mit einem Klick
memory-search
SOTA semantic search — hybrid (sparse+dense), Graph RAG multi-hop, MMR diversity reranking, recency weighting
Menü
SOTA semantic search — hybrid (sparse+dense), Graph RAG multi-hop, MMR diversity reranking, recency weighting
Spawn nested sub-agents (agents that spawn sub-agents, up to depth=5) via Claude Code's native Task tool — for context-managed deep delegation
Author a workflow — either an MCP workflow template (persisted, lifecycle) or a native .claude/workflows/*.js orchestration script (agent/parallel/pipeline fan-out)
Run a workflow — drive an MCP workflow lifecycle (execute/pause/resume/cancel) or invoke + resume a native .claude/workflows/*.js orchestration via the Workflow tool
Side-by-side comparison of ruflo vs HAL vs other GAIA harnesses — capability gaps, design decisions, and improvement roadmap
Diagnose why a GAIA question failed — extract trace, classify failure mode, and propose a fix
Walk through a complete GAIA benchmark→submit flow — from key resolution through HAL-compatible package generation
| name | memory-search |
| description | SOTA semantic search — hybrid (sparse+dense), Graph RAG multi-hop, MMR diversity reranking, recency weighting |
| allowed-tools | Bash Read mcp__claude-flow__memory_search mcp__claude-flow__memory_store mcp__claude-flow__memory_list mcp__claude-flow__memory_retrieve mcp__claude-flow__memory_search_unified mcp__claude-flow__agentdb_pattern-search mcp__claude-flow__agentdb_context-synthesize |
| argument-hint | <query> [--hybrid] [--graph-rag] [--namespace NAME] |
State-of-the-art semantic search across Ruflo memory with multiple retrieval strategies.
Choose based on query type:
Parse query and flags — extract search text and strategy flags from arguments
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 })
Apply MMR reranking — for diverse results, filter near-duplicates (cosine > 0.92) while maximizing relevance
Apply recency weighting — boost recent entries with exponential decay (0.95/day)
Synthesize context (for complex queries):
mcp__claude-flow__agentdb_context-synthesize({ query: "QUERY", sources: ["patterns", "tasks", "solutions"] })
Present results — ranked by composite score (relevance * diversity * recency), with source namespace attribution
| 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 |