### 逐点行动 > 译者:[ApacheCN](https://github.com/apachecn) ```py torch.abs(input, out=None) → Tensor ``` 计算给定`input`张量的逐元素绝对值。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/1a4bcc75ec995f7b04a37cccd88b214b.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/1a4bcc75ec995f7b04a37cccd88b214b.jpg) 参数: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 例: ```py >>> torch.abs(torch.tensor([-1, -2, 3])) tensor([ 1, 2, 3]) ``` ```py torch.acos(input, out=None) → Tensor ``` 返回带有`input`元素的反余弦的新张量。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/3533abc4adcb633e8fb0bfc683c437bb.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/3533abc4adcb633e8fb0bfc683c437bb.jpg) Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(4) >>> a tensor([ 0.3348, -0.5889, 0.2005, -0.1584]) >>> torch.acos(a) tensor([ 1.2294, 2.2004, 1.3690, 1.7298]) ``` ```py torch.add() ``` ```py torch.add(input, value, out=None) ``` 将标量`value`添加到输入`input`的每个元素并返回新的结果张量。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/76a7103f78e0443c4ad36bbf203db638.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/76a7103f78e0443c4ad36bbf203db638.jpg) 如果`input`的类型为FloatTensor或DoubleTensor,则`value`必须是实数,否则应为整数。 Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **值**(_号码_) - 要添加到`input`的每个元素的数字 | 关键字参数: | | --- | | ? | Example: ```py >>> a = torch.randn(4) >>> a tensor([ 0.0202, 1.0985, 1.3506, -0.6056]) >>> torch.add(a, 20) tensor([ 20.0202, 21.0985, 21.3506, 19.3944]) ``` ```py torch.add(input, value=1, other, out=None) ``` 张量`other`的每个元素乘以标量`value`并添加到张量`input`的每个元素。返回结果张量。 `input`和`other`的形状必须是[可播放的](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/notes/broadcasting.html#broadcasting-semantics)。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/bc929133d25d93686f6106f171de0de3.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/bc929133d25d93686f6106f171de0de3.jpg) 如果`other`的类型为FloatTensor或DoubleTensor,则`value`必须是实数,否则应为整数。 Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 第一个输入张量 * **值**(_数字_) - `other`的标量乘数 * **其他** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 第二个输入张量 | Keyword Arguments: | | --- | | ? | Example: ```py >>> a = torch.randn(4) >>> a tensor([-0.9732, -0.3497, 0.6245, 0.4022]) >>> b = torch.randn(4, 1) >>> b tensor([[ 0.3743], [-1.7724], [-0.5811], [-0.8017]]) >>> torch.add(a, 10, b) tensor([[ 2.7695, 3.3930, 4.3672, 4.1450], [-18.6971, -18.0736, -17.0994, -17.3216], [ -6.7845, -6.1610, -5.1868, -5.4090], [ -8.9902, -8.3667, -7.3925, -7.6147]]) ``` ```py torch.addcdiv(tensor, value=1, tensor1, tensor2, out=None) → Tensor ``` 通过`tensor2`执行`tensor1`的逐元素划分,将结果乘以标量`value`并将其添加到 [`tensor`](#torch.tensor "torch.tensor") 。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/e6bfafde43b0e449b24255b208acc8e0.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/e6bfafde43b0e449b24255b208acc8e0.jpg) [`tensor`](#torch.tensor "torch.tensor") ,`tensor1`和`tensor2`的形状必须是[可播放的](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/notes/broadcasting.html#broadcasting-semantics)。 对于`FloatTensor`或`DoubleTensor`类型的输入,`value`必须是实数,否则是整数。 Parameters: * **张量** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 要加的张量 * **值**(_数_ _,_ _可选_) - [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/1b168c1663790fbd38202af8bfea37bc.