"""The Async LangSmith Client.""" from __future__ import annotations import asyncio import datetime import json import uuid import warnings from collections.abc import AsyncGenerator, AsyncIterator, Mapping, Sequence from functools import partial from typing import ( Any, Literal, Optional, Union, cast, ) import httpx from langsmith import client as ls_client from langsmith import schemas as ls_schemas from langsmith import utils as ls_utils from langsmith._internal import _beta_decorator as ls_beta from langsmith.prompt_cache import AsyncPromptCache, async_prompt_cache_singleton ID_TYPE = Union[uuid.UUID, str] class AsyncClient: """Async Client for interacting with the LangSmith API.""" __slots__ = ("_retry_config", "_client", "_web_url", "_settings", "_cache") def __init__( self, api_url: Optional[str] = None, api_key: Optional[str] = None, timeout_ms: Optional[ Union[ int, tuple[Optional[int], Optional[int], Optional[int], Optional[int]] ] ] = None, retry_config: Optional[Mapping[str, Any]] = None, web_url: Optional[str] = None, disable_prompt_cache: bool = False, cache: Optional[Union[bool, AsyncPromptCache]] = None, ): """Initialize the async client. Args: api_url: URL for the LangSmith API. api_key: API key for the LangSmith API. timeout_ms: Timeout for requests in milliseconds. retry_config: Retry configuration. web_url: URL for the LangSmith web app. disable_prompt_cache: Disable prompt caching for this client. cache: **[Deprecated]** Control prompt caching behavior. This parameter is deprecated. Use `configure_global_async_prompt_cache()` to configure caching, or `disable_prompt_cache=True` to disable it. - `True`: Enable caching with the global singleton - `False`: Disable caching (equivalent to `disable_prompt_cache=True`) - `AsyncCache(...)`/`AsyncPromptCache(...)`: Use a custom cache instance """ self._retry_config = retry_config or {"max_retries": 3} _headers = { "Content-Type": "application/json", } api_key = ls_utils.get_api_key(api_key) api_url = ls_utils.get_api_url(api_url) if api_key: _headers[ls_client.X_API_KEY] = api_key ls_client._validate_api_key_if_hosted(api_url, api_key) if isinstance(timeout_ms, int): timeout_: Union[tuple, float] = (timeout_ms / 1000, None, None, None) elif isinstance(timeout_ms, tuple): timeout_ = tuple([t / 1000 if t is not None else None for t in timeout_ms]) else: timeout_ = 10 self._client = httpx.AsyncClient( base_url=api_url, headers=_headers, timeout=timeout_ ) self._web_url = web_url self._settings: Optional[ls_schemas.LangSmithSettings] = None # Initialize prompt cache # Handle backwards compatibility for deprecated `cache` parameter if cache is not None and disable_prompt_cache: import warnings warnings.warn( "Both 'cache' and 'disable_prompt_cache' were provided. " "The 'cache' parameter is deprecated and will be removed in a future version. " "Using 'cache' parameter value.", DeprecationWarning, stacklevel=2, ) if cache is not None: import warnings warnings.warn( "The 'cache' parameter is deprecated and will be removed in a future version. " "Use 'configure_global_async_prompt_cache()' to configure the global cache, or " "'disable_prompt_cache=True' to disable caching for this client.", DeprecationWarning, stacklevel=2, ) # Handle old cache parameter if cache is False: self._cache: Optional[AsyncPromptCache] = None elif cache is True: self._cache = async_prompt_cache_singleton else: # Custom AsyncPromptCache instance provided self._cache = cache elif not disable_prompt_cache: # Use the global singleton instance self._cache = async_prompt_cache_singleton else: self._cache = None async def __aenter__(self) -> AsyncClient: """Enter the async client.""" if self._cache is not None: await self._cache.start() return self async def __aexit__(self, exc_type, exc_val, exc_tb): """Exit the async client.""" await self.aclose() async def aclose(self): """Close the async client.""" if self._cache is not None: await self._cache.stop() await self._client.aclose() @property def _api_url(self): return str(self._client.base_url) @property def _host_url(self) -> str: """The web host url.""" return ls_utils.get_host_url(self._web_url, self._api_url) async def _arequest_with_retries( self, method: str, endpoint: str, **kwargs: Any, ) -> httpx.Response: """Make an async HTTP request with retries.""" max_retries = cast(int, self._retry_config.get("max_retries", 3)) # Python requests library used by the normal Client filters out params with None values # The httpx library does not. Filter them out here to keep behavior consistent if "params" in kwargs: params = kwargs["params"] filtered_params = {k: v for k, v in params.items() if v is not None} kwargs["params"] = filtered_params for attempt in range(max_retries): try: response = await self._client.request(method, endpoint, **kwargs) ls_utils.raise_for_status_with_text(response) return response except httpx.HTTPStatusError as e: if response.status_code == 500: raise ls_utils.LangSmithAPIError( f"Server error caused failure to {method}" f" {endpoint} in" f" LangSmith API. {repr(e)}" ) elif response.status_code == 408: raise ls_utils.LangSmithRequestTimeout( f"Client took too long to send request to {method}{endpoint}" ) elif response.status_code == 429: raise ls_utils.LangSmithRateLimitError( f"Rate limit exceeded for {endpoint}. {repr(e)}" ) elif response.status_code == 401: raise ls_utils.LangSmithAuthError( f"Authentication failed for {endpoint}. {repr(e)}" ) elif response.status_code == 404: raise ls_utils.LangSmithNotFoundError( f"Resource not found for {endpoint}. {repr(e)}" ) elif response.status_code == 409: raise ls_utils.LangSmithConflictError( f"Conflict for {endpoint}. {repr(e)}" ) else: raise ls_utils.LangSmithError( f"Failed to {method} {endpoint} in LangSmith API. {repr(e)}" ) except httpx.RequestError as e: if attempt == max_retries - 1: raise ls_utils.LangSmithConnectionError(f"Request error: {repr(e)}") await asyncio.sleep(2**attempt) raise ls_utils.LangSmithAPIError( "Unexpected error connecting to the LangSmith API" ) async def _aget_paginated_list( self, path: str, params: Optional[dict[str, Any]] = None, ) -> AsyncIterator[dict[str, Any]]: """Get a paginated list of items.""" params = params or {} offset = params.get("offset", 0) params["limit"] = params.get("limit", 100) while True: params["offset"] = offset response = await self._arequest_with_retries("GET", path, params=params) items = response.json() if not items: break for item in items: yield item if len(items) < params["limit"]: break offset += len(items) async def _aget_cursor_paginated_list( self, path: str, *, body: Optional[dict] = None, request_method: str = "POST", data_key: str = "runs", ) -> AsyncIterator[dict]: """Get a cursor paginated list of items.""" params_ = body.copy() if body else {} while True: response = await self._arequest_with_retries( request_method, path, content=ls_client._dumps_json(params_), ) response_body = response.json() if not response_body: break if not response_body.get(data_key): break for run in response_body[data_key]: yield run cursors = response_body.get("cursors") if not cursors: break if not cursors.get("next"): break params_["cursor"] = cursors["next"] async def create_run( self, name: str, inputs: dict[str, Any], run_type: str, *, project_name: Optional[str] = None, revision_id: Optional[ls_client.ID_TYPE] = None, **kwargs: Any, ) -> None: """Create a run.""" run_create = { "name": name, "id": kwargs.get("id") or uuid.uuid4(), "inputs": inputs, "run_type": run_type, "session_name": project_name