
Hands-On Data Analysis with Pandas
By :

Run through the introduction_to_data_analysis.ipynb
notebook for a review of this chapter's content, review the python_101.ipynb
notebook (if needed), and then complete the following exercises to practice working with JupyterLab and calculating summary statistics in Python:
exercises.ipynb
notebook. It will give you a list of 100 values to work with for the rest of the exercises in this chapter. Be sure to treat these values as a sample of the population.statistics
module in the standard library (https://docs.python.org/3/library/statistics.html), and then confirm your results match up to those that are obtained when using the statistics
module (where possible):a) Mean
b) Median
c) Mode (hint: check out the Counter
class in the collections
module of the standard library at https://docs.python.org/3/library/collections.html#collections.Counter)
d) Sample variance
e) Sample standard deviation
statistics
module where appropriate:a) Range
b) Coefficient of variation
c) Interquartile range
d) Quartile coefficient of dispersion
a) Min-max scaling (normalizing)
b) Standardizing
a) The covariance between the standardized and normalized data
b) The Pearson correlation coefficient between the standardized and normalized data (this is actually 1, but due to rounding along the way, the result will be slightly less)