Versions Compared

Key

  • This line was added.
  • This line was removed.
  • Formatting was changed.

...

Day 0June 17Read this short Linux beginners guide.  No Quiz.
Day 12June 18Emacs, ways to run Python: Sundnes Ch.1 and Ch.2  (Don't forget Quiz1!)
Day 24June 20Sundnes  Review Ch.2 and read Ch 3.   Complete the  4 topics in the 'Python Introductionfundamentals' section of this tutorial: https://www.programiz.com/python-programming/variables-constants-literals.  Also, complete the 5 topics in the 'Python Flow Control' section: https://www.programiz.com/python-programming/firstif-elif-programelse You Note, you don't need to install any software!  Ignore that part.  Note  Note that this is 9 short tutorial pages.  You can find some information about how to use the tutorials here.  Basically, you should login to Rivanna (Desktop or Jupyter) and try out the Python commands being discussed in the tutorial. (Don't forget Quiz2!) 

Day

6

June

24

Sundnes. Ch. 5, Read 6.1    For Numpy Ref VandePlas Ch. 2;; Complete the 'Python Data Types' section (6 short pages) https://www.programiz.com/python-programming/numbers Complete the 'Python Files' section (5 short pages) https://www.programiz.com/python-programming/file-operation.  (Don't forget Quiz3!) 
Day 8

June

26

Sundnes functions Ch.4 Sundnes: classes Ch.8;  (some of this is review - just skim that part if you want).  Complete the 'Python Functions' section (5 short pages)  https://www.programiz.com/python-programming/function  
Day 10

June 

28

Wood Ch. 10 Sundnes: 6.2 --> 6.5.  Wood Ch. 11

Review the Poisson Distribution and the Gaussian ("Normal") Distribution.

Widget Connector
urlhttp://youtube.com/watch?v=hcDb12fsbBU

Don't forget Reading Quiz 5!  

Day 12

July 1

Wood Ch. 11. - Focus on fitting.  No quiz!
Day 14July 8For Pandas reference see VandePlas Ch. 3 (read introduction and skim). For plotting with Pandas see VandePlas Ch. 4.  For Machine Learning reference see VandePlas Ch. 5.  These chapters are long - they are for reference.  Read the introductions and skim to see what is available in Pandas and learn about machine learning tools.   Last reading quiz!