MIT 6.S184: Flow Matching and Diffusion Models - Lecture 02 - Constructing a Training Target

Updated 2026 version of the class:    • MIT 6.S184: Flow Matching and Diffusion Mo...   Lecture notes: https://diffusion.csail.mit.edu/docs/... Slides: https://diffusion.csail.mit.edu/2025/... Course website: https://diffusion.csail.mit.edu/2025/... Code exercises: https://diffusion.csail.mit.edu/2025/... Next video:    • MIT 6.S184: Flow Matching and Diffusion Mo...   Playlist:    • MIT 6.S184: Flow Matching and Diffusion Mo...   Class: MIT 6.S184: Generative AI with Stochastic Differential Equations Lecture 01: Flow and Diffusion Models Instructors: Peter Holderrieth, Ezra Erives Diffusion and flow-based models have become the state of the art algorithms for generative AI across a wide range of data modalities, including images, videos, shapes, molecules, music, and more! This MIT computer science course aims to build up the mathematical framework underlying these models from first principles. At the end of the class, students will have built a toy image diffusion model from scratch, and along the way, will have gained hands-on experience with the mathematical toolbox of stochastic differential equations that is useful in many other fields. This course is ideal for students who want to develop a principled understanding of the theory and practice of generative AI. Thank you for video editing by MIT SOUL. You can find more courses at: https://mitsoul.org/.

MIT 6.S184: Flow Matching and Diffusion Models - Lecture 03 - Training Flow/Diffusion Models (2025)
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MIT 6.S184: Flow Matching and Diffusion Models - Lecture 03 - Training Flow/Diffusion Models (2025)

MIT 6.S183 A Practical Introduction to Diffusion Models, Lecture 1
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MIT 6.S183 A Practical Introduction to Diffusion Models, Lecture 1

Yann LeCun's $1B Bet Against LLMs [Part 1]
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Yann LeCun's $1B Bet Against LLMs [Part 1]

MIT 6.S184: Flow Matching and Diffusion Models - Lecture 04 - Building an Image Generator (2025)
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MIT 6.S184: Flow Matching and Diffusion Models - Lecture 04 - Building an Image Generator (2025)

The physics behind Flow Matching models
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The physics behind Flow Matching models

MIT 6.S184: Flow Matching and Diffusion Models - Lecture 2 - Constructing a Training Target
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MIT 6.S184: Flow Matching and Diffusion Models - Lecture 2 - Constructing a Training Target

Flow Matching | Explanation + PyTorch Implementation
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Flow Matching | Explanation + PyTorch Implementation

MIT 6.S184: Flow Matching and Diffusion Models - Lecture 05 - Diffusion for Robotics (2025)
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MIT 6.S184: Flow Matching and Diffusion Models - Lecture 05 - Diffusion for Robotics (2025)

Generative Modelling through the Lens of Manifold Hypothesis | VC Seminar
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Generative Modelling through the Lens of Manifold Hypothesis | VC Seminar

Yann LeCun: World Models: Enabling the next AI revolution
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Yann LeCun: World Models: Enabling the next AI revolution

MIT 6.S184: Flow Matching and Diffusion Models - Lecture 01 - Generative AI with SDEs (2025)
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MIT 6.S184: Flow Matching and Diffusion Models - Lecture 01 - Generative AI with SDEs (2025)

CS 198-126: Lecture 12 - Diffusion Models
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CS 198-126: Lecture 12 - Diffusion Models

Flow-Matching vs Diffusion Models explained side by side
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Flow-Matching vs Diffusion Models explained side by side

Yann LeCun | Self-Supervised Learning, JEPA, World Models, and the future of AI
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Yann LeCun | Self-Supervised Learning, JEPA, World Models, and the future of AI

CS480/680 Lecture 23: Normalizing flows (Priyank Jaini)
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CS480/680 Lecture 23: Normalizing flows (Priyank Jaini)

MIT 6.S184: Flow Matching and Diffusion Models - Lecture 01 - Flow and Diffusion Models (2026)
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MIT 6.S184: Flow Matching and Diffusion Models - Lecture 01 - Flow and Diffusion Models (2026)

MIT 6.S184: Flow Matching and Diffusion Models - Lecture 04 - Latent Spaces, Neural networks (2026)
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MIT 6.S184: Flow Matching and Diffusion Models - Lecture 04 - Latent Spaces, Neural networks (2026)

MIT 6.S184: Flow Matching and Diffusion Models - Lecture 02: Flow Matching (2026)
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MIT 6.S184: Flow Matching and Diffusion Models - Lecture 02: Flow Matching (2026)

Calvin Luo - Understanding diffusion models: A unified perspective
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Calvin Luo - Understanding diffusion models: A unified perspective

Diffusion Models From Scratch | Score-Based Generative Models Explained | Math Explained
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Diffusion Models From Scratch | Score-Based Generative Models Explained | Math Explained