Generative AI and LLMs Training Course - Understanding, Customising and Deploying
- Price
- Duration
- Number of hours
Each session will take place even if only one person is registered (except in cases of force majeure).
Description of the Generative AI and LLMs Training Course
Language models (LLMs) such as GPT, Claude, and Mistral are revolutionising the way we design interfaces, assistants, and content engines.
But moving from simple prompts to useful, controlled integration requires more than just testing: you need to understand how they work, know how to adapt them to specific business cases, and deploy them responsibly and effectively.
Delve into the world of large language models (LLMs) and generative artificial intelligence with this training course designed for professionals in tech, innovation and data. Through practical workshops and real-life case studies, explore how LLMs work, the ethical issues involved, prompt engineering tools and their uses in business. A unique opportunity to master the basics and anticipate the strategic impacts of generative AI in your organisation.
Also discover our Training Course Creation of Voice AI Agents with Vapi, n8n and ElevenLabs, our AI and HR Training Course – Mastering Artificial Intelligence for Recruitment, Talent and Engagement and our n8n and AI Training Course – Building Autonomous and Intelligent Workflows without Code.
Format of the LLMs Training Course
Remote (recorded sessions).
GOOD TO KNOW
This training course includes numerous exercises (60% practical) to enhance learning. Each session will take place even if only one person is registered (except in cases of force majeure). A preliminary interview is held between the participant and/or a company representative in order to fully assess the participant’s profile (level, needs, professional context, challenges, etc.).
Assessment : during the training course, the trainer assesses the participants’ progress through multiple-choice questions, role-playing exercises and practical work. Participants receive a certificate of completion at the end of the training course.
This training course is part of our Artificial Intelligence Training Courses. Explore our other AI training courses to fully leverage machine learning, LLMs and generative AI.
objectives
By the end, each participant will be able to :
- Understand the basics of how LLMs work (transformers, tokens, fine-tuning, etc.).
- Identify the differences between GPT, Claude, Mistral, LLama, etc., and choose the right model for your use case.
- Customise a model via advanced prompt engineering, memory, RAG, or light fine-tuning.
- Integrate an LLM into an application via API or user interface.
- Deploy conversational assistants, summary engines, or text analysis tools.
- Manage ethical, security, cost, and confidentiality issues.
Prerequisites for the LLMs Training Course
- Basic understanding of APIs, application or integration logic (JSON, REST).
- Knowledge of NLP or AI is useful but not essential.
- Interest in techno-business issues and digital innovation.
Because each participant has a unique background and expectations, a preliminary interview with our expert allows us to precisely identify their objectives, level and professional challenges.
This enables us to tailor the training content to ensure relevant and personalised learning.
Target Audience
This training course is designed for technical, product, innovation, or digital transformation professionals who wish to take their skills to the next level with LLMs.
Detailed of the Generative AI and LLMs Training Course
LLM Architecture – Understanding the Foundations
How LLMs work (transformers, embeddings, tokens, generation models). Why do they produce what they produce? A simplified introduction.
Select and compare models
GPT-5, Claude, LLaMA, Mistral, Mixtral, Phi… comment choisir selon ses besoins (coût, perfs, confidentialité, open source, etc.). Démos comparées.
Prompt Engineering & Customisation
Prompt engineering techniques : roles, contexts, loops, logical chains. Use of memory, RAG (Retrieval-Augmented Generation) and agents.
API integration and interfaces
Use OpenAI, HuggingFace, and Anthropic APIs. Create web assistants, integration with Notion, Slack, CRMs, etc. Low-code or custom frameworks.
Deployment of AI agents in real environments
Examples of deployment : internal chatbot, business co-pilot, meeting summary, legal or HR summary engine. Local or cloud-based use (serverless, etc.).
Limitations, biases, risks, and best practices
Governance, data security, hallucinations, output control, auditability. Responsible use cases and error management.
The advantages of this training course
What sets this training course apart :
- It demystifies LLMs without oversimplifying them, striking a balance between theory and practice.
- It goes beyond prompts to explore real-world deployment and concrete use cases.
- It is aimed at a hybrid audience : technical and decision-makers, which is rare for this subject.
FAQ – Large Language Models (LLMs) Training
What is a large language model?
A large language model (LLM) is a deep neural network — typically a transformer with billions to trillions of parameters — trained on vast text corpora to predict the next token in a sequence. This simple objective produces impressive emergent capabilities: dialogue, reasoning, summarization, translation, and code generation. The most prominent LLMs in 2026 are Claude, GPT, Gemini, and Llama. MFE-IT trains professionals on understanding, deploying, and integrating LLMs into business applications.
How are LLMs trained?
LLM training has three main stages: pre-training (predicting tokens on massive web-scale text), supervised fine-tuning on curated examples, and reinforcement learning from human feedback (RLHF) or AI feedback (RLAIF) to align outputs with helpful, honest, harmless behavior. Pre-training is the most compute-intensive, often taking months on thousands of GPUs. The MFE-IT LLMs training covers each stage and the implications for using and customizing LLMs.
What is prompt engineering?
Prompt engineering is the practice of crafting inputs to LLMs that produce reliable, high-quality outputs. Techniques include clear instructions, few-shot examples, structured formats (JSON, XML), chain-of-thought reasoning, role priming, and constraints on output length and style. Good prompts can dramatically improve results without changing the underlying model. Through MFE-IT’s hands-on approach, learners develop a robust prompt engineering toolkit applicable to any LLM.
What is the difference between LLM and AI?
AI is the broad field of systems that perform tasks normally requiring human intelligence. LLMs are one specific class of AI models — focused on language. Other AI types include computer vision, speech recognition, recommender systems, and reinforcement learning agents. Our MFE-IT training course on LLMs places them precisely within the broader AI landscape so participants understand their strengths and limits.
Would you like to know about upcoming sessions ?
Would you like to schedule this Generative AI and LLMs training course on a specific date ? Contact us by email or by filling out the contact form.