{"id":15028,"date":"2023-07-28T11:11:04","date_gmt":"2023-07-28T11:11:04","guid":{"rendered":"https:\/\/abrar.edu.so\/sohc-conference2022\/?p=15028"},"modified":"2023-12-06T13:58:23","modified_gmt":"2023-12-06T13:58:23","slug":"machine-learning-fundamentals-basic-theory","status":"publish","type":"post","link":"https:\/\/abrar.edu.so\/sohc-conference2022\/machine-learning-fundamentals-basic-theory\/","title":{"rendered":"Machine Learning Fundamentals  Basic theory underlying the field of by Javaid Nabi"},"content":{"rendered":"<p><h1>What You Need to Know About How Machine Learning Actually Works<\/h1>\n<\/p>\n<p><img decoding=\"async\" class='wp-post-image' style='display: block;margin-left:auto;margin-right:auto;' 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\" width=\"305px\" alt=\"how does ml work\"\/><\/p>\n<p><p>A chatbot is a type of software that can automate conversations and interact with people through messaging platforms. The first challenge that we will face when trying to solve any <a href=\"https:\/\/www.metadialog.com\/blog\/how-does-ml-work\/\">ML-related problem<\/a> is the availability of the data. It\u2019s often not only about the technical possibility of measuring something but of making use of it. We often need to collect data in  one place to make further analysis feasible. When it comes to the product cold start problem the product recommendation system can use metadata about the new product when creating recommendations. The user cold start problem pertains to the lack of information a system has about users that click onto websites for the first time.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' 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\" width=\"307px\" alt=\"how does ml work\"\/><\/p>\n<p><p>Machine Learning (ML) is a branch of AI and autonomous artificial intelligence that allows machines to learn from experiences with large amounts of data without being programmed to do so. It synthesizes and interprets information for human understanding, according to pre-established parameters, helping to save time, reduce errors, create preventive actions and automate processes in large operations and companies. This article will address how ML works, its applications, and the current and future landscape of this subset of autonomous artificial intelligence. It is also likely that machine learning will continue to advance and improve, with researchers developing new algorithms and techniques to make machine learning more powerful and effective. Initiatives working on this issue include the Algorithmic Justice League and&nbsp;The Moral Machine&nbsp;project.<\/p>\n<\/p>\n<p><h2>Deep learning techniques for optimizing medical big data<\/h2>\n<\/p>\n<p><p>As such, they are vitally important to modern enterprise, but before we go into why, let\u2019s take a closer look at how machine learning works. The data of medical associations has expanded definitely and needs the computational capacity to examine extensive datasets to distinguish patterns from existing patient data for precise medical advancement. In ML, for training the model, you need to pass all the features manually. Financial services are similarly using AI\/ML to modernize and improve their offerings, including to personalize customer services, improve risk analysis, and to better detect fraud and money laundering. It\u2019s no secret that data is an increasingly important business asset, with the amount of data generated and stored globally growing at an exponential rate.<\/p>\n<\/p>\n<p><p>Supervised learning requires labeled data for training, while unsupervised learning does not. Supervised learning is used for tasks with clearly defined outputs, while unsupervised  learning is suitable for exploring unknown patterns in data. Semi-supervised learning combines elements of supervised and unsupervised learning. It involves training the algorithm on a limited amount of labeled data and a more extensive amount of unlabeled data. This approach is useful when obtaining labeled data is expensive or time-consuming.<\/p>\n<\/p>\n<p><h2>Customer service<\/h2>\n<\/p>\n<p><p>Get insightful reports to achieve a deeper understanding of customer behavior. Just because the ML field is very interesting as well as very high in demand. If you are a beginner in Pattern Recognition, still you should read this book. Because this  clear all basic concepts as well as advanced concepts regarding pattern recognition.<\/p>\n<\/p>\n<p><a href=\"https:\/\/www.metadialog.com\/\"><\/p>\n<figure><img src='data:image\/jpeg;base64,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' alt='https:\/\/www.metadialog.com\/' class='aligncenter' style='display:block;margin-left:auto;margin-right:auto;' width='409px'\/><\/figure>\n<p><\/a><\/p>\n<p><p>It minimizes the need for human intervention by training computer systems to learn on their own. Semi-supervised learning works the same way as supervised learning, but with a little twist. Whereas in the above method, an algorithm receives a set of labeled data, the semi-supervised way puts it to the test by introducing unlabeled data also. Supervised machine learning applications include image-recognition, media recommendation systems, predictive analytics and spam detection.<\/p>\n<\/p>\n<p><p>Read more about <a href=\"https:\/\/www.metadialog.com\/\">https:\/\/www.metadialog.com\/<\/a> here.<\/p><\/p>\n","protected":false},"excerpt":{"rendered":"<p>What You Need to Know About How Machine Learning Actually Works A chatbot is a type of software that can&#8230;<\/p>\n","protected":false},"author":1,"featured_media":0,"comment_status":"open","ping_status":"open","sticky":false,"template":"","format":"standard","meta":{"footnotes":""},"categories":[279],"tags":[],"class_list":["post-15028","post","type-post","status-publish","format-standard","hentry","category-generative-ai"],"_links":{"self":[{"href":"https:\/\/abrar.edu.so\/sohc-conference2022\/wp-json\/wp\/v2\/posts\/15028","targetHints":{"allow":["GET"]}}],"collection":[{"href":"https:\/\/abrar.edu.so\/sohc-conference2022\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/abrar.edu.so\/sohc-conference2022\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/abrar.edu.so\/sohc-conference2022\/wp-json\/wp\/v2\/users\/1"}],"replies":[{"embeddable":true,"href":"https:\/\/abrar.edu.so\/sohc-conference2022\/wp-json\/wp\/v2\/comments?post=15028"}],"version-history":[{"count":1,"href":"https:\/\/abrar.edu.so\/sohc-conference2022\/wp-json\/wp\/v2\/posts\/15028\/revisions"}],"predecessor-version":[{"id":15029,"href":"https:\/\/abrar.edu.so\/sohc-conference2022\/wp-json\/wp\/v2\/posts\/15028\/revisions\/15029"}],"wp:attachment":[{"href":"https:\/\/abrar.edu.so\/sohc-conference2022\/wp-json\/wp\/v2\/media?parent=15028"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/abrar.edu.so\/sohc-conference2022\/wp-json\/wp\/v2\/categories?post=15028"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/abrar.edu.so\/sohc-conference2022\/wp-json\/wp\/v2\/tags?post=15028"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}