Metadata
Technology & Computer Science Any Level Create Hard-
Subject
Technology & Computer Science
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Education level
Any Level
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Cognitive goals
Create
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Difficulty estimate
Hard
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Tags
federated learning, differential privacy, secure aggregation, model compression, personalization, fault tolerance
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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 the learner’s ability to design a privacy-preserving, fault-tolerant federated learning architecture for heterogeneous edge devices that integrates secure aggregation, differential privacy, model compression, and adaptive personalization. Expect justification of algorithmic and protocol choices (cryptographic primitives, DP mechanism and budgeting, compression/quantization methods), strategies for handling device heterogeneity and failures, communication/computation trade-offs, evaluation metrics, and a deployment or simulation plan demonstrating scalability and privacy-utility trade-offs.
Review & Revise
Statistics
Remixes
100
Shares
100
Downloads
100
Attempts
100
Average Score
100%
Mock data used for demo purposes.