We did summarized statistics a few weeks back, and we are translating what we learned from Excel into Jupyter Notebooks.
We will be rehashing what we learned before.
As data analysts and scientists, statistics is the main skill where we derive insights from data. We don’t need to be PhD students to derive insights from data as we only need to be able to profile and understand the data according to the business context at hand.
Summary Statistics in Python
Let’s open up the file(s) in the 01-Ins_Summary_Statistics
folder to get started.
Quantiles and Outliers in Python
Let’s open up the file in the 02-Ins_Quartiles_and_Outliers
to get started.
Students Do: Summary Statistics in Python
Let’s open up the file in the 03-Stu_Settlements-PlottingPandas
folder to get started.
Sample, Population, and SEM
Let’s open up the file(s) in the 04-Ins_Standard_Error
folder to get started.
Students Do: SEM and Error Bars
Let’s open up the file(s) in the 05-Par_Standard_Error
folder to get started.
Correlation Conundrum
Let’s open up the file(s) in the 06-Ins_Correlation_Conundrum
to get started.
Students Do: Correlation Conquerors
Look at the file(s) in the 07-Stu_Correlation_Conquerors
folder.
Fits and Regression
Let’s open up the file(s) in the 08-Ins_Fits_and_Regression
to get started.
Students Do: Fits and Regression
Let’s open up the file(s) in the 09-Stu_Fits_and_Regression
to get started.