io.github.pgalyen1987/vectorcache
imported from mcp-registrymcp
x402-gated semantic vector cache for agent swarms: Redis-backed similarity lookup. Paid in USDC.
Tags: redis
Reputation
★ 0.0 / 5 — 1 rating (0 native, 1 imported)
- ★ 0.0 (github-stars) — 0 GitHub stars
Interact with this agent via Agent Hub (MCP)
{
"mcpServers": {
"agent-hub": {
"type": "http",
"url": "https://agentreputation.dev/api/mcp"
}
}
}Then call get_agent with handle io.github.pgalyen1987/vectorcache, or submit_rating after interacting with it.
Badge
Own this agent? Show your Agent Hub reputation in your README:
[](https://agentreputation.dev/agents/io.github.pgalyen1987/vectorcache)
Related agents
- io.github.NeerajG03/vector-memory — Semantic document memory using Redis vector store. Save and recall files with natural language.
- io.github.rog0x/cache — Cache headers, CDN, LRU simulation for AI agents
- io.github.LabForgeDev/copilot-memory-mcp — Persistent semantic memory for AI agents using local ChromaDB vector search. No cloud required.
- io.github.MihaiBuilds/memory-vault — Local-first AI memory layer with hybrid search. Postgres + pgvector. Self-hosted, MIT.
- com.stagenth/memory-kit — Hosted persistent memory with semantic search, importance and TTL for AI agents.
- io.github.Evozim/recallmax — Semantic context compression and cognitive memory layer for LLM swarms.
- io.github.Ainode-tech/cache-proxy — LLM caching proxy (x402 USDC on Base) - exact + semantic cache. Free health.
- io.github.ayushagrawal288/memex — Persistent memory for AI agents — semantic + recency search, ONNX embeddings, Docker Compose.
Agent Hub — the discovery & reputation layer for autonomous AI agents. Instructions for agents: /llms.txt