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	<title>National Archives - Artificial Intelligence</title>
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	<description>Exploring the universe of Intelligence</description>
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		<title>Intel and National Science Foundation Invest in Wireless-Specific Machine Learning Edge Research</title>
		<link>https://www.aiuniverse.xyz/intel-and-national-science-foundation-invest-in-wireless-specific-machine-learning-edge-research/</link>
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		<pubDate>Mon, 29 Jun 2020 06:12:56 +0000</pubDate>
				<category><![CDATA[Machine Learning]]></category>
		<category><![CDATA[Foundation Invest]]></category>
		<category><![CDATA[Intel]]></category>
		<category><![CDATA[Machine learning]]></category>
		<category><![CDATA[National]]></category>
		<category><![CDATA[Research]]></category>
		<category><![CDATA[Science]]></category>
		<category><![CDATA[Wireless-Specific]]></category>
		<guid isPermaLink="false">http://www.aiuniverse.xyz/?p=9818</guid>

					<description><![CDATA[<p>Source: indiaeducationdiary.in Today, Intel and the National Science Foundation (NSF) announced award recipients of joint funding for research into the development of future wireless systems. The Machine <a class="read-more-link" href="https://www.aiuniverse.xyz/intel-and-national-science-foundation-invest-in-wireless-specific-machine-learning-edge-research/">Read More</a></p>
<p>The post <a href="https://www.aiuniverse.xyz/intel-and-national-science-foundation-invest-in-wireless-specific-machine-learning-edge-research/">Intel and National Science Foundation Invest in Wireless-Specific Machine Learning Edge Research</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
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<p>Source: indiaeducationdiary.in</p>



<p>Today, Intel and the National Science Foundation (NSF) announced award recipients of joint funding for research into the development of future wireless systems. The Machine Learning for Wireless Networking Systems (MLWiNS) program is the latest in a series of joint efforts between the two partners to support research that accelerates innovation with the focus of enabling ultra-dense wireless systems and architectures that meet the throughput, latency and reliability requirements of future applications. In parallel, the program will target research on distributed machine learning computations over wireless edge networks, to enable a broad range of new applications.</p>



<p>“Since 2015, Intel and NSF have collectively contributed more than $30 million to support science and engineering research in emerging areas of technology. MLWiNS is the next step in this collaboration and has the promise to enable future wireless systems that serve the world’s rising demand for pervasive, intelligent devices.”<br>– Gabriela Cruz Thompson, director of university research and collaborations at Intel Labs</p>



<p>Why It’s Important: As demand for advanced connected services and devices grows, future wireless networks will need to meet the challenging density, latency, throughput and security requirements these applications will require. Machine learning shows great potential to manage the size and complexity of such networks – addressing the demand for capacity and coverage while maintaining the stringent and diverse quality of service expected from network users. At the same time, sophisticated networks and devices create an opportunity for machine learning services and computation to be deployed closer to where the data is generated, which alleviates bandwidth, privacy, latency and scalability concerns to move data to the cloud.</p>



<p>“5G and Beyond networks need to support throughput, density and latency requirements that are orders of magnitudes higher than what current wireless networks can support, and they also need to be secure and energy-efficient,” said Margaret Martonosi, assistant director for computer and information science and engineering at NSF. “The MLWiNS program was designed to stimulate novel machine learning research that can help meet these requirements – the awards announced today seek to apply innovative machine learning techniques to future wireless network designs to enable such advances and capabilities.”</p>



<p>What Will Be Researched: Through MLWiNS, Intel and NSF will fund research with the goal of driving new wireless system and architecture design, increasing the utilization of sparse spectrum resources and enhancing distributed machine learning computation over wireless edge networks. Grant winners will conduct research across multiple areas of machine learning and wireless networking. Key focus areas and project examples include:</p>



