Support for AI-assisted workflows
CockroachDB enables your AI development tools to work directly with CockroachDB and CockroachDB Cloud. CockroachDB provides the following functionality to support AI-assisted deployment and maintenance of clusters, and AI-assisted development of applications:- Cluster-level read and write access via the .
- Operational workflows encoded as .
- Command-line automation with the , designed to be compatible with AI agents.
- Access to the Cockroach Labs public documentation via the .
CockroachDB Cloud MCP server
The is a managed endpoint in CockroachDB Cloud that exposes a set of tools for inspecting and querying your clusters from your AI tools. These tools let your AI assistants list and , describe and , inspect cluster health and running queries, and run read-only SQL and statements. When explicitly enabled, they can also , , and . This endpoint allows you to manage and modify a CockroachDB Cloud cluster using natural language prompts. For example, you could use the following prompt to instruct your AI tool to interface with the cluster:Agent Skills for CockroachDB
are small, structured capabilities that encode CockroachDB operational expertise in a machine-executable format. These skills live in the public cockroachdb-skills repository and follow the Agent Skills Specification, with defined inputs, outputs, and safety guardrails. Each skill focuses on a specific task, such as auditing user privileges, triaging live SQL activity, validating production readiness, or checking backup and disaster recovery posture. Skills are organized into domains like onboarding and migrations, application development, performance and scaling, operations and lifecycle, resilience and disaster recovery, observability and diagnostics, security and governance, integrations, and cost management. Your AI tools can consume these skills directly, so you can reuse the same operational workflows across different toolchains.ccloud command-line interface
The is the command-line interface for CockroachDB Cloud. You can use the ccloud CLI to create clusters, manage networking (for example, IP allowlists), create SQL users, retrieve connection information, and more.
Because ccloud is text-based and follows a stable command structure, it is well-suited for AI tools and automations. An AI assistant can generate or run ccloud commands to set up clusters, rotate credentials, or retrieve connection URLs, while you keep access mediated through the CLI and existing Cloud authentication.
CockroachDB Docs MCP server
The exposes the published CockroachDB documentation to your MCP-compatible tools over HTTP. After you add the server configuration to your client, your AI assistant can answer questions using the official documentation without leaving your editor. For example, you could use your AI tool to ask the following:CockroachDB as a data store for AI applications
CockroachDB provides the database features needed to store and query AI-related data, including vector embeddings and agent state, with the same transactional guarantees as your other workloads.Vector search and RAG
AI applications often represent text, images, and other content as vector embeddings. These are numerical representations that capture semantic meaning. To find relevant information, AI applications need to search for vectors that are similar to a query vector, typically using distance metrics. This similarity search is fundamental to retrieval-augmented generation (RAG), semantic search, and recommendation systems. CockroachDB has a for storing fixed-length floating-point embeddings and supports similarity operators such as L2 distance (<->), inner product (<#>), and cosine distance (<=>). You can index vectors using and combine them with other indexed columns.
You can store vector embeddings, relational data, and metadata in the same table and query them together. For example:
AI agent state and workflow coordination
AI agents that perform autonomous operations require durable storage for execution state, workflow metadata, and operational history. These agents must track state transitions across multi-step processes, coordinate activities between concurrent executions, and ensure that operations can be safely retried or resumed after failures. CockroachDB’s provides a foundation for storing agent state, execution history, and coordination metadata. ensures that state transitions occur correctly even when multiple agents or processes attempt concurrent updates. The database’s design allows agents to continue operating during node or region failures without requiring external coordination services.Scale, consistency, and governance
AI applications typically generate high data volumes, serve globally distributed users, and require both transactional correctness and operational durability. Conversation histories, vector embeddings, feature tables, and agent state accumulate quickly and are accessed across regions. These characteristics make AI workloads well-suited to CockroachDB’s core design:- CockroachDB scales horizontally by adding nodes to increase capacity.
- Data is automatically replicated and rebalanced across the cluster, so node failures do not require application-level failover.
- place data closer to users and can enforce or residency requirements while maintaining strong consistency.
See also
- Tutorial: Augment your AI use case with RAG on CockroachDB
- Real-Time Indexing for Billions of Vectors
- How CockroachDB’s AI Assistance Boosts Developer Productivity
- Agent Development with CockroachDB using the LangChain Framework
- CockroachDB Plugin for Claude Code
- CockroachDB Plugin for Cursor
- Zero to AI Hero
- Fraud Detection via Agentic AI
- Vector Deep Dive

