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Author SHA1 Message Date
nicoferdi96
2dbb83ae31 Private package registry (#4583)
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adding reference and explaination for package registry

Co-authored-by: Lorenze Jay <63378463+lorenzejay@users.noreply.github.com>
2026-02-24 19:37:17 +01:00
Mike Plachta
7377e1aa26 fix: bedrock region was always set to "us-east-1" not respecting the env var. (#4582)
* fix: bedrock region was always set to "us-east-1" not respecting the env
var.

code had AWS_REGION_NAME referenced, but not used, unified to
AWS_DEFAULT_REGION as per documentation

* DRY code improvement and fix caught by tests.

* Supporting litellm configuration
2026-02-24 09:59:01 -08:00
Greyson LaLonde
51754899a2 feat: migrate CLI http client from requests to httpx
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2026-02-20 18:21:05 -05:00
Greyson LaLonde
71b4f8402a fix: ensure callbacks are ran/awaited if promise
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2026-02-20 13:15:50 -05:00
Greyson LaLonde
4a4c99d8a2 fix: capture method name in exception context
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2026-02-19 17:51:18 -05:00
Greyson LaLonde
28a6b855a2 fix: preserve enum type in router result; improve types 2026-02-19 17:30:47 -05:00
Lorenze Jay
d09656664d supporting parallel tool use (#4513)
* supporting parallel tool use

* ensure we respect max_usage_count

* ensure result_as_answer, hooks, and cache parodity

* improve crew agent executor

* address test comments
2026-02-19 14:07:28 -08:00
Lucas Gomide
49aa29bb41 docs: correct broken human_feedback examples with working self-loop patterns (#4520)
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2026-02-19 09:02:01 -08:00
70 changed files with 5594 additions and 1363 deletions

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@@ -21,7 +21,6 @@ OPENROUTER_API_KEY=fake-openrouter-key
AWS_ACCESS_KEY_ID=fake-aws-access-key
AWS_SECRET_ACCESS_KEY=fake-aws-secret-key
AWS_DEFAULT_REGION=us-east-1
AWS_REGION_NAME=us-east-1
# -----------------------------------------------------------------------------
# Azure OpenAI Configuration

View File

@@ -440,6 +440,7 @@
"en/enterprise/guides/build-crew",
"en/enterprise/guides/prepare-for-deployment",
"en/enterprise/guides/deploy-to-amp",
"en/enterprise/guides/private-package-registry",
"en/enterprise/guides/kickoff-crew",
"en/enterprise/guides/update-crew",
"en/enterprise/guides/enable-crew-studio",
@@ -878,6 +879,7 @@
"pt-BR/enterprise/guides/build-crew",
"pt-BR/enterprise/guides/prepare-for-deployment",
"pt-BR/enterprise/guides/deploy-to-amp",
"pt-BR/enterprise/guides/private-package-registry",
"pt-BR/enterprise/guides/kickoff-crew",
"pt-BR/enterprise/guides/update-crew",
"pt-BR/enterprise/guides/enable-crew-studio",
@@ -1343,6 +1345,7 @@
"ko/enterprise/guides/build-crew",
"ko/enterprise/guides/prepare-for-deployment",
"ko/enterprise/guides/deploy-to-amp",
"ko/enterprise/guides/private-package-registry",
"ko/enterprise/guides/kickoff-crew",
"ko/enterprise/guides/update-crew",
"ko/enterprise/guides/enable-crew-studio",

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@@ -470,7 +470,7 @@ In this section, you'll find detailed examples that help you select, configure,
To get an Express mode API key:
- New Google Cloud users: Get an [express mode API key](https://cloud.google.com/vertex-ai/generative-ai/docs/start/quickstart?usertype=apikey)
- Existing Google Cloud users: Get a [Google Cloud API key bound to a service account](https://cloud.google.com/docs/authentication/api-keys)
For more details, see the [Vertex AI Express mode documentation](https://docs.cloud.google.com/vertex-ai/generative-ai/docs/start/quickstart?usertype=apikey).
</Info>
@@ -652,6 +652,7 @@ In this section, you'll find detailed examples that help you select, configure,
# Optional
AWS_SESSION_TOKEN=<your-session-token> # For temporary credentials
AWS_DEFAULT_REGION=<your-region> # Defaults to us-east-1
AWS_REGION_NAME=<your-region> # Alternative configuration for backwards compatibility with LiteLLM. Defaults to us-east-1
```
**Basic Usage:**
@@ -695,6 +696,7 @@ In this section, you'll find detailed examples that help you select, configure,
- `AWS_SECRET_ACCESS_KEY`: AWS secret key (required)
- `AWS_SESSION_TOKEN`: AWS session token for temporary credentials (optional)
- `AWS_DEFAULT_REGION`: AWS region (defaults to `us-east-1`)
- `AWS_REGION_NAME`: AWS region (defaults to `us-east-1`). Alternative configuration for backwards compatibility with LiteLLM
**Features:**
- Native tool calling support via Converse API

View File

@@ -38,22 +38,21 @@ CrewAI Enterprise provides a comprehensive Human-in-the-Loop (HITL) management s
Configure human review checkpoints within your Flows using the `@human_feedback` decorator. When execution reaches a review point, the system pauses, notifies the assignee via email, and waits for a response.
```python
from crewai.flow.flow import Flow, start, listen
from crewai.flow.flow import Flow, start, listen, or_
from crewai.flow.human_feedback import human_feedback, HumanFeedbackResult
class ContentApprovalFlow(Flow):
@start()
def generate_content(self):
# AI generates content
return "Generated marketing copy for Q1 campaign..."
@listen(generate_content)
@human_feedback(
message="Please review this content for brand compliance:",
emit=["approved", "rejected", "needs_revision"],
)
def review_content(self, content):
return content
@listen(or_("generate_content", "needs_revision"))
def review_content(self):
return "Marketing copy for review..."
@listen("approved")
def publish_content(self, result: HumanFeedbackResult):
@@ -62,10 +61,6 @@ class ContentApprovalFlow(Flow):
@listen("rejected")
def archive_content(self, result: HumanFeedbackResult):
print(f"Content rejected. Reason: {result.feedback}")
@listen("needs_revision")
def revise_content(self, result: HumanFeedbackResult):
print(f"Revision requested: {result.feedback}")
```
For complete implementation details, see the [Human Feedback in Flows](/en/learn/human-feedback-in-flows) guide.

View File

@@ -177,6 +177,11 @@ You need to push your crew to a GitHub repository. If you haven't created a crew
![Set Environment Variables](/images/enterprise/set-env-variables.png)
</Frame>
<Info>
Using private Python packages? You'll need to add your registry credentials here too.
See [Private Package Registries](/en/enterprise/guides/private-package-registry) for the required variables.
</Info>
</Step>
<Step title="Deploy Your Crew">

View File

@@ -256,6 +256,12 @@ Before deployment, ensure you have:
1. **LLM API keys** ready (OpenAI, Anthropic, Google, etc.)
2. **Tool API keys** if using external tools (Serper, etc.)
<Info>
If your project depends on packages from a **private PyPI registry**, you'll also need to configure
registry authentication credentials as environment variables. See the
[Private Package Registries](/en/enterprise/guides/private-package-registry) guide for details.
</Info>
<Tip>
Test your project locally with the same environment variables before deploying
to catch configuration issues early.

View File

@@ -0,0 +1,263 @@
---
title: "Private Package Registries"
description: "Install private Python packages from authenticated PyPI registries in CrewAI AMP"
icon: "lock"
mode: "wide"
---
<Note>
This guide covers how to configure your CrewAI project to install Python packages
from private PyPI registries (Azure DevOps Artifacts, GitHub Packages, GitLab, AWS CodeArtifact, etc.)
when deploying to CrewAI AMP.
</Note>
## When You Need This
If your project depends on internal or proprietary Python packages hosted on a private registry
rather than the public PyPI, you'll need to:
1. Tell UV **where** to find the package (an index URL)
2. Tell UV **which** packages come from that index (a source mapping)
3. Provide **credentials** so UV can authenticate during install
CrewAI AMP uses [UV](https://docs.astral.sh/uv/) for dependency resolution and installation.
UV supports authenticated private registries through `pyproject.toml` configuration combined
with environment variables for credentials.
## Step 1: Configure pyproject.toml
Three pieces work together in your `pyproject.toml`:
### 1a. Declare the dependency
Add the private package to your `[project.dependencies]` like any other dependency:
```toml
[project]
dependencies = [
"crewai[tools]>=0.100.1,<1.0.0",
"my-private-package>=1.2.0",
]
```
### 1b. Define the index
Register your private registry as a named index under `[[tool.uv.index]]`:
```toml
[[tool.uv.index]]
name = "my-private-registry"
url = "https://pkgs.dev.azure.com/my-org/_packaging/my-feed/pypi/simple/"
explicit = true
```
<Info>
The `name` field is important — UV uses it to construct the environment variable names
for authentication (see [Step 2](#step-2-set-authentication-credentials) below).
Setting `explicit = true` means UV won't search this index for every package — only the
ones you explicitly map to it in `[tool.uv.sources]`. This avoids unnecessary queries
against your private registry and protects against dependency confusion attacks.
</Info>
### 1c. Map the package to the index
Tell UV which packages should be resolved from your private index using `[tool.uv.sources]`:
```toml
[tool.uv.sources]
my-private-package = { index = "my-private-registry" }
```
### Complete example
```toml
[project]
name = "my-crew-project"
version = "0.1.0"
requires-python = ">=3.10,<=3.13"
dependencies = [
"crewai[tools]>=0.100.1,<1.0.0",
"my-private-package>=1.2.0",
]
[tool.crewai]
type = "crew"
[[tool.uv.index]]
name = "my-private-registry"
url = "https://pkgs.dev.azure.com/my-org/_packaging/my-feed/pypi/simple/"
explicit = true
[tool.uv.sources]
my-private-package = { index = "my-private-registry" }
```
After updating `pyproject.toml`, regenerate your lock file:
```bash
uv lock
```
<Warning>
Always commit the updated `uv.lock` along with your `pyproject.toml` changes.
The lock file is required for deployment — see [Prepare for Deployment](/en/enterprise/guides/prepare-for-deployment).
</Warning>
## Step 2: Set Authentication Credentials
UV authenticates against private indexes using environment variables that follow a naming convention
based on the index name you defined in `pyproject.toml`:
```
UV_INDEX_{UPPER_NAME}_USERNAME
UV_INDEX_{UPPER_NAME}_PASSWORD
```
Where `{UPPER_NAME}` is your index name converted to **uppercase** with **hyphens replaced by underscores**.
For example, an index named `my-private-registry` uses:
| Variable | Value |
|----------|-------|
| `UV_INDEX_MY_PRIVATE_REGISTRY_USERNAME` | Your registry username or token name |
| `UV_INDEX_MY_PRIVATE_REGISTRY_PASSWORD` | Your registry password or token/PAT |
<Warning>
These environment variables **must** be added via the CrewAI AMP **Environment Variables** settings —
either globally or at the deployment level. They cannot be set in `.env` files or hardcoded in your project.
See [Setting Environment Variables in AMP](#setting-environment-variables-in-amp) below.
</Warning>
## Registry Provider Reference
The table below shows the index URL format and credential values for common registry providers.
Replace placeholder values with your actual organization and feed details.
| Provider | Index URL | Username | Password |
|----------|-----------|----------|----------|
| **Azure DevOps Artifacts** | `https://pkgs.dev.azure.com/{org}/_packaging/{feed}/pypi/simple/` | Any non-empty string (e.g. `token`) | Personal Access Token (PAT) with Packaging Read scope |
| **GitHub Packages** | `https://pypi.pkg.github.com/{owner}/simple/` | GitHub username | Personal Access Token (classic) with `read:packages` scope |
| **GitLab Package Registry** | `https://gitlab.com/api/v4/projects/{project_id}/packages/pypi/simple/` | `__token__` | Project or Personal Access Token with `read_api` scope |
| **AWS CodeArtifact** | Use the URL from `aws codeartifact get-repository-endpoint` | `aws` | Token from `aws codeartifact get-authorization-token` |
| **Google Artifact Registry** | `https://{region}-python.pkg.dev/{project}/{repo}/simple/` | `_json_key_base64` | Base64-encoded service account key |
| **JFrog Artifactory** | `https://{instance}.jfrog.io/artifactory/api/pypi/{repo}/simple/` | Username or email | API key or identity token |
| **Self-hosted (devpi, Nexus, etc.)** | Your registry's simple API URL | Registry username | Registry password |
<Tip>
For **AWS CodeArtifact**, the authorization token expires periodically.
You'll need to refresh the `UV_INDEX_*_PASSWORD` value when it expires.
Consider automating this in your CI/CD pipeline.
</Tip>
## Setting Environment Variables in AMP
Private registry credentials must be configured as environment variables in CrewAI AMP.
You have two options:
<Tabs>
<Tab title="Web Interface">
1. Log in to [CrewAI AMP](https://app.crewai.com)
2. Navigate to your automation
3. Open the **Environment Variables** tab
4. Add each variable (`UV_INDEX_*_USERNAME` and `UV_INDEX_*_PASSWORD`) with its value
See the [Deploy to AMP — Set Environment Variables](/en/enterprise/guides/deploy-to-amp#set-environment-variables) step for details.
</Tab>
<Tab title="CLI Deployment">
Add the variables to your local `.env` file before running `crewai deploy create`.
The CLI will securely transfer them to the platform:
```bash
# .env
OPENAI_API_KEY=sk-...
UV_INDEX_MY_PRIVATE_REGISTRY_USERNAME=token
UV_INDEX_MY_PRIVATE_REGISTRY_PASSWORD=your-pat-here
```
```bash
crewai deploy create
```
</Tab>
</Tabs>
<Warning>
**Never** commit credentials to your repository. Use AMP environment variables for all secrets.
The `.env` file should be listed in `.gitignore`.
</Warning>
To update credentials on an existing deployment, see [Update Your Crew — Environment Variables](/en/enterprise/guides/update-crew).
## How It All Fits Together
When CrewAI AMP builds your automation, the resolution flow works like this:
<Steps>
<Step title="Build starts">
AMP pulls your repository and reads `pyproject.toml` and `uv.lock`.
</Step>
<Step title="UV resolves dependencies">
UV reads `[tool.uv.sources]` to determine which index each package should come from.
</Step>
<Step title="UV authenticates">
For each private index, UV looks up `UV_INDEX_{NAME}_USERNAME` and `UV_INDEX_{NAME}_PASSWORD`
from the environment variables you configured in AMP.
</Step>
<Step title="Packages install">
UV downloads and installs all packages — both public (from PyPI) and private (from your registry).
</Step>
<Step title="Automation runs">
Your crew or flow starts with all dependencies available.
</Step>
</Steps>
## Troubleshooting
### Authentication Errors During Build
**Symptom**: Build fails with `401 Unauthorized` or `403 Forbidden` when resolving a private package.
**Check**:
- The `UV_INDEX_*` environment variable names match your index name exactly (uppercased, hyphens → underscores)
- Credentials are set in AMP environment variables, not just in a local `.env`
- Your token/PAT has the required read permissions for the package feed
- The token hasn't expired (especially relevant for AWS CodeArtifact)
### Package Not Found
**Symptom**: `No matching distribution found for my-private-package`.
**Check**:
- The index URL in `pyproject.toml` ends with `/simple/`
- The `[tool.uv.sources]` entry maps the correct package name to the correct index name
- The package is actually published to your private registry
- Run `uv lock` locally with the same credentials to verify resolution works
### Lock File Conflicts
**Symptom**: `uv lock` fails or produces unexpected results after adding a private index.
**Solution**: Set the credentials locally and regenerate:
```bash
export UV_INDEX_MY_PRIVATE_REGISTRY_USERNAME=token
export UV_INDEX_MY_PRIVATE_REGISTRY_PASSWORD=your-pat
uv lock
```
Then commit the updated `uv.lock`.
## Related Guides
<CardGroup cols={3}>
<Card title="Prepare for Deployment" icon="clipboard-check" href="/en/enterprise/guides/prepare-for-deployment">
Verify project structure and dependencies before deploying.
</Card>
<Card title="Deploy to AMP" icon="rocket" href="/en/enterprise/guides/deploy-to-amp">
Deploy your crew or flow and configure environment variables.
</Card>
<Card title="Update Your Crew" icon="arrows-rotate" href="/en/enterprise/guides/update-crew">
Update environment variables and push changes to a running deployment.
</Card>
</CardGroup>

View File

@@ -98,33 +98,43 @@ def handle_feedback(self, result):
When you specify `emit`, the decorator becomes a router. The human's free-form feedback is interpreted by an LLM and collapsed into one of the specified outcomes:
```python Code
@start()
@human_feedback(
message="Do you approve this content for publication?",
emit=["approved", "rejected", "needs_revision"],
llm="gpt-4o-mini",
default_outcome="needs_revision",
)
def review_content(self):
return "Draft blog post content here..."
from crewai.flow.flow import Flow, start, listen, or_
from crewai.flow.human_feedback import human_feedback
@listen("approved")
def publish(self, result):
print(f"Publishing! User said: {result.feedback}")
class ReviewFlow(Flow):
@start()
def generate_content(self):
return "Draft blog post content here..."
@listen("rejected")
def discard(self, result):
print(f"Discarding. Reason: {result.feedback}")
@human_feedback(
message="Do you approve this content for publication?",
emit=["approved", "rejected", "needs_revision"],
llm="gpt-4o-mini",
default_outcome="needs_revision",
)
@listen(or_("generate_content", "needs_revision"))
def review_content(self):
return "Draft blog post content here..."
@listen("needs_revision")
def revise(self, result):
print(f"Revising based on: {result.feedback}")
@listen("approved")
def publish(self, result):
print(f"Publishing! User said: {result.feedback}")
@listen("rejected")
def discard(self, result):
print(f"Discarding. Reason: {result.feedback}")
```
When the human says something like "needs more detail", the LLM collapses that to `"needs_revision"`, which triggers `review_content` again via `or_()` — creating a revision loop. The loop continues until the outcome is `"approved"` or `"rejected"`.
<Tip>
The LLM uses structured outputs (function calling) when available to guarantee the response is one of your specified outcomes. This makes routing reliable and predictable.
</Tip>
<Warning>
A `@start()` method only runs once at the beginning of the flow. If you need a revision loop, separate the start method from the review method and use `@listen(or_("trigger", "revision_outcome"))` on the review method to enable the self-loop.
</Warning>
## HumanFeedbackResult
The `HumanFeedbackResult` dataclass contains all information about a human feedback interaction:
@@ -188,127 +198,183 @@ Each `HumanFeedbackResult` is appended to `human_feedback_history`, so multiple
## Complete Example: Content Approval Workflow
Here's a full example implementing a content review and approval workflow:
Here's a full example implementing a content review and approval workflow with a revision loop:
<CodeGroup>
```python Code
from crewai.flow.flow import Flow, start, listen
from crewai.flow.flow import Flow, start, listen, or_
from crewai.flow.human_feedback import human_feedback, HumanFeedbackResult
from pydantic import BaseModel
class ContentState(BaseModel):
topic: str = ""
draft: str = ""
final_content: str = ""
revision_count: int = 0
status: str = "pending"
class ContentApprovalFlow(Flow[ContentState]):
"""A flow that generates content and gets human approval."""
"""A flow that generates content and loops until the human approves."""
@start()
def get_topic(self):
self.state.topic = input("What topic should I write about? ")
return self.state.topic
@listen(get_topic)
def generate_draft(self, topic):
# In real use, this would call an LLM
self.state.draft = f"# {topic}\n\nThis is a draft about {topic}..."
def generate_draft(self):
self.state.draft = "# AI Safety\n\nThis is a draft about AI Safety..."
return self.state.draft
@listen(generate_draft)
@human_feedback(
message="Please review this draft. Reply 'approved', 'rejected', or provide revision feedback:",
message="Please review this draft. Approve, reject, or describe what needs changing:",
emit=["approved", "rejected", "needs_revision"],
llm="gpt-4o-mini",
default_outcome="needs_revision",
)
def review_draft(self, draft):
return draft
@listen(or_("generate_draft", "needs_revision"))
def review_draft(self):
self.state.revision_count += 1
return f"{self.state.draft} (v{self.state.revision_count})"
@listen("approved")
def publish_content(self, result: HumanFeedbackResult):
self.state.final_content = result.output
print("\n✅ Content approved and published!")
print(f"Reviewer comment: {result.feedback}")
self.state.status = "published"
print(f"Content approved and published! Reviewer said: {result.feedback}")
return "published"
@listen("rejected")
def handle_rejection(self, result: HumanFeedbackResult):
print("\n❌ Content rejected")
print(f"Reason: {result.feedback}")
self.state.status = "rejected"
print(f"Content rejected. Reason: {result.feedback}")
return "rejected"
@listen("needs_revision")
def revise_content(self, result: HumanFeedbackResult):
self.state.revision_count += 1
print(f"\n📝 Revision #{self.state.revision_count} requested")
print(f"Feedback: {result.feedback}")
# In a real flow, you might loop back to generate_draft
# For this example, we just acknowledge
return "revision_requested"
# Run the flow
flow = ContentApprovalFlow()
result = flow.kickoff()
print(f"\nFlow completed. Revisions requested: {flow.state.revision_count}")
print(f"\nFlow completed. Status: {flow.state.status}, Reviews: {flow.state.revision_count}")
```
```text Output
What topic should I write about? AI Safety
==================================================
OUTPUT FOR REVIEW:
==================================================
# AI Safety
This is a draft about AI Safety... (v1)
==================================================
Please review this draft. Approve, reject, or describe what needs changing:
(Press Enter to skip, or type your feedback)
Your feedback: Needs more detail on alignment research
==================================================
OUTPUT FOR REVIEW:
==================================================
# AI Safety
This is a draft about AI Safety...
This is a draft about AI Safety... (v2)
==================================================
Please review this draft. Reply 'approved', 'rejected', or provide revision feedback:
Please review this draft. Approve, reject, or describe what needs changing:
(Press Enter to skip, or type your feedback)
Your feedback: Looks good, approved!
Content approved and published!
Reviewer comment: Looks good, approved!
Content approved and published! Reviewer said: Looks good, approved!
Flow completed. Revisions requested: 0
Flow completed. Status: published, Reviews: 2
```
</CodeGroup>
The key pattern is `@listen(or_("generate_draft", "needs_revision"))` — the review method listens to both the initial trigger and its own revision outcome, creating a self-loop that repeats until the human approves or rejects.
## Combining with Other Decorators
The `@human_feedback` decorator works with other flow decorators. Place it as the innermost decorator (closest to the function):
The `@human_feedback` decorator works with `@start()`, `@listen()`, and `or_()`. Both decorator orderings work — the framework propagates attributes in both directions — but the recommended patterns are:
```python Code
# Correct: @human_feedback is innermost (closest to the function)
# One-shot review at the start of a flow (no self-loop)
@start()
@human_feedback(message="Review this:")
@human_feedback(message="Review this:", emit=["approved", "rejected"], llm="gpt-4o-mini")
def my_start_method(self):
return "content"
# Linear review on a listener (no self-loop)
@listen(other_method)
@human_feedback(message="Review this too:")
@human_feedback(message="Review this too:", emit=["good", "bad"], llm="gpt-4o-mini")
def my_listener(self, data):
return f"processed: {data}"
# Self-loop: review that can loop back for revisions
@human_feedback(message="Approve or revise?", emit=["approved", "revise"], llm="gpt-4o-mini")
@listen(or_("upstream_method", "revise"))
def review_with_loop(self):
return "content for review"
```
<Tip>
Place `@human_feedback` as the innermost decorator (last/closest to the function) so it wraps the method directly and can capture the return value before passing to the flow system.
</Tip>
### Self-loop pattern
To create a revision loop, the review method must listen to **both** an upstream trigger and its own revision outcome using `or_()`:
```python Code
@start()
def generate(self):
return "initial draft"
@human_feedback(
message="Approve or request changes?",
emit=["revise", "approved"],
llm="gpt-4o-mini",
default_outcome="approved",
)
@listen(or_("generate", "revise"))
def review(self):
return "content"
@listen("approved")
def publish(self):
return "published"
```
When the outcome is `"revise"`, the flow routes back to `review` (because it listens to `"revise"` via `or_()`). When the outcome is `"approved"`, the flow continues to `publish`. This works because the flow engine exempts routers from the "fire once" rule, allowing them to re-execute on each loop iteration.
### Chained routers
A listener triggered by one router's outcome can itself be a router:
```python Code
@start()
def generate(self):
return "draft content"
@human_feedback(message="First review:", emit=["approved", "rejected"], llm="gpt-4o-mini")
@listen("generate")
def first_review(self):
return "draft content"
@human_feedback(message="Final review:", emit=["publish", "hold"], llm="gpt-4o-mini")
@listen("approved")
def final_review(self, prev):
return "final content"
@listen("publish")
def on_publish(self, prev):
return "published"
@listen("hold")
def on_hold(self, prev):
return "held for later"
```
### Limitations
- **`@start()` methods run once**: A `@start()` method cannot self-loop. If you need a revision cycle, use a separate `@start()` method as the entry point and put the `@human_feedback` on a `@listen()` method.
- **No `@start()` + `@listen()` on the same method**: This is a Flow framework constraint. A method is either a start point or a listener, not both.
## Best Practices
### 1. Write Clear Request Messages
The `request` parameter is what the human sees. Make it actionable:
The `message` parameter is what the human sees. Make it actionable:
```python Code
# ✅ Good - clear and actionable
@@ -516,9 +582,9 @@ class ContentPipeline(Flow):
@start()
@human_feedback(
message="Approve this content for publication?",
emit=["approved", "rejected", "needs_revision"],
emit=["approved", "rejected"],
llm="gpt-4o-mini",
default_outcome="needs_revision",
default_outcome="rejected",
provider=SlackNotificationProvider("#content-reviews"),
)
def generate_content(self):
@@ -534,11 +600,6 @@ class ContentPipeline(Flow):
print(f"Archived. Reason: {result.feedback}")
return {"status": "archived"}
@listen("needs_revision")
def queue_revision(self, result):
print(f"Queued for revision: {result.feedback}")
return {"status": "revision_needed"}
# Starting the flow (will pause and wait for Slack response)
def start_content_pipeline():
@@ -594,22 +655,22 @@ Over time, the human sees progressively better pre-reviewed output because each
```python Code
class ArticleReviewFlow(Flow):
@start()
def generate_article(self):
return self.crew.kickoff(inputs={"topic": "AI Safety"}).raw
@human_feedback(
message="Review this article draft:",
emit=["approved", "needs_revision"],
llm="gpt-4o-mini",
learn=True, # enable HITL learning
)
def generate_article(self):
return self.crew.kickoff(inputs={"topic": "AI Safety"}).raw
@listen(or_("generate_article", "needs_revision"))
def review_article(self):
return self.last_human_feedback.output if self.last_human_feedback else "article draft"
@listen("approved")
def publish(self):
print(f"Publishing: {self.last_human_feedback.output}")
@listen("needs_revision")
def revise(self):
print("Revising based on feedback...")
```
**First run**: The human sees the raw output and says "Always include citations for factual claims." The lesson is distilled and stored in memory.

