MultiRetrievalQAChain Class — langchain Architecture
Architecture documentation for the MultiRetrievalQAChain class in multi_retrieval_qa.py from the langchain codebase.
Entity Profile
Dependency Diagram
graph TD 990cc7ef_647a_c860_f824_1bcc6abd9bc2["MultiRetrievalQAChain"] 741a7f73_f662_9d17_6b91_e7e8709f4338["MultiRouteChain"] 990cc7ef_647a_c860_f824_1bcc6abd9bc2 -->|extends| 741a7f73_f662_9d17_6b91_e7e8709f4338 32bcbccc_de22_c42f_6744_c974b798be10["multi_retrieval_qa.py"] 990cc7ef_647a_c860_f824_1bcc6abd9bc2 -->|defined in| 32bcbccc_de22_c42f_6744_c974b798be10 296511c6_b37f_bf7a_d1e5_1b7a7fd5dcce["output_keys()"] 990cc7ef_647a_c860_f824_1bcc6abd9bc2 -->|method| 296511c6_b37f_bf7a_d1e5_1b7a7fd5dcce 6adee4b9_b989_5078_d057_fce159e870b7["from_retrievers()"] 990cc7ef_647a_c860_f824_1bcc6abd9bc2 -->|method| 6adee4b9_b989_5078_d057_fce159e870b7
Relationship Graph
Source Code
libs/langchain/langchain_classic/chains/router/multi_retrieval_qa.py lines 27–134
class MultiRetrievalQAChain(MultiRouteChain):
"""Multi Retrieval QA Chain.
A multi-route chain that uses an LLM router chain to choose amongst retrieval
qa chains.
"""
router_chain: LLMRouterChain
"""Chain for deciding a destination chain and the input to it."""
destination_chains: Mapping[str, BaseRetrievalQA]
"""Map of name to candidate chains that inputs can be routed to."""
default_chain: Chain
"""Default chain to use when router doesn't map input to one of the destinations."""
@property
@override
def output_keys(self) -> list[str]:
return ["result"]
@classmethod
def from_retrievers(
cls,
llm: BaseLanguageModel,
retriever_infos: list[dict[str, Any]],
default_retriever: BaseRetriever | None = None,
default_prompt: PromptTemplate | None = None,
default_chain: Chain | None = None,
*,
default_chain_llm: BaseLanguageModel | None = None,
**kwargs: Any,
) -> MultiRetrievalQAChain:
"""Create a multi retrieval qa chain from an LLM and a default chain.
Args:
llm: The language model to use.
retriever_infos: Dictionaries containing retriever information.
default_retriever: Optional default retriever to use if no default chain
is provided.
default_prompt: Optional prompt template to use for the default retriever.
default_chain: Optional default chain to use when router doesn't map input
to one of the destinations.
default_chain_llm: Optional language model to use if no default chain and
no default retriever are provided.
**kwargs: Additional keyword arguments to pass to the chain.
Returns:
An instance of the multi retrieval qa chain.
"""
if default_prompt and not default_retriever:
msg = (
"`default_retriever` must be specified if `default_prompt` is "
"provided. Received only `default_prompt`."
)
raise ValueError(msg)
destinations = [f"{r['name']}: {r['description']}" for r in retriever_infos]
destinations_str = "\n".join(destinations)
router_template = MULTI_RETRIEVAL_ROUTER_TEMPLATE.format(
destinations=destinations_str,
)
router_prompt = PromptTemplate(
template=router_template,
input_variables=["input"],
output_parser=RouterOutputParser(next_inputs_inner_key="query"),
)
router_chain = LLMRouterChain.from_llm(llm, router_prompt)
destination_chains = {}
for r_info in retriever_infos:
prompt = r_info.get("prompt")
retriever = r_info["retriever"]
chain = RetrievalQA.from_llm(llm, prompt=prompt, retriever=retriever)
name = r_info["name"]
destination_chains[name] = chain
if default_chain:
_default_chain = default_chain
elif default_retriever:
_default_chain = RetrievalQA.from_llm(
llm,
prompt=default_prompt,
retriever=default_retriever,
)
else:
Extends
Source
Frequently Asked Questions
What is the MultiRetrievalQAChain class?
MultiRetrievalQAChain is a class in the langchain codebase, defined in libs/langchain/langchain_classic/chains/router/multi_retrieval_qa.py.
Where is MultiRetrievalQAChain defined?
MultiRetrievalQAChain is defined in libs/langchain/langchain_classic/chains/router/multi_retrieval_qa.py at line 27.
What does MultiRetrievalQAChain extend?
MultiRetrievalQAChain extends MultiRouteChain.
Analyze Your Own Codebase
Get architecture documentation, dependency graphs, and domain analysis for your codebase in minutes.
Try Supermodel Free