{"id":29136,"date":"2026-04-27T15:38:54","date_gmt":"2026-04-27T15:38:54","guid":{"rendered":"https:\/\/hes.mephi.ru\/?page_id=29136"},"modified":"2026-04-27T20:58:49","modified_gmt":"2026-04-27T20:58:49","slug":"neural-networks-machine-learning-and-deep-learning","status":"publish","type":"page","link":"https:\/\/hes.mephi.ru\/?page_id=29136","title":{"rendered":"Neural Networks &#8211; Machine Learning and Deep Learning"},"content":{"rendered":"<div id=\"pl-29136\"  class=\"panel-layout\" ><div id=\"pg-29136-0\"  class=\"panel-grid panel-has-style\" ><div class=\"siteorigin-panels-stretch panel-row-style panel-row-style-for-29136-0\" data-stretch-type=\"full\" ><div id=\"pgc-29136-0-0\"  class=\"panel-grid-cell\" ><div id=\"panel-29136-0-0-0\" class=\"so-panel widget widget_sow-editor panel-first-child panel-last-child\" data-index=\"0\" ><div class=\"so-widget-sow-editor so-widget-sow-editor-base\">\n<div class=\"siteorigin-widget-tinymce textwidget\">\n\t<p><img decoding=\"async\" loading=\"lazy\" class=\"aligncenter wp-image-28479\" src=\"http:\/\/hes.mephi.ru\/wp-content\/uploads\/2026\/04\/Logo_Vish_eng-1.png\" alt=\"\" width=\"250\" height=\"125\" \/><\/p>\n<\/div>\n<\/div><\/div><\/div><\/div><\/div><div id=\"pg-29136-1\"  class=\"panel-grid panel-has-style\" ><div class=\"siteorigin-panels-stretch panel-row-style panel-row-style-for-29136-1\" data-stretch-type=\"full-stretched\" ><div id=\"pgc-29136-1-0\"  class=\"panel-grid-cell\" ><div id=\"panel-29136-1-0-0\" class=\"so-panel widget widget_sow-headline panel-first-child panel-last-child\" data-index=\"1\" ><div class=\"panel-widget-style panel-widget-style-for-29136-1-0-0\" ><div class=\"so-widget-sow-headline so-widget-sow-headline-default-cae038182b94-29136\"><div class=\"sow-headline-container \">\n\t<h3 class='sow-headline'>\t\t\t\t\t\t<a href=\"http:\/\/hes.mephi.ru\/wp-content\/uploads\/2026\/04\/05.02-Neural-Networks-Machine-Learning-and-Deep-Learning.pdf\" target=\"_blank\" rel=\"noopener noreferrer\">\n\t\t\t\t\tDOWNLOAD THE FULL COURSE SYLLABUS<\/a><\/h3><\/div><\/div><\/div><\/div><\/div><div id=\"pgc-29136-1-1\"  class=\"panel-grid-cell\" ><div id=\"panel-29136-1-1-0\" class=\"so-panel widget widget_sow-headline panel-first-child panel-last-child\" data-index=\"2\" ><div class=\"so-widget-sow-headline so-widget-sow-headline-default-cae038182b94-29136\"><div class=\"sow-headline-container \">\n\t<h3 class='sow-headline'>\t\t\t\t\t\t<a href=\"https:\/\/hes.mephi.ru\/?page_id=28339\" >\n\t\t\t\t\tBACK TO THE CURRICULUM<\/a><\/h3><\/div><\/div><\/div><\/div><div id=\"pgc-29136-1-2\"  class=\"panel-grid-cell\" ><div id=\"panel-29136-1-2-0\" class=\"so-panel widget widget_sow-headline panel-first-child panel-last-child\" data-index=\"3\" ><div class=\"so-widget-sow-headline so-widget-sow-headline-default-cae038182b94-29136\"><div class=\"sow-headline-container \">\n\t<h3 class='sow-headline'>\t\t\t\t\t\t<a href=\"https:\/\/hes.mephi.ru\/?page_id=28855\" target=\"_blank\" rel=\"noopener noreferrer\">\n\t\t\t\t\tBACK TO MASTER'S PROGRAM<\/a><\/h3><\/div><\/div><\/div><\/div><div id=\"pgc-29136-1-3\"  class=\"panel-grid-cell\" ><div id=\"panel-29136-1-3-0\" class=\"so-panel widget widget_sow-headline panel-first-child panel-last-child\" data-index=\"4\" ><div class=\"so-widget-sow-headline so-widget-sow-headline-default-cae038182b94-29136\"><div class=\"sow-headline-container \">\n\t<h3 class='sow-headline'>\t\t\t\t\t\t<a href=\"https:\/\/hes.mephi.ru\/?page_id=28947\" target=\"_blank\" rel=\"noopener noreferrer\">\n\t\t\t\t\tABOUT HES MEPHI<\/a><\/h3><\/div><\/div><\/div><\/div><\/div><\/div><div id=\"pg-29136-2\"  class=\"panel-grid panel-has-style\" ><div class=\"siteorigin-panels-stretch panel-row-style panel-row-style-for-29136-2\" data-stretch-type=\"full\" ><div id=\"pgc-29136-2-0\"  class=\"panel-grid-cell panel-grid-cell-empty\" ><\/div><div id=\"pgc-29136-2-1\"  class=\"panel-grid-cell\" ><div id=\"panel-29136-2-1-0\" class=\"so-panel widget widget_sow-headline