diff --git a/api/app/celery_app.py b/api/app/celery_app.py index 60c22855..e77ed683 100644 --- a/api/app/celery_app.py +++ b/api/app/celery_app.py @@ -116,6 +116,7 @@ celery_app.conf.update( 'app.tasks.update_implicit_emotions_storage': {'queue': 'periodic_tasks'}, 'app.tasks.init_implicit_emotions_for_users': {'queue': 'periodic_tasks'}, 'app.tasks.init_interest_distribution_for_users': {'queue': 'periodic_tasks'}, + 'app.tasks.init_community_clustering_for_users': {'queue': 'periodic_tasks'}, }, ) diff --git a/api/app/controllers/memory_dashboard_controller.py b/api/app/controllers/memory_dashboard_controller.py index 3bbb5cf7..bad706d4 100644 --- a/api/app/controllers/memory_dashboard_controller.py +++ b/api/app/controllers/memory_dashboard_controller.py @@ -193,7 +193,16 @@ async def get_workspace_end_users( await aio_redis_set(cache_key, json.dumps(result), expire=30) except Exception as e: api_logger.warning(f"Redis 缓存写入失败: {str(e)}") - + + # 触发社区聚类补全任务(异步,不阻塞接口响应) + # 对有 ExtractedEntity 但无 Community 节点的存量用户自动补跑全量聚类 + try: + from app.tasks import init_community_clustering_for_users + init_community_clustering_for_users.delay(end_user_ids=end_user_ids) + api_logger.info(f"已触发社区聚类补全任务,候选用户数: {len(end_user_ids)}") + except Exception as e: + api_logger.warning(f"触发社区聚类补全任务失败(不影响主流程): {str(e)}") + api_logger.info(f"成功获取 {len(end_users)} 个宿主记录") return success(data=result, msg="宿主列表获取成功") diff --git a/api/app/controllers/user_memory_controllers.py b/api/app/controllers/user_memory_controllers.py index d3fe7d83..be796ff9 100644 --- a/api/app/controllers/user_memory_controllers.py +++ b/api/app/controllers/user_memory_controllers.py @@ -17,6 +17,7 @@ from app.services.user_memory_service import ( UserMemoryService, analytics_memory_types, analytics_graph_data, + analytics_community_graph_data, ) from app.services.memory_entity_relationship_service import MemoryEntityService,MemoryEmotion,MemoryInteraction from app.schemas.response_schema import ApiResponse @@ -295,6 +296,42 @@ async def get_graph_data_api( return fail(BizCode.INTERNAL_ERROR, "图数据查询失败", str(e)) +@router.get("/analytics/community_graph", response_model=ApiResponse) +async def get_community_graph_data_api( + end_user_id: str, + current_user: User = Depends(get_current_user), + db: Session = Depends(get_db), +) -> dict: + workspace_id = current_user.current_workspace_id + + if workspace_id is None: + api_logger.warning(f"用户 {current_user.username} 尝试查询社区图谱但未选择工作空间") + return fail(BizCode.INVALID_PARAMETER, "请先切换到一个工作空间", "current_workspace_id is None") + + api_logger.info( + f"社区图谱查询请求: end_user_id={end_user_id}, user={current_user.username}, " + f"workspace={workspace_id}" + ) + + try: + result = await analytics_community_graph_data(db=db, end_user_id=end_user_id) + + if "message" in result and result["statistics"]["total_nodes"] == 0: + api_logger.warning(f"社区图谱查询返回空结果: {result.get('message')}") + return success(data=result, msg=result.get("message", "查询成功")) + + api_logger.info( + f"成功获取社区图谱: end_user_id={end_user_id}, " + f"nodes={result['statistics']['total_nodes']}, " + f"edges={result['statistics']['total_edges']}" + ) + return success(data=result, msg="查询成功") + + except Exception as e: + api_logger.error(f"社区图谱查询失败: end_user_id={end_user_id}, error={str(e)}") + return fail(BizCode.INTERNAL_ERROR, "社区图谱查询失败", str(e)) + + @router.get("/read_end_user/profile", response_model=ApiResponse) async def get_end_user_profile( end_user_id: str, diff --git a/api/app/core/memory/agent/utils/write_tools.py b/api/app/core/memory/agent/utils/write_tools.py index 22030278..b3707083 100644 --- a/api/app/core/memory/agent/utils/write_tools.py +++ b/api/app/core/memory/agent/utils/write_tools.py @@ -165,7 +165,9 @@ async def write( statement_chunk_edges=all_statement_chunk_edges, statement_entity_edges=all_statement_entity_edges, entity_edges=all_entity_entity_edges, - connector=neo4j_connector + connector=neo4j_connector, + config_id=config_id, + llm_model_id=str(memory_config.llm_model_id) if memory_config.llm_model_id else None, ) if success: logger.info("Successfully saved all data to Neo4j") diff --git a/api/app/core/memory/storage_services/clustering_engine/__init__.py b/api/app/core/memory/storage_services/clustering_engine/__init__.py new file mode 100644 index 00000000..992d8bff --- /dev/null +++ b/api/app/core/memory/storage_services/clustering_engine/__init__.py @@ -0,0 +1,3 @@ +from app.core.memory.storage_services.clustering_engine.label_propagation import LabelPropagationEngine + +__all__ = ["LabelPropagationEngine"] diff --git a/api/app/core/memory/storage_services/clustering_engine/label_propagation.py b/api/app/core/memory/storage_services/clustering_engine/label_propagation.py new file mode 100644 index 00000000..cbc303b1 --- /dev/null +++ b/api/app/core/memory/storage_services/clustering_engine/label_propagation.py @@ -0,0 +1,484 @@ +"""标签传播聚类引擎 + +基于 ZEP 论文的动态标签传播算法,对 Neo4j 中的 ExtractedEntity 节点进行社区聚类。 + +支持两种模式: +- 全量初始化(full_clustering):首次运行,对所有实体做完整 LPA 迭代 +- 增量更新(incremental_update):新实体到达时,只处理新实体及其邻居 +""" + +import logging +import uuid +from math import sqrt +from typing import Dict, List, Optional + +from app.repositories.neo4j.community_repository import CommunityRepository +from app.repositories.neo4j.neo4j_connector import Neo4jConnector + +logger = logging.getLogger(__name__) + +# 全量迭代最大轮数,防止不收敛 +MAX_ITERATIONS = 10 +# 社区摘要核心实体数量 +CORE_ENTITY_LIMIT = 5 + + +def _cosine_similarity(v1: Optional[List[float]], v2: Optional[List[float]]) -> float: + """计算两个向量的余弦相似度,任一为空则返回 0。""" + if not v1 or not v2 or len(v1) != len(v2): + return 0.0 + dot = sum(a * b for a, b in zip(v1, v2)) + norm1 = sqrt(sum(a * a for a in v1)) + norm2 = sqrt(sum(b * b for b in v2)) + if norm1 == 0 or norm2 == 0: + return 0.0 + return dot / (norm1 * norm2) + + +def _weighted_vote( + neighbors: List[Dict], + self_embedding: Optional[List[float]], +) -> Optional[str]: + """ + 加权多数投票,选出得票最高的社区。 + + 权重 = 语义相似度(name_embedding 余弦)* activation_value 加成 + 没有 community_id 的邻居不参与投票。 + """ + votes: Dict[str, float] = {} + for nb in neighbors: + cid = nb.get("community_id") + if not cid: + continue + sem = _cosine_similarity(self_embedding, nb.get("name_embedding")) + act = nb.get("activation_value") or 0.5 + # 语义相似度权重 0.6,激活值权重 0.4 + weight = 0.6 * sem + 0.4 * act + votes[cid] = votes.get(cid, 0.0) + weight + + if not votes: + return None + return max(votes, key=votes.__getitem__) + + +class LabelPropagationEngine: + """标签传播聚类引擎""" + + def __init__( + self, + connector: Neo4jConnector, + config_id: Optional[str] = None, + llm_model_id: Optional[str] = None, + ): + self.connector = connector + self.repo = CommunityRepository(connector) + self.config_id = config_id + self.llm_model_id = llm_model_id + + # ────────────────────────────────────────────────────────────────────────── + # 公开接口 + # ────────────────────────────────────────────────────────────────────────── + + async def run( + self, + end_user_id: str, + new_entity_ids: Optional[List[str]] = None, + ) -> None: + """ + 统一入口:自动判断全量还是增量。 + + - 若该用户尚无 Community 节点 → 全量初始化 + - 否则 → 增量更新(仅处理 new_entity_ids) + """ + has_communities = await self.repo.has_communities(end_user_id) + if not has_communities: + logger.info(f"[Clustering] 用户 {end_user_id} 首次聚类,执行全量初始化") + await self.full_clustering(end_user_id) + else: + if new_entity_ids: + logger.info( + f"[Clustering] 增量更新,新实体数: {len(new_entity_ids)}" + ) + await self.incremental_update(new_entity_ids, end_user_id) + + async def full_clustering(self, end_user_id: str) -> None: + """ + 全量标签传播初始化。 + + 1. 拉取所有实体,初始化每个实体为独立社区 + 2. 迭代:每轮对所有实体做邻居投票,更新社区标签 + 3. 直到标签不再变化或达到 MAX_ITERATIONS + 4. 将最终标签写入 Neo4j + """ + entities = await self.repo.get_all_entities(end_user_id) + if not entities: + logger.info(f"[Clustering] 用户 {end_user_id} 无实体,跳过全量聚类") + return + + # 初始化:每个实体持有自己 id 作为社区标签 + labels: Dict[str, str] = {e["id"]: e["id"] for e in entities} + embeddings: Dict[str, Optional[List[float]]] = { + e["id"]: e.get("name_embedding") for e in entities + } + + # 预加载所有实体的邻居,避免迭代内 O(iterations * |E|) 次 Neo4j 往返 + logger.info(f"[Clustering] 预加载 {len(entities)} 个实体的邻居图...") + neighbors_cache: Dict[str, List[Dict]] = await self.repo.get_all_entity_neighbors_batch(end_user_id) + logger.info(f"[Clustering] 邻居预加载完成,覆盖实体数: {len(neighbors_cache)}") + + for iteration in range(MAX_ITERATIONS): + changed = 0 + # 随机顺序(Python dict 在 3.7+ 保持插入顺序,这里直接遍历) + for entity in entities: + eid = entity["id"] + # 直接从缓存取邻居,不再发起 Neo4j 查询 + neighbors = neighbors_cache.get(eid, []) + + # 将邻居的当前内存标签注入(覆盖 Neo4j 中的旧值) + enriched = [] + for nb in neighbors: + nb_copy = dict(nb) + nb_copy["community_id"] = labels.get(nb["id"], nb.get("community_id")) + enriched.append(nb_copy) + + new_label = _weighted_vote(enriched, embeddings.get(eid)) + if new_label and new_label != labels[eid]: + labels[eid] = new_label + changed += 1 + + logger.info( + f"[Clustering] 全量迭代 {iteration + 1}/{MAX_ITERATIONS}," + f"标签变化数: {changed}" + ) + if changed == 0: + logger.info("[Clustering] 标签已收敛,提前结束迭代") + break + + # 将最终标签写入 Neo4j + await self._flush_labels(labels, end_user_id) + pre_merge_count = len(set(labels.values())) + logger.info( + f"[Clustering] 全量迭代完成,共 {pre_merge_count} 个社区," + f"{len(labels)} 个实体,开始后处理合并" + ) + + # 全量初始化后做一轮社区合并(基于 name_embedding 余弦相似度) + all_community_ids = list(set(labels.values())) + await self._evaluate_merge(all_community_ids, end_user_id) + + logger.info( + f"[Clustering] 全量聚类完成,合并前 {pre_merge_count} 个社区," + f"{len(labels)} 个实体" + ) + # 为所有社区生成元数据 + # 注意:_evaluate_merge 后部分社区已被合并消解,需重新从 Neo4j 查询实际存活的社区 + # 不能复用 labels.values(),那里包含已被 dissolve 的旧社区 ID + surviving_communities = await self.repo.get_all_entities(end_user_id) + surviving_community_ids = list({ + e.get("community_id") for e in surviving_communities + if e.get("community_id") + }) + logger.info(f"[Clustering] 合并后实际存活社区数: {len(surviving_community_ids)}") + for cid in surviving_community_ids: + await self._generate_community_metadata(cid, end_user_id) + + async def incremental_update( + self, new_entity_ids: List[str], end_user_id: str + ) -> None: + """ + 增量更新:只处理新实体及其邻居,不重跑全图。 + + 1. 对每个新实体查询邻居 + 2. 加权多数投票决定社区归属 + 3. 若邻居无社区 → 创建新社区 + 4. 