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The Model Context Protocol (MCP) is an open standard developed by Anthropic for connecting AI assistants to external data sources. It has been adopted by major AI platforms including OpenAI, Google DeepMind, Microsoft, and thousands of developers. MCP provides a standardized way for AI assistants to access real-world data and tools, eliminating the need for custom integrations. This means you configure the server once and it works across Kiro, Cursor, VS Code, Claude Desktop, and other MCP-compatible tools without building separate plugins for each.
Yes, you must have at least one Amazon Bedrock Knowledge Base already set up and configured in your AWS account. The MCP server connects to existing knowledge bases rather than creating new ones. Your knowledge base must be tagged with the key 'mcp-multirag-kb' set to a value of 'true' for the server to discover and access it. You can also use the KB_INCLUSION_TAG_KEY environment variable to specify a custom tag key for filtering which knowledge bases are exposed to the server.
Installation uses Python's uv package manager. First install uv from Astral, then install Python 3.10 via 'uv python install 3.10'. Configure the server in your AI assistant's MCP settings file by pointing to the 'awslabs.bedrock-kb-retrieval-mcp-server@latest' package via uvx. You'll need to set environment variables for AWS_PROFILE, AWS_REGION, and optionally BEDROCK_KB_RERANKING_ENABLED. Docker-based installation is also supported for containerized environments, though you'll need to manage AWS credential refresh on the host.
The MCP server software is completely free and open source. However, you will incur AWS service costs including Amazon Bedrock Knowledge Base query charges, vector database costs (OpenSearch Serverless, etc.), S3 storage costs for your data sources, and optional reranking model inference costs when that feature is enabled. Costs scale with usage volume, so light development use may be minimal while heavy production querying across large knowledge bases will increase proportionally.
Reranking uses Amazon Bedrock's foundation models to re-score and reorder retrieval results by relevance to your query, improving the quality of information surfaced to your AI assistant. It is disabled by default (BEDROCK_KB_RERANKING_ENABLED=false) because it requires additional IAM permissions for bedrock:Rerank and bedrock:InvokeModel actions, model access enablement in your region, and incurs extra inference costs. Enable it when result quality is critical—such as querying complex technical documentation—and disable it for cost-sensitive or latency-sensitive use cases. Individual API calls can override the global setting.
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Integration information last verified March 2026