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110 Commits

Author SHA1 Message Date
Devin AI
207079e562 Fix CSVKnowledgeSource token limit issue with batching
- Add batch_size parameter to BaseFileKnowledgeSource (default: 50)
- Modify _save_documents to process chunks in batches
- Add comprehensive tests for large file handling and batching
- Ensure backward compatibility with existing code

Fixes #3574

Co-Authored-By: João <joao@crewai.com>
2025-09-22 10:06:40 +00:00
Vini Brasil
aa8dc9d77f Add source to LLM Guardrail events (#3572)
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This commit adds the source attribute to LLM Guardrail event calls to
identify the Lite Agent or Task that executed the guardrail.
2025-09-22 11:58:00 +09:00
Jonathan Hill
9c1096dbdc fix: Make 'ready' parameter optional in _create_reasoning_plan function (#3561)
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* fix: Make 'ready' parameter optional in _create_reasoning_plan function

This PR fixes Issue #3466 where the _create_reasoning_plan function was missing
the 'ready' parameter when called by the LLM. The fix makes the 'ready' parameter
optional with a default value of False, which allows the function to be called
with only the 'plan' argument.

Fixes #3466

* Change default value of 'ready' parameter to True

---------

Co-authored-by: João Moura <joaomdmoura@gmail.com>
2025-09-20 22:57:18 -03:00
João Moura
47044450c0 Adding fallback to crew settings (#3562)
* Adding fallback to crew settings

* fix: resolve ruff and mypy issues in cli/config.py

---------

Co-authored-by: Greyson Lalonde <greyson.r.lalonde@gmail.com>
2025-09-20 22:54:36 -03:00
João Moura
0ee438c39d fix version (#3557) 2025-09-20 17:14:28 -03:00
Joao Moura
cbb9965bf7 preparing new version 2025-09-20 12:27:25 -07:00
João Moura
4951d30dd9 Dix issues with getting id (#3556)
* fix issues with getting id

* ignore linter

* fix: resolve ruff linting issues in tracing utils

---------

Co-authored-by: Greyson LaLonde <greyson.r.lalonde@gmail.com>
2025-09-20 15:29:25 -03:00
Greyson LaLonde
7426969736 chore: apply ruff linting fixes and type annotations to memory module
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Co-authored-by: Lorenze Jay <63378463+lorenzejay@users.noreply.github.com>
2025-09-19 22:20:13 -04:00
Greyson LaLonde
d879be8b66 chore: fix ruff linting issues in agents module
fix(agents): linting, import paths, cache key alignment, and static method
2025-09-19 22:11:21 -04:00
Greyson LaLonde
24b84a4b68 chore: apply ruff linting fixes to crews module 2025-09-19 22:02:22 -04:00
Greyson LaLonde
8e571ea8a7 chore: fix ruff linting and mypy issues in knowledge module
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2025-09-19 21:39:15 -04:00
Greyson LaLonde
2cfc4d37b8 chore: apply ruff linting fixes to events module
fix: apply ruff linting to events
2025-09-19 20:10:55 -04:00
Greyson LaLonde
f4abc41235 chore: apply ruff linting fixes to CLI module
fix: apply ruff fixes to CLI and update Okta provider test
2025-09-19 19:55:55 -04:00
Greyson LaLonde
de5d3c3ad1 chore: add pydantic.mypy plugin for better type checking 2025-09-19 19:23:33 -04:00
Lorenze Jay
c062826779 chore: update dependencies and versioning for CrewAI 0.193.0 (#3542)
* chore: update dependencies and versioning for CrewAI

- Bump `crewai-tools` dependency version from `0.71.0` to `0.73.0` in `pyproject.toml`.
- Update CrewAI version from `0.186.1` to `0.193.0` in `__init__.py`.
- Adjust dependency versions in CLI templates for crew, flow, and tool to reflect the new CrewAI version.

This update ensures compatibility with the latest features and improvements in CrewAI.

* remove embedchain mock

* fix: remove last embedchain mocks

* fix: remove langchain_openai from tests

---------

Co-authored-by: Greyson LaLonde <greyson.r.lalonde@gmail.com>
2025-09-19 16:01:55 -03:00
João Moura
9491fe8334 Adding Ability for user to get deeper observability (#3541)
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* feat(tracing): enhance first-time trace display and auto-open browser

* avoinding line breaking

* set tracing if user enables it

* linted

---------

Co-authored-by: lorenzejay <lorenzejaytech@gmail.com>
2025-09-18 21:47:09 -03:00
Greyson LaLonde
6f2ea013a7 docs: update RagTool references from EmbedChain to CrewAI native RAG (#3537)
* docs: update RagTool references from EmbedChain to CrewAI native RAG

* change ref to qdrant

* docs: update RAGTool to use Qdrant and add embedding_model example
2025-09-18 16:06:44 -07:00
Greyson LaLonde
39e8792ae5 fix: add l2 distance metric support for backward compatibility (#3540) 2025-09-18 18:36:33 -04:00
Lorenze Jay
2f682e1564 feat: update ChromaDB embedding function to use OpenAI API (#3538)
- Refactor the default embedding function to utilize OpenAI's embedding function with API key support.
- Import necessary OpenAI embedding function and configure it with the environment variable for the API key.
- Ensure compatibility with existing ChromaDB configuration model.
2025-09-18 14:50:35 -07:00
Greyson LaLonde
d4aa676195 feat: add configurable search parameters for RAG, knowledge, and memory (#3531)
- Add limit and score_threshold to BaseRagConfig, propagate to clients  
- Update default search params in RAG storage, knowledge, and memory (limit=5, threshold=0.6)  
- Fix linting (ruff, mypy, PERF203) and refactor save logic  
- Update tests for new defaults and ChromaDB behavior
2025-09-18 16:58:03 -04:00
Lorenze Jay
578fa8c2e4 Lorenze/ephemeral trace ask (#3530)
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* feat(tracing): implement first-time trace handling and improve event management

- Added FirstTimeTraceHandler for managing first-time user trace collection and display.
- Enhanced TraceBatchManager to support ephemeral trace URLs and improved event buffering.
- Updated TraceCollectionListener to utilize the new FirstTimeTraceHandler.
- Refactored type annotations across multiple files for consistency and clarity.
- Improved error handling and logging for trace-related operations.
- Introduced utility functions for trace viewing prompts and first execution checks.

* brought back crew finalize batch events

* refactor(trace): move instance variables to __init__ in TraceBatchManager

- Refactored TraceBatchManager to initialize instance variables in the constructor instead of as class variables.
- Improved clarity and encapsulation of the class state.

* fix(tracing): improve error handling in user data loading and saving

- Enhanced error handling in _load_user_data and _save_user_data functions to log warnings for JSON decoding and file access issues.
- Updated documentation for trace usage to clarify the addition of tracing parameters in Crew and Flow initialization.
- Refined state management in Flow class to ensure proper handling of state IDs when persistence is enabled.

* add some tests

* fix test

* fix tests

* refactor(tracing): enhance user input handling for trace viewing

- Replaced signal-based timeout handling with threading for user input in prompt_user_for_trace_viewing function.
- Improved user experience by allowing a configurable timeout for viewing execution traces.
- Updated tests to mock threading behavior and verify timeout handling correctly.

* fix(tracing): improve machine ID retrieval with error handling

- Added error handling to the _get_machine_id function to log warnings when retrieving the machine ID fails.
- Ensured that the function continues to provide a stable, privacy-preserving machine fingerprint even in case of errors.

* refactor(flow): streamline state ID assignment in Flow class

- Replaced direct attribute assignment with setattr for improved flexibility in handling state IDs.
- Enhanced code readability by simplifying the logic for setting the state ID when persistence is enabled.
2025-09-18 10:17:34 -07:00
Rip&Tear
6f5af2b27c Update CodeQL workflow to ignore specific paths (#3534)
Code QL, when configured through the GUI, does not allow for advanced configuration. This PR upgrades from an advanced file-based config which allows us to exclude certain paths.
2025-09-18 23:26:15 +08:00
Greyson LaLonde
8ee3cf4874 test: fix flaky agent repeated tool usage test (#3533)
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- Make assertion resilient to race condition with max iterations in CI  
- Add investigation notes and TODOs for deterministic executor flow
2025-09-17 22:00:32 -04:00
Greyson LaLonde
f2d3fd0c0f fix(events): add missing event exports to __init__.py (#3532) 2025-09-17 21:50:27 -04:00
Greyson LaLonde
f28e78c5ba refactor: unify rag storage with instance-specific client support (#3455)
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- ignore line length errors globally
- migrate knowledge/memory and crew query_knowledge to `SearchResult`
- remove legacy chromadb utils; fix empty metadata handling
- restore openai as default embedding provider; support instance-specific clients
- update and fix tests for `SearchResult` migration and rag changes
2025-09-17 14:46:54 -04:00
Greyson LaLonde
81bd81e5f5 fix: handle model parameter in OpenAI adapter initialization (#3510)
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2025-09-12 17:31:53 -04:00
Vidit Ostwal
1b00cc71ef Dropping messages from metadata in Mem0 Storage (#3390)
* Dropped messages from metadata and added user-assistant interaction directly

* Fixed test cases for this

* Fixed static type checking issue

* Changed logic to take latest user and assistant messages

* Added default value to be string

* Linting checks

* Removed duplication of tool calling

* Fixed Linting Changes

* Ruff check

* Removed console formatter file from commit

* Linting fixed

* Linting checks

* Ignoring missing imports error

* Added suggested changes

* Fixed import untyped error
2025-09-12 15:25:29 -04:00
Greyson LaLonde
45d0c9912c chore: add type annotations and docstrings to openai agent adapters (#3505) 2025-09-12 10:41:39 -04:00
Greyson LaLonde
1f1ab14b07 fix: resolve test duration cache issues in CI workflows (#3506)
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2025-09-12 08:38:47 -04:00
Lucas Gomide
1a70f1698e feat: add thread-safe platform context management (#3502)
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Co-authored-by: Greyson LaLonde <greyson.r.lalonde@gmail.com>
2025-09-11 17:32:51 -04:00
Greyson LaLonde
8883fb656b feat(tests): add duration caching for pytest-split
- Cache test durations for optimized splitting
2025-09-11 15:16:05 -04:00
Greyson LaLonde
79d65e55a1 chore: add type annotations and docstrings to langgraph adapters (#3503) 2025-09-11 13:06:44 -04:00
Lorenze Jay
dde76bfec5 chore: bump CrewAI version to 0.186.1 and update dependencies in CLI templates (#3499)
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- Updated CrewAI version from 0.186.0 to 0.186.1 in `__init__.py`.
- Updated `crewai[tools]` dependency version in `pyproject.toml` for crew, flow, and tool templates to reflect the new CrewAI version.
2025-09-10 17:01:19 -07:00
Lorenze Jay
f554123af6 fix (#3498) 2025-09-10 16:55:25 -07:00
Lorenze Jay
4336e945b8 chore: update dependencies and version for CrewAI (#3497)
- Updated `crewai-tools` dependency from version 0.69.0 to 0.71.0 in `pyproject.toml`.
- Bumped CrewAI version from 0.177.0 to 0.186.0 in `__init__.py`.
- Updated dependency versions in CLI templates for crew, flow, and tool to reflect the new CrewAI version.
2025-09-10 16:03:58 -07:00
Lorenze Jay
75b916c85a Lorenze/fix tool call twice (#3495)
* test: add test to ensure tool is called only once during crew execution

- Introduced a new test case to validate that the counting_tool is executed exactly once during crew execution.
- Created a CountingTool class to track execution counts and log call history.
- Enhanced the test suite with a YAML cassette for consistent tool behavior verification.

* ensure tool function called only once

* refactor: simplify error handling in CrewStructuredTool

- Removed unnecessary try-except block around the tool function call to streamline execution flow.
- Ensured that the tool function is called directly, improving readability and maintainability.

* linted

* need to ignore for now as we cant infer the complex generic type within pydantic create_model_func

* fix tests
2025-09-10 15:20:21 -07:00
Greyson LaLonde
01be26ce2a chore: add build-cache, update jobs, remove redundant security check
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- Build and cache uv dependencies; update type-checker, tests, and linter to use cache  
- Remove separate security-checker
- Add explicit workflow permissions for compliance  
- Remove pull_request trigger from build-cache workflow
2025-09-10 13:02:24 -04:00
Greyson LaLonde
c3ad5887ef chore: add type annotations to utilities module (#3484)
- Update to Python 3.10+ typing across LLM, callbacks, storage, and errors
- Complete typing updates for crew_chat and hitl
- Add stop attr to mock LLM, suppress test warnings
- Add type-ignore for aisuite import
2025-09-10 10:56:17 -04:00
Lucas Gomide
260b49c10a fix: support to define MPC connection timeout on CrewBase instance (#3465)
* fix: support to define MPC connection timeout on CrewBase instance

* fix: resolve linter issues

* chore: ignore specific rule N802 on CrewBase class

* fix: ignore untyped import
2025-09-10 09:58:46 -04:00
Greyson LaLonde
1dc4f2e897 chore: add typing and docstrings to base_token_process module (#3486)
Co-authored-by: Lucas Gomide <lucaslg200@gmail.com>
2025-09-10 09:23:39 -04:00
Greyson LaLonde
b126ab22dd chore: refactor telemetry module with utility functions and modern typing (#3485)
Co-authored-by: Lucas Gomide <lucaslg200@gmail.com>
2025-09-10 09:18:21 -04:00
Greyson LaLonde
079cb72f6e chore: update typing in types module to Python 3.10+ syntax (#3482)
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2025-09-10 09:07:36 -04:00
Greyson LaLonde
83682d511f chore: modernize LLM interface typing and add constants (#3483)
* chore: update LLM interfaces to Python 3.10+ typing

* fix: add missing stop attribute to mock LLM and improve test infrastructure

* fix: correct type ignore comment for aisuite import
2025-09-10 08:30:49 -04:00
Samarth Rawat
6676d94ba1 Doc Fix: fixed number of memory types (#3288)
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* Update memory.mdx

* Update memory.mdx

---------

Co-authored-by: Tony Kipkemboi <iamtonykipkemboi@gmail.com>
2025-09-09 14:11:56 -04:00
Greyson LaLonde
d5126d159b chore: improve typing and docs in agents leaf files (#3461)
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- Add typing and Google-style docstrings to agents leaf files
- Add TODO notes
2025-09-08 11:57:34 -04:00
Greyson LaLonde
fa06aea8d5 chore: modernize security module typing (#3469)
- Disable E501, apply Ruff formatting
- Update typing (Self, BeforeValidator), remove dead code
- Convert Fingerprint to Pydantic dataclass and fix serialization/copy behavior
- Add TODO for dynamic namespace config
2025-09-08 11:52:59 -04:00
Greyson LaLonde
f936e0f69b chore: enhance typing and documentation in tasks module (#3467)
- Disable E501 line length linting rule
- Add Google-style docstrings to tasks leaf file
- Modernize typing and docs in task_output.py
- Improve typing and documentation in conditional_task.py
2025-09-08 11:42:23 -04:00
Greyson LaLonde
37c5e88d02 ci: configure pre-commit hooks and github actions to use uv run (#3479) 2025-09-08 11:30:28 -04:00
Kim
1a96ed7b00 fix: rebranding of Azure AI Studio (Azure OpenAI Studio) to Azure AI Foundry (#3424)
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Co-authored-by: Tony Kipkemboi <iamtonykipkemboi@gmail.com>
2025-09-05 20:42:05 -04:00
Tony Kipkemboi
1a1bb0ca3d docs: Docs updates (#3459)
* docs(cli): document device-code login and config reset guidance; renumber sections

* docs(cli): fix duplicate numbering (renumber Login/API Keys/Configuration sections)

* docs: Fix webhook documentation to include meta dict in all webhook payloads

- Add note explaining that meta objects from kickoff requests are included in all webhook payloads
- Update webhook examples to show proper payload structure including meta field
- Fix webhook examples to match actual API implementation
- Apply changes to English, Korean, and Portuguese documentation

Resolves the documentation gap where meta dict passing to webhooks was not documented despite being implemented in the API.

