Arthur DANJOU f94ff07cab Refactor code for improved readability and consistency across notebooks
- Standardized spacing around operators and function arguments in TP7_Kmeans.ipynb and neural_network.ipynb.
- Enhanced the formatting of model building and training code in neural_network.ipynb for better clarity.
- Updated the pyproject.toml to remove a specific TensorFlow version and added linting configuration for Ruff.
- Improved comments and organization in the code to facilitate easier understanding and maintenance.
2025-07-01 20:46:08 +02:00
2025-04-01 18:38:51 +02:00
2025-04-17 19:06:13 +02:00
2025-04-29 18:05:06 +02:00

Studies

Studies Projects 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

📁 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

🛠️ Technologies & Tools

  • Python: A high-level, interpreted programming language, widely used for data science, machine learning, and scientific computing.
  • R: A statistical computing environment, perfect for data analysis and visualization.
  • Jupyter: Interactive notebooks combining code, results, and rich text for reproducible research.
  • Pandas: A data manipulation library providing data structures and operations for manipulating numerical tables and time series.
  • NumPy: Core package for numerical computing with support for large, multi-dimensional arrays and matrices.
  • SciPy: A library for advanced scientific computations including optimization, integration, and signal processing.
  • Scikit-learn: A robust library offering simple and efficient tools for machine learning and statistical modeling, including classification, regression, and clustering.
  • TensorFlow: A comprehensive open-source framework for building and deploying machine learning and deep learning models.
  • Matplotlib: A versatile plotting library for creating high-quality static, animated, and interactive visualizations in Python.
  • RMarkdown: A dynamic tool for combining code, results, and narrative into high-quality documents and presentations.
  • FactoMineR: An R package focused on multivariate exploratory data analysis (e.g., PCA, MCA, CA).
  • ggplot2: A grammar-based graphics package for creating complex and elegant visualizations in R.
  • and my 🧠.
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