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Course Content & Structure

In a typical week:

  • Friday lectures will focus on an Exoplanets topic.
  • Monday lectures will focus on a Data Science topic.
  • Wednesday computer labs will aim to combine the two.

There will be a short reading to be completed prior to class on most Mondays and Fridays. Students will continue working on the computer lab begun on Wednesday as homework, typically due prior to class the following Monday. Inevitably, there will be some deviations (e.g., getting started week, weeks with a holiday or exam, week of student presentations, etc.).

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Schedule of Topics

Week Data Science Exoplanets
1 What is Data Science? Overview of Known Exoplanets
2 Exploratory Data Analysis Transits
3 (Labor Day) Model Building Transit Timing
4 Model Assessment Radial Velocities
5 Bayesian Inference Rossiter-MchLaughlin Effect
6 Explanatory Data Analysis Masses & Orbits
7 Exam week Intro to Class Projects
8 Databases & Data Wrangling Exoplanet Populations
9 Data Science Workflow Transmission Spectroscopy
10 Data Storage Emission Spectroscopy
11 Data Visualization Microlensing
12 Reports & Dashboards Disks
13 Reproducible Research Future of Exoplanet Detection
14 (Thanksgiving Holiday) -
15 Retrospective Future of Exoplanet Characterization
16 Student Presentations Student Presentations

\ The schedule is subject to change. Any changes will be announced via Canvas.

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