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Accelerating prediction of chemical shift of protein structures on GPUs: Using OpenACC. | LitMetric

AI Article Synopsis

  • NMR spectroscopy provides detailed atomic information about proteins but analyzing large complexes is challenging due to complex calculations.
  • A new hardware-accelerated strategy improves the estimation of NMR chemical shifts for these large macromolecular complexes, originally taking about 14 hours to just 46.71 seconds using NVIDIA GPUs.
  • The method utilizes OpenACC to optimize performance on a mix of x86 processors and NVIDIA GPUs, successfully handling systems up to 11.3 million atoms.

Article Abstract

Experimental chemical shifts (CS) from solution and solid state magic-angle-spinning nuclear magnetic resonance (NMR) spectra provide atomic level information for each amino acid within a protein or protein complex. However, structure determination of large complexes and assemblies based on NMR data alone remains challenging due to the complexity of the calculations. Here, we present a hardware accelerated strategy for the estimation of NMR chemical-shifts of large macromolecular complexes based on the previously published PPM_One software. The original code was not viable for computing large complexes, with our largest dataset taking approximately 14 hours to complete. Our results show that serial code refactoring and parallel acceleration brought down the time taken of the software running on an NVIDIA Volta 100 (V100) Graphic Processing Unit (GPU) to 46.71 seconds for our largest dataset of 11.3 million atoms. We use OpenACC, a directive-based programming model for porting the application to a heterogeneous system consisting of x86 processors and NVIDIA GPUs. Finally, we demonstrate the feasibility of our approach in systems of increasing complexity ranging from 100K to 11.3M atoms.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC7250467PMC
http://dx.doi.org/10.1371/journal.pcbi.1007877DOI Listing

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