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gangyan/langchain-chat/server/chat/file_chat.py

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from fastapi import Body, File, Form, UploadFile
from sse_starlette.sse import EventSourceResponse
from configs import (LLM_MODELS, VECTOR_SEARCH_TOP_K, SCORE_THRESHOLD, TEMPERATURE,
CHUNK_SIZE, OVERLAP_SIZE, ZH_TITLE_ENHANCE)
from server.chat.agent_chat_test import run_sync
from server.chat.policy_fun_iast import get_llm_model_response
from server.utils import (wrap_done, get_ChatOpenAI,
BaseResponse, get_prompt_template, get_temp_dir, run_in_thread_pool)
from server.knowledge_base.kb_cache.faiss_cache import memo_faiss_pool
from langchain.chains import LLMChain
from langchain.callbacks import AsyncIteratorCallbackHandler
from typing import AsyncIterable, List, Optional
import asyncio
from langchain.prompts.chat import ChatPromptTemplate
from server.chat.utils import History, split_questions
from server.knowledge_base.kb_service.base import EmbeddingsFunAdapter
from server.knowledge_base.utils import KnowledgeFile
import json
import os
from pathlib import Path
from langchain.chains.question_answering import load_qa_chain
from langchain.memory import ConversationBufferMemory,ConversationSummaryMemory, ConversationBufferWindowMemory
from langchain.docstore.document import Document
from langchain_core.prompts import PromptTemplate
from datetime import datetime
from server.knowledge_base.kb_service.base import TextRank
from configs.basic_config import *
# def _parse_files_in_thread(
# files: List[UploadFile],
# dir: str,
# zh_title_enhance: bool,
# chunk_size: int,
# chunk_overlap: int,
# ):
# """
# 通过多线程将上传的文件保存到对应目录内。
# 生成器返回保存结果:[success or error, filename, msg, docs]
# """
# def parse_file(file: UploadFile) -> dict:
# '''
# 保存单个文件。
# '''
# try:
# filename = file.filename
# file_path = os.path.join(dir, filename)
# file_content = file.file.read() # 读取上传文件的内容
# if not os.path.isdir(os.path.dirname(file_path)):
# os.makedirs(os.path.dirname(file_path))
# with open(file_path, "wb") as f:
# f.write(file_content)
# kb_file = KnowledgeFile(filename=filename, knowledge_base_name="temp")
# kb_file.filepath = file_path
# docs = kb_file.file2text(zh_title_enhance=zh_title_enhance,
# chunk_size=chunk_size,
# chunk_overlap=chunk_overlap)
# return True, filename, f"成功上传文件 {filename}", docs
# except Exception as e:
# msg = f"{filename} 文件上传失败,报错信息为: {e}"
# return False, filename, msg, []
# params = [{"file": file} for file in files]
# for result in run_in_thread_pool(parse_file, params=params):
# yield result
# def upload_temp_docs(
# files: List[UploadFile] = File(..., description="上传文件,支持多文件"),
# prev_id: str = Form(None, description="前知识库ID"),
# chunk_size: int = Form(CHUNK_SIZE, description="知识库中单段文本最大长度"),
# chunk_overlap: int = Form(OVERLAP_SIZE, description="知识库中相邻文本重合长度"),
# zh_title_enhance: bool = Form(ZH_TITLE_ENHANCE, description="是否开启中文标题加强"),
# ) -> BaseResponse:
# '''
# 将文件保存到临时目录,并进行向量化。
# 返回临时目录名称作为ID同时也是临时向量库的ID。
# '''
# if prev_id is not None:
# memo_faiss_pool.pop(prev_id)
# failed_files = []
# documents = []
# path, id = get_temp_dir(prev_id)
# for success, file, msg, docs in _parse_files_in_thread(files=files,
# dir=path,
# zh_title_enhance=zh_title_enhance,
# chunk_size=chunk_size,
# chunk_overlap=chunk_overlap):
# if success:
# documents += docs
# else:
# failed_files.append({file: msg})
# with memo_faiss_pool.load_vector_store(id).acquire() as vs:
# vs.add_documents(documents)
# return BaseResponse(data={"id": id, "failed_files": failed_files})
def _parse_files_in_thread(
files: List[UploadFile],
dir: str,
zh_title_enhance: bool,
chunk_size: int,
chunk_overlap: int,
):
"""
通过多线程将上传的文件保存到对应目录内
生成器返回保存结果[success or error, filename, msg, docs]
"""
def parse_file(file: UploadFile) -> dict:
'''
保存单个文件
'''
try:
filename = file.filename
file_path = os.path.join(dir, filename)
file_content = file.file.read() # 读取上传文件的内容
if not os.path.isdir(os.path.dirname(file_path)):
os.makedirs(os.path.dirname(file_path))
with open(file_path, "wb") as f:
f.write(file_content)
kb_file = KnowledgeFile(filename=filename, knowledge_base_name="temp")
