Andrew Potgieter presents a colloquium entitled 'A Parallel Multidimensional Weighted Histogram Analysis Method'
Andrew Potgieter will be giving a colloquium in the department entitled "A Parallel Multidimensional Weighted Histogram Analysis Method" in the Computer Science Department, LT 303 on Thursday 3rd April at 1pm. Andrew submitted his CS Masters in Information Technology thesis in January and this colloquium will describe his thesis work- abstract below.
What | Colloquium |
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When |
2014-03-28 08:46
to 2014-04-04 08:50 |
Where | Computer Science LT 303 |
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Abstract
The Weighted Histogram Analysis Method (WHAM) is a technique used to calculate free energy from molecular simulation data. WHAM recombines biased distributions of samples from multiple Umbrella Sampling simulations to yield an estimate of the global unbiased distribution. The WHAM algorithm iterates two coupled, non-linear, equations, until convergence at an acceptable level of accuracy. The equations have quadratic time complexity, which increases exponentially with the number of reaction coordinates under investigation. This makes +multidimensional WHAM a computationally expensive procedure. There is potential to use general purpose graphics processing units (GPGPU) to accelerate the execution of the algorithm. Here we develop and evaluate a multidimensional GPGPU WHAM implementation to investigate the potential speed-up attained over its CPU counterpart. In addition, to avoid the cost of multiple Molecular Dynamics simulations and for validation of the implementations we develop a test system to generate samples analogous to Umbrella Sampling simulations. We observe a maximum problem size dependent speed-up of approximately 19 of the GPGPU optimized WHAM implementation over our single threaded CPU optimized version. We not that the WHAM algorithm is amenable to GPU acceleration, which provides the means to study ever more complex molecular systems in reduced time periods.