What you'll learn:
- Explain the importance and benefits of improving the performance of your LLM model beyond traditional fine tuning methods
- Identify and apply the data augmentation techniques that can increase the quantity and diversity of your data for fine tuning your LLM model
- Identify and apply the domain adaptation techniques that can reduce the mismatch and inconsistency of your data for fine tuning your LLM model
- Identify and apply the model pruning techniques that can reduce the complexity and size of your LLM model after fine tuning it
- Identify and apply the model distillation techniques that can improve the efficiency and speed of your LLM model after fine tuning it
In this course, we will explore some techniques and methods that can help you improve the performance of your LLM model beyond traditional fine tuning methods. You should purchase this course if you are a business leader or a developer who is interested in fine tuning your LLMmodel. These techniques and methods can help you overcome some of the limitations and challenges of fine tuning by enhancing the quality and quantity of your data, reducing the mismatch and inconsistency of your data, reducing the complexity and size of your LLM model, and improving the efficiency and speed of your LLM model.
The main topics that we will cover in this course are:
Section 1: How to use data augmentation techniques to increase the quantity and diversity of your data for fine tuning your LLM model
Section 2: How to use domain adaptation techniques to reduce the mismatch and inconsistency of your data for fine tuning your LLM model
Section 3: How to use model pruning techniques to reduce the complexity and size of your LLM model after fine tuning it
Section 4: How to use model distillation techniques to improve the efficiency and speed of your LLM model after fine tuning it
By the end of this course, you will be able to:
Explain the importance and benefits of improving the performance of your LLM model beyond traditional fine tuning methods
Identify and apply the data augmentation techniques that can increase the quantity and diversity of your data for fine tuning your LLM model
Identify and apply the domain adaptation techniques that can reduce the mismatch and inconsistency of your data for fine tuning your LLM model
Identify and apply the model pruning techniques that can reduce the complexity and size of your LLM model after fine tuning it
Identify and apply the model distillation techniques that can improve the efficiency and speed of your LLM model after fine tuning it
This course is designed for anyone who is interested in learning how to improve the performance of their LLM models beyond traditional fine tuning methods. You should have some basic knowledge of natural language processing, deep learning, and Python programming.
I hope you are excited to join me in this course.