ChatData / lib /private_kb.py
lqhl's picture
Synced repo using 'sync_with_huggingface' Github Action
0e573d0 verified
raw
history blame contribute delete
No virus
7.76 kB
import pandas as pd
import hashlib
import requests
from typing import List, Optional
from datetime import datetime
from langchain.schema.embeddings import Embeddings
from streamlit.runtime.uploaded_file_manager import UploadedFile
from clickhouse_connect import get_client
from multiprocessing.pool import ThreadPool
from langchain.vectorstores.myscale import MyScaleWithoutJSON, MyScaleSettings
from .helper import create_retriever_tool
parser_url = "https://api.unstructured.io/general/v0/general"
def parse_files(api_key, user_id, files: List[UploadedFile]):
def parse_file(file: UploadedFile):
headers = {
"accept": "application/json",
"unstructured-api-key": api_key,
}
data = {"strategy": "auto", "ocr_languages": ["eng"]}
file_hash = hashlib.sha256(file.read()).hexdigest()
file_data = {"files": (file.name, file.getvalue(), file.type)}
response = requests.post(
parser_url, headers=headers, data=data, files=file_data
)
json_response = response.json()
if response.status_code != 200:
raise ValueError(str(json_response))
texts = [
{
"text": t["text"],
"file_name": t["metadata"]["filename"],
"entity_id": hashlib.sha256(
(file_hash + t["text"]).encode()
).hexdigest(),
"user_id": user_id,
"created_by": datetime.now(),
}
for t in json_response
if t["type"] == "NarrativeText" and len(t["text"].split(" ")) > 10
]
return texts
with ThreadPool(8) as p:
rows = []
for r in p.imap_unordered(parse_file, files):
rows.extend(r)
return rows
def extract_embedding(embeddings: Embeddings, texts):
if len(texts) > 0:
embs = embeddings.embed_documents(
[t["text"] for _, t in enumerate(texts)])
for i, _ in enumerate(texts):
texts[i]["vector"] = embs[i]
return texts
raise ValueError("No texts extracted!")
class PrivateKnowledgeBase:
def __init__(
self,
host,
port,
username,
password,
embedding: Embeddings,
parser_api_key,
db="chat",
kb_table="private_kb",
tool_table="private_tool",
) -> None:
super().__init__()
kb_schema_ = f"""
CREATE TABLE IF NOT EXISTS {db}.{kb_table}(
entity_id String,
file_name String,
text String,
user_id String,
created_by DateTime,
vector Array(Float32),
CONSTRAINT cons_vec_len CHECK length(vector) = 768,
VECTOR INDEX vidx vector TYPE MSTG('metric_type=Cosine')
) ENGINE = ReplacingMergeTree ORDER BY entity_id
"""
tool_schema_ = f"""
CREATE TABLE IF NOT EXISTS {db}.{tool_table}(
tool_id String,
tool_name String,
file_names Array(String),
user_id String,
created_by DateTime,
tool_description String
) ENGINE = ReplacingMergeTree ORDER BY tool_id
"""
self.kb_table = kb_table
self.tool_table = tool_table
config = MyScaleSettings(
host=host,
port=port,
username=username,
password=password,
database=db,
table=kb_table,
)
client = get_client(
host=config.host,
port=config.port,
username=config.username,
password=config.password,
)
client.command("SET allow_experimental_object_type=1")
client.command(kb_schema_)
client.command(tool_schema_)
self.parser_api_key = parser_api_key
self.vstore = MyScaleWithoutJSON(
embedding=embedding,
config=config,
must_have_cols=["file_name", "text", "created_by"],
)
def list_files(self, user_id, tool_name=None):
query = f"""
SELECT DISTINCT file_name, COUNT(entity_id) AS num_paragraph,
arrayMax(arrayMap(x->length(x), groupArray(text))) AS max_chars
FROM {self.vstore.config.database}.{self.kb_table}
WHERE user_id = '{user_id}' GROUP BY file_name
"""
return [r for r in self.vstore.client.query(query).named_results()]
def add_by_file(
self, user_id, files: List[UploadedFile], **kwargs
):
data = parse_files(self.parser_api_key, user_id, files)
data = extract_embedding(self.vstore.embeddings, data)
self.vstore.client.insert_df(
self.kb_table,
pd.DataFrame(data),
database=self.vstore.config.database,
)
def clear(self, user_id):
self.vstore.client.command(
f"DELETE FROM {self.vstore.config.database}.{self.kb_table} "
f"WHERE user_id='{user_id}'"
)
query = f"""DELETE FROM {self.vstore.config.database}.{self.tool_table}
WHERE user_id = '{user_id}'"""
self.vstore.client.command(query)
def create_tool(
self, user_id, tool_name, tool_description, files: Optional[List[str]] = None
):
self.vstore.client.insert_df(
self.tool_table,
pd.DataFrame(
[
{
"tool_id": hashlib.sha256(
(user_id + tool_name).encode("utf-8")
).hexdigest(),
"tool_name": tool_name,
"file_names": files,
"user_id": user_id,
"created_by": datetime.now(),
"tool_description": tool_description,
}
]
),
database=self.vstore.config.database,
)
def list_tools(self, user_id, tool_name=None):
extended_where = f"AND tool_name = '{tool_name}'" if tool_name else ""
query = f"""
SELECT tool_name, tool_description, length(file_names)
FROM {self.vstore.config.database}.{self.tool_table}
WHERE user_id = '{user_id}' {extended_where}
"""
return [r for r in self.vstore.client.query(query).named_results()]
def remove_tools(self, user_id, tool_names):
tool_names = ",".join([f"'{t}'" for t in tool_names])
query = f"""DELETE FROM {self.vstore.config.database}.{self.tool_table}
WHERE user_id = '{user_id}' AND tool_name IN [{tool_names}]"""
self.vstore.client.command(query)
def as_tools(self, user_id, tool_name=None):
tools = self.list_tools(user_id=user_id, tool_name=tool_name)
retrievers = {
t["tool_name"]: create_retriever_tool(
self.vstore.as_retriever(
search_kwargs={
"where_str": (
f"user_id='{user_id}' "
f"""AND file_name IN (
SELECT arrayJoin(file_names) FROM (
SELECT file_names
FROM {self.vstore.config.database}.{self.tool_table}
WHERE user_id = '{user_id}' AND tool_name = '{t['tool_name']}')
)"""
)
},
),
name=t["tool_name"],
description=t["tool_description"],
)
for t in tools
}
return retrievers