- Updated `create_json_crew.py` to require `crewai[tools]>=1.14.7`.
- Enhanced `git.py` with improved repository initialization, including automatic initial commit creation and exclusion patterns for initial commits.
- Modified `install_crew.py` to allow error handling during installation with an optional `raise_on_error` parameter.
- Expanded `plus_api.py` to include methods for creating and updating crews from ZIP files.
- Introduced a new `archive.py` for creating deployable ZIP archives of CrewAI projects, ensuring local artifacts are excluded.
- Updated `run_crew.py` to manage JSON crew dependencies and run crews in the project's environment.
- Enhanced deployment logic in `main.py` to handle ZIP uploads and improve user feedback during deployment processes.
- Added tests for new functionalities and ensured existing tests reflect recent changes in behavior and requirements.
* feat(cli): introduce JSON crew project support and TUI enhancements
- Added support for creating and running JSON-defined crew projects, allowing users to scaffold projects with a new `create_json_crew.py` file.
- Implemented a full-screen Textual TUI for crew execution in `crew_run_tui.py`, enhancing user interaction with a two-column layout.
- Updated `run_crew.py` to prioritize JSON crew projects and added daemon mode for running without TUI.
- Introduced interactive pickers in `tui_picker.py` for improved CLI prompts.
- Enhanced validation for JSON crew files in `validate.py` to ensure proper structure and agent definitions.
- Updated `.gitignore` to exclude demo and crewai directories.
* feat: update LLM model references to gpt-5.4-mini
- Changed default LLM model from gpt-4o-mini to gpt-5.4-mini across various files, including CLI options, JSON crew configurations, and agent definitions.
- Enhanced benchmark and human feedback functionalities to utilize the new model.
- Improved user interface elements in the TUI for better interaction and feedback during execution.
- Added support for new skills directory in JSON crew project creation.
* feat(benchmark): add crew-level benchmarking functionality
- Introduced a new `benchmark` command in the CLI for crew-level benchmarking, allowing users to specify agents, models, and timeout settings.
- Implemented `CrewBenchmarkCase` to handle crew-level benchmark cases with inputs and criteria.
- Enhanced the benchmark runner to support progress tracking and detailed reporting of results for multiple models.
- Added tests for loading crew benchmark cases and validating their structure.
- Updated existing benchmark functions to accommodate the new crew-level execution model.
* feat(cli): enhance JSON crew project functionality and TUI improvements
- Added optional agent-level guardrails and advanced options in JSON crew configurations to improve output validation and flexibility.
- Updated the TUI to better handle plan step statuses, including visual indicators for task completion and failure.
- Introduced methods for parsing and managing step observation events, ensuring accurate updates to task statuses during execution.
- Enhanced validation for JSON crew projects, ensuring proper structure and error handling for agent and task definitions.
- Added comprehensive tests for new features and validation logic, ensuring robustness in JSON crew project handling.
* refactor(cli): streamline JSON crew project handling and improve validation
- Refactored JSON crew project loading and validation logic to enhance clarity and maintainability.
- Introduced utility functions for finding JSON crew files, improving code reuse across modules.
- Removed deprecated benchmark functionality and associated tests to simplify the codebase.
- Updated CLI commands to utilize the new JSON project structure, ensuring compatibility with recent changes.
- Enhanced test coverage for JSON crew project features, ensuring robust validation and error handling.
* feat(cli): enhance activity log navigation and focus management
- Added functionality to focus on the activity log when navigating through log entries.
- Implemented refresh logic for the log panel to ensure updates are displayed correctly during navigation.
- Improved keyboard navigation for log entries, allowing users to expand and scroll through logs seamlessly.
- Added tests to verify the correct behavior of log navigation and focus management in the TUI.
* feat(cli): enhance JSON crew project interaction and input handling
- Introduced a new function to enable prompt line editing for better user experience during input prompts.
- Updated the JSON crew project wizards to show interpolation hints for dynamic values, improving user guidance.
- Enhanced the handling of missing input placeholders by prompting users for required values during crew setup.
- Refactored the crew run logic to ensure proper loading and preparation of JSON-defined crews, including runtime input management.
- Added tests to verify the correct behavior of new input handling features and JSON crew project interactions.
* feat(cli): improve crew project input prompts and event handling
- Enhanced the `_prompt_text` function to allow for configurable spacing before prompts, improving user experience during input collection.
- Updated the wizards for agent and task creation to utilize the new prompt configuration, ensuring a more compact and streamlined interaction.
- Introduced new plan step lifecycle events (`PlanStepStartedEvent`, `PlanStepCompletedEvent`) to better track the execution status of plan steps.
