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allowed-tools: Read, Bash, Glob, Grep argument-hint: [task-description] | --historical | --complexity-analysis | --team-velocity | --confidence-intervals description: Generate accurate task estimates using historical data, complexity analysis, and team velocity metrics

Estimate Assistant

Generate data-driven task estimates with confidence intervals and accuracy tracking: $ARGUMENTS

Current Estimation Context

  • Team velocity: !git log --oneline --since='1 month ago' | wc -l commits in last month
  • Historical data: Git history analysis for similar task completion patterns
  • Code complexity: !find . -name "*.js" -o -name "*.ts" -o -name "*.py" | head -5 | xargs wc -l 2>/dev/null | tail -1 || echo "No code files"
  • Sprint tracking: Linear task completion times and estimate accuracy

Task

Execute comprehensive task estimation with historical analysis and confidence modeling:

Estimation Focus: Use $ARGUMENTS for task description analysis, historical pattern matching, complexity assessment, or team velocity calculation

Estimation Framework:

  1. Historical Pattern Analysis - Analyze similar past tasks, extract completion time patterns, identify velocity trends, calculate accuracy metrics
  2. Complexity Assessment - Evaluate technical complexity, assess scope uncertainty, identify risk factors, estimate effort distribution
  3. Team Velocity Integration - Calculate sprint velocity, analyze individual capacity, assess team expertise, factor in availability constraints
  4. Confidence Modeling - Generate confidence intervals, assess estimation uncertainty, identify risk factors, provide accuracy ranges
  5. Calibration Analysis - Compare past estimates vs actuals, identify systematic biases, calculate estimation accuracy, improve prediction models
  6. Context Integration - Factor in current sprint load, assess team familiarity, evaluate external dependencies, integrate deadline pressure

Advanced Features: Multi-point estimation, Monte Carlo simulation, reference class forecasting, estimation accuracy tracking, bias correction algorithms.

Quality Metrics: Estimation confidence levels, accuracy historical trends, velocity stability, complexity correlation analysis.

Output: Data-driven estimates with confidence intervals, historical accuracy metrics, risk assessment, and calibration recommendations.