ragflow / rag /svr /task_executor.py
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#
# Copyright 2024 The InfiniFlow Authors. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
#
import datetime
import json
import logging
import os
import hashlib
import copy
import re
import sys
import traceback
from functools import partial
from rag.settings import database_logger
from rag.settings import cron_logger, DOC_MAXIMUM_SIZE
import numpy as np
from elasticsearch_dsl import Q
from api.db.services.task_service import TaskService
from rag.utils import ELASTICSEARCH
from rag.utils import MINIO
from rag.utils import rmSpace, findMaxTm
from rag.nlp import search
from io import BytesIO
import pandas as pd
from rag.app import laws, paper, presentation, manual, qa, table, book, resume, picture, naive, one
from api.db import LLMType, ParserType
from api.db.services.document_service import DocumentService
from api.db.services.llm_service import LLMBundle
from api.utils.file_utils import get_project_base_directory
BATCH_SIZE = 64
FACTORY = {
"general": naive,
ParserType.NAIVE.value: naive,
ParserType.PAPER.value: paper,
ParserType.BOOK.value: book,
ParserType.PRESENTATION.value: presentation,
ParserType.MANUAL.value: manual,
ParserType.LAWS.value: laws,
ParserType.QA.value: qa,
ParserType.TABLE.value: table,
ParserType.RESUME.value: resume,
ParserType.PICTURE.value: picture,
ParserType.ONE.value: one,
}
def set_progress(task_id, from_page=0, to_page=-1,
prog=None, msg="Processing..."):
if prog is not None and prog < 0:
msg = "[ERROR]" + msg
cancel = TaskService.do_cancel(task_id)
if cancel:
msg += " [Canceled]"
prog = -1
if to_page > 0:
if msg:
msg = f"Page({from_page+1}~{to_page+1}): " + msg
d = {"progress_msg": msg}
if prog is not None:
d["progress"] = prog
try:
TaskService.update_progress(task_id, d)
except Exception as e:
cron_logger.error("set_progress:({}), {}".format(task_id, str(e)))
if cancel:
sys.exit()
def collect(comm, mod, tm):
tasks = TaskService.get_tasks(tm, mod, comm)
if len(tasks) == 0:
return pd.DataFrame()
tasks = pd.DataFrame(tasks)
mtm = tasks["update_time"].max()
cron_logger.info("TOTAL:{}, To:{}".format(len(tasks), mtm))
return tasks
def build(row):
if row["size"] > DOC_MAXIMUM_SIZE:
set_progress(row["id"], prog=-1, msg="File size exceeds( <= %dMb )" %
(int(DOC_MAXIMUM_SIZE / 1024 / 1024)))
return []
callback = partial(
set_progress,
row["id"],
row["from_page"],
row["to_page"])
chunker = FACTORY[row["parser_id"].lower()]
try:
cron_logger.info(
"Chunkking {}/{}".format(row["location"], row["name"]))
cks = chunker.chunk(row["name"], binary=MINIO.get(row["kb_id"], row["location"]), from_page=row["from_page"],
to_page=row["to_page"], lang=row["language"], callback=callback,
kb_id=row["kb_id"], parser_config=row["parser_config"], tenant_id=row["tenant_id"])
except Exception as e:
if re.search("(No such file|not found)", str(e)):
callback(-1, "Can not find file <%s>" % row["name"])
else:
callback(-1, f"Internal server error: %s" %
str(e).replace("'", ""))
traceback.print_exc()
cron_logger.warn(
"Chunkking {}/{}: {}".format(row["location"], row["name"], str(e)))
return
docs = []
doc = {
"doc_id": row["doc_id"],
"kb_id": [str(row["kb_id"])]
}
for ck in cks:
d = copy.deepcopy(doc)
d.update(ck)
md5 = hashlib.md5()
md5.update((ck["content_with_weight"] +
str(d["doc_id"])).encode("utf-8"))
d["_id"] = md5.hexdigest()
d["create_time"] = str(datetime.datetime.now()).replace("T", " ")[:19]
d["create_timestamp_flt"] = datetime.datetime.now().timestamp()
if not d.get("image"):
docs.append(d)
continue
output_buffer = BytesIO()
