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Träfflista för sökning "WFRF:(Rizk Aya) "

Search: WFRF:(Rizk Aya)

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1.
  • Brännvall, Rickard, et al. (author)
  • National Space Data Lab on Kubernetes
  • 2019
  • Conference paper (other academic/artistic)abstract
    • The National Space Data Lab is a collaboration project between Swedish National Space Agency, RISE Research Institutes of Sweden, Luleå University of Technology and AI Sweden. It will be a national knowledge and data hub for Swedish authorities’ work on earth observation data and for the development of AI-based analysis of data, generated in space systems. The platform is deployed on Kubernetes.Purpose• Increase the availability of space data for the benefit of developing society and industry• Provide platform for accessing space data and analytical tools
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2.
  • Lindgren, Ida, et al. (author)
  • Organizational conditions required to implement RPA in local government Insights from a Swedish case study
  • 2024
  • In: PROCEEDINGS OF THE 25TH ANNUAL INTERNATIONAL CONFERENCE ON DIGITAL GOVERNMENT RESEARCH, DGO 2024. - : ASSOC COMPUTING MACHINERY. - 9798400709883 ; , s. 434-442
  • Conference paper (peer-reviewed)abstract
    • Automation of administrative work, using Robotic Process Automation (RPA), has been highlighted as something that can help Swedish municipalities to reduce costs and improve efficiency. The use of RPA in Swedish municipalities is still in its infancy, and much can be learned from the experiences made so far. In this paper, we present an overview of the findings from a four-year case study investigating RPA development, implementation, and use in Swedish municipalities. The aim of the paper is to describe the general drive to implement RPA in Swedish municipalities, the intended uses of RPA in this context, and challenges experienced as part of RPA implementation. Based on this description, we outline a set of organizational conditions required to work with RPA in local government. Our findings illustrate that process automation is only partly about technology. The main focus in process automation must be on mapping and developing processes and routines. RPA-technology is best seen as a tool and not as an end in itself. It is therefore important to develop the employees' abilities and knowledge regarding both processes and automation, so that the employees can drive the development forward based on the challenges and opportunities that arise in their practical work.
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3.
  • Padyab, Ali Mohammad, et al. (author)
  • Adoption Barriers of IoT in Large Scale Pilots
  • 2020
  • In: Information. - : MDPI. - 2078-2489. ; 11:23, s. 1-23
  • Journal article (peer-reviewed)abstract
    • The pervasive connectivity of devices enabled by Internet of Things (IoT) technologies is leading the way in various innovative services and applications. This increasing connectivity comes with its own complexity. Thus, large scale pilots (LSPs) are designed to develop, test and use IoT innovations in various domains in conditions very similar to their operational scalable setting. One of the key challenges facing the diffusion of such innovations within the course of an LSP is understanding the conditions in which their respective users decide to adopt them (or not). Accordingly, in this study we explore IoT adoption barriers in four LSPs in Europe from the following domains: smart cities, autonomous driving, wearables and smart agriculture and farming. By applying Roger’s Diffusion of Innovation as a theoretical lens and using empirical data from workshops and expert interviews, we identify a set of common and domain specific adoption barriers. Our results reveal that trust, cost, perceived value, privacy and security are common concerns, yet shape differently across domains. In order to overcome various barriers, the relative advantage or value of using the innovation needs to be clearly communicated and related to the users’ situational use; while this value can be economic in some domains, it is more hedonic in others. LSPs were particularly challenged in applying established strategies to overcome some of those barriers (e.g., co-creation with end-users) due to the immaturity of the technology as well as the scale of pilots. Accordingly, we reflect on the theoretical choice in the discussion as well as the implications of this study on research and practice. We conclude with providing practical recommendations to LSPs and avenues for future research
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4.
  • Rizk, Aya, 1988-, et al. (author)
  • A Conceptual Framework and Considerations for Digital Prototyping
  • 2021
  • In: Innovating Our Common Future. - : LUT Scientific and Expertise Publications.
  • Conference paper (peer-reviewed)abstract
    • Digital technology is embedded in most of organizations’ offerings and processes. With this trend comes also a need of being able to collect the opportunities that emerge during the development of these products, services and processes. For this reason, it has been identified that in early phases of development, methodologies that support communication and knowledge creation (i.e. prototyping) is key. Though prototyping is a natural part of development of physical products, it is less common in digital innovation and development. This study addresses this by developing a conceptual framework for prototyping for digital innovation. By taking a comprehensive view on prototypes, implications for development are analysed and developed based on the complex nature and ontology of digital  technology.
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5.
  • Rizk, Aya, 1988-, et al. (author)
  • A Framework for Informal Learning Analytics - Evidence from the Literacy Domain
  • 2021
  • In: Proceedings of the 54th Hawaii International Conference on System Sciences. - : University of Hawaii at Manoa. ; , s. 1509-1517
  • Conference paper (peer-reviewed)abstract
    • Multidisciplinary approaches to learning analytics (LA) have the potential to provide important insights into student learning beyond interactions within learning management systems (LMS). In this paper we demonstrate the benefits of such an approach by proposing a framework that adds the contextual elements of task design, tools and technologies and datasets to established LA processes. Our framework was developed as a design science research (DSR) artifact, working with teachers of English at two Swedish secondary schools. The results highlight the importance of valid task design for generating relevant, useful insights and provide a basis for simplifying and automating in-situ LA that can be used by teachers in their everyday work. The study also provided important insights for the field of online research and comprehension (ORC) both in relation to methodology and how students engage with a task that requires locating and synthesizing information on the open Internet in a second language.