panel-first-child\" data-index=\"5\" ><div class=\"so-widget-sow-headline so-widget-sow-headline-default-664267c7ac08-29136\"><div class=\"sow-headline-container \">\n\t<h2 class='sow-headline'>Neural Networks, Machine Learning and Deep Learning<\/h2><\/div><\/div><\/div><div id=\"panel-29136-2-1-1\" class=\"so-panel widget widget_sow-editor panel-last-child\" data-index=\"6\" ><div class=\"so-widget-sow-editor so-widget-sow-editor-base\">\n<div class=\"siteorigin-widget-tinymce textwidget\">\n\t<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">The course is dedicated to the study of machine learning (ML) and deep learning (DL), with an emphasis on the engineering application of these technologies in digital systems. The programme covers the full cycle of working with ML models: from problem formulation and data analysis to training, quality assessment, deployment, and maintenance. Students will learn how to formalise applied problems as ML tasks, select appropriate models and evaluation metrics, work with different types of data (images, sequences, text), as well as design ML pipelines and take into account the operational constraints of real\u2011world systems.<\/span><\/span><\/h3>\n<\/div>\n<\/div><\/div><\/div><\/div><\/div><div id=\"pg-29136-3\"  class=\"panel-grid panel-has-style\" ><div class=\"siteorigin-panels-stretch panel-row-style panel-row-style-for-29136-3\" data-stretch-type=\"full\" ><div id=\"pgc-29136-3-0\"  class=\"panel-grid-cell\" ><div id=\"panel-29136-3-0-0\" class=\"so-panel widget widget_sow-editor panel-first-child panel-last-child\" data-index=\"7\" ><div class=\"so-widget-sow-editor so-widget-sow-editor-base\">\n<div class=\"siteorigin-widget-tinymce textwidget\">\n\t&nbsp;\n<p style=\"text-align: justify; font-family: 'Open Sans';\">The course aims to develop students\u2019 holistic understanding of machine learning as an engineering discipline and to teach them how to design and implement ML components in digital systems. The course combines theoretical foundations with hands\u2011on work on an end\u2011to\u2011end project that goes through all stages of the ML model lifecycle.<\/p>\n<p style=\"text-align: justify; font-family: 'Open Sans';\">The course fosters engineering thinking: students learn to see an ML model as a component of a digital system, not an isolated algorithm, and to make informed decisions at every stage of its lifecycle.<\/p>\n<p style=\"text-align: justify; font-family: 'Open Sans';\">Upon completing the course, students will be able to analyse data and identify potential issues, interpret quality metrics in the context of the task, build basic and advanced models including linear models, ensembles and neural networks, design ML pipelines, understand modern DL architectures such as CNNs, RNNs and Transformers along with their application scenarios, and work with pre\u2011trained and foundational models.<\/p>\n<p style=\"text-align: justify; font-family: 'Open Sans';\">The course offers a structured engineering trajectory for developing machine learning (ML) models, guiding students through a complete lifecycle: from problem statement and data analysis to model training, evaluation, architectural design, and system implementation. It builds knowledge progressively \u2014 starting with understanding ML tasks, moving on to model construction and deep learning architectures, and culminating in AI systems engineering. A key focus is on treating ML as an engineering discipline, where students learn to formalise problems, prepare data, select and train models, assess their quality, and integrate them into digital systems. The curriculum emphasises an experimental culture: every hypothesis must be tested through model training, metric measurement, and error analysis, reinforcing the professional principle of trusting empirical results over assumptions..<\/p>\n<p style=\"text-align: justify; font-family: 'Open Sans';\">Another core aspect of the course is developing architectural thinking \u2014 students learn to view ML models not as isolated algorithms but as integral components of a system\u2019s architecture. This includes understanding the role of ML within broader digital systems, accounting for computing resource limitations, meeting performance requirements, and designing appropriate implementation architectures. Large language models (LLMs) are integrated as versatile engineering tools: they assist in hypothesis generation, model variant formulation, result analysis, and architectural discussions, while also helping identify model weaknesses and propose alternatives. Crucially, the course instils a principle of mandatory verification \u2014 any LLM\u2011generated suggestion must be validated through experimentation, measurement, and thorough result analysis, ensuring a rigorous, evidence\u2011based approach to ML development..<\/p>\n\n\n\n\n\n\n<\/div>\n<\/div><\/div><\/div><\/div><\/div><div id=\"pg-29136-4\"  class=\"panel-grid panel-has-style\" ><div class=\"siteorigin-panels-stretch panel-row-style panel-row-style-for-29136-4\" data-stretch-type=\"full\" ><div id=\"pgc-29136-4-0\"  class=\"panel-grid-cell\" ><div id=\"panel-29136-4-0-0\" class=\"so-panel widget widget_sow-headline panel-first-child\" data-index=\"8\" ><div class=\"so-widget-sow-headline so-widget-sow-headline-default-4e1b8d3af015-29136\"><div class=\"sow-headline-container \">\n\t<h3 class='sow-headline'>OBJECTIVES<\/h3><\/div><\/div><\/div><div id=\"panel-29136-4-0-1\" class=\"so-panel widget widget_sow-editor panel-last-child\" data-index=\"9\" ><div class=\"so-widget-sow-editor so-widget-sow-editor-base\">\n<div class=\"siteorigin-widget-tinymce textwidget\">\n\t<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Mastering the basic principles of machine learning;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Development of skills for setting ML problems;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Mastering methods of data preparation and analysis;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Study of the main classes of machine learning models;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Mastering neural network architectures;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Study of deep learning methods;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Development of skills for comparing models and assessing quality;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Mastering the principles of integrating models into digital systems;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Formation of a culture of experimental analysis of models;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Developing skills for critical use of LLMs in engineering activities.<\/span><\/span><\/h3>\n<\/div>\n<\/div><\/div><\/div><div id=\"pgc-29136-4-1\"  class=\"panel-grid-cell panel-grid-cell-empty\" ><\/div><div id=\"pgc-29136-4-2\"  class=\"panel-grid-cell\" ><div id=\"panel-29136-4-2-0\" class=\"so-panel widget widget_sow-headline panel-first-child\" data-index=\"10\" ><div class=\"so-widget-sow-headline so-widget-sow-headline-default-4e1b8d3af015-29136\"><div class=\"sow-headline-container \">\n\t<h3 class='sow-headline'>KEY TASKS<\/h3><\/div><\/div><\/div><div id=\"panel-29136-4-2-1\" class=\"so-panel widget widget_sow-editor panel-last-child\" data-index=\"11\" ><div class=\"so-widget-sow-editor so-widget-sow-editor-base\">\n<div class=\"siteorigin-widget-tinymce textwidget\">\n\t<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Studying the types of machine learning problems;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Mastering data engineering methods;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Studying quality metrics of models;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Mastering methods of linear models and ensembles;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Study of unsupervised learning methods;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Mastering dimensionality reduction