View File

@@ -38,22 +38,21 @@ CrewAI Enterprise는 AI 워크플로우를 협업적인 인간-AI 프로세스
`@human_feedback` 데코레이터를 사용하여 Flow 내에 인간 검토 체크포인트를 구성합니다. 실행이 검토 포인트에 도달하면 시스템이 일시 중지되고, 담당자에게 이메일로 알리며, 응답을 기다립니다.
```python
from crewai.flow.flow import Flow, start, listen
from crewai.flow.flow import Flow, start, listen, or_
from crewai.flow.human_feedback import human_feedback, HumanFeedbackResult
class ContentApprovalFlow(Flow):
@start()
def generate_content(self):
# AI가 콘텐츠 생성
return "Q1 캠페인용 마케팅 카피 생성..."
@listen(generate_content)
@human_feedback(
message="브랜드 준수를 위해 이 콘텐츠를 검토해 주세요:",
emit=["approved", "rejected", "needs_revision"],
)
def review_content(self, content):
return content
@listen(or_("generate_content", "needs_revision"))
def review_content(self):
return "검토용 마케팅 카피..."
@listen("approved")
def publish_content(self, result: HumanFeedbackResult):
@@ -62,10 +61,6 @@ class ContentApprovalFlow(Flow):
@listen("rejected")
def archive_content(self, result: HumanFeedbackResult):
print(f"콘텐츠 거부됨. 사유: {result.feedback}")
@listen("needs_revision")
def revise_content(self, result: HumanFeedbackResult):
print(f"수정 요청: {result.feedback}")
```
완전한 구현 세부 사항은 [Flow에서 인간 피드백](/ko/learn/human-feedback-in-flows) 가이드를 참조하세요.

View File

@@ -176,6 +176,11 @@ Crew를 GitHub 저장소에 푸시해야 합니다. 아직 Crew를 만들지 않
![Set Environment Variables](/images/enterprise/set-env-variables.png)
</Frame>
<Info>
프라이빗 Python 패키지를 사용하시나요? 여기에 레지스트리 자격 증명도 추가해야 합니다.
필요한 변수는 [프라이빗 패키지 레지스트리](/ko/enterprise/guides/private-package-registry)를 참조하세요.
</Info>
</Step>
<Step title="Crew 배포하기">

View File

@@ -256,6 +256,12 @@ Crews와 Flows 모두 `src/project_name/main.py`에 진입점이 있습니다:
1. **LLM API 키** (OpenAI, Anthropic, Google 등)
2. **도구 API 키** - 외부 도구를 사용하는 경우 (Serper 등)
<Info>
프로젝트가 **프라이빗 PyPI 레지스트리**의 패키지에 의존하는 경우, 레지스트리 인증 자격 증명도
환경 변수로 구성해야 합니다. 자세한 내용은
[프라이빗 패키지 레지스트리](/ko/enterprise/guides/private-package-registry) 가이드를 참조하세요.
</Info>
<Tip>
구성 문제를 조기에 발견하기 위해 배포 전에 동일한 환경 변수로
로컬에서 프로젝트를 테스트하세요.

View File

@@ -0,0 +1,261 @@
---
title: "프라이빗 패키지 레지스트리"
description: "CrewAI AMP에서 인증된 PyPI 레지스트리의 프라이빗 Python 패키지 설치하기"
icon: "lock"
mode: "wide"
---
<Note>
이 가이드는 CrewAI AMP에 배포할 때 프라이빗 PyPI 레지스트리(Azure DevOps Artifacts, GitHub Packages,
GitLab, AWS CodeArtifact 등)에서 Python 패키지를 설치하도록 CrewAI 프로젝트를 구성하는 방법을 다룹니다.
</Note>
## 이 가이드가 필요한 경우
프로젝트가 공개 PyPI가 아닌 프라이빗 레지스트리에 호스팅된 내부 또는 독점 Python 패키지에
의존하는 경우, 다음을 수행해야 합니다:
1. UV에 패키지를 **어디서** 찾을지 알려줍니다 (index URL)
2. UV에 **어떤** 패키지가 해당 index에서 오는지 알려줍니다 (source 매핑)
3. UV가 설치 중에 인증할 수 있도록 **자격 증명**을 제공합니다
CrewAI AMP는 의존성 해결 및 설치에 [UV](https://docs.astral.sh/uv/)를 사용합니다.
UV는 `pyproject.toml` 구성과 자격 증명용 환경 변수를 결합하여 인증된 프라이빗 레지스트리를 지원합니다.
## 1단계: pyproject.toml 구성
`pyproject.toml`에서 세 가지 요소가 함께 작동합니다:
### 1a. 의존성 선언
프라이빗 패키지를 다른 의존성과 마찬가지로 `[project.dependencies]`에 추가합니다:
```toml
[project]
dependencies = [
"crewai[tools]>=0.100.1,<1.0.0",
"my-private-package>=1.2.0",
]
```
### 1b. index 정의
프라이빗 레지스트리를 `[[tool.uv.index]]` 아래에 명명된 index로 등록합니다:
```toml
[[tool.uv.index]]
name = "my-private-registry"
url = "https://pkgs.dev.azure.com/my-org/_packaging/my-feed/pypi/simple/"
explicit = true
```
<Info>
`name` 필드는 중요합니다 — UV는 이를 사용하여 인증을 위한 환경 변수 이름을
구성합니다 (아래 [2단계](#2단계-인증-자격-증명-설정)를 참조하세요).
`explicit = true`를 설정하면 UV가 모든 패키지에 대해 이 index를 검색하지 않습니다 —
`[tool.uv.sources]`에서 명시적으로 매핑한 패키지만 검색합니다. 이렇게 하면 프라이빗
레지스트리에 대한 불필요한 쿼리를 방지하고 의존성 혼동 공격을 차단할 수 있습니다.
</Info>
### 1c. 패키지를 index에 매핑
`[tool.uv.sources]`를 사용하여 프라이빗 index에서 해결해야 할 패키지를 UV에 알려줍니다:
```toml
[tool.uv.sources]
my-private-package = { index = "my-private-registry" }
```
### 전체 예시
```toml
[project]
name = "my-crew-project"
version = "0.1.0"
requires-python = ">=3.10,<=3.13"
dependencies = [
"crewai[tools]>=0.100.1,<1.0.0",
"my-private-package>=1.2.0",
]
[tool.crewai]
type = "crew"
[[tool.uv.index]]
name = "my-private-registry"
url = "https://pkgs.dev.azure.com/my-org/_packaging/my-feed/pypi/simple/"
explicit = true
[tool.uv.sources]
my-private-package = { index = "my-private-registry" }
```
`pyproject.toml`을 업데이트한 후 lock 파일을 다시 생성합니다:
```bash
uv lock
```
<Warning>
업데이트된 `uv.lock`을 항상 `pyproject.toml` 변경 사항과 함께 커밋하세요.
lock 파일은 배포에 필수입니다 — [배포 준비하기](/ko/enterprise/guides/prepare-for-deployment)를 참조하세요.
</Warning>
## 2단계: 인증 자격 증명 설정
UV는 `pyproject.toml`에서 정의한 index 이름을 기반으로 한 명명 규칙을 따르는
환경 변수를 사용하여 프라이빗 index에 인증합니다:
```
UV_INDEX_{UPPER_NAME}_USERNAME
UV_INDEX_{UPPER_NAME}_PASSWORD
```
여기서 `{UPPER_NAME}`은 index 이름을 **대문자**로 변환하고 **하이픈을 언더스코어로 대체**한 것입니다.
예를 들어, `my-private-registry`라는 이름의 index는 다음을 사용합니다:
| 변수 | 값 |
|------|-----|
| `UV_INDEX_MY_PRIVATE_REGISTRY_USERNAME` | 레지스트리 사용자 이름 또는 토큰 이름 |
| `UV_INDEX_MY_PRIVATE_REGISTRY_PASSWORD` | 레지스트리 비밀번호 또는 토큰/PAT |
<Warning>
이 환경 변수는 CrewAI AMP **환경 변수** 설정을 통해 **반드시** 추가해야 합니다 —
전역적으로 또는 배포 수준에서. `.env` 파일에 설정하거나 프로젝트에 하드코딩할 수 없습니다.
아래 [AMP에서 환경 변수 설정](#amp에서-환경-변수-설정)을 참조하세요.
</Warning>
## 레지스트리 제공업체 참조
아래 표는 일반적인 레지스트리 제공업체의 index URL 형식과 자격 증명 값을 보여줍니다.
자리 표시자 값을 실제 조직 및 피드 세부 정보로 대체하세요.
| 제공업체 | Index URL | 사용자 이름 | 비밀번호 |
|---------|-----------|-----------|---------|
| **Azure DevOps Artifacts** | `https://pkgs.dev.azure.com/{org}/_packaging/{feed}/pypi/simple/` | 비어 있지 않은 임의의 문자열 (예: `token`) | Packaging Read 범위의 Personal Access Token (PAT) |
| **GitHub Packages** | `https://pypi.pkg.github.com/{owner}/simple/` | GitHub 사용자 이름 | `read:packages` 범위의 Personal Access Token (classic) |
| **GitLab Package Registry** | `https://gitlab.com/api/v4/projects/{project_id}/packages/pypi/simple/` | `__token__` | `read_api` 범위의 Project 또는 Personal Access Token |
| **AWS CodeArtifact** | `aws codeartifact get-repository-endpoint`의 URL 사용 | `aws` | `aws codeartifact get-authorization-token`의 토큰 |
| **Google Artifact Registry** | `https://{region}-python.pkg.dev/{project}/{repo}/simple/` | `_json_key_base64` | Base64로 인코딩된 서비스 계정 키 |
| **JFrog Artifactory** | `https://{instance}.jfrog.io/artifactory/api/pypi/{repo}/simple/` | 사용자 이름 또는 이메일 | API 키 또는 ID 토큰 |
| **자체 호스팅 (devpi, Nexus 등)** | 레지스트리의 simple API URL | 레지스트리 사용자 이름 | 레지스트리 비밀번호 |
<Tip>
**AWS CodeArtifact**의 경우 인증 토큰이 주기적으로 만료됩니다.
만료되면 `UV_INDEX_*_PASSWORD` 값을 갱신해야 합니다.
CI/CD 파이프라인에서 이를 자동화하는 것을 고려하세요.
</Tip>
## AMP에서 환경 변수 설정
프라이빗 레지스트리 자격 증명은 CrewAI AMP에서 환경 변수로 구성해야 합니다.
두 가지 옵션이 있습니다:
<Tabs>
<Tab title="웹 인터페이스">
1. [CrewAI AMP](https://app.crewai.com)에 로그인합니다
2. 자동화로 이동합니다
3. **Environment Variables** 탭을 엽니다
4. 각 변수 (`UV_INDEX_*_USERNAME` 및 `UV_INDEX_*_PASSWORD`)에 값을 추가합니다
자세한 내용은 [AMP에 배포하기 — 환경 변수 설정하기](/ko/enterprise/guides/deploy-to-amp#환경-변수-설정하기) 단계를 참조하세요.
</Tab>
<Tab title="CLI 배포">
`crewai deploy create`를 실행하기 전에 로컬 `.env` 파일에 변수를 추가합니다.
CLI가 이를 안전하게 플랫폼으로 전송합니다:
```bash
# .env
OPENAI_API_KEY=sk-...
UV_INDEX_MY_PRIVATE_REGISTRY_USERNAME=token
UV_INDEX_MY_PRIVATE_REGISTRY_PASSWORD=your-pat-here
```
```bash
crewai deploy create
```
</Tab>
</Tabs>
<Warning>
자격 증명을 저장소에 **절대** 커밋하지 마세요. 모든 비밀 정보에는 AMP 환경 변수를 사용하세요.
`.env` 파일은 `.gitignore`에 포함되어야 합니다.
</Warning>
기존 배포의 자격 증명을 업데이트하려면 [Crew 업데이트하기 — 환경 변수](/ko/enterprise/guides/update-crew)를 참조하세요.
## 전체 동작 흐름
CrewAI AMP가 자동화를 빌드할 때, 해결 흐름은 다음과 같이 작동합니다:
<Steps>
<Step title="빌드 시작">
AMP가 저장소를 가져오고 `pyproject.toml`과 `uv.lock`을 읽습니다.
</Step>
<Step title="UV가 의존성 해결">
UV가 `[tool.uv.sources]`를 읽어 각 패키지가 어떤 index에서 와야 하는지 결정합니다.
</Step>
<Step title="UV가 인증">
각 프라이빗 index에 대해 UV가 AMP에서 구성한 환경 변수에서
`UV_INDEX_{NAME}_USERNAME`과 `UV_INDEX_{NAME}_PASSWORD`를 조회합니다.
</Step>
<Step title="패키지 설치">
UV가 공개(PyPI) 및 프라이빗(레지스트리) 패키지를 모두 다운로드하고 설치합니다.
</Step>
<Step title="자동화 실행">
모든 의존성이 사용 가능한 상태에서 crew 또는 flow가 시작됩니다.
</Step>
</Steps>
## 문제 해결
### 빌드 중 인증 오류
**증상**: 프라이빗 패키지를 해결할 때 `401 Unauthorized` 또는 `403 Forbidden`으로 빌드가 실패합니다.
**확인사항**:
- `UV_INDEX_*` 환경 변수 이름이 index 이름과 정확히 일치하는지 확인합니다 (대문자, 하이픈 -> 언더스코어)
- 자격 증명이 로컬 `.env`뿐만 아니라 AMP 환경 변수에 설정되어 있는지 확인합니다
- 토큰/PAT에 패키지 피드에 필요한 읽기 권한이 있는지 확인합니다
- 토큰이 만료되지 않았는지 확인합니다 (특히 AWS CodeArtifact의 경우)
### 패키지를 찾을 수 없음
**증상**: `No matching distribution found for my-private-package`.
**확인사항**:
- `pyproject.toml`의 index URL이 `/simple/`로 끝나는지 확인합니다
- `[tool.uv.sources]` 항목이 올바른 패키지 이름을 올바른 index 이름에 매핑하는지 확인합니다
- 패키지가 실제로 프라이빗 레지스트리에 게시되어 있는지 확인합니다
- 동일한 자격 증명으로 로컬에서 `uv lock`을 실행하여 해결이 작동하는지 확인합니다
### Lock 파일 충돌
**증상**: 프라이빗 index를 추가한 후 `uv lock`이 실패하거나 예상치 못한 결과를 생성합니다.
**해결책**: 로컬에서 자격 증명을 설정하고 다시 생성합니다:
```bash
export UV_INDEX_MY_PRIVATE_REGISTRY_USERNAME=token
export UV_INDEX_MY_PRIVATE_REGISTRY_PASSWORD=your-pat
uv lock
```
그런 다음 업데이트된 `uv.lock`을 커밋합니다.
## 관련 가이드
<CardGroup cols={3}>
<Card title="배포 준비하기" icon="clipboard-check" href="/ko/enterprise/guides/prepare-for-deployment">
배포 전에 프로젝트 구조와 의존성을 확인합니다.
</Card>
<Card title="AMP에 배포하기" icon="rocket" href="/ko/enterprise/guides/deploy-to-amp">
crew 또는 flow를 배포하고 환경 변수를 구성합니다.
</Card>
<Card title="Crew 업데이트하기" icon="arrows-rotate" href="/ko/enterprise/guides/update-crew">
환경 변수를 업데이트하고 실행 중인 배포에 변경 사항을 푸시합니다.
</Card>
</CardGroup>

