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andri27-ts / 1 Year Machinelearning Journey

An advanced program in Machine Learning and Deep Learning

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1 Year Machine Learning Journey

An advanced program in Machine Learning and Deep Learning

This is the program I followed in the last year to learn Machine Learning, especially Deep Learning and gain an in-depth knowledge in each and every of the most common AI fields, namely Computer Vision, Natural Language Processing and Deep Reinforcement Learning. All the material is taught by top world experts and researchers.

I hope that it'll be of any help to those of you who want to have a full and in-depth overview of these amazing field.

NB: all the lectures are free except for the Deep Learning Specialization by Andrew Ng but that I highly recommend.

To get a full overview of each 'chapter' and test my skills, I did a project that required a few months of work. They have been extremely important to get the hands dirty on each subject and to develop the skills required in the ML projects. I highly advise you to do the same.

Artificial Intelligence is the New Electricity — Andrew Ng

Overview of AI

Machine Learning

Material

Project

Deep Learning

Material

Natural Language Processing

Material

Project

Computer vision

Material

Project

Deep Reinforcement Learning:

Material

Projects

Others:

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