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Eric Everett
Group 2 Dataset
Code Structure
main.ipynb: The primary Jupyter Notebook to run the entire project. It contains cells categorized by functionality (e.g., Logistic Regression, SVM, imports, etc.).
utils/: A folder containing custom utility modules. All algorithms, logic, and computations are implemented here.
create_data.py
lr_and_svm_classification.py
fnn_pca_classification.py
cnn_classification.py
Instructions
Run the Project: Open main.ipynb in a Jupyter environment. Execute the cells in sequence for smooth functionality.
Outputs: All outputs, including print statements and plots, are displayed within the Jupyter Notebook environment. No outputs are saved automatically.
I ran this code on my local machine, however, if you do not have a local machine that can handle the neural networks then using a SOL Juptyer interactive sesssion will work. Make sure that utils and main.ipynb are in the same directory. About
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