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	<title>analyze data Archives - Artificial Intelligence</title>
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		<title>Learn how to analyze big data with this training for less than $50</title>
		<link>https://www.aiuniverse.xyz/learn-how-to-analyze-big-data-with-this-training-for-less-than-50/</link>
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		<pubDate>Thu, 30 Jan 2020 06:55:47 +0000</pubDate>
				<category><![CDATA[Big Data]]></category>
		<category><![CDATA[analyze data]]></category>
		<category><![CDATA[Big data]]></category>
		<category><![CDATA[researchers]]></category>
		<category><![CDATA[Skills]]></category>
		<category><![CDATA[training]]></category>
		<guid isPermaLink="false">http://www.aiuniverse.xyz/?p=6460</guid>

					<description><![CDATA[<p>Source: nypost.com Even though big data has taken over the world, it turns out there’s a massive problem afoot in the industry: most data collected by businesses <a class="read-more-link" href="https://www.aiuniverse.xyz/learn-how-to-analyze-big-data-with-this-training-for-less-than-50/">Read More</a></p>
<p>The post <a href="https://www.aiuniverse.xyz/learn-how-to-analyze-big-data-with-this-training-for-less-than-50/">Learn how to analyze big data with this training for less than $50</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
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<p>Source: nypost.com</p>



<p>Even though big data has taken over the world, it turns out there’s a massive problem afoot in the industry: most data collected by businesses isn’t being analyzed. New research found that the issue may be caused by a skills gap and could be costing companies billions of dollars. Yikes.</p>



<p>Most companies understand what big data has to offer, but not many people know what to do with it. And businesses are struggling to find folks who can capitalize on the true value of data. In other words, becoming more well-versed in data analytics can score you some major points in practically any industry. Here’s how you can do it: the Data Analytics Expert Certification Bundle.</p>



<p>This training offers a year’s access to five courses on everything data analytics – from Python and Tableau to Excel and MongoDB. After over 70 lessons and over 40 hours of content, you’ll get the scoop on how to effectively process datasets and walk away with the skill set companies are dying for.</p>



<p>Here’s what to expect from each course:</p>



<p><strong>Introduction to Data Analytics Training Course</strong></p>



<p>Even total beginners can build a foundation in data analytics with the help of this introductory course. You’ll gain insights into applying data and analytics principles in business, learn the complete data analytics lifecycle, and understand the importance of data visualization.</p>



<p><strong>Tableau Certification Training Course</strong></p>



<p>Learn how to build data visualizations, organize data, and design dashboards using the powerful and fast-growing visualization tool Tableau. You’ll tackle statistics, data mapping, and data connections, and ultimately prepare to ace the Tableau Desktop 10 Qualified Associate exam, which will prove to potential employers that you know your stuff.</p>



<p><strong>Data Science with Python Training Course</strong></p>



<p>Learn data science analytics techniques using Python, a popular programming language for building web apps and manipulating data. Through nearly 15 hours of content, you’ll gain knowledge in not only data analysis, but also in&nbsp;machine learning, data visualization, web scraping, and natural language processing.</p>



<p><strong>Business Analytics Certification Training with Excel</strong></p>



<p>You’ve probably worked with Microsoft Excel at some point, but chances are you never dove into all it has to offer. Don’t worry; this three-hour course will show you all its advanced functions and tools, introduce you to Power BI to visualize your data, and teach you to analyze differences among group means in a sample using ANOVA.</p>



<p><strong>MongoDB Developer &amp; Administrator Certification Training</strong></p>



<p>No data science toolbox is complete without MongoDB training. In this course, you’ll learn to install, configure, and maintain a MongoDB environment, explore operational strategies, gain an understanding of NoSQL, data modeling, ingestion, and data replication, and even master writing Java and Node JS applications. Don’t panic if you’ve never heard these terms; after 17 hours of content, you’ll be a master.</p>



