# 比较与torch.min的功能差异 [![查看源文件](https://mindspore-website.obs.cn-north-4.myhuaweicloud.com/website-images/r2.0/resource/_static/logo_source.png)](https://gitee.com/mindspore/docs/blob/r2.0/docs/mindspore/source_zh_cn/note/api_mapping/pytorch_diff/min.md) ## torch.min ```python torch.min(input, dim, keepdim=False, *, out=None) ``` 更多内容详见[torch.min](https://pytorch.org/docs/1.8.1/torch.html#torch.min)。 ## mindspore.ops.min ```python mindspore.ops.min(input, axis=None, keepdims=False, *, initial=None, where=None) ``` 更多内容详见[mindspore.ops.min](https://mindspore.cn/docs/zh-CN/r2.0/api_python/ops/mindspore.ops.min.html)。 ## 差异对比 PyTorch:输出为元组(最大值, 最大值的索引)。 MindSpore:axis为None或者shape为空时,keepdims以及后面的参数均不生效,功能与torch.min(input)一致,此时索引固定返回0;否则,输出为元组(最大值, 最大值的索引),功能与torch.min(input, dim, keepdim=False, *, out=None)一致。 | 分类 | 子类 |PyTorch | MindSpore | 差异 | | --- | --- | --- | --- |---| |参数 | 参数1 | input | input | 一致 | | | 参数2 | dim | axis | 功能一致,参数名不同| | | 参数3 | keepdim | keepdims | 功能一致,参数名不同 | | | 参数4 | - |initial | 不涉及 | | | 参数5 | - |where | 不涉及 | | | 参数6 | out | - | 不涉及 | ## 代码示例 ```python import mindspore as ms import mindspore.ops as ops import torch import numpy as np np_x = np.array([[-0.0081, -0.3283, -0.7814, -0.0934], [1.4201, -0.3566, -0.3848, -0.1608], [-0.0446, -0.1843, -1.1348, 0.5722], [-0.6668, -0.2368, 0.2790, 0.0453]]).astype(np.float32) # mindspore input_x = ms.Tensor(np_x) output, index = ops.min(input_x, axis=1) print(output) # [-0.7814 -0.3848 -1.1348 -0.6668] print(index) # [2 2 2 0] # torch input_x = torch.tensor(np_x) output, index = torch.min(input_x, dim=1) print(output) # tensor([-0.7814, -0.3848, -1.1348, -0.6668]) print(index) # tensor([2, 2, 2, 0]) ```