View File

@@ -98,33 +98,43 @@ def handle_feedback(self, result):
`emit`을 지정하면, 데코레이터는 라우터가 됩니다. 인간의 자유 형식 피드백이 LLM에 의해 해석되어 지정된 outcome 중 하나로 매핑됩니다:
```python Code
@start()
@human_feedback(
message="이 콘텐츠의 출판을 승인하시겠습니까?",
emit=["approved", "rejected", "needs_revision"],
llm="gpt-4o-mini",
default_outcome="needs_revision",
)
def review_content(self):
return "블로그 게시물 초안 내용..."
from crewai.flow.flow import Flow, start, listen, or_
from crewai.flow.human_feedback import human_feedback
@listen("approved")
def publish(self, result):
print(f"출판 중! 사용자 의견: {result.feedback}")
class ReviewFlow(Flow):
@start()
def generate_content(self):
return "블로그 게시물 초안 내용..."
@listen("rejected")
def discard(self, result):
print(f"폐기됨. 이유: {result.feedback}")
@human_feedback(
message="이 콘텐츠의 출판을 승인하시겠습니까?",
emit=["approved", "rejected", "needs_revision"],
llm="gpt-4o-mini",
default_outcome="needs_revision",
)
@listen(or_("generate_content", "needs_revision"))
def review_content(self):
return "블로그 게시물 초안 내용..."
@listen("needs_revision")
def revise(self, result):
print(f"다음을 기반으로 수정 중: {result.feedback}")
@listen("approved")
def publish(self, result):
print(f"출판 중! 사용자 의견: {result.feedback}")
@listen("rejected")
def discard(self, result):
print(f"폐기됨. 이유: {result.feedback}")
```
사용자가 "더 자세한 내용이 필요합니다"와 같이 말하면, LLM이 이를 `"needs_revision"`으로 매핑하고, `or_()`를 통해 `review_content`가 다시 트리거됩니다 — 수정 루프가 생성됩니다. outcome이 `"approved"` 또는 `"rejected"`가 될 때까지 루프가 계속됩니다.
<Tip>
LLM은 가능한 경우 구조화된 출력(function calling)을 사용하여 응답이 지정된 outcome 중 하나임을 보장합니다. 이로 인해 라우팅이 신뢰할 수 있고 예측 가능해집니다.
</Tip>
<Warning>
`@start()` 메서드는 flow 시작 시 한 번만 실행됩니다. 수정 루프가 필요한 경우, start 메서드를 review 메서드와 분리하고 review 메서드에 `@listen(or_("trigger", "revision_outcome"))`를 사용하여 self-loop을 활성화하세요.
</Warning>
## HumanFeedbackResult
`HumanFeedbackResult` 데이터클래스는 인간 피드백 상호작용에 대한 모든 정보를 포함합니다:
@@ -193,116 +203,162 @@ def summarize(self):
<CodeGroup>
```python Code
from crewai.flow.flow import Flow, start, listen
from crewai.flow.flow import Flow, start, listen, or_
from crewai.flow.human_feedback import human_feedback, HumanFeedbackResult
from pydantic import BaseModel
class ContentState(BaseModel):
topic: str = ""
draft: str = ""
final_content: str = ""
revision_count: int = 0
status: str = "pending"
class ContentApprovalFlow(Flow[ContentState]):
"""콘텐츠를 생성하고 인간의 승인을 받는 Flow입니다."""
"""콘텐츠를 생성하고 승인될 때까지 반복하는 Flow."""
@start()
def get_topic(self):
self.state.topic = input("어떤 주제에 대해 글을 쓸까요? ")
return self.state.topic
@listen(get_topic)
def generate_draft(self, topic):
# 실제 사용에서는 LLM을 호출합니다
self.state.draft = f"# {topic}\n\n{topic}에 대한 초안입니다..."
def generate_draft(self):
self.state.draft = "# AI 안전\n\nAI 안전에 대한 초안..."
return self.state.draft
@listen(generate_draft)
@human_feedback(
message="이 초안을 검토해 주세요. 'approved', 'rejected'로 답하거나 수정 피드백을 제공해 주세요:",
message="이 초안을 검토해 주세요. 승인, 거부 또는 변경이 필요한 사항을 설명해 주세요:",
emit=["approved", "rejected", "needs_revision"],
llm="gpt-4o-mini",
default_outcome="needs_revision",
)
def review_draft(self, draft):
return draft
@listen(or_("generate_draft", "needs_revision"))
def review_draft(self):
self.state.revision_count += 1
return f"{self.state.draft} (v{self.state.revision_count})"
@listen("approved")
def publish_content(self, result: HumanFeedbackResult):
self.state.final_content = result.output
print("\n✅ 콘텐츠 승인되어 출판되었습니다!")
print(f"검토자 코멘트: {result.feedback}")
self.state.status = "published"
print(f"콘텐츠 승인 및 게시! 리뷰어 의견: {result.feedback}")
return "published"
@listen("rejected")
def handle_rejection(self, result: HumanFeedbackResult):
print("\n❌ 콘텐츠가 거부되었습니다")
print(f"이유: {result.feedback}")
self.state.status = "rejected"
print(f"콘텐츠 거부됨. 이유: {result.feedback}")
return "rejected"
@listen("needs_revision")
def revise_content(self, result: HumanFeedbackResult):
self.state.revision_count += 1
print(f"\n📝 수정 #{self.state.revision_count} 요청됨")
print(f"피드백: {result.feedback}")
# 실제 Flow에서는 generate_draft로 돌아갈 수 있습니다
# 이 예제에서는 단순히 확인합니다
return "revision_requested"
# Flow 실행
flow = ContentApprovalFlow()
result = flow.kickoff()
print(f"\nFlow 완료. 요청된 수정: {flow.state.revision_count}")
print(f"\nFlow 완료. 상태: {flow.state.status}, 검토 횟수: {flow.state.revision_count}")
```
```text Output
어떤 주제에 대해 글을 쓸까요? AI 안전
==================================================
OUTPUT FOR REVIEW:
==================================================
# AI 안전
AI 안전에 대한 초안... (v1)
==================================================
이 초안을 검토해 주세요. 승인, 거부 또는 변경이 필요한 사항을 설명해 주세요:
(Press Enter to skip, or type your feedback)
Your feedback: 더 자세한 내용이 필요합니다
==================================================
OUTPUT FOR REVIEW:
==================================================
# AI 안전
AI 안전에 대한 초안입니다...
AI 안전에 대한 초안... (v2)
==================================================
이 초안을 검토해 주세요. 'approved', 'rejected'로 답하거나 수정 피드백을 제공해 주세요:
이 초안을 검토해 주세요. 승인, 거부 또는 변경이 필요한 사항을 설명해 주세요:
(Press Enter to skip, or type your feedback)
Your feedback: 좋아 보입니다, 승인!
콘텐츠 승인되어 출판되었습니다!
검토자 코멘트: 좋아 보입니다, 승인!
콘텐츠 승인 및 게시! 리뷰어 의견: 좋아 보입니다, 승인!
Flow 완료. 요청된 수정: 0
Flow 완료. 상태: published, 검토 횟수: 2
```
</CodeGroup>
## 다른 데코레이터와 결합하기
`@human_feedback` 데코레이터는 다른 Flow 데코레이터와 함께 작동합니다. 가장 안쪽 데코레이터(함수에 가장 가까운)로 배치하세요:
`@human_feedback` 데코레이터는 `@start()`, `@listen()`, `or_()`와 함께 작동합니다. 데코레이터 순서는 두 가지 모두 동작합니다—프레임워크가 양방향으로 속성을 전파합니다—하지만 권장 패턴은 다음과 같습니다:
```python Code
# 올바름: @human_feedback이 가장 안쪽(함수에 가장 가까움)
# Flow 시작 시 일회성 검토 (self-loop 없음)
@start()
@human_feedback(message="이것을 검토해 주세요:")
@human_feedback(message="이것을 검토해 주세요:", emit=["approved", "rejected"], llm="gpt-4o-mini")
def my_start_method(self):
return "content"
# 리스너에서 선형 검토 (self-loop 없음)
@listen(other_method)
@human_feedback(message="이것도 검토해 주세요:")
@human_feedback(message="이것도 검토해 주세요:", emit=["good", "bad"], llm="gpt-4o-mini")
def my_listener(self, data):
return f"processed: {data}"
# Self-loop: 수정을 위해 반복할 수 있는 검토
@human_feedback(message="승인 또는 수정 요청?", emit=["approved", "revise"], llm="gpt-4o-mini")
@listen(or_("upstream_method", "revise"))
def review_with_loop(self):
return "content for review"
```
<Tip>
`@human_feedback`를 가장 안쪽 데코레이터(마지막/함수에 가장 가까움)로 배치하여 메서드를 직접 래핑하고 Flow 시스템에 전달하기 전에 반환 값을 캡처할 수 있도록 하세요.
</Tip>
### Self-loop 패턴
수정 루프를 만들려면 `or_()`를 사용하여 검토 메서드가 **상위 트리거**와 **자체 수정 outcome**을 모두 리스닝해야 합니다:
```python Code
@start()
def generate(self):
return "initial draft"
@human_feedback(
message="승인하시겠습니까, 아니면 변경을 요청하시겠습니까?",
emit=["revise", "approved"],
llm="gpt-4o-mini",
default_outcome="approved",
)
@listen(or_("generate", "revise"))
def review(self):
return "content"
@listen("approved")
def publish(self):
return "published"
```
outcome이 `"revise"`이면 flow가 `review`로 다시 라우팅됩니다 (`or_()`를 통해 `"revise"`를 리스닝하기 때문). outcome이 `"approved"`이면 flow가 `publish`로 계속됩니다. flow 엔진이 라우터를 "한 번만 실행" 규칙에서 제외하여 각 루프 반복마다 재실행할 수 있기 때문에 이 패턴이 동작합니다.
### 체인된 라우터
한 라우터의 outcome으로 트리거된 리스너가 그 자체로 라우터가 될 수 있습니다:
```python Code
@start()
@human_feedback(message="첫 번째 검토:", emit=["approved", "rejected"], llm="gpt-4o-mini")
def draft(self):
return "draft content"
@listen("approved")
@human_feedback(message="최종 검토:", emit=["publish", "revise"], llm="gpt-4o-mini")
def final_review(self, prev):
return "final content"
@listen("publish")
def on_publish(self, prev):
return "published"
```
### 제한 사항
- **`@start()` 메서드는 한 번만 실행**: `@start()` 메서드는 self-loop할 수 없습니다. 수정 주기가 필요하면 별도의 `@start()` 메서드를 진입점으로 사용하고 `@listen()` 메서드에 `@human_feedback`를 배치하세요.
- **동일 메서드에 `@start()` + `@listen()` 불가**: 이는 Flow 프레임워크 제약입니다. 메서드는 시작점이거나 리스너여야 하며, 둘 다일 수 없습니다.
## 모범 사례
@@ -516,9 +572,9 @@ class ContentPipeline(Flow):
@start()
@human_feedback(
message="이 콘텐츠의 출판을 승인하시겠습니까?",
emit=["approved", "rejected", "needs_revision"],
emit=["approved", "rejected"],
llm="gpt-4o-mini",
default_outcome="needs_revision",
default_outcome="rejected",
provider=SlackNotificationProvider("#content-reviews"),
)
def generate_content(self):
@@ -534,11 +590,6 @@ class ContentPipeline(Flow):
print(f"보관됨. 이유: {result.feedback}")
return {"status": "archived"}
@listen("needs_revision")
def queue_revision(self, result):
print(f"수정 대기열에 추가됨: {result.feedback}")
return {"status": "revision_needed"}
# Flow 시작 (Slack 응답을 기다리며 일시 중지)
def start_content_pipeline():
@@ -594,22 +645,22 @@ async def on_slack_feedback_async(flow_id: str, slack_message: str):
```python Code
class ArticleReviewFlow(Flow):
@start()
@human_feedback(
message="Review this article draft:",
emit=["approved", "needs_revision"],
llm="gpt-4o-mini",
learn=True, # HITL 학습 활성화
)
def generate_article(self):
return self.crew.kickoff(inputs={"topic": "AI Safety"}).raw
@human_feedback(
message="이 글 초안을 검토해 주세요:",
emit=["approved", "needs_revision"],
llm="gpt-4o-mini",
learn=True,
)
@listen(or_("generate_article", "needs_revision"))
def review_article(self):
return self.last_human_feedback.output if self.last_human_feedback else "article draft"
@listen("approved")
def publish(self):
print(f"Publishing: {self.last_human_feedback.output}")
@listen("needs_revision")
def revise(self):
print("Revising based on feedback...")
```
**첫 번째 실행**: 인간이 원시 출력을 보고 "사실에 대한 주장에는 항상 인용을 포함하세요."라고 말합니다. 교훈이 추출되어 메모리에 저장됩니다.

View File

@@ -38,22 +38,21 @@ O CrewAI Enterprise oferece um sistema abrangente de gerenciamento Human-in-the-
Configure checkpoints de revisão humana em seus Flows usando o decorador `@human_feedback`. Quando a execução atinge um ponto de revisão, o sistema pausa, notifica o responsável via email e aguarda uma resposta.
```python
from crewai.flow.flow import Flow, start, listen
from crewai.flow.flow import Flow, start, listen, or_
from crewai.flow.human_feedback import human_feedback, HumanFeedbackResult
class ContentApprovalFlow(Flow):
@start()
def generate_content(self):
# IA gera conteúdo
return "Texto de marketing gerado para campanha Q1..."
@listen(generate_content)
@human_feedback(
message="Por favor, revise este conteúdo para conformidade com a marca:",
emit=["approved", "rejected", "needs_revision"],
)
def review_content(self, content):
return content
@listen(or_("generate_content", "needs_revision"))
def review_content(self):
return "Texto de marketing para revisão..."
@listen("approved")
def publish_content(self, result: HumanFeedbackResult):
@@ -62,10 +61,6 @@ class ContentApprovalFlow(Flow):
@listen("rejected")
def archive_content(self, result: HumanFeedbackResult):
print(f"Conteúdo rejeitado. Motivo: {result.feedback}")
@listen("needs_revision")
def revise_content(self, result: HumanFeedbackResult):
print(f"Revisão solicitada: {result.feedback}")
```
Para detalhes completos de implementação, consulte o guia [Feedback Humano em Flows](/pt-BR/learn/human-feedback-in-flows).

View File

@@ -176,6 +176,11 @@ Você precisa enviar seu crew para um repositório do GitHub. Caso ainda não te
![Definir Variáveis de Ambiente](/images/enterprise/set-env-variables.png)
</Frame>
<Info>
Usando pacotes Python privados? Você também precisará adicionar suas credenciais de registro aqui.
Consulte [Registros de Pacotes Privados](/pt-BR/enterprise/guides/private-package-registry) para as variáveis necessárias.
</Info>
</Step>
<Step title="Implante Seu Crew">

View File

@@ -256,6 +256,12 @@ Antes da implantação, certifique-se de ter:
1. **Chaves de API de LLM** prontas (OpenAI, Anthropic, Google, etc.)
2. **Chaves de API de ferramentas** se estiver usando ferramentas externas (Serper, etc.)
<Info>
Se seu projeto depende de pacotes de um **registro PyPI privado**, você também precisará configurar
credenciais de autenticação do registro como variáveis de ambiente. Consulte o guia
[Registros de Pacotes Privados](/pt-BR/enterprise/guides/private-package-registry) para mais detalhes.
</Info>
<Tip>
Teste seu projeto localmente com as mesmas variáveis de ambiente antes de implantar
para detectar problemas de configuração antecipadamente.

View File

@@ -0,0 +1,263 @@
---
title: "Registros de Pacotes Privados"
description: "Instale pacotes Python privados de registros PyPI autenticados no CrewAI AMP"
icon: "lock"
mode: "wide"
---
<Note>
Este guia aborda como configurar seu projeto CrewAI para instalar pacotes Python
de registros PyPI privados (Azure DevOps Artifacts, GitHub Packages, GitLab, AWS CodeArtifact, etc.)
ao implantar no CrewAI AMP.
</Note>
## Quando Você Precisa Disso
Se seu projeto depende de pacotes Python internos ou proprietários hospedados em um registro privado
em vez do PyPI público, você precisará:
1. Informar ao UV **onde** encontrar o pacote (uma URL de index)
2. Informar ao UV **quais** pacotes vêm desse index (um mapeamento de source)
3. Fornecer **credenciais** para que o UV possa autenticar durante a instalação
O CrewAI AMP usa [UV](https://docs.astral.sh/uv/) para resolução e instalação de dependências.
O UV suporta registros privados autenticados por meio da configuração do `pyproject.toml` combinada
com variáveis de ambiente para credenciais.
## Passo 1: Configurar o pyproject.toml
Três elementos trabalham juntos no seu `pyproject.toml`:
### 1a. Declarar a dependência
Adicione o pacote privado ao seu `[project.dependencies]` como qualquer outra dependência:
```toml
[project]
dependencies = [
"crewai[tools]>=0.100.1,<1.0.0",
"my-private-package>=1.2.0",
]
```
### 1b. Definir o index
Registre seu registro privado como um index nomeado em `[[tool.uv.index]]`:
```toml
[[tool.uv.index]]
name = "my-private-registry"
url = "https://pkgs.dev.azure.com/my-org/_packaging/my-feed/pypi/simple/"
explicit = true
```
<Info>
O campo `name` é importante — o UV o utiliza para construir os nomes das variáveis de ambiente
para autenticação (veja o [Passo 2](#passo-2-configurar-credenciais-de-autenticação) abaixo).
Definir `explicit = true` significa que o UV não consultará esse index para todos os pacotes — apenas
os que você mapear explicitamente em `[tool.uv.sources]`. Isso evita consultas desnecessárias
ao seu registro privado e protege contra ataques de confusão de dependências.
</Info>
### 1c. Mapear o pacote para o index
Informe ao UV quais pacotes devem ser resolvidos a partir do seu index privado usando `[tool.uv.sources]`:
```toml
[tool.uv.sources]
my-private-package = { index = "my-private-registry" }
```
### Exemplo completo
```toml
[project]
name = "my-crew-project"
version = "0.1.0"
requires-python = ">=3.10,<=3.13"
dependencies = [
"crewai[tools]>=0.100.1,<1.0.0",
"my-private-package>=1.2.0",
]
[tool.crewai]
type = "crew"
[[tool.uv.index]]
name = "my-private-registry"
url = "https://pkgs.dev.azure.com/my-org/_packaging/my-feed/pypi/simple/"
explicit = true
[tool.uv.sources]
my-private-package = { index = "my-private-registry" }
```
Após atualizar o `pyproject.toml`, regenere seu arquivo lock:
```bash
uv lock
```
<Warning>
Sempre faça commit do `uv.lock` atualizado junto com as alterações no `pyproject.toml`.
O arquivo lock é obrigatório para implantação — veja [Preparar para Implantação](/pt-BR/enterprise/guides/prepare-for-deployment).
</Warning>
## Passo 2: Configurar Credenciais de Autenticação
O UV autentica em indexes privados usando variáveis de ambiente que seguem uma convenção de nomenclatura
baseada no nome do index que você definiu no `pyproject.toml`:
```
UV_INDEX_{UPPER_NAME}_USERNAME
UV_INDEX_{UPPER_NAME}_PASSWORD
```
Onde `{UPPER_NAME}` é o nome do seu index convertido para **maiúsculas** com **hifens substituídos por underscores**.
Por exemplo, um index chamado `my-private-registry` usa:
| Variável | Valor |
|----------|-------|
| `UV_INDEX_MY_PRIVATE_REGISTRY_USERNAME` | Seu nome de usuário ou nome do token do registro |
| `UV_INDEX_MY_PRIVATE_REGISTRY_PASSWORD` | Sua senha ou token/PAT do registro |
<Warning>
Essas variáveis de ambiente **devem** ser adicionadas pelas configurações de **Variáveis de Ambiente** do CrewAI AMP —
globalmente ou no nível da implantação. Elas não podem ser definidas em arquivos `.env` ou codificadas no seu projeto.
Veja [Configurar Variáveis de Ambiente no AMP](#configurar-variáveis-de-ambiente-no-amp) abaixo.
</Warning>
## Referência de Provedores de Registro
A tabela abaixo mostra o formato da URL de index e os valores de credenciais para provedores de registro comuns.
Substitua os valores de exemplo pelos detalhes reais da sua organização e feed.
| Provedor | URL do Index | Usuário | Senha |
|----------|-------------|---------|-------|
| **Azure DevOps Artifacts** | `https://pkgs.dev.azure.com/{org}/_packaging/{feed}/pypi/simple/` | Qualquer string não vazia (ex: `token`) | Personal Access Token (PAT) com escopo Packaging Read |
| **GitHub Packages** | `https://pypi.pkg.github.com/{owner}/simple/` | Nome de usuário do GitHub | Personal Access Token (classic) com escopo `read:packages` |
| **GitLab Package Registry** | `https://gitlab.com/api/v4/projects/{project_id}/packages/pypi/simple/` | `__token__` | Project ou Personal Access Token com escopo `read_api` |
| **AWS CodeArtifact** | Use a URL de `aws codeartifact get-repository-endpoint` | `aws` | Token de `aws codeartifact get-authorization-token` |
| **Google Artifact Registry** | `https://{region}-python.pkg.dev/{project}/{repo}/simple/` | `_json_key_base64` | Chave de conta de serviço codificada em Base64 |
| **JFrog Artifactory** | `https://{instance}.jfrog.io/artifactory/api/pypi/{repo}/simple/` | Nome de usuário ou email | Chave API ou token de identidade |
| **Auto-hospedado (devpi, Nexus, etc.)** | URL da API simple do seu registro | Nome de usuário do registro | Senha do registro |
<Tip>
Para **AWS CodeArtifact**, o token de autorização expira periodicamente.
Você precisará atualizar o valor de `UV_INDEX_*_PASSWORD` quando ele expirar.
Considere automatizar isso no seu pipeline de CI/CD.
</Tip>
## Configurar Variáveis de Ambiente no AMP
As credenciais do registro privado devem ser configuradas como variáveis de ambiente no CrewAI AMP.
Você tem duas opções:
<Tabs>
<Tab title="Interface Web">
1. Faça login no [CrewAI AMP](https://app.crewai.com)
2. Navegue até sua automação
3. Abra a aba **Environment Variables**
4. Adicione cada variável (`UV_INDEX_*_USERNAME` e `UV_INDEX_*_PASSWORD`) com seu valor
Veja o passo [Deploy para AMP — Definir Variáveis de Ambiente](/pt-BR/enterprise/guides/deploy-to-amp#definir-as-variáveis-de-ambiente) para detalhes.
</Tab>
<Tab title="Implantação via CLI">
Adicione as variáveis ao seu arquivo `.env` local antes de executar `crewai deploy create`.
A CLI as transferirá com segurança para a plataforma:
```bash
# .env
OPENAI_API_KEY=sk-...
UV_INDEX_MY_PRIVATE_REGISTRY_USERNAME=token
UV_INDEX_MY_PRIVATE_REGISTRY_PASSWORD=your-pat-here
```
```bash
crewai deploy create
```
</Tab>
</Tabs>
<Warning>
**Nunca** faça commit de credenciais no seu repositório. Use variáveis de ambiente do AMP para todos os segredos.
O arquivo `.env` deve estar listado no `.gitignore`.
</Warning>
Para atualizar credenciais em uma implantação existente, veja [Atualizar Seu Crew — Variáveis de Ambiente](/pt-BR/enterprise/guides/update-crew).
## Como Tudo se Conecta
Quando o CrewAI AMP faz o build da sua automação, o fluxo de resolução funciona assim:
<Steps>
<Step title="Build inicia">
O AMP busca seu repositório e lê o `pyproject.toml` e o `uv.lock`.
</Step>
<Step title="UV resolve dependências">
O UV lê `[tool.uv.sources]` para determinar de qual index cada pacote deve vir.
</Step>
<Step title="UV autentica">
Para cada index privado, o UV busca `UV_INDEX_{NAME}_USERNAME` e `UV_INDEX_{NAME}_PASSWORD`
nas variáveis de ambiente que você configurou no AMP.
</Step>
<Step title="Pacotes são instalados">
O UV baixa e instala todos os pacotes — tanto públicos (do PyPI) quanto privados (do seu registro).
</Step>
<Step title="Automação executa">
Seu crew ou flow inicia com todas as dependências disponíveis.
</Step>
</Steps>
## Solução de Problemas
### Erros de Autenticação Durante o Build
**Sintoma**: Build falha com `401 Unauthorized` ou `403 Forbidden` ao resolver um pacote privado.
**Verifique**:
- Os nomes das variáveis de ambiente `UV_INDEX_*` correspondem exatamente ao nome do seu index (maiúsculas, hifens -> underscores)
- As credenciais estão definidas nas variáveis de ambiente do AMP, não apenas em um `.env` local
- Seu token/PAT tem as permissões de leitura necessárias para o feed de pacotes
- O token não expirou (especialmente relevante para AWS CodeArtifact)
### Pacote Não Encontrado
**Sintoma**: `No matching distribution found for my-private-package`.
**Verifique**:
- A URL do index no `pyproject.toml` termina com `/simple/`
- A entrada `[tool.uv.sources]` mapeia o nome correto do pacote para o nome correto do index
- O pacote está realmente publicado no seu registro privado
- Execute `uv lock` localmente com as mesmas credenciais para verificar se a resolução funciona
### Conflitos no Arquivo Lock
**Sintoma**: `uv lock` falha ou produz resultados inesperados após adicionar um index privado.
**Solução**: Defina as credenciais localmente e regenere:
```bash
export UV_INDEX_MY_PRIVATE_REGISTRY_USERNAME=token
export UV_INDEX_MY_PRIVATE_REGISTRY_PASSWORD=your-pat
uv lock
```
Em seguida, faça commit do `uv.lock` atualizado.
## Guias Relacionados
<CardGroup cols={3}>
<Card title="Preparar para Implantação" icon="clipboard-check" href="/pt-BR/enterprise/guides/prepare-for-deployment">
Verifique a estrutura do projeto e as dependências antes de implantar.
</Card>
<Card title="Deploy para AMP" icon="rocket" href="/pt-BR/enterprise/guides/deploy-to-amp">
Implante seu crew ou flow e configure variáveis de ambiente.
</Card>
<Card title="Atualizar Seu Crew" icon="arrows-rotate" href="/pt-BR/enterprise/guides/update-crew">
Atualize variáveis de ambiente e envie alterações para uma implantação em execução.
</Card>
</CardGroup>

