diff --git a/docs/ops/arithmetic/Minimum_1.md b/docs/ops/arithmetic/Minimum_1.md index 283f33c0b09..e9d5b2c47c9 100644 --- a/docs/ops/arithmetic/Minimum_1.md +++ b/docs/ops/arithmetic/Minimum_1.md @@ -4,7 +4,14 @@ **Category**: Arithmetic binary operation -**Short description**: *Minimum* performs element-wise minimum operation with two given tensors applying multi-directional broadcast rules. +**Short description**: *Minimum* performs element-wise minimum operation with two given tensors applying broadcasting rule specified in the *auto_broadcast* attribute. + +**Detailed description** +As a first step input tensors *a* and *b* are broadcasted if their shapes differ. Broadcasting is performed according to `auto_broadcast` attribute specification. As a second step *Minimum* operation is computed element-wise on the input tensors *a* and *b* according to the formula below: + +\f[ +o_{i} = min(a_{i}, b_{i}) +\f] **Attributes**: @@ -12,40 +19,32 @@ * **Description**: specifies rules used for auto-broadcasting of input tensors. * **Range of values**: - * *none* - no auto-broadcasting is allowed, all input shapes should match - * *numpy* - numpy broadcasting rules, aligned with ONNX Broadcasting. Description is available in ONNX docs. + * *none* - no auto-broadcasting is allowed, all input shapes must match + * *numpy* - numpy broadcasting rules, description is available in [Broadcast Rules For Elementwise Operations](../broadcast_rules.md) * **Type**: string * **Default value**: "numpy" * **Required**: *no* **Inputs** -* **1**: First input tensor of type T. **Required.** -* **2**: Second input tensor of type T. **Required.** +* **1**: A tensor of type T and arbitrary shape. Required. +* **2**: A tensor of type T and arbitrary shape. Required. **Outputs** -* **1**: The result of element-wise minimum operation. A tensor of type T. +* **1**: The result of element-wise minimum operation. A tensor of type T with shape equal to broadcasted shape of two inputs. **Types** -* *T*: arbitrary type, which supports less/greater comparison. - -**Detailed description** -Before performing arithmetic operation, input tensors *a* and *b* are broadcasted if their shapes are different and `auto_broadcast` attributes is not `none`. Broadcasting is performed according to `auto_broadcast` value. - -After broadcasting *Minimum* does the following with the input tensors *a* and *b*: - -\f[ -o_{i} = min(a_{i}, b_{i}) -\f] +* *T*: any numeric type. **Examples** -*Example 1* +*Example 1 - no broadcasting* ```xml + 256 @@ -65,9 +64,10 @@ o_{i} = min(a_{i}, b_{i}) ``` -*Example 2: broadcast* +*Example 2: numpy broadcasting* ```xml + 8