}")
return [str(p) for p in dir_path.glob(pattern) if p.is_file()]
except Exception as e:
if isinstance(e, ValueError):
raise
raise ValueError(f"Error listing files: {str(e)}")

View File

@@ -1,25 +1,9 @@
"""
Utility functions for flow visualization and dependency analysis.
This module provides core functionality for analyzing and manipulating flow structures,
including node level calculation, ancestor tracking, and return value analysis.
Functions in this module are primarily used by the visualization system to create
accurate and informative flow diagrams.
Example
-------
>>> flow = Flow()
>>> node_levels = calculate_node_levels(flow)
>>> ancestors = build_ancestor_dict(flow)
"""
import ast
import inspect
import textwrap
from typing import Any, Dict, List, Optional, Set, Union
def get_possible_return_constants(function: Any) -> Optional[List[str]]:
def get_possible_return_constants(function):
try:
source = inspect.getsource(function)
except OSError:
@@ -93,34 +77,11 @@ def get_possible_return_constants(function: Any) -> Optional[List[str]]:
return list(return_values) if return_values else None
def calculate_node_levels(flow: Any) -> Dict[str, int]:
"""
Calculate the hierarchical level of each node in the flow.
Performs a breadth-first traversal of the flow graph to assign levels
to nodes, starting with start methods at level 0.
Parameters
----------
flow : Any
The flow instance containing methods, listeners, and router configurations.
Returns
-------
Dict[str, int]
Dictionary mapping method names to their hierarchical levels.
Notes
-----
- Start methods are assigned level 0
- Each subsequent connected node is assigned level = parent_level + 1
- Handles both OR and AND conditions for listeners
- Processes router paths separately
"""
levels: Dict[str, int] = {}
queue: List[str] = []
visited: Set[str] = set()
pending_and_listeners: Dict[str, Set[str]] = {}
def calculate_node_levels(flow):
levels = {}
queue = []
visited = set()
pending_and_listeners = {}
# Make all start methods at level 0
for method_name, method in flow._methods.items():
@@ -179,20 +140,7 @@ def calculate_node_levels(flow: Any) -> Dict[str, int]:
return levels
def count_outgoing_edges(flow: Any) -> Dict[str, int]:
"""
Count the number of outgoing edges for each method in the flow.
Parameters
----------
flow : Any
The flow instance to analyze.
Returns
-------
Dict[str, int]
Dictionary mapping method names to their outgoing edge count.
"""
def count_outgoing_edges(flow):
counts = {}
for method_name in flow._methods:
counts[method_name] = 0
@@ -204,53 +152,16 @@ def count_outgoing_edges(flow: Any) -> Dict[str, int]:
return counts
def build_ancestor_dict(flow: Any) -> Dict[str, Set[str]]:
"""
Build a dictionary mapping each node to its ancestor nodes.
Parameters
----------
flow : Any
The flow instance to analyze.
Returns
-------
Dict[str, Set[str]]
Dictionary mapping each node to a set of its ancestor nodes.
"""
ancestors: Dict[str, Set[str]] = {node: set() for node in flow._methods}
visited: Set[str] = set()
def build_ancestor_dict(flow):
ancestors = {node: set() for node in flow._methods}
visited = set()
for node in flow._methods:
if node not in visited:
dfs_ancestors(node, ancestors, visited, flow)
return ancestors
def dfs_ancestors(
node: str,
ancestors: Dict[str, Set[str]],
visited: Set[str],
flow: Any
) -> None:
"""
Perform depth-first search to build ancestor relationships.
Parameters
----------
node : str
Current node being processed.
ancestors : Dict[str, Set[str]]
Dictionary tracking ancestor relationships.
visited : Set[str]
Set of already visited nodes.
flow : Any
The flow instance being analyzed.
Notes
-----
This function modifies the ancestors dictionary in-place to build
the complete ancestor graph.
"""
def dfs_ancestors(node, ancestors, visited, flow):
if node in visited:
return
visited.add(node)
@@ -274,48 +185,12 @@ def dfs_ancestors(
dfs_ancestors(listener_name, ancestors, visited, flow)
def is_ancestor(node: str, ancestor_candidate: str, ancestors: Dict[str, Set[str]]) -> bool:
"""
Check if one node is an ancestor of another.
Parameters
----------
node : str
The node to check ancestors for.
ancestor_candidate : str
The potential ancestor node.
ancestors : Dict[str, Set[str]]
Dictionary containing ancestor relationships.
Returns
-------
bool
True if ancestor_candidate is an ancestor of node, False otherwise.
"""
def is_ancestor(node, ancestor_candidate, ancestors):
return ancestor_candidate in ancestors.get(node, set())
def build_parent_children_dict(flow: Any) -> Dict[str, List[str]]:
"""
Build a dictionary mapping parent nodes to their children.
Parameters
----------
flow : Any
The flow instance to analyze.
Returns
-------
Dict[str, List[str]]
Dictionary mapping parent method names to lists of their child method names.
Notes
-----
- Maps listeners to their trigger methods
- Maps router methods to their paths and listeners
- Children lists are sorted for consistent ordering
"""
parent_children: Dict[str, List[str]] = {}
def build_parent_children_dict(flow):
parent_children = {}
# Map listeners to their trigger methods
for listener_name, (_, trigger_methods) in flow._listeners.items():
@@ -339,24 +214,7 @@ def build_parent_children_dict(flow: Any) -> Dict[str, List[str]]:
return parent_children
def get_child_index(parent: str, child: str, parent_children: Dict[str, List[str]]) -> int:
"""
Get the index of a child node in its parent's sorted children list.
Parameters
----------
parent : str
The parent node name.
child : str
The child node name to find the index for.
parent_children : Dict[str, List[str]]
Dictionary mapping parents to their children lists.
Returns
-------
int
Zero-based index of the child in its parent's sorted children list.
"""
def get_child_index(parent, child, parent_children):
children = parent_children.get(parent, [])
children.sort()
return children.index(child)

View File

@@ -1,23 +1,5 @@
"""
Utilities for creating visual representations of flow structures.
This module provides functions for generating network visualizations of flows,
including node placement, edge creation, and visual styling. It handles the
conversion of flow structures into visual network graphs with appropriate
styling and layout.
Example
-------
>>> flow = Flow()
>>> net = Network(directed=True)
>>> node_positions = compute_positions(flow, node_levels)
>>> add_nodes_to_network(net, flow, node_positions, node_styles)
>>> add_edges(net, flow, node_positions, colors)
"""
import ast
import inspect
from typing import Any, Dict, List, Optional, Tuple, Union
from .utils import (
build_ancestor_dict,
@@ -27,25 +9,8 @@ from .utils import (
)
def method_calls_crew(method: Any) -> bool:
"""
Check if the method contains a call to `.crew()`.
Parameters
----------
method : Any
The method to analyze for crew() calls.
Returns
-------
bool
True if the method calls .crew(), False otherwise.
Notes
-----
Uses AST analysis to detect method calls, specifically looking for
attribute access of 'crew'.
"""
def method_calls_crew(method):
"""Check if the method calls `.crew()`."""
try:
source = inspect.getsource(method)
source = inspect.cleandoc(source)
@@ -55,7 +20,6 @@ def method_calls_crew(method: Any) -> bool:
return False
class CrewCallVisitor(ast.NodeVisitor):
"""AST visitor to detect .crew() method calls."""
def __init__(self):
self.found = False
@@ -70,34 +34,7 @@ def method_calls_crew(method: Any) -> bool:
return visitor.found
def add_nodes_to_network(
net: Any,
flow: Any,
node_positions: Dict[str, Tuple[float, float]],
node_styles: Dict[str, Dict[str, Any]]
) -> None:
"""
Add nodes to the network visualization with appropriate styling.
Parameters
----------
net : Any
The pyvis Network instance to add nodes to.
flow : Any
The flow instance containing method information.
node_positions : Dict[str, Tuple[float, float]]
Dictionary mapping node names to their (x, y) positions.
node_styles : Dict[str, Dict[str, Any]]
Dictionary containing style configurations for different node types.
Notes
-----
Node types include:
- Start methods
- Router methods
- Crew methods
- Regular methods
"""
def add_nodes_to_network(net, flow, node_positions, node_styles):
def human_friendly_label(method_name):
return method_name.replace("_", " ").title()
@@ -136,33 +73,9 @@ def add_nodes_to_network(
)
def compute_positions(
flow: Any,
node_levels: Dict[str, int],
y_spacing: float = 150,
x_spacing: float = 150
) -> Dict[str, Tuple[float, float]]:
"""
Compute the (x, y) positions for each node in the flow graph.
Parameters
----------
flow : Any
The flow instance to compute positions for.
node_levels : Dict[str, int]
Dictionary mapping node names to their hierarchical levels.
y_spacing : float, optional
Vertical spacing between levels, by default 150.
x_spacing : float, optional
Horizontal spacing between nodes, by default 150.
Returns
-------
Dict[str, Tuple[float, float]]
Dictionary mapping node names to their (x, y) coordinates.
"""
level_nodes: Dict[int, List[str]] = {}
node_positions: Dict[str, Tuple[float, float]] = {}
def compute_positions(flow, node_levels, y_spacing=150, x_spacing=150):
level_nodes = {}
node_positions = {}
for method_name, level in node_levels.items():
level_nodes.setdefault(level, []).append(method_name)
@@ -177,33 +90,7 @@ def compute_positions(
return node_positions
def add_edges(
net: Any,
flow: Any,
node_positions: Dict[str, Tuple[float, float]],
colors: Dict[str, str]
) -> None:
edge_smooth: Dict[str, Union[str, float]] = {"type": "continuous"} # Default value
"""
Add edges to the network visualization with appropriate styling.
Parameters
----------
net : Any
The pyvis Network instance to add edges to.
flow : Any
The flow instance containing edge information.
node_positions : Dict[str, Tuple[float, float]]
Dictionary mapping node names to their positions.
colors : Dict[str, str]
Dictionary mapping edge types to their colors.
Notes
-----
- Handles both normal listener edges and router edges
- Applies appropriate styling (color, dashes) based on edge type
- Adds curvature to edges when needed (cycles or multiple children)
"""
def add_edges(net, flow, node_positions, colors):
ancestors = build_ancestor_dict(flow)
parent_children = build_parent_children_dict(flow)
@@ -239,7 +126,7 @@ def add_edges(
else:
edge_smooth = {"type": "cubicBezier"}
else:
edge_smooth.update({"type": "continuous"})
edge_smooth = False
edge_style = {
"color": edge_color,
@@ -302,7 +189,7 @@ def add_edges(
else:
edge_smooth = {"type": "cubicBezier"}
else:
edge_smooth.update({"type": "continuous"})
edge_smooth = False
edge_style = {
"color": colors["router_edge"],

View File

@@ -14,13 +14,13 @@ class Knowledge(BaseModel):
Knowledge is a collection of sources and setup for the vector store to save and query relevant context.
Args:
sources: List[BaseKnowledgeSource] = Field(default_factory=list)
storage: Optional[KnowledgeStorage] = Field(default=None)
storage: KnowledgeStorage = Field(default_factory=KnowledgeStorage)
embedder_config: Optional[Dict[str, Any]] = None
"""
sources: List[BaseKnowledgeSource] = Field(default_factory=list)
model_config = ConfigDict(arbitrary_types_allowed=True)
storage: Optional[KnowledgeStorage] = Field(default=None)
storage: KnowledgeStorage = Field(default_factory=KnowledgeStorage)
embedder_config: Optional[Dict[str, Any]] = None
collection_name: Optional[str] = None
@@ -49,12 +49,7 @@ class Knowledge(BaseModel):
"""
Query across all knowledge sources to find the most relevant information.
Returns the top_k most relevant chunks.
Raises:
ValueError: If storage is not initialized.
"""
if self.storage is None:
raise ValueError("Storage is not initialized.")
results = self.storage.search(
query,

View File

@@ -22,14 +22,13 @@ class BaseFileKnowledgeSource(BaseKnowledgeSource, ABC):
default_factory=list, description="The path to the file"
)
content: Dict[Path, str] = Field(init=False, default_factory=dict)
storage: Optional[KnowledgeStorage] = Field(default=None)
storage: KnowledgeStorage = Field(default_factory=KnowledgeStorage)
safe_file_paths: List[Path] = Field(default_factory=list)
@field_validator("file_path", "file_paths", mode="before")
def validate_file_path(cls, v, info):
def validate_file_path(cls, v, values):
"""Validate that at least one of file_path or file_paths is provided."""
# Single check if both are None, O(1) instead of nested conditions
if v is None and info.data.get("file_path" if info.field_name == "file_paths" else "file_paths") is None:
if v is None and ("file_path" not in values or values.get("file_path") is None):
raise ValueError("Either file_path or file_paths must be provided")
return v
@@ -63,10 +62,7 @@ class BaseFileKnowledgeSource(BaseKnowledgeSource, ABC):
def _save_documents(self):
"""Save the documents to the storage."""
if self.storage:
self.storage.save(self.chunks)
else:
raise ValueError("No storage found to save documents.")
def convert_to_path(self, path: Union[Path, str]) -> Path:
"""Convert a path to a Path object."""

