<?xml version="1.0" encoding="UTF-8"?><rss version="2.0"
	xmlns:content="http://purl.org/rss/1.0/modules/content/"
	xmlns:wfw="http://wellformedweb.org/CommentAPI/"
	xmlns:dc="http://purl.org/dc/elements/1.1/"
	xmlns:atom="http://www.w3.org/2005/Atom"
	xmlns:sy="http://purl.org/rss/1.0/modules/syndication/"
	xmlns:slash="http://purl.org/rss/1.0/modules/slash/"
	>

<channel>
	<title>scmgalaxy Archives - Artificial Intelligence</title>
	<atom:link href="https://www.aiuniverse.xyz/tag/scmgalaxy/feed/" rel="self" type="application/rss+xml" />
	<link>https://www.aiuniverse.xyz/tag/scmgalaxy/</link>
	<description>Exploring the universe of Intelligence</description>
	<lastBuildDate>Wed, 26 Jun 2019 06:45:07 +0000</lastBuildDate>
	<language>en-US</language>
	<sy:updatePeriod>
	hourly	</sy:updatePeriod>
	<sy:updateFrequency>
	1	</sy:updateFrequency>
	<generator>https://wordpress.org/?v=6.9.4</generator>
	<item>
		<title>What Is Deep Reinforcement Learning?</title>
		<link>https://www.aiuniverse.xyz/what-is-deep-reinforcement-learning/</link>
					<comments>https://www.aiuniverse.xyz/what-is-deep-reinforcement-learning/#respond</comments>
		
		<dc:creator><![CDATA[aiuniverse]]></dc:creator>
		<pubDate>Wed, 26 Jun 2019 06:45:07 +0000</pubDate>
				<category><![CDATA[Deep Learning]]></category>
		<category><![CDATA[bengaluru]]></category>
		<category><![CDATA[chennai]]></category>
		<category><![CDATA[delhi]]></category>
		<category><![CDATA[DevOps]]></category>
		<category><![CDATA[devopsschool]]></category>
		<category><![CDATA[gurgaon]]></category>
		<category><![CDATA[India]]></category>
		<category><![CDATA[mumbai]]></category>
		<category><![CDATA[netherlands]]></category>
		<category><![CDATA[noida]]></category>
		<category><![CDATA[pune]]></category>
		<category><![CDATA[scmgalaxy]]></category>
		<guid isPermaLink="false">http://www.aiuniverse.xyz/?p=3993</guid>

					<description><![CDATA[<p>Source:- One of the most intriguing areas of artificial intelligence today is the concept of deep reinforcement learning, where machines can teach themselves based upon the results <a class="read-more-link" href="https://www.aiuniverse.xyz/what-is-deep-reinforcement-learning/">Read More</a></p>
<p>The post <a href="https://www.aiuniverse.xyz/what-is-deep-reinforcement-learning/">What Is Deep Reinforcement Learning?</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
]]></description>
										<content:encoded><![CDATA[<p>Source:-</p>
<p>One of the most intriguing areas of artificial intelligence today is the concept of deep reinforcement learning, where machines can teach themselves based upon the results of their own actions. It is one of the areas of artificial intelligence that shows great promise, so let’s look at what it is and explore some real-world applications.</p>
<p>What is deep reinforcement learning?</p>
<p>Deep reinforcement learning is a category of machine learning and artificial intelligence where intelligent machines can learn from their actions similar to the way humans learn from experience. Inherent in this type of machine learning is that an agent is rewarded or penalised based on their actions. Actions that get them to the target outcome are rewarded (reinforced).</p>
<p>Through a series of trial and error, a machine keeps learning, making this technology ideal for dynamic environments that keep changing. Although reinforcement learning has been around for decades, it was much more recently combined with deep learning, which yielded phenomenal results. The &#8220;deep&#8221; portion of reinforcement learning refers to a multiple (deep) layers of artificial neural networks that replicate the structure of a human brain. Deep learning requires large amounts of training data and significant computing power. Over the last few years, the volumes of data have exploded while the costs for computing power have dramatically reduced, which has enabled the explosion of deep learning applications.</p>
<p>From gameplay to profit-making deep reinforcement learning</p>
<p>The possibilities of deep reinforcement learning came to the attention of many during the well-publicised defeat of a Go grandmaster by DeepMind’s AlphaGo. In addition to playing Go, deep reinforcement learning has achieved human-level prowess in other games such as chess, poker, Atari games and several other competitive video games. It’s taken the technology a bit of time to move from board games to boardrooms for a couple of reasons including:</p>
<p>There needed to be products and services to support deep reinforcement learning. For example, simulation technology helps provide a trial-and-error environment for deep reinforcement learning that is scalable and where mistakes won’t cause real-world damage. Services needed to be available to offer simulation technology for multiple interacting machines.<br />
Subject matter experts need an easy-to-use deep reinforcement learning (DRL) interface—rather than be DRL experts—to fully leverage the technology for business problems.<br />
Practical applications of deep reinforcement learning</p>
<p>AI toolkits for training</p>
<p>AI toolkits such as OpenAI Gym, DeepMind Lab and Psychlab are providing the training environment that was necessary to catapult large-scale innovation for deep reinforcement learning. These open-source tools train DRL agents. As more organisations apply deep reinforcement learning to their own unique business use cases, we will continue to see dramatic growth in practical applications.</p>
<p>Manufacturing</p>
<p>Intelligent robots are becoming more commonplace in warehouse and fulfilment centres to sort out millions of products and deliver them to the right people. When a robot picks a device to put in a container, deep reinforcement learning helps it gain knowledge based on whether it succeeded or failed. It uses this knowledge to perform more efficiently in the future.</p>
<p>Automotive</p>
<p>The automotive industry has a diverse and large dataset that will power deep reinforcement learning. Already in use for autonomous vehicles, it will help transform factories, vehicle maintenance and overall automation in the industry. The industry is driven by safety, quality and cost and DRL with data from customers, dealers and warranties will provide new ways to improve quality, save money and have a higher safety record.</p>
<p>Finance</p>
<p>Using artificial intelligence, including deep reinforcement learning, to be better investment managers than humans and to evaluate trading strategies is the core objective of Pit.AI.</p>
<p>Healthcare</p>
<p>From determining the optimal treatment plans and diagnosis to clinical trials, new drug development and automatic treatment, there is great potential for deep reinforcement learning to improve healthcare.</p>
<p>Bots</p>
<p>The conversational UI paradigm that makes AI bots possible leverages the power of deep reinforcement learning. The bots are rapidly learning the nuances and semantics of language over many domains for automated speech and natural language understanding thanks to deep reinforcement learning.</p>
<p>There is much excitement about the potential for deep reinforcement learning. Since this segment of artificial intelligence learns by interacting with its environment, there is really no limit to the possible applications.</p>
<p>The post <a href="https://www.aiuniverse.xyz/what-is-deep-reinforcement-learning/">What Is Deep Reinforcement Learning?</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
]]></content:encoded>
					
					<wfw:commentRss>https://www.aiuniverse.xyz/what-is-deep-reinforcement-learning/feed/</wfw:commentRss>
			<slash:comments>0</slash:comments>
		
		
			</item>
		<item>
		<title>Amazon researchers boost multilabel classification efficiency</title>
		<link>https://www.aiuniverse.xyz/amazon-researchers-boost-multilabel-classification-efficiency/</link>
					<comments>https://www.aiuniverse.xyz/amazon-researchers-boost-multilabel-classification-efficiency/#respond</comments>
		
		<dc:creator><![CDATA[aiuniverse]]></dc:creator>
		<pubDate>Wed, 26 Jun 2019 06:42:37 +0000</pubDate>
				<category><![CDATA[Uncategorized]]></category>
		<category><![CDATA[bengaluru]]></category>
		<category><![CDATA[chennai]]></category>
		<category><![CDATA[delhi]]></category>
		<category><![CDATA[DevOps]]></category>
		<category><![CDATA[devopsschool]]></category>
		<category><![CDATA[gurgaon]]></category>
		<category><![CDATA[India]]></category>
		<category><![CDATA[mumbai]]></category>
		<category><![CDATA[netherlands]]></category>
		<category><![CDATA[noida]]></category>
		<category><![CDATA[pune]]></category>
		<category><![CDATA[scmgalaxy]]></category>
		<guid isPermaLink="false">http://www.aiuniverse.xyz/?p=3990</guid>

