32 lines
1.1 KiB
Markdown
32 lines
1.1 KiB
Markdown
---
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title: Research Approach
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allDay: true
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date: 2024-10-10
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completed:
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type: single
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endDate: 2024-10-22
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---
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5 Pages
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**TARGET: 2800-3000 words**
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# Outline
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1. What are unperturbed perturbations and why are they important?
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2. What is a generative diffusion model?
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3. Where have generative diffusion models been used?
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4. How will generative diffusion models generate new plants?
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5. How can we know if these new plants are in the set of 'controllable' plants?
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6. How are we going to get training data?
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Something to justify, why diffusion model as opposed to other generative AI
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# First Draft
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## Topic Point
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### Intro
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**Paragraph 1 - Introduction**
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*Topic:* Generating unstructured perturbations is a difficult problem right now, but is necessary to blah blah blah
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*Point:* This research will use a diffusion generative model to create unstructured perturbations.
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*Discussion*: Talk about the big pictures of what the next sections are
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### The Generative Diffusion Model
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### Using Diffusion to Create New Plants
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### Establishing New Plants are in the Disk
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### Preliminary Results |