Accelerating MATLAB with GPU computing : a primer with examples / Jung W. Suh, Youngmin Kim.
Material type:
Item type | Current location | Collection | Shelving location | Call number | Copy number | Status | Date due | Barcode |
---|---|---|---|---|---|---|---|---|
![]() |
Cavite State University - CCAT Campus | Book | GCS | CIR QA 297 S84 2014 (Browse shelf) | 1 | Available | R0011129 |
Browsing Cavite State University - CCAT Campus shelves, Shelving location: GCS, Collection: Book Close shelf browser
|
|
|
|
|
|
|
||
CIR QA 267 A98 2018 Automata theory and logic / | CIR QA 268 M35 2020 The art of coding : the language of drawing, graphics, and animation / | CIR QA 297 C43 2023 Applied numerical methods with MATLAB for engineers and scientists / | CIR QA 297 S84 2014 Accelerating MATLAB with GPU computing : a primer with examples / | CIR QA 303 A97 2013 Schaum's outlines : Calculus / | CIR QA 303 A97 2013 Schaum's outlines : Calculus / | CIR QA 303 A97 2013 Schaum's outlines : Calculus / |
Includes bibliographical references (pages 243-244) and index.
Accelerating MATLAB without GPU -- Configurations for MATLAB and CUDA -- Optimization planning through profiling -- CUDA coding with c-mex -- MATLAB and parallel computing toolbox -- Using CUDA-accelerated libraries -- Example in computer graphics -- CUDA conversion example : 3D image processing.
"Beyond simulation and algorithm development, many developers increasingly use MATLAB even for product deployment in computationally heavy fields. This often demands that MATLAB codes run faster by leveraging the distributed parallelism of Graphics Processing Units (GPUs). While MATLAB successfully provides high-level functions as a simulation tool for rapid prototyping, the underlying details and knowledge needed for utilizing GPUs make MATLAB users hesitate to step into it. Accelerating MATLAB with GPUs offers a primer on bridging this gap. Starting with the basics, setting up MATLAB for CUDA (in Windows, Linux and Mac OS X) and profiling, it then guides users through advanced topics such as CUDA libraries. The authors share their experience developing algorithms using MATLAB, C++ and GPUs for huge datasets, modifying MATLAB codes to better utilize the computational power of GPUs, and integrating them into commercial software products. Throughout the book, they demonstrate many example codes that can be used as templates of C-MEX and CUDA codes for readers' projects. Download example codes from the publisher's website: http://booksite.elsevier.com/9780124080805/ Shows how to accelerate MATLAB codes through the GPU for parallel processing, with minimal hardware knowledge -- Explains the related background on hardware, architecture and programming for ease of use -- Provides simple worked examples of MATLAB and CUDA C codes as well as templates that can be reused in real-world projects."--Provided by publisher.
In English text.
There are no comments on this title.