mirror of https://github.com/hpcaitech/ColossalAI
aibig-modeldata-parallelismdeep-learningdistributed-computingfoundation-modelsheterogeneous-traininghpcinferencelarge-scalemodel-parallelismpipeline-parallelism
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98 lines
3.9 KiB
98 lines
3.9 KiB
""" |
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Script for English retrieval based conversation system backed by LLaMa2 |
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""" |
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import argparse |
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import os |
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from colossalqa.chain.retrieval_qa.base import RetrievalQA |
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from colossalqa.data_loader.document_loader import DocumentLoader |
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from colossalqa.local.llm import ColossalAPI, ColossalLLM |
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from colossalqa.prompt.prompt import PROMPT_RETRIEVAL_CLASSIFICATION_USE_CASE_ZH |
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from colossalqa.retriever import CustomRetriever |
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from colossalqa.text_splitter import ChineseTextSplitter |
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from langchain.embeddings import HuggingFaceEmbeddings |
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if __name__ == "__main__": |
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# Parse arguments |
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parser = argparse.ArgumentParser(description="English retrieval based conversation system backed by LLaMa2") |
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parser.add_argument("--model_path", type=str, default=None, help="path to the model") |
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parser.add_argument("--model_name", type=str, default=None, help="name of the model") |
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parser.add_argument( |
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"--sql_file_path", type=str, default=None, help="path to the a empty folder for storing sql files for indexing" |
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) |
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args = parser.parse_args() |
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if not os.path.exists(args.sql_file_path): |
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os.makedirs(args.sql_file_path) |
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colossal_api = ColossalAPI.get_api(args.model_name, args.model_path) |
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llm = ColossalLLM(n=1, api=colossal_api) |
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# Define the retriever |
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information_retriever = CustomRetriever(k=2, sql_file_path=args.sql_file_path, verbose=True) |
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# Setup embedding model locally |
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embedding = HuggingFaceEmbeddings( |
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model_name="moka-ai/m3e-base", model_kwargs={"device": "cpu"}, encode_kwargs={"normalize_embeddings": False} |
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) |
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# Load data to vector store |
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print("Select files for constructing retriever") |
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documents = [] |
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# define metadata function which is used to format the prompt with value in metadata instead of key, |
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# the later is langchain's default behavior |
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def metadata_func(data_sample, additional_fields): |
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""" |
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metadata_func (Callable[Dict, Dict]): A function that takes in the JSON |
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object extracted by the jq_schema and the default metadata and returns |
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a dict of the updated metadata. |
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To use key-value format, the metadata_func should be defined as follows: |
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metadata = {'value': 'a string to be used to format the prompt', 'is_key_value_mapping': True} |
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""" |
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metadata = {} |
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metadata["value"] = f"Question: {data_sample['key']}\nAnswer:{data_sample['value']}" |
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metadata["is_key_value_mapping"] = True |
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assert "value" not in additional_fields |
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assert "is_key_value_mapping" not in additional_fields |
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metadata.update(additional_fields) |
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return metadata |
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retriever_data = DocumentLoader( |
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[["../data/data_sample/custom_service_classification.json", "CustomerServiceDemo"]], |
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content_key="key", |
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metadata_func=metadata_func, |
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).all_data |
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# Split |
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text_splitter = ChineseTextSplitter() |
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splits = text_splitter.split_documents(retriever_data) |
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documents.extend(splits) |
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# Create retriever |
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information_retriever.add_documents(docs=documents, cleanup="incremental", mode="by_source", embedding=embedding) |
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# Define retrieval chain |
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retrieval_chain = RetrievalQA.from_chain_type( |
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llm=llm, |
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verbose=True, |
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chain_type="stuff", |
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retriever=information_retriever, |
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chain_type_kwargs={"prompt": PROMPT_RETRIEVAL_CLASSIFICATION_USE_CASE_ZH}, |
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llm_kwargs={"max_new_tokens": 50, "temperature": 0.75, "do_sample": True}, |
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) |
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# Set disambiguity handler |
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# Start conversation |
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while True: |
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user_input = input("User: ") |
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if "END" == user_input: |
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print("Agent: Happy to chat with you :)") |
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break |
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# 要使用和custom_service_classification.json 里的key 类似的句子做输入 |
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agent_response = retrieval_chain.run(query=user_input, stop=["Human: "]) |
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agent_response = agent_response.split("\n")[0] |
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print(f"Agent: {agent_response}")
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