View File

@@ -98,33 +98,43 @@ def handle_feedback(self, result):
Quando você especifica `emit`, o decorador se torna um roteador. O feedback livre do humano é interpretado por um LLM e mapeado para um dos outcomes especificados:
```python Code
@start()
@human_feedback(
message="Você aprova este conteúdo para publicação?",
emit=["approved", "rejected", "needs_revision"],
llm="gpt-4o-mini",
default_outcome="needs_revision",
)
def review_content(self):
return "Rascunho do post do blog aqui..."
from crewai.flow.flow import Flow, start, listen, or_
from crewai.flow.human_feedback import human_feedback
@listen("approved")
def publish(self, result):
print(f"Publicando! Usuário disse: {result.feedback}")
class ReviewFlow(Flow):
@start()
def generate_content(self):
return "Rascunho do post do blog aqui..."
@listen("rejected")
def discard(self, result):
print(f"Descartando. Motivo: {result.feedback}")
@human_feedback(
message="Você aprova este conteúdo para publicação?",
emit=["approved", "rejected", "needs_revision"],
llm="gpt-4o-mini",
default_outcome="needs_revision",
)
@listen(or_("generate_content", "needs_revision"))
def review_content(self):
return "Rascunho do post do blog aqui..."
@listen("needs_revision")
def revise(self, result):
print(f"Revisando baseado em: {result.feedback}")
@listen("approved")
def publish(self, result):
print(f"Publicando! Usuário disse: {result.feedback}")
@listen("rejected")
def discard(self, result):
print(f"Descartando. Motivo: {result.feedback}")
```
Quando o humano diz algo como "precisa de mais detalhes", o LLM mapeia para `"needs_revision"`, que dispara `review_content` novamente via `or_()` — criando um loop de revisão. O loop continua até que o outcome seja `"approved"` ou `"rejected"`.
<Tip>
O LLM usa saídas estruturadas (function calling) quando disponível para garantir que a resposta seja um dos seus outcomes especificados. Isso torna o roteamento confiável e previsível.
</Tip>
<Warning>
Um método `@start()` só executa uma vez no início do flow. Se você precisa de um loop de revisão, separe o método start do método de revisão e use `@listen(or_("trigger", "revision_outcome"))` no método de revisão para habilitar o self-loop.
</Warning>
## HumanFeedbackResult
O dataclass `HumanFeedbackResult` contém todas as informações sobre uma interação de feedback humano:
@@ -193,116 +203,162 @@ Aqui está um exemplo completo implementando um fluxo de revisão e aprovação
<CodeGroup>
```python Code
from crewai.flow.flow import Flow, start, listen
from crewai.flow.flow import Flow, start, listen, or_
from crewai.flow.human_feedback import human_feedback, HumanFeedbackResult
from pydantic import BaseModel
class ContentState(BaseModel):
topic: str = ""
draft: str = ""
final_content: str = ""
revision_count: int = 0
status: str = "pending"
class ContentApprovalFlow(Flow[ContentState]):
"""Um flow que gera conteúdo e obtém aprovação humana."""
"""Um flow que gera conteúdo e faz loop até o humano aprovar."""
@start()
def get_topic(self):
self.state.topic = input("Sobre qual tópico devo escrever? ")
return self.state.topic
@listen(get_topic)
def generate_draft(self, topic):
# Em uso real, isso chamaria um LLM
self.state.draft = f"# {topic}\n\nEste é um rascunho sobre {topic}..."
def generate_draft(self):
self.state.draft = "# IA Segura\n\nEste é um rascunho sobre IA Segura..."
return self.state.draft
@listen(generate_draft)
@human_feedback(
message="Por favor, revise este rascunho. Responda 'approved', 'rejected', ou forneça feedback de revisão:",
message="Por favor, revise este rascunho. Aprove, rejeite ou descreva o que precisa mudar:",
emit=["approved", "rejected", "needs_revision"],
llm="gpt-4o-mini",
default_outcome="needs_revision",
)
def review_draft(self, draft):
return draft
@listen(or_("generate_draft", "needs_revision"))
def review_draft(self):
self.state.revision_count += 1
return f"{self.state.draft} (v{self.state.revision_count})"
@listen("approved")
def publish_content(self, result: HumanFeedbackResult):
self.state.final_content = result.output
print("\n✅ Conteúdo aprovado e publicado!")
print(f"Comentário do revisor: {result.feedback}")
self.state.status = "published"
print(f"Conteúdo aprovado e publicado! Revisor disse: {result.feedback}")
return "published"
@listen("rejected")
def handle_rejection(self, result: HumanFeedbackResult):
print("\n❌ Conteúdo rejeitado")
print(f"Motivo: {result.feedback}")
self.state.status = "rejected"
print(f"Conteúdo rejeitado. Motivo: {result.feedback}")
return "rejected"
@listen("needs_revision")
def revise_content(self, result: HumanFeedbackResult):
self.state.revision_count += 1
print(f"\n📝 Revisão #{self.state.revision_count} solicitada")
print(f"Feedback: {result.feedback}")
# Em um flow real, você pode voltar para generate_draft
# Para este exemplo, apenas reconhecemos
return "revision_requested"
# Executar o flow
flow = ContentApprovalFlow()
result = flow.kickoff()
print(f"\nFlow concluído. Revisões solicitadas: {flow.state.revision_count}")
print(f"\nFlow finalizado. Status: {flow.state.status}, Revisões: {flow.state.revision_count}")
```
```text Output
Sobre qual tópico devo escrever? Segurança em IA
==================================================
OUTPUT FOR REVIEW:
==================================================
# IA Segura
Este é um rascunho sobre IA Segura... (v1)
==================================================
Por favor, revise este rascunho. Aprove, rejeite ou descreva o que precisa mudar:
(Press Enter to skip, or type your feedback)
Your feedback: Preciso de mais detalhes sobre segurança em IA.
==================================================
OUTPUT FOR REVIEW:
==================================================
# Segurança em IA
# IA Segura
Este é um rascunho sobre Segurança em IA...
Este é um rascunho sobre IA Segura... (v2)
==================================================
Por favor, revise este rascunho. Responda 'approved', 'rejected', ou forneça feedback de revisão:
Por favor, revise este rascunho. Aprove, rejeite ou descreva o que precisa mudar:
(Press Enter to skip, or type your feedback)
Your feedback: Parece bom, aprovado!
Conteúdo aprovado e publicado!
Comentário do revisor: Parece bom, aprovado!
Conteúdo aprovado e publicado! Revisor disse: Parece bom, aprovado!
Flow concluído. Revisões solicitadas: 0
Flow finalizado. Status: published, Revisões: 2
```
</CodeGroup>
## Combinando com Outros Decoradores
O decorador `@human_feedback` funciona com outros decoradores de flow. Coloque-o como o decorador mais interno (mais próximo da função):
O decorador `@human_feedback` funciona com `@start()`, `@listen()` e `or_()`. Ambas as ordens de decoradores funcionam — o framework propaga atributos em ambas as direções — mas os padrões recomendados são:
```python Code
# Correto: @human_feedback é o mais interno (mais próximo da função)
# Revisão única no início do flow (sem self-loop)
@start()
@human_feedback(message="Revise isto:")
@human_feedback(message="Revise isto:", emit=["approved", "rejected"], llm="gpt-4o-mini")
def my_start_method(self):
return "content"
# Revisão linear em um listener (sem self-loop)
@listen(other_method)
@human_feedback(message="Revise isto também:")
@human_feedback(message="Revise isto também:", emit=["good", "bad"], llm="gpt-4o-mini")
def my_listener(self, data):
return f"processed: {data}"
# Self-loop: revisão que pode voltar para revisões
@human_feedback(message="Aprovar ou revisar?", emit=["approved", "revise"], llm="gpt-4o-mini")
@listen(or_("upstream_method", "revise"))
def review_with_loop(self):
return "content for review"
```
<Tip>
Coloque `@human_feedback` como o decorador mais interno (último/mais próximo da função) para que ele envolva o método diretamente e possa capturar o valor de retorno antes de passar para o sistema de flow.
</Tip>
### Padrão de self-loop
Para criar um loop de revisão, o método de revisão deve escutar **ambos** um gatilho upstream e seu próprio outcome de revisão usando `or_()`:
```python Code
@start()
def generate(self):
return "initial draft"
@human_feedback(
message="Aprovar ou solicitar alterações?",
emit=["revise", "approved"],
llm="gpt-4o-mini",
default_outcome="approved",
)
@listen(or_("generate", "revise"))
def review(self):
return "content"
@listen("approved")
def publish(self):
return "published"
```
Quando o outcome é `"revise"`, o flow roteia de volta para `review` (porque ele escuta `"revise"` via `or_()`). Quando o outcome é `"approved"`, o flow continua para `publish`. Isso funciona porque o engine de flow isenta roteadores da regra "fire once", permitindo que eles re-executem em cada iteração do loop.
### Roteadores encadeados
Um listener disparado pelo outcome de um roteador pode ser ele mesmo um roteador:
```python Code
@start()
@human_feedback(message="Primeira revisão:", emit=["approved", "rejected"], llm="gpt-4o-mini")
def draft(self):
return "draft content"
@listen("approved")
@human_feedback(message="Revisão final:", emit=["publish", "revise"], llm="gpt-4o-mini")
def final_review(self, prev):
return "final content"
@listen("publish")
def on_publish(self, prev):
return "published"
```
### Limitações
- **Métodos `@start()` executam uma vez**: Um método `@start()` não pode fazer self-loop. Se você precisa de um ciclo de revisão, use um método `@start()` separado como ponto de entrada e coloque o `@human_feedback` em um método `@listen()`.
- **Sem `@start()` + `@listen()` no mesmo método**: Esta é uma restrição do framework de Flow. Um método é ou um ponto de início ou um listener, não ambos.
## Melhores Práticas
@@ -516,9 +572,9 @@ class ContentPipeline(Flow):
@start()
@human_feedback(
message="Aprova este conteúdo para publicação?",
emit=["approved", "rejected", "needs_revision"],
emit=["approved", "rejected"],
llm="gpt-4o-mini",
default_outcome="needs_revision",
default_outcome="rejected",
provider=SlackNotificationProvider("#content-reviews"),
)
def generate_content(self):
@@ -534,11 +590,6 @@ class ContentPipeline(Flow):
print(f"Arquivado. Motivo: {result.feedback}")
return {"status": "archived"}
@listen("needs_revision")
def queue_revision(self, result):
print(f"Na fila para revisão: {result.feedback}")
return {"status": "revision_needed"}
# Iniciando o flow (vai pausar e aguardar resposta do Slack)
def start_content_pipeline():
@@ -594,22 +645,22 @@ Com o tempo, o humano vê saídas pré-revisadas progressivamente melhores porqu
```python Code
class ArticleReviewFlow(Flow):
@start()
def generate_article(self):
return self.crew.kickoff(inputs={"topic": "AI Safety"}).raw
@human_feedback(
message="Review this article draft:",
message="Revise este rascunho do artigo:",
emit=["approved", "needs_revision"],
llm="gpt-4o-mini",
learn=True, # enable HITL learning
)
def generate_article(self):
return self.crew.kickoff(inputs={"topic": "AI Safety"}).raw
@listen(or_("generate_article", "needs_revision"))
def review_article(self):
return self.last_human_feedback.output if self.last_human_feedback else "article draft"
@listen("approved")
def publish(self):
print(f"Publishing: {self.last_human_feedback.output}")
@listen("needs_revision")
def revise(self):
print("Revising based on feedback...")
```
**Primeira execução**: O humano vê a saída bruta e diz "Sempre inclua citações para afirmações factuais." A lição é destilada e armazenada na memória.

View File

@@ -152,4 +152,4 @@ __all__ = [
"wrap_file_source",
]
__version__ = "1.10.0a1"
__version__ = "1.9.3"

View File

@@ -12,7 +12,7 @@ dependencies = [
"pytube~=15.0.0",
"requests~=2.32.5",
"docker~=7.1.0",
"crewai==1.10.0a1",
"crewai==1.9.3",
"lancedb~=0.5.4",
"tiktoken~=0.8.0",
"beautifulsoup4~=4.13.4",

View File

@@ -291,4 +291,4 @@ __all__ = [
"ZapierActionTools",
]
__version__ = "1.10.0a1"
__version__ = "1.9.3"

View File

@@ -20117,6 +20117,18 @@
"humanized_name": "Web Automation Tool",
"init_params_schema": {
"$defs": {
"AvailableModel": {
"enum": [
"gpt-4o",
"gpt-4o-mini",
"claude-3-5-sonnet-latest",
"claude-3-7-sonnet-latest",
"computer-use-preview",
"gemini-2.0-flash"
],
"title": "AvailableModel",
"type": "string"
},
"EnvVar": {
"properties": {
"default": {
@@ -20194,6 +20206,17 @@
"default": null,
"title": "Model Api Key"
},
"model_name": {
"anyOf": [
{
"$ref": "#/$defs/AvailableModel"
},
{
"type": "null"
}
],
"default": "claude-3-7-sonnet-latest"
},
"project_id": {
"anyOf": [
{

View File

@@ -38,6 +38,7 @@ dependencies = [
"json5~=0.10.0",
"portalocker~=2.7.0",
"pydantic-settings~=2.10.1",
"httpx~=0.28.1",
"mcp~=1.26.0",
"uv~=0.9.13",
"aiosqlite~=0.21.0",
@@ -52,7 +53,7 @@ Repository = "https://github.com/crewAIInc/crewAI"
[project.optional-dependencies]
tools = [
"crewai-tools==1.10.0a1",
"crewai-tools==1.9.3",
]
embeddings = [
"tiktoken~=0.8.0"

View File

@@ -41,7 +41,7 @@ def _suppress_pydantic_deprecation_warnings() -> None:
_suppress_pydantic_deprecation_warnings()
__version__ = "1.10.0a1"
__version__ = "1.9.3"
_telemetry_submitted = False

View File

@@ -6,7 +6,10 @@ and memory management.
from __future__ import annotations
import asyncio
from collections.abc import Callable
from concurrent.futures import ThreadPoolExecutor, as_completed
import inspect
import logging
from typing import TYPE_CHECKING, Any, Literal, cast
@@ -685,30 +688,142 @@ class CrewAgentExecutor(CrewAgentExecutorMixin):
Returns:
AgentFinish if tool has result_as_answer=True, None otherwise.
"""
from datetime import datetime
import json
from crewai.events import crewai_event_bus
from crewai.events.types.tool_usage_events import (
ToolUsageErrorEvent,
ToolUsageFinishedEvent,
ToolUsageStartedEvent,
)
if not tool_calls:
return None
# Only process the FIRST tool call for sequential execution with reflection
tool_call = tool_calls[0]
parsed_calls = [
parsed
for tool_call in tool_calls
if (parsed := self._parse_native_tool_call(tool_call)) is not None
]
if not parsed_calls:
return None
# Extract tool call info - handle OpenAI-style, Anthropic-style, and Gemini-style
original_tools_by_name: dict[str, Any] = {}
for tool in self.original_tools or []:
original_tools_by_name[sanitize_tool_name(tool.name)] = tool
if len(parsed_calls) > 1:
has_result_as_answer_in_batch = any(
bool(
original_tools_by_name.get(func_name)
and getattr(
original_tools_by_name.get(func_name), "result_as_answer", False
)
)
for _, func_name, _ in parsed_calls
)
has_max_usage_count_in_batch = any(
bool(
original_tools_by_name.get(func_name)
and getattr(
original_tools_by_name.get(func_name),
"max_usage_count",
None,
)
is not None
)
for _, func_name, _ in parsed_calls
)
# Preserve historical sequential behavior for result_as_answer batches.
# Also avoid threading around usage counters for max_usage_count tools.
if has_result_as_answer_in_batch or has_max_usage_count_in_batch:
logger.debug(
"Skipping parallel native execution because batch includes result_as_answer or max_usage_count tool"
)
else:
execution_plan: list[
tuple[str, str, str | dict[str, Any], Any | None]
] = []
for call_id, func_name, func_args in parsed_calls:
original_tool = original_tools_by_name.get(func_name)
execution_plan.append(
(call_id, func_name, func_args, original_tool)
)
self._append_assistant_tool_calls_message(
[
(call_id, func_name, func_args)
for call_id, func_name, func_args, _ in execution_plan
]
)
max_workers = min(8, len(execution_plan))
ordered_results: list[dict[str, Any] | None] = [None] * len(
execution_plan
)
with ThreadPoolExecutor(max_workers=max_workers) as pool:
futures = {
pool.submit(
self._execute_single_native_tool_call,
call_id=call_id,
func_name=func_name,
func_args=func_args,
available_functions=available_functions,
original_tool=original_tool,
should_execute=True,
): idx
for idx, (
call_id,
func_name,
func_args,
original_tool,
) in enumerate(execution_plan)
}
for future in as_completed(futures):
idx = futures[future]
ordered_results[idx] = future.result()
for execution_result in ordered_results:
if not execution_result:
continue
tool_finish = self._append_tool_result_and_check_finality(
execution_result
)
if tool_finish:
return tool_finish
reasoning_prompt = self._i18n.slice("post_tool_reasoning")
reasoning_message: LLMMessage = {
"role": "user",
"content": reasoning_prompt,
}
self.messages.append(reasoning_message)
return None
# Sequential behavior: process only first tool call, then force reflection.
call_id, func_name, func_args = parsed_calls[0]
self._append_assistant_tool_calls_message([(call_id, func_name, func_args)])
execution_result = self._execute_single_native_tool_call(
call_id=call_id,
func_name=func_name,
func_args=func_args,
available_functions=available_functions,
original_tool=original_tools_by_name.get(func_name),
should_execute=True,
)
tool_finish = self._append_tool_result_and_check_finality(execution_result)
if tool_finish:
return tool_finish
reasoning_prompt = self._i18n.slice("post_tool_reasoning")
reasoning_message = {
"role": "user",
"content": reasoning_prompt,
}
self.messages.append(reasoning_message)
return None
def _parse_native_tool_call(
self, tool_call: Any
) -> tuple[str, str, str | dict[str, Any]] | None:
if hasattr(tool_call, "function"):
# OpenAI-style: has .function.name and .function.arguments
call_id = getattr(tool_call, "id", f"call_{id(tool_call)}")
func_name = sanitize_tool_name(tool_call.function.name)
func_args = tool_call.function.arguments
elif hasattr(tool_call, "function_call") and tool_call.function_call:
# Gemini-style: has .function_call.name and .function_call.args
return call_id, func_name, tool_call.function.arguments
if hasattr(tool_call, "function_call") and tool_call.function_call:
call_id = f"call_{id(tool_call)}"
func_name = sanitize_tool_name(tool_call.function_call.name)
func_args = (
@@ -716,13 +831,12 @@ class CrewAgentExecutor(CrewAgentExecutorMixin):
if tool_call.function_call.args
else {}
)
elif hasattr(tool_call, "name") and hasattr(tool_call, "input"):
# Anthropic format: has .name and .input (ToolUseBlock)
return call_id, func_name, func_args
if hasattr(tool_call, "name") and hasattr(tool_call, "input"):
call_id = getattr(tool_call, "id", f"call_{id(tool_call)}")
func_name = sanitize_tool_name(tool_call.name)
func_args = tool_call.input # Already a dict in Anthropic
elif isinstance(tool_call, dict):
# Support OpenAI "id", Bedrock "toolUseId", or generate one
return call_id, func_name, tool_call.input
if isinstance(tool_call, dict):
call_id = (
tool_call.get("id")
or tool_call.get("toolUseId")
@@ -733,10 +847,15 @@ class CrewAgentExecutor(CrewAgentExecutorMixin):
func_info.get("name", "") or tool_call.get("name", "")
)
func_args = func_info.get("arguments", "{}") or tool_call.get("input", {})
else:
return None
return call_id, func_name, func_args
return None
def _append_assistant_tool_calls_message(
self,
parsed_calls: list[tuple[str, str, str | dict[str, Any]]],
) -> None:
import json
# Append assistant message with single tool call
assistant_message: LLMMessage = {
"role": "assistant",
"content": None,
@@ -751,12 +870,30 @@ class CrewAgentExecutor(CrewAgentExecutorMixin):
else json.dumps(func_args),
},
}
for call_id, func_name, func_args in parsed_calls
],
}
self.messages.append(assistant_message)
# Parse arguments for the single tool call
def _execute_single_native_tool_call(
self,
*,
call_id: str,
func_name: str,
func_args: str | dict[str, Any],
available_functions: dict[str, Callable[..., Any]],
original_tool: Any | None = None,
should_execute: bool = True,
) -> dict[str, Any]:
from datetime import datetime
import json
from crewai.events.types.tool_usage_events import (
ToolUsageErrorEvent,
ToolUsageFinishedEvent,
ToolUsageStartedEvent,
)
if isinstance(func_args, str):
try:
args_dict = json.loads(func_args)
@@ -765,28 +902,26 @@ class CrewAgentExecutor(CrewAgentExecutorMixin):
else:
args_dict = func_args
agent_key = getattr(self.agent, "key", "unknown") if self.agent else "unknown"
if original_tool is None:
for tool in self.original_tools or []:
if sanitize_tool_name(tool.name) == func_name:
original_tool = tool
break
# Find original tool by matching sanitized name (needed for cache_function and result_as_answer)
original_tool = None
for tool in self.original_tools or []:
if sanitize_tool_name(tool.name) == func_name:
original_tool = tool
break
# Check if tool has reached max usage count
max_usage_reached = False
if original_tool:
if (
hasattr(original_tool, "max_usage_count")
and original_tool.max_usage_count is not None
and original_tool.current_usage_count >= original_tool.max_usage_count
):
max_usage_reached = True
if not should_execute and original_tool:
max_usage_reached = True
elif (
should_execute
and original_tool
and (max_count := getattr(original_tool, "max_usage_count", None))
is not None
and getattr(original_tool, "current_usage_count", 0) >= max_count
):
max_usage_reached = True
# Check cache before executing
from_cache = False
result: str = "Tool not found"
input_str = json.dumps(args_dict) if args_dict else ""
if self.tools_handler and self.tools_handler.cache:
cached_result = self.tools_handler.cache.read(
@@ -800,7 +935,7 @@ class CrewAgentExecutor(CrewAgentExecutorMixin):
)
from_cache = True
# Emit tool usage started event
agent_key = getattr(self.agent, "key", "unknown") if self.agent else "unknown"
started_at = datetime.now()
crewai_event_bus.emit(
self,
@@ -816,14 +951,12 @@ class CrewAgentExecutor(CrewAgentExecutorMixin):
track_delegation_if_needed(func_name, args_dict, self.task)
# Find the structured tool for hook context
structured_tool: CrewStructuredTool | None = None
for structured in self.tools or []:
if sanitize_tool_name(structured.name) == func_name:
structured_tool = structured
break
# Execute before_tool_call hooks
hook_blocked = False
before_hook_context = ToolCallHookContext(
tool_name=func_name,
@@ -847,58 +980,48 @@ class CrewAgentExecutor(CrewAgentExecutorMixin):
color="red",
)
# If hook blocked execution, set result and skip tool execution
if hook_blocked:
result = f"Tool execution blocked by hook. Tool: {func_name}"
# Execute the tool (only if not cached, not at max usage, and not blocked by hook)
elif not from_cache and not max_usage_reached:
result = "Tool not found"
if func_name in available_functions:
try:
tool_func = available_functions[func_name]
raw_result = tool_func(**args_dict)
# Add to cache after successful execution (before string conversion)
if self.tools_handler and self.tools_handler.cache:
should_cache = True
if (
original_tool
and hasattr(original_tool, "cache_function")
and callable(original_tool.cache_function)
):
should_cache = original_tool.cache_function(
args_dict, raw_result
)
if should_cache:
self.tools_handler.cache.add(
tool=func_name, input=input_str, output=raw_result
)
# Convert to string for message
result = (
str(raw_result)
if not isinstance(raw_result, str)
else raw_result
)
except Exception as e:
result = f"Error executing tool: {e}"
if self.task:
self.task.increment_tools_errors()
crewai_event_bus.emit(
self,
event=ToolUsageErrorEvent(
tool_name=func_name,
tool_args=args_dict,
from_agent=self.agent,
from_task=self.task,
agent_key=agent_key,
error=e,
),
)
error_event_emitted = True
elif max_usage_reached and original_tool:
# Return error message when max usage limit is reached
result = f"Tool '{func_name}' has reached its usage limit of {original_tool.max_usage_count} times and cannot be used anymore."
elif not from_cache and func_name in available_functions:
try:
raw_result = available_functions[func_name](**args_dict)
if self.tools_handler and self.tools_handler.cache:
should_cache = True
if (
original_tool
and hasattr(original_tool, "cache_function")
and callable(original_tool.cache_function)
):
should_cache = original_tool.cache_function(
args_dict, raw_result
)
if should_cache:
self.tools_handler.cache.add(
tool=func_name, input=input_str, output=raw_result
)
result = (
str(raw_result) if not isinstance(raw_result, str) else raw_result
)
except Exception as e:
result = f"Error executing tool: {e}"
if self.task:
self.task.increment_tools_errors()
crewai_event_bus.emit(
self,
event=ToolUsageErrorEvent(
tool_name=func_name,
tool_args=args_dict,
from_agent=self.agent,
from_task=self.task,
agent_key=agent_key,
error=e,
),
)
error_event_emitted = True
after_hook_context = ToolCallHookContext(
tool_name=func_name,
@@ -938,7 +1061,23 @@ class CrewAgentExecutor(CrewAgentExecutorMixin):
),
)
# Append tool result message
return {
"call_id": call_id,
"func_name": func_name,
"result": result,
"from_cache": from_cache,
"original_tool": original_tool,
}
def _append_tool_result_and_check_finality(
self, execution_result: dict[str, Any]
) -> AgentFinish | None:
call_id = cast(str, execution_result["call_id"])
func_name = cast(str, execution_result["func_name"])
result = cast(str, execution_result["result"])
from_cache = cast(bool, execution_result["from_cache"])
original_tool = execution_result["original_tool"]
tool_message: LLMMessage = {
"role": "tool",
"tool_call_id": call_id,
@@ -947,7 +1086,6 @@ class CrewAgentExecutor(CrewAgentExecutorMixin):
}
self.messages.append(tool_message)
# Log the tool execution
if self.agent and self.agent.verbose:
cache_info = " (from cache)" if from_cache else ""
self._printer.print(
@@ -960,20 +1098,11 @@ class CrewAgentExecutor(CrewAgentExecutorMixin):
and hasattr(original_tool, "result_as_answer")
and original_tool.result_as_answer
):
# Return immediately with tool result as final answer
return AgentFinish(
thought="Tool result is the final answer",
output=result,
text=result,
)
# Inject post-tool reasoning prompt to enforce analysis
reasoning_prompt = self._i18n.slice("post_tool_reasoning")
reasoning_message: LLMMessage = {
"role": "user",
"content": reasoning_prompt,
}
self.messages.append(reasoning_message)
return None
async def ainvoke(self, inputs: dict[str, Any]) -> dict[str, Any]:
@@ -1371,7 +1500,9 @@ class CrewAgentExecutor(CrewAgentExecutorMixin):
formatted_answer: Current agent response.
"""
if self.step_callback:
self.step_callback(formatted_answer)
cb_result = self.step_callback(formatted_answer)
if inspect.iscoroutine(cb_result):
asyncio.run(cb_result)
def _append_message(
self, text: str, role: Literal["user", "assistant", "system"] = "assistant"

