Telecommunications
Generative Neural Network based Spectrum Sharing using Linear Sum Assignment Problems
Zaky, Ahmed B., Huang, Joshua Zhexue, KaishunWu, null, ElHalawany, Basem M.
Spectrum management and resource allocation (RA) problems are challenging and critical in a vast number of research areas such as wireless communications and computer networks. The traditional approaches for solving such problems usually consume time and memory, especially for large size problems. Recently different machine learning approaches have been considered as potential promising techniques for combinatorial optimization problems, especially the generative model of the deep neural networks. In this work, we propose a resource allocation deep autoencoder network, as one of the promising generative models, for enabling spectrum sharing in underlay device-to-device (D2D) communication by solving linear sum assignment problems (LSAPs). Specifically, we investigate the performance of three different architectures for the conditional variational autoencoders (CVAE). The three proposed architecture are the convolutional neural network (CVAE-CNN) autoencoder, the feed-forward neural network (CVAE-FNN) autoencoder, and the hybrid (H-CVAE) autoencoder. The simulation results show that the proposed approach could be used as a replacement of the conventional RA techniques, such as the Hungarian algorithm, due to its ability to find solutions of LASPs of different sizes with high accuracy and very fast execution time. Moreover, the simulation results reveal that the accuracy of the proposed hybrid autoencoder architecture outperforms the other proposed architectures and the state-of-the-art DNN techniques.
MVFST-RL: An Asynchronous RL Framework for Congestion Control with Delayed Actions
Sivakumar, Viswanath, Rocktรคschel, Tim, Miller, Alexander H., Kรผttler, Heinrich, Nardelli, Nantas, Rabbat, Mike, Pineau, Joelle, Riedel, Sebastian
Effective network congestion control strategies are key to keeping the Internet (or any large computer network) operational. Network congestion control has been dominated by hand-crafted heuristics for decades. Recently, ReinforcementLearning (RL) has emerged as an alternative to automatically optimize such control strategies. Research so far has primarily considered RL interfaces which block the sender while an agent considers its next action. This is largely an artifact of building on top of frameworks designed for RL in games (e.g. OpenAI Gym). However, this does not translate to real-world networking environments, where a network sender waiting on a policy without sending data is costly for throughput. We instead propose to formulate congestion control with an asynchronous RL agent that handles delayed actions. We present MVFST-RL, a scalable framework for congestion control in the QUIC transport protocol that leverages state-of-the-art in asynchronous RL training with off-policy correction. We analyze modeling improvements to mitigate the deviation from Markovian dynamics, and evaluate our method on emulated networks from the Pantheon benchmark platform. The source code is publicly available at https://github.com/facebookresearch/mvfst-rl.
5G technology to drive Konza City development - Citizentv.co.ke
Is Kenya ready for five 5G network? With Asia and other continents of the world taking steps to become a global leader in 5G and the Advanced Intelligence (AI) technology, Kenya will be ranked one of the first East African countries to tap into this, with the completion of the Data Centre by Huawei in Konza Smart City. This would help to revolutionize several industries, including manufacturing, agriculture, transport, health sector, making factory automation, as well as communication between self-driving vehicles to regulate traffic. According to Ms Pamela Tutui, a director at Konza Technopolis Development Authority (KoTDA), Kenya is set to borrow ideas from a campus in China's Shenzhen City to lift Konza Smart City to a technology hub in Africa. "Smart cities is bringing solutions to a city that is not smart. Like in Nairobi what is stopping us from having street lights, from looking at our road networks and to go beyond just taxis and looking into our busing lanes," says Ann Theresse Jatta Ndong โ Director UNESCO regional Eastern Africa.
The 2018 Survey: AI and the Future of Humans
"Please think forward to the year 2030. Analysts expect that people will become even more dependent on networked artificial intelligence (AI) in complex digital systems. Some say we will continue on the historic arc of augmenting our lives with mostly positive results as we widely implement these networked tools. Some say our increasing dependence on these AI and related systems is likely to lead to widespread difficulties. Our question: By 2030, do you think it is most likely that advancing AI and related technology systems will enhance human capacities and empower them? That is, most of the time, will most people be better off than they are today? Or is it most likely that advancing AI and related technology systems will lessen human autonomy and agency to such an extent that most people will not be better off than the way things are today? Please explain why you chose the answer you did and sketch out a vision of how the human-machine/AI collaboration will function in 2030.