or ls_utils.get_tracer_project(), "revision_id": revision_id, **kwargs, } await self._arequest_with_retries( "POST", "/runs", content=ls_client._dumps_json(run_create) ) async def update_run( self, run_id: ls_client.ID_TYPE, **kwargs: Any, ) -> None: """Update a run.""" data = {**kwargs, "id": ls_client._as_uuid(run_id)} await self._arequest_with_retries( "PATCH", f"/runs/{ls_client._as_uuid(run_id)}", content=ls_client._dumps_json(data), ) async def read_run(self, run_id: ls_client.ID_TYPE) -> ls_schemas.Run: """Read a run.""" response = await self._arequest_with_retries( "GET", f"/runs/{ls_client._as_uuid(run_id)}", ) return ls_schemas.Run(**response.json()) async def list_runs( self, *, project_id: Optional[ Union[ls_client.ID_TYPE, Sequence[ls_client.ID_TYPE]] ] = None, project_name: Optional[Union[str, Sequence[str]]] = None, run_type: Optional[str] = None, trace_id: Optional[ls_client.ID_TYPE] = None, reference_example_id: Optional[ls_client.ID_TYPE] = None, query: Optional[str] = None, filter: Optional[str] = None, trace_filter: Optional[str] = None, tree_filter: Optional[str] = None, is_root: Optional[bool] = None, parent_run_id: Optional[ls_client.ID_TYPE] = None, start_time: Optional[datetime.datetime] = None, error: Optional[bool] = None, run_ids: Optional[Sequence[ls_client.ID_TYPE]] = None, select: Optional[Sequence[str]] = None, limit: Optional[int] = None, **kwargs: Any, ) -> AsyncIterator[ls_schemas.Run]: """List runs from the LangSmith API. Args: project_id: The ID(s) of the project to filter by. project_name: The name(s) of the project to filter by. run_type: The type of the runs to filter by. trace_id: The ID of the trace to filter by. reference_example_id: The ID of the reference example to filter by. query: The query string to filter by. filter: The filter string to filter by. trace_filter: Filter to apply to the ROOT run in the trace tree. This is meant to be used in conjunction with the regular `filter` parameter to let you filter runs by attributes of the root run within a trace. tree_filter: Filter to apply to OTHER runs in the trace tree, including sibling and child runs. This is meant to be used in conjunction with the regular `filter` parameter to let you filter runs by attributes of any run within a trace. is_root: Whether to filter by root runs. parent_run_id: The ID of the parent run to filter by. start_time: The start time to filter by. error: Whether to filter by error status. run_ids: The IDs of the runs to filter by. select: The fields to select. limit: The maximum number of runs to return. **kwargs: Additional keyword arguments. Yields: The runs. Examples: ```python # List all runs in a project project_runs = client.list_runs(project_name="") # List LLM and Chat runs in the last 24 hours todays_llm_runs = client.list_runs( project_name="", start_time=datetime.now() - timedelta(days=1), run_type="llm", ) # List root traces in a project root_runs = client.list_runs(project_name="", is_root=1) # List runs without errors correct_runs = client.list_runs(project_name="", error=False) # List runs and only return their inputs/outputs (to speed up the query) input_output_runs = client.list_runs( project_name="", select=["inputs", "outputs"] ) # List runs by run ID run_ids = [ "a36092d2-4ad5-4fb4-9c0d-0dba9a2ed836", "9398e6be-964f-4aa4-8ae9-ad78cd4b7074", ] selected_runs = client.list_runs(id=run_ids) # List all "chain" type runs that took more than 10 seconds and had # `total_tokens` greater than 5000 chain_runs = client.list_runs( project_name="", filter='and(eq(run_type, "chain"), gt(latency, 10), gt(total_tokens, 5000))', ) # List all runs called "extractor" whose root of the trace was assigned feedback "user_score" score of 1 good_extractor_runs = client.list_runs( project_name="", filter='eq(name, "extractor")', trace_filter='and(eq(feedback_key, "user_score"), eq(feedback_score, 1))', ) # List all runs that started after a specific timestamp and either have "error" not equal to null or a "Correctness" feedback score equal to 0 complex_runs = client.list_runs( project_name="", filter='and(gt(start_time, "2023-07-15T12:34:56Z"), or(neq(error, null), and(eq(feedback_key, "Correctness"), eq(feedback_score, 0.0))))', ) # List all runs where `tags` include "experimental" or "beta" and `latency` is greater than 2 seconds tagged_runs = client.list_runs( project_name="", filter='and(or(has(tags, "experimental"), has(tags, "beta")), gt(latency, 2))', ) ``` """ # noqa: E501 project_ids = [] if isinstance(project_id, (uuid.UUID, str)): project_ids.append(project_id) elif isinstance(project_id, list): project_ids.extend(project_id) if project_name is not None: if isinstance(project_name, str): project_name = [project_name] projects = await asyncio.gather( *[self.read_project(project_name=name) for name in project_name] ) project_ids.extend([project.id for project in projects]) if select and "child_run_ids" in select: warnings.warn( "The child_run_ids field is deprecated and will be removed in following versions", DeprecationWarning, ) body_query: dict[str, Any] = { "session": project_ids if project_ids else None, "run_type": run_type, "reference_example": ( [reference_example_id] if reference_example_id else None ), "query": query, "filter": filter, "trace_filter": trace_filter, "tree_filter": tree_filter, "is_root": is_root, "parent_run": parent_run_id, "start_time": start_time.isoformat() if start_time else None, "error": error, "id": run_ids, "trace": trace_id, "select": select, "limit": limit, **kwargs, } if project_ids: body_query["session"] = [ str(ls_client._as_uuid(id_)) for id_ in project_ids ] body = {k: v for k, v in body_query.items() if v is not None} ix = 0 async for run in self._aget_cursor_paginated_list("/runs/query", body=body): yield ls_schemas.Run(**run) ix += 1 if limit is not None and ix >= limit: break async def share_run( self, run_id: ls_client.ID_TYPE, *, share_id: Optional[ls_client.ID_TYPE] = None ) -> str: """Get a share link for a run asynchronously. Args: run_id (ID_TYPE): The ID of the run to share. share_id: Custom share ID. If not provided, a random UUID will be generated. Returns: The URL of the shared run. Raises: httpx.HTTPStatusError: If the API request fails. """ run_id_ = ls_client._as_uuid(run_id, "run_id") data = { "run_id": str(run_id_), "share_token": str(share_id or uuid.uuid4()), } response = await self._arequest_with_retries( "PUT", f"/runs/{run_id_}/share", content=ls_client._dumps_json(data), ) ls_utils.raise_for_status_with_text(response) share_token = response.json()["share_token"] return f"{self._host_url}/public/{share_token}/r" async def run_is_shared(self, run_id: ls_client.ID_TYPE) -> bool: """Get share state for a run asynchronously.""" link = await self.read_run_shared_link(ls_client._as_uuid(run_id, "run_id")) return link is not None async def read_run_shared_link(self, run_id: ls_client.ID_TYPE) -> Optional[str]: """Retrieve the shared link for a specific run asynchronously. Args: run_id (ID_TYPE): The ID of the run. Returns: Optional[str]: The shared link for the run, or None if the link is not available. Raises: httpx.HTTPStatusError: If the API request fails. """ response = await self._arequest_with_retries( "GET", f"/runs/{ls_client._as_uuid(run_id, 'run_id')}/share", ) ls_utils.raise_for_status_with_text(response) result = response.json() if result is None or "share_token" not in result: return None return f"{self._host_url}/public/{result['share_token']}/r" async