{"id":1307,"date":"2023-08-25T14:46:30","date_gmt":"2023-08-25T11:46:30","guid":{"rendered":"http:\/\/www.klcbilgisayar.com\/vurgun1\/?p=1307"},"modified":"2023-11-24T17:05:51","modified_gmt":"2023-11-24T14:05:51","slug":"artificial-intelligence-vs-machine-learning-vs","status":"publish","type":"post","link":"http:\/\/www.klcbilgisayar.com\/vurgun1\/artificial-intelligence-vs-machine-learning-vs.html","title":{"rendered":"Artificial Intelligence vs  Machine Learning vs. Deep Learning"},"content":{"rendered":"<p><h1>Difference between AI, ML and DL<\/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=\"304px\" alt=\"ai and ml difference\"\/><\/p>\n<p><p>It scans the image for recognizable features and characteristics  and searches the internet for a match, eventually driving the searcher to the exact pair of shoes. Your AI must be trustworthy because anything less means risking damage to a company\u2019s reputation and bringing regulatory fines. Misleading models and those containing bias or that hallucinate can come at a high cost to customers\u2019 privacy, data rights and trust.<\/p>\n<\/p>\n<p><p>There is a close connection between AI and machine learning \u2013 the rapid evolution of AI technology is partly due to groundbreaking development in ML. Now that we have a fair understanding of AI and ML, let\u2019s compare these two terms and have a detailed look at the key differences between them. We can identify humans in pictures and videos, and AI has also gained that capability. We never expect a human to have four wheels and emit carbon like a car. Yet an AI system couldn&#8217;t surmise this unless trained on enough data.<\/p>\n<\/p>\n<p><h2>Data Requirements<\/h2>\n<\/p>\n<p><p>Machine learning is when computers sort through data sets (like numbers, photos, text, etc.) to learn about certain things and make predictions. The more data it has, the better and more accurate it gets at identifying distinctions in data. A third category of machine learning is reinforcement learning, where a computer learns by interacting with its surroundings and getting feedback (rewards or penalties) for its actions.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' 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\" width=\"300px\" alt=\"ai and ml difference\"\/><\/p>\n<p><p>Maybe you\u2019ve played with Dall-E or chat GPT 4, these are all examples of Generative AI. Artificial intelligence, the broadest term of the three, is used to classify machines that mimic human intelligence and human cognitive functions like problem-solving and learning. AI uses predictions and automation to optimize and solve complex tasks that