					<description><![CDATA[<p>Source:-venturebeat.com KYLE WIGGERS@KYLE_L_WIGGERS JUNE 25, 2019 6:59 AM Above: A graph illustrating Amazon&#8217;s multilabel classification approach. Image Credit: Amazon MOST READ Machine learning helps Microsoft’s AI realistically <a class="read-more-link" href="https://www.aiuniverse.xyz/amazon-researchers-boost-multilabel-classification-efficiency/">Read More</a></p>
<p>The post <a href="https://www.aiuniverse.xyz/amazon-researchers-boost-multilabel-classification-efficiency/">Amazon researchers boost multilabel classification efficiency</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
]]></description>
										<content:encoded><![CDATA[<div id="primary">
<div id="content" role="main">
<article id="post-2509587" class="border-top clearfix article-wrapper post-2509587 post type-post status-publish format-standard has-post-thumbnail category-ai category-big-data category-dev tag-ai tag-amazon tag-artificial-intelligence tag-category-science-computer-science tag-classifiers tag-machine-learning tag-multilabel-classification tag-research vb_post_designations-homepage has-thumbnail">
<div class="article-content">
<p>Source:-venturebeat.com</p>
<p>KYLE WIGGERS@KYLE_L_WIGGERS JUNE 25, 2019 6:59 AM</p>
<p>Above: A graph illustrating Amazon&#8217;s multilabel classification approach.</p>
<p>Image Credit: Amazon</p>
<p>MOST READ</p>
<p>Machine learning helps Microsoft’s AI realistically colorize video from a single image</p>
<p>Microsoft announces OneDrive Personal Vault for sensitive files</p>
<p>VB Event Transform 2019: Hear from the movers and shakers in AI</p>
<p>Lightyear One is a solar car with a range of 450 miles</p>
<p>Multilabel classifiers are the bedrock of autonomous cars, apps like Google Lens, and intelligent assistants from Amazon’s Alexa to Google Assistant. They map input data into multiple categories at once — classifying, say, a picture of the ocean as containing “sky” and “boats” but not “desert.”</p>
<p>In pursuit of more computationally efficient classifiers, scientists at Amazon’s Alexa AI division recently experimented with an approach they describe in a preprint paper (“Learning Context-Dependent Label Permutations for Multi-Label Classification”). They claim that in tests their multilabel classification technique outperforms four leading alternatives using three data sets and demonstrates improvements on five different performance measures.</p>
<p>Recommended Videos</p>
<p>Volume 0%</p>
<p>Researchers Describe Newly Discovered See-Through Frog</p>
<p>U.S. National Lab Prepares to Send Research Projects to I.S.S.</p>
<p>Bill Gates Has &#8216;Breakthrough&#8217; In Probiotic Research</p>
<p>IBM Research Lead: Early Blood Test for Alzheimer&#8217;s May Be Possible Through AI</p>
<p>“The need for multilabel classification arises in many different contexts. Originally, it was investigated as a means of doing text classification [but since then], it’s been used for everything from predicting protein function from raw sequence data to classifying audio files by genre,” wrote Alexa AI group applied scientist Jinseok Nam in a blog post. “The challenge of multilabel classification is to capture dependencies between different labels.”</p>
<p>These dependencies are often captured with a joint probability, which represents the likelihood of any combination of probabilities for all labels. However, Nam notes that calculating accurate joint probabilities for more than a handful of annotations requires an “impractically” large corpus.</p>
<p>Instead, he and colleagues used a recurrent neural network (RNN) — a type of AImodel that processes sequenced inputs in order so that the output corresponds to given input factors and thus automatically considers dependencies — to efficiently chain single-label classifiers. To prevent errors from occurring when the order of classifiers is rearranged, they trained a system to dynamically vary the order in which the chained classifiers process the inputs (according to the input data’s features), ensuring that the most error-prone classifiers relative to a particular input moved to the back of the chain.</p>
<p>The team explored two different techniques, the first of which used an RNN to generate a sequence of labels for a particular input. Erroneous labels were discarded while preserving the order of correct ones, and omitted labels were appended to the resulting sequence. The new sequence became the target output, which the researchers used to retrain the RNN on the same input data.</p>
<p>“By preserving the order of the correct labels, we ensure that classifiers later in the chain learn to take advantage of classifications earlier in the chain,” wrote Nam. “Initially, the output of the RNN is entirely random, but it eventually learns to tailor its label sequences to the input data.”</p>
<p>The second technique leveraged reinforcement learning — an AI training technique that employs rewards to drive software policies toward goals — to train an RNN to perform dynamic classifier chaining.</p>
<p>In the aforementioned validation tests, which measured the accuracy of the classifiers’ various labels, the researchers say their best-performing system — which combined the outputs of two dynamic-chaining algorithms to produce a composite classification — outperformed four baselines by a minimum of 2% and in one instance by nearly 5%.</p>
</div>
</article>
</div>
</div>
<p>The post <a href="https://www.aiuniverse.xyz/amazon-researchers-boost-multilabel-classification-efficiency/">Amazon researchers boost multilabel classification efficiency</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
]]></content:encoded>
					
					<wfw:commentRss>https://www.aiuniverse.xyz/amazon-researchers-boost-multilabel-classification-efficiency/feed/</wfw:commentRss>
			<slash:comments>0</slash:comments>
		
		
			</item>
		<item>
		<title>Argo AI, CMU developing autonomous vehicle research center</title>
		<link>https://www.aiuniverse.xyz/argo-ai-cmu-developing-autonomous-vehicle-research-center/</link>
					<comments>https://www.aiuniverse.xyz/argo-ai-cmu-developing-autonomous-vehicle-research-center/#respond</comments>
		
		<dc:creator><![CDATA[aiuniverse]]></dc:creator>
		<pubDate>Wed, 26 Jun 2019 06:39:31 +0000</pubDate>
				<category><![CDATA[Deep Learning]]></category>
		<category><![CDATA[bengaluru]]></category>
		<category><![CDATA[chennai]]></category>
		<category><![CDATA[delhi]]></category>
		<category><![CDATA[DevOps]]></category>
		<category><![CDATA[devopsschool]]></category>
		<category><![CDATA[gurgaon]]></category>
		<category><![CDATA[India]]></category>
		<category><![CDATA[mumbai]]></category>
		<category><![CDATA[netherlands]]></category>
		<category><![CDATA[noida]]></category>
		<category><![CDATA[pune]]></category>
		<category><![CDATA[scmgalaxy]]></category>
		<guid isPermaLink="false">http://www.aiuniverse.xyz/?p=3987</guid>

					<description><![CDATA[<p>Source:- therobotreport.com Argo AI, a Pittsburgh-based autonomous vehicle company, has donated $15 million to Carnegie Mellon University (CMU) to fund a new research center. The Carnegie Mellon University <a class="read-more-link" href="https://www.aiuniverse.xyz/argo-ai-cmu-developing-autonomous-vehicle-research-center/">Read More</a></p>
<p>The post <a href="https://www.aiuniverse.xyz/argo-ai-cmu-developing-autonomous-vehicle-research-center/">Argo AI, CMU developing autonomous vehicle research center</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
]]></description>
										<content:encoded><![CDATA[<p>Source:- therobotreport.com</p>
<p>Argo AI, a Pittsburgh-based autonomous vehicle company, has donated $15 million to Carnegie Mellon University (CMU) to fund a new research center. The Carnegie Mellon University Argo AI Center for Autonomous Vehicle Research will “pursue advanced research projects to help overcome hurdles to enabling self-driving vehicles to operate in a wide variety of real-world conditions, such as winter weather or construction zones.”</p>
<p>Argo was founded in 2016 by a team with ties to CMU (more on that later). The five-year partnership between Argo and CMU will fund research into advanced perception and next-generation decision-making algorithms for autonomous vehicles. The center’s research will address a number of technical topics, including smart sensor fusion, 3D scene understanding, urban scene simulation, map-based perception, imitation and reinforcement learning, behavioral prediction and robust validation of software.</p>
<p>“We are thrilled to deepen our partnership with Argo AI to shape the future of self-driving technologies,” CMU President Farnam Jahanian said. “This investment allows our researchers to continue to lead at the nexus of technology and society, and to solve society’s most pressing problems.”</p>
<p>In February 2017, Ford announced that it was investing $1 billion over five years in Argo, combining Ford’s autonomous vehicle development expertise with Argo AI’s robotics experience. Earlier this month, Argo unveiled its third-generation test vehicle, a modified Ford Fusion Hybrid. Argo is now testing its autonomous vehicles in Detroit, Miami, Palo Alto, and Washington, DC.</p>
<p>Argo last week released its HD maps dataset, Argoverse. Argo said this will help the research community “compare the performance of different (machine learning – deep net) approaches to solve the same problem.</p>
<p>“Argo AI, Pittsburgh and the entire autonomous vehicle industry have benefited from Carnegie Mellon’s leadership. It’s an honor to support development of the next-generation of leaders and help unlock the full potential of autonomous vehicle technology,” said Bryan Salesky, CEO and co-founder of Argo AI. “CMU and now Argo AI are two big reasons why Pittsburgh will remain the center of the universe for self-driving technology.”</p>
<p>Deva Ramanan, an associate professor in the CMU Robotics Institute, who also serves as machine learning lead at Argo AI, will be the center’s principal investigator. The center’s research will involve faculty members and students from across CMU. The center will give students access to the fleet-scale data sets, vehicles and large-scale infrastructure that are crucial for advancing self-driving technologies and that otherwise would be difficult to obtain.</p>
<p>CMU’s other autonomous vehicle partnerships<br />
This isn’t the first autonomous vehicle company to see potential in CMU. In addition to Argo AI, CMU performs related research supported by General Motors, Uber and other transportation companies.</p>
<p>Its partnership with Uber is perhaps CMU’s most high-profile autonomous vehicle partnership, and it’s for all the wrong reasons. In 2015, Uber announced a strategic partnership with CMU that included the creation of a research lab near campus aimed at kick starting autonomous vehicle development.</p>
<p>But that relationship ended up gutting CMU’s National Robotics Engineering Center (NREC). More than a dozen CMU researchers, including the NREC’s director, left to work at the Uber Advanced Technologies Center.</p>
<p>Argo’s connection to CMU<br />
As mentioned earlier, Argo’s co-founders have strong ties to CMU. Argo Co-founder and president Peter Rander earned his masters and PhD degrees at CMU. Salesky graduated from the University of Pittsburgh in 2002, but worked at the NREC for a number of years, managing a portfolio of the center’s largest commercial programs that included autonomous mining trucks for Caterpillar. In 2007, Salesky led software engineering for Tartan Racing, CMU’s winning entry in the DARPA Urban Challenge.</p>
<p>Salesky departed NREC and joined the Google self-driving car team in 2011 to continue the push toward making self-driving cars a reality. While at Google, Bryan he responsible for the development and manufacture of their hardware portfolio, which included self-driving sensors, computers and several vehicle development programs.</p>
<p>Brett Browning, Argo’s VP of Robotics, received his Ph.D. (2000) and bachelor’s degree in electrical engineering and science from the University of Queensland. He was a senior faculty member at the NREC for 12-plus years, pursuing field robotics research in defense, oil and gas, mining and automotive applications.</p>
<p>The post <a href="https://www.aiuniverse.xyz/argo-ai-cmu-developing-autonomous-vehicle-research-center/">Argo AI, CMU developing autonomous vehicle research center</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
]]></content:encoded>
					
