Belépés   Regisztráció
Belépés
Felhasználónév
Jelszó: Elfelejtett jelszó?
 
HHW.hu
Filmek
TV Sorozatok Feliratos filmek Szinkronos filmek HD és Blu-ray Karácsony Online nézhető filmek Film kollekciók Mobilos filmek Rajzfilmek Dokumentum filmek Horror filmek Magyar filmek DVD ISO HUN DVD ISO ENG DVD-Rip ENG 3D filmek Zenés filmek
Zenék
Zenei Kérések Videóklippek, koncertfelvételek OST Single
Játékok
Játék Kérések
XXX
XXX Játékok XXX Magyar XXX Sorozatok, Gyűjtemények XXX Képek XXX Magazinok, képregények XXX Videók és Rövid filmek
Mobil
Mobilos filmek Mobilos programok Androidos játékok Mobil Háttérképek Csengőhangok
Programok
Windows Op. ISO ENG Windwos Op. ISO HUN Microsoft Office MacOS Program Kérések
Háttérképek
Templates Háttérképek Témák
E-könyvek
E-könyv Kérések Külföldi könyvek Hangoskönyvek Külföldi magazinok Gyerek hangoskönyvek Gyerekdalok
Mai Friss

Keresés
A fő kategória kiválasztásával az alfórumokban is keres.
HHW.hu Letöltések E-könyvek Külföldi könyvek Math behind deep learning Foundations of backpropagation loss functions and optimization (Maths and AI Together)

  • 0 szavazat - átlag 0
  • 1
  • 2
  • 3
  • 4
  • 5
Rétegzési módok
Math behind deep learning Foundations of backpropagation loss functions and optimization (Maths and AI Together)
Nem elérhető book24h
Power User
**
Üzenetek: 154,468
Témák: 154,468
Thanks Received: 0 in 0 posts
Thanks Given: 0
Csatlakozott: Sep 2024
Értékelés: 0
#1
2026-01-25, 22:33
[Kép: 1ff157c1b9638c8d46a16692a2798698.webp]
Free Download Math behind deep learning: Foundations of backpropagation loss functions and optimization (Maths and AI Together) by Anshuman Mishra
English | 30 September 2025 | ISBN: N/A | ASIN: B0FTGHFPKG | 482 pages | EPUB | 0.35 Mb
The rise of deep learning has transformed almost every domain of science, technology, and society. From powering search engines and autonomous vehicles to enabling breakthrough discoveries in medicine, genomics, climate science, and natural language processing, deep learning is the central driver of today's artificial intelligence revolution. But behind the powerful algorithms and complex neural architectures lies an undeniable truth: mathematics is the true foundation of deep learning.

Despite the popularity of AI, a common challenge faced by students, researchers, and professionals is that most deep learning resources tend to focus on coding, libraries, and quick implementations, while neglecting the mathematical backbone of these models. This creates a gap: practitioners may learn how to use frameworks like TensorFlow or PyTorch but struggle to truly understand why certain models work, how optimizations happen, or what mathematical structures are guiding the learning process.
This book, "Math Behind Deep Learning: Foundations of Backpropagation, Loss Functions, and Optimization," is designed to fill that gap. It goes beyond coding tutorials and dives deeply into the mathematics that makes deep learning possible. By carefully covering linear algebra, calculus, probability, optimization, and their applications in backpropagation, loss functions, and gradient descent, this book ensures that readers develop not just the how-to skills but also the why-it-works insights.
Mathematics is not a side note in deep learning-it is the language in which neural networks are written. This book ensures you become fluent in that language.
2. Who Will Benefit from This Book?
This book is written with a diverse audience in mind, ensuring its usefulness across academic, research, and professional domains.
2.1 StudentsUndergraduate and postgraduate students in Computer Science, Data Science, Artificial Intelligence, Applied Mathematics, and Engineering will find this book extremely valuable.For students preparing for exams or research, the book serves as both a textbook and a reference guide.Exercises and solved examples make it easier to practice the mathematical techniques that appear in assignments, projects, and research papers.2.2 ResearchersDeep learning research is rapidly evolving, with new architectures, optimizers, and theoretical models appearing every year.For researchers, especially PhD scholars, this book provides mathematical clarity on optimization landscapes, loss function behaviors, and the rigorous derivation of backpropagation.It helps researchers design new models with a strong understanding of their mathematical implications.2.3 Professionals and Industry PractitionersData scientists, machine learning engineers, and AI practitioners in industry often face the problem of treating neural networks as "black boxes."By understanding the math, professionals can debug models, optimize training efficiency, and design better architectures.In fields like finance, healthcare, robotics, cybersecurity, and natural language processing, understanding mathematical optimization can mean the difference between a working model and a failed system.2.4 Educators and TrainersProfessors, lecturers, and trainers in AI and ML courses will find this book a valuable teaching companion.It provides structured chapters, worked examples, and exercises that can be adapted for classrooms and workshops.2.5 Enthusiastic LearnersEven self-learners and AI enthusiasts who want to move beyond superficial understanding will benefit.Anyone curious about how deep learning works "under the hood" will find the book rewarding.

