Vertex AI Search MCP Server
Search across your enterprise data using Google's semantic search and generative AI grounding.
Vinkius AI Gateway soporta streamable HTTP y SSE.
Funciona con todos los agentes de IA que ya usas
…y cualquier cliente compatible con MCP


















Vertex AI Search MCP Server: mira tu AI Agent en acción
Capacidades integradas (7)
get_datastore_details
Retrieves configuration and metadata for a specific data store
get_grounded_answer
Returns a natural language response based on your private data. Retrieves an AI-generated answer grounded in the documents of a data store
get_recommendations
Provide a data store ID and user event data as a JSON object. Retrieves personalized recommendations based on user events
list_data_stores
Lists all data stores in the Vertex AI Search collection
list_datastore_documents
Provide data store and branch IDs. Lists all indexed documents within a specific data store branch
list_search_engines
Lists all search engines configured in the collection
search_documents
Provide a data store ID and the query text. Performs a search query across documents in a specific data store
Lo que este conector desbloquea
Connect your Vertex AI Search account to any AI agent and harness the power of Google's semantic search technology on your own enterprise data through natural conversation.
What you can do
- Semantic Search — Perform high-quality semantic searches across documents with AI-powered relevance and accuracy
- Grounded Answers — Get direct, natural language answers grounded in your private document collection for reliable Q&A
- Data Stores — List and browse your enterprise data stores and search engines to manage your searchable datasets
- Document Discovery — Browse and list indexed documents within your data store branches directly from your agent
- Personalized Recommendations — Retrieve intelligent recommendations based on user interaction events and patterns
- Search Engines — View and manage high-level search applications configured for specific business use cases
How it works
1. Subscribe to this server
2. Enter your Google Cloud Project ID, Location, and Access Token
3. Start querying your enterprise data through Claude, Cursor, or any MCP-compatible client
No more manual digging through complex documentation systems. Your AI agent becomes your enterprise knowledge expert.
Who is this for?
- Enterprise Developers — build grounded AI applications using internal documentation and knowledge bases without manual indexing
- Knowledge Managers — quickly surface relevant information from massive document repositories through simple conversation
- Data Scientists — rapidly test and refine search relevance and generative grounding configurations
- Product Teams — implement personalized recommendations and AI-powered search features with minimal friction
Preguntas frecuentes
Dale a tus agentes de IA el poder de Vertex AI Search
Accede a Vertex AI 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

DataRobot
6 herramientasManage AutoML via DataRobot — monitor projects and models, track deployments, and audit ML datasets directly from any AI agent.

LangGraph Cloud (Stateful AI Agents)
10 herramientasOrchestrate stateful AI agents via LangGraph Cloud — manage assistants, monitor conversation threads, and handle human-in-the-loop overrides.

Vectara
7 herramientasEmpower your agent with Vectara's RAG capabilities. Search corpora natively, execute grounded chats, and manage indexed datasets easily.
También podría gustarte

OfficeRnD Flex
10 herramientasManage flexible workspaces via OfficeRnD — track members, bookings, and billing directly from your AI agent.

Cypress Cloud
10 herramientasAudit E2E testing via Cypress — monitor test runs, inspect spec instances, track flaky tests, and generate enterprise reports directly from any AI agent.

MLflow (ML Lifecycle Management)
6 herramientasManage ML lifecycle via MLflow — track training runs, monitor metrics, and audit the model registry.
