- Large Language Modeling
- Recurrent Neural Networks (RNNs)
- Text Mining
- Natural Language Processing
- PyTorch (Machine Learning Library)
- Generative Model Architectures
- Generative AI
- Data Pipelines
- Generative Adversarial Networks (GANs)
- Artificial Intelligence
- Data Preprocessing
- Hugging Face
Generative AI and LLMs: Architecture and Data Preparation
Completed by Toma Emoghene-Ijatomi
February 24, 2025
5 hours (approximately)
Toma Emoghene-Ijatomi's account is verified. Coursera certifies their successful completion of Generative AI and LLMs: Architecture and Data Preparation
What you will learn
Differentiate between generative AI architectures and models, such as RNNs, transformers, VAEs, GANs, and diffusion models
Describe how LLMs, such as GPT, BERT, BART, and T5, are applied in natural language processing tasks
Implement tokenization to preprocess raw text using NLP libraries like NLTK, spaCy, BertTokenizer, and XLNetTokenizer
Create an NLP data loader in PyTorch that handles tokenization, numericalization, and padding for text datasets
Skills you will gain

