| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
|
|
| |
| |
| |
| import random |
| import sys |
| from api.utils.log_utils import initRootLogger |
| from graphrag.general.index import WithCommunity, WithResolution, Dealer |
| from graphrag.light.graph_extractor import GraphExtractor as LightKGExt |
| from graphrag.general.graph_extractor import GraphExtractor as GeneralKGExt |
| from graphrag.utils import get_llm_cache, set_llm_cache, get_tags_from_cache, set_tags_to_cache |
|
|
| CONSUMER_NO = "0" if len(sys.argv) < 2 else sys.argv[1] |
| CONSUMER_NAME = "task_executor_" + CONSUMER_NO |
| initRootLogger(CONSUMER_NAME) |
|
|
| import logging |
| import os |
| from datetime import datetime |
| import json |
| import xxhash |
| import copy |
| import re |
| import time |
| import threading |
| from functools import partial |
| from io import BytesIO |
| from multiprocessing.context import TimeoutError |
| from timeit import default_timer as timer |
| import tracemalloc |
|
|
| import numpy as np |
| from peewee import DoesNotExist |
|
|
| from api.db import LLMType, ParserType, TaskStatus |
| from api.db.services.dialog_service import keyword_extraction, question_proposal, content_tagging |
| from api.db.services.document_service import DocumentService |
| from api.db.services.llm_service import LLMBundle |
| from api.db.services.task_service import TaskService |
| from api.db.services.file2document_service import File2DocumentService |
| from api import settings |
| from api.versions import get_ragflow_version |
| from api.db.db_models import close_connection |
| from rag.app import laws, paper, presentation, manual, qa, table, book, resume, picture, naive, one, audio, \ |
| email, tag |
| from rag.nlp import search, rag_tokenizer |
| from rag.raptor import RecursiveAbstractiveProcessing4TreeOrganizedRetrieval as Raptor |
| from rag.settings import DOC_MAXIMUM_SIZE, SVR_QUEUE_NAME, print_rag_settings, TAG_FLD, PAGERANK_FLD |
| from rag.utils import num_tokens_from_string |
| from rag.utils.redis_conn import REDIS_CONN, Payload |
| from rag.utils.storage_factory import STORAGE_IMPL |
|
|
| 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, |
| ParserType.AUDIO.value: audio, |
| ParserType.EMAIL.value: email, |
| ParserType.KG.value: naive, |
| ParserType.TAG.value: tag |
| } |
|
|
| CONSUMER_NAME = "task_consumer_" + CONSUMER_NO |
| PAYLOAD: Payload | None = None |
| BOOT_AT = datetime.now().astimezone().isoformat(timespec="milliseconds") |
| PENDING_TASKS = 0 |
| LAG_TASKS = 0 |
|
|
| mt_lock = threading.Lock() |
| DONE_TASKS = 0 |
| FAILED_TASKS = 0 |
| CURRENT_TASK = None |
|
|
|
|
| class TaskCanceledException(Exception): |
| def __init__(self, msg): |
| self.msg = msg |
|
|
|
|
| def set_progress(task_id, from_page=0, to_page=-1, prog=None, msg="Processing..."): |
| global PAYLOAD |
| if prog is not None and prog < 0: |
| msg = "[ERROR]" + msg |
| try: |
| cancel = TaskService.do_cancel(task_id) |
| except DoesNotExist: |
| logging.warning(f"set_progress task {task_id} is unknown") |
| if PAYLOAD: |
| PAYLOAD.ack() |
| PAYLOAD = None |
| return |
|
|
| if cancel: |
| msg += " [Canceled]" |
| prog = -1 |
|
|
