Deep Learning at Scale: At the Intersection of Hardware, Software, and Data 1st Edition 275957

Код товару: 275957Паперова книга
Bringing a deep-learning project into production at scale is quite challenging. To successfully scale your project, a foundational understanding of full stack deep learning, including the knowledge that lies at the intersection of hardware, software, data, and algorithms, is required.
This book illustrates complex concepts of full stack deep learning and reinforces them through hands-on exercises to arm you with tools and techniques to scale your project. A scaling effort is only beneficial when it's effective and efficient. To that end, this guide explains the intricate concepts and techniques that will help you scale effectively and efficiently.
You'll gain a thorough understanding of:
  • How data flows through the deep-learning network and the role the computation graphs play in building your model
  • How accelerated computing speeds up your training and how best you can utilize the resources at your disposal
  • How to train your model using distributed training paradigms, i.e., data, model, and pipeline parallelism
  • How to leverage PyTorch ecosystems in conjunction with NVIDIA libraries and Triton to scale your model training
  • Debugging, monitoring, and investigating the undesirable bottlenecks that slow down your model training
  • How to expedite the training lifecycle and streamline your feedback loop to iterate model development
  • A set of data tricks and techniques and how to apply them to scale your training model
  • How to select the right tools and techniques for your deep-learning project
  • Options for managing the compute infrastructure when running at scale
About the Author
Suneeta holds a Ph.D. in applied science and has a computer science engineering background. She's worked extensively on distributed and scalable computing and machine learning experiences for IBM Software Labs, Expedita, USyd, and Nearmap. She currently leads the development of Nearmap's AI model system that produces high-quality AI data and sets and builds and manages a system that trains deep learning models efficiently. She is an active community member and speaker and enjoys learning and mentoring. She has presented at several top technical and academic conferences like SPIE, KubeCon, Knowledge Graph Conference, RE-Work, Kafka Summit, AWS Events, and YOW DATA. She has patents granted by USPTO and contributes to peer-reviewing journals besides publishing some papers in deep learning. She also authors for O'Reilly and Towards Data Science blogs and maintains her website at http://suneeta-mall.github.io
1'900 ₴
Купити
Monobank
до 10 платежей
от 213 ₴ / міс.
  • Нова Пошта
    Безкоштовно від 3'000,00 ₴
  • Укрпошта
    Безкоштовно від 1'000,00 ₴
  • Meest Пошта
    Безкоштовно від 3'000,00 ₴
Deep Learning at Scale: At the Intersection of Hardware, Software, and Data 1st Edition - фото 1
Інші книги Oreilly and Associates
Modern Data Analytics in Excel: Using Power Query, Power Pivot and More for Enhanced Data Analytics 1st Edition
275956
George Mount
1'700 ₴
NGINX Cookbook: Advanced Recipes for High-Performance Load Balancing 3rd Edition
273861
Derek DeJonghe
1'700 ₴
Zero Trust Networks: Building Secure Systems in Untrusted Network 2nd Edition
275838
Razi RaisChristina MorilloDoug BarthEvan Gilman
1'700 ₴
Laws of Ux: Using Psychology to Design Better Products & Services 2nd Edition
275590
Jon Yablonski
1'700 ₴
Web Application Security: Exploitation and Countermeasures for Modern Web Applications 2nd Edition
275577
Andrew Hoffman
1'700 ₴
Effective Rust: 35 Specific Ways to Improve Your Rust Code 1st Edition
275540
David Drysdale
1'700 ₴
Learning Opentelemetry: Setting Up and Operating a Modern Observability System 1st Edition
275781
Ted YoungAustin Parker
1'700 ₴
Effective Typescript: 83 Specific Ways to Improve Your Typescript 2nd Edition
275977
Dan Vanderkam
2'400 ₴

Характеристики

  • Бренд
  • Автор
  • Категорія
    Програмування
  • Рік
    2024
  • Сторінок
    400
  • Формат
    165х235 мм
  • Обкладинка
    М'яка
  • Тип паперу
    Офсетний
  • Мова
    Англійська
  • Ілюстрації
    Чорно-білі

