Generate BAML style prompts from dry-schema that can get and check structured responses from LLMs
-
Updated
Jul 31, 2025 - Ruby
Generate BAML style prompts from dry-schema that can get and check structured responses from LLMs
Explore Mistral AI's extensive collection of models. Learn to select, prompt, and integrate Mistral's open-source and commercial models for tasks like classification, coding, and Retrieval Augmented Generation (RAG).
The system takes a brief textual description, prompt, or statement from the user and analyzes it to determine if it correctly expresses a prophetic or visionary statement in the perfect tense. Using p
A new package that processes user queries about why small voting or ranking projects get flagged as spam so easily. It uses natural language processing to understand the input and generates a structur
Chatbot built with Flask and Bootstrap that delivers ChatGPT-style Markdown responses, including code blocks, lists, and headings. It features a clean, responsive UI with real-time chat and structured AI output using Google’s gemini-pro model.
A new package that processes user queries about system performance and resource usage on Nvidia Jetson boards. It takes natural language input, such as a request for current GPU utilization or memory
Add a description, image, and links to the structured-responses topic page so that developers can more easily learn about it.
To associate your repository with the structured-responses topic, visit your repo's landing page and select "manage topics."