humans have historically done, such as facial and speech recognition, decision making and translation. Today, artificial intelligence is at the heart of many technologies we use, including smart devices and voice assistants such as Siri on Apple devices. AI is a computer algorithm that exhibits intelligence via decision-making. ML is an algorithm of AI that assists systems to learn from different types of datasets.<\/p>\n<\/p>\n<p><h2>Features<\/h2>\n<\/p>\n<p><p>The insights we provide regarding AI vs. ML vs. DL applications connect directly to the work we perform for our clients. Although often discussed together, AI and machine learning are two different things and can have two separate applications. Here\u2019s everything you need to know about the difference between artificial intelligence and machine learning and how it relates to your business. ANI is considered \u201cweak\u201d AI, whereas the other two types are classified as \u201cstrong\u201d AI. We define weak AI by its ability to complete a specific task, like winning a chess game or identifying a particular individual in a series of photos.<\/p>\n<\/p>\n<p><p>To learn more about how a graduate degree can accelerate your career in artificial intelligence, explore our MS in AI and MS in Computer Science program pages, or download the free guide below. AI and ML, which were once the topics of science fiction decades ago, are becoming commonplace in businesses today. And while these technologies are closely related, the differences between them are important. They report that their top challenges with these technologies include a lack of skills, difficulty understanding AI use cases, and concerns with data scope or quality. These technologies help companies to make huge cost savings by eliminating human workers from these tasks and allowing them to move to more urgent ones.<\/p>\n<\/p>\n<p><h2>Machine Learning VS Artificial Intelligence \u2013 The Key Differences!<\/h2>\n<\/p>\n<p><p>Unsupervised learning algorithms employ unlabeled data to discover patterns from the data on their own. The systems are able to identify hidden features from the input data provided. Once the data is more readable, the patterns and similarities become more evident.<\/p>\n<\/p>\n<p><p>Based on all the parameters involved in laying out the difference between AI and ML, we can conclude that AI has a wider range of scope than ML. AI is a result-oriented branch with a pre-installed intelligence system. However, we cannot deny that AI is hollow without the learnings of ML. Here is a blog for you to learn the different factors and capabilities of AI and ML that might convince you to integrate both in your business. I agree to the processing of my data by DAC.digital S.A, Gda\u0144sk, Poland.