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Convolutional Neural Networks and Computer Vision with TensorFlow

In deep learning, many different kinds of model architectures can be used for different problems. For example, you could use a convolutional neural network for making predictions on image data and/or text data. However, in practice some architectures typically work better than others.

Workflow

  • Getting a dataset to work with
  • Architecture of a convolutional neural network
  • A quick end-to-end example
  • Steps in modelling for binary image classification with CNNs
  • Becoming one with the data
  • Preparing data for modelling
  • Creating a CNN model
  • Fitting a model
  • Evaluating a model
  • Improving a model
  • Making a prediction with a trained model

Contains a little experiment with data augmentation

You can create a pip virtual environment and install the requirements:

python3 -m venv env
source env/bin/activate
pip install -r requirements.txt