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/1b168c1663790fbd38202af8bfea37bc.jpg) 的乘数 * **tensor1** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 分子张量 * **张量2** ([_tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 分母张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> t = torch.randn(1, 3) >>> t1 = torch.randn(3, 1) >>> t2 = torch.randn(1, 3) >>> torch.addcdiv(t, 0.1, t1, t2) tensor([[-0.2312, -3.6496, 0.1312], [-1.0428, 3.4292, -0.1030], [-0.5369, -0.9829, 0.0430]]) ``` ```py torch.addcmul(tensor, value=1, tensor1, tensor2, out=None) → Tensor ``` 通过`tensor2`执行`tensor1`的逐元素乘法,将结果乘以标量`value`并将其添加到 [`tensor`](#torch.tensor "torch.tensor") 。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/ab575ca50c2fce8e335280dff71f26b0.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/ab575ca50c2fce8e335280dff71f26b0.jpg) The shapes of [`tensor`](#torch.tensor "torch.tensor"), `tensor1`, and `tensor2` must be [broadcastable](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/notes/broadcasting.html#broadcasting-semantics). For inputs of type `FloatTensor` or `DoubleTensor`, `value` must be a real number, otherwise an integer. Parameters: * **张量** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 要加的张量 * **值**(_数_ _,_ _可选_) - [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/b345d1a46cebf2308e450926de3195ef.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/b345d1a46cebf2308e450926de3195ef.jpg) 的乘数 * **tensor1** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 要倍增的张量 * **tensor2** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 要倍增的张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> t = torch.randn(1, 3) >>> t1 = torch.randn(3, 1) >>> t2 = torch.randn(1, 3) >>> torch.addcmul(t, 0.1, t1, t2) tensor([[-0.8635, -0.6391, 1.6174], [-0.7617, -0.5879, 1.7388], [-0.8353, -0.6249, 1.6511]]) ``` ```py torch.asin(input, out=None) → Tensor ``` 返回具有`input`元素的反正弦的新张量。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/eb9c70310a0ed5b865beb34bc1e28a99.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/eb9c70310a0ed5b865beb34bc1e28a99.jpg) Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(4) >>> a tensor([-0.5962, 1.4985, -0.4396, 1.4525]) >>> torch.asin(a) tensor([-0.6387, nan, -0.4552, nan]) ``` ```py torch.atan(input, out=None) → Tensor ``` 返回带有`input`元素反正切的新张量。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/cd3367165f341b3ab7dd3ee6dcfbb92c.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/cd3367165f341b3ab7dd3ee6dcfbb92c.jpg) Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(4) >>> a tensor([ 0.2341, 0.2539, -0.6256, -0.6448]) >>> torch.atan(a) tensor([ 0.2299, 0.2487, -0.5591, -0.5727]) ``` ```py torch.atan2(input1, input2, out=None) → Tensor ``` 返回带有`input1`和`input2`元素的反正切的新张量。 `input1`和`input2`的形状必须是[可播放的](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/notes/broadcasting.html#broadcasting-semantics)。 Parameters: * **input1** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 第一个输入张量 * **input2** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 第二个输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(4) >>> a tensor([ 0.9041, 0.0196, -0.3108, -2.4423]) >>> torch.atan2(a, torch.randn(4)) tensor([ 0.9833, 0.0811, -1.9743, -1.4151]) ``` ```py torch.ceil(input, out=None) → Tensor ``` 返回具有`input`元素的ceil的新张量,该元素是大于或等于每个元素的最小整数。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/efa1e00e060e0787c8b7ea48fe74745d.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/efa1e00e060e0787c8b7ea48fe74745d.jpg) Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(4) >>> a tensor([-0.6341, -1.4208, -1.0900, 0.5826]) >>> torch.ceil(a) tensor([-0., -1., -1., 1.]) ``` ```py torch.clamp(input, min, max, out=None) → Tensor ``` 将`input`中的所有元素钳位到`[` [`min`](#torch.min "torch.min") , [`max`](#torch.max "torch.max") `]`范围内并返回结果张量: [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/a116639ce05e419a65971fdffeaa2d81.