SUPR
Resource Efficent AI in Networks
Dnr:

NAISS 2023/22-1155

Type:

NAISS Small Compute

Principal Investigator:

Ali Beikmohammadi

Affiliation:

Stockholms universitet

Start Date:

2023-11-01

End Date:

2024-11-01

Primary Classification:

10201: Computer Sciences

Allocation

Abstract

AI decision-making is starting to play a critical role in intelligent decision making in complex networks such IoT, cyber-physical systems, or intelligent edge. However, existing AI algorithms are often not practically feasible in these networks, as they hinge on excessive use of cyber resources, e.g., in terms of energy, communication, and local computation. The goal of this project is to advance the systematic design and algorithmic foundations of resource efficient ML in complex networks. We focus on multi-agent reinforcement learning algorithms, where agents learn by experience how to use resources as efficiently as possible while performing their AI tasks. We plan to use the SNIC computational infrastructure to test our novel algorithm designs for resource-efficient AI.