| if to_page > 0: |
| if msg: |
| if from_page < to_page: |
| msg = f"Page({from_page + 1}~{to_page + 1}): " + msg |
| if msg: |
| msg = datetime.now().strftime("%H:%M:%S") + " " + msg |
| d = {"progress_msg": msg} |
| if prog is not None: |
| d["progress"] = prog |
|
|
| logging.info(f"set_progress({task_id}), progress: {prog}, progress_msg: {msg}") |
| try: |
| TaskService.update_progress(task_id, d) |
| except DoesNotExist: |
| logging.warning(f"set_progress task {task_id} is unknown") |
| if PAYLOAD: |
| PAYLOAD.ack() |
| PAYLOAD = None |
| return |
|
|
| close_connection() |
| if cancel and PAYLOAD: |
| PAYLOAD.ack() |
| PAYLOAD = None |
| raise TaskCanceledException(msg) |
|
|
|
|
| def collect(): |
| global CONSUMER_NAME, PAYLOAD, DONE_TASKS, FAILED_TASKS |
| try: |
| PAYLOAD = REDIS_CONN.get_unacked_for(CONSUMER_NAME, SVR_QUEUE_NAME, "rag_flow_svr_task_broker") |
| if not PAYLOAD: |
| PAYLOAD = REDIS_CONN.queue_consumer(SVR_QUEUE_NAME, "rag_flow_svr_task_broker", CONSUMER_NAME) |
| if not PAYLOAD: |
| time.sleep(1) |
| return None |
| except Exception: |
| logging.exception("Get task event from queue exception") |
| return None |
|
|
| msg = PAYLOAD.get_message() |
| if not msg: |
| return None |
|
|
| task = None |
| canceled = False |
| try: |
| task = TaskService.get_task(msg["id"]) |
| if task: |
| _, doc = DocumentService.get_by_id(task["doc_id"]) |
| canceled = doc.run == TaskStatus.CANCEL.value or doc.progress < 0 |
| except DoesNotExist: |
| pass |
| except Exception: |
| logging.exception("collect get_task exception") |
| if not task or canceled: |
| state = "is unknown" if not task else "has been cancelled" |
| with mt_lock: |
| DONE_TASKS += 1 |
| logging.info(f"collect task {msg['id']} {state}") |
| return None |
|
|
| task["task_type"] = msg.get("task_type", "") |
| return task |
|
|
|
|
| def get_storage_binary(bucket, name): |
| return STORAGE_IMPL.get(bucket, name) |
|
|
|
|
| def build_chunks(task, progress_callback): |
| if task["size"] > DOC_MAXIMUM_SIZE: |
| set_progress(task["id"], prog=-1, msg="File size exceeds( <= %dMb )" % |
| (int(DOC_MAXIMUM_SIZE / 1024 / 1024))) |
| return [] |
|
|
| chunker = FACTORY[task["parser_id"].lower()] |
| try: |
| st = timer() |
| bucket, name = File2DocumentService.get_storage_address(doc_id=task["doc_id"]) |
| binary = get_storage_binary(bucket, name) |
| logging.info("From minio({}) {}/{}".format(timer() - st, task["location"], task["name"])) |
| except TimeoutError: |
| progress_callback(-1, "Internal server error: Fetch file from minio timeout. Could you try it again.") |
| logging.exception( |
| "Minio {}/{} got timeout: Fetch file from minio timeout.".format(task["location"], task["name"])) |
| raise |
| except Exception as e: |
| if re.search("(No such file|not found)", str(e)): |
| progress_callback(-1, "Can not find file <%s> from minio. Could you try it again?" % task["name"]) |
| else: |
| progress_callback(-1, "Get file from minio: %s" % str(e).replace("'", "")) |
| logging.exception("Chunking {}/{} got exception".format(task["location"], task["name"])) |
| raise |
|
|
| try: |
| cks = chunker.chunk(task["name"], binary=binary, from_page=task["from_page"], |
