The type-safe method that ML developers need to implement when writing new Estimators.
The type-safe method that ML developers need to implement when writing new Estimators.
The estimator's training data.
A new transformer
Number of centers to estimate.
Constructs a pipeline that fits this estimator to training data, then applies the resultant transformer to the Pipeline input.
Constructs a pipeline that fits this estimator to training data, then applies the resultant transformer to the Pipeline input.
The training data
A pipeline that fits this estimator and applies the result to inputs.
Constructs a pipeline that fits this estimator to training data, then applies the resultant transformer to the Pipeline input.
Constructs a pipeline that fits this estimator to training data, then applies the resultant transformer to the Pipeline input.
The training data
A pipeline that fits this estimator and applies the result to inputs.
Trains either a scala or an
enceval
Fisher Vector implementation, via estimating a GMM by treating each column of the inputs as a separate DenseVector input to GaussianMixtureModelEstimatorAutomatically decides which implementation to use when node-level optimization is enabled.
Number of centers to estimate.