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Learn how to install Instructor and its dependencies using pip for Python 3.9+. Simple setup guide included.
Get structured, validated data from any LLM with Instructor - the #1 library for LLM data extraction. Supports 15+ providers (OpenAI, Anthropic, Google, Ollama, DeepSeek) in 6 languages. Built on type-safe schemas with automatic retries, streaming, and nested object support.
Explore key resources for getting help with Instructor, including Discord, blog, concepts, cookbooks, and GitHub discussions.
A step-by-step guide to getting started with Instructor for structured outputs from LLMs
Common questions and answers about using Instructor
Learn how to debug Instructor applications with hooks, logging, and exception handling. Practical techniques for inspecting inputs, outputs, and retries.
Join us in enhancing the Instructor library with evals, report issues, and submit pull requests on GitHub. Collaborate and contribute!
Learn about the internal architecture and design decisions of the Instructor library
Explore the comprehensive API reference with details on instructors, validation, iteration, and function calls.
Internal guide for maintaining and improving Instructor documentation
site_description: The framework for programming—rather than prompting—language models.
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Build collaborative AI agents, crews, and flows — production ready from day one.
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This directory contains the documentation source code for LlamaIndex, available at https://docs.llamaindex.ai.
dist/
This directory is retained purely for archival purposes and is no longer updated. The examples previously found here have been moved to the newly [consolidated LangChain documentation](https://docs.langchain.com/oss/python/langgraph/overview). Please refer to the LangChain docs for the most up-to-da
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This document outlines our approach to regression testing for vibe-tools using AI agents. We create feature behavior files that describe desired behaviors, and AI agents determine how to test these behaviors using vibe-tools. The agents generate detailed reports and simple PASS/FAIL results for auto