methods;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Study of the basic principles of neural networks;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Study of the backpropagation algorithm;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Mastering deep learning architectures;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Studying specialized architectures for different types of data;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Learning the principles of transfer learning;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Study of fundamental models;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Mastering the principles of ML pipeline;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Development of experimental management skills;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Mastering the principles of implementing models into digital systems.<\/span><\/span><\/h3>\n<\/div>\n<\/div><\/div><\/div><\/div><\/div><div id=\"pg-29136-5\"  class=\"panel-grid panel-has-style\" ><div class=\"panel-row-style panel-row-style-for-29136-5\" ><div id=\"pgc-29136-5-0\"  class=\"panel-grid-cell\" ><div id=\"panel-29136-5-0-0\" class=\"so-panel widget widget_sow-editor panel-first-child panel-last-child\" data-index=\"12\" ><div class=\"so-widget-sow-editor so-widget-sow-editor-base\">\n<div class=\"siteorigin-widget-tinymce textwidget\">\n\t<h3 style=\"text-align: justify; font-family: 'Open Sans';\"><span style=\"color: #000000;\"><strong>Main topics of the course:<\/strong><\/span><\/h3>\n<p style=\"text-align: justify; font-family: 'Open Sans';\"><strong>Part 1 of the course lays the foundations of ML engineering:<\/strong><\/p>\n<p style=\"text-align: justify; font-family: 'Open Sans';\">1. The role of ML in the architecture of digital systems;<\/p>\n<p style=\"text-align: justify; font-family: 'Open Sans';\">2. Task classification (classification, regression, clustering, etc.);<\/p>\n<p style=\"text-align: justify; font-family: 'Open Sans';\">3. Data work: analysis, cleaning, normalisation, feature encoding;<\/p>\n<p style=\"text-align: justify; font-family: 'Open Sans';\">4. Assessment of model quality and generalisation ability;<\/p>\n<p style=\"text-align: justify; font-family: 'Open Sans';\">5. Overfitting and underfitting, bias\u2011variance trade\u2011off;<\/p>\n<p style=\"text-align: justify; font-family: 'Open Sans';\">6. Basic models: linear and logistic regression, decision trees, ensembles (Random Forest, gradient boosting);<\/p>\n<p style=\"text-align: justify; font-family: 'Open Sans';\">7. Unsupervised learning and dimensionality reduction (clustering, PCA);<\/p>\n<p style=\"text-align: justify; font-family: 'Open Sans';\">8. Introduction to neural networks: perceptron, multilayer networks (MLP), fundamentals of training (gradient descent, backpropagation);<\/p>\n<p style=\"text-align: justify; font-family: 'Open Sans';\">9. Overview of deep learning architectures (CNNs, RNNs) and their relation to data type and task;<\/p>\n<p style=\"text-align: justify; font-family: 'Open Sans';\">10. ML model lifecycle and the concept of an ML pipeline.<\/p>\n<p style=\"text-align: justify; font-family: 'Open Sans';\"><strong>Part 2 of the course deepens knowledge in deep learning and system design:<\/strong><\/p>\n<p style=\"text-align: justify; font-family: 'Open Sans';\">1. Convolutional neural networks (CNNs) and computer vision (ResNet, EfficientNet);<\/p>\n<p style=\"text-align: justify; font-family: 'Open Sans';\">2. Sequential data and recurrent networks (RNNs, LSTMs);<\/p>\n<p style=\"text-align: justify; font-family: 'Open Sans';\">3. Attention mechanism and Transformer architecture;<\/p>\n<p style=\"text-align: justify; font-family: 'Open Sans';\">4. Pre\u2011trained models, transfer learning, and fine\u2011tuning;<\/p>\n<p style=\"text-align: justify; font-family: 'Open Sans';\">5. Foundational models as the basis of modern AI systems;<\/p>\n<p style=\"text-align: justify; font-family: 'Open Sans';\">6. Reproducibility and experiment management;<\/p>\n<p style=\"text-align: justify; font-family: 'Open Sans';\">7. Deploying models into digital systems (serialisation, API, batch and online inference);<\/p>\n<p style=\"text-align: justify; font-family: 'Open Sans';\">8. Performance optimisation: quantisation, distillation, architecture simplification;<\/p>\n<p style=\"text-align: justify; font-family: 'Open Sans';\">9. Accounting for operational constraints (latency, throughput, memory consumption).