Tensorflow.js tf.layers.maxPooling2d() Function Last Updated : 24 Mar, 2022 Comments Improve Suggest changes Like Article Like Report Tensorflow.js is a Google-developed open-source toolkit for executing machine learning models and deep learning neural networks in the browser or on the node platform. It also enables developers to create machine learning models in JavaScript and utilize them directly in the browser or with Node.js. The tf.layers.maxPooling2d() function is used to apply max pooling operation on spatial data. Syntax: tf.layers.maxPooling2d (args)Parameters: It accepts the args object which can have the following properties: poolSize: It is used for downscaling factors in each dimension i.e [vertical, horizontal]. It is an integer or a two-int array is expected. strides: In each dimension of the pooling window, the stride size. It is an integer or a two-int array is required. padding: For the pooling layer, the padding type to utilize.dataFormat: For the pooling layer, the data format to utilize. inputShape: If this property is set, it will be utilized to construct an input layer that will be inserted before this layer. batchInputShape: If this property is set, an input layer will be created and inserted before this layer.batchSize: If batchInputShape isn't supplied and inputShape is, batchSize is utilized to build the batchInputShape.dtype: It is the kind of data type for this layer. float32 is the default value. This parameter applies exclusively to input layers.name: This is the layer's name and is of string type.trainable: If the weights of this layer may be changed by fit. True is the default value.weights: The layer's initial weight values.Returns: It returns on object (MaxPooling2D). Example 1: JavaScript import * as tf from "@tensorflow/tfjs"; const input = tf.input({ shape: [4, 4, 4] }); const maxPoolingLayer = tf.layers.maxPooling2d({ poolSize: [2, 2] }); const output = maxPoolingLayer.apply(input); const model = tf.model({ inputs: input, outputs: output }); model.predict(tf.ones([1, 4, 4, 4])).print(); Output: Tensor [[[[1, 1, 1, 1], [1, 1, 1, 1]], [[1, 1, 1, 1], [1, 1, 1, 1]]]]Example 2: JavaScript import * as tf from "@tensorflow/tfjs"; const input = tf.input({ shape: [4, 4, 1] }); const maxPoolingLayer = tf.layers.maxPooling2d({ poolSize: [3, 3] }); const output = maxPoolingLayer.apply(input); const model = tf.model({ inputs: input, outputs: output }); const x = tf.tensor4d([1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15, 16], [1, 4, 4, 1]); model.predict(x).print(); Output: Tensor [ [ [[11],]]]Reference: https://js.tensorflow.org/api/latest/#layers.maxPooling2d Comment More infoAdvertise with us Next Article Tensorflow.js tf.layers.maxPooling2d() Function A aayushmohansinha Follow Improve Article Tags : JavaScript Web Technologies Tensorflow.js Similar Reads Non-linear Components In electrical circuits, Non-linear Components are electronic devices that need an external power source to operate actively. Non-Linear Components are those that are changed with respect to the voltage and current. Elements that do not follow ohm's law are called Non-linear Components. Non-linear Co 11 min read JavaScript Tutorial JavaScript is a programming language used to create dynamic content for websites. It is a lightweight, cross-platform, and single-threaded programming language. It's an interpreted language that executes code line by line, providing more flexibility.JavaScript on Client Side: On the client side, Jav 11 min read Web Development Web development is the process of creating, building, and maintaining websites and web applications. It involves everything from web design to programming and database management. Web development is generally divided into three core areas: Frontend Development, Backend Development, and Full Stack De 5 min read Spring Boot Tutorial Spring Boot is a Java framework that makes it easier to create and run Java applications. It simplifies the configuration and setup process, allowing developers to focus more on writing code for their applications. This Spring Boot Tutorial is a comprehensive guide that covers both basic and advance 10 min read Class Diagram | Unified Modeling Language (UML) A UML class diagram is a visual tool that represents the structure of a system by showing its classes, attributes, methods, and the relationships between them. It helps everyone involved in a projectâlike developers and designersâunderstand how the system is organized and how its components interact 12 min read React Interview Questions and Answers React is an efficient, flexible, and open-source JavaScript library that allows developers to create simple, fast, and scalable web applications. Jordan Walke, a software engineer who was working for Facebook, created React. Developers with a JavaScript background can easily develop web applications 15+ min read Steady State Response In this article, we are going to discuss the steady-state response. We will see what is steady state response in Time domain analysis. We will then discuss some of the standard test signals used in finding the response of a response. We also discuss the first-order response for different signals. We 9 min read JavaScript Interview Questions and Answers JavaScript (JS) is the most popular lightweight, scripting, and interpreted programming language. JavaScript is well-known as a scripting language for web pages, mobile apps, web servers, and many other platforms. Both front-end and back-end developers need to have a strong command of JavaScript, as 15+ min read React Tutorial React is a JavaScript Library known for front-end development (or user interface). It is popular due to its component-based architecture, Single Page Applications (SPAs), and Virtual DOM for building web applications that are fast, efficient, and scalable.Applications are built using reusable compon 8 min read Backpropagation in Neural Network Back Propagation is also known as "Backward Propagation of Errors" is a method used to train neural network . Its goal is to reduce the difference between the modelâs predicted output and the actual output by adjusting the weights and biases in the network.It works iteratively to adjust weights and 9 min read Like