How to Protect your AI Innovations with a Patent: Updated EPO Guidelines
Artificial intelligence (AI) and machine learning (ML) are here to stay. Besting humans in complex games such as Go and Poker was just the beginning. Today, companies in fields as diverse as life and medical sciences, telecommunications, energy management, security, and manufacturing are seeing the benefits that artificial intelligence and machine learning can bring. This impact is reflected both in the number of scientific publications in the field (over 1.6 million and counting) and also in the number of patent filings (nearly 340'000 worldwide to date). The pace shows no signs of slowing down: patent filings in deep learning (an area of AI) experienced an average annual growth rate of 175% between 2013 and 2016.
Toward digital power over states - Atlantic Council
Security officers keep watch in front of an AI (Artificial Intelligence) sign at the annual Huawei Connect event in Shanghai, China September 18, 2019. Rapid advances in digital technologies amplify the potential for data acquisition from and influence over other states. One state aggressively pursuing digital advantage globally is China, especially in its leveraging of artificial intelligence (AI). This memo presents recent data from multiple sources and initial analysis to set the stage for discussion about the profound implications of imminent digital power by China. A leading concern for those states not presently engaged in AI and related technologies is that they will fall behind those that are already heavily innovating and investing.
Data Science Is Aiming To Be The Biggest Tool for Telecom Industries
Data science is aiming to be the biggest tool nowadays for multiple industries to diversify their business and stimulate it at a very high rate. Data science is responsible for the exponential growth of the business and increasing its effectiveness at compound rates. It is a multidisciplinary field which includes detailed study of ample data in various structured, semi-structured and unstructured form. Data science helps in enriching the data and execute it better for further use by the company. Data science is working in the same way as the fuel works for the vehicle. Therefore, every industry is striving to incorporate this technology as quickly as possible.
Press Release - Welcome Avanseus
Singapore/Bengaluru, 12-07-2019: Avanseus announces the release of 4.0 version of their Artificial Intelligence based Cognitive Assistant for Networks (CAN). The release is available from 12 th of July 2019 to all customers across the globe and for new upcoming requirements. This version of CAN is more suited for hassle-free operationalization and equipped with more intelligence and learning capability in comparison with its previous versions. The existing version CAN 3.0 is already powering the majority of telecom operators across the world with prediction success rate of more than 75% setting a benchmark in the industry. The new release will enable the customer in easy decision making and management of their network incidents as CAN 4.0 provides meaningful and relevant inputs on the important and critical fault predictions.
The 15 tech trends that could change everything in the next decade ZDNet
CCS Insight unveiled a set of predictions for 2020 and beyond at its annual future-gazing event in London on Thursday 3 October. With the turn of the decade approaching, the tech analyst firm's timeframe was longer than usual, stretching to 2030. A total of 90 predictions were released (10 fewer than last year), ranging from the properly futuristic ('By 2030, there is a permanent communication station on the Moon') to the very specific ('Samsung launches Galaxy Glasses in 2022'). The event saw keynote presentations from CCS Insight analysts and on-stage interviews with tech luminaries including: Cristiano Amon, president of Qualcomm; Stefan Streit, CMO at TCL; Olaf Swantee, CEO of Sunrise; and Daniel Rausch, VP Smart Home at Amazon. Here are CCS Insight's top 15 predictions (with some'further reading' links): By 2021, algorithmic and anti-bias data auditors emerge to tackle "pale, male and stale" artificial intelligence Read more on ZDNet & TechRepublic What is bias in AI really, and why can't AI neutralize it?
SiteSee deploys ContextCapture to model communication towers
US: Telecommunication infrastructure owners have some of the most widely distributed and remote assets to build, maintain, and repair. With approximately 27,000 distributed sites and 6,000 communication towers under management, Telstra is Australia's leading telecommunication service provider. Traditional inspection methods of towers involve manually taking photographs and measurements. This requires workers climbing on the towers, usually in remote areas, making the process dangerous, inefficient, costly, and time-consuming. In 2017, Telstra engaged SiteSee to perform automated as-built and condition assessment reports by applying machine learning and object recognition technology to 3D reality meshes.