View File

@@ -16,7 +16,7 @@ class BaseKnowledgeSource(BaseModel, ABC):
chunk_embeddings: List[np.ndarray] = Field(default_factory=list)
model_config = ConfigDict(arbitrary_types_allowed=True)
storage: Optional[KnowledgeStorage] = Field(default=None)
storage: KnowledgeStorage = Field(default_factory=KnowledgeStorage)
metadata: Dict[str, Any] = Field(default_factory=dict) # Currently unused
collection_name: Optional[str] = Field(default=None)
@@ -46,7 +46,4 @@ class BaseKnowledgeSource(BaseModel, ABC):
Save the documents to the storage.
This method should be called after the chunks and embeddings are generated.
"""
if self.storage:
self.storage.save(self.chunks)
else:
raise ValueError("No storage found to save documents.")

View File

@@ -2,16 +2,11 @@ from pathlib import Path
from typing import Iterator, List, Optional, Union
from urllib.parse import urlparse
try:
from docling.datamodel.base_models import InputFormat
from docling.document_converter import DocumentConverter
from docling.exceptions import ConversionError
from docling_core.transforms.chunker.hierarchical_chunker import HierarchicalChunker
from docling_core.types.doc.document import DoclingDocument
DOCLING_AVAILABLE = True
except ImportError:
DOCLING_AVAILABLE = False
from docling.datamodel.base_models import InputFormat
from docling.document_converter import DocumentConverter
from docling.exceptions import ConversionError
from docling_core.transforms.chunker.hierarchical_chunker import HierarchicalChunker
from docling_core.types.doc.document import DoclingDocument
from pydantic import Field
from crewai.knowledge.source.base_knowledge_source import BaseKnowledgeSource
@@ -24,14 +19,6 @@ class CrewDoclingSource(BaseKnowledgeSource):
This will auto support PDF, DOCX, and TXT, XLSX, Images, and HTML files without any additional dependencies and follows the docling package as the source of truth.
"""
def __init__(self, *args, **kwargs):
if not DOCLING_AVAILABLE:
raise ImportError(
"The docling package is required to use CrewDoclingSource. "
"Please install it using: uv add docling"
)
super().__init__(*args, **kwargs)
_logger: Logger = Logger(verbose=True)
file_path: Optional[List[Union[Path, str]]] = Field(default=None)

View File

@@ -6,10 +6,8 @@ import warnings
from contextlib import contextmanager
from typing import Any, Dict, List, Optional, Union
with warnings.catch_warnings():
warnings.simplefilter("ignore", UserWarning)
import litellm
from litellm import get_supported_openai_params
import litellm
from litellm import get_supported_openai_params
from crewai.utilities.exceptions.context_window_exceeding_exception import (
LLMContextLengthExceededException,
@@ -140,7 +138,7 @@ class LLM:
self.kwargs = kwargs
litellm.drop_params = True
litellm.set_verbose = False
self.set_callbacks(callbacks)
self.set_env_callbacks()

View File

@@ -4,23 +4,18 @@ from typing import Callable
from crewai import Crew
from crewai.project.utils import memoize
"""Decorators for defining crew components and their behaviors."""
def before_kickoff(func):
"""Marks a method to execute before crew kickoff."""
func.is_before_kickoff = True
return func
def after_kickoff(func):
"""Marks a method to execute after crew kickoff."""
func.is_after_kickoff = True
return func
def task(func):
"""Marks a method as a crew task."""
func.is_task = True
@wraps(func)
@@ -34,51 +29,43 @@ def task(func):
def agent(func):
"""Marks a method as a crew agent."""
func.is_agent = True
func = memoize(func)
return func
def llm(func):
"""Marks a method as an LLM provider."""
func.is_llm = True
func = memoize(func)
return func
def output_json(cls):
"""Marks a class as JSON output format."""
cls.is_output_json = True
return cls
def output_pydantic(cls):
"""Marks a class as Pydantic output format."""
cls.is_output_pydantic = True
return cls
def tool(func):
"""Marks a method as a crew tool."""
func.is_tool = True
return memoize(func)
def callback(func):
"""Marks a method as a crew callback."""
func.is_callback = True
return memoize(func)
def cache_handler(func):
"""Marks a method as a cache handler."""
func.is_cache_handler = True
return memoize(func)
def crew(func) -> Callable[..., Crew]:
"""Marks a method as the main crew execution point."""
@wraps(func)
def wrapper(self, *args, **kwargs) -> Crew:

View File

@@ -9,10 +9,8 @@ load_dotenv()
T = TypeVar("T", bound=type)
"""Base decorator for creating crew classes with configuration and function management."""
def CrewBase(cls: T) -> T:
"""Wraps a class with crew functionality and configuration management."""
class WrappedClass(cls): # type: ignore
is_crew_class: bool = True # type: ignore

View File

@@ -127,18 +127,15 @@ class Task(BaseModel):
processed_by_agents: Set[str] = Field(default_factory=set)
guardrail: Optional[Callable[[TaskOutput], Tuple[bool, Any]]] = Field(
default=None,
description="Function to validate task output before proceeding to next task",
description="Function to validate task output before proceeding to next task"
)
max_retries: int = Field(
default=3, description="Maximum number of retries when guardrail fails"
default=3,
description="Maximum number of retries when guardrail fails"
)
retry_count: int = Field(default=0, description="Current number of retries")
start_time: Optional[datetime.datetime] = Field(
default=None, description="Start time of the task execution"
)
end_time: Optional[datetime.datetime] = Field(
default=None, description="End time of the task execution"
retry_count: int = Field(
default=0,
description="Current number of retries"
)
@field_validator("guardrail")
@@ -174,21 +171,16 @@ class Task(BaseModel):
# Check return annotation if present, but don't require it
return_annotation = sig.return_annotation
if return_annotation != inspect.Signature.empty:
if not (
return_annotation == Tuple[bool, Any]
or str(return_annotation) == "Tuple[bool, Any]"
):
raise ValueError(
"If return type is annotated, it must be Tuple[bool, Any]"
)
if not (return_annotation == Tuple[bool, Any] or str(return_annotation) == 'Tuple[bool, Any]'):
raise ValueError("If return type is annotated, it must be Tuple[bool, Any]")
return v
_telemetry: Telemetry = PrivateAttr(default_factory=Telemetry)
_execution_span: Optional[Span] = PrivateAttr(default=None)
_original_description: Optional[str] = PrivateAttr(default=None)
_original_expected_output: Optional[str] = PrivateAttr(default=None)
_original_output_file: Optional[str] = PrivateAttr(default=None)
_thread: Optional[threading.Thread] = PrivateAttr(default=None)
_execution_time: Optional[float] = PrivateAttr(default=None)
@model_validator(mode="before")
@classmethod
@@ -213,54 +205,16 @@ class Task(BaseModel):
"may_not_set_field", "This field is not to be set by the user.", {}
)
def _set_start_execution_time(self) -> float:
return datetime.datetime.now().timestamp()
def _set_end_execution_time(self, start_time: float) -> None:
self._execution_time = datetime.datetime.now().timestamp() - start_time
@field_validator("output_file")
@classmethod
def output_file_validation(cls, value: Optional[str]) -> Optional[str]:
"""Validate the output file path.
Args:
value: The output file path to validate. Can be None or a string.
If the path contains template variables (e.g. {var}), leading slashes are preserved.
For regular paths, leading slashes are stripped.
Returns:
The validated and potentially modified path, or None if no path was provided.
Raises:
ValueError: If the path contains invalid characters, path traversal attempts,
or other security concerns.
"""
if value is None:
return None
# Basic security checks
if ".." in value:
raise ValueError(
"Path traversal attempts are not allowed in output_file paths"
)
# Check for shell expansion first
if value.startswith("~") or value.startswith("$"):
raise ValueError(
"Shell expansion characters are not allowed in output_file paths"
)
# Then check other shell special characters
if any(char in value for char in ["|", ">", "<", "&", ";"]):
raise ValueError(
"Shell special characters are not allowed in output_file paths"
)
# Don't strip leading slash if it's a template path with variables
if "{" in value or "}" in value:
# Validate template variable format
template_vars = [part.split("}")[0] for part in value.split("{")[1:]]
for var in template_vars:
if not var.isidentifier():
raise ValueError(f"Invalid template variable name: {var}")
return value
# Strip leading slash for regular paths
def output_file_validation(cls, value: str) -> str:
"""Validate the output file path by removing the / from the beginning of the path."""
if value.startswith("/"):
return value[1:]
return value
@@ -309,12 +263,6 @@ class Task(BaseModel):
return md5("|".join(source).encode(), usedforsecurity=False).hexdigest()
@property
def execution_duration(self) -> float | None:
if not self.start_time or not self.end_time:
return None
return (self.end_time - self.start_time).total_seconds()
def execute_async(
self,
agent: BaseAgent | None = None,
@@ -355,7 +303,7 @@ class Task(BaseModel):
f"The task '{self.description}' has no agent assigned, therefore it can't be executed directly and should be executed in a Crew using a specific process that support that, like hierarchical."
)
self.start_time = datetime.datetime.now()
start_time = self._set_start_execution_time()
self._execution_span = self._telemetry.task_started(crew=agent.crew, task=self)
self.prompt_context = context
@@ -405,17 +353,15 @@ class Task(BaseModel):
if isinstance(guardrail_result.result, str):
task_output.raw = guardrail_result.result
pydantic_output, json_output = self._export_output(
guardrail_result.result
)
pydantic_output, json_output = self._export_output(guardrail_result.result)
task_output.pydantic = pydantic_output
task_output.json_dict = json_output
elif isinstance(guardrail_result.result, TaskOutput):
task_output = guardrail_result.result
self.output = task_output
self.end_time = datetime.datetime.now()
self._set_end_execution_time(start_time)
if self.callback:
self.callback(self.output)
@@ -427,9 +373,7 @@ class Task(BaseModel):
content = (
json_output
if json_output
else pydantic_output.model_dump_json()
if pydantic_output
else result
else pydantic_output.model_dump_json() if pydantic_output else result
)
self._save_file(content)
@@ -449,101 +393,27 @@ class Task(BaseModel):
tasks_slices = [self.description, output]
return "\n".join(tasks_slices)
def interpolate_inputs(self, inputs: Dict[str, Union[str, int, float]]) -> None:
"""Interpolate inputs into the task description, expected output, and output file path.
Args:
inputs: Dictionary mapping template variables to their values.
Supported value types are strings, integers, and floats.
Raises:
ValueError: If a required template variable is missing from inputs.
"""
def interpolate_inputs(self, inputs: Dict[str, Any]) -> None:
"""Interpolate inputs into the task description and expected output."""
if self._original_description is None:
self._original_description = self.description
if self._original_expected_output is None:
self._original_expected_output = self.expected_output
if self.output_file is not None and self._original_output_file is None:
self._original_output_file = self.output_file
if not inputs:
return
try:
if inputs:
self.description = self._original_description.format(**inputs)
except KeyError as e:
raise ValueError(
f"Missing required template variable '{e.args[0]}' in description"
) from e
except ValueError as e:
raise ValueError(f"Error interpolating description: {str(e)}") from e
try:
self.expected_output = self.interpolate_only(
input_string=self._original_expected_output, inputs=inputs
)
except (KeyError, ValueError) as e:
raise ValueError(f"Error interpolating expected_output: {str(e)}") from e
if self.output_file is not None:
try:
self.output_file = self.interpolate_only(
input_string=self._original_output_file, inputs=inputs
)
except (KeyError, ValueError) as e:
raise ValueError(
f"Error interpolating output_file path: {str(e)}"
) from e
def interpolate_only(
self, input_string: Optional[str], inputs: Dict[str, Union[str, int, float]]
) -> str:
"""Interpolate placeholders (e.g., {key}) in a string while leaving JSON untouched.
Args:
input_string: The string containing template variables to interpolate.
Can be None or empty, in which case an empty string is returned.
inputs: Dictionary mapping template variables to their values.
Supported value types are strings, integers, and floats.
If input_string is empty or has no placeholders, inputs can be empty.
Returns:
The interpolated string with all template variables replaced with their values.
Empty string if input_string is None or empty.
Raises:
ValueError: If a required template variable is missing from inputs.
KeyError: If a template variable is not found in the inputs dictionary.
"""
if input_string is None or not input_string:
return ""
if "{" not in input_string and "}" not in input_string:
return input_string
if not inputs:
raise ValueError(
"Inputs dictionary cannot be empty when interpolating variables"
)
try:
# Validate input types
for key, value in inputs.items():
if not isinstance(value, (str, int, float)):
raise ValueError(
f"Value for key '{key}' must be a string, integer, or float, got {type(value).__name__}"
)
def interpolate_only(self, input_string: str, inputs: Dict[str, Any]) -> str:
"""Interpolate placeholders (e.g., {key}) in a string while leaving JSON untouched."""
escaped_string = input_string.replace("{", "{{").replace("}", "}}")
for key in inputs.keys():
escaped_string = escaped_string.replace(f"{{{{{key}}}}}", f"{{{key}}}")
return escaped_string.format(**inputs)
except KeyError as e:
raise KeyError(
f"Template variable '{e.args[0]}' not found in inputs dictionary"
) from e
except ValueError as e:
raise ValueError(f"Error during string interpolation: {str(e)}") from e
def increment_tools_errors(self) -> None:
"""Increment the tools errors counter."""
@@ -647,7 +517,6 @@ class Task(BaseModel):
with resolved_path.open("w", encoding="utf-8") as file:
if isinstance(result, dict):
import json
json.dump(result, file, ensure_ascii=False, indent=2)
else:
file.write(str(result))

