{"id":5521,"date":"2023-10-02T17:36:05","date_gmt":"2023-10-02T17:36:05","guid":{"rendered":"https:\/\/sewascaffoldingpalu.com\/?p=5521"},"modified":"2023-12-24T09:29:31","modified_gmt":"2023-12-24T09:29:31","slug":"whats-the-difference-between-ai-and-ml-cloud","status":"publish","type":"post","link":"https:\/\/sewascaffoldingpalu.com\/?p=5521","title":{"rendered":"Whats the difference between AI and ML? Cloud Services"},"content":{"rendered":"<p><h1>Data Science vs  AI &#038; Machine Learning MDS@Rice<\/h1>\n<\/p>\n<p><img decoding=\"async\" class='wp-post-image' style='display: block;margin-left:auto;margin-right:auto;' src=\"data:image\/jpeg;base64,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\" width=\"300px\" alt=\"difference between ai and ml with examples\"\/><\/p>\n<p><p>The face ID on iPhones&nbsp;uses a deep neural network to help phones recognize human facial features. These enormous data needs used to be the reason why ANN algorithms weren&#8217;t considered to be the optimal solution to all problems in the past. However, for many applications, this need for data can now be satisfied by using pre-trained models. In case you want to dig deeper, we recently published an article on transfer learning. What we can do falls into the concept of \u201cNarrow AI.\u201d Technologies that are able to perform specific tasks as well as, or better than, we humans can.<\/p>\n<\/p>\n<p><p>These examples demonstrate AI solutions that serve a purpose either alone or as part of a system that leverages AI and other technologies. So with all of that in mind, let\u2019s understand what makes AI different from ML, especially in the context of real-world examples. If you know how to build a Tensorflow model and run it across several TPU instances in the cloud, you probably wouldn&#8217;t have read this far. People with ideas about how AI&nbsp;could be put to great use but who lack time or skills to make it work on a technical level. Artificial Intelligence, Machine Learning, Deep Learning, Data Science are popular terms in this era.<\/p>\n<\/p>\n<p><h2>Human-AI Integration: Cyborgs<\/h2>\n<\/p>\n<p><p>Machine learning algorithms and machine vision are a critical component of self-driving cars, helping them navigate the roads safely. In healthcare, machine learning is used to diagnose and suggest treatment plans. Other common ML use cases include fraud detection, spam filtering, malware threat detection, predictive maintenance and business process automation. AI-based model is black-box in nature which means all data scientists have to do is find and import the right artificial network or machine learning algorithm.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src=\"data:image\/jpeg;base64,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\" width=\"305px\" alt=\"difference between ai and ml with examples\"\/><\/p>\n<p><p>Machine learning specialists develop applications based on algorithms that can detect defects in parts, improve manufacturing processes, streamline inventory and supply chain management, prevent crime, and more. Set and adjust hyperparameters,  train and validate the model, and then optimize it. Additionally, boosting algorithms can be used to optimize decision tree models.<\/p>\n<\/p>\n<p><h2>Machine learning vs. deep learning neural networks<\/h2>\n<\/p>\n<p><p>A deep learning model produces an abstract, compressed representation of the raw data over several layers of an artificial neural network. We then use a compressed representation of the input data to produce the result. The result can be, for example, the classification of the input data into different classes.