View File

@@ -2,8 +2,8 @@ import time
from typing import TYPE_CHECKING, Any, TypeVar, cast
import webbrowser
import httpx
from pydantic import BaseModel, Field
import requests
from rich.console import Console
from crewai.cli.authentication.utils import validate_jwt_token
@@ -98,7 +98,7 @@ class AuthenticationCommand:
"scope": " ".join(self.oauth2_provider.get_oauth_scopes()),
"audience": self.oauth2_provider.get_audience(),
}
response = requests.post(
response = httpx.post(
url=self.oauth2_provider.get_authorize_url(),
data=device_code_payload,
timeout=20,
@@ -130,7 +130,7 @@ class AuthenticationCommand:
attempts = 0
while True and attempts < 10:
response = requests.post(
response = httpx.post(
self.oauth2_provider.get_token_url(), data=token_payload, timeout=30
)
token_data = response.json()
@@ -149,7 +149,7 @@ class AuthenticationCommand:
return
if token_data["error"] not in ("authorization_pending", "slow_down"):
raise requests.HTTPError(
raise httpx.HTTPError(
token_data.get("error_description") or token_data.get("error")
)

View File

@@ -1,5 +1,6 @@
import requests
from requests.exceptions import JSONDecodeError
import json
import httpx
from rich.console import Console
from crewai.cli.authentication.token import get_auth_token
@@ -30,16 +31,16 @@ class PlusAPIMixin:
console.print("Run 'crewai login' to sign up/login.", style="bold green")
raise SystemExit from None
def _validate_response(self, response: requests.Response) -> None:
def _validate_response(self, response: httpx.Response) -> None:
"""
Handle and display error messages from API responses.
Args:
response (requests.Response): The response from the Plus API
response (httpx.Response): The response from the Plus API
"""
try:
json_response = response.json()
except (JSONDecodeError, ValueError):
except (json.JSONDecodeError, ValueError):
console.print(
"Failed to parse response from Enterprise API failed. Details:",
style="bold red",
@@ -62,7 +63,7 @@ class PlusAPIMixin:
)
raise SystemExit
if not response.ok:
if not response.is_success:
console.print(
"Request to Enterprise API failed. Details:", style="bold red"
)

View File

@@ -69,7 +69,7 @@ ENV_VARS: dict[str, list[dict[str, Any]]] = {
},
{
"prompt": "Enter your AWS Region Name (press Enter to skip)",
"key_name": "AWS_REGION_NAME",
"key_name": "AWS_DEFAULT_REGION",
},
],
"azure": [

View File

@@ -1,7 +1,7 @@
import json
from typing import Any, cast
import requests
from requests.exceptions import JSONDecodeError, RequestException
import httpx
from rich.console import Console
from crewai.cli.authentication.main import Oauth2Settings, ProviderFactory
@@ -47,12 +47,12 @@ class EnterpriseConfigureCommand(BaseCommand):
"User-Agent": f"CrewAI-CLI/{get_crewai_version()}",
"X-Crewai-Version": get_crewai_version(),
}
response = requests.get(oauth_endpoint, timeout=30, headers=headers)
response = httpx.get(oauth_endpoint, timeout=30, headers=headers)
response.raise_for_status()
try:
oauth_config = response.json()
except JSONDecodeError as e:
except json.JSONDecodeError as e:
raise ValueError(f"Invalid JSON response from {oauth_endpoint}") from e
self._validate_oauth_config(oauth_config)
@@ -62,7 +62,7 @@ class EnterpriseConfigureCommand(BaseCommand):
)
return cast(dict[str, Any], oauth_config)
except RequestException as e:
except httpx.HTTPError as e:
raise ValueError(f"Failed to connect to enterprise URL: {e!s}") from e
except Exception as e:
raise ValueError(f"Error fetching OAuth2 configuration: {e!s}") from e

View File

@@ -1,4 +1,4 @@
from requests import HTTPError
from httpx import HTTPStatusError
from rich.console import Console
from rich.table import Table
@@ -10,11 +10,11 @@ console = Console()
class OrganizationCommand(BaseCommand, PlusAPIMixin):
def __init__(self):
def __init__(self) -> None:
BaseCommand.__init__(self)
PlusAPIMixin.__init__(self, telemetry=self._telemetry)
def list(self):
def list(self) -> None:
try:
response = self.plus_api_client.get_organizations()
response.raise_for_status()
@@ -33,7 +33,7 @@ class OrganizationCommand(BaseCommand, PlusAPIMixin):
table.add_row(org["name"], org["uuid"])
console.print(table)
except HTTPError as e:
except HTTPStatusError as e:
if e.response.status_code == 401:
console.print(
"You are not logged in to any organization. Use 'crewai login' to login.",
@@ -50,7 +50,7 @@ class OrganizationCommand(BaseCommand, PlusAPIMixin):
)
raise SystemExit(1) from e
def switch(self, org_id):
def switch(self, org_id: str) -> None:
try:
response = self.plus_api_client.get_organizations()
response.raise_for_status()
@@ -72,7 +72,7 @@ class OrganizationCommand(BaseCommand, PlusAPIMixin):
f"Successfully switched to {org['name']} ({org['uuid']})",
style="bold green",
)
except HTTPError as e:
except HTTPStatusError as e:
if e.response.status_code == 401:
console.print(
"You are not logged in to any organization. Use 'crewai login' to login.",
@@ -87,7 +87,7 @@ class OrganizationCommand(BaseCommand, PlusAPIMixin):
console.print(f"Failed to switch organization: {e!s}", style="bold red")
raise SystemExit(1) from e
def current(self):
def current(self) -> None:
settings = Settings()
if settings.org_uuid:
console.print(

View File

@@ -3,7 +3,6 @@ from typing import Any
from urllib.parse import urljoin
import httpx
import requests
from crewai.cli.config import Settings
from crewai.cli.constants import DEFAULT_CREWAI_ENTERPRISE_URL
@@ -43,16 +42,16 @@ class PlusAPI:
def _make_request(
self, method: str, endpoint: str, **kwargs: Any
) -> requests.Response:
) -> httpx.Response:
url = urljoin(self.base_url, endpoint)
session = requests.Session()
session.trust_env = False
return session.request(method, url, headers=self.headers, **kwargs)
verify = kwargs.pop("verify", True)
with httpx.Client(trust_env=False, verify=verify) as client:
return client.request(method, url, headers=self.headers, **kwargs)
def login_to_tool_repository(self) -> requests.Response:
def login_to_tool_repository(self) -> httpx.Response:
return self._make_request("POST", f"{self.TOOLS_RESOURCE}/login")
def get_tool(self, handle: str) -> requests.Response:
def get_tool(self, handle: str) -> httpx.Response:
return self._make_request("GET", f"{self.TOOLS_RESOURCE}/{handle}")
async def get_agent(self, handle: str) -> httpx.Response:
@@ -68,7 +67,7 @@ class PlusAPI:
description: str | None,
encoded_file: str,
available_exports: list[dict[str, Any]] | None = None,
) -> requests.Response:
) -> httpx.Response:
params = {
"handle": handle,
"public": is_public,
@@ -79,54 +78,52 @@ class PlusAPI:
}
return self._make_request("POST", f"{self.TOOLS_RESOURCE}", json=params)
def deploy_by_name(self, project_name: str) -> requests.Response:
def deploy_by_name(self, project_name: str) -> httpx.Response:
return self._make_request(
"POST", f"{self.CREWS_RESOURCE}/by-name/{project_name}/deploy"
)
def deploy_by_uuid(self, uuid: str) -> requests.Response:
def deploy_by_uuid(self, uuid: str) -> httpx.Response:
return self._make_request("POST", f"{self.CREWS_RESOURCE}/{uuid}/deploy")
def crew_status_by_name(self, project_name: str) -> requests.Response:
def crew_status_by_name(self, project_name: str) -> httpx.Response:
return self._make_request(
"GET", f"{self.CREWS_RESOURCE}/by-name/{project_name}/status"
)
def crew_status_by_uuid(self, uuid: str) -> requests.Response:
def crew_status_by_uuid(self, uuid: str) -> httpx.Response:
return self._make_request("GET", f"{self.CREWS_RESOURCE}/{uuid}/status")
def crew_by_name(
self, project_name: str, log_type: str = "deployment"
) -> requests.Response:
) -> httpx.Response:
return self._make_request(
"GET", f"{self.CREWS_RESOURCE}/by-name/{project_name}/logs/{log_type}"
)
def crew_by_uuid(
self, uuid: str, log_type: str = "deployment"
) -> requests.Response:
def crew_by_uuid(self, uuid: str, log_type: str = "deployment") -> httpx.Response:
return self._make_request(
"GET", f"{self.CREWS_RESOURCE}/{uuid}/logs/{log_type}"
)
def delete_crew_by_name(self, project_name: str) -> requests.Response:
def delete_crew_by_name(self, project_name: str) -> httpx.Response:
return self._make_request(
"DELETE", f"{self.CREWS_RESOURCE}/by-name/{project_name}"
)
def delete_crew_by_uuid(self, uuid: str) -> requests.Response:
def delete_crew_by_uuid(self, uuid: str) -> httpx.Response:
return self._make_request("DELETE", f"{self.CREWS_RESOURCE}/{uuid}")
def list_crews(self) -> requests.Response:
def list_crews(self) -> httpx.Response:
return self._make_request("GET", self.CREWS_RESOURCE)
def create_crew(self, payload: dict[str, Any]) -> requests.Response:
def create_crew(self, payload: dict[str, Any]) -> httpx.Response:
return self._make_request("POST", self.CREWS_RESOURCE, json=payload)
def get_organizations(self) -> requests.Response:
def get_organizations(self) -> httpx.Response:
return self._make_request("GET", self.ORGANIZATIONS_RESOURCE)
def initialize_trace_batch(self, payload: dict[str, Any]) -> requests.Response:
def initialize_trace_batch(self, payload: dict[str, Any]) -> httpx.Response:
return self._make_request(
"POST",
f"{self.TRACING_RESOURCE}/batches",
@@ -136,7 +133,7 @@ class PlusAPI:
def initialize_ephemeral_trace_batch(
self, payload: dict[str, Any]
) -> requests.Response:
) -> httpx.Response:
return self._make_request(
"POST",
f"{self.EPHEMERAL_TRACING_RESOURCE}/batches",
@@ -145,7 +142,7 @@ class PlusAPI:
def send_trace_events(
self, trace_batch_id: str, payload: dict[str, Any]
) -> requests.Response:
) -> httpx.Response:
return self._make_request(
"POST",
f"{self.TRACING_RESOURCE}/batches/{trace_batch_id}/events",
@@ -155,7 +152,7 @@ class PlusAPI:
def send_ephemeral_trace_events(
self, trace_batch_id: str, payload: dict[str, Any]
) -> requests.Response:
) -> httpx.Response:
return self._make_request(
"POST",
f"{self.EPHEMERAL_TRACING_RESOURCE}/batches/{trace_batch_id}/events",
@@ -165,7 +162,7 @@ class PlusAPI:
def finalize_trace_batch(
self, trace_batch_id: str, payload: dict[str, Any]
) -> requests.Response:
) -> httpx.Response:
return self._make_request(
"PATCH",
f"{self.TRACING_RESOURCE}/batches/{trace_batch_id}/finalize",
@@ -175,7 +172,7 @@ class PlusAPI:
def finalize_ephemeral_trace_batch(
self, trace_batch_id: str, payload: dict[str, Any]
) -> requests.Response:
) -> httpx.Response:
return self._make_request(
"PATCH",
f"{self.EPHEMERAL_TRACING_RESOURCE}/batches/{trace_batch_id}/finalize",
@@ -185,7 +182,7 @@ class PlusAPI:
def mark_trace_batch_as_failed(
self, trace_batch_id: str, error_message: str
) -> requests.Response:
) -> httpx.Response:
return self._make_request(
"PATCH",
f"{self.TRACING_RESOURCE}/batches/{trace_batch_id}",
@@ -193,13 +190,11 @@ class PlusAPI:
timeout=30,
)
def get_triggers(self) -> requests.Response:
def get_triggers(self) -> httpx.Response:
"""Get all available triggers from integrations."""
return self._make_request("GET", f"{self.INTEGRATIONS_RESOURCE}/apps")
def get_trigger_payload(
self, app_slug: str, trigger_slug: str
) -> requests.Response:
def get_trigger_payload(self, app_slug: str, trigger_slug: str) -> httpx.Response:
"""Get sample payload for a specific trigger."""
return self._make_request(
"GET", f"{self.INTEGRATIONS_RESOURCE}/{app_slug}/{trigger_slug}/payload"

View File

@@ -8,7 +8,7 @@ from typing import Any
import certifi
import click
import requests
import httpx
from crewai.cli.constants import JSON_URL, MODELS, PROVIDERS
@@ -165,20 +165,20 @@ def fetch_provider_data(cache_file: Path) -> dict[str, Any] | None:
ssl_config = os.environ["SSL_CERT_FILE"] = certifi.where()
try:
response = requests.get(JSON_URL, stream=True, timeout=60, verify=ssl_config)
response.raise_for_status()
data = download_data(response)
with open(cache_file, "w") as f:
json.dump(data, f)
return data
except requests.RequestException as e:
with httpx.stream("GET", JSON_URL, timeout=60, verify=ssl_config) as response:
response.raise_for_status()
data = download_data(response)
with open(cache_file, "w") as f:
json.dump(data, f)
return data
except httpx.HTTPError as e:
click.secho(f"Error fetching provider data: {e}", fg="red")
except json.JSONDecodeError:
click.secho("Error parsing provider data. Invalid JSON format.", fg="red")
return None
def download_data(response: requests.Response) -> dict[str, Any]:
def download_data(response: httpx.Response) -> dict[str, Any]:
"""Downloads data from a given HTTP response and returns the JSON content.
Args:
@@ -194,7 +194,7 @@ def download_data(response: requests.Response) -> dict[str, Any]:
with click.progressbar(
length=total_size, label="Downloading", show_pos=True
) as bar:
for chunk in response.iter_content(block_size):
for chunk in response.iter_bytes(block_size):
if chunk:
data_chunks.append(chunk)
bar.update(len(chunk))

View File

@@ -5,7 +5,7 @@ description = "{{name}} using crewAI"
authors = [{ name = "Your Name", email = "you@example.com" }]
requires-python = ">=3.10,<3.14"
dependencies = [
"crewai[tools]==1.10.0a1"
"crewai[tools]==1.9.3"
]
[project.scripts]

View File

@@ -5,7 +5,7 @@ description = "{{name}} using crewAI"
authors = [{ name = "Your Name", email = "you@example.com" }]
requires-python = ">=3.10,<3.14"
dependencies = [
"crewai[tools]==1.10.0a1"
"crewai[tools]==1.9.3"
]
[project.scripts]

View File

@@ -5,7 +5,7 @@ description = "Power up your crews with {{folder_name}}"
readme = "README.md"
requires-python = ">=3.10,<3.14"
dependencies = [
"crewai[tools]==1.10.0a1"
"crewai[tools]>=0.203.1"
]
[tool.crewai]

View File

@@ -1,7 +1,10 @@
from __future__ import annotations
import asyncio
from collections.abc import Callable, Coroutine
from concurrent.futures import ThreadPoolExecutor, as_completed
from datetime import datetime
import inspect
import json
import threading
from typing import TYPE_CHECKING, Any, Literal, cast
@@ -668,9 +671,12 @@ class AgentExecutor(Flow[AgentReActState], CrewAgentExecutorMixin):
if not self.state.pending_tool_calls:
return "native_tool_completed"
pending_tool_calls = list(self.state.pending_tool_calls)
self.state.pending_tool_calls.clear()
# Group all tool calls into a single assistant message
tool_calls_to_report = []
for tool_call in self.state.pending_tool_calls:
for tool_call in pending_tool_calls:
info = extract_tool_call_info(tool_call)
if not info:
continue
@@ -695,202 +701,86 @@ class AgentExecutor(Flow[AgentReActState], CrewAgentExecutorMixin):
"content": None,
"tool_calls": tool_calls_to_report,
}
if all(
type(tc).__qualname__ == "Part" for tc in self.state.pending_tool_calls
):
assistant_message["raw_tool_call_parts"] = list(
self.state.pending_tool_calls
)
if all(type(tc).__qualname__ == "Part" for tc in pending_tool_calls):
assistant_message["raw_tool_call_parts"] = list(pending_tool_calls)
self.state.messages.append(assistant_message)
# Now execute each tool
while self.state.pending_tool_calls:
tool_call = self.state.pending_tool_calls.pop(0)
info = extract_tool_call_info(tool_call)
if not info:
continue
runnable_tool_calls = [
tool_call
for tool_call in pending_tool_calls
if extract_tool_call_info(tool_call) is not None
]
should_parallelize = self._should_parallelize_native_tool_calls(
runnable_tool_calls
)
call_id, func_name, func_args = info
# Parse arguments
if isinstance(func_args, str):
try:
args_dict = json.loads(func_args)
except json.JSONDecodeError:
args_dict = {}
else:
args_dict = func_args
# Get agent_key for event tracking
agent_key = (
getattr(self.agent, "key", "unknown") if self.agent else "unknown"
)
# Find original tool by matching sanitized name (needed for cache_function and result_as_answer)
original_tool = None
for tool in self.original_tools or []:
if sanitize_tool_name(tool.name) == func_name:
original_tool = tool
break
# Check if tool has reached max usage count
max_usage_reached = False
if (
original_tool
and original_tool.max_usage_count is not None
and original_tool.current_usage_count >= original_tool.max_usage_count
):
max_usage_reached = True
# Check cache before executing
from_cache = False
input_str = json.dumps(args_dict) if args_dict else ""
if self.tools_handler and self.tools_handler.cache:
cached_result = self.tools_handler.cache.read(
tool=func_name, input=input_str
execution_results: list[dict[str, Any]] = []
if should_parallelize:
max_workers = min(8, len(runnable_tool_calls))
with ThreadPoolExecutor(max_workers=max_workers) as pool:
future_to_idx = {
pool.submit(self._execute_single_native_tool_call, tool_call): idx
for idx, tool_call in enumerate(runnable_tool_calls)
}
ordered_results: list[dict[str, Any] | None] = [None] * len(
runnable_tool_calls
)
if cached_result is not None:
result = (
str(cached_result)
if not isinstance(cached_result, str)
else cached_result
)
from_cache = True
for future in as_completed(future_to_idx):
idx = future_to_idx[future]
ordered_results[idx] = future.result()
execution_results = [
result for result in ordered_results if result is not None
]
else:
# Execute sequentially so result_as_answer tools can short-circuit
# immediately without running remaining calls.
for tool_call in runnable_tool_calls:
execution_result = self._execute_single_native_tool_call(tool_call)
call_id = cast(str, execution_result["call_id"])
func_name = cast(str, execution_result["func_name"])
result = cast(str, execution_result["result"])
from_cache = cast(bool, execution_result["from_cache"])
original_tool = execution_result["original_tool"]
# Emit tool usage started event
started_at = datetime.now()
crewai_event_bus.emit(
self,
event=ToolUsageStartedEvent(
tool_name=func_name,
tool_args=args_dict,
from_agent=self.agent,
from_task=self.task,
agent_key=agent_key,
),
)
error_event_emitted = False
tool_message: LLMMessage = {
"role": "tool",
"tool_call_id": call_id,
"name": func_name,
"content": result,
}
self.state.messages.append(tool_message)
track_delegation_if_needed(func_name, args_dict, self.task)
structured_tool: CrewStructuredTool | None = None
for structured in self.tools or []:
if sanitize_tool_name(structured.name) == func_name:
structured_tool = structured
break
hook_blocked = False
before_hook_context = ToolCallHookContext(
tool_name=func_name,
tool_input=args_dict,
tool=structured_tool, # type: ignore[arg-type]
agent=self.agent,
task=self.task,
crew=self.crew,
)
before_hooks = get_before_tool_call_hooks()
try:
for hook in before_hooks:
hook_result = hook(before_hook_context)
if hook_result is False:
hook_blocked = True
break
except Exception as hook_error:
if self.agent.verbose:
# Log the tool execution
if self.agent and self.agent.verbose:
cache_info = " (from cache)" if from_cache else ""
self._printer.print(
content=f"Error in before_tool_call hook: {hook_error}",
color="red",
content=f"Tool {func_name} executed with result{cache_info}: {result[:200]}...",
color="green",
)
if hook_blocked:
result = f"Tool execution blocked by hook. Tool: {func_name}"
elif not from_cache and not max_usage_reached:
result = "Tool not found"
if func_name in self._available_functions:
try:
tool_func = self._available_functions[func_name]
raw_result = tool_func(**args_dict)
# Add to cache after successful execution (before string conversion)
if self.tools_handler and self.tools_handler.cache:
should_cache = True
if original_tool:
should_cache = original_tool.cache_function(
args_dict, raw_result
)
if should_cache:
self.tools_handler.cache.add(
tool=func_name, input=input_str, output=raw_result
)
# Convert to string for message
result = (
str(raw_result)
if not isinstance(raw_result, str)
else raw_result
)
except Exception as e:
result = f"Error executing tool: {e}"
if self.task:
self.task.increment_tools_errors()
# Emit tool usage error event
crewai_event_bus.emit(
self,
event=ToolUsageErrorEvent(
tool_name=func_name,
tool_args=args_dict,
from_agent=self.agent,
from_task=self.task,
agent_key=agent_key,
error=e,
),
)
error_event_emitted = True
elif max_usage_reached and original_tool:
# Return error message when max usage limit is reached
result = f"Tool '{func_name}' has reached its usage limit of {original_tool.max_usage_count} times and cannot be used anymore."
# Execute after_tool_call hooks (even if blocked, to allow logging/monitoring)
after_hook_context = ToolCallHookContext(
tool_name=func_name,
tool_input=args_dict,
tool=structured_tool, # type: ignore[arg-type]
agent=self.agent,
task=self.task,
crew=self.crew,
tool_result=result,
)
after_hooks = get_after_tool_call_hooks()
try:
for after_hook in after_hooks:
after_hook_result = after_hook(after_hook_context)
if after_hook_result is not None:
result = after_hook_result
after_hook_context.tool_result = result
except Exception as hook_error:
if self.agent.verbose:
self._printer.print(
content=f"Error in after_tool_call hook: {hook_error}",
color="red",
)
if not error_event_emitted:
crewai_event_bus.emit(
self,
event=ToolUsageFinishedEvent(
if (
original_tool
and hasattr(original_tool, "result_as_answer")
and original_tool.result_as_answer
):
self.state.current_answer = AgentFinish(
thought="Tool result is the final answer",
output=result,
tool_name=func_name,
tool_args=args_dict,
from_agent=self.agent,
from_task=self.task,
agent_key=agent_key,
started_at=started_at,
finished_at=datetime.now(),
),
)
text=result,
)
self.state.is_finished = True
return "tool_result_is_final"
# Append tool result message
tool_message: LLMMessage = {
return "native_tool_completed"
for execution_result in execution_results:
call_id = cast(str, execution_result["call_id"])
func_name = cast(str, execution_result["func_name"])
result = cast(str, execution_result["result"])
from_cache = cast(bool, execution_result["from_cache"])
original_tool = execution_result["original_tool"]
tool_message = {
"role": "tool",
"tool_call_id": call_id,
"name": func_name,
@@ -922,6 +812,224 @@ class AgentExecutor(Flow[AgentReActState], CrewAgentExecutorMixin):
return "native_tool_completed"
def _should_parallelize_native_tool_calls(self, tool_calls: list[Any]) -> bool:
"""Determine if native tool calls are safe to run in parallel."""
if len(tool_calls) <= 1:
return False
for tool_call in tool_calls:
info = extract_tool_call_info(tool_call)
if not info:
continue
_, func_name, _ = info
original_tool = None
for tool in self.original_tools or []:
if sanitize_tool_name(tool.name) == func_name:
original_tool = tool
break
if not original_tool:
continue
if getattr(original_tool, "result_as_answer", False):
return False
if getattr(original_tool, "max_usage_count", None) is not None:
return False
return True
def _execute_single_native_tool_call(self, tool_call: Any) -> dict[str, Any]:
"""Execute a single native tool call and return metadata/result."""
info = extract_tool_call_info(tool_call)
if not info:
raise ValueError("Invalid native tool call format")
call_id, func_name, func_args = info
# Parse arguments
if isinstance(func_args, str):
try:
args_dict = json.loads(func_args)
except json.JSONDecodeError:
args_dict = {}
else:
args_dict = func_args
# Get agent_key for event tracking
agent_key = getattr(self.agent, "key", "unknown") if self.agent else "unknown"
# Find original tool by matching sanitized name (needed for cache_function and result_as_answer)
original_tool = None
for tool in self.original_tools or []:
if sanitize_tool_name(tool.name) == func_name:
original_tool = tool
break
# Check if tool has reached max usage count
max_usage_reached = False
if (
original_tool
and original_tool.max_usage_count is not None
and original_tool.current_usage_count >= original_tool.max_usage_count
):
max_usage_reached = True
# Check cache before executing
from_cache = False
input_str = json.dumps(args_dict) if args_dict else ""
if self.tools_handler and self.tools_handler.cache:
cached_result = self.tools_handler.cache.read(
tool=func_name, input=input_str
)
if cached_result is not None:
result = (
str(cached_result)
if not isinstance(cached_result, str)
else cached_result
)
from_cache = True
# Emit tool usage started event
started_at = datetime.now()
crewai_event_bus.emit(
self,
event=ToolUsageStartedEvent(
tool_name=func_name,
tool_args=args_dict,
from_agent=self.agent,
from_task=self.task,
agent_key=agent_key,
),
)
error_event_emitted = False
track_delegation_if_needed(func_name, args_dict, self.task)
structured_tool: CrewStructuredTool | None = None
for structured in self.tools or []:
if sanitize_tool_name(structured.name) == func_name:
structured_tool = structured
break
hook_blocked = False
before_hook_context = ToolCallHookContext(
tool_name=func_name,
tool_input=args_dict,
tool=structured_tool, # type: ignore[arg-type]
agent=self.agent,
task=self.task,
crew=self.crew,
)
before_hooks = get_before_tool_call_hooks()
try:
for hook in before_hooks:
hook_result = hook(before_hook_context)
if hook_result is False:
hook_blocked = True
break
except Exception as hook_error:
if self.agent.verbose:
self._printer.print(
content=f"Error in before_tool_call hook: {hook_error}",
color="red",
)
if hook_blocked:
result = f"Tool execution blocked by hook. Tool: {func_name}"
elif not from_cache and not max_usage_reached:
result = "Tool not found"
if func_name in self._available_functions:
try:
tool_func = self._available_functions[func_name]
raw_result = tool_func(**args_dict)
# Add to cache after successful execution (before string conversion)
if self.tools_handler and self.tools_handler.cache:
should_cache = True
if original_tool:
should_cache = original_tool.cache_function(
args_dict, raw_result
)
if should_cache:
self.tools_handler.cache.add(
tool=func_name, input=input_str, output=raw_result
)
# Convert to string for message
result = (
str(raw_result)
if not isinstance(raw_result, str)
else raw_result
)
except Exception as e:
result = f"Error executing tool: {e}"
if self.task:
self.task.increment_tools_errors()
# Emit tool usage error event
crewai_event_bus.emit(
self,
event=ToolUsageErrorEvent(
tool_name=func_name,
tool_args=args_dict,
from_agent=self.agent,
from_task=self.task,
agent_key=agent_key,
error=e,
),
)
error_event_emitted = True
elif max_usage_reached and original_tool:
# Return error message when max usage limit is reached
result = f"Tool '{func_name}' has reached its usage limit of {original_tool.max_usage_count} times and cannot be used anymore."
# Execute after_tool_call hooks (even if blocked, to allow logging/monitoring)
after_hook_context = ToolCallHookContext(
tool_name=func_name,
tool_input=args_dict,
tool=structured_tool, # type: ignore[arg-type]
agent=self.agent,
task=self.task,
crew=self.crew,
tool_result=result,
)
after_hooks = get_after_tool_call_hooks()
try:
for after_hook in after_hooks:
after_hook_result = after_hook(after_hook_context)
if after_hook_result is not None:
result = after_hook_result
after_hook_context.tool_result = result
except Exception as hook_error:
if self.agent.verbose:
self._printer.print(
content=f"Error in after_tool_call hook: {hook_error}",
color="red",
)
if not error_event_emitted:
crewai_event_bus.emit(
self,
event=ToolUsageFinishedEvent(
output=result,
tool_name=func_name,
tool_args=args_dict,
from_agent=self.agent,
from_task=self.task,
agent_key=agent_key,
started_at=started_at,
finished_at=datetime.now(),
),
)
return {
"call_id": call_id,
"func_name": func_name,
"result": result,
"from_cache": from_cache,
"original_tool": original_tool,
}
def _extract_tool_name(self, tool_call: Any) -> str:
"""Extract tool name from various tool call formats."""
if hasattr(tool_call, "function"):
@@ -1252,7 +1360,9 @@ class AgentExecutor(Flow[AgentReActState], CrewAgentExecutorMixin):
formatted_answer: Current agent response.
"""
if self.step_callback:
self.step_callback(formatted_answer)
cb_result = self.step_callback(formatted_answer)
if inspect.iscoroutine(cb_result):
asyncio.run(cb_result)
def _append_message_to_state(
self, text: str, role: Literal["user", "assistant", "system"] = "assistant"

