About Lesson
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Ethical Concerns:
- Bias and fairness: AI systems can inherit biases from their training data, leading to discriminatory outcomes.
- Privacy: The increasing use of AI in surveillance and data analysis raises privacy concerns.
- Accountability: Who is responsible when an AI system makes a harmful decision?
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Job Displacement and Transformation:
- Automation can lead to job losses in certain sectors, but it also creates new roles.
- Upskilling and reskilling are crucial to adapt to the changing job landscape.
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Safety and Security:
- Ensuring AI systems are robust, reliable, and secure is essential.
- Malicious use of AI (e.g., deepfakes) poses risks.
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Overfitting and Generalization:
- Just like in machine learning, overfitting—where models perform well on training data but poorly on unseen data—can occur in real-world applications.
- Striking the right balance between performance and generalization is critical.
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Climate Change and Sustainability:
- AI can contribute to environmental sustainability by optimizing energy usage, predicting climate patterns, and improving resource management.
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Healthcare and Medicine:
- AI aids in disease diagnosis, drug discovery, and personalized treatment plans.
- However, ethical considerations and data privacy must be addressed.
Remember, while the Terminator may dominate headlines, it’s essential to focus on these tangible challenges and work collaboratively to harness AI’s potential for the greater good.
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