- Refactored the step executor to emit these events during the execution of tasks, improving observability and debugging capabilities.
- Added tests to verify the correct behavior of new prompt handling and event emissions during crew project execution.
* fix: refine json-first crew interactions
* fix: prioritize common json crew tools
* fix: make json crew more tools expandable
* fix: show json crew tools by category
* feat(memory): update default embedder to OpenAI text-embedding-3-large and enhance memory compatibility
- Changed the default embedding model for Memory to OpenAI text-embedding-3-large, which uses 3072-dimensional vectors.
- Added warnings regarding compatibility issues with existing local memory stores created with 1536-dimensional embeddings.
- Updated documentation to reflect the new default embedder and its configuration options.
- Enhanced the CLI and codebase to support the new embedding model across various components, ensuring a seamless transition for users.
* fix: address PR review feedback for JSON-first crews
Review blockers:
- Forward trained_agents_file to JSON crews: crewai run -f now exports
CREWAI_TRAINED_AGENTS_FILE for the in-process JSON crew path
- Wizard agent picker: Esc/cancel now reprompts instead of silently
assigning the first agent
- JSON tool resolution hard-fails: unknown tool names, missing custom
tool files, and invalid custom tool modules raise JSONProjectError
with actionable messages instead of warn-and-continue
- Embedding dimension mismatch: LanceDB and Qdrant Edge storages raise
EmbeddingDimensionMismatchError with reset/pin guidance instead of
silently zero-filling vectors or returning empty search results
- Custom tool code execution documented in loader docstring and the
scaffolded project README
CI fixes:
- ruff format across lib/
- All 133 PR-introduced mypy errors fixed (llm.py lazy-litellm and
cli.py lazy command shims now use TYPE_CHECKING imports; textual
is_mounted misuse fixed; pick_many overloads; misc annotations)
Bot review comments:
- Empty except blocks now have explanatory comments or debug logging
- Removed unused _C_BG/_C_PANEL/_C_BORDER globals and redundant
import re; tests use a single import style for create_json_crew
Tests: trained-agents propagation, wizard cancel, tool resolution
failures, and dimension mismatch guidance.
Co-Authored-By: Claude Fable 5 <noreply@anthropic.com>
* fix: address second round of PR review comments
Cursor Bugbot:
- Wizard agent slugs: strip to [a-z0-9_] and fall back to agent_<n> so
symbol-only roles can't produce an empty agents/.jsonc filename
- Wizard task names: dedupe against prior task names and fall back to
task_<n> for symbol-only descriptions
CodeRabbit:
- Agent.message(): import Task explicitly at runtime instead of relying
on the namespace injection done by crewai/__init__
- Async executor: move the native-tools-unsupported fallback from
_ainvoke_loop_react (self-recursion) to _ainvoke_loop_native_tools,
mirroring the sync implementation
- StepExecutor downgrade: keep the in-step conversation and append the
text-tooling instructions instead of rebuilding messages, so completed
native tool calls are not re-executed
- crewai-files: extension-based MIME lookup now runs before byte
sniffing so csv/xml types are not degraded to text/plain
- Memory storages: validate every record in a save() batch against a
consistent embedding dimension (LanceDB previously checked only the
first record); added mixed-batch tests
- _print_post_tui_summary now typed against CrewRunApp
- Docs: Azure OpenAI default embedder change called out in the memory
migration warning and provider table
Code quality bots:
- Removed unused _C_YELLOW/_C_CYAN (crew_run_tui) and _GREEN (tui_picker)
Co-Authored-By: Claude Fable 5 <noreply@anthropic.com>
* feat(cli): accordion tool picker in JSON crew wizard
The flat tool list had grown to ~90 rows. The picker now shows:
- Common tools always visible at the top
- Every other category as a single expandable row with tool and
selection counts (e.g. "Search & Research (27 tools, 2 selected)")
- Expanding a category collapses the previously expanded one
- Selections persist across expand/collapse via new preselected
support in pick_many; cursor follows the toggled category row
tui_picker gains preselected + initial_cursor options on pick_many,
and Esc in multi-select now confirms the current selection instead of
discarding it (required so collapsing can't silently drop choices).
Co-Authored-By: Claude Fable 5 <noreply@anthropic.com>
* refactor(cli): remove --daemon flag from crewai run
The flag only affected JSON crew projects — classic and flow projects
ignored it entirely, which made the behavior inconsistent. Removed the
option, the daemon code path (_run_json_crew_daemon), and its helper
(_load_json_crew_with_inputs).