<\/p>\n<\/p>\n<p><p>There are various ways in which Artificial Intelligence can emulate human intelligence. One of the ways to do this is through Machine Learning, but it is not the only alternative. Say someone is out in public and sees someone wearing a pair of shoes they like. They can\u2019t identify a brand name, so they take a picture of the shoe using Google Lens.<\/p>\n<\/p>\n<p><p>Machine learning algorithms typically require structured data and relatively smaller data than deep learning algorithms. On the other hand, deep learning requires large amounts of unstructured data and is particularly effective at processing complex data such as images, audio, and text. Artificial Intelligence (AI) is a broad concept that involves creating machines that can think and act like humans.<\/p>\n<\/p>\n<p><p>ML provides a way to find a new path or algorithm from data-based experience. It is the study <a href=\"https:\/\/www.metadialog.com\/blog\/ai-vs-ml\/\">of the<\/a> technique that extracts data automatically to make business decisions more carefully. Although ML is just a subset of AI, ML got discovered earlier than AI.<\/p>\n<\/p>\n<ul>\n<li>Although these terms might be closely related there are differences between them see the image below to visualize it.<\/li>\n<li>The ability to automate posting, content generation, and even ideation makes for a more agile startup that can resourcefully allocate its human resources.<\/li>\n<li>If your business is looking into leveraging machine learning, it\u2019s not a question of either or because machine learning can\u2019t exist without AI.<\/li>\n<li>Modern AI algorithms can learn from historical data, which makes them usable for an array of applications, such as robotics, self-driving cars, power grid optimization and natural language understanding (NLU).<\/li>\n<li>To reduce the dimensionality of data and gain more insight into its nature, machine learning uses methods such as principal component analysis and tSNE.<\/li>\n<\/ul>\n<p><p>In other words, ML is a way of building intelligent systems by training them on large datasets instead of coding them with a set of rules. By training on data, ML algorithms can identify patterns and relationships in the data and use that knowledge to make <a href=\"https:\/\/www.metadialog.com\/blog\/ai-vs-ml\/\">decisions or<\/a> predictions. AI is a broad scientific field working on automating business processes and making machines work like humans. Areas like machine learning (which are AI branches) are pushing data science into the next automation level. Machine Learning focuses on developing systems that can learn from data and make predictions about future outcomes.