Skip to content

Latest commit

 

History

History
39 lines (29 loc) · 1.86 KB

File metadata and controls

39 lines (29 loc) · 1.86 KB

Python AI & ML Works

Deep Learning Projects Banner

This repository contains projects, exercises, and experiments in Python related to Machine Learning, AI, and Data Analysis. It serves as a personal space to practice skills, gain experience, and explore different ML techniques and libraries.

Repository Structure

E-Commerce Sales Prediction

  • dataset.csv: Dataset for predicting e-commerce sales.
  • E-Commerce-Sales-Prediction.ipynb: Jupyter notebook implementing predictive models for e-commerce sales.

Linear Regression Tests

  • bostonhouses.csv, HousingData.csv, turboaz.csv: Example datasets for regression tasks.
  • BostonHouses-LinearRegression.ipynb: Linear regression example on Boston housing data.
  • PandasTest1.ipynb, PandasTest2.ipynb: Testing data manipulation and analysis with pandas.

Logistic Regression Tests

  • exams.csv, titanic.csv: Datasets for classification tasks.
  • LogisticRegression-Exams.ipynb, LogisticRegression-Titanic.ipynb, LogisticRegressionExercise.ipynb, LogisticRegressionOnIrisDataset.ipynb, LogisticRegressionYTest.ipynb: Jupyter notebooks experimenting with logistic regression on various datasets.

Python Scripts & Other Tests

  • BasicBankSystem.py: Python script demonstrating a basic banking system.
  • ClassTest.ipynb: Notebook for practicing Python classes and OOP concepts.
  • DropDelivery/Code.ipynb: Project-related notebook (details not specified).

Purpose

  • Test and practice Python programming skills.
  • Gain hands-on experience with machine learning models, regression, and classification.
  • Explore different datasets and problem-solving approaches.
  • Experiment with libraries like pandas, scikit-learn, and others.

How to Use

  1. Clone the repository:
    git clone <repository-url>