<\/p>\n<\/p>\n<p><p>If you compare with regular computers where all the functions are prescribed, AI is different in that the machines can \u201cthink\u201d. They can analyze the data for correlations and patterns, and use these patterns to make predictions about future states. The machines review millions of examples and make \u201cpredictions\u201d about their state.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src=\"data:image\/jpeg;base64,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\" width=\"304px\" alt=\"difference between ai and ml with examples\"\/><\/p>\n<p><p>The definition has evolved over the years \u2013 at one point, you consider perhaps scientific calculators as a form of AI. But these days, we\u2019d need an AI system to perform more advanced tasks. The first advantage of deep learning over machine learning is the redundancy of feature extraction. A few years ago,&nbsp;Starbucks&nbsp;enhanced its mobile app by enabling ordering ahead via voice commands.<\/p>\n<\/p>\n<p><h2>What is AI Engineering and Why You Should Join This Field<\/h2>\n<\/p>\n<p><p>An artificial intelligence can be created and used to handle all the incoming phone calls. People don\u2019t have to sit around waiting for an operator, and operators don\u2019t need to be trained and staffed at companies. The network consists of an input layer to accept inputs from data and a hidden layer to find the hidden features. So, ML learns from the data and algorithms to understand how to perform a task. It is a process of learning new things on your own with smartness and speed. A human uses intelligence to learn from education, training, work experiences, and more.<\/p>\n<\/p>\n<ul>\n<li>This pervasive and powerful form of artificial intelligence is changing every industry.<\/li>\n<li>The flow of creating a machine learning model is collecting data, training the algorithm, trying it out, collecting the feedback to make the algorithm better and achieve higher accuracy and performance.<\/li>\n<li>Instead AI has grown to offer many different benefits across industries like healthcare, retail, manufacturing, banking and many more.<\/li>\n<li>While it was initially referred to as artificial intelligence in a vague manner, more concrete fields, such as machine learning and deep learning began to emerge.<\/li>\n<li>Being branches of the same field, the terms artificial intelligence (AI), machine learning (ML), deep learning (DL), and natural language processing (NLP) are used interchangeably.<\/li>\n<\/ul>\n<p><p>This is how deep learning works\u2014breaking down various elements to make machine-learning decisions about them, then looking at how they are interconnected to deduce a final result. Rule-based decisions worked for simpler situations with clear variables. Even computer-simulated chess is based on a series of rule-based decisions that incorporate variables such as what pieces are on the board, what positions they&#8217;re in, and whose turn it is. The problem is that these situations all required a certain level of control. At a certain point, the ability to make decisions based simply on variables and if\/then rules didn&#8217;t work. Algorithms are trained to make classifications or predictions, and to uncover key insights in data.<\/p>\n<\/p>\n<p><h2>Different Tools used for AI, ML, and Deep Learning<\/h2>\n<\/p>\n<p><p>The core role of a Machine Learning Engineer is to create programs that enable a machine to take specific actions without any explicit programming. Their primary responsibilities include data sets for analysis,&nbsp;personalizing&nbsp;web experiences, and identifying business requirements. Salaries of a Machine Learning Engineer and a Data Scientist can vary based on skills, experience, and company hiring. On a deeper level, startups can apply ML algorithms to analyze customer data to identify patterns and preferences, enabling startups to personalize their marketing campaigns and target the right audience.