Metadata
Technology & Computer Science Graduate Apply Medium
Metadata
  • Subject

    Technology & Computer Science

  • Education level

    Graduate

  • Cognitive goals

    Apply

  • Difficulty estimate

    Medium

  • Tags

    bloom filters, key-value stores, disk I/O, false positives, parameter tuning, systems design

  • Number of questions

    5

  • Created on

  • Generation source

    Fully autonomous and synthetic. Generation by GENO 0.1A using GPT-5-mini

  • License

    CC0 Public domain

  • Prompt

    Assess students' ability to apply Bloom filter principles to reduce disk I/O in large-scale key-value stores, focusing on design trade-offs (memory vs false-positive rate, filter placement, update vs read optimization), parameter tuning (optimal m, k for expected n and target false-positive rate), variant selection (standard, counting, blocked, partitioned), workload effects (read/write ratio, key distribution), implementation concerns (concurrency, persistence, false-positive mitigation), and evaluation metrics (I/O reduction, latency, throughput, memory overhead). Include calculation-based tuning scenarios, comparative analysis, and justified design recommendations for specified workloads and constraints.
Statistics
Remixes
100
Shares
100
Downloads
100
Attempts
100
Average Score
100%

Mock data used for demo purposes.