4. Crystal balls, flying cars, and robots

Author(s):  
Jennifer M. Gidley

In spite of the substantial body of futures literature with its conceptual and methodological innovation and engagement with real world issues, misconceptions abound in academic, professional, and policy circles. The term ‘future’ is increasingly used in these circles without reference to the published futures studies material. ‘Crystal balls, flying cars, and robots’ considers general misunderstandings and the trivialization of futures research by the media. Futurists are not crystal ball gazers; they are not all involved in high-technology, flying machines, space-technology, and science fiction; and future studies is not dominantly involved with robotics, drones, and artificial intelligence. The concepts of transhumanism, posthumanism, and dehumanization are also discussed.

2021 ◽  
Vol 73 (01) ◽  
pp. 12-13
Author(s):  
Manas Pathak ◽  
Tonya Cosby ◽  
Robert K. Perrons

Artificial intelligence (AI) has captivated the imagination of science-fiction movie audiences for many years and has been used in the upstream oil and gas industry for more than a decade (Mohaghegh 2005, 2011). But few industries evolve more quickly than those from Silicon Valley, and it accordingly follows that the technology has grown and changed considerably since this discussion began. The oil and gas industry, therefore, is at a point where it would be prudent to take stock of what has been achieved with AI in the sector, to provide a sober assessment of what has delivered value and what has not among the myriad implementations made so far, and to figure out how best to leverage this technology in the future in light of these learnings. When one looks at the long arc of AI in the oil and gas industry, a few important truths emerge. First among these is the fact that not all AI is the same. There is a spectrum of technological sophistication. Hollywood and the media have always been fascinated by the idea of artificial superintelligence and general intelligence systems capable of mimicking the actions and behaviors of real people. Those kinds of systems would have the ability to learn, perceive, understand, and function in human-like ways (Joshi 2019). As alluring as these types of AI are, however, they bear little resemblance to what actually has been delivered to the upstream industry. Instead, we mostly have seen much less ambitious “narrow AI” applications that very capably handle a specific task, such as quickly digesting thousands of pages of historical reports (Kimbleton and Matson 2018), detecting potential failures in progressive cavity pumps (Jacobs 2018), predicting oil and gas exports (Windarto et al. 2017), offering improvements for reservoir models (Mohaghegh 2011), or estimating oil-recovery factors (Mahmoud et al. 2019). But let’s face it: As impressive and commendable as these applications have been, they fall far short of the ambitious vision of highly autonomous systems that are capable of thinking about things outside of the narrow range of tasks explicitly handed to them. What is more, many of these narrow AI applications have tended to be modified versions of fairly generic solutions that were originally designed for other industries and that were then usefully extended to the oil and gas industry with a modest amount of tailoring. In other words, relatively little AI has been occurring in a way that had the oil and gas sector in mind from the outset. The second important truth is that human judgment still matters. What some technology vendors have referred to as “augmented intelligence” (Kimbleton and Matson 2018), whereby AI supplements human judgment rather than sup-plants it, is not merely an alternative way of approaching AI; rather, it is coming into focus that this is probably the most sensible way forward for this technology.


Author(s):  
Xosé López-García ◽  
Ángel Vizoso

High technology is driving most of the innovation and debates in journalism today. Artificial intelligence and journalism are walking hand in hand in the current phase, defined by processes of digitization. Studies on the state of the art of such technology in the media reveal a clear tendency towards the use of more sophisticated tools. Furthermore, this research highlights how journalists are increasingly using such approaches in challenging situations. This shift has thus led to more debate on the threats and opportunities of the introduction of such technologies into a communication ecosystem that is already in need of models that can produce high-quality information. This study thus describes the state of the art on the integration of high technology into daily routines in the media. Resumen La denominada “alta tecnología” marca buena parte de la innovación y de los debates del periodismo actual. Inteligencia artificial y periodismo caminan de la mano en la fase actual de la digitalización de los procesos. Los estudios sobre el estado de las tecnologías en las redacciones de los medios muestran una clara tendencia de los periodistas a trabajar con herramientas más sofisticadas y a emplearlas en los desafíos que tienen a la hora de realizar su cometido profesional. La tendencia, que no parece tener marcha atrás, introduce renovados debates sobre las amenazas y oportunidades en un ecosistema comunicativo cada vez más complejo y más necesitado de respuestas para establecer modelos sostenibles que aseguren la existencia de información periodística de calidad. En este texto se realiza una aproximación al estado de la cuestión, se analizan experiencias y se sitúan algunos de los retos.