					<wfw:commentRss>https://www.aiuniverse.xyz/argo-ai-cmu-developing-autonomous-vehicle-research-center/feed/</wfw:commentRss>
			<slash:comments>0</slash:comments>
		
		
			</item>
		<item>
		<title>Thanks to AI, we know we can teleport qubits in the real world</title>
		<link>https://www.aiuniverse.xyz/thanks-to-ai-we-know-we-can-teleport-qubits-in-the-real-world/</link>
					<comments>https://www.aiuniverse.xyz/thanks-to-ai-we-know-we-can-teleport-qubits-in-the-real-world/#respond</comments>
		
		<dc:creator><![CDATA[aiuniverse]]></dc:creator>
		<pubDate>Wed, 26 Jun 2019 06:36:47 +0000</pubDate>
				<category><![CDATA[Deep Learning]]></category>
		<category><![CDATA[bengaluru]]></category>
		<category><![CDATA[chennai]]></category>
		<category><![CDATA[delhi]]></category>
		<category><![CDATA[DevOps]]></category>
		<category><![CDATA[devopsschool]]></category>
		<category><![CDATA[gurgaon]]></category>
		<category><![CDATA[India]]></category>
		<category><![CDATA[mumbai]]></category>
		<category><![CDATA[netherlands]]></category>
		<category><![CDATA[noida]]></category>
		<category><![CDATA[pune]]></category>
		<category><![CDATA[scmgalaxy]]></category>
		<guid isPermaLink="false">http://www.aiuniverse.xyz/?p=3984</guid>

					<description><![CDATA[<p>Source:-cosmosmagazine.com Deep learning shows its worth in the word of quantum computing. Gabriella Bernardi reports. talian researchers have shown that it is possible to teleport a quantum <a class="read-more-link" href="https://www.aiuniverse.xyz/thanks-to-ai-we-know-we-can-teleport-qubits-in-the-real-world/">Read More</a></p>
<p>The post <a href="https://www.aiuniverse.xyz/thanks-to-ai-we-know-we-can-teleport-qubits-in-the-real-world/">Thanks to AI, we know we can teleport qubits in the real world</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
]]></description>
										<content:encoded><![CDATA[<p>Source:-cosmosmagazine.com</p>
<h6 class="page-standfirst">Deep learning shows its worth in the word of quantum computing. Gabriella Bernardi reports.</h6>
<p>talian researchers have shown that it is possible to teleport a quantum bit (or <i>qubit</i>) in what might be called a real-world situation.</p>
<p>And they did it by letting artificial intelligence do much of the thinking.</p>
<p>The phenomenon of qubit transfer is not new, but this work, which was led by Enrico Prati of the Institute of Photonics and Nanotechnologies in Milan, is the first to do it in a situation where the system deviates from ideal conditions.</p>
<p>Moreover, it is the first time that a class of machine-learning algorithms known as deep reinforcement learning has been applied to a quantum computing problem.</p>
<p>The findings are published in a paper in the journal <i>Communications Physics</i>.</p>
<p>One of the basic problems in quantum computing is finding a fast and reliable method to move the qubit – the basic piece of quantum information – in the machine. This piece of information is coded by a single electron that has to be moved between two positions without passing through any of the space in between.</p>
<p>In the so-called “adiabatic”, or thermodynamic, quantum computing approach, this can be achieved by applying a specific sequence of laser pulses to a chain of an odd number of quantum dots – identical sites in which the electron can be placed.</p>
<p>It is a purely quantum process and a solution to the problem was invented by Nikolay Vitanov of the Helsinki Institute of Physics in 1999. Given its nature, rather distant from the intuition of common sense, this solution is called a “counterintuitive” sequence.</p>
<article class="col-sm-4 col-xs-6 text-xs-center row-auto indent-background tall-top supplemental m-t-0 hidden-print">
<div class="flex-fill">
<div class="row">
<div class="col-xs-12">
<div class="label">RECOMMENDED</div>
</div>
</div>
<div class="row row-1">
<div class="col-xs-12">
<div class="article-image article-image-left article-image-right"></div>
</div>
</div>
<div class="row title-row row-1">
<div class="col-xs-12">
<div class="article-title">
<h1>The quantum internet is already being built</h1>
<div class="text-xs-center">TECHNOLOGY</div>
</div>
</div>
</div>
</div>
</article>
<p>However, the method applies only in ideal conditions, when the electron state suffers no disturbances or perturbations.</p>
<p>Thus, Prati and colleagues Riccardo Porotti and Dario Tamaschelli of the University of Milan and Marcello Restelli of the Milan Polytechnic, took a different approach.</p>
<p>“We decided to test the deep learning’s artificial intelligence, which has already been much talked about for having defeated the world champion at the game Go, and for more serious applications such as the recognition of breast cancer, applying it to the field of quantum computers,” Prati says.</p>
<p>Deep learning techniques are based on artificial neural networks arranged in different layers, each of which calculates the values for the next one so that the information is processed more and more completely.</p>
<p>Usually, a set of known answers to the problem is used to “train” the network, but when these are not known, another technique called “reinforcement learning” can be used.</p>
<p>In this approach two neural networks are used: an “actor” has the task of finding new solutions, and a “critic” must assess the quality of these solution. Provided a reliable way to judge the respective results can be given by the researchers, these two networks can examine the problem independently.</p>
<p>The researchers, then, set up this artificial intelligence method, assigning it the task of discovering alone how to control the qubit.</p>
<p>“So, we let artificial intelligence find its own solution, without giving it preconceptions or examples,” Prati says. “It found another solution that is faster than the original one, and furthermore it adapts when there are disturbances.”</p>
<p>In other words, he adds, artificial intelligence “has understood the phenomenon and generalised the result better than us”.</p>
<p>“It is as if artificial intelligence was able to discover by itself how to teleport qubits regardless of the disturbance in place, even in cases where we do not already have any solution,” he explains.</p>
<p>“With this work we have shown that the design and control of quantum computers can benefit from the using of artificial intelligence.”</p>
<p>The post <a href="https://www.aiuniverse.xyz/thanks-to-ai-we-know-we-can-teleport-qubits-in-the-real-world/">Thanks to AI, we know we can teleport qubits in the real world</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
]]></content:encoded>
					
					<wfw:commentRss>https://www.aiuniverse.xyz/thanks-to-ai-we-know-we-can-teleport-qubits-in-the-real-world/feed/</wfw:commentRss>
			<slash:comments>0</slash:comments>
		
		
			</item>
		<item>
		<title>Want to learn how to train an artificial intelligence model? Ask a friend.</title>
		<link>https://www.aiuniverse.xyz/want-to-learn-how-to-train-an-artificial-intelligence-model-ask-a-friend/</link>
					<comments>https://www.aiuniverse.xyz/want-to-learn-how-to-train-an-artificial-intelligence-model-ask-a-friend/#respond</comments>
		
		<dc:creator><![CDATA[aiuniverse]]></dc:creator>
		<pubDate>Wed, 26 Jun 2019 06:33:33 +0000</pubDate>
				<category><![CDATA[Artificial Intelligence]]></category>
		<category><![CDATA[bengaluru]]></category>
		<category><![CDATA[chennai]]></category>
		<category><![CDATA[delhi]]></category>
		<category><![CDATA[DevOps]]></category>
		<category><![CDATA[devopsschool]]></category>
		<category><![CDATA[gurgaon]]></category>
		<category><![CDATA[India]]></category>
		<category><![CDATA[mumbai]]></category>
		<category><![CDATA[netherlands]]></category>
		<category><![CDATA[noida]]></category>
		<category><![CDATA[pune]]></category>
		<category><![CDATA[scmgalaxy]]></category>
		<guid isPermaLink="false">http://www.aiuniverse.xyz/?p=3981</guid>

