.. DO NOT EDIT. .. THIS FILE WAS AUTOMATICALLY GENERATED BY SPHINX-GALLERY. .. TO MAKE CHANGES, EDIT THE SOURCE PYTHON FILE: .. "tutorials/hello_nas.py" .. LINE NUMBERS ARE GIVEN BELOW. .. only:: html .. note:: :class: sphx-glr-download-link-note Click :ref:`here ` to download the full example code .. rst-class:: sphx-glr-example-title .. _sphx_glr_tutorials_hello_nas.py: Hello, NAS! =========== This is the 101 tutorial of Neural Architecture Search (NAS) on NNI. In this tutorial, we will search for a neural architecture on MNIST dataset with the help of NAS framework of NNI, i.e., *Retiarii*. We use multi-trial NAS as an example to show how to construct and explore a model space. There are mainly three crucial components for a neural architecture search task, namely, * Model search space that defines a set of models to explore. * A proper strategy as the method to explore this model space. * A model evaluator that reports the performance of every model in the space. Currently, PyTorch is the only supported framework by Retiarii, and we have only tested **PyTorch 1.7 to 1.10**. This tutorial assumes PyTorch context but it should also apply to other frameworks, which is in our future plan. Define your Model Space ----------------------- Model space is defined by users to express a set of models that users want to explore, which contains potentially good-performing models. In this framework, a model space is defined with two parts: a base model and possible mutations on the base model. .. GENERATED FROM PYTHON SOURCE LINES 26-34 Define Base Model ^^^^^^^^^^^^^^^^^ Defining a base model is almost the same as defining a PyTorch (or TensorFlow) model. Usually, you only need to replace the code ``import torch.nn as nn`` with ``import nni.retiarii.nn.pytorch as nn`` to use our wrapped PyTorch modules. Below is a very simple example of defining a base model. .. GENERATED FROM PYTHON SOURCE LINES 35-61 .. code-block:: default import torch import torch.nn.functional as F import nni.retiarii.nn.pytorch as nn from nni.retiarii import model_wrapper @model_wrapper # this decorator should be put on the out most class Net(nn.Module): def __init__(self): super().__init__() self.conv1 = nn.Conv2d(1, 32, 3, 1) self.conv2 = nn.Conv2d(32, 64, 3, 1) self.dropout1 = nn.Dropout(0.25) self.dropout2 = nn.Dropout(0.5) self.fc1 = nn.Linear(9216, 128) self.fc2 = nn.Linear(128, 10) def forward(self, x): x = F.relu(self.conv1(x)) x = F.max_pool2d(self.conv2(x), 2) x = torch.flatten(self.dropout1(x), 1) x = self.fc2(self.dropout2(F.relu(self.fc1(x)))) output = F.log_softmax(x, dim=1) return output .. GENERATED FROM PYTHON SOURCE LINES 62-104 .. tip:: Always keep in mind that you should use ``import nni.retiarii.nn.pytorch as nn`` and :meth:`nni.retiarii.model_wrapper`. Many mistakes are a result of forgetting one of those. Also, please use ``torch.nn`` for submodules of ``nn.init``, e.g., ``torch.nn.init`` instead of ``nn.init``. Define Model Mutations ^^^^^^^^^^^^^^^^^^^^^^ A base model is only one concrete model not a model space. We provide :doc:`API and Primitives ` for users to express how the base model can be mutated. That is, to build a model space which includes many models. Based on the above base model, we can define a model space as below. .. code-block:: diff @model_wrapper class Net(nn.Module): def __init__(self): super().