View File

@@ -1,4 +1,3 @@
import logging
from typing import Optional, Union
from pydantic import Field
@@ -8,8 +7,6 @@ from crewai.task import Task
from crewai.tools.base_tool import BaseTool
from crewai.utilities import I18N
logger = logging.getLogger(__name__)
class BaseAgentTool(BaseTool):
"""Base class for agent-related tools"""
@@ -19,25 +16,6 @@ class BaseAgentTool(BaseTool):
default_factory=I18N, description="Internationalization settings"
)
def sanitize_agent_name(self, name: str) -> str:
"""
Sanitize agent role name by normalizing whitespace and setting to lowercase.
Converts all whitespace (including newlines) to single spaces and removes quotes.
Args:
name (str): The agent role name to sanitize
Returns:
str: The sanitized agent role name, with whitespace normalized,
converted to lowercase, and quotes removed
"""
if not name:
return ""
# Normalize all whitespace (including newlines) to single spaces
normalized = " ".join(name.split())
# Remove quotes and convert to lowercase
return normalized.replace('"', "").casefold()
def _get_coworker(self, coworker: Optional[str], **kwargs) -> Optional[str]:
coworker = coworker or kwargs.get("co_worker") or kwargs.get("coworker")
if coworker:
@@ -47,27 +25,11 @@ class BaseAgentTool(BaseTool):
return coworker
def _execute(
self,
agent_name: Optional[str],
task: str,
context: Optional[str] = None
self, agent_name: Union[str, None], task: str, context: Union[str, None]
) -> str:
"""
Execute delegation to an agent with case-insensitive and whitespace-tolerant matching.
Args:
agent_name: Name/role of the agent to delegate to (case-insensitive)
task: The specific question or task to delegate
context: Optional additional context for the task execution
Returns:
str: The execution result from the delegated agent or an error message
if the agent cannot be found
"""
try:
if agent_name is None:
agent_name = ""
logger.debug("No agent name provided, using empty string")
# It is important to remove the quotes from the agent name.
# The reason we have to do this is because less-powerful LLM's
@@ -76,49 +38,31 @@ class BaseAgentTool(BaseTool):
# {"task": "....", "coworker": "....
# when it should look like this:
# {"task": "....", "coworker": "...."}
sanitized_name = self.sanitize_agent_name(agent_name)
logger.debug(f"Sanitized agent name from '{agent_name}' to '{sanitized_name}'")
available_agents = [agent.role for agent in self.agents]
logger.debug(f"Available agents: {available_agents}")
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
if self.sanitize_agent_name(available_agent.role) == sanitized_name
if available_agent.role.casefold().replace("\n", "") == agent_name
]
logger.debug(f"Found {len(agent)} matching agents for role '{sanitized_name}'")
except (AttributeError, ValueError) as e:
# Handle specific exceptions that might occur during role name processing
except Exception as _:
return self.i18n.errors("agent_tool_unexisting_coworker").format(
coworkers="\n".join(
[f"- {self.sanitize_agent_name(agent.role)}" for agent in self.agents]
),
error=str(e)
[f"- {agent.role.casefold()}" for agent in self.agents]
)
)
if not agent:
# No matching agent found after sanitization
return self.i18n.errors("agent_tool_unexisting_coworker").format(
coworkers="\n".join(
[f"- {self.sanitize_agent_name(agent.role)}" for agent in self.agents]
),
error=f"No agent found with role '{sanitized_name}'"
[f"- {agent.role.casefold()}" for agent in self.agents]
)
)
agent = agent[0]
try:
task_with_assigned_agent = Task(
task_with_assigned_agent = Task( # type: ignore # Incompatible types in assignment (expression has type "Task", variable has type "str")
description=task,
agent=agent,
expected_output=agent.i18n.slice("manager_request"),
i18n=agent.i18n,
)
logger.debug(f"Created task for agent '{self.sanitize_agent_name(agent.role)}': {task}")
return agent.execute_task(task_with_assigned_agent, context)
except Exception as e:
# Handle task creation or execution errors
return self.i18n.errors("agent_tool_execution_error").format(
agent_role=self.sanitize_agent_name(agent.role),
error=str(e)
)

View File

@@ -169,7 +169,7 @@ class ToolUsage:
if calling.arguments:
try:
acceptable_args = tool.args_schema.model_json_schema()["properties"].keys() # type: ignore
acceptable_args = tool.args_schema.schema()["properties"].keys() # type: ignore # Item "None" of "type[BaseModel] | None" has no attribute "schema"
arguments = {
k: v
for k, v in calling.arguments.items()

View File

@@ -33,8 +33,7 @@
"tool_usage_error": "I encountered an error: {error}",
"tool_arguments_error": "Error: the Action Input is not a valid key, value dictionary.",
"wrong_tool_name": "You tried to use the tool {tool}, but it doesn't exist. You must use one of the following tools, use one at time: {tools}.",
"tool_usage_exception": "I encountered an error while trying to use the tool. This was the error: {error}.\n Tool {tool} accepts these inputs: {tool_inputs}",
"agent_tool_execution_error": "Error executing task with agent '{agent_role}'. Error: {error}"
"tool_usage_exception": "I encountered an error while trying to use the tool. This was the error: {error}.\n Tool {tool} accepts these inputs: {tool_inputs}"
},
"tools": {
"delegate_work": "Delegate a specific task to one of the following coworkers: {coworkers}\nThe input to this tool should be the coworker, the task you want them to do, and ALL necessary context to execute the task, they know nothing about the task, so share absolute everything you know, don't reference things but instead explain them.",

View File

@@ -1,5 +1,3 @@
"""JSON encoder for handling CrewAI specific types."""
import json
from datetime import date, datetime
from decimal import Decimal
@@ -10,7 +8,6 @@ from pydantic import BaseModel
class CrewJSONEncoder(json.JSONEncoder):
"""Custom JSON encoder for CrewAI objects and special types."""
def default(self, obj):
if isinstance(obj, BaseModel):
return self._handle_pydantic_model(obj)

View File

@@ -6,10 +6,9 @@ from pydantic import BaseModel, ValidationError
from crewai.agents.parser import OutputParserException
"""Parser for converting text outputs into Pydantic models."""
class CrewPydanticOutputParser:
"""Parses text outputs into specified Pydantic models."""
"""Parses the text into pydantic models"""
pydantic_object: Type[BaseModel]

View File

@@ -180,12 +180,12 @@ class CrewEvaluator:
self._test_result_span = self._telemetry.individual_test_result_span(
self.crew,
evaluation_result.pydantic.quality,
current_task.execution_duration,
current_task._execution_time,
self.openai_model_name,
)
self.tasks_scores[self.iteration].append(evaluation_result.pydantic.quality)
self.run_execution_times[self.iteration].append(
current_task.execution_duration
current_task._execution_time
)
else:
raise ValueError("Evaluation result is not in the expected format")

View File

@@ -4,10 +4,8 @@ from typing import Dict, Optional, Union
from pydantic import BaseModel, Field, PrivateAttr, model_validator
"""Internationalization support for CrewAI prompts and messages."""
class I18N(BaseModel):
"""Handles loading and retrieving internationalized prompts."""
_prompts: Dict[str, Dict[str, str]] = PrivateAttr()
prompt_file: Optional[str] = Field(
default=None,

View File

@@ -1,4 +1,3 @@
import warnings
from typing import Any, Optional, Type
@@ -26,8 +25,7 @@ class InternalInstructor:
if self.agent and not self.llm:
self.llm = self.agent.function_calling_llm or self.agent.llm
with warnings.catch_warnings():
warnings.simplefilter("ignore", UserWarning)
# Lazy import
import instructor
from litellm import completion

View File

@@ -3,10 +3,8 @@ from pathlib import Path
import appdirs
"""Path management utilities for CrewAI storage and configuration."""
def db_storage_path():
"""Returns the path for database storage."""
app_name = get_project_directory_name()
app_author = "CrewAI"
@@ -16,7 +14,6 @@ def db_storage_path():
def get_project_directory_name():
"""Returns the current project directory name."""
project_directory_name = os.environ.get("CREWAI_STORAGE_DIR")
if project_directory_name:

View File

@@ -1,5 +1,3 @@
import json
import logging
from typing import Any, List, Optional
from pydantic import BaseModel, Field
@@ -7,11 +5,8 @@ from pydantic import BaseModel, Field
from crewai.agent import Agent
from crewai.task import Task
"""Handles planning and coordination of crew tasks."""
logger = logging.getLogger(__name__)
class PlanPerTask(BaseModel):
"""Represents a plan for a specific task."""
task: str = Field(..., description="The task for which the plan is created")
plan: str = Field(
...,
@@ -20,7 +15,6 @@ class PlanPerTask(BaseModel):
class PlannerTaskPydanticOutput(BaseModel):
"""Output format for task planning results."""
list_of_plans_per_task: List[PlanPerTask] = Field(
...,
description="Step by step plan on how the agents can execute their tasks using the available tools with mastery",
@@ -28,7 +22,6 @@ class PlannerTaskPydanticOutput(BaseModel):
class CrewPlanner:
"""Plans and coordinates the execution of crew tasks."""
def __init__(self, tasks: List[Task], planning_agent_llm: Optional[Any] = None):
self.tasks = tasks
@@ -75,39 +68,19 @@ class CrewPlanner:
output_pydantic=PlannerTaskPydanticOutput,
)
def _get_agent_knowledge(self, task: Task) -> List[str]:
"""
Safely retrieve knowledge source content from the task's agent.
Args:
task: The task containing an agent with potential knowledge sources
Returns:
List[str]: A list of knowledge source strings
"""
try:
if task.agent and task.agent.knowledge_sources:
return [source.content for source in task.agent.knowledge_sources]
except AttributeError:
logger.warning("Error accessing agent knowledge sources")
return []
def _create_tasks_summary(self) -> str:
"""Creates a summary of all tasks."""
tasks_summary = []
for idx, task in enumerate(self.tasks):
knowledge_list = self._get_agent_knowledge(task)
task_summary = f"""
tasks_summary.append(
f"""
Task Number {idx + 1} - {task.description}
"task_description": {task.description}
"task_expected_output": {task.expected_output}
"agent": {task.agent.role if task.agent else "None"}
"agent_goal": {task.agent.goal if task.agent else "None"}
"task_tools": {task.tools}
"agent_tools": %s%s""" % (
f"[{', '.join(str(tool) for tool in task.agent.tools)}]" if task.agent and task.agent.tools else '"agent has no tools"',
f',\n "agent_knowledge": "[\\"{knowledge_list[0]}\\"]"' if knowledge_list and str(knowledge_list) != "None" else ""
"agent_tools": {task.agent.tools if task.agent else "None"}
"""
)
tasks_summary.append(task_summary)
return " ".join(tasks_summary)