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/a116639ce05e419a65971fdffeaa2d81.jpg) 如果`input`的类型为`FloatTensor`或`DoubleTensor`,则 [`min`](#torch.min "torch.min") 和 [`max`](#torch.max "torch.max") 必须为实数,否则它们应为整数。 Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **min** (_Number_ ) - 要被钳位的范围的下限 * **max** (_Number_ ) - 要钳位的范围的上限 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(4) >>> a tensor([-1.7120, 0.1734, -0.0478, -0.0922]) >>> torch.clamp(a, min=-0.5, max=0.5) tensor([-0.5000, 0.1734, -0.0478, -0.0922]) ``` ```py torch.clamp(input, *, min, out=None) → Tensor ``` 将`input`中的所有元素钳位为大于或等于 [`min`](#torch.min "torch.min") 。 如果`input`的类型为`FloatTensor`或`DoubleTensor`,则`value`应为实数,否则应为整数。 Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **值**(_数字_) - 输出中每个元素的最小值 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(4) >>> a tensor([-0.0299, -2.3184, 2.1593, -0.8883]) >>> torch.clamp(a, min=0.5) tensor([ 0.5000, 0.5000, 2.1593, 0.5000]) ``` ```py torch.clamp(input, *, max, out=None) → Tensor ``` 将`input`中的所有元素钳位为小于或等于 [`max`](#torch.max "torch.max") 。 If `input` is of type `FloatTensor` or `DoubleTensor`, `value` should be a real number, otherwise it should be an integer. Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **值**(_数字_) - 输出中每个元素的最大值 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(4) >>> a tensor([ 0.7753, -0.4702, -0.4599, 1.1899]) >>> torch.clamp(a, max=0.5) tensor([ 0.5000, -0.4702, -0.4599, 0.5000]) ``` ```py torch.cos(input, out=None) → Tensor ``` 返回具有`input`元素的余弦的新张量。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/ba6a1422eca60e84b7e3e9c551761d18.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/ba6a1422eca60e84b7e3e9c551761d18.jpg) Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(4) >>> a tensor([ 1.4309, 1.2706, -0.8562, 0.9796]) >>> torch.cos(a) tensor([ 0.1395, 0.2957, 0.6553, 0.5574]) ``` ```py torch.cosh(input, out=None) → Tensor ``` 返回具有`input`元素的双曲余弦值的新张量。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/676476d8f75c5c5d3a52347cb5576435.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/676476d8f75c5c5d3a52347cb5576435.jpg) Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(4) >>> a tensor([ 0.1632, 1.1835, -0.6979, -0.7325]) >>> torch.cosh(a) tensor([ 1.0133, 1.7860, 1.2536, 1.2805]) ``` ```py torch.div() ``` ```py torch.div(input, value, out=None) → Tensor ``` 将输入`input`的每个元素与标量`value`分开,并返回一个新的结果张量。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/92ada503afc46afd1ea338c293ed0b48.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/92ada503afc46afd1ea338c293ed0b48.jpg) 如果`input`的类型为`FloatTensor`或`DoubleTensor`,`value`应为实数,否则应为整数 Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **值**(_号码_) - 要分配给`input`的每个元素的数字 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(5) >>> a tensor([ 0.3810, 1.2774, -0.2972, -0.3719, 0.4637]) >>> torch.div(a, 0.5) tensor([ 0.7620, 2.5548, -0.5944, -0.7439, 0.9275]) ``` ```py torch.div(input, other, out=None) → Tensor ``` 张量`input`的每个元素除以张量`other`的每个元素。返回结果张量。 `input`和`other`的形状必须是[可播放的](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/notes/broadcasting.html#broadcasting-semantics)。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/19b90d4ca4770702635c981d243185b9.