025 | Self-Supervised Machine Learning: Introduction, Intuitions, and Use-Cases cover art

025 | Self-Supervised Machine Learning: Introduction, Intuitions, and Use-Cases

025 | Self-Supervised Machine Learning: Introduction, Intuitions, and Use-Cases

Listen for free

View show details

About this listen

On this episode of Bit of A Tangent, we discuss the emerging field of self-supervised machine learning. This is an immensely exciting area of active research in machine learning and AI - one which most people haven’t even heard about yet! We build up to the intuition for the topic by covering supervised and unsupervised learning; autoencoders and dimensionality reduction, and exploring how these techniques could be applied to Gianluca’s Quantified Self n=1 sleep quality dataset. We culminate in a detailed discussion of the state-of-the-art Contrastive Predictive Coding model, and how it allows us to learn about the structure of the world, without tonnes of labelled training data!

--------

Shownotes:

--------

Bit of a Tangent on Twitter (www.twitter.com/podtangent) and Instagram (instagram.com/podtangent/)

Summer school on Computational Neuroscience: http://imbizo.africa/

Control problem in AI: https://intelligence.org/stanford-talk/

Coordination problem: https://conceptually.org/concepts/coordination-problems

Deep learning overview: https://lilianweng.github.io/lil-log/2017/06/21/an-overview-of-deep-learning.html

t-SNE explained: https://mlexplained.com/2018/09/14/paper-dissected-visualizing-data-using-t-sne-explained/

Variational autoencoders explained: https://anotherdatum.com/vae.html

Self-supervised learning by fast.ai: https://www.fast.ai/2020/01/13/self_supervised/

CPC model papers on Arxiv: https://arxiv.org/pdf/1807.03748.pdf https://arxiv.org/pdf/1905.09272.pdf

Blog posts explaining CPC: https://lilianweng.github.io/lil-log/2019/11/10/self-supervised-learning.html

https://yann-leguilly.gitlab.io/post/2019-09-29-representation-learning-with-contrastive-predictive-coding/

https://mf1024.github.io/2019/05/27/contrastive-predictive-coding/

No reviews yet
In the spirit of reconciliation, Audible acknowledges the Traditional Custodians of country throughout Australia and their connections to land, sea and community. We pay our respect to their elders past and present and extend that respect to all Aboriginal and Torres Strait Islander peoples today.