DocumentCode
229226
Title
Optimal mapping of inferior olive neuron simulations on the Single-Chip Cloud Computer
Author
Rodopoulos, Dimitrios ; Chatzikonstantis, George ; Pantelopoulos, A. ; Soudris, Dimitrios ; De Zeeuw, Chris I. ; Strydis, Christos
Author_Institution
MICROprocessors & Digital Syst. Lab., NTUA, Athens, Greece
fYear
2014
fDate
14-17 July 2014
Firstpage
367
Lastpage
374
Abstract
Biologically accurate neuron simulations are increasingly important in research related to brain activity. They are computationally intensive and feature data and task parallelism. In this paper, we present a case study for the mapping of a biologically accurate inferior-olive (InfOli), neural cell simulator on an many-core research platform. The Single-Chip Cloud Computer (SCC) is an experimental processor created by Intel Labs. The target neurons provide a major input to the cerebellum and are involved in motor skills and space perception. We exploit task- and data-partitioning, scaling the simulation over more than 40,000 neurons. The voltage- and frequency-scaling capabilities of the chip are explored, achieving more than 20% energy savings with negligible performance degradation. Four platform configurations are evaluated and a mapping with balanced workload and constant voltage and frequency is formally derived as optimal.
Keywords
biology computing; brain; cellular biophysics; cloud computing; microprocessor chips; neural nets; neurophysiology; parallel processing; power aware computing; resource allocation; InfOli mapping; Intel Labs; SCC; balanced workload; biologically accurate inferior-olive mapping; biologically accurate neuron simulation; brain activity; cerebellum; constant frequency; constant voltage; data-partitioning; energy savings; experimental processor; feature data; frequency-scaling capability; many-core research platform; motor skills; neural cell simulator; optimal inferior olive neuron simulation mapping; performance degradation; single-chip cloud computer; space perception; task parallelism; task-partitioning; voltage-scaling capability; Biological system modeling; Brain modeling; Computational modeling; Computer architecture; Computers; Microprocessors; Neurons; Dynamic Frequency and Voltage Scaling; Inferior Olive Neurons; Pareto Optimal; Single-Chip Cloud Computer;
fLanguage
English
Publisher
ieee
Conference_Titel
Embedded Computer Systems: Architectures, Modeling, and Simulation (SAMOS XIV), 2014 International Conference on
Conference_Location
Agios Konstantinos
Type
conf
DOI
10.1109/SAMOS.2014.6893235
Filename
6893235
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