Machine Learning and Deep Learning for Computer Vision
Teachers: Andrè Panisson, Alan Perotti — ISI Foundation
This in-depth part of the course allows to build an appealing and diversified Machine Learning portfolio. It starts with a Machine Learning introduction and application with Scikit-learn, and continues with Neural Networks and backpropagation lectures where you’ll start exploring Computer Vision techniques on a dataset of images.
Deep Learning methods. You’ll be challenged to use TensorFlow and Keras on a image classification real cases (such as distracted drivers, healthcare or plant diseases). The workshop ends with lessons in Transfer Learning and one last project building your data set by scraping Google images and practicing everything you learned.
Duration: 3.5 days.
Prerequisites: Python, Pandas, Statistics, exposure to Machine Learning is welcome.
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