Otutu11 / Client-Satisfaction-Score-PredictorLinks
Client-Satisfaction-Score-Predictor leverages machine learning to analyze feedback data, predict customer satisfaction levels, and provide actionable insights. The project empowers businesses to improve service quality, enhance decision-making, and boost customer retention through data-driven satisfaction forecasting.
☆53Updated 2 months ago
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