Use MATLAB to Train on Jetson Nano: Unterschied zwischen den Versionen

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Evrard.leuteu-feukeu@stud.hshl.de (Diskussion | Beiträge)
Keine Bearbeitungszusammenfassung
Evrard.leuteu-feukeu@stud.hshl.de (Diskussion | Beiträge)
Keine Bearbeitungszusammenfassung
Zeile 8: Zeile 8:
#The fundamental of training an AI system is called deep learning. MATLAB provides a variety of helpful toolboxes, pre-trained networks, and tools to process data into useful input for an AI [https://de.mathworks.com/videos/search.html?q=&fq%5B%5D=product:GC&page=1].
#The fundamental of training an AI system is called deep learning. MATLAB provides a variety of helpful toolboxes, pre-trained networks, and tools to process data into useful input for an AI [https://de.mathworks.com/videos/search.html?q=&fq%5B%5D=product:GC&page=1].
#The training can be stored as a model, usually in a .MAT format, which can be reused. Hence, we do not have to train a model every time we want to use it.
#The training can be stored as a model, usually in a .MAT format, which can be reused. Hence, we do not have to train a model every time we want to use it.
#Data preprocessing—including image resizing, augmentation, and normalization—is handled with MATLAB functions such as imageDatastore and augmentedImageDatastore.
{| class="wikitable"
|+ Tabelle 4:  Deep Learning with MATLAB Setup
|-
! # !!  !! Description !! Pictures
|-
| 1 || Access GPU APP || || [[Datei:Gpu coder APP.png|mini]]
|-
| 2 || Select Targeted GPU||
|-
| 3 || Generate c/c++ || ||
|}


*Gpu Coder
*Gpu Coder
#GPU Coder generates optimized CUDA® C++ from your MATLAB® algorithms, unlocking the parallel compute power of the Jetson GPU for real-time processing on your JetRacer and improve 40 times the performance on the jetracer [https://www.mathworks.com/help/coder/nvidia.html?utm_source=chatgpt.com][https://www.youtube.com/watch?v=emVRH4HfhQY&list=PLRcFXSK3rd79jpZLqttVDlBGrl6cYK3iS].
#GPU Coder generates optimized CUDA® C++ from your MATLAB® algorithms, unlocking the parallel compute power of the Jetson GPU for real-time processing on your JetRacer and improve 40 times the performance on the jetracer [https://www.mathworks.com/help/coder/nvidia.html?utm_source=chatgpt.com][https://www.youtube.com/watch?v=emVRH4HfhQY&list=PLRcFXSK3rd79jpZLqttVDlBGrl6cYK3iS].
#Helps target GPUs for automotive applications.
#Helps target GPUs for automotive applications.
{| class="wikitable"
|+ Tabelle 4:  GPU Coder Setup
|-
! # !!  !! Description !! Pictures
|-
| 1 || Access GPU APP || || [[Datei:Gpu coder APP.png|mini]]
|-
| 2 || Select Targeted GPU||
|-
| 3 || Generate c/c++ || ||
|}






=== [[Result]] ===
=== [[Result]] ===

Version vom 1. Juni 2025, 14:01 Uhr

Setup

Overview

To train the AI using MATLAB, I will write a script on MATLAB and then use GPU Coder to flash the function/model on the JetRacer. So all the debugging process will be on MATLAB.

Key Concepts

  • Deep Learning with MATLAB
  1. The fundamental of training an AI system is called deep learning. MATLAB provides a variety of helpful toolboxes, pre-trained networks, and tools to process data into useful input for an AI [1].
  2. The training can be stored as a model, usually in a .MAT format, which can be reused. Hence, we do not have to train a model every time we want to use it.
  3. Data preprocessing—including image resizing, augmentation, and normalization—is handled with MATLAB functions such as imageDatastore and augmentedImageDatastore.
Tabelle 4: Deep Learning with MATLAB Setup
# Description Pictures
1 Access GPU APP
2 Select Targeted GPU
3 Generate c/c++


  • Gpu Coder
  1. GPU Coder generates optimized CUDA® C++ from your MATLAB® algorithms, unlocking the parallel compute power of the Jetson GPU for real-time processing on your JetRacer and improve 40 times the performance on the jetracer [2][3].
  2. Helps target GPUs for automotive applications.
Tabelle 4: GPU Coder Setup
# Description Pictures
1 Access GPU APP
2 Select Targeted GPU
3 Generate c/c++


Result