Introduction to Computational Thinking and Data Science (Fall 2016)

Introduction to Computational Thinking and Data Science (Fall 2016)

Prof. Eric Grimson , Prof. John Guttag and Dr. Ana Bell via MIT OpenCourseWare Direct link

1. Introduction, Optimization Problems (MIT 6.0002 Intro to Computational Thinking and Data Science)

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1 of 15

1. Introduction, Optimization Problems (MIT 6.0002 Intro to Computational Thinking and Data Science)

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Introduction to Computational Thinking and Data Science (Fall 2016)

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  1. 1 1. Introduction, Optimization Problems (MIT 6.0002 Intro to Computational Thinking and Data Science)
  2. 2 2. Optimization Problems
  3. 3 3. Graph-theoretic Models
  4. 4 4. Stochastic Thinking
  5. 5 5. Random Walks
  6. 6 6. Monte Carlo Simulation
  7. 7 7. Confidence Intervals
  8. 8 8. Sampling and Standard Error
  9. 9 9. Understanding Experimental Data
  10. 10 10. Understanding Experimental Data (cont.)
  11. 11 11. Introduction to Machine Learning
  12. 12 12. Clustering
  13. 13 13. Classification
  14. 14 14. Classification and Statistical Sins
  15. 15 15. Statistical Sins and Wrap Up

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