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1 GPU parallelism improves speed and makes iteration a tra
2 e gas conditions with CO2 permeance of 1,020 GPU and CO2/N2 selectivity as high as 680, demonstrating
4 We demonstrate the new software using 1024 GPUs in parallel on one of the world's fastest supercomp
5 from 4 to 10 (resp. With 2 CPU threads and 2 GPUs, H-BLAST can be faster than 16-threaded NCBI-BLASTX
7 electivity of 663 with H(2) permeance of 240 GPU was achieved for promising green energy resource-H(2
8 aged membranes had a CO(2) permeance of 2504 GPU and ideal selectivity values of 37.2 and 23.8 for CO
10 ncreased propylene permeance (reaching 186.5 GPU) while maintaining an appealing propylene/propane se
11 -score-GPU is 68 times faster on an ATI 5870 GPU, on average, than the original CPU single-threaded i
12 smission rate for (LDH/FAS)(25)-PDMS of 7748 GPU together with CO(2) selectivity factors (SF) for SF(
17 a user-friendly interface between cupSODA, a GPU-powered kinetic simulator, and PySB, a Python-based
18 For numerical implementation, we developed a GPU-accelerated version of differential evolution to nav
21 ate how the cost of divergent branching on a GPU can be amortized across algorithms like HCP in order
23 es (approximately 13 slices) per second on a GPU with 12 GB RAM compared with 6-8 minutes per slice f
25 te a human/mouse alignment in under 6 h on a GPU-containing node without pre-partitioning, maintainin
32 Finally, we developed a freely accessible, GPU and CPU-powered dashboard that combines interactive
36 and user-friendly environment and the AMBER GPU code for a robust and high-performance simulation en
37 dings by using a fully force-field-based and GPU-accelerated approach, which allows the simulations t
38 s and 69 times shorter for the CPU-based and GPU-based CNN pipelines (216.6 seconds +/- 40.5 and 204.
41 act of using hardware with different CPU and GPU features on the power consumption and latency for th
42 ory efficiency, easy access to multi-CPU and GPU hardware, and to distributed and cloud-based paralle
43 In our experiments with a four core CPU and GPU, SWIFTLINK achieves a 8.5x speed-up over the single-
46 raphy, deep learning, physical modeling, and GPU-accelerated robust optimization, with automatic anal
49 ke advantage of both multiple processors and GPU-acceleration to perform the numerically-demanding co
53 y the observation that, compared to CPUs and GPUs, cutting-edge FPGAs demonstrate-in certain cases-su
54 heterogeneous computer that couples CPUs and GPUs, to accelerate BLASTX and BLASTP-basic tools of NCB
56 average 1.81 x speedup over the state-of-art GPU acceleration with only 7.2% of the energy, and a spe
60 with the number of chains, and the available GPU memory limits the size of protein complexes which ca
62 nstrate dramatic speed differentials between GPU assisted performance and CPU executions as the compu
63 differences in hardware architecture between GPUs and CPUs complicate the porting of existing code.
69 k, called GiCOPS, for efficient and complete GPU-acceleration of the modern database peptide search a
72 federate both computational resources (CPU, GPU, FPGA, etc.) and datastores to support popular bioin
73 paper, we design and implement a new-age CPU-GPU HPC framework, called GiCOPS, for efficient and comp
76 mplementation utilizing multicore hybrid CPU/GPU computing resources, which can process terabytes of
81 CPU version of Scrooge, KSW2, Edlib, Darwin-GPU, and a GPU implementation of GenASM, respectively.
82 ics processing unit (GPU), we have developed GPU-BLAST, an accelerated version of the popular NCBI-BL
83 ource, hybrid multithreaded and distributed, GPU accelerated simulator of universal quantum circuits.
85 up in computation time on a cluster of eight GPUs compared to running the method on a single GPU.
