Implement comprehensive ML library from scratch with 12 algorithms, utilities, and examples#1
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Implement comprehensive ML library from scratch with 12 algorithms, utilities, and examples#1
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Co-authored-by: Bravee9 <147709380+Bravee9@users.noreply.github.com>
Co-authored-by: Bravee9 <147709380+Bravee9@users.noreply.github.com>
Co-authored-by: Bravee9 <147709380+Bravee9@users.noreply.github.com>
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[WIP] Implement comprehensive machine learning algorithms and techniques
Implement comprehensive ML library from scratch with 12 algorithms, utilities, and examples
Nov 18, 2025
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Implements a complete machine learning library from theoretical foundations for the MAT 3533 course, covering probability-based methods through deep neural networks with full preprocessing, evaluation, and visualization pipeline.
Algorithms (12 total)
Supervised Learning (7)
Unsupervised Learning (5)
Neural Networks
Utilities
Preprocessing: StandardScaler, MinMaxScaler, LabelEncoder, OneHotEncoder, train_test_split
Evaluation: Accuracy, Precision, Recall, F1, Confusion Matrix, MSE, MAE, R²
Model Selection: K-Fold CV, GridSearchCV, RandomizedSearchCV
Visualization: 11 plotting functions (decision boundaries, confusion matrices, learning curves, clustering, PCA variance, ROC curves)
Examples
7 comprehensive examples demonstrating:
Usage
Run examples:
python run_example.py <1-7>or test suite:python test_implementations.pyStats: 33 Python files, 4,622 lines of code, all algorithms implemented from scratch using NumPy with mathematical foundations documented in docstrings.
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