Jan

08

2022

MATLAB Parallel programming on GPUs, Cores and CPUs

Laser 8 Jan 2022 19:25 LEARNING » e-learning - Tutorial

MATLAB Parallel programming on GPUs, Cores and CPUs
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 ChGenre: eLearning | Language: English + srt | Duration: 23 lectures (3h 22m) | Size: 1.6 GB

With practical examples on every parallel programming concept including training NN and deep learning model

Run Deep learning models in parallel on GPUs
Learn the difference between cores, CPUs and GPUs
Learn the concept of multi-threading in MATLAB with examples
Learn the concept of multi-workers in MATLAB with examples
measuring the performance of each parallel computing code
Learn how to convert your code to parallel computing to increase the performance
Run MATLAB files and functions in the background
Using GPUs to execute and Run MATLAB functions (Excellent performance)

MATLAB basics

This course helps students, researchers and anyone using the MATLAB decreasing the execution they take to execute a program
All computers todays and the laptops have multi-cores and GPUs.

But not all users use the to run or execute the programs in parallel.
The purpose of the course is to fill this gap. Is to teach you with practical examples how to use all resources in your computer and also how to monitor them.
The course is divided into many sections
The first is an introduction to the hardware of the CPUs, cores and GPUs. It is better to understand the basic components of these items to be able to get the best utilization when you use them.
The second section is explaining two concepts. The multi-threading and the multi-workers. The first is a built in mechanism to run some functions in parallel using many cores but we can't control the number of cores and the way that the functions executes. The second one (multi-workers) is used to run any function on multiple cores but here we can controls the number of cores to optimize the program execution. Also, I explained some examples and measured the performance parameters to differentiate between the two concepts.
The third sections is the GPU section. In the section, I explained how to run any function on the GPUs to make use of the hundred or thousands cores that the GPUs have. There are some notations to get the best results and I explained all of these notations with examples.
Deep learning and neural networks: in this section you will learn how to train any neural network in parallel on GPUs or multi-cores. And also how to run the training process in the background in order to be able to use the MATLAB while it is running.

Students, researchers and eeers




DOWNLOAD
uploadgig.com



rapidgator.net


nitro.download

High Speed Download

Add Comment

  • People and smileys emojis
    Animals and nature emojis
    Food and drinks emojis
    Activities emojis
    Travelling and places emojis
    Objects emojis
    Symbols emojis
    Flags emojis