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Lecture

Leveraging Federated Machine Learning to Improve Intrusion Detection in Internet of Things Network

About

The rapid development of Internet of Things (IoT) devices has significantly increased network attacks and cyber threats, necessitating robust and efficient Intrusion Detection Systems (IDS).

Traditional IDS approaches often struggle with the unique challenges posed by IoT environments, such as data privacy concerns, device heterogeneity, and limited computational resources.

This talk will focus on the innovative use of Federated Machine Learning (FML) to enhance intrusion detection in IoT environments. FML mitigates data privacy risks while maintaining the ability to learn from a diverse range of data sources using decentralised model training approach. Highlighting the potential of FML as a solution to strengthen IDS effectiveness against evolving cyber threats, along with other real-world applications in IoT networks.

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Continuing Professional Development

This event can contribute towards your Continuing Professional Development (CPD) hours as part of the IET's CPD monitoring scheme.

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21 Oct 2024 

6:30pm - 8:30pm

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Organiser

  • Sussex Local Network

Speakers

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Mohammed Al-khafajiy

Senior Lecturer in Computer Science - School of Engineering & Physical Sciences - University of Lincoln

Location

John Maynard Smith

University of Sussex, Falmer
Falmer
East Sussex
BN1 9PX
United Kingdom

Programme

18:30  Refreshments and networking
19:00  Start
20:30  End

Register

Register

No charge