Tune a Sequence-to-Sequence Model - Amazon SageMaker
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Tune a Sequence-to-Sequence Model

Automatic model tuning, also known as hyperparameter tuning, finds the best version of a model by running many jobs that test a range of hyperparameters on your dataset. You choose the tunable hyperparameters, a range of values for each, and an objective metric. You choose the objective metric from the metrics that the algorithm computes. Automatic model tuning searches the hyperparameters chosen to find the combination of values that result in the model that optimizes the objective metric.

For more information about model tuning, see Perform automatic model tuning with SageMaker.

Metrics Computed by the Sequence-to-Sequence Algorithm

The sequence to sequence algorithm reports three metrics that are computed during training. Choose one of them as an objective to optimize when tuning the hyperparameter values.

Metric Name Description Optimization Direction
validation:accuracy

Accuracy computed on the validation dataset.

Maximize

validation:bleu

Bleu score computed on the validation dataset. Because BLEU computation is expensive, you can choose to compute BLEU on a random subsample of the validation dataset to speed up the overall training process. Use the bleu_sample_size parameter to specify the subsample.

Maximize

validation:perplexity

Perplexity, is a loss function computed on the validation dataset. Perplexity measures the cross-entropy between an empirical sample and the distribution predicted by a model and so provides a measure of how well a model predicts the sample values, Models that are good at predicting a sample have a low perplexity.

Minimize

Tunable Sequence-to-Sequence Hyperparameters

You can tune the following hyperparameters for the SageMaker Sequence to Sequence algorithm. The hyperparameters that have the greatest impact on sequence to sequence objective metrics are: batch_size, optimizer_type, learning_rate, num_layers_encoder, and num_layers_decoder.

Parameter Name Parameter Type Recommended Ranges
num_layers_encoder

IntegerParameterRange

[1-10]

num_layers_decoder

IntegerParameterRange

[1-10]

batch_size

CategoricalParameterRange

[16,32,64,128,256,512,1024,2048]

optimizer_type

CategoricalParameterRange

['adam', 'sgd', 'rmsprop']

weight_init_type

CategoricalParameterRange

['xavier', 'uniform']

weight_init_scale

ContinuousParameterRange

For the xavier type: MinValue: 2.0, MaxValue: 3.0 For the uniform type: MinValue: -1.0, MaxValue: 1.0

learning_rate

ContinuousParameterRange

MinValue: 0.00005, MaxValue: 0.2

weight_decay

ContinuousParameterRange

MinValue: 0.0, MaxValue: 0.1

momentum

ContinuousParameterRange

MinValue: 0.5, MaxValue: 0.9

clip_gradient

ContinuousParameterRange

MinValue: 1.0, MaxValue: 5.0

rnn_num_hidden

CategoricalParameterRange

Applicable only to recurrent neural networks (RNNs). [128,256,512,1024,2048]

cnn_num_hidden

CategoricalParameterRange

Applicable only to convolutional neural networks (CNNs). [128,256,512,1024,2048]

num_embed_source

IntegerParameterRange

[256-512]

num_embed_target

IntegerParameterRange

[256-512]

embed_dropout_source

ContinuousParameterRange

MinValue: 0.0, MaxValue: 0.5

embed_dropout_target

ContinuousParameterRange

MinValue: 0.0, MaxValue: 0.5

rnn_decoder_hidden_dropout

ContinuousParameterRange

MinValue: 0.0, MaxValue: 0.5

cnn_hidden_dropout

ContinuousParameterRange

MinValue: 0.0, MaxValue: 0.5

lr_scheduler_type

CategoricalParameterRange

['plateau_reduce', 'fixed_rate_inv_t', 'fixed_rate_inv_sqrt_t']

plateau_reduce_lr_factor

ContinuousParameterRange

MinValue: 0.1, MaxValue: 0.5

plateau_reduce_lr_threshold

IntegerParameterRange

[1-5]

fixed_rate_lr_half_life

IntegerParameterRange

[10-30]