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Volver a Deep Learning with PyTorch: Build a Neural Network

Opiniones y comentarios de aprendices correspondientes a Deep Learning with PyTorch: Build a Neural Network por parte de Coursera Project Network

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5 reseña

Acerca del Curso

In this one-hour project-based course, you will get to know the basic components of pytorch through hands-on tasks. You will learn how to define, train, and evaluate a neural network with pytorch. By the end of this project, you will build a neural network which can classify handwritten digits. You will be able to create a neural network using pytorch and complete classification tasks in deep learning with pytorch. This guided project is for learners who want to use pytorch for building deep learning models. Learners who have a basic understanding of deep neural networks and want to apply neural network using deep learning framework like pytorch. This project provides learners with deeper knowledge about the basics of pytorch and its main components. In order to be successful in this project, you should be familiar with python and neural networks....

Principales reseñas

VM
5 de feb. de 2021

One of the best PyTorch tutorials I had seen so far. Each parameter and function are explained very well.

KD
10 de dic. de 2020

Superb Explanation with all guidance during the course.

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1 - 5 de 5 revisiones para Deep Learning with PyTorch: Build a Neural Network

por Vatsal K M

6 de feb. de 2021

One of the best PyTorch tutorials I had seen so far. Each parameter and function are explained very well.

por Kartik D

11 de dic. de 2020

Superb Explanation with all guidance during the course.

por Charles R

5 de feb. de 2021

Nice. Thank you

por Florian H

25 de ene. de 2021

Basically just some tutorial code read out loud without any background information on classes/objects. You're probably better off doing through a PyTorch tutorial yourself.

por Farnaz N

9 de abr. de 2021

Not enough background explanation on the theory, function usage and result analysis.