Week 4 Quiz :AI For Everyone (AI For Everyone) Answers 2025
1. Question 1
Current limitations of AI (Select ALL):
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❌ There are no limitations
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✅ AI can be biased
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✅ Explainability is hard
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✅ AI is susceptible to adversarial attacks
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✅ AI can display discriminatory behavior
2. Question 2
Goldilocks Rule of AI:
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❌ Fear extinction
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❌ Expect utopia
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✅ Don’t be too optimistic or too pessimistic about AI
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❌ AI will solve all problems
3. Question 3
Explainability in medical AI:
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❌ Achieved through chatbots
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❌ AI cannot explain anything
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✅ Lack of explainability reduces user trust
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❌ AI is always explainable
4. Question 4
If ML learns from biased text, it behaves biased:
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✅ True
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❌ False
5. Question 5
If ML learns from completely unbiased text, will it have minimal bias?
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❌ True
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✅ False
Explanation:
Even “neutral” data can reflect hidden societal bias, and models can generate new unintended biases.
6. Question 6
Recommended bias-mitigation practices (Select ALL):
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❌ Zeroing out bias (ineffective)
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✅ Use more inclusive / less biased data
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❌ Adversarial attacks to change outputs
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✅ Systematic auditing for bias
7. Question 7
Examples of adversarial attacks (Select ALL):
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✅ Subtly altering an image to fool recognition
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✅ Adding a sticker to a stop sign
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✅ Modifying audio to trick speech recognition
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❌ Synthesizing a fake video (that’s deepfake generation, not an adversarial attack)
8. Question 8
If a developing economy has a strong coffee industry, it has an advantage applying AI to it:
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✅ True
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❌ False
Explanation:
Strong domain expertise + data availability helps AI adoption.
9. Question 9
Jobs most likely displaced by AI:
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❌ All jobs
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❌ Non-routine work
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✅ Routine, repetitive jobs
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❌ Most white-collar jobs (some but not most)
10. Question 10
Congratulations statement:
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✅ True 🎉
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❌ False
🧾 Summary Table
| Q | Correct Answer |
|---|---|
| 1 | Biased, hard explainability, adversarial, discriminatory |
| 2 | Balanced optimism/pessimism |
| 3 | Lack of explainability harms trust |
| 4 | True |
| 5 | False |
| 6 | Inclusive data + auditing |
| 7 | First three (A, B, C) |
| 8 | True |
| 9 | Routine, repetitive jobs |
| 10 | True |