Numerical accuracy differences in CPU and GPGPU codes
This thesis presents an analysis of numerical accuracy issues that are found in many scientific GPU applications due to floating-point computation. Two widely held myths about floating-point on GPUs are that the CPU's answer is more precise than the GPU version and that computations on the GPU...
Published: |
|
---|---|
Online Access: | http://hdl.handle.net/2047/d20001067 |
Similar Items
-
Performance analysis of GPGPU and CPU on AES Encryption
by: Neelap, Akash Kiran
Published: (2014) -
The “Chimera”: An Off-The-Shelf CPU/GPGPU/FPGA Hybrid Computing Platform
by: Ra Inta, et al.
Published: (2012-01-01) -
Comparative Study of CPU and GPGPU Implementations of the Sievesof Eratosthenes, Sundaram and Atkin
by: Månsson, Jakob
Published: (2021) -
On the Accuracy and Parallelism of GPGPU-Powered Incremental Clustering Algorithms
by: Chunlei Chen, et al.
Published: (2017-01-01) -
GPGPU COMPUTING
by: BOGDAN OANCEA, et al.
Published: (2012-05-01)