					<description><![CDATA[<p>Source:- mit.edu The MIT Machine Intelligence Community began with a few friends meeting over pizza to discuss landmark papers in machine learning. Three years later, the undergraduate club boasts <a class="read-more-link" href="https://www.aiuniverse.xyz/want-to-learn-how-to-train-an-artificial-intelligence-model-ask-a-friend/">Read More</a></p>
<p>The post <a href="https://www.aiuniverse.xyz/want-to-learn-how-to-train-an-artificial-intelligence-model-ask-a-friend/">Want to learn how to train an artificial intelligence model? Ask a friend.</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
]]></description>
										<content:encoded><![CDATA[<p>Source:- mit.edu</p>
<p>The MIT Machine Intelligence Community began with a few friends meeting over pizza to discuss landmark papers in machine learning. Three years later, the undergraduate club boasts 500 members, an active Slack channel, and an impressive lineup of student-led reading groups and workshops meant to demystify machine learning and artificial intelligence (AI) generally. This year, MIC and MIT Quest for Intelligence joined forces to advance their common cause of making AI tools accessible to all.</p>
<p>Starting last fall, the MIT Quest opened its offices to MIC members and extended access to IBM and Google-donated cloud credits, providing a boost of computing power to students previously limited to running their AI models on desktop machines loaded with extra graphics processors. The MIT Quest and MIC are now collaborating on a host of projects, independently and through MIT’s Undergraduate Research Opportunities Program (UROP).</p>
<p>“We heard about their mission to spread machine learning to all undergrads and thought, ‘That’s what we’re trying to do — let’s do it together!” says Joshua Joseph, chief software engineer with the MIT Quest Bridge.</p>
<p>A makerspace for AI</p>
<p>U.S. Army ROTC students Ian Miller and Rishi Shah came to MIC for the free cloud credits, but stayed for the workshop on neural computing sticks. A compute stick allows mobile devices to do image processing on the fly, and when the cadets learned what one could do, they knew their idea for a portable computer vision system would work.</p>
<p>“Without that, we’d have to send images to a central place to do all this computing,” says Miller, a rising junior. “It would have been a logistical headache.”</p>
<p>Built in two months, for $200, their wallet-sized device is designed to plug into a tablet strapped to an Army soldier’s chest and scan the surrounding area for cars and people. With more training, they say, it could learn to spot cellphones and guns. In May, the cadets demo&#8217;d their device at MIT’s Soldier Design Competition and were invited by an Army sergeant to visit Fort Devens to continue working on it.</p>
<p>Machine Intelligence Community members and ROTC students Ian Miller and Rishi Shah present a portable computer vision system they built to help soldiers detect cars and people in their field of view.</p>
<p>Photo: Kim Martineau</p>
<p>FULL SCREEN<br />
Rose Wang, a rising senior majoring in computer science, was also drawn to MIC by the free cloud credits, and a chance to work on projects with quest and other students. This spring, she used IBM cloud credits to run a reinforcement learning model that’s part of her research with MIT Professor Jonathan How, training robot agents to cooperate on tasks that involve limited communication and information. She recently presented her results at a workshop at the International Conference on Machine Learning.</p>
<p>“It helped me try out different techniques without worrying about the compute bottleneck and running out of resources,” she says.</p>
<p>Improving AI access at MIT</p>
<p>The MIC has launched several AI projects of its own. The most ambitious is Monkey, a container-based, cloud-native service that would allow MIT undergraduates to log in and train an AI model from anywhere, tracking the training as it progresses and managing the credits allotted to each student. On a Friday afternoon in April, the team gathered in a quest conference room as Michael Silver, a rising senior, sketched out the modules Monkey would need.</p>
<p>As Silver scrawled the words &#8220;Docker Image Build Service&#8221; on the board, the student assigned to research the module apologized. “I didn’t make much progress on it because I had three midterms!” he said.</p>
<p>The planning continued, with Steven Shriver, a software engineer with the Quest Bridge, interjecting bits of advice. The students had assumed the container service they planned to use, Docker, would be secure. It isn’t.</p>
<p>“Well, I guess we have another task here,” said Silver, adding the word “security” to the white board.</p>
<p>Later, the sketch would be turned into a design document and shared with the two UROP students helping to execute Monkey. The team hopes to launch sometime next year.</p>
<p>“The coding isn’t the difficult part,” says UROP student Amanda Li, a member of MIC Dev-Ops. “It’s the exploring the server side of machine learning — Docker, Google Cloud, and the API. The most important thing I’ve learned is how to efficiently design and pipeline a project as big as this.”</p>
<p>Silver knew he wanted to be an AI engineer in 2016, when the computer program AlphaGo defeated the world’s reigning Go champion. As a senior at Boston University Academy, Silver worked on natural language processing in the lab of MIT Professor Boris Katz, and has continued to work with Katz since coming to MIT. Seeking more coding experience, he left HackMIT, where he had been co-director, to join MIC Dev-Ops.</p>
<p>“A lot of students read about machine learning models, but have no idea how to train one,” he says. “Even if you know how to train one, you’d need to save up a few thousand dollars to buy the GPUs to do it. MIC lets students interested in machine learning reach that next level.”</p>
<p>Conceived by MIC members, a second project is focused on making AI research papers posted on arXiv easier to explore. Nearly 14,000 academic papers are uploaded each month to the site, and although papers are tagged by field, drilling into subtopics can be overwhelming.</p>
<p>Wang, for one, grew frustrated while doing a basic literature search on reinforcement learning. “You have a ton of data and no effective way of representing it to the user,” she says. “It would have been useful to see the papers in a larger context, and to explore by number of citations or their relevance to each other.”</p>
<p>A third MIC project focuses on crawling MIT’s hundreds of listservs for AI-related talks and events to populate a Google calendar. The tool will be closely patterned after an app Silver helped build during MIT’s Independent Activities Period in January. Called Dormsp.am, the app classifies listserv emails sent to MIT undergraduates and plugs them into a calendar-email client. Students can then search for events by day or by a color-coded topic, such as tech, food, or jobs. Once Dormsp.am launches, Silver will adapt it to search for and post AI-related events at MIT to an MIC calendar.</p>
<p>Silver says the team spent extra time on the user interface, taking a page from MIT Professor Daniel Jackson’s Software Studio class. “This is an app that can live or die on its usability, so the front end is really important,” he says.</p>
<p>Wang is now collaborating with Moin Nadeem, MIC’s outgoing president, to build the visualization tool. It’s exactly the kind of hands-on experience MIC was intended to provide, says Nadeem, a rising senior. “Students learn fundamental concepts in class but don’t know how to implement them,” he says. “I’m trying to build what freshman me would have liked to have had: a community of people excited to do interesting stuff with machine learning.”</p>
<p>&nbsp;</p>
<p>The post <a href="https://www.aiuniverse.xyz/want-to-learn-how-to-train-an-artificial-intelligence-model-ask-a-friend/">Want to learn how to train an artificial intelligence model? Ask a friend.</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
]]></content:encoded>
					
					<wfw:commentRss>https://www.aiuniverse.xyz/want-to-learn-how-to-train-an-artificial-intelligence-model-ask-a-friend/feed/</wfw:commentRss>
			<slash:comments>0</slash:comments>
		
		
			</item>
		<item>
		<title>NEW NSR Report: Satellite Data Value Continues Moving Downstream Towards Big Data Analytics</title>
		<link>https://www.aiuniverse.xyz/new-nsr-report-satellite-data-value-continues-moving-downstream-towards-big-data-analytics/</link>
					<comments>https://www.aiuniverse.xyz/new-nsr-report-satellite-data-value-continues-moving-downstream-towards-big-data-analytics/#respond</comments>
		
		<dc:creator><![CDATA[aiuniverse]]></dc:creator>
		<pubDate>Wed, 26 Jun 2019 06:29:24 +0000</pubDate>
				<category><![CDATA[Big Data]]></category>
		<category><![CDATA[bengaluru]]></category>
		<category><![CDATA[chennai]]></category>
		<category><![CDATA[delhi]]></category>
		<category><![CDATA[DevOps]]></category>
		<category><![CDATA[devopsschool]]></category>
		<category><![CDATA[gurgaon]]></category>
		<category><![CDATA[India]]></category>
		<category><![CDATA[mumbai]]></category>
		<category><![CDATA[netherlands]]></category>
		<category><![CDATA[noida]]></category>
		<category><![CDATA[pune]]></category>
		<category><![CDATA[scmgalaxy]]></category>
		<guid isPermaLink="false">http://www.aiuniverse.xyz/?p=3978</guid>