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/19b90d4ca4770702635c981d243185b9.jpg) Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 分子张量 * **其他** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 分母张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(4, 4) >>> a tensor([[-0.3711, -1.9353, -0.4605, -0.2917], [ 0.1815, -1.0111, 0.9805, -1.5923], [ 0.1062, 1.4581, 0.7759, -1.2344], [-0.1830, -0.0313, 1.1908, -1.4757]]) >>> b = torch.randn(4) >>> b tensor([ 0.8032, 0.2930, -0.8113, -0.2308]) >>> torch.div(a, b) tensor([[-0.4620, -6.6051, 0.5676, 1.2637], [ 0.2260, -3.4507, -1.2086, 6.8988], [ 0.1322, 4.9764, -0.9564, 5.3480], [-0.2278, -0.1068, -1.4678, 6.3936]]) ``` ```py torch.digamma(input, out=None) → Tensor ``` 计算`input`上伽玛函数的对数导数。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/369a7b2257c669fcc4fcd12afa5cfde7.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/369a7b2257c669fcc4fcd12afa5cfde7.jpg) | 参数: | **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 计算digamma函数的张量 | | --- | --- | Example: ```py >>> a = torch.tensor([1, 0.5]) >>> torch.digamma(a) tensor([-0.5772, -1.9635]) ``` ```py torch.erf(tensor, out=None) → Tensor ``` 计算每个元素的错误函数。错误函数定义如下: [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/486fba0c8b6d762f89942dff1e3067f8.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/486fba0c8b6d762f89942dff1e3067f8.jpg) Parameters: * **张量** ([_tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> torch.erf(torch.tensor([0, -1., 10.])) tensor([ 0.0000, -0.8427, 1.0000]) ``` ```py torch.erfc(input, out=None) → Tensor ``` 计算`input`的每个元素的互补误差函数。互补误差函数定义如下: [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/6100237da75310da52ebc2247d9918f1.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/6100237da75310da52ebc2247d9918f1.jpg) Parameters: * **张量** ([_tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> torch.erfc(torch.tensor([0, -1., 10.])) tensor([ 1.0000, 1.8427, 0.0000]) ``` ```py torch.erfinv(input, out=None) → Tensor ``` 计算`input`的每个元素的反向误差函数。反向误差函数在 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/2454c5f08b77e60915c698acbc0eec91.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/2454c5f08b77e60915c698acbc0eec91.jpg) 范围内定义为: [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/ff1b16ddc6ea5e8c13cd48cf7e4e26c4.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/ff1b16ddc6ea5e8c13cd48cf7e4e26c4.jpg) Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> torch.erfinv(torch.tensor([0, 0.5, -1.])) tensor([ 0.0000, 0.4769, -inf]) ``` ```py torch.exp(input, out=None) → Tensor ``` 返回具有输入张量`input`元素的指数的新张量。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/c1c7df2e920de2c586fe0c1040d8e7cd.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/c1c7df2e920de2c586fe0c1040d8e7cd.jpg) Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> torch.exp(torch.tensor([0, math.log(2.)])) tensor([ 1., 2.]) ``` ```py torch.expm1(input, out=None) → Tensor ``` 返回一个新的张量,其元素的指数减去`input`的1。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/3f5d893e1a9355354b0f64666f45b4ff.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/3f5d893e1a9355354b0f64666f45b4ff.jpg) Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> torch.expm1(torch.tensor([0, math.log(2.)])) tensor([ 0., 1.]) ``` ```py torch.floor(input, out=None) → Tensor ``` 返回一个新的张量,其中包含`input`元素的最低值,这是每个元素小于或等于的最大整数。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/17860fe2f89c3d742fd5a35e3616d8b4.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/17860fe2f89c3d742fd5a35e3616d8b4.jpg) Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(4) >>> a tensor([-0.8166, 1.5308, -0.2530, -0.2091]) >>> torch.floor(a) tensor([-1., 1., -1., -1.]) ``` ```py torch.fmod(input, divisor, out=None) → Tensor ``` 计算除法的元素余数。 被除数和除数可以包含整数和浮点数。