Decentralized Application-Level Adaptive Scheduling for Multi-Instance DNNs on Open Mobile Devices
Offered By: USENIX via YouTube
Course Description
Overview
Explore a conference talk from USENIX ATC '23 that delves into decentralized application-level adaptive scheduling for multi-instance Deep Neural Networks (DNNs) on open mobile devices. Learn about the challenges of running multiple DNN-powered apps simultaneously on common smartphones and tablets, and discover a novel approach to address scheduling issues in these scenarios. Understand how the proposed solution leverages Deep Reinforcement Learning to achieve a Nash equilibrium point, balancing gains among co-running apps while adapting to various running environments, operating systems, and hardware configurations. Gain insights into the experimental results demonstrating significant speedups and energy savings across different DNN workloads and hardware setups.
Syllabus
USENIX ATC '23 - Decentralized Application-Level Adaptive Scheduling for Multi-Instance DNNs on...
Taught by
USENIX
Related Courses
Amazon DynamoDB - A Scalable, Predictably Performant, and Fully Managed NoSQL Database ServiceUSENIX via YouTube Faasm - Lightweight Isolation for Efficient Stateful Serverless Computing
USENIX via YouTube AC-Key - Adaptive Caching for LSM-based Key-Value Stores
USENIX via YouTube The Future of the Past - Challenges in Archival Storage
USENIX via YouTube A Decentralized Blockchain with High Throughput and Fast Confirmation
USENIX via YouTube