rsample
Choose hyperparameters for a model by training on a grid of many possible parameter values.
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Create and train different kinds of regression models with different computational engines.
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Train a classification model and evaluate its performance.
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Estimate the best hyperparameters for a model using nested resampling.
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Apply bootstrap resampling to estimate uncertainty in model parameters.
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Calculate performance estimates for time series forecasts using resampling.
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Prepare text data for predictive modeling and tune with both grid and iterative search.
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Assess how accurate a model is when aggregating predictions to different spatial scales.
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Build and fit a predictive model with more than one outcome.
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