Telecommunications
Truecaller's call screening AI is now available in the U.S.
Truecaller, a popular spam reporting and caller ID app, has launched a new feature that scrutinizes calls, responds to basic queries, and even handles scut work. Called Truecaller Assistant, the feature takes over the tedious parts of phone calls, especially when you don't want to deal with spam -- or worse -- scam calls. Truecaller's announcement comes just days after the Federal Communications Commission (FCC) confirmed it had approved a long-standing proposal to block unwanted promotional texts in response to countless complaints. The federal agency will work with mobile operators to culminate these spam texts at the origination level, flag spamming numbers, and attempt to educate users. However, the approach is focused on texts and does not elicit action against spam calls.
A canonical correlation-based framework for performance analysis of radio access networks
Ahmed, Furqan, Asghar, Muhammad Zeeshan, Hämäläinen, Jyri
Data driven optimization and machine learning based performance diagnostics of radio access networks entails significant challenges arising not only from the nature of underlying data sources but also due to complex spatio-temporal relationships and interdependencies between cells due to user mobility and varying traffic patterns. We discuss how to study these configuration and performance management data sets and identify relationships between cells in terms of key performance indicators using multivariate analysis. To this end, we leverage a novel framework based on canonical correlation analysis (CCA), which is a highly effective method for not only dimensionality reduction but also for analyzing relationships across different sets of multivariate data. As a case study, we discuss energy saving use-case based on cell shutdown in commercial cellular networks, where we apply CCA to analyze the impact of capacity cell shutdown on the KPIs of coverage cell in the same sector. Data from LTE Network is used to analyzed example case. We conclude that CCA is a viable approach for identifying key relationships not only between network planning and configuration data, but also dynamic performance data, paving the way for endeavors such as dimensionality reduction, performance analysis, and root cause analysis for performance diagnostics.
Mobile Edge Computing, Metaverse, 6G Wireless Communications, Artificial Intelligence, and Blockchain: Survey and Their Convergence
With the advances of the Internet of Things (IoT) and 5G/6G wireless communications, the paradigms of mobile computing have developed dramatically in recent years, from centralized mobile cloud computing to distributed fog computing and mobile edge computing (MEC). MEC pushes compute-intensive assignments to the edge of the network and brings resources as close to the endpoints as possible, addressing the shortcomings of mobile devices with regard to storage space, resource optimisation, computational performance and efficiency. Compared to cloud computing, as the distributed and closer infrastructure, the convergence of MEC with other emerging technologies, including the Metaverse, 6G wireless communications, artificial intelligence (AI), and blockchain, also solves the problems of network resource allocation, more network load as well as latency requirements. Accordingly, this paper investigates the computational paradigms used to meet the stringent requirements of modern applications. The application scenarios of MEC in mobile augmented reality (MAR) are provided. Furthermore, this survey presents the motivation of MEC-based Metaverse and introduces the applications of MEC to the Metaverse. Particular emphasis is given on a set of technical fusions mentioned above, e.g., 6G with MEC paradigm, MEC strengthened by blockchain, etc.
SCS Students Earn Qualcomm Innovation Fellowships for Pose Estimation, Distributed Deep Learning
Two School of Computer Science students were part of teams awarded 2022 Qualcomm Innovation Fellowships for their work in pose estimation and optimization in distributed deep learning. As part of the program, each team will receive $100,000 in funding and mentoring from Qualcomm engineers. Zhengyi Luo, a Ph.D. student in the Robotics Institute (RI), and Yu-Jhe Li, a Ph.D. student in the Electrical and Computer Engineering Department, are researching pose estimation, an essential component for human-like 3D avatars in games or sci-fi-like telepresence. They were nominated for their proposal "Near- and Far-Field Sensor Fusion for 3D Body Pose Estimation and Tracking," which merges the two sensing techniques and leverages the advantages of each. By fusing the two data streams, their work could enhance the quality of immersive mixed-reality experiences.
Why 5G? Because your business wants to do more, faster
Recently, I joined Verizon's 5G Innovations Session at the award-winning State Farm Arena. The event was attended by a wide range of non-telecom folks--executives from the Atlanta Hawks, Verizon Business customers and other companies leading in their industries but not so familiar with 5G. Through a host of interactive experiences, customers got to engage actively with 5G, learning new ways to streamline, secure and further connect their businesses. The excitement at the event was palpable. Attendees who began as skeptics realized that 5G is not pie-in-the-sky future technology.
Mitigating Attacks on Artificial Intelligence-based Spectrum Sensing for Cellular Network Signals
Catak, Ferhat Ozgur, Kuzlu, Murat, Sarp, Salih, Catak, Evren, Cali, Umit
Cellular networks (LTE, 5G, and beyond) are dramatically growing with high demand from consumers and more promising than the other wireless networks with advanced telecommunication technologies. The main goal of these networks is to connect billions of devices, systems, and users with high-speed data transmission, high cell capacity, and low latency, as well as to support a wide range of new applications, such as virtual reality, metaverse, telehealth, online education, autonomous and flying vehicles, advanced manufacturing, and many more. To achieve these goals, spectrum sensing has been paid more attention, along with new approaches using artificial intelligence (AI) methods for spectrum management in cellular networks. This paper provides a vulnerability analysis of spectrum sensing approaches using AI-based semantic segmentation models for identifying cellular network signals under adversarial attacks with and without defensive distillation methods. The results showed that mitigation methods can significantly reduce the vulnerabilities of AI-based spectrum sensing models against adversarial attacks.