余数与被除数`input`具有相同的符号。 当`divisor`是张量时,`input`和`divisor`的形状必须是[可广播](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/notes/broadcasting.html#broadcasting-semantics)。 Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 股息 * **除数** ([_tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor") _或_ [_漂浮_](https://docs.python.org/3/library/functions.html#float "(in Python v3.7)")) - 除数,可能是与被除数相同形状的数字或张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> torch.fmod(torch.tensor([-3., -2, -1, 1, 2, 3]), 2) tensor([-1., -0., -1., 1., 0., 1.]) >>> torch.fmod(torch.tensor([1., 2, 3, 4, 5]), 1.5) tensor([ 1.0000, 0.5000, 0.0000, 1.0000, 0.5000]) ``` ```py torch.frac(input, out=None) → Tensor ``` 计算`input`中每个元素的小数部分。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/0e649c6142e2ff9cde94388354dc3638.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/0e649c6142e2ff9cde94388354dc3638.jpg) Example: ```py >>> torch.frac(torch.tensor([1, 2.5, -3.2])) tensor([ 0.0000, 0.5000, -0.2000]) ``` ```py torch.lerp(start, end, weight, out=None) ``` 是否基于标量`weight`对两个张量`start`和`end`进行线性插值,并返回得到的`out`张量。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/52c0d270ea337a2b6d51bf86fb6f2d45.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/52c0d270ea337a2b6d51bf86fb6f2d45.jpg) `start`和`end`的形状必须是[可播放的](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/notes/broadcasting.html#broadcasting-semantics)。 Parameters: * **启动** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 张量与起点 * **结束** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 带有终点的张量 * **体重** ([_漂浮_](https://docs.python.org/3/library/functions.html#float "(in Python v3.7)")) - 插值公式的权重 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> start = torch.arange(1., 5.) >>> end = torch.empty(4).fill_(10) >>> start tensor([ 1., 2., 3., 4.]) >>> end tensor([ 10., 10., 10., 10.]) >>> torch.lerp(start, end, 0.5) tensor([ 5.5000, 6.0000, 6.5000, 7.0000]) ``` ```py torch.log(input, out=None) → Tensor ``` 返回具有`input`元素的自然对数的新张量。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/63dc128af37016ef7e59d39837eccc3d.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/63dc128af37016ef7e59d39837eccc3d.jpg) Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(5) >>> a tensor([-0.7168, -0.5471, -0.8933, -1.4428, -0.1190]) >>> torch.log(a) tensor([ nan, nan, nan, nan, nan]) ``` ```py torch.log10(input, out=None) → Tensor ``` 返回一个新的张量,其对数为`input`元素的基数10。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/8020f6f65d1d242403c13ad15b32ad43.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/8020f6f65d1d242403c13ad15b32ad43.jpg) Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.rand(5) >>> a tensor([ 0.5224, 0.9354, 0.7257, 0.1301, 0.2251]) >>> torch.log10(a) tensor([-0.2820, -0.0290, -0.1392, -0.8857, -0.6476]) ``` ```py torch.log1p(input, out=None) → Tensor ``` 返回一个自然对数为(1 + `input`)的新张量。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/553908dc43850f56bb79cbef6e776136.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/553908dc43850f56bb79cbef6e776136.jpg) 注意 对于`input`的小值,此函数比 [`torch.log()`](#torch.log "torch.log") 更准确 Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(5) >>> a tensor([-1.0090, -0.9923, 1.0249, -0.5372, 0.2492]) >>> torch.log1p(a) tensor([ nan, -4.8653, 0.7055, -0.7705, 0.2225]) ``` ```py torch.log2(input, out=None) → Tensor ``` 返回一个新的张量,其对数为`input`元素的基数2。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/a6be5b946e4f6d5d157679d60642a747.