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How to train your dragon
Quick intro to transfer learning
1
1. Get TensorFlow
2. Get a couple of image examples
3. Retrain the model
4. Use the model
codelabs.developers.google.com/codelabs/tensorflow-for-poets/
2
Quick intro to transfer learning
•> pip install --upgrade "tensorflow==1.7.*”
•> git clone https://github.com/googlecodelabs/tensorflow-for-poets-2
3
Get TensorFlow
4
Get a couple of image examples
5
Get a couple of image examples
dont_kill kill
6
Retrain the model
LSVRC Dataset
150GB of images
Trained for weeks
vs
Trained during this presentation
~40 images
7
Retrain the model
8
Retrain the model
9
Retrain the model
10
Retrain the model
11
Retrain the model
•> python -m scripts.retrain
12
Retrain the model
13
Retrain the model
•> python -m scripts.label_image
Let’s see if it works!
14
Use the model

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How to train your dragon