hgpu.org » nVidia Titan RTX
Ingo Wald, Will Usher, Nate Morrical, Laura Lediaev, Valerio Pascucci
June 16, 2019 by hgpu
Yehia Arafa, Abdel-Hameed Badawy, Gopinath Chennupati, Nandakishore Santhi, Stephan Eidenbenz
Tags: Benchmarking, Computer science, CUDA, nVidia, nVidia GeForce GTX Titan X, nVidia Titan RTX, Performance, PTX, Tesla K40, Tesla P100, Tesla V100
May 23, 2019 by hgpu
Recent source codes
* * *
Most viewed papers (last 30 days)
- Omniwise: Predicting GPU Kernels Performance with LLMs
- P4OMP: Retrieval-Augmented Prompting for OpenMP Parallelism in Serial Code
- Engineering Supercomputing Platforms for Biomolecular Applications
- CUDA-LLM: LLMs Can Write Efficient CUDA Kernels
- GCStack+GCScaler: Fast and Accurate GPU Performance Analyses Using Fine-Grained Stall Cycle Accounting and Interval Analysis
- A First Look at Bugs in LLM Inference Engines
- ParEval-Repo: A Benchmark Suite for Evaluating LLMs with Repository-level HPC Translation Tasks
- Efficient GPU Implementation of Multi-Precision Integer Division
- Accelerated discovery and design of Fe-Co-Zr magnets with tunable magnetic anisotropy through machine learning and parallel computing
- chemtrain-deploy: A parallel and scalable framework for machine learning potentials in million-atom MD simulations
* * *