| to_page=task["to_page"], lang=task["language"], callback=progress_callback, |
| kb_id=task["kb_id"], parser_config=task["parser_config"], tenant_id=task["tenant_id"]) |
| logging.info("Chunking({}) {}/{} done".format(timer() - st, task["location"], task["name"])) |
| except TaskCanceledException: |
| raise |
| except Exception as e: |
| progress_callback(-1, "Internal server error while chunking: %s" % str(e).replace("'", "")) |
| logging.exception("Chunking {}/{} got exception".format(task["location"], task["name"])) |
| raise |
|
|
| docs = [] |
| doc = { |
| "doc_id": task["doc_id"], |
| "kb_id": str(task["kb_id"]) |
| } |
| if task["pagerank"]: |
| doc[PAGERANK_FLD] = int(task["pagerank"]) |
| el = 0 |
| for ck in cks: |
| d = copy.deepcopy(doc) |
| d.update(ck) |
| d["id"] = xxhash.xxh64((ck["content_with_weight"] + str(d["doc_id"])).encode("utf-8")).hexdigest() |
| d["create_time"] = str(datetime.now()).replace("T", " ")[:19] |
| d["create_timestamp_flt"] = datetime.now().timestamp() |
| if not d.get("image"): |
| _ = d.pop("image", None) |
| d["img_id"] = "" |
| docs.append(d) |
| continue |
|
|
| try: |
| output_buffer = BytesIO() |
| if isinstance(d["image"], bytes): |
| output_buffer = BytesIO(d["image"]) |
| else: |
| d["image"].save(output_buffer, format='JPEG') |
|
|
| st = timer() |
| STORAGE_IMPL.put(task["kb_id"], d["id"], output_buffer.getvalue()) |
| el += timer() - st |
| except Exception: |
| logging.exception( |
| "Saving image of chunk {}/{}/{} got exception".format(task["location"], task["name"], d["id"])) |
| raise |
|
|
| d["img_id"] = "{}-{}".format(task["kb_id"], d["id"]) |
| del d["image"] |
| docs.append(d) |
| logging.info("MINIO PUT({}):{}".format(task["name"], el)) |
|
|
| if task["parser_config"].get("auto_keywords", 0): |
| st = timer() |
| progress_callback(msg="Start to generate keywords for every chunk ...") |
| chat_mdl = LLMBundle(task["tenant_id"], LLMType.CHAT, llm_name=task["llm_id"], lang=task["language"]) |
| for d in docs: |
| cached = get_llm_cache(chat_mdl.llm_name, d["content_with_weight"], "keywords", |
| {"topn": task["parser_config"]["auto_keywords"]}) |
| if not cached: |
| cached = keyword_extraction(chat_mdl, d["content_with_weight"], |
| task["parser_config"]["auto_keywords"]) |
| if cached: |
| set_llm_cache(chat_mdl.llm_name, d["content_with_weight"], cached, "keywords", |
| {"topn": task["parser_config"]["auto_keywords"]}) |
|
|
| d["important_kwd"] = cached.split(",") |
| d["important_tks"] = rag_tokenizer.tokenize(" ".join(d["important_kwd"])) |
| progress_callback(msg="Keywords generation completed in {:.2f}s".format(timer() - st)) |
|
|
| if task["parser_config"].get("auto_questions", 0): |
| st = timer() |
| progress_callback(msg="Start to generate questions for every chunk ...") |
| chat_mdl = LLMBundle(task["tenant_id"], LLMType.CHAT, llm_name=task["llm_id"], lang=task["language"]) |
| for d in docs: |
| cached = get_llm_cache(chat_mdl.llm_name, d["content_with_weight"], "question", |
| {"topn": task["parser_config"]["auto_questions"]}) |
| if not cached: |
| cached = question_proposal(chat_mdl, d["content_with_weight"], task["parser_config"]["auto_questions"]) |
| if cached: |
