How to Master Generative AI with These 10 Free Courses from Google

Mastering Generative AI

10 Free AI Courses by Google

 

  1. Introduction to Generative AI: Learn what generative AI is, how it works, and what it can do. You will also discover the Google tools that can help you develop your own generative AI applications. This course takes about 45 minutes to complete. 

Enroll in Introduction to Generative AI 

  1. Introduction to Large Language Models: Learn what large language models (LLMs) are, how they can generate natural language, and how to use prompt tuning to improve their performance. You will also explore the Google tools that can help you work with LLMs. This course takes about 45 minutes to complete. 

Enroll in Introduction to Large Language Models 

  1. Introduction to Responsible AI: Learn what responsible AI is, why it is important, and how Google implements it in their products. You will also learn about the Google’s 7 AI principles that guide their ethical and social impact of AI. This course takes about 45 minutes to complete. 

Enroll in Introduction to Responsible AI 

  1. Generative AI Fundamentals: Earn a skill badge by completing the Introduction to Generative AI, Introduction to Large Language Models, and Introduction to Responsible AI courses. You will also take a final quiz to test your understanding of the foundational concepts of generative AI. 

Enroll in Generative AI Fundamentals 

  1. Introduction to Image Generation: Learn how to use diffusion models, a type of generative AI models that can create realistic images. You will also learn how to train and deploy diffusion models on Vertex AI, a Google Cloud platform for machine learning. 

Enroll in Introduction to Image Generation 

  1. Encoder-Decoder Architecture: Learn how to use the encoder-decoder architecture, a common machine learning architecture for sequence-to-sequence tasks, such as machine translation, text summarization, and question answering. You will also learn how to code a simple encoder-decoder model for poetry generation in TensorFlow. 

Enroll in Encoder-Decoder Architecture 

  1. Attention Mechanism: Learn how to use the attention mechanism, a technique that allows neural networks to focus on specific parts of an input sequence. You will also learn how attention can improve the performance of various machine learning tasks, such as machine translation, text summarization, and question answering. 

Enroll in Attention Mechanism 

  1. Transformer Models and BERT Model: Learn how to use the Transformer architecture and the BERT model, two of the most powerful and popular generative AI models for natural language processing. You will also learn how to use the Transformer and BERT for different tasks, such as text classification, question answering, and natural language inference. 

Enroll in Transformer Models and BERT Model 

  1. Create Image Captioning Models: Learn how to create an image captioning model, a type of generative AI model that can generate natural language descriptions for images. You will also learn how to train and evaluate your image captioning model. 

Enroll in Create Image Captioning Models 

  1. Introduction to Generative AI Studio: Learn how to use Generative AI Studio, a product on Vertex AI that helps you prototype and customize generative AI models. You will also learn how to use Generative AI Studio by walking through demos of the product. 

Enroll in Introduction to Generative AI Studio 

A: Google offers 10 free courses on Generative AI. 

Share this article:

Leave a Reply

Your email address will not be published.