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src=\"data:image\/jpeg;base64,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\" width=\"308px\" alt=\"difference between ai and ml with examples\"\/><\/p>\n<p><p>However, it came out that limited resources are available to implement these algorithms on large data. AI is a broader term that describes the capability of the machine to learn and solve problems just like humans. In other words, AI refers to the replication of humans, how it thinks, works and functions. By studying and experimenting with machine learning, programmers test the limits of how much they can improve the perception, cognition, and action of a computer system. Artificial intelligence (AI) and machine learning are often used interchangeably, but machine learning is a subset of the broader category of AI.<\/p>\n<\/p>\n<p><h2>The Relationship Between Machine Learning and Artificial Intelligence<\/h2>\n<\/p>\n<p><p>It is one of the most important parts of Artificial Intelligence and plays a vital role in its implementation. As its name defines, in this part of Artificial Intelligence we make machines self-reliable for learning. Machines get training for the self-learning process in this, by which they can perform all the basic tasks without giving any command. Knowledge Representation is a small but important part of Artificial Intelligence.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src=\"data:image\/jpeg;base64,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\" width=\"307px\" alt=\"difference between ai and ml with examples\"\/><\/p>\n<p><p>Artificial intelligence systems are used to perform complex tasks in a way that is similar to how humans solve problems. Artificial intelligence (AI) is the overarching discipline that covers anything related to making <a href=\"https:\/\/www.metadialog.com\/blog\/ai-vs-ml\/\">machines smart. Whether<\/a> it\u2019s a robot, a refrigerator, a car, or a software application, if you are making them smart, then it\u2019s AI. Machine Learning (ML) is commonly used alongside AI, but they are not the same thing. Systems that get smarter and smarter over time without human intervention. Most AI work now involves ML because intelligent behavior requires considerable knowledge, and learning is the easiest way to get that knowledge.<\/p>\n<\/p>\n<p><h2>Key Differences: Machine Learning, AI, and Deep Learning<\/h2>\n<\/p>\n<p><p>Other features include the availability of free python tools, no support issues, fewer codes, and powerful libraries. So, python is going nowhere and will be on the next level because of its involvement in Artificial Intelligence. <a href=\"https:\/\/www.metadialog.com\/blog\/ai-vs-ml\/\">People usually<\/a> get confused with  the two terms \u201cArtificial Intelligence\u201d and \u201cMachine Learning.\u201d Both the terminologies get used interchangeably, but they are not precisely identical.<\/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='405px'\/><\/figure>\n<p><\/a><\/p>\n<p><p>Secondly, Deep Learning algorithms require much less human intervention. As a deep learning algorithm, however, the features are extracted automatically, and the algorithm learns from its own errors (see image below). In supervised learning, data scientists supply algorithms with labeled training data and define the variables they want the algorithm to assess for correlations. Both the input and output of the algorithm are specified in supervised learning.<\/p>\n<\/p>\n<div style='border: black dotted 1px;padding: 15px;'>\n<h3>Introducing Mozilla&#8217;s AI Guide, the developers onboarding ramp to AI &#8211; Mozilla &#038; Firefox<\/h3>\n<p>Introducing Mozilla&#8217;s AI Guide, the developers onboarding ramp to AI.