| set_llm_cache(chat_mdl.llm_name, d["content_with_weight"], cached, "question", |
| {"topn": task["parser_config"]["auto_questions"]}) |
|
|
| d["question_kwd"] = cached.split("\n") |
| d["question_tks"] = rag_tokenizer.tokenize("\n".join(d["question_kwd"])) |
| progress_callback(msg="Question generation completed in {:.2f}s".format(timer() - st)) |
|
|
| if task["kb_parser_config"].get("tag_kb_ids", []): |
| progress_callback(msg="Start to tag for every chunk ...") |
| kb_ids = task["kb_parser_config"]["tag_kb_ids"] |
| tenant_id = task["tenant_id"] |
| topn_tags = task["kb_parser_config"].get("topn_tags", 3) |
| S = 1000 |
| st = timer() |
| examples = [] |
| all_tags = get_tags_from_cache(kb_ids) |
| if not all_tags: |
| all_tags = settings.retrievaler.all_tags_in_portion(tenant_id, kb_ids, S) |
| set_tags_to_cache(kb_ids, all_tags) |
| else: |
| all_tags = json.loads(all_tags) |
|
|
| chat_mdl = LLMBundle(task["tenant_id"], LLMType.CHAT, llm_name=task["llm_id"], lang=task["language"]) |
| for d in docs: |
| if settings.retrievaler.tag_content(tenant_id, kb_ids, d, all_tags, topn_tags=topn_tags, S=S): |
| examples.append({"content": d["content_with_weight"], TAG_FLD: d[TAG_FLD]}) |
| continue |
| cached = get_llm_cache(chat_mdl.llm_name, d["content_with_weight"], all_tags, {"topn": topn_tags}) |
| if not cached: |
| cached = content_tagging(chat_mdl, d["content_with_weight"], all_tags, |
| random.choices(examples, k=2) if len(examples)>2 else examples, |
| topn=topn_tags) |
| if cached: |
| cached = json.dumps(cached) |
| if cached: |
| set_llm_cache(chat_mdl.llm_name, d["content_with_weight"], cached, all_tags, {"topn": topn_tags}) |
| d[TAG_FLD] = json.loads(cached) |
|
|
| progress_callback(msg="Tagging completed in {:.2f}s".format(timer() - st)) |
|
|
| return docs |
|
|
|
|
| def init_kb(row, vector_size: int): |
| idxnm = search.index_name(row["tenant_id"]) |
| return settings.docStoreConn.createIdx(idxnm, row.get("kb_id", ""), vector_size) |
|
|
|
|
| def embedding(docs, mdl, parser_config=None, callback=None): |
| if parser_config is None: |
| parser_config = {} |
| batch_size = 16 |
| tts, cnts = [], [] |
| for d in docs: |
| tts.append(d.get("docnm_kwd", "Title")) |
| c = "\n".join(d.get("question_kwd", [])) |
| if not c: |
| c = d["content_with_weight"] |
| c = re.sub(r"</?(table|td|caption|tr|th)( [^<>]{0,12})?>", " ", c) |
| if not c: |
| c = "None" |
| cnts.append(c) |
|
|
| tk_count = 0 |
| if len(tts) == len(cnts): |
| vts, c = mdl.encode(tts[0: 1]) |
| tts = np.concatenate([vts for _ in range(len(tts))], axis=0) |
| tk_count += c |
|
|
| 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) |
| vector_size = 0 |
| for i, d in enumerate(docs): |
| v = vects[i].tolist() |
| vector_size = len(v) |
| d["q_%d_vec" % len(v)] = v |
| return tk_count, vector_size |
|
|
|
|
| def run_raptor(row, chat_mdl, embd_mdl, vector_size, callback=None): |
| chunks = [] |
| vctr_nm = "q_%d_vec"%vector_size |
| for d in settings.retrievaler.chunk_list(row["doc_id"], row["tenant_id"], [str(row["kb_id"])], |
| fields=["content_with_weight", vctr_nm]): |
| chunks.append((d["content_with_weight"], np.array(d[vctr_nm]))) |
|
|
