Overview of GPU usage while solving different engineering problems, comparison between CPU and GPU computations and overview of the heat conduction problem are provided in this paper. The Jacobi iterative algorithm was implemented by using Python, TensorFlow GPU library and NVIDIA CUDA technology. Numerical experiments were conducted with 6 CPUs and 4 GPUs. The fastest used GPU completed the calculations 19 times faster than the slowest CPU. On average, GPU was from 9 to 11 times faster than CPU. Significant relative speed-up in GPU calculations starts when the matrix contains at least 4002 floating-point numbers. Article in English. GPU ir CPU efektyvumo palyginimas sprendžiant šilumos laidumo uždavinius Santrauka Šiame straipsnyje apžvelg...
GPGPU (General purpose computing on graphics processing unit) is quite common in today's modern...
Over the last 20 years, the computing revolution has created many social benefits. The computing ene...
Graphic processors are becoming faster and faster. Computational power within graphic processing uni...
High-performance computing is one of the most demanding technologies in today\u27s computational wor...
The paper presents a GPU implementation of the thermal discrete element method (TDEM) and the compar...
Parallelization has become a universal technique for computing an intensive scientific simulation to...
This thesis deals with the simulation of heat diffusion in human tissues. The proposed algorithm use...
Graphics Processing Units (GPUs) are microprocessors attached to graphics cards, which are dedicated...
A great challenge for scientists is to execute their computational applications efficiently. Nowaday...
The accurate knowledge of Heat Transfer Coefficients is essential for the design of precise heat tra...
In this work, we examine the performance, energy efficiency, and usability when using Python for dev...
Abstract: This paper offers an algorithm of calculation of points of a computational front...
In this work, we examine the performance and energy efficiency when using Python for developing HPC ...
This master's thesis deals with acceleration of heat diffusion simulation using graphics cards. It d...
As the processing power available in computers grows, so do the applications for using that power fo...
GPGPU (General purpose computing on graphics processing unit) is quite common in today's modern...
Over the last 20 years, the computing revolution has created many social benefits. The computing ene...
Graphic processors are becoming faster and faster. Computational power within graphic processing uni...
High-performance computing is one of the most demanding technologies in today\u27s computational wor...
The paper presents a GPU implementation of the thermal discrete element method (TDEM) and the compar...
Parallelization has become a universal technique for computing an intensive scientific simulation to...
This thesis deals with the simulation of heat diffusion in human tissues. The proposed algorithm use...
Graphics Processing Units (GPUs) are microprocessors attached to graphics cards, which are dedicated...
A great challenge for scientists is to execute their computational applications efficiently. Nowaday...
The accurate knowledge of Heat Transfer Coefficients is essential for the design of precise heat tra...
In this work, we examine the performance, energy efficiency, and usability when using Python for dev...
Abstract: This paper offers an algorithm of calculation of points of a computational front...
In this work, we examine the performance and energy efficiency when using Python for developing HPC ...
This master's thesis deals with acceleration of heat diffusion simulation using graphics cards. It d...
As the processing power available in computers grows, so do the applications for using that power fo...
GPGPU (General purpose computing on graphics processing unit) is quite common in today's modern...
Over the last 20 years, the computing revolution has created many social benefits. The computing ene...
Graphic processors are becoming faster and faster. Computational power within graphic processing uni...