بنقرة واحدة
mongodb-query
Query MongoDB notes store for memory analysis and statistics.
التثبيت باستخدام Codex أو Claude انسخ هذا Prompt والصقه في Codex أو Claude أو مساعد آخر ليراجع صفحة Skill ويثبّتها لك.
القائمة
Query MongoDB notes store for memory analysis and statistics.
التثبيت باستخدام Codex أو Claude انسخ هذا Prompt والصقه في Codex أو Claude أو مساعد آخر ليراجع صفحة Skill ويثبّتها لك.
استنادا إلى تصنيف SOC المهني
Build and deploy the realtime-api Docker container with full verification that deployed code matches local source.
Speak text aloud using the Magpie TTS container in the realtime-api Docker stack. Zero external dependencies — just curl + aplay.
Run TTS round-trip tests — pure-logic unit tests and optional integration tests against live TTS/STT services.
Unified memory management for notes, knowledge graph, RAG search, and file analysis. Use when working with: (1) Core memory — protected identity, projects, relationships, and system facts that should never be forgotten, (2) Working notes — per-session ephemeral notes organized by section, (3) MongoDB RAG — vector-search-enabled notes with importance scoring, decay, deduplication, and archival, (4) Neo4j knowledge graph — entities, relationships, merge duplicates, reinforce mentions, Cypher queries, (5) File analysis — deep file reading that extracts knowledge into all memory layers, (6) Service initialization — health-check, start/stop MongoDB, Neo4j, TEI embeddings via docker-compose with partial setup support.
Query Neo4j knowledge graph for entities, relationships, and graph analysis.
Calls qq agent from cli.
| name | mongodb-query |
| description | Query MongoDB notes store for memory analysis and statistics. |
| triggers | ["mongodb","mongo","notes store","memory storage","notes query"] |
Query the MongoDB notes store to investigate memory contents, embeddings, and note statistics.
mongodb://localhost:27017 (or MONGODB_URI env var)qq_memorynotesfrom qq.memory.mongo_store import MongoNotesStore
# Initialize store
store = MongoNotesStore()
# Get a specific note
note = store.get_note("note_id_here")
# Get recent notes
recent = store.get_recent_notes(limit=10)
# Get notes by importance range
important = store.get_by_importance_range(min_importance=0.7, max_importance=1.0)
# Get stale notes (not accessed recently)
stale = store.get_stale_notes(days_threshold=30)
from pymongo import MongoClient
client = MongoClient("mongodb://localhost:27017")
db = client["qq_memory"]
notes = db["notes"]
# Count all notes
total = notes.count_documents({})
# Find all notes
all_notes = list(notes.find({}, {"content": 1, "section": 1, "importance": 1}))
# Count by section
pipeline = [
{"$group": {"_id": "$section", "count": {"$sum": 1}}},
{"$sort": {"count": -1}}
]
by_section = list(notes.aggregate(pipeline))
# Find notes without embeddings
no_embedding = notes.count_documents({"embedding": None})
# Sample notes
sample = list(notes.find().limit(10))
# Use mongosh directly
docker exec -it qq-mongodb-1 mongosh qq_memory --eval "db.notes.countDocuments({})"
# Get collection stats
docker exec -it qq-mongodb-1 mongosh qq_memory --eval "db.notes.stats()"
Each note document contains:
note_id: Unique identifiercontent: Note textembedding: Vector embedding (list of floats)section: Category (e.g., "Key Topics", "Preferences")metadata: Additional key-value pairsimportance: Score 0.0-1.0 (default 0.5)decay_rate: How fast importance decays (default 0.01)access_count: Number of times accessedlast_accessed: Timestamp of last accesscreated_at: Creation timestampupdated_at: Last update timestamp