若邻居分属多个社区 → 评估是否合并 + """ + for entity_id in new_entity_ids: + await self._process_single_entity(entity_id, end_user_id) + + # ────────────────────────────────────────────────────────────────────────── + # 内部方法 + # ────────────────────────────────────────────────────────────────────────── + + async def _process_single_entity( + self, entity_id: str, end_user_id: str + ) -> None: + """处理单个新实体的社区分配。""" + neighbors = await self.repo.get_entity_neighbors(entity_id, end_user_id) + + # 查询自身 embedding(从邻居查询结果中无法获取,需单独查) + self_embedding = await self._get_entity_embedding(entity_id, end_user_id) + + if not neighbors: + # 孤立实体:创建单成员社区 + new_cid = self._new_community_id() + await self.repo.upsert_community(new_cid, end_user_id, member_count=1) + await self.repo.assign_entity_to_community(entity_id, new_cid, end_user_id) + logger.debug(f"[Clustering] 孤立实体 {entity_id} → 新社区 {new_cid}") + return + + # 统计邻居社区分布 + community_ids_in_neighbors = set( + nb["community_id"] for nb in neighbors if nb.get("community_id") + ) + + target_cid = _weighted_vote(neighbors, self_embedding) + + if target_cid is None: + # 邻居都没有社区,连同新实体一起创建新社区 + new_cid = self._new_community_id() + await self.repo.upsert_community(new_cid, end_user_id) + await self.repo.assign_entity_to_community(entity_id, new_cid, end_user_id) + for nb in neighbors: + await self.repo.assign_entity_to_community( + nb["id"], new_cid, end_user_id + ) + await self.repo.refresh_member_count(new_cid, end_user_id) + logger.debug( + f"[Clustering] 新实体 {entity_id} 与 {len(neighbors)} 个无社区邻居 → 新社区 {new_cid}" + ) + await self._generate_community_metadata(new_cid, end_user_id) + else: + # 加入得票最多的社区 + await self.repo.assign_entity_to_community(entity_id, target_cid, end_user_id) + await self.repo.refresh_member_count(target_cid, end_user_id) + logger.debug(f"[Clustering] 新实体 {entity_id} → 社区 {target_cid}") + + # 若邻居分属多个社区,评估合并 + if len(community_ids_in_neighbors) > 1: + await self._evaluate_merge( + list(community_ids_in_neighbors), end_user_id + ) + await self._generate_community_metadata(target_cid, end_user_id) + + async def _evaluate_merge( + self, community_ids: List[str], end_user_id: str + ) -> None: + """ + 评估多个社区是否应合并。 + + 策略:计算各社区成员 embedding 的平均向量,若两两余弦相似度 > 0.75 则合并。 + 合并时保留成员数最多的社区,其余成员迁移过来。 + + 全量场景(社区数 > 20)使用批量查询,避免 N 次数据库往返。 + """ + MERGE_THRESHOLD = 0.85 + BATCH_THRESHOLD = 20 # 超过此数量走批量查询 + + community_embeddings: Dict[str, Optional[List[float]]] = {} + community_sizes: Dict[str, int] = {} + + if len(community_ids) > BATCH_THRESHOLD: + # 批量查询:一次拉取所有社区成员 + all_members = await self.repo.get_all_community_members_batch( + community_ids, end_user_id + ) + for cid in community_ids: + members = all_members.get(cid, []) + community_sizes[cid] = len(members) + valid_embeddings = [ + m["name_embedding"] for m in members if m.get("name_embedding") + ] + if valid_embeddings: + dim = len(valid_embeddings[0]) + community_embeddings[cid] = [ + sum(e[i] for e in valid_embeddings) / len(valid_embeddings) + for i in range(dim) + ] + else: + community_embeddings[cid] = None + else: + # 增量场景:逐个查询 + for cid in community_ids: + members = await self.repo.get_community_members(cid, end_user_id) + community_sizes[cid] = len(members) + valid_embeddings = [ + m["name_embedding"] for m in members if m.get("name_embedding") + ] + if valid_embeddings: + dim = len(valid_embeddings[0]) + community_embeddings[cid] = [ + sum(e[i] for e in valid_embeddings) / len(valid_embeddings) + for i in range(dim) + ] + else: + community_embeddings[cid] = None + + # 找出应合并的社区对 + to_merge: List[tuple] = [] + cids = list(community_ids) + for i in range(len(cids)): + for j in range(i + 1, len(cids)): + sim = _cosine_similarity( + community_embeddings[cids[i]], + community_embeddings[cids[j]], + ) + if sim > MERGE_THRESHOLD: + to_merge.append((cids[i], cids[j])) + + logger.info(f"[Clustering] 发现 {len(to_merge)} 对可合并社区") + + # 执行合并:逐对处理,每次合并后重新计算合并社区的平均向量 + # 避免 union-find 链式传递导致语义不相关的社区被间接合并 + # (A≈B、B≈C 不代表 A≈C,不能因传递性把 A/B/C 全部合并) + merged_into: Dict[str, str] = {} # dissolve → keep 的最终映射 + + def get_root(x: str) -> str: + """路径压缩,找到 x 当前所属的根社区。""" + while x in merged_into: + merged_into[x] = merged_into.get(merged_into[x], merged_into[x]) + x = merged_into[x] + return x + + for c1, c2 in to_merge: + root1, root2 = get_root(c1), get_root(c2) + if root1 == root2: + continue + + # 用合并后的最新平均向量重新验证相似度 + # 防止链式传递:A≈B 合并后 B 的向量已更新,C 必须和新 B 相似才能合并 + current_sim = _cosine_similarity( + community_embeddings.get(root1), + community_embeddings.get(root2), + ) + if current_sim <= MERGE_THRESHOLD: + # 合并后向量已漂移,不再满足阈值,跳过 + logger.debug( + f"[Clustering] 跳过合并 {root1} ↔ {root2}," + f"当前相似度 {current_sim:.3f} ≤ {MERGE_THRESHOLD}" + ) + continue + + keep = root1 if community_sizes.get(root1, 0) >= community_sizes.get(root2, 0) else root2 + dissolve = root2 if keep == root1 else root1 + merged_into[dissolve] = keep + + members = await self.repo.get_community_members(dissolve, end_user_id) + for m in members: + await self.repo.assign_entity_to_community(m["id"], keep, end_user_id) + + # 合并后重新计算 keep 的平均向量(加权平均) + keep_emb = community_embeddings.get(keep) + dissolve_emb = community_embeddings.get(dissolve) + keep_size = community_sizes.get(keep, 0) + dissolve_size = community_sizes.get(dissolve, 0) + total_size = keep_size + dissolve_size + if keep_emb and dissolve_emb