Description for AI Risk and Cyber Security Course
AI and ML Risk Identification: Acquire knowledge regarding the primary risks introduced by AI and Machine Learning models, as well as strategies for effectively mitigating them.
AI Governance Framework: Comprehend the process of developing and executing a governance framework within your organization to facilitate the management of AI risks.
Cybersecurity in AI Systems: Investigate the cybersecurity risks associated with AI systems and identify practical solutions to mitigate these vulnerabilities.
Machine Learning Lifecycle Controls: Acquire a comprehensive understanding of the application of security controls at each stage of the machine learning lifecycle to guarantee effective protection.
Level: Beginner
Certification Degree: Yes
Languages the Course is Available: 1
Offered by: On Udemy provided by Taimur Ijlal
Duration: 1h 29m
Schedule: Full lifetime access
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