langchain/libs/community/langchain_community/chat_loaders/langsmith.py
2024-05-22 15:21:08 -07:00

159 lines
5.6 KiB
Python

from __future__ import annotations
import logging
from typing import TYPE_CHECKING, Dict, Iterable, Iterator, List, Optional, Union, cast
from langchain_core.chat_loaders import BaseChatLoader
from langchain_core.chat_sessions import ChatSession
from langchain_core.load.load import load
if TYPE_CHECKING:
from langsmith.client import Client
from langsmith.schemas import Run
logger = logging.getLogger(__name__)
class LangSmithRunChatLoader(BaseChatLoader):
"""
Load chat sessions from a list of LangSmith "llm" runs.
Attributes:
runs (Iterable[Union[str, Run]]): The list of LLM run IDs or run objects.
client (Client): Instance of LangSmith client for fetching data.
"""
def __init__(
self, runs: Iterable[Union[str, Run]], client: Optional["Client"] = None
):
"""
Initialize a new LangSmithRunChatLoader instance.
:param runs: List of LLM run IDs or run objects.
:param client: An instance of LangSmith client, if not provided,
a new client instance will be created.
"""
from langsmith.client import Client
self.runs = runs
self.client = client or Client()
def _load_single_chat_session(self, llm_run: "Run") -> ChatSession:
"""
Convert an individual LangSmith LLM run to a ChatSession.
:param llm_run: The LLM run object.
:return: A chat session representing the run's data.
"""
chat_session = LangSmithRunChatLoader._get_messages_from_llm_run(llm_run)
functions = LangSmithRunChatLoader._get_functions_from_llm_run(llm_run)
if functions:
chat_session["functions"] = functions
return chat_session
@staticmethod
def _get_messages_from_llm_run(llm_run: "Run") -> ChatSession:
"""
Extract messages from a LangSmith LLM run.
:param llm_run: The LLM run object.
:return: ChatSession with the extracted messages.
"""
if llm_run.run_type != "llm":
raise ValueError(f"Expected run of type llm. Got: {llm_run.run_type}")
if "messages" not in llm_run.inputs:
raise ValueError(f"Run has no 'messages' inputs. Got {llm_run.inputs}")
if not llm_run.outputs:
raise ValueError("Cannot convert pending run")
messages = load(llm_run.inputs)["messages"]
message_chunk = load(llm_run.outputs)["generations"][0]["message"]
return ChatSession(messages=messages + [message_chunk])
@staticmethod
def _get_functions_from_llm_run(llm_run: "Run") -> Optional[List[Dict]]:
"""
Extract functions from a LangSmith LLM run if they exist.
:param llm_run: The LLM run object.
:return: Functions from the run or None.
"""
if llm_run.run_type != "llm":
raise ValueError(f"Expected run of type llm. Got: {llm_run.run_type}")
return (llm_run.extra or {}).get("invocation_params", {}).get("functions")
def lazy_load(self) -> Iterator[ChatSession]:
"""
Lazy load the chat sessions from the iterable of run IDs.
This method fetches the runs and converts them to chat sessions on-the-fly,
yielding one session at a time.
:return: Iterator of chat sessions containing messages.
"""
from langsmith.schemas import Run
for run_obj in self.runs:
try:
if hasattr(run_obj, "id"):
run = run_obj
else:
run = self.client.read_run(run_obj)
session = self._load_single_chat_session(cast(Run, run))
yield session
except ValueError as e:
logger.warning(f"Could not load run {run_obj}: {repr(e)}")
continue
class LangSmithDatasetChatLoader(BaseChatLoader):
"""
Load chat sessions from a LangSmith dataset with the "chat" data type.
Attributes:
dataset_name (str): The name of the LangSmith dataset.
client (Client): Instance of LangSmith client for fetching data.
"""
def __init__(self, *, dataset_name: str, client: Optional["Client"] = None):
"""
Initialize a new LangSmithChatDatasetLoader instance.
:param dataset_name: The name of the LangSmith dataset.
:param client: An instance of LangSmith client; if not provided,
a new client instance will be created.
"""
try:
from langsmith.client import Client
except ImportError as e:
raise ImportError(
"The LangSmith client is required to load LangSmith datasets.\n"
"Please install it with `pip install langsmith`"
) from e
self.dataset_name = dataset_name
self.client = client or Client()
def lazy_load(self) -> Iterator[ChatSession]:
"""
Lazy load the chat sessions from the specified LangSmith dataset.
This method fetches the chat data from the dataset and
converts each data point to chat sessions on-the-fly,
yielding one session at a time.
:return: Iterator of chat sessions containing messages.
"""
from langchain_community.adapters import openai as oai_adapter
data = self.client.read_dataset_openai_finetuning(
dataset_name=self.dataset_name
)
for data_point in data:
yield ChatSession(
messages=[
oai_adapter.convert_dict_to_message(m)
for m in data_point.get("messages", [])
],
functions=data_point.get("functions"),
)