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FORMATION IA

Bootcamp GenAI pour Ingénieurs (5 Jours)

Les ingénieurs repartent avec un outil IA interne livré, maîtrisant LLMs, RAG, agents et évaluation en production.

Format
bootcamp
Durée
35–45h
Niveau
practitioner
Taille de groupe
6–16
Prix / participant
€2K–€4K
Prix groupe
€20K–€50K
Public
Software engineers and backend developers moving into AI product or platform roles
Prérequis
Proficiency in Python; familiarity with REST APIs and basic software engineering practices; no prior ML or AI experience required

Ce qu'elle couvre

Un bootcamp intensif de cinq jours conçu pour les ingénieurs logiciels qui évoluent vers le développement de produits IA. Les participants construisent et livrent un outil interne complet en utilisant des API LLM, la génération augmentée par récupération et des workflows agentiques. Chaque journée combine des blocs conceptuels courts avec des ateliers de codage étendus, aboutissant à une démo live d'un produit fonctionnel. L'évaluation, l'observabilité et les pratiques de déploiement responsable sont intégrées tout au long du programme.

À l'issue, vous saurez

  • Integrate multiple LLM providers via API and manage prompts, context windows, and token costs programmatically
  • Build a production-grade RAG pipeline with chunking strategies, embedding models, and a vector store such as Qdrant or Weaviate
  • Implement an agentic workflow using tool-calling and multi-step reasoning to automate a real internal task
  • Evaluate an LLM application using automated scoring frameworks and interpret failure modes
  • Deploy and monitor a complete AI-powered internal tool with basic observability and guardrails in place

Sujets abordés

  • LLM API integration (OpenAI, Anthropic, Mistral, open-source models)
  • Prompt engineering and structured output design
  • Retrieval-Augmented Generation (RAG): chunking, embeddings, vector stores
  • Agentic patterns: tool use, function calling, multi-step reasoning
  • LLM evaluation frameworks: RAGAS, UpTrain, custom scorers
  • Observability and tracing in production (LangSmith, Langfuse)
  • Guardrails, safety layers, and cost management
  • Shipping an end-to-end internal AI tool: design to deployment

Modalité

Delivered in-person or live-virtual over five consecutive days, approximately seven to nine hours per day including breaks. The format is roughly 25% instructor-led conceptual input and 75% hands-on coding labs. Participants work on a shared project repository from day one and ship their tool by end of day five. Materials include a private GitHub repo, pre-configured cloud dev environments, API keys for major providers, and a reference architecture doc. Remote delivery requires stable internet and a capable laptop; cloud-based Codespaces are provided to eliminate local setup friction.

Ce qui fait que ça marche

  • Pre-defining the capstone project scope before day one so participants can focus on building rather than deciding
  • Assigning a technical coach per four to six participants for real-time debugging support during lab sessions
  • Holding a live external demo or stakeholder review at the end of day five to create genuine shipping pressure
  • Providing a 30-day post-bootcamp async channel (Slack or Discord) so engineers can ask questions as they extend their tools

Erreurs fréquentes

  • Treating the bootcamp as theory-first and deferring coding until late in the week, leaving insufficient time to ship a working tool
  • Skipping evaluation and observability modules because they feel secondary, then struggling to debug LLM failures in production
  • Choosing an overly ambitious capstone project scope that cannot be completed in five days, leading to demoralisation
  • Ignoring cost management and rate-limit handling, resulting in surprise API bills and broken prototypes post-bootcamp

Quand NE PAS suivre cette formation

This bootcamp is not the right fit if the engineering team has zero Python experience or if the organisation cannot provide real internal data and a plausible use case for the capstone — without a concrete problem to solve, the hands-on labs lose their practical grounding and participants leave with toy demos rather than transferable skills.

Fournisseurs à considérer

Sources

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