View File

@@ -1,11 +1,7 @@
"""Utility for colored console output."""
from typing import Optional
class Printer:
"""Handles colored console output formatting."""
def print(self, content: str, color: Optional[str] = None):
if color == "purple":
self._print_purple(content)

View File

@@ -6,10 +6,8 @@ from pydantic import BaseModel, Field, PrivateAttr, model_validator
from crewai.utilities.logger import Logger
"""Controls request rate limiting for API calls."""
class RPMController(BaseModel):
"""Manages requests per minute limiting."""
max_rpm: Optional[int] = Field(default=None)
logger: Logger = Field(default_factory=lambda: Logger(verbose=False))
_current_rpm: int = PrivateAttr(default=0)

View File

@@ -8,10 +8,8 @@ from crewai.memory.storage.kickoff_task_outputs_storage import (
)
from crewai.task import Task
"""Handles storage and retrieval of task execution outputs."""
class ExecutionLog(BaseModel):
"""Represents a log entry for task execution."""
task_id: str
expected_output: Optional[str] = None
output: Dict[str, Any]
@@ -24,8 +22,6 @@ class ExecutionLog(BaseModel):
return getattr(self, key)
"""Manages storage and retrieval of task outputs."""
class TaskOutputStorageHandler:
def __init__(self) -> None:
self.storage = KickoffTaskOutputsSQLiteStorage()

View File

@@ -1,5 +1,3 @@
import warnings
from litellm.integrations.custom_logger import CustomLogger
from litellm.types.utils import Usage
@@ -14,8 +12,6 @@ class TokenCalcHandler(CustomLogger):
if self.token_cost_process is None:
return
with warnings.catch_warnings():
warnings.simplefilter("ignore", UserWarning)
usage: Usage = response_obj["usage"]
self.token_cost_process.sum_successful_requests(1)
self.token_cost_process.sum_prompt_tokens(usage.prompt_tokens)

View File

@@ -1445,43 +1445,44 @@ def test_llm_call_with_all_attributes():
@pytest.mark.vcr(filter_headers=["authorization"])
def test_agent_with_ollama_llama3():
def test_agent_with_ollama_gemma():
agent = Agent(
role="test role",
goal="test goal",
backstory="test backstory",
llm=LLM(model="ollama/llama3.2:3b", base_url="http://localhost:11434"),
llm=LLM(
model="ollama/gemma2:latest",
base_url="http://localhost:8080",
),
)
assert isinstance(agent.llm, LLM)
assert agent.llm.model == "ollama/llama3.2:3b"
assert agent.llm.base_url == "http://localhost:11434"
assert agent.llm.model == "ollama/gemma2:latest"
assert agent.llm.base_url == "http://localhost:8080"
task = "Respond in 20 words. Which model are you?"
task = "Respond in 20 words. Who are you?"
response = agent.llm.call([{"role": "user", "content": task}])
assert response
assert len(response.split()) <= 25 # Allow a little flexibility in word count
assert "Llama3" in response or "AI" in response or "language model" in response
assert "Gemma" in response or "AI" in response or "language model" in response
@pytest.mark.vcr(filter_headers=["authorization"])
def test_llm_call_with_ollama_llama3():
def test_llm_call_with_ollama_gemma():
llm = LLM(
model="ollama/llama3.2:3b",
base_url="http://localhost:11434",
model="ollama/gemma2:latest",
base_url="http://localhost:8080",
temperature=0.7,
max_tokens=30,
)
messages = [
{"role": "user", "content": "Respond in 20 words. Which model are you?"}
]
messages = [{"role": "user", "content": "Respond in 20 words. Who are you?"}]
response = llm.call(messages)
assert response
assert len(response.split()) <= 25 # Allow a little flexibility in word count
assert "Llama3" in response or "AI" in response or "language model" in response
assert "Gemma" in response or "AI" in response or "language model" in response
@pytest.mark.vcr(filter_headers=["authorization"])
@@ -1577,7 +1578,7 @@ def test_agent_execute_task_with_ollama():
role="test role",
goal="test goal",
backstory="test backstory",
llm=LLM(model="ollama/llama3.2:3b", base_url="http://localhost:11434"),
llm=LLM(model="ollama/gemma2:latest", base_url="http://localhost:8080"),
)
task = Task(
@@ -1624,3 +1625,78 @@ def test_agent_with_knowledge_sources():
# Assert that the agent provides the correct information
assert "red" in result.raw.lower()
def test_proactive_context_length_handling_prevents_empty_response():
"""Test that proactive context length checking prevents empty LLM responses."""
agent = Agent(
role="test role",
goal="test goal",
backstory="test backstory",
sliding_context_window=True,
)
long_input = "This is a very long input that should exceed the context window. " * 1000
with patch.object(agent.llm, 'get_context_window_size', return_value=100):
with patch.object(agent.agent_executor, '_handle_context_length') as mock_handle:
with patch.object(agent.llm, 'call', return_value="Proper response after summarization"):
agent.agent_executor.messages = [
{"role": "user", "content": long_input}
]
task = Task(
description="Process this long input",
expected_output="A response",
agent=agent,
)
result = agent.execute_task(task)
mock_handle.assert_called()
assert result and result.strip() != ""
def test_proactive_context_length_handling_with_no_summarization():
"""Test proactive context length checking when summarization is disabled."""
agent = Agent(
role="test role",
goal="test goal",
backstory="test backstory",
sliding_context_window=False,
)
long_input = "This is a very long input. " * 1000
with patch.object(agent.llm, 'get_context_window_size', return_value=100):
agent.agent_executor.messages = [
{"role": "user", "content": long_input}
]
with pytest.raises(SystemExit):
agent.agent_executor._check_context_length_before_call()
def test_context_length_estimation():
"""Test the token estimation logic."""
agent = Agent(
role="test role",
goal="test goal",
backstory="test backstory",
)
agent.agent_executor.messages = [
{"role": "user", "content": "Short message"},
{"role": "assistant", "content": "Another short message"},
]
with patch.object(agent.llm, 'get_context_window_size', return_value=10):
with patch.object(agent.agent_executor, '_handle_context_length') as mock_handle:
agent.agent_executor._check_context_length_before_call()
mock_handle.assert_not_called()
with patch.object(agent.llm, 'get_context_window_size', return_value=5):
with patch.object(agent.agent_executor, '_handle_context_length') as mock_handle:
agent.agent_executor._check_context_length_before_call()
mock_handle.assert_called()

View File

@@ -1,6 +1,42 @@
interactions:
- request:
body: '{"model": "llama3.2:3b", "prompt": "### System:\nYou are test role. test
body: !!binary |
CrcCCiQKIgoMc2VydmljZS5uYW1lEhIKEGNyZXdBSS10ZWxlbWV0cnkSjgIKEgoQY3Jld2FpLnRl
bGVtZXRyeRJoChA/Q8UW5bidCRtKvri5fOaNEgh5qLzvLvZJkioQVG9vbCBVc2FnZSBFcnJvcjAB
OYjFVQr1TPgXQXCXhwr1TPgXShoKDmNyZXdhaV92ZXJzaW9uEggKBjAuNjEuMHoCGAGFAQABAAAS
jQEKEChQTWQ07t26ELkZmP5RresSCHEivRGBpsP7KgpUb29sIFVzYWdlMAE5sKkbC/VM+BdB8MIc
C/VM+BdKGgoOY3Jld2FpX3ZlcnNpb24SCAoGMC42MS4wShkKCXRvb2xfbmFtZRIMCgpkdW1teV90
b29sSg4KCGF0dGVtcHRzEgIYAXoCGAGFAQABAAA=
headers:
Accept:
- '*/*'
Accept-Encoding:
- gzip, deflate
Connection:
- keep-alive
Content-Length:
- '314'
Content-Type:
- application/x-protobuf
User-Agent:
- OTel-OTLP-Exporter-Python/1.27.0
method: POST
uri: https://telemetry.crewai.com:4319/v1/traces
response:
body:
string: "\n\0"
headers:
Content-Length:
- '2'
Content-Type:
- application/x-protobuf
Date:
- Tue, 24 Sep 2024 21:57:54 GMT
status:
code: 200
message: OK
- request:
body: '{"model": "gemma2:latest", "prompt": "### System:\nYou are test role. test
backstory\nYour personal goal is: test goal\nTo give my best complete final
answer to the task use the exact following format:\n\nThought: I now can give
a great answer\nFinal Answer: Your final answer must be the great and the most
@@ -10,7 +46,7 @@ interactions:
explanation of AI\nyou MUST return the actual complete content as the final
answer, not a summary.\n\nBegin! This is VERY important to you, use the tools
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with in_temp_dir():
tool_command = ToolCommand()
with (
patch.object(tool_command, "login") as mock_login,
patch("sys.stdout", new=StringIO()) as fake_out,
):
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) as fake_out:
tool_command.create("test-tool")
output = fake_out.getvalue()
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capture_output=False,
text=True,
check=True,
env=unittest.mock.ANY,
env=unittest.mock.ANY
)
assert "Successfully installed sample-tool" in output

View File

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)
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description="Mock description",
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task.output = mock_task_output
with patch.object(
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crew.kickoff()
# Verify execute_sync was called once
@@ -350,20 +350,12 @@ def test_manager_agent_delegating_to_assigned_task_agent():
# Get the tools argument from the call
_, kwargs = mock_execute_sync.call_args
tools = kwargs["tools"]
tools = kwargs['tools']
# Verify the delegation tools were passed correctly
assert len(tools) == 2
assert any(
"Delegate a specific task to one of the following coworkers: Researcher"
in tool.description
for tool in tools
)
assert any(
"Ask a specific question to one of the following coworkers: Researcher"
in tool.description
for tool in tools
)
assert any("Delegate a specific task to one of the following coworkers: Researcher" in tool.description for tool in tools)
assert any("Ask a specific question to one of the following coworkers: Researcher" in tool.description for tool in tools)
@pytest.mark.vcr(filter_headers=["authorization"])
@@ -399,83 +391,6 @@ def test_manager_agent_delegating_to_all_agents():
)
@pytest.mark.vcr(filter_headers=["authorization"])
def test_manager_agent_delegates_with_varied_role_cases():
"""
Test that the manager agent can delegate to agents regardless of case or whitespace variations in role names.
This test verifies the fix for issue #1503 where role matching was too strict.
"""
# Create agents with varied case and whitespace in roles
researcher_spaced = Agent(
role=" Researcher ", # Extra spaces
goal="Research with spaces in role",
backstory="A researcher with spaces in role name",
allow_delegation=False,
)
writer_caps = Agent(
role="SENIOR WRITER", # All caps
goal="Write with caps in role",
backstory="A writer with caps in role name",
allow_delegation=False,
)
task = Task(
description="Research and write about AI. The researcher should do the research, and the writer should write it up.",
expected_output="A well-researched article about AI.",
agent=researcher_spaced, # Assign to researcher with spaces
)
crew = Crew(
agents=[researcher_spaced, writer_caps],
process=Process.hierarchical,
manager_llm="gpt-4o",
tasks=[task],
)
mock_task_output = TaskOutput(
description="Mock description", raw="mocked output", agent="mocked agent"
)
task.output = mock_task_output
with patch.object(
Task, "execute_sync", return_value=mock_task_output
) as mock_execute_sync:
crew.kickoff()
# Verify execute_sync was called once
mock_execute_sync.assert_called_once()
# Get the tools argument from the call
_, kwargs = mock_execute_sync.call_args
tools = kwargs["tools"]
# Verify the delegation tools were passed correctly and can handle case/whitespace variations
assert len(tools) == 2
# Check delegation tool descriptions (should work despite case/whitespace differences)
delegation_tool = tools[0]
question_tool = tools[1]
assert (
"Delegate a specific task to one of the following coworkers:"
in delegation_tool.description
)
assert (
" Researcher " in delegation_tool.description
or "SENIOR WRITER" in delegation_tool.description
)
assert (
"Ask a specific question to one of the following coworkers:"
in question_tool.description
)
assert (
" Researcher " in question_tool.description
or "SENIOR WRITER" in question_tool.description
)
@pytest.mark.vcr(filter_headers=["authorization"])
def test_crew_with_delegating_agents():
tasks = [
@@ -499,7 +414,6 @@ def test_crew_with_delegating_agents():
== "In the rapidly evolving landscape of technology, AI agents have emerged as formidable tools, revolutionizing how we interact with data and automate tasks. These sophisticated systems leverage machine learning and natural language processing to perform a myriad of functions, from virtual personal assistants to complex decision-making companions in industries such as finance, healthcare, and education. By mimicking human intelligence, AI agents can analyze massive data sets at unparalleled speeds, enabling businesses to uncover valuable insights, enhance productivity, and elevate user experiences to unprecedented levels.\n\nOne of the most striking aspects of AI agents is their adaptability; they learn from their interactions and continuously improve their performance over time. This feature is particularly valuable in customer service where AI agents can address inquiries, resolve issues, and provide personalized recommendations without the limitations of human fatigue. Moreover, with intuitive interfaces, AI agents enhance user interactions, making technology more accessible and user-friendly, thereby breaking down barriers that have historically hindered digital engagement.\n\nDespite their immense potential, the deployment of AI agents raises important ethical and practical considerations. Issues related to privacy, data security, and the potential for job displacement necessitate thoughtful dialogue and proactive measures. Striking a balance between technological innovation and societal impact will be crucial as organizations integrate these agents into their operations. Additionally, ensuring transparency in AI decision-making processes is vital to maintain public trust as AI agents become an integral part of daily life.\n\nLooking ahead, the future of AI agents appears bright, with ongoing advancements promising even greater capabilities. As we continue to harness the power of AI, we can expect these agents to play a transformative role in shaping various sectors—streamlining workflows, enabling smarter decision-making, and fostering more personalized experiences. Embracing this technology responsibly can lead to a future where AI agents not only augment human effort but also inspire creativity and efficiency across the board, ultimately redefining our interaction with the digital world."
)
@pytest.mark.vcr(filter_headers=["authorization"])
def test_crew_with_delegating_agents_should_not_override_task_tools():
from typing import Type
@@ -510,7 +424,6 @@ def test_crew_with_delegating_agents_should_not_override_task_tools():
class TestToolInput(BaseModel):
"""Input schema for TestTool."""
query: str = Field(..., description="Query to process")
class TestTool(BaseTool):
@@ -538,29 +451,24 @@ def test_crew_with_delegating_agents_should_not_override_task_tools():
)
mock_task_output = TaskOutput(
description="Mock description", raw="mocked output", agent="mocked agent"
description="Mock description",
raw="mocked output",
agent="mocked agent"
)
# Because we are mocking execute_sync, we never hit the underlying _execute_core
# which sets the output attribute of the task
tasks[0].output = mock_task_output
with patch.object(
Task, "execute_sync", return_value=mock_task_output
) as mock_execute_sync:
with patch.object(Task, 'execute_sync', return_value=mock_task_output) as mock_execute_sync:
crew.kickoff()
# Execute the task and verify both tools are present
_, kwargs = mock_execute_sync.call_args
tools = kwargs["tools"]
assert any(
isinstance(tool, TestTool) for tool in tools
), "TestTool should be present"
assert any(
"delegate" in tool.name.lower() for tool in tools
), "Delegation tool should be present"
tools = kwargs['tools']
assert any(isinstance(tool, TestTool) for tool in tools), "TestTool should be present"
assert any("delegate" in tool.name.lower() for tool in tools), "Delegation tool should be present"
@pytest.mark.vcr(filter_headers=["authorization"])
def test_crew_with_delegating_agents_should_not_override_agent_tools():
@@ -572,7 +480,6 @@ def test_crew_with_delegating_agents_should_not_override_agent_tools():
class TestToolInput(BaseModel):
"""Input schema for TestTool."""
query: str = Field(..., description="Query to process")
class TestTool(BaseTool):
@@ -591,7 +498,7 @@ def test_crew_with_delegating_agents_should_not_override_agent_tools():
Task(
description="Produce and amazing 1 paragraph draft of an article about AI Agents.",
expected_output="A 4 paragraph article about AI.",
agent=new_ceo,
agent=new_ceo
)
]
@@ -602,29 +509,24 @@ def test_crew_with_delegating_agents_should_not_override_agent_tools():
)
mock_task_output = TaskOutput(
description="Mock description", raw="mocked output", agent="mocked agent"
description="Mock description",
raw="mocked output",
agent="mocked agent"
)
# Because we are mocking execute_sync, we never hit the underlying _execute_core
# which sets the output attribute of the task
tasks[0].output = mock_task_output
with patch.object(
Task, "execute_sync", return_value=mock_task_output
) as mock_execute_sync:
with patch.object(Task, 'execute_sync', return_value=mock_task_output) as mock_execute_sync:
crew.kickoff()
# Execute the task and verify both tools are present
_, kwargs = mock_execute_sync.call_args
tools = kwargs["tools"]
assert any(
isinstance(tool, TestTool) for tool in new_ceo.tools
), "TestTool should be present"
assert any(
"delegate" in tool.name.lower() for tool in tools
), "Delegation tool should be present"
tools = kwargs['tools']
assert any(isinstance(tool, TestTool) for tool in new_ceo.tools), "TestTool should be present"
assert any("delegate" in tool.name.lower() for tool in tools), "Delegation tool should be present"
@pytest.mark.vcr(filter_headers=["authorization"])
def test_task_tools_override_agent_tools():
@@ -636,7 +538,6 @@ def test_task_tools_override_agent_tools():
class TestToolInput(BaseModel):
"""Input schema for TestTool."""
query: str = Field(..., description="Query to process")
class TestTool(BaseTool):
@@ -664,10 +565,14 @@ def test_task_tools_override_agent_tools():
description="Write a test task",
expected_output="Test output",
agent=new_researcher,
tools=[AnotherTestTool()],
tools=[AnotherTestTool()]
)
crew = Crew(agents=[new_researcher], tasks=[task], process=Process.sequential)
crew = Crew(
agents=[new_researcher],
tasks=[task],
process=Process.sequential
)
crew.kickoff()
@@ -680,7 +585,6 @@ def test_task_tools_override_agent_tools():
assert len(new_researcher.tools) == 1
assert isinstance(new_researcher.tools[0], TestTool)
@pytest.mark.vcr(filter_headers=["authorization"])
def test_task_tools_override_agent_tools_with_allow_delegation():
"""
@@ -733,13 +637,13 @@ def test_task_tools_override_agent_tools_with_allow_delegation():
)
mock_task_output = TaskOutput(
description="Mock description", raw="mocked output", agent="mocked agent"
description="Mock description",
raw="mocked output",
agent="mocked agent"
)
# We mock execute_sync to verify which tools get used at runtime
with patch.object(
Task, "execute_sync", return_value=mock_task_output
) as mock_execute_sync:
with patch.object(Task, "execute_sync", return_value=mock_task_output) as mock_execute_sync:
crew.kickoff()
# Inspect the call kwargs to verify the actual tools passed to execution
@@ -747,23 +651,16 @@ def test_task_tools_override_agent_tools_with_allow_delegation():
used_tools = kwargs["tools"]
# Confirm AnotherTestTool is present but TestTool is not
assert any(
isinstance(tool, AnotherTestTool) for tool in used_tools
), "AnotherTestTool should be present"
assert not any(
isinstance(tool, TestTool) for tool in used_tools
), "TestTool should not be present among used tools"
assert any(isinstance(tool, AnotherTestTool) for tool in used_tools), "AnotherTestTool should be present"
assert not any(isinstance(tool, TestTool) for tool in used_tools), "TestTool should not be present among used tools"
# Confirm delegation tool(s) are present
assert any(
"delegate" in tool.name.lower() for tool in used_tools
), "Delegation tool should be present"
assert any("delegate" in tool.name.lower() for tool in used_tools), "Delegation tool should be present"
# Finally, make sure the agent's original tools remain unchanged
assert len(researcher_with_delegation.tools) == 1
assert isinstance(researcher_with_delegation.tools[0], TestTool)
@pytest.mark.vcr(filter_headers=["authorization"])
def test_crew_verbose_output(capsys):
tasks = [
@@ -1050,8 +947,8 @@ def test_three_task_with_async_execution():
)
@pytest.mark.asyncio
@pytest.mark.vcr(filter_headers=["authorization"])
@pytest.mark.asyncio
async def test_crew_async_kickoff():
inputs = [
{"topic": "dog"},
@@ -1098,9 +995,8 @@ async def test_crew_async_kickoff():
assert result[0].token_usage.successful_requests > 0 # type: ignore
@pytest.mark.asyncio
@pytest.mark.vcr(filter_headers=["authorization"])
async def test_async_task_execution_call_count():
def test_async_task_execution_call_count():
from unittest.mock import MagicMock, patch
list_ideas = Task(
@@ -1227,6 +1123,7 @@ def test_kickoff_for_each_empty_input():
assert results == []
@pytest.mark.vcr(filter_headers=["authorization"])
def test_kickoff_for_each_invalid_input():
"""Tests if kickoff_for_each raises TypeError for invalid input types."""
@@ -1249,6 +1146,7 @@ def test_kickoff_for_each_invalid_input():
crew.kickoff_for_each("invalid input")
@pytest.mark.vcr(filter_headers=["authorization"])
def test_kickoff_for_each_error_handling():
"""Tests error handling in kickoff_for_each when kickoff raises an error."""
from unittest.mock import patch