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/a6be5b946e4f6d5d157679d60642a747.jpg) Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.rand(5) >>> a tensor([ 0.8419, 0.8003, 0.9971, 0.5287, 0.0490]) >>> torch.log2(a) tensor([-0.2483, -0.3213, -0.0042, -0.9196, -4.3504]) ``` ```py torch.mul() ``` ```py torch.mul(input, value, out=None) ``` 将输入`input`的每个元素与标量`value`相乘,并返回一个新的结果张量。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/7dd1caf9162104803cc11bfb0de7a8fa.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/7dd1caf9162104803cc11bfb0de7a8fa.jpg) If `input` is of type `FloatTensor` or `DoubleTensor`, `value` should be a real number, otherwise it should be an integer Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **值**(_号码_) - 要与`input`的每个元素相乘的数字 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(3) >>> a tensor([ 0.2015, -0.4255, 2.6087]) >>> torch.mul(a, 100) tensor([ 20.1494, -42.5491, 260.8663]) ``` ```py torch.mul(input, other, out=None) ``` 张量`input`的每个元素乘以张量`other`的每个元素。返回结果张量。 The shapes of `input` and `other` must be [broadcastable](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/notes/broadcasting.html#broadcasting-semantics). [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/13296a8d428f985a8702d83e100d4153.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/13296a8d428f985a8702d83e100d4153.jpg) Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 第一个被乘数张量 * **其他** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 第二个被乘数张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(4, 1) >>> a tensor([[ 1.1207], [-0.3137], [ 0.0700], [ 0.8378]]) >>> b = torch.randn(1, 4) >>> b tensor([[ 0.5146, 0.1216, -0.5244, 2.2382]]) >>> torch.mul(a, b) tensor([[ 0.5767, 0.1363, -0.5877, 2.5083], [-0.1614, -0.0382, 0.1645, -0.7021], [ 0.0360, 0.0085, -0.0367, 0.1567], [ 0.4312, 0.1019, -0.4394, 1.8753]]) ``` ```py torch.mvlgamma(input, p) → Tensor ``` 用维度 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/648811253cdbfe19389964c25be56518.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/648811253cdbfe19389964c25be56518.jpg) 元素计算多变量log-gamma函数,由下式给出: [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/d1cecf35ffe071cbcf420549cd030664.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/d1cecf35ffe071cbcf420549cd030664.jpg) 其中 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/8890ddee156302958d8906a2799dc16b.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/8890ddee156302958d8906a2799dc16b.jpg) 和 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/94c1ba406fbf0f76780513dfd005e6f5.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/94c1ba406fbf0f76780513dfd005e6f5.jpg) 是Gamma函数。 如果任何元素小于或等于 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/80e27a556a24dac8f2985689098c1a82.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/80e27a556a24dac8f2985689098c1a82.jpg) ,则抛出错误。 Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 计算多变量log-gamma函数的张量 * **p** ([_int_](https://docs.python.org/3/library/functions.html#int "(in Python v3.7)")) - 维数 Example: ```py >>> a = torch.empty(2, 3).uniform_(1, 2) >>> a tensor([[1.6835, 1.8474, 1.1929], [1.0475, 1.7162, 1.4180]]) >>> torch.mvlgamma(a, 2) tensor([[0.3928, 0.4007, 0.7586], [1.0311, 0.3901, 0.5049]]) ``` ```py torch.neg(input, out=None) → Tensor ``` 返回一个新的张量,其元素为`input`。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/5ea71e988dcc7de6c27b28ca79f4e893.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/5ea71e988dcc7de6c27b28ca79f4e893.jpg) Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(5) >>> a tensor([ 0.0090, -0.2262, -0.0682, -0.2866, 0.3940]) >>> torch.neg(a) tensor([-0.0090, 0.2262, 0.0682, 0.2866, -0.3940]) ``` ```py torch.pow() ``` ```py torch.pow(input, exponent, out=None) → Tensor ``` 使用`exponent`获取`input`中每个元素的功效,并返回带有结果的张量。 `exponent`可以是单个`float`编号,也可以是`Tensor`,其元素数与`input`相同。 当`exponent`是标量值时,应用的操作是: [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/a04a68f6eedb206fc30bd425f792afdb.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/a04a68f6eedb206fc30bd425f792afdb.jpg) 当`exponent`是张量时,应用的操作是: [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/5499cae563d1d075246e3a18b191e870.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/5499cae563d1d075246e3a18b191e870.jpg) 当`exponent`是张量时,`input`和`exponent`的形状必须是[可广播](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/notes/broadcasting.html#broadcasting-semantics)。 Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **指数** ([_float_](https://docs.python.org/3/library/functions.html#float "(in Python v3.7)")_或_ _tensor_) - 指数值 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(4) >>> a tensor([ 0.4331, 1.2475, 0.6834, -0.2791]) >>> torch.pow(a, 2) tensor([ 0.1875, 1.5561, 0.4670, 0.0779]) >>> exp = torch.arange(1., 5.) >>> a = torch.arange(1., 5.) >>> a tensor([ 1., 2., 3., 4.]) >>> exp tensor([ 1., 2., 3., 4.]) >>> torch.pow(a, exp) tensor([ 1., 4., 27., 256.]) ``` ```py torch.pow(base, input, out=None) → Tensor ``` `base`是标量`float`值,`input`是张量。返回的张量`out`与`input`具有相同的形状 适用的操作是: [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/0c98533a385eed5ae6f333583d9d239e.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/0c98533a385eed5ae6f333583d9d239e.jpg) Parameters: * **base** ([_float_](https://docs.python.org/3/library/functions.html#float "(in Python v3.7)")) - 电源操作的标量基值 * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 指数张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> exp = torch.arange(1., 5.) >>> base = 2 >>> torch.pow(base, exp) tensor([ 2., 4., 8., 16.]) ``` ```py torch.reciprocal(input, out=None) → Tensor ``` 返回具有`input`元素倒数的新张量 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/a4cb9bbdd43eddd6583c288380fe9704.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/a4cb9bbdd43eddd6583c288380fe9704.jpg) Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(4) >>> a tensor([-0.4595, -2.1219, -1.4314, 0.7298]) >>> torch.reciprocal(a) tensor([-2.1763, -0.4713, -0.6986, 1.3702]) ``` ```py torch.remainder(input, divisor, out=None) → Tensor ``` Computes the element-wise remainder of division. 除数和被除数可以包含整数和浮点数。其余部分与除数具有相同的符号。 When `divisor` is a tensor, the shapes of `input` and `divisor` must be [broadcastable](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/notes/broadcasting.html#broadcasting-semantics). Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 股息 * **除数** ([_tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor") _或_ [_漂浮_](https://docs.python.org/3/library/functions.html#float "(in Python v3.7)")) - 可能是一个除数数字或与被除数相同形状的张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> torch.remainder(torch.tensor([-3., -2, -1, 1, 2, 3]), 2) tensor([ 1., 0., 1., 1., 0., 1.]) >>> torch.remainder(torch.tensor([1., 2, 3, 4, 5]), 1.5) tensor([ 1.0000, 0.5000, 0.0000, 1.0000, 0.5000]) ``` 也可以看看 [`torch.fmod()`](#torch.fmod "torch.fmod") ,它计算与C库函数`fmod()`等效的除法的元素余数。 ```py torch.round(input, out=None) → Tensor ``` 返回一个新的张量,`input`的每个元素四舍五入到最接近的整数。 Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(4) >>> a tensor([ 0.9920, 0.6077, 0.9734, -1.0362]) >>> torch.round(a) tensor([ 1., 1., 1., -1.]) ``` ```py torch.rsqrt(input, out=None) → Tensor ``` 返回一个新的张量,其具有`input`的每个元素的平方根的倒数。