* WIP: CrewAI docs theme, changelog, GEO, localization

* docs(cli): fix merge markers; ensure mode: "wide"; convert ASCII tables to Markdown (en/pt-BR/ko)

* docs: add group icons across locales; split Automation/Integrations; update tools overviews and links
2025-09-05 17:40:11 -04:00
Mike Plachta
99b79ab20d docs: move Bedrock tool docs to integration folder and add CrewAI automation tool docs (#3403)
Co-authored-by: Lorenze Jay <63378463+lorenzejay@users.noreply.github.com>
Co-authored-by: Tony Kipkemboi <iamtonykipkemboi@gmail.com>
2025-09-05 15:12:35 -04:00
Mike Plachta
80974fec6c docs: expand webhook event types with detailed categorization and descriptions (#3369)
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2025-09-05 14:57:01 -04:00
Greyson LaLonde
30b9cdd944 chore: expand ruff rules with comprehensive linting (#3453) 2025-09-05 14:38:56 -04:00
Greyson LaLonde
610c1f70c0 chore: relax mypy configuration and exclude tests from CI (#3452) 2025-09-05 10:00:05 -04:00
Greyson LaLonde
ab82da02f9 refactor: cleanup crew agent executor (#3440)
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refactor: cleanup crew agent executor & add docs

- Remove dead code, unused imports, and obsolete methods
- Modernize with updated type hints and static _format_prompt
- Add docstrings for clarity
2025-09-04 15:32:47 -04:00
Lorenze Jay
f0def350a4 chore: update crewAI and tools dependencies to latest versions (#3444)
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- Updated `crewai-tools` dependency from version 0.65.0 to 0.69.0 in `pyproject.toml` and `uv.lock`.
- Bumped crewAI version from 0.175.0 to 0.177.0 in `__init__.py`.
- Updated dependency versions in CLI templates for crew, flow, and tool projects to reflect the new crewAI version.
2025-09-03 17:27:05 -07:00
Lorenze Jay
f4f32b5f7f fix: suppress Pydantic deprecation warnings in initialization (#3443)
* fix: suppress Pydantic deprecation warnings in initialization

- Implemented a function to filter out Pydantic deprecation warnings, enhancing the user experience by preventing unnecessary warning messages during execution.
- Removed the previous warning filter setup to streamline the warning suppression process.
- Updated the User-Agent header formatting for consistency.

* fix type check

* dropped

* fix: update type-checker workflow and suppress warnings

- Updated the Python version matrix in the type-checker workflow to use double quotes for consistency.
- Added the `# type: ignore[assignment]` comment to the warning suppression assignment in `__init__.py` to address type checking issues.
- Ensured that the mypy command in the workflow allows for untyped calls and generics, enhancing type checking flexibility.

* better
2025-09-03 16:36:50 -07:00
Tony Kipkemboi
49a5ae0e16 Docs/release 0.175.0 docs (#3441)
* docs(install): note OpenAI SDK requirement openai>=1.13.3 for 0.175.0

* docs(cli): document device-code login and config reset guidance; renumber sections

* docs(flows): document conditional @start and resumable execution semantics

* docs(tasks): move max_retries to deprecation note under attributes table

* docs: provider-neutral RAG client config; entity memory batching; trigger payload note; tracing batch manager

* docs(cli): fix duplicate numbering (renumber Login/API Keys/Configuration sections)
2025-09-03 17:27:11 -04:00
Lucas Gomide
d31ffdbb90 docs: update Enterprise Action Auth Token section docs (#3437)
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2025-09-02 17:36:28 -04:00
Greyson LaLonde
4555ada91e fix(ruff): remove Python 3.12+ only rules for compatibility (#3436) 2025-09-02 14:15:25 -04:00
Greyson LaLonde
92d71f7f06 chore: migrate CI workflows to uv and update dev tooling (#3426)
chore(dev): update tooling & CI workflows

- Upgrade ruff, mypy (strict), pre-commit; add hooks, stubs, config consolidation
- Add bandit to dev deps and update uv.lock
- Enhance ruff rules (modern Python style, B006 for mutable defaults)
- Update workflows to use uv, matrix strategy, and changed-file type checking
- Include tests in type checking; fix job names and add summary job for branch protection
2025-09-02 12:35:02 -04:00
ZhangYier
dada9f140f fix: README.md example link 404 (#3432)
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Co-authored-by: Tony Kipkemboi <iamtonykipkemboi@gmail.com>
2025-09-02 10:29:40 -04:00
Greyson LaLonde
878c1a649a refactor: Move events module to crewai.events (#3425)
refactor(events): relocate events module & update imports

- Move events from utilities/ to top-level events/ with types/, listeners/, utils/ structure
- Update all source/tests/docs to new import paths
- Add backwards compatibility stubs in crewai.utilities.events with deprecation warnings
- Restore test mocks and fix related test imports
2025-09-02 10:06:42 -04:00
Greyson LaLonde
1b1a8fdbf4 fix: replace mutable default arguments with None (#3429)
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2025-08-31 18:57:45 -04:00
Lorenze Jay
2633b33afc fix: enhance LLM event handling with task and agent metadata (#3422)
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* fix: enhance LLM event handling with task and agent metadata

- Added `from_task` and `from_agent` parameters to LLM event emissions for improved traceability.
- Updated `_send_events_to_backend` method in TraceBatchManager to return status codes for better error handling.
- Modified `CREWAI_BASE_URL` to remove trailing slash for consistency.
- Improved logging and graceful failure handling in event sending process.

* drop print
2025-08-29 13:48:49 -07:00
Greyson LaLonde
e4c4b81e63 chore: refactor parser & constants, improve tools_handler, update tests
- Move parser constants to dedicated module with pre-compiled regex
- Refactor CrewAgentParser to module functions; remove unused params
- Improve tools_handler with instance attributes
- Update tests to use module-level parser functions
2025-08-29 14:35:08 -04:00
Greyson LaLonde
ec1eff02a8 fix: achieve parity between rag package and current impl (#3418)
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- Sanitize ChromaDB collection names and use original dir naming
- Add persistent client with file locking to the ChromaDB factory
- Add upsert support to the ChromaDB client
- Suppress ChromaDB deprecation warnings for `model_fields`
- Extract `suppress_logging` into shared `logger_utils`
- Update tests to reflect upsert behavior
- Docs: add additional note
2025-08-28 11:22:36 -04:00
Lorenze Jay
0f1b764c3e chore: update crewAI version and dependencies to 0.175.0 and tools to 0.65.0 (#3417)
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* Bump crewAI version from 0.165.1 to 0.175.0 in __init__.py.
* Update tools dependency from 0.62.1 to 0.65.0 in pyproject.toml and uv.lock files.
* Reflect changes in CLI templates for crew, flow, and tool configurations.
2025-08-27 19:33:32 -07:00
Lorenze Jay
6ee9db1d4a fix: enhance PlusAPI and TraceBatchManager with timeout handling and graceful failure logging (#3416)
* Added timeout parameters to PlusAPI trace event methods for improved reliability.
* Updated TraceBatchManager to handle None responses gracefully, logging warnings instead of errors.
* Improved logging messages to provide clearer context during trace batch initialization and event sending failures.
2025-08-27 18:43:03 -07:00
Greyson LaLonde
109de91d08 fix: batch entity memory items to reduce redundant operations (#3409)
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* fix: batch save entity memory items to reduce redundant operations

* test: update memory event count after entity batch save implementation
2025-08-27 10:47:20 -04:00
Erika Shorten
92b70e652d Add hybrid search alpha parameter to the docs (#3397)
Co-authored-by: Tony Kipkemboi <iamtonykipkemboi@gmail.com>
2025-08-27 10:36:39 -04:00
Heitor Carvalho
fc3f2c49d2 chore: remove auth0 and the need of typing the email on 'crewai login' (#3408)
* Remove the need of typing the email on 'crewai login'

* Remove auth0 constants, update tests
2025-08-27 10:12:57 -04:00
Lucas Gomide
88d2968fd5 chore: add deprecation notices to Task.max_retries (#3379)
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2025-08-26 17:24:58 -04:00
Lorenze Jay
7addda9398 Lorenze/better tracing events (#3382)
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* feat: implement tool usage limit exception handling

- Introduced `ToolUsageLimitExceeded` exception to manage maximum usage limits for tools.
- Enhanced `CrewStructuredTool` to check and raise this exception when the usage limit is reached.
- Updated `_run` and `_execute` methods to include usage limit checks and handle exceptions appropriately, improving reliability and user feedback.

* feat: enhance PlusAPI and ToolUsage with task metadata

- Removed the `send_trace_batch` method from PlusAPI to streamline the API.
- Added timeout parameters to trace event methods in PlusAPI for improved reliability.
- Updated ToolUsage to include task metadata (task name and ID) in event emissions, enhancing traceability and context during tool usage.
- Refactored event handling in LLM and ToolUsage events to ensure task information is consistently captured.

* feat: enhance memory and event handling with task and agent metadata

- Added task and agent metadata to various memory and event classes, improving traceability and context during memory operations.
- Updated the `ContextualMemory` and `Memory` classes to associate tasks and agents, allowing for better context management.
- Enhanced event emissions in `LLM`, `ToolUsage`, and memory events to include task and agent information, facilitating improved debugging and monitoring.
- Refactored event handling to ensure consistent capture of task and agent details across the system.

* drop

* refactor: clean up unused imports in memory and event modules

- Removed unused TYPE_CHECKING imports from long_term_memory.py to streamline the code.
- Eliminated unnecessary import from memory_events.py, enhancing clarity and maintainability.

* fix memory tests

* fix task_completed payload

* fix: remove unused test agent variable in external memory tests

* refactor: remove unused agent parameter from Memory class save method

- Eliminated the agent parameter from the save method in the Memory class to streamline the code and improve clarity.
- Updated the TraceBatchManager class by moving initialization of attributes into the constructor for better organization and readability.

* refactor: enhance ExecutionState and ReasoningEvent classes with optional task and agent identifiers

- Added optional `current_agent_id` and `current_task_id` attributes to the `ExecutionState` class for better tracking of agent and task states.
- Updated the `from_task` attribute in the `ReasoningEvent` class to use `Optional[Any]` instead of a specific type, improving flexibility in event handling.

* refactor: update ExecutionState class by removing unused agent and task identifiers

- Removed the `current_agent_id` and `current_task_id` attributes from the `ExecutionState` class to simplify the code and enhance clarity.
- Adjusted the import statements to include `Optional` for better type handling.

* refactor: streamline LLM event handling in LiteAgent

- Removed unused LLM event emissions (LLMCallStartedEvent, LLMCallCompletedEvent, LLMCallFailedEvent) from the LiteAgent class to simplify the code and improve performance.
- Adjusted the flow of LLM response handling by eliminating unnecessary event bus interactions, enhancing clarity and maintainability.

* flow ownership and not emitting events when a crew is done

* refactor: remove unused agent parameter from ShortTermMemory save method

- Eliminated the agent parameter from the save method in the ShortTermMemory class to streamline the code and improve clarity.
- This change enhances the maintainability of the memory management system by reducing unnecessary complexity.

* runtype check fix

* fixing tests

* fix lints

* fix: update event assertions in test_llm_emits_event_with_lite_agent

- Adjusted the expected counts for completed and started events in the test to reflect the correct behavior of the LiteAgent.
- Updated assertions for agent roles and IDs to match the expected values after recent changes in event handling.

* fix: update task name assertions in event tests

- Modified assertions in `test_stream_llm_emits_event_with_task_and_agent_info` and `test_llm_emits_event_with_task_and_agent_info` to use `task.description` as a fallback for `task.name`. This ensures that the tests correctly validate the task name even when it is not explicitly set.

* fix: update test assertions for output values and improve readability

- Updated assertions in `test_output_json_dict_hierarchical` to reflect the correct expected score value.
- Enhanced readability of assertions in `test_output_pydantic_to_another_task` and `test_key` by formatting the error messages for clarity.
- These changes ensure that the tests accurately validate the expected outputs and improve overall code quality.

* test fixes

* fix crew_test

* added another fixture

* fix: ensure agent and task assignments in contextual memory are conditional

- Updated the ContextualMemory class to check for the existence of short-term, long-term, external, and extended memory before assigning agent and task attributes. This prevents potential attribute errors when memory types are not initialized.
2025-08-26 09:09:46 -07:00
Greyson LaLonde
4b4a119a9f refactor: simplify rag client initialization (#3401)
* Simplified Qdrant and ChromaDB client initialization
* Refactored factory structure and updated tests accordingly
2025-08-26 08:54:51 -04:00
Greyson LaLonde
869bb115c8 Qdrant RAG Provider Support (#3400)
* Added Qdrant provider support with factory, config, and protocols
* Improved default embeddings and type definitions
* Fixed ChromaDB factory embedding assignment
2025-08-26 08:44:02 -04:00
Greyson LaLonde
7ac482c7c9 feat: rag configuration with optional dependency support (#3394)
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### RAG Config System

* Added ChromaDB client creation via config with sensible defaults
* Introduced optional imports and shared RAG config utilities/schema
* Enabled embedding function support with ChromaDB provider integration
* Refactored configs for immutability and stronger type safety
* Removed unused code and expanded test coverage
2025-08-26 00:00:22 -04:00
Greyson LaLonde
2e4bd3f49d feat: qdrant generic client (#3377)
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### Qdrant Client

* Add core client with collection, search, and document APIs (sync + async)
* Refactor utilities, types, and vector params (default 384-dim)
* Improve error handling with `ClientMethodMismatchError`
* Add score normalization, async embeddings, and optional `qdrant-client` dep
* Expand tests and type safety throughout
2025-08-25 16:02:25 -04:00
Greyson LaLonde
c02997d956 Add import utilities for optional dependencies (#3389)
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2025-08-24 22:57:44 -04:00
Heitor Carvalho
f96b779df5 feat: reset tokens on crewai config reset (#3365)
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2025-08-22 16:16:42 -04:00
Greyson LaLonde
842bed4e9c feat: chromadb generic client (#3374)
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Add ChromaDB client implementation with async support

- Implement core collection operations (create, get_or_create, delete)
- Add search functionality with cosine similarity scoring
- Include both sync and async method variants
- Add type safety with NamedTuples and TypeGuards
- Extract utility functions to separate modules
- Default to cosine distance metric for text similarity
- Add comprehensive test coverage

TODO:
- l2, ip score calculations are not settled on
2025-08-21 18:18:46 -04:00
Lucas Gomide
1217935b31 feat: add docs about Automation triggers (#3375)
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2025-08-20 22:02:47 -04:00
Greyson LaLonde
641c156c17 fix: address flaky tests (#3363)
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fix: resolve flaky tests and race conditions in test suite

- Fix telemetry/event tests by patching class methods instead of instances
- Use unique temp files/directories to prevent CI race conditions
- Reset singleton state between tests
- Mock embedchain.Client.setup() to prevent JSON corruption
- Rename test files to test_*.py convention
- Move agent tests to tests/agents directory
- Fix repeated tool usage detection
- Remove database-dependent tools causing initialization errors
2025-08-20 13:34:09 -04:00
Tony Kipkemboi
7fdf9f9290 docs: fix API Reference OpenAPI sources and redirects (#3368)
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* docs: fix API Reference OpenAPI sources and redirects; clarify training data usage; add Mermaid diagram; correct CLI usage and notes

* docs(mintlify): use explicit openapi {source, directory} with absolute paths to fix branch deployment routing

* docs(mintlify): add explicit endpoint MDX pages and include in nav; keep OpenAPI auto-gen as fallback

* docs(mintlify): remove OpenAPI Endpoints groups; add localized MDX endpoint pages for pt-BR and ko
2025-08-20 11:55:35 -04:00
Greyson LaLonde
c0d2bf4c12 fix: flow listener resumability for HITL and cyclic flows (#3322)
* fix: flow listener resumability for HITL and cyclic flows

- Add resumption context flag to distinguish HITL resumption from cyclic execution
- Skip method re-execution only during HITL resumption, not for cyclic flows
- Ensure cyclic flows like test_cyclic_flow continue to work correctly

* fix: prevent duplicate execution of conditional start methods in flows

* fix: resolve type error in flow.py line 1040 assignment
2025-08-20 10:06:18 -04:00
Greyson LaLonde
ed187b495b feat: centralize embedding types and create base client (#3246)
feat: add RAG system foundation with generic vector store support

- Add BaseClient protocol for vector stores
- Move BaseRAGStorage to rag/core
- Centralize embedding types in embeddings/types.py
- Remove unused storage models
2025-08-20 09:35:27 -04:00
Wajeeh ul Hassan
2773996b49 fix: revert pin openai<1.100.0 to openai>=1.13.3 (#3364) 2025-08-20 09:16:26 -04:00
Damian Silbergleith
95923b78c6 feat: display task name in verbose output (#3308)
* feat: display task name in verbose output

- Modified event_listener.py to pass task names to the formatter
- Updated console_formatter.py to display task names when available
- Maintains backward compatibility by showing UUID for tasks without names
- Makes verbose output more informative and readable

🤖 Generated with [Claude Code](https://claude.ai/code)

Co-Authored-By: Claude <noreply@anthropic.com>

* fix: remove unnecessary f-string prefixes in console formatter

Remove extraneous f prefixes from string literals without placeholders
in console_formatter.py to resolve ruff F541 linting errors.

🤖 Generated with [Claude Code](https://claude.ai/code)

Co-Authored-By: Claude <noreply@anthropic.com>

---------

Co-authored-by: Claude <noreply@anthropic.com>
2025-08-20 08:43:05 -04:00
Lucas Gomide
7065ad4336 feat: adding additional parameter to Flow' start methods (#3356)
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* feat: adding additional parameter to Flow' start methods

When the `crewai_trigger_payload` parameter exists in the input Flow, we will add it in the start Flow methods as parameter

* fix: support crewai_trigger_payload in async Flow start methods
2025-08-19 17:32:19 -04:00
Lorenze Jay
d6254918fd Lorenze/max retry defaults tools (#3362)
* feat: enhance BaseTool and CrewStructuredTool with usage tracking

This commit introduces a mechanism to track the usage count of tools within the CrewAI framework. The `BaseTool` class now includes a `_increment_usage_count` method that updates the current usage count, which is also reflected in the associated `CrewStructuredTool`. Additionally, a new test has been added to ensure that the maximum usage count is respected when invoking tools, enhancing the overall reliability and functionality of the tool system.

