machine-learning-specialization-andrew-ng
course22p2
machine-learning-specialization-andrew-ng | course22p2 | |
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4 | 6 | |
455 | 431 | |
- | 2.6% | |
6.1 | 2.0 | |
11 months ago | 9 days ago | |
Jupyter Notebook | Jupyter Notebook | |
MIT License | Apache License 2.0 |
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machine-learning-specialization-andrew-ng
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Stanford A.I. Courses
I recently completed the specialization with Andrew Ng and think it’s a fantastic introduction to ML. It has a good blend of theory, practical tips, and coding.
If anyone is interested, I’ve published detailed notes and my submissions for the lab assignments:
https://github.com/pmulard/machine-learning-specialization-a...
- Machine Learning Specialization (Andrew Ng) - Course Notes and Lab Assignments
course22p2
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Ask HN: Daily practices for building AI/ML skills?
Practical Deep Learning for Coders: https://course.fast.ai/Lessons/part2.html
- Stanford A.I. Courses
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A quick visual guide to what's actually happening when you generate an image with Stable Diffusion
To me the most important bit is that the diffusion loop turns a noisy latent into an image, does that iteratively, and uses "guidance" in the form of a prompt/controlnet image/etc to do it. The scheduler part, I felt, was needlessly complex for this short explainer, so I hand-wave it away. IF someone wants to dive in deeper, much deeper, they can go through the same thing I'm doing, which is this: https://course.fast.ai/Lessons/part2.html
- Practical Deep Learning for Coders - Part 2 overview
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Courses for an AI beginner
They also recently released a course for more experienced students where they teach you to implement the Stable Diffusion algorithm from scratch.
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From Deep Learning Foundations to Stable Diffusion (Part 2)
The full transcripts are available here in plain text form:
https://github.com/fastai/course22p2/tree/master/summaries
What are some alternatives?
playground - Play with neural networks!
developer - the first library to let you embed a developer agent in your own app!
simpleaichat - Python package for easily interfacing with chat apps, with robust features and minimal code complexity.
simonwillisonblog - The source code behind my blog
latentblending - Create butter-smooth transitions between prompts, powered by stable diffusion
machine-learning-specialization-a
stylegan2-projecting-images - Projecting images to latent space with StyleGAN2.
StableDiffusion-By-Parts - Slice and dice the Stable Diffusion pipeline, saving to a TIFF file in between sections.