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OPEN SOURCE SUMMIT
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Speaker Profile
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Introduction
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The Principles of responsible Al
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Why XAI is important?
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Adversarial Machine Learning Defenses
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Adversarial training
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Switching models
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Generalised models
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Poisoning attacks
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Evasion attacks
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Model stealing
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Methods of combating attacks
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Fixing biases in Al and machine learning algorithms
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Conclusion
Description:
Explore the critical aspects of Trusted and Responsible AI in this 37-minute conference talk by Dr. Vamsi Mohan Vandrangi. Delve into the principles of responsible AI, focusing on explainability (XAI), adversarial AI/ML, bias, and fairness in AI systems. Learn why XAI is crucial for building trust in machine learning algorithms and understand various adversarial attacks, including poisoning, evasion, and model stealing. Discover defense strategies such as adversarial training, switching models, and generalized models. Examine methods for identifying and fixing biases in AI and machine learning algorithms, ensuring fairness in AI-driven decision-making processes. Gain insights into the ethical considerations and practical approaches for implementing responsible AI in real-world business scenarios.

Trusted and Responsible AI - Explainability, Adversarial Attacks, Bias, and Fairness

Linux Foundation
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