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Search: Wine-Quality-Predictions

Page 1

Showing 5 results from 5

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amberkakkar01/Prediction-of-Wine-Quality

GitHub Jupyter Notebook

This project is about the prediction of red wine quality using different machine learning algorithms

★ 51 Forks 21 amberkakkar01 Updated 06 May 2026
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sharmaroshan/Wine-Quality-Predictions

GitHub Jupyter Notebook GNU General Public License v3.0

Predicting the Quality of Red Wine using Machine Learning Algorithms for Regression Analysis, Data Visualizations and Data Analysis.

★ 34 Forks 21 sharmaroshan Updated 10 Aug 2025
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tijilicious/Wine-quality-prediction-and-validation-

GitHub Jupyter Notebook

In this project I have made predictions for a wine quality based on several features such as PH level, alcohol content etc. of a wine. The wine is classified as 'good', 'average' and 'bad'.

★ 25 Forks 16 tijilicious Updated 24 Mar 2026
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mrc03/Red-Wine-Quality-Accuracy-0.9175-

GitHub Jupyter Notebook

The Red Wine Quality dataset from kaggle. Data is provided of the composition of the wine having different chemicals. I have used pandas to manipulate the data and seaborn to visualize the data. Finally I have made predictions on the wine quality by using various models from the scikit-learn.

★ 19 Forks 9 mrc03 Updated 08 Jul 2025
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nandhini-1402/Wine-Quality-Prediction

GitHub Jupyter Notebook

Wine Quality Prediction: Jupyter Notebook containing machine learning models to predict wine quality based on various features. Includes data preprocessing, model training, evaluation, and insights. Ideal for understanding predictive analytics and model deployment.

★ 16 Forks 0 nandhini-1402 Updated 27 Jul 2024