June 24, 2013
Conference Paper

Ant Colony Optimization for Mapping, Scheduling and Placing in Reconfigurable Systems

Abstract

Modern heterogeneous embedded platforms, com- posed of several digital signal, application specific and general purpose processors, also include reconfigurable devices support- ing partial dynamic reconfiguration. These devices can change the behavior of some of their parts during execution, allowing hardware acceleration of more sections of the applications. Never- theless, partial dynamic reconfiguration imposes severe overheads in terms of latency. For such systems, a critical part of the design phase is deciding on which processing elements (mapping) and when (scheduling) executing a task, but also how to place them on the reconfigurable device to guarantee the most efficient reuse of the programmable logic. In this paper we propose an algorithm based on Ant Colony Optimization (ACO) that simultaneously executes the scheduling, the mapping and the linear placing of tasks, hiding reconfiguration overheads through prefetching. Our heuristic gradually constructs solutions and then searches around the best ones, cutting out non-promising areas of the design space. We show how to consider the partial dynamic reconfiguration constraints in the scheduling, placing and mapping problems and compare our formulation to other heuristics that address the same problems. We demonstrate that our proposal is more general and robust, and finds better solutions (16.5% in average) with respect to competing solutions.

Revised: March 20, 2014 | Published: June 24, 2013

Citation

Ferrandi F., P. Lanzi, C. Pilato, D. Sciuto, and A. Tumeo. 2013. Ant Colony Optimization for Mapping, Scheduling and Placing in Reconfigurable Systems. In NASA/ESA Conference on Adaptive Hardware and Systems (AHS-2013), June 24-27, 2013, Torino, Italy, 47-54. Torino:Institute of Electrical and Electronics Engineers. PNNL-SA-95042. doi:10.1109/AHS.2013.6604225