* feat: add max usage count feature to tools documentation

This commit introduces a new section in the tools overview documentation that explains the maximum usage count feature for tools within the CrewAI framework. Users can now set a limit on how many times a tool can be used, enhancing control over tool usage. An example of implementing the `FileReadTool` with a maximum usage count is also provided, improving the clarity and usability of the documentation.

* undo field string
2025-08-19 10:44:55 -07:00
Heitor Carvalho
95e3d6db7a fix: add 'tool' section migration when running crewai update (#3341)
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2025-08-19 08:11:30 -04:00
Lorenze Jay
d7f8002baa chore: update crewAI version to 0.165.1 and tools dependency in templates (#3359) (#3359)
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2025-08-19 00:06:31 -03:00
Lorenze Jay
d743e12a06 refactor: streamline tracing condition checks and clean up deprecated warnings (#3358)
This commit simplifies the conditions for enabling tracing in both the Crew and Flow classes by removing the redundant call to `on_first_execution_tracing_confirmation()`. Additionally, it removes deprecated warning filters related to Pydantic in the KnowledgeStorage and RAGStorage classes, improving code clarity and maintainability.
2025-08-18 19:56:00 -07:00
Lorenze Jay
6068fe941f chore: update crewAI version to 0.165.0 and tools dependency to 0.62.1 (#3357) 2025-08-18 18:25:59 -07:00
Lucas Gomide
2a0cefc98b feat: pin openai<1.100.0 due ResponseTextConfigParam import issue (#3355)
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2025-08-18 18:31:18 -04:00
Lucas Gomide
a4f65e4870 chore: renaming inject_trigger_input to allow_crewai_trigger_context (#3353)
* chore: renaming inject_trigger_input to allow_crewai_trigger_context

* test: add missing cassetes
2025-08-18 17:57:21 -04:00
Lorenze Jay
a1b3edd79c Refactor tracing logic to consolidate conditions for enabling tracing… (#3347)
* Refactor tracing logic to consolidate conditions for enabling tracing in Crew class and update TraceBatchManager to handle ephemeral batches more effectively. Added tests for trace listener handling of both ephemeral and authenticated user batches.

* drop print

* linted

* refactor: streamline ephemeral handling in TraceBatchManager

This commit removes the ephemeral parameter from the _send_events_to_backend and _finalize_backend_batch methods, replacing it with internal logic that checks the current batch's ephemeral status. This change simplifies the method signatures and enhances the clarity of the code by directly using the is_current_batch_ephemeral attribute for conditional logic.
2025-08-18 14:16:51 -07:00
Lucas Gomide
80b3d9689a Auto inject crewai_trigger_payload (#3351)
* feat: add props to inject trigger payload

* feat: auto-inject trigger_input in the first crew task
2025-08-18 16:36:08 -04:00
Vini Brasil
ec03a53121 Add example to Tool Repository docs (#3352) 2025-08-18 13:19:35 -07:00
Vini Brasil
2fdf3f3a6a Move Chroma lockfile to db/ (#3342)
This commit fixes an issue where using Chroma would spam lockfiles over
the root path of the crew.
2025-08-18 11:00:50 -07:00
Greyson LaLonde
1d3d7ebf5e fix: convert XMLSearchTool config values to strings for configparser compatibility (#3344) 2025-08-18 13:23:58 -04:00
Gabe Milani
2c2196f415 fix: flaky test with PytestUnraisableExceptionWarning (#3346) 2025-08-18 14:07:51 -03:00
Gabe Milani
c9f30b175c chore: ignore deprecation warning from chromadb (#3328)
* chore: ignore deprecation warning from chromadb

* adding TODO: in the comment
2025-08-18 13:24:11 -03:00
Greyson LaLonde
a17b93a7f8 Mock telemetry in pytest tests (#3340)
* Add telemetry mocking for pytest tests

- Mock telemetry by default for all tests except telemetry-specific tests
- Add @pytest.mark.telemetry marker for real telemetry tests
- Reduce test overhead and improve isolation

* Fix telemetry test isolation

- Properly isolate telemetry tests from mocking environment
- Preserve API keys and other necessary environment variables
- Ensure telemetry tests can run with real telemetry instances
2025-08-18 11:55:30 -04:00
namho kim
0d3e462791 fix: Revised Korean translation and sentence structure improvement (#3337)
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2025-08-18 10:46:13 -04:00
Greyson LaLonde
947c9552f0 chore: remove AgentOps integration (#3334)
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2025-08-17 23:07:41 -04:00
Lorenze Jay
04a03d332f Lorenze/emphemeral tracing (#3323)
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* for ephemeral traces

* default false

* simpler and consolidated

* keep raising exception but catch it and continue if its for trace batches

* cleanup

* more cleanup

* not using logger

* refactor: rename TEMP_TRACING_RESOURCE to EPHEMERAL_TRACING_RESOURCE for clarity and consistency in PlusAPI; update related method calls accordingly

* default true

* drop print
2025-08-15 13:37:16 -07:00
Vidit Ostwal
992e093610 Update Docs: Added Mem0 integration with Short Term and Entity Memory (#3293)
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* Added Mem0 integration with Short Term and Entity Memory

* Flaky test case of telemetry
2025-08-14 22:50:24 -04:00
Lucas Gomide
07f8e73958 feat: include exchanged agent messages into ExternalMemory metadata (#3290)
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2025-08-14 09:41:09 -04:00
Lorenze Jay
66c2fa1623 chore: update crewAI and tools dependencies to version 0.159.0 and 0.62.0 respectively (#3318)
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- Bump crewAI version from 0.157.0 to 0.159.0
- Update tools dependency from 0.60.0 to 0.62.0 in pyproject.toml and uv.lock
- Ensure compatibility with the latest features and improvements in the tools package
2025-08-13 16:52:58 -07:00
864 changed files with 33015 additions and 7464 deletions

46
.github/workflows/build-uv-cache.yml vendored Normal file
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@@ -0,0 +1,46 @@
name: Build uv cache
on:
push:
branches:
- main
paths:
- "uv.lock"
- "pyproject.toml"
workflow_dispatch:
permissions:
contents: read
jobs:
build-cache:
runs-on: ubuntu-latest
strategy:
matrix:
python-version: ["3.10", "3.11", "3.12", "3.13"]
steps:
- name: Checkout repository
uses: actions/checkout@v4
- name: Install uv
uses: astral-sh/setup-uv@v6
with:
version: "0.8.4"
python-version: ${{ matrix.python-version }}
enable-cache: false
- name: Install dependencies and populate cache
run: |
echo "Building global UV cache for Python ${{ matrix.python-version }}..."
uv sync --all-groups --all-extras --no-install-project
echo "Cache populated successfully"
- name: Save uv caches
uses: actions/cache/save@v4
with:
path: |
~/.cache/uv
~/.local/share/uv
.venv
key: uv-main-py${{ matrix.python-version }}-${{ hashFiles('uv.lock') }}

102
.github/workflows/codeql.yml vendored Normal file
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@@ -0,0 +1,102 @@
# For most projects, this workflow file will not need changing; you simply need
# to commit it to your repository.
#
# You may wish to alter this file to override the set of languages analyzed,
# or to provide custom queries or build logic.
#
# ******** NOTE ********
# We have attempted to detect the languages in your repository. Please check
# the `language` matrix defined below to confirm you have the correct set of
# supported CodeQL languages.
#
name: "CodeQL Advanced"
on:
push:
branches: [ "main" ]
paths-ignore:
- "src/crewai/cli/templates/**"
pull_request:
branches: [ "main" ]
paths-ignore:
- "src/crewai/cli/templates/**"
jobs:
analyze:
name: Analyze (${{ matrix.language }})
# Runner size impacts CodeQL analysis time. To learn more, please see:
# - https://gh.io/recommended-hardware-resources-for-running-codeql
# - https://gh.io/supported-runners-and-hardware-resources
# - https://gh.io/using-larger-runners (GitHub.com only)
# Consider using larger runners or machines with greater resources for possible analysis time improvements.
runs-on: ${{ (matrix.language == 'swift' && 'macos-latest') || 'ubuntu-latest' }}
permissions:
# required for all workflows
security-events: write
# required to fetch internal or private CodeQL packs
packages: read
# only required for workflows in private repositories
actions: read
contents: read
strategy:
fail-fast: false
matrix:
include:
- language: actions
build-mode: none
- language: python
build-mode: none
# CodeQL supports the following values keywords for 'language': 'actions', 'c-cpp', 'csharp', 'go', 'java-kotlin', 'javascript-typescript', 'python', 'ruby', 'rust', 'swift'
# Use `c-cpp` to analyze code written in C, C++ or both
# Use 'java-kotlin' to analyze code written in Java, Kotlin or both
# Use 'javascript-typescript' to analyze code written in JavaScript, TypeScript or both
# To learn more about changing the languages that are analyzed or customizing the build mode for your analysis,
# see https://docs.github.com/en/code-security/code-scanning/creating-an-advanced-setup-for-code-scanning/customizing-your-advanced-setup-for-code-scanning.
# If you are analyzing a compiled language, you can modify the 'build-mode' for that language to customize how
# your codebase is analyzed, see https://docs.github.com/en/code-security/code-scanning/creating-an-advanced-setup-for-code-scanning/codeql-code-scanning-for-compiled-languages
steps:
- name: Checkout repository
uses: actions/checkout@v4
# Add any setup steps before running the `github/codeql-action/init` action.
# This includes steps like installing compilers or runtimes (`actions/setup-node`
# or others). This is typically only required for manual builds.
# - name: Setup runtime (example)
# uses: actions/setup-example@v1
# Initializes the CodeQL tools for scanning.
- name: Initialize CodeQL
uses: github/codeql-action/init@v3
with:
languages: ${{ matrix.language }}
build-mode: ${{ matrix.build-mode }}
# If you wish to specify custom queries, you can do so here or in a config file.
# By default, queries listed here will override any specified in a config file.
# Prefix the list here with "+" to use these queries and those in the config file.
# For more details on CodeQL's query packs, refer to: https://docs.github.com/en/code-security/code-scanning/automatically-scanning-your-code-for-vulnerabilities-and-errors/configuring-code-scanning#using-queries-in-ql-packs
# queries: security-extended,security-and-quality
# If the analyze step fails for one of the languages you are analyzing with
# "We were unable to automatically build your code", modify the matrix above
# to set the build mode to "manual" for that language. Then modify this step
# to build your code.
# Command-line programs to run using the OS shell.
# 📚 See https://docs.github.com/en/actions/using-workflows/workflow-syntax-for-github-actions#jobsjob_idstepsrun
- if: matrix.build-mode == 'manual'
shell: bash
run: |
echo 'If you are using a "manual" build mode for one or more of the' \
'languages you are analyzing, replace this with the commands to build' \
'your code, for example:'
echo ' make bootstrap'
echo ' make release'
exit 1
- name: Perform CodeQL Analysis
uses: github/codeql-action/analyze@v3
with:
category: "/language:${{matrix.language}}"

View File

@@ -2,6 +2,9 @@ name: Lint
on: [pull_request]
permissions:
contents: read
jobs:
lint:
runs-on: ubuntu-latest
@@ -15,8 +18,27 @@ jobs:
- name: Fetch Target Branch
run: git fetch origin $TARGET_BRANCH --depth=1
- name: Install Ruff
run: pip install ruff
- name: Restore global uv cache
id: cache-restore
uses: actions/cache/restore@v4
with:
path: |
~/.cache/uv
~/.local/share/uv
.venv
key: uv-main-py3.11-${{ hashFiles('uv.lock') }}
restore-keys: |
uv-main-py3.11-
- name: Install uv
uses: astral-sh/setup-uv@v6
with:
version: "0.8.4"
python-version: "3.11"
enable-cache: false
- name: Install dependencies
run: uv sync --all-groups --all-extras --no-install-project
- name: Get Changed Python Files
id: changed-files
@@ -33,4 +55,14 @@ jobs:
echo "${{ steps.changed-files.outputs.files }}" \
| tr ' ' '\n' \
| grep -v 'src/crewai/cli/templates/' \
| xargs -I{} ruff check "{}"
| xargs -I{} uv run ruff check "{}"
- name: Save uv caches
if: steps.cache-restore.outputs.cache-hit != 'true'
uses: actions/cache/save@v4
with:
path: |
~/.cache/uv
~/.local/share/uv
.venv
key: uv-main-py3.11-${{ hashFiles('uv.lock') }}

View File

@@ -1,23 +0,0 @@
name: Security Checker
on: [pull_request]
jobs:
security-check:
runs-on: ubuntu-latest
steps:
- name: Checkout code
uses: actions/checkout@v4
- name: Set up Python
uses: actions/setup-python@v5
with:
python-version: "3.11.9"
- name: Install dependencies
run: pip install bandit
- name: Run Bandit
run: bandit -c pyproject.toml -r src/ -ll

View File

@@ -3,7 +3,7 @@ name: Run Tests
on: [pull_request]
permissions:
contents: write
contents: read
env:
OPENAI_API_KEY: fake-api-key
@@ -22,29 +22,76 @@ jobs:
steps:
- name: Checkout code
uses: actions/checkout@v4
with:
fetch-depth: 0 # Fetch all history for proper diff
- name: Restore global uv cache
id: cache-restore
uses: actions/cache/restore@v4
with:
path: |
~/.cache/uv
~/.local/share/uv
.venv
key: uv-main-py${{ matrix.python-version }}-${{ hashFiles('uv.lock') }}
restore-keys: |
uv-main-py${{ matrix.python-version }}-
- name: Install uv
uses: astral-sh/setup-uv@v3
uses: astral-sh/setup-uv@v6
with:
enable-cache: true
cache-dependency-glob: |
**/pyproject.toml
**/uv.lock
- name: Set up Python ${{ matrix.python-version }}
run: uv python install ${{ matrix.python-version }}
version: "0.8.4"
python-version: ${{ matrix.python-version }}
enable-cache: false
- name: Install the project
run: uv sync --dev --all-extras
run: uv sync --all-groups --all-extras
- name: Restore test durations
uses: actions/cache/restore@v4
with:
path: .test_durations_py*
key: test-durations-py${{ matrix.python-version }}
- name: Run tests (group ${{ matrix.group }} of 8)
run: |
PYTHON_VERSION_SAFE=$(echo "${{ matrix.python-version }}" | tr '.' '_')
DURATION_FILE=".test_durations_py${PYTHON_VERSION_SAFE}"
# Temporarily always skip cached durations to fix test splitting
# When durations don't match, pytest-split runs duplicate tests instead of splitting
echo "Using even test splitting (duration cache disabled until fix merged)"
DURATIONS_ARG=""
# Original logic (disabled temporarily):
# if [ ! -f "$DURATION_FILE" ]; then
# echo "No cached durations found, tests will be split evenly"
# DURATIONS_ARG=""
# elif git diff origin/${{ github.base_ref }}...HEAD --name-only 2>/dev/null | grep -q "^tests/.*\.py$"; then
# echo "Test files have changed, skipping cached durations to avoid mismatches"
# DURATIONS_ARG=""
# else
# echo "No test changes detected, using cached test durations for optimal splitting"
# DURATIONS_ARG="--durations-path=${DURATION_FILE}"
# fi
uv run pytest \
--block-network \
--timeout=30 \
-vv \
--splits 8 \
--group ${{ matrix.group }} \
$DURATIONS_ARG \
--durations=10 \
-n auto \
--maxfail=3
- name: Save uv caches
if: steps.cache-restore.outputs.cache-hit != 'true'
uses: actions/cache/save@v4
with:
path: |
~/.cache/uv
~/.local/share/uv
.venv
key: uv-main-py${{ matrix.python-version }}-${{ hashFiles('uv.lock') }}

