Metadata
Interdisciplinary / Other Graduate Analyze Medium
Metadata
  • Subject

    Interdisciplinary / Other

  • Education level

    Graduate

  • Cognitive goals

    Analyze

  • Difficulty estimate

    Medium

  • Tags

    algorithmic hiring, bias, socio-technical, mitigation, fairness, governance

  • Number of questions

    5

  • Created on

  • Generation source

  • License

    CC0 Public domain

  • Prompt

    Test graduate students' ability to analyze socio-technical drivers (data quality and representativeness, model design choices, organizational processes, labor market context, legal and cultural factors) that produce bias in algorithmic hiring systems and to evaluate mitigation strategies (data curation, fairness-aware algorithms, human-in-the-loop design, audits, governance and compliance). Assess skills in diagnosing root causes, comparing technical and non-technical interventions, designing mixed-method mitigation plans for case scenarios, and critiquing trade-offs, metrics, and policy implications.
Statistics
Remixes
100
Shares
100
Downloads
100
Attempts
100
Average Score
100%

Mock data used for demo purposes.