def create_project( self, project_name: str, **kwargs: Any, ) -> ls_schemas.TracerSession: """Create a project.""" data = {"name": project_name, **kwargs} response = await self._arequest_with_retries( "POST", "/sessions", content=ls_client._dumps_json(data) ) return ls_schemas.TracerSession(**response.json()) async def read_project( self, project_name: Optional[str] = None, project_id: Optional[ls_client.ID_TYPE] = None, ) -> ls_schemas.TracerSession: """Read a project.""" if project_id: response = await self._arequest_with_retries( "GET", f"/sessions/{ls_client._as_uuid(project_id)}" ) elif project_name: response = await self._arequest_with_retries( "GET", "/sessions", params={"name": project_name} ) else: raise ValueError("Either project_name or project_id must be provided") data = response.json() if isinstance(data, list): if not data: raise ls_utils.LangSmithNotFoundError( f"Project {project_name} not found" ) return ls_schemas.TracerSession(**data[0]) return ls_schemas.TracerSession(**data) async def delete_project( self, *, project_name: Optional[str] = None, project_id: Optional[str] = None ) -> None: """Delete a project from LangSmith. Args: project_name: The name of the project to delete. project_id: The ID of the project to delete. """ if project_id is None and project_name is None: raise ValueError("Either project_name or project_id must be provided") if project_id is None: project = await self.read_project(project_name=project_name) project_id = str(project.id) if not project_id: raise ValueError("Project not found") await self._arequest_with_retries( "DELETE", f"/sessions/{ls_client._as_uuid(project_id)}", ) async def create_dataset( self, dataset_name: str, **kwargs: Any, ) -> ls_schemas.Dataset: """Create a dataset.""" data = {"name": dataset_name, **kwargs} response = await self._arequest_with_retries( "POST", "/datasets", content=ls_client._dumps_json(data) ) return ls_schemas.Dataset(**response.json()) async def read_dataset( self, dataset_name: Optional[str] = None, dataset_id: Optional[ls_client.ID_TYPE] = None, ) -> ls_schemas.Dataset: """Read a dataset.""" if dataset_id: response = await self._arequest_with_retries( "GET", f"/datasets/{ls_client._as_uuid(dataset_id)}" ) elif dataset_name: response = await self._arequest_with_retries( "GET", "/datasets", params={"name": dataset_name} ) else: raise ValueError("Either dataset_name or dataset_id must be provided") data = response.json() if isinstance(data, list): if not data: raise ls_utils.LangSmithNotFoundError( f"Dataset {dataset_name} not found" ) return ls_schemas.Dataset(**data[0]) return ls_schemas.Dataset(**data) async def delete_dataset(self, dataset_id: ls_client.ID_TYPE) -> None: """Delete a dataset.""" await self._arequest_with_retries( "DELETE", f"/datasets/{ls_client._as_uuid(dataset_id)}", ) async def list_datasets( self, **kwargs: Any, ) -> AsyncIterator[ls_schemas.Dataset]: """List datasets.""" async for dataset in self._aget_paginated_list("/datasets", params=kwargs): yield ls_schemas.Dataset(**dataset) async def create_example( self, inputs: dict[str, Any], outputs: Optional[dict[str, Any]] = None, dataset_id: Optional[ls_client.ID_TYPE] = None, dataset_name: Optional[str] = None, **kwargs: Any, ) -> ls_schemas.Example: """Create an example.""" if dataset_id is None and dataset_name is None: raise ValueError("Either dataset_id or dataset_name must be provided") if dataset_id is None: dataset = await self.read_dataset(dataset_name=dataset_name) dataset_id = dataset.id data = { "inputs": inputs, "outputs": outputs, "dataset_id": str(dataset_id), **kwargs, } response = await self._arequest_with_retries( "POST", "/examples", content=ls_client._dumps_json(data) ) return ls_schemas.Example(**response.json()) async def read_example(self, example_id: ls_client.ID_TYPE) -> ls_schemas.Example: """Read an example.""" response = await self._arequest_with_retries( "GET", f"/examples/{ls_client._as_uuid(example_id)}" ) return ls_schemas.Example(**response.json()) async def list_examples( self, *, dataset_id: Optional[ls_client.ID_TYPE] = None, dataset_name: Optional[str] = None, **kwargs: Any, ) -> AsyncIterator[ls_schemas.Example]: """List examples.""" params = kwargs.copy() if dataset_id: params["dataset"] = ls_client._as_uuid(dataset_id) elif dataset_name: dataset = await self.read_dataset(dataset_name=dataset_name) params["dataset"] = dataset.id async for example in self._aget_paginated_list("/examples", params=params): yield ls_schemas.Example(**example) async def create_feedback( self, run_id: Optional[ls_client.ID_TYPE], key: str, score: Optional[float] = None, value: Union[float, int, bool, str, dict, None] = None, comment: Optional[str] = None, **kwargs: Any, ) -> ls_schemas.Feedback: """Create feedback for a run. Args: run_id: The ID of the run to provide feedback for. Can be `None` for project-level feedback. key: The name of the metric or aspect this feedback is about. score: The score to rate this run on the metric or aspect. value: The display value or non-numeric value for this feedback. comment: A comment about this feedback. **kwargs: Additional keyword arguments to include in the feedback data. Returns: The created feedback object. Raises: httpx.HTTPStatusError: If the API request fails. """ # noqa: E501 data = { "run_id": ls_client._ensure_uuid(run_id, accept_null=True), "key": key, "score": score, "value": value, "comment": comment, **kwargs, } response = await self._arequest_with_retries( "POST", "/feedback", content=ls_client._dumps_json(data) ) return ls_schemas.Feedback(**response.json()) async def create_feedback_from_token( self, token_or_url: Union[str, uuid.UUID], score: Union[float, int, bool, None] = None, *, value: Union[float, int, bool, str, dict, None] = None, correction: Union[dict, None] = None, comment: Union[str, None] = None, metadata: Optional[dict] = None, ) -> None: """Create feedback from a presigned token or URL. Args: token_or_url: The token or URL from which to create feedback. score: The score of the feedback. value: The value of the feedback. correction: The correction of the feedback. comment: The comment of the feedback. metadata: Additional metadata for the feedback. Raises: ValueError: If the source API URL is invalid. Returns: This method does not return anything. """ source_api_url, token_uuid = ls_client._parse_token_or_url( token_or_url, self._api_url, num_parts=1 ) if source_api_url != self._api_url: raise ValueError(f"Invalid source API URL. {source_api_url}") response = await self._arequest_with_retries( "POST", f"/feedback/tokens/{ls_client._as_uuid(token_uuid)}", content=ls_client._dumps_json( { "score": score, "value": value, "correction": correction, "comment": comment, "metadata": metadata, # TODO: Add ID once the API supports it. } ), ) ls_utils.raise_for_status_with_text(response) async def create_presigned_feedback_token( self, run_id: ls_client.ID_TYPE, feedback_key: str, *, expiration: Optional[datetime.datetime | datetime.timedelta] = None, feedback_config: Optional[ls_schemas.FeedbackConfig] = None, feedback_id: Optional[ls_client.ID_TYPE] = None, ) -> ls_schemas.FeedbackIngestToken: """Create a pre-signed URL to send feedback data to. This is useful for giving browser-based clients a way to upload feedback data directly to LangSmith without accessing the API key. Args: run_id (Union[UUID, str]): The ID of the run to provide feedback for. feedback_key: The name of the metric or aspect this