Transfer Learning: Tailoring Neural Networks for Your Data
Transfer learning is one of the core concepts leveraged for building Generative AI applications. This course teaches the essentials of transfer learning as well as advanced strategies such as fine-tuning and feature extraction.
What you'll learn
Transfer learning is the basis of transformer architecture and it is also one of the concepts on which generative AI large language models are based. It is a technique to leverage base models on domain-specific applications for prediction and outcomes.
In this course, Transfer Learning: Tailoring Neural Networks for Your Data, you'll gain the ability to implement transfer learning on your custom datasets.
First, you'll explore some principles and benefits of transfer learning.
Next, you'll understand different types of transfer learning strategies such as fine-tuning and feature extraction.
Finally, you'll learn about some challenges in transfer learning such as data mismatch, bias in models, and ethical considerations.
When you’re finished with this course, you’ll have the skills and knowledge of transfer learning needed to tailor neural networks for your data.
Table of contents
- Understanding Transfer Learning 4m
- Types of Transfer Learning Strategies 1m
- Fine-tuning Pre-trained Models for Task-specific Objectives 1m
- Special Case: Feature Extraction as an Alternative Strategy 1m
- Advantages and Limitations of Fine-tuning and Feature Extraction 1m
- Factors in Choosing the Base Model 3m
- Case Studies: Transfer Learning 2m
- Benefits and Limitations of Transfer Learning Strategies 1m