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Student Performance EDA

Necessary Libraries

  • Pandas
  • Numpy
  • Matplotlib
  • Seaborn

Problem Statement:

  • gender : Gender of the student
  • race/ethnicity : Race of the Student As Group A/B/C
  • parental level of education : What is the education Qualification of Students Parent
  • lunch : Whether the lunch is Standard type/Free lunch or Some discounted lunch
  • test preparation course : Whether Student has Taken or not and Completed
  • math score : Scores in Maths
  • reading score : Scores in Reading
  • writing score : Scores in Writing

Objective of this Analysis:

  • To understand the how the student's performance (test scores) is affected by the other variables (Gender, Ethnicity, Parental level of education, Lunch, Test preparation course).

Exploratory Data Analysis includes:

  • Analysis insights in the dataset.
  • To understand the connection between the variables and to uncover the underlying structure
  • To extract the important Variables.
  • To test the underlying assumptions.
  • Insights with Suitable Graphs and Visualizations.
  • Inferences with supporting Analysis and Visualizations.