feedback is about. expiration: The expiration time of the pre-signed URL. Either a datetime or a timedelta offset from now. Default to 3 hours. feedback_config: `FeedbackConfig` or `None`. If creating a feedback_key for the first time, this defines how the metric should be interpreted, such as a continuous score (w/ optional bounds), or distribution over categorical values. feedback_id: The ID of the feedback to create. If not provided, a new feedback will be created. Returns: The pre-signed URL for uploading feedback data. """ body: dict[str, Any] = { "run_id": run_id, "feedback_key": feedback_key, "feedback_config": feedback_config, "id": feedback_id or str(uuid.uuid4()), } if expiration is None: body["expires_in"] = ls_schemas.TimeDeltaInput( days=0, hours=3, minutes=0, ) elif isinstance(expiration, datetime.datetime): body["expires_at"] = expiration.isoformat() elif isinstance(expiration, datetime.timedelta): body["expires_in"] = ls_schemas.TimeDeltaInput( days=expiration.days, hours=expiration.seconds // 3600, minutes=(expiration.seconds % 3600) // 60, ) else: raise ValueError( f"Invalid expiration type: {type(expiration)}. " "Expected datetime.datetime or datetime.timedelta." ) response = await self._arequest_with_retries( "POST", "/feedback/tokens", content=ls_client._dumps_json(body), ) return ls_schemas.FeedbackIngestToken(**response.json()) async def read_feedback( self, feedback_id: ls_client.ID_TYPE ) -> ls_schemas.Feedback: """Read feedback.""" response = await self._arequest_with_retries( "GET", f"/feedback/{ls_client._as_uuid(feedback_id)}" ) return ls_schemas.Feedback(**response.json()) async def list_feedback( self, *, run_ids: Optional[Sequence[ls_client.ID_TYPE]] = None, feedback_key: Optional[Sequence[str]] = None, feedback_source_type: Optional[Sequence[ls_schemas.FeedbackSourceType]] = None, limit: Optional[int] = None, **kwargs: Any, ) -> AsyncIterator[ls_schemas.Feedback]: """List feedback.""" params = { "run": ( [str(ls_client._as_uuid(id_)) for id_ in run_ids] if run_ids else None ), "limit": min(limit, 100) if limit is not None else 100, **kwargs, } if feedback_key is not None: params["key"] = feedback_key if feedback_source_type is not None: params["source"] = feedback_source_type ix = 0 async for feedback in self._aget_paginated_list("/feedback", params=params): yield ls_schemas.Feedback(**feedback) ix += 1 if limit is not None and ix >= limit: break async def delete_feedback(self, feedback_id: ID_TYPE) -> None: """Delete a feedback by ID. Args: feedback_id (Union[UUID, str]): The ID of the feedback to delete. """ response = await self._arequest_with_retries( "DELETE", f"/feedback/{ls_client._as_uuid(feedback_id, 'feedback_id')}" ) ls_utils.raise_for_status_with_text(response) # Annotation Queue API async def list_annotation_queues( self, *, queue_ids: Optional[list[ID_TYPE]] = None, name: Optional[str] = None, name_contains: Optional[str] = None, limit: Optional[int] = None, ) -> AsyncIterator[ls_schemas.AnnotationQueue]: """List the annotation queues on the LangSmith API. Args: queue_ids (Optional[List[Union[UUID, str]]]): The IDs of the queues to filter by. name: The name of the queue to filter by. name_contains: The substring that the queue name should contain. limit: The maximum number of queues to return. Yields: The annotation queues. """ params: dict = { "ids": ( [ ls_client._as_uuid(id_, f"queue_ids[{i}]") for i, id_ in enumerate(queue_ids) ] if queue_ids is not None else None ), "name": name, "name_contains": name_contains, "limit": min(limit, 100) if limit is not None else 100, } ix = 0 async for feedback in self._aget_paginated_list( "/annotation-queues", params=params ): yield ls_schemas.AnnotationQueue(**feedback) ix += 1 if limit is not None and ix >= limit: break async def create_annotation_queue( self, *, name: str, description: Optional[str] = None, queue_id: Optional[ID_TYPE] = None, rubric_instructions: Optional[str] = None, rubric_items: Optional[list[ls_schemas.AnnotationQueueRubricItem]] = None, ) -> ls_schemas.AnnotationQueue: """Create an annotation queue on the LangSmith API. Args: name: The name of the annotation queue. description: The description of the annotation queue. queue_id (Optional[Union[UUID, str]]): The ID of the annotation queue. rubric_instructions: The rubric instructions for the annotation queue. rubric_items: The feedback configs to assign to this queue's rubric. Returns: The created annotation queue object. """ body: dict[str, Any] = { "name": name, "description": description, "id": str(queue_id) if queue_id is not None else str(uuid.uuid4()), "rubric_instructions": rubric_instructions, } if rubric_items is not None: body["rubric_items"] = rubric_items response = await self._arequest_with_retries( "POST", "/annotation-queues", json={k: v for k, v in body.items() if v is not None}, ) ls_utils.raise_for_status_with_text(response) return ls_schemas.AnnotationQueue( **response.json(), ) async def read_annotation_queue( self, queue_id: ID_TYPE ) -> ls_schemas.AnnotationQueue: """Read an annotation queue with the specified `queue_id`. Args: queue_id (Union[UUID, str]): The ID of the annotation queue to read. Returns: The annotation queue object. """ # TODO: Replace when actual endpoint is added return await self.list_annotation_queues(queue_ids=[queue_id]).__anext__() async def update_annotation_queue( self, queue_id: ID_TYPE, *, name: Optional[str] = None, description: Optional[str] = None, rubric_instructions: Optional[str] = None, rubric_items: Optional[list[ls_schemas.AnnotationQueueRubricItem]] = None, ) -> None: """Update an annotation queue with the specified `queue_id`. Args: queue_id (Union[UUID, str]): The ID of the annotation queue to update. name: The new name for the annotation queue. description: The new description for the annotation queue. rubric_instructions: The new rubric instructions for the queue. rubric_items: The feedback configs to assign to this queue's rubric. """ body: dict[str, Any] = {} if name is not None: body["name"] = name if description is not None: body["description"] = description if rubric_instructions is not None: body["rubric_instructions"] = rubric_instructions if rubric_items is not None: body["rubric_items"] = rubric_items response = await self._arequest_with_retries( "PATCH", f"/annotation-queues/{ls_client._as_uuid(queue_id, 'queue_id')}", json=body, ) ls_utils.raise_for_status_with_text(response) async def delete_annotation_queue(self, queue_id: ID_TYPE) -> None: """Delete an annotation queue with the specified `queue_id`. Args: queue_id (Union[UUID, str]): The ID of the annotation queue to delete. """ response = await self._arequest_with_retries( "DELETE", f"/annotation-queues/{ls_client._as_uuid(queue_id, 'queue_id')}", headers={"Accept": "application/json", **self._client.headers}, ) ls_utils.raise_for_status_with_text(response) async def add_runs_to_annotation_queue( self, queue_id: ID_TYPE, *, run_ids: list[ID_TYPE] ) -> None: """Add runs to an annotation queue with the specified `queue_id`. Args: queue_id (Union[UUID, str]): The ID of the annotation queue. run_ids (list[Union[UUID, str]]): The IDs of the runs to be added to the annotation queue. """ response = await self._arequest_with_retries( "POST", f"/annotation-queues/{ls_client._as_uuid(queue_id, 'queue_id')}/runs", json=[ str(ls_client._as_uuid(id_, f"run_ids[{i}]")) for i, id_ in enumerate(run_ids) ], ) ls_utils.raise_for_status_with_text(response) async def