Essential Math for AI: Exploring Linear Algebra, Probability and Statistics, Calculus, Graph Theory, Discrete Mathematics, Numerical Methods, Optimization Techniques, and More

Are you ready to unlock the mathematical secrets that power today's most advanced artificial intelligence systems? "Essential Math for AI" is an essential guide for anyone looking to understand the complex mathematical underpinnings of AI. Whether you're an AI enthusiast, a student, or a professional in the field, this book is tailored to enrich your knowledge and prepare you for the future of AI innovation.

Here's what you'll discover inside:

  • Linear Algebra: Dive into the core of machine learning with in-depth explorations of vectors, matrices, and data transformations.
  • Probability and Statistics: Learn how to make sense of data and uncertainty, which is crucial for developing robust AI applications.
  • Calculus: Optimize AI models using the power of derivatives, integrals, and multivariable optimization.
  • Graph Theory: Model complex relationships and understand the algorithms that can navigate these structures in AI.
  • Discrete Mathematics: Tackle combinatorial problems and optimize algorithmic efficiency, a cornerstone of AI development.
  • Numerical Methods: Solve equations and approximate functions, enhancing the computational power of AI.
  • Optimization Techniques: From gradient descent to swarm intelligence, master the methods that enhance AI performance.
  • Game Theory: Analyze strategic decision-making and its profound implications in AI.
  • Information Theory: Quantify and encode data, ensuring efficiency and integrity in AI systems.
  • Topology and Geometry: Uncover hidden structures in data, paving the way for breakthroughs in AI research.

"Essential Math for AI" provides a comprehensive overview of the mathematical concepts propelling AI forward and offers a glimpse into the future of how these disciplines will continue to shape the AI landscape. With chapter summaries to consolidate your learning and a clear path charted for future exploration, this book is your roadmap to becoming well-versed in the mathematics of AI.

Take the next step in your AI journey. Embrace the mathematical challenges and opportunities with "Essential Math for AI."

1144386797
Essential Math for AI: Exploring Linear Algebra, Probability and Statistics, Calculus, Graph Theory, Discrete Mathematics, Numerical Methods, Optimization Techniques, and More

Are you ready to unlock the mathematical secrets that power today's most advanced artificial intelligence systems? "Essential Math for AI" is an essential guide for anyone looking to understand the complex mathematical underpinnings of AI. Whether you're an AI enthusiast, a student, or a professional in the field, this book is tailored to enrich your knowledge and prepare you for the future of AI innovation.

Here's what you'll discover inside:

  • Linear Algebra: Dive into the core of machine learning with in-depth explorations of vectors, matrices, and data transformations.
  • Probability and Statistics: Learn how to make sense of data and uncertainty, which is crucial for developing robust AI applications.
  • Calculus: Optimize AI models using the power of derivatives, integrals, and multivariable optimization.
  • Graph Theory: Model complex relationships and understand the algorithms that can navigate these structures in AI.
  • Discrete Mathematics: Tackle combinatorial problems and optimize algorithmic efficiency, a cornerstone of AI development.
  • Numerical Methods: Solve equations and approximate functions, enhancing the computational power of AI.
  • Optimization Techniques: From gradient descent to swarm intelligence, master the methods that enhance AI performance.
  • Game Theory: Analyze strategic decision-making and its profound implications in AI.
  • Information Theory: Quantify and encode data, ensuring efficiency and integrity in AI systems.
  • Topology and Geometry: Uncover hidden structures in data, paving the way for breakthroughs in AI research.

"Essential Math for AI" provides a comprehensive overview of the mathematical concepts propelling AI forward and offers a glimpse into the future of how these disciplines will continue to shape the AI landscape. With chapter summaries to consolidate your learning and a clear path charted for future exploration, this book is your roadmap to becoming well-versed in the mathematics of AI.

Take the next step in your AI journey. Embrace the mathematical challenges and opportunities with "Essential Math for AI."

15.78 In Stock
Essential Math for AI: Exploring Linear Algebra, Probability and Statistics, Calculus, Graph Theory, Discrete Mathematics, Numerical Methods, Optimization Techniques, and More

Essential Math for AI: Exploring Linear Algebra, Probability and Statistics, Calculus, Graph Theory, Discrete Mathematics, Numerical Methods, Optimization Techniques, and More

by Andrew Hinton
Essential Math for AI: Exploring Linear Algebra, Probability and Statistics, Calculus, Graph Theory, Discrete Mathematics, Numerical Methods, Optimization Techniques, and More

Essential Math for AI: Exploring Linear Algebra, Probability and Statistics, Calculus, Graph Theory, Discrete Mathematics, Numerical Methods, Optimization Techniques, and More

by Andrew Hinton

Paperback

$15.78 
  • SHIP THIS ITEM
    In stock. Ships in 1-2 days.
  • PICK UP IN STORE

    Your local store may have stock of this item.

Related collections and offers


Overview

Are you ready to unlock the mathematical secrets that power today's most advanced artificial intelligence systems? "Essential Math for AI" is an essential guide for anyone looking to understand the complex mathematical underpinnings of AI. Whether you're an AI enthusiast, a student, or a professional in the field, this book is tailored to enrich your knowledge and prepare you for the future of AI innovation.

Here's what you'll discover inside:

  • Linear Algebra: Dive into the core of machine learning with in-depth explorations of vectors, matrices, and data transformations.
  • Probability and Statistics: Learn how to make sense of data and uncertainty, which is crucial for developing robust AI applications.
  • Calculus: Optimize AI models using the power of derivatives, integrals, and multivariable optimization.
  • Graph Theory: Model complex relationships and understand the algorithms that can navigate these structures in AI.
  • Discrete Mathematics: Tackle combinatorial problems and optimize algorithmic efficiency, a cornerstone of AI development.
  • Numerical Methods: Solve equations and approximate functions, enhancing the computational power of AI.
  • Optimization Techniques: From gradient descent to swarm intelligence, master the methods that enhance AI performance.
  • Game Theory: Analyze strategic decision-making and its profound implications in AI.
  • Information Theory: Quantify and encode data, ensuring efficiency and integrity in AI systems.
  • Topology and Geometry: Uncover hidden structures in data, paving the way for breakthroughs in AI research.

"Essential Math for AI" provides a comprehensive overview of the mathematical concepts propelling AI forward and offers a glimpse into the future of how these disciplines will continue to shape the AI landscape. With chapter summaries to consolidate your learning and a clear path charted for future exploration, this book is your roadmap to becoming well-versed in the mathematics of AI.

Take the next step in your AI journey. Embrace the mathematical challenges and opportunities with "Essential Math for AI."


Product Details

ISBN-13: 9781923045866
Publisher: Book Bound Studios
Publication date: 11/13/2023
Series: AI Fundamentals
Pages: 158
Product dimensions: 6.00(w) x 9.00(h) x 0.34(d)
From the B&N Reads Blog

Customer Reviews