View File

@@ -3,24 +3,99 @@ name: Run Type Checks
on: [pull_request]
permissions:
contents: write
contents: read
jobs:
type-checker:
type-checker-matrix:
name: type-checker (${{ matrix.python-version }})
runs-on: ubuntu-latest
strategy:
fail-fast: false
matrix:
python-version: ["3.10", "3.11", "3.12", "3.13"]
steps:
- name: Checkout code
uses: actions/checkout@v4
- name: Setup Python
uses: actions/setup-python@v5
with:
python-version: "3.11.9"
fetch-depth: 0 # Fetch all history for proper diff
- name: Install Requirements
- name: Restore global uv cache
id: cache-restore
uses: actions/cache/restore@v4
with:
path: |
~/.cache/uv
~/.local/share/uv
.venv
key: uv-main-py${{ matrix.python-version }}-${{ hashFiles('uv.lock') }}
restore-keys: |
uv-main-py${{ matrix.python-version }}-
- name: Install uv
uses: astral-sh/setup-uv@v6
with:
version: "0.8.4"
python-version: ${{ matrix.python-version }}
enable-cache: false
- name: Install dependencies
run: uv sync --all-groups --all-extras
- name: Get changed Python files
id: changed-files
run: |
pip install mypy
# Get the list of changed Python files compared to the base branch
echo "Fetching changed files..."
git diff --name-only --diff-filter=ACMRT origin/${{ github.base_ref }}...HEAD -- '*.py' > changed_files.txt
- name: Run type checks
run: mypy src
# Filter for files in src/ directory only (excluding tests/)
grep -E "^src/" changed_files.txt > filtered_changed_files.txt || true
# Check if there are any changed files
if [ -s filtered_changed_files.txt ]; then
echo "Changed Python files in src/:"
cat filtered_changed_files.txt
echo "has_changes=true" >> $GITHUB_OUTPUT
# Convert newlines to spaces for mypy command
echo "files=$(cat filtered_changed_files.txt | tr '\n' ' ')" >> $GITHUB_OUTPUT
else
echo "No Python files changed in src/"
echo "has_changes=false" >> $GITHUB_OUTPUT
fi
- name: Run type checks on changed files
if: steps.changed-files.outputs.has_changes == 'true'
run: |
echo "Running mypy on changed files with Python ${{ matrix.python-version }}..."
uv run mypy ${{ steps.changed-files.outputs.files }}
- name: No files to check
if: steps.changed-files.outputs.has_changes == 'false'
run: echo "No Python files in src/ were modified - skipping type checks"
- name: Save uv caches
if: steps.cache-restore.outputs.cache-hit != 'true'
uses: actions/cache/save@v4
with:
path: |
~/.cache/uv
~/.local/share/uv
.venv
key: uv-main-py${{ matrix.python-version }}-${{ hashFiles('uv.lock') }}
# Summary job to provide single status for branch protection
type-checker:
name: type-checker
runs-on: ubuntu-latest
needs: type-checker-matrix
if: always()
steps:
- name: Check matrix results
run: |
if [ "${{ needs.type-checker-matrix.result }}" == "success" ] || [ "${{ needs.type-checker-matrix.result }}" == "skipped" ]; then
echo "✅ All type checks passed"
else
echo "❌ Type checks failed"
exit 1
fi

View File

@@ -0,0 +1,71 @@
name: Update Test Durations
on:
push:
branches:
- main
paths:
- 'tests/**/*.py'
workflow_dispatch:
permissions:
contents: read
jobs:
update-durations:
runs-on: ubuntu-latest
strategy:
matrix:
python-version: ['3.10', '3.11', '3.12', '3.13']
env:
OPENAI_API_KEY: fake-api-key
PYTHONUNBUFFERED: 1
steps:
- name: Checkout repository
uses: actions/checkout@v4
- name: Restore global uv cache
id: cache-restore
uses: actions/cache/restore@v4
with:
path: |
~/.cache/uv
~/.local/share/uv
.venv
key: uv-main-py${{ matrix.python-version }}-${{ hashFiles('uv.lock') }}
restore-keys: |
uv-main-py${{ matrix.python-version }}-
- name: Install uv
uses: astral-sh/setup-uv@v6
with:
version: "0.8.4"
python-version: ${{ matrix.python-version }}
enable-cache: false
- name: Install the project
run: uv sync --all-groups --all-extras
- name: Run all tests and store durations
run: |
PYTHON_VERSION_SAFE=$(echo "${{ matrix.python-version }}" | tr '.' '_')
uv run pytest --store-durations --durations-path=.test_durations_py${PYTHON_VERSION_SAFE} -n auto
continue-on-error: true
- name: Save durations to cache
if: always()
uses: actions/cache/save@v4
with:
path: .test_durations_py*
key: test-durations-py${{ matrix.python-version }}
- name: Save uv caches
if: steps.cache-restore.outputs.cache-hit != 'true'
uses: actions/cache/save@v4
with:
path: |
~/.cache/uv
~/.local/share/uv
.venv
key: uv-main-py${{ matrix.python-version }}-${{ hashFiles('uv.lock') }}

1
.gitignore vendored
View File

@@ -21,7 +21,6 @@ crew_tasks_output.json
.mypy_cache
.ruff_cache
.venv
agentops.log
test_flow.html
crewairules.mdc
plan.md

View File

@@ -1,7 +1,19 @@
repos:
- repo: https://github.com/astral-sh/ruff-pre-commit
rev: v0.8.2
- repo: local
hooks:
- id: ruff
args: ["--fix"]
name: ruff
entry: uv run ruff check
language: system
types: [python]
- id: ruff-format
name: ruff-format
entry: uv run ruff format
language: system
types: [python]
- id: mypy
name: mypy
entry: uv run mypy
language: system
types: [python]
exclude: ^tests/

View File

@@ -1,4 +0,0 @@
exclude = [
"templates",
"__init__.py",
]

View File

@@ -418,10 +418,10 @@ Choose CrewAI to easily build powerful, adaptable, and production-ready AI autom
You can test different real life examples of AI crews in the [CrewAI-examples repo](https://github.com/crewAIInc/crewAI-examples?tab=readme-ov-file):
- [Landing Page Generator](https://github.com/crewAIInc/crewAI-examples/tree/main/landing_page_generator)
- [Landing Page Generator](https://github.com/crewAIInc/crewAI-examples/tree/main/crews/landing_page_generator)
- [Having Human input on the execution](https://docs.crewai.com/how-to/Human-Input-on-Execution)
- [Trip Planner](https://github.com/crewAIInc/crewAI-examples/tree/main/trip_planner)
- [Stock Analysis](https://github.com/crewAIInc/crewAI-examples/tree/main/stock_analysis)
- [Trip Planner](https://github.com/crewAIInc/crewAI-examples/tree/main/crews/trip_planner)
- [Stock Analysis](https://github.com/crewAIInc/crewAI-examples/tree/main/crews/stock_analysis)
### Quick Tutorial
@@ -429,19 +429,19 @@ You can test different real life examples of AI crews in the [CrewAI-examples re
### Write Job Descriptions
[Check out code for this example](https://github.com/crewAIInc/crewAI-examples/tree/main/job-posting) or watch a video below:
[Check out code for this example](https://github.com/crewAIInc/crewAI-examples/tree/main/crews/job-posting) or watch a video below:
[![Jobs postings](https://img.youtube.com/vi/u98wEMz-9to/maxresdefault.jpg)](https://www.youtube.com/watch?v=u98wEMz-9to "Jobs postings")
### Trip Planner
[Check out code for this example](https://github.com/crewAIInc/crewAI-examples/tree/main/trip_planner) or watch a video below:
[Check out code for this example](https://github.com/crewAIInc/crewAI-examples/tree/main/crews/trip_planner) or watch a video below:
[![Trip Planner](https://img.youtube.com/vi/xis7rWp-hjs/maxresdefault.jpg)](https://www.youtube.com/watch?v=xis7rWp-hjs "Trip Planner")
### Stock Analysis
[Check out code for this example](https://github.com/crewAIInc/crewAI-examples/tree/main/stock_analysis) or watch a video below:
[Check out code for this example](https://github.com/crewAIInc/crewAI-examples/tree/main/crews/stock_analysis) or watch a video below:
[![Stock Analysis](https://img.youtube.com/vi/e0Uj4yWdaAg/maxresdefault.jpg)](https://www.youtube.com/watch?v=e0Uj4yWdaAg "Stock Analysis")

View File

@@ -1,6 +1,6 @@
{
"$schema": "https://mintlify.com/docs.json",
"theme": "mint",
"theme": "aspen",
"name": "CrewAI",
"colors": {
"primary": "#EB6658",
@@ -28,20 +28,21 @@
"icon": "discourse"
},
{
"anchor": "Crew GPT",
"href": "https://chatgpt.com/g/g-qqTuUWsBY-crewai-assistant",
"icon": "robot"
"anchor": "Blog",
"href": "https://blog.crewai.com",
"icon": "newspaper"
},
{
"anchor": "Releases",
"href": "https://github.com/crewAIInc/crewAI/releases",
"icon": "tag"
"anchor": "CrewGPT",
"href": "https://chatgpt.com/g/g-qqTuUWsBY-crewai-assistant",
"icon": "robot"
}
]
},
"tabs": [
{
"tab": "Documentation",
"icon": "book-open",
"groups": [
{
"group": "Get Started",
@@ -52,18 +53,22 @@
"pages": [
{
"group": "Strategy",
"icon": "compass",
"pages": ["en/guides/concepts/evaluating-use-cases"]
},
{
"group": "Agents",
"icon": "user",
"pages": ["en/guides/agents/crafting-effective-agents"]
},
{
"group": "Crews",
"icon": "users",
"pages": ["en/guides/crews/first-crew"]
},
{
"group": "Flows",
"icon": "code-branch",
"pages": [
"en/guides/flows/first-flow",
"en/guides/flows/mastering-flow-state"
@@ -71,6 +76,7 @@
},
{
"group": "Advanced",
"icon": "gear",
"pages": [
"en/guides/advanced/customizing-prompts",
"en/guides/advanced/fingerprinting"
@@ -116,6 +122,7 @@
"en/tools/overview",
{
"group": "File & Document",
"icon": "folder-open",
"pages": [
"en/tools/file-document/overview",
"en/tools/file-document/filereadtool",
@@ -135,6 +142,7 @@
},
{
"group": "Web Scraping & Browsing",
"icon": "globe",
"pages": [
"en/tools/web-scraping/overview",
"en/tools/web-scraping/scrapewebsitetool",
@@ -154,6 +162,7 @@
},
{
"group": "Search & Research",
"icon": "magnifying-glass",
"pages": [
"en/tools/search-research/overview",
"en/tools/search-research/serperdevtool",
@@ -175,6 +184,7 @@
},
{
"group": "Database & Data",
"icon": "database",
"pages": [
"en/tools/database-data/overview",
"en/tools/database-data/mysqltool",
@@ -189,6 +199,7 @@
},
{
"group": "AI & Machine Learning",
"icon": "brain",
"pages": [
"en/tools/ai-ml/overview",
"en/tools/ai-ml/dalletool",
@@ -202,16 +213,26 @@
},
{
"group": "Cloud & Storage",
"icon": "cloud",
"pages": [
"en/tools/cloud-storage/overview",
"en/tools/cloud-storage/s3readertool",
"en/tools/cloud-storage/s3writertool",
"en/tools/cloud-storage/bedrockinvokeagenttool",
"en/tools/cloud-storage/bedrockkbretriever"
]
},
{
"group": "Automation & Integration",
"group": "Integrations",
"icon": "plug",
"pages": [
"en/tools/tool-integrations/overview",
"en/tools/tool-integrations/bedrockinvokeagenttool",
"en/tools/tool-integrations/crewaiautomationtool"
]
},
{
"group": "Automation",
"icon": "bolt",
"pages": [
"en/tools/automation/overview",
"en/tools/automation/apifyactorstool",
@@ -226,7 +247,6 @@
"group": "Observability",
"pages": [
"en/observability/overview",
"en/observability/agentops",
"en/observability/arize-phoenix",
"en/observability/langdb",
"en/observability/langfuse",
@@ -274,6 +294,7 @@
},
{
"tab": "Enterprise",
"icon": "briefcase",
"groups": [
{
"group": "Getting Started",
@@ -321,6 +342,7 @@
"en/enterprise/guides/update-crew",
"en/enterprise/guides/enable-crew-studio",
"en/enterprise/guides/azure-openai-setup",
"en/enterprise/guides/automation-triggers",
"en/enterprise/guides/hubspot-trigger",
"en/enterprise/guides/react-component-export",
"en/enterprise/guides/salesforce-trigger",
@@ -339,25 +361,38 @@
},
{
"tab": "API Reference",
"icon": "magnifying-glass",
"groups": [
{
"group": "Getting Started",
"pages": ["en/api-reference/introduction"]
},
{
"group": "Endpoints",
"openapi": "https://raw.githubusercontent.com/crewAIInc/crewAI/main/docs/enterprise-api.en.yaml"
"pages": [
"en/api-reference/introduction",
"en/api-reference/inputs",
"en/api-reference/kickoff",
"en/api-reference/status"
]
}
]
},
{
"tab": "Examples",
"icon": "code",
"groups": [
{
"group": "Examples",
"pages": ["en/examples/example", "en/examples/cookbooks"]
}
]
},
{
"tab": "Changelog",
"icon": "clock",
"groups": [
{
"group": "Release Notes",
"pages": ["en/changelog"]
}
]
}
]
},
@@ -376,20 +411,21 @@
"icon": "discourse"
},
{
"anchor": "Crew GPT",
"href": "https://chatgpt.com/g/g-qqTuUWsBY-crewai-assistant",
"icon": "robot"
"anchor": "Blog",
"href": "https://blog.crewai.com",
"icon": "newspaper"
},
{
"anchor": "Lançamentos",
"href": "https://github.com/crewAIInc/crewAI/releases",
"icon": "tag"
"anchor": "CrewGPT",
"href": "https://chatgpt.com/g/g-qqTuUWsBY-crewai-assistant",
"icon": "robot"
}
]
},
"tabs": [
{
"tab": "Documentação",
"icon": "book-open",
"groups": [
{
"group": "Começando",
@@ -404,18 +440,22 @@
"pages": [
{
"group": "Estratégia",
"icon": "compass",
"pages": ["pt-BR/guides/concepts/evaluating-use-cases"]
},
{
"group": "Agentes",
"icon": "user",
"pages": ["pt-BR/guides/agents/crafting-effective-agents"]
},
{
"group": "Crews",
"icon": "users",
"pages": ["pt-BR/guides/crews/first-crew"]
},
{
"group": "Flows",
"icon": "code-branch",
"pages": [
"pt-BR/guides/flows/first-flow",
"pt-BR/guides/flows/mastering-flow-state"
@@ -423,6 +463,7 @@
},
{
"group": "Avançado",
"icon": "gear",
"pages": [
"pt-BR/guides/advanced/customizing-prompts",
"pt-BR/guides/advanced/fingerprinting"
@@ -468,6 +509,7 @@
"pt-BR/tools/overview",
{
"group": "Arquivo & Documento",
"icon": "folder-open",
"pages": [
"pt-BR/tools/file-document/overview",
"pt-BR/tools/file-document/filereadtool",
@@ -485,6 +527,7 @@
},
{
"group": "Web Scraping & Navegação",
"icon": "globe",
"pages": [
"pt-BR/tools/web-scraping/overview",
"pt-BR/tools/web-scraping/scrapewebsitetool",
@@ -503,6 +546,7 @@
},
{
"group": "Pesquisa",
"icon": "magnifying-glass",
"pages": [
"pt-BR/tools/search-research/overview",
"pt-BR/tools/search-research/serperdevtool",
@@ -518,6 +562,7 @@
},
{
"group": "Dados",
"icon": "database",
"pages": [
"pt-BR/tools/database-data/overview",
"pt-BR/tools/database-data/mysqltool",
@@ -530,6 +575,7 @@
},
{
"group": "IA & Machine Learning",
"icon": "brain",
"pages": [
"pt-BR/tools/ai-ml/overview",
"pt-BR/tools/ai-ml/dalletool",
@@ -543,16 +589,26 @@
},
{
"group": "Cloud & Armazenamento",
"icon": "cloud",
"pages": [
"pt-BR/tools/cloud-storage/overview",
"pt-BR/tools/cloud-storage/s3readertool",
"pt-BR/tools/cloud-storage/s3writertool",
"pt-BR/tools/cloud-storage/bedrockinvokeagenttool",
"pt-BR/tools/cloud-storage/bedrockkbretriever"
]
},
{
"group": "Automação & Integração",
"group": "Integrações",
"icon": "plug",
"pages": [
"pt-BR/tools/tool-integrations/overview",
"pt-BR/tools/tool-integrations/bedrockinvokeagenttool",
"pt-BR/tools/tool-integrations/crewaiautomationtool"
]
},
{
"group": "Automação",
"icon": "bolt",
"pages": [
"pt-BR/tools/automation/overview",
"pt-BR/tools/automation/apifyactorstool",
@@ -566,7 +622,6 @@
"group": "Observabilidade",
"pages": [
"pt-BR/observability/overview",
"pt-BR/observability/agentops",
"pt-BR/observability/arize-phoenix",
"pt-BR/observability/langdb",
"pt-BR/observability/langfuse",
@@ -613,6 +668,7 @@
},
{
"tab": "Enterprise",
"icon": "briefcase",
"groups": [
{
"group": "Começando",
@@ -659,6 +715,7 @@
"pt-BR/enterprise/guides/update-crew",
"pt-BR/enterprise/guides/enable-crew-studio",
"pt-BR/enterprise/guides/azure-openai-setup",
"pt-BR/enterprise/guides/automation-triggers",
"pt-BR/enterprise/guides/hubspot-trigger",
"pt-BR/enterprise/guides/react-component-export",
"pt-BR/enterprise/guides/salesforce-trigger",
@@ -679,25 +736,38 @@
},
{
"tab": "Referência da API",
"icon": "magnifying-glass",
"groups": [
{
"group": "Começando",
"pages": ["pt-BR/api-reference/introduction"]
},
{
"group": "Endpoints",
"openapi": "https://raw.githubusercontent.com/crewAIInc/crewAI/main/docs/enterprise-api.pt-BR.yaml"
"pages": [
"pt-BR/api-reference/introduction",
"pt-BR/api-reference/inputs",
"pt-BR/api-reference/kickoff",
"pt-BR/api-reference/status"
]
}
]
},
{
"tab": "Exemplos",
"icon": "code",
"groups": [
{
"group": "Exemplos",
"pages": ["pt-BR/examples/example", "pt-BR/examples/cookbooks"]
}
]
},
{
"tab": "Notas de Versão",
"icon": "clock",
"groups": [
{
"group": "Notas de Versão",
"pages": ["pt-BR/changelog"]
}
]
}
]
},
@@ -711,47 +781,52 @@
"icon": "globe"
},
{
"anchor": "법정",
"anchor": "포럼",
"href": "https://community.crewai.com",
"icon": "discourse"
},
{
"anchor": "Crew GPT",
"href": "https://chatgpt.com/g/g-qqTuUWsBY-crewai-assistant",
"icon": "robot"
"anchor": "블로그",
"href": "https://blog.crewai.com",
"icon": "newspaper"
},
{
"anchor": "출시",
"href": "https://github.com/crewAIInc/crewAI/releases",
"icon": "tag"
"anchor": "CrewGPT",
"href": "https://chatgpt.com/g/g-qqTuUWsBY-crewai-assistant",
"icon": "robot"
}
]
},
"tabs": [
{
"tab": "기술 문서",
"icon": "book-open",
"groups": [
{
"group": "시작 안내",
"pages": ["ko/introduction", "ko/installation", "ko/quickstart"]
},
{
"group": "안내서",
"group": "가이드",
"pages": [
{
"group": "전략",
"icon": "compass",
"pages": ["ko/guides/concepts/evaluating-use-cases"]
},
{
"group": "Agents",
"group": "에이전트 (Agents)",
"icon": "user",
"pages": ["ko/guides/agents/crafting-effective-agents"]
},
{
"group": "Crews",
"group": "크루 (Crews)",
"icon": "users",
"pages": ["ko/guides/crews/first-crew"]
},
{
"group": "Flows",
"group": "플로우 (Flows)",
"icon": "code-branch",
"pages": [
"ko/guides/flows/first-flow",
"ko/guides/flows/mastering-flow-state"
@@ -759,6 +834,7 @@
},
{
"group": "고급",
"icon": "gear",
"pages": [
"ko/guides/advanced/customizing-prompts",
"ko/guides/advanced/fingerprinting"
@@ -799,11 +875,12 @@
]
},
{
"group": "도구",
"group": "도구 (Tools)",
"pages": [
"ko/tools/overview",
{
"group": "파일 & 문서",
"icon": "folder-open",
"pages": [
"ko/tools/file-document/overview",
"ko/tools/file-document/filereadtool",
@@ -823,6 +900,7 @@
},
{
"group": "웹 스크래핑 & 브라우징",
"icon": "globe",
"pages": [
"ko/tools/web-scraping/overview",
"ko/tools/web-scraping/scrapewebsitetool",
@@ -842,6 +920,7 @@
},
{
"group": "검색 및 연구",
"icon": "magnifying-glass",
"pages": [
"ko/tools/search-research/overview",
"ko/tools/search-research/serperdevtool",
@@ -863,6 +942,7 @@
},
{
"group": "데이터베이스 & 데이터",
"icon": "database",
"pages": [
"ko/tools/database-data/overview",
"ko/tools/database-data/mysqltool",
@@ -877,6 +957,7 @@
},
{
"group": "인공지능 & 머신러닝",
"icon": "brain",
"pages": [
"ko/tools/ai-ml/overview",
"ko/tools/ai-ml/dalletool",
@@ -889,7 +970,8 @@
]
},
{
"group": "클라우드 & 저장",
"group": "클라우드 & 스토리지",
"icon": "cloud",
"pages": [
"ko/tools/cloud-storage/overview",
"ko/tools/cloud-storage/s3readertool",
@@ -899,7 +981,17 @@
]
},
{
"group": "자동화 & 통합",
"group": "통합",
"icon": "plug",
"pages": [
"ko/tools/tool-integrations/overview",
"ko/tools/tool-integrations/bedrockinvokeagenttool",
"ko/tools/tool-integrations/crewaiautomationtool"
]
},
{
"group": "자동화",
"icon": "bolt",
"pages": [
"ko/tools/automation/overview",
"ko/tools/automation/apifyactorstool",
@@ -911,10 +1003,9 @@
]
},
{
"group": "오브저버빌리티",
"group": "Observability",
"pages": [
"ko/observability/overview",
"ko/observability/agentops",
"ko/observability/arize-phoenix",
"ko/observability/langdb",
"ko/observability/langfuse",
@@ -930,7 +1021,7 @@
]
},
{
"group": "익히다",
"group": "학습",
"pages": [
"ko/learn/overview",
"ko/learn/llm-selection-guide",
@@ -954,13 +1045,14 @@
]
},
{
"group": "원격측정",
"group": "Telemetry",
"pages": ["ko/telemetry"]
}
]
},
{
"tab": "기업",
"tab": "엔터프라이즈",
"icon": "briefcase",
"groups": [
{
"group": "시작 안내",
@@ -1000,7 +1092,7 @@
]
},
{
"group": "사용 안내서",
"group": "How-To Guides",
"pages": [
"ko/enterprise/guides/build-crew",
"ko/enterprise/guides/deploy-crew",
@@ -1008,6 +1100,7 @@
"ko/enterprise/guides/update-crew",
"ko/enterprise/guides/enable-crew-studio",
"ko/enterprise/guides/azure-openai-setup",
"ko/enterprise/guides/automation-triggers",
"ko/enterprise/guides/hubspot-trigger",
"ko/enterprise/guides/react-component-export",
"ko/enterprise/guides/salesforce-trigger",
@@ -1026,25 +1119,38 @@
},
{
"tab": "API 레퍼런스",
"icon": "magnifying-glass",
"groups": [
{
"group": "시작 안내",
"pages": ["ko/api-reference/introduction"]
},
{
"group": "Endpoints",
"openapi": "https://raw.githubusercontent.com/crewAIInc/crewAI/main/docs/enterprise-api.ko.yaml"
"pages": [
"ko/api-reference/introduction",
"ko/api-reference/inputs",
"ko/api-reference/kickoff",
"ko/api-reference/status"
]
}
]
},
{
"tab": "예시",
"icon": "code",
"groups": [
{
"group": "예시",
"pages": ["ko/examples/example", "ko/examples/cookbooks"]
}
]
},
{
"tab": "변경 로그",
"icon": "clock",
"groups": [
{
"group": "릴리스 노트",
"pages": ["ko/changelog"]
}
]
}
]
}
@@ -1054,15 +1160,23 @@
"light": "/images/crew_only_logo.png",
"dark": "/images/crew_only_logo.png"
},
"fonts": {
"family": "Inter"
},
"appearance": {
"default": "dark",
"strict": false
"default": "system",
"strict": false,
"layout": "sidenav"
},
"background": {
"decoration": "grid"
},
"navbar": {
"links": [
{
"label": "Start Cloud Trial",
"href": "https://app.crewai.com"
"href": "https://app.crewai.com",
"icon": "arrow-up-right-from-square"
}
],
"primary": {
@@ -1081,9 +1195,26 @@
}
},
"seo": {
"indexing": "all"
"indexing": "all",
"metatags": {
"og:type": "website",
"og:site_name": "CrewAI Documentation",
"og:image": "https://docs.crewai.com/images/crew_only_logo.png",
"twitter:card": "summary_large_image",
"twitter:site": "@crewAIInc",
"keywords": "AI agents, multi-agent systems, CrewAI, artificial intelligence, automation, Python framework, agent collaboration, AI workflows"
}
},
"feedback": {
"enabled": true,
"thumbsRating": true,
"suggestEdit": true
},
"redirects": [
{
"source": "/api-reference",
"destination": "/en/api-reference/introduction"
},
{
"source": "/introduction",
"destination": "/en/introduction"
@@ -1098,7 +1229,7 @@
},
{
"source": "/changelog",
"destination": "https://github.com/crewAIInc/crewAI/releases"
"destination": "/en/changelog"
},
{
"source": "/telemetry",
@@ -1136,6 +1267,18 @@
"source": "/api-reference/:path*",
"destination": "/en/api-reference/:path*"
},
{
"source": "/en/api-reference",
"destination": "/en/api-reference/introduction"
},
{
"source": "/pt-BR/api-reference",
"destination": "/pt-BR/api-reference/introduction"
},
{
"source": "/ko/api-reference",
"destination": "/ko/api-reference/introduction"
},
{
"source": "/examples/:path*",
"destination": "/en/examples/:path*"

