diff --git a/docs/ops/arithmetic/SquaredDifference_1.md b/docs/ops/arithmetic/SquaredDifference_1.md
index 565dc00f0fc..5e5b89b5727 100644
--- a/docs/ops/arithmetic/SquaredDifference_1.md
+++ b/docs/ops/arithmetic/SquaredDifference_1.md
@@ -4,7 +4,14 @@
**Category**: Arithmetic binary operation
-**Short description**: *SquaredDifference* performs element-wise subtraction operation with two given tensors applying multi-directional broadcast rules, after that each result of the subtraction is squared.
+**Short description**: *SquaredDifference* performs element-wise subtract and square the result 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 *Substract* and *Square* the result operation is computed element-wise on the input tensors *a* and *b* according to the formula below:
+
+\f[
+o_{i} = (a_{i} - b_{i})^2
+\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**: A tensor of type T. **Required.**
-* **2**: A 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 SquaredDifference operation. A tensor of type T.
+* **1**: The result of element-wise subtract and square the result operation. A tensor of type T with shape equal to broadcasted shape of two inputs.
**Types**
* *T*: any numeric type.
-**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 *SquaredDifference* does the following with the input tensors *a* and *b*:
-
-\f[
-o_{i} = (a_{i} - b_{i})^2
-\f]
-
**Examples**
-*Example 1*
+*Example 1 - no broadcasting*
```xml
+
256
@@ -64,9 +63,10 @@ o_{i} = (a_{i} - b_{i})^2
```
-*Example 2: broadcast*
+*Example 2: numpy broadcasting*
```xml
+
8