--- slug: artstudies title: 🎓 ArtStudies description: A curated collection of mathematics and data science projects developed during my academic journey. publishedAt: 2023/09/01 readingTime: 1 favorite: true tags: - data - python - r --- # ArtStudies [ArtStudies Projects](https://github.com/ArthurDanjou/artstudies) is a curated collection of academic projects completed throughout my mathematics studies. The repository showcases work in both _Python_ and _R_, focusing on mathematical modeling, data analysis, and numerical methods. The projects are organized into two main sections: - **L3** – Third year of the Bachelor's degree in Mathematics - **M1** – First year of the Master's degree in Mathematics - **M2** – Second year of the Master's degree in Mathematics ## 📁 File Structure - `L3` - `Analyse Matricielle` - `Analyse Multidimensionnelle` - `Calculs Numériques` - `Équations Différentielles` - `Méthodes Numériques` - `Probabilités` - `Projet Numérique` - `Statistiques` - `M1` - `Data Analysis` - `General Linear Models` - `Monte Carlo Methods` - `Numerical Methods` - `Numerical Optimization` - `Portfolio Management` - `Statistical Learning` - `M2` - `Machine Learning` - `SQL` ## 🛠️ Technologies & Tools - [Python](https://www.python.org): A high-level, interpreted programming language, widely used for data science, machine learning, and scientific computing. - [R](https://www.r-project.org): A statistical computing environment, perfect for data analysis and visualization. - [Jupyter](https://jupyter.org): Interactive notebooks combining code, results, and rich text for reproducible research. - [Pandas](https://pandas.pydata.org): A data manipulation library providing data structures and operations for manipulating numerical tables and time series. - [NumPy](https://numpy.org): Core package for numerical computing with support for large, multi-dimensional arrays and matrices. - [SciPy](https://www.scipy.org): A library for advanced scientific computations including optimization, integration, and signal processing. - [Scikit-learn](https://scikit-learn.org): A robust library offering simple and efficient tools for machine learning and statistical modeling, including classification, regression, and clustering. - [TensorFlow](https://www.tensorflow.org): A comprehensive open-source framework for building and deploying machine learning and deep learning models. - [Matplotlib](https://matplotlib.org): A versatile plotting library for creating high-quality static, animated, and interactive visualizations in Python. - [Plotly](https://plotly.com): An interactive graphing library for creating dynamic visualizations in Python and R. - [Seaborn](https://seaborn.pydata.org): A statistical data visualization library built on top of Matplotlib, providing a high-level interface for drawing attractive and informative graphics. - [RMarkdown](https://rmarkdown.rstudio.com): A dynamic tool for combining code, results, and narrative into high-quality documents and presentations. - [FactoMineR](https://factominer.free.fr/): An R package focused on multivariate exploratory data analysis (e.g., PCA, MCA, CA). - [ggplot2](https://ggplot2.tidyverse.org): A grammar-based graphics package for creating complex and elegant visualizations in R. - and my 🧠.