# 比较与torch.flatten的功能差异 [![查看源文件](https://mindspore-website.obs.cn-north-4.myhuaweicloud.com/website-images/r1.7/resource/_static/logo_source.png)](https://gitee.com/mindspore/docs/blob/r1.7/docs/mindspore/source_zh_cn/note/api_mapping/pytorch_diff/Flatten.md) ## torch.flatten ```python torch.flatten( input, start_dim=0, end_dim=-1 ) ``` 更多内容详见[torch.flatten](https://pytorch.org/docs/1.5.0/torch.html#torch.flatten)。 ## mindspore.ops.Flatten ```python class mindspore.ops.Flatten(*args, **kwargs)(input_x) ``` 更多内容详见[mindspore.ops.Flatten](https://mindspore.cn/docs/zh-CN/r1.7/api_python/ops/mindspore.ops.Flatten.html#mindspore.ops.Flatten)。 ## 使用方式 PyTorch:支持指定维度对元素进行展开。 MindSpore:仅支持保留第0维元素,对其余维度的元素进行展开。 ## 代码示例 ```python import mindspore from mindspore import Tensor import mindspore.ops as ops import torch import numpy as np # In MindSpore, only the 0th dimension will be reserved and the rest will be flattened. input_tensor = Tensor(np.ones(shape=[1, 2, 3, 4]), mindspore.float32) flatten = ops.Flatten() output = flatten(input_tensor) print(output.shape) # Out: # (1, 24) # In torch, the dimension to reserve will be specified and the rest will be flattened. input_tensor = torch.Tensor(np.ones(shape=[1, 2, 3, 4])) output1 = torch.flatten(input=input_tensor, start_dim=1) print(output1.shape) # Out: # torch.Size([1, 24]) input_tensor = torch.Tensor(np.ones(shape=[1, 2, 3, 4])) output2 = torch.flatten(input=input_tensor, start_dim=2) print(output2.shape) # Out: # torch.Size([1, 2, 12]) ```