<p>Reinforcement learning for wireless networks: Research teams from the University of Virginia and Penn State University will study reinforcement learning for optimizing wireless network operation, focusing on tackling convergence issues, leveraging knowledge-transfer methods to reduce the amount of training data necessary, and bridging the gap between model-based and model-free reinforcement learning through an episodic approach.</p>



<p>Federated learning for edge computing:</p>



<p>Researchers from the University of North Carolina at Charlotte will explore methods to speed up multi-hop federated learning over wireless communications, allowing multiple groups of devices to collaboratively train a shared global model while keeping their data local and private. Unlike classical federated learning systems that utilize single-hop wireless communications, multi-hop system updates need to go through multiple noisy and interference-rich wireless links, which can result in slower updates. Researchers aim to overcome this challenge by developing a novel wireless multi-hop federated learning system with guaranteed stability, high accuracy and a fast convergence speed by systematically addressing the challenges of communication latency, and system and data heterogeneity.</p>



<p>Researchers from the Georgia Institute of Technology will analyze and design federated and collaborative machine-learning training and inference schemes for edge computing, with the goal of increasing efficiency over wireless networks. The team will address challenges with real-time deep learning at the edge, including limited and dynamic wireless channel bandwidth, unevenly distributed data across edge devices and on-device resource constraints.</p>



<p>Research from the University of Southern California and the University of California, Berkeley will focus on a coding-centric approach to enhance federated learning over wireless communications. Specifically, researchers will work to tackle the challenges of dealing with non-independent and identically distributed data, and heterogeneous resources at the wireless edge, and minimizing upload bandwidth costs from users, while emphasizing issues of privacy and security when learning from distributed data.</p>



<p>Distributed training across multiple edge devices: Rice University researchers will work to train large-scale centralized neural networks by separating them into a set of independent sub-networks that can be trained on different devices at the edge. This can reduce training time and complexity, while limiting the impact on model accuracy.</p>



<p>Leveraging information theory and machine learning to improve wireless network performance: Research teams from the Massachusetts Institute of Technology and Virginia Polytechnic Institute and State University will collaborate to explore the use of deep neural networks to address physical layer problems of a wireless network. They will exploit information theoretic tools in order to develop new algorithms that can better address non-linear distortions and relax simplifying assumptions on the noise and impairments encountered in wireless networks.</p>



<p>Deep learning from radio frequency signatures: Researchers at Oregon State University will investigate cross-layer techniques that leverage the combined capabilities of transceiver hardware, wireless radio frequency (RF) domain knowledge and deep learning to enable efficient wireless device classification. Specifically, the focus will be on exploiting RF signal knowledge and transceiver hardware impairments to develop efficient deep learning-based device classification techniques that are scalable with the massive and diverse numbers of emerging wireless devices, robust against device signature cloning and replication, and agnostic to environment and system distortions.</p>



<p>About Award Winners and Project Descriptions: A full list of award winners and project descriptions can be found in “Intel and National Science Foundation Announce Future Wireless Systems Research Award Recipients.”</p>
<p>The post <a href="https://www.aiuniverse.xyz/intel-and-national-science-foundation-invest-in-wireless-specific-machine-learning-edge-research/">Intel and National Science Foundation Invest in Wireless-Specific Machine Learning Edge Research</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
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		<title>India’s first national Artificial Intelligence Portal launched by IT minister Ravi Shankar Prasad</title>
		<link>https://www.aiuniverse.xyz/indias-first-national-artificial-intelligence-portal-launched-by-it%e2%80%89minister-ravi-shankar-prasad/</link>
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		<pubDate>Mon, 01 Jun 2020 07:45:46 +0000</pubDate>
				<category><![CDATA[Artificial Intelligence]]></category>
		<category><![CDATA[India]]></category>
		<category><![CDATA[IT minister]]></category>
		<category><![CDATA[National]]></category>
		<category><![CDATA[Ravi Shankar Prasad]]></category>
		<guid isPermaLink="false">http://www.aiuniverse.xyz/?p=9189</guid>

