Obsidian/4 Qualifying Exam/2 Writing/3. QE Research Approach.md

1.3 KiB

title allDay date completed type endDate
Research Approach true 2024-10-10 single 2024-10-22

5 Pages TARGET: 2800-3000 words

Outline

  1. What are unperturbed perturbations and why are they important?
  2. What is a generative diffusion model?
  3. Where have generative diffusion models been used?
  4. How will generative diffusion models generate new plants?
  5. How can we know if these new plants are in the set of 'controllable' plants?
  6. How are we going to get training data?

Something to justify, why diffusion model as opposed to other generative AI

First Draft

Story

  1. Generating unstructured perturbations is pretty hard
  2. They need to be 'random'
  3. diffusion model is good at creating novel examples (cite!)
  4. we can use diffusion models to solve this problem of generating examples
  5. But how does a diffusion model work?
  6. Diffusion model uses two processes
  7. a forward process that introduces noise into an 'input'
  8. this forward process does this using several small steps of noise
  9. This noise is a gaussian noise
  10. over time this forward process degrades the input until it is unrecognizable
  11. This takes several several iterations, but is dependent on the amount of noise in each step
  12. A reverse process that tries to remove the noise