Від видавця

Bringing a deep-learning project into production at scale is quite challenging. To successfully scale your project, a foundational understanding of full stack deep learning, including the knowledge that lies at the intersection of hardware, software, data, and algorithms, is required.
This book illustrates complex concepts of full stack deep learning and reinforces them through hands-on exercises to arm you with tools and techniques to scale your project. A scaling effort is only beneficial when it's effective and efficient. To that end, this guide explains the intricate concepts and techniques that will help you scale effectively and efficiently.
You'll gain a thorough understanding of:
  • How data flows through the deep-learning network and the role the computation graphs play in building your model
  • How accelerated computing speeds up your training and how best you can utilize the resources at your disposal
  • How to train your model using distributed training paradigms, i.e., data, model, and pipeline parallelism
  • How to leverage PyTorch ecosystems in conjunction with NVIDIA libraries and Triton to scale your model training
  • Debugging, monitoring, and investigating the undesirable bottlenecks that slow down your model training
  • How to expedite the training lifecycle and streamline your feedback loop to iterate model development
  • A set of data tricks and techniques and how to apply them to scale your training model
  • How to select the right tools and techniques for your deep-learning project
  • Options for managing the compute infrastructure when running at scale
About the Author
Suneeta holds a Ph.D. in applied science and has a computer science engineering background. She's worked extensively on distributed and scalable computing and machine learning experiences for IBM Software Labs, Expedita, USyd, and Nearmap. She currently leads the development of Nearmap's AI model system that produces high-quality AI data and sets and builds and manages a system that trains deep learning models efficiently. She is an active community member and speaker and enjoys learning and mentoring. She has presented at several top technical and academic conferences like SPIE, KubeCon, Knowledge Graph Conference, RE-Work, Kafka Summit, AWS Events, and YOW DATA. She has patents granted by USPTO and contributes to peer-reviewing journals besides publishing some papers in deep learning. She also authors for O'Reilly and Towards Data Science blogs and maintains her website at http://suneeta-mall.github.io

Відгуки про Deep Learning at Scale: At the Intersection of Hardware, Software, and Data 1st Edition

Deep Learning at Scale: At the Intersection of Hardware, Software, and Data 1st Edition
Deep Learning at Scale: At the Intersection of Hardware, Software, and Data 1st Edition
1'900 ₴
Купити
Персонально для вас
Reliable Machine Learning. Applying SRE Principles to ML in Production
197758
Cathy ChenNiall MurphyKranti Parisa
1'900 ₴
Machine Learning for High-Risk Applications: Approaches to Responsible AI 1st Edition
259255
Patrick HallJames CurtisParul Pandey
1'672 ₴1'900 ₴
Generative Deep Learning: Teaching Machines To Paint, Write, Compose, and Play 2nd Edition
263221
David Foster
1'900 ₴
Exploring Deepfakes: Deploy powerful AI techniques for face replacement and more with this comprehensive guide
264115
Bryan LyonMatt Tora
1'900 ₴
Machine Learning Theory and Applications: Hands-on Use Cases with Python on Classical and Quantum Machines
267937
Vasques Xavier
1'900 ₴
Machine Learning Interviews: Kickstart Your Machine Learning and Data Career 1st Edition
273421
Susan Shu Chang
1'900 ₴
Generative AI on AWS: Building Context-Aware Multimodal Reasoning Applications 1st Edition
273435
Shelbee EigenbrodeChris FreglyAntje Barth
1'900 ₴
Deep Learning for Finance: Creating Machine and Deep Learning Models for Trading in Python 1st Edition
275288
Sofien Kaabar
1'900 ₴
Deep Reinforcement Learning with Python: RLHF for Chatbots and Large Language Models Second Edition
295068
Nimish Sanghi
1'900 ₴
Beginning ChatGPT for Python: Build Intelligent Applications with OpenAI APIs First Edition
295072
Lydia EvelynBruce Hopkins
1'900 ₴
AI Agents in Action
302490
Micheal Lanham
1'900 ₴
UX for Enterprise ChatGPT Solutions: A practical guide to designing enterprise-grade LLMs
305807
Richard H. Miller
1'900 ₴
Decoding Large Language Models: An exhaustive guide to understanding, implementing, and optimizing LLMs for NLP applications
310250
Irena Cronin
1'900 ₴
Machine Learning System Design: With end-to-end examples
310470
Valerii BabushkinArseny Kravchenko
1'900 ₴
Quantum Machine Learning: An Applied Approach. The Theory and Application of Quantum Machine Learning in Science and Industry. 1st Ed.
244726
Santanu Ganguly
2'000 ₴
Supremacy
305335
Parmy Olson
2'000 ₴
Applied Deep Learning with TensorFlow 2. 2nd Ed.
244660
Umberto Michelucci
2'100 ₴
Architecting IoT Solutions on Azure: Conquering Complexity for Scalable Device and Data Management 1st Edition
275292
Blaize Stewart
1'700 ₴
C# 6.0 in a Nutshell. The Definitive Reference 6th Edition
34850
Joseph Albahari, Ben Albahari
3'795 ₴
Developing Apps With GPT-4 and ChatGPT: Build Intelligent Chatbots, Content Generators, and More 1st Edition
273877
Olivier CaelenMarie-alice Blete
1'700 ₴