LLM-Culture provides a structured approach to embed organizational culture into large language model interactions. You start by defining your brand’s values and style rules in a simple configuration file. The framework then offers a library of prompt templates designed to enforce these guidelines. After generating outputs, the built-in evaluation toolkit measures alignment against your cultural criteria and highlights any inconsistencies. Finally, you deploy the framework alongside your LLM pipeline—whether via API or on-premise—so that each response consistently adheres to your company’s tone, ethics, and brand personality.
LLM-Culture Core Features
Cultural guideline configuration (YAML/JSON)
Reusable prompt template library
Output evaluation against brand rules
Integration modules for OpenAI, Azure, and self-hosted LLMs
Pydantic is designed to help developers manage data easily through data validation and settings management using Python. It allows users to define data models using Python classes, automatically validating the data against these models. This includes type checking, validation of nested objects, and even configuration management. With Pydantic, developers can quickly catch data issues at runtime, improving robustness and maintainability in applications.