2019 ◽  
Vol 12 (2) ◽  
pp. 156-168
Author(s):  
Rudy van Belkom

Artificial intelligence (AI) has surpassed the level of science fiction; it is increasingly being used as an analysis tool in modern scientific research. AI is able to classify and cluster large amounts of data in a short time, which could potentially save a lot of time and money. Algorithms can also recognize patterns that scientists might overlook. These advantages are currently hardly exploited in futures studies. This article will focus on the impact of AI on the activities of a futurist. A distinction is made between predicting, exploring, and creating the future. The aim of this article is to discuss the possibilities and challenges of using AI in futures studies. One of the biggest challenges of using AI in futures studies is the dependence of AI on large amounts of data which are not available about the future. We therefore have to work with historical data. I emphasize that it is crucial for futurists to take advantage of the opportunities that AI offers in futures studies, but to be well aware of its disadvantages and limitations.


2022 ◽  
pp. 17-49
Author(s):  
Donna L. Panucci ◽  
Theresa Bullard-Whyke

The so-called “singularity” postulates that artificial intelligence technology (AI) will soon outdistance human intelligence and commandeer (Terminator-like) planetary authority from humanity. It may be stipulated that this science fiction scenario is already becoming a science-reality. However, an alternative to the threatening brain-based technological singularity is not being considered. The potential for creating a positive non-dual reality with “coherent heart entrainment” is the desirable alternative, and this alternative “heart-based coherency” can begin with healing the media-sphere. The technological singularity—perhaps the salient issue facing “healing” of the global media-sphere—is a hypothetical point in time (very soon) at which technological growth becomes uncontrollable and irreversible, resulting in unforeseeable changes to human civilization.


Author(s):  
Michael Szollosy

Public perceptions of robots and artificial intelligence (AI)—both positive and negative—are hopelessly misinformed, based far too much on science fiction rather than science fact. However, these fictions can be instructive, and reveal to us important anxieties that exist in the public imagination, both towards robots and AI and about the human condition more generally. These anxieties are based on little-understood processes (such as anthropomorphization and projection), but cannot be dismissed merely as inaccuracies in need of correction. Our demonization of robots and AI illustrate two-hundred-year-old fears about the consequences of the Enlightenment and industrialization. Idealistic hopes projected onto robots and AI, in contrast, reveal other anxieties, about our mortality—and the transhumanist desire to transcend the limitations of our physical bodies—and about the future of our species. This chapter reviews these issues and considers some of their broader implications for our future lives with living machines.


Information ◽  
2021 ◽  
Vol 12 (7) ◽  
pp. 275
Author(s):  
Peter Cihon ◽  
Jonas Schuett ◽  
Seth D. Baum

Corporations play a major role in artificial intelligence (AI) research, development, and deployment, with profound consequences for society. This paper surveys opportunities to improve how corporations govern their AI activities so as to better advance the public interest. The paper focuses on the roles of and opportunities for a wide range of actors inside the corporation—managers, workers, and investors—and outside the corporation—corporate partners and competitors, industry consortia, nonprofit organizations, the public, the media, and governments. Whereas prior work on multistakeholder AI governance has proposed dedicated institutions to bring together diverse actors and stakeholders, this paper explores the opportunities they have even in the absence of dedicated multistakeholder institutions. The paper illustrates these opportunities with many cases, including the participation of Google in the U.S. Department of Defense Project Maven; the publication of potentially harmful AI research by OpenAI, with input from the Partnership on AI; and the sale of facial recognition technology to law enforcement by corporations including Amazon, IBM, and Microsoft. These and other cases demonstrate the wide range of mechanisms to advance AI corporate governance in the public interest, especially when diverse actors work together.


