Metadata
Mathematics Adult Learning Apply Hard
Metadata
  • Subject

    Mathematics

  • Education level

    Adult Learning

  • Cognitive goals

    Apply

  • Difficulty estimate

    Hard

  • Tags

    convex optimization, KKT, portfolio optimization, mean-variance, quadratic programming, duality

  • 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 learners' ability to apply convex optimization and KKT conditions to derive and solve constrained portfolio optimization problems (e.g., mean–variance quadratic programs with budget, box, and no-short constraints). Tasks include forming the Lagrangian, deriving KKT optimality conditions, solving for optimal weights analytically or via quadratic programming, verifying primal/dual feasibility and complementary slackness, and interpreting dual variables for sensitivity analysis.
Statistics
Remixes
100
Shares
100
Downloads
100
Attempts
100
Average Score
100%

Mock data used for demo purposes.