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Artificial Images: RunwayML Deep Dive

Overview

Artificial Images: RunwayML Deep Dive is a course for image makers (graphic designers, artists, illustrators and photographer) to learn about RunwayML.

Class meets on Tuesdays Apr 7 - May 5, at 8:30pm for 1.5 hour sessions.

Taught by Derrick Schultz and TA Lia Coleman.

Course Syllabus

  • Week 1: Intro to ML, ML inspiration, Runway Setup.
  • Week 2: Image generation models in Runway, Project Inspiration
  • Week 3: Image generation models, Chaining Models, Advanced Usage
  • Week 4: Training StyleGAN
  • Week 5: Next Steps: Using plugins (p5, photoshop), Google Colab; Open Q&A

Week 1, April 7

To-do before this class:

  1. Bookmark this page!
  2. Fill out the pre-class survey.
  3. Join our Slack and poke around! For our class, we will be communicating through the #runwayml-deepdive channel.
  4. Introduce yourself to your classmates in the #runwayml-deepdive channel. Say hi to each other! Some starter questions: Where are you located? What do you do? What experience do you have already? What do you want to learn or make? And links to your IG / twitter / website. :)
  5. Read our class Code of Conduct and Zoom Guidelines.

Class Materials

Homework

  1. Find a model (or a few!) in Runway and play with it! In Slack, post:

    • What model did you use?
    • What the inputs and outputs were.
    • What questions you have about the model.
    • Show us what you made!
  2. Think about a bigger project you want to work on.

    • For inspiration: the Runway Slack, the Runway Youtube.
    • Consider with inputs you have available to you, and what you want as outputs.

Links and Resources

  • Join the Runway Slack
  • For a little more about Machine Learning and to see more examples of ML art I recommend my Week 1 video from a previous course (note that a lot of the inspiration I show here isn’t doable in Runway, but we could think of ways to do similar things!)
  • A playlist of a bunch of dataset creation demos (best for people who have some coding experience or want to learn to use the command line)
  • DeepDream using Google Colab. A better introduction to DeepDream and a much more flexible library. (Google Colab is free but might require a little coding knowledge. Try it!)

Week 2, April 14

Class Materials

Homework

  • Start thinking about datasets.
    • Watch some of the dataset videos
    • If you want to make a personal dataset or something by hand, start collecting!
    • If you’ve never done scraping before, we might recommend looking for Instagram accounts (Instagram is the easiest to scrape). For instagram scraping, watch this video for installation steps.
  • Keep exploring models.
    • We’ve covered a handful of models so far in class, but there are many more! Keep digging around.

Links and Resources

Week 3, April 21

Class Materials

Homework

Get ahold of a dataset.

  • Make your own!
  • Scrape your own!
  • Find a premade one on the internet.
  • Let us know if you want a premade one from us. Runway also has some premade ones.

Links and Resources

Week 4, April 28

Class Materials

Homework

Finish your dataset and Train a Model!

Week 5, May 5

Class Materials

p5.js links

Homework

  1. Please fill out our class survey!
  2. Prep for the end-of-class showcase on May 19. Slot signups here!
    • Optional!
    • 5-7 mins per student.
    • Open format. Show and Tell, performance, teach, etc. Play a pre-recorded video. Present live with slides. Live demo + Q&A. Any mix of the above!

Student Work and Documentation

Jason Powers

Nye Warburton