Introduction to Deep Learning with PyTorch

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Course Report - Introduction to Deep Learning with PyTorch

Course Report

Find detailed report of this course which helps you make an informed decision on its relevance to your learning needs. Find out the course's popularity among Careervira users and the job roles that would find the course relevant for their upskilling here. You can also find how this course compares against similar courses and much more in the course report.

Course Features

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Duration

4 hours

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Delivery Method

Online

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Available on

Limited Access

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Accessibility

Mobile, Desktop, Laptop

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Language

English

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Subtitles

English

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Level

Intermediate

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Teaching Type

Self Paced

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Video Content

4 hours

Course Description

This course focuses on the use of PyTorch, a popular deep-learning platform, to create neural networks and solve various problems in artificial intelligence. The course starts by explaining the dominance of neural networks in AI research and their ability to solve problems such as image classification and language translation. It then provides an introduction to PyTorch, highlighting its ease of use and powerful capabilities.

The course also covers the creation of neural networks using the MNIST dataset, allowing students to gain hands-on experience in building their first neural network. Additionally, convolutional neural networks are discussed, which can be used to build more precise models.

Throughout the course, students are taught various techniques to evaluate and improve their results. This ensures that they not only learn how to create neural networks but also how to optimize and enhance their performance.

By completing this course, students will not only gain a comprehensive understanding of neural networks but will also be equipped with the necessary knowledge to embark on a career in this exciting field. Deep learning and artificial intelligence are rapidly evolving areas, and this course serves as an excellent starting point for anyone interested in diving into this fascinating domain.

Overall, this course provides a thorough overview of deep learning, its applications in artificial intelligence, and how to effectively use PyTorch to create and improve neural networks. It is an essential resource for individuals interested in data science, machine learning, and those looking to expand their knowledge in this rapidly growing field.

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Highlights

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Rating & Reviews

Top 30 Percentile

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Career Impact

Top 5 Percentile

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Career Impact

This course is exceptional, ranking among the top 5 percentile in Deep Learning for its significant career impact and excellent job assistance. Learners benefit from valuable career opportunities and support, enabling them to secure relevant positions and excel in the industry. The course's dual focus on career impact and job assistance enhances its value, making it an ideal choice for individuals seeking to advance their careers and succeed in the Deep Learning field.

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Rating & Reviews

This highly acclaimed course is among the top-rated in Deep Learning, boasting a rating greater than 4 and an overall rating of 5.0. Its exceptional quality sets it apart, making it an excellent choice for individuals seeking top-notch learning experience in Deep Learning.

Course Overview

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Virtual Labs

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Job Assistance

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International Faculty

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Post Course Interactions

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Hands-On Training,Instructor-Moderated Discussions

Skills You Will Gain

Prerequisites/Requirements

Learn Datacamp course Supervised Learning with scikit-learn

Learn DataCamp course Object-Oriented Programming in Python

What You Will Learn

Learn to create deep learning models with the PyTorch library

In this course you will use PyTorch to first learn about the basic concepts of neural networks, before building your first neural network to predict digits from MNIST dataset

You will then learn about convolutional neural networks, and use them to build much more powerful models which give more accurate results

You will evaluate the results and use different techniques to improve them

Course Instructors

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Ismail Elezi

Researcher PHD Student at Ca' Foscari University of Venice

I am a third year PhD Student of Deep Learning, supervised by professor Marcello Pelillo at Ca' Foscari, University of Venice. During my PhD, I did an exchange period at ZHAW Datalab (Switzerland) wo...

Course Reviews

Average Rating Based on 3 reviews

5.0

100%

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