| raptor = Raptor( |
| row["parser_config"]["raptor"].get("max_cluster", 64), |
| chat_mdl, |
| embd_mdl, |
| row["parser_config"]["raptor"]["prompt"], |
| row["parser_config"]["raptor"]["max_token"], |
| row["parser_config"]["raptor"]["threshold"] |
| ) |
| original_length = len(chunks) |
| chunks = raptor(chunks, row["parser_config"]["raptor"]["random_seed"], callback) |
| doc = { |
| "doc_id": row["doc_id"], |
| "kb_id": [str(row["kb_id"])], |
| "docnm_kwd": row["name"], |
| "title_tks": rag_tokenizer.tokenize(row["name"]) |
| } |
| if row["pagerank"]: |
| doc[PAGERANK_FLD] = int(row["pagerank"]) |
| res = [] |
| tk_count = 0 |
| for content, vctr in chunks[original_length:]: |
| d = copy.deepcopy(doc) |
| d["id"] = xxhash.xxh64((content + str(d["doc_id"])).encode("utf-8")).hexdigest() |
| d["create_time"] = str(datetime.now()).replace("T", " ")[:19] |
| d["create_timestamp_flt"] = datetime.now().timestamp() |
| d[vctr_nm] = vctr.tolist() |
| d["content_with_weight"] = content |
| d["content_ltks"] = rag_tokenizer.tokenize(content) |
| d["content_sm_ltks"] = rag_tokenizer.fine_grained_tokenize(d["content_ltks"]) |
| res.append(d) |
| tk_count += num_tokens_from_string(content) |
| return res, tk_count |
|
|
|
|
| def run_graphrag(row, chat_model, language, embedding_model, callback=None): |
| chunks = [] |
| for d in settings.retrievaler.chunk_list(row["doc_id"], row["tenant_id"], [str(row["kb_id"])], |
| fields=["content_with_weight", "doc_id"]): |
| chunks.append((d["doc_id"], d["content_with_weight"])) |
|
|
| Dealer(LightKGExt if row["parser_config"]["graphrag"]["method"] != 'general' else GeneralKGExt, |
| row["tenant_id"], |
| str(row["kb_id"]), |
| chat_model, |
| chunks=chunks, |
| language=language, |
| entity_types=row["parser_config"]["graphrag"]["entity_types"], |
| embed_bdl=embedding_model, |
| callback=callback) |
|
|
|
|
| def do_handle_task(task): |
| task_id = task["id"] |
| task_from_page = task["from_page"] |
| task_to_page = task["to_page"] |
| task_tenant_id = task["tenant_id"] |
| task_embedding_id = task["embd_id"] |
| task_language = task["language"] |
| task_llm_id = task["llm_id"] |
| task_dataset_id = task["kb_id"] |
| task_doc_id = task["doc_id"] |
| task_document_name = task["name"] |
| task_parser_config = task["parser_config"] |
|
|
| |
| progress_callback = partial(set_progress, task_id, task_from_page, task_to_page) |
|
|
| |
| lower_case_doc_engine = settings.DOC_ENGINE.lower() |
| if lower_case_doc_engine == 'infinity' and task['parser_id'].lower() == 'table': |
| error_message = "Table parsing method is not supported by Infinity, please use other parsing methods or use Elasticsearch as the document engine." |
| progress_callback(-1, msg=error_message) |
| raise Exception(error_message) |
|
|
| try: |
| task_canceled = TaskService.do_cancel(task_id) |
| except DoesNotExist: |
| logging.warning(f"task {task_id} is unknown") |
| return |
| if task_canceled: |
| progress_callback(-1, msg="Task has been canceled.") |
| return |
|
|
| try: |
| |
| embedding_model = LLMBundle(task_tenant_id, LLMType.EMBEDDING, llm_name=task_embedding_id, lang=task_language) |
| except Exception as e: |
