{"servers":[{"server":{"$schema":"https://static.modelcontextprotocol.io/schemas/2025-12-11/server.schema.json","name":"io.github.n24q02m/mnemo-mcp","description":"Persistent AI memory with hybrid search (FTS5 + semantic) and cross-machine sync.","repository":{"url":"https://github.com/n24q02m/mnemo-mcp.git","source":"github"},"version":"2.5.0","packages":[{"registryType":"pypi","identifier":"mnemo-mcp","version":"2.5.0","runtimeHint":"uvx","transport":{"type":"stdio"},"environmentVariables":[{"description":"Provider API keys (format: PROVIDER_API_KEY:key,...). Select models per task with EMBEDDING_MODELS / RERANK_MODELS / LLM_MODELS (CSV provider/model, order = litellm fallback); provider is inferred from the model prefix. Empty embedding/rerank chain falls back to the built-in local Qwen3 model.","isSecret":true,"name":"API_KEYS"}]},{"registryType":"oci","identifier":"docker.io/n24q02m/mnemo-mcp:latest","runtimeHint":"docker","transport":{"type":"stdio"},"environmentVariables":[{"description":"Provider API keys (format: PROVIDER_API_KEY:key,...). Select models per task with EMBEDDING_MODELS / RERANK_MODELS / LLM_MODELS (CSV provider/model, order = litellm fallback); provider is inferred from the model prefix. Empty embedding/rerank chain falls back to the built-in local Qwen3 model.","isSecret":true,"name":"API_KEYS"}]}]},"_meta":{"io.modelcontextprotocol.registry/official":{"status":"active","statusChangedAt":"2026-07-05T13:19:09.021162Z","publishedAt":"2026-07-05T13:19:09.021162Z","updatedAt":"2026-07-05T13:19:09.021162Z","isLatest":true}}}],"metadata":{"count":1}}
