Free MIT.edu OpenWare Courses (OWC)

MIT.edu OCW

Designed for 6–7 months of structured, portfolio-driven study (10–12 hrs/week)

OCW study sequence for AI/ML and robotics foundations
Order Course Theme Duration (weeks) Application tie-in
0 6.S191 – Introduction to Deep Learning Modern deep-learning foundations (CNNs, RNNs, Transformers) 4 TensorFlow/PyTorch hands-on intro; vision, NLP, biology
1 6.042J – Mathematics for Computer Science Discrete math and graphs 3–4 SLAM topologies, graph optimization
2 6.041SC – Probabilistic Systems Analysis and Applied Probability Probability and systems 4–5 Sensor fusion, Bayesian estimation, uncertainty modeling
3 6.036 – Introduction to Machine Learning Core machine learning 4–6 Classification, regression, regularization
4 6.801 – Machine Vision Vision and perception 4–5 Mapping, feature detection, optical flow, 3D reconstruction
5 6.4210 – Robotic Manipulation Robotics and control 5–6 Motion planning, control loops, state estimation
6 9.01 – Introduction to Neuroscience Biological neural systems 3–4 Sensory pathways, motor control, neural coding
7 9.13 – The Human Brain Cognitive neuroscience 3 Perception, learning, memory architecture
8 9.40 – Introduction to Neural Computation Computational neuroscience 4–5 Modeling neurons and learning rules
9 9.66J – Computational Cognitive Science Cognitive modeling 4–5 Probabilistic reasoning, human-like perception
10 9.85 – Infant and Adult Cognition Learning and development 2–3 Developmental and reinforcement models


As an Amazon Associate I earn from qualifying purchases.

No comments:

Post a Comment

Post Scriptum

The views in this article are mine and do not reflect those of my employer.
I am preparing to cancel the subscription to the e-mail newsletter that sends my articles.
Follow me on:
X.com (Twitter)
LinkedIn
Google Scholar

Popular Recent Posts

Most Popular Articles

apt quotation..