Teradata MCP Server
A server providing tools for querying and analyzing Teradata databases, including database management, data quality assessment, and SQL execution capabilities through an MCP interface.
Tools
read_table_space
Get table space used for a table if table name is provided or get table space for all tables in a database if a database name is provided.
execute_read_query
Executes a SQL query to read from the database.
execute_write_query
Executes a SQL query to write to the database.
read_table_ddl
Display table DDL definition.
read_database_list
List all databases in the Teradata System.
read_table_list
List objects in a database.
read_column_description
Show detailed column information about a database table.
read_table_preview
Get data samples and structure overview from a database table.
read_table_affinity
Get tables commonly used together by database users, this is helpful to infer relationships between tables.
read_table_usage
Measure the usage of a table and views by users in a given schema, this is helpful to infer what database objects are most actively used or drive most value.
read_SQL_list
Get a list of SQL run by a user in the last number of days if a user name is provided, otherwise get list of all SQL in the last number of days.
read_database_space
Get database space if database name is provided, otherwise get all databases space allocations.
read_database_version
Get Teradata database version information.
read_resusage_summary
Get the Teradata system usage summary metrics by weekday and hour for each workload type and query complexity bucket.
read_missing_columns
Get the column names that having missing values in a table.
read_negative_columns
Get the column names that having negative values in a table.
read_destinct_categories
Get the destinct categories from column in a table.
read_standard_deviation
Get the standard deviation from column in a table.
README
Teradata MCP Server Template
Overview
The Teradata MCP server is a open source project, we welcome contributions via pull requests.
We are providing three sets of tools
-
td_base_tools:
- execute_read_query - runs a read query
- execute_write_query - runs a write query
- read_table_DDL - returns the show table results
- read_database_list - returns a list of all databases
- read_table_list - returns a list of tables in a database
- read_column_description - returns description of columns in a table
- read_table_preview - returns column information and 5 rows from the table
-
td_dba_tools:
- read_sql_list - returns a list of recently executed SQL for a user
- read_table_space - returns CurrentPerm table space
- read_database_space - returns Space allocated, space used and percentage used for a database
- read_database_version - returns the database version information
-
td_data_quality_tools:
- missing_values - returns a list of column names with missing values
- negative_values - returns a list of column names with negative values
- distinct_categories - returns a list of categories within a column
- standard_deviation - returns the mean and standard deviation for a column
We have also created a custom_tools section that will allow for the development of customer tools to be easily added.
The Test directory contains a simple ClientChatBot tool for testing tools.
Environment Set Up
Step 1 - The environment has been put together assuming you have the uv package installed on your local machine. Installation instructions for uv can be found at https://github.com/astral-sh/uv
Step 2 - Clone the mcp-server repository with
On Windows
mkdir MCP
cd MCP
git clone https://github.com/Teradata/teradata-mcp-server.git
cd teradata-mcp-server
uv sync
source .venv/Scripts/activate
On Mac
mkdir MCP
cd MCP
git clone https://github.com/Teradata/teradata-mcp-server.git
cd teradata-mcp-server
uv sync
source .venv/bin/activate
Step 3 - You need to update the .env file
-
Rename env file to .env
-
The database URI will have the following format teradata://username:password@host:1025/databasename, use a ClearScape Analytics Experience https://www.teradata.com/getting-started/demos/clearscape-analytics
- the usename needs updating
- the password needs updating
- the Teradata host needs updating
- the databasename needs updating
-
LLM Credentials need to be available for /test/pydanticaiBedrock.py code to work
-
SSE setting
- SSE : Boolean to determine if your server will be using the SSE transport (SSE = True) or the stdio transport (SSE=False)
- SSE_HOST: IP address that the server can be found at, default should be 127.0.0.1
- SSE_PORT: Port address that the server can be fount at, default should be 8001
Example .env file
############################################
DATABASE_URI=teradata://username:password@host:1025/databasename
SSE=False
SSE_HOST=127.0.0.1
SSE_PORT=8001
############################################
aws_access_key_id=
aws_secret_access_key=
aws_session_token=
aws_region_name=
############################################
OPENAI_API_KEY=
Testing your server with MCP Inspector
Step 1 - Start the server, typer the following in your terminal
uv run mcp dev ./src/teradata_mcp_server/server.py
NOTE: If you are running this on a Windows machine and get npx, npm or node.js errors, install the required node.js software from here: https://github.com/nodists/nodist
Step 2 - Open the MCP Inspector
- You should open the inspector tool, go to http://127.0.0.1:6274
- Click on tools
- Click on list tools
- Click on read_database_list
- Click on run
Test the other tools, each should have a successful outcome
Control+c to stop the server in the terminal
Adding your sever to an Agent using stdio
step 1 - confirm the SSE flag in .env file has been set to False
SSE=False
Step 2 - Modify the ./test/ClientChatBot.py script to point to where you installed the server, you will need to modify the following line
td_mcp_server = MCPServerStdio('uv', ["--directory", "/Users/Daniel.Tehan/Code/MCP/teradata-mcp-server/src/teradata_mcp_server", "run", "server.py"])
Step 2 - run the ./test/ClientChatBot.py script, this will create an interactive session with the agent who has access to the MCP server.
From a terminal.
uv run ./test/ClientChatBot.py
- Ask the agent to list the databases
- Ask the agent to list the table in a database
- Ask the agent to show all the objects in a database
- Ask the agent a question that requires SQL to run against a table
- Type "quit" to exit.
Adding tools using stdio to Visual Studio Code Co-pilot
- confirm the SSE flag in .env file has been set to False
SSE=False
- In VS Code, "Show and Run Commands"
- select "MCP: Add Server"
- select "Command Stdio"
- enter "uv" at command to run
- enter name of the server for the id
- the settings.json file should open
- modify the directory path and ensure it is pointing to where you have the server installed
- add the args so that it looks like:
"mcp": {
"servers": {
"TeradataStdio": {
"type": "stdio",
"command": "uv",
"args": [
"--directory",
"/Users/Daniel.Tehan/Code/MCP/teradata-mcp-server/src/teradata_mcp_server/,
"run",
"server.py"
]
}
}
}
- you can start the server from within the settings.json file or you can "MCP: Start Server"
Adding tools using SSE to Visual Studio Code Co-pilot
- confirm the SSE flag in .env file has been set to False
SSE=True
SSE_HOST=127.0.0.1
SSE_PORT=8001
- you need to start the server from a terminal
uv run ./src/teradata_mcp_server/server.py
- In VS Code, "Show and Run Commands"
- select "MCP: Add Server"
- select "HTTP Server Sent Events"
- enter URL for the location of the server e.g. http://127.0.0.1:8001/sse
- enter name of the server for the id
- select user space
- the settings.json file should open
- add the args so that it looks like:
"mcp": {
"servers": {
"TeradataSSE": {
"type": "sse",
"url": "http://127.0.0.1:8001/sse"
}
}
}
- within the settings.json file or you can "MCP: Start Server"
Exposing tools as REST endpoints with mcpo
You can use mcpo to expose this MCP tool as an OpenAPI-compatible HTTP server.
For example, using uv:
uvx mcpo --port 8001 --api-key "top-secret" -- uv run src/teradata_mcp_server/server.py
Your Teradata tools are now available as local REST endpoints, view documentation and test it at http://localhost:8001/docs
Using the server with Open WebUI
Open WebUI is user-friendly self-hosted AI platform designed to operate entirely offline, supporting various LLM runners like Ollama. It provides a convenient way to interact with LLMs and MCP servers from an intuitive GUI. It can be integrated with this MCP server using the mcpo component.
First run mcpo as specified in the section above.
python -m venv ./env
source ./env/bin/activate
pip install open-webui
open-webui serve
Access the UI at http://localhost:8080.
To add the MCP tools, navigate to Settings > Tools > Add Connection, and enter your mcpo server connection details (eg. localhost:8001, password = top-secret if you have executed the command line in the mcpo section).
You should be able to see the tools in the Chat Control Valves section on the right and get your models to use it.
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