and total_size > 0: + dim = len(keep_emb) + community_embeddings[keep] = [ + (keep_emb[i] * keep_size + dissolve_emb[i] * dissolve_size) / total_size + for i in range(dim) + ] + community_embeddings[dissolve] = None + + community_sizes[keep] = total_size + community_sizes[dissolve] = 0 + await self.repo.refresh_member_count(keep, end_user_id) + logger.info( + f"[Clustering] 社区合并: {dissolve} → {keep}," + f"相似度={current_sim:.3f},迁移 {len(members)} 个成员" + ) + + async def _flush_labels( + self, labels: Dict[str, str], end_user_id: str + ) -> None: + """将内存中的标签批量写入 Neo4j。""" + # 先创建所有唯一社区节点 + unique_communities = set(labels.values()) + for cid in unique_communities: + await self.repo.upsert_community(cid, end_user_id) + + # 再批量分配实体 + for entity_id, community_id in labels.items(): + await self.repo.assign_entity_to_community( + entity_id, community_id, end_user_id + ) + + # 刷新成员数 + for cid in unique_communities: + await self.repo.refresh_member_count(cid, end_user_id) + + async def _get_entity_embedding( + self, entity_id: str, end_user_id: str + ) -> Optional[List[float]]: + """查询单个实体的 name_embedding。""" + try: + result = await self.connector.execute_query( + "MATCH (e:ExtractedEntity {id: $eid, end_user_id: $uid}) " + "RETURN e.name_embedding AS name_embedding", + eid=entity_id, + uid=end_user_id, + ) + return result[0]["name_embedding"] if result else None + except Exception: + return None + + async def _generate_community_metadata( + self, community_id: str, end_user_id: str + ) -> None: + """ + 为社区生成并写入元数据:名称、摘要、核心实体。 + + - core_entities:按 activation_value 排序取 top-N 实体名称列表(无需 LLM) + - name / summary:若有 llm_model_id 则调用 LLM 生成,否则用实体名称拼接兜底 + """ + try: + members = await self.repo.get_community_members(community_id, end_user_id) + if not members: + return + + # 核心实体:按 activation_value 降序取 top-N + sorted_members = sorted( + members, + key=lambda m: m.get("activation_value") or 0, + reverse=True, + ) + core_entities = [m["name"] for m in sorted_members[:CORE_ENTITY_LIMIT] if m.get("name")] + all_names = [m["name"] for m in members if m.get("name")] + + name = "、".join(core_entities[:3]) if core_entities else community_id[:8] + summary = f"包含实体:{', '.join(all_names)}" + + # 若有 LLM 配置,调用 LLM 生成更好的名称和摘要 + if self.llm_model_id: + try: + from app.db import get_db_context + from app.core.memory.utils.llm.llm_utils import MemoryClientFactory + + entity_list_str = "、".join(all_names) + prompt = ( + f"以下是一组语义相关的实体:{entity_list_str}\n\n" + f"请为这组实体所代表的主题:\n" + f"1. 起一个简洁的中文名称(不超过10个字)\n" + f"2. 写一句话摘要(不超过50个字)\n\n" + f"严格按以下格式输出,不要有其他内容:\n" + f"名称:<名称>\n摘要:<摘要>" + ) + with get_db_context() as db: + factory = MemoryClientFactory(db) + llm_client = factory.get_llm_client(self.llm_model_id) + response = await llm_client.chat([{"role": "user", "content": prompt}]) + text = response.content if hasattr(response, "content") else str(response) + + for line in text.strip().splitlines(): + if line.startswith("名称:"): + name = line[3:].strip() + elif line.startswith("摘要:"): + summary = line[3:].strip() + except Exception as e: + logger.warning(f"[Clustering] LLM 生成社区元数据失败,使用兜底值: {e}") + + await self.repo.update_community_metadata( + community_id=community_id, + end_user_id=end_user_id, + name=name, + summary=summary, + core_entities=core_entities, + ) + logger.debug(f"[Clustering] 社区 {community_id} 元数据已更新: name={name}") + except Exception as e: + logger.error(f"[Clustering] _generate_community_metadata failed for {community_id}: {e}") + + @staticmethod + def _new_community_id() -> str: + return str(uuid.uuid4()) diff --git a/api/app/repositories/neo4j/community_repository.py b/api/app/repositories/neo4j/community_repository.py new file mode 100644 index 00000000..f2f11f76 --- /dev/null +++ b/api/app/repositories/neo4j/community_repository.py @@ -0,0 +1,194 @@ +"""Community 节点仓库 + +管理 Neo4j 中 Community 节点及 BELONGS_TO_COMMUNITY 边的 CRUD 操作。 +""" + +import logging +from typing import Dict, List, Optional + +from app.repositories.neo4j.neo4j_connector import Neo4jConnector +from app.repositories.neo4j.cypher_queries import ( + COMMUNITY_NODE_UPSERT, + ENTITY_JOIN_COMMUNITY, + ENTITY_LEAVE_ALL_COMMUNITIES, + GET_ENTITY_NEIGHBORS, + GET_ALL_ENTITIES_FOR_USER, + GET_COMMUNITY_MEMBERS, + GET_ALL_COMMUNITY_MEMBERS_BATCH, + GET_ALL_ENTITY_NEIGHBORS_BATCH, + CHECK_USER_HAS_COMMUNITIES, + UPDATE_COMMUNITY_MEMBER_COUNT, + UPDATE_COMMUNITY_METADATA, +) + +logger = logging.getLogger(__name__) + + +class CommunityRepository: + def __init__(self, connector: Neo4jConnector): + self.connector = connector + + async def upsert_community( + self, community_id: str, end_user_id: str, member_count: int = 0 + ) -> Optional[str]: + """创建或更新 Community 节点,返回 community_id。""" + try: + result = await self.connector.execute_query( + COMMUNITY_NODE_UPSERT, + community_id=community_id, + end_user_id=end_user_id, + member_count=member_count, + ) + return result[0]["community_id"] if result else None + except Exception as e: + logger.error(f"upsert_community failed: {e}") + return None + + async def assign_entity_to_community( + self, entity_id: str, community_id: str, end_user_id: str + ) -> bool: + """将实体关联到社区(先解除旧关联,再建立新关联)。""" + try: + await self.connector.execute_query( + ENTITY_LEAVE_ALL_COMMUNITIES, + entity_id=entity_id, + end_user_id=end_user_id, + ) + result = await self.connector.execute_query( + ENTITY_JOIN_COMMUNITY, + entity_id=entity_id, + community_id=community_id, + end_user_id=end_user_id, + ) + return bool(result) + except Exception as e: + logger.error(f"assign_entity_to_community failed: {e}") + return False + + async def get_entity_neighbors( + self, entity_id: str, end_user_id: str + ) -> List[Dict]: + """查询实体的直接邻居及其社区归属。""" + try: + return await self.connector.execute_query( + GET_ENTITY_NEIGHBORS, + entity_id=entity_id, + end_user_id=end_user_id, + ) + except Exception as e: + logger.error(f"get_entity_neighbors failed: {e}") + return [] + + async def get_all_entity_neighbors_batch( + self, end_user_id: str + ) -> Dict[str, List[Dict]]: + """一次性批量拉取该用户下所有实体的邻居,返回 {entity_id: [neighbors]} 字典。 + 用于全量聚类预加载,避免每个实体单独查询。""" + try: + rows = await self.connector.execute_query( + GET_ALL_ENTITY_NEIGHBORS_BATCH, + end_user_id=end_user_id, + ) + result: Dict[str, List[Dict]] = {} + for row in rows: + eid = row["entity_id"] + neighbor = {k: v for k, v in row.items() if k != "entity_id"} + result.setdefault(eid, []).append(neighbor) + return result + except Exception as e: + logger.error(f"get_all_entity_neighbors_batch failed: {e}") + return {} + + async def get_all_entities(self, end_user_id: str) -> List[Dict]: + """拉取某用户下所有实体及其当前社区归属。""" + try: + return await self.connector.execute_query( + GET_ALL_ENTITIES_FOR_USER, + end_user_id=end_user_id, + ) + except Exception as e: + logger.error(f"get_all_entities failed: {e}") + return [] + + async def get_community_members( + self, community_id: str, end_user_id: str + ) -> List[Dict]: + """查询社区成员列表。""" + try: + return await self.connector.execute_query( + GET_COMMUNITY_MEMBERS, + community_id=community_id, + end_user_id=end_user_id, + ) + except Exception as e: + logger.error(f"get_community_members failed: {e}") + return [] + + async def get_all_community_members_batch( + self, community_ids: List[str], end_user_id: str + ) -> Dict[str, List[Dict]]: + """批量查询多个社区的成员,返回 {community_id: [members]} 字典。""" + try: + rows = await self.connector.execute_query( + GET_ALL_COMMUNITY_MEMBERS_BATCH, + community_ids=community_ids, + end_user_id=end_user_id, + ) + result: Dict[str, List[Dict]] = {} + for row in rows: + cid = row["community_id"] + result.setdefault(cid, []).append(row) + return result + except Exception as e: + logger.error(f"get_all_community_members_batch failed: {e}") + return {} + + async def has_communities(self, end_user_id: str) -> bool: + """检查该用户是否已有 Community 节点(用于判断全量 vs 增量)。""" + try: + result = await self.connector.execute_query( + CHECK_USER_HAS_COMMUNITIES, + end_user_id=end_user_id, + ) + return result[0]["community_count"] > 0 if result else False + except Exception as e: + logger.error(f"has_communities failed: {e}") + return False + + async def refresh_member_count( + self, community_id: str, end_user_id: str + ) -> int: + """重新统计并更新社区成员数,返回最新数量。""" + try: + result = await self.connector.execute_query( + UPDATE_COMMUNITY_MEMBER_COUNT, + community_id=community_id, + end_user_id=end_user_id, + ) + return result[0]["member_count"] if result else 0 + except Exception as e: + logger.error(f"refresh_member_count failed: {e}") + return 0 + + async def update_community_metadata( + self, + community_id: str, + end_user_id: str, + name: str, + summary: str, + core_entities: List[str], + ) -> bool: + """更新社区的名称、摘要和核心实体列表。""" + try: + result = await self.connector.execute_query( + UPDATE_COMMUNITY_METADATA, + community_id=community_id, + end_user_id=end_user_id, + name=name, + summary=summary, + core_entities=core_entities, + ) + return bool(result) + except Exception as e: + logger.error(f"update_community_metadata failed: {e}") + return False diff --git a/api/app/repositories/neo4j/cypher_queries.py b/api/app/repositories/neo4j/cypher_queries.py index 651c513f..48a5ac87 100644 --- a/api/app/repositories/neo4j/cypher_queries.py +++ b/api/app/repositories/neo4j/cypher_queries.py @@ -1058,4 +1058,147 @@ Graph_Node_query = """ 3 AS priority LIMIT $limit - """ \ No newline at end of file + """ + + +# ============================================================ +# Community 节点 & BELONGS_TO_COMMUNITY 边 +# ============================================================ + +# ─── Community 聚类相关 Cypher 模板 ─────────────────────────────────────────── + +COMMUNITY_NODE_UPSERT = """ +MERGE (c:Community {community_id: $community_id}) +SET c.end_user_id = $end_user_id, + c.member_count = $member_count, + c.updated_at = datetime() +RETURN c.community_id AS community_id +""" + +ENTITY_JOIN_COMMUNITY = """ +MATCH (e:ExtractedEntity {id: $entity_id, end_user_id: $end_user_id}) +MATCH (c:Community {community_id: $community_id, end_user_id: $end_user_id}) +MERGE (e)-[:BELONGS_TO_COMMUNITY]->(c) +SET c.updated_at = datetime() +RETURN e.id AS entity_id, c.community_id AS community_id +""" + +ENTITY_LEAVE_ALL_COMMUNITIES = """ +MATCH (e:ExtractedEntity {id: $entity_id, end_user_id: $end_user_id}) +MATCH (e)-[r:BELONGS_TO_COMMUNITY]->(:Community) +DELETE r +""" + +GET_ENTITY_NEIGHBORS = """ +MATCH (e:ExtractedEntity {id: $entity_id, end_user_id: $end_user_id}) + +// 来源一:直接关系邻居(EXTRACTED_RELATIONSHIP 边) +OPTIONAL MATCH (e)-[:EXTRACTED_RELATIONSHIP]-(nb1:ExtractedEntity {end_user_id: $end_user_id}) + +// 来源二:同 Statement 共现邻居(REFERENCES_ENTITY 边) +OPTIONAL MATCH (s:Statement)-[:REFERENCES_ENTITY]->(e) +OPTIONAL MATCH (s)-[:REFERENCES_ENTITY]->(nb2:ExtractedEntity {end_user_id: $end_user_id}) +WHERE nb2.id <> e.id + +WITH collect(DISTINCT nb1) + collect(DISTINCT nb2) AS all_neighbors +UNWIND all_neighbors AS nb +WITH nb WHERE nb IS NOT NULL +OPTIONAL MATCH (nb)-[:BELONGS_TO_COMMUNITY]->(c:Community) +RETURN DISTINCT + nb.id AS id, + nb.name AS name, + nb.name_embedding AS name_embedding, + nb.activation_value AS activation_value, + CASE WHEN c IS NOT NULL THEN c.community_id ELSE null END AS community_id +""" + +GET_ALL_ENTITIES_FOR_USER = """ +MATCH (e:ExtractedEntity {end_user_id: $end_user_id}) +OPTIONAL MATCH (e)-[:BELONGS_TO_COMMUNITY]->(c:Community) +RETURN e.id AS id, + e.name AS name, + e.name_embedding AS name_embedding, + e.activation_value AS activation_value, + CASE WHEN c IS NOT NULL THEN c.community_id ELSE null END AS community_id +""" + +GET_COMMUNITY_MEMBERS = """ +MATCH (e:ExtractedEntity {end_user_id: $end_user_id})-[:BELONGS_TO_COMMUNITY]->(c:Community {community_id: $community_id}) +RETURN e.id AS id, e.name AS name, e.entity_type AS entity_type, + e.importance_score AS importance_score, e.activation_value AS activation_value, + e.name_embedding AS name_embedding +ORDER BY coalesce(e.activation_value, 0) DESC +""" + +GET_ALL_COMMUNITY_MEMBERS_BATCH = """ +MATCH (e:ExtractedEntity {end_user_id: $end_user_id})-[:BELONGS_TO_COMMUNITY]->(c:Community) +WHERE c.community_id IN $community_ids +RETURN c.community_id AS community_id, + e.id AS id, + e.name_embedding AS name_embedding, + e.activation_value AS activation_value +""" + +CHECK_USER_HAS_COMMUNITIES = """ +MATCH (c:Community {end_user_id: $end_user_id}) +RETURN count(c) AS community_count +""" + +UPDATE_COMMUNITY_MEMBER_COUNT = """ +MATCH (e:ExtractedEntity {end_user_id: $end_user_id})-[:BELONGS_TO_COMMUNITY]->(c:Community {community_id: $community_id}) +WITH c, count(e) AS cnt +SET c.member_count = cnt +RETURN c.community_id AS community_id, cnt AS member_count +""" + +UPDATE_COMMUNITY_METADATA = """ +MATCH (c:Community {community_id: $community_id, end_user_id: $end_user_id}) +SET c.name = $name, + c.summary = $summary, + c.core_entities = $core_entities, + c.updated_at = datetime() +RETURN c.community_id AS community_id +""" + +GET_ALL_ENTITY_NEIGHBORS_BATCH = """ +// 批量拉取某用户下所有实体的邻居(用于全量聚类预加载) +MATCH (e:ExtractedEntity {end_user_id: $end_user_id}) + +// 来源一:直接关系邻居 +OPTIONAL MATCH (e)-[:EXTRACTED_RELATIONSHIP]-(nb1:ExtractedEntity {end_user_id: $end_user_id}) + +// 来源二:同 Statement 共现邻居 +OPTIONAL MATCH (s:Statement)-[:REFERENCES_ENTITY]->(e) +OPTIONAL MATCH (s)-[:REFERENCES_ENTITY]->(nb2:ExtractedEntity {end_user_id: $end_user_id}) +WHERE nb2.id <> e.id + +WITH e, collect(DISTINCT nb1) + collect(DISTINCT nb2) AS all_neighbors +UNWIND all_neighbors AS nb +WITH e, nb WHERE nb IS NOT NULL +OPTIONAL MATCH (nb)-[:BELONGS_TO_COMMUNITY]->(c:Community) +RETURN DISTINCT + e.id AS entity_id, + nb.id AS id, + nb.name AS name, + nb.name_embedding AS name_embedding, + nb.activation_value AS activation_value, + CASE WHEN c IS NOT NULL THEN c.community_id ELSE null END AS community_id +""" + +GET_COMMUNITY_GRAPH_DATA = """ +MATCH (c:Community {end_user_id: $end_user_id}) +MATCH (e:ExtractedEntity {end_user_id: $end_user_id})-[b:BELONGS_TO_COMMUNITY]->(c) +OPTIONAL MATCH (e)-[r:EXTRACTED_RELATIONSHIP]-(e2:ExtractedEntity {end_user_id: $end_user_id}) +RETURN + elementId(c) AS c_id, + properties(c) AS c_props, + elementId(e) AS e_id, + properties(e) AS e_props, + elementId(b) AS b_id, + elementId(e2) AS e2_id, + properties(e2) AS e2_props, + elementId(r) AS r_id, + type(r) AS r_type, + properties(r) AS r_props, + startNode(r) = e AS r_from_e +""" diff --git a/api/app/repositories/neo4j/graph_saver.py b/api/app/repositories/neo4j/graph_saver.py index 526d16ec..cbd2b532 100644 --- a/api/app/repositories/neo4j/graph_saver.py +++ b/api/app/repositories/neo4j/graph_saver.py @@ -1,4 +1,6 @@ -from typing import List +import asyncio +import os +from typing import List, Optional # 使用新的仓储层 from app.repositories.neo4j.neo4j_connector import Neo4jConnector @@ -155,7 +157,9 @@ async def save_dialog_and_statements_to_neo4j( entity_edges: List[EntityEntityEdge], statement_chunk_edges: List[StatementChunkEdge], statement_entity_edges: List[StatementEntityEdge], - connector: Neo4jConnector + connector: Neo4jConnector, + config_id: Optional[str] = None, + llm_model_id: Optional[str] = None, ) -> bool: """Save dialogue nodes, chunk nodes, statement nodes, entities, and all relationships to Neo4j using graph models. @@ -288,6 +292,10 @@ async def save_dialog_and_statements_to_neo4j( } logger.info("Transaction completed. Summary: %s", summary) logger.debug("Full transaction results: %r", results) + + # 写入成功后,异步触发聚类(不阻塞写入响应) + schedule_clustering_after_write(entity_nodes, config_id=config_id, llm_model_id=llm_model_id) + return True except Exception as e: @@ -295,3 +303,55 @@ async def save_dialog_and_statements_to_neo4j( print(f"Neo4j integration error: {e}") print("Continuing without database storage...") return False + + +def schedule_clustering_after_write( + entity_nodes: List, + config_id: Optional[str] = None, + llm_model_id: Optional[str] = None, +) -> None: + """ + 写入 Neo4j 成功后,调度后台聚类任务。 + + 可通过环境变量 CLUSTERING_ENABLED=false 禁用(用于基准测试对比)。 + 使用 asyncio.create_task 异步触发,不阻塞写入响应。 + """ + if not entity_nodes: + return + + clustering_enabled = os.getenv("CLUSTERING_ENABLED", "true").lower() != "false" + if not clustering_enabled: + logger.info("[Clustering] 聚类已禁用(CLUSTERING_ENABLED=false),跳过聚类触发") + return + + end_user_id = entity_nodes[0].end_user_id + new_entity_ids = [e.id for e in entity_nodes] + logger.info(f"[Clustering] 准备触发聚类,实体数: {len(new_entity_ids)}, end_user_id: {end_user_id}") + asyncio.create_task(_trigger_clustering(new_entity_ids, end_user_id, config_id=config_id, llm_model_id=llm_model_id)) + + +async def _trigger_clustering( + new_entity_ids: List[str], + end_user_id: str, + config_id: Optional[str] = None, + llm_model_id: Optional[str] = None, +) -> None: + """ + 聚类触发函数,自动判断全量初始化还是增量更新。 + """ + connector = None + try: + from app.core.memory.storage_services.clustering_engine import LabelPropagationEngine + logger.info(f"[Clustering] 开始聚类,end_user_id={end_user_id}, 实体数={len(new_entity_ids)}") + connector = Neo4jConnector() + engine = LabelPropagationEngine(connector, config_id=config_id, llm_model_id=llm_model_id) + await engine.run(end_user_id=end_user_id, new_entity_ids=new_entity_ids) + logger.info(f"[Clustering] 聚类完成,end_user_id={end_user_id}") + except Exception as e: + logger.error(f"[Clustering] 聚类触发失败: {e}", exc_info=True) + finally: + if connector: + try: + await connector.close() + except Exception: + pass diff --git a/api/app/services/user_memory_service.py b/api/app/services/user_memory_service.py index 8bacc112..d5d19e0d 100644 --- a/api/app/services/user_memory_service.py +++ b/api/app/services/user_memory_service.py @@ -1727,6 +1727,150 @@ async def analytics_graph_data( # 辅助函数 +async def analytics_community_graph_data( + db: Session, + end_user_id: str, +) -> Dict[str, Any]: + """ + 获取社区图谱数据,包含 Community 节点、ExtractedEntity 节点及其关系。 + + Returns: + 包含 nodes、edges、statistics 的字典,格式与 analytics_graph_data 一致 + """ + try: + user_uuid = uuid.UUID(end_user_id) + repo = EndUserRepository(db) + end_user = repo.get_by_id(user_uuid) + if not end_user: + return { + "nodes": [], "edges": [], + "statistics": {"total_nodes": 0, "total_edges": 0, "node_types": {}, "edge_types": {}}, + "message": "用户不存在" + } + + # 查询社区节点、实体节点、BELONGS_TO_COMMUNITY 边、实体间关系 + from app.repositories.neo4j.cypher_queries import GET_COMMUNITY_GRAPH_DATA + rows = await _neo4j_connector.execute_query(GET_COMMUNITY_GRAPH_DATA, end_user_id=end_user_id) + + nodes_map: Dict[str, dict] = {} + edges_map: Dict[str, dict] = {} + # 记录每个 Community 对应的实体 id 列表 + community_members: Dict[str, list] = {} + + for row in rows: + # Community 节点 + c_id = row["c_id"] + if c_id and c_id not in nodes_map: + raw = row["c_props"] or {} + props = {k: _clean_neo4j_value(raw.get(k)) for k in ( + "community_id", "end_user_id", "member_count", "updated_at", + "name", "summary", "core_entities", + ) if k in raw} + nodes_map[c_id] = { + "id": c_id, + "label": "Community", + "properties": props, + } + + # ExtractedEntity 节点 (e) + e_id = row["e_id"] + if e_id and e_id not in nodes_map: + raw = row["e_props"] or {} + props = {k: _clean_neo4j_value(raw.get(k)) for k in ( + "name", "end_user_id", "description", "created_at", "entity_type", + ) if k in raw} + # 注入所属社区名称(c 是 e 直接归属的社区) + c_raw = row["c_props"] or {} + props["community_name"] = _clean_neo4j_value(c_raw.get("name")) or "" + nodes_map[e_id] = { + "id": e_id, + "label": "ExtractedEntity", + "properties": props, + } + + # ExtractedEntity 节点 (e2,可选) + e2_id = row.get("e2_id") + if e2_id and e2_id not in nodes_map: + raw = row["e2_props"] or {} + props = {k: _clean_neo4j_value(raw.get(k)) for k in ( + "name", "end_user_id", "description", "created_at", "entity_type", + ) if k in raw} + # e2 的社区归属在后处理阶段通过 community_members 补充 + props["community_name"] = "" + nodes_map[e2_id] = { + "id": e2_id, + "label": "ExtractedEntity", + "properties": props, + } + + # BELONGS_TO_COMMUNITY 边 + b_id = row["b_id"] + if b_id and b_id not in edges_map: + edges_map[b_id] = { + "id": b_id, + "source": e_id, + "target": c_id, + } + # 收集社区成员 id + if c_id and e_id: + community_members.setdefault(c_id, []) + if e_id not in community_members[c_id]: + community_members[c_id].append(e_id) + + # EXTRACTED_RELATIONSHIP 边(可选) + r_id = row.get("r_id") + if r_id and r_id not in edges_map and e2_id: + r_props = {k: _clean_neo4j_value(v) for k, v in (row["r_props"] or {}).items()} + source = e_id if row.get("r_from_e") else e2_id + target = e2_id if row.get("r_from_e") else e_id + edges_map[r_id] = { + "id": r_id, + "source": source, + "target": target, + } + + nodes = list(nodes_map.values()) + edges = list(edges_map.values()) + + # 为每个 Community 节点注入 member_entity_ids,同时补全 e2 节点的 community_name + for c_id, member_ids in community_members.items(): + c_node = nodes_map.get(c_id) + if c_node: + c_node["properties"]["member_entity_ids"] = member_ids + c_name = c_node["properties"].get("name") or "" + # 补全属于该社区但 community_name 为空的实体(即 e2 节点) + for eid in member_ids: + e_node = nodes_map.get(eid) + if e_node and e_node["label"] == "ExtractedEntity": + if not e_node["properties"].get("community_name"): + e_node["properties"]["community_name"] = c_name + + node_type_counts: Dict[str, int] = {} + for n in nodes: + node_type_counts[n["label"]] = node_type_counts.get(n["label"], 0) + 1 + + return { + "nodes": nodes, + "edges": edges, + "statistics": { + "total_nodes": len(nodes), + "total_edges": len(edges), + "node_types": node_type_counts, + } + } + + except ValueError: + logger.error(f"无效的 end_user_id 格式: {end_user_id}") + return { + "nodes": [], "edges": [], + "statistics": {"total_nodes": 0, "total_edges": 0, "node_types": {}, "edge_types": {}}, + "message": "无效的用户ID格式" + } + except Exception as e: + logger.error(f"获取社区图谱数据失败: {str(e)}", exc_info=True) + raise + + async def _extract_node_properties(label: str, properties: Dict[str, Any],node_id: str) -> Dict[str, Any]: """ 根据节点类型提取需要的属性字段 diff --git a/api/app/tasks.py b/api/app/tasks.py index 5e1550bd..8ad2c467 100644 --- a/api/app/tasks.py +++ b/api/app/tasks.py @@ -2662,3 +2662,134 @@ def write_perceptual_memory( file_url, file_message, )) + + +# ============================================================================= +# 社区聚类补全任务(触发型) +# ============================================================================= + +@celery_app.task( + name="app.tasks.init_community_clustering_for_users", + bind=True, + ignore_result=False, + max_retries=0, + acks_late=False, + time_limit=7200, # 2小时硬超时 + soft_time_limit=6900, +) +def init_community_clustering_for_users(self, end_user_ids: List[str]) -> Dict[str, Any]: + """触发型任务:检查指定用户列表,对有 ExtractedEntity 但无 Community 节点的用户执行全量聚类。 + + 由 /dashboard/end_users 接口触发,已有社区节点的用户直接跳过。 + + Args: + end_user_ids: 需要检查的用户 ID 列表 + + Returns: + 包含任务执行结果的字典 + """ + start_time = time.time() + + async def _run() -> Dict[str, Any]: + from app.core.logging_config import get_logger + from app.repositories.neo4j.community_repository import CommunityRepository + from app.repositories.neo4j.neo4j_connector import Neo4jConnector + from app.core.memory.storage_services.clustering_engine.label_propagation import LabelPropagationEngine + + logger = get_logger(__name__) + logger.info(f"[CommunityCluster] 开始社区聚类补全任务,候选用户数: {len(end_user_ids)}") + + initialized = 0 + skipped = 0 + failed = 0 + + connector = Neo4jConnector() + try: + repo = CommunityRepository(connector) + + # 批量预取所有用户的配置(内置兜底:用户配置不可用时自动回退到工作空间默认配置) + user_llm_map: Dict[str, Optional[str]] = {} + try: + with get_db_context() as db: + from app.services.memory_agent_service import get_end_users_connected_configs_batch + from app.services.memory_config_service import MemoryConfigService + batch_configs = get_end_users_connected_configs_batch(end_user_ids, db) + for uid, cfg_info in batch_configs.items(): + config_id = cfg_info.get("memory_config_id") + if config_id: + try: + cfg = MemoryConfigService(db).load_memory_config(config_id=config_id) + user_llm_map[uid] = str(cfg.llm_model_id) if cfg.llm_model_id else None + except Exception as e: + logger.warning(f"[CommunityCluster] 用户 {uid} 加载 LLM 配置失败,将使用 None: {e}") + user_llm_map[uid] = None + else: + user_llm_map[uid] = None + except Exception as e: + logger.warning(f"[CommunityCluster] 批量获取 LLM 配置失败,所有用户将使用 None: {e}") + + for end_user_id in end_user_ids: + try: + # 已有社区节点则跳过 + has_communities = await repo.has_communities(end_user_id) + if has_communities: + skipped += 1 + logger.debug(f"[CommunityCluster] 用户 {end_user_id} 已有社区节点,跳过") + continue + + # 检查是否有 ExtractedEntity 节点 + entities = await repo.get_all_entities(end_user_id) + if not entities: + skipped += 1 + logger.debug(f"[CommunityCluster] 用户 {end_user_id} 无实体节点,跳过") + continue + + # 每个用户使用自己的 llm_model_id + llm_model_id = user_llm_map.get(end_user_id) + engine = LabelPropagationEngine( + connector=connector, + llm_model_id=llm_model_id, + ) + + logger.info(f"[CommunityCluster] 用户 {end_user_id} 有 {len(entities)} 个实体,开始全量聚类,llm_model_id={llm_model_id}") + await engine.full_clustering(end_user_id) + initialized += 1 + logger.info(f"[CommunityCluster] 用户 {end_user_id} 聚类完成") + + except Exception as e: + failed += 1 + logger.error(f"[CommunityCluster] 用户 {end_user_id} 聚类失败: {e}") + + finally: + await connector.close() + + logger.info( + f"[CommunityCluster] 任务完成: 初始化={initialized}, 跳过={skipped}, 失败={failed}" + ) + return { + "status": "SUCCESS", + "initialized": initialized, + "skipped": skipped, + "failed": failed, + } + + try: + try: + import nest_asyncio + nest_asyncio.apply() + except ImportError: + pass + + loop = set_asyncio_event_loop() + result = loop.run_until_complete(_run()) + result["elapsed_time"] = time.time() - start_time + result["task_id"] = self.request.id + return result + + except Exception as e: + return { + "status": "FAILURE", + "error": str(e), + "elapsed_time": time.time() - start_time, + "task_id": self.request.id, + }