<\/p>\n<\/div>\n<\/div><\/div><\/div><\/div><\/div><div id=\"pg-29136-6\"  class=\"panel-grid panel-no-style\" ><div id=\"pgc-29136-6-0\"  class=\"panel-grid-cell\" ><div id=\"panel-29136-6-0-0\" class=\"so-panel widget widget_sow-editor panel-first-child panel-last-child\" data-index=\"13\" ><div class=\"so-widget-sow-editor so-widget-sow-editor-base\">\n<div class=\"siteorigin-widget-tinymce textwidget\">\n\t<p><a style=\"padding: 12px 24px; background: #1e8a8a; color: white; border: none; border-radius: 8px; font-family: Arial, sans-serif; font-size: 16px; font-weight: bold; cursor: pointer; box-shadow: 0 4px 8px rgba(30, 138, 138, 0.3); transition: all 0.3s ease; width: 100%; margin: 0; display: block; text-align: left; padding-left: 16px; text-decoration: none;\" href=\"http:\/\/hes.mephi.ru\/wp-content\/uploads\/2026\/04\/05.02-Neural-Networks-Machine-Learning-and-Deep-Learning.pdf\" target=\"_blank\" rel=\"noopener noreferrer\">Download the extended description &gt;&gt;<\/a><\/p>\n<\/div>\n<\/div><\/div><\/div><\/div><div id=\"pg-29136-7\"  class=\"panel-grid panel-no-style\" ><div id=\"pgc-29136-7-0\"  class=\"panel-grid-cell\" ><div id=\"panel-29136-7-0-0\" class=\"so-panel widget widget_sow-editor panel-first-child panel-last-child\" data-index=\"14\" ><div class=\"so-widget-sow-editor so-widget-sow-editor-base\">\n<div class=\"siteorigin-widget-tinymce textwidget\">\n\t<p style=\"text-align: center;\"><a href=\"https:\/\/hes.mephi.ru\/?page_id=28339\">Return to the study plan overview<\/a><\/p>\n<\/div>\n<\/div><\/div><\/div><\/div><div id=\"pg-29136-8\"  class=\"panel-grid panel-has-style\" ><div class=\"siteorigin-panels-stretch panel-row-style panel-row-style-for-29136-8\" data-stretch-type=\"full\" ><div id=\"pgc-29136-8-0\"  class=\"panel-grid-cell\" ><div id=\"panel-29136-8-0-0\" class=\"so-panel widget widget_sow-editor panel-first-child panel-last-child\" data-index=\"15\" ><div class=\"so-widget-sow-editor so-widget-sow-editor-base\">\n<div class=\"siteorigin-widget-tinymce textwidget\">\n\t<p>&nbsp;<\/p>\n<h3 style=\"text-align: center;\"><span style=\"color: #ffffff;\">HES MEPhI<\/span><\/h3>\n<p style=\"text-align: center;\"><span style=\"color: #ffffff;\">+7 (495) 788-56-99 \u0434\u043e\u0431. 7691, 9570<\/span><br \/>\n<span style=\"color: #ffffff;\">+7 (929) 684-71-59<\/span><br \/>\n<strong><span style=\"color: #ff6600;\"><a style=\"color: #ff6600;\" href=\"mailto:hes@mephi.ru\" target=\"_blank\" rel=\"noopener\">hes@mephi.ru<\/a><\/span><\/strong><\/p>\n<p><a style=\"padding: 12px 24px; 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The programme covers the full cycle of working with [&hellip;]<\/p>\n","protected":false},"author":1,"featured_media":0,"parent":0,"menu_order":0,"comment_status":"closed","ping_status":"closed","template":"template-blank3.php","meta":[],"yoast_head":"<!-- This site is optimized with the Yoast SEO plugin v18.2 - https:\/\/yoast.com\/wordpress\/plugins\/seo\/ -->\n<title>Neural Networks - Machine Learning and Deep Learning - \u0412\u0418\u0428 \u041c\u0418\u0424\u0418<\/title>\n<meta name=\"description\" content=\"The course is dedicated to the study of machine learning (ML) and deep learning (DL), with an emphasis on the engineering application of these technologies in digital systems. The programme covers the full cycle of working with ML models: from problem formulation and data analysis to training, quality assessment, deployment, and maintenance. 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