87 mework (CUDAMPF) implemented on CUDA-enabled GPUs presented here, offers a finer-grained parallelism
89 anks to a PyTorch-based backend that enables GPU acceleration, pyaging is capable of rapid inference,
92 see text] improvement over several existing GPU-based database search algorithms for sufficiently la
94 se of sub-optimal algorithms in the existing GPU-accelerated methods resulting in significantly ineff
96 sion of the code able to efficiently exploit GPU-accelerated systems for both the genetic relationshi
98 no method is currently available to exploit GPU technology for the reverse engineering of mechanisti
100 g model, called Stacked DenseNet, and a fast GPU-based peak-detection algorithm for estimating keypoi
104 ADEPT, a new sequence alignment strategy for GPU architectures that is domain independent, supporting
106 n short-read alignments per second in a four-GPU system; it can align the reads from a human WGS sequ
107 tion approaches going all the way up to full GPU-accelerated ray tracing, they do not provide size-sp
108 o systems so that users can make use of GeNN GPU acceleration when developing their models in Brian,
112 Our theoretical model is implemented in GPU (Graphics Processing Unit) accelerated software whic
114 Massively Parallel Architectures, Including GPU Nodes (CAMPAIGN), a central resource for data cluste
116 out using the Amber software on inexpensive GPUs, providing approximately 1 mus/day per GPU, and >2.
118 very well with increasing CPU cores, and its GPU version, implemented in OpenCL, can have up to 158x
120 fically, we characterize the effect of known GPU optimization techniques like use of shared memory.
121 showed localization of fluorescently labeled GPUs (~7% of total injected dose per gram tissue) in the
122 rabricks used here, these workflows are less GPU optimized and require benchmarking on the platform o
126 sentation learning workflow with minibatched GPU-accelerated clustering algorithms allows us to scale
128 a stochastic simulation algorithm on modern GPUs, we simulated the dynamics of over one million neur
132 (BLASTP, SWIPE, SWIMM2.0), can exploit multi-GPU nodes with linear scaling, and features an impressiv
133 per, we provide an optimized intranode multi-GPU implementation that can efficiently solve large-scal
136 provide 40 or more CPU threads and multiple GPU (general-purpose graphics processing unit) devices.
137 s driver enables it to scale across multiple GPUs and allows easy integration into software pipelines
140 al works have considered leveraging multiple GPUs to accelerate the ptychographic reconstruction.
141 Monte Carlo simulations running on multiple GPUs; we find a rounded transition and localization phys
142 can run in parallel in a single or multiple GPUs and each kernel simulates and scores the error of a
143 (GSH)-responsive polyurethane nanoparticles (GPUs) using a GSH-cleavable disulfide bond containing po
147 PDB file for pocket detection to our NVIDIA GPU-equipped servers through a WebGL graphical interface
153 to harness the computational power of NVIDIA GPUs (Graphics Processing Units) to greatly reduce proce
154 e execution of network simulations on NVIDIA GPUs, through a flexible and extensible interface, which
157 t of structures, WE organizes an ensemble of GPU-accelerated MD trajectory segments via intermittent
161 Embracing the multicore functionality of GPUs represents a major avenue of local accelerated comp
162 riant callers scaled well with the number of GPUs across platforms, whereas somatic variant callers e
164 rs exhibited more variation in the number of GPUs with the fastest runtimes, suggesting that, at leas
170 an open-source software package that runs on GPU and TPU accelerators through the JAX machine learnin
171 dynamics simulations in implicit solvent on GPU processors were used to generate ensembles of trajec
173 and 7x faster than PointNovo and DeepNovo on GPUs, respectively, thus being more suitable for the ana
174 xtension algorithm for better performance on GPUs, and offers a performance tuning mechanism for bett
177 en an impetus to accelerate MC simulation on GPUs whereas thread divergence remains a major issue for
183 nts, the author developed a high-performance GPU-based framework for the material point method, prior
186 remains a challenge, as only highly powerful GPUs, such as the A40 and A100, can (partially) compete
188 simulations, run using graphical processors (GPUs), were used to investigate the effect of conformati
189 sing software that uses graphics processors (GPUs) to address the most computationally intensive step
190 veloped a tool, called PtyGer (Ptychographic GPU(multiple)-based reconstruction), implementing our hy
191 ual Xeon 5520 and 3X speedup versus BEAGLE's GPU implementation on a Tesla T10 GPU for very large dat
194 ore for Graphical Processing Units (TM-score-GPU), using a new and novel hybrid Kabsch/quaternion met
195 nhanced snapshot compressive imaging (SeSCI)(GPU) showed the best performance of the CS algorithms st
198 large-scale ptychography datasets, a single GPU is typically insufficient for analysis and reconstru
200 ent simulations with performance on a single GPU that rivals the speed achieved by hundreds of CPUs.