View File

@@ -0,0 +1,8 @@
---
title: "GET /inputs"
description: "Get required inputs for your crew"
openapi: "/enterprise-api.en.yaml GET /inputs"
mode: "wide"
---

View File

@@ -2,6 +2,7 @@
title: "Introduction"
description: "Complete reference for the CrewAI Enterprise REST API"
icon: "code"
mode: "wide"
---
# CrewAI Enterprise API

View File

@@ -0,0 +1,8 @@
---
title: "POST /kickoff"
description: "Start a crew execution"
openapi: "/enterprise-api.en.yaml POST /kickoff"
mode: "wide"
---

View File

@@ -0,0 +1,8 @@
---
title: "GET /status/{kickoff_id}"
description: "Get execution status"
openapi: "/enterprise-api.en.yaml GET /status/{kickoff_id}"
mode: "wide"
---

1763
docs/en/changelog.mdx Normal file

File diff suppressed because it is too large Load Diff

View File

@@ -2,6 +2,7 @@
title: Agents
description: Detailed guide on creating and managing agents within the CrewAI framework.
icon: robot
mode: "wide"
---
## Overview of an Agent

View File

@@ -2,6 +2,7 @@
title: CLI
description: Learn how to use the CrewAI CLI to interact with CrewAI.
icon: terminal
mode: "wide"
---
<Warning>Since release 0.140.0, CrewAI Enterprise started a process of migrating their login provider. As such, the authentication flow via CLI was updated. Users that use Google to login, or that created their account after July 3rd, 2025 will be unable to log in with older versions of the `crewai` library.</Warning>
@@ -282,7 +283,25 @@ Watch this video tutorial for a step-by-step demonstration of deploying your cre
allowfullscreen
></iframe>
### 11. API Keys
### 11. Login
Authenticate with CrewAI Enterprise using a secure device code flow (no email entry required).
```shell Terminal
crewai login
```
What happens:
- A verification URL and short code are displayed in your terminal
- Your browser opens to the verification URL
- Enter/confirm the code to complete authentication
Notes:
- The OAuth2 provider and domain are configured via `crewai config` (defaults use `login.crewai.com`)
- After successful login, the CLI also attempts to authenticate to the Tool Repository automatically
- If you reset your configuration, run `crewai login` again to re-authenticate
### 12. API Keys
When running ```crewai create crew``` command, the CLI will show you a list of available LLM providers to choose from, followed by model selection for your chosen provider.
@@ -310,7 +329,7 @@ See the following link for each provider's key name:
* [LiteLLM Providers](https://docs.litellm.ai/docs/providers)
### 12. Configuration Management
### 13. Configuration Management
Manage CLI configuration settings for CrewAI.
@@ -351,19 +370,15 @@ crewai config list
```
Example output:
```
CrewAI CLI Configuration
┏━━━━━━━━━━━━━━━━━━━━┳━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━┳━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━┓
┃ Setting ┃ Value ┃ Description ┃
┡━━━━━━━━━━━━━━━━━━━━╇━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━╇━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━┩
│ enterprise_base_url│ https://app.crewai.com │ Base URL of the CrewAI Enterprise instance
org_name │ Not set │ Name of the currently active organization │
org_uuid │ Not set │ UUID of the currently active organization
oauth2_provider │ workos │ OAuth2 provider used for authentication (e.g., workos, okta, auth0).
│ oauth2_audience │ client_01YYY │ OAuth2 audience value, typically used to identify the target API or resource. │
│ oauth2_client_id │ client_01XXX │ OAuth2 client ID issued by the provider, used during authentication requests. │
│ oauth2_domain │ login.crewai.com │ OAuth2 provider's domain (e.g., your-org.auth0.com) used for issuing tokens. │
```
| Setting | Value | Description |
| :------------------ | :----------------------- | :---------------------------------------------------------- |
| enterprise_base_url | https://app.crewai.com | Base URL of the CrewAI Enterprise instance |
| org_name | Not set | Name of the currently active organization |
| org_uuid | Not set | UUID of the currently active organization |
| oauth2_provider | workos | OAuth2 provider (e.g., workos, okta, auth0) |
| oauth2_audience | client_01YYY | Audience identifying the target API/resource |
| oauth2_client_id | client_01XXX | OAuth2 client ID issued by the provider |
| oauth2_domain | login.crewai.com | Provider domain (e.g., your-org.auth0.com) |
Set the enterprise base URL:
```shell Terminal
@@ -385,6 +400,10 @@ Reset all configuration to defaults:
crewai config reset
```
<Tip>
After resetting configuration, re-run `crewai login` to authenticate again.
</Tip>
<Note>
Configuration settings are stored in `~/.config/crewai/settings.json`. Some settings like organization name and UUID are read-only and managed through authentication and organization commands. Tool repository related settings are hidden and cannot be set directly by users.
</Note>

View File

@@ -2,6 +2,7 @@
title: Collaboration
description: How to enable agents to work together, delegate tasks, and communicate effectively within CrewAI teams.
icon: screen-users
mode: "wide"
---
## Overview

View File

@@ -2,6 +2,7 @@
title: Crews
description: Understanding and utilizing crews in the crewAI framework with comprehensive attributes and functionalities.
icon: people-group
mode: "wide"
---
## Overview

View File

@@ -2,6 +2,7 @@
title: 'Event Listeners'
description: 'Tap into CrewAI events to build custom integrations and monitoring'
icon: spinner
mode: "wide"
---
## Overview
@@ -44,12 +45,12 @@ To create a custom event listener, you need to:
Here's a simple example of a custom event listener class:
```python
from crewai.utilities.events import (
from crewai.events import (
CrewKickoffStartedEvent,
CrewKickoffCompletedEvent,
AgentExecutionCompletedEvent,
)
from crewai.utilities.events.base_event_listener import BaseEventListener
from crewai.events import BaseEventListener
class MyCustomListener(BaseEventListener):
def __init__(self):
@@ -146,7 +147,7 @@ my_project/
```python
# my_custom_listener.py
from crewai.utilities.events.base_event_listener import BaseEventListener
from crewai.events import BaseEventListener
# ... import events ...
class MyCustomListener(BaseEventListener):
@@ -177,14 +178,7 @@ class MyCustomCrew:
# Your crew implementation...
```
This is exactly how CrewAI's built-in `agentops_listener` is registered. In the CrewAI codebase, you'll find:
```python
# src/crewai/utilities/events/third_party/__init__.py
from .agentops_listener import agentops_listener
```
This ensures the `agentops_listener` is loaded when the `crewai.utilities.events` package is imported.
This is how third-party event listeners are registered in the CrewAI codebase.
## Available Event Types
@@ -280,84 +274,13 @@ The structure of the event object depends on the event type, but all events inhe
Additional fields vary by event type. For example, `CrewKickoffCompletedEvent` includes `crew_name` and `output` fields.
## Real-World Example: Integration with AgentOps
CrewAI includes an example of a third-party integration with [AgentOps](https://github.com/AgentOps-AI/agentops), a monitoring and observability platform for AI agents. Here's how it's implemented:
```python
from typing import Optional
from crewai.utilities.events import (
CrewKickoffCompletedEvent,
ToolUsageErrorEvent,
ToolUsageStartedEvent,
)
from crewai.utilities.events.base_event_listener import BaseEventListener
from crewai.utilities.events.crew_events import CrewKickoffStartedEvent
from crewai.utilities.events.task_events import TaskEvaluationEvent
try:
import agentops
AGENTOPS_INSTALLED = True
except ImportError:
AGENTOPS_INSTALLED = False
class AgentOpsListener(BaseEventListener):
tool_event: Optional["agentops.ToolEvent"] = None
session: Optional["agentops.Session"] = None
def __init__(self):
super().__init__()
def setup_listeners(self, crewai_event_bus):
if not AGENTOPS_INSTALLED:
return
@crewai_event_bus.on(CrewKickoffStartedEvent)
def on_crew_kickoff_started(source, event: CrewKickoffStartedEvent):
self.session = agentops.init()
for agent in source.agents:
if self.session:
self.session.create_agent(
name=agent.role,
agent_id=str(agent.id),
)
@crewai_event_bus.on(CrewKickoffCompletedEvent)
def on_crew_kickoff_completed(source, event: CrewKickoffCompletedEvent):
if self.session:
self.session.end_session(
end_state="Success",
end_state_reason="Finished Execution",
)
@crewai_event_bus.on(ToolUsageStartedEvent)
def on_tool_usage_started(source, event: ToolUsageStartedEvent):
self.tool_event = agentops.ToolEvent(name=event.tool_name)
if self.session:
self.session.record(self.tool_event)
@crewai_event_bus.on(ToolUsageErrorEvent)
def on_tool_usage_error(source, event: ToolUsageErrorEvent):
agentops.ErrorEvent(exception=event.error, trigger_event=self.tool_event)
```
This listener initializes an AgentOps session when a Crew starts, registers agents with AgentOps, tracks tool usage, and ends the session when the Crew completes.
The AgentOps listener is registered in CrewAI's event system through the import in `src/crewai/utilities/events/third_party/__init__.py`:
```python
from .agentops_listener import agentops_listener
```
This ensures the `agentops_listener` is loaded when the `crewai.utilities.events` package is imported.
## Advanced Usage: Scoped Handlers
For temporary event handling (useful for testing or specific operations), you can use the `scoped_handlers` context manager:
```python
from crewai.utilities.events import crewai_event_bus, CrewKickoffStartedEvent
from crewai.events import crewai_event_bus, CrewKickoffStartedEvent
with crewai_event_bus.scoped_handlers():
@crewai_event_bus.on(CrewKickoffStartedEvent)

View File

@@ -2,6 +2,7 @@
title: Flows
description: Learn how to create and manage AI workflows using CrewAI Flows.
icon: arrow-progress
mode: "wide"
---
## Overview
@@ -97,7 +98,13 @@ The state's unique ID and stored data can be useful for tracking flow executions
### @start()
The `@start()` decorator is used to mark a method as the starting point of a Flow. When a Flow is started, all the methods decorated with `@start()` are executed in parallel. You can have multiple start methods in a Flow, and they will all be executed when the Flow is started.
The `@start()` decorator marks entry points for a Flow. You can:
- Declare multiple unconditional starts: `@start()`
- Gate a start on a prior method or router label: `@start("method_or_label")`
- Provide a callable condition to control when a start should fire
All satisfied `@start()` methods will execute (often in parallel) when the Flow begins or resumes.
### @listen()

View File

@@ -2,6 +2,7 @@
title: Knowledge
description: What is knowledge in CrewAI and how to use it.
icon: book
mode: "wide"
---
## Overview
@@ -24,6 +25,41 @@ For file-based Knowledge Sources, make sure to place your files in a `knowledge`
Also, use relative paths from the `knowledge` directory when creating the source.
</Tip>
### Vector store (RAG) client configuration
CrewAI exposes a provider-neutral RAG client abstraction for vector stores. The default provider is ChromaDB, and Qdrant is supported as well. You can switch providers using configuration utilities.
Supported today:
- ChromaDB (default)
- Qdrant
```python Code
from crewai.rag.config.utils import set_rag_config, get_rag_client, clear_rag_config
# ChromaDB (default)
from crewai.rag.chromadb.config import ChromaDBConfig
set_rag_config(ChromaDBConfig())
chromadb_client = get_rag_client()
# Qdrant
from crewai.rag.qdrant.config import QdrantConfig
set_rag_config(QdrantConfig())
qdrant_client = get_rag_client()
# Example operations (same API for any provider)
client = qdrant_client # or chromadb_client
client.create_collection(collection_name="docs")
client.add_documents(
collection_name="docs",
documents=[{"id": "1", "content": "CrewAI enables collaborative AI agents."}],
)
results = client.search(collection_name="docs", query="collaborative agents", limit=3)
clear_rag_config() # optional reset
```
This RAG client is separate from Knowledges built-in storage. Use it when you need direct vector-store control or custom retrieval pipelines.
### Basic String Knowledge Example
```python Code
@@ -681,11 +717,11 @@ CrewAI emits events during the knowledge retrieval process that you can listen f
#### Example: Monitoring Knowledge Retrieval
```python
from crewai.utilities.events import (
from crewai.events import (
KnowledgeRetrievalStartedEvent,
KnowledgeRetrievalCompletedEvent,
BaseEventListener,
)
from crewai.utilities.events.base_event_listener import BaseEventListener
class KnowledgeMonitorListener(BaseEventListener):
def setup_listeners(self, crewai_event_bus):

View File

@@ -2,6 +2,7 @@
title: 'LLMs'
description: 'A comprehensive guide to configuring and using Large Language Models (LLMs) in your CrewAI projects'
icon: 'microchip-ai'
mode: "wide"
---
## Overview
@@ -733,10 +734,10 @@ CrewAI supports streaming responses from LLMs, allowing your application to rece
CrewAI emits events for each chunk received during streaming:
```python
from crewai.utilities.events import (
from crewai.events import (
LLMStreamChunkEvent
)
from crewai.utilities.events.base_event_listener import BaseEventListener
from crewai.events import BaseEventListener
class MyCustomListener(BaseEventListener):
def setup_listeners(self, crewai_event_bus):
@@ -758,8 +759,8 @@ CrewAI supports streaming responses from LLMs, allowing your application to rece
```python
from crewai import LLM, Agent, Task, Crew
from crewai.utilities.events import LLMStreamChunkEvent
from crewai.utilities.events.base_event_listener import BaseEventListener
from crewai.events import LLMStreamChunkEvent
from crewai.events import BaseEventListener
class MyCustomListener(BaseEventListener):
def setup_listeners(self, crewai_event_bus):

View File

@@ -2,11 +2,12 @@
title: Memory
description: Leveraging memory systems in the CrewAI framework to enhance agent capabilities.
icon: database
mode: "wide"
---
## Overview
The CrewAI framework provides a sophisticated memory system designed to significantly enhance AI agent capabilities. CrewAI offers **three distinct memory approaches** that serve different use cases:
The CrewAI framework provides a sophisticated memory system designed to significantly enhance AI agent capabilities. CrewAI offers **two distinct memory approaches** that serve different use cases:
1. **Basic Memory System** - Built-in short-term, long-term, and entity memory
2. **External Memory** - Standalone external memory providers
@@ -539,16 +540,71 @@ crew = Crew(
)
```
### Mem0 Provider
Short-Term Memory and Entity Memory both supports a tight integration with both Mem0 OSS and Mem0 Client as a provider. Here is how you can use Mem0 as a provider.
```python
from crewai.memory.short_term.short_term_memory import ShortTermMemory
from crewai.memory.entity_entity_memory import EntityMemory
mem0_oss_embedder_config = {
