@Alacritic_Super: MIT's Future of AI course is one of the best free, non-technical introductions to modern AI, covering the evolution fro…
Summary
MIT offers a free, non-technical course covering the evolution from classical machine learning to foundation models and generative AI, with lecture videos available online.
View Cached Full Text
Cached at: 07/12/26, 06:59 PM
MIT’s Future of AI course is one of the best free, non-technical introductions to modern AI, covering the evolution from classical machine learning to foundation models and self-supervised learning.
Course https://futureofai.mit.edu
What you will learn: History of AI Supervised Learning Reinforcement Learning Self-Supervised Learning Foundation Models Generative AI Large Language Models (LLMs) Diffusion Models Image Generation AI in Science & Business Future Directions of AI
Lecture Videos Foundation Models & Generative AI — https://youtube.com/watch?v=y1fGlAECNFM…
Self-Supervised Learning & Foundation Models — https://youtube.com/watch?v=R6ITDsKX2c0…
MIT FUTURE OF AI
Source: https://www.futureofai.mit.edu/
MIT FUTURE OF AI 6.S087: Foundation Models & Generative AI
https://docs.google.com/forms/d/e/1FAIpQLScGQiqSWM-2LuV2YFmqmSdBLgw8qiqspGyLEgCgJtv61ncqcw/viewformto sign up for more lecture material and updates.
ChatGPT, Copilot, CLIP, Dall-E, Stable-Diffusion, AlphaFold, Self-driving cars – is now the time that AI lives up to all its hype? What’s the secret sauce behind these recent breakthroughs within AI? It’s called foundation models and generative AI, and it is changing everything. With the help of it, some believe that Artificial General Intelligence (AGI) has already been achieved. In this non-technical series of lectures, we will start a short history of AI, then with what supervised learning and reinforcement learning is missing, and conclude with the deep practical and foundational implications foundation models and how we arrive at them via self-supervised learning. We cover applications in both science and business. All backgrounds are welcome.
Lectures are Tuesdays and Thursdays 2:00-2:50pm (first week) and 2:00-3:15pm (subsequent weeks) in E25-111. Lectures are scheduled to start on Tuesday, January 9. Secure your spot at:Course Registry(Course Number: 6.S087).
Lectures are created byRickard Brüel Gabrielsson— a MIT researcher specializing in foundation models and generative AI, previously at Stanford. Entrepreneur with 10 years of experience in the AI space,TEDx speaker, and co-founder ofUnbox AI, a leading company innovating in behavior-to-behavior foundation models.
Reviews

2024 Version
Lecture 1: Introduction
Lecture 2: How it works
Lecture 3: ChatGPT & LLMs
Lecture 4: Image Generation
Lecture 5: Ecosystems
Lecture 6: Biology
Lecture 7: Autonomy
Lecture 8: Ethics
Lecture 9: Panel
New lectures released every week...
2023 Version
Lecture 1: Introduction
Lecture 2: Algorithms
Lecture 3: ChatGPT
Lecture 4: Data & Stable-Diffusion
MIT Introductory Course on Foundation Models & Generative AI Covering:
- ChatGPT
- Stable-Diffusion & Dall-E
- Neural Networks
- Supervised Learning
- Representation & Unsupervised Learning
- Reinforcement Learning
- Generative AI
- Self-Supervised Learning
- Foundation Models
- GANs (adversarial)
- Contrastive Learning
- Auto-encoders
- Denoising & Diffusion
Similar Articles
@Alacritic_Super: Carnegie Mellon University's 11-768: AI Agents is one of the most comprehensive free courses on building LLM-based agen…
Carnegie Mellon University offers a comprehensive free course on building LLM-based agents, covering topics from prompting to production systems.
@cyrilXBT: MIT just quietly dropped a free AI curriculum that puts $50,000 university courses to shame. 12 books. Zero tuition. Fr…
MIT has released a free AI curriculum comprising 12 textbooks covering foundations, advanced techniques, reinforcement learning, and ethics, offering a comprehensive education at no cost.
@alex_prompter: Harvard, Andrew Ng, and Karpathy will teach you AI engineering for free. Most people just do it in the wrong order: Alm…
A Twitter thread presents a free AI engineering learning path using resources from Harvard, Andrew Ng, Andrej Karpathy, and others, emphasizing fundamentals over frameworks.
@Alacritic_Super: Want to learn Robotics from the world's best universities? Start with these free resources: • MIT OpenCourseWare – Intr…
A Twitter post compiles free robotics course links from top universities including MIT, Stanford, and Carnegie Mellon, providing a curated list for learners.
@Alacritic_Super: Want to build a strong mathematical foundation for AI & Machine Learning? Go through a collection of resources to learn…
A curated list of books, lectures, and online courses for building a mathematical foundation for AI and machine learning, including popular resources like 'Mathematics for Machine Learning' and Khan Academy courses.