<\/p>\n<\/p>\n<p><h2>AI vs. machine learning and deep learning<\/h2>\n<\/p>\n<p><p>Then, we see that most of the training data include objects in full daylight, and now can add a few nighttime pics and get back to learning. While AI implements models to predict future events and makes use of algorithms. The main difference lies in the fact that data science covers the whole spectrum of data processing. ML makes programming more scalable and helps us to produce better results in shorter durations.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' 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vuNfdW+jlvj8Hz\/wCfAxk9\/Q5SZWCBohjBliy1TMPo2JyeHleBXdHdY2PdlksefU6cft8j9Wyk4pj+bVDgLaWyRA7bfnNKr\/Zr+LSNnCtbGluufJS5p+Bj1CbpljquZj3t9Dln7fo\/0zLG9P2\/7u7qeLQUtta3Y8TNRq9Nfq09XF9348zkOTTGm2YfQ3Najo8TejVj+iP2X0XMjw\/29N8JNGCTeTpcPhs0seXvNyNR8z9Tv9mS\/uvUScYAkXVxyLXwdOXxyG3RQf7xfJnDR6HtFHHD63+9XyZ51HbC7jtx\/FNEiKKtQ8bTTpJtpAhX+jj8CQQmRZJkGANkcgxBRkMiEBPIZI5DIE8jTIZHkInkeSCY8kFqGCGd2QJjEyKiyLJsiyKgA8BgAGWKCisvqQm\/LkYuUamFKWW1FcvFkkklhFcZ8+ZaIt8AaEMLEkMiSRG4Zu0KzB\/EwnS4ZHdVL7X9jpxfJw6j7bRt5GbU0udcorq1yOkq+RCdR3ym3gxyuN3HlJ43NPk11XkRcuXU9JZpKbH9ZVCT6ZceY6eG6WMHBUQcX1ys\/wAWeW8en1cOtmX4cfh1U9ZaqYcn1lLwij2WkqhRTCqtYjFYRl0elp08NtNcYJvLx4nQricsno77msUie4SiPaZVGUjl8V0j1NanX+lh7vqvI6ckUzRGscrjdx5mNnPbJNS8sEnZGPJvD8jvyiU2QXVroTte7+Ov+Lm0wk\/bksLwT6stZbNFMjcmnyOr5MuXLuyVyZAlIRvT518FgzKpVScMeq+Bsil5knVGxYfXwZmzb09L1P0c\/Pque4KXVEZxSjyN\/wBAslLlOOPgKzhk5LlbH\/5MafX\/AI7h\/wAnMqhK66Na\/wBz\/JHbjFRiopYSWEVaXQw02ZZ3TfJy\/sacDT5XV9TObKdvqEkaKkVRRfWYseXbm9pljhtf3q+TPMo9R2n\/APGV\/fL5M8ujvx\/F14\/ikiN0d0PgW1wzzZOUM+Bblp2k\/KuPurHkMSjsXLIKWeRZlKlx0GRZJkWVEWRJMRREB4DBAhhgeAEMeB4ASJCSJYIi1EhIkd2YQmSDBFQaItFjRHBGkMFlcOW5\/gJRy8E5ySWF0MZVrGIyZTNknIrZz06I+JfB5iUdC2l5yjcZy9LAGBWYBiGRuGdng0c6eT\/bfyRxju8CWdLP7b+SOnF8nHqPtugo8iq3kamuRluO9eCTahvmWQKfEuhhLLeEurOeV8NcfjLTXUzZUYaXmKeGs+DNtTPLk+rxXw0xQ2hQZJs5vQpmUSLrGZ5MCLKrOhZ1eEm36GXVW9w13iaTe3nywyXKT2mVmM3VNrMs5l1ktyz0fkYrWzeGUym482dmc3DlYhKxGWc2RU3k6PDlPLfGaNFckc2Ema6ZczNY06dfNE5dDE77IX6eEUnGyTUn5csmqcuRC46U2SwVd4iF82ZZWPI0sjfG1F9dqOTGxl8LWZsLB2jnu4fWv3q+TPPVxy8vodnjEnPRwX7xfJnLjHwLvWL0cM8JxXIJPkNdBNZI7k1lFE44ZeQmsoorTygYlyZLB0l252aRwLBPAsFRHAYJ4DAVDA8EsDwEQwPBLA8ARwPA8DwBNEhIkjszBgMDDBGkcCwTwNLxM26jUm0MYRXJFzXIg0cLXWM8iD6l8o5K5RLKqrPMsrltl6MrksMEzUZrYBCmW6OPFFhtzIBgRqA9B2fWdHP7x\/JHnz0vZuOdFP71\/JHTi+Tj1P23RceRlurZ01XlEJafc8JHXO6ebCbc3T6XvJOUuUI9X\/Qo1VqqsioJbU+a8zpavfVUq4L2VzfqzhamXt5kvxPm5ctzy8Xw+hx8Mxx8zy7FbUoqS6NZNFbMnD5K3TJJ848ma4xwd7NzbGF7bpojIbkVxJM417cbtCbM82XzRXXVK66Ncesn18iemmjhdTnZK3HKPJEu0Gh+k6JuuK7yL3LC6\/8AEdOmqFNUa61yX8QnByTT6HzM8sssrlHDOTLxXgtLNys2yfNrDyRshk6nEOF2V6\/vKYNwk23jw8WZu6yfQ6WzKWx49XCWVzJUtkVS\/I6v0fPgD0+PA9djz3Nz41NGrTUyssUYrmy3uTo8O06j7UuTZ5+XPsx21xzvy0lPQQUK1nE08p+pjm5RslXNYa6ep2LcNpnN18cyjJcpLxPJhy2Xdr1Z8cs059sG2UOlvwOlGCsipLxJKheR7t7ePevDmRoZdClnQWnXkWRo9Anc4fFq9ukg\/wBtfJnLij0HaGvZoIP96vkzz0SPXw\/FPJFg+osh2BGXQkJ80EUtcxxfgDI5w8msalm4sDAx4OjmjgMEsDwERwGCWAwAsBglgMALAYJYDADRJCRJHZIB4AZGiwPwAZzz9N4+0SE15Fnihy5nLTozNcyEkWyRWyCiaIxLZIrXU3BbR7\/4Ggo06zLPoaDc9MX2QDAEI9T2WjnQWfev5I8uer7Jr\/L7Pvn8kdOL5OPU\/bd2EORYq+vwJQRPwLzS5Y2Rx4fFlYdZp33e9Lkzz\/EKFKDaR6XUW+xKPQ4Gul9W1FZb5Hx54vh9Tfhn4Ju+k48HFpnc2GLgujlVGV01hyWIo6u0+jhvt8vNl5y2o2g0XuJXJYOWT04M9sowg5TkoxXVsr4brqp6\/u4qWdjak1hGPVKepubeVXH3V5+pjtuWgsq1Kbk63navFPqvyPLnnc944uOXUf1anp7HviTuyjkabX06qqN2nsU4PxXh6PyZoWoSXM+bc8sfDvZL5aJtOWThxqXguRr1Gtgpd3GWZy8F4IUYcsn0+gwymNyv5cOabUKoUqjVtIyifRrwZcflicFk10NR5+SM+q+rq3+TRnWq5Yb6ny+q33x6unxkxdJyy+TM2s91LxM30xxn1zy5ILdT3i59TjjPDtT0j+slDz5nQhXk5uizLVR+DbO1XE93Dd4PBzzWauNXoWRq9C+MC6NZ1cHm+1UNvDK3++XykeWXQ9h2yjt4TV9+v5ZHjc8iV7+D4JZELOQyR2MTGhSNIrZFkmRZBOHu\/AmV1+9gsOs9OWXsDwMCoMBgeB4AWAwPA8ALAYHgeAEhoSJI7JDABmWgAASzbUITYSI5OF8OqMitk5MrbIK7GVrqTksssqry\/Q3IiyiO2GfMsADoyAAZFI9X2UeOHWffP5I8qem7My28Ps+9fyRvjuq5803jp6OMx94ZO8DvDdrnhgusULPeWShUUQWFWnzzz5hvFuOfbP2dtVZksiUJk4yFWRa+hTYk1hkpT5FMpnHKO2LPPR1Pwx8GU2cOosWJR3L1bNqeSSjk5ab7Mf2cyvhdVX6Fd39jkXLQNvMrZ\/8A0b1EljBuYy+bErJVoq6+aXMucUkTbISZ2kcqgxNDDBpzuKm6lXVTrlyUljPkea1Ku0t3dXrbLwfhJeaPWYK7qar4bLq42R8pLJzz45kSaeVqtbfOWTSppLr1Ow+F6Hw00F8MolVo9PQ81VRT83zf8TjlwbS5aV8P08oJ2TWJS8H4I6tSM8FzNVZqYzGajxcltu6vii2KKossjIsZxcHtvy4PT\/7C\/lkeHbye27cS\/wAnp\/8AYj\/LI8LuJfb3cPxWZwJS5kcizzJp1W7g3FWR5KhsiwACVfvouRTUsz+BejePpzy9mMSGaZAwGAYHgBgLAYGAVEZEZ1SJAICNGAgyRoyEo56MlkRLJViuUJYeMZFGt7fa5MtFknbDaHdR8SaSSwgAugAAAMAAKD0PZ+WNDP7x\/JHnjvcC\/wBFP7x\/JDH2WbjrqZJSKMkos2ki9MkiuLJoipBuEJgKUypyyyUiGOZzyjpiurL4oorNEWcdOpsrlIlJlUmdMYxlQ5EcgB2kcgSQkMIAYxMCDENiQ0zYlEugypFkTnlHm5MV8WTUiuKLEjm8nnbz\/baX+T1ffr+WR4fJ7btzy4NT\/wCxH+WR4ZMsj6HB8EtzGnkgNF07JjRFEsk0GIWSdcd79CaN6WVLEc+ZYhIkjo5U0MSJIIBgMAABhQAAVVYCyGToSJBkjkMkaSyLIsgRTyGRAAxAIKYCABjEBAxiABnf4Cv+xn94\/kjz56Ls\/wD6Cf3r+SE9q3SCLHNCiuZq0kXQLUQriXRiZuTUxLAmizaG0ncvapcSO0vcSDiS5NTFGPIsUip8gTObS1vJmqvdmpvqcMKpxWc+9lZLd8EsuyC+MkU0zpjqNRKWopjulHGZrn7KOm5GLjlfwvwAVzha33c1JLx54HJNPmbll9MXG4+4Q0RJIrJiYyEmURYITY0VE4l0CmJbBmbHPKbaK0XqBVWaYHKx57j5ec7a1xlwepSWV36\/lkeBnppR5w5ry8T6H22X+T1ffr+WR4c1J4enjmsWDu7P1JfkCU\/1JfkbwGm2HL8U\/wAiSUpdE3+BsETRtTGl9Z\/ki1LCwhgVmmhiQ0RlJDQhoIYxAAxiAqmAAFUZHkiGTbWkshkiBFSAQBTAQAMAAAAAABiABgICBnpOznPh9n3r+SPNHp+zKzw+z71\/JBXQcRwr5lygWRgYyydMYjCBcohFYJZOVrpIWCLJOSK5TG2tBkJMjKZU