Co-Authored-By: Claude Fable 5 <noreply@anthropic.com>
* test: update run command tests after --daemon removal
lib/crewai/tests/cli/test_run_crew.py still asserted the old
run_crew(trained_agents_file=..., daemon=False) call signature.
Co-Authored-By: Claude Fable 5 <noreply@anthropic.com>
* fix(cli): exit codes, mid-run quit, async statuses, hyphen placeholders
Addresses the latest Bugbot review round:
- Failed JSON crew runs now exit non-zero (SystemExit(1)) so scripts
and CI don't treat failures as success, mirroring the classic path
- Quitting the TUI mid-run now ends the process (os._exit(130));
kickoff runs in a thread worker that cannot be force-cancelled, so
letting the CLI return would leave LLM/tool work burning tokens in
the background
- Sidebar task statuses are now async-safe: completion/failure events
resolve the task's own row via identity instead of assuming the most
recently started task, and starting a task no longer blanket-marks
earlier active rows as done
- The runtime-input prompt regex now accepts hyphenated placeholder
names ({my-topic}), matching kickoff's interpolation pattern
Co-Authored-By: Claude Fable 5 <noreply@anthropic.com>
* fix: validation safety, custom tool sandboxing, TUI log integrity, memory error surfacing
- Deploy validation no longer executes project code: validation mode
checks tool declarations structurally (well-formed entries, custom
tool file exists) without importing or instantiating anything.
custom:<name> resolution only happens on the actual run path.
- custom:<name> is constrained to [A-Za-z_][A-Za-z0-9_]* and the
resolved path must stay inside the project's tools/ directory, so
custom:../foo or absolute-path names cannot execute code outside it.
Tool paths resolve relative to the crew project root, not cwd.
- TUI task logs are built from per-task state captured at task start
(idx, description, agent, start time); an out-of-order completion
takes its output from the event and no longer steals or resets the
current task's streamed steps/output.
- EmbeddingDimensionMismatchError now inherits ValueError instead of
RuntimeError so background saves surface it through
MemorySaveFailedEvent instead of silently dropping the save; the
shutdown catch in _background_encode_batch is narrowed to the
"cannot schedule new futures" case.
Co-Authored-By: Claude Fable 5 <noreply@anthropic.com>
* fix(cli): declared project type wins over crew.json presence
A flow project that also contains a crew.json(c) file now runs and
validates as the flow it declares in pyproject.toml instead of being
hijacked by the JSON crew path. Both crewai run (_has_json_crew) and
deploy validation (_is_json_crew) check tool.crewai.type; a missing or
unreadable pyproject still means a bare JSON crew project.
Also documents why StepObservationFailedEvent intentionally marks the
plan step "done": the event signals an observer failure, not a step
failure, and the executor continues past it.
Co-Authored-By: Claude Fable 5 <noreply@anthropic.com>
* fix(cli): type the declared_type locals so mypy stays clean
Comparing an Any-typed .get() chain returns Any, which tripped
no-any-return on the previous commit.
Co-Authored-By: Claude Fable 5 <noreply@anthropic.com>
---------
Co-authored-by: Claude Fable 5 <noreply@anthropic.com>
Let users run a Flow from a Flow Definition YAML file or inline string
without writing Python, passing kickoff inputs as `--inputs` JSON. The
flag is gated behind an experimental warning since the definition format
may still change.
A `do:` step can now say `call: tool` and name a CrewAI tool to run,
passing its inputs under `with:`. Before this, a definition could only
point at Python code to run.
```yaml
methods:
search:
start: true
do:
call: tool
ref: crewai_tools:ExaSearchTool
with:
search_query: ai agents
```
* Drive human feedback from the flow definition
@human_feedback previously wrapped methods with the full HITL runtime (feedback
request, outcome collapse, learn loop), so flows built from a YAML definition —
which carry no decorated callables — could not pause for or route on human
feedback.
# Conflicts:
# lib/crewai/src/crewai/flow/persistence/decorators.py
# lib/crewai/src/crewai/flow/runtime/__init__.py
* Address code review comments
* Wire config and persistence from FlowDefinition into the runtime
`from_definition` was silently dropping all config fields; it now passes
`config.model_dump()` so suppress_flow_events, max_method_calls, etc.
actually apply.
Persistence is now engine-driven: `_persist_method_completion` fires
after every method using the definition's persist metadata, so
`@persist` no longer needs to wrap methods — it just stamps them.
