Typesense Vector Search MCP Server
Automate vector similarity searches via Typesense — index documents, manage collections, and execute semantic queries directly from your AI agent.
Vinkius AI Gateway soporta streamable HTTP y SSE.

Funciona con todos los agentes de IA que ya usas
…y cualquier cliente compatible con MCP


















Typesense Vector Search MCP Server: mira tu AI Agent en acción
Capacidades integradas (6)
create_collection
Provide the schema details as a JSON object. Creates a new search collection with a specific schema
delete_document
This action is irreversible. Permanently removes a document from a collection by its ID
get_collection_details
Retrieves schema and metadata for a specific collection
index_document
Provide the collection name and the document data as a JSON object. Adds or updates a document in a search collection
list_vector_collections
Lists all collections in the Typesense instance
search_vectors
Provide the collection name, a text query, and a vector_query string (e.g., "vec:(0.1, 0.2, ...)"). Performs a vector similarity search combined with optional text filtering
Lo que este conector desbloquea
Connect your Typesense Vector Search environment to any AI agent and take full autonomous control over vector collections, indexing processes, and semantic querying through daily conversation.
What you can do
- Vector Semantic Search — Issue combined text-filtering alongside vector similarity (
vec) queries natively through chat - Collection Provisioning — Instantly create new semantic schema datasets holding complex vector embedding structures organically
- Document Indexing — Let your AI insert or update JSON payloads into your database, bypassing manual code-level REST integrations
- Schema & Records Insights — Retrieve absolute schema geometries mapping collections to ensure developers map fields correctly
How it works
1. Subscribe to this connected MCP server
2. Provide your active Typesense Host URL alongside an Admin API Key
3. Start fetching vector similarities natively across Claude, Cursor, or your specific MCP workspace
No digging into CURL terminal payloads or writing Python scripts for basic document mutations. Your agent performs all indexation logic flawlessly.
Who is this for?
- AI Application Builders — prompt the agent to create semantic collections supporting
float[]logic seamlessly - Data Engineers — let the AI ingest missing RAG reference documents manually into a running collection
- Backend Devs — perform sanity checks and text-filtered semantic searches inspecting exact relevance scores
Preguntas frecuentes
Dale a tus agentes de IA el poder de Typesense Vector Search
Accede a Typesense Vector Search y a más de 2.000 servidores MCP — listos para que tus agentes los usen, ahora mismo. Sin código pegamento. Sin integraciones personalizadas. Solo conecta el Vinkius AI Gateway y deja que tus agentes trabajen.
Más en esta categoría

Orkes Conductor
6 herramientasOrchestrate microservice workflows via Orkes Conductor — list definitions, track running executions, search workflow history, and inspect task states from any AI agent.

BrowserStack
10 herramientasAutomate testing via BrowserStack — manage projects, track test builds, fetch session logs, and monitor execution pipelines from any AI agent.
Upstash Redis
7 herramientasEquip your AI to directly query, manage, and manipulate key-value data structures inside your serverless Upstash Redis databases.
También podría gustarte

Directus
10 herramientasManage any SQL database via Directus — handle collection items, audit schemas and fields, manage users, and track media storage directly from any AI agent.

MakePlans
8 herramientasManage appointments, services, and customers via the MakePlans REST API.

Bitly
10 herramientasShorten and manage links via Bitly — track clicks, analyze metrics, and manage groups directly from any AI agent.