| error_message = f'Fail to bind embedding model: {str(e)}' |
| progress_callback(-1, msg=error_message) |
| logging.exception(error_message) |
| raise |
|
|
| vts, _ = embedding_model.encode(["ok"]) |
| vector_size = len(vts[0]) |
| init_kb(task, vector_size) |
|
|
| |
| if task.get("task_type", "") == "raptor": |
| try: |
| |
| chat_model = LLMBundle(task_tenant_id, LLMType.CHAT, llm_name=task_llm_id, lang=task_language) |
| |
| chunks, token_count = run_raptor(task, chat_model, embedding_model, vector_size, progress_callback) |
| except TaskCanceledException: |
| raise |
| except Exception as e: |
| error_message = f'Fail to bind LLM used by RAPTOR: {str(e)}' |
| progress_callback(-1, msg=error_message) |
| logging.exception(error_message) |
| raise |
| |
| elif task.get("task_type", "") == "graphrag": |
| start_ts = timer() |
| try: |
| chat_model = LLMBundle(task_tenant_id, LLMType.CHAT, llm_name=task_llm_id, lang=task_language) |
| run_graphrag(task, chat_model, task_language, embedding_model, progress_callback) |
| progress_callback(prog=1.0, msg="Knowledge Graph is done ({:.2f}s)".format(timer() - start_ts)) |
| except TaskCanceledException: |
| raise |
| except Exception as e: |
| error_message = f'Fail to bind LLM used by Knowledge Graph: {str(e)}' |
| progress_callback(-1, msg=error_message) |
| logging.exception(error_message) |
| raise |
| return |
| elif task.get("task_type", "") == "graph_resolution": |
| start_ts = timer() |
| try: |
| chat_model = LLMBundle(task_tenant_id, LLMType.CHAT, llm_name=task_llm_id, lang=task_language) |
| WithResolution( |
| task["tenant_id"], str(task["kb_id"]),chat_model, embedding_model, |
| progress_callback |
| ) |
| progress_callback(prog=1.0, msg="Knowledge Graph resolution is done ({:.2f}s)".format(timer() - start_ts)) |
| except TaskCanceledException: |
| raise |
| except Exception as e: |
| error_message = f'Fail to bind LLM used by Knowledge Graph resolution: {str(e)}' |
| progress_callback(-1, msg=error_message) |
| logging.exception(error_message) |
| raise |
| return |
| elif task.get("task_type", "") == "graph_community": |
| start_ts = timer() |
| try: |
| chat_model = LLMBundle(task_tenant_id, LLMType.CHAT, llm_name=task_llm_id, lang=task_language) |
| WithCommunity( |
| task["tenant_id"], str(task["kb_id"]), chat_model, embedding_model, |
| progress_callback |
| ) |
| progress_callback(prog=1.0, msg="GraphRAG community reports generation is done ({:.2f}s)".format(timer() - start_ts)) |
| except TaskCanceledException: |
| raise |
| except Exception as e: |
| error_message = f'Fail to bind LLM used by GraphRAG community reports generation: {str(e)}' |
| progress_callback(-1, msg=error_message) |
| logging.exception(error_message) |
| raise |
| return |
| else: |
| |
| start_ts = timer() |
| chunks = build_chunks(task, progress_callback) |
| logging.info("Build document {}: {:.2f}s".format(task_document_name, timer() - start_ts)) |
| if chunks is None: |
| return |
| if not chunks: |
| progress_callback(1., msg=f"No chunk built from {task_document_name}") |
| return |
| |
| |
| progress_callback(msg="Generate {} chunks".format(len(chunks))) |
| start_ts = timer() |
| try: |