View File

@@ -10,6 +10,7 @@ import asyncio
from collections.abc import (
Callable,
ItemsView,
Iterable,
Iterator,
KeysView,
Sequence,
@@ -17,6 +18,7 @@ from collections.abc import (
)
from concurrent.futures import Future
import copy
import enum
import inspect
import logging
import threading
@@ -27,8 +29,10 @@ from typing import (
Generic,
Literal,
ParamSpec,
SupportsIndex,
TypeVar,
cast,
overload,
)
from uuid import uuid4
@@ -77,7 +81,12 @@ from crewai.flow.flow_wrappers import (
StartMethod,
)
from crewai.flow.persistence.base import FlowPersistence
from crewai.flow.types import FlowExecutionData, FlowMethodName, InputHistoryEntry, PendingListenerKey
from crewai.flow.types import (
FlowExecutionData,
FlowMethodName,
InputHistoryEntry,
PendingListenerKey,
)
from crewai.flow.utils import (
_extract_all_methods,
_extract_all_methods_recursive,
@@ -426,8 +435,7 @@ class LockedListProxy(list, Generic[T]): # type: ignore[type-arg]
"""
def __init__(self, lst: list[T], lock: threading.Lock) -> None:
# Do NOT call super().__init__() -- we don't want to copy data into
# the builtin list storage. All access goes through self._list.
super().__init__() # empty builtin list; all access goes through self._list
self._list = lst
self._lock = lock
@@ -435,11 +443,11 @@ class LockedListProxy(list, Generic[T]): # type: ignore[type-arg]
with self._lock:
self._list.append(item)
def extend(self, items: list[T]) -> None:
def extend(self, items: Iterable[T]) -> None:
with self._lock:
self._list.extend(items)
def insert(self, index: int, item: T) -> None:
def insert(self, index: SupportsIndex, item: T) -> None:
with self._lock:
self._list.insert(index, item)
@@ -447,7 +455,7 @@ class LockedListProxy(list, Generic[T]): # type: ignore[type-arg]
with self._lock:
self._list.remove(item)
def pop(self, index: int = -1) -> T:
def pop(self, index: SupportsIndex = -1) -> T:
with self._lock:
return self._list.pop(index)
@@ -455,15 +463,23 @@ class LockedListProxy(list, Generic[T]): # type: ignore[type-arg]
with self._lock:
self._list.clear()
def __setitem__(self, index: int, value: T) -> None:
@overload
def __setitem__(self, index: SupportsIndex, value: T) -> None: ...
@overload
def __setitem__(self, index: slice, value: Iterable[T]) -> None: ...
def __setitem__(self, index: Any, value: Any) -> None:
with self._lock:
self._list[index] = value
def __delitem__(self, index: int) -> None:
def __delitem__(self, index: SupportsIndex | slice) -> None:
with self._lock:
del self._list[index]
def __getitem__(self, index: int) -> T:
@overload
def __getitem__(self, index: SupportsIndex) -> T: ...
@overload
def __getitem__(self, index: slice) -> list[T]: ...
def __getitem__(self, index: Any) -> Any:
return self._list[index]
def __len__(self) -> int:
@@ -481,7 +497,7 @@ class LockedListProxy(list, Generic[T]): # type: ignore[type-arg]
def __bool__(self) -> bool:
return bool(self._list)
def __eq__(self, other: object) -> bool: # type: ignore[override]
def __eq__(self, other: object) -> bool:
"""Compare based on the underlying list contents."""
if isinstance(other, LockedListProxy):
# Avoid deadlocks by acquiring locks in a consistent order.
@@ -492,7 +508,7 @@ class LockedListProxy(list, Generic[T]): # type: ignore[type-arg]
with self._lock:
return self._list == other
def __ne__(self, other: object) -> bool: # type: ignore[override]
def __ne__(self, other: object) -> bool:
return not self.__eq__(other)
@@ -505,8 +521,7 @@ class LockedDictProxy(dict, Generic[T]): # type: ignore[type-arg]
"""
def __init__(self, d: dict[str, T], lock: threading.Lock) -> None:
# Do NOT call super().__init__() -- we don't want to copy data into
# the builtin dict storage. All access goes through self._dict.
super().__init__() # empty builtin dict; all access goes through self._dict
self._dict = d
self._lock = lock
@@ -518,11 +533,11 @@ class LockedDictProxy(dict, Generic[T]): # type: ignore[type-arg]
with self._lock:
del self._dict[key]
def pop(self, key: str, *default: T) -> T:
def pop(self, key: str, *default: T) -> T: # type: ignore[override]
with self._lock:
return self._dict.pop(key, *default)
def update(self, other: dict[str, T]) -> None:
def update(self, other: dict[str, T]) -> None: # type: ignore[override]
with self._lock:
self._dict.update(other)
@@ -530,7 +545,7 @@ class LockedDictProxy(dict, Generic[T]): # type: ignore[type-arg]
with self._lock:
self._dict.clear()
def setdefault(self, key: str, default: T) -> T:
def setdefault(self, key: str, default: T) -> T: # type: ignore[override]
with self._lock:
return self._dict.setdefault(key, default)
@@ -546,16 +561,16 @@ class LockedDictProxy(dict, Generic[T]): # type: ignore[type-arg]
def __contains__(self, key: object) -> bool:
return key in self._dict
def keys(self) -> KeysView[str]:
def keys(self) -> KeysView[str]: # type: ignore[override]
return self._dict.keys()
def values(self) -> ValuesView[T]:
def values(self) -> ValuesView[T]: # type: ignore[override]
return self._dict.values()
def items(self) -> ItemsView[str, T]:
def items(self) -> ItemsView[str, T]: # type: ignore[override]
return self._dict.items()
def get(self, key: str, default: T | None = None) -> T | None:
def get(self, key: str, default: T | None = None) -> T | None: # type: ignore[override]
return self._dict.get(key, default)
def __repr__(self) -> str:
@@ -564,7 +579,7 @@ class LockedDictProxy(dict, Generic[T]): # type: ignore[type-arg]
def __bool__(self) -> bool:
return bool(self._dict)
def __eq__(self, other: object) -> bool: # type: ignore[override]
def __eq__(self, other: object) -> bool:
"""Compare based on the underlying dict contents."""
if isinstance(other, LockedDictProxy):
# Avoid deadlocks by acquiring locks in a consistent order.
@@ -575,7 +590,7 @@ class LockedDictProxy(dict, Generic[T]): # type: ignore[type-arg]
with self._lock:
return self._dict == other
def __ne__(self, other: object) -> bool: # type: ignore[override]
def __ne__(self, other: object) -> bool:
return not self.__eq__(other)
@@ -737,7 +752,9 @@ class Flow(Generic[T], metaclass=FlowMeta):
name: str | None = None
tracing: bool | None = None
stream: bool = False
memory: Any = None # Memory | MemoryScope | MemorySlice | None; auto-created if not set
memory: Any = (
None # Memory | MemoryScope | MemorySlice | None; auto-created if not set
)
input_provider: Any = None # InputProvider | None; per-flow override for self.ask()
def __class_getitem__(cls: type[Flow[T]], item: type[T]) -> type[Flow[T]]:
@@ -881,7 +898,8 @@ class Flow(Generic[T], metaclass=FlowMeta):
"""
if self.memory is None:
raise ValueError("No memory configured for this flow")
return self.memory.extract_memories(content)
result: list[str] = self.memory.extract_memories(content)
return result
def _mark_or_listener_fired(self, listener_name: FlowMethodName) -> bool:
"""Mark an OR listener as fired atomically.
@@ -1352,8 +1370,10 @@ class Flow(Generic[T], metaclass=FlowMeta):
ValueError: If structured state model lacks 'id' field
TypeError: If state is neither BaseModel nor dictionary
"""
init_state = self.initial_state
# Handle case where initial_state is None but we have a type parameter
if self.initial_state is None and hasattr(self, "_initial_state_t"):
if init_state is None and hasattr(self, "_initial_state_t"):
state_type = self._initial_state_t
if isinstance(state_type, type):
if issubclass(state_type, FlowState):
@@ -1377,12 +1397,12 @@ class Flow(Generic[T], metaclass=FlowMeta):
return cast(T, {"id": str(uuid4())})
# Handle case where no initial state is provided
if self.initial_state is None:
if init_state is None:
return cast(T, {"id": str(uuid4())})
# Handle case where initial_state is a type (class)
if isinstance(self.initial_state, type):
state_class: type[T] = self.initial_state
if isinstance(init_state, type):
state_class = init_state
if issubclass(state_class, FlowState):
return state_class()
if issubclass(state_class, BaseModel):
@@ -1393,19 +1413,19 @@ class Flow(Generic[T], metaclass=FlowMeta):
if not getattr(model_instance, "id", None):
object.__setattr__(model_instance, "id", str(uuid4()))
return model_instance
if self.initial_state is dict:
if init_state is dict:
return cast(T, {"id": str(uuid4())})
# Handle dictionary instance case
if isinstance(self.initial_state, dict):
new_state = dict(self.initial_state) # Copy to avoid mutations
if isinstance(init_state, dict):
new_state = dict(init_state) # Copy to avoid mutations
if "id" not in new_state:
new_state["id"] = str(uuid4())
return cast(T, new_state)
# Handle BaseModel instance case
if isinstance(self.initial_state, BaseModel):
model = cast(BaseModel, self.initial_state)
if isinstance(init_state, BaseModel):
model = cast(BaseModel, init_state)
if not hasattr(model, "id"):
raise ValueError("Flow state model must have an 'id' field")
@@ -2178,6 +2198,8 @@ class Flow(Generic[T], metaclass=FlowMeta):
from crewai.flow.async_feedback.types import HumanFeedbackPending
if isinstance(e, HumanFeedbackPending):
e.context.method_name = method_name
# Auto-save pending feedback (create default persistence if needed)
if self._persistence is None:
from crewai.flow.persistence import SQLiteFlowPersistence
@@ -2277,14 +2299,23 @@ class Flow(Generic[T], metaclass=FlowMeta):
router_name, router_input, current_triggering_event_id
)
if router_result: # Only add non-None results
router_results.append(FlowMethodName(str(router_result)))
router_result_str = (
router_result.value
if isinstance(router_result, enum.Enum)
else str(router_result)
)
router_results.append(FlowMethodName(router_result_str))
# If this was a human_feedback router, map the outcome to the feedback
if self.last_human_feedback is not None:
router_result_to_feedback[str(router_result)] = (
router_result_to_feedback[router_result_str] = (
self.last_human_feedback
)
current_trigger = (
FlowMethodName(str(router_result))
FlowMethodName(
router_result.value
if isinstance(router_result, enum.Enum)
else str(router_result)
)
if router_result is not None
else FlowMethodName("") # Update for next iteration of router chain
)
@@ -2701,7 +2732,10 @@ class Flow(Generic[T], metaclass=FlowMeta):
return topic
```
"""
from concurrent.futures import ThreadPoolExecutor, TimeoutError as FuturesTimeoutError
from concurrent.futures import (
ThreadPoolExecutor,
TimeoutError as FuturesTimeoutError,
)
from datetime import datetime
from crewai.events.types.flow_events import (
@@ -2770,14 +2804,16 @@ class Flow(Generic[T], metaclass=FlowMeta):
response = None
# Record in history
self._input_history.append({
"message": message,
"response": response,
"method_name": method_name,
"timestamp": datetime.now(),
"metadata": metadata,
"response_metadata": response_metadata,
})
self._input_history.append(
{
"message": message,
"response": response,
"method_name": method_name,
"timestamp": datetime.now(),
"metadata": metadata,
"response_metadata": response_metadata,
}
)
# Emit input received event
crewai_event_bus.emit(

View File

@@ -234,7 +234,7 @@ class BedrockCompletion(BaseLLM):
aws_access_key_id: str | None = None,
aws_secret_access_key: str | None = None,
aws_session_token: str | None = None,
region_name: str = "us-east-1",
region_name: str | None = None,
temperature: float | None = None,
max_tokens: int | None = None,
top_p: float | None = None,
@@ -287,15 +287,6 @@ class BedrockCompletion(BaseLLM):
**kwargs,
)
# Initialize Bedrock client with proper configuration
session = Session(
aws_access_key_id=aws_access_key_id or os.getenv("AWS_ACCESS_KEY_ID"),
aws_secret_access_key=aws_secret_access_key
or os.getenv("AWS_SECRET_ACCESS_KEY"),
aws_session_token=aws_session_token or os.getenv("AWS_SESSION_TOKEN"),
region_name=region_name,
)
# Configure client with timeouts and retries following AWS best practices
config = Config(
read_timeout=300,
@@ -306,8 +297,12 @@ class BedrockCompletion(BaseLLM):
tcp_keepalive=True,
)
self.client = session.client("bedrock-runtime", config=config)
self.region_name = region_name
self.region_name = (
region_name
or os.getenv("AWS_DEFAULT_REGION")
or os.getenv("AWS_REGION_NAME")
or "us-east-1"
)
self.aws_access_key_id = aws_access_key_id or os.getenv("AWS_ACCESS_KEY_ID")
self.aws_secret_access_key = aws_secret_access_key or os.getenv(
@@ -315,6 +310,16 @@ class BedrockCompletion(BaseLLM):
)
self.aws_session_token = aws_session_token or os.getenv("AWS_SESSION_TOKEN")
# Initialize Bedrock client with proper configuration
session = Session(
aws_access_key_id=self.aws_access_key_id,
aws_secret_access_key=self.aws_secret_access_key,
aws_session_token=self.aws_session_token,
region_name=self.region_name,
)
self.client = session.client("bedrock-runtime", config=config)
self._async_exit_stack = AsyncExitStack() if AIOBOTOCORE_AVAILABLE else None
self._async_client_initialized = False

View File

@@ -1,5 +1,6 @@
from __future__ import annotations
import asyncio
from concurrent.futures import Future
from copy import copy as shallow_copy
import datetime
@@ -624,11 +625,15 @@ class Task(BaseModel):
self.end_time = datetime.datetime.now()
if self.callback:
self.callback(self.output)
cb_result = self.callback(self.output)
if inspect.isawaitable(cb_result):
await cb_result
crew = self.agent.crew # type: ignore[union-attr]
if crew and crew.task_callback and crew.task_callback != self.callback:
crew.task_callback(self.output)
cb_result = crew.task_callback(self.output)
if inspect.isawaitable(cb_result):
await cb_result
if self.output_file:
content = (
@@ -722,11 +727,15 @@ class Task(BaseModel):
self.end_time = datetime.datetime.now()
if self.callback:
self.callback(self.output)
cb_result = self.callback(self.output)
if inspect.iscoroutine(cb_result):
asyncio.run(cb_result)
crew = self.agent.crew # type: ignore[union-attr]
if crew and crew.task_callback and crew.task_callback != self.callback:
crew.task_callback(self.output)
cb_result = crew.task_callback(self.output)
if inspect.iscoroutine(cb_result):
asyncio.run(cb_result)
if self.output_file:
content = (

View File

@@ -3,6 +3,7 @@ from __future__ import annotations
import asyncio
from collections.abc import Callable, Sequence
import concurrent.futures
import inspect
import json
import re
from typing import TYPE_CHECKING, Any, Final, Literal, TypedDict
@@ -501,7 +502,9 @@ def handle_agent_action_core(
- TODO: Remove messages parameter and its usage.
"""
if step_callback:
step_callback(tool_result)
cb_result = step_callback(tool_result)
if inspect.iscoroutine(cb_result):
asyncio.run(cb_result)
formatted_answer.text += f"\nObservation: {tool_result.result}"
formatted_answer.result = tool_result.result

View File

@@ -69,7 +69,7 @@ def create_llm(
UNACCEPTED_ATTRIBUTES: Final[list[str]] = [
"AWS_ACCESS_KEY_ID",
"AWS_SECRET_ACCESS_KEY",
"AWS_REGION_NAME",
"AWS_DEFAULT_REGION",
]
@@ -146,7 +146,7 @@ def _llm_via_environment_or_fallback() -> LLM | None:
unaccepted_attributes = [
"AWS_ACCESS_KEY_ID",
"AWS_SECRET_ACCESS_KEY",
"AWS_REGION_NAME",
"AWS_DEFAULT_REGION",
]
set_provider = model_name.partition("/")[0] if "/" in model_name else "openai"

View File

@@ -4,6 +4,7 @@ Tests the Flow-based agent executor implementation including state management,
flow methods, routing logic, and error handling.
"""
import time
from unittest.mock import Mock, patch
import pytest
@@ -462,3 +463,176 @@ class TestFlowInvoke:
assert result == {"output": "Done"}
assert len(executor.state.messages) >= 2
class TestNativeToolExecution:
"""Test native tool execution behavior."""
@pytest.fixture
def mock_dependencies(self):
llm = Mock()
llm.supports_stop_words.return_value = True
task = Mock()
task.name = "Test Task"
task.description = "Test"
task.human_input = False
task.response_model = None
crew = Mock()
crew._memory = None
crew.verbose = False
crew._train = False
agent = Mock()
agent.id = "test-agent-id"
agent.role = "Test Agent"
agent.verbose = False
agent.key = "test-key"
prompt = {"prompt": "Test {input} {tool_names} {tools}"}
tools_handler = Mock()
tools_handler.cache = None
return {
"llm": llm,
"task": task,
"crew": crew,
"agent": agent,
"prompt": prompt,
"max_iter": 10,
"tools": [],
"tools_names": "",
"stop_words": [],
"tools_description": "",
"tools_handler": tools_handler,
}
def test_execute_native_tool_runs_parallel_for_multiple_calls(
self, mock_dependencies
):
executor = AgentExecutor(**mock_dependencies)
def slow_one() -> str:
time.sleep(0.2)
return "one"
def slow_two() -> str:
time.sleep(0.2)
return "two"
executor._available_functions = {"slow_one": slow_one, "slow_two": slow_two}
executor.state.pending_tool_calls = [
{
"id": "call_1",
"function": {"name": "slow_one", "arguments": "{}"},
},
{
"id": "call_2",
"function": {"name": "slow_two", "arguments": "{}"},
},
]
started = time.perf_counter()
result = executor.execute_native_tool()
elapsed = time.perf_counter() - started
assert result == "native_tool_completed"
assert elapsed < 0.5
tool_messages = [m for m in executor.state.messages if m.get("role") == "tool"]
assert len(tool_messages) == 2
assert tool_messages[0]["tool_call_id"] == "call_1"
assert tool_messages[1]["tool_call_id"] == "call_2"
def test_execute_native_tool_falls_back_to_sequential_for_result_as_answer(
self, mock_dependencies
):
executor = AgentExecutor(**mock_dependencies)
def slow_one() -> str:
time.sleep(0.2)
return "one"
def slow_two() -> str:
time.sleep(0.2)
return "two"
result_tool = Mock()
result_tool.name = "slow_one"
result_tool.result_as_answer = True
result_tool.max_usage_count = None
result_tool.current_usage_count = 0
executor.original_tools = [result_tool]
executor._available_functions = {"slow_one": slow_one, "slow_two": slow_two}
executor.state.pending_tool_calls = [
{
"id": "call_1",
"function": {"name": "slow_one", "arguments": "{}"},
},
{
"id": "call_2",
"function": {"name": "slow_two", "arguments": "{}"},
},
]
started = time.perf_counter()
result = executor.execute_native_tool()
elapsed = time.perf_counter() - started
assert result == "tool_result_is_final"
assert elapsed >= 0.2
assert elapsed < 0.8
assert isinstance(executor.state.current_answer, AgentFinish)
assert executor.state.current_answer.output == "one"
def test_execute_native_tool_result_as_answer_short_circuits_remaining_calls(
self, mock_dependencies
):
executor = AgentExecutor(**mock_dependencies)
call_counts = {"slow_one": 0, "slow_two": 0}
def slow_one() -> str:
call_counts["slow_one"] += 1
time.sleep(0.2)
return "one"
def slow_two() -> str:
call_counts["slow_two"] += 1
time.sleep(0.2)
return "two"
result_tool = Mock()
result_tool.name = "slow_one"
result_tool.result_as_answer = True
result_tool.max_usage_count = None
result_tool.current_usage_count = 0
executor.original_tools = [result_tool]
executor._available_functions = {"slow_one": slow_one, "slow_two": slow_two}
executor.state.pending_tool_calls = [
{
"id": "call_1",
"function": {"name": "slow_one", "arguments": "{}"},
},
{
"id": "call_2",
"function": {"name": "slow_two", "arguments": "{}"},
},
]
started = time.perf_counter()
result = executor.execute_native_tool()
elapsed = time.perf_counter() - started
assert result == "tool_result_is_final"
assert isinstance(executor.state.current_answer, AgentFinish)
assert executor.state.current_answer.output == "one"
assert call_counts["slow_one"] == 1
assert call_counts["slow_two"] == 0
assert elapsed < 0.5
tool_messages = [m for m in executor.state.messages if m.get("role") == "tool"]
assert len(tool_messages) == 1
assert tool_messages[0]["tool_call_id"] == "call_1"

View File

@@ -2,7 +2,7 @@
import asyncio
from typing import Any
from unittest.mock import AsyncMock, MagicMock, patch
from unittest.mock import AsyncMock, MagicMock, Mock, patch
import pytest
@@ -291,6 +291,46 @@ class TestAsyncAgentExecutor:
assert max_concurrent > 1, f"Expected concurrent execution, max concurrent was {max_concurrent}"
class TestInvokeStepCallback:
"""Tests for _invoke_step_callback with sync and async callbacks."""
def test_invoke_step_callback_with_sync_callback(
self, executor: CrewAgentExecutor
) -> None:
"""Test that a sync step callback is called normally."""
callback = Mock()
executor.step_callback = callback