					<description><![CDATA[<p>Source:- globenewswire.co CAMBRIDGE, Mass., June 25, 2019 (GLOBE NEWSWIRE) &#8212; NSR’s Big Data Analytics via Satellite, 3rd Edition (BDvS3) report, published today, finds continued growth for downstream Big Data applications through the <a class="read-more-link" href="https://www.aiuniverse.xyz/new-nsr-report-satellite-data-value-continues-moving-downstream-towards-big-data-analytics/">Read More</a></p>
<p>The post <a href="https://www.aiuniverse.xyz/new-nsr-report-satellite-data-value-continues-moving-downstream-towards-big-data-analytics/">NEW NSR Report: Satellite Data Value Continues Moving Downstream Towards Big Data Analytics</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
]]></description>
										<content:encoded><![CDATA[<p>Source:- globenewswire.co</p>
<p>CAMBRIDGE, Mass., June 25, 2019 (GLOBE NEWSWIRE) &#8212; NSR’s <strong><em><u>Big Data Analytics via Satellite, 3</u><sup><u>rd</u></sup><u> Edition</u></em></strong><strong><em> <u>(BDvS3)</u></em></strong> report, published today, finds continued growth for downstream Big Data applications through the next decade, driven by applications built on Earth Observation and M2M/IoT satcom data across multiple market verticals. Big Data analytics via satellite will generate close to $17.7 billion in cumulative revenues by 2028, owing to increasing demand from end users in the Transportation, Government &amp; Military, Energy and Enterprise sectors.</p>
<p>Revenue generated from applications deriving value from EO imagery data are expected to grow at 30% CAGR from 2018 to 2028. “Across all use cases, we expect to see a shift in usage towards data analytics applications, driven in particular by increasing adoption of satellite imagery to meet end user business cases,” stated <u>Shivaprakash Muruganandham</u>, NSR Analyst and report author. On the other hand, M2M and IoT communications via satellite will continue to drive the more mature markets of land/maritime transportation and government and military applications. “This demand manifests itself in different ways, be it for fleet management solutions, financial instruments, competitive intelligence or business decision tools. Multiple players continue to focus on squeezing maximum value out of data obtained through satellites,” Muruganandham adds.</p>
<p>Growth in the Enterprise Services market is expected to outpace other verticals, as newer datasets and applications come online. Industry incumbents continue to partner and evolve their businesses towards offering data applications as part of their services, even as newer startups tackling niche problems find importance in the ecosystem. The line between EO and M2M/IoT data applications is expected to blur further in the future, as highly integrated datasets become prevalent, and becoming data-agnostic will be a key differentiator for Big Data companies.</p>
<p>Overall, satellite Big Data analytics will reach close to a $3.1 billion revenue opportunity by 2028, with 56% from EO applications and the rest, driven by M2M/IoT satcom applications. While North America’s presence as an established market continues through the decade, other regions are expected to eat into its market share as companies globally adopt Big Data solutions into their businesses.</p>
<p><strong>About the Report</strong><br />
NSR’s <strong><em><u>Big Data Analytics via Satellite, 3</u><sup><u>rd</u></sup><u> Edition</u> <u>(BDvS3)</u></em></strong> is built on NSR’s research in the EO and M2M/IoT satellite markets, alongside an understanding of newer trends in Big Data analytics. With coverage of vertical markets ranging from Transportation to Weather &amp; Environment, it provides a comprehensive analysis of the growth opportunity across regions, delving into key verticals that account for nearly 80% of this opportunity.</p>
<p>For additional information on this report, including a full table of contents, list of exhibits and executive summary, please visit <u>www.nsr.com</u> or call <strong>NSR at +1-617-674-7743</strong>.</p>
<p align="justify"><strong>About NSR</strong><br />
NSR is the leading global market research and consulting firm focused on the satellite and space sectors. NSR’s global team, unparalleled coverage and anticipation of trends with a higher degree of confidence and precision than the competition is the cornerstone of all NSR offerings.  First to market coverage and a transparent, dependable approach sets NSR apart as the key provider of critical insight to the satellite and space industries.</p>
<p>Contact us at info@nsr.com to discuss how we can assist your business.</p>
<p><strong>Companies and Organizations Mentioned in the Report</strong><br />
Planet, Airbus, Earth-i, Maxar, Spire, BlackSky, Inmarsat, Orbcomm, Globalstar, Iridium, Thuraya, iDirect, Integrasys, Kratos, Globecomm, RS Metrics, Ursa Space, 20tree, Orbital Insight, SatSure, Bird-i, VanderSat, Rezatec, TellusLabs, Indigo, SpaceKnow, Descartes Labs, IHS Markit, Harris Corporation, Microsoft, Bluefield, Kleos Space, HawkEye 360, ICEYE, Novara GeoSolutions, ESRI, ExactEarth, Savi, GE, Omnitracs, Bosch, Aeris, CloudEO, Cloudera, Google, SAP, Amazon, IBM, Honeywell, Spire, UrtheCast, GHGSat, RigNet, Planetek Italia, SkyWatch, and VMWare.</p>
<p>The post <a href="https://www.aiuniverse.xyz/new-nsr-report-satellite-data-value-continues-moving-downstream-towards-big-data-analytics/">NEW NSR Report: Satellite Data Value Continues Moving Downstream Towards Big Data Analytics</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
]]></content:encoded>
					
					<wfw:commentRss>https://www.aiuniverse.xyz/new-nsr-report-satellite-data-value-continues-moving-downstream-towards-big-data-analytics/feed/</wfw:commentRss>
			<slash:comments>0</slash:comments>
		
		
			</item>
		<item>
		<title>Trending Technologies: How Big Data Is Impacting Estate Agencies</title>
		<link>https://www.aiuniverse.xyz/trending-technologies-how-big-data-is-impacting-estate-agencies/</link>
					<comments>https://www.aiuniverse.xyz/trending-technologies-how-big-data-is-impacting-estate-agencies/#respond</comments>
		
		<dc:creator><![CDATA[aiuniverse]]></dc:creator>
		<pubDate>Wed, 26 Jun 2019 06:23:38 +0000</pubDate>
				<category><![CDATA[Deep Learning]]></category>
		<category><![CDATA[bengaluru]]></category>
		<category><![CDATA[chennai]]></category>
		<category><![CDATA[delhi]]></category>
		<category><![CDATA[DevOps]]></category>
		<category><![CDATA[devopsschool]]></category>
		<category><![CDATA[gurgaon]]></category>
		<category><![CDATA[India]]></category>
		<category><![CDATA[mumbai]]></category>
		<category><![CDATA[netherlands]]></category>
		<category><![CDATA[noida]]></category>
		<category><![CDATA[pune]]></category>
		<category><![CDATA[scmgalaxy]]></category>
		<guid isPermaLink="false">http://www.aiuniverse.xyz/?p=3975</guid>

					<description><![CDATA[<p>Source:- forbes.com According to IDC&#8217;s Data Age 2025 research, the amount of data across the globe that’s open to analysis is set to grow by a factor of 50 <a class="read-more-link" href="https://www.aiuniverse.xyz/trending-technologies-how-big-data-is-impacting-estate-agencies/">Read More</a></p>
<p>The post <a href="https://www.aiuniverse.xyz/trending-technologies-how-big-data-is-impacting-estate-agencies/">Trending Technologies: How Big Data Is Impacting Estate Agencies</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
]]></description>
										<content:encoded><![CDATA[<p>Source:- forbes.com</p>
<p><img fetchpriority="high" decoding="async" class="alignnone size-medium wp-image-3976" src="https://www.aiuniverse.xyz/wp-content/uploads/2019/06/blog-imnages-300x200.jpg" alt="" width="300" height="200" srcset="https://www.aiuniverse.xyz/wp-content/uploads/2019/06/blog-imnages-300x200.jpg 300w, https://www.aiuniverse.xyz/wp-content/uploads/2019/06/blog-imnages-768x512.jpg 768w, https://www.aiuniverse.xyz/wp-content/uploads/2019/06/blog-imnages.jpg 960w" sizes="(max-width: 300px) 100vw, 300px" /></p>
<p class="speakable-paragraph">According to IDC&#8217;s Data Age 2025 research, the amount of data across the globe that’s open to analysis is set to grow by a factor of 50 within just six years. As such, in 2025, the world is set to be creating 163 zetabytes (163 trillion gigabytes) of data a year.</p>
<p>That data comes from consumers, increasingly holding more and more of their information on cloud services. But an even bigger driver is business. Enterprises storing, interrogating and accessing more information will account for nearly 60% of data generated in 2025.</p>
<p>Manufacturing is often seen to be at the front driving this, but the property industry certainly isn’t far behind.</p>
<p><strong>How data makes the property industry tick</strong></p>
<div id="article-0-inread"></div>
<p>When a potential homebuyer applies for a mortgage, the financial institution in question will – with a few key presses &#8211; dig into their credit background. They do this via systems that seamlessly interrogate big data to come up with a recommended course of action. Already, one single mortgage application, processed in a matter of seconds, draws on around 30 years of research and analysis.</p>
<p>Separately, that same homebuyer is likely to be hitting Google, and getting detailed statistical information about the area they want to live in, the quality of the schools, the local crime rate, and fluctuations in average property prices. The property portals they’ll be using, like Zoopla – holding information on 27 million homes in the U.K. alone, coupled to over a decade of house selling price data – will be churning through their own data sets to output results.</p>
<p>The post <a href="https://www.aiuniverse.xyz/trending-technologies-how-big-data-is-impacting-estate-agencies/">Trending Technologies: How Big Data Is Impacting Estate Agencies</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
]]></content:encoded>
					
					<wfw:commentRss>https://www.aiuniverse.xyz/trending-technologies-how-big-data-is-impacting-estate-agencies/feed/</wfw:commentRss>
			<slash:comments>0</slash:comments>
		
		
			</item>
		<item>
		<title>Microsoft&#8217;s bots: From Q&#038;A to complex conversations</title>
		<link>https://www.aiuniverse.xyz/microsofts-bots-from-qa-to-complex-conversations/</link>
					<comments>https://www.aiuniverse.xyz/microsofts-bots-from-qa-to-complex-conversations/#respond</comments>
		
		<dc:creator><![CDATA[aiuniverse]]></dc:creator>
		<pubDate>Wed, 26 Jun 2019 06:18:58 +0000</pubDate>
				<category><![CDATA[Microsoft Azure Machine Learning]]></category>
		<category><![CDATA[bengaluru]]></category>
		<category><![CDATA[chennai]]></category>
		<category><![CDATA[delhi]]></category>
		<category><![CDATA[DevOps]]></category>
		<category><![CDATA[devopsschool]]></category>
		<category><![CDATA[gurgaon]]></category>
		<category><![CDATA[India]]></category>
		<category><![CDATA[mumbai]]></category>
		<category><![CDATA[netherlands]]></category>
		<category><![CDATA[noida]]></category>
		<category><![CDATA[pune]]></category>
		<category><![CDATA[scmgalaxy]]></category>
		<guid isPermaLink="false">http://www.aiuniverse.xyz/?p=3972</guid>