Actor-Critic Network for O-RAN Resource Allocation: xApp Design, Deployment, and Analysis
Kouchaki, Mohammadreza, Marojevic, Vuk
Open Radio Access Network (O-RAN) has introduced an emerging RAN architecture that enables openness, intelligence, and automated control. The RAN Intelligent Controller (RIC) provides the platform to design and deploy RAN controllers. xApps are the applications which will take this responsibility by leveraging machine learning (ML) algorithms and acting in near-real time. Despite the opportunities provided by this new architecture, the progress of practical artificial intelligence (AI)-based solutions for network control and automation has been slow. This is mostly because of the lack of an endto-end solution for designing, deploying, and testing AI-based xApps fully executable in real O-RAN network. In this paper we introduce an end-to-end O-RAN design and evaluation procedure and provide a detailed discussion of developing a Reinforcement Learning (RL) based xApp by using two different RL approaches and considering the latest released O-RAN architecture and interfaces.
A Challenge on Semi-Supervised and Reinforced Task-Oriented Dialog Systems
Ou, Zhijian, Feng, Junlan, Li, Juanzi, Li, Yakun, Liu, Hong, Peng, Hao, Huang, Yi, Zhao, Jiangjiang
Task-oriented dialogue (TOD) systems are designed to assist users to accomplish their goals, and have gained more and more attention in both academia and industry with recent advances in neural approaches (Williams et al., 2016; Gao et al., 2019). A TOD system typically consists of several modules, which track user goals to update dialog states, query a task-related knowledge base (KB) using the dialog states, decide actions and generate responses. Unfortunately, building TOD systems remains a label-intensive, time-consuming task for two main reasons.
AI and 6G into the Metaverse: Fundamentals, Challenges and Future Research Trends
Zawish, Muhammad, Dharejo, Fayaz Ali, Khowaja, Sunder Ali, Dev, Kapal, Davy, Steven, Qureshi, Nawab Muhammad Faseeh, Bellavista, Paolo
Since Facebook was renamed Meta, a lot of attention, debate, and exploration have intensified about what the Metaverse is, how it works, and the possible ways to exploit it. It is anticipated that Metaverse will be a continuum of rapidly emerging technologies, usecases, capabilities, and experiences that will make it up for the next evolution of the Internet. Several researchers have already surveyed the literature on artificial intelligence (AI) and wireless communications in realizing the Metaverse. However, due to the rapid emergence and continuous evolution of technologies, there is a need for a comprehensive and in-depth survey of the role of AI, 6G, and the nexus of both in realizing the immersive experiences of Metaverse. Therefore, in this survey, we first introduce the background and ongoing progress in augmented reality (AR), virtual reality (VR), mixed reality (MR) and spatial computing, followed by the technical aspects of AI and 6G. Then, we survey the role of AI in the Metaverse by reviewing the state-of-the-art in deep learning, computer vision, and Edge AI to extract the requirements of 6G in Metaverse. Next, we investigate the promising services of B5G/6G towards Metaverse, followed by identifying the role of AI in 6G networks and 6G networks for AI in support of Metaverse applications, and the need for sustainability in Metaverse. Finally, we enlist the existing and potential applications, usecases, and projects to highlight the importance of progress in the Metaverse. Moreover, in order to provide potential research directions to researchers, we underline the challenges, research gaps, and lessons learned identified from the literature review of the aforementioned technologies.
Predicting the Future of AI with AI: High-quality link prediction in an exponentially growing knowledge network
Krenn, Mario, Buffoni, Lorenzo, Coutinho, Bruno, Eppel, Sagi, Foster, Jacob Gates, Gritsevskiy, Andrew, Lee, Harlin, Lu, Yichao, Moutinho, Joao P., Sanjabi, Nima, Sonthalia, Rishi, Tran, Ngoc Mai, Valente, Francisco, Xie, Yangxinyu, Yu, Rose, Kopp, Michael
A tool that could suggest new personalized research directions and ideas by taking insights from the scientific literature could significantly accelerate the progress of science. A field that might benefit from such an approach is artificial intelligence (AI) research, where the number of scientific publications has been growing exponentially over the last years, making it challenging for human researchers to keep track of the progress. Here, we use AI techniques to predict the future research directions of AI itself. We develop a new graph-based benchmark based on real-world data -- the Science4Cast benchmark, which aims to predict the future state of an evolving semantic network of AI. For that, we use more than 100,000 research papers and build up a knowledge network with more than 64,000 concept nodes. We then present ten diverse methods to tackle this task, ranging from pure statistical to pure learning methods. Surprisingly, the most powerful methods use a carefully curated set of network features, rather than an end-to-end AI approach. It indicates a great potential that can be unleashed for purely ML approaches without human knowledge. Ultimately, better predictions of new future research directions will be a crucial component of more advanced research suggestion tools.