delete_run_from_annotation_queue( self, queue_id: ID_TYPE, *, run_id: ID_TYPE ) -> None: """Delete a run from an annotation queue with the specified `queue_id` and `run_id`. Args: queue_id (Union[UUID, str]): The ID of the annotation queue. run_id (Union[UUID, str]): The ID of the run to be added to the annotation queue. """ response = await self._arequest_with_retries( "DELETE", f"/annotation-queues/{ls_client._as_uuid(queue_id, 'queue_id')}/runs/{ls_client._as_uuid(run_id, 'run_id')}", ) ls_utils.raise_for_status_with_text(response) async def get_run_from_annotation_queue( self, queue_id: ID_TYPE, *, index: int ) -> ls_schemas.RunWithAnnotationQueueInfo: """Get a run from an annotation queue at the specified index. Args: queue_id (Union[UUID, str]): The ID of the annotation queue. index: The index of the run to retrieve. Returns: The run at the specified index. Raises: LangSmithNotFoundError: If the run is not found at the given index. LangSmithError: For other API-related errors. """ base_url = f"/annotation-queues/{ls_client._as_uuid(queue_id, 'queue_id')}/run" response = await self._arequest_with_retries("GET", f"{base_url}/{index}") ls_utils.raise_for_status_with_text(response) return ls_schemas.RunWithAnnotationQueueInfo(**response.json()) # Feedback Config API async def create_feedback_config( self, feedback_key: str, *, feedback_config: ls_schemas.FeedbackConfig, is_lower_score_better: Optional[bool] = False, ) -> ls_schemas.FeedbackConfigSchema: """Create a feedback configuration. Defines how feedback with a given key should be interpreted. If an identical configuration already exists for the key, it is returned unchanged. If a different configuration already exists for the key, an error is raised. Args: feedback_key: The feedback key to configure. feedback_config: The configuration defining type, bounds, and categories. is_lower_score_better: Whether a lower score is considered better. Defaults to False. Returns: The created or existing feedback configuration. """ body: dict[str, Any] = { "feedback_key": feedback_key, "feedback_config": feedback_config, "is_lower_score_better": is_lower_score_better, } response = await self._arequest_with_retries( "POST", "/feedback-configs", json=body, ) ls_utils.raise_for_status_with_text(response) return ls_schemas.FeedbackConfigSchema(**response.json()) async def list_feedback_configs( self, *, feedback_key: Optional[Sequence[str]] = None, name_contains: Optional[str] = None, limit: Optional[int] = None, offset: int = 0, ) -> AsyncIterator[ls_schemas.FeedbackConfigSchema]: """List feedback configurations. Args: feedback_key: Filter by specific feedback keys. name_contains: Filter by substring match on the feedback key. limit: The maximum number of configurations to return. offset: The number of configurations to skip. Defaults to 0. Yields: The feedback configurations. """ params: dict[str, Any] = { "limit": min(limit, 100) if limit is not None else 100, "offset": offset, } if feedback_key is not None: params["key"] = feedback_key if name_contains is not None: params["name_contains"] = name_contains ix = 0 async for config in self._aget_paginated_list( "/feedback-configs", params=params ): yield ls_schemas.FeedbackConfigSchema(**config) ix += 1 if limit is not None and ix >= limit: break async def update_feedback_config( self, feedback_key: str, *, feedback_config: Optional[ls_schemas.FeedbackConfig] = None, is_lower_score_better: Optional[bool] = None, ) -> ls_schemas.FeedbackConfigSchema: """Update a feedback configuration. Only the provided fields will be updated; others remain unchanged. Args: feedback_key: The feedback key of the configuration to update. feedback_config: The new configuration values. is_lower_score_better: Whether a lower score is considered better. Returns: The updated feedback configuration. """ body: dict[str, Any] = { "feedback_key": feedback_key, } if feedback_config is not None: body["feedback_config"] = feedback_config if is_lower_score_better is not None: body["is_lower_score_better"] = is_lower_score_better response = await self._arequest_with_retries( "PATCH", "/feedback-configs", json=body, ) ls_utils.raise_for_status_with_text(response) return ls_schemas.FeedbackConfigSchema(**response.json()) async def delete_feedback_config(self, feedback_key: str) -> None: """Delete a feedback configuration. This performs a soft delete. The configuration can be recreated later with the same key. Args: feedback_key: The feedback key of the configuration to delete. """ response = await self._arequest_with_retries( "DELETE", "/feedback-configs", params={"feedback_key": feedback_key}, ) ls_utils.raise_for_status_with_text(response) @ls_beta.warn_beta async def index_dataset( self, *, dataset_id: ls_client.ID_TYPE, tag: str = "latest", **kwargs: Any, ) -> None: """Enable dataset indexing. Examples are indexed by their inputs. This enables searching for similar examples by inputs with `client.similar_examples()`. Args: dataset_id (Union[UUID, str]): The ID of the dataset to index. tag: The version of the dataset to index. If `'latest'` then any updates to the dataset (additions, updates, deletions of examples) will be reflected in the index. Raises: requests.HTTPError: If the request fails. """ # noqa: E501 dataset_id = ls_client._as_uuid(dataset_id, "dataset_id") resp = await self._arequest_with_retries( "POST", f"/datasets/{dataset_id}/index", content=ls_client._dumps_json({"tag": tag, **kwargs}), ) ls_utils.raise_for_status_with_text(resp) @ls_beta.warn_beta async def sync_indexed_dataset( self, *, dataset_id: ls_client.ID_TYPE, **kwargs: Any, ) -> None: """Sync dataset index. This already happens automatically every 5 minutes, but you can call this to force a sync. Args: dataset_id (Union[UUID, str]): The ID of the dataset to sync. Raises: requests.HTTPError: If the request fails. """ # noqa: E501 dataset_id = ls_client._as_uuid(dataset_id, "dataset_id") resp = await self._arequest_with_retries( "POST", f"/datasets/{dataset_id}/index/sync", content=ls_client._dumps_json({**kwargs}), ) ls_utils.raise_for_status_with_text(resp) @ls_beta.warn_beta async def similar_examples( self, inputs: dict, /, *, limit: int, dataset_id: ls_client.ID_TYPE, filter: Optional[str] = None, **kwargs: Any, ) -> list[ls_schemas.ExampleSearch]: r"""Retrieve the dataset examples whose inputs best match the current inputs. !!! note Must have few-shot indexing enabled for the dataset. See `client.index_dataset()`. Args: inputs: The inputs to use as a search query. Must match the dataset input schema. Must be JSON serializable. limit: The maximum number of examples to return. dataset_id (Union[UUID, str]): The ID of the dataset to search over. filter: A filter string to apply to the search results. Uses the same syntax as the `filter` parameter in `list_runs()`. Only a subset of operations are supported. kwargs: Additional keyword args to pass as part of request body. Returns: List of `ExampleSearch` objects. Examples: ```python from langsmith import Client client = Client() await client.similar_examples( {"question": "When would i use the runnable generator"}, limit=3, dataset_id="...", ) ``` ```python [ ExampleSearch( inputs={ "question": "How do I cache a Chat model? What caches can I use?" }, outputs={ "answer": "You can use LangChain's caching layer for Chat Models. This can save you money by reducing the number of API calls you make to the LLM provider, if you're often requesting the same completion multiple times, and speed up your application.