Welcome to the ML model deployment project showcasing the integration of machine learning models using PCA and XGBoost in Python. This Flask API allows users to receive real-time predictions by sending data from their mobile devices.
This project deploys machine learning models, incorporating Principal Component Analysis (PCA) and XGBoost, within a Flask API. Serialized using pickle
, the models are seamlessly integrated into the API, enabling users to make predictions on-the-fly.
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PCA and XGBoost Models: Utilizes PCA for dimensionality reduction and XGBoost for efficient machine learning predictions.
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Flask API Integration: Models are integrated into a Flask API, providing a user-friendly interface for real-time predictions.
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Mobile Device Compatibility: Users can send data from their mobile devices to the Flask API, receiving prompt predictions.