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https://github.com/hwchase17/langchain
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480626dc99
…tch]: import models from community ran ```bash git grep -l 'from langchain\.chat_models' | xargs -L 1 sed -i '' "s/from\ langchain\.chat_models/from\ langchain_community.chat_models/g" git grep -l 'from langchain\.llms' | xargs -L 1 sed -i '' "s/from\ langchain\.llms/from\ langchain_community.llms/g" git grep -l 'from langchain\.embeddings' | xargs -L 1 sed -i '' "s/from\ langchain\.embeddings/from\ langchain_community.embeddings/g" git checkout master libs/langchain/tests/unit_tests/llms git checkout master libs/langchain/tests/unit_tests/chat_models git checkout master libs/langchain/tests/unit_tests/embeddings/test_imports.py make format cd libs/langchain; make format cd ../experimental; make format cd ../core; make format ```
121 lines
3.7 KiB
Python
121 lines
3.7 KiB
Python
# Load
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import uuid
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from langchain.prompts import ChatPromptTemplate
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from langchain.retrievers.multi_vector import MultiVectorRetriever
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from langchain.storage import InMemoryStore
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from langchain.vectorstores import Chroma
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from langchain_community.chat_models import ChatOpenAI
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from langchain_community.embeddings import OpenAIEmbeddings
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from langchain_core.documents import Document
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from langchain_core.output_parsers import StrOutputParser
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from langchain_core.pydantic_v1 import BaseModel
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from langchain_core.runnables import RunnablePassthrough
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from unstructured.partition.pdf import partition_pdf
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# Path to docs
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path = "docs"
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raw_pdf_elements = partition_pdf(
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filename=path + "/LLaVA.pdf",
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# Unstructured first finds embedded image blocks
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extract_images_in_pdf=False,
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# Use layout model (YOLOX) to get bounding boxes (for tables) and find titles
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# Titles are any sub-section of the document
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infer_table_structure=True,
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# Post processing to aggregate text once we have the title
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chunking_strategy="by_title",
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# Chunking params to aggregate text blocks
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# Attempt to create a new chunk 3800 chars
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# Attempt to keep chunks > 2000 chars
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max_characters=4000,
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new_after_n_chars=3800,
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combine_text_under_n_chars=2000,
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image_output_dir_path=path,
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)
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# Categorize by type
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tables = []
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texts = []
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for element in raw_pdf_elements:
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if "unstructured.documents.elements.Table" in str(type(element)):
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tables.append(str(element))
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elif "unstructured.documents.elements.CompositeElement" in str(type(element)):
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texts.append(str(element))
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# Summarize
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prompt_text = """You are an assistant tasked with summarizing tables and text. \
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Give a concise summary of the table or text. Table or text chunk: {element} """
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prompt = ChatPromptTemplate.from_template(prompt_text)
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model = ChatOpenAI(temperature=0, model="gpt-4")
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summarize_chain = {"element": lambda x: x} | prompt | model | StrOutputParser()
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# Apply
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table_summaries = summarize_chain.batch(tables, {"max_concurrency": 5})
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# To save time / cost, only do text summaries if chunk sizes are large
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# text_summaries = summarize_chain.batch(texts, {"max_concurrency": 5})
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# We can just assign text_summaries to the raw texts
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text_summaries = texts
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# Use multi vector retriever
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# The vectorstore to use to index the child chunks
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vectorstore = Chroma(collection_name="summaries", embedding_function=OpenAIEmbeddings())
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# The storage layer for the parent documents
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store = InMemoryStore()
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id_key = "doc_id"
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# The retriever (empty to start)
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retriever = MultiVectorRetriever(
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vectorstore=vectorstore,
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docstore=store,
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id_key=id_key,
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)
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# Add texts
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doc_ids = [str(uuid.uuid4()) for _ in texts]
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summary_texts = [
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Document(page_content=s, metadata={id_key: doc_ids[i]})
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for i, s in enumerate(text_summaries)
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]
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retriever.vectorstore.add_documents(summary_texts)
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retriever.docstore.mset(list(zip(doc_ids, texts)))
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# Add tables
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table_ids = [str(uuid.uuid4()) for _ in tables]
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summary_tables = [
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Document(page_content=s, metadata={id_key: table_ids[i]})
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for i, s in enumerate(table_summaries)
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]
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retriever.vectorstore.add_documents(summary_tables)
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retriever.docstore.mset(list(zip(table_ids, tables)))
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# RAG
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# Prompt template
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template = """Answer the question based only on the following context, which can include text and tables:
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{context}
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Question: {question}
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""" # noqa: E501
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prompt = ChatPromptTemplate.from_template(template)
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# LLM
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model = ChatOpenAI(temperature=0, model="gpt-4")
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# RAG pipeline
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chain = (
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{"context": retriever, "question": RunnablePassthrough()}
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| prompt
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| model
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| StrOutputParser()
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)
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# Add typing for input
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class Question(BaseModel):
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__root__: str
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chain = chain.with_types(input_type=Question)
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