This IBM short course, a part of Generative AI Engineering Essentials with LLMs Professional Certificate, will teach you the basics of using generative AI and Large Language Models (LLMs). This course is suitable for existing and aspiring data scientists, machine learning engineers, deep-learning engineers, and AI engineers.
Generative AI and LLMs: Architecture and Data Preparation
This course is part of multiple programs.
Instructors: Joseph Santarcangelo
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What you'll 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 used in language processing.
Implement tokenization to preprocess raw textual data using NLP libraries such as NLTK, spaCy, BertTokenizer, and XLNetTokenizer.
Create an NLP data loader using PyTorch to perform tokenization, numericalization, and padding of text data.
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There are 2 modules in this course
In this module, you will learn about the significance of generative AI models and how they are used across a wide range of fields for generating various types of content. You will learn about the architectures and models commonly used in generative AI and the differences in the training approaches of these models. You will learn how large language models (LLMs) are used to build NLP-based applications. You will build a simple chatbot using the transformers library from Hugging Face.
What's included
5 videos2 readings2 assignments1 app item3 plugins
In this module, you will learn to prepare data for training large language models (LLMs) by implementing tokenization. You will learn about the tokenization methods and the use of tokenizers. You will also learn about the purpose of data loaders and how you can use the DataLoader class in PyTorch. You will implement tokenization using various libraries such as nltk, spaCy, BertTokenizer, and XLNetTokenizer. You will also create a data loader with a collate function that processes batches of text.
What's included
2 videos5 readings2 assignments2 app items2 plugins
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Reviewed on Oct 20, 2024
I highly recommend using a human to deliver the lectures, which might enhance student engagement. Great introductory course.
Reviewed on Oct 17, 2024
I am pretty much new to NLP data preparation. However this course made me comfortable with Date preparation activities.
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Frequently asked questions
It will take only two weeks to complete this course if you spend two hours of study time per week.
It will be good if you have a basic knowledge of Python and PyTorch and a familiarity with machine learning and neural network concepts.
This course is part of a specialization. When you complete the specialization, you will prepare yourself with the skills and confidence to take on jobs such as AI Engineer, NLP Engineer, Machine Learning Engineer, Deep Learning Engineer, and Data Scientist.