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Cyber Physical Systems and Mobile Security - Threat Landscape and Innovations

Offered By: Toronto Machine Learning Series (TMLS) via YouTube

Tags

Cybersecurity Courses Artificial Intelligence Courses Internet of Things Courses Machine Learning Courses Cyber-Physical Systems Courses Edge Computing Courses Industrial Control Systems Courses Threat Detection Courses Mobile Security Courses Automotive Security Courses

Course Description

Overview

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Explore the critical landscape of cyber security in cyber physical systems and mobile devices through this informative panel discussion featuring industry experts and academic leaders. Delve into the current threat environment and discover key innovations in Edge Computing, AI, and Machine Learning that can be applied to detect, contain, mitigate, and recover from threats in cyber physical and mobile systems. Gain insights from seasoned professionals in computer security, automotive cybersecurity, and advanced analytics as they share their expertise on protecting critical infrastructures, IT/OT systems, and emerging technologies. Learn about the latest research and practical applications in areas such as vehicle cybersecurity, distributed systems, IoT, and intelligent networks. Benefit from the diverse perspectives of panelists from leading tech companies, academic institutions, and cybersecurity firms as they discuss cutting-edge approaches to safeguarding our increasingly connected world.

Syllabus

Cyber Physical Systems and Mobile Security


Taught by

Toronto Machine Learning Series (TMLS)

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