Skip to content

Booksellers & Trade Customers: Sign up for online bulk buying at trade.atlanticbooks.com for wholesale discounts

Booksellers: Create Account on our B2B Portal for wholesale discounts

Synthetic Differential Geometry in AI: A New Approach to Machine Learning

by Jamie Flux
Sold out
Current price ₹3,959.00
Original price ₹4,394.00
Original price ₹4,394.00
Original price ₹4,394.00
(-10%)
₹3,959.00
Current price ₹3,959.00

Imported Edition - Ships in 18-21 Days

Free Shipping in India on orders above Rs. 500

Request Bulk Quantity Quote
+91
Book cover type: Paperback
  • ISBN13: 9798340285195
  • Binding: Paperback
  • Subject: N/A
  • Publisher: Independently Published
  • Publisher Imprint: Independently Published
  • Publication Date:
  • Pages: 386
  • Original Price: GBP 37.23
  • Language: English
  • Edition: N/A
  • Item Weight: 513 grams
  • BISAC Subject(s): Geometry / Non-Euclidean

This book explores the fusion of Synthetic Differential Geometry (SDG) with artificial intelligence (AI) and machine learning, presenting a novel framework that leverages the power of infinitesimals and categorical logic. By reimagining the mathematical foundations of machine learning through the lens of SDG, the book offers fresh insights and tools for tackling complex problems in AI.

Foundations of Synthetic Differential Geometry in AI

This section introduces the principles of SDG, emphasizing its differences from classical differential geometry, particularly in the treatment of infinitesimals and smooth spaces. It sets the stage for how these concepts can be naturally integrated into AI algorithms, providing a more intuitive and flexible mathematical framework.

Modeling Data Manifolds with Infinitesimals

Here, the book delves into the representation of data as smooth manifolds within machine learning models. By utilizing infinitesimals, it offers a new perspective on navigating high-dimensional data spaces, enhancing techniques like manifold learning and dimensionality reduction.

Advanced Optimization Techniques via SDG

This topic explores how SDG can revolutionize optimization methods in machine learning. By applying infinitesimal calculus within SDG, the book presents innovative approaches to gradient descent and other optimization algorithms, potentially leading to faster convergence and better handling of non-convex landscapes.

Redesigning Neural Architectures through SDG

The book discusses the application of SDG to neural network design, proposing new architectures that inherently incorporate smoothness and continuity. It examines how infinitesimal transformations can improve neural network training, activation functions, and generalization capabilities.

Practical Applications and Case Studies

Finally, the book showcases real-world applications where SDG-enhanced machine learning models outperform traditional approaches. Through detailed case studies in fields like computer vision, natural language processing, and robotics, it demonstrates the practical advantages and potential of integrating SDG into AI workflows.

Trusted for over 49 years

Family Owned Company

Secure Payment

All Major Credit Cards/Debit Cards/UPI & More Accepted

New & Authentic Products

India's Largest Distributor

Need Support?

Whatsapp Us