LIVRES NUMÉRIQUESJEUNESSEBÉBÉJEUX, JOUETSPAPETERIECADEAUXDIVERTISSEMENT


Message Important
Le site sera temporairement en maintenance, pour une mise à jour. Ceci afin de mieux vous servir.
Heure de maintenance prévue : 10:30 pm

Important message
The site will be busy updating the store for you and will be back shortly.
Scheduled maintenance : 10:30 pm
Python Deep Learning - DONALD R BREWER

Python Deep Learning

DONALD R BREWER

 
50,00 $

Livre en anglais
Feuilleter Feuilleter
Sur commande : 2 à 4 semaines
Quantité
Ajouter à ma liste de souhaits
Non disponible en succursale
EN SAVOIR PLUS Résumé

We are at crossroads in deep learning. Today, deep learning developers typically utilize one of the top two machine learning frameworks: Tensorflow, developed by Google/Deepmind, and PyTorch, developed by Facebook. In industry, Tensorflow is still more widely adopted. Still, PyTorch is rapidly up-and-coming in the research community, where 70%-80% of recently submitted conference research papers utilize PyTorch instead of Tensorflow. A recent 2020 Stack Overflow survey of the most popular frameworks and libraries reported that PyTorch was selected by an est 30% of respondents vs. 70% for Tensorflow, with PyTorch nearly doubling in popularity over the last two years. In the next couple of years, as these machine learning frameworks become equal in popularity, a book must well verse developers in both so they can choose the right methodology to help solve their deep learning problems.

The problem is that most deep learning books published today focus on just one of the machine learning frameworks. Python Deep Learning would identify both frameworks' pros and cons and then teach deep learning concepts utilizing practical examples from the framework best suited for particular problems. This book also features the APIs and libraries integrated with the respective framework, Keras for Tensorflow and fastai for PyTorch, that make application development and deployment even more straightforward.

What this Books Covers:

Introduction and overview of deep learning concepts
Description of the two machine learning frameworks: Tensorflow and PyTorch, as well as successful examples of their usage
Detail the pros and cons of each machine learning framework
Overview of the supportive libraries and APIs (including Keras and fastai) for each of the frameworks that make application development simpler
Chapter-by-chapter review of the top neural network topologies (CNN, RNN, LSTM, MLP, and several newer variants)
Interesting code examples of practical applications of the different neural networks, not the same tired MNIST and other examples often utilized today
Final series of code examples (in Tensorflow or PyTorch) of real-world deep learning solutions that utilize more exotic neural network topologies


Détails
Prix : 50,00 $
Catégorie :
Auteur :  DONALD R BREWER
Titre : Python Deep Learning
Date de parution : 02 février 2022
Éditeur : WILEY JOHN & SONS
Sujet : Programmation
ISBN : 9781119821113 (1119821118)
Référence Renaud-Bray : 17398548
No de produit : 3561312

2001: A Space Odyssey (Special Edition) 12,99 $ Quantité : 1

30 jours au Groenland 39,95 $ Quantité : 1
1449 article(s) au panier.
Sous-total: 36 291,11 $
Renaud-Bray vous offre
les frais de livraison *