Build the modeling skills behind today’s AI-powered products, from predictive machine learning systems to deep learning models for vision, sequences, and generative tasks. In this skill path, you’ll learn how to turn real problems into machine learning tasks, build supervised models, design custom neural networks in PyTorch, and improve model performance through testing, tuning, and optimization.
What makes this path different is its focus on the work you want to be able to do. Each course is organized around real machine learning engineering responsibilities, so you can check your current skills, skip what you already know, and focus on the job tasks that matter most for your goals. You’ll learn through curated lessons from expert instructors and build practical experience that can help you speak more confidently about your skills in portfolios, interviews, and career conversations.
By completing this path, you’ll strengthen your readiness for roles such as Machine Learning Engineer, Deep Learning Engineer, AI Engineer, Computer Vision Engineer, NLP Engineer, Applied Scientist, or modeling-focused Data Scientist. You’ll come away with a stronger understanding of not only how models work, but how to design, evaluate, debug, and improve them like a practitioner.
Applied Learning Project
You’ll complete authentic, job-inspired projects that mirror the responsibilities of machine learning and deep learning engineers, including building supervised prediction models, designing neural network architectures, training custom PyTorch models, and optimizing models for stronger performance. These projects can help you turn your learning into portfolio-ready examples and prepare you to explain your modeling choices in career-relevant conversations.


















