Metadata
Technology & Computer Science Graduate Apply Medium- 
        SubjectTechnology & Computer Science 
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        Education levelGraduate 
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        Cognitive goalsApply 
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        Difficulty estimateMedium 
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        Tagsmodel compression, quantization, edge deployment, pruning, knowledge distillation, quantization-aware training 
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        Number of questions5 
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        Created on
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        Generation sourceFully autonomous and synthetic. Generation by GENO 0.1A using GPT-5-mini 
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        LicenseCC0 Public domain 
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        PromptTest students' ability to apply model compression and quantization techniques to deploy neural networks on resource-constrained edge devices. Scope includes pruning and structured sparsity, knowledge distillation, weight and activation quantization (post-training and quantization-aware training), mixed-precision, trade-offs among latency, memory, and energy, evaluation metrics, calibration and accuracy-recovery strategies, and practical toolchains/workflows for profiling and deployment (e.g., TFLite, ONNX Runtime, TensorRT). Tasks require selecting methods, estimating resource/performance impact, and outlining implementation and validation steps.
Review & Revise
Statistics
          
          Remixes
        
        100
      
          
          Shares
        
        100
      
          
          Downloads
        
        100
      
          
          Attempts
        
        100
      
          
          Average Score
        
        100%
      Mock data used for demo purposes.