* Address code review comments
* feat: aggregate LLM token usage at the flow level
Introduces `flow.usage_metrics`, a snapshot of every LLMCallCompletedEvent
emitted under the flow's `current_flow_id` for the duration of one kickoff
(or resume) call. Aggregation happens on the singleton event bus so it
covers crews, direct `LLM.call`s, and nested listener calls — solving the
mismatch where the SDK reported only the last crew's usage while the
Enterprise UI showed the correct full total.
Co-authored-by: Cursor <cursoragent@cursor.com>
* refactor: centralize provider key normalization in UsageMetrics
Add UsageMetrics.from_provider_dict to normalize raw LLM usage dicts
across providers (LiteLLM, native Anthropic, native Gemini, OpenAI
nested cached). BaseLLM._track_token_usage_internal and the flow-level
aggregator now share this single source of truth, so `flow.usage_metrics`
agrees with per-LLM totals on every provider — including the native
Anthropic path that emits `input_tokens`/`output_tokens` instead of
`prompt_tokens`/`completion_tokens`.
* fix: flush event bus before reading aggregated usage_metrics
`crewai_event_bus.emit` dispatches LLMCallCompletedEvent handlers on a
ThreadPoolExecutor (fire-and-forget), so a flow whose last LLM call
completes right before kickoff_async/resume_async returns can detach
the usage listener while that handler is still queued, leaving its
tokens off `flow.usage_metrics`. Match `Crew.kickoff()` and call
`crewai_event_bus.flush()` in both finally blocks so every handler
drains before the listener is detached.
---------
Co-authored-by: Cursor <cursoragent@cursor.com>
* Read flow dispatch from FlowDefinition
Store the definition in a `_definition` PrivateAttr at post-init and
convert the dispatch helpers (`_start_method_names`, `_listener_methods`,
`_start_condition`, `_listen_condition`, `_is_router`) from classmethods
to instance methods that read it. Event names now fall back to
`self._definition.name` instead of `self.__class__.__name__`.
Behavior is identical for decorator subclasses, but the engine no longer
assumes the definition comes from the class. This is the seam for
`Flow.from_definition`, where an instance runs a definition that was
loaded rather than built from a Python subclass.
* Add Flow.from_definition to run flows without a subclass
A FlowDefinition (e.g. loaded from YAML) was only usable for dispatch on
decorator-authored subclasses. Now each method definition records an
importable `module:qualname` handler ref, and `Flow.from_definition`
resolves and binds those handlers to build a runnable flow directly.
* Build flow state from FlowDefinition
Definition-driven flows previously always started with a bare dict
state.
* Replace handler string with structured FlowActionDefinition
`handler: str | None` was optional and opaque — missing handlers only
surfaced at kickoff time. `do: FlowActionDefinition` is required, so
Pydantic rejects invalid definitions at parse time.
The `call: "code"` discriminator prepares the schema for future
non-Python action types (e.g. MCP tool, crew) without touching
`FlowMethodDefinition`. Resolution logic is extracted to
`runtime/_action_resolvers.py` to keep the dispatch point isolated.
* Fix conversational start router missing required do field
FlowMethodDefinition.do became required when the handler string was
replaced with FlowActionDefinition, but _conversation_start_router still
built its fragment without it, breaking crewai import entirely.
Co-Authored-By: Claude Fable 5 <noreply@anthropic.com>
* Add event scoping to flow test
* Change lib/crewai/tests/test_flow_from_definition.py
---------
Co-authored-by: Claude Fable 5 <noreply@anthropic.com>
A custom BaseLLM subclass serializes with the inherited llm_type "base",
which the registry maps to the abstract BaseLLM. Restore then crashed on
cls(**value). Rebuild a concrete LLM from the saved config when the
resolved class is abstract.
Checkpoint serialization stamps checkpoint_completed_methods onto every live
Flow in RuntimeState.root, including the agent executor reused across a crew's
tasks. kickoff_async read that stamp as a restore signal, so the second task
replayed the first task's completed methods and never reached a final answer.
Gate is_restoring on _restored_from_checkpoint, set only by
_restore_from_checkpoint, and consume it single-shot.
flow.plot defaults to show=True, which calls webbrowser.open on every run.
The test only asserts FlowPlotEvent is emitted, so disable the browser open.
* improve one less route
* flows in flows, new agent executor causing early trace batch finalization
* addressing comments
* addressing comments pt2
* lint and typecheck fix
* decouple convo logic from runtime and added a conversational_definition
* type check fix
* always defer traces for convo and so fix tests to reflect that
Re-evaluate the whole `@listen`/`@router` condition tree against the set
of events seen so far, instead of tracking which AND sub-branches remain
pending.
