Mastering AI: Big Data, Deep Learning, and the Evolution of Large
Language Models -- AutoML from Basics to State-of-the-Art Techniques
Main:167 Pages
Bibliography:1 Pages
Appendix:1 Pages
Abstract
This manuscript presents a comprehensive guide to Automated Machine Learning (AutoML), covering fundamental principles, practical implementations, and future trends. The paper is structured to assist both beginners and experienced practitioners, with detailed discussions on popular AutoML tools such as TPOT, AutoGluon, and Auto-Keras. It also addresses emerging topics like Neural Architecture Search (NAS) and AutoML's applications in deep learning. We believe this work will contribute to ongoing research and development in the field of AI and machine learning.
View on arXivComments on this paper
