Since nni v2.0
, we provide a new way to launch experiments. Before that, you need to configure the experiment in the yaml configuration file and then use the experiment nnictl
command to launch the experiment. Now, you can also configure and run experiments directly in python file. If you are familiar with python programming, this will undoubtedly bring you more convenience.
After successfully installing nni
, you can start the experiment with a python script in the following 3 steps.
from nni.algorithms.hpo.hyperopt_tuner import HyperoptTuner
tuner = HyperoptTuner('tpe')
Very simple, you have successfully initialized a HyperoptTuner
instance called tuner
.
See all real builtin tuners supported in NNI.
experiment = Experiment(tuner=tuner, training_service='local')
Now, you have a Experiment
instance with tuner
you have initialized in the previous step, and this experiment will launch trials on your local machine due to training_service='local'
.
See all training services supported in NNI.
experiment.config.experiment_name = 'test'
experiment.config.trial_concurrency = 2
experiment.config.max_trial_number = 5
experiment.config.search_space = search_space
experiment.config.trial_command = 'python3 mnist.py'
experiment.config.trial_code_directory = Path(__file__).parent
experiment.config.training_service.use_active_gpu = True
Use the form like experiment.config.foo = 'bar'
to configure your experiment.
See parameter configuration required by different training services.
experiment.run(port=8081)
Now, you have successfully launched an NNI experiment. And you can type localhost:8081
in your browser to observe your experiment in real time.
Below is an example for this new launching approach. You can also find this code in mnist-tfv2/launch.py <examples/trials/mnist-tfv2/launch.py>
.
from pathlib import Path
from nni.experiment import Experiment
from nni.algorithms.hpo.hyperopt_tuner import HyperoptTuner
tuner = HyperoptTuner('tpe')
search_space = {
"dropout_rate": { "_type": "uniform", "_value": [0.5, 0.9] },
"conv_size": { "_type": "choice", "_value": [2, 3, 5, 7] },
"hidden_size": { "_type": "choice", "_value": [124, 512, 1024] },
"batch_size": { "_type": "choice", "_value": [16, 32] },
"learning_rate": { "_type": "choice", "_value": [0.0001, 0.001, 0.01, 0.1] }
}
experiment = Experiment(tuner, 'local')
experiment.config.experiment_name = 'test'
experiment.config.trial_concurrency = 2
experiment.config.max_trial_number = 5
experiment.config.search_space = search_space
experiment.config.trial_command = 'python3 mnist.py'
experiment.config.trial_code_directory = Path(__file__).parent
experiment.config.training_service.use_active_gpu = True
experiment.run(8081)
nni.experiment.Experiment