Timezone: »

DABS 2.0: Improved Datasets and Algorithms for Universal Self-Supervision
Alex Tamkin · Gaurab Banerjee · Mohamed Owda · Vincent Liu · Shashank Rammoorthy · Noah Goodman

Tue Nov 29 02:00 PM -- 04:00 PM (PST) @ Hall J #1030

Universal self-supervised (SSL) algorithms hold enormous promise for making machine learning accessible to high-impact domains such as protein biology, manufacturing, and genomics. We present DABS 2.0: a set of improved datasets and algorithms for advancing research on universal SSL. We extend the recently-introduced DABS benchmark with the addition of five real-world science and engineering domains: protein biology, bacterial genomics, multispectral satellite imagery, semiconductor wafers, and particle physics, bringing the total number of domains in the benchmark to twelve. We also propose a new universal SSL algorithm, Capri, and a generalized version of masked autoencoding, and apply both on all twelve domains---the most wide-ranging exploration of SSL yet. We find that multiple algorithms show gains across domains, outperforming previous baselines. In addition, we demonstrate the usefulness of DABS for scientific study of SSL by investigating the optimal corruption rate for each algorithm, showing that the best setting varies based on the domain. Code will be released at http://github.com/alextamkin/dabs}{http://github.com/alextamkin/dabs

Author Information

Alex Tamkin (Stanford University)
Gaurab Banerjee (Apple)
Mohamed Owda (Stanford University)
Vincent Liu
Shashank Rammoorthy (Stanford University)
Noah Goodman (Stanford University)

More from the Same Authors