Net effect:
* Fixes a regression where `or_()` short-circuited at the first
satisfied branch, leaving a sibling `and_()` half-complete so a later
trigger could spuriously re-fire the listener
* Removes the fragile per-branch pending state and `id()`-based keys
* Shrinks the evaluator to one readable predicate
* Migrate @listen/@router runtime to read from FlowDefinition
The runtime now resolves listener conditions, router status, and emit
values from `FlowMethodDefinition` instead of legacy method metadata and
the `_listeners`/`_routers`/`_router_emit` registries.
* Evaluate AND/OR listener conditions over the definition shape via
`_evaluate_definition_condition`
* Drop the class registries and the `FlowMeta` extraction that built
them; stop stamping `__trigger_methods__`, `__is_router__`,
`__router_emit__`, and friends
* `@human_feedback` emit now lives only on its config
* Simplify conditionals DSL
Add opt-in extension seams so an application can route memory, knowledge,
RAG, and flow persistence through a custom backend without subclassing or
threading an explicit instance through every construction site -- mirroring
the existing crewai_core.lock_store.set_lock_backend seam.
- memory: crewai.memory.storage.factory.set_memory_storage_factory
- knowledge: crewai.knowledge.storage.factory.set_knowledge_storage_factory
- rag: crewai.rag.factory.register_rag_client_factory (provider registry)
- flow: crewai.flow.persistence.factory.set_flow_persistence_factory
Each construction site consults the registered factory and falls back to the
built-in default when none is set; an explicit instance always wins. Widen
Knowledge.storage and the knowledge source base classes to BaseKnowledgeStorage
(consistent with BaseAgent.knowledge_storage) so any base-interface backend
plugs in. Runtime-free tests cover each seam.
* fix: resolve pip-audit CVEs for aiohttp, docling, docling-core, pip
- aiohttp 3.13.4 → 3.14.0: fixes GHSA-jg22-mg44-37j8, GHSA-hg6j-4rv6-33pg
- docling 2.84.0 → 2.97.0: fixes GHSA-cjqg-rq2h-2fvj, GHSA-pj2v-ggqh-cmq2,
GHSA-r3xg-rg9j-67fv, GHSA-q29v-xc37-wh5m
- docling-core 2.74.0 → 2.79.0: fixes GHSA-j5xp-7m2f-49jv, GHSA-jmmv-h3mp-59v8
- pip 26.1.1 → 26.1.2: fixes PYSEC-2026-196
docling-core 2.74.1+ requires pydantic-settings>=2.14.0, so the crewai pin
is loosened from ~=2.10.1 to >=2.10.1,<3. pydantic-settings resolves to
2.14.1 in the lock.
* fix: correct aiohttp CVE floor to 3.14.0 (not 3.13.5)
* test: shim AsyncStreamReaderMixin for vcrpy under aiohttp 3.14.0
aiohttp 3.14.0 removed aiohttp.streams.AsyncStreamReaderMixin (folded into
StreamReader). vcrpy's aiohttp stub still subclasses it, so vcr's patch
machinery raised AttributeError at test collection. Restore an equivalent
mixin in conftest before vcr is imported.
* test: rebuild vcrpy MockClientResponse init for aiohttp 3.14.0
aiohttp 3.14.0 added a required stream_writer kwarg to ClientResponse.__init__
and reads stream_writer.output_size when writer is None. vcrpy's
MockClientResponse doesn't pass it, raising TypeError at cassette playback.
Rebuild the super().__init__ call from the live signature (defaulting required
keyword-only args to None, with a stream_writer stub exposing output_size) so
it survives future aiohttp signature additions too.
* test: avoid deprecated get_event_loop in vcrpy aiohttp shim
asyncio.get_event_loop() emits a DeprecationWarning (and can RuntimeError)
when no current loop is set on Python 3.12+. Prefer get_running_loop() (the
real cassette-playback path always has one) and fall back to a single cached
loop in sync contexts, since the mock only stores the loop and calls
get_debug().
* fix: pull docling-core[chunking] so HierarchicalChunker imports
docling 2.97 split into docling-slim, moving the chunker's code-chunking
deps (tree-sitter, semchunk, language grammars) behind docling-core's
[chunking] extra. crewai's knowledge source imports HierarchicalChunker,
whose package __init__ eagerly imports those submodules -> ModuleNotFoundError
('tree_sitter') without the extra. Request docling-core[chunking]; carry the
extra in override-dependencies too, since overrides replace the whole
requirement and would otherwise strip it.