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7.
  • Rizk, Aya (author)
  • Data Analytics in Service Systems: Exploring Analytics-based Value Co-creation
  • 2016
  • Conference paper (peer-reviewed)abstract
    • With the increasing pervasiveness of ICT in our everyday practices, we are turning into moving ‘data generators’. Service systems, among many organizational configurations, are striving to create value from the vast data generated by utilizing data analytics, which in turn informs the design and delivery of their innovative services. While data analytics is perceived to generate high value to organizations, we know little about how this process unfolds, what values can be captured, and if they change on different loci of value within service systems. To address these gaps, this paper outlines a research study to explore analytics-driven service systems using a sociomaterial theoretical lens. The study will follow a qualitative research approach, drawing on empirical data from a smart city context.
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8.
  • Rizk, Aya, 1988- (author)
  • Data-driven Innovation : An exploration of outcomes and processes within federated networks
  • 2020
  • Doctoral thesis (other academic/artistic)abstract
    • The emergence and pervasiveness of digital technologies are changing many aspects of our lives, including what and how we innovate. Industries and societies are competing to embrace this wave of digitalization by developing the right infrastructures and ecosystems for innovation. Similarly, innovation managers and entrepreneurs are using digital technologies to develop novel products, services, processes, business models, etc. One of the major consequences of digitalization is the massive amounts of machine-readable data generated through digital interactions. But this is not only a consequence, it is also a driver for other innovations to emerge. Employing analytical techniques on data to extract useful patterns and insights enables different aspects of innovation. During the last decade, scholars within digital innovation have started to explore this relationship between analytics and innovation, a phenomenon referred to as data-driven innovation (DDI). Most theories to date view analytics as variable that affects innovation in performative terms and treats it as a black-box. However, if the innovation managers and entrepreneurs are to manage and navigate DDI, and for the investors, funders and policymakers to take informed decisions, they need a better understanding of how DDI outcomes (i.e. market offerings such as products and services) are shaped and how they emerge from a process perspective.This dissertation explores this research gap by addressing two research questions: “What characterizes data-driven innovation outcomes?” and “How do data-driven innovations emerge in federated networks?” A federated network is a type of – increasingly common – contemporary innovation structure that is also enabled by digital technology. The dissertation is based on a compilation of five articles addressing these questions. The overall research approach follows a multiple case study design and the empirical investigation takes place in two case sites corresponding to two EU-funded projects.As a result, a classification taxonomy is developed for data-driven digital services. This taxonomy contributes to the conceptualization of DDI outcomes grounded on static and dynamic characteristics. In addition, a DDI process framework is proposed that highlights the importance of exploration, the temporal relationship between data acquisition and innovation development, and the various factors that influence the process along with examples of their contextual manifestations. Finally, social and cognitive interactions within federated networks of DDI are explored to reveal that the innovation teams rely on data-driven representations to facilitate various stakeholders’ engagement and contribution throughout the process. These representations eventually stabilize into boundary objects that retain the factual integrity of the data and analytical models but are also flexible for contextual interpretation and use. These findings contribute to the current discourse within digital innovation by introducing the lens of data analytics to conceptualize a specific type of digital artifacts, and well as providing a rich descriptive account of an extended digital innovation process. They also contribute to the discourse on data-driven innovation by providing an empirical account of DDI from a process viewpoint.
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9.
  • Rizk, Aya, 1988-, et al. (author)
  • Data-driven innovation processes within federated networks
  • 2022
  • In: European Journal of Innovation Management. - : Emerald Group Publishing Limited. - 1460-1060 .- 1758-7115. ; 25:6, s. 498-526
  • Journal article (peer-reviewed)abstract
    • PurposeWithin digital innovation, there are two significant consequences of the pervasiveness of digital technology: (1) the increasing connectivity is enabling a wider reach and scope of innovation structures, such as innovation networks and (2) the unprecedented availability of digital data is creating new opportunities for innovation. Accordingly, there is a growing domain for studying data-driven innovation (DDI), especially in contemporary contexts of innovation networks. The purpose of this study is to explore how DDI processes take form in a specific type of innovation networks, namely federated networks.Design/methodology/approachA multiple case study design is applied in this paper. We draw our analysis from data collected over six months from four cases of DDI. The within-analysis is aimed at constructing the DDI process instance in each case, while the crosscase analysis focuses on pattern matching and cross-case synthesis of common and unique characteristics in the constructed processes.FindingsEvidence from the crosscase analysis suggests that the widely accepted four-phase digital innovation process (including discovery, development, diffusion and post-diffusion) does not account for the explorative nature of data analytics and DDI. We