answer = AgentFinish(thought="thinking", output="test", text="final")
executor._invoke_step_callback(answer)
callback.assert_called_once_with(answer)
def test_invoke_step_callback_with_async_callback(
self, executor: CrewAgentExecutor
) -> None:
"""Test that an async step callback is awaited via asyncio.run."""
async_callback = AsyncMock()
executor.step_callback = async_callback
answer = AgentFinish(thought="thinking", output="test", text="final")
with patch("crewai.agents.crew_agent_executor.asyncio.run") as mock_run:
executor._invoke_step_callback(answer)
async_callback.assert_called_once_with(answer)
mock_run.assert_called_once()
def test_invoke_step_callback_with_none(
self, executor: CrewAgentExecutor
) -> None:
"""Test that no error is raised when step_callback is None."""
executor.step_callback = None
answer = AgentFinish(thought="thinking", output="test", text="final")
# Should not raise
executor._invoke_step_callback(answer)
class TestAsyncLLMResponseHelper:
"""Tests for aget_llm_response helper function."""

View File

@@ -6,13 +6,20 @@ when the LLM supports it, across multiple providers.
from __future__ import annotations
from collections.abc import Generator
import os
import threading
import time
from collections import Counter
from unittest.mock import patch
import pytest
from pydantic import BaseModel, Field
from crewai import Agent, Crew, Task
from crewai.events import crewai_event_bus
from crewai.hooks import register_after_tool_call_hook, register_before_tool_call_hook
from crewai.hooks.tool_hooks import ToolCallHookContext
from crewai.llm import LLM
from crewai.tools.base_tool import BaseTool
@@ -64,6 +71,73 @@ class FailingTool(BaseTool):
def _run(self) -> str:
raise Exception("This tool always fails")
class LocalSearchInput(BaseModel):
query: str = Field(description="Search query")
class ParallelProbe:
"""Thread-safe in-memory recorder for tool execution windows."""
_lock = threading.Lock()
_windows: list[tuple[str, float, float]] = []
@classmethod
def reset(cls) -> None:
with cls._lock:
cls._windows = []
@classmethod
def record(cls, tool_name: str, start: float, end: float) -> None:
with cls._lock:
cls._windows.append((tool_name, start, end))
@classmethod
def windows(cls) -> list[tuple[str, float, float]]:
with cls._lock:
return list(cls._windows)
def _parallel_prompt() -> str:
return (
"This is a tool-calling compliance test. "
"In your next assistant turn, emit exactly 3 tool calls in the same response (parallel tool calls), in this order: "
"1) parallel_local_search_one(query='latest OpenAI model release notes'), "
"2) parallel_local_search_two(query='latest Anthropic model release notes'), "
"3) parallel_local_search_three(query='latest Gemini model release notes'). "
"Do not call any other tools and do not answer before those 3 tool calls are emitted. "
"After the tool results return, provide a one paragraph summary."
)
def _max_concurrency(windows: list[tuple[str, float, float]]) -> int:
points: list[tuple[float, int]] = []
for _, start, end in windows:
points.append((start, 1))
points.append((end, -1))
points.sort(key=lambda p: (p[0], p[1]))
current = 0
maximum = 0
for _, delta in points:
current += delta
if current > maximum:
maximum = current
return maximum
def _assert_tools_overlapped() -> None:
windows = ParallelProbe.windows()
local_windows = [
w
for w in windows
if w[0].startswith("parallel_local_search_")
]
assert len(local_windows) >= 3, f"Expected at least 3 local tool calls, got {len(local_windows)}"
assert _max_concurrency(local_windows) >= 2, "Expected overlapping local tool executions"
@pytest.fixture
def calculator_tool() -> CalculatorTool:
"""Create a calculator tool for testing."""
@@ -82,6 +156,65 @@ def failing_tool() -> BaseTool:
)
@pytest.fixture
def parallel_tools() -> list[BaseTool]:
"""Create local tools used to verify native parallel execution deterministically."""
class ParallelLocalSearchOne(BaseTool):
name: str = "parallel_local_search_one"
description: str = "Local search tool #1 for concurrency testing."
args_schema: type[BaseModel] = LocalSearchInput
def _run(self, query: str) -> str:
start = time.perf_counter()
time.sleep(1.0)
end = time.perf_counter()
ParallelProbe.record(self.name, start, end)
return f"[one] {query}"
class ParallelLocalSearchTwo(BaseTool):
name: str = "parallel_local_search_two"
description: str = "Local search tool #2 for concurrency testing."
args_schema: type[BaseModel] = LocalSearchInput
def _run(self, query: str) -> str:
start = time.perf_counter()
time.sleep(1.0)
end = time.perf_counter()
ParallelProbe.record(self.name, start, end)
return f"[two] {query}"
class ParallelLocalSearchThree(BaseTool):
name: str = "parallel_local_search_three"
description: str = "Local search tool #3 for concurrency testing."
args_schema: type[BaseModel] = LocalSearchInput
def _run(self, query: str) -> str:
start = time.perf_counter()
time.sleep(1.0)
end = time.perf_counter()
ParallelProbe.record(self.name, start, end)
return f"[three] {query}"
return [
ParallelLocalSearchOne(),
ParallelLocalSearchTwo(),
ParallelLocalSearchThree(),
]
def _attach_parallel_probe_handler() -> None:
@crewai_event_bus.on(ToolUsageFinishedEvent)
def _capture_tool_window(_source, event: ToolUsageFinishedEvent):
if not event.tool_name.startswith("parallel_local_search_"):
return
ParallelProbe.record(
event.tool_name,
event.started_at.timestamp(),
event.finished_at.timestamp(),
)
# =============================================================================
# OpenAI Provider Tests
# =============================================================================
@@ -122,7 +255,7 @@ class TestOpenAINativeToolCalling:
self, calculator_tool: CalculatorTool
) -> None:
"""Test OpenAI agent kickoff with mocked LLM call."""
llm = LLM(model="gpt-4o-mini")
llm = LLM(model="gpt-5-nano")
with patch.object(llm, "call", return_value="The answer is 120.") as mock_call:
agent = Agent(
@@ -146,6 +279,174 @@ class TestOpenAINativeToolCalling:
assert mock_call.called
assert result is not None
@pytest.mark.vcr()
@pytest.mark.timeout(180)
def test_openai_parallel_native_tool_calling_test_crew(
self, parallel_tools: list[BaseTool]
) -> None:
agent = Agent(
role="Parallel Tool Agent",
goal="Use both tools exactly as instructed",
backstory="You follow tool instructions precisely.",
tools=parallel_tools,
llm=LLM(model="gpt-5-nano", temperature=1),
verbose=False,
max_iter=3,
)
task = Task(
description=_parallel_prompt(),
expected_output="A one sentence summary of both tool outputs",
agent=agent,
)
crew = Crew(agents=[agent], tasks=[task])
result = crew.kickoff()
assert result is not None
_assert_tools_overlapped()
@pytest.mark.vcr()
@pytest.mark.timeout(180)
def test_openai_parallel_native_tool_calling_test_agent_kickoff(
self, parallel_tools: list[BaseTool]
) -> None:
agent = Agent(
role="Parallel Tool Agent",
goal="Use both tools exactly as instructed",
backstory="You follow tool instructions precisely.",
tools=parallel_tools,
llm=LLM(model="gpt-4o-mini"),
verbose=False,
max_iter=3,
)
result = agent.kickoff(_parallel_prompt())
assert result is not None
_assert_tools_overlapped()
@pytest.mark.vcr()
@pytest.mark.timeout(180)
def test_openai_parallel_native_tool_calling_tool_hook_parity_crew(
self, parallel_tools: list[BaseTool]
) -> None:
hook_calls: dict[str, list[dict[str, str]]] = {"before": [], "after": []}
def before_hook(context: ToolCallHookContext) -> bool | None:
if context.tool_name.startswith("parallel_local_search_"):
hook_calls["before"].append(
{
"tool_name": context.tool_name,
"query": str(context.tool_input.get("query", "")),
}
)
return None
def after_hook(context: ToolCallHookContext) -> str | None:
if context.tool_name.startswith("parallel_local_search_"):
hook_calls["after"].append(
{
"tool_name": context.tool_name,
"query": str(context.tool_input.get("query", "")),
}
)
return None
register_before_tool_call_hook(before_hook)
register_after_tool_call_hook(after_hook)
try:
agent = Agent(
role="Parallel Tool Agent",
goal="Use both tools exactly as instructed",
backstory="You follow tool instructions precisely.",
tools=parallel_tools,
llm=LLM(model="gpt-5-nano", temperature=1),
verbose=False,
max_iter=3,
)
task = Task(
description=_parallel_prompt(),
expected_output="A one sentence summary of both tool outputs",
agent=agent,
)
crew = Crew(agents=[agent], tasks=[task])
result = crew.kickoff()
assert result is not None
_assert_tools_overlapped()
before_names = [call["tool_name"] for call in hook_calls["before"]]
after_names = [call["tool_name"] for call in hook_calls["after"]]
assert len(before_names) >= 3, "Expected before hooks for all parallel calls"
assert Counter(before_names) == Counter(after_names)
assert all(call["query"] for call in hook_calls["before"])
assert all(call["query"] for call in hook_calls["after"])
finally:
from crewai.hooks import (
unregister_after_tool_call_hook,
unregister_before_tool_call_hook,
)
unregister_before_tool_call_hook(before_hook)
unregister_after_tool_call_hook(after_hook)
@pytest.mark.vcr()
@pytest.mark.timeout(180)
def test_openai_parallel_native_tool_calling_tool_hook_parity_agent_kickoff(
self, parallel_tools: list[BaseTool]
) -> None:
hook_calls: dict[str, list[dict[str, str]]] = {"before": [], "after": []}
def before_hook(context: ToolCallHookContext) -> bool | None:
if context.tool_name.startswith("parallel_local_search_"):
hook_calls["before"].append(
{
"tool_name": context.tool_name,
"query": str(context.tool_input.get("query", "")),
}
)
return None
def after_hook(context: ToolCallHookContext) -> str | None:
if context.tool_name.startswith("parallel_local_search_"):
hook_calls["after"].append(
{
"tool_name": context.tool_name,
"query": str(context.tool_input.get("query", "")),
}
)
return None
register_before_tool_call_hook(before_hook)
register_after_tool_call_hook(after_hook)
try:
agent = Agent(
role="Parallel Tool Agent",
goal="Use both tools exactly as instructed",
backstory="You follow tool instructions precisely.",
tools=parallel_tools,
llm=LLM(model="gpt-5-nano", temperature=1),
verbose=False,
max_iter=3,
)
result = agent.kickoff(_parallel_prompt())
assert result is not None
_assert_tools_overlapped()
before_names = [call["tool_name"] for call in hook_calls["before"]]
after_names = [call["tool_name"] for call in hook_calls["after"]]
assert len(before_names) >= 3, "Expected before hooks for all parallel calls"
assert Counter(before_names) == Counter(after_names)
assert all(call["query"] for call in hook_calls["before"])
assert all(call["query"] for call in hook_calls["after"])
finally:
from crewai.hooks import (
unregister_after_tool_call_hook,
unregister_before_tool_call_hook,
)
unregister_before_tool_call_hook(before_hook)
unregister_after_tool_call_hook(after_hook)
# =============================================================================
# Anthropic Provider Tests
@@ -217,6 +518,46 @@ class TestAnthropicNativeToolCalling:
assert mock_call.called
assert result is not None
@pytest.mark.vcr()
def test_anthropic_parallel_native_tool_calling_test_crew(
self, parallel_tools: list[BaseTool]
) -> None:
agent = Agent(
role="Parallel Tool Agent",
goal="Use both tools exactly as instructed",
backstory="You follow tool instructions precisely.",
tools=parallel_tools,
llm=LLM(model="anthropic/claude-sonnet-4-6"),
verbose=False,
max_iter=3,
)
task = Task(
description=_parallel_prompt(),
expected_output="A one sentence summary of both tool outputs",
agent=agent,
)
crew = Crew(agents=[agent], tasks=[task])
result = crew.kickoff()
assert result is not None
_assert_tools_overlapped()
@pytest.mark.vcr()
def test_anthropic_parallel_native_tool_calling_test_agent_kickoff(
self, parallel_tools: list[BaseTool]
) -> None:
agent = Agent(
role="Parallel Tool Agent",
goal="Use both tools exactly as instructed",
backstory="You follow tool instructions precisely.",
tools=parallel_tools,
llm=LLM(model="anthropic/claude-sonnet-4-6"),
verbose=False,
max_iter=3,
)
result = agent.kickoff(_parallel_prompt())
assert result is not None
_assert_tools_overlapped()
# =============================================================================
# Google/Gemini Provider Tests
@@ -247,7 +588,7 @@ class TestGeminiNativeToolCalling:
goal="Help users with mathematical calculations",
backstory="You are a helpful math assistant.",
tools=[calculator_tool],
llm=LLM(model="gemini/gemini-2.0-flash-exp"),
llm=LLM(model="gemini/gemini-2.5-flash"),
)
task = Task(
@@ -266,7 +607,7 @@ class TestGeminiNativeToolCalling:
self, calculator_tool: CalculatorTool
) -> None:
"""Test Gemini agent kickoff with mocked LLM call."""
llm = LLM(model="gemini/gemini-2.0-flash-001")
llm = LLM(model="gemini/gemini-2.5-flash")
with patch.object(llm, "call", return_value="The answer is 120.") as mock_call:
agent = Agent(
@@ -290,6 +631,46 @@ class TestGeminiNativeToolCalling:
assert mock_call.called
assert result is not None
@pytest.mark.vcr()
def test_gemini_parallel_native_tool_calling_test_crew(
self, parallel_tools: list[BaseTool]
) -> None:
agent = Agent(
role="Parallel Tool Agent",
goal="Use both tools exactly as instructed",
backstory="You follow tool instructions precisely.",
tools=parallel_tools,
llm=LLM(model="gemini/gemini-2.5-flash"),
verbose=False,
max_iter=3,
)
task = Task(
description=_parallel_prompt(),
expected_output="A one sentence summary of both tool outputs",
agent=agent,
)
crew = Crew(agents=[agent], tasks=[task])
result = crew.kickoff()
assert result is not None
_assert_tools_overlapped()
@pytest.mark.vcr()
def test_gemini_parallel_native_tool_calling_test_agent_kickoff(
self, parallel_tools: list[BaseTool]
) -> None:
agent = Agent(
role="Parallel Tool Agent",
goal="Use both tools exactly as instructed",
backstory="You follow tool instructions precisely.",
tools=parallel_tools,
llm=LLM(model="gemini/gemini-2.5-flash"),
verbose=False,
max_iter=3,
)
result = agent.kickoff(_parallel_prompt())
assert result is not None
_assert_tools_overlapped()
# =============================================================================
# Azure Provider Tests
@@ -324,7 +705,7 @@ class TestAzureNativeToolCalling:
goal="Help users with mathematical calculations",
backstory="You are a helpful math assistant.",
tools=[calculator_tool],
llm=LLM(model="azure/gpt-4o-mini"),
llm=LLM(model="azure/gpt-5-nano"),
verbose=False,
max_iter=3,
)
@@ -347,7 +728,7 @@ class TestAzureNativeToolCalling:
) -> None:
"""Test Azure agent kickoff with mocked LLM call."""
llm = LLM(
model="azure/gpt-4o-mini",
model="azure/gpt-5-nano",
api_key="test-key",
base_url="https://test.openai.azure.com",
)
@@ -374,6 +755,46 @@ class TestAzureNativeToolCalling:
assert mock_call.called
assert result is not None
@pytest.mark.vcr()
def test_azure_parallel_native_tool_calling_test_crew(
self, parallel_tools: list[BaseTool]
) -> None:
agent = Agent(
role="Parallel Tool Agent",
goal="Use both tools exactly as instructed",
backstory="You follow tool instructions precisely.",
tools=parallel_tools,
llm=LLM(model="azure/gpt-5-nano"),
verbose=False,
max_iter=3,
)
task = Task(
description=_parallel_prompt(),
expected_output="A one sentence summary of both tool outputs",
agent=agent,
)
crew = Crew(agents=[agent], tasks=[task])
result = crew.kickoff()
assert result is not None
_assert_tools_overlapped()
@pytest.mark.vcr()
def test_azure_parallel_native_tool_calling_test_agent_kickoff(
self, parallel_tools: list[BaseTool]
) -> None:
agent = Agent(
role="Parallel Tool Agent",
goal="Use both tools exactly as instructed",
backstory="You follow tool instructions precisely.",
tools=parallel_tools,
llm=LLM(model="azure/gpt-5-nano"),
verbose=False,
max_iter=3,
)
result = agent.kickoff(_parallel_prompt())
assert result is not None
_assert_tools_overlapped()
# =============================================================================
# Bedrock Provider Tests
@@ -384,18 +805,30 @@ class TestBedrockNativeToolCalling:
"""Tests for native tool calling with AWS Bedrock models."""
@pytest.fixture(autouse=True)
def mock_aws_env(self):
"""Mock AWS environment variables for tests."""
env_vars = {
"AWS_ACCESS_KEY_ID": "test-key",
"AWS_SECRET_ACCESS_KEY": "test-secret",
"AWS_REGION": "us-east-1",
}
if "AWS_ACCESS_KEY_ID" not in os.environ:
with patch.dict(os.environ, env_vars):
yield
else:
yield
def validate_bedrock_credentials_for_live_recording(self):
"""Run Bedrock tests only when explicitly enabled."""
run_live_bedrock = os.getenv("RUN_BEDROCK_LIVE_TESTS", "false").lower() == "true"
if not run_live_bedrock:
pytest.skip(
"Skipping Bedrock tests by default. "
"Set RUN_BEDROCK_LIVE_TESTS=true with valid AWS credentials to enable."
)
access_key = os.getenv("AWS_ACCESS_KEY_ID", "")
secret_key = os.getenv("AWS_SECRET_ACCESS_KEY", "")
if (
not access_key
or not secret_key
or access_key.startswith(("fake-", "test-"))
or secret_key.startswith(("fake-", "test-"))
):
pytest.skip(
"Skipping Bedrock tests: valid AWS credentials are required when "
"RUN_BEDROCK_LIVE_TESTS=true."
)
yield
@pytest.mark.vcr()
def test_bedrock_agent_kickoff_with_tools_mocked(
@@ -427,6 +860,46 @@ class TestBedrockNativeToolCalling:
assert result.raw is not None
assert "120" in str(result.raw)
@pytest.mark.vcr()
def test_bedrock_parallel_native_tool_calling_test_crew(
self, parallel_tools: list[BaseTool]
) -> None:
agent = Agent(
role="Parallel Tool Agent",
goal="Use both tools exactly as instructed",
backstory="You follow tool instructions precisely.",
tools=parallel_tools,
llm=LLM(model="bedrock/anthropic.claude-3-haiku-20240307-v1:0"),
verbose=False,
max_iter=3,
)
task = Task(
description=_parallel_prompt(),
expected_output="A one sentence summary of both tool outputs",
agent=agent,
)
crew = Crew(agents=[agent], tasks=[task])
result = crew.kickoff()
assert result is not None
_assert_tools_overlapped()
@pytest.mark.vcr()
def test_bedrock_parallel_native_tool_calling_test_agent_kickoff(
self, parallel_tools: list[BaseTool]
) -> None:
agent = Agent(
role="Parallel Tool Agent",
goal="Use both tools exactly as instructed",
backstory="You follow tool instructions precisely.",
tools=parallel_tools,
llm=LLM(model="bedrock/anthropic.claude-3-haiku-20240307-v1:0"),
verbose=False,
max_iter=3,
)
result = agent.kickoff(_parallel_prompt())
assert result is not None
_assert_tools_overlapped()
# =============================================================================
# Cross-Provider Native Tool Calling Behavior Tests
@@ -439,7 +912,7 @@ class TestNativeToolCallingBehavior:
def test_supports_function_calling_check(self) -> None:
"""Test that supports_function_calling() is properly checked."""
# OpenAI should support function calling
openai_llm = LLM(model="gpt-4o-mini")
openai_llm = LLM(model="gpt-5-nano")
assert hasattr(openai_llm, "supports_function_calling")
assert openai_llm.supports_function_calling() is True
@@ -475,7 +948,7 @@ class TestNativeToolCallingTokenUsage:
goal="Perform calculations efficiently",
backstory="You calculate things.",
tools=[calculator_tool],
llm=LLM(model="gpt-4o-mini"),
llm=LLM(model="gpt-5-nano"),
verbose=False,
max_iter=3,
)
@@ -519,7 +992,7 @@ def test_native_tool_calling_error_handling(failing_tool: FailingTool):
goal="Perform calculations efficiently",
backstory="You calculate things.",
tools=[failing_tool],
llm=LLM(model="gpt-4o-mini"),
llm=LLM(model="gpt-5-nano"),
verbose=False,
max_iter=3,
)
@@ -578,7 +1051,7 @@ class TestMaxUsageCountWithNativeToolCalling:
goal="Call the counting tool multiple times",
backstory="You are an agent that counts things.",
tools=[tool],
llm=LLM(model="gpt-4o-mini"),
llm=LLM(model="gpt-5-nano"),
verbose=False,
max_iter=5,
)
@@ -606,7 +1079,7 @@ class TestMaxUsageCountWithNativeToolCalling:
goal="Use the counting tool as many times as requested",
backstory="You are an agent that counts things. You must try to use the tool for each value requested.",
tools=[tool],
llm=LLM(model="gpt-4o-mini"),
llm=LLM(model="gpt-5-nano"),
verbose=False,
max_iter=5,
)
@@ -638,7 +1111,7 @@ class TestMaxUsageCountWithNativeToolCalling:
goal="Use the counting tool exactly as requested",
