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ScriptsJul 18, 2026·3 min de lecture

Hello Agents — Build Intelligent Agents from Zero to Production

A comprehensive, community-driven tutorial that walks you through building AI agents from first principles. Covers agent architecture, tool use, memory, RAG, and multi-agent orchestration with hands-on code examples.

Prêt pour agents

Installation agent prête

Cet actif peut être installé après choix du runtime, vérification du plan et exécution de la commande adaptée.

Native · 98/100Policy : autoriser
Surface agent
Tout agent MCP/CLI
Type
Skill
Installation
Single
Confiance
Confiance : Established
Point d'entrée
Hello Agents
Commande d'installation directe
npx -y tokrepo@latest install 763bf848-82c5-11f1-9bc6-00163e2b0d79 --target codex

À exécuter après confirmation du plan en dry-run.

Introduction

Hello Agents is an open-source educational project by Datawhale that teaches you how to build AI agents from scratch. Rather than relying on high-level frameworks, it walks through the core primitives—tool calling, memory management, planning, and multi-agent coordination—so you understand what is actually happening under the hood.

What Hello Agents Does

  • Provides a structured curriculum covering agent fundamentals, tool integration, memory systems, and RAG pipelines
  • Includes runnable Jupyter notebooks for every chapter so you can learn by doing
  • Demonstrates multi-agent patterns including delegation, debate, and supervisor architectures
  • Covers both Python SDK usage and the underlying prompt engineering that drives agent behavior
  • Teaches how to evaluate agent performance and handle failure modes gracefully

Architecture Overview

The project is organized as a series of progressive chapters, each building on the last. Early chapters cover the agent loop (observe → think → act → reflect), then introduce tool definitions and function calling, followed by retrieval-augmented generation and vector stores. Later chapters tackle multi-agent systems and production deployment patterns. All examples use standard Python libraries and can run with any major LLM provider.

Self-Hosting & Configuration

  • Clone the repo and install dependencies with pip; no special infrastructure required
  • Each chapter is a standalone notebook—run them in Jupyter, VS Code, or Colab
  • Configure your LLM API key via environment variables (supports OpenAI, Anthropic, and local models)
  • Chapters on RAG require a vector database; examples default to Chroma or FAISS
  • The project supports both cloud-hosted and fully local model setups via Ollama

Key Features

  • Zero-to-production curriculum designed for developers new to agent engineering
  • Framework-agnostic approach that teaches principles rather than locking you into one SDK
  • Bilingual documentation in Chinese and English
  • Active community with regular updates as agent patterns evolve
  • Covers advanced topics like self-evolving agents and human-in-the-loop workflows

Comparison with Similar Tools

  • LangChain docs — framework-specific tutorials; Hello Agents is framework-agnostic and teaches fundamentals
  • DeepLearning.AI courses — video-first and paywalled; Hello Agents is text-first and fully open source
  • AutoGen tutorials — focused on Microsoft's multi-agent framework; Hello Agents covers multiple approaches
  • OpenAI Cookbook — recipe-oriented for OpenAI APIs; Hello Agents builds understanding from first principles
  • 12-Factor Agents — focuses on production principles; Hello Agents provides the step-by-step learning path to get there

FAQ

Q: Do I need ML experience to use this? A: Basic Python proficiency is sufficient. The curriculum starts from fundamentals and builds up progressively.

Q: Which LLM providers are supported? A: The examples work with OpenAI, Anthropic, local models via Ollama, and most OpenAI-compatible APIs.

Q: Is this a framework I install? A: No. It is a learning resource with runnable code. You take the patterns you learn and apply them in your own projects.

Q: How often is the content updated? A: The project follows an active contribution model with regular chapter additions as the agent ecosystem evolves.

Sources

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