Source code for zoo.pipeline.api.onnx.mapper.unsqueeze

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# Copyright 2018 Analytics Zoo Authors.
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#     http://www.apache.org/licenses/LICENSE-2.0
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from zoo.pipeline.api.onnx.mapper.operator_mapper import OperatorMapper
import zoo.pipeline.api.keras.layers as zlayers
import numpy as np
from zoo.pipeline.api.autograd import Parameter
import bigdl.nn.layer as blayer
import zoo.pipeline.api.autograd as autograd


[docs]class UnsqueezeMapper(OperatorMapper): def __init__(self, node, initializer, _all_tensors): super(UnsqueezeMapper, self).__init__(node, initializer, _all_tensors) def _extract_model_inputs(self): """ :return: list of OnnxInput """ input = self._input_list[0] if isinstance(input.zvalue, np.ndarray): self.is_batch = False return [self._to_zoo_input(input, is_constant=True)] else: self.is_batch = True return [self._to_zoo_input(input)] def _to_tensor(self): data = self.model_inputs[0].zvalue dim = sorted(tuple([int(i) for i in self.onnx_attr['axes']])) for i in dim: data = autograd.expand_dims(data, axis=i) return data