"""Chain for chatting with a vector database."""
from __future__ import annotations
import inspect
import warnings
from abc import abstractmethod
from pathlib import Path
from typing import Any, Callable, Dict, List, Optional, Tuple, Type, Union
from langchain_core.callbacks import (
AsyncCallbackManagerForChainRun,
CallbackManagerForChainRun,
Callbacks,
)
from langchain_core.documents import Document
from langchain_core.language_models import BaseLanguageModel
from langchain_core.messages import BaseMessage
from langchain_core.prompts import BasePromptTemplate
from langchain_core.pydantic_v1 import BaseModel, Extra, Field, root_validator
from langchain_core.retrievers import BaseRetriever
from langchain_core.runnables import RunnableConfig
from langchain_core.vectorstores import VectorStore
from langchain.chains.base import Chain
from langchain.chains.combine_documents.base import BaseCombineDocumentsChain
from langchain.chains.combine_documents.stuff import StuffDocumentsChain
from langchain.chains.conversational_retrieval.prompts import CONDENSE_QUESTION_PROMPT
from langchain.chains.llm import LLMChain
from langchain.chains.question_answering import load_qa_chain
# Depending on the memory type and configuration, the chat history format may differ.
# This needs to be consolidated.
CHAT_TURN_TYPE = Union[Tuple[str, str], BaseMessage]
_ROLE_MAP = {"human": "Human: ", "ai": "Assistant: "}
def _get_chat_history(chat_history: List[CHAT_TURN_TYPE]) -> str:
buffer = ""
for dialogue_turn in chat_history:
if isinstance(dialogue_turn, BaseMessage):
role_prefix = _ROLE_MAP.get(dialogue_turn.type, f"{dialogue_turn.type}: ")
buffer += f"\n{role_prefix}{dialogue_turn.content}"
elif isinstance(dialogue_turn, tuple):
human = "Human: " + dialogue_turn[0]
ai = "Assistant: " + dialogue_turn[1]
buffer += "\n" + "\n".join([human, ai])
else:
raise ValueError(
f"Unsupported chat history format: {type(dialogue_turn)}."
f" Full chat history: {chat_history} "
)
return buffer
[docs]class BaseConversationalRetrievalChain(Chain):
"""Chain for chatting with an index."""
combine_docs_chain: BaseCombineDocumentsChain
"""The chain used to combine any retrieved documents."""
question_generator: LLMChain
"""The chain used to generate a new question for the sake of retrieval.
This chain will take in the current question (with variable `question`)
and any chat history (with variable `chat_history`) and will produce
a new standalone question to be used later on."""
output_key: str = "answer"
"""The output key to return the final answer of this chain in."""
rephrase_question: bool = True
"""Whether or not to pass the new generated question to the combine_docs_chain.
If True, will pass the new generated question along.
If False, will only use the new generated question for retrieval and pass the
original question along to the combine_docs_chain."""
return_source_documents: bool = False
"""Return the retrieved source documents as part of the final result."""
return_generated_question: bool = False
"""Return the generated question as part of the final result."""
get_chat_history: Optional[Callable[[List[CHAT_TURN_TYPE]], str]] = None
"""An optional function to get a string of the chat history.
If None is provided, will use a default."""
response_if_no_docs_found: Optional[str]
"""If specified, the chain will return a fixed response if no docs
are found for the question. """
class Config:
"""Configuration for this pydantic object."""
extra = Extra.forbid
arbitrary_types_allowed = True
allow_population_by_field_name = True
@property
def input_keys(self) -> List[str]:
"""Input keys."""
return ["question", "chat_history"]
@property
def output_keys(self) -> List[str]:
"""Return the output keys.
:meta private:
"""
_output_keys = [self.output_key]
if self.return_source_documents:
_output_keys = _output_keys + ["source_documents"]
if self.return_generated_question:
_output_keys = _output_keys + ["generated_question"]
return _output_keys
@abstractmethod
def _get_docs(
self,
question: str,
inputs: Dict[str, Any],
*,
run_manager: CallbackManagerForChainRun,
) -> List[Document]:
"""Get docs."""
