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  1. CodeAlpha-Emotion-Recognition-from-Speech CodeAlpha-Emotion-Recognition-from-Speech Public

    Speech Emotion Recognition using Deep Learning (DNN & CNN) on the TESS dataset. Extracts MFCC-based audio features and classifies emotions such as happy, sad, angry, fear, disgust, neutral, and sur…

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    Machine Learning model for early Parkinson's Disease prediction using biomedical voice measurements and speech signal analysis.

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    Heart Disease Prediction using Logistic Regression with feature selection and data preprocessing.

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  4. CodeAlpha_Credit-Scoring-Model CodeAlpha_Credit-Scoring-Model Public

    Machine Learning-based Credit Scoring System that predicts customer creditworthiness using Logistic Regression and Random Forest, achieving 79% accuracy through feature engineering and financial ri…

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  5. CodeSoft_Credit-Card-Fraud-Detection CodeSoft_Credit-Card-Fraud-Detection Public

    Credit Card Fraud Detection using Logistic Regression and Exploratory Data Analysis (EDA).

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  6. CodeSoft_Customer-Churn-Prediction CodeSoft_Customer-Churn-Prediction Public

    Customer Churn Prediction using Machine Learning with Logistic Regression, Random Forest, and Gradient Boosting to identify customers likely to leave a service.

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