@UCBerkeleyEvents
  @UCBerkeleyEvents
UC Berkeley Events | Excavating “Ground Truth” in AI: Epistemologies and Politics in Training Data @UCBerkeleyEvents | Uploaded March 2022 | Updated October 2024, 4 days ago.
The last decade has seen a dramatic capture of digital material for machine learning production. This data is the basis for sense-making in AI, not as classical representations of the world with individual meaning, but as mass collections: ground truth for machine abstractions and operations. What happens when data is seen as an aggregate, stripped of context, meaning, and specificity? In what ways does training data limit what and how machine learning systems interpret the world? And most importantly, what forms of power do these approaches enhance and enable? In this lecture, Kate Crawford will share new work that reflects on what’s at stake in the architecture and contents of training sets, and how they are increasingly part of our urban, legal, logistical, and commercial infrastructures.
Excavating “Ground Truth” in AI: Epistemologies and Politics in Training DataCampus Conversations: Campus SafetyCenter for Chinese Studies Annual Lim Lecture - Anna M. ShieldsThe Social Safety Net as an Investment in Children21st Century Global Health PrioritiesUC Berkeley Grad Slam 2023Self-Consciousness and ‘I’ – Anscombe and Sartre in DialogueShock Jocks, the Radical Right and the Roots of TrumpismSmart Money: Educational Investments in Adolescents Earn Higher ReturnsThe AI Revolution2022 Chicanx Latinx Graduation CeremoniaFree Speech and Higher Education: A Conversation

Excavating “Ground Truth” in AI: Epistemologies and Politics in Training Data @UCBerkeleyEvents

SHARE TO X SHARE TO REDDIT SHARE TO FACEBOOK WALLPAPER