if isinstance(d["image"], bytes):
output_buffer = BytesIO(d["image"])
else:
d["image"].save(output_buffer, format='JPEG')
MINIO.put(row["kb_id"], d["_id"], output_buffer.getvalue())
d["img_id"] = "{}-{}".format(row["kb_id"], d["_id"])
del d["image"]
docs.append(d)
return docs
def init_kb(row):
idxnm = search.index_name(row["tenant_id"])
if ELASTICSEARCH.indexExist(idxnm):
return
return ELASTICSEARCH.createIdx(idxnm, json.load(
open(os.path.join(get_project_base_directory(), "conf", "mapping.json"), "r")))
def embedding(docs, mdl, parser_config={}, callback=None):
batch_size = 32
tts, cnts = [rmSpace(d["title_tks"]) for d in docs if d.get("title_tks")], [
re.sub(r"</?(table|td|caption|tr|th)( [^<>]{0,12})?>", " ", d["content_with_weight"]) for d in docs]
tk_count = 0
if len(tts) == len(cnts):
tts_ = np.array([])
for i in range(0, len(tts), batch_size):
vts, c = mdl.encode(tts[i: i + batch_size])
if len(tts_) == 0:
tts_ = vts
else:
tts_ = np.concatenate((tts_, vts), axis=0)
tk_count += c
callback(prog=0.6 + 0.1 * (i + 1) / len(tts), msg="")
tts = tts_
cnts_ = np.array([])
for i in range(0, len(cnts), batch_size):
vts, c = mdl.encode(cnts[i: i + batch_size])
if len(cnts_) == 0:
cnts_ = vts
else:
cnts_ = np.concatenate((cnts_, vts), axis=0)
tk_count += c
callback(prog=0.7 + 0.2 * (i + 1) / len(cnts), msg="")
cnts = cnts_
title_w = float(parser_config.get("filename_embd_weight", 0.1))
vects = (title_w * tts + (1 - title_w) *
cnts) if len(tts) == len(cnts) else cnts
assert len(vects) == len(docs)
for i, d in enumerate(docs):
v = vects[i].tolist()
d["q_%d_vec" % len(v)] = v
return tk_count
def main(comm, mod):
tm_fnm = os.path.join(
get_project_base_directory(),
"rag/res",
f"{comm}-{mod}.tm")
tm = findMaxTm(tm_fnm)
rows = collect(comm, mod, tm)
if len(rows) == 0:
return
tmf = open(tm_fnm, "a+")
for _, r in rows.iterrows():
callback = partial(set_progress, r["id"], r["from_page"], r["to_page"])
try:
embd_mdl = LLMBundle(r["tenant_id"], LLMType.EMBEDDING)
except Exception as e:
callback(prog=-1, msg=str(e))
continue
cks = build(r)
if cks is None:
continue
if not cks:
tmf.write(str(r["update_time"]) + "\n")
callback(1., "No chunk! Done!")
continue
# TODO: exception handler
## set_progress(r["did"], -1, "ERROR: ")
callback(
msg="Finished slicing files(%d). Start to embedding the content." %
len(cks))
try:
tk_count = embedding(cks, embd_mdl, r["parser_config"], callback)
except Exception as e:
callback(-1, "Embedding error:{}".format(str(e)))
cron_logger.error(str(e))
tk_count = 0
callback(msg="Finished embedding! Start to build index!")
init_kb(r)
chunk_count = len(set([c["_id"] for c in cks]))
es_r = ELASTICSEARCH.bulk(cks, search.index_name(r["tenant_id"]))
if es_r:
callback(-1, "Index failure!")
ELASTICSEARCH.deleteByQuery(
Q("match", doc_id=r["doc_id"]), idxnm=search.index_name(r["tenant_id"]))
cron_logger.error(str(es_r))
else:
if TaskService.do_cancel(r["id"]):
ELASTICSEARCH.deleteByQuery(
Q("match", doc_id=r["doc_id"]), idxnm=search.index_name(r["tenant_id"]))
continue
callback(1., "Done!")
DocumentService.increment_chunk_num(
r["doc_id"], r["kb_id"], tk_count, chunk_count, 0)
cron_logger.info(
"Chunk doc({}), token({}), chunks({})".format(
r["id"], tk_count, len(cks)))
tmf.write(str(r["update_time"]) + "\n")
tmf.close()
if __name__ == "__main__":
peewee_logger = logging.getLogger('peewee')
peewee_logger.propagate = False
peewee_logger.addHandler(database_logger.handlers[0])
peewee_logger.setLevel(database_logger.level)
from mpi4py import MPI
comm = MPI.COMM_WORLD
while True:
main(int(sys.argv[2]), int(sys.argv[1]))