Virtual Embedded Linux Board Part 2 | Udemy

Virtual Embedded Linux Board Part 2 | Udemy [Update 02/2024]
English | Size: 1 GB
Genre: eLearning

QEMU, Linux, Boot Linux image on QEMU

What you’ll learn
Understanding ARM Ecosystem
ARM Support in Linux Kernel
Boot Embedded Linux image for Versatile AB, PB board
Boot Embedded Linux image for Raspberry Pi3

This course is second part of Virtual Embedded Linux board, where we will continue our journey with QEMU and have support for more boards

What you will learn as part of this course:

Introduction to ARM Architecture

Differences between ARM Architecture vs Microarchitecture vs core vs SoC vs SBC

Where to look for ARM Documentation

How to check for ARM Linux support

Exploring Code of ARM in Linux kernel (boot, kernel, lib, configs, dts, tools, mm, common,mach-*)

Building and booting Linux images for versatileab platform

Building and booting Linux images for versatilepb platform

Building and booting Linux images for raspberrypi3 platform

Understanding cpuinfo file of proc file system

Building qemu from source code

Building util-linux from source code for packages like lsmem, lsirq, lscpu, fsck

Fixing QEMU errors related to audio and sd card

Generating toolchain for ARMv5TE architecture

Viewing contents of initrd and initramfs using lsinitrd and lsinitramfs

What happens when we run executable compiled for x86_64 on ARM

Loading rootfs from scsi interface on versatilepb board

Booting Raspbian OS on QEMU

Enabling UART and SSH for Raspberry Pi3 target

Building Raspberry Pi Linux Kernel and toolchain

There’s no risk either !

This course comes with a 30 day money back guaranteed!. If you are not satisfied with the course, you’ll get your money back

So what are you waiting for, enroll now and take the next step in improving your own virtual board

Who this course is for:
Linux developers who want to have their virtual embedded Linux boaard



If any links die or problem unrar, send request to

Leave a Comment

This site uses Akismet to reduce spam. Learn how your comment data is processed.