
145: Unsupervised Machine Learning
Today we discuss adventures, books, tools, and art discoveries before diving into unsupervised machine learning in this duo episode!
Audio is streamed directly from the publisher (s3.amazonaws.com) as published in their RSS feed. Play Podcasts does not host this file. Rights-holders can request removal through the copyright & takedown page.
Show Notes
Today we discuss adventures, books, tools, and art discoveries before diving into unsupervised machine learning in this duo episode!
00:00:22 Introductions
00:01:28 Email & inbox organization is very important
00:07:28 The Douglas-Peucker algorithm
00:11:48 Starter project selection
00:17:01 Tic-Tac-Toe
00:21:41 Artemis 1
00:26:25 Space slingshots
00:29:47 Flex Seal tape
00:32:38 The Meditations
00:37:58 Flour, Water, Salt, Yeast
00:40:55 Pythagorea
00:46:13 Google Keep
00:48:05 Visual-IF
00:50:49 Data insights
01:03:07 Self-supervised learning
01:10:26 A practical example of clustering
01:15:10 Word embedding
01:24:02 Farewells
Want to learn more? Check out these previous episodes:
- Episode 27: Artificial Intelligence Theory
- Episode 28: Applied Artificial Intelligence
- Episode 109: Digital Marketing with Kevin Urrutia
Resources mentioned in this episode:
News/Links:
- Simplify lines with the Douglas-Peucker Algorithm
- How to pick a starter project
- Tic-Tac-Toe in a single call to printf()
- Artemis 1
- Visual-IF
Book of the Show:
- Jason’s Choice: “The Meditations” by Marcus Aurelius
- Patrick’s Choice: “Flour, Water, Salt, Yeast” by Ken Forkish
Tool of the Show:
- Jason’s Choice: Pythagorea
- Patrick’s Choice: Google Keep
References:
- Clustering: https://en.wikipedia.org/wiki/Cluster_analysis
- Autoencoding: https://en.wikipedia.org/wiki/Autoencoder
- Contrastive Learning: https://towardsdatascience.com/understanding-contrastive-learning-d5b19fd96607
- Matrix Factorization: https://en.wikipedia.org/wiki/Matrix_factorization_(recommender_systems)
- Stochastic factorization: https://link.medium.com/ytuaUAYBjtb
- Deep Learning: https://en.wikipedia.org/wiki/Deep_learning
If you’ve enjoyed this episode, you can listen to more on Programming Throwdown’s website: https://www.programmingthrowdown.com/
Reach out to us via email: [email protected]
You can also follow Programming Throwdown on
Facebook | Apple Podcasts | Spotify | Player.FM
Join the discussion on our Discord
Help support Programming Throwdown through our Patreon
★ Support this podcast on Patreon ★