* Remove `_start_methods` and `__is_start_method__` stamping
* Add helpers to read start info from the definition
* Scan `__dict__` instead of `dir()` to find flow methods
* feat: add conversation message and route selection events
- Introduced `ConversationMessageAddedEvent` and `ConversationRouteSelectedEvent` to enhance conversational flow tracking.
- Updated event listeners to emit these events during message handling and routing decisions.
- Enhanced the `_ConversationalMixin` class to emit events for user and assistant messages, as well as selected routes.
- Added tests to verify the correct emission of these events during conversational turns.
* ensure flow started events only emiited once
* refactor(tracing): rename trace event handler methods to action event handlers
Updated the class to replace with for and events, improving clarity in event handling.
Additionally, adjusted comments in the class to clarify the application of pending user messages in relation to state restoration and flow scope initialization.
* fix(conversational_mixin): handle empty message index in route events
Updated the message index handling in the class to return when there are no messages. Added tests to ensure that route events do not reference index zero when the transcript is empty, and verified the correct emission of conversation message events during flow handling.
* feat(otel): surface real finish_reason + sampling params + response.id on LLM events
Companion to the OTel GenAI emitter compliance work in crewai-enterprise
(CON-172). Today the enterprise emitter reads these fields off the OSS
LLM events via `getattr(..., None)`, so it produces valid (but partial)
spans against the existing OSS surface. This change makes those fields
first-class on the events so spans can carry the real provider data.
What this adds:
- `LLMCallStartedEvent` gains the sampling-param fields the emitter needs
for `gen_ai.request.*`: `temperature`, `top_p`, `max_tokens`, `stream`,
`seed`, `stop_sequences`, `frequency_penalty`, `presence_penalty`, `n`.
All optional; existing call sites keep working.
- `BaseLLM._emit_call_started_event` introspects those values off `self`
(the LLM instance) via `getattr(..., None)` so every provider gets the
fields propagated for free without per-provider plumbing.
- `LLMCallCompletedEvent` gains `finish_reason: str | None` and
`response_id: str | None`. A field validator coerces any non-string
value (MagicMock, unexpected provider object) to None so the event
never raises on construction.
- `LLM._emit_call_completed_event` accepts both as kwargs.
- `LLM` (LiteLLM path) gets a defensive `_extract_finish_reason_and_response_id`
helper that handles both streaming (`StreamingChoices`) and non-streaming
(`Choices`) shapes and is wired into every completion-event emission site.
- Provider completions extract native values from their SDK responses and
pass them through:
- OpenAI: `_extract_responses_finish_reason_and_id` for Responses-API,
`_extract_finish_reason_and_id` for Chat-Completions.
- Anthropic: `_extract_finish_reason_and_id` (Messages API + streaming).
- Bedrock: `_extract_finish_reason_and_id` (`stopReason` from converse).
- Gemini: `_extract_finish_reason_and_id` (`finish_reason` from candidates).
- Azure: inherits via OpenAI sub-class; adds the helper for Azure-specific
response shapes.
- openai_compatible: inherits from OpenAICompletion, no edits needed.
Compatibility:
- All new fields are optional with sensible defaults. No existing call
sites need to change.
- The validator on `LLMCallCompletedEvent` swallows non-string values for
the new fields so legacy mocks / exotic provider types don't blow up
event construction.
- Enterprise side already reads these fields defensively, so OSS and
enterprise can merge independently and cut on the same synchronized
release.
Tested against the full LLM + events + provider test suite — all green;
the 14 pre-existing multimodal failures on main are unrelated and
reproduce without this diff.
* fix(bedrock): propagate finish_reason + response_id on async paths
The original commit covered every provider's sync path and Bedrock's
sync streaming path, but two Bedrock async paths still emitted
LLMCallCompletedEvent without finish_reason/response_id:
- _ahandle_converse: the final fallback emit_call_completed_event call
was missing both fields. Added stop_reason + response_id matching the
other emission sites in the same function.
- _ahandle_streaming_converse: response_id was never seeded from the
initial response object, and stream_finish_reason wasn't propagated
to the structured-output and final-text emissions. Now extracts
response_id up front and threads stream_finish_reason through every
completion event.
Adds a dedicated test file covering the new event fields end-to-end:
- LLMCallCompletedEvent.finish_reason / response_id Pydantic validation
(string accepted, None default, non-string coerced to None).
- LLMCallStartedEvent sampling params (all nine fields accepted, default
to None).
- BaseLLM._emit_call_started_event introspecting sampling params off
self, with explicit kwargs overriding.
- BaseLLM._emit_call_completed_event passing finish_reason/response_id
through to the event.
- LLM._extract_finish_reason_and_response_id across the LiteLLM shapes
(non-streaming response, streaming chunk, dict, missing fields,
non-string values, unexpected input).