<\/p>\n<p>Posted: Thu, 26 Oct 2023 13:04:56 GMT [<a href='https:\/\/news.google.com\/rss\/articles\/CBMiZ2h0dHBzOi8vYmxvZy5tb3ppbGxhLm9yZy9lbi9tb3ppbGxhL2ludHJvZHVjaW5nLW1vemlsbGFzLWFpLWd1aWRlLXRoZS1kZXZlbG9wZXJzLW9uYm9hcmRpbmctcmFtcC10by1haS_SAQA?oc=5' rel=\"nofollow\">source<\/a>]<\/p>\n<\/div>\n<p><p>In order to understand the capabilities of Machine Learning, let\u2019s look at their algorithms. Additionally, computer vision analysis has been demonstrated as a practical solution for automated inspections and monitoring of critical assets, collecting environmental data, and improving safety. COREMATIC has successfully incorporated computer vision technologies with advanced mobile robots to perform biosecurity risk analysis applications. The main difference between them is that AI is a broader field that encompasses many different approaches, while ML is a specific approach to building AI systems. The goal of reinforcement learning is to train an agent to complete a task within an uncertain environment.<\/p>\n<\/p>\n<p><p>However, DL models do not any feature extraction pre-processing step and are capable of classifying data into different classes and categories themselves. That is, in the case of identification of cat or dog in the image, we do not need to extract features from the image and give it to the DL model. But, the image can be given as the direct input to the DL model whose job is then to classify it without human intervention. In the realm of cutting-edge technologies, Machine Learning (ML), Deep Learning (DL), and Artificial Intelligence (AI) stand as pivotal forces, driving innovation across industries. Yet, their intricate interplay and unique characteristics often spark confusion. In this article, we embark on a journey to demystify the trio, exploring the fundamental differences and symbiotic relationships between ML vs DL vs AI.<\/p>\n<\/p>\n<ul>\n<li>After training the model on the dataset once, it can then be used to improve itself or predict outcomes.<\/li>\n<li>Check out these links for more information on artificial intelligence and many practical AI case examples.<\/li>\n<li>This means that they can be recommended content which consistently elicits a reaction from them, thus increasing the amount of time spent on the platform.<\/li>\n<li>Decision Tree Learning is one of the highest predictive modeling approaches used in machine learning, statistics, and data mining.<\/li>\n<\/ul>\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>Data Science vs AI &#038; Machine Learning MDS@Rice The face ID on iPhones&nbsp;uses a deep neural network to help phones recognize human facial features. These enormous data needs used to be the reason why ANN algorithms weren&#8217;t considered to be the optimal solution to all problems in the past. However, for many applications, this need [&hellip;]<\/p>\n","protected":false},"author":1,"featured_media":0,"comment_status":"open","ping_status":"open","sticky":false,"template":"","format":"standard","meta":[],"categories":[49],"tags":[],"yoast_head":"<!-- This site is optimized with the Yoast SEO plugin v20.10 - https:\/\/yoast.com\/wordpress\/plugins\/seo\/ -->\n<title>Whats the difference between AI and ML? Cloud Services - Sewa Scaffolding Palu<\/title>\n<meta name=\"robots\" content=\"index, follow, max-snippet:-1, max-image-preview:large, max-video-preview:-1\" \/>\n<link rel=\"canonical\" href=\"https:\/\/sewascaffoldingpalu.com\/?p=5521\" \/>\n<meta property=\"og:locale\" content=\"en_US\" \/>\n<meta property=\"og:type\" content=\"article\" \/>\n<meta property=\"og:title\" content=\"Whats the difference between AI and ML? Cloud Services - Sewa Scaffolding Palu\" \/>\n<meta property=\"og:description\" content=\"Data Science vs AI &#038; Machine Learning MDS@Rice The face ID on iPhones&nbsp;uses a deep neural network