					<description><![CDATA[<p>Source: hindustantimes.com On the occasion of the first anniversary of the second tenure of Prime Minister Narendra Modi-led government, Union Minister for Electronics and IT, Law and <a class="read-more-link" href="https://www.aiuniverse.xyz/indias-first-national-artificial-intelligence-portal-launched-by-it%e2%80%89minister-ravi-shankar-prasad/">Read More</a></p>
<p>The post <a href="https://www.aiuniverse.xyz/indias-first-national-artificial-intelligence-portal-launched-by-it%e2%80%89minister-ravi-shankar-prasad/">India’s first national Artificial Intelligence Portal launched by IT minister Ravi Shankar Prasad</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
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<p>Source: hindustantimes.com</p>



<p>On the occasion of the first anniversary of the second tenure of Prime Minister Narendra Modi-led government, Union Minister for Electronics and IT, Law and Justice and Communications Ravi Shankar Prasad on Saturday launched India’s national Artificial Intelligence Portal called www.ai.gov.in.</p>



<p>“Artificial Intelligence Portal has been jointly developed by the Ministry of Electronics and IT and IT Industry. National e-Governance Division of Ministry of Electronics and IT and NASSCOM from the IT industry will jointly run this portal. This portal shall work as a one-stop digital platform for AI-related developments in India, sharing of resources such as articles, startups, investment funds in AI, resources, companies and educational institutions related to AI in India. The portal will also share documents, case studies, research reports etc. It has a section about learning and new job roles related to AI,” read an official statement issued by the Ministry of Electronics and IT.</p>



<p>On this occasion, Ravi Shankar Prasad also launched a National Program for the youth &#8212; Responsible AI for Youth. The Ministry said, “The aim of this programme is to give the young students of our country a platform and empower them with appropriate new age tech mindset, relevant AI skill-sets and access to required AI tool-sets to make them digitally ready for the future. The programme has been created and launched by the National e-Governance Division, Ministry of Electronics and IT in collaboration with Intel India, with support from Department of School Education and Literacy (DoSE&amp;L), Ministry of Human Resource Development. DoSE&amp;L will help reach-out to State Education Departments to nominate teachers as per eligibility criteria.”</p>



<p>Addressing the media at the launch event, Prasad said “India must be a leading country in the development of Artificial Intelligence in the world, leveraging upon its vast Internet-savvy population and data it is creating. India’s AI approach should be of inclusion and empowerment of human being by supplementing growth and development rather than making human beings less relevant.”</p>



<p>“The national programme is open to students of classes 8 &#8211; 12 from Central and State government-run schools (including KVS, NVS, JNV) from across the country and aims to bring about a change in the thought process and create a bridge for the digital divide. The programme will be implemented in a phase-wise manner and in its first phase, each of the State Education Department will nominate 10 teachers as per the eligibility criteria. Teachers may also self nominate themselves by fulfilling the eligibility criteria. These teachers will be provided orientation sessions aimed to help them understand the premise and identify 25-50 potential students for the programme. The identified students will attend online training sessions on AI and understand how to identify social impact ideas/projects that may be created using AI and submit their ideas through a 60 seconds video explaining a proposed AI-enabled solution,” the statement read.</p>
<p>The post <a href="https://www.aiuniverse.xyz/indias-first-national-artificial-intelligence-portal-launched-by-it%e2%80%89minister-ravi-shankar-prasad/">India’s first national Artificial Intelligence Portal launched by IT minister Ravi Shankar Prasad</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
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		<title>KAFB: Air Force Research Laboratory To Rendezvous And Inspect Malfunctioning S5 Satellite</title>
		<link>https://www.aiuniverse.xyz/kafb-air-force-research-laboratory-to-rendezvous-and-inspect-malfunctioning-s5-satellite/</link>
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		<dc:creator><![CDATA[aiuniverse]]></dc:creator>
		<pubDate>Mon, 21 Oct 2019 09:22:21 +0000</pubDate>
				<category><![CDATA[Mycroft]]></category>
		<category><![CDATA[Air Force]]></category>
		<category><![CDATA[Environment]]></category>
		<category><![CDATA[Laboratory]]></category>
		<category><![CDATA[Mycroft satellite]]></category>
		<category><![CDATA[National]]></category>
		<category><![CDATA[Research]]></category>
		<category><![CDATA[satellite]]></category>
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		<guid isPermaLink="false">http://www.aiuniverse.xyz/?p=4774</guid>