| token_count, vector_size = embedding(chunks, embedding_model, task_parser_config, progress_callback) |
| except Exception as e: |
| error_message = "Generate embedding error:{}".format(str(e)) |
| progress_callback(-1, error_message) |
| logging.exception(error_message) |
| token_count = 0 |
| raise |
| progress_message = "Embedding chunks ({:.2f}s)".format(timer() - start_ts) |
| logging.info(progress_message) |
| progress_callback(msg=progress_message) |
|
|
| chunk_count = len(set([chunk["id"] for chunk in chunks])) |
| start_ts = timer() |
| doc_store_result = "" |
| es_bulk_size = 4 |
| for b in range(0, len(chunks), es_bulk_size): |
| doc_store_result = settings.docStoreConn.insert(chunks[b:b + es_bulk_size], search.index_name(task_tenant_id), |
| task_dataset_id) |
| if b % 128 == 0: |
| progress_callback(prog=0.8 + 0.1 * (b + 1) / len(chunks), msg="") |
| if doc_store_result: |
| error_message = f"Insert chunk error: {doc_store_result}, please check log file and Elasticsearch/Infinity status!" |
| progress_callback(-1, msg=error_message) |
| raise Exception(error_message) |
| chunk_ids = [chunk["id"] for chunk in chunks[:b + es_bulk_size]] |
| chunk_ids_str = " ".join(chunk_ids) |
| try: |
| TaskService.update_chunk_ids(task["id"], chunk_ids_str) |
| except DoesNotExist: |
| logging.warning(f"do_handle_task update_chunk_ids failed since task {task['id']} is unknown.") |
| doc_store_result = settings.docStoreConn.delete({"id": chunk_ids}, search.index_name(task_tenant_id), |
| task_dataset_id) |
| return |
| logging.info("Indexing doc({}), page({}-{}), chunks({}), elapsed: {:.2f}".format(task_document_name, task_from_page, |
| task_to_page, len(chunks), |
| timer() - start_ts)) |
|
|
| DocumentService.increment_chunk_num(task_doc_id, task_dataset_id, token_count, chunk_count, 0) |
|
|
| time_cost = timer() - start_ts |
| progress_callback(prog=1.0, msg="Done ({:.2f}s)".format(time_cost)) |
| logging.info( |
| "Chunk doc({}), page({}-{}), chunks({}), token({}), elapsed:{:.2f}".format(task_document_name, task_from_page, |
| task_to_page, len(chunks), |
| token_count, time_cost)) |
|
|
|
|
| def handle_task(): |
| global PAYLOAD, mt_lock, DONE_TASKS, FAILED_TASKS, CURRENT_TASK |
| task = collect() |
| if task: |
| try: |
| logging.info(f"handle_task begin for task {json.dumps(task)}") |
| with mt_lock: |
| CURRENT_TASK = copy.deepcopy(task) |
| do_handle_task(task) |
| with mt_lock: |
| DONE_TASKS += 1 |
| CURRENT_TASK = None |
| logging.info(f"handle_task done for task {json.dumps(task)}") |
| except TaskCanceledException: |
| with mt_lock: |
| DONE_TASKS += 1 |
| CURRENT_TASK = None |
| try: |
| set_progress(task["id"], prog=-1, msg="handle_task got TaskCanceledException") |
| except Exception: |
| pass |
| logging.debug("handle_task got TaskCanceledException", exc_info=True) |
| except Exception as e: |
| with mt_lock: |
| FAILED_TASKS += 1 |
| CURRENT_TASK = None |
| try: |
| set_progress(task["id"], prog=-1, msg=f"[Exception]: {e}") |
| except Exception: |
| pass |
| logging.exception(f"handle_task got exception for task {json.dumps(task)}") |
| if PAYLOAD: |
| PAYLOAD.ack() |
| PAYLOAD = None |
|
|
|
|
| def report_status(): |
