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NNI provides a lot of builtin tuners, advisors and assessors can be used directly for Hyper Parameter Optimization, and some extra algorithms can be registered via nnictl algo register --meta <path_to_meta_file>
after NNI is installed. You can check builtin algorithms via nnictl algo list
command.
NNI also provides the ability to build your own customized tuners, advisors and assessors. To use the customized algorithm, users can simply follow the spec in experiment config file to properly reference the algorithm, which has been illustrated in the tutorials of customized tuners / advisors / assessors.
NNI also allows users to install the customized algorithm as a builtin algorithm, in order for users to use the algorithm in the same way as NNI builtin tuners/advisors/assessors. More importantly, it becomes much easier for users to share or distribute their implemented algorithm to others. Customized tuners/advisors/assessors can be installed into NNI as builtin algorithms, once they are installed into NNI, you can use your customized algorithms the same way as builtin tuners/advisors/assessors in your experiment configuration file. For example, you built a customized tuner and installed it into NNI using a builtin name mytuner
, then you can use this tuner in your configuration file like below:
tuner:
builtinTunerName: mytuner
You can follow below steps to build a customized tuner/assessor/advisor, and register it into NNI as builtin algorithm.
Reference following instructions to create:
NNI provides a ClassArgsValidator
interface for customized algorithms author to validate the classArgs parameters in experiment configuration file which are passed to customized algorithms constructors.
The ClassArgsValidator
interface is defined as:
class ClassArgsValidator(object):
def validate_class_args(self, **kwargs):
"""
The classArgs fields in experiment configuration are packed as a dict and
passed to validator as kwargs.
"""
pass
For example, you can implement your validator such as:
from schema import Schema, Optional
from nni import ClassArgsValidator
class MedianstopClassArgsValidator(ClassArgsValidator):
def validate_class_args(self, **kwargs):
Schema({
Optional('optimize_mode'): self.choices('optimize_mode', 'maximize', 'minimize'),
Optional('start_step'): self.range('start_step', int, 0, 9999),
}).validate(kwargs)
The validator will be invoked before experiment is started to check whether the classArgs fields are valid for your customized algorithms.
Firstly, the customized algorithms need to be prepared as a python package. Then you can install the package into python environment via:
- Run command
python setup.py develop
from the package directory, this command will install the package in development mode, this is recommended if your algorithm is under development. - Run command
python setup.py bdist_wheel
from the package directory, this command build a whl file which is a pip installation source. Then runpip install <wheel file>
to install it.
Create a yaml file with following keys as meta file:
algoType
: type of algorithms, could be one oftuner
,assessor
,advisor
builtinName
: builtin name used in experiment configuration file- className: tuner class name, including its module name, for example:
demo_tuner.DemoTuner
- classArgsValidator: class args validator class name, including its module name, for example:
demo_tuner.MyClassArgsValidator
Following is an example of the yaml file:
algoType: tuner
builtinName: demotuner
className: demo_tuner.DemoTuner
classArgsValidator: demo_tuner.MyClassArgsValidator
Run following command to register the customized algorithms as builtin algorithms in NNI:
nnictl algo register --meta <path_to_meta_file>
The <path_to_meta_file>
is the path to the yaml file your created in above section.
Reference customized tuner example for a full example.
Once your customized algorithms is installed, you can use it in experiment configuration file the same way as other builtin tuners/assessors/advisors, for example:
tuner:
builtinTunerName: demotuner
classArgs:
#choice: maximize, minimize
optimize_mode: maximize
Run following command to list the registered builtin algorithms:
nnictl algo list
+-----------------+------------+-----------+--------=-------------+------------------------------------------+
| Name | Type | Source | Class Name | Module Name |
+-----------------+------------+-----------+----------------------+------------------------------------------+
| TPE | tuners | nni | HyperoptTuner | nni.hyperopt_tuner.hyperopt_tuner |
| Random | tuners | nni | HyperoptTuner | nni.hyperopt_tuner.hyperopt_tuner |
| Anneal | tuners | nni | HyperoptTuner | nni.hyperopt_tuner.hyperopt_tuner |
| Evolution | tuners | nni | EvolutionTuner | nni.evolution_tuner.evolution_tuner |
| BatchTuner | tuners | nni | BatchTuner | nni.batch_tuner.batch_tuner |
| GridSearch | tuners | nni | GridSearchTuner | nni.gridsearch_tuner.gridsearch_tuner |
| NetworkMorphism | tuners | nni | NetworkMorphismTuner | nni.networkmorphism_tuner.networkmo... |
| MetisTuner | tuners | nni | MetisTuner | nni.metis_tuner.metis_tuner |
| GPTuner | tuners | nni | GPTuner | nni.gp_tuner.gp_tuner |
| PBTTuner | tuners | nni | PBTTuner | nni.pbt_tuner.pbt_tuner |
| SMAC | tuners | nni | SMACTuner | nni.smac_tuner.smac_tuner |
| PPOTuner | tuners | nni | PPOTuner | nni.ppo_tuner.ppo_tuner |
| Medianstop | assessors | nni | MedianstopAssessor | nni.medianstop_assessor.medianstop_... |
| Curvefitting | assessors | nni | CurvefittingAssessor | nni.curvefitting_assessor.curvefitt... |
| Hyperband | advisors | nni | Hyperband | nni.hyperband_advisor.hyperband_adv... |
| BOHB | advisors | nni | BOHB | nni.bohb_advisor.bohb_advisor |
+-----------------+------------+-----------+----------------------+------------------------------------------+
Run following command to uninstall an installed package:
nnictl algo unregister <builtin name>
For example:
nnictl algo unregister demotuner
All that needs to be modified is to delete NNI Package :: tuner
metadata in setup.py
and add a meta file mentioned in 4. Prepare meta file. Then you can follow Register customized algorithms as builtin tuners, assessors and advisors to register your customized algorithms.
You can following below steps to register a customized tuner in nni/examples/tuners/customized_tuner
as a builtin tuner.
There are 2 options to install the package into python environment:
From nni/examples/tuners/customized_tuner
directory, run:
python setup.py develop
This command will build the nni/examples/tuners/customized_tuner
directory as a pip installation source.
Step 1: From nni/examples/tuners/customized_tuner
directory, run:
python setup.py bdist_wheel
This command build a whl file which is a pip installation source.
Step 2: Run command:
pip install dist/demo_tuner-0.1-py3-none-any.whl
Run following command:
nnictl algo register --meta meta_file.yml
Then run command nnictl algo list
, you should be able to see that demotuner is installed:
+-----------------+------------+-----------+--------=-------------+------------------------------------------+
| Name | Type | source | Class Name | Module Name |
+-----------------+------------+-----------+----------------------+------------------------------------------+
| demotuner | tuners | User | DemoTuner | demo_tuner |
+-----------------+------------+-----------+----------------------+------------------------------------------+