def _call(
self,
inputs: Dict[str, Any],
run_manager: Optional[CallbackManagerForChainRun] = None,
) -> Dict[str, Any]:
_run_manager = run_manager or CallbackManagerForChainRun.get_noop_manager()
question = inputs["question"]
get_chat_history = self.get_chat_history or _get_chat_history
chat_history_str = get_chat_history(inputs["chat_history"])
if chat_history_str:
callbacks = _run_manager.get_child()
new_question = self.question_generator.run(
question=question, chat_history=chat_history_str, callbacks=callbacks
)
else:
new_question = question
accepts_run_manager = (
"run_manager" in inspect.signature(self._get_docs).parameters
)
if accepts_run_manager:
docs = self._get_docs(new_question, inputs, run_manager=_run_manager)
else:
docs = self._get_docs(new_question, inputs) # type: ignore[call-arg]
output: Dict[str, Any] = {}
if self.response_if_no_docs_found is not None and len(docs) == 0:
output[self.output_key] = self.response_if_no_docs_found
else:
new_inputs = inputs.copy()
if self.rephrase_question:
new_inputs["question"] = new_question
new_inputs["chat_history"] = chat_history_str
answer = self.combine_docs_chain.run(
input_documents=docs, callbacks=_run_manager.get_child(), **new_inputs
)
output[self.output_key] = answer
if self.return_source_documents:
output["source_documents"] = docs
if self.return_generated_question:
output["generated_question"] = new_question
return output
@abstractmethod
async def _aget_docs(
self,
question: str,
inputs: Dict[str, Any],
*,
run_manager: AsyncCallbackManagerForChainRun,
) -> List[Document]:
"""Get docs."""
async def _acall(
self,
inputs: Dict[str, Any],
run_manager: Optional[AsyncCallbackManagerForChainRun] = None,
) -> Dict[str, Any]:
_run_manager = run_manager or AsyncCallbackManagerForChainRun.get_noop_manager()
question = inputs["question"]
get_chat_history = self.get_chat_history or _get_chat_history
chat_history_str = get_chat_history(inputs["chat_history"])
if chat_history_str:
callbacks = _run_manager.get_child()
new_question = await self.question_generator.arun(
question=question, chat_history=chat_history_str, callbacks=callbacks
)
else:
new_question = question
accepts_run_manager = (
"run_manager" in inspect.signature(self._aget_docs).parameters
)
if accepts_run_manager:
docs = await self._aget_docs(new_question, inputs, run_manager=_run_manager)
else:
docs = await self._aget_docs(new_question, inputs) # type: ignore[call-arg]
output: Dict[str, Any] = {}
if self.response_if_no_docs_found is not None and len(docs) == 0:
output[self.output_key] = self.response_if_no_docs_found
else:
new_inputs = inputs.copy()
if self.rephrase_question:
new_inputs["question"] = new_question
new_inputs["chat_history"] = chat_history_str
answer = await self.combine_docs_chain.arun(
input_documents=docs, callbacks=_run_manager.get_child(), **new_inputs
)
output[self.output_key] = answer
if self.return_source_documents:
output["source_documents"] = docs
if self.return_generated_question:
output["generated_question"] = new_question
return output
[docs] def save(self, file_path: Union[Path, str]) -> None:
if self.get_chat_history:
raise ValueError("Chain not saveable when `get_chat_history` is not None.")
super().save(file_path)
[docs]class ConversationalRetrievalChain(BaseConversationalRetrievalChain):
"""Chain for having a conversation based on retrieved documents.
This chain takes in chat history (a list of messages) and new questions,
and then returns an answer to that question.
The algorithm for this chain consists of three parts:
1. Use the chat history and the new question to create a "standalone question".
This is done so that this question can be passed into the retrieval step to fetch
relevant documents. If only the new question was passed in, then relevant context
may be lacking. If the whole conversation was passed into retrieval, there may
be unnecessary information there that would distract from retrieval.
2. This new question is passed to the retriever and relevant documents are
returned.
3. The retrieved documents are passed to an LLM along with either the new question
(default behavior) or the original question and chat history to generate a final
response.
Example:
.. code-block:: python
from langchain.chains import (
StuffDocumentsChain, LLMChain, ConversationalRetrievalChain
)
from langchain_core.prompts import PromptTemplate
from langchain_community.llms import OpenAI
combine_docs_chain = StuffDocumentsChain(...)
vectorstore = ...
retriever = vectorstore.as_retriever()
# This controls how the standalone question is generated.
# Should take `chat_history` and `question` as input variables.
template = (
"Combine the chat history and follow up question into "
"a standalone question. Chat History: {chat_history}"
"Follow up question: {question}"
)
prompt = PromptTemplate.from_template(template)
llm = OpenAI()
question_generator_chain = LLMChain(llm=llm, prompt=prompt)
chain = ConversationalRetrievalChain(
combine_docs_chain=combine_docs_chain,
retriever=retriever,
question_generator=question_generator_chain,
)
"""
retriever: BaseRetriever
"""Retriever to use to fetch documents."""
max_tokens_limit: Optional[int] = None
"""If set, enforces that the documents returned are less than this limit.