5gSkzi6py4hqZ1ObhRB4wvF+Z1t2WeZdzhbPDeVNkzuo9HTTeVr0Wh4ToaYLbGNsk8uTxnJp+gaaNjs7mEbG87lyeTg06x1PcpNZeSeq4rOVmOeOqbeCTlx\/Z2+nncvbtqFcOUrFHHTmUfSq1OcHNdN3XkjzlmttnZmc3z5NPwIW6rbRKSeG01j0Jc\/O8Wr00svdXrMjTKa5Pu4Z67VkluPa+IsbISkRciDkVE8jTKtxJMouiy2DKIssiyJWyuRqrZgrkaq5HLJ58nI7av8Ayer79fyyPDntu2bzwir79fyyPElnp24\/OIAAK2BDEADEMIBiGRmmhiGRkxiABjEADAQBVAAI26GMQBTAQwGAhkAMQAMAAAAAKAAEAHqey\/8A46z71\/JHlj0vZqWOH2L96\/kjNant3lgkmZ+8DvTlXWVo3EXMzuwi7CaXa+VhVKwqcyDkNHcnKZHdkryNM3IzcliZ5nikJabiFsf9tntR+D6\/xyejUjBxjR\/TNNmtfXV84+vmhnj3R04OXsz3XJhqMxw+bwVWWOaTk\/Qy124ysknNNHl7dV9WZT3Fjlz6+JPT1\/StVTRjMZS9r4dX\/AzSnzOt2epblZq5LljZB+fm\/l\/E3hjuuPPzduFeg3BuKtwtx69vj6WORFyK3Ii5DZpbuJKRRuGpl2aa4yLFIywkWqRWa0xnhmmqw5u\/BdXac8nn5GbtfLdwmr79fyyPHHqe09m7hla\/fL5SPLDH03w\/EgADbsBDEEMAAgBiGGaYxARmmMQyMgAABgABWcBiNuwAAAYCGAwACBgAFDAAIAAAAEMRQHf4BLbop\/eP5I4B2uCvGkn94\/kjOXpY7HeB3hn3BuMNr94nMp3DyBZuE2QyGQJZDJDIZAs3C3EMhkbRj1XCtJqZuxxlXZLm5QeM\/h0M\/wDgOn8b7s\/h\/Y6eQyPDczynqsVXB9FXhzhK2S8Zy6\/h0Nywkkkkl0S8COQyEtt9pZDcQyGQhtkWxNkWwG5DUitsE+ZZUaq5FqfIzVsuT5HWMU5SwKNuGQmyiU8Gco48k3EOO2b9DBfvF8mcA6vFJ7tLFftr5M5JnD0cM1iAADbsQAMAAACAYARKYAMjNAxDIyBgAAAwAzgMRt2IAAAAAAYxDIGAAFMAAAAAAAAAEdfhDxpZfbfyRyTq8K\/00vtv5Il9LHQyPJDI0zDSWR5L6dDqb61ZXXmMs7cyScsdcJvmOnQam+uNldacZNqLc0svy5sDPkZfVodTapuNeFCWyTlJRw\/Lmya0jr0+sd8JRto2YTfTLw\/4AZQL56LU10u2deIpJvmspPo2uqK6NPbqHJVRztWZNtJJerYEBZNC0GqldKlVPfGO5rcunnnOMClodTG+FPd5nYsxw001556AUCNer0b03DoWzWLZTksqSkmkuXQ4ul0XEtZWrKN7jKW2Llao7n5LLWfwPTwdN9WW3KTX7uXJy9lk1tvEYdLouJatSdW\/EZ9299qh7X6vNrn6F60molwxSSveseten2bnn3M4x8T0XoNXXfHOdRv\/AErxFPDoWvWS017lOSsjBxjNN5bw0n0Olbw+cdJZqU0oxtcNkpRzhZ5t568sY\/E8fLxXizuG96dsM+\/HbEyLNmn0Nmo0t18ZRSqxhOSW7nz6vl\/UhHQaqdKtjVmLjuS3Lc15pdWjk2xsWSyqmzUWxqpg5zl0SJ2cP1cbqqu53Suz3eySkpY64aeOQghCRep8iD4frI2Qh3Sk7FJwcZxaljrhp9V5FWLFp43uOKpScYyyubXXkdJWKtnIz2SE7clc55NVixm18s0pftHPNmsea18TGZk0YzUAAIrQAAAYAAQwAAGMQyMmhiGRDAaAIAAYVmEMGadEQGIAAAIpjAaABgMgQwAKAAAAAABHV4X\/AKeX238kcs6fDf8ATy+3\/REqxuyPJBMlkyrtcPs01cNJPvdPHY\/re9Tc08\/7fJEbaY36HTZ1FVSVtrzN4yty5o5GSbtnKqFcpZhDLivLPUbTTsah167S6icLa6oy1eYux4T9jH\/9IX6qh16uMZqeIUwi3\/8AptfNnLVs+57nd9Xu37fXGMkcja6dnV6qEvpF1Nmk23QcfdfevPg\/L4+hk4e6tt6nKpWNR7tXN7Hz559fIwZHkbNOxqdRQ5WKNtbzo1Wtiwtyl0SIafUUqjT1SsUXKi2qUv1HJ8mzlgNmmzWqurhUKI312zjZKUu7eUspGThNmkhpdHN3aOM67XK\/6SnKUVuTXdrp0\/iRaymn4mP\/AA6r9ef5r+x7em5uPDG452xw5cMrZcXQqvotu1cXqdFOqWsnY6tSmltb9+E1zzgs03FtFpNNqK4TlZVdrZptyfexqcEt6fXOTl\/4fV+vP81\/YX+H1frz\/Nf2PVeo6a+7XH6fLPw0cKhXpeLbVdCyqu6t97Ho45zn8jqXWVW6LVQjbBSWqdqTeN0cNcvM5NGnhQpbW3u65LD5\/U8k5OW5T\/3h6eLC44SVs0ThLSayiVkK5WRjtc3hPEss1wu071tHEHqYQhXCO6rnvTUcbUvJ+fqcgTOG3TS\/QWKvWxn3saOTxJx3R5ro15eBrlLQx1WkVtlMWt\/eKicu5Ta9n4Z8cHKkUzGyx1tXr4aPS6OddukldRqXZKGlWI4x\/HK5Z9SvjVUXqLtNppKGn4dU5vcv90pZx8eaX4HIhqLdLfG6ieyyHuywnjljozDffZKVkpWSbse6eX7zznL8zUrNi\/v\/AFH3uTn96TjabZaNTLMF8TMTlPdEgACAAAAABgAAMBDCGNCGiIaJEUSQQ0MSGRAADCsoDEabIRIRFIaHgCBjEMKYDAgAAAoAAAAAAEdLhz+ol9r+iOadDh\/6CX2v6IlG1MkmQTGmRU0x5IoaIqWSLYEWA9w0yskiKtTGQRMqAAABAAgoABAITGJhEJFUy2RVMDLcYLjfcYLzUZrJOWGKNhG0p34ZuM1vqnueCwy6WWZv4GoqAAAAAAABiABjEAQxiQwJIaIokiMpDIjRAxiGBmAYitkMB4IpYGAyKBiGFAwAgAAAAQAAAIAA36B\/Uy+1\/RHPN2heKX9r+wqtqZJMqUiSkQWJjyVqQ9wFmREdw8kUYJJEcjTAmiSIKQ9wEgI7g3AMBbhbgpgLcLcAyLByIuQQmVzJtlU2BnuMF5utZgvfU1Gaw2mVvmzVaZH1NxitehebWv2TaYNB+mf2f6o3lAAhgAAADAQwGAhgMZEYRJDIjRETQ0RQyMpAIYFAABXUDACKBgBAAAEUwAAAQAACAAAWQABZNOls21teoABerV5j75eYAA++XmPvl5gAD75eY++XmAAPvkPvkAEU++XmPvl5gAB36Dv15gANjvl5i75eYAAd8vMXfLzAAF3y8xO5eYABF3IrlagADPZYjHbMALErHazMAG2GnQ\/pn9n+xuACgAAAAAAGAAAxgAAMACAaACJUkNABGTGAAf\/Z\" width=\"309px\" alt=\"ai and ml difference\"\/><\/p>\n<p><p>A. AI and ML are interconnected, with AI being the broader field and ML being a subset. Find out everything you need to know about Machine Learning as a Service and how you can use MLaaS tools for your business. We&#8217;ll help you harness the immense power of Google Cloud to solve your business challenge and transform the way you work.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' 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\" width=\"304px\" alt=\"ai and ml difference\"\/><\/p>\n<p><p>Neural networks are a set of such machine learning methods and a subset of those methods are deep learning neural networks (DLNN). They create algorithms designed to learn patterns and correlations from data, which AI can use to create predictive models that generate insight from data. Data  scientists also use AI as a tool to understand data and inform business decision-making.<\/p>\n<\/p>\n<div style='border: black dashed 1px;padding: 14px;'>\n<h3>Artificial Intelligence (AI) and Machine Learning (ML) for Healthcare &#8230; &#8211; Alvarez &#038; Marsal<\/h3>\n<p>Artificial Intelligence (AI) and Machine Learning (ML) for Healthcare &#8230;.<\/p>\n<p>Posted: Thu, 27 Jul 2023 07:00:00 GMT [<a href='https:\/\/news.google.com\/rss\/articles\/CBMidWh0dHBzOi8vd3d3LmFsdmFyZXphbmRtYXJzYWwuY29tL2luc2lnaHRzL2FydGlmaWNpYWwtaW50ZWxsaWdlbmNlLWFpLWFuZC1tYWNoaW5lLWxlYXJuaW5nLW1sLWhlYWx0aGNhcmUtYXJlLXlvdS1yZWFkedIBAA?oc=5' rel=\"nofollow\">source<\/a>]\n<\/div>\n<p><p>Read more about <a href=\"https:\/\/www.metadialog.com\/\">https:\/\/www.metadialog.com\/<\/a> here.<\/p>\n<\/p>\n<p><a href=\"https:\/\/www.metadialog.com\/\"><\/p>\n<figure><img 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' 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