Machine Learning (ML) has become a game-changing technology in computer networks. It makes automation smarter, lets you make predictions, and helps you manage resources better. As network infrastructures grow quickly, from enterprise systems and cloud data centers to Internet of Things (IoT) ecosystems and next-generation wireless networks, the amount, speed, and variety of network data have all increased a lot. Old-fashioned network management methods that rely on rules and manual configuration aren't enough to deal with the complexity and changing behaviour of today's networks. In this case, machine learning offers data-driven methods that can find patterns, guess what will happen next, improve performance, and make things safer in real time. Machine learning (ML) is used in many networking situations, like classifying traffic, controlling congestion, optimising routing, detecting intrusions, finding anomalies, and improving quality of service (QoS). Supervised learning models are used to find bad activities and sort traffic types, while unsupervised learning models help find strange patterns and unknown anomalies. More and more, people are using reinforcement learning for adaptive routing and allocating network resources. Deep learning models make it even easier to work with large amounts of network traffic data that has many dimensions. This makes it easier to get things right and automate things in complicated situations. On the other hand, computer networks are very important for machine learning systems to work. When you want to train and test a lot of ML models, you often need distributed computing systems that let many nodes talk to each other and work together over fast networks. Cloud computing, edge computing, and federated learning all depend on fast network communication for things like model synchronisation, parameter sharing, and distributed processing. So, machine learning and networking are connected in both directions: ML makes networks smarter, and networks make it easier to use ML in a scalable way. Even though this interdisciplinary field has made a lot of progress, research contributions are often spread out over many different topics, tools, and experimental setups. There is no single reference that brings together basic ML methods, popular frameworks, and benchmark datasets that are specifically made for networking applications. Access to high-quality datasets is especially important because they are used to train models and to test their performance and reproducibility. Researchers may find it hard to find the right models, choose the right datasets, or compare their results with those of other studies if they don't have access to consolidated resources. This article seeks to tackle these challenges by condensing key machine learning methodologies, prevalent frameworks, and pertinent datasets relevant to networking research. It is a complete guide for researchers and professionals who want to use machine learning to solve networking problems or use networks to help machine learning systems. This work aims to expedite innovation and promote thorough research at the convergence of machine learning and computer networks by offering organised insights and reference materials..
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Dr.A.Swetha Dr.A.Swetha
TUMMA AKSHAYA
THOTA PRASANNA
National Institute of Technology Warangal
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Dr.A.Swetha et al. (Wed,) studied this question.
www.synapsesocial.com/papers/69db37404fe01fead37c5404 — DOI: https://doi.org/10.56975/ijnrd.v11i4.313310
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