"provider": "mem0",
"config": {
"user_id": "john",
"local_mem0_config": {
"vector_store": {"provider": "qdrant","config": {"host": "localhost", "port": 6333}},
"llm": {"provider": "openai","config": {"api_key": "your-api-key", "model": "gpt-4"}},
"embedder": {"provider": "openai","config": {"api_key": "your-api-key", "model": "text-embedding-3-small"}}
},
"infer": True # Optional defaults to True
},
}
mem0_client_embedder_config = {
"provider": "mem0",
"config": {
"user_id": "john",
"org_id": "my_org_id", # Optional
"project_id": "my_project_id", # Optional
"api_key": "custom-api-key" # Optional - overrides env var
"run_id": "my_run_id", # Optional - for short-term memory
"includes": "include1", # Optional
"excludes": "exclude1", # Optional
"infer": True # Optional defaults to True
"custom_categories": new_categories # Optional - custom categories for user memory
},
}
short_term_memory_mem0_oss = ShortTermMemory(embedder_config=mem0_oss_embedder_config) # Short Term Memory with Mem0 OSS
short_term_memory_mem0_client = ShortTermMemory(embedder_config=mem0_client_embedder_config) # Short Term Memory with Mem0 Client
entity_memory_mem0_oss = EntityMemory(embedder_config=mem0_oss_embedder_config) # Entity Memory with Mem0 OSS
entity_memory_mem0_client = EntityMemory(embedder_config=mem0_client_embedder_config) # Short Term Memory with Mem0 Client
crew = Crew(
memory=True,
short_term_memory=short_term_memory_mem0_oss, # or short_term_memory_mem0_client
entity_memory=entity_memory_mem0_oss # or entity_memory_mem0_client
)
```
### Choosing the Right Embedding Provider
| Provider | Best For | Pros | Cons |
|:---------|:----------|:------|:------|
| **OpenAI** | General use, reliability | High quality, well-tested | Cost, requires API key |
| **Ollama** | Privacy, cost savings | Free, local, private | Requires local setup |
| **Google AI** | Google ecosystem | Good performance | Requires Google account |
| **Azure OpenAI** | Enterprise, compliance | Enterprise features | Complex setup |
| **Cohere** | Multilingual content | Great language support | Specialized use case |
| **VoyageAI** | Retrieval tasks | Optimized for search | Newer provider |
When selecting an embedding provider, consider factors like performance, privacy, cost, and integration needs.
Below is a comparison to help you decide:
| Provider | Best For | Pros | Cons |
| -------------- | ------------------------------ | --------------------------------- | ------------------------- |
| **OpenAI** | General use, high reliability | High quality, widely tested | Paid service, API key required |
| **Ollama** | Privacy-focused, cost savings | Free, runs locally, fully private | Requires local installation/setup |
| **Google AI** | Integration in Google ecosystem| Strong performance, good support | Google account required |
| **Azure OpenAI** | Enterprise & compliance needs| Enterprise-grade features, security | More complex setup process |
| **Cohere** | Multilingual content handling | Excellent language support | More niche use cases |
| **VoyageAI** | Information retrieval & search | Optimized for retrieval tasks | Relatively new provider |
| **Mem0** | Per-user personalization | Search-optimized embeddings | Paid service, API key required |
### Environment Variable Configuration
@@ -683,6 +739,17 @@ print(f"OpenAI: {openai_time:.2f}s")
print(f"Ollama: {ollama_time:.2f}s")
```
### Entity Memory batching behavior
Entity Memory supports batching when saving multiple entities at once. When you pass a list of `EntityMemoryItem`, the system:
- Emits a single MemorySaveStartedEvent with `entity_count`
- Saves each entity internally, collecting any partial errors
- Emits MemorySaveCompletedEvent with aggregate metadata (saved count, errors)
- Raises a partial-save exception if some entities failed (includes counts)
This improves performance and observability when writing many entities in one operation.
## 2. External Memory
External Memory provides a standalone memory system that operates independently from the crew's built-in memory. This is ideal for specialized memory providers or cross-application memory sharing.
@@ -986,8 +1053,8 @@ CrewAI emits the following memory-related events:
Track memory operation timing to optimize your application:
```python
from crewai.utilities.events.base_event_listener import BaseEventListener
from crewai.utilities.events import (
from crewai.events import (
BaseEventListener,
MemoryQueryCompletedEvent,
MemorySaveCompletedEvent
)
@@ -1021,8 +1088,8 @@ memory_monitor = MemoryPerformanceMonitor()
Log memory operations for debugging and insights:
```python
from crewai.utilities.events.base_event_listener import BaseEventListener
from crewai.utilities.events import (
from crewai.events import (
BaseEventListener,
MemorySaveStartedEvent,
MemoryQueryStartedEvent,
MemoryRetrievalCompletedEvent
@@ -1062,8 +1129,8 @@ memory_logger = MemoryLogger()
Capture and respond to memory errors:
```python
from crewai.utilities.events.base_event_listener import BaseEventListener
from crewai.utilities.events import (
from crewai.events import (
BaseEventListener,
MemorySaveFailedEvent,
MemoryQueryFailedEvent
)
@@ -1112,8 +1179,8 @@ error_tracker = MemoryErrorTracker(notify_email="admin@example.com")
Memory events can be forwarded to analytics and monitoring platforms to track performance metrics, detect anomalies, and visualize memory usage patterns:
```python
from crewai.utilities.events.base_event_listener import BaseEventListener
from crewai.utilities.events import (
from crewai.events import (
BaseEventListener,
MemoryQueryCompletedEvent,
MemorySaveCompletedEvent
)

View File

@@ -2,6 +2,7 @@
title: Planning
description: Learn how to add planning to your CrewAI Crew and improve their performance.
icon: ruler-combined
mode: "wide"
---
## Overview

View File

@@ -2,6 +2,7 @@
title: Processes
description: Detailed guide on workflow management through processes in CrewAI, with updated implementation details.
icon: bars-staggered
mode: "wide"
---
## Overview

View File

@@ -2,6 +2,7 @@
title: Reasoning
description: "Learn how to enable and use agent reasoning to improve task execution."
icon: brain
mode: "wide"
---
## Overview

View File

@@ -2,6 +2,7 @@
title: Tasks
description: Detailed guide on managing and creating tasks within the CrewAI framework.
icon: list-check
mode: "wide"
---
## Overview
@@ -59,6 +60,12 @@ crew = Crew(
| **Output Pydantic** _(optional)_ | `output_pydantic` | `Optional[Type[BaseModel]]` | A Pydantic model for task output. |
| **Callback** _(optional)_ | `callback` | `Optional[Any]` | Function/object to be executed after task completion. |
| **Guardrail** _(optional)_ | `guardrail` | `Optional[Callable]` | Function to validate task output before proceeding to next task. |
| **Guardrail Max Retries** _(optional)_ | `guardrail_max_retries` | `Optional[int]` | Maximum number of retries when guardrail validation fails. Defaults to 3. |
<Note type="warning" title="Deprecated: max_retries">
The task attribute `max_retries` is deprecated and will be removed in v1.0.0.
Use `guardrail_max_retries` instead to control retry attempts when a guardrail fails.
</Note>
## Creating Tasks
@@ -431,7 +438,7 @@ When a guardrail returns `(False, error)`:
2. The agent attempts to fix the issue
3. The process repeats until:
- The guardrail returns `(True, result)`
- Maximum retries are reached
- Maximum retries are reached (`guardrail_max_retries`)
Example with retry handling:
```python Code
@@ -452,7 +459,7 @@ task = Task(
expected_output="A valid JSON object",
agent=analyst,
guardrail=validate_json_output,
max_retries=3 # Limit retry attempts
guardrail_max_retries=3 # Limit retry attempts
)
```

View File

@@ -2,6 +2,7 @@
title: Testing
description: Learn how to test your CrewAI Crew and evaluate their performance.
icon: vial
mode: "wide"
---
## Overview

View File

@@ -2,6 +2,7 @@
title: Tools
description: Understanding and leveraging tools within the CrewAI framework for agent collaboration and task execution.
icon: screwdriver-wrench
mode: "wide"
---
## Overview

View File

@@ -2,6 +2,7 @@
title: Training
description: Learn how to train your CrewAI agents by giving them feedback early on and get consistent results.
icon: dumbbell
mode: "wide"
---
## Overview
@@ -21,13 +22,17 @@ To use the training feature, follow these steps:
3. Run the following command:
```shell
crewai train -n <n_iterations> <filename> (optional)
crewai train -n <n_iterations> -f <filename.pkl>
```
<Tip>
Replace `<n_iterations>` with the desired number of training iterations and `<filename>` with the appropriate filename ending with `.pkl`.
</Tip>
### Training Your Crew Programmatically
<Note>
If you omit `-f`, the output defaults to `trained_agents_data.pkl` in the current working directory. You can pass an absolute path to control where the file is written.
</Note>
### Training your Crew programmatically
To train your crew programmatically, use the following steps:
@@ -51,19 +56,65 @@ except Exception as e:
raise Exception(f"An error occurred while training the crew: {e}")
```
### Key Points to Note
## How trained data is used by agents
- **Positive Integer Requirement:** Ensure that the number of iterations (`n_iterations`) is a positive integer. The code will raise a `ValueError` if this condition is not met.
- **Filename Requirement:** Ensure that the filename ends with `.pkl`. The code will raise a `ValueError` if this condition is not met.
- **Error Handling:** The code handles subprocess errors and unexpected exceptions, providing error messages to the user.
CrewAI uses the training artifacts in two ways: during training to incorporate your human feedback, and after training to guide agents with consolidated suggestions.
It is important to note that the training process may take some time, depending on the complexity of your agents and will also require your feedback on each iteration.
### Training data flow
Once the training is complete, your agents will be equipped with enhanced capabilities and knowledge, ready to tackle complex tasks and provide more consistent and valuable insights.
```mermaid
flowchart TD
A["Start training<br/>CLI: crewai train -n -f<br/>or Python: crew.train(...)"] --> B["Setup training mode<br/>- task.human_input = true<br/>- disable delegation<br/>- init training_data.pkl + trained file"]
Remember to regularly update and retrain your agents to ensure they stay up-to-date with the latest information and advancements in the field.
subgraph "Iterations"
direction LR
C["Iteration i<br/>initial_output"] --> D["User human_feedback"]
D --> E["improved_output"]
E --> F["Append to training_data.pkl<br/>by agent_id and iteration"]
end
Happy training with CrewAI! 🚀
B --> C
F --> G{"More iterations?"}
G -- "Yes" --> C
G -- "No" --> H["Evaluate per agent<br/>aggregate iterations"]
H --> I["Consolidate<br/>suggestions[] + quality + final_summary"]
I --> J["Save by agent role to trained file<br/>(default: trained_agents_data.pkl)"]
J --> K["Normal (non-training) runs"]
K --> L["Auto-load suggestions<br/>from trained_agents_data.pkl"]
L --> M["Append to prompt<br/>for consistent improvements"]
```
### During training runs
- On each iteration, the system records for every agent:
- `initial_output`: the agents first answer
- `human_feedback`: your inline feedback when prompted
- `improved_output`: the agents follow-up answer after feedback
- This data is stored in a working file named `training_data.pkl` keyed by the agents internal ID and iteration.
- While training is active, the agent automatically appends your prior human feedback to its prompt to enforce those instructions on subsequent attempts within the training session.
Training is interactive: tasks set `human_input = true`, so running in a non-interactive environment will block on user input.
### After training completes
- When `train(...)` finishes, CrewAI evaluates the collected training data per agent and produces a consolidated result containing:
- `suggestions`: clear, actionable instructions distilled from your feedback and the difference between initial/improved outputs
- `quality`: a 010 score capturing improvement
- `final_summary`: a step-by-step set of action items for future tasks
- These consolidated results are saved to the filename you pass to `train(...)` (default via CLI is `trained_agents_data.pkl`). Entries are keyed by the agents `role` so they can be applied across sessions.
- During normal (non-training) execution, each agent automatically loads its consolidated `suggestions` and appends them to the task prompt as mandatory instructions. This gives you consistent improvements without changing your agent definitions.
### File summary
- `training_data.pkl` (ephemeral, per-session):
- Structure: `agent_id -> { iteration_number: { initial_output, human_feedback, improved_output } }`
- Purpose: capture raw data and human feedback during training
- Location: saved in the current working directory (CWD)
- `trained_agents_data.pkl` (or your custom filename):
- Structure: `agent_role -> { suggestions: string[], quality: number, final_summary: string }`
- Purpose: persist consolidated guidance for future runs
- Location: written to the CWD by default; use `-f` to set a custom (including absolute) path
## Small Language Model Considerations
@@ -129,3 +180,18 @@ Happy training with CrewAI! 🚀
</Warning>
</Tab>
</Tabs>
### Key Points to Note
- **Positive Integer Requirement:** Ensure that the number of iterations (`n_iterations`) is a positive integer. The code will raise a `ValueError` if this condition is not met.
- **Filename Requirement:** Ensure that the filename ends with `.pkl`. The code will raise a `ValueError` if this condition is not met.
- **Error Handling:** The code handles subprocess errors and unexpected exceptions, providing error messages to the user.
- Trained guidance is applied at prompt time; it does not modify your Python/YAML agent configuration.
- Agents automatically load trained suggestions from a file named `trained_agents_data.pkl` located in the current working directory. If you trained to a different filename, either rename it to `trained_agents_data.pkl` before running, or adjust the loader in code.
- You can change the output filename when calling `crewai train` with `-f/--filename`. Absolute paths are supported if you want to save outside the CWD.
It is important to note that the training process may take some time, depending on the complexity of your agents and will also require your feedback on each iteration.
Once the training is complete, your agents will be equipped with enhanced capabilities and knowledge, ready to tackle complex tasks and provide more consistent and valuable insights.
Remember to regularly update and retrain your agents to ensure they stay up-to-date with the latest information and advancements in the field.