| global CONSUMER_NAME, BOOT_AT, PENDING_TASKS, LAG_TASKS, mt_lock, DONE_TASKS, FAILED_TASKS, CURRENT_TASK |
| REDIS_CONN.sadd("TASKEXE", CONSUMER_NAME) |
| while True: |
| try: |
| now = datetime.now() |
| group_info = REDIS_CONN.queue_info(SVR_QUEUE_NAME, "rag_flow_svr_task_broker") |
| if group_info is not None: |
| PENDING_TASKS = int(group_info.get("pending", 0)) |
| LAG_TASKS = int(group_info.get("lag", 0)) |
|
|
| with mt_lock: |
| heartbeat = json.dumps({ |
| "name": CONSUMER_NAME, |
| "now": now.astimezone().isoformat(timespec="milliseconds"), |
| "boot_at": BOOT_AT, |
| "pending": PENDING_TASKS, |
| "lag": LAG_TASKS, |
| "done": DONE_TASKS, |
| "failed": FAILED_TASKS, |
| "current": CURRENT_TASK, |
| }) |
| REDIS_CONN.zadd(CONSUMER_NAME, heartbeat, now.timestamp()) |
| logging.info(f"{CONSUMER_NAME} reported heartbeat: {heartbeat}") |
|
|
| expired = REDIS_CONN.zcount(CONSUMER_NAME, 0, now.timestamp() - 60 * 30) |
| if expired > 0: |
| REDIS_CONN.zpopmin(CONSUMER_NAME, expired) |
| except Exception: |
| logging.exception("report_status got exception") |
| time.sleep(30) |
|
|
|
|
| def analyze_heap(snapshot1: tracemalloc.Snapshot, snapshot2: tracemalloc.Snapshot, snapshot_id: int, dump_full: bool): |
| msg = "" |
| if dump_full: |
| stats2 = snapshot2.statistics('lineno') |
| msg += f"{CONSUMER_NAME} memory usage of snapshot {snapshot_id}:\n" |
| for stat in stats2[:10]: |
| msg += f"{stat}\n" |
| stats1_vs_2 = snapshot2.compare_to(snapshot1, 'lineno') |
| msg += f"{CONSUMER_NAME} memory usage increase from snapshot {snapshot_id - 1} to snapshot {snapshot_id}:\n" |
| for stat in stats1_vs_2[:10]: |
| msg += f"{stat}\n" |
| msg += f"{CONSUMER_NAME} detailed traceback for the top memory consumers:\n" |
| for stat in stats1_vs_2[:3]: |
| msg += '\n'.join(stat.traceback.format()) |
| logging.info(msg) |
|
|
|
|
| def main(): |
| logging.info(r""" |
| ______ __ ______ __ |
| /_ __/___ ______/ /__ / ____/ _____ _______ __/ /_____ _____ |
| / / / __ `/ ___/ //_/ / __/ | |/_/ _ \/ ___/ / / / __/ __ \/ ___/ |
| / / / /_/ (__ ) ,< / /____> </ __/ /__/ /_/ / /_/ /_/ / / |
| /_/ \__,_/____/_/|_| /_____/_/|_|\___/\___/\__,_/\__/\____/_/ |
| """) |
| logging.info(f'TaskExecutor: RAGFlow version: {get_ragflow_version()}') |
| settings.init_settings() |
| print_rag_settings() |
| background_thread = threading.Thread(target=report_status) |
| background_thread.daemon = True |
| background_thread.start() |
|
|
| TRACE_MALLOC_DELTA = int(os.environ.get('TRACE_MALLOC_DELTA', "0")) |
| TRACE_MALLOC_FULL = int(os.environ.get('TRACE_MALLOC_FULL', "0")) |
| if TRACE_MALLOC_DELTA > 0: |
| if TRACE_MALLOC_FULL < TRACE_MALLOC_DELTA: |
| TRACE_MALLOC_FULL = TRACE_MALLOC_DELTA |
| tracemalloc.start() |
| snapshot1 = tracemalloc.take_snapshot() |
| while True: |
| handle_task() |
| num_tasks = DONE_TASKS + FAILED_TASKS |
| if TRACE_MALLOC_DELTA > 0 and num_tasks > 0 and num_tasks % TRACE_MALLOC_DELTA == 0: |
| snapshot2 = tracemalloc.take_snapshot() |
| analyze_heap(snapshot1, snapshot2, int(num_tasks / TRACE_MALLOC_DELTA), num_tasks % TRACE_MALLOC_FULL == 0) |
| snapshot1 = snapshot2 |
| snapshot2 = None |
|
|
|
|
| if __name__ == "__main__": |
| main() |
|
|