Robotics ◽  
2018 ◽  
Vol 7 (3) ◽  
pp. 44 ◽  
Author(s):  
Rebekah Rousi

With a backdrop of action and science fiction movie horrors of the dystopian relationship between humans and robots, surprisingly to date-with the exception of ethical discussions-the relationship aspect of humans and sex robots has seemed relatively unproblematic. The attraction to sex robots perhaps is the promise of unproblematic affectionate and sexual interactions, without the need to consider the other’s (the robot’s) emotions and indeed preference of sexual partners. Yet, with rapid advancements in information technology and robotics, particularly in relation to artificial intelligence and indeed, artificial emotions, there almost seems the likelihood, that sometime in the future, robots too, may love others in return. Who those others are-whether human or robot-is to be speculated. As with the laws of emotion, and particularly that of the cognitive-emotional theory on Appraisal, a reality in which robots experience their own emotions, may not be as rosy as would be expected.


2018 ◽  
Vol 14 (4) ◽  
pp. 734-747 ◽  
Author(s):  
Constance de Saint Laurent

There has been much hype, over the past few years, about the recent progress of artificial intelligence (AI), especially through machine learning. If one is to believe many of the headlines that have proliferated in the media, as well as in an increasing number of scientific publications, it would seem that AI is now capable of creating and learning in ways that are starting to resemble what humans can do. And so that we should start to hope – or fear – that the creation of fully cognisant machine might be something we will witness in our life time. However, much of these beliefs are based on deep misconceptions about what AI can do, and how. In this paper, I start with a brief introduction to the principles of AI, machine learning, and neural networks, primarily intended for psychologists and social scientists, who often have much to contribute to the debates surrounding AI but lack a clear understanding of what it can currently do and how it works. I then debunk four common myths associated with AI: 1) it can create, 2) it can learn, 3) it is neutral and objective, and 4) it can solve ethically and/or culturally sensitive problems. In a third and last section, I argue that these misconceptions represent four main dangers: 1) avoiding debate, 2) naturalising our biases, 3) deresponsibilising creators and users, and 4) missing out some of the potential uses of machine learning. I finally conclude on the potential benefits of using machine learning in research, and thus on the need to defend machine learning without romanticising what it can actually do.


10.28945/4644 ◽  
2020 ◽  
Vol 4 ◽  
pp. 177-192
Author(s):  
Chrissann R. Ruehle

The Artificial Intelligence (AI) industry has experienced tremendous growth in recent years. Consequently, there has been considerable hype, interest, and even misinformation in the media regarding this emergent technology. Practitioners and academics alike are interested in learning how this market functions in order to make evidence-based decisions regarding its adoption. The purpose of this manuscript is to perform a systematic examination of the current market dynamics as well as identify future growth opportunities for the benefit of incumbents in addition to firms seeking to enter the AI market. The primary research question is: how do market and governmental forces reportedly shape AI adoptions? Drawing on predominantly practitioner focused literature, along with several seminal academic sources, the article begins by examining and mapping stakeholders in the market. This approach allows for the identification and analysis of key stakeholders. Semiconductor and cloud computing firms play a substantive role in the AI adoption ecosystem as they wield substantial power as revealed in this analysis. Subsequently, the TOE framework, which includes the technology, organization and environmental contexts, is applied in order to understand the role of these forces in shaping the AI market. This analysis demonstrates that large firms have a significant competitive advantage due to their extensive data collection and management capabilities in addition to attracting data scientists and high performing analytics professionals. Large firms are actively acquiring small and medium sized AI businesses in order to expand their offerings, particularly in dynamic emerging fields such as facial recognition technology and deep learning.


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