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Abstract:
Get to know two different techniques in retrieving parallelism hidden in a general purpose linear programs (LPs) that are broadly used in operations research, computer vision, and machine learning. With conventional solvers often being restricted to serial computation, we'll show two ways of retrieving inherent parallelism, using: (1) parallel sparse linear algebra techniques with an interior-point method, and (2) a higher-level automatic LP decomposition. After a quick introduction to the topic, we'll present details and results for a diverse range of applications on the GPU.
Get to know two different techniques in retrieving parallelism hidden in a general purpose linear programs (LPs) that are broadly used in operations research, computer vision, and machine learning. With conventional solvers often being restricted to serial computation, we'll show two ways of retrieving inherent parallelism, using: (1) parallel sparse linear algebra techniques with an interior-point method, and (2) a higher-level automatic LP decomposition. After a quick introduction to the topic, we'll present details and results for a diverse range of applications on the GPU.  Back
 
Topics:
Algorithms & Numerical Techniques, HPC and Supercomputing
Type:
Talk
Event:
GTC Silicon Valley
Year:
2017
Session ID:
S7303
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