This is only enforced if `combine_docs_chain` is of type StuffDocumentsChain."""
def _reduce_tokens_below_limit(self, docs: List[Document]) -> List[Document]:
num_docs = len(docs)
if self.max_tokens_limit and isinstance(
self.combine_docs_chain, StuffDocumentsChain
):
tokens = [
self.combine_docs_chain.llm_chain._get_num_tokens(doc.page_content)
for doc in docs
]
token_count = sum(tokens[:num_docs])
while token_count > self.max_tokens_limit:
num_docs -= 1
token_count -= tokens[num_docs]
return docs[:num_docs]
def _get_docs(
self,
question: str,
inputs: Dict[str, Any],
*,
run_manager: CallbackManagerForChainRun,
) -> List[Document]:
"""Get docs."""
docs = self.retriever.get_relevant_documents(
question, callbacks=run_manager.get_child()
)
return self._reduce_tokens_below_limit(docs)
async def _aget_docs(
self,
question: str,
inputs: Dict[str, Any],
*,
run_manager: AsyncCallbackManagerForChainRun,
) -> List[Document]:
"""Get docs."""
docs = await self.retriever.aget_relevant_documents(
question, callbacks=run_manager.get_child()
)
return self._reduce_tokens_below_limit(docs)
[docs] @classmethod
def from_llm(
cls,
llm: BaseLanguageModel,
retriever: BaseRetriever,
condense_question_prompt: BasePromptTemplate = CONDENSE_QUESTION_PROMPT,
chain_type: str = "stuff",
verbose: bool = False,
condense_question_llm: Optional[BaseLanguageModel] = None,
combine_docs_chain_kwargs: Optional[Dict] = None,
callbacks: Callbacks = None,
**kwargs: Any,
) -> BaseConversationalRetrievalChain:
"""Convenience method to load chain from LLM and retriever.
This provides some logic to create the `question_generator` chain
as well as the combine_docs_chain.
Args:
llm: The default language model to use at every part of this chain
(eg in both the question generation and the answering)
retriever: The retriever to use to fetch relevant documents from.
condense_question_prompt: The prompt to use to condense the chat history
and new question into a standalone question.
chain_type: The chain type to use to create the combine_docs_chain, will
be sent to `load_qa_chain`.
verbose: Verbosity flag for logging to stdout.
condense_question_llm: The language model to use for condensing the chat
history and new question into a standalone question. If none is
provided, will default to `llm`.
combine_docs_chain_kwargs: Parameters to pass as kwargs to `load_qa_chain`
when constructing the combine_docs_chain.
callbacks: Callbacks to pass to all subchains.
**kwargs: Additional parameters to pass when initializing
ConversationalRetrievalChain
"""
combine_docs_chain_kwargs = combine_docs_chain_kwargs or {}
doc_chain = load_qa_chain(
llm,
chain_type=chain_type,
verbose=verbose,
callbacks=callbacks,
**combine_docs_chain_kwargs,
)
_llm = condense_question_llm or llm
condense_question_chain = LLMChain(
llm=_llm,
prompt=condense_question_prompt,
verbose=verbose,
callbacks=callbacks,
)
return cls(
retriever=retriever,
combine_docs_chain=doc_chain,
question_generator=condense_question_chain,
callbacks=callbacks,
**kwargs,
)
[docs]class ChatVectorDBChain(BaseConversationalRetrievalChain):
"""Chain for chatting with a vector database."""
vectorstore: VectorStore = Field(alias="vectorstore")
top_k_docs_for_context: int = 4
search_kwargs: dict = Field(default_factory=dict)
@property
def _chain_type(self) -> str:
return "chat-vector-db"
@root_validator()
def raise_deprecation(cls, values: Dict) -> Dict:
warnings.warn(
"`ChatVectorDBChain` is deprecated - "
"please use `from langchain.chains import ConversationalRetrievalChain`"
)
return values
def _get_docs(
self,
question: str,
inputs: Dict[str, Any],
*,
run_manager: CallbackManagerForChainRun,
) -> List[Document]:
"""Get docs."""
vectordbkwargs = inputs.get("vectordbkwargs", {})
full_kwargs = {**self.search_kwargs, **vectordbkwargs}
return self.vectorstore.similarity_search(
question, k=self.top_k_docs_for_context, **full_kwargs
)
async def _aget_docs(
self,
question: str,
inputs: Dict[str, Any],
*,
run_manager: AsyncCallbackManagerForChainRun,
) -> List[Document]:
"""Get docs."""
raise NotImplementedError("ChatVectorDBChain does not support async")
[docs] @classmethod
def from_llm(
cls,
llm: BaseLanguageModel,
vectorstore: VectorStore,
condense_question_prompt: BasePromptTemplate = CONDENSE_QUESTION_PROMPT,
chain_type: str = "stuff",
combine_docs_chain_kwargs: Optional[Dict] = None,
callbacks: Callbacks = None,
**kwargs: Any,
) -> BaseConversationalRetrievalChain:
"""Load chain from LLM."""
combine_docs_chain_kwargs = combine_docs_chain_kwargs or {}
doc_chain = load_qa_chain(
llm,
chain_type=chain_type,
callbacks=callbacks,
**combine_docs_chain_kwargs,
)
condense_question_chain = LLMChain(
llm=llm, prompt=condense_question_prompt, callbacks=callbacks
)
return cls(
vectorstore=vectorstore,
combine_docs_chain=doc_chain,
question_generator=condense_question_chain,
callbacks=callbacks,
**kwargs,
)