__init__() self.conv1 = nn.Conv2d(1, 32, 3, 1) - self.conv2 = nn.Conv2d(32, 64, 3, 1) + self.conv2 = nn.LayerChoice([ + nn.Conv2d(32, 64, 3, 1), + DepthwiseSeparableConv(32, 64) + ]) - self.dropout1 = nn.Dropout(0.25) + self.dropout1 = nn.Dropout(nn.ValueChoice([0.25, 0.5, 0.75])) self.dropout2 = nn.Dropout(0.5) - self.fc1 = nn.Linear(9216, 128) - self.fc2 = nn.Linear(128, 10) + feature = nn.ValueChoice([64, 128, 256]) + self.fc1 = nn.Linear(9216, feature) + self.fc2 = nn.Linear(feature, 10) def forward(self, x): x = F.relu(self.conv1(x)) x = F.max_pool2d(self.conv2(x), 2) x = torch.flatten(self.dropout1(x), 1) x = self.fc2(self.dropout2(F.relu(self.fc1(x)))) output = F.log_softmax(x, dim=1) return output This results in the following code: .. GENERATED FROM PYTHON SOURCE LINES 104-147 .. code-block:: default class DepthwiseSeparableConv(nn.Module): def __init__(self, in_ch, out_ch): super().__init__() self.depthwise = nn.Conv2d(in_ch, in_ch, kernel_size=3, groups=in_ch) self.pointwise = nn.Conv2d(in_ch, out_ch, kernel_size=1) def forward(self, x): return self.pointwise(self.depthwise(x)) @model_wrapper class ModelSpace(nn.Module): def __init__(self): super().__init__() self.conv1 = nn.Conv2d(1, 32, 3, 1) # LayerChoice is used to select a layer between Conv2d and DwConv. self.conv2 = nn.LayerChoice([ nn.Conv2d(32, 64, 3, 1), DepthwiseSeparableConv(32, 64) ]) # ValueChoice is used to select a dropout rate. # ValueChoice can be used as parameter of modules wrapped in `nni.retiarii.nn.pytorch` # or customized modules wrapped with `@basic_unit`. self.dropout1 = nn.Dropout(nn.ValueChoice([0.25, 0.5, 0.75])) # choose dropout rate from 0.25, 0.5 and 0.75 self.dropout2 = nn.Dropout(0.5) feature = nn.ValueChoice([64, 128, 256]) self.fc1 = nn.Linear(9216, feature) self.fc2 = nn.Linear(feature, 10) def forward(self, x): x = F.relu(self.conv1(x)) x = F.max_pool2d(self.conv2(x), 2) x = torch.flatten(self.dropout1(x), 1) x = self.fc2(self.dropout2(F.relu(self.fc1(x)))) output = F.log_softmax(x, dim=1) return output model_space = ModelSpace() model_space .. rst-class:: sphx-glr-script-out Out: .. code-block:: none ModelSpace( (conv1): Conv2d(1, 32, kernel_size=(3, 3), stride=(1, 1)) (conv2): LayerChoice([Conv2d(32, 64, kernel_size=(3, 3), stride=(1, 1)), DepthwiseSeparableConv( (depthwise): Conv2d(32, 32, kernel_size=(3, 3), stride=(1, 1), groups=32) (pointwise): Conv2d(32, 64, kernel_size=(1, 1), stride=(1, 1)) )], label='model_1') (dropout1): Dropout(p=0.25, inplace=False) (dropout2): Dropout(p=0.5, inplace=False) (fc1): Linear(in_features=9216, out_features=64, bias=True) (fc2): Linear(in_features=64, out_features=10, bias=True) ) .. GENERATED FROM PYTHON SOURCE LINES 148-178 This example uses two mutation APIs, ``nn.LayerChoice`` and ``nn.ValueChoice``. ``nn.LayerChoice`` takes a list of candidate modules (two in this example), one will be chosen for each sampled model. It can be used like normal PyTorch module. ``nn.ValueChoice`` takes a list of candidate values, one will be chosen to take effect for each sampled model. More detailed API description and usage can be found :doc:`here `. .. note:: We are actively enriching the mutation APIs, to facilitate easy construction of model space. If the currently supported mutation APIs cannot express your model space, please refer to :doc:`this doc ` for customizing mutators. Explore the Defined Model Space ------------------------------- There are basically two exploration approaches: (1) search by evaluating each sampled model independently, which is the search approach in :ref:`multi-trial NAS ` and (2) one-shot weight-sharing based search, which is used in one-shot NAS. We demonstrate the first approach in this tutorial. Users can refer to :ref:`here ` for the second approach. First, users need