@@ -1285,6 +1183,7 @@ def test_kickoff_for_each_error_handling():
crew.kickoff_for_each(inputs=inputs)
@pytest.mark.vcr(filter_headers=["authorization"])
@pytest.mark.asyncio
async def test_kickoff_async_basic_functionality_and_output():
"""Tests the basic functionality and output of kickoff_async."""
@@ -1319,6 +1218,7 @@ async def test_kickoff_async_basic_functionality_and_output():
mock_kickoff.assert_called_once_with(inputs)
@pytest.mark.vcr(filter_headers=["authorization"])
@pytest.mark.asyncio
async def test_async_kickoff_for_each_async_basic_functionality_and_output():
"""Tests the basic functionality and output of kickoff_for_each_async."""
@@ -1365,6 +1265,7 @@ async def test_async_kickoff_for_each_async_basic_functionality_and_output():
mock_kickoff_async.assert_any_call(inputs=input_data)
@pytest.mark.vcr(filter_headers=["authorization"])
@pytest.mark.asyncio
async def test_async_kickoff_for_each_async_empty_input():
"""Tests if akickoff_for_each_async handles an empty input list."""
@@ -1548,12 +1449,12 @@ def test_code_execution_flag_adds_code_tool_upon_kickoff():
crew = Crew(agents=[programmer], tasks=[task])
mock_task_output = TaskOutput(
description="Mock description", raw="mocked output", agent="mocked agent"
description="Mock description",
raw="mocked output",
agent="mocked agent"
)
with patch.object(
Task, "execute_sync", return_value=mock_task_output
) as mock_execute_sync:
with patch.object(Task, "execute_sync", return_value=mock_task_output) as mock_execute_sync:
crew.kickoff()
# Get the tools that were actually used in execution
@@ -1562,10 +1463,7 @@ def test_code_execution_flag_adds_code_tool_upon_kickoff():
# Verify that exactly one tool was used and it was a CodeInterpreterTool
assert len(used_tools) == 1, "Should have exactly one tool"
assert isinstance(
used_tools[0], CodeInterpreterTool
), "Tool should be CodeInterpreterTool"
assert isinstance(used_tools[0], CodeInterpreterTool), "Tool should be CodeInterpreterTool"
@pytest.mark.vcr(filter_headers=["authorization"])
def test_delegation_is_not_enabled_if_there_are_only_one_agent():
@@ -1676,16 +1574,16 @@ def test_hierarchical_crew_creation_tasks_with_agents():
)
mock_task_output = TaskOutput(
description="Mock description", raw="mocked output", agent="mocked agent"
description="Mock description",
raw="mocked output",
agent="mocked agent"
)
# Because we are mocking execute_sync, we never hit the underlying _execute_core
# which sets the output attribute of the task
task.output = mock_task_output
with patch.object(
Task, "execute_sync", return_value=mock_task_output
) as mock_execute_sync:
with patch.object(Task, 'execute_sync', return_value=mock_task_output) as mock_execute_sync:
crew.kickoff()
# Verify execute_sync was called once
@@ -1693,20 +1591,12 @@ def test_hierarchical_crew_creation_tasks_with_agents():
# Get the tools argument from the call
_, kwargs = mock_execute_sync.call_args
tools = kwargs["tools"]
tools = kwargs['tools']
# Verify the delegation tools were passed correctly
assert len(tools) == 2
assert any(
"Delegate a specific task to one of the following coworkers: Senior Writer"
in tool.description
for tool in tools
)
assert any(
"Ask a specific question to one of the following coworkers: Senior Writer"
in tool.description
for tool in tools
)
assert any("Delegate a specific task to one of the following coworkers: Senior Writer" in tool.description for tool in tools)
assert any("Ask a specific question to one of the following coworkers: Senior Writer" in tool.description for tool in tools)
@pytest.mark.vcr(filter_headers=["authorization"])
@@ -1729,7 +1619,9 @@ def test_hierarchical_crew_creation_tasks_with_async_execution():
)
mock_task_output = TaskOutput(
description="Mock description", raw="mocked output", agent="mocked agent"
description="Mock description",
raw="mocked output",
agent="mocked agent"
)
# Create a mock Future that returns our TaskOutput
@@ -1740,9 +1632,7 @@ def test_hierarchical_crew_creation_tasks_with_async_execution():
# which sets the output attribute of the task
task.output = mock_task_output
with patch.object(
Task, "execute_async", return_value=mock_future
) as mock_execute_async:
with patch.object(Task, 'execute_async', return_value=mock_future) as mock_execute_async:
crew.kickoff()
# Verify execute_async was called once
@@ -1750,20 +1640,12 @@ def test_hierarchical_crew_creation_tasks_with_async_execution():
# Get the tools argument from the call
_, kwargs = mock_execute_async.call_args
tools = kwargs["tools"]
tools = kwargs['tools']
# Verify the delegation tools were passed correctly
assert len(tools) == 2
assert any(
"Delegate a specific task to one of the following coworkers: Senior Writer\n"
in tool.description
for tool in tools
)
assert any(
"Ask a specific question to one of the following coworkers: Senior Writer\n"
in tool.description
for tool in tools
)
assert any("Delegate a specific task to one of the following coworkers: Senior Writer\n" in tool.description for tool in tools)
assert any("Ask a specific question to one of the following coworkers: Senior Writer\n" in tool.description for tool in tools)
@pytest.mark.vcr(filter_headers=["authorization"])
@@ -2060,88 +1942,6 @@ def test_crew_log_file_output(tmp_path):
@pytest.mark.vcr(filter_headers=["authorization"])
def test_crew_output_file_end_to_end(tmp_path):
"""Test output file functionality in a full crew context."""
# Create an agent
agent = Agent(
role="Researcher",
goal="Analyze AI topics",
backstory="You have extensive AI research experience.",
allow_delegation=False,
)
# Create a task with dynamic output file path
dynamic_path = tmp_path / "output_{topic}.txt"
task = Task(
description="Explain the advantages of {topic}.",
expected_output="A summary of the main advantages, bullet points recommended.",
agent=agent,
output_file=str(dynamic_path),
)
# Create and run the crew
crew = Crew(
agents=[agent],
tasks=[task],
process=Process.sequential,
)
crew.kickoff(inputs={"topic": "AI"})
# Verify file creation and cleanup
expected_file = tmp_path / "output_AI.txt"
assert expected_file.exists(), f"Output file {expected_file} was not created"
def test_crew_output_file_validation_failures():
"""Test output file validation failures in a crew context."""
agent = Agent(
role="Researcher",
goal="Analyze data",
backstory="You analyze data files.",
allow_delegation=False,
)
# Test path traversal
with pytest.raises(ValueError, match="Path traversal"):
task = Task(
description="Analyze data",
expected_output="Analysis results",
agent=agent,
output_file="../output.txt",
)
Crew(agents=[agent], tasks=[task]).kickoff()
# Test shell special characters
with pytest.raises(ValueError, match="Shell special characters"):
task = Task(
description="Analyze data",
expected_output="Analysis results",
agent=agent,
output_file="output.txt | rm -rf /",
)
Crew(agents=[agent], tasks=[task]).kickoff()
# Test shell expansion
with pytest.raises(ValueError, match="Shell expansion"):
task = Task(
description="Analyze data",
expected_output="Analysis results",
agent=agent,
output_file="~/output.txt",
)
Crew(agents=[agent], tasks=[task]).kickoff()
# Test invalid template variable
with pytest.raises(ValueError, match="Invalid template variable"):
task = Task(
description="Analyze data",
expected_output="Analysis results",
agent=agent,
output_file="{invalid-name}/output.txt",
)
Crew(agents=[agent], tasks=[task]).kickoff()
def test_manager_agent():
from unittest.mock import patch
@@ -3100,7 +2900,6 @@ def test_task_tools_preserve_code_execution_tools():
class TestToolInput(BaseModel):
"""Input schema for TestTool."""
query: str = Field(..., description="Query to process")
class TestTool(BaseTool):
@@ -3134,7 +2933,7 @@ def test_task_tools_preserve_code_execution_tools():
description="Write a program to calculate fibonacci numbers.",
expected_output="A working fibonacci calculator.",
agent=programmer,
tools=[TestTool()],
tools=[TestTool()]
)
crew = Crew(
@@ -3144,12 +2943,12 @@ def test_task_tools_preserve_code_execution_tools():
)
mock_task_output = TaskOutput(
description="Mock description", raw="mocked output", agent="mocked agent"
description="Mock description",
raw="mocked output",
agent="mocked agent"
)
with patch.object(
Task, "execute_sync", return_value=mock_task_output
) as mock_execute_sync:
with patch.object(Task, "execute_sync", return_value=mock_task_output) as mock_execute_sync:
crew.kickoff()
# Get the tools that were actually used in execution
@@ -3157,21 +2956,12 @@ def test_task_tools_preserve_code_execution_tools():
used_tools = kwargs["tools"]
# Verify all expected tools are present
assert any(
isinstance(tool, TestTool) for tool in used_tools
), "Task's TestTool should be present"
assert any(
isinstance(tool, CodeInterpreterTool) for tool in used_tools
), "CodeInterpreterTool should be present"
assert any(
"delegate" in tool.name.lower() for tool in used_tools
), "Delegation tool should be present"
assert any(isinstance(tool, TestTool) for tool in used_tools), "Task's TestTool should be present"
assert any(isinstance(tool, CodeInterpreterTool) for tool in used_tools), "CodeInterpreterTool should be present"
assert any("delegate" in tool.name.lower() for tool in used_tools), "Delegation tool should be present"
# Verify the total number of tools (TestTool + CodeInterpreter + 2 delegation tools)
assert (
len(used_tools) == 4
), "Should have TestTool, CodeInterpreter, and 2 delegation tools"
assert len(used_tools) == 4, "Should have TestTool, CodeInterpreter, and 2 delegation tools"
@pytest.mark.vcr(filter_headers=["authorization"])
def test_multimodal_flag_adds_multimodal_tools():
@@ -3200,13 +2990,13 @@ def test_multimodal_flag_adds_multimodal_tools():
crew = Crew(agents=[multimodal_agent], tasks=[task], process=Process.sequential)
mock_task_output = TaskOutput(
description="Mock description", raw="mocked output", agent="mocked agent"
description="Mock description",
raw="mocked output",
agent="mocked agent"
)
# Mock execute_sync to verify the tools passed at runtime
with patch.object(
Task, "execute_sync", return_value=mock_task_output
) as mock_execute_sync:
with patch.object(Task, "execute_sync", return_value=mock_task_output) as mock_execute_sync:
crew.kickoff()
# Get the tools that were actually used in execution
@@ -3214,14 +3004,13 @@ def test_multimodal_flag_adds_multimodal_tools():
used_tools = kwargs["tools"]
# Check that the multimodal tool was added
assert any(
isinstance(tool, AddImageTool) for tool in used_tools
), "AddImageTool should be present when agent is multimodal"
assert any(isinstance(tool, AddImageTool) for tool in used_tools), (
"AddImageTool should be present when agent is multimodal"
)
# Verify we have exactly one tool (just the AddImageTool)
assert len(used_tools) == 1, "Should only have the AddImageTool"
@pytest.mark.vcr(filter_headers=["authorization"])
def test_multimodal_agent_image_tool_handling():
"""
@@ -3263,10 +3052,10 @@ def test_multimodal_agent_image_tool_handling():
mock_task_output = TaskOutput(
description="Mock description",
raw="A detailed analysis of the image",
agent="Image Analyst",
agent="Image Analyst"
)
with patch.object(Task, "execute_sync") as mock_execute_sync:
with patch.object(Task, 'execute_sync') as mock_execute_sync:
# Set up the mock to return our task output
mock_execute_sync.return_value = mock_task_output
@@ -3275,7 +3064,7 @@ def test_multimodal_agent_image_tool_handling():
# Get the tools that were passed to execute_sync
_, kwargs = mock_execute_sync.call_args
tools = kwargs["tools"]
tools = kwargs['tools']
# Verify the AddImageTool is present and properly configured
image_tools = [tool for tool in tools if tool.name == "Add image to content"]
@@ -3285,7 +3074,7 @@ def test_multimodal_agent_image_tool_handling():
image_tool = image_tools[0]
result = image_tool._run(
image_url="https://example.com/test-image.jpg",
action="Please analyze this image",
action="Please analyze this image"
)
# Verify the tool returns the expected format
@@ -3295,7 +3084,6 @@ def test_multimodal_agent_image_tool_handling():
assert result["content"][0]["type"] == "text"
assert result["content"][1]["type"] == "image_url"
@pytest.mark.vcr(filter_headers=["authorization"])
def test_multimodal_agent_live_image_analysis():
"""
@@ -3309,7 +3097,7 @@ def test_multimodal_agent_live_image_analysis():
allow_delegation=False,
multimodal=True,
verbose=True,
llm="gpt-4o",
llm="gpt-4o"
)
# Create a task for image analysis
@@ -3320,18 +3108,19 @@ def test_multimodal_agent_live_image_analysis():
Image: {image_url}
""",
expected_output="A comprehensive description of the image contents.",
agent=image_analyst,
agent=image_analyst
)
# Create and run the crew
crew = Crew(agents=[image_analyst], tasks=[analyze_image])
crew = Crew(
agents=[image_analyst],
tasks=[analyze_image]
)
# Execute with an image URL
result = crew.kickoff(
inputs={
result = crew.kickoff(inputs={
"image_url": "https://media.istockphoto.com/id/946087016/photo/aerial-view-of-lower-manhattan-new-york.jpg?s=612x612&w=0&k=20&c=viLiMRznQ8v5LzKTt_LvtfPFUVl1oiyiemVdSlm29_k="
}
)
})
# Verify we got a meaningful response
assert isinstance(result.raw, str)