					<description><![CDATA[<p>Source: ladailypost.com KIRTLAND AIR FORCE BASE&#160;―&#160;The Air Force Research Laboratory will begin maneuvers today, Oct. 20, as the first-ever inspection mission to support real-time on-orbit spacecraft anomaly <a class="read-more-link" href="https://www.aiuniverse.xyz/kafb-air-force-research-laboratory-to-rendezvous-and-inspect-malfunctioning-s5-satellite/">Read More</a></p>
<p>The post <a href="https://www.aiuniverse.xyz/kafb-air-force-research-laboratory-to-rendezvous-and-inspect-malfunctioning-s5-satellite/">KAFB: Air Force Research Laboratory To Rendezvous And Inspect Malfunctioning S5 Satellite</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
]]></description>
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<p>Source: ladailypost.com</p>



<p>KIRTLAND AIR FORCE BASE&nbsp;―&nbsp;The Air Force Research Laboratory will begin maneuvers today, Oct. 20, as the first-ever inspection mission to support real-time on-orbit spacecraft anomaly resolution operations.&nbsp;</p>



<p>This effort will be a rendezvous between the experimental Mycroft satellite and a second experimental AFRL satellite called the Small Satellite Space Surveillance System, or S5. The S5, launched Feb. 22, 2019, is a small satellite designed to test affordable SmallSat space situational awareness constellation technologies.&nbsp;</p>



<p>AFRL has experienced communication challenges with the S5 satellite and has had no communication with S5 since March 2019. Operators confirm that the spacecraft is alive and maintaining solar power by tracking the sun, but without communications S5 cannot perform its experiments.&nbsp;Mycroft is an AFRL-developed SmallSat launched with the EAGLE satellite April 14, 2018.</p>



<p>Mycroft separated from EAGLE and drifted about 35 kilometers away before transiting carefully back to within a few kilometers of EAGLE. It has performed space situational awareness, or SSA, and satellite inspection experiments over the past 18 months. The Mycroft experiment is aimed at improving autonomous rendezvous and proximity operations, or RPO, SSA, satellite inspection and characterization, and autonomous navigation technologies.&nbsp;</p>



<p style="text-align:left">Mycroft satellite operators will initiate a series of maneuvers to rendezvous with S5 near 6 degrees East longitude at Geosynchronous Orbit to support anomaly resolution efforts. EAGLE will also maneuver into the vicinity of the RPO to observe the inspection from a safe distance. Mycroft will inspect the S5 satellite and provide operators with verification of the fully-deployed solar array and of the sun pointing orientation. Mycroft will then examine the exterior of the S5 spacecraft to search for damaged components such as the solar array and antennas.&nbsp;</p>



<p>The Mycroft-S5 RPO will occur in stages over a period of several weeks, demonstrating the utility of inspection and characterization capabilities in a real-world satellite recovery. AFRL is planning to transition operations to Air Force Space Command later this year. </p>
<p>The post <a href="https://www.aiuniverse.xyz/kafb-air-force-research-laboratory-to-rendezvous-and-inspect-malfunctioning-s5-satellite/">KAFB: Air Force Research Laboratory To Rendezvous And Inspect Malfunctioning S5 Satellite</a> appeared first on <a href="https://www.aiuniverse.xyz">Artificial Intelligence</a>.</p>
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