					<description><![CDATA[<p>Source:- .techrepublic.com Microsoft&#8217;s growing range of AI-powered chat tools are bringing Cortana to your business. Machine learning is a powerful tool, but it&#8217;s not always easy to implement <a class="read-more-link" href="https://www.aiuniverse.xyz/microsofts-bots-from-qa-to-complex-conversations/">Read More</a></p>
<p>The post <a href="https://www.aiuniverse.xyz/microsofts-bots-from-qa-to-complex-conversations/">Microsoft&#8217;s bots: From Q&#038;A to complex conversations</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
]]></description>
										<content:encoded><![CDATA[<p>Source:- .techrepublic.com</p>
<p>Microsoft&#8217;s growing range of AI-powered chat tools are bringing Cortana to your business.</p>
<p>Machine learning is a powerful tool, but it&#8217;s not always easy to implement or build into your business. One option is to use it to power conversational self-service tools, for e-commerce or for support. Users use familiar channels to converse with digital agents, which either deliver simple tasks or gather information that&#8217;s evaluated and passed on to a human agent.</p>
<div data-shortcode=""></div>
<div class="relatedContent pinbox pull-right">
<h3>More about Windows</h3>
<ul>
<li>10 tricks and tweaks for customizing Windows 10 (free PDF)</li>
<li>How to stop Microsoft from blocking the Windows 10 May 2019 Update on your PC</li>
<li>Photos: Classic Windows screensavers from Windows 1.0 to Windows 98</li>
<li>Windows 10 apps: Which are worth keeping? Which ones should you dump? (ZDNet)</li>
</ul>
</div>
<p>We&#8217;re familiar with digital assistants like Siri, Alexa and Microsoft&#8217;s Cortana: voice-driven interfaces to our homes, our phones and our PCs. They&#8217;re the most obvious manifestation of modern artificial intelligence, linking cloud services, entertainment apps, the internet of things and familiar productivity tools behind voice recognition and speech synthesis.</p>
<p>There&#8217;s many years of computer science research in those platforms, much of it in complex machine-learning algorithms and the massive training sets of data that need the resources of a large company. But we&#8217;re not limited to those tools, as cloud platforms like Azure are making the tools used to build services like Cortana available to partners for their own assistants, starting with simple chat interactions in the Azure Bot Framework and moving on up the stack to building your own virtual assistants, like those being developed by BMW and Thyssen-Krupp.</p>
<h2>Getting started with the Bot Framework</h2>
<p>Azure&#8217;s Bot Service is a tool for building and deploying basic conversational systems across many different chat platforms, from the web to Teams to Skype, and beyond. It builds on elements of the Azure Cognitive Services, integrating their APIs into an easy to build conversational framework. You&#8217;ll get started quickly with an open source &#8216;botkit&#8217; that includes emulator tools for testing interactions before you deploy your service.</p>
<div class="sharethrough-article" data-component="medusaContentRecommendation" data-medusa-content-recommendation-options="{&quot;promo&quot;:&quot;promo_TR_recommendation_sharethrough_top_in_article_desktop&quot;,&quot;spot&quot;:&quot;dfp-in-article&quot;}">
<div id="sharethrough-top-5d130d36ef775" class="ad-sharethrough-top" data-ad="sharethrough-top" data-google-query-id="CPPH3bi_huMCFdVEKwodN1wOrA">
<div id="google_ads_iframe_/8264/asia-techrepublic/artificial-intelligence_3__container__">Building bots is like building any app, you write code that works with existing APIs to parse user inputs, determine intent, and then respond appropriately. That intent could be many things, from asking support questions, to ordering a pizza and checking on its delivery times. You&#8217;re not building a general-purpose system — you&#8217;re building a very targeted application that has conversational natural language features.</div>
</div>
</div>
<p><strong>SEE: IT leader&#8217;s guide to the future of artificial intelligence (Tech Pro Research)</strong></p>
<p>What makes a bot different from an app built on Azure Cognitive Services is the concept of a Dispatcher. This is a tool that switches users between cognitive service models as a result of what they&#8217;re doing. That allows the same bot to support, say, Language Understanding to determine user intent and use that to drive apps and APIs, or QnA Maker to respond to simple support questions.</p>
<p>Once built, a bot is configured to work with your choice of channels, using Microsoft&#8217;s Adaptive Cards to provide interactive responses where necessary. You&#8217;re not limited to Microsoft-only channels, the Azure bot service works with popular messengers and collaboration services, including Twilio&#8217;s range of services. All you need to do is define channels in the Azure Portal and your users will be interacting with your bot.</p>
<p>One useful feature that launched at Build 2019 is an enhanced version of QnA Maker. This tool takes your business&#8217;s documentation, extracts key information, and then responds to questions. It&#8217;s a useful tool for building and running basic help bots, using FAQs to train the underlying cognitive services. The new release now supports multi-turn conversations, with the ability to respond to users&#8217; follow-up questions.</p>
<h2>Rolling your own Cortana with the Virtual Assistant Solution Accelerator</h2>
<p>If you want to build your own virtual assistant there&#8217;s an open-source Virtual Assistant solution that you&#8217;ll use to build your own equivalents of Cortana or Thyssen-Krupp&#8217;s Alfred. Building on the previously released enterprise assistant template, it brings together a mix of different tools from the Cognitive Services suite.</p>
<p>You start by downloading the solution from GitHub and then customising it to add your own set of features, including the assistant&#8217;s voice and personality. The resulting service is a multi-channel bot running on the Bot Framework, with a set of skills that handle everything from events to working with user accounts. The Virtual Assistant skills will be familiar to anyone who&#8217;s used Cortana, as they integrate with the Microsoft Graph as well as Azure services like Maps.</p>
<p>Once you&#8217;ve built and trained a Virtual Assistant it&#8217;s automatically deployed in Azure, along with all the services you need to support it, including logging and performance analysis tools. All the machine-learning models used are pre-trained, so you&#8217;re ready to go as soon as your assistant is online. There&#8217;s a strong focus on using Virtual Assistants for hands-free operations, using Azure&#8217;s speech recognition tools alongside LUIS, its Language Understanding service. Microsoft is planning to provide specifically designed and trained machine-learning models for common usage scenarios, starting with an automotive language model.</p>
<p>With a pre-trained model like this you don&#8217;t need to develop your own custom speech-recognition tools to manage voice control of a car. Once set up, it will allow your virtual assistant to recognise queries about common activities, like navigation or using a paired mobile phone, as well as controlling car features.</p>
<p><strong>SEE: How to implement AI and machine learning (ZDNet special report) | Download the report as a PDF (TechRepublic)</strong></p>
<p>There&#8217;s even support for a Cortana- or Alexa-like skills model, where additional functionality is added to a personal assistant as required. Perhaps you&#8217;re building an assistant for your business, so you&#8217;ll add new features and services as they roll out, as well as taking advantage of new channels as Microsoft adds support. A skills template makes it easier to create and share new features with your assistant&#8217;s users.</p>
<p>At Build 2019, Microsoft demonstrated what the next generation of conversational AI might be like, using a video of a possible version of its Cortana personal assistant. Instead of conversations that lacked context, dealing with one thing at a time, the concept video showed a user talking through their calendar, adding meetings, sending information to colleagues, adjusting schedules, all in one conversation.</p>
<p>The heart of this process was a deeper understanding of the context of the conversation, using elements of the Microsoft Graph to link content to people, building a model of relationships and tools that are then interpreted by the underlying machine-learning tools. Part of that is the work done by a recent Microsoft acquisition, Semantic Machines, who are specialists in conversational AI. What Microsoft demonstrated at Build was a look at how Semantic Machines&#8217; work would enliven tools like Cortana, turning it from a relatively simple voice user interface into something a lot richer.</p>
<p>While some of the initial predictions of a glorious natural language interface future may have been overblown, that hasn&#8217;t stopped their development. By building on its cognitive service APIs and its Bot Framework, Microsoft is taking an evolutionary approach that customers are finding attractive. There&#8217;s no need to run before you can walk, and starting with basic question-and-answer bots gets users used to natural language interactions before you start rolling out more complex conversational virtual assistants.</p>
<p>The post <a href="https://www.aiuniverse.xyz/microsofts-bots-from-qa-to-complex-conversations/">Microsoft&#8217;s bots: From Q&#038;A to complex conversations</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
]]></content:encoded>
					
					<wfw:commentRss>https://www.aiuniverse.xyz/microsofts-bots-from-qa-to-complex-conversations/feed/</wfw:commentRss>
			<slash:comments>0</slash:comments>
		
		
			</item>
		<item>
		<title>Improved Forecasting Through Machine Learning &#038; Artificial Intelligence</title>
		<link>https://www.aiuniverse.xyz/improved-forecasting-through-machine-learning-artificial-intelligence/</link>
					<comments>https://www.aiuniverse.xyz/improved-forecasting-through-machine-learning-artificial-intelligence/#respond</comments>
		
		<dc:creator><![CDATA[aiuniverse]]></dc:creator>
		<pubDate>Wed, 26 Jun 2019 06:13:21 +0000</pubDate>
				<category><![CDATA[Machine Learning]]></category>
		<category><![CDATA[bengaluru]]></category>
		<category><![CDATA[chennai]]></category>
		<category><![CDATA[delhi]]></category>
		<category><![CDATA[DevOps]]></category>
		<category><![CDATA[devopsschool]]></category>
		<category><![CDATA[gurgaon]]></category>
		<category><![CDATA[India]]></category>
		<category><![CDATA[mumbai]]></category>
		<category><![CDATA[netherlands]]></category>
		<category><![CDATA[noida]]></category>
		<category><![CDATA[pune]]></category>
		<category><![CDATA[scmgalaxy]]></category>
		<guid isPermaLink="false">http://www.aiuniverse.xyz/?p=3968</guid>

