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Débute 14 July 2026 04:30
Se termine 14 July 2026
IA générative pour le TALN avec PyTorch
IBM
2974 Cours
Not Specified
Amélioration optionnelle disponible
Avancé
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Paid Course
Amélioration optionnelle disponible
Aperçu
AI roles are forecast to grow more than 5x faster than the overall job market over the next decade (U.S. Bureau of Labor Statistics).
Employers need professionals who can build, train, and deploy real-world models. This IBM specialization helps aspiring AI professionals build the PyTorch, deep learning, GenAI, and NLP skills used by Machine Learning Engineers, NLP Engineers, Deep Learning Engineers, Data Scientists, and AI Research Analysts.
You’ll start with PyTorch tensor fundamentals and build toward trained neural networks, CNNs, and transformer-based language models. You’ll learn to implement gradient descent, backpropagation, dropout, batch normalization, GPU acceleration, attention mechanisms, tokenization, positional encoding, and multi-head attention.
Plus, you’ll fine-tune pretrained transformer models, including BERT and DistilBERT, with Hugging Face, and examine GPT-style architectures. In the capstone, you’ll use GenAI code generation and review support to build a shareable NLP project.
You’ll create a text classification pipeline, train an LSTM model, fine-tune a DistilBERT model on the same dataset, and compare their performance with accuracy and F1. You’ll also gain practical experience with NLP workflows, transformer-based architectures, prompt-assisted coding, code review, and model evaluation– valuable skills for GenAI tools.
Enroll now to develop PyTorch, transformer and NLP modeling skills employers are actively seeking!
Programme
- Cours 1 : Introduction aux réseaux neuronaux et PyTorch
- Cours 2 : Apprentissage profond avec PyTorch
- Cours 3 : Modélisation de langue avec intelligence artificielle générative et Transformers
- Cours 4 : IA générative pour NLP avec projet de synthèse PyTorch
Enseigné par
Fateme Akbari, Harish Pant, IBM Skills Network Team, Joseph Santarcangelo and Kang Wang
Matières
Technology