View File

@@ -578,26 +578,9 @@ def test_multiple_docling_sources():
assert docling_source.content is not None
def test_file_path_validation():
"""Test file path validation for knowledge sources."""
def test_docling_source_with_local_file():
current_dir = Path(__file__).parent
pdf_path = current_dir / "crewai_quickstart.pdf"
# Test valid single file_path
source = PDFKnowledgeSource(file_path=pdf_path)
assert source.safe_file_paths == [pdf_path]
# Test valid file_paths list
source = PDFKnowledgeSource(file_paths=[pdf_path])
assert source.safe_file_paths == [pdf_path]
# Test both file_path and file_paths provided (should use file_paths)
source = PDFKnowledgeSource(file_path=pdf_path, file_paths=[pdf_path])
assert source.safe_file_paths == [pdf_path]
# Test neither file_path nor file_paths provided
with pytest.raises(
ValueError,
match="file_path/file_paths must be a Path, str, or a list of these types",
):
PDFKnowledgeSource()
docling_source = CrewDoclingSource(file_paths=[pdf_path])
assert docling_source.file_paths == [pdf_path]
assert docling_source.content is not None

View File

@@ -719,37 +719,35 @@ def test_interpolate_inputs():
task = Task(
description="Give me a list of 5 interesting ideas about {topic} to explore for an article, what makes them unique and interesting.",
expected_output="Bullet point list of 5 interesting ideas about {topic}.",
output_file="/tmp/{topic}/output_{date}.txt",
)
task.interpolate_inputs(inputs={"topic": "AI", "date": "2024"})
task.interpolate_inputs(inputs={"topic": "AI"})
assert (
task.description
== "Give me a list of 5 interesting ideas about AI to explore for an article, what makes them unique and interesting."
)
assert task.expected_output == "Bullet point list of 5 interesting ideas about AI."
assert task.output_file == "/tmp/AI/output_2024.txt"
task.interpolate_inputs(inputs={"topic": "ML", "date": "2025"})
task.interpolate_inputs(inputs={"topic": "ML"})
assert (
task.description
== "Give me a list of 5 interesting ideas about ML to explore for an article, what makes them unique and interesting."
)
assert task.expected_output == "Bullet point list of 5 interesting ideas about ML."
assert task.output_file == "/tmp/ML/output_2025.txt"
def test_interpolate_only():
"""Test the interpolate_only method for various scenarios including JSON structure preservation."""
task = Task(
description="Unused in this test", expected_output="Unused in this test"
description="Unused in this test",
expected_output="Unused in this test"
)
# Test JSON structure preservation
json_string = '{"info": "Look at {placeholder}", "nested": {"val": "{nestedVal}"}}'
result = task.interpolate_only(
input_string=json_string,
inputs={"placeholder": "the data", "nestedVal": "something else"},
inputs={"placeholder": "the data", "nestedVal": "something else"}
)
assert '"info": "Look at the data"' in result
assert '"val": "something else"' in result
@@ -759,18 +757,23 @@ def test_interpolate_only():
# Test normal string interpolation
normal_string = "Hello {name}, welcome to {place}!"
result = task.interpolate_only(
input_string=normal_string, inputs={"name": "John", "place": "CrewAI"}
input_string=normal_string,
inputs={"name": "John", "place": "CrewAI"}
)
assert result == "Hello John, welcome to CrewAI!"
# Test empty string
result = task.interpolate_only(input_string="", inputs={"unused": "value"})
result = task.interpolate_only(
input_string="",
inputs={"unused": "value"}
)
assert result == ""
# Test string with no placeholders
no_placeholders = "Hello, this is a test"
result = task.interpolate_only(
input_string=no_placeholders, inputs={"unused": "value"}
input_string=no_placeholders,
inputs={"unused": "value"}
)
assert result == no_placeholders
@@ -869,96 +872,3 @@ def test_key():
assert (
task.key == hash
), "The key should be the hash of the non-interpolated description."
def test_output_file_validation():
"""Test output file path validation."""
# Valid paths
assert (
Task(
description="Test task",
expected_output="Test output",
output_file="output.txt",
).output_file
== "output.txt"
)
assert (
Task(
description="Test task",
expected_output="Test output",
output_file="/tmp/output.txt",
).output_file
== "tmp/output.txt"
)
assert (
Task(
description="Test task",
expected_output="Test output",
output_file="{dir}/output_{date}.txt",
).output_file
== "{dir}/output_{date}.txt"
)
# Invalid paths
with pytest.raises(ValueError, match="Path traversal"):
Task(
description="Test task",
expected_output="Test output",
output_file="../output.txt",
)
with pytest.raises(ValueError, match="Path traversal"):
Task(
description="Test task",
expected_output="Test output",
output_file="folder/../output.txt",
)
with pytest.raises(ValueError, match="Shell special characters"):
Task(
description="Test task",
expected_output="Test output",
output_file="output.txt | rm -rf /",
)
with pytest.raises(ValueError, match="Shell expansion"):
Task(
description="Test task",
expected_output="Test output",
output_file="~/output.txt",
)
with pytest.raises(ValueError, match="Shell expansion"):
Task(
description="Test task",
expected_output="Test output",
output_file="$HOME/output.txt",
)
with pytest.raises(ValueError, match="Invalid template variable"):
Task(
description="Test task",
expected_output="Test output",
output_file="{invalid-name}/output.txt",
)
@pytest.mark.vcr(filter_headers=["authorization"])
def test_task_execution_times():
researcher = Agent(
role="Researcher",
goal="Make the best research and analysis on content about AI and AI agents",
backstory="You're an expert researcher, specialized in technology, software engineering, AI and startups. You work as a freelancer and is now working on doing research and analysis for a new customer.",
allow_delegation=False,
)
task = Task(
description="Give me a list of 5 interesting ideas to explore for na article, what makes them unique and interesting.",
expected_output="Bullet point list of 5 interesting ideas.",
agent=researcher,
)
assert task.start_time is None
assert task.end_time is None
assert task.execution_duration is None
task.execute_sync(agent=researcher)
assert task.start_time is not None
assert task.end_time is not None
assert task.execution_duration == (task.end_time - task.start_time).total_seconds()

View File

@@ -1,56 +0,0 @@
from unittest.mock import MagicMock
import pytest
from crewai import Agent, Task
from crewai.tools.agent_tools.base_agent_tools import BaseAgentTool
class TestAgentTool(BaseAgentTool):
"""Concrete implementation of BaseAgentTool for testing."""
def _run(self, *args, **kwargs):
"""Implement required _run method."""
return "Test response"
@pytest.mark.parametrize(
"role_name,should_match",
[
("Futel Official Infopoint", True), # exact match
(' "Futel Official Infopoint" ', True), # extra quotes and spaces
("Futel Official Infopoint\n", True), # trailing newline
('"Futel Official Infopoint"', True), # embedded quotes
(" FUTEL\nOFFICIAL INFOPOINT ", True), # multiple whitespace and newline
("futel official infopoint", True), # lowercase
("FUTEL OFFICIAL INFOPOINT", True), # uppercase
("Non Existent Agent", False), # non-existent agent
(None, False), # None agent name
],
)
def test_agent_tool_role_matching(role_name, should_match):
"""Test that agent tools can match roles regardless of case, whitespace, and special characters."""
# Create test agent
test_agent = Agent(
role="Futel Official Infopoint",
goal="Answer questions about Futel",
backstory="Futel Football Club info",
allow_delegation=False,
)
# Create test agent tool
agent_tool = TestAgentTool(
name="test_tool", description="Test tool", agents=[test_agent]
)
# Test role matching
result = agent_tool._execute(agent_name=role_name, task="Test task", context=None)
if should_match:
assert (
"coworker mentioned not found" not in result.lower()
), f"Should find agent with role name: {role_name}"
else:
assert (
"coworker mentioned not found" in result.lower()
), f"Should not find agent with role name: {role_name}"

View File

@@ -15,7 +15,10 @@ def test_task_without_guardrail():
agent.execute_task.return_value = "test result"
agent.crew = None
task = Task(description="Test task", expected_output="Output")
task = Task(
description="Test task",
expected_output="Output"
)
result = task.execute_sync(agent=agent)
assert isinstance(result, TaskOutput)
@@ -24,7 +27,6 @@ def test_task_without_guardrail():
def test_task_with_successful_guardrail():
"""Test that successful guardrail validation passes transformed result."""
def guardrail(result: TaskOutput):
return (True, result.raw.upper())
@@ -33,7 +35,11 @@ def test_task_with_successful_guardrail():
agent.execute_task.return_value = "test result"
agent.crew = None
task = Task(description="Test task", expected_output="Output", guardrail=guardrail)
task = Task(
description="Test task",
expected_output="Output",
guardrail=guardrail
)
result = task.execute_sync(agent=agent)
assert isinstance(result, TaskOutput)
@@ -42,20 +48,22 @@ def test_task_with_successful_guardrail():
def test_task_with_failing_guardrail():
"""Test that failing guardrail triggers retry with error context."""
def guardrail(result: TaskOutput):
return (False, "Invalid format")
agent = Mock()
agent.role = "test_agent"
agent.execute_task.side_effect = ["bad result", "good result"]
agent.execute_task.side_effect = [
"bad result",
"good result"
]
agent.crew = None
task = Task(
description="Test task",
expected_output="Output",
guardrail=guardrail,
max_retries=1,
max_retries=1
)
# First execution fails guardrail, second succeeds
@@ -69,7 +77,6 @@ def test_task_with_failing_guardrail():
def test_task_with_guardrail_retries():
"""Test that guardrail respects max_retries configuration."""
def guardrail(result: TaskOutput):
return (False, "Invalid format")
@@ -82,7 +89,7 @@ def test_task_with_guardrail_retries():
description="Test task",
expected_output="Output",
guardrail=guardrail,
max_retries=2,
max_retries=2
)
with pytest.raises(Exception) as exc_info:
@@ -95,7 +102,6 @@ def test_task_with_guardrail_retries():
def test_guardrail_error_in_context():
"""Test that guardrail error is passed in context for retry."""
def guardrail(result: TaskOutput):
return (False, "Expected JSON, got string")
@@ -107,12 +113,11 @@ def test_guardrail_error_in_context():
description="Test task",
expected_output="Output",
guardrail=guardrail,
max_retries=1,
max_retries=1
)
# Mock execute_task to succeed on second attempt
first_call = True
def execute_task(task, context, tools):
nonlocal first_call
if first_call:

View File

@@ -1,84 +0,0 @@
"""
Tests for verifying the integration of knowledge sources in the planning process.
This module ensures that agent knowledge is properly included during task planning.
"""
from unittest.mock import patch
import pytest
from crewai.agent import Agent
from crewai.knowledge.source.string_knowledge_source import StringKnowledgeSource
from crewai.task import Task
from crewai.utilities.planning_handler import CrewPlanner
@pytest.fixture
def mock_knowledge_source():
"""
Create a mock knowledge source with test content.
Returns:
StringKnowledgeSource:
A knowledge source containing AI-related test content
"""
content = """
Important context about AI:
1. AI systems use machine learning algorithms
2. Neural networks are a key component
3. Training data is essential for good performance
"""
return StringKnowledgeSource(content=content)
@patch('crewai.knowledge.storage.knowledge_storage.chromadb')
def test_knowledge_included_in_planning(mock_chroma):
"""Test that verifies knowledge sources are properly included in planning."""
# Mock ChromaDB collection
mock_collection = mock_chroma.return_value.get_or_create_collection.return_value
mock_collection.add.return_value = None
# Create an agent with knowledge
agent = Agent(
role="AI Researcher",
goal="Research and explain AI concepts",
backstory="Expert in artificial intelligence",
knowledge_sources=[
StringKnowledgeSource(
content="AI systems require careful training and validation."
)
]
)
# Create a task for the agent
task = Task(
description="Explain the basics of AI systems",
expected_output="A clear explanation of AI fundamentals",
agent=agent
)
# Create a crew planner
planner = CrewPlanner([task], None)
# Get the task summary
task_summary = planner._create_tasks_summary()
# Verify that knowledge is included in planning when present
assert "AI systems require careful training" in task_summary, \
"Knowledge content should be present in task summary when knowledge exists"
assert '"agent_knowledge"' in task_summary, \
"agent_knowledge field should be present in task summary when knowledge exists"
# Verify that knowledge is properly formatted
assert isinstance(task.agent.knowledge_sources, list), \
"Knowledge sources should be stored in a list"
assert len(task.agent.knowledge_sources) > 0, \
"At least one knowledge source should be present"
assert task.agent.knowledge_sources[0].content in task_summary, \
"Knowledge source content should be included in task summary"
# Verify that other expected components are still present
assert task.description in task_summary, \
"Task description should be present in task summary"
assert task.expected_output in task_summary, \
"Expected output should be present in task summary"
assert agent.role in task_summary, \
"Agent role should be present in task summary"

