online-ml-university
Enrichment pendingA curated list of FREE courses available online from top universities of the world on CS-DS-ML!
GraphCanon updated today · GitHub synced today
Trust & integrity
Full report- Maintenance
- Dormant (816d since push)
- As of today · Source: github_public_v1
- Provenance
- Not a fork · Personal account
- As of today · Source: github_public_v1
- Security (OSV)
- No lockfile
- As of today · Source: none
Public GitHub metadata and optional OSV dependency scans. Signals, not a guarantee. Trust methodology.
Overview
A curated list of FREE courses available online from top universities of the world on CS-DS-ML!
Capability facts
No sourced capability facts yet. Facts appear after ingest scans repo manifests (Dockerfile, package.json, MCP configs).
Categories
Tags
README
Awsome AI & ML Resources: Online ML University
Many students/AI enthusiasts have questions about where to start with Machine Learning. There are learning paths out there that suggest what to learn, they often miss the main question - 'where do I learn?' Luckily, there are tons of free courses available from top universities like Stanford, Harvard, MIT, and CMU - covering basic to advanced topics. Now, the best part is that these courses not only provide lectures but also class slides, codes, and detailed lecture plans. To make things even easier, I've compiled a list of these courses in thus repository. You'll find all links of different courses from top universities. It's all free and accessible to anyone.
This repository contains a curated list of top AI courses offered by renowned universities. Each course is handpicked to ensure that it covers the latest topics and technologies in the field of AI.
Topics Listed:
- Cheat Sheets Collection
- Artificial Intelligence, Machine Learning
- Computer Science
- Statistics
- Data Science
- Deep Learning
- Computer Vision
- Natural Language Processing
- Generative AI & LLMs
- Computational Biology and Bioinformatics
- Generative AI with Vision
- Graph Neural Networks
- Reinforcement Learning
- Time Series/Audio/Signal Processing
- MLOps
- Psychology and Cognitive Modeling
- Unsupervised Learning
- Explainable AI
- AI for Optimization
- Computational Neuroscience + ML
- Trustworthiness and fairness in ML
- Robotics and Autonomous Systems
- Computer Human Interaction (CHI) or Human Computer Interaction (HCI)
Machine Learning and Artificial Intelligence
| Source | Course Code | Course Name | Session | Difficulty | URL |
|---|---|---|---|---|---|
| Stanford University | Stanford CS229 | Machine Learning | Spring 2022 | ⭐⭐ | Youtube |
| Stanford Universit |