This repository contains my data science lab work, demos, and exam preparation notebooks. The focus is on statistics, probability, data cleaning, preprocessing, regression, and time series analysis.
-
Data cleaning and preprocessing
Data_Cleaning_Demo.ipynbData_Cleaning_DemoPascal.ipynbLabo_09_Data_Preprocessing_*.ipynb
-
Descriptive statistics
Labo_01_centrummaten_test.ipynbDemo_week2_Spreidingmaten_Oplossing.ipynbLabo_02_Spreidingsmaten_*.ipynbcentrummaten_demo_oplossingen.ipynb
-
Probability distributions
Labo_03_Discrete_Kansverdelingen_Opdracht.ipynbLabo_04_Continue_Kansverdelingen_Opdracht.ipynb
-
Correlation and linear regression
Labo_05_Correlatie_Lineaire_Regressie_*.ipynb
-
Time series
Labo_06_Stationaire_tijdsreeksen_*.ipynbLabo_08_Niet_stationaire_tijdsreeksen_*.ipynb
-
Python for data science
Labo_07_python_voor_data_science_*.ipynb
-
Review and exam preparation
Labo_10_Herhalingslabo_Opgave.ipynbPascal_MusabyimanaCTAIGroep20DS_21_05_2025.ipynb
Open the notebooks with Jupyter Notebook, JupyterLab, VS Code, or Google Colab.
If you run them locally, create a Python environment and install the common data-science packages:
pip install notebook jupyter pandas numpy matplotlib seaborn scipy scikit-learn statsmodelsThen start Jupyter:
jupyter notebook