kb_file.filepath = file_path
docs = kb_file.file2text(zh_title_enhance=zh_title_enhance,
chunk_size=chunk_size,
chunk_overlap=chunk_overlap)
for doc in docs:
if isinstance(doc, Document):
# 去除分词处理多余换行符
doc.page_content = doc.page_content.replace('\n', '')
return True, filename, f"成功上传文件 {filename}", docs
except Exception as e:
msg = f"{filename} 文件上传失败,报错信息为: {e}"
return False, filename, msg, []
params = [{"file": file} for file in files]
context = ""
for result in run_in_thread_pool(parse_file, params=params):
yield result
if result[0]: # success
for doc in result[3]: # docs
context += doc.page_content + "\n"
return context
def generate_summary(text: str) -> str:
# 根据文本长度,每 100 字生成一句摘要,最多生成 300 句
num_sentences = min(len(text) // 50, 300)
# num_sentences = 80
# 使用 TextRank 算法生成摘要
summary = TextRank(text, num_sentences=num_sentences)
return summary
@ timing_decorator
def upload_temp_docs(
files: List[UploadFile] = File(..., description="上传文件,支持多文件"),
prev_id: str = Form(None, description="前知识库ID"),
chunk_size: int = Form(CHUNK_SIZE, description="知识库中单段文本最大长度"),
chunk_overlap: int = Form(OVERLAP_SIZE, description="知识库中相邻文本重合长度"),
zh_title_enhance: bool = Form(ZH_TITLE_ENHANCE, description="是否开启中文标题加强"),
) -> BaseResponse:
'''
将文件保存到临时目录并返回临时目录名称作为ID同时返回文件的全文
'''
if prev_id is not None:
memo_faiss_pool.pop(prev_id)
failed_files = []
documents = []
path, id = get_temp_dir(prev_id)
context = ""
summary = ""
for success, file, msg, docs in _parse_files_in_thread(files=files,
dir=path,
zh_title_enhance=zh_title_enhance,
chunk_size=chunk_size,
chunk_overlap=chunk_overlap):
if success:
documents += docs
for doc in docs:
context += doc.page_content + "\n"
if len(context) > 30000:
summary = generate_summary(context)
else:
failed_files.append({file: msg})
return BaseResponse(data={"id": id, "context": context, "summary": summary})
async def file_chat(query: str = Body(..., description="用户输入", examples=["你好"]),
file_name: str = Body("", description="文件名称", examples=["123.txt"]),
# knowledge_id: str = Body(..., description="临时知识库ID"),
# top_k: int = Body(VECTOR_SEARCH_TOP_K, description="匹配向量数"),
# score_threshold: float = Body(SCORE_THRESHOLD, description="知识库匹配相关度阈值取值范围在0-1之间SCORE越小相关度越高取到1相当于不筛选建议设置在0.5左右", ge=0, le=2),
history: List[History] = Body([],
description="历史对话",
examples=[[
{"role": "user",
"content": "现在开始针对我上传的文件回答我的问题"},
{"role": "assistant",
"content": "好的,让我们开始看吧"}]]
),
stream: bool = Body(False, description="流式输出"),
model_name: str = Body(LLM_MODELS[0], description="LLM 模型名称。"),
temperature: float = Body("0.5", description="LLM 采样温度", ge=0.0, le=1.0),
max_tokens: Optional[int] = Body(None, description="限制LLM生成Token数量默认None代表模型最大值"),
prompt_name: str = Body("file_chat", description="使用的prompt模板名称(在configs/prompt_config.py中配置)"),
context: str = Body("", description="文件内容")):
# if knowledge_id not in memo_faiss_pool.keys():
# return BaseResponse(code=404, msg=f"未找到临时知识库 {knowledge_id},请先上传文件")
# history = [History.from_data(h) for h in history]
# # 调用模型进行总结
# def llm_summary(
# llm_model_name: "str",
# prompt_template: str,
# temperature: float,
# max_tokens: int,
# ) -> str:
# '''调用大模型进行总结'''
# # 读取指定的大模型这里不能加入callback否则会把这部分模型响应加入最终的回答
# model = get_ChatOpenAI(
# model_name=llm_model_name,
# temperature=temperature,
# max_tokens=max_tokens,
# callbacks=[],
# )
# # 获取prompt
# prompt_template = get_prompt_template("knowledge_base_chat", "file_summary")
# input_msg = History(role="system", content=prompt_template).to_msg_template(False)
# prompt = ChatPromptTemplate.from_messages([input_msg])
# # 获取模型响应
# llm_chain = LLMChain(prompt=prompt, llm=model)
# summary = llm_chain.run(prompt_param_dict)
# return summary
async def knowledge_base_chat_iterator() -> AsyncIterable[str]:
nonlocal history, context, max_tokens
callback = AsyncIteratorCallbackHandler()
memory = None
# 获取当前时间并格式化为YYYYMMDD
time = datetime.now().strftime("%Y%m%d")
if isinstance(max_tokens, int) and max_tokens <= 0:
max_tokens = None
model = get_ChatOpenAI(
model_name=model_name,
temperature=temperature,
max_tokens=max_tokens,
callbacks=[callback],
)
