langchain/templates/rag-vectara/rag_vectara/chain.py
Bagatur fa5d49f2c1
docs, experimental[patch], langchain[patch], community[patch]: update storage imports (#15429)
ran 
```bash
g grep -l "langchain.vectorstores" | xargs -L 1 sed -i '' "s/langchain\.vectorstores/langchain_community.vectorstores/g"
g grep -l "langchain.document_loaders" | xargs -L 1 sed -i '' "s/langchain\.document_loaders/langchain_community.document_loaders/g"
g grep -l "langchain.chat_loaders" | xargs -L 1 sed -i '' "s/langchain\.chat_loaders/langchain_community.chat_loaders/g"
g grep -l "langchain.document_transformers" | xargs -L 1 sed -i '' "s/langchain\.document_transformers/langchain_community.document_transformers/g"
g grep -l "langchain\.graphs" | xargs -L 1 sed -i '' "s/langchain\.graphs/langchain_community.graphs/g"
g grep -l "langchain\.memory\.chat_message_histories" | xargs -L 1 sed -i '' "s/langchain\.memory\.chat_message_histories/langchain_community.chat_message_histories/g"
gco master libs/langchain/tests/unit_tests/*/test_imports.py
gco master libs/langchain/tests/unit_tests/**/test_public_api.py
```
2024-01-02 16:47:11 -05:00

49 lines
2.0 KiB
Python

import os
from langchain_community.vectorstores import Vectara
from langchain_core.output_parsers import StrOutputParser
from langchain_core.pydantic_v1 import BaseModel
from langchain_core.runnables import RunnableParallel, RunnablePassthrough
if os.environ.get("VECTARA_CUSTOMER_ID", None) is None:
raise Exception("Missing `VECTARA_CUSTOMER_ID` environment variable.")
if os.environ.get("VECTARA_CORPUS_ID", None) is None:
raise Exception("Missing `VECTARA_CORPUS_ID` environment variable.")
if os.environ.get("VECTARA_API_KEY", None) is None:
raise Exception("Missing `VECTARA_API_KEY` environment variable.")
# Setup the Vectara retriever with your Corpus ID and API Key
# note you can customize the retriever behavior by passing additional arguments:
# - k: number of results to return (defaults to 5)
# - lambda_val: the
# [lexical matching](https://docs.vectara.com/docs/api-reference/search-apis/lexical-matching)
# factor for hybrid search (defaults to 0.025)
# - filter: a [filter](https://docs.vectara.com/docs/common-use-cases/filtering-by-metadata/filter-overview)
# to apply to the results (default None)
# - n_sentence_context: number of sentences to include before/after the actual matching
# segment when returning results. This defaults to 2.
# - mmr_config: can be used to specify MMR mode in the query.
# - is_enabled: True or False
# - mmr_k: number of results to use for MMR reranking
# - diversity_bias: 0 = no diversity, 1 = full diversity. This is the lambda
# parameter in the MMR formula and is in the range 0...1
retriever = Vectara().as_retriever()
# RAG pipeline: we extract the summary from the RAG output, which is the last document
# (if summary is enabled)
# Note that if you want to extract the citation information, you can use res[:-1]]
chain = (
RunnableParallel({"context": retriever, "question": RunnablePassthrough()})
| (lambda res: res[-1])
| StrOutputParser()
)
# Add typing for input
class Question(BaseModel):
__root__: str
chain = chain.with_types(input_type=Question)