front cover of AIoT Technologies and Applications for Smart Environments
AIoT Technologies and Applications for Smart Environments
Mamoun Alazab
The Institution of Engineering and Technology, 2022
Although some IoT systems are built for simple event control where a sensor signal triggers a corresponding reaction, many events are far more complex, requiring applications to interpret the event using analytical techniques to initiate proper actions. Artificial intelligence of things (AIoT) applies intelligence to the edge and gives devices the ability to understand the data, observe the environment around them, and decide what to do best with minimum human intervention. With the power of AI, AIoT devices are not just messengers feeding information to control centers. They have evolved into intelligent machines capable of performing self-driven analytics and acting independently. A smart environment uses technologies such as wearable devices, IoT, and mobile internet to dynamically access information, connect people, materials and institutions, and then actively manages and responds to the ecosystem's needs in an intelligent manner.
[more]

front cover of Big Data and Software Defined Networks
Big Data and Software Defined Networks
Javid Taheri
The Institution of Engineering and Technology, 2018
Big Data Analytics and Software Defined Networking (SDN) are helping to drive the management of data and usage of the extraordinary increase of computer processing power provided by Cloud Data Centres (CDCs). SDN helps CDCs run their services more efficiently by enabling managers to configure, manage, secure, and optimize the network resources very quickly. Big-Data Analytics in turn has entered CDCs to harvest the massive computing powers and deduct information that was never reachable by conventional methods.
[more]

logo for The Institution of Engineering and Technology
Blockchain Technology in e-Healthcare Management
Suyel Namasudra
The Institution of Engineering and Technology, 2022
The healthcare arena has seen a shift in recent years, with more healthcare provisions being delivered or managed via electronic means. Healthcare providers can now provide patients with diagnosis, treatment, monitoring, or a prescription without ever sharing the same physical space. With so much more patient data now stored and accessed electronically, the security of this information is ever more critical to the delivery of effective and efficient healthcare services. As blockchains are resistant to modification of their data, blockchain technology therefore provides traceable and reliable security to e-Healthcare systems and services.
[more]

front cover of Demystifying Graph Data Science
Demystifying Graph Data Science
Graph algorithms, analytics methods, platforms, databases, and use cases
Pethuru Raj
The Institution of Engineering and Technology, 2022
With the growing maturity and stability of digitization and edge technologies, vast numbers of digital entities, connected devices, and microservices interact purposefully to create huge sets of poly-structured digital data. Corporations are continuously seeking fresh ways to use their data to drive business innovations and disruptions to bring in real digital transformation. Data science (DS) is proving to be the one-stop solution for simplifying the process of knowledge discovery and dissemination out of massive amounts of multi-structured data.
[more]

front cover of Handbook of Big Data Analytics
Handbook of Big Data Analytics
Applications in ICT, security and business analytics, Volume 2
Vadlamani Ravi
The Institution of Engineering and Technology, 2021
Big Data analytics is the complex process of examining big data to uncover information such as correlations, hidden patterns, trends and user and customer preferences, to allow organizations and businesses to make more informed decisions. These methods and technologies have become ubiquitous in all fields of science, engineering, business and management due to the rise of data-driven models as well as data engineering developments using parallel and distributed computational analytics frameworks, data and algorithm parallelization, and GPGPU programming. However, there remain potential issues that need to be addressed to enable big data processing and analytics in real time.
[more]

front cover of Handbook of Big Data Analytics
Handbook of Big Data Analytics
Methodologies, Volume 1
Vadlamani Ravi
The Institution of Engineering and Technology, 2021
Big Data analytics is the complex process of examining big data to uncover information such as correlations, hidden patterns, trends and user and customer preferences, to allow organizations and businesses to make more informed decisions. These methods and technologies have become ubiquitous in all fields of science, engineering, business and management due to the rise of data-driven models as well as data engineering developments using parallel and distributed computational analytics frameworks, data and algorithm parallelization, and GPGPU programming. However, there remain potential issues that need to be addressed to enable big data processing and analytics in real time.
[more]

front cover of Integrating Social Media into Information Systems
Integrating Social Media into Information Systems
Requirements, Gaps, and Potential Solutions
Douglas Yeung, Douglas
RAND Corporation, 2018
This report examines the technical challenges associated with incorporating bulk, automated analysis of social media information into procedures for vetting people seeking entry into the United States. The authors identify functional requirements and a framework for operational metrics for the proposed social media screening capabilities and provide recommendations on how to implement those capabilities.
[more]

front cover of Intelligent Network Design Driven by Big Data Analytics, IoT, AI and Cloud Computing
Intelligent Network Design Driven by Big Data Analytics, IoT, AI and Cloud Computing
Sunil Kumar
The Institution of Engineering and Technology, 2022
As enterprise access networks evolve with a larger number of mobile users, a wide range of devices and new cloud-based applications, managing user performance on an end-to-end basis has become rather challenging. Recent advances in big data network analytics combined with AI and cloud computing are being leveraged to tackle this growing problem. AI is becoming further integrated with software that manage networks, storage, and can compute.
[more]

logo for The Institution of Engineering and Technology
Knowledge Discovery and Data Mining
M.A. Bramer
The Institution of Engineering and Technology, 1999
Modern computing systems of all kinds accumulate various data at an almost unimaginable rate. Alongside the advances in technology that make such storage possible has grown a realisation that buried within this mass of data there may exist some knowledge of considerable value. This could be information critical for a company's business success or something leading to a scientific or medical discovery or breakthrough. Most data is simply stored and never examined, but machine-learning technology has the potential to extract knowledge of value (i.e. data mining).
[more]

front cover of News in a Digital Age
News in a Digital Age
Comparing the Presentation of News Information over Time and Across Media Platforms
Jonathan S. Kavanagh
RAND Corporation, 2019
This report presents a quantitative assessment of how the presentation of news has changed over the past 30 years and how it varies across platforms. Over time, and as society moved from “old” to “new” media, news content has generally shifted from more-objective event- and context-based reporting to reporting that is more subjective, relies more heavily on argumentation and advocacy, and includes more emotional appeals.
[more]

front cover of Streaming Analytics
Streaming Analytics
Concepts, architectures, platforms, use cases and applications
Pethuru Raj
The Institution of Engineering and Technology, 2022
When digitized entities, connected devices and microservices interact purposefully, we end up with a massive amount of multi-structured streaming (real-time) data that is continuously generated by different sources at high speed. Streaming analytics allows the management, monitoring, and real-time analytics of live streaming data. The topic has grown in importance due to the emergence of online analytics and edge and IoT platforms. A real digital transformation is being achieved across industry verticals through meticulous data collection, cleansing and crunching in real time. Capturing and subjecting those value-adding events is considered to be the prime task for achieving trustworthy and timely insights.
[more]


Send via email Share on Facebook Share on Twitter