(599s) Improved Pattern Discovery in Supply Chain Management with Graphic Processing Unit (GPU) | AIChE

(599s) Improved Pattern Discovery in Supply Chain Management with Graphic Processing Unit (GPU)

Authors 

Srinivasan, R., National University of Singapore


Improved Pattern
Discovery in Supply Chain Management with Graphic Processing Unit (GPU)

Lau Mai Chana, Rajagopalan Srinivasana,b

a
Department of Chemical and Biomolecular Engineering, National University of
Singapore, Singapore, 10 Kent Ridge Crescent, Singapore 119260, Singapore

bProcess Sciences and Modeling, Institute of Chemical and Engineering
Sciences, Pesek Road, Jurong Island, Singapore 627833, Singapore

Abstract

While the use of supply chain
management (SCM) is getting growing attention from all range of businesses, researchers
are continue expanding the scope of supply chain management in numerous
dimensions so as to achieve further improvement in organizational performance
as well as to sustain the competitive position. Advanced supply chain
management system attempts to embrace as many factors which are having potential
impact on business decisions from various aspects, including operational,
purchasing and delivery. The scope expansion is also going beyond the firm as
the hierarchy of SCM has been observed growing externally which include
indirect entities, for instance indirect suppliers which are one level higher
than the direct suppliers. The adoption of supply chain management system
entails business entities the competitive advantage only if meaningful and
relevant knowledge are captured, which in turn enables reliable prediction to
be made on business. However, the expansion of SCM scope has led to the
generation of huge amount of data which makes the knowledge discovery process difficult.
Owing to the limitation of computing resources, the conventional sequential data
processing techniques are inefficient if not unable to handle the gigantic
amount of data. As a result, parallel computing technologies evolve to be a potential
solution for big data analysis. Among all the parallel computing resources such
as supercomputers, grids and cluster, our group is particularly interested in
harnessing the computing power from General Purpose Graphic Processing Unit (GPGPU)
because of the relatively low cost and availability as commodity. On top of
that, Graphic Processing Units consist of a number of Single Instruction
Multiple Data (SIMD) multi-processors which map well with the
implementation of many data analysis and pattern discovery methods. The aim of
this work is to develop GPU parallel algorithm(s) which is (are) able to
capture higher quality knowledge for business decision making purpose by having
higher degree of efficiency. The quality and efficiency of the parallel
algorithm will be examined with a simulated SCM system.

Keywords:
Graphics Processing Unit (GPU) parallel computing, Supply Chain Management
(SCM), Pattern Discovery