<p>Usually these courses would cost you $2,645, but right now, you can score one heck of a deal and get them for just $49.</p>
<p>The post <a href="https://www.aiuniverse.xyz/learn-how-to-analyze-big-data-with-this-training-for-less-than-50/">Learn how to analyze big data with this training for less than $50</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
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		<title>Artificial intelligence extends average life expectancy</title>
		<link>https://www.aiuniverse.xyz/artificial-intelligence-extends-average-life-expectancy/</link>
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		<dc:creator><![CDATA[aiuniverse]]></dc:creator>
		<pubDate>Tue, 10 Dec 2019 08:04:41 +0000</pubDate>
				<category><![CDATA[Artificial Intelligence]]></category>
		<category><![CDATA[analyze data]]></category>
		<category><![CDATA[life expectancy]]></category>
		<guid isPermaLink="false">http://www.aiuniverse.xyz/?p=5551</guid>

					<description><![CDATA[<p>Source: dailysabah.com Artificial Intelligence (AI) offers acceleration in the treatment of patients as it can estimate and analyze data quickly when symptoms occur, according to an expert. <a class="read-more-link" href="https://www.aiuniverse.xyz/artificial-intelligence-extends-average-life-expectancy/">Read More</a></p>
<p>The post <a href="https://www.aiuniverse.xyz/artificial-intelligence-extends-average-life-expectancy/">Artificial intelligence extends average life expectancy</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
]]></description>
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<p>Source: dailysabah.com</p>



<p> Artificial Intelligence (AI) offers acceleration in the treatment of patients as it can estimate and analyze data quickly when symptoms occur, according to an expert.</p>



<p>Misdiagnoses experienced during examinations performed in diagnosis stages of diseases will significantly drop with AI, a social media specialist told Anadolu Agency (AA).</p>



<p>Deniz Ünay said the process will take place when thousands of similar cases with patient history are analyzed in seconds and physician errors will be minimized.</p>



<p>&#8220;According to a study conducted in the U.S., some 20% of medical errors occurred during the initial examination due to insufficient time for patient-physician interviews, and these errors caused wrong treatment processes,&#8221; Ünay said.</p>



<p>&#8220;Considering an estimated annual figure of around 87,000 cases around the world, the fact that artificial intelligence can estimate and analyze data quickly reveals that it can accelerate treatment processes,&#8221; the expert opined.</p>



<p>He said while AI is rapidly becoming available in the software industry, the lack of sufficient data in the field of medicine causes slow progress.</p>



<p>This system with the collection of billions of data can help control groups at risk of illness with preventive measures before people get sick, he said.</p>



<p>With AI predictions, healthy nutrition, vitamin intake and exercise plans, Ünay emphasized, it will open doors to a better quality life, especially in preventing disease and extending average life expectancy in societies. The system is intended to make significant contributions to doctors and patients in stem cell therapy and DNA sequencing methods for treatment processes after diagnosis.</p>



<p>&#8220;In the academic studies, genomics and DNA sequencing studies become more important, especially in cancer cases, and the collected data is treated and prepared for personalized medicine,&#8221; he said.</p>



<p>According to Ünay, the properly processed data will recommend more opportunities for alternative therapy in the process of diagnosis and treatment. He underlined that the choice of the right drugs in prescription treatments, the active ingredients of the drugs and the successful prescribing processes in previous similar cases will lead to rapid analysis and accurate multiple prescribing alternatives. This will allow it to provide sufficient data to the pharmaceutical sector within individual smart drug studies.</p>



<p>Ünay also said artificial intelligence in the field of medicine takes its place among the economic goals of countries.</p>



<p>&#8220;The work of international companies in recent years, primarily in the U.S., Europe and especially in the Asia Pacific region, will reach an economic size of billions of dollars in the near future,&#8221; he asserted.</p>



<p>Stressing that the AI market, which was $1 billion in 2016 in the U.S., is predicted to be $28 billion in 2025. Ünay said the field of artificial intelligence in medicine would take its place by making contributions in universities, international companies, pharmaceutical and medical industries, and examination processes in the next five years.

