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Search Space Zoo

DartsCell

DartsCell is extracted from :githublink:`CNN model <examples/nas/darts>`. A DartsCell is a directed acyclic graph containing an ordered sequence of N nodes and each node stands for a latent representation (e.g. feature map in a convolutional network). Directed edges from Node 1 to Node 2 are associated with some operations that transform Node 1 and the result is stored on Node 2. The Candidate operators between nodes is predefined and unchangeable. One edge represents an operation that chosen from the predefined ones to be applied to the starting node of the edge. One cell contains two input nodes, a single output node, and other n_node nodes. The input nodes are defined as the cell outputs in the previous two layers. The output of the cell is obtained by applying a reduction operation (e.g. concatenation) to all the intermediate nodes. To make the search space continuous, the categorical choice of a particular operation is relaxed to a softmax over all possible operations. By adjusting the weight of softmax on every node, the operation with the highest probability is chosen to be part of the final structure. A CNN model can be formed by stacking several cells together, which builds a search space. Note that, in DARTS paper all cells in the model share the same structure.

One structure in the Darts search space is shown below. Note that, NNI merges the last one of the four intermediate nodes and the output node.

The predefined operators are shown here.

..  autoclass:: nni.nas.pytorch.search_space_zoo.DartsCell
    :members:

Example code

:githublink:`example code <examples/nas/search_space_zoo/darts_example.py>`

git clone https://github.com/Microsoft/nni.git
cd nni/examples/nas/search_space_zoo
# search the best structure
python3 darts_example.py

Candidate operators

All supported operators for Darts are listed below.

  • MaxPool / AvgPool

    • MaxPool: Call torch.nn.MaxPool2d. This operation applies a 2D max pooling over all input channels. Its parameters kernel_size=3 and padding=1 are fixed. The pooling result will pass through a BatchNorm2d then return as the result.

    • AvgPool: Call torch.nn.AvgPool2d. This operation applies a 2D average pooling over all input channels. Its parameters kernel_size=3 and padding=1 are fixed. The pooling result will pass through a BatchNorm2d then return as the result.

      MaxPool / AvgPool with kernel_size=3 and padding=1 followed by BatchNorm2d

..  autoclass:: nni.nas.pytorch.search_space_zoo.darts_ops.PoolBN

  • SkipConnect

    There is no operation between two nodes. Call torch.nn.Identity to forward what it gets to the output.

  • Zero operation

    There is no connection between two nodes.

  • DilConv3x3 / DilConv5x5

    DilConv3x3: (Dilated) depthwise separable Conv. It's a 3x3 depthwise convolution with C_in groups, followed by a 1x1 pointwise convolution. It reduces the amount of parameters. Input is first passed through relu, then DilConv and finally batchNorm2d. Note that the operation is not Dilated Convolution, but we follow the convention in NAS papers to name it DilConv. 3x3 DilConv has parameters kernel_size=3, padding=1 and 5x5 DilConv has parameters kernel_size=5, padding=4.

    ..  autoclass:: nni.nas.pytorch.search_space_zoo.darts_ops.DilConv
    
    
  • SepConv3x3 / SepConv5x5

    Composed of two DilConvs with fixed kernel_size=3, padding=1 or kernel_size=5, padding=2 sequentially.

    ..  autoclass:: nni.nas.pytorch.search_space_zoo.darts_ops.SepConv
    
    

ENASMicroLayer

This layer is extracted from the model designed :githublink:`here <examples/nas/enas>`. A model contains several blocks that share the same architecture. A block is made up of some normal layers and reduction layers, ENASMicroLayer is a unified implementation of the two types of layers. The only difference between the two layers is that reduction layers apply all operations with stride=2.

ENAS Micro employs a DAG with N nodes in one cell, where the nodes represent local computations, and the edges represent the flow of information between the N nodes. One cell contains two input nodes and a single output node. The following nodes choose two previous nodes as input and apply two operations from predefined ones then add them as the output of this node. For example, Node 4 chooses Node 1 and Node 3 as inputs then applies MaxPool and AvgPool on the inputs respectively, then adds and sums them as the output of Node 4. Nodes that are not served as input for any other node are viewed as the output of the layer. If there are multiple output nodes, the model will calculate the average of these nodes as the layer output.

The ENAS micro search space is shown below.

The predefined operators can be seen here.

..  autoclass:: nni.nas.pytorch.search_space_zoo.ENASMicroLayer
    :members:

The Reduction Layer is made up of two Conv operations followed by BatchNorm, each of them will output C_out//2 channels and concat them in channels as the output. The Convolution has kernel_size=1 and stride=2, and they perform alternate sampling on the input to reduce the resolution without loss of information. This layer is wrapped in ENASMicroLayer.

Example code

:githublink:`example code <examples/nas/search_space_zoo/enas_micro_example.py>`

git clone https://github.com/Microsoft/nni.git
cd nni/examples/nas/search_space_zoo
# search the best cell structure
python3 enas_micro_example.py

Candidate operators

All supported operators for ENAS micro search are listed below.