201 ands of simultaneous simulations on a single GPU, HDRL-FP enables rapid convergence to the optimal re
202 a 10 mm path in under 15 minutes on a single GPU, which is 5-8 orders of magnitude faster than compet
205 xploiting hierarchical parallelism on single GPU and takes full advantage of limited resources based
207 benchmark dataset of 71 protein structures, GPU-I-TASSER achieves on average a 10x speedup with comp
219 ve, single-threaded CPU implementations, the GPU yields a large improvement in the execution time.
229 e more expensive than CPU runs because their GPU acceleration was not sufficient to overcome the incr
231 fying Arioc's implementation to exploit this GPU memory architecture we obtained a further 1.8x-2.9x
233 petitive processes and facilitates access to GPU clusters, whose high-performance processing power ma
237 oit the power of a graphics-processing unit (GPU) from a browser without any third-party plugin.
244 ork, relative to a graphics processing unit (GPU) that uses a comparable 12-nanometer technology proc
245 IA Volta 100 (V100) Graphic Processing Unit (GPU) to 46.71 seconds for our largest dataset of 11.3 mi
248 a general-purpose graphics processing unit (GPU), we have developed GPU-BLAST, an accelerated versio
249 a modern consumer graphics processing unit (GPU), we report a 92x increase in the speed of an exhaus
250 rn traditional and graphics processing unit (GPU)-accelerated machines, from workstations to supercom
253 ifts, and extended graphics processing unit (GPU)-based quantum mechanics/molecular mechanics (QM/MM)
258 eature that allows graphics-processing-unit (GPU)-based processing for interactive data analysis, suc
260 ms accelerated on Graphics Processing Units (GPU), scaled magnetic versions of p-bit IMs could lead t
261 take advantage of graphics processing units (GPUs) and result in many fold higher speedups over previ
264 GPU that exploits graphics processing units (GPUs) for parallel stochastic simulations of biological/
265 infrastructures, Graphics Processing Units (GPUs) offer opportunities to accelerate genomic workflow
268 port for multiple graphics processing units (GPUs) support, which makes it possible to run efficientl
270 , we use multiple graphics processing units (GPUs) to compute the real frequency spectrum of the boso
271 s in parallel, on graphics processing units (GPUs) using NVidia Compute Unified Device Architecture (
272 uding inexpensive graphics processing units (GPUs), it has remained infeasible to simulate the foldin
273 tionary models on graphics processing units (GPUs), making use of the large number of processing core
276 intensive use of graphics processing units (GPUs), we have been able to run the latter model for mor
283 to parallelize evolutionary algorithms using GPU computing for the inference of mechanistic GRNs that
284 ctive data mining of spectral features using GPU-based manipulation of the spectral distribution.
285 past aortic stenosis (AS) are studied using GPU-accelerated patient-specific computational fluid dyn
291 Capturing metadata (e.g. package versions, GPU model) currently requires repetitious code and is di
293 temporal and computational (e.g. CPU versus GPU) scales, and then to visualize and interpret integra
295 esults show that the GP model, combined with GPU-enabled PPLs, effectively retrieves true emission sc
297 get genes leveraging parallel computing with GPU devices, (iii) all-in-one analytics with novel featu