Buy Premium From My Links To Get Resumable Support,Max Speed & Support Me
Idézet:A kódrészlet megtekintéséhez be kell jelentkezned, vagy nincs jogosultságod a tartalom megtekintéséhez.
Links are Interchangeable - Single Extraction

  •
A szerző üzeneteinek keresése
Válaszol


Hasonló témák...
Téma: Szerző Válaszok: Megtekintések: Utolsó üzenet
  Artificial Intelligence For Business Optimization True EPUB (Bhuvan Unhelkar and Tad Gonsalves) Farid-Khan 0 33 2026-03-23, 14:55
Utolsó üzenet: Farid-Khan
  Foundations Of Cybersecurity Second Edition (Jason Andress) Farid-Khan 0 32 2026-03-23, 14:17
Utolsó üzenet: Farid-Khan
  Neurocognitive Foundations Of Mind (Piccinini, Gualtiero (EDT)) Farid-Khan 0 25 2026-03-22, 21:07
Utolsó üzenet: Farid-Khan
  Deep Learning Methods Of Mathematical Physics Vol I (2026) (Ovidiu Calin) Farid-Khan 0 27 2026-03-21, 19:12
Utolsó üzenet: Farid-Khan
  Born Max Collected Works In Physics 18 Books (Nelson H. F. Beebe <beebe@gamma.math.utah.edu>) Farid-Khan 0 24 2026-03-21, 19:06
Utolsó üzenet: Farid-Khan
  The Dark Frontier Unlocking The Secrets Of The Deep Sea (Jeffrey Marlow;) Farid-Khan 0 23 2026-03-21, 18:28
Utolsó üzenet: Farid-Khan
  Maths Revolution How To Turn Resistance Into GCSE Success (Julia Smith;) Farid-Khan 0 25 2026-03-20, 11:17
Utolsó üzenet: Farid-Khan
  Hybrid Energy Systems Planning Operation And Optimization (Huu Hieu Nguyen;Van Ga Bui;Thanh Viet Dinh;Minh Quan Duong;Tr Farid-Khan 0 25 2026-03-20, 10:54
Utolsó üzenet: Farid-Khan
  Foundations Of Cybersecurity 2nd Edition A Straightforward Introduction 2nd Edition (Jason Andress) Farid-Khan 0 24 2026-03-19, 16:10
Utolsó üzenet: Farid-Khan
  The Science Of Learning Meets AI A Practical Faculty Guide To Purposeful Integration Student Engagement And Ethical Prac Farid-Khan 0 23 2026-03-19, 15:54
Utolsó üzenet: Farid-Khan

Digg   Delicious   Reddit   Facebook   Twitter   StumbleUpon  


Jelenlevő felhasználók ebben a témában:
1 Vendég

  •  
  • Vissza a lap tetejére  
  • Lite mode  
  •  Kapcsolat
Theme © 2014 iAndrew
MyBB, © 2002-2026 MyBB Group.
Lineáris
Rétegezett
Megtekintés nyomtatható verzióban
Feliratkozás a témára
Szavazás hozzáadása ehhez a témához
Send thread to a friend