This a High-Performance Computing Question: Assume you have the code of a Naïve parallel version of Matrix-Matrix multiplication using CUDA and C++ in this way: (A Naïve parallel version of Matrix-Matrix multiplication using CUDA and C++(Note that the kernel should do the multiplication). Use square matrices. Use 1D execution configurations so that a thread loads a whole. The code has 4 different sizes of matrices over 1000, use 2 different block sizes.) Provide the code using CUDA and C++ for an OPTIMIZED parallel version of a Matrix-Matrix multiplication with CUDA and by "Varying the size of your computational grid: change number of CUDA threads and blocks ". Requirements: Compare that results are correct by comparing the results with cubLAS'. Use double-precision for all the program Use square matrices. Calculate the time that it took for the kernel to do the multiplication. Calculate the time that it took since transferring the matrices from host to device up to retrieving the results from the device to the host. Calculate the execution rate(FLOPS) of the kernel For each configuration in regards to the configuration(matrix size, block size, and threads used) explain how the program should behave while executing on a GPU.

Database System Concepts
7th Edition
ISBN:9780078022159
Author:Abraham Silberschatz Professor, Henry F. Korth, S. Sudarshan
Publisher:Abraham Silberschatz Professor, Henry F. Korth, S. Sudarshan
Chapter1: Introduction
Section: Chapter Questions
Problem 1PE
icon
Related questions
Question

This a High-Performance Computing Question:


Assume you have the code of a Naïve parallel version of Matrix-Matrix multiplication using CUDA and C++ in this way:
(A Naïve parallel version of Matrix-Matrix multiplication using CUDA and C++(Note that the kernel should do the multiplication).
Use square matrices.
Use 1D execution configurations so that a thread loads a whole. The code has 4 different sizes of matrices over 1000, use 2 different block sizes.)

Provide the code using CUDA and C++ for an OPTIMIZED parallel version of a Matrix-Matrix multiplication with CUDA and by "Varying the size of your computational grid: change number of CUDA threads and blocks  ".


Requirements:
Compare that results are correct by comparing the results with cubLAS'.
Use double-precision for all the program
Use square matrices.
Calculate the time that it took for the kernel to do the multiplication.
Calculate the time that it took since transferring the matrices from host to device up to retrieving the results from the device to the host.
Calculate the execution rate(FLOPS) of the kernel

For each configuration in regards to the configuration(matrix size, block size, and threads used) explain how the program should behave
while executing on a GPU.

Expert Solution
steps

Step by step

Solved in 2 steps

Blurred answer
Knowledge Booster
Hash Table
Learn more about
Need a deep-dive on the concept behind this application? Look no further. Learn more about this topic, computer-science and related others by exploring similar questions and additional content below.
Similar questions
  • SEE MORE QUESTIONS
Recommended textbooks for you
Database System Concepts
Database System Concepts
Computer Science
ISBN:
9780078022159
Author:
Abraham Silberschatz Professor, Henry F. Korth, S. Sudarshan
Publisher:
McGraw-Hill Education
Starting Out with Python (4th Edition)
Starting Out with Python (4th Edition)
Computer Science
ISBN:
9780134444321
Author:
Tony Gaddis
Publisher:
PEARSON
Digital Fundamentals (11th Edition)
Digital Fundamentals (11th Edition)
Computer Science
ISBN:
9780132737968
Author:
Thomas L. Floyd
Publisher:
PEARSON
C How to Program (8th Edition)
C How to Program (8th Edition)
Computer Science
ISBN:
9780133976892
Author:
Paul J. Deitel, Harvey Deitel
Publisher:
PEARSON
Database Systems: Design, Implementation, & Manag…
Database Systems: Design, Implementation, & Manag…
Computer Science
ISBN:
9781337627900
Author:
Carlos Coronel, Steven Morris
Publisher:
Cengage Learning
Programmable Logic Controllers
Programmable Logic Controllers
Computer Science
ISBN:
9780073373843
Author:
Frank D. Petruzella
Publisher:
McGraw-Hill Education