to help phones recognize human facial features. These enormous data needs used to be the reason why ANN algorithms weren&#8217;t considered to be the optimal solution to all problems in the past. However, for many applications, this need [&hellip;]\" \/>\n<meta property=\"og:url\" content=\"https:\/\/sewascaffoldingpalu.com\/?p=5521\" \/>\n<meta property=\"og:site_name\" content=\"Sewa Scaffolding Palu\" \/>\n<meta property=\"article:published_time\" content=\"2023-10-02T17:36:05+00:00\" \/>\n<meta property=\"article:modified_time\" content=\"2023-12-24T09:29:31+00:00\" \/>\n<meta name=\"author\" content=\"bumipalu\" \/>\n<meta name=\"twitter:card\" content=\"summary_large_image\" \/>\n<meta name=\"twitter:label1\" content=\"Written by\" \/>\n\t<meta name=\"twitter:data1\" content=\"bumipalu\" \/>\n\t<meta name=\"twitter:label2\" content=\"Est. reading time\" \/>\n\t<meta name=\"twitter:data2\" content=\"9 minutes\" \/>\n<script type=\"application\/ld+json\" class=\"yoast-schema-graph\">{\"@context\":\"https:\/\/schema.org\",\"@graph\":[{\"@type\":\"WebPage\",\"@id\":\"https:\/\/sewascaffoldingpalu.com\/?p=5521\",\"url\":\"https:\/\/sewascaffoldingpalu.com\/?p=5521\",\"name\":\"Whats the difference between AI and ML? Cloud Services - Sewa Scaffolding Palu\",\"isPartOf\":{\"@id\":\"https:\/\/sewascaffoldingpalu.com\/#website\"},\"datePublished\":\"2023-10-02T17:36:05+00:00\",\"dateModified\":\"2023-12-24T09:29:31+00:00\",\"author\":{\"@id\":\"https:\/\/sewascaffoldingpalu.com\/#\/schema\/person\/7a118539aae8f5996bdd9ade1694d98e\"},\"breadcrumb\":{\"@id\":\"https:\/\/sewascaffoldingpalu.com\/?p=5521#breadcrumb\"},\"inLanguage\":\"en-US\",\"potentialAction\":[{\"@type\":\"ReadAction\",\"target\":[\"https:\/\/sewascaffoldingpalu.com\/?p=5521\"]}]},{\"@type\":\"BreadcrumbList\",\"@id\":\"https:\/\/sewascaffoldingpalu.com\/?p=5521#breadcrumb\",\"itemListElement\":[{\"@type\":\"ListItem\",\"position\":1,\"name\":\"Home\",\"item\":\"https:\/\/sewascaffoldingpalu.com\/\"},{\"@type\":\"ListItem\",\"position\":2,\"name\":\"Whats the difference between AI and ML? Cloud Services\"}]},{\"@type\":\"WebSite\",\"@id\":\"https:\/\/sewascaffoldingpalu.com\/#website\",\"url\":\"https:\/\/sewascaffoldingpalu.com\/\",\"name\":\"Sewa Scaffolding Palu\",\"description\":\"Bumi Mandiri Scaffolding\",\"potentialAction\":[{\"@type\":\"SearchAction\",\"target\":{\"@type\":\"EntryPoint\",\"urlTemplate\":\"https:\/\/sewascaffoldingpalu.com\/?s={search_term_string}\"},\"query-input\":\"required name=search_term_string\"}],\"inLanguage\":\"en-US\"},{\"@type\":\"Person\",\"@id\":\"https:\/\/sewascaffoldingpalu.com\/#\/schema\/person\/7a118539aae8f5996bdd9ade1694d98e\",\"name\":\"bumipalu\",\"image\":{\"@type\":\"ImageObject\",\"inLanguage\":\"en-US\",\"@id\":\"https:\/\/sewascaffoldingpalu.com\/#\/schema\/person\/image\/\",\"url\":\"https:\/\/secure.gravatar.com\/avatar\/d6485be43f375eaca30e73a971ad28dd?s=96&d=mm&r=g\",\"contentUrl\":\"https:\/\/secure.gravatar.com\/avatar\/d6485be43f375eaca30e73a971ad28dd?s=96&d=mm&r=g\",\"caption\":\"bumipalu\"},\"sameAs\":[\"http:\/\/sewascaffoldingpalu.com\"],\"url\":\"https:\/\/sewascaffoldingpalu.com\/?author=1\"}]}<\/script>\n<!-- \/ Yoast SEO plugin. -->","yoast_head_json":{"title":"Whats the difference between AI and ML? Cloud Services - Sewa Scaffolding Palu","robots":{"index":"index","follow":"follow","max-snippet":"max-snippet:-1","max-image-preview":"max-image-preview:large","max-video-preview":"max-video-preview:-1"},"canonical":"https:\/\/sewascaffoldingpalu.com\/?p=5521","og_locale":"en_US","og_type":"article","og_title":"Whats the difference between AI and ML? Cloud Services - Sewa Scaffolding Palu","og_description":"Data Science vs AI &#038; Machine Learning MDS@Rice The face ID on iPhones&nbsp;uses a deep neural network to