Skip to yearly menu bar Skip to main content


Workshop

Data-centric Machine Learning Research (DMLR): Harnessing Momentum for Science

Manil Maskey · Lilith Bat-Leah · Danilo Brajovic · Paolo Climaco · Alicia Parrish · Chanjun Park · Xiaozhe Yao · Holger Caesar · Bernard Koch · Fatimah Alzamzami · Zhangyang Wang · Jerone Andrews · Praveen Paritosh · Steffen Vogler · Mayee Chen · Sang Truong · Bolei Ma

Stolz 2

Sat 11 May, midnight PDT

This workshop focuses on the increasing role of data in machine learning, particularly in the context of science research and application. It builds on existing momentum in the field and explores important topics including data quality, governance, ethics, infrastructure & tools, and community development. The main objective of the workshop is to shape the agenda for data-centric machine learning research (DMLR). Towards that end, the workshop will foster collaboration among researchers, practitioners, data producers, data consumers, and experts in DMLR. The workshop will feature keynote talks, panel discussions, poster sessions, and networking opportunities.

Chat is not available.