emilwallner/How-to-learn-Deep-Learning
A top-down, practical guide to learn AI, Deep learning and Machine Learning.
This guide provides a structured, practical path for individuals new to artificial intelligence to learn deep learning. It takes you from understanding basic tools and workflows to building a portfolio that demonstrates your ability to apply machine learning in real-world scenarios. It's for anyone aspiring to land a machine learning job, especially those without a traditional ML degree.
732 stars. No commits in the last 6 months.
Use this if you are a career changer, self-learner, or recent graduate aiming to get hired in a machine learning role and need a clear roadmap for acquiring practical skills and building a job-ready portfolio.
Not ideal if you are looking for an academic deep dive into the theoretical underpinnings of machine learning, or if you already have significant industry experience and a robust portfolio.
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Jun 29, 2023
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