to pick a proper exploration strategy to explore the defined model space. Second, users need to pick or customize a model evaluator to evaluate the performance of each explored model. Pick an exploration strategy ^^^^^^^^^^^^^^^^^^^^^^^^^^^^ Retiarii supports many :doc:`exploration strategies `. Simply choosing (i.e., instantiate) an exploration strategy as below. .. GENERATED FROM PYTHON SOURCE LINES 178-182 .. code-block:: default import nni.retiarii.strategy as strategy search_strategy = strategy.Random(dedup=True) # dedup=False if deduplication is not wanted .. rst-class:: sphx-glr-script-out Out: .. code-block:: none [2022-02-28 14:01:11] INFO (hyperopt.utils/MainThread) Failed to load dill, try installing dill via "pip install dill" for enhanced pickling support. [2022-02-28 14:01:11] INFO (hyperopt.fmin/MainThread) Failed to load dill, try installing dill via "pip install dill" for enhanced pickling support. /home/yugzhan/miniconda3/envs/cu102/lib/python3.8/site-packages/ray/autoscaler/_private/cli_logger.py:57: FutureWarning: Not all Ray CLI dependencies were found. In Ray 1.4+, the Ray CLI, autoscaler, and dashboard will only be usable via `pip install 'ray[default]'`. Please update your install command. warnings.warn( .. GENERATED FROM PYTHON SOURCE LINES 183-195 Pick or customize a model evaluator ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ In the exploration process, the exploration strategy repeatedly generates new models. A model evaluator is for training and validating each generated model to obtain the model's performance. The performance is sent to the exploration strategy for the strategy to generate better models. Retiarii has provided :doc:`built-in model evaluators `, but to start with, it is recommended to use ``FunctionalEvaluator``, that is, to wrap your own training and evaluation code with one single function. This function should receive one single model class and uses ``nni.report_final_result`` to report the final score of this model. An example here creates a simple evaluator that runs on MNIST dataset, trains for 2 epochs, and reports its validation accuracy. .. GENERATED FROM PYTHON SOURCE LINES 195-263 .. code-block:: default import nni from torchvision import transforms from torchvision.datasets import MNIST from torch.utils.data import DataLoader def train_epoch(model, device, train_loader, optimizer, epoch): loss_fn = torch.nn.CrossEntropyLoss() model.train() for batch_idx, (data, target) in enumerate(train_loader): data, target = data.to(device), target.to(device) optimizer.zero_grad() output = model(data) loss = loss_fn(output, target) loss.backward() optimizer.step() if batch_idx % 10 == 0: print('Train Epoch: {} [{}/{} ({:.0f}%)]\tLoss: {:.6f}'.format( epoch, batch_idx * len(data), len(train_loader.dataset), 100. * batch_idx / len(train_loader), loss.item())) def test_epoch(model, device, test_loader): model.eval() test_loss = 0 correct = 0 with torch.no_grad(): for data, target in test_loader: data, target = data.to(device), target.to(device) output = model(data) pred = output.argmax(dim=1, keepdim=True) correct += pred.eq(target.view_as(pred)).sum().item() test_loss /= len(test_loader.dataset) accuracy = 100. * correct / len(test_loader.dataset) print('\nTest set: Accuracy: {}/{} ({:.0f}%)\n'.format( correct, len(test_loader.dataset), accuracy)) return accuracy def evaluate_model(model_cls): # "model_cls" is a class, need to instantiate model = model_cls() device = torch.device('cuda') if torch.cuda.is_available() else torch.device('cpu') model.to(device) optimizer = torch.optim.Adam(model.parameters(), lr=1e-3) transf = transforms.Compose([transforms.ToTensor(), transforms.Normalize((0.1307,), (0.3081,))]) train_loader = DataLoader(MNIST('data/mnist', download=True, transform=transf), batch_size=64, shuffle=True) test_loader = DataLoader(MNIST('data/mnist', download=True, train=False, transform=transf), batch_size=64) for epoch in range(3): # train the model for one epoch train_epoch(model, device, train_loader, optimizer, epoch) # test the model for one epoch accuracy = test_epoch(model, device, test_loader) # call report intermediate result. Result can be float or dict nni.report_intermediate_result(accuracy) # report final test result nni.report_final_result(accuracy) .. GENERATED FROM PYTHON SOURCE LINES 264-265 Create the evaluator .. GENERATED FROM PYTHON SOURCE LINES 265-269 .. code-block:: default from nni.retiarii.evaluator import FunctionalEvaluator evaluator = FunctionalEvaluator(evaluate_model) .. GENERATED FROM PYTHON SOURCE LINES 270-280 The ``train_epoch`` and ``test_epoch`` here can be any customized function, where users can write their own training recipe. It is recommended that the :doc:``evaluate_model`` here accepts no additional arguments other than ``model_cls``. However, in the `advanced tutorial `, we will show how to use additional arguments in case you actually need those. In future, we will support mutation on the arguments of evaluators, which is commonly called "Hyper-parmeter tuning". Launch an Experiment -------------------- After all the above are prepared, it is time to start an experiment to do the model search. An example is shown below. .. GENERATED FROM PYTHON SOURCE LINES 281-287 .. code-block:: default from nni.retiarii.experiment.pytorch import RetiariiExperiment, RetiariiExeConfig exp = RetiariiExperiment(model_space, evaluator, [], search_strategy) exp_config = RetiariiExeConfig('local') exp_config.experiment_name = 'mnist_search' .. GENERATED FROM PYTHON SOURCE LINES 288-289 The following configurations are useful to control how many trials to run at most / at the same time. .. GENERATED FROM PYTHON SOURCE LINES 289-293 .. code-block:: default exp_config.max_trial_number = 4 # spawn 4 trials at most exp_config.trial_concurrency = 2 # will run two trials concurrently .. GENERATED FROM PYTHON SOURCE LINES 294-296 Remember to set the following config if you want to GPU. ``use_active_gpu`` should be set true if you wish to use an occupied GPU (possibly running a GUI). .. GENERATED FROM PYTHON SOURCE LINES 296-300 .. code-block:: default exp_config.trial_gpu_number = 1 exp_config.training_service.use_active_gpu = True .. GENERATED FROM PYTHON SOURCE LINES 301-302 Launch the experiment. The experiment should take several minutes to finish on a workstation with 2 GPUs. .. GENERATED FROM PYTHON SOURCE LINES 302-305 .. code-block:: default exp.run(exp_config, 8081) .. rst-class:: sphx-glr-script-out Out: .. code-block:: none [2022-02-28 14:01:13] INFO (nni.experiment/MainThread) Creating experiment, Experiment ID: dt84p16a [2022-02-28 14:01:13] INFO (nni.experiment/MainThread) Connecting IPC pipe... [2022-02-28 14:01:14] INFO (nni.experiment/MainThread) Starting web server... [2022-02-28 14:01:15] INFO (nni.experiment/MainThread) Setting up... [2022-02-28 14:01:15] INFO (nni.runtime.msg_dispatcher_base/Thread-3) Dispatcher started [2022-02-28 14:01:15] INFO (nni.retiarii.experiment.pytorch/MainThread) Web UI URLs: http://127.0.0.1:8081 http://10.190.172.35:8081 http://192.168.49.1:8081 http://172.17.0.1:8081 [2022-02-28 14:01:15] INFO (nni.retiarii.experiment.pytorch/MainThread) Start strategy... [2022-02-28 14:01:15] INFO (root/MainThread) Successfully update searchSpace. [2022-02-28 14:01:15] INFO (nni.retiarii.strategy.bruteforce/MainThread) Random search running in fixed size mode. Dedup: on. [2022-02-28 14:05:16] INFO (nni.retiarii.experiment.pytorch/Thread-4) Stopping experiment, please wait... [2022-02-28 14:05:16] INFO (nni.retiarii.experiment.pytorch/MainThread) Strategy exit [2022-02-28 14:05:16] INFO (nni.retiarii.experiment.pytorch/MainThread) Waiting for experiment to become DONE (you can ctrl+c if there is no running trial jobs)... [2022-02-28 14:05:17] INFO (nni.runtime.msg_dispatcher_base/Thread-3) Dispatcher exiting... [2022-02-28 14:05:17] INFO (nni.retiarii.experiment.pytorch/Thread-4) Experiment stopped .. GENERATED FROM PYTHON SOURCE LINES 306-324 Users can also run Retiarii Experiment with :doc:`different training services ` besides ``local`` training service. Visualize the Experiment ------------------------ Users can visualize their experiment in the same way as visualizing a normal hyper-parameter tuning experiment. For example, open ``localhost:8081`` in your browser, 8081 is the port that you set in ``exp.run``. Please refer to :doc:`here ` for details. We support visualizing models with 3rd-party visualization engines (like `Netron `__). This can be used by clicking ``Visualization`` in detail panel for each trial. Note that current visualization is based on `onnx `__ , thus visualization is not feasible if the model cannot be exported into onnx. Built-in evaluators (e.g., Classification) will automatically export the model into a file. For your own evaluator, you need to save your file into ``$NNI_OUTPUT_DIR/model.onnx`` to make this work. For instance, .. GENERATED FROM PYTHON SOURCE LINES 324-338 .. code-block:: default import os from pathlib import Path def evaluate_model_with_visualization(model_cls): model = model_cls() # dump the model into an onnx if 'NNI_OUTPUT_DIR' in os.environ: dummy_input = torch.zeros(1, 3, 32, 32) torch.onnx.export(model, (dummy_input, ), Path(os.environ['NNI_OUTPUT_DIR']) / 'model.onnx') evaluate_model(model_cls) .. GENERATED FROM PYTHON SOURCE LINES 339-347 Relaunch the experiment, and a button is shown on WebUI. .. image:: ../../img/netron_entrance_webui.png Export Top Models ----------------- Users can export top models after the exploration is done using ``export_top_models``. .. GENERATED FROM PYTHON SOURCE LINES 347-359 .. code-block:: default for model_dict in exp.export_top_models(formatter='dict'): print(model_dict) # The output is `json` object which records the mutation actions of the top model. # If users want to output source code of the top model, they can use graph-based execution engine for the experiment, # by simply adding the following two lines. # # .. code-block:: python # # exp_config.execution_engine = 'base' # export_formatter = 'code' .. rst-class:: sphx-glr-script-out Out: .. code-block:: none {'model_1': '0', 'model_2': 0.25, 'model_3': 128} .. rst-class:: sphx-glr-timing **Total running time of the script:** ( 4 minutes 6.818 seconds) .. _sphx_glr_download_tutorials_hello_nas.py: .. only :: html .. container:: sphx-glr-footer :class: sphx-glr-footer-example .. container:: sphx-glr-download sphx-glr-download-python :download:`Download Python source code: hello_nas.py ` .. container:: sphx-glr-download sphx-glr-download-jupyter :download:`Download Jupyter notebook: hello_nas.ipynb ` .. only:: html .. rst-class:: sphx-glr-signature `Gallery generated by Sphinx-Gallery `_