					<description><![CDATA[<p>Source:-forbes.com One can’t read any news today without a barrage of articles about data science and machine learning and artificial intelligence. Just recently, Jeff Bezos opened up <a class="read-more-link" href="https://www.aiuniverse.xyz/improved-forecasting-through-machine-learning-artificial-intelligence/">Read More</a></p>
<p>The post <a href="https://www.aiuniverse.xyz/improved-forecasting-through-machine-learning-artificial-intelligence/">Improved Forecasting Through Machine Learning &#038; Artificial Intelligence</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
]]></description>
										<content:encoded><![CDATA[<p>Source:-forbes.com</p>
<p class="speakable-paragraph">One can’t read any news today without a barrage of articles about data science and machine learning and artificial intelligence. Just recently,</p>
<ul>
<li>Jeff Bezos opened up his private MARS (Machine Learning, Automation, Robotics, and Space) conference to the public</li>
<li>There is a conspiracy theory stating that the Facebook 10 year challenge is just a way to help train algorithms on aging</li>
<li>A recent copy of Wired was titled “Less Artificial, More Intelligent”</li>
</ul>
<div class="wp-caption wp-caption-wrap alignnone">
<div class="article-body-image"><span style="color: #333333; font-family: 'Noto Serif', serif; background-color: transparent; text-align: inherit;">To better assess all of this talk and hype, I recently had the opportunity to sit down with Brian Sampsel, VP and Chief Analytics Innovator for the Columbus Collaboratory.  Brian, when you look at all of this talk about machine learning, how are companies responding?</span></div>
</div>
<div id="article-0-inread" data-google-query-id="CNbbxu-6huMCFZF2KwodAOABuQ">
<div id="google_ads_iframe_/7175/fdc.forbes/article-d_0__container__"><iframe id="google_ads_iframe_/7175/fdc.forbes/article-d_0" tabindex="-1" title="Ad content" name="google_ads_iframe_/7175/fdc.forbes/article-d_0" width="1" height="1" frameborder="0" marginwidth="0" marginheight="0" scrolling="no" data-google-container-id="3" aria-hidden="true" data-load-complete="true" data-mce-fragment="1"></iframe></div>
</div>
<p><strong>Brian Sampsel</strong>: Given all the talk and hype, it is surprising to find that so many large enterprises are doing things the way they have always been done, especially as it pertains to back office functions.</p>
<p>One glaring example of this is forecasting. Most organizations have a multitude of people making all kinds of forecasts. This is done in a Finance department through FP&amp;A predicting sales, in IT where there are predictions of future storage and compute requirements (especially as things move to the cloud), and in Planning departments where there are questions as to how many products of a certain type are needed and how those products are distributed across the different sizes or models.</p>
<div class="vestpocket">
<h2 aria-hidden="true">YOU MAY ALSO LIKE</h2>
<div class="ntv-wrapper" tabindex="-1" aria-hidden="true">
<div class="ntv-ad">
<div id="ntv-rail-0" data-google-query-id="CMuly--6huMCFRJNKwodZHMALg">
<div id="google_ads_iframe_/7175/fdc.forbes/article-d_3__container__">
<div class="str-more-from-forbes str-card-exp str-editorial- str-insights- str-unique-DSYNZ1CJdUpgtuJ6A4GwQGvCLU str-no-share-labels" data-str-native-key="UCddx8Xg8Mdi8m8PVh1kfbvP" data-str-campaign-key="c6faeba3a93414989d32edae" data-str-rendered="1561528305794" data-str-visited-flag="true" data-tracking-key="_e5tiqt6ug">
<div class="ng-scope">
<div class="str-bv">
<div class="ng-binding ng-scope str-voice">Grads of Life BRANDVOICE</div>
</div>
<h3 class="headline ng-isolate-scope">The Fourth Industrial Revolution’s Demand for Perpetual Learning</h3>
</div>
</div>
</div>
</div>
</div>
<div class="ntv-ad">
<div id="ntv-rail-1" data-google-query-id="CP2-zu-6huMCFYlNKwodHEMM0w">
<div id="google_ads_iframe_/7175/fdc.forbes/article-d_4__container__">
<div class="str-more-from-forbes str-card-exp str-editorial- str-insights- str-unique-DSrywSeeXNEGJeFUjFMkpPAGu4 str-no-share-labels" data-str-native-key="UCddx8Xg8Mdi8m8PVh1kfbvP" data-str-campaign-key="DSVXj2x6qovSJRukqL1U4AgqBY" data-str-rendered="1561528305777" data-str-visited-flag="true" data-tracking-key="_f6j53hkfv">
<div class="ng-scope">
<div class="str-bv">
<div class="ng-binding ng-scope str-voice">Civic Nation BRANDVOICE</div>
</div>
<h3 class="headline ng-isolate-scope">Changing The Outlook On Youth Pregnancy And Parenthood</h3>
</div>
</div>
</div>
</div>
</div>
<div class="ntv-ad">
<div id="ntv-rail-2" data-google-query-id="CImG4u-6huMCFcsJcgod63ANoQ">
<div id="google_ads_iframe_/7175/fdc.forbes/article-d_5__container__">
<div class="str-more-from-forbes str-card-exp str-editorial- str-insights- str-unique-DShycCGxw9UiF4KkcAbVVjRp4V str-no-share-labels" data-str-native-key="UCddx8Xg8Mdi8m8PVh1kfbvP" data-str-campaign-key="DSmQ4D4PVPCe9pWTPa7HFM6Uzg" data-str-rendered="1561528305756" data-str-visited-flag="true" data-tracking-key="_olt1wgppp">
<div class="ng-scope">
<div class="str-bv">
<div class="ng-binding ng-scope str-voice">UNICEF USA BRANDVOICE</div>
</div>
<h3 class="headline ng-isolate-scope">Lessons Learned And Money Raised On The Slopes Of Kilimanjaro</h3>
</div>
</div>
</div>
</div>
</div>
</div>
</div>
<p>The typical workflow still looks like this: Data exists in an ERP system, or some type of database</p>
<ul>
<li>The analyst extracts aggregated data using a BI tool</li>
<li>The extract gets pasted into Excel</li>
<li>The analyst goes through a highly manual set of Excel calculations or macros set up to generate a forecast</li>
<li>The forecast is then delivered just in time to business decision makers</li>
<li>The process is repeated as decision makers modify the assumptions</li>
</ul>
<p><strong>Drenik: </strong> That process sounds familiar, but where does artificial intelligence or analytics fit in?</p>
<p><strong>Sampsel:</strong> That’s my point – right now, for many, it doesn’t fit in. Highly accurate forecasts are the start of so many processes and is a primary goal for these organizations,  but most don’t yet understand how or why to embed analytics into the process.</p>
<p><strong>Drenik:</strong> Before we get to the “how”, help us understand the “why” – what are the primary benefits of incorporating analytics into the forecasting process?</p>
<p><strong>Sampsel: </strong>There are a lot of benefits to designing this process using a statistician’s or data scientist’s work flow.</p>
<p>First, many of these steps can be automated, saving a significant amount of time. So often, each forecast can take many hours of someone’s week to produce, week in and week out. And, when a forecast is created, a VP or CFO will ask “what if we change X?”. This starts the process all over again, likely adding more hours to the task. Automating the process enables decision makers to use their time more efficiently by analyzing and understanding the results instead of crunching numbers and recalculating formulas in a spreadsheet.</p>
<p>Second, most organizations looking at forecasts would benefit from some understanding of variability. So many forecasts are delivered as a single number. There it is – that’s the number. However, we know that number is going to be wrong, we just don’t know how wrong. I think many leaders would make different decisions if they knew the range of likely outcomes and whether it was narrow around that estimate or quite wide.</p>
<p>Third, most forecasts would benefit from some 3<sup>rd</sup> party data. Weather is often the obvious culprit here, but we could also bring in commodity prices, local events, and even the marketing calendar (which is likely another Excel nightmare). Prosper’s forward looking customer intention data would provide large increases in forecasting accuracy, enabling more informed predictions based on how consumers likely to behave. Adding these data sources can create new insights and lead to more accurate forecasts.</p>
<div class="wp-caption wp-caption-wrap alignnone">
<div class="article-body-image"></div>
<div class="article-image-caption">
<div class="caption-container"><small class="article-photo-credit">PROSPER INSIGHTS &amp; ANALYTICS</small></div>
</div>
</div>
<p>And last, many leaders would want to know which assumptions have the greatest impact on the forecast. This is often known as a ‘sensitivity analysis’. For example, what happens to the forecast if the price of commodity X increases by 5%? What if it increases by 20%? Should I even care about the price of commodity X?</p>
<p>These benefits can all be had if we move our forecasting methods away from the traditional approaches and towards machine learning and statistical models.</p>
<p><strong>Drenik: </strong>That makes sense. So how would a company move forward. What cautions or risks might they face along the way?</p>
<p><strong>Sampsel</strong>: There are some potential bumps along the way:</p>
<ul>
<li>This will be a cultural shift and will take some time to get used to. I would recommend piloting alongside the current approach in a region or subset of the business. Use this pilot to prove the concept on a smaller scale and then build support in the organization gradually.</li>
<li>There will need to be integration with other systems. Engage your IT partners as early as possible so they are along for the entire journey. Make sure that you consider building a process that will manage data efficiently going forward. However, for the pilot, simple manual data extracts are advisable to prove the concept without slowing down based on technical complexities.</li>
<li>Determine the level of interpretability you would like. In other words, what how many attributes/assumptions do you want to make flexible to influence the result? Some of the machine learning techniques can be more like a “black box” than others, but may also provide better results.</li>
</ul>
<p><strong>Drenik: </strong>So, if a company adopts an artificial intelligence enabled forecasting process, will that eliminate their need for Excel?</p>
<p><strong>Sampsel:</strong> I don’t ever see that happening. Excel is a great tool and of course very familiar to many. It’s just that adding artificial intelligence models into the process can both increase accuracy and consistency (reducing manual errors in spreadsheets – which are a significant problem). In fact, many data scientists use Excel extracts and spreadsheets as data sources into AI models.</p>
<p><strong>Drenik:</strong> One of the common reactions that many have is that artificial intelligence will replace humans. If an organization builds these highly accurate analytical prediction engines, is that likely to happen here?</p>
<p><strong>Sampsel</strong>: No. Remember, the goal is not to replace people. The benefit of this will be to free up people’s time for other value-added activities – i.e. thinking of ways we can grow sales and not just going through the manual steps of forecasting sales. Interpret the results and apply strategic context, intuition and experience to the discussion, while the data and analytics are calculated efficiently and accurately for you. There will always be a place for humans to make the appropriate strategic decisions to affect the business.</p>
<p><strong>Drenik:</strong> Thanks Brian!</p>
<p><em>Columbus Collaboratory is a rapid innovation firm that works with companies to create synergistic solutions to complex </em><em>cybersecurity</em><em> and </em><em>analytics</em><em> challenges</em><em>. </em></p>
<p>The post <a href="https://www.aiuniverse.xyz/improved-forecasting-through-machine-learning-artificial-intelligence/">Improved Forecasting Through Machine Learning &#038; Artificial Intelligence</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
]]></content:encoded>
					