* fix(otel): correct streaming finish_reason + bedrock response_id semantics
Two correctness fixes uncovered while landing the OTel finish_reason +
response_id plumbing:
- LiteLLM streaming (sync + async): `stream_options={"include_usage": True}`
causes LiteLLM to emit a final usage-only chunk with `choices=[]`. The
post-loop `_extract_finish_reason_and_response_id(last_chunk)` silently
returned `(None, None)` because the last chunk has no choices, even though
earlier chunks carried `finish_reason="stop"`. Track both fields
incrementally inside the loop (mirroring how OpenAI/Gemini/Azure already
handle their native streams) and use the tracked values for the
LLMCallCompletedEvent emission and the partial-response error path.
- Bedrock Converse: `ResponseMetadata.RequestId` is an AWS infra trace id,
not a model-level response id (semantically different from OpenAI's
`chatcmpl-XXX`). Return None for `response_id` rather than mislead
downstream telemetry consumers. The audit-fix's async propagation chain
still works — None propagates through unchanged.
Adds `test_llm_streaming_finish_reason.py` pinning both the sync and async
LiteLLM streaming paths against the include_usage chunk shape.
* refactor(otel): unify LLM event introspection + drop redundant defensive code
Three cohesion cleanups uncovered during PR review, all behavior-preserving:
- LLM.call / LLM.acall in llm.py now delegate to BaseLLM._emit_call_started_event
instead of constructing LLMCallStartedEvent inline. The base helper already
introspects sampling params off self via getattr; the inline duplication was
accidental, not justified, and a duplication risk if anyone adds a tenth
OTel sampling param later.
- Extracted lib/crewai/llms/_finish_reason_utils.py:extract_choices_finish_reason_and_id
as the shared extractor for the choices-based response shape. OpenAI Chat,
Azure, and LiteLLM all read the same shape (response.id + choices[0].finish_reason)
as both object attrs and dict keys. Providers with genuinely different shapes
- Anthropic (stop_reason), Bedrock (stopReason), Gemini (protobuf enum),
OpenAI Responses (status) - keep their own provider-specific helpers.
- Dropped redundant try/except (AttributeError, TypeError) wrappers around
bare getattr(obj, "field", None) calls across the new extraction helpers.
getattr with a default already suppresses AttributeError, and the inner
isinstance / dict.get / int-coercion ops can't raise TypeError in practice.
Kept the catches that legitimately guard against IndexError (e.g. choices[0]
on an empty list).
Tests: 600 passed, 23 skipped, 14 pre-existing multimodal failures unchanged.
Added 12 parametrized tests for the shared helper covering object + dict
shapes, missing fields, non-string coercion, and never-raises invariants.
* chore(otel): drop dead last_chunk variable from async streaming
The streaming-fix commit (49e5581b5) replaced the post-loop
`_extract_finish_reason_and_response_id(last_chunk)` call with the
incrementally-tracked `stream_finish_reason` / `stream_response_id`,
which removed the only reader of `last_chunk` in
`_ahandle_streaming_response`. The declaration and per-iteration
assignment were left behind — harmless but confusing for future
readers because the sync sibling still legitimately uses `last_chunk`
(for usage and content fallbacks via `_handle_streaming_callbacks`).
The async path inlines its usage extraction directly inside the loop
(`chunk.model_extra.get("usage")`), so there's no fallback consumer.
Drop both lines.
Sync path untouched — `last_chunk` there is still load-bearing.
* fix(otel): coerce non-list stop_sequences to list[str] on LLMCallStartedEvent
Observed in Datadog: gen_ai.request.stop_sequences on a Gemini/Vertex
span surfaced the textproto repr of a google.protobuf.struct_pb2.ListValue
(values { string_value: "\nObservation:" }) instead of a real Sequence[str].
Root cause is upstream - a Vertex AI / Gemini code path stores the stop
list in a protobuf container (RepeatedScalarContainer or ListValue) rather
than a plain Python list. When that container reaches LLMCallStartedEvent
and then BaseLLM._emit_call_started_event hands it to the OTel SDK as a
span attribute, the SDK falls back to str(value) because the type isn't a
recognised Sequence[str] - producing the protobuf textproto string instead
of an array attribute.
* chore: fix ruff lint findings
* refactor(otel): declare sampling params on BaseLLM + honor stop overrides + dict chunk id
* fix: widen max_tokens to int | float | None + apply ruff format
* fix(otel): coerce unknown finish_reason / response_id to None instead of stringifying
* fix(otel): extract Azure stream finish_reason/id before usage-continue
Match the LiteLLM ordering so a finish_reason or response id riding on a
usage-carrying chunk isn't dropped by the early `continue`.