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/ba016159f6eee3d6e907b3f1f4690148.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/ba016159f6eee3d6e907b3f1f4690148.jpg) Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(4) >>> a tensor([-0.0370, 0.2970, 1.5420, -0.9105]) >>> torch.rsqrt(a) tensor([ nan, 1.8351, 0.8053, nan]) ``` ```py torch.sigmoid(input, out=None) → Tensor ``` 返回带有`input`元素的sigmoid的新张量。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/35490743ae06a50e628101c524fa3557.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/35490743ae06a50e628101c524fa3557.jpg) Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(4) >>> a tensor([ 0.9213, 1.0887, -0.8858, -1.7683]) >>> torch.sigmoid(a) tensor([ 0.7153, 0.7481, 0.2920, 0.1458]) ``` ```py torch.sign(input, out=None) → Tensor ``` 返回带有`input`元素符号的新张量。 Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.tensor([0.7, -1.2, 0., 2.3]) >>> a tensor([ 0.7000, -1.2000, 0.0000, 2.3000]) >>> torch.sign(a) tensor([ 1., -1., 0., 1.]) ``` ```py torch.sin(input, out=None) → Tensor ``` 返回带有`input`元素正弦的新张量。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/4bb3f3689a942de005b6ed433517a99a.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/4bb3f3689a942de005b6ed433517a99a.jpg) Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(4) >>> a tensor([-0.5461, 0.1347, -2.7266, -0.2746]) >>> torch.sin(a) tensor([-0.5194, 0.1343, -0.4032, -0.2711]) ``` ```py torch.sinh(input, out=None) → Tensor ``` 返回具有`input`元素的双曲正弦的新张量。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/ef01436f55bc1cd4c0407857bb6b41d0.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/ef01436f55bc1cd4c0407857bb6b41d0.jpg) Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(4) >>> a tensor([ 0.5380, -0.8632, -0.1265, 0.9399]) >>> torch.sinh(a) tensor([ 0.5644, -0.9744, -0.1268, 1.0845]) ``` ```py torch.sqrt(input, out=None) → Tensor ``` 返回具有`input`元素的平方根的新张量。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/5407c7228f589f6c48f1bdd755f1e4c8.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/5407c7228f589f6c48f1bdd755f1e4c8.jpg) Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(4) >>> a tensor([-2.0755, 1.0226, 0.0831, 0.4806]) >>> torch.sqrt(a) tensor([ nan, 1.0112, 0.2883, 0.6933]) ``` ```py torch.tan(input, out=None) → Tensor ``` 返回具有`input`元素正切的新张量。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/0cab489cdb9e93ea59ac064d58876397.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/0cab489cdb9e93ea59ac064d58876397.jpg) Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(4) >>> a tensor([-1.2027, -1.7687, 0.4412, -1.3856]) >>> torch.tan(a) tensor([-2.5930, 4.9859, 0.4722, -5.3366]) ``` ```py torch.tanh(input, out=None) → Tensor ``` 返回具有`input`元素的双曲正切的新张量。 [![](/apachecn/pytorch-doc-zh/raw/master/docs/1.0/img/29f29380f07881b913efa1bcc641e2ae.jpg)](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/img/29f29380f07881b913efa1bcc641e2ae.jpg) Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(4) >>> a tensor([ 0.8986, -0.7279, 1.1745, 0.2611]) >>> torch.tanh(a) tensor([ 0.7156, -0.6218, 0.8257, 0.2553]) ``` ```py torch.trunc(input, out=None) → Tensor ``` 返回具有`input`元素的截断整数值的新张量。 Parameters: * **输入** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")) - 输入张量 * **out** ([_Tensor_](/apachecn/pytorch-doc-zh/blob/master/docs/1.0/tensors.html#torch.Tensor "torch.Tensor")_,_ _任选_) - 输出张量 Example: ```py >>> a = torch.randn(4) >>> a tensor([ 3.4742, 0.5466, -0.8008, -0.9079]) >>> torch.trunc(a) tensor([ 3., 0., -0., -0.]) ```