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SNAPlist 0 - Structured, Noob-friendly, Annotated, and Prioritized Lists
Collaborators
Reviewers
Total time needed:
~2 hours
See details (learning objective, target audience, etc)...
Learning Objectives
This is SNAPlist 0. A short list about SNAPlists! Where it came from, what it means, and what it tries to achieve, the science behind it!
Potential Use Cases
learning how to learn!
Target Audience
BEGINNER
all learners
Go through the following
annotated items
in order
:
WRITEUP
1. SNAPlists, the art of documenting your leaning process
What are SNAPlists?
10 minutes
WRITEUP
2. How do SNAPlists benefit you?
What can you hope to achieve with SL's that you wouldn't otherwise?
5 minutes
WRITEUP
3. Is there science behind SNAPlists?
Is this a made up thing, or is it based on some science?
10 minutes
WRITEUP
4. Show me some examples of what I can do with SNAPlists
What are some of the interesting patterns people have used to create SL's?
10 minutes
OTHER
5. Meta-cognition: learning about learning!
what is meta-cognition?
why does meta-cognition matter?
45 minutes
ARTICLE
6. Experiential Learning Theory
What is experiential learning?
What are the components of experiential learning?
5 minutes
ARTICLE
7. Zone of Proximal Development
How can one learning contextually?
5 minutes
Additional Resources...
WRITEUP
8. SNAPList FAQ
What can I do with SNAPlists?
5 minutes
Concepts Covered
Previewing stream
Science of Science
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Past Capstones
People
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ML in Climate Science
ML in Biology
Computer Vision
AI Products
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Reinforcement Learning
ML in Cybersecurity
AI Sustainability
ML in Material Science
Generative Adversarial Networks
Science of Science
Careers in ML
Graph Neural Nets
Natural Language Processing
AI Ethics
ML in Marketing
Founders Stream
ML in Biochemistry and Drug Discovery
ML Interpretability
Network Analysis
Quantum Tech and Quantum Machine Learning
ML in Physics
ML in Economics
ML for Time Series
ML in Chemistry
Math and Foundations
ML Engineering and Ops
ML in Neuroscience
Synthetic Data
Recommender Systems
ML in Health
ML in Aerospace
IOT and Edge Security