</p>
<p>The post <a href="https://www.aiuniverse.xyz/artificial-intelligence-extends-average-life-expectancy/">Artificial intelligence extends average life expectancy</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
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		<title>Federated Analytics and the Rebirth of Data Science</title>
		<link>https://www.aiuniverse.xyz/federated-analytics-and-the-rebirth-of-data-science/</link>
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		<dc:creator><![CDATA[aiuniverse]]></dc:creator>
		<pubDate>Sat, 09 Sep 2017 06:57:38 +0000</pubDate>
				<category><![CDATA[Data Science]]></category>
		<category><![CDATA[Deep Learning]]></category>
		<category><![CDATA[analyze data]]></category>
		<category><![CDATA[data analysis]]></category>
		<category><![CDATA[data science]]></category>
		<category><![CDATA[data scientists]]></category>
		<category><![CDATA[deep learning]]></category>
		<category><![CDATA[Federated Analytics]]></category>
		<guid isPermaLink="false">http://www.aiuniverse.xyz/?p=1027</guid>

					<description><![CDATA[<p>Source &#8211; cio.com Until recently, data scientists could design algorithms with the assumption that the data to be explored would be brought together in a single, centralized repository, <a class="read-more-link" href="https://www.aiuniverse.xyz/federated-analytics-and-the-rebirth-of-data-science/">Read More</a></p>
<p>The post <a href="https://www.aiuniverse.xyz/federated-analytics-and-the-rebirth-of-data-science/">Federated Analytics and the Rebirth of Data Science</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
]]></description>
										<content:encoded><![CDATA[<p>Source &#8211; <strong>cio.com</strong></p>
<p>Until recently, data scientists could design algorithms with the assumption that the data to be explored would be brought together in a single, centralized repository, such as a data lake or a cloud data center. But with the explosion of data and the rise of the <em>Internet of Things (IoT)</em>, social media, mobility and other new sources of data, the paradigm is shifting. We can no longer assume that data can all be brought into a single repository for analysis.</p>
<p>In today’s world, data is inherently distributed. With IoT, for example, data is generated and often stored close to sensors or observation points. In many cases, moving this data into a single location before it can be analyzed can be a challenging proposition. And in some cases, data simply cannot be transmitted to a central location because of bandwidth constraints. In other cases, data movement is limited by governance, risk and compliance issues, along with restrictions imposed by security and privacy controls.</p>
<p>So where does that leave us? If we can’t bring data together for analysis, we have to take the analysis to the data. Analytics now needs to happen in many controlled, well-defined and well-secured places — at the edge, in the fog or core, and in the cloud or enterprise data centers. And some of these intermediate results may also need to be fused and analyzed together as well.</p>
<p>Many people are talking about this fundamental change. They get the big picture. However, relatively few people are talking about (1) <em>how</em> data science algorithms will be re-designed to reason and learn in a federated manner; (2) <em>how</em> analytics will be distributed close to where the data is collected; and (3) <em>how</em> the intermediate results will be aggregated and analyzed together to drive higher-order learning at scale. Those are much more challenging problems to solve. And this is where federated analytics enters the picture.</p>
<p><strong>How federated analytics works</strong></p>
<p>Federated analytics allows data scientists to generate analytical insight from the combined information in distributed datasets without requiring all the data to move to a central location, and while minimizing the amount of data movement in the sharing of intermediate results. When required, federated analytics must also respect compliance requirements and preserve privacy. In other words, the intermediate results shared cannot be reverse-engineered into the individual values used for their calculation.</p>
<p>For example, if a location shares the sum of 1,000 real values, it is intractable to infer the individual 1,000 values that led to the sum. In essence, this sum is privacy preserving in and of itself. This is not the case, however, if the values being summed are known to be positive integers and the sum adds up to 1,000, for example. In this case, the individual values could be automatically inferred to be 1 and the sum should not be shared if privacy must be preserved.</p>
<p>Under a federated analytics model, most data is analyzed close to where it is generated. Through analytics, learning happens at the edge, in the fog/core, and in the cloud or enterprise data center, and collective, collaborative learning happens at a global level.</p>
