Sort by
Refine Your Search
-
Listed
-
Category
-
Country
-
Program
-
Field
-
following technology areas: hardware/software co-design, performance optimization with heterogeneous and alternative computing systems (CPU/GPU/NPU/etc.), FPGA design, high-performance computing (HPC
-
modern high performance computation facilities and parallel computing clusters (CPU and GPU). Excellent publication record and demonstrated conference presentation skills. Demonstrated ability to operate
-
GHz with 24-cores each) and 4 GPUs (NVIDIA Ampere A100 80 GB PCIe) with 512 GB RAM. The compute nodes are interconnected via a fast InfiniBand network that also connects to ~360 TB of compute storage
-
IT4Innovations National Supercomputing Center, VSB - Technical University of Ostrava | Czech | 3 months ago
on highly scalable parallel applications with focus on: development and implementation of parallel aplications, GPU acceleration of applications, application optimization (improving scalability, vectorization
-
networking technologies such as InfiniBand. Working knowledge of GPU technologies like CUDA and OpenCL. Experience with distributed computing job schedulers (e.g., Slurm, PBS). Familiarity with
-
SecureData4Health (SD4H) OpenStack cloud infrastructure. It currently includes 15,000 VCPU, 60 Petabyte of storage, 30 GPU and is growing as additional academic research projects join. The Software Infrastructure
-
and scalable model deployment. Skilled in working with medium-large scale multicore and heterogeneous (CPU + GPU) clusters. Excellent verbal and written communication skills. Preferred qualifications
-
data analysis, simulation, and machine learning, integrating resources across multiple facilities. NERSC's next major supercomputer, Doudna, will combine next generation GPUs, networking and storage
-
programming and code porting on accelerators (FPGAs, GPUs) are being developed, as well as the development of RISC-V applications in scenarios where the use of open hardware is necessary. Another research topic
-
well as experience working with large biological datasets in scalable GPU-based computing environments. What we provide: A competitive compensation package, with comprehensive health and welfare benefits. A supportive