A Beginner’s Guide To Machine learning For Embedded Systems

Machine learning in embedded systems allows the use of that data in automated business processes to make more educated predictions. Running machine learning models on embedded devices is generally known as embedded machine learning.  Machine learning leverages a large amount of historic data to enable electronic systems to learn autonomously and use that knowledge for analysis, predictions, and decision making. Devices such as these can fulfill many tasks in the industry. Such devices allow machine learning algorithms on low-power devices like microcontrollers.  Machine learning in embedded devices has many benefits. It eliminates the need for transferring and storing data on cloud servers, which reduces data breaches and privacy leaks involved in transferring data. It also re
Subscribe or log in to Continue Reading

Uncompromising innovation. Timeless influence. Your support powers the future of independent tech journalism.

Already have an account? Sign In.

📣 Want to advertise in AIM? Book here

Picture of Meenal Sharma
Meenal Sharma
I am a journalism undergrad who loves playing basketball and writing about finance and technology. I believe in the power of words.
Related Posts
AIM Print and TV
Don’t Miss the Next Big Shift in AI.
Get one year subscription for ₹5999
Download the easiest way to
stay informed