# embed_func = EmbeddingsFunAdapter()
# embeddings = await embed_func.aembed_query(query)
# with memo_faiss_pool.acquire(knowledge_id) as vs:
# docs = vs.similarity_search_with_score_by_vector(embeddings, k=top_k, score_threshold=score_threshold)
# docs = [x[0] for x in docs]
# context = "\n".join([summary])
# if len(kdocs) == 0: ## 如果没有找到相关文档使用Empty模板
# prompt_template = get_prompt_template("knowledge_base_chat", "empty")
# else:
# prompt_template = get_prompt_template("knowledge_base_chat", prompt_name)
# input_msg = History(role="user", content=prompt_template).to_msg_template(False)
# chat_prompt = ChatPromptTemplate.from_messages(
# [i.to_msg_template() for i in history] + [input_msg])
if history:
history = [History.from_data(h) for h in history]
prompt_template = get_prompt_template("knowledge_base_chat", "file_chat_history")
# input_prompt = History(role="system", content=prompt_template).to_msg_template(False)
# input_msg = History(role="user", content=query).to_msg_template(False)
# chat_prompt = ChatPromptTemplate.from_messages([input_prompt] + [input_msg])
chat_prompt = PromptTemplate.from_template(prompt_template)
# 把history转成memory
memory = ConversationBufferWindowMemory(k=1, input_key="question")
# memory = ConversationSummaryMemory(llm=model)
for message in history:
# 检查消息的角色
if message.role == 'user':
# 添加用户消息
memory.chat_memory.add_user_message(message.content)
elif message.role == 'assistant':
# 添加AI消息
memory.chat_memory.add_ai_message(message.content)
else:
prompt_template = get_prompt_template("knowledge_base_chat", prompt_name)
input_prompt = History(role="system", content=prompt_template).to_msg_template(False)
input_msg = History(role="user", content=query).to_msg_template(False)
chat_prompt = ChatPromptTemplate.from_messages([input_prompt] + [input_msg])
# chain = LLMChain(prompt=chat_prompt, llm=model, memory=memory)
chain = load_qa_chain(model, chain_type="stuff", memory=memory, prompt=chat_prompt, verbose=True)
# print("file memory:>>",memory)
# print("file chat_prompt:>>",chat_prompt)
# source_documents = []
# for inum, doc in enumerate(docs):
# source = doc.metadata.get("source")
# print("file source: \n", source)
# file = source.split('/')[-1]
# title = file.split('.')[0]
# text = f"""出处 [{inum + 1}] [{title}] \n\n{doc.page_content}\n\n"""
# source_documents.append(text)
# knowledgeFile = KnowledgeFile(
# filename=file_name,
# knowledge_base_name="temp"
# )
# summary = knowledgeFile.file2docs()
# print("file summary: \n", summary)
# summary = ''
# print("file summary: \n", summary)
# Begin a task that runs in the background.
# summary = llm_summary()
# docs =
# 确保input_documents是Document对象列表
context = [Document(page_content=context)]
# task = asyncio.create_task(wrap_done(
# chain.acall({"context": context, "question": query}),
# callback.done),
# )
task = asyncio.create_task(wrap_done(
chain.ainvoke({"input_documents": context,"question": query, "title": file_name, "time":time}, return_only_outputs=True),
callback.done),
)
# print("file_chain:\n", chain)
# if len(source_documents) == 0: # 没有找到相关文档
# source_documents.append(f"""<span style='color:red'>未找到相关文档,该回答为大模型自身能力解答!</span>""")
history_summary = ""
if stream:
async for token in callback.aiter():
# Use server-sent-events to stream the response
history_summary += token
yield json.dumps({"answer": token}, ensure_ascii=False)
# yield json.dumps({"docs": source_documents}, ensure_ascii=False)
else:
answer = ""
async for token in callback.aiter():
answer += token
yield json.dumps({"answer": answer},
ensure_ascii=False)
question_history = [
{"role": "user", "content": query},
{"role": "assistant", "content": history_summary}
]
question = (await run_sync(
get_llm_model_response,
strategy_name="question_recommend",
llm_model_name=LLM_MODELS[0],
template_prompt_name="question_recommend",
prompt_param_dict={"history": question_history},
temperature=0.3,
max_tokens=512,
)).strip()
formatted = split_questions(question)
logger.info(f"推荐问题: \n{formatted}")
yield json.dumps({"question": formatted}, ensure_ascii=False)
await task
return EventSourceResponse(knowledge_base_chat_iterator())