View File

@@ -2,6 +2,7 @@
title: 'Agent Repositories'
description: 'Learn how to use Agent Repositories to share and reuse your agents across teams and projects'
icon: 'database'
mode: "wide"
---
Agent Repositories allow enterprise users to store, share, and reuse agent definitions across teams and projects. This feature enables organizations to maintain a centralized library of standardized agents, promoting consistency and reducing duplication of effort.

View File

@@ -2,6 +2,7 @@
title: Hallucination Guardrail
description: "Prevent and detect AI hallucinations in your CrewAI tasks"
icon: "shield-check"
mode: "wide"
---
## Overview

View File

@@ -2,6 +2,7 @@
title: Integrations
description: "Connected applications for your agents to take actions."
icon: "plug"
mode: "wide"
---
## Overview
@@ -59,7 +60,7 @@ Before using Authentication Integrations, ensure you have:
3. Click **Connect** on your desired service from the Authentication Integrations section
4. Complete the OAuth authentication flow
5. Grant necessary permissions for your use case
6. Get your Enterprise Token from your [CrewAI Enterprise](https://app.crewai.com) account page - https://app.crewai.com/crewai_plus/settings/account
6. All set! Get your Enterprise Token from your [CrewAI Enterprise](https://app.crewai.com) in **Integration** tab
<Frame>
![Integrations](/images/enterprise/enterprise_action_auth_token.png)

View File

@@ -2,6 +2,7 @@
title: "Role-Based Access Control (RBAC)"
description: "Control access to crews, tools, and data with roles, scopes, and granular permissions."
icon: "shield"
mode: "wide"
---
## Overview

View File

@@ -2,6 +2,7 @@
title: Tool Repository
description: "Using the Tool Repository to manage your tools"
icon: "toolbox"
mode: "wide"
---
## Overview
@@ -35,6 +36,22 @@ crewai tool install <tool-name>
This installs the tool and adds it to `pyproject.toml`.
You can use the tool by importing it and adding it to your agents:
```python
from your_tool.tool import YourTool
custom_tool = YourTool()
researcher = Agent(
role='Market Research Analyst',
goal='Provide up-to-date market analysis of the AI industry',
backstory='An expert analyst with a keen eye for market trends.',
tools=[custom_tool],
verbose=True
)
```
## Creating and Publishing Tools
To create a new tool project:

View File

@@ -2,6 +2,7 @@
title: Traces
description: "Using Traces to monitor your Crews"
icon: "timeline"
mode: "wide"
---
## Overview
@@ -141,6 +142,16 @@ Traces are invaluable for troubleshooting issues with your crews:
</Step>
</Steps>
## Performance and batching
CrewAI batches trace uploads to reduce overhead on high-volume runs:
- A TraceBatchManager buffers events and sends them in batches via the Plus API client
- Reduces network chatter and improves reliability on flaky connections
- Automatically enabled in the default trace listener; no configuration needed
This yields more stable tracing under load while preserving detailed task/agent telemetry.
<Card title="Need Help?" icon="headset" href="mailto:support@crewai.com">
Contact our support team for assistance with trace analysis or any other CrewAI Enterprise features.
</Card>

View File

@@ -2,6 +2,7 @@
title: Webhook Streaming
description: "Using Webhook Streaming to stream events to your webhook"
icon: "webhook"
mode: "wide"
---
## Overview
@@ -62,16 +63,96 @@ As requests are sent over HTTP, the order of events can't be guaranteed. If you
CrewAI supports both system events and custom events in Enterprise Event Streaming. These events are sent to your configured webhook endpoint during crew and flow execution.
- `crew_kickoff_started`
- `crew_step_started`
- `crew_step_completed`
- `crew_execution_completed`
- `llm_call_started`
- `llm_call_completed`
- `tool_usage_started`
- `tool_usage_completed`
- `crew_test_failed`
- *...and others*
### Flow Events:
- flow_created
- flow_started
- flow_finished
- flow_plot
- method_execution_started
- method_execution_finished
- method_execution_failed
### Agent Events:
- agent_execution_started
- agent_execution_completed
- agent_execution_error
- lite_agent_execution_started
- lite_agent_execution_completed
- lite_agent_execution_error
- agent_logs_started
- agent_logs_execution
- agent_evaluation_started
- agent_evaluation_completed
- agent_evaluation_failed
### Crew Events:
- crew_kickoff_started
- crew_kickoff_completed
- crew_kickoff_failed
- crew_train_started
- crew_train_completed
- crew_train_failed
- crew_test_started
- crew_test_completed
- crew_test_failed
- crew_test_result
### Task Events:
- task_started
- task_completed
- task_failed
- task_evaluation
### Tool Usage Events:
- tool_usage_started
- tool_usage_finished
- tool_usage_error
- tool_validate_input_error
- tool_selection_error
- tool_execution_error
### LLM Events:
- llm_call_started
- llm_call_completed
- llm_call_failed
- llm_stream_chunk
### LLM Guardrail Events:
- llm_guardrail_started
- llm_guardrail_completed
### Memory Events:
- memory_query_started
- memory_query_completed
- memory_query_failed
- memory_save_started
- memory_save_completed
- memory_save_failed
- memory_retrieval_started
- memory_retrieval_completed
### Knowledge Events:
- knowledge_search_query_started
- knowledge_search_query_completed
- knowledge_search_query_failed
- knowledge_query_started
- knowledge_query_completed
- knowledge_query_failed
### Reasoning Events:
- agent_reasoning_started
- agent_reasoning_completed
- agent_reasoning_failed
Event names match the internal event bus. See [GitHub source](https://github.com/crewAIInc/crewAI/tree/main/src/crewai/utilities/events) for the full list.

View File

@@ -0,0 +1,179 @@
---
title: "Automation Triggers"
description: "Automatically execute your CrewAI workflows when specific events occur in connected integrations"
icon: "bolt"
mode: "wide"
---
Automation triggers enable you to automatically run your CrewAI deployments when specific events occur in your connected integrations, creating powerful event-driven workflows that respond to real-time changes in your business systems.
## Overview
With automation triggers, you can:
- **Respond to real-time events** - Automatically execute workflows when specific conditions are met
- **Integrate with external systems** - Connect with platforms like Gmail, Outlook, OneDrive, JIRA, Slack, Stripe and more
- **Scale your automation** - Handle high-volume events without manual intervention
- **Maintain context** - Access trigger data within your crews and flows
## Managing Automation Triggers
### Viewing Available Triggers
To access and manage your automation triggers:
1. Navigate to your deployment in the CrewAI dashboard
2. Click on the **Triggers** tab to view all available trigger integrations
<Frame>
<img src="/images/enterprise/list-available-triggers.png" alt="List of available automation triggers" />
</Frame>
This view shows all the trigger integrations available for your deployment, along with their current connection status.
### Enabling and Disabling Triggers
Each trigger can be easily enabled or disabled using the toggle switch:
<Frame>
<img src="/images/enterprise/trigger-selected.png" alt="Enable or disable triggers with toggle" />
</Frame>
- **Enabled (blue toggle)**: The trigger is active and will automatically execute your deployment when the specified events occur
- **Disabled (gray toggle)**: The trigger is inactive and will not respond to events
Simply click the toggle to change the trigger state. Changes take effect immediately.
### Monitoring Trigger Executions
Track the performance and history of your triggered executions:
<Frame>
<img src="/images/enterprise/list-executions.png" alt="List of executions triggered by automation" />
</Frame>
## Building Automation
Before building your automation, it's helpful to understand the structure of trigger payloads that your crews and flows will receive.
### Payload Samples Repository
We maintain a comprehensive repository with sample payloads from various trigger sources to help you build and test your automations:
**🔗 [CrewAI Enterprise Trigger Payload Samples](https://github.com/crewAIInc/crewai-enterprise-trigger-payload-samples)**
This repository contains:
- **Real payload examples** from different trigger sources (Gmail, Google Drive, etc.)
- **Payload structure documentation** showing the format and available fields
### Triggers with Crew
Your existing crew definitions work seamlessly with triggers, you just need to have a task to parse the received payload:
```python
@CrewBase
class MyAutomatedCrew:
@agent
def researcher(self) -> Agent:
return Agent(
config=self.agents_config['researcher'],
)
@task
def parse_trigger_payload(self) -> Task:
return Task(
config=self.tasks_config['parse_trigger_payload'],
agent=self.researcher(),
)
@task
def analyze_trigger_content(self) -> Task:
return Task(
config=self.tasks_config['analyze_trigger_data'],
agent=self.researcher(),
)
```
The crew will automatically receive and can access the trigger payload through the standard CrewAI context mechanisms.
<Note>
Crew and Flow inputs can include `crewai_trigger_payload`. CrewAI automatically injects this payload:
- Tasks: appended to the first task's description by default ("Trigger Payload: {crewai_trigger_payload}")
- Control via `allow_crewai_trigger_context`: set `True` to always inject, `False` to never inject
- Flows: any `@start()` method that accepts a `crewai_trigger_payload` parameter will receive it
</Note>
### Integration with Flows
For flows, you have more control over how trigger data is handled:
#### Accessing Trigger Payload
All `@start()` methods in your flows will accept an additional parameter called `crewai_trigger_payload`:
```python
from crewai.flow import Flow, start, listen
class MyAutomatedFlow(Flow):
@start()
def handle_trigger(self, crewai_trigger_payload: dict = None):
"""
This start method can receive trigger data
"""
if crewai_trigger_payload:
# Process the trigger data
trigger_id = crewai_trigger_payload.get('id')
event_data = crewai_trigger_payload.get('payload', {})
# Store in flow state for use by other methods
self.state.trigger_id = trigger_id
self.state.trigger_type = event_data
return event_data
# Handle manual execution
return None
@listen(handle_trigger)
def process_data(self, trigger_data):
"""
Process the data from the trigger
"""
# ... process the trigger
```
#### Triggering Crews from Flows
When kicking off a crew within a flow that was triggered, pass the trigger payload as it:
```python
@start()
def delegate_to_crew(self, crewai_trigger_payload: dict = None):
"""
Delegate processing to a specialized crew
"""
crew = MySpecializedCrew()
# Pass the trigger payload to the crew
result = crew.crew().kickoff(
inputs={
'a_custom_parameter': "custom_value",
'crewai_trigger_payload': crewai_trigger_payload
},
)
return result
```
## Troubleshooting
**Trigger not firing:**
- Verify the trigger is enabled
- Check integration connection status
**Execution failures:**
- Check the execution logs for error details
- If you are developing, make sure the inputs include the `crewai_trigger_payload` parameter with the correct payload
Automation triggers transform your CrewAI deployments into responsive, event-driven systems that can seamlessly integrate with your existing business processes and tools.

View File

@@ -2,6 +2,7 @@
title: "Azure OpenAI Setup"
description: "Configure Azure OpenAI with Crew Studio for enterprise LLM connections"
icon: "microsoft"
mode: "wide"
---
This guide walks you through connecting Azure OpenAI with Crew Studio for seamless enterprise AI operations.
@@ -9,12 +10,12 @@ This guide walks you through connecting Azure OpenAI with Crew Studio for seamle
## Setup Process
<Steps>
<Step title="Access Azure OpenAI Studio">
1. In Azure, go to `Azure AI Services > select your deployment > open Azure OpenAI Studio`.
<Step title="Access Azure AI Foundry">
1. In Azure, go to [Azure AI Foundry](https://ai.azure.com/) > select your Azure OpenAI deployment.
2. On the left menu, click `Deployments`. If you don't have one, create a deployment with your desired model.
3. Once created, select your deployment and locate the `Target URI` and `Key` on the right side of the page. Keep this page open, as you'll need this information.
<Frame>
<img src="/images/enterprise/azure-openai-studio.png" alt="Azure OpenAI Studio" />
<img src="/images/enterprise/azure-openai-studio.png" alt="Azure AI Foundry" />
</Frame>
</Step>
@@ -48,4 +49,4 @@ If you encounter issues:
- Verify the Target URI format matches the expected pattern
- Check that the API key is correct and has proper permissions
- Ensure network access is configured to allow CrewAI connections
- Confirm the deployment model matches what you've configured in CrewAI
- Confirm the deployment model matches what you've configured in CrewAI

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@@ -2,6 +2,7 @@
title: "Build Crew"
description: "A Crew is a group of agents that work together to complete a task."
icon: "people-arrows"
mode: "wide"
---
## Overview

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@@ -2,6 +2,7 @@
title: "Deploy Crew"
description: "Deploying a Crew on CrewAI Enterprise"
icon: "rocket"
mode: "wide"
---
<Note>

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@@ -2,6 +2,7 @@
title: "Enable Crew Studio"
description: "Enabling Crew Studio on CrewAI Enterprise"
icon: "comments"
mode: "wide"
---
<Tip>

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@@ -2,6 +2,7 @@
title: "HubSpot Trigger"
description: "Trigger CrewAI crews directly from HubSpot Workflows"
icon: "hubspot"
mode: "wide"
---
This guide provides a step-by-step process to set up HubSpot triggers for CrewAI Enterprise, enabling you to initiate crews directly from HubSpot Workflows.

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@@ -2,6 +2,7 @@
title: "HITL Workflows"
description: "Learn how to implement Human-In-The-Loop workflows in CrewAI for enhanced decision-making"
icon: "user-check"
mode: "wide"
---
Human-In-The-Loop (HITL) is a powerful approach that combines artificial intelligence with human expertise to enhance decision-making and improve task outcomes. This guide shows you how to implement HITL within CrewAI.

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@@ -2,6 +2,7 @@
title: "Kickoff Crew"
description: "Kickoff a Crew on CrewAI Enterprise"
icon: "flag-checkered"
mode: "wide"
---
## Overview

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@@ -2,6 +2,7 @@
title: "React Component Export"
description: "Learn how to export and integrate CrewAI Enterprise React components into your applications"
icon: "react"
mode: "wide"
---
This guide explains how to export CrewAI Enterprise crews as React components and integrate them into your own applications.

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@@ -2,6 +2,7 @@
title: "Salesforce Trigger"
description: "Trigger CrewAI crews from Salesforce workflows for CRM automation"
icon: "salesforce"
mode: "wide"
---
CrewAI Enterprise can be triggered from Salesforce to automate customer relationship management workflows and enhance your sales operations.

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@@ -2,6 +2,7 @@
title: "Slack Trigger"
description: "Trigger CrewAI crews directly from Slack using slash commands"
icon: "slack"
mode: "wide"
---
This guide explains how to start a crew directly from Slack using CrewAI triggers.

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@@ -2,6 +2,7 @@
title: "Team Management"
description: "Learn how to invite and manage team members in your CrewAI Enterprise organization"
icon: "users"
mode: "wide"
---
As an administrator of a CrewAI Enterprise account, you can easily invite new team members to join your organization. This guide will walk you through the process step-by-step.

