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README.md
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The machine learning model uses a decision tree algorithm to predict student enrollment. The model has been trained on the dataset using 80% of the data for training and 20% for testing. The accuracy of the model is 85%.
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Files
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This repository contains the following files:
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enrollment_prediction_model.ipynb: Jupyter notebook containing the code for training and testing the model
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enrollment_prediction_model.pkl: Serialized machine learning model file
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enrollment_prediction_model_readme.md: Readme file containing information about the machine learning model
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Usage
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To use the machine learning model, follow these steps:
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Clone the repository
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Install the required packages (pandas, numpy, scikit-learn)
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Load the serialized machine learning model from the enrollment_prediction_model.pkl file
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Prepare a new dataset with the same columns as the original dataset
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Use the predict function of the model to predict enrollment for each row in the new dataset
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Example code:
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python
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Copy code
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import pandas as pd
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import pickle
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# Load serialized machine learning model
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with open('enrollment_prediction_model.pkl', 'rb') as file:
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model = pickle.load(file)
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# Prepare new dataset
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new_data = pd.read_csv('new_data.csv')
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# Predict enrollment
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predictions = model.predict(new_data)
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The machine learning model uses a decision tree algorithm to predict student enrollment. The model has been trained on the dataset using 80% of the data for training and 20% for testing. The accuracy of the model is 85%.
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16 |
|
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Files
|
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+
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This repository contains the following files:
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|
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enrollment_prediction_model.ipynb: Jupyter notebook containing the code for training and testing the model
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+
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enrollment_prediction_model.pkl: Serialized machine learning model file
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+
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enrollment_prediction_model_readme.md: Readme file containing information about the machine learning model
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+
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Usage
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+
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To use the machine learning model, follow these steps:
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|
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Clone the repository
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+
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Install the required packages (pandas, numpy, scikit-learn)
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+
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Load the serialized machine learning model from the enrollment_prediction_model.pkl file
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36 |
+
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Prepare a new dataset with the same columns as the original dataset
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+
|
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Use the predict function of the model to predict enrollment for each row in the new dataset
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+
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Example code:
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import pandas as pd
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import pickle
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# Load serialized machine learning model
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with open('enrollment_prediction_model.pkl', 'rb') as file:
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model = pickle.load(file)
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# Prepare new dataset
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new_data = pd.read_csv('new_data.csv')
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# Predict enrollment
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predictions = model.predict(new_data)
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