<style>.perfmatters-lazy[data-src]{display:none!important}</style>

Undergraduate Fundamentals of Machine Learning

Author: William J. Deuschle

*Wait a few seconds for the document to load, the time may vary depending on your internet connection. If you prefer, you can download the file by clicking on the link below.

Information

Description: Undergraduate Fundamentals of Machine Learning is a comprehensive resource designed to provide students with a foundational understanding of machine learning.

Subject: Machine Learning

Pages: 143

Megabytes: 1.29 MB

Download

This may interest you

Foundations of Machine Learning

Mehryar Mohri, Afshin Rostamizadeh, Ameet Talwalkar

Foundations of Machine Learning, this second edition serves as a comprehensive introduction to machine learning, covering fundamental topics, theoretical frameworks, and practical applications.

Machine Learning - Supervised Techniques

Sepp Hochreiter

Machine Learning - Supervised Techniques, provides a comprehensive overview of supervised machine learning methods, emphasizing applications in bioinformatics.

Interpretable Machine Learning

Christoph Molnar

Interpretable Machine Learning, this book serves as a comprehensive guide to making complex machine learning models interpretable. It discusses various interpretability methods, their importance, and practical applications, making it crucial for practitioners and researchers seeking to improve model transparency and trustworthiness in AI.

Introduction to machine learning

Nils J. Nilsson

Introduction to machine learning, this paper serves as an initial draft of a textbook proposal on machine learning. Covers fundamental concepts, various types of learning and methods.

Machine Learning

Jaydip Sen

Machine Learning, this document presents a comprehensive overview of recent advancements in machine learning, particularly in applications such as finance, healthcare, and automation.