\n\n```python\n\nfrom langchain.cache import InMemoryCache\nlangchain.llm_cache = InMemoryCache()\n\n# The first time, it is not yet in cache, so it should take longer\nllm.predict('Tell me a joke')\n\n```\n\nYou can also use SQLite Cache which uses a SQLite database:\n\n```python\n rm .langchain.db\n\nfrom langchain.cache import SQLiteCache\nlangchain.llm_cache = SQLiteCache(database_path=\".langchain.db\")\n\n# The first time, it is not yet in cache, so it should take longer\nllm.predict('Tell me a joke') \n```\n" }, metadata=None, id=UUID("b2ddd1c4-dff6-49ae-8544-f48e39053398"), dataset_id=UUID("01b6ce0f-bfb6-4f48-bbb8-f19272135d40"), ), ExampleSearch( inputs={"question": "What's a runnable lambda?"}, outputs={ "answer": "A runnable lambda is an object that implements LangChain's `Runnable` interface and runs a callbale (i.e., a function). Note the function must accept a single argument." }, metadata=None, id=UUID("f94104a7-2434-4ba7-8293-6a283f4860b4"), dataset_id=UUID("01b6ce0f-bfb6-4f48-bbb8-f19272135d40"), ), ExampleSearch( inputs={"question": "Show me how to use RecursiveURLLoader"}, outputs={ "answer": 'The RecursiveURLLoader comes from the langchain.document_loaders.recursive_url_loader module. Here\'s an example of how to use it:\n\n```python\nfrom langchain.document_loaders.recursive_url_loader import RecursiveUrlLoader\n\n# Create an instance of RecursiveUrlLoader with the URL you want to load\nloader = RecursiveUrlLoader(url="https://example.com")\n\n# Load all child links from the URL page\nchild_links = loader.load()\n\n# Print the child links\nfor link in child_links:\n print(link)\n```\n\nMake sure to replace "https://example.com" with the actual URL you want to load. The load() method returns a list of child links found on the URL page. You can iterate over this list to access each child link.' }, metadata=None, id=UUID("0308ea70-a803-4181-a37d-39e95f138f8c"), dataset_id=UUID("01b6ce0f-bfb6-4f48-bbb8-f19272135d40"), ), ] ``` """ # noqa: E501 dataset_id = ls_client._as_uuid(dataset_id, "dataset_id") req = { "inputs": inputs, "limit": limit, **kwargs, } if filter: req["filter"] = filter resp = await self._arequest_with_retries( "POST", f"/datasets/{dataset_id}/search", content=ls_client._dumps_json(req), ) ls_utils.raise_for_status_with_text(resp) examples = [] for ex in resp.json()["examples"]: examples.append(ls_schemas.ExampleSearch(**ex, dataset_id=dataset_id)) return examples async def _get_settings(self) -> ls_schemas.LangSmithSettings: """Get the settings for the current tenant. Returns: dict: The settings for the current tenant. """ if self._settings is None: response = await self._arequest_with_retries("GET", "/settings") ls_utils.raise_for_status_with_text(response) self._settings = ls_schemas.LangSmithSettings(**response.json()) return self._settings async def _current_tenant_is_owner(self, owner: str) -> bool: """Check if the current workspace has the same handle as owner. Args: owner: The owner to check against. Returns: bool: `True` if the current tenant is the owner, `False` otherwise. """ settings = await self._get_settings() return owner == "-" or settings.tenant_handle == owner async def _owner_conflict_error( self, action: str, owner: str ) -> ls_utils.LangSmithUserError: settings = await self._get_settings() return ls_utils.LangSmithUserError( f"Cannot {action} for another tenant.\n" f"Current tenant: {settings.tenant_handle},\n" f"Requested tenant: {owner}" ) async def _get_latest_commit_hash( self, prompt_owner_and_name: str, limit: int = 1, offset: int = 0 ) -> Optional[str]: """Get the latest commit hash for a prompt. Args: prompt_owner_and_name: The owner and name of the prompt. limit: The maximum number of commits to fetch. offset: The number of commits to skip. Returns: The latest commit hash, or `None` if no commits are found. """ response = await self._arequest_with_retries( "GET", f"/commits/{prompt_owner_and_name}/", params={"limit": limit, "offset": offset}, ) commits = response.json()["commits"] return commits[0]["commit_hash"] if commits else None async def _create_commit_tags( self, prompt_owner_and_name: str, commit_id: str, tags: Union[str, list[str]] ) -> None: """Update tags for a prompt commit. Args: prompt_owner_and_name: The owner and name of the prompt in the format 'owner/repo'. commit_id: The commit ID to tag. tags: A single tag or list of tags to apply to the commit. Raises: requests.exceptions.HTTPError: If the request fails. """ # Normalize tags to always be a list tag_list = [tags] if isinstance(tags, str) else tags # Post each tag individually since there's no bulk endpoint async def create_tag(tag: str): payload = { "tag_name": tag, "commit_id": commit_id, } response = await self._arequest_with_retries( "POST", f"/repos/{prompt_owner_and_name}/tags", json=payload ) ls_utils.raise_for_status_with_text(response) await asyncio.gather(*[create_tag(tag) for tag in tag_list]) async def _like_or_unlike_prompt( self, prompt_identifier: str, like: bool ) -> dict[str, int]: """Like or unlike a prompt. Args: prompt_identifier: The identifier of the prompt. like: True to like the prompt, False to unlike it. Returns: A dictionary with the key `'likes'` and the count of likes as the value. Raises: requests.exceptions.HTTPError: If the prompt is not found or another error occurs. """ owner, prompt_name, _ = ls_utils.parse_prompt_identifier(prompt_identifier) response = await self._arequest_with_retries( "POST", f"/likes/{owner}/{prompt_name}", json={"like": like} ) response.raise_for_status() return response.json() async def _get_prompt_url(self, prompt_identifier: str) -> str: """Get a URL for a prompt. Args: prompt_identifier: The identifier of the prompt. Returns: The URL for the prompt. """ owner, prompt_name, commit_hash = ls_utils.parse_prompt_identifier( prompt_identifier ) if not self._current_tenant_is_owner(owner): return f"{self._host_url}/hub/{owner}/{prompt_name}:{commit_hash[:8]}" settings = await self._get_settings() return ( f"{self._host_url}/prompts/{prompt_name}/{commit_hash[:8]}" f"?organizationId={settings.id}" ) async def _prompt_exists(self, prompt_identifier: str) -> bool: """Check if a prompt exists. Args: prompt_identifier: The identifier of the prompt. Returns: `True` if the prompt exists, `False` otherwise. """ prompt = await self.get_prompt(prompt_identifier) return True if prompt else False async def like_prompt(self, prompt_identifier: str) -> dict[str, int]: """Like a prompt. Args: prompt_identifier: The identifier of the prompt. Returns: A dictionary with the key `'likes'` and the count of likes as the value. """ return await self._like_or_unlike_prompt(prompt_identifier, like=True) async def unlike_prompt(self, prompt_identifier: str) -> dict[str, int]: """Unlike a prompt. Args: prompt_identifier: The identifier of the prompt. Returns: A dictionary with the key `'likes'` and the count of likes as the value. """ return await self._like_or_unlike_prompt(prompt_identifier, like=False) async def list_prompts( self, *, limit: int = 100, offset: int = 0, is_public: Optional[bool] = None, is_archived: Optional[bool] = False, sort_field: ls_schemas.PromptSortField = ls_schemas.PromptSortField.updated_at, sort_direction: Literal["desc", "asc"] = "desc", query: Optional[str] = None, ) -> ls_schemas.ListPromptsResponse: """List prompts with pagination. Args: limit: The maximum number of prompts to return. offset: The number of prompts to skip. is_public: Filter prompts by if they