codefuse-chatbot/examples/agent_examples/docChatPhase_example.py

112 lines
3.8 KiB
Python
Raw Permalink Blame History

This file contains ambiguous Unicode characters

This file contains Unicode characters that might be confused with other characters. If you think that this is intentional, you can safely ignore this warning. Use the Escape button to reveal them.

import os, sys
src_dir = os.path.join(
os.path.dirname(os.path.dirname(os.path.dirname(os.path.abspath(__file__))))
)
sys.path.append(src_dir)
sys.path.append(os.path.join(src_dir, "examples"))
from configs.model_config import EMBEDDING_MODEL, CB_ROOT_PATH
from configs.model_config import KB_ROOT_PATH, JUPYTER_WORK_PATH
from configs.server_config import SANDBOX_SERVER
from coagent.tools import toLangchainTools, TOOL_DICT, TOOL_SETS
from coagent.llm_models.llm_config import EmbedConfig, LLMConfig
from coagent.connector.phase import BasePhase
from coagent.connector.schema import Message, Memory
tools = toLangchainTools([TOOL_DICT[i] for i in TOOL_SETS if i in TOOL_DICT])
llm_config = LLMConfig(
model_name="gpt-3.5-turbo",api_key=os.environ["OPENAI_API_KEY"],
api_base_url=os.environ["API_BASE_URL"], temperature=0.3
)
embed_config = EmbedConfig(
embed_engine="model", embed_model="text2vec-base-chinese",
embed_model_path=os.path.join(src_dir, "embedding_models/text2vec-base-chinese")
)
# create your knowledge base
from io import BytesIO
from pathlib import Path
from coagent.service.kb_api import create_kb, upload_doc
from coagent.service.service_factory import get_kb_details
from coagent.utils.server_utils import run_async
kb_list = {x["kb_name"]: x for x in get_kb_details(KB_ROOT_PATH)}
# create a knowledge base
kb_name = "example_test"
data = {
"knowledge_base_name": kb_name,
"vector_store_type": "faiss", # default
"kb_root_path": KB_ROOT_PATH,
"embed_model": embed_config.embed_model,
"embed_engine": embed_config.embed_engine,
"embed_model_path": embed_config.embed_model_path,
"model_device": embed_config.model_device,
}
run_async(create_kb(**data))
# add doc to knowledge base
file = os.path.join("D://project/gitlab/llm/external/ant_code/Codefuse-chatbot/sources/docs/langchain_text_10.jsonl")
files = [file]
# if embedding init failed, you can use override = True
data = [{"override": True, "file": f,
"knowledge_base_name": kb_name, "not_refresh_vs_cache": False,
"kb_root_path": KB_ROOT_PATH, "embed_model": embed_config.embed_model,
"embed_engine": embed_config.embed_engine, "embed_model_path": embed_config.embed_model_path,
"model_device": embed_config.model_device,
}
for f in files]
for k in data:
file = Path(file).absolute().open("rb")
filename = file.name
from fastapi import UploadFile
from tempfile import SpooledTemporaryFile
temp_file = SpooledTemporaryFile(max_size=10 * 1024 * 1024)
temp_file.write(file.read())
temp_file.seek(0)
k.update({"file": UploadFile(file=temp_file, filename=filename),})
run_async(upload_doc(**k))
## start to chat with knowledge base
# log-levelprint prompt和llm predict
os.environ["log_verbose"] = "2"
# set chat phase
phase_name = "docChatPhase"
phase = BasePhase(
phase_name, sandbox_server=SANDBOX_SERVER, jupyter_work_path=JUPYTER_WORK_PATH,
embed_config=embed_config, llm_config=llm_config, kb_root_path=KB_ROOT_PATH,
)
# round-1
query_content = "langchain有哪些模块"
query = Message(
role_name="human", role_type="user",
origin_query=query_content,
doc_engine_name=kb_name, score_threshold=1.0, top_k=3
)
output_message, output_memory = phase.step(query)
print(output_memory.to_str_messages(return_all=True, content_key="parsed_output_list"))
# round-2
query_content = "提示prompts有什么用"
query = Message(
role_name="human", role_type="user",
origin_query=query_content,
doc_engine_name=kb_name, score_threshold=1.0, top_k=3
)
output_message, output_memory = phase.step(query)
print(output_memory.to_str_messages(return_all=True, content_key="parsed_output_list"))