Almost ready!
In order to save audiobooks to your Wish List you must be signed in to your account.
Log in Create accountShop small, give big!
With credit bundles, you choose the number of credits and your recipient picks their audiobooks—all in support of local bookstores.
Start giftingLimited-time offer
Get two free audiobooks!
Nowโs a great time to shop indie. When you start a new one credit per month membership supporting local bookstores with promo code SWITCH, weโll give you two bonus audiobook credits at sign-up.
Sign up todayMachine Learning Unraveled
This audiobook uses AI narration.
Weโre taking steps to make sure AI narration is transparent.
Learn moreSummary
It is a perceptive and thorough introduction to the challenging but intriguing fields of artificial intelligence, data science, and machine learning. This book, written with depth and clarity, is a vital tool for anyone trying to comprehend and use these revolutionary technologies.
The first part of the book establishes a solid foundation in machine learning principles. Essential concepts like algorithms, data pretreatment, and model evaluation are presented to readers; each is carefully described to guarantee that they understand the fundamentals. Because of the writers' systematic and approachable style, even individuals who are unfamiliar with the subject may understand complex subjects.
The focus on real-world applications in "Machine Learning Unraveled" is one of its best qualities. The book shows how machine learning and data science are used in practical situations with thorough case studies and examples from a variety of sectors. The writers successfully close the knowledge gap between theory and reality, whether they are talking about recommendation systems in retail, autonomous cars in transportation, or predictive analytics in healthcare. This practical approach not only improves understanding but also highlights the real-world advantages and effects of these technologies.
The important societal and ethical questions raised by AI and machine learning are also covered in the book. In a time when worries about algorithmic bias, data privacy, and job displacement are growing, the writers offer a fair and impartial analysis of the appropriate and responsible application of these technologies. They support placing ethical issues front and center in technical development so that innovations serve society as a whole.
ย