Improving Programmability and Performance for Mobile/Cloud Applications
- Irene Zhang | University of Washington
The proliferation of datacenters, smartphones, personal sensing and tracking devices, and home automation products is fundamentally changing the applications we interact with daily. Modern applications are no longer limited to a single desktop computer but now commonly span many mobile devices and cloud servers. In this talk, I will present three systems that improve the programmability and performance of modern mobile/cloud applications: Sapphire, Diamond and TAPIR. These systems tackle a new set of challenges in runtime management, data management, and distributed transactional storage. Together, they significantly simplify the development of mobile/cloud applications.
-
-
Jay Lorch
Senior Principal Researcher
-
-
Series: AIFactory – France research lecture library
-
Keynote: Model-Based Machine Learning
- Christopher Bishop
-
AI and Security
- Taesoo Kim; Dawn Song; Michael Walker
-
Transforming Machine Learning and Optimization Through Quantum Computing
- Krysta Svore; Helmut Katzgraber; Matthias Troyer; Nathan Wiebe
-
AI for Earth
- Tanya Berger-Wolf; Carla Gomes; Milind Tambe
-
Social and Emotional Intelligence in AI and Agents
- Mary Czerwinski; Justine Cassell; Jonathan Gratch; Daniel McDuff; Louis-Philippe Morency
-
Microsoft Cognitive Toolkit (CNTK) for Deep Learning
- Sayan Pathak; Cha Zhang; Yanmin Qian; Chris Basoglu
-
Machine Learning from Verbal Instruction
- Tom M. Mitchell
-
Combining Algorithms and Humans for Large-Scale Data Integration
- Vasileios Verroios
-
-
Learning Language through Interaction
- Hal Daume III