help phones recognize human facial features. These enormous data needs used to be the reason why ANN algorithms weren&#8217;t considered to be the optimal solution to all problems in the past. However, for many applications, this need [&hellip;]","og_url":"https:\/\/sewascaffoldingpalu.com\/?p=5521","og_site_name":"Sewa Scaffolding Palu","article_published_time":"2023-10-02T17:36:05+00:00","article_modified_time":"2023-12-24T09:29:31+00:00","author":"bumipalu","twitter_card":"summary_large_image","twitter_misc":{"Written by":"bumipalu","Est. reading time":"9 minutes"},"schema":{"@context":"https:\/\/schema.org","@graph":[{"@type":"WebPage","@id":"https:\/\/sewascaffoldingpalu.com\/?p=5521","url":"https:\/\/sewascaffoldingpalu.com\/?p=5521","name":"Whats the difference between AI and ML? Cloud Services - Sewa Scaffolding Palu","isPartOf":{"@id":"https:\/\/sewascaffoldingpalu.com\/#website"},"datePublished":"2023-10-02T17:36:05+00:00","dateModified":"2023-12-24T09:29:31+00:00","author":{"@id":"https:\/\/sewascaffoldingpalu.com\/#\/schema\/person\/7a118539aae8f5996bdd9ade1694d98e"},"breadcrumb":{"@id":"https:\/\/sewascaffoldingpalu.com\/?p=5521#breadcrumb"},"inLanguage":"en-US","potentialAction":[{"@type":"ReadAction","target":["https:\/\/sewascaffoldingpalu.com\/?p=5521"]}]},{"@type":"BreadcrumbList","@id":"https:\/\/sewascaffoldingpalu.com\/?p=5521#breadcrumb","itemListElement":[{"@type":"ListItem","position":1,"name":"Home","item":"https:\/\/sewascaffoldingpalu.com\/"},{"@type":"ListItem","position":2,"name":"Whats the difference between AI and ML? Cloud Services"}]},{"@type":"WebSite","@id":"https:\/\/sewascaffoldingpalu.com\/#website","url":"https:\/\/sewascaffoldingpalu.com\/","name":"Sewa Scaffolding Palu","description":"Bumi Mandiri Scaffolding","potentialAction":[{"@type":"SearchAction","target":{"@type":"EntryPoint","urlTemplate":"https:\/\/sewascaffoldingpalu.com\/?s={search_term_string}"},"query-input":"required name=search_term_string"}],"inLanguage":"en-US"},{"@type":"Person","@id":"https:\/\/sewascaffoldingpalu.com\/#\/schema\/person\/7a118539aae8f5996bdd9ade1694d98e","name":"bumipalu","image":{"@type":"ImageObject","inLanguage":"en-US","@id":"https:\/\/sewascaffoldingpalu.com\/#\/schema\/person\/image\/","url":"https:\/\/secure.gravatar.com\/avatar\/d6485be43f375eaca30e73a971ad28dd?s=96&d=mm&r=g","contentUrl":"https:\/\/secure.gravatar.com\/avatar\/d6485be43f375eaca30e73a971ad28dd?s=96&d=mm&r=g","caption":"bumipalu"},"sameAs":["http:\/\/sewascaffoldingpalu.com"],"url":"https:\/\/sewascaffoldingpalu.com\/?author=1"}]}},"_links":{"self":[{"href":"https:\/\/sewascaffoldingpalu.com\/index.php?rest_route=\/wp\/v2\/posts\/5521"}],"collection":[{"href":"https:\/\/sewascaffoldingpalu.com\/index.php?rest_route=\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/sewascaffoldingpalu.com\/index.php?rest_route=\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/sewascaffoldingpalu.com\/index.php?rest_route=\/wp\/v2\/users\/1"}],"replies":[{"embeddable":true,"href":"https:\/\/sewascaffoldingpalu.com\/index.php?rest_route=%2Fwp%2Fv2%2Fcomments&post=5521"}],"version-history":[{"count":1,"href":"https:\/\/sewascaffoldingpalu.com\/index.php?rest_route=\/wp\/v2\/posts\/5521\/revisions"}],"predecessor-version":[{"id":5522,"href":"https:\/\/sewascaffoldingpalu.com\/index.php?rest_route=\/wp\/v2\/posts\/5521\/revisions\/5522"}],"wp:attachment":[{"href":"https:\/\/sewascaffoldingpalu.com\/index.php?rest_route=%2Fwp%2Fv2%2Fmedia&parent=5521"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/sewascaffoldingpalu.com\/index.php?rest_route=%2Fwp%2Fv2%2Fcategories&post=5521"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/sewascaffoldingpalu.com\/index.php?rest_route=%2Fwp%2Fv2%2Ftags&post=5521"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}