					<wfw:commentRss>https://www.aiuniverse.xyz/improved-forecasting-through-machine-learning-artificial-intelligence/feed/</wfw:commentRss>
			<slash:comments>0</slash:comments>
		
		
			</item>
		<item>
		<title>Worrying About Artificial Intelligence Starting a Nuclear War: Eye on A.I.</title>
		<link>https://www.aiuniverse.xyz/worrying-about-artificial-intelligence-starting-a-nuclear-war-eye-on-a-i/</link>
					<comments>https://www.aiuniverse.xyz/worrying-about-artificial-intelligence-starting-a-nuclear-war-eye-on-a-i/#respond</comments>
		
		<dc:creator><![CDATA[aiuniverse]]></dc:creator>
		<pubDate>Wed, 26 Jun 2019 06:10:11 +0000</pubDate>
				<category><![CDATA[Nuclear Industry]]></category>
		<category><![CDATA[bengaluru]]></category>
		<category><![CDATA[chennai]]></category>
		<category><![CDATA[delhi]]></category>
		<category><![CDATA[DevOps]]></category>
		<category><![CDATA[devopsschool]]></category>
		<category><![CDATA[gurgaon]]></category>
		<category><![CDATA[India]]></category>
		<category><![CDATA[mumbai]]></category>
		<category><![CDATA[netherlands]]></category>
		<category><![CDATA[noida]]></category>
		<category><![CDATA[pune]]></category>
		<category><![CDATA[scmgalaxy]]></category>
		<guid isPermaLink="false">http://www.aiuniverse.xyz/?p=3965</guid>

					<description><![CDATA[<p>Source:- fortune.com An organization that won the Nobel Prize in 2017 for its work to eliminate nuclear weapons is sounding the alarm about the possibility of artificial intelligence leading <a class="read-more-link" href="https://www.aiuniverse.xyz/worrying-about-artificial-intelligence-starting-a-nuclear-war-eye-on-a-i/">Read More</a></p>
<p>The post <a href="https://www.aiuniverse.xyz/worrying-about-artificial-intelligence-starting-a-nuclear-war-eye-on-a-i/">Worrying About Artificial Intelligence Starting a Nuclear War: Eye on A.I.</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
]]></description>
										<content:encoded><![CDATA[<p>Source:- fortune.com</p>
<div class="listicle-top">
<div class="listicle-introduction padded">
<p>An organization that won the Nobel Prize in 2017 for its work to eliminate nuclear weapons is sounding the alarm about the possibility of artificial intelligence leading to unintended wars.</p>
<p>Beatrice Fihn, executive director of the International Campaign to Abolish Nuclear Weapons, is worried that hackers could breach A.I. technologies that are used in nuclear programs or that they could use A.I. to dupe countries into launching attacks. For example, deepfakes, or realistic-looking computer-altered videos, may be used to “create a perceived threat that might not be there,” she warns, prompting governments to overreact.</p>
<p>Fihn told <em>Fortune</em> that she wants to convene a meeting in the fall with nuclear weapons experts and some of the leading companies in A.I. and cybersecurity. Participants in the off-the-record event, she said, would produce a document that her group would use to inform governments and others about the danger.</p>
<p>“Some companies are more powerful than governments today in terms of shaping the world,” Fihn said. She wants to “engage them in thinking about how they can contribute to a more sustainable world, one that reduces the threat of extinction.”</p>
<p>So far, some leading companies in A.I. including Microsoft and Google’s DeepMind A.I. unit have expressed interest, Fihn said. Microsoft and DeepMind declined to comment to <em>Fortune</em>.</p>
<p>She said that some companies are “a little bit intimidated by the issue,” believing it to be “very political.” That said, she thinks these companies recognize their power.</p>
<p>A.I. is often described as a huge benefit to humanity, potentially leading to more effective healthcare treatments or reducing auto accidents with the help of self-driving cars. But there is also a darker counter narrative that it can also be used by criminals and, possibly, by nation states to sabotage adversaries.</p>
<p>“We don’t want to advocate for any restrictions on A.I.,” Fihn said. “But this technological development is happening—we have to be very careful.”</p>
<p>Fihn, who is from Switzerland, cautions that the secrecy involved in nuclear programs makes it difficult to know just how much A.I., if any, has been incorporated into them. What is known, however, is that A.I. can used be to target nuclear arsenals or the people who manage them.</p>
<p>“This is new stuff for us to think about,” Fihn said. Does the rise of A.I. pose realistic dangers, “Or is our imagination going wild?”</p>
<p>Jonathan Vanian<br />
@JonathanVanian<br />
jonathan.vanian@fortune.com</p>
<p>Sign up for Eye on A.I.</p>
</div>
</div>
<div class="listicle-outer">
<div class="component vertical-gallery listicle">
<div class="listicle-item clearfix "><a class="anchor-only" name="EYE ON A.I. NEWS" aria-label="EYE ON A.I. NEWS"></a></p>
<div class="item-title media-center">
<div class="headline">EYE ON A.I. NEWS</div>
</div>
<div class="media-position-center"></div>
<div class="listicle-item-content padded">
<div class="listicle-text">
<p><strong>The A.I. eyes are watching you</strong>. <strong>Walmart</strong> is using artificial intelligence in over 1,000 stores to deter potential thieves from running outside without paying, Business Insider reported. With the help of store cameras, Walmart’s “Missed Scan Detection” software can recognize and notify human clerks if shoppers try to slip items past checkout scanners without paying.</p>
<p><strong>Animal house</strong>. Companies like <strong>Apple</strong>, <strong>Google</strong>, and <strong>Facebook</strong> are hiring animal researchers with computer science skills in order to improve their A.I.-powered products, Bloomberg News reports. The article describes how one researcher who studied birdsongs “joined Google’s sound-understanding group, where he creates sound-recognition systems as sophisticated as the company’s image-recognition software, capable of distinguishing a siren from a crying baby.”</p>
<p><strong>Out of Africa</strong>. The <em>MIT Technology Review</em> explores some of the A.I. research coming out of Africa, where companies like <strong>IBM</strong> and <strong>Google</strong> have opened A.I. labs. The article posits that A.I. research emerging from Africa could lead to the creation of “technology that tackles pressing global challenges like hunger, poverty, and disease.” This contrasts with A.I. research in wealthy locations like Silicon Valley, where A.I. developments are often used to improve tech products.</p>
<p><strong>Auto alliance</strong>. <strong>Waymo</strong>, the self-driving car subsidiary of <strong>Google</strong> parent <strong>Alphabet</strong>, said it partnered with auto giants Renault and Nissan to explore the use of Waymo’s autonomous vehicles in France and Japan. The announcement was light on details, but said that the alliance would lead to an “initial period to explore all aspects of driverless mobility services for passengers and deliveries in France and Japan.”</p>
</div>
</div>
</div>
</div>
</div>
<p>The post <a href="https://www.aiuniverse.xyz/worrying-about-artificial-intelligence-starting-a-nuclear-war-eye-on-a-i/">Worrying About Artificial Intelligence Starting a Nuclear War: Eye on A.I.</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
]]></content:encoded>
					
					<wfw:commentRss>https://www.aiuniverse.xyz/worrying-about-artificial-intelligence-starting-a-nuclear-war-eye-on-a-i/feed/</wfw:commentRss>
			<slash:comments>0</slash:comments>
		
		
			</item>
	</channel>
</rss>