backstory="You are an agent that counts things precisely.",
tools=[tool],
llm=LLM(model="gpt-4o-mini"),
llm=LLM(model="gpt-5-nano"),
verbose=False,
max_iter=5,
)
@@ -653,5 +1126,6 @@ class TestMaxUsageCountWithNativeToolCalling:
result = crew.kickoff()
assert result is not None
# Verify usage count was incremented for each successful call
assert tool.current_usage_count == 2
# Verify the requested calls occurred while keeping usage bounded.
assert tool.current_usage_count >= 2
assert tool.current_usage_count <= tool.max_usage_count

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@@ -2,7 +2,7 @@ from datetime import datetime, timedelta
from unittest.mock import MagicMock, call, patch
import pytest
import requests
import httpx
from crewai.cli.authentication.main import AuthenticationCommand
from crewai.cli.constants import (
CREWAI_ENTERPRISE_DEFAULT_OAUTH2_AUDIENCE,
@@ -220,7 +220,7 @@ class TestAuthenticationCommand:
]
mock_console_print.assert_has_calls(expected_calls)
@patch("requests.post")
@patch("crewai.cli.authentication.main.httpx.post")
def test_get_device_code(self, mock_post):
mock_response = MagicMock()
mock_response.json.return_value = {
@@ -256,7 +256,7 @@ class TestAuthenticationCommand:
"verification_uri_complete": "https://example.com/auth",
}
@patch("requests.post")
@patch("crewai.cli.authentication.main.httpx.post")
@patch("crewai.cli.authentication.main.console.print")
def test_poll_for_token_success(self, mock_console_print, mock_post):
mock_response_success = MagicMock()
@@ -305,7 +305,7 @@ class TestAuthenticationCommand:
]
mock_console_print.assert_has_calls(expected_calls)
@patch("requests.post")
@patch("crewai.cli.authentication.main.httpx.post")
@patch("crewai.cli.authentication.main.console.print")
def test_poll_for_token_timeout(self, mock_console_print, mock_post):
mock_response_pending = MagicMock()
@@ -324,7 +324,7 @@ class TestAuthenticationCommand:
"Timeout: Failed to get the token. Please try again.", style="bold red"
)
@patch("requests.post")
@patch("crewai.cli.authentication.main.httpx.post")
def test_poll_for_token_error(self, mock_post):
"""Test the method to poll for token (error path)."""
# Setup mock to return error
@@ -338,5 +338,5 @@ class TestAuthenticationCommand:
device_code_data = {"device_code": "test_device_code", "interval": 1}
with pytest.raises(requests.HTTPError):
with pytest.raises(httpx.HTTPError):
self.auth_command._poll_for_token(device_code_data)

View File

@@ -4,10 +4,11 @@ from io import StringIO
from unittest.mock import MagicMock, Mock, patch
import pytest
import requests
import json
import httpx
from crewai.cli.deploy.main import DeployCommand
from crewai.cli.utils import parse_toml
from requests.exceptions import JSONDecodeError
class TestDeployCommand(unittest.TestCase):
@@ -37,18 +38,18 @@ class TestDeployCommand(unittest.TestCase):
DeployCommand()
def test_validate_response_successful_response(self):
mock_response = Mock(spec=requests.Response)
mock_response = Mock(spec=httpx.Response)
mock_response.json.return_value = {"message": "Success"}
mock_response.status_code = 200
mock_response.ok = True
mock_response.is_success = True
with patch("sys.stdout", new=StringIO()) as fake_out:
self.deploy_command._validate_response(mock_response)
assert fake_out.getvalue() == ""
def test_validate_response_json_decode_error(self):
mock_response = Mock(spec=requests.Response)
mock_response.json.side_effect = JSONDecodeError("Decode error", "", 0)
mock_response = Mock(spec=httpx.Response)
mock_response.json.side_effect = json.JSONDecodeError("Decode error", "", 0)
mock_response.status_code = 500
mock_response.content = b"Invalid JSON"
@@ -64,13 +65,13 @@ class TestDeployCommand(unittest.TestCase):
assert "Response:\nInvalid JSON" in output
def test_validate_response_422_error(self):
mock_response = Mock(spec=requests.Response)
mock_response = Mock(spec=httpx.Response)
mock_response.json.return_value = {
"field1": ["Error message 1"],
"field2": ["Error message 2"],
}
mock_response.status_code = 422
mock_response.ok = False
mock_response.is_success = False
with patch("sys.stdout", new=StringIO()) as fake_out:
with pytest.raises(SystemExit):
@@ -84,10 +85,10 @@ class TestDeployCommand(unittest.TestCase):
assert "Field2 Error message 2" in output
def test_validate_response_other_error(self):
mock_response = Mock(spec=requests.Response)
mock_response = Mock(spec=httpx.Response)
mock_response.json.return_value = {"error": "Something went wrong"}
mock_response.status_code = 500
mock_response.ok = False
mock_response.is_success = False
with patch("sys.stdout", new=StringIO()) as fake_out:
with pytest.raises(SystemExit):

View File

@@ -3,8 +3,9 @@ import unittest
from pathlib import Path
from unittest.mock import Mock, patch
import requests
from requests.exceptions import JSONDecodeError
import json
import httpx
from crewai.cli.enterprise.main import EnterpriseConfigureCommand
from crewai.cli.settings.main import SettingsCommand
@@ -25,7 +26,7 @@ class TestEnterpriseConfigureCommand(unittest.TestCase):
def tearDown(self):
shutil.rmtree(self.test_dir)
@patch('crewai.cli.enterprise.main.requests.get')
@patch('crewai.cli.enterprise.main.httpx.get')
@patch('crewai.cli.enterprise.main.get_crewai_version')
def test_successful_configuration(self, mock_get_version, mock_requests_get):
mock_get_version.return_value = "1.0.0"
@@ -73,19 +74,23 @@ class TestEnterpriseConfigureCommand(unittest.TestCase):
self.assertEqual(call_args[0], key)
self.assertEqual(call_args[1], value)
@patch('crewai.cli.enterprise.main.requests.get')
@patch('crewai.cli.enterprise.main.httpx.get')
@patch('crewai.cli.enterprise.main.get_crewai_version')
def test_http_error_handling(self, mock_get_version, mock_requests_get):
mock_get_version.return_value = "1.0.0"
mock_response = Mock()
mock_response.raise_for_status.side_effect = requests.HTTPError("404 Not Found")
mock_response.raise_for_status.side_effect = httpx.HTTPStatusError(
"404 Not Found",
request=httpx.Request("GET", "http://test"),
response=httpx.Response(404),
)
mock_requests_get.return_value = mock_response
with self.assertRaises(SystemExit):
self.enterprise_command.configure("https://enterprise.example.com")
@patch('crewai.cli.enterprise.main.requests.get')
@patch('crewai.cli.enterprise.main.httpx.get')
@patch('crewai.cli.enterprise.main.get_crewai_version')
def test_invalid_json_response(self, mock_get_version, mock_requests_get):
mock_get_version.return_value = "1.0.0"
@@ -93,13 +98,13 @@ class TestEnterpriseConfigureCommand(unittest.TestCase):
mock_response = Mock()
mock_response.status_code = 200
mock_response.raise_for_status.return_value = None
mock_response.json.side_effect = JSONDecodeError("Invalid JSON", "", 0)
mock_response.json.side_effect = json.JSONDecodeError("Invalid JSON", "", 0)
mock_requests_get.return_value = mock_response
with self.assertRaises(SystemExit):
self.enterprise_command.configure("https://enterprise.example.com")
@patch('crewai.cli.enterprise.main.requests.get')
@patch('crewai.cli.enterprise.main.httpx.get')
@patch('crewai.cli.enterprise.main.get_crewai_version')
def test_missing_required_fields(self, mock_get_version, mock_requests_get):
mock_get_version.return_value = "1.0.0"
@@ -115,7 +120,7 @@ class TestEnterpriseConfigureCommand(unittest.TestCase):
with self.assertRaises(SystemExit):
self.enterprise_command.configure("https://enterprise.example.com")
@patch('crewai.cli.enterprise.main.requests.get')
@patch('crewai.cli.enterprise.main.httpx.get')
@patch('crewai.cli.enterprise.main.get_crewai_version')
def test_settings_update_error(self, mock_get_version, mock_requests_get):
mock_get_version.return_value = "1.0.0"

View File

@@ -3,7 +3,7 @@ from unittest.mock import MagicMock, patch, call
import pytest
from click.testing import CliRunner
import requests
import httpx
from crewai.cli.organization.main import OrganizationCommand
from crewai.cli.cli import org_list, switch, current
@@ -115,7 +115,7 @@ class TestOrganizationCommand(unittest.TestCase):
def test_list_organizations_api_error(self, mock_console):
self.org_command.plus_api_client = MagicMock()
self.org_command.plus_api_client.get_organizations.side_effect = (
requests.exceptions.RequestException("API Error")
httpx.HTTPError("API Error")
)
with pytest.raises(SystemExit):
@@ -201,8 +201,10 @@ class TestOrganizationCommand(unittest.TestCase):
@patch("crewai.cli.organization.main.console")
def test_list_organizations_unauthorized(self, mock_console):
mock_response = MagicMock()
mock_http_error = requests.exceptions.HTTPError(
"401 Client Error: Unauthorized", response=MagicMock(status_code=401)
mock_http_error = httpx.HTTPStatusError(
"401 Client Error: Unauthorized",
request=httpx.Request("GET", "http://test"),
response=httpx.Response(401),
)
mock_response.raise_for_status.side_effect = mock_http_error
@@ -219,8 +221,10 @@ class TestOrganizationCommand(unittest.TestCase):
@patch("crewai.cli.organization.main.console")
def test_switch_organization_unauthorized(self, mock_console):
mock_response = MagicMock()
mock_http_error = requests.exceptions.HTTPError(
"401 Client Error: Unauthorized", response=MagicMock(status_code=401)
mock_http_error = httpx.HTTPStatusError(
"401 Client Error: Unauthorized",
request=httpx.Request("GET", "http://test"),
response=httpx.Response(401),
)
mock_response.raise_for_status.side_effect = mock_http_error

View File

@@ -33,9 +33,9 @@ class TestPlusAPI(unittest.TestCase):
self.assertEqual(response, mock_response)
def assert_request_with_org_id(
self, mock_make_request, method: str, endpoint: str, **kwargs
self, mock_client_instance, method: str, endpoint: str, **kwargs
):
mock_make_request.assert_called_once_with(
mock_client_instance.request.assert_called_once_with(
method,
f"{os.getenv('CREWAI_PLUS_URL')}{endpoint}",
headers={
@@ -49,24 +49,25 @@ class TestPlusAPI(unittest.TestCase):
)
@patch("crewai.cli.plus_api.Settings")
@patch("requests.Session.request")
@patch("crewai.cli.plus_api.httpx.Client")
def test_login_to_tool_repository_with_org_uuid(
self, mock_make_request, mock_settings_class
self, mock_client_class, mock_settings_class
):
mock_settings = MagicMock()
mock_settings.org_uuid = self.org_uuid
mock_settings.enterprise_base_url = os.getenv('CREWAI_PLUS_URL')
mock_settings_class.return_value = mock_settings
# re-initialize Client
self.api = PlusAPI(self.api_key)
mock_client_instance = MagicMock()
mock_response = MagicMock()
mock_make_request.return_value = mock_response
mock_client_instance.request.return_value = mock_response
mock_client_class.return_value.__enter__.return_value = mock_client_instance
response = self.api.login_to_tool_repository()
self.assert_request_with_org_id(
mock_make_request, "POST", "/crewai_plus/api/v1/tools/login"
mock_client_instance, "POST", "/crewai_plus/api/v1/tools/login"
)
self.assertEqual(response, mock_response)
@@ -82,23 +83,23 @@ class TestPlusAPI(unittest.TestCase):
self.assertEqual(response, mock_response)
@patch("crewai.cli.plus_api.Settings")
@patch("requests.Session.request")
def test_get_tool_with_org_uuid(self, mock_make_request, mock_settings_class):
@patch("crewai.cli.plus_api.httpx.Client")
def test_get_tool_with_org_uuid(self, mock_client_class, mock_settings_class):
mock_settings = MagicMock()
mock_settings.org_uuid = self.org_uuid
mock_settings.enterprise_base_url = os.getenv('CREWAI_PLUS_URL')
mock_settings_class.return_value = mock_settings
# re-initialize Client
self.api = PlusAPI(self.api_key)
# Set up mock response
mock_client_instance = MagicMock()
mock_response = MagicMock()
mock_make_request.return_value = mock_response
mock_client_instance.request.return_value = mock_response
mock_client_class.return_value.__enter__.return_value = mock_client_instance
response = self.api.get_tool("test_tool_handle")
self.assert_request_with_org_id(
mock_make_request, "GET", "/crewai_plus/api/v1/tools/test_tool_handle"
mock_client_instance, "GET", "/crewai_plus/api/v1/tools/test_tool_handle"
)
self.assertEqual(response, mock_response)
@@ -130,18 +131,18 @@ class TestPlusAPI(unittest.TestCase):
self.assertEqual(response, mock_response)
@patch("crewai.cli.plus_api.Settings")
@patch("requests.Session.request")
def test_publish_tool_with_org_uuid(self, mock_make_request, mock_settings_class):
@patch("crewai.cli.plus_api.httpx.Client")
def test_publish_tool_with_org_uuid(self, mock_client_class, mock_settings_class):
mock_settings = MagicMock()
mock_settings.org_uuid = self.org_uuid
mock_settings.enterprise_base_url = os.getenv('CREWAI_PLUS_URL')
mock_settings_class.return_value = mock_settings
# re-initialize Client
self.api = PlusAPI(self.api_key)
# Set up mock response
mock_client_instance = MagicMock()
mock_response = MagicMock()
mock_make_request.return_value = mock_response
mock_client_instance.request.return_value = mock_response
mock_client_class.return_value.__enter__.return_value = mock_client_instance
handle = "test_tool_handle"
public = True
@@ -153,7 +154,6 @@ class TestPlusAPI(unittest.TestCase):
handle, public, version, description, encoded_file
)
# Expected params including organization_uuid
expected_params = {
"handle": handle,
"public": public,
@@ -164,7 +164,7 @@ class TestPlusAPI(unittest.TestCase):
}
self.assert_request_with_org_id(
mock_make_request, "POST", "/crewai_plus/api/v1/tools", json=expected_params
mock_client_instance, "POST", "/crewai_plus/api/v1/tools", json=expected_params
)
self.assertEqual(response, mock_response)
@@ -195,20 +195,19 @@ class TestPlusAPI(unittest.TestCase):
)
self.assertEqual(response, mock_response)
@patch("crewai.cli.plus_api.requests.Session")
def test_make_request(self, mock_session):
@patch("crewai.cli.plus_api.httpx.Client")
def test_make_request(self, mock_client_class):
mock_client_instance = MagicMock()
mock_response = MagicMock()
mock_session_instance = mock_session.return_value
mock_session_instance.request.return_value = mock_response
mock_client_instance.request.return_value = mock_response
mock_client_class.return_value.__enter__.return_value = mock_client_instance
response = self.api._make_request("GET", "test_endpoint")
mock_session.assert_called_once()
mock_session_instance.request.assert_called_once_with(
mock_client_class.assert_called_once_with(trust_env=False, verify=True)
mock_client_instance.request.assert_called_once_with(
"GET", f"{self.api.base_url}/test_endpoint", headers=self.api.headers
)
mock_session_instance.trust_env = False
self.assertEqual(response, mock_response)
@patch("crewai.cli.plus_api.PlusAPI._make_request")

View File

@@ -351,7 +351,7 @@ def test_publish_api_error(
mock_response = MagicMock()
mock_response.status_code = 500
mock_response.json.return_value = {"error": "Internal Server Error"}
mock_response.ok = False
mock_response.is_success = False
mock_publish.return_value = mock_response
with raises(SystemExit):

View File

@@ -3,7 +3,7 @@ import subprocess
import unittest
from unittest.mock import Mock, patch
import requests
import httpx
from crewai.cli.triggers.main import TriggersCommand
@@ -21,7 +21,7 @@ class TestTriggersCommand(unittest.TestCase):
@patch("crewai.cli.triggers.main.console.print")
def test_list_triggers_success(self, mock_console_print):
mock_response = Mock(spec=requests.Response)
mock_response = Mock(spec=httpx.Response)
mock_response.status_code = 200
mock_response.ok = True
mock_response.json.return_value = {
@@ -50,7 +50,7 @@ class TestTriggersCommand(unittest.TestCase):
@patch("crewai.cli.triggers.main.console.print")
def test_list_triggers_no_apps(self, mock_console_print):
mock_response = Mock(spec=requests.Response)
mock_response = Mock(spec=httpx.Response)
mock_response.status_code = 200
mock_response.ok = True
mock_response.json.return_value = {"apps": []}
@@ -81,7 +81,7 @@ class TestTriggersCommand(unittest.TestCase):
@patch("crewai.cli.triggers.main.console.print")
@patch.object(TriggersCommand, "_run_crew_with_payload")
def test_execute_with_trigger_success(self, mock_run_crew, mock_console_print):
mock_response = Mock(spec=requests.Response)
mock_response = Mock(spec=httpx.Response)
mock_response.status_code = 200
mock_response.ok = True
mock_response.json.return_value = {
@@ -99,7 +99,7 @@ class TestTriggersCommand(unittest.TestCase):
@patch("crewai.cli.triggers.main.console.print")
def test_execute_with_trigger_not_found(self, mock_console_print):
mock_response = Mock(spec=requests.Response)
mock_response = Mock(spec=httpx.Response)
mock_response.status_code = 404
mock_response.json.return_value = {"error": "Trigger not found"}
self.mock_client.get_trigger_payload.return_value = mock_response
@@ -159,7 +159,7 @@ class TestTriggersCommand(unittest.TestCase):
@patch("crewai.cli.triggers.main.console.print")
def test_execute_with_trigger_with_default_error_message(self, mock_console_print):
mock_response = Mock(spec=requests.Response)
mock_response = Mock(spec=httpx.Response)
mock_response.status_code = 404
mock_response.json.return_value = {}
self.mock_client.get_trigger_payload.return_value = mock_response

View File

@@ -437,17 +437,36 @@ def test_bedrock_aws_credentials_configuration():
"""
Test that AWS credentials configuration works properly
"""
aws_access_key_id = "test-access-key"
aws_secret_access_key = "test-secret-key"
aws_region_name = "us-east-1"
# Test with environment variables
with patch.dict(os.environ, {
"AWS_ACCESS_KEY_ID": "test-access-key",
"AWS_SECRET_ACCESS_KEY": "test-secret-key",
"AWS_DEFAULT_REGION": "us-east-1"
"AWS_ACCESS_KEY_ID": aws_access_key_id,
"AWS_SECRET_ACCESS_KEY": aws_secret_access_key,
"AWS_DEFAULT_REGION": aws_region_name
}):
llm = LLM(model="bedrock/anthropic.claude-3-5-sonnet-20241022-v2:0")
from crewai.llms.providers.bedrock.completion import BedrockCompletion
assert isinstance(llm, BedrockCompletion)
assert llm.region_name == "us-east-1"
assert llm.region_name == aws_region_name
assert llm.aws_access_key_id == aws_access_key_id
assert llm.aws_secret_access_key == aws_secret_access_key
# Test with litellm environment variables
with patch.dict(os.environ, {
"AWS_ACCESS_KEY_ID": aws_access_key_id,
"AWS_SECRET_ACCESS_KEY": aws_secret_access_key,
"AWS_REGION_NAME": aws_region_name
}):
llm = LLM(model="bedrock/anthropic.claude-3-5-sonnet-20241022-v2:0")
from crewai.llms.providers.bedrock.completion import BedrockCompletion
assert isinstance(llm, BedrockCompletion)
assert llm.region_name == aws_region_name
# Test with explicit credentials
llm_explicit = LLM(

View File

@@ -81,7 +81,7 @@ def test_create_llm_from_env_with_unaccepted_attributes() -> None:
"OPENAI_API_KEY": "fake-key",
"AWS_ACCESS_KEY_ID": "fake-access-key",
"AWS_SECRET_ACCESS_KEY": "fake-secret-key",
"AWS_REGION_NAME": "us-west-2",
"AWS_DEFAULT_REGION": "us-west-2",
},
):
llm = create_llm(llm_value=None)
@@ -89,7 +89,7 @@ def test_create_llm_from_env_with_unaccepted_attributes() -> None:
assert llm.model == "gpt-3.5-turbo"
assert not hasattr(llm, "AWS_ACCESS_KEY_ID")
assert not hasattr(llm, "AWS_SECRET_ACCESS_KEY")
assert not hasattr(llm, "AWS_REGION_NAME")
assert not hasattr(llm, "AWS_DEFAULT_REGION")
def test_create_llm_with_partial_attributes() -> None:

View File

@@ -1,3 +1,3 @@
"""CrewAI development tools."""
__version__ = "1.10.0a1"
__version__ = "1.9.3"

2
uv.lock generated
View File

@@ -1096,6 +1096,7 @@ dependencies = [
{ name = "appdirs" },
{ name = "chromadb" },
{ name = "click" },
{ name = "httpx" },
{ name = "instructor" },
{ name = "json-repair" },
{ name = "json5" },
@@ -1195,6 +1196,7 @@ requires-dist = [
{ name = "crewai-tools", marker = "extra == 'tools'", editable = "lib/crewai-tools" },
{ name = "docling", marker = "extra == 'docling'", specifier = "~=2.63.0" },
{ name = "google-genai", marker = "extra == 'google-genai'", specifier = "~=1.49.0" },
{ name = "httpx", specifier = "~=0.28.1" },
{ name = "httpx-auth", marker = "extra == 'a2a'", specifier = "~=0.23.1" },
{ name = "httpx-sse", marker = "extra == 'a2a'", specifier = "~=0.4.0" },
{ name = "ibm-watsonx-ai", marker = "extra == 'watson'", specifier = "~=1.3.39" },