MalIoT: Scalable and Real-time Malware Traffic Detection for IoT Networks

04/02/2023
by   Ethan Weitkamp, et al.
0

The machine learning approach is vital in Internet of Things (IoT) malware traffic detection due to its ability to keep pace with the ever-evolving nature of malware. Machine learning algorithms can quickly and accurately analyze the vast amount of data produced by IoT devices, allowing for the real-time identification of malicious network traffic. The system can handle the exponential growth of IoT devices thanks to the usage of distributed systems like Apache Kafka and Apache Spark, and Intel's oneAPI software stack accelerates model inference speed, making it a useful tool for real-time malware traffic detection. These technologies work together to create a system that can give scalable performance and high accuracy, making it a crucial tool for defending against cyber threats in smart communities and medical institutions.

READ FULL TEXT

page 4

page 5

research
03/09/2022

NURSE: eNd-UseR IoT malware detection tool for Smart homEs

Traditional techniques to detect malware infections were not meant to be...
research
04/16/2022

SETTI: A Self-supervised Adversarial Malware Detection Architecture in an IoT Environment

In recent years, malware detection has become an active research topic i...
research
06/09/2023

A Survey on Cross-Architectural IoT Malware Threat Hunting

In recent years, the increase in non-Windows malware threats had turned ...
research
10/24/2020

Safeguarding the IoT from Malware Epidemics: A Percolation Theory Approach

The upcoming Internet of things (IoT) is foreseen to encompass massive n...
research
11/03/2021

A Survey of Machine Learning Algorithms for Detecting Malware in IoT Firmware

This work explores the use of machine learning techniques on an Internet...
research
10/29/2021

Evaluation of an Anomaly Detector for Routers using Parameterizable Malware in an IoT Ecosystem

This work explores the evaluation of a machine learning anomaly detector...

Please sign up or login with your details

Forgot password? Click here to reset