* fix(otel): report effective max_tokens cap + bedrock structured finish_reason
Centralize FlowTrigger and FlowMethodDecorator so start/listen/router and the boolean trigger helpers share one authoring contract. This preserves decorated method signatures for static checking while allowing route-label strings in nested FlowCondition data.
Export the shared typing helpers for static analyzers, use an explicit Protocol body, align condition validation with Sequence-backed condition data, and drop the stale call-arg ignore exposed by the signature-preserving decorators.
Update the flow guide to use or_(...) for multi-label listeners.
* feat(lock_store): make locking backend overridable
Allow the centralised lock factory to use a pluggable backend instead of
the hardcoded Redis/file selection. Backends are resolved with precedence
override > CREWAI_LOCK_FACTORY env > built-in default:
- set_lock_backend()/reset_lock_backend() and a scoped lock_backend()
context manager for programmatic overrides
- CREWAI_LOCK_FACTORY="module:callable" env import-path, resolved lazily
and cached, with clear errors on malformed or non-callable specs
- LockBackend Protocol documenting the contract (raw name in, context
manager out; backend owns its namespacing)
Default Redis/file behavior is unchanged when nothing is overridden.
* refactor(lock_store): use explicit body for LockBackend protocol method
Replace the no-op `...` body with `raise NotImplementedError` to satisfy
the CodeQL ineffectual-statement check while keeping the Protocol
structural-typing only.
* refactor(lock_store): drop scoped lock_backend context manager
Keep the backend overridable via set_lock_backend/reset_lock_backend and
the CREWAI_LOCK_FACTORY env path, but remove the scoped lock_backend()
context manager. It was speculative surface and the only thread-unsafe
piece (racy save/restore of the module global); nothing depends on it.
* refactor(lock_store): drop reset_lock_backend alias
reset_lock_backend() was just set_lock_backend(None); callers use that
directly. Clearing the override is documented on set_lock_backend.
* style(lock_store): apply ruff format
* refactor(lock_store): simplify overridable backend to a single setter
Reduce the override surface to just set_lock_backend(): lock() uses the
custom backend when one is set, otherwise the unchanged Redis/file default.
Drop the CREWAI_LOCK_FACTORY env import-path, the runtime_checkable
Protocol, the precedence resolver, and the getter — a custom backend is
now any callable(name, *, timeout) -> context manager, registered in
process.
* fix(lock_store): snapshot backend to avoid check-then-call race
Read the module-global backend once into a local before the None check
and the call, so a concurrent set_lock_backend(None) cannot make lock()
invoke None.
* docs(lock_store): clarify name handling for custom backends
The default namespaces the lock name; custom backends receive it
verbatim. Correct the lock() docstring which implied namespacing always
happens.
* docs(lock_store): note set_lock_backend is for one-time startup setup
The Flow DSL lived in one 1033-line `dsl.py` that mixed every decorator
(`@start`/`@listen`/`@router`), the `human_feedback` decorator,
condition combinators, and FlowDefinition extraction helpers in a single
file.
Split it into a `dsl/` package where each decorator gets its own module
(`start.py` 68 lines, `listen.py` 55, `router.py` 164,
`human_feedback.py` 98) and the shared extraction/condition helpers stay
in `utils.py`. The public API is re-exported from `dsl/__init__.py`, so
import paths are unchanged.
This is simpler because each decorator is now read and changed in
isolation instead of scanning a 1000-line file to find one of them, and
router-specific annotation parsing no longer sits next to unrelated
start/listen logic.
* Build FlowDefinition from Flow DSL metadata
Introduce `FlowDefinition`, a serializable model built from the Flow
DSL's runtime metadata. It becomes the structural contract for Flow
methods, triggers, routers, state, and configuration.
The visualization layer is the first consumer: `flow_structure` and
`build_flow_structure` now project from the definition instead of
re-introspecting the class. The runner still executes from live
registries, but the definition gives future runners a single static
contract to read.
This replaces AST source parsing for router return values, crew
references, and state schema with runtime metadata plus explicit
`@router(paths=...)` or `Literal`/`Enum` return hints. AST parsing was
fragile and could silently fail for dynamic or non-inspectable methods.
The refactor removes obsolete introspection and serializer code:
* Delete `flow_serializer.py`, `flow/utils.py`, and
`visualization/schema.py`
* Move flow structure modeling into `flow_definition.py`
* Simplify visualization building around the static definition contract
* Format files