技能 人工智能 高级语义记忆检索系统

高级语义记忆检索系统

v20260707
memory-search
提供先进的语义记忆检索功能,支持多种检索模式,如混合(稀疏+密集)搜索和图谱RAG(Graph RAG)进行多跳推理。系统集成了MMR去重、时间衰减加权等高级机制,能根据查询类型和知识命名空间,提供高度精准、上下文丰富的最佳结果。
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概览

Memory Search (SOTA)

State-of-the-art semantic search across Ruflo memory with multiple retrieval strategies.

Strategy Selection

Choose based on query type:

  • Default (dense): fast single-hop semantic match
  • --hybrid: sparse + dense with RRF fusion (20-49% better for keyword+semantic queries)
  • --graph-rag: multi-hop knowledge retrieval (30-60% better for reasoning queries)

Steps

  1. Parse query and flags — extract search text and strategy flags from arguments

  2. Select retrieval strategy:

    Dense search (default):

    npx @claude-flow/cli@latest memory search --query "QUERY" --namespace NAMESPACE --limit 10
    

    Or via MCP: mcp__claude-flow__memory_search({ query: "QUERY", namespace: "NAMESPACE", limit: 10 })

    Hybrid search (when --hybrid or query has specific keywords):

    npx ruvector search "QUERY" --hybrid --limit 10
    

    Graph RAG (when --graph-rag or multi-hop reasoning needed):

    npx ruvector search "QUERY" --graph-rag --limit 10
    

    Smart retrieval (when --smart or complex recall needed):

    npx @claude-flow/cli@latest memory search --query "QUERY" --smart --limit 10
    

    Or via MCP: mcp__claude-flow__memory_search({ query: "QUERY", smart: true, limit: 10 })

    Applies 5-phase pipeline: query expansion, RRF fusion, recency boost, MMR diversity, session round-robin. Best for: multi-session recall, temporal queries, diverse result sets.

    Unified cross-namespace: mcp__claude-flow__memory_search_unified({ query: "QUERY", limit: 10 })

  3. Apply MMR reranking — for diverse results, filter near-duplicates (cosine > 0.92) while maximizing relevance

  4. Apply recency weighting — boost recent entries with exponential decay (0.95/day)

  5. Synthesize context (for complex queries): mcp__claude-flow__agentdb_context-synthesize({ query: "QUERY", sources: ["patterns", "tasks", "solutions"] })

  6. Present results — ranked by composite score (relevance * diversity * recency), with source namespace attribution

Namespace Guide

Namespace Best For
patterns "How did we handle X?"
tasks "What was the context for Y?"
solutions "How did we fix Z?"
feedback "What did the user prefer?"
security "Known vulnerabilities in..."
(omit) Search all namespaces
信息
Category 人工智能
Name memory-search
版本 v20260707
大小 2.85KB
更新时间 2026-07-09
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