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This project is about creating a machine learning algorithm that can predict the quality of wine based on the given dataset. Different machine learning algorithms such as logistic regression, decision tree and random forest are used in this project.

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machine-learning regression random-forest machine-learning-algorithms python logistic-regression decision-trees python-projects machinelearningprojects the-ai-and-ds-channel

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