All GuidesGuide 04
Intermédiaire • ~50min

Prompt Orchestration

Build multi-step AI workflows with prompt chaining, model routing, and conditional logic patterns.

Développez des assistants vraiment robustes et contextuels en orchestrant dynamiquement les prompts.

Objectifs

01Assembler plusieurs prompts pour résoudre une tâche en plusieurs étapes
02Définir des règles de routage conditionnel
03Optimiser l'architecture de prompts pour des workflows robustes

Sommaire

Section 01
Cartographier les étapes d'un workflow LLM.
Section 02
Créer des routeurs conditionnels basés sur des prompts.
Section 03
Modéliser un flux conversationnel orienté besoin métier.
Section 04
Atelier : conception d'une chaîne complète contrôlée.

Compétences

Architecturer un workflow LLM multi-étapes.Implémenter un routage logique conditionnel.Optimiser la robustesse d'un assistant par le chaining.

Related Articles (10)

articleJan 2025

Claude Code Team Collaboration: Multi-Agent Workflows & Knowledge Sharing

Master team workflows with Claude Code - from CLAUDE.md as organizational memory to multi-agent orchestration and skill composition for collaborative AI development.

guideMar 2026

Map-Reduce Prompting Patterns: Processing Large Data with AI

Learn the Map-Reduce pattern for AI: split large inputs into chunks, process in parallel, and merge results. Covers document summarization, data analysis, and batch processing.

guideMar 2026

Prompt Chaining & Pipelines: Building Multi-Step AI Workflows

Learn to chain AI prompts into powerful multi-step pipelines. Covers sequential chains, parallel execution, error handling, and real-world workflow patterns.

guideMar 2026

Prompt Routing & Conditional Logic: Building Intelligent AI Workflows

Master prompt routing techniques to dynamically select the right prompt based on input. Learn classification-based routing, confidence thresholds, and fallback strategies.

guideFeb 2026

Lyria 3: Complete Guide to Google's AI Music Generation — Prompts, SynthID & Creative Workflows (2026)

Master Google DeepMind's Lyria 3 AI music generator in Gemini. Learn to create 30-second tracks from text, images, and video prompts. Covers SynthID watermarking, prompt engineering tips, vocal customization, and comparison with Suno and Udio.

guideFeb 2026

Claude Opus 4.6: Complete Guide — 1M Context, Adaptive Thinking & Benchmarks (2026)

Claude Opus 4.6 is Anthropic's most powerful AI model with 1M token context, adaptive thinking, and state-of-the-art agentic coding. Full guide with pricing, benchmarks, and use cases.

guideJan 2026

Claude Code Plugins: Create & Distribute Extensions

Master Claude Code plugins. Learn to create, publish, and manage plugins that extend Claude's capabilities with new tools, integrations, and custom functionality.

guideJan 2026

Claude Opus 4.5: Anthropic's Most Powerful Model Yet

Explore Claude Opus 4.5's advanced coding, agentic workflows, and computer use capabilities. Learn how to leverage its long-context memory and enhanced reasoning.

guideJan 2026

LLM Routing: Choosing the Right Model for Each Task

Learn why smart AI systems use different models for different tasks and how routing optimizes cost, speed, and quality.

guideJan 2026

Prompt Chaining: Building Multi-Step AI Workflows

Learn what prompt chaining is and how breaking complex tasks into connected steps unlocks new possibilities for AI automation.

Questions fréquentes

Qu'est-ce que le module « Prompt Orchestration » ?+

« Prompt Orchestration » est un module de formation en ligne de niveau Intermédiaire • ~50min. Build multi-step AI workflows with prompt chaining, model routing, and conditional logic patterns.

Y a-t-il des prérequis pour ce module ?+

Oui, nous recommandons d'avoir complété le Module 3 avant de suivre ce module.

Ce module est-il gratuit ?+

Oui, ce module est entièrement gratuit et accessible sans inscription payante.

Qu'est-ce que je vais apprendre dans ce module ?+

Architecturer un workflow LLM multi-étapes.. Implémenter un routage logique conditionnel.. Optimiser la robustesse d'un assistant par le chaining..