## MaxPool {#openvino_docs_ops_pooling_MaxPool_1} **Versioned name**: *MaxPool-1* **Category**: *Pooling* **Short description**: [Reference](http://caffe.berkeleyvision.org/tutorial/layers/pooling.html) **Detailed description**: [Reference](http://cs231n.github.io/convolutional-networks/#pool) **Attributes**: *Pooling* attributes are specified in the `data` node, which is a child of the layer node. * *strides* * **Description**: *strides* is a distance (in pixels) to slide the window on the feature map over the (z, y, x) axes for 3D poolings and (y, x) axes for 2D poolings. For example, *strides* equal "4,2,1" means sliding the window 4 pixel at a time over depth dimension, 2 over height dimension and 1 over width dimension. * **Range of values**: integer values starting from 0 * **Type**: int[] * **Default value**: None * **Required**: *yes* * *pads_begin* * **Description**: *pads_begin* is a number of pixels to add to the beginning along each axis. For example, *pads_begin* equal "1,2" means adding 1 pixel to the top of the input and 2 to the left of the input. * **Range of values**: integer values starting from 0 * **Type**: int[] * **Default value**: None * **Required**: *yes* * **Note**: the attribute is ignored when *auto_pad* attribute is specified. * *pads_end* * **Description**: *pads_end* is a number of pixels to add to the ending along each axis. For example, *pads_end* equal "1,2" means adding 1 pixel to the bottom of the input and 2 to the right of the input. * **Range of values**: integer values starting from 0 * **Type**: int[] * **Default value**: None * **Required**: *yes* * **Note**: the attribute is ignored when *auto_pad* attribute is specified. * *kernel* * **Description**: *kernel* is a size of each filter. For example, *kernel* equal (2, 3) means that each filter has height equal to 2 and width equal to 3. * **Range of values**: integer values starting from 1 * **Type**: int[] * **Default value**: None * **Required**: *yes* * *rounding_type* * **Description**: *rounding_type* is a type of rounding to be applied. * **Range of values**: * *ceil* * *floor* * **Type**: string * **Default value**: *floor* * *auto_pad* * **Description**: *auto_pad* how the padding is calculated. Possible values: * None (not specified): use explicit padding values. * *same_upper (same_lower)* the input is padded to match the output size. In case of odd padding value an extra padding is added at the end (at the beginning). * *valid* - do not use padding. * **Type**: string * **Default value**: None * **Required**: *no* * **Note**: *pads_begin* and *pads_end* attributes are ignored when *auto_pad* is specified. **Inputs**: * **1**: 4D or 5D input tensor. Required. **Mathematical Formulation** \f[ output_{j} = MAX\{ x_{0}, ... x_{i}\} \f] **Example** ```xml ... ... ```