  • MaxPool / AvgPool
    • MaxPool: Call torch.nn.MaxPool2d. This operation applies a 2D max pooling over all input channels followed by BatchNorm2d. Its parameters are fixed to kernel_size=3, stride=1 and padding=1.
    • AvgPool: Call torch.nn.AvgPool2d. This operation applies a 2D average pooling over all input channels followed by BatchNorm2d. Its parameters are fixed to kernel_size=3, stride=1 and padding=1.
..  autoclass:: nni.nas.pytorch.search_space_zoo.enas_ops.Pool

  • SepConv
    • SepConvBN3x3: ReLU followed by a DilConv and BatchNorm. Convolution parameters are kernel_size=3, stride=1 and padding=1.
    • SepConvBN5x5: Do the same operation as the previous one but it has different kernel sizes and paddings, which is set to 5 and 2 respectively.
..  autoclass:: nni.nas.pytorch.search_space_zoo.enas_ops.SepConvBN

  • SkipConnect

    Call torch.nn.Identity to connect directly to the next cell.

ENASMacroLayer

In Macro search, the controller makes two decisions for each layer: i) the operation to perform on the result of the previous layer, ii) which the previous layer to connect to for SkipConnects. ENAS uses a controller to design the whole model architecture instead of one of its components. The output of operations is going to concat with the tensor of the chosen layer for SkipConnect. NNI provides predefined operators for macro search, which are listed in Candidate operators.

Part of one structure in the ENAS macro search space is shown below.

..  autoclass:: nni.nas.pytorch.search_space_zoo.ENASMacroLayer
    :members:

To describe the whole search space, NNI provides a model, which is built by stacking the layers.

..  autoclass:: nni.nas.pytorch.search_space_zoo.ENASMacroGeneralModel
    :members:

Example code

:githublink:`example code <examples/nas/search_space_zoo/enas_macro_example.py>`

git clone https://github.com/Microsoft/nni.git
cd nni/examples/nas/search_space_zoo
# search the best cell structure
python3 enas_macro_example.py

Candidate operators

All supported operators for ENAS macro search are listed below.

  • ConvBranch

    All input first passes into a StdConv, which is made up of a 1x1Conv followed by BatchNorm2d and ReLU. Then the intermediate result goes through one of the operations listed below. The final result is calculated through a BatchNorm2d and ReLU as post-procedure.

    • Separable Conv3x3: If separable=True, the cell will use SepConv instead of normal Conv operation. SepConv's kernel_size=3, stride=1 and padding=1.
    • Separable Conv5x5: SepConv's kernel_size=5, stride=1 and padding=2.
    • Normal Conv3x3: If separable=False, the cell will use a normal Conv operations with kernel_size=3, stride=1 and padding=1.
    • Normal Conv5x5: Conv's kernel_size=5, stride=1 and padding=2.
..  autoclass:: nni.nas.pytorch.search_space_zoo.enas_ops.ConvBranch

  • PoolBranch

    All input first passes into a StdConv, which is made up of a 1x1Conv followed by BatchNorm2d and ReLU. Then the intermediate goes through pooling operation followed by BatchNorm.

    • AvgPool: Call torch.nn.AvgPool2d. This operation applies a 2D average pooling over all input channels. Its parameters are fixed to kernel_size=3, stride=1 and padding=1.
    • MaxPool: Call torch.nn.MaxPool2d. This operation applies a 2D max pooling over all input channels. Its parameters are fixed to kernel_size=3, stride=1 and padding=1.
..  autoclass:: nni.nas.pytorch.search_space_zoo.enas_ops.PoolBranch

NAS-Bench-201

NAS Bench 201 defines a unified search space, which is algorithm agnostic. The predefined skeleton consists of a stack of cells that share the same architecture. Every cell contains four nodes and a DAG is formed by connecting edges among them, where the node represents the sum of feature maps and the edge stands for an operation transforming a tensor from the source node to the target node. The predefined candidate operators can be found in Candidate operators.

The search space of NAS Bench 201 is shown below.

..  autoclass:: nni.nas.pytorch.nasbench201.NASBench201Cell
    :members:

Example code

:githublink:`example code <examples/nas/search_space_zoo/nas_bench_201.py>`

# for structure searching
git clone https://github.com/Microsoft/nni.git
cd nni/examples/nas/search_space_zoo
python3 nas_bench_201.py

Candidate operators

All supported operators for NAS Bench 201 are listed below.

  • AvgPool

    If the number of input channels is not equal to the number of output channels, the input will first pass through a ReLUConvBN layer with kernel_size=1, stride=1, padding=0, and dilation=0. Call torch.nn.AvgPool2d. This operation applies a 2D average pooling over all input channels followed by BatchNorm2d. Its parameters are fixed to kernel_size=3 and padding=1.

..  autoclass:: nni.nas.pytorch.nasbench201.nasbench201_ops.Pooling
    :members:

  • Conv
    • Conv1x1: Consist of a sequence of ReLU, nn.Cinv2d and BatchNorm. The Conv operation's parameter is fixed to kernal_size=1, padding=0, and dilation=1.
    • Conv3x3: Consist of a sequence of ReLU, nn.Cinv2d and BatchNorm. The Conv operation's parameter is fixed to kernal_size=3, padding=1, and dilation=1.
..  autoclass:: nni.nas.pytorch.nasbench201.nasbench201_ops.ReLUConvBN
    :members:

  • SkipConnect

    Call torch.nn.Identity to connect directly to the next cell.

  • Zeroize

    Generate zero tensors indicating there is no connection from the source node to the target node.

..  autoclass:: nni.nas.pytorch.nasbench201.nasbench201_ops.Zero
    :members: