MCP Iceberg Catalog
An MCP server for interacting with Apache Iceberg catalogs and data lakes.
MCP Iceberg Catalog
A MCP (Model Context Protocol) server implementation for interacting with Apache Iceberg. This server provides a SQL interface for querying and managing Iceberg tables through Claude desktop.
Claude Desktop as your Iceberg Data Lake Catalog

How to Install in Claude Desktop
Installing via Smithery
To install MCP Iceberg Catalog for Claude Desktop automatically via Smithery:
npx -y @smithery/cli install @ahodroj/mcp-iceberg-service --client claude
-
Prerequisites
- Python 3.10 or higher
- UV package installer (recommended) or pip
- Access to an Iceberg REST catalog and S3-compatible storage
-
How to install in Claude Desktop Add the following configuration to
claude_desktop_config.json:
{
"mcpServers": {
"iceberg": {
"command": "uv",
"args": [
"--directory",
"PATH_TO_/mcp-iceberg-service",
"run",
"mcp-server-iceberg"
],
"env": {
"ICEBERG_CATALOG_URI" : "http://localhost:8181",
"ICEBERG_WAREHOUSE" : "YOUR ICEBERG WAREHOUSE NAME",
"S3_ENDPOINT" : "OPTIONAL IF USING S3",
"AWS_ACCESS_KEY_ID" : "YOUR S3 ACCESS KEY",
"AWS_SECRET_ACCESS_KEY" : "YOUR S3 SECRET KEY"
}
}
}
}
Design
Architecture
The MCP server is built on three main components:
-
MCP Protocol Handler
- Implements the Model Context Protocol for communication with Claude
- Handles request/response cycles through stdio
- Manages server lifecycle and initialization
-
Query Processor
- Parses SQL queries using
sqlparse - Supports operations:
- LIST TABLES
- DESCRIBE TABLE
- SELECT
- INSERT
- Parses SQL queries using
-
Iceberg Integration
- Uses
pyicebergfor table operations - Integrates with PyArrow for efficient data handling
- Manages catalog connections and table operations
- Uses
PyIceberg Integration
The server utilizes PyIceberg in several ways:
-
Catalog Management
- Connects to REST catalogs
- Manages table metadata
- Handles namespace operations
-
Data Operations
- Converts between PyIceberg and PyArrow types
- Handles data insertion through PyArrow tables
- Manages table schemas and field types
-
Query Execution
- Translates SQL to PyIceberg operations
- Handles data scanning and filtering
- Manages result set conversion
Further Implementation Needed
-
Query Operations
- Implement UPDATE operations
- Add DELETE support
- Support for CREATE TABLE with schema definition
- Add ALTER TABLE operations
- Implement table partitioning support
-
Data Types
- Support for complex types (arrays, maps, structs)
- Add timestamp with timezone handling
- Support for decimal types
- Add nested field support
-
Performance Improvements
- Implement batch inserts
- Add query optimization
- Support for parallel scans
- Add caching layer for frequently accessed data
-
Security Features
- Add authentication mechanisms
- Implement role-based access control
- Add row-level security
- Support for encrypted connections
-
Monitoring and Management
- Add metrics collection
- Implement query logging
- Add performance monitoring
- Support for table maintenance operations
-
Error Handling
- Improve error messages
- Add retry mechanisms for transient failures
- Implement transaction support
- Add data validation
Server Terkait
MCP Vertica
A server for managing and querying Vertica databases, including connection, schema, and security management.
MCP Memory Dashboard
A desktop application for managing and interacting with the MCP Memory Service, a semantic memory system built on the Model Context Protocol.
楼宇大数据服务
Provides comprehensive building and office address information queries, including enterprise office address search and building information queries.
ArangoDB
A server for interacting with ArangoDB, a native multi-model database system.
SVM-MCP
Interact with SOON and other SVM-based blockchains. Check balances, fetch recent transactions, and view token holdings.
MotherDuck
Query and analyze data with MotherDuck and local DuckDB
A-Share MCP
Provides A-share stock market data, including basic info, historical K-lines, financial indicators, and macroeconomic data using Baostock.
CRM MCP Server
A production-ready MCP server for Customer Relationship Management (CRM) functionality, built with TypeScript and SQLite.
Elastic MCP
Interact with an Elasticsearch cluster via the Model Context Protocol (MCP), enabling clients to query, manage, and analyze data.
MemoryMesh
A knowledge graph server for AI models, focusing on text-based RPGs and interactive storytelling.