engineering perspective
Telecom AI Native Systems in the Age of Generative AI -- An Engineering Perspective
Britto, Ricardo, Murphy, Timothy, Iovene, Massimo, Jonsson, Leif, Erol-Kantarci, Melike, Kovács, Benedek
The rapid advancements in Artificial Intelligence (AI), particularly in generative AI and foundational models (FMs), have ushered in transformative changes across various industries. Large language models (LLMs), a type of FM, have demonstrated their prowess in natural language processing tasks and content generation, revolutionizing how we interact with software products and services. This article explores the integration of FMs in the telecommunications industry, shedding light on the concept of AI native telco, where AI is seamlessly woven into the fabric of telecom products. It delves into the engineering considerations and unique challenges associated with implementing FMs into the software life cycle, emphasizing the need for AI native-first approaches. Despite the enormous potential of FMs, ethical, regulatory, and operational challenges require careful consideration, especially in mission-critical telecom contexts. As the telecom industry seeks to harness the power of AI, a comprehensive understanding of these challenges is vital to thrive in a fiercely competitive market.
Explainable Artificial Intelligence (XAI): An Engineering Perspective
Hussain, F., Hussain, R., Hossain, E.
The remarkable advancements in Deep Learning (DL) algorithms have fueled enthusiasm for using Artificial Intelligence (AI) technologies in almost every domain; however, the opaqueness of these algorithms put a question mark on their applications in safety-critical systems. In this regard, the `explainability' dimension is not only essential to both explain the inner workings of black-box algorithms, but it also adds accountability and transparency dimensions that are of prime importance for regulators, consumers, and service providers. eXplainable Artificial Intelligence (XAI) is the set of techniques and methods to convert the so-called black-box AI algorithms to white-box algorithms, where the results achieved by these algorithms and the variables, parameters, and steps taken by the algorithm to reach the obtained results, are transparent and explainable. To complement the existing literature on XAI, in this paper, we take an `engineering' approach to illustrate the concepts of XAI. We discuss the stakeholders in XAI and describe the mathematical contours of XAI from engineering perspective. Then we take the autonomous car as a use-case and discuss the applications of XAI for its different components such as object detection, perception, control, action decision, and so on. This work is an exploratory study to identify new avenues of research in the field of XAI.
UX Design in the age of Machine Learning – Data Driven Investor – Medium
For Hollywood, AI is a somewhat nuanced boogie-man. Movies like Terminator and She propose a generally intelligent agent capable of being more human than human, at least in certain circumstances. The reality of AI thankfully falls far short. The mundanity of current human/AI interactions doesn't diminish the need for the engineers and designers of these systems to give some thought to human interactions. I recognize this obscures a lot of complexity but it's not really relevant here).