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		<title>Making Machine Learning Accessible: 3 Ways Entrepreneurs Can Apply It Today</title>
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				<category><![CDATA[Deep Learning]]></category>
		<category><![CDATA[Machine Learning]]></category>
		<category><![CDATA[advance technological]]></category>
		<category><![CDATA[deep learning]]></category>
		<category><![CDATA[Entrepreneurs]]></category>
		<category><![CDATA[Machine learning]]></category>
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					<description><![CDATA[<p>Source &#8211; entrepreneur.com Machine learning isn&#8217;t new to the enterprise, but technological advances and accelerating investments have made it available to the average entrepreneur. In fact, according to a <a class="read-more-link" href="https://www.aiuniverse.xyz/making-machine-learning-accessible-3-ways-entrepreneurs-can-apply-it-today/">Read More</a></p>
<p>The post <a href="https://www.aiuniverse.xyz/making-machine-learning-accessible-3-ways-entrepreneurs-can-apply-it-today/">Making Machine Learning Accessible: 3 Ways Entrepreneurs Can Apply It Today</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
]]></description>
										<content:encoded><![CDATA[<p>Source &#8211;<strong> entrepreneur.com</strong></p>
<p>Machine learning isn&#8217;t new to the enterprise, but technological advances and accelerating investments have made it available to the average entrepreneur.</p>
<p>In fact, according to a recent Forrester survey, machine-learning investments are increasing 300 percent this year compared to last year. Already, machine learning has made its mark in areas like self-driving cars, personalized-content recommendations and even face-recognition filters.</p>
<p>Clearly, though, machine learning can do much more than suggest content and steer cars. In fact, a category of it called &#8220;deep learning&#8221; promises to completely change how we market, produce and sell products.</p>
<p>Unlike traditional models, which require specific rules and feature sets to extract meaning from data, deep learning models<i> </i>autonomously draw conclusions and create their own classification rules from unstructured data.</p>
<p>That last phrase &#8212; <i>unstructured data</i> &#8212; is more important than it appears. In contrast to <i>structured </i>data, such as organized charts and tables, unstructured data includes &#8220;everyday&#8221; data, such as pictures and sounds, which is much more difficult for computers to analyze. For artificial intelligence, tackling unstructured information is a big breakthrough.</p>
<h2><b>Digging into deep learning</b></h2>
<p>If you&#8217;re struggling to see how innovative deep learning is, you&#8217;re not alone. To understand it, imagine simultaneously teaching a baby and a computer to recognize cats in photographs.</p>
<p>With traditional machine learning, the computer has to be told which cat features &#8212; whiskers, paws and tails &#8212; to look for in the images. These hand-engineered models then make predictions based on those features. If an image doesn&#8217;t follow the rules, the machine can&#8217;t adapt. If a cat&#8217;s tail is out of the frame, for example, the computer might not even know it&#8217;s a cat.</p>
<p>A baby, on the other hand, needs no such guidance. After viewing enough images, the baby will build a mental framework to distinguish what is or isn&#8217;t a cat. Deep learning, like the baby, takes unstructured input without guidance and determines for itself, while considering all pixel values, which among the images contains a cat. Given enough time and data, deep learning models can make sense of virtually any unstructured data set.</p>
<p>So, how has such an incredible tool flown under entrepreneurs&#8217; radar? Well, deep learning has only become commercially viable in the past decade. Conceived not long after the dawn of AI in the 1950s, early neural networks could simulate just a few neurons at once. Although deep learning was revived several times throughout the &#8217;70s and &#8217;80s, we simply didn&#8217;t have the data or processing power to make it work until the mid-2000s.</p>
<p>Now, thanks to the 2.5 quintillion bytes produced per day &#8212; much of it publicly available via Google and YouTube &#8212; and massive improvements in cloud computing technology, deep learning isn&#8217;t just viable &#8212; it&#8217;s inevitable, and it&#8217;s profitable.</p>
<h2><b>Deep learning at work</b></h2>
<p>We&#8217;re sure to see more deep learning applications crop up as the technology improves, but today&#8217;s entrepreneurs can leverage it in three ways, to:</p>
<p><b>1. Find and reach new customers. </b>No matter how much they might need it, people can&#8217;t buy a product that they don&#8217;t know about. A life insurance company, for example, probably won&#8217;t make many sales if it markets to students instead of seniors.</p>
<p>Deep learning, however, can help entrepreneurs target the right markets. Facebook, Google and Twitter all use deep-learning-infused ad platforms, which businesses use to extrapolate valuable, relevant look-alike audiences from seed audiences. In fact, B2B spending on social media advertisements has grown by 130 percent in the past two years.</p>
<p>Of course, finding a market is only step one; the next step is actually reaching it. Again, deep learning can help. Companies such as Octane AI use it to power their chatbots, which have come a long way from annoying assistants like Microsoft Word&#8217;s Clippy. Today, they can autonomously grow audiences and engage customers with personalized experiences.</p>
<p><b>2. Organize data and fill gaps. </b>Missing data is a major problem for most businesses. A recent Openprise study found that 41 percent of surveyed B2B marketers considered missing contacts their data&#8217;s greatest shortcoming. Another 39 percent cited missing field values as the biggest problem.</p>
<p>Fortunately, as they&#8217;re fed data, deep-learning models get smarter about what&#8217;s captured and what&#8217;s conspicuously missing. Then, after identifying missing data, deep learners can track it down.</p>
<p>Node, a startup founded by a former colleague of mine, is already doing this on a grand scale. It uses a four-pronged approach, including data crawling, natural language processing, machine learning and artificial intelligence, to help business leaders optimize prospect data and sell more efficiently.</p>
<p><b>3. Perform quality analysis and control. </b>A friend at Qualcomm recently described to me the tedium of checking every chip they produce for defects. That&#8217;s a perfect problem, I reminded her, for deep learning. Everything from manufacturing to construction to consumer electronics can benefit from automated product defect analysis.</p>
<p>At Skycatch, for example, we&#8217;ve built a deep-learning model that guides drones to inspect structures such as cell towers. When it finds a flaw, it tips off human inspectors. The data is then reingested, continuously improving the deep neural network. Thanks to deep learning, we can automatically identify job-site changes, track heavy equipment and log productivity for each worker and machine on site.</p>
<p>Training such a model does takes enormous amounts of data and processing power, but entrepreneurs can get started with Google&#8217;s Cloud TPU Alpha program. In short, tensor processing units are high-performance cloud computers designed specially for machine learning applications.</p>
<p>What makes machine learning so exciting, if it&#8217;s not clear already, is that it&#8217;s a foundational technology. Much like the computer and the internal combustion engine, machine learning can be applied to an enormous variety of problem domains.</p>
<p>But that&#8217;s a double-edged sword. As it matures, machine learning will be applied in more and more contexts &#8212; some valid, some not. Only by learning the basics today and seeing past the hype can entrepreneurs make machine learning their next revenue machine.</p>
<p>The post <a href="https://www.aiuniverse.xyz/making-machine-learning-accessible-3-ways-entrepreneurs-can-apply-it-today/">Making Machine Learning Accessible: 3 Ways Entrepreneurs Can Apply It Today</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
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