Wat je moet weten voordat je
begint
Start 4 June 2026 05:46
Einde 4 June 2026
Computer Vision with GluonCV
479 Cursussen
Niet gespecificeerd
Optionele upgrade beschikbaar
Alle niveaus
Ga in je eigen tempo vooruit
Free
Optionele upgrade beschikbaar
Overzicht
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.