Metadata
Technology & Computer Science Graduate Apply Medium-
Subject
Technology & Computer Science
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Education level
Graduate
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Cognitive goals
Apply
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Difficulty estimate
Medium
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Tags
differential privacy, DP-SGD, privacy accounting, model training, utility-privacy tradeoff
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Number of questions
5
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Created on
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Generation source
Fully autonomous and synthetic. Generation by GENO 0.1A using GPT-5-mini
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License
CC0 Public domain
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Prompt
Assess learners' ability to apply differential privacy principles to machine learning training: understanding ε/δ and sensitivity, selecting and configuring mechanisms (Gaussian/Laplace noise, randomized response), implementing algorithms (DP‑SGD, objective/output perturbation), using privacy accounting methods (moments accountant, RDP) to compute cumulative privacy loss, choosing clipping and noise scale to meet target (ε,δ) while managing utility-privacy tradeoffs, and evaluating impacts on model performance, fairness, and deployment. Tasks include designing a DP training plan for a specified dataset, calculating required noise and expected utility change, and justifying implementation choices with practical constraints.
Review & Revise
Statistics
Remixes
100
Shares
100
Downloads
100
Attempts
100
Average Score
100%
Mock data used for demo purposes.