are public. is_archived: Filter prompts by if they are archived. sort_field (PromptSortField): The field to sort by. Defaults to `'updated_at'`. sort_direction: The order to sort by. query: Filter prompts by a search query. Returns: A response object containing the list of prompts. """ params = { "limit": limit, "offset": offset, "is_public": ( "true" if is_public else "false" if is_public is not None else None ), "is_archived": "true" if is_archived else "false", "sort_field": ( sort_field.value if isinstance(sort_field, ls_schemas.PromptSortField) else sort_field ), "sort_direction": sort_direction, "query": query, "match_prefix": "true" if query else None, } response = await self._arequest_with_retries( "GET", "/repos/", params=_exclude_none(params) ) return ls_schemas.ListPromptsResponse(**response.json()) async def get_prompt(self, prompt_identifier: str) -> Optional[ls_schemas.Prompt]: """Get a specific prompt by its identifier. Args: prompt_identifier: The identifier of the prompt. The identifier should be in the format `'prompt_name'` or `'owner/prompt_name'`. Returns: The prompt object. Raises: requests.exceptions.HTTPError: If the prompt is not found or another error occurs. """ owner, prompt_name, _ = ls_utils.parse_prompt_identifier(prompt_identifier) try: response = await self._arequest_with_retries( "GET", f"/repos/{owner}/{prompt_name}" ) return ls_schemas.Prompt(**response.json()["repo"]) except ls_utils.LangSmithNotFoundError: return None async def create_prompt( self, prompt_identifier: str, *, description: Optional[str] = None, readme: Optional[str] = None, tags: Optional[Sequence[str]] = None, is_public: bool = False, ) -> ls_schemas.Prompt: """Create a new prompt. Does not attach prompt object, just creates an empty prompt. Args: prompt_identifier: The identifier of the prompt. The identifier should be in the format of `owner/name:hash`, `name:hash`, `owner/name`, or `name` description: A description of the prompt. readme: A readme for the prompt. tags: A list of tags for the prompt. is_public: Whether the prompt should be public. Returns: The created `Prompt` object. Raises: ValueError: If the current tenant is not the owner. HTTPError: If the server request fails. """ settings = await self._get_settings() if is_public and not settings.tenant_handle: raise ls_utils.LangSmithUserError( "Cannot create a public prompt without first\n" "creating a LangChain Hub handle. " "You can add a handle by creating a public prompt at:\n" "https://smith.langchain.com/prompts" ) owner, prompt_name, _ = ls_utils.parse_prompt_identifier(prompt_identifier) if not (await self._current_tenant_is_owner(owner=owner)): raise (await self._owner_conflict_error("create a prompt", owner)) json: dict[str, Union[str, bool, Sequence[str]]] = { "repo_handle": prompt_name, "description": description or "", "readme": readme or "", "tags": tags or [], "is_public": is_public, } response = await self._arequest_with_retries("POST", "/repos/", json=json) response.raise_for_status() return ls_schemas.Prompt(**response.json()["repo"]) async def create_commit( self, prompt_identifier: str, object: Any, *, parent_commit_hash: Optional[str] = None, tags: Optional[str | list[str]] = None, ) -> str: """Create a commit for an existing prompt. Args: prompt_identifier: The identifier of the prompt. object: The LangChain object to commit. parent_commit_hash: The hash of the parent commit. Defaults to latest commit. tags: A single tag or list of tags to apply to the commit. Defaults to `None`. Returns: The url of the prompt commit. Raises: HTTPError: If the server request fails. ValueError: If the prompt does not exist. """ if not (await self._prompt_exists(prompt_identifier)): raise ls_utils.LangSmithNotFoundError( "Prompt does not exist, you must create it first." ) # Check if object is already a serialized LangChain manifest prepped = ls_client.prep_obj_for_push(object) if isinstance(prepped, dict) and "id" in prepped and "lc" in prepped: manifest_dict = prepped else: try: from langchain_core.load import dumps except ImportError: raise ImportError( "The client.create_commit function requires the langchain-core" "package to run.\nInstall with `pip install langchain-core`" ) json_object = dumps(prepped) manifest_dict = json.loads(json_object) owner, prompt_name, _ = ls_utils.parse_prompt_identifier(prompt_identifier) prompt_owner_and_name = f"{owner}/{prompt_name}" if parent_commit_hash == "latest" or parent_commit_hash is None: parent_commit_hash = await self._get_latest_commit_hash( prompt_owner_and_name ) request_dict = {"parent_commit": parent_commit_hash, "manifest": manifest_dict} response = await self._arequest_with_retries( "POST", f"/commits/{prompt_owner_and_name}", json=request_dict ) commit_json = response.json()["commit"] commit_hash = commit_json["commit_hash"] commit_id = commit_json["id"] if tags: await self._create_commit_tags(prompt_owner_and_name, commit_id, tags) return await self._get_prompt_url(f"{prompt_owner_and_name}:{commit_hash}") async def update_prompt( self, prompt_identifier: str, *, description: Optional[str] = None, readme: Optional[str] = None, tags: Optional[Sequence[str]] = None, is_public: Optional[bool] = None, is_archived: Optional[bool] = None, ) -> dict[str, Any]: """Update a prompt's metadata. To update the content of a prompt, use push_prompt or create_commit instead. Args: prompt_identifier: The identifier of the prompt to update. description: New description for the prompt. readme: New readme for the prompt. tags: New list of tags for the prompt. is_public: New public status for the prompt. is_archived: New archived status for the prompt. Returns: The updated prompt data as returned by the server. Raises: ValueError: If the `prompt_identifier` is empty. HTTPError: If the server request fails. """ settings = await self._get_settings() if is_public and not settings.tenant_handle: raise ValueError( "Cannot create a public prompt without first\n" "creating a LangChain Hub handle. " "You can add a handle by creating a public prompt at:\n" "https://smith.langchain.com/prompts" ) json: dict[str, Union[str, bool, Sequence[str]]] = {} if description is not None: json["description"] = description if readme is not None: json["readme"] = readme if is_public is not None: json["is_public"] = is_public if is_archived is not None: json["is_archived"] = is_archived if tags is not None: json["tags"] = tags owner, prompt_name, _ = ls_utils.parse_prompt_identifier(prompt_identifier) response = await self._arequest_with_retries( "PATCH", f"/repos/{owner}/{prompt_name}", json=json ) response.raise_for_status() return response.json() async def delete_prompt(self, prompt_identifier: str) -> None: """Delete a prompt. Args: prompt_identifier: The identifier of the prompt to delete. Returns: `True` if the prompt was successfully deleted, `False` otherwise. Raises: ValueError: If the current tenant is not the owner of the prompt. """ owner, prompt_name, _ = ls_utils.parse_prompt_identifier(prompt_identifier) if not (await self._current_tenant_is_owner(owner)): raise (await self._owner_conflict_error("delete a prompt", owner)) response = await self._arequest_with_retries( "DELETE", f"/repos/{owner}/{prompt_name}" ) response.raise_for_status() def _get_cache_key( self, prompt_identifier: str, include_model: Optional[bool] = False ) -> str: """Generate a cache key for a prompt. Args: prompt_identifier: The prompt identifier. include_model: Whether model info is included. Returns: The cache key string. """ suffix = ":with_model" if include_model else "" return f"{prompt_identifier}{suffix}" async def _afetch_prompt_from_api( self, prompt_identifier: str, include_model: Optional[bool] = False, ) -> ls_schemas.PromptCommit: """Fetch a prompt from the API (no caching). Args: prompt_identifier: The prompt identifier. include_model: Whether to include model information. Returns: The `PromptCommit` object. """ owner, prompt_name, commit_hash = ls_utils.parse_prompt_identifier( prompt_identifier ) response = await self._arequest_with_retries( "GET", ( f"/commits/{owner}/{prompt_name}/{commit_hash}" f"{'?include_model=true' if include_model else ''}" ), ) return ls_schemas.PromptCommit( **{"owner": owner, "repo": prompt_name, **response.json()} ) async def pull_prompt_commit( self, prompt_identifier: str, *, include_model: Optional[bool] = False, skip_cache: bool = False, ) -> ls_schemas.PromptCommit: """Pull a prompt object from the LangSmith API. Args: prompt_identifier: The identifier of the prompt. include_model: Whether to include model information. skip_cache: Whether to skip the prompt cache. Defaults to `False`. Returns: The prompt object. Raises: ValueError: If no commits are found for the prompt. """ # Create refresh function bound to this specific prompt refresh_func = partial( self._afetch_prompt_from_api, prompt_identifier, include_model ) # Try cache first if enabled if not skip_cache and self._cache is not None: cache_key = self._get_cache_key(prompt_identifier, include_model) cached = self._cache.get(cache_key, refresh_func) if cached is not None: return cached # Cache miss or cache disabled - fetch from API result = await refresh_func() # Store in cache if not skip_cache and self._cache is not None: cache_key = self._get_cache_key(prompt_identifier, include_model) await self._cache.aset(cache_key, result, refresh_func) return result async def list_prompt_commits( self, prompt_identifier: str, *, limit: Optional[int] = None, offset: int = 0, include_model: bool = False, ) -> AsyncGenerator[ls_schemas.ListedPromptCommit, None]: """List commits for a given prompt. Args: prompt_identifier: The identifier of the prompt in the format `owner/repo_name`. limit: The maximum number of commits to return. If `None`, returns all commits. offset: The number of commits to skip before starting to return results. include_model: Whether to include the model information in the commit data. Yields: A `ListedPromptCommit` object for each commit. !!! note This method uses pagination to retrieve commits. It will make multiple API calls if necessary to retrieve all commits or up to the specified limit. """ owner, prompt_name, _ = ls_utils.parse_prompt_identifier(prompt_identifier) params = { "limit": min(100, limit) if limit is not None else limit, "offset": offset, "include_model": include_model, } i = 0 while True: params["offset"] = offset response = await self._arequest_with_retries( "GET", f"/commits/{owner}/{prompt_name}/", params=params, ) val = response.json() items = val["commits"] total = val["total"] if not items: break for it in items: if limit is not None and i >= limit: return # Stop iteration if we've reached the limit yield ls_schemas.ListedPromptCommit( **{"owner": owner, "repo": prompt_name, **it} ) i += 1 offset += len(items) if offset >= total: break async def pull_prompt( self, prompt_identifier: str, *, include_model: bool | None = False, secrets: dict[str, str] | None = None, secrets_from_env: bool = False, skip_cache: bool = False, ) -> Any: """Pull a prompt and return it as a LangChain `PromptTemplate`. This method requires [`langchain-core`](https://pypi.org/project/langchain-core). Args: prompt_identifier: The identifier of the prompt. include_model: Whether to include the model information in the prompt data. secrets: A map of secrets to use when loading, e.g. `{'OPENAI_API_KEY': 'sk-...'}`. If a secret is not found in the map, it will be loaded from the environment if `secrets_from_env` is `True`. Should only be needed when `include_model=True`. secrets_from_env: Whether to load secrets from the environment. **SECURITY NOTE**: Should only be set to `True` when pulling trusted prompts. skip_cache: Whether to skip the prompt cache. Defaults to `False`. Returns: The prompt object in the specified format. !!! warning "Behavior changed in `langsmith` 0.5.1" Updated to take arguments `secrets` and `secrets_from_env` which default to None and False, respectively. By default secrets needed to initialize a pulled object will no longer be read from environment variables. This is relevant when `include_model=True`. For example, to load an OpenAI model you need to have an OPENAI_API_KEY. Previously this was read from environment variables by default. To do so now you must specify `secrets={"OPENAI_API_KEY": "sk-..."}` or `secrets_from_env=True`. `secrets_from_env` should only be used when pulling trusted prompts. These updates were made to remediate vulnerability [GHSA-c67j-w6g6-q2cm](https://github.com/langchain-ai/langchain/security/advisories/GHSA-c67j-w6g6-q2cm) in the `langchain-core` package which this method (but not the entire langsmith package) depends on. """ prompt_object = await self.pull_prompt_commit( prompt_identifier, include_model=include_model, skip_cache=skip_cache ) return ls_client._process_prompt_manifest( prompt_object, include_model=include_model, secrets=secrets, secrets_from_env=secrets_from_env, ) async def push_prompt( self, prompt_identifier: str, *, object: Optional[Any] = None, parent_commit_hash: str = "latest", is_public: Optional[bool] = None, description: Optional[str] = None, readme: Optional[str] = None, tags: Optional[Sequence[str]] = None, commit_tags: Optional[str | list[str]] = None, ) -> str: """Push a prompt to the LangSmith API. Can be used to update prompt metadata or prompt content. If the prompt does not exist, it will be created. If the prompt exists, it will be updated. Args: prompt_identifier: The identifier of the prompt. object: The LangChain object to push. parent_commit_hash: The parent commit hash. is_public: Whether the prompt should be public. If `None` (default), the current visibility status is maintained for existing prompts. For new prompts, `None` defaults to private. Set to `True` to make public, or `False` to make private. description: A description of the prompt. Defaults to an empty string. readme: A readme for the prompt. Defaults to an empty string. tags: A list of tags for the prompt. Defaults to an empty list. commit_tags: A single tag or list of tags for the prompt commit. Defaults to an empty list. Returns: The URL of the prompt. """ # Create or update prompt metadata if await self._prompt_exists(prompt_identifier): if any( param is not None for param in [is_public, description, readme, tags] ): await self.update_prompt( prompt_identifier, description=description, readme=readme, tags=tags, is_public=is_public, ) else: await self.create_prompt( prompt_identifier, is_public=is_public if is_public is not None else False, description=description, readme=readme, tags=tags, ) if object is None: return await self._get_prompt_url(prompt_identifier=prompt_identifier) # Create a commit with the new manifest url = await self.create_commit( prompt_identifier, object, parent_commit_hash=parent_commit_hash, tags=commit_tags, ) return url def _exclude_none(d: dict) -> dict: """Exclude `None` values from a dictionary.""" return {k: v for k, v in d.items() if v is not None}