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@@ -2,6 +2,7 @@
title: "Update Crew"
description: "Updating a Crew on CrewAI Enterprise"
icon: "pencil"
mode: "wide"
---
<Note>

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@@ -2,6 +2,7 @@
title: "Webhook Automation"
description: "Automate CrewAI Enterprise workflows using webhooks with platforms like ActivePieces, Zapier, and Make.com"
icon: "webhook"
mode: "wide"
---
CrewAI Enterprise allows you to automate your workflow using webhooks. This article will guide you through the process of setting up and using webhooks to kickoff your crew execution, with a focus on integration with ActivePieces, a workflow automation platform similar to Zapier and Make.com.
@@ -79,14 +80,24 @@ CrewAI Enterprise allows you to automate your workflow using webhooks. This arti
## Webhook Output Examples
**Note:** Any `meta` object provided in your kickoff request will be included in all webhook payloads, allowing you to track requests and maintain context across the entire crew execution lifecycle.
<Tabs>
<Tab title="Step Webhook">
`stepWebhookUrl` - Callback that will be executed upon each agent inner thought
```json
{
"action": "**Preliminary Research Report on the Financial Industry for crewai Enterprise Solution**\n1. Industry Overview and Trends\nThe financial industry in ....\nConclusion:\nThe financial industry presents a fertile ground for implementing AI solutions like crewai, particularly in areas such as digital customer engagement, risk management, and regulatory compliance. Further engagement with the lead is recommended to better tailor the crewai solution to their specific needs and scale.",
"task_id": "97eba64f-958c-40a0-b61c-625fe635a3c0"
"prompt": "Research the financial industry for potential AI solutions",
"thought": "I need to conduct preliminary research on the financial industry",
"tool": "research_tool",
"tool_input": "financial industry AI solutions",
"result": "**Preliminary Research Report on the Financial Industry for crewai Enterprise Solution**\n1. Industry Overview and Trends\nThe financial industry in ....\nConclusion:\nThe financial industry presents a fertile ground for implementing AI solutions like crewai, particularly in areas such as digital customer engagement, risk management, and regulatory compliance. Further engagement with the lead is recommended to better tailor the crewai solution to their specific needs and scale.",
"kickoff_id": "97eba64f-958c-40a0-b61c-625fe635a3c0",
"meta": {
"requestId": "travel-req-123",
"source": "web-app"
}
}
```
</Tab>
@@ -95,8 +106,21 @@ CrewAI Enterprise allows you to automate your workflow using webhooks. This arti
```json
{
"description": "Using the information gathered from the lead's data, conduct preliminary research on the lead's industry, company background, and potential use cases for crewai. Focus on finding relevant data that can aid in scoring the lead and planning a strategy to pitch them crewai.The financial industry presents a fertile ground for implementing AI solutions like crewai, particularly in areas such as digital customer engagement, risk management, and regulatory compliance. Further engagement with the lead is recommended to better tailor the crewai solution to their specific needs and scale.",
"task_id": "97eba64f-958c-40a0-b61c-625fe635a3c0"
"description": "Using the information gathered from the lead's data, conduct preliminary research on the lead's industry, company background, and potential use cases for crewai. Focus on finding relevant data that can aid in scoring the lead and planning a strategy to pitch them crewai.",
"name": "Industry Research Task",
"expected_output": "Detailed research report on the financial industry",
"summary": "The financial industry presents a fertile ground for implementing AI solutions like crewai, particularly in areas such as digital customer engagement, risk management, and regulatory compliance. Further engagement with the lead is recommended to better tailor the crewai solution to their specific needs and scale.",
"agent": "Research Agent",
"output": "**Preliminary Research Report on the Financial Industry for crewai Enterprise Solution**\n1. Industry Overview and Trends\nThe financial industry in ....\nConclusion:\nThe financial industry presents a fertile ground for implementing AI solutions like crewai, particularly in areas such as digital customer engagement, risk management, and regulatory compliance.",
"output_json": {
"industry": "financial",
"key_opportunities": ["digital customer engagement", "risk management", "regulatory compliance"]
},
"kickoff_id": "97eba64f-958c-40a0-b61c-625fe635a3c0",
"meta": {
"requestId": "travel-req-123",
"source": "web-app"
}
}
```
</Tab>
@@ -105,8 +129,9 @@ CrewAI Enterprise allows you to automate your workflow using webhooks. This arti
```json
{
"task_id": "97eba64f-958c-40a0-b61c-625fe635a3c0",
"result": {
"kickoff_id": "97eba64f-958c-40a0-b61c-625fe635a3c0",
"result": "**Final Analysis Report**\n\nLead Score: Customer service enhancement and compliance are particularly relevant.\n\nTalking Points:\n- Highlight how crewai's AI solutions can transform customer service\n- Discuss crewai's potential for sustainability goals\n- Emphasize compliance capabilities\n- Stress adaptability for various operation scales",
"result_json": {
"lead_score": "Customer service enhancement, and compliance are particularly relevant.",
"talking_points": [
"Highlight how crewai's AI solutions can transform customer service with automated, personalized experiences and 24/7 support, improving both customer satisfaction and operational efficiency.",
@@ -114,6 +139,15 @@ CrewAI Enterprise allows you to automate your workflow using webhooks. This arti
"Emphasize crewai's ability to enhance compliance with evolving regulations through efficient data processing and reporting, reducing the risk of non-compliance penalties.",
"Stress the adaptability of crewai to support both extensive multinational operations and smaller, targeted projects, ensuring the solution grows with the institution's needs."
]
},
"token_usage": {
"total_tokens": 1250,
"prompt_tokens": 800,
"completion_tokens": 450
},
"meta": {
"requestId": "travel-req-123",
"source": "web-app"
}
}
```

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@@ -2,6 +2,7 @@
title: "Zapier Trigger"
description: "Trigger CrewAI crews from Zapier workflows to automate cross-app workflows"
icon: "bolt"
mode: "wide"
---
This guide will walk you through the process of setting up Zapier triggers for CrewAI Enterprise, allowing you to automate workflows between CrewAI Enterprise and other applications.

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@@ -2,6 +2,7 @@
title: Asana Integration
description: "Team task and project coordination with Asana integration for CrewAI."
icon: "circle"
mode: "wide"
---
## Overview

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@@ -2,6 +2,7 @@
title: Box Integration
description: "File storage and document management with Box integration for CrewAI."
icon: "box"
mode: "wide"
---
## Overview

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@@ -2,6 +2,7 @@
title: ClickUp Integration
description: "Task and productivity management with ClickUp integration for CrewAI."
icon: "list-check"
mode: "wide"
---
## Overview

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@@ -2,6 +2,7 @@
title: GitHub Integration
description: "Repository and issue management with GitHub integration for CrewAI."
icon: "github"
mode: "wide"
---
## Overview

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@@ -2,6 +2,7 @@
title: Gmail Integration
description: "Email and contact management with Gmail integration for CrewAI."
icon: "envelope"
mode: "wide"
---
## Overview

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@@ -2,6 +2,7 @@
title: Google Calendar Integration
description: "Event and schedule management with Google Calendar integration for CrewAI."
icon: "calendar"
mode: "wide"
---
## Overview

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@@ -2,6 +2,7 @@
title: Google Sheets Integration
description: "Spreadsheet data synchronization with Google Sheets integration for CrewAI."
icon: "google"
mode: "wide"
---
## Overview

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@@ -2,6 +2,7 @@
title: "HubSpot Integration"
description: "Manage companies and contacts in HubSpot with CrewAI."
icon: "briefcase"
mode: "wide"
---
## Overview

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@@ -2,6 +2,7 @@
title: Jira Integration
description: "Issue tracking and project management with Jira integration for CrewAI."
icon: "bug"
mode: "wide"
---
## Overview

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@@ -2,6 +2,7 @@
title: Linear Integration
description: "Software project and bug tracking with Linear integration for CrewAI."
icon: "list-check"
mode: "wide"
---
## Overview

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@@ -2,6 +2,7 @@
title: Notion Integration
description: "Page and database management with Notion integration for CrewAI."
icon: "book"
mode: "wide"
---
## Overview

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@@ -2,6 +2,7 @@
title: Salesforce Integration
description: "CRM and sales automation with Salesforce integration for CrewAI."
icon: "salesforce"
mode: "wide"
---
## Overview

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@@ -2,6 +2,7 @@
title: Shopify Integration
description: "E-commerce and online store management with Shopify integration for CrewAI."
icon: "shopify"
mode: "wide"
---
## Overview

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@@ -2,6 +2,7 @@
title: Slack Integration
description: "Team communication and collaboration with Slack integration for CrewAI."
icon: "slack"
mode: "wide"
---
## Overview

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@@ -2,6 +2,7 @@
title: Stripe Integration
description: "Payment processing and subscription management with Stripe integration for CrewAI."
icon: "stripe"
mode: "wide"
---
## Overview

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@@ -2,6 +2,7 @@
title: Zendesk Integration
description: "Customer support and helpdesk management with Zendesk integration for CrewAI."
icon: "headset"
mode: "wide"
---
## Overview

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@@ -2,6 +2,7 @@
title: "CrewAI Enterprise"
description: "Deploy, monitor, and scale your AI agent workflows"
icon: "globe"
mode: "wide"
---
## Introduction

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@@ -2,6 +2,7 @@
title: FAQs
description: "Frequently asked questions about CrewAI Enterprise"
icon: "circle-question"
mode: "wide"
---
<AccordionGroup>

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@@ -2,6 +2,7 @@
title: CrewAI Cookbooks
description: Feature-focused quickstarts and notebooks for learning patterns fast.
icon: book
mode: "wide"
---
## Quickstarts & Demos

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@@ -2,6 +2,7 @@
title: CrewAI Examples
description: Explore curated examples organized by Crews, Flows, Integrations, and Notebooks.
icon: rocket-launch
mode: "wide"
---
## Crews

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@@ -2,6 +2,7 @@
title: Customizing Prompts
description: Dive deeper into low-level prompt customization for CrewAI, enabling super custom and complex use cases for different models and languages.
icon: message-pen
mode: "wide"
---
## Why Customize Prompts?

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@@ -2,6 +2,7 @@
title: Fingerprinting
description: Learn how to use CrewAI's fingerprinting system to uniquely identify and track components throughout their lifecycle.
icon: fingerprint
mode: "wide"
---
## Overview

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@@ -2,6 +2,7 @@
title: Crafting Effective Agents
description: Learn best practices for designing powerful, specialized AI agents that collaborate effectively to solve complex problems.
icon: robot
mode: "wide"
---
## The Art and Science of Agent Design

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@@ -2,6 +2,7 @@
title: Evaluating Use Cases for CrewAI
description: Learn how to assess your AI application needs and choose the right approach between Crews and Flows based on complexity and precision requirements.
icon: scale-balanced
mode: "wide"
---
## Understanding the Decision Framework

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@@ -2,6 +2,7 @@
title: Build Your First Crew
description: Step-by-step tutorial to create a collaborative AI team that works together to solve complex problems.
icon: users-gear
mode: "wide"
---
## Unleashing the Power of Collaborative AI

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@@ -2,6 +2,7 @@
title: Build Your First Flow
description: Learn how to create structured, event-driven workflows with precise control over execution.
icon: diagram-project
mode: "wide"
---
## Taking Control of AI Workflows with Flows

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@@ -2,6 +2,7 @@
title: Mastering Flow State Management
description: A comprehensive guide to managing, persisting, and leveraging state in CrewAI Flows for building robust AI applications.
icon: diagram-project
mode: "wide"
---
## Understanding the Power of State in Flows
@@ -348,6 +349,31 @@ class SelectivePersistFlow(Flow):
## Advanced State Patterns
### Conditional starts and resumable execution
Flows support conditional `@start()` and resumable execution for HITL/cyclic scenarios:
```python
from crewai.flow.flow import Flow, start, listen, and_, or_
class ResumableFlow(Flow):
@start() # unconditional start
def init(self):
...
# Conditional start: run after "init" or external trigger name
@start("init")
def maybe_begin(self):
...
@listen(and_(init, maybe_begin))
def proceed(self):
...
```
- Conditional `@start()` accepts a method name, a router label, or a callable condition.
- During resume, listeners continue from prior checkpoints; cycle/router branches honor resumption flags.
### State-Based Conditional Logic
You can use state to implement complex conditional logic in your flows:

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@@ -2,6 +2,7 @@
title: Installation
description: Get started with CrewAI - Install, configure, and build your first AI crew
icon: wrench
mode: "wide"
---
## Video Tutorial
@@ -30,6 +31,12 @@ Watch this video tutorial for a step-by-step demonstration of the installation p
If you need to update Python, visit [python.org/downloads](https://python.org/downloads)
</Note>
<Note>
**OpenAI SDK Requirement**
CrewAI 0.175.0 requires `openai >= 1.13.3`. If you manage dependencies yourself, ensure your environment satisfies this constraint to avoid import/runtime issues.
</Note>
CrewAI uses the `uv` as its dependency management and package handling tool. It simplifies project setup and execution, offering a seamless experience.
If you haven't installed `uv` yet, follow **step 1** to quickly get it set up on your system, else you can skip to **step 2**.

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@@ -2,6 +2,7 @@
title: Introduction
description: Build AI agent teams that work together to tackle complex tasks
icon: handshake
mode: "wide"
---
# What is CrewAI?

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@@ -1,6 +1,7 @@
---
title: Before and After Kickoff Hooks
description: Learn how to use before and after kickoff hooks in CrewAI
mode: "wide"
---
CrewAI provides hooks that allow you to execute code before and after a crew's kickoff. These hooks are useful for preprocessing inputs or post-processing results.

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@@ -2,6 +2,7 @@
title: Bring your own agent
description: Learn how to bring your own agents that work within a Crew.
icon: robots
mode: "wide"
---
Interoperability is a core concept in CrewAI. This guide will show you how to bring your own agents that work within a Crew.

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@@ -2,6 +2,7 @@
title: Coding Agents
description: Learn how to enable your CrewAI Agents to write and execute code, and explore advanced features for enhanced functionality.
icon: rectangle-code
mode: "wide"
---
## Introduction

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@@ -2,6 +2,7 @@
title: Conditional Tasks
description: Learn how to use conditional tasks in a crewAI kickoff
icon: diagram-subtask
mode: "wide"
---
## Introduction

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@@ -2,6 +2,7 @@
title: Create Custom Tools
description: Comprehensive guide on crafting, using, and managing custom tools within the CrewAI framework, including new functionalities and error handling.
icon: hammer
mode: "wide"
---
## Creating and Utilizing Tools in CrewAI

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@@ -2,6 +2,7 @@
title: Custom LLM Implementation
description: Learn how to create custom LLM implementations in CrewAI.
icon: code
mode: "wide"
---
## Overview

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@@ -2,6 +2,7 @@
title: Custom Manager Agent
description: Learn how to set a custom agent as the manager in CrewAI, providing more control over task management and coordination.
icon: user-shield
mode: "wide"
---
# Setting a Specific Agent as Manager in CrewAI

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@@ -2,6 +2,7 @@
title: Customize Agents
description: A comprehensive guide to tailoring agents for specific roles, tasks, and advanced customizations within the CrewAI framework.
icon: user-pen
mode: "wide"
---
## Customizable Attributes

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@@ -2,6 +2,7 @@
title: "Image Generation with DALL-E"
description: "Learn how to use DALL-E for AI-powered image generation in your CrewAI projects"
icon: "image"
mode: "wide"
---
CrewAI supports integration with OpenAI's DALL-E, allowing your AI agents to generate images as part of their tasks. This guide will walk you through how to set up and use the DALL-E tool in your CrewAI projects.

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@@ -2,6 +2,7 @@
title: Force Tool Output as Result
description: Learn how to force tool output as the result in an Agent's task in CrewAI.
icon: wrench-simple
mode: "wide"
---
## Introduction

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@@ -2,6 +2,7 @@
title: Hierarchical Process
description: A comprehensive guide to understanding and applying the hierarchical process within your CrewAI projects, updated to reflect the latest coding practices and functionalities.
icon: sitemap
mode: "wide"
---
## Introduction

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@@ -2,6 +2,7 @@
title: "Human-in-the-Loop (HITL) Workflows"
description: "Learn how to implement Human-in-the-Loop workflows in CrewAI for enhanced decision-making"
icon: "user-check"
mode: "wide"
---
Human-in-the-Loop (HITL) is a powerful approach that combines artificial intelligence with human expertise to enhance decision-making and improve task outcomes. This guide shows you how to implement HITL within CrewAI.

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@@ -2,6 +2,7 @@
title: Human Input on Execution
description: Integrating CrewAI with human input during execution in complex decision-making processes and leveraging the full capabilities of the agent's attributes and tools.
icon: user-check
mode: "wide"
---
## Human input in agent execution

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@@ -2,6 +2,7 @@
title: Kickoff Crew Asynchronously
description: Kickoff a Crew Asynchronously
icon: rocket-launch
mode: "wide"
---
## Introduction

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@@ -2,6 +2,7 @@
title: Kickoff Crew for Each
description: Kickoff Crew for Each Item in a List
icon: at
mode: "wide"
---
## Introduction

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@@ -2,6 +2,7 @@
title: Connect to any LLM
description: Comprehensive guide on integrating CrewAI with various Large Language Models (LLMs) using LiteLLM, including supported providers and configuration options.
icon: brain-circuit
mode: "wide"
---
## Connect CrewAI to LLMs

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