Design Patterns of Deep Learning with TensorFlow : Building a customer hyper-personalisation ecosystem using deep learning design patterns

Enregistré dans:
Détails bibliographiques
Auteur principal: Joseph, Thomas V.. (Auteur)
Support: E-Book
Langue: Anglais
Publié: New Delhi : BPB Publications.
Autres localisations: Voir dans le Sudoc
Résumé: Architecting AI: Design patterns for building deep learning products. Key Features: Master foundational concepts in design patterns of deep learning ; Benefit from practical insights shared by an industry professional ; Learn to build data products using deep learning.Description: Design Patterns of Deep Learning with TensorFlow is your comprehensive guide to learning deep learning from a design pattern perspective. In this book, we explore deep learning within the context of building hyper-personalization models, exploring its applications across various industries and scenarios. It starts by showing how deep learning enhances retail through customer segmentation and data analysis. You will learn neural networks, computer vision with CNNs, and NLP for analyzing customer behavior. This book addresses challenges like uneven data and optimizing models with techniques like backpropagation, hyperparameter tuning, and transfer learning. Finally, it covers setting up data pipelines and deploying your system. With practical tips and actionable advice, this book equips readers with the skills and strategies needed to thrive in today's competitive AI landscape.By the end of this book, you will be equipped with the knowledge and practical skills to build and deploy deep learning-powered hyper-personalization systems that deliver exceptional customer experiences. What you will learn: Understand about hyper-personalized AI models for tailored user experiences ; Design principles of computer vision and NLP models ; Inner working of transformers equipping readers to understand the intricacies of generative AI and large language models (LLMs) like ChatGPT ; To get the best out of deep learning models through hyperparameter tuning and transfer learning ; Learn how to build deployment pipelines to serve models into production environments seamlessly. Who this book is for: This book caters to both beginners and experienced practitioners in the field of data science and Machine Learning. Through practical examples, it simplifies complex ideas, linking them to design patterns
Accès en ligne: Accès à l'E-book
LEADER 03986nmm a2200409 i 4500
001 ebook-280850409
005 20241014154542.0
007 cu|uuu---uuuuu
008 241014s2024||||ii ||||g|||| ||||||eng d
035 |a FRCYB88958009 
035 |a FRCYB26088958009 
035 |a FRCYB24888958009 
035 |a FRCYB29388958009 
035 |a FRCYB084688958009 
035 |a FRCYB087588958009 
035 |a FRCYB56788958009 
035 |a FRCYB097088958009 
035 |a FRCYB087088958009 
040 |a ABES  |b fre  |e AFNOR 
041 0 |a eng  |2 639-2 
100 1 |a Joseph, Thomas V..  |4 aut.  |e Auteur 
245 1 0 |a Design Patterns of Deep Learning with TensorFlow :  |b Building a customer hyper-personalisation ecosystem using deep learning design patterns   |c Thomas V. Joseph. 
264 1 |a New Delhi :  |b BPB Publications. 
264 2 |a Paris :  |b Cyberlibris,  |c 2024. 
336 |b txt  |2 rdacontent 
337 |b c  |2 rdamedia 
337 |b b  |2 isbdmedia 
338 |b ceb  |2 RDAfrCarrier 
500 |a Couverture (https://static2.cyberlibris.com/books_upload/136pix/9789355516497.jpg). 
506 |a L'accès en ligne est réservé aux établissements ou bibliothèques ayant souscrit l'abonnement  |e Cyberlibris 
520 |a Architecting AI: Design patterns for building deep learning products. Key Features: Master foundational concepts in design patterns of deep learning ; Benefit from practical insights shared by an industry professional ; Learn to build data products using deep learning.Description: Design Patterns of Deep Learning with TensorFlow is your comprehensive guide to learning deep learning from a design pattern perspective. In this book, we explore deep learning within the context of building hyper-personalization models, exploring its applications across various industries and scenarios. It starts by showing how deep learning enhances retail through customer segmentation and data analysis. You will learn neural networks, computer vision with CNNs, and NLP for analyzing customer behavior. This book addresses challenges like uneven data and optimizing models with techniques like backpropagation, hyperparameter tuning, and transfer learning. Finally, it covers setting up data pipelines and deploying your system. With practical tips and actionable advice, this book equips readers with the skills and strategies needed to thrive in today's competitive AI landscape.By the end of this book, you will be equipped with the knowledge and practical skills to build and deploy deep learning-powered hyper-personalization systems that deliver exceptional customer experiences. What you will learn: Understand about hyper-personalized AI models for tailored user experiences ; Design principles of computer vision and NLP models ; Inner working of transformers equipping readers to understand the intricacies of generative AI and large language models (LLMs) like ChatGPT ; To get the best out of deep learning models through hyperparameter tuning and transfer learning ; Learn how to build deployment pipelines to serve models into production environments seamlessly. Who this book is for: This book caters to both beginners and experienced practitioners in the field of data science and Machine Learning. Through practical examples, it simplifies complex ideas, linking them to design patterns 
559 2 |b 1. Customer Hyper-personalization  |b 2. Introduction to Design Patterns and Neural Networks  |b 3. Design Patterns in Visual Representation Learning  |b 4. Design Patterns for Non-Visual Representation Learning  |b 5. Design Patterns for Transformers  |b 6. Data Distribution Challenges and Strategies  |b 7. Model Training Philosophies  |b 8. Hyperparameter Tuning  |b 9. Transfer Learning  |b 10. Setting Up Data and Deployment Pipelines 
856 |q HTML  |u https://srvext.uco.fr/login?url=https://univ.scholarvox.com/book/88958009  |w Données éditeur  |z Accès à l'E-book 
886 2 |2 unimarc  |a 181  |a i#  |b xxxe## 
993 |a E-Book  
994 |a BNUM 
995 |a 280850409