Autoplay
Autocomplete
Previous Lesson
Complete and Continue
Image Classification with Transfer Learning using TensorFlow
Image Classification with Transfer Learning using TensorFlow 2.x
Course Overview (0:41)
Welcome and Learning Objectives (1:45)
1. Modern Image Recognition (5:42)
2. Data Preprocessing (5:01)
2.1 - Go to Colab (8:50)
3. Creating Base Models from Pre-trained Convolutional Neural Networks (3:19)
4. Freezing the Convolutional Base Model (2:44)
5. Feature Extraction (2:15)
5.1-Go to Colab (7:16)
6. Adding a New Classification Layers (3:55)
7. Stack Layers, Compile and Train the Model (4:07)
8. Training Statistics and Predictions (3:04)
8.1 Go to Colab (11:28)
9. Transfer Learning-Summary and Takeaways (2:18)
Deploying Models to Mobile Devices with Pallet
10. Creating TensorFlow Lite Models (4:29)
10.1 Go to Colab (7:50)
11. Deploying Models to Android - Exploring Pallet (10:21)
12. Deploying Models from the Pallet Web Console (9:11)
13. Deploying Models from the Pallet App (7:36)
Course Updates (NEW!)
Using MobileNetV3 (3:16)
Go to Colab on Using MobileNetV3
Sample Lessons (Optional)
Build, Train, Deploy (Sample Lesson)
Teach online with
7. Stack Layers, Compile and Train the Model
Lesson content locked
If you're already enrolled,
you'll need to login
.
Enroll in Course to Unlock