TA1a: Machine Learning Accelerators (invited)
Tue, 31 Oct, 08:15 - 09:55 PT (UTC -8)
Location: Evergreen
Session Type: Lecture
Session Chair: Joseph Cavallaro, Rice University
Track: Architectures and Implementation
Tue, 31 Oct, 08:15 - 08:40 PT (UTC -8)

TA1a.1: Ergodic Approximate Deep Learning Accelerators

Tim van Lijssel, Alexios Balatsoukas-Stimming, Eindhoven University of Technology, Netherlands
Tue, 31 Oct, 08:40 - 09:05 PT (UTC -8)

TA1a.2: On the Design of Reconfigurable Edge Devices for RF Fingerprint Identification (RED-RFFI) for IoT Systems

Thomas Keller, Joseph R. Cavallaro, Rice University, United States
Tue, 31 Oct, 09:05 - 09:30 PT (UTC -8)

TA1a.3: Dynamically Reconfigurable Perception using Dataflow Parameterization of Channel Attention

Yujunrong Ma, University of Maryland, United States; Kshitij Nikhal, University of Nebraska-Lincoln, United States; Jani Boutellier, University of Vaasa, Finland; Benjamin Riggan, University of Nebraska-Lincoln, United States; Shuvra Bhattacharyya, University of Maryland, United States
Tue, 31 Oct, 09:30 - 09:55 PT (UTC -8)

TA1a.4: Bringing Machine Learning to 6G: from TensorFlow to Over-the-Air with the Aerial Research Cloud

Chris Dick, Nvidia, United States