Files
dify/api/tasks/document_indexing_update_task.py
EvanYao cdcfd2ef2c fix: regenerate document summary after update via API (#35950) (#36035)
Co-authored-by: autofix-ci[bot] <114827586+autofix-ci[bot]@users.noreply.github.com>
2026-05-15 07:26:29 +00:00

125 lines
5.2 KiB
Python

import logging
import time
import click
from celery import shared_task
from sqlalchemy import delete, select
from core.db.session_factory import session_factory
from core.indexing_runner import DocumentIsPausedError, IndexingRunner
from core.rag.index_processor.constant.index_type import IndexStructureType, IndexTechniqueType
from core.rag.index_processor.index_processor_factory import IndexProcessorFactory
from libs.datetime_utils import naive_utc_now
from models.dataset import Dataset, Document, DocumentSegment
from models.enums import IndexingStatus
from tasks.generate_summary_index_task import generate_summary_index_task
logger = logging.getLogger(__name__)
@shared_task(queue="dataset")
def document_indexing_update_task(dataset_id: str, document_id: str):
"""
Async update document
:param dataset_id:
:param document_id:
Usage: document_indexing_update_task.delay(dataset_id, document_id)
"""
logger.info(click.style(f"Start update document: {document_id}", fg="green"))
start_at = time.perf_counter()
with session_factory.create_session() as session, session.begin():
document = session.scalar(
select(Document).where(Document.id == document_id, Document.dataset_id == dataset_id).limit(1)
)
if not document:
logger.info(click.style(f"Document not found: {document_id}", fg="red"))
return
document.indexing_status = IndexingStatus.PARSING
document.processing_started_at = naive_utc_now()
dataset = session.scalar(select(Dataset).where(Dataset.id == dataset_id).limit(1))
if not dataset:
return
index_type = document.doc_form
segments = session.scalars(select(DocumentSegment).where(DocumentSegment.document_id == document_id)).all()
index_node_ids = [segment.index_node_id for segment in segments if segment.index_node_id]
clean_success = False
try:
index_processor = IndexProcessorFactory(index_type).init_index_processor()
if index_node_ids:
index_processor.clean(dataset, index_node_ids, with_keywords=True, delete_child_chunks=True)
end_at = time.perf_counter()
logger.info(
click.style(
"Cleaned document when document update data source or process rule: {} latency: {}".format(
document_id, end_at - start_at
),
fg="green",
)
)
clean_success = True
except Exception:
logger.exception("Failed to clean document index during update, document_id: %s", document_id)
if clean_success:
with session_factory.create_session() as session, session.begin():
segment_delete_stmt = delete(DocumentSegment).where(DocumentSegment.document_id == document_id)
session.execute(segment_delete_stmt)
has_error = False
try:
indexing_runner = IndexingRunner()
indexing_runner.run([document])
end_at = time.perf_counter()
logger.info(click.style(f"update document: {document.id} latency: {end_at - start_at}", fg="green"))
except DocumentIsPausedError as ex:
logger.info(click.style(str(ex), fg="yellow"))
has_error = True
except Exception:
logger.exception("document_indexing_update_task failed, document_id: %s", document_id)
has_error = True
if has_error:
return
# Trigger summary index generation for the updated document if enabled.
# Only generate for high_quality indexing technique and when summary_index_setting is enabled.
with session_factory.create_session() as session:
dataset = session.scalar(select(Dataset).where(Dataset.id == dataset_id).limit(1))
if not dataset:
logger.warning("Dataset %s not found after update indexing", dataset_id)
return
if dataset.indexing_technique == IndexTechniqueType.HIGH_QUALITY:
summary_index_setting = dataset.summary_index_setting
if summary_index_setting and summary_index_setting.get("enable"):
session.expire_all()
document = session.scalar(
select(Document).where(Document.id == document_id, Document.dataset_id == dataset_id).limit(1)
)
if (
document
and document.indexing_status == IndexingStatus.COMPLETED
and document.doc_form != IndexStructureType.QA_INDEX
and document.need_summary is True
):
try:
generate_summary_index_task.delay(dataset.id, document.id, None)
logger.info(
"Queued summary index generation task for document %s in dataset %s "
"after update indexing completed",
document.id,
dataset.id,
)
except Exception:
logger.exception(
"Failed to queue summary index generation task for document %s after update",
document.id,
)