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Many software companies now learn their policies via data-driven methods. Modern practitioners treat every planned feature as an experiment, of which only a few are expected to survive. Key performance metrics are carefully monitored and analyzed to judge the progress of a feature. Even simple design decisions such as the color of a link are chosen by the outcome of software experiments.

This subject will explore methods for designing data collection experiments; collecting that data; exploring that data; then presenting that data in such a way to support business-level decision making for software projects.

News Lectures Homework Review Cool stuff
  1. Visualizations
  2. Defect prediction
  3. Privacy
  4. Mistakes
  5. Data reduction
  6. Discretization
  7. Bayes classifiers
  8. Incremental learning
  9. Decision trees
  10. Tables
  11. Stats
  12. Verification studies
  13. Lecture2: Misc
  14. On Average
  15. What is S.O.S.?
  16. Reading12345678
  1. hw8
  2. hw7
  3. hw6
  4. hw5
  5. hw4
  6. Project notes
  7. hw3
  8. hw2
  9. hw1
  1. Review8
  2. Review7
  3. Review6
  4. Review5
  5. Review4
  6. Review3
  7. Review2
  1. Discretization2
  2. Discretization1
  3. Anomaly detection
  4. Bayes nets

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Foundations of Software Science

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