hgpu.org » nVidia V100
René Caspart, Sebastian Ziegler, Arvid Weyrauch, Holger Obermaier, Simon Raffeiner, Leon Pascal Schuhmacher, Jan Scholtyssek, Darya Trofimova, Marco Nolden, Ines Reinartz, Fabian Isensee, Markus Götz, Charlotte Debus
Tags: Artificial intelligence, Computer science, Deep learning, Energy-efficient computing, Heterogeneous systems, nVidia, nVidia A100, nVidia V100, Package
December 11, 2022 by hgpu
Connor Kenyon, Collin Capano
Tags: Benchmarking, Computer science, Heterogeneous systems, nVidia, nVidia A100, nVidia V100, OpenCL, Performance
November 6, 2022 by hgpu
Recent source codes
* * *
Most viewed papers (last 30 days)
- Automatic Generation of OpenCL Code through Polyhedral Compilation with LLM
- Deep Learning and Machine Learning with GPGPU and CUDA: Unlocking the Power of Parallel Computing
- Testing GPU Numerics: Finding Numerical Differences Between NVIDIA and AMD GPUs
- Accelerating Drug Discovery in AutoDock-GPU with Tensor Cores
- miniLB: A Performance Portability Study of Lattice-Boltzmann Simulations
- Intel(R) SHMEM: GPU-initiated OpenSHMEM using SYCL
- OpenACC offloading of the MFC compressible multiphase flow solver on AMD and NVIDIA GPUs
- Superpipeline: A Universal Approach for Reducing GPU Memory Usage in Large Models
- Bitstream Database-Driven FPGA Programming Flow Based on Standard OpenCL
- Efficient Arbitrary Precision Acceleration for Large Language Models on GPU Tensor Cores
* * *