Class Central is learner-supported. When you buy through links on our site, we may earn an affiliate commission.

MATLAB Academy

Deep Learning Onramp

MathWorks via MATLAB Academy

Overview

Build a Learning Habit
Download Class Central's free printable study calendar
Download for Free
  • Introduction: Familiarize yourself with Deep Learning concepts and the course.
  • Using Pretrained Networks: Perform classifications using a network already created and trained.
  • Managing Collections of Image Data: Organize and process images to make them usable with a given network.
  • Performing Transfer Learning: Modify a pretrained network to classify images into specified classes.
  • Conclusion: Learn next steps and give feedback on the course.

Syllabus

  • Deep Learning for Image Recognition
  • Course Example - Identify Objects in Some Images
  • Making Predictions
  • CNN Architecture
  • Investigating Predictions
  • Image Datastores
  • Preparing Images to Use as Input
  • Processing Images in a Datastore
  • Create a Datastore Using Subfolders
  • What is Transfer Learning
  • Components Needed for Transfer Learning
  • Preparing Training Data
  • Modifying Network Layers
  • Setting Training Options
  • Training the Network
  • Evaluating Performance
  • Transfer Learning Summary
  • Project - Roundworm Vitality
  • Additional Resources
  • Survey

Taught by

Renee Bach

Reviews

5.0 rating, based on 1 Class Central review

Start your review of Deep Learning Onramp

  • Profile image for Ahmed Reda Eid Abd Elsalam
    Ahmed Reda Eid Abd Elsalam
    The course was very helpful for beginners. It explained the basics of deep learning in a simple and clear way. I liked the hands-on exercises and how easy it was to follow the steps. Using pretrained networks and doing transfer learning was interesting. It’s a great start for anyone new to deep learning with MATLAB.

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.