View File

@@ -1,14 +1,10 @@
from typing import Optional
from unittest.mock import MagicMock, patch
from unittest.mock import patch
import pytest
from pydantic import BaseModel
from crewai.agent import Agent
from crewai.knowledge.source.string_knowledge_source import StringKnowledgeSource
from crewai.task import Task
from crewai.tasks.task_output import TaskOutput
from crewai.tools.base_tool import BaseTool
from crewai.utilities.planning_handler import (
CrewPlanner,
PlannerTaskPydanticOutput,
@@ -96,72 +92,7 @@ class TestCrewPlanner:
tasks_summary = crew_planner._create_tasks_summary()
assert isinstance(tasks_summary, str)
assert tasks_summary.startswith("\n Task Number 1 - Task 1")
assert '"agent_tools": "agent has no tools"' in tasks_summary
# Knowledge field should not be present when empty
assert '"agent_knowledge"' not in tasks_summary
@patch('crewai.knowledge.storage.knowledge_storage.chromadb')
def test_create_tasks_summary_with_knowledge_and_tools(self, mock_chroma):
"""Test task summary generation with both knowledge and tools present."""
# Mock ChromaDB collection
mock_collection = mock_chroma.return_value.get_or_create_collection.return_value
mock_collection.add.return_value = None
# Create mock tools with proper string descriptions and structured tool support
class MockTool(BaseTool):
name: str
description: str
def __init__(self, name: str, description: str):
tool_data = {"name": name, "description": description}
super().__init__(**tool_data)
def __str__(self):
return self.name
def __repr__(self):
return self.name
def to_structured_tool(self):
return self
def _run(self, *args, **kwargs):
pass
def _generate_description(self) -> str:
"""Override _generate_description to avoid args_schema handling."""
return self.description
tool1 = MockTool("tool1", "Tool 1 description")
tool2 = MockTool("tool2", "Tool 2 description")
# Create a task with knowledge and tools
task = Task(
description="Task with knowledge and tools",
expected_output="Expected output",
agent=Agent(
role="Test Agent",
goal="Test Goal",
backstory="Test Backstory",
tools=[tool1, tool2],
knowledge_sources=[
StringKnowledgeSource(content="Test knowledge content")
]
)
)
# Create planner with the new task
planner = CrewPlanner([task], None)
tasks_summary = planner._create_tasks_summary()
# Verify task summary content
assert isinstance(tasks_summary, str)
assert task.description in tasks_summary
assert task.expected_output in tasks_summary
assert '"agent_tools": [tool1, tool2]' in tasks_summary
assert '"agent_knowledge": "[\\"Test knowledge content\\"]"' in tasks_summary
assert task.agent.role in tasks_summary
assert task.agent.goal in tasks_summary
assert tasks_summary.endswith('"agent_tools": []\n ')
def test_handle_crew_planning_different_llm(self, crew_planner_different_llm):
with patch.object(Task, "execute_sync") as execute:

531
uv.lock generated
View File

@@ -1,42 +1,10 @@
version = 1
requires-python = ">=3.10, <3.13"
resolution-markers = [
"python_full_version < '3.11' and platform_system == 'Darwin' and sys_platform == 'darwin'",
"python_full_version < '3.11' and platform_machine == 'aarch64' and platform_system == 'Linux' and sys_platform == 'darwin'",
"(python_full_version < '3.11' and platform_machine != 'aarch64' and platform_system != 'Darwin' and sys_platform == 'darwin') or (python_full_version < '3.11' and platform_system != 'Darwin' and platform_system != 'Linux' and sys_platform == 'darwin')",
"python_full_version < '3.11' and platform_machine == 'aarch64' and platform_system == 'Darwin' and sys_platform == 'linux'",
"python_full_version < '3.11' and platform_machine == 'aarch64' and platform_system == 'Linux' and sys_platform == 'linux'",
"python_full_version < '3.11' and platform_machine == 'aarch64' and platform_system != 'Darwin' and platform_system != 'Linux' and sys_platform == 'linux'",
"(python_full_version < '3.11' and platform_machine != 'aarch64' and platform_system == 'Darwin' and sys_platform != 'darwin') or (python_full_version < '3.11' and platform_system == 'Darwin' and sys_platform != 'darwin' and sys_platform != 'linux')",
"python_full_version < '3.11' and platform_machine == 'aarch64' and platform_system == 'Linux' and sys_platform != 'darwin' and sys_platform != 'linux'",
"(python_full_version < '3.11' and platform_machine != 'aarch64' and platform_system != 'Darwin' and sys_platform != 'darwin') or (python_full_version < '3.11' and platform_system != 'Darwin' and platform_system != 'Linux' and sys_platform != 'darwin' and sys_platform != 'linux')",
"python_full_version == '3.11.*' and platform_system == 'Darwin' and sys_platform == 'darwin'",
"python_full_version == '3.11.*' and platform_machine == 'aarch64' and platform_system == 'Linux' and sys_platform == 'darwin'",
"(python_full_version == '3.11.*' and platform_machine != 'aarch64' and platform_system != 'Darwin' and sys_platform == 'darwin') or (python_full_version == '3.11.*' and platform_system != 'Darwin' and platform_system != 'Linux' and sys_platform == 'darwin')",
"python_full_version == '3.11.*' and platform_machine == 'aarch64' and platform_system == 'Darwin' and sys_platform == 'linux'",
"python_full_version == '3.11.*' and platform_machine == 'aarch64' and platform_system == 'Linux' and sys_platform == 'linux'",
"python_full_version == '3.11.*' and platform_machine == 'aarch64' and platform_system != 'Darwin' and platform_system != 'Linux' and sys_platform == 'linux'",
"(python_full_version == '3.11.*' and platform_machine != 'aarch64' and platform_system == 'Darwin' and sys_platform != 'darwin') or (python_full_version == '3.11.*' and platform_system == 'Darwin' and sys_platform != 'darwin' and sys_platform != 'linux')",
"python_full_version == '3.11.*' and platform_machine == 'aarch64' and platform_system == 'Linux' and sys_platform != 'darwin' and sys_platform != 'linux'",
"(python_full_version == '3.11.*' and platform_machine != 'aarch64' and platform_system != 'Darwin' and sys_platform != 'darwin') or (python_full_version == '3.11.*' and platform_system != 'Darwin' and platform_system != 'Linux' and sys_platform != 'darwin' and sys_platform != 'linux')",
"python_full_version >= '3.12' and python_full_version < '3.12.4' and platform_system == 'Darwin' and sys_platform == 'darwin'",
"python_full_version >= '3.12' and python_full_version < '3.12.4' and platform_machine == 'aarch64' and platform_system == 'Linux' and sys_platform == 'darwin'",
"(python_full_version >= '3.12' and python_full_version < '3.12.4' and platform_machine != 'aarch64' and platform_system != 'Darwin' and sys_platform == 'darwin') or (python_full_version >= '3.12' and python_full_version < '3.12.4' and platform_system != 'Darwin' and platform_system != 'Linux' and sys_platform == 'darwin')",
"python_full_version >= '3.12' and python_full_version < '3.12.4' and platform_machine == 'aarch64' and platform_system == 'Darwin' and sys_platform == 'linux'",
"python_full_version >= '3.12' and python_full_version < '3.12.4' and platform_machine == 'aarch64' and platform_system == 'Linux' and sys_platform == 'linux'",
"python_full_version >= '3.12' and python_full_version < '3.12.4' and platform_machine == 'aarch64' and platform_system != 'Darwin' and platform_system != 'Linux' and sys_platform == 'linux'",
"(python_full_version >= '3.12' and python_full_version < '3.12.4' and platform_machine != 'aarch64' and platform_system == 'Darwin' and sys_platform != 'darwin') or (python_full_version >= '3.12' and python_full_version < '3.12.4' and platform_system == 'Darwin' and sys_platform != 'darwin' and sys_platform != 'linux')",
"python_full_version >= '3.12' and python_full_version < '3.12.4' and platform_machine == 'aarch64' and platform_system == 'Linux' and sys_platform != 'darwin' and sys_platform != 'linux'",
"(python_full_version >= '3.12' and python_full_version < '3.12.4' and platform_machine != 'aarch64' and platform_system != 'Darwin' and sys_platform != 'darwin') or (python_full_version >= '3.12' and python_full_version < '3.12.4' and platform_system != 'Darwin' and platform_system != 'Linux' and sys_platform != 'darwin' and sys_platform != 'linux')",
"python_full_version >= '3.12.4' and platform_system == 'Darwin' and sys_platform == 'darwin'",
"python_full_version >= '3.12.4' and platform_machine == 'aarch64' and platform_system == 'Linux' and sys_platform == 'darwin'",
"(python_full_version >= '3.12.4' and platform_machine != 'aarch64' and platform_system != 'Darwin' and sys_platform == 'darwin') or (python_full_version >= '3.12.4' and platform_system != 'Darwin' and platform_system != 'Linux' and sys_platform == 'darwin')",
"python_full_version >= '3.12.4' and platform_machine == 'aarch64' and platform_system == 'Darwin' and sys_platform == 'linux'",
"python_full_version >= '3.12.4' and platform_machine == 'aarch64' and platform_system == 'Linux' and sys_platform == 'linux'",
"python_full_version >= '3.12.4' and platform_machine == 'aarch64' and platform_system != 'Darwin' and platform_system != 'Linux' and sys_platform == 'linux'",
"(python_full_version >= '3.12.4' and platform_machine != 'aarch64' and platform_system == 'Darwin' and sys_platform != 'darwin') or (python_full_version >= '3.12.4' and platform_system == 'Darwin' and sys_platform != 'darwin' and sys_platform != 'linux')",
"python_full_version >= '3.12.4' and platform_machine == 'aarch64' and platform_system == 'Linux' and sys_platform != 'darwin' and sys_platform != 'linux'",
"(python_full_version >= '3.12.4' and platform_machine != 'aarch64' and platform_system != 'Darwin' and sys_platform != 'darwin') or (python_full_version >= '3.12.4' and platform_system != 'Darwin' and platform_system != 'Linux' and sys_platform != 'darwin' and sys_platform != 'linux')",
"python_full_version < '3.11'",
"python_full_version == '3.11.*'",
"python_full_version >= '3.12' and python_full_version < '3.12.4'",
"python_full_version >= '3.12.4'",
]
[[package]]
@@ -66,7 +34,7 @@ wheels = [
[[package]]
name = "aiohttp"
version = "3.11.11"
version = "3.10.10"
source = { registry = "https://pypi.org/simple" }
dependencies = [
{ name = "aiohappyeyeballs" },
@@ -75,56 +43,55 @@ dependencies = [
{ name = "attrs" },
{ name = "frozenlist" },
{ name = "multidict" },
{ name = "propcache" },
{ name = "yarl" },
]
sdist = { url = "https://files.pythonhosted.org/packages/fe/ed/f26db39d29cd3cb2f5a3374304c713fe5ab5a0e4c8ee25a0c45cc6adf844/aiohttp-3.11.11.tar.gz", hash = "sha256:bb49c7f1e6ebf3821a42d81d494f538107610c3a705987f53068546b0e90303e", size = 7669618 }
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