Computer Vision with GluonCV

via AWS Skill Builder

AWS Skill Builder

352 Courses


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Overview

Computer Vision with GluonCV

In this course, you will build a useful understanding of the components of a convolutional neural network (CNN) like convolutions and pooling layers, etc. In this course, Alex Smola and Tong He show how to implement some computer vision techniques using GluonCV, a computer vision toolkit.

Intended Audience

This course is intended for:

  • Developers who are looking to implement common computer vision models

Course Objectives

In this course, you will learn how to:

  • Summarize various convolutional neural network components like convolutions, padding, and channels
  • Translate the components to code when creating a neural network like LeNet
  • Import your data into a Gluon Data Loader for training and transformation

Prerequisites

We recommend that attendees of this course have the following prerequisites:

  • A basic understanding of artificial neural networks
  • A basic understanding of linear Algebra topics like matrices, matrix multiplication, and dot products

Delivery Method

This course is delivered through:

  • Digital training

Duration

  • 2 hours

Course Outline

This course covers the following concepts:

  • Convolutions
  • Padding and stride
  • Channels
  • Pooling
  • LeNet
  • Activation functions
  • DropOut
  • Batch normalization
  • Blocks
  • The curse of the last layer
  • Residual networks
  • Data processing

University: Provider: AWS Skill Builder. Categories: Computer Vision Courses, Amazon Web Services (AWS) Courses.

Syllabus


Taught by


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united states

provider AWS Skill Builder

AWS Skill Builder

352 Courses


AWS Skill Builder

pricing Free Certificate
language English
duration 2 hours
sessions On-Demand