Hyperparameter Tuning¶
Determined provides state-of-the-art hyperparameter tuning through an intuitive interface. The machine learning engineer simply runs an experiment in which they:
Configure hyperparameter ranges to search.
Instrument model code to use hyperparameters from the experiment configuration.
Specify a searcher to find effective hyperparameter settings within the predefined ranges.
Configuring Hyperparameter Ranges¶
The first step toward automatic hyperparameter tuning is to define the hyperparameter space, e.g., by listing the decisions that may impact model performance. For each hyperparameter in the search space, the machine learning engineer specifies a range of possible values in the experiment configuration:
hyperparameters:
...
dropout_probability:
type: double
minval: 0.2
maxval: 0.5
...
Determined supports the following searchable hyperparameter data types:
int
: an integer within a rangedouble
: a floating point number within a rangelog
: a logarithmically scaled floating point number—users specify abase
and Determined searches the space of exponents within a rangecategorical
: a variable that can take on a value within a specified set of values—the values themselves can be of any type
The experiment configuration reference details these data types and their associated options.
Instrumenting Model Code¶
Determined injects hyperparameters from the experiment configuration
into model code via a context object in the Trial base class. This
TrialContext
object exposes a
get_hparam()
method that
takes the hyperparameter name. At trial runtime, Determined injects a
value for the hyperparameter. For example, to inject the value of the
dropout_probability
hyperparameter defined above into the
constructor of a PyTorch Dropout layer:
nn.Dropout(p=self.context.get_hparam("dropout_probability"))
To see hyperparameter injection throughout a complete Trial implementation, refer to the Trial API: PyTorch MNIST Tutorial.
Specifying the Search Algorithm¶
Determined supports a variety of hyperparameter search algorithms. Aside from the single
searcher, a
searcher runs multiple trials and decides the hyperparameter values to
use in each trial. Every searcher is configured with the name of the
validation metric to optimize (via the metric
field), in addition to
other searcher-specific options. For example, the adaptive_simple
searcher implements adaptive downsampling, and is configured with the
maximum number of trials to run and the maximum number of training steps
allowed per trial:
searcher:
name: adaptive_simple
metric: validation_error
max_steps: 1024
max_trials: 32
For details on the supported searchers and their respective configuration options, refer to Hyperparameter Tuning With Determined.
That’s it! After submitting an experiment, users can easily see the best validation metric observed across all trials over time in the WebUI. After the experiment has completed, they can view the hyperparameter values for the best-performing trials and then export the associated model checkpoints for downstream serving.