<p>To enable collaboration at scale, federated analytics allows the intermediate results of data analytics to be shared while the raw data remains in its locked-down location. When the shared results are combined and analyzed, a higher order of learning happens, and the owners of the individual datasets have the opportunity to compare their local results against the results of analyzing the combined pool of data.</p>
<p><strong>An example use case</strong></p>
<p>To make this story more tangible, let’s consider an example use case for collaboration under a federated analytics model.</p>
<p>With a focus on value-based outcomes, pharmaceutical companies are developing analytic tools to measure the effectiveness of certain treatments, in near-real-time, against cohorts of individuals around the world. The goal is to help identify common characteristics in patients who demonstrate better response, as well as in patients who have lower response.</p>
<p>Thanks to federated analytics, this global benchmarking can analyze data at the edge, close to where the data is collected and within geographical boundaries defined by regulatory compliance. Only the analytics logic itself and aggregated intermediate results traverse borders to facilitate data analysis across multi-cloud environments. This approach fully respects the privacy, governance, risk and compliance constraints for the data held by individual healthcare providers.</p>
<p>Consider, for example, a simple histogram that provides metrics on the effectiveness of a specific treatment based on the relative decrease in the cholesterol level. The analysis is done over a cohort of patients within a certain age group, with similar diagnostic profiles, and which initiated the treatment on the same day. Every week, the histogram indicates how many patients within the cohort analyzed actually decreased their cholesterol level by less than or equal to 10 points, between 11 and 20 points, between 21 and 30 points, between 31 and 40 points, and by more than 40 points.</p>
<p>Using federated analytics, each one of the thousands of participating clinical trial sites can simply analyze their data locally and share a privacy-preserving histogram of their local results.</p>
<p>This profile consists of a set of five key value pairs that can be represented as follows:</p>
<p>{&lt;Decreased-Less-Than-Or-Equal-to-10&gt;, NumberOfPatients-1&gt;},</p>
<p>{&lt;Decreased-Between-11-20&gt;, NumberOfPatients-2&gt;},</p>
<p>{&lt;Decreased-Between-21-30&gt;, NumberOfPatients-3&gt;},</p>
<p>{&lt;Decreased-Between-31-40&gt;, NumberOfPatients-4&gt;},</p>
<p>{&lt;Decreased-More-Than-40&gt;, NumberOfPatients-5&gt;}</p>
<p>At any location, the intermediate results can then be combined and a global histogram generated.</p>
<p>It is important to note that these intermediate results are privacy-preserving and the individual data for each patient, such as age, individual cholesterol value, and individual historical profile, are not shared and remain within their location. In addition, this approach is capable of reducing any number of entries on each site to simply five key-value pairs, immensely reducing the amount of data shared and the amount of bandwidth utilized.</p>
<p><strong>The path to federated analytics</strong></p>
<p>Federated analytics is the future for organizations that want to gain value from data that is inherently distributed. That we know for sure. But how do you get there? Here are three key steps in moving forward:</p>
<p>1.     Gather a team of data scientists who can help you redesign your algorithms, especially deep learning ones, to work in a federated manner. These bright minds can help you see and approach your analytics in a new way.</p>
<p>2.     Create a metadata layer to serve as the foundation for federated analytics. This layer makes data that is scattered around the world locatable, accessible and useable for analysis by data scientists. For more on this topic, see my recent blog titled Building a Global Meta-data Fabric to Accelerate Data Science.</p>
<p>3.     Automate your compute framework via a <em>World Wide Herd (WWH)</em> — a concept that creates a global network of Apache™ Hadoop® instances that work together to function as a single virtual computing cluster. WWH orchestrates the execution of distributed and parallel computations on a global scale, pushing analytics to where the data resides. For a closer look at this concept, see another of my recent blogs titled Distributed Analytics Meets Distributed Data.</p>
<p>Here are the key takeaways: Data science as we know it is changing. Yesterday’s practices, based on centralized data repositories, won’t work in a time when data is inherently distributed and growing at exponential rates. We now need an all-new approach to data science.</p>
<p>The post <a href="https://www.aiuniverse.xyz/federated-analytics-and-the-rebirth-of-data-science/">Federated Analytics and the Rebirth of Data Science</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
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