Booktopia has been placed into Voluntary Administration. Orders have been temporarily suspended, whilst the process for the recapitalisation of Booktopia and/or sale of its business is completed, following which services may be re-established. All enquiries from creditors, including customers with outstanding gift cards and orders and placed prior to 3 July 2024, please visit https://www.mcgrathnicol.com/creditors/booktopia-group/
Add free shipping to your order with these great books
Machine Learning Q and AI : 30 Essential Questions and Answers on Machine Learning and AI - Sebastian Raschka

Machine Learning Q and AI

30 Essential Questions and Answers on Machine Learning and AI

By: Sebastian Raschka

Paperback | 16 April 2024

Sorry, we are not able to source the book you are looking for right now.

We did a search for other books with a similar title, however there were no matches. You can try selecting from a similar category, click on the author's name, or use the search box above to find your book.

If you're ready to venture beyond introductory concepts and dig deeper into machine learning, deep learning, and AI, the question-and-answer format of Machine Learning Q and AI will make things fast and easy for you, without a lot of mucking about.

Born out of questions often fielded by author Sebastian Raschka, the direct, no-nonsense approach of this book makes advanced topics more accessible and genuinely engaging. Each brief, self-contained chapter journeys through a fundamental question in AI, unraveling it with clear explanations, diagrams, and hands-on exercises.

WHAT'S INSIDE-

FOCUSED CHAPTERS- Key questions in AI are answered concisely, and complex ideas are broken down into easily digestible parts.

WIDE RANGE OF TOPICS- Raschka covers topics ranging from neural network architectures and model evaluation to computer vision and natural language processing.

PRACTICAL APPLICATIONS- Learn techniques for enhancing model performance, fine-tuning large models, and more.

You'll also explore how to-
. Manage the various sources of randomness in neural network training
. Differentiate between encoder and decoder architectures in large language models
. Reduce overfitting through data and model modifications
. Construct confidence intervals for classifiers and optimize models with limited labeled data
. Choose between different multi-GPU training paradigms and different types of generative AI models
. Understand performance metrics for natural language processing
. Make sense of the inductive biases in vision transformers

If you've been on the hunt for the perfect resource to elevate your understanding of machine learning, Machine Learning Q and AI will make it easy for you to painlessly advance your knowledge beyond the basics.

Learn the answers to 30 cutting-edge questions in machine learning and AI and level up your expertise in the field.

If you're ready to venture beyond introductory concepts and dig deeper into machine learning, deep learning, and AI, the question-and-answer format of Machine Learning Q and AI will make things fast and easy for you, without a lot of mucking about.

Born out of questions often fielded by author Sebastian Raschka, the direct, no-nonsense approach of this book makes advanced topics more accessible and genuinely engaging. Each brief, self-contained chapter journeys through a fundamental question in AI, unraveling it with clear explanations, diagrams, and hands-on exercises.

WHAT'S INSIDE-

FOCUSED CHAPTERS- Key questions in AI are answered concisely, and complex ideas are broken down into easily digestible parts.

WIDE RANGE OF TOPICS- Raschka covers topics ranging from neural network architectures and model evaluation to computer vision and natural language processing.

PRACTICAL APPLICATIONS- Learn techniques for enhancing model performance, fine-tuning large models, and more.

You'll also explore how to-
. Manage the various sources of randomness in neural network training
. Differentiate between encoder and decoder architectures in large language models
. Reduce overfitting through data and model modifications
. Construct confidence intervals for classifiers and optimize models with limited labeled data
. Choose between different multi-GPU training paradigms and different types of generative AI models
. Understand performance metrics for natural language processing
. Make sense of the inductive biases in vision transformers

If you've been on the hunt for the perfect resource to elevate your understanding of machine learning, Machine Learning Q and AI will make it easy for you to painlessly advance your knowledge beyond the basics.

More in Probability & Statistics

Discovering Statistics Using R - Andy Field

FREE SHIPPING

RRP $168.00

$119.75

29%
OFF
Introductory Econometrics for Finance : 4th edition - Chris Brooks
Mathematical Statistics with Applications : 7th Edition - Dennis Wackerly
Mind on Statistics : 6th Edition - Jessica M. Utts

RRP $227.95

$179.75

21%
OFF
Introduction to Statistics and Data Analysis : 7th Edition - Roxy Peck
Statistics Using Stata : 3rd Edition - An Integrative Approach - Sharon Lawner Weinberg
Research Methods and Statistics in Psychology : 8th Edition - Hugh Coolican
Think Stats : Exploratory Data Analysis - Allen Downey

RRP $66.50

$29.35

56%
OFF
Statistics in a Nutshell : In a Nutshell - Sarah Boslaugh

RRP $104.50

$55.25

47%
OFF
An Adventure in Statistics 2ed : The Reality Enigma - Andy Field

FREE SHIPPING

Statistics For Dummies : 2nd edition - Deborah J. Rumsey

RRP $41.95

$34.80

17%
OFF