Difference between revisions of "AutoDock-GPU"
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Revision as of 17:00, 6 June 2022
Description
AutoDock-GPU is developed by the Forli lab at Scripps Research. OpenCL and Cuda accelerated version of AutoDock4.2.6. It leverages its embarrasingly parallelizable LGA by processing ligand-receptor poses in parallel over multiple compute units. The OpenCL version was developed in collaboration with TU-Darmstadt and is able to target CPU, GPU, and FPGA architectures. The Cuda version was developed in collaboration with Nvidia to run AutoDock-GPU on the Oak Ridge National Laboratory's (ORNL) Summit, and it included a batched ligand pipeline developed by Aaron Scheinberg from Jubilee Development.
Environment Modules
Run module spider AutoDock-GPU
to find out what environment modules are available for this application.
System Variables
- HPC_AUTODOCK_GPU_DIR - installation directory
- HPC_AUTODOCK_GPU_DIR - installation directory
Job Script Examples
See the AutoDock-GPU_Job_Scripts page for AutoDock-GPU Job script examples.
Citation
If you publish research that uses AutoDock-GPU you have to cite it as follows:
Accelerating AutoDock4 with GPUs and Gradient-Based Local Search, J. Chem. Theory Comput. 2021, 10.1021/acs.jctc.0c01006