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LangChain & LangGraph extensions that parse LLM prompts into Timbr semantic SQL and execute them.

Project description

Timbr logo description

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Python 3.10 Python 3.11 Python 3.12

Timbr LangChain LLM SDK

Timbr LangChain LLM SDK is a Python SDK that extends LangChain and LangGraph with custom agents, chains, and nodes for seamless integration with the Timbr semantic layer. It enables converting natural language prompts into optimized semantic-SQL queries and executing them directly against your data.

Timbr LangGraph pipeline

Dependencies

  • Access to a timbr-server
  • Python 3.10 or newer

Installation

Using pip

python -m pip install langchain-timbr

Install with selected LLM providers

One of: openai, anthropic, google, azure_openai, snowflake, databricks, vertex_ai, bedrock (or 'all')

python -m pip install 'langchain-timbr[<your selected providers, separated by comma w/o space>]'

Using pip from github

pip install git+https://github.com/WPSemantix/langchain-timbr

Documentation

For comprehensive documentation and usage examples, please visit:

Configuration

The SDK uses environment variables for configuration. All configurations are optional - when set, they serve as default values for langchain-timbr provided tools. Below are all available configuration options:

Configuration Options

Timbr Connection Settings

  • TIMBR_URL - The URL of your Timbr server
  • TIMBR_TOKEN - Authentication token for accessing the Timbr server
  • TIMBR_ONTOLOGY - The ontology to use (also accepts ONTOLOGY as an alias)
  • IS_JWT - Whether the token is a JWT token (true/false)
  • JWT_TENANT_ID - Tenant ID for JWT authentication

Cache and Data Processing

  • CACHE_TIMEOUT - Timeout for caching operations in seconds
  • IGNORE_TAGS - Comma-separated list of tags to ignore during processing
  • IGNORE_TAGS_PREFIX - Comma-separated list of tag prefixes to ignore during processing

LLM Configuration

  • LLM_TYPE - The type of LLM provider to use
  • LLM_MODEL - The specific model to use with the LLM provider
  • LLM_API_KEY - API key or client secret for the LLM provider
  • LLM_TEMPERATURE - Temperature setting for LLM responses (controls randomness)
  • LLM_ADDITIONAL_PARAMS - Additional parameters to pass to the LLM
  • LLM_TIMEOUT - Timeout for LLM requests in seconds
  • LLM_TENANT_ID - LLM provider tenant/directory ID (Used for Service Principal authentication)
  • LLM_CLIENT_ID - LLM provider client ID (Used for Service Principal authentication)
  • LLM_CLIENT_SECRET - LLM provider client secret (Used for Service Principal authentication)
  • LLM_ENDPOINT - LLM provider OpenAI endpoint URL
  • LLM_API_VERSION - LLM provider API version
  • LLM_SCOPE - LLM provider authentication scope

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