Snowflake MCP Server
A read-only server for interacting with Snowflake databases, allowing SELECT queries and access to schema context.
Snowflake MCP Server
Slightly altered from https://github.com/isaacwasserman/mcp-snowflake-server
Overview
A Model Context Protocol (MCP) server implementation that provides database interaction with Snowflake. This server enables running SQL queries via tools and exposes data insights and schema context as resources. Does not include the ability to execute write operations, and includes a system prompt.
Components
Resources
-
memo://insights
A continuously updated memo aggregating discovered data insights.
Updated automatically when new insights are appended via theappend_insighttool. -
context://table/{table_name}
(If prefetch enabled) Per-table schema summaries, including columns and comments, exposed as individual resources.
Tools
The server exposes the following tools:
Query Tools
read_query
ExecuteSELECTqueries to read data from the database.
Input:query(string): TheSELECTSQL query to execute
Returns: Query results as array of objects
Schema Tools
-
list_databases
List all databases in the Snowflake instance.
Returns: Array of database names -
list_schemas
List all schemas within a specific database.
Input:database(string): Name of the database
Returns: Array of schema names
-
list_tables
List all tables within a specific database and schema.
Input:database(string): Name of the databaseschema(string): Name of the schema
Returns: Array of table metadata
-
describe_table
View column information for a specific table.
Input:table_name(string): Fully qualified table name (database.schema.table)
Returns: Array of column definitions with names, types, nullability, defaults, and comments
Analysis Tools
append_insight
Add new data insights to the memo resource.
Input:insight(string): Data insight discovered from analysis
Returns: Confirmation of insight addition
Effect: Triggers update ofmemo://insightsresource
Usage with Claude Desktop
Installing via UVX
"mcpServers": {
"snowflake_pip": {
"command": "uvx",
"args": [
"--python=3.12", // Optional: specify Python version <=3.12
"mcp_snowflake_server",
"--account", "your_account",
"--warehouse", "your_warehouse",
"--user", "your_user",
"--password", "your_password",
"--role", "your_role",
"--database", "your_database",
"--schema", "your_schema"
// Optionally: "--log_dir", "/absolute/path/to/logs"
// Optionally: "--log_level", "DEBUG"/"INFO"/"WARNING"/"ERROR"/"CRITICAL"
// Optionally: "--exclude_tools", "{tool_name}", ["{other_tool_name}"]
]
}
}
Installing Locally
-
Install Claude AI Desktop App
-
Install
uv:
curl -LsSf https://astral.sh/uv/install.sh | sh
- Create a
.envfile with your Snowflake credentials:
SNOWFLAKE_USER="xxx@your_email.com"
SNOWFLAKE_ACCOUNT="xxx"
SNOWFLAKE_ROLE="xxx"
SNOWFLAKE_DATABASE="xxx"
SNOWFLAKE_SCHEMA="xxx"
SNOWFLAKE_WAREHOUSE="xxx"
SNOWFLAKE_PASSWORD="xxx"
# Alternatively, use external browser authentication:
# SNOWFLAKE_AUTHENTICATOR="externalbrowser"
-
[Optional] Modify
runtime_config.jsonto set exclusion patterns for databases, schemas, or tables. -
Test locally:
uv --directory /absolute/path/to/mcp_snowflake_server run mcp_snowflake_server
- Add the server to your
claude_desktop_config.json:
"mcpServers": {
"snowflake_local": {
"command": "/absolute/path/to/uv",
"args": [
"--python=3.12", // Optional
"--directory", "/absolute/path/to/mcp_snowflake_server",
"run", "mcp_snowflake_server"
// Optionally: "--log_dir", "/absolute/path/to/logs"
// Optionally: "--log_level", "DEBUG"/"INFO"/"WARNING"/"ERROR"/"CRITICAL"
// Optionally: "--exclude_tools", "{tool_name}", ["{other_tool_name}"]
]
}
}
Notes
- The server supports filtering out specific databases, schemas, or tables via exclusion patterns.
- The server exposes additional per-table context resources if prefetching is enabled.
- The
append_insighttool updates thememo://insightsresource dynamically.
License
MIT
Serveurs connexes
CPersona
Persistent AI memory server with 3-layer hybrid search, confidence scoring, and 16 tools. Zero LLM dependency.
Elasticsearch/OpenSearch
An MCP Server for interacting with Elasticsearch and OpenSearch clusters.
Elasticsearch
Connect to and interact with an Elasticsearch cluster directly from any MCP client using environment variables for configuration.
Multi Database MCP Server
An MCP server that provides AI assistants with structured access to multiple databases simultaneously.
MCP Data Visualization Server
Generate interactive data visualizations from natural language queries on a DuckDB database.
Astro MCP
A modular server providing unified access to multiple astronomical datasets, including astroquery services and DESI data sources.
Quanti: connectors MCP
Unify your marketing team around one AI-powered source of truth. Quanti connects your marketing data to your warehouse. Execute SQL queries on BigQuery, explore table schemas, discover pre-built use cases, and analyze performance across Google Analytics, Google Ads, Meta Ads, TikTok, affiliate networks and more. all through natural conversation
Apache AGE MCP Server
A server for Apache AGE, a graph database extension for PostgreSQL.
MongoDB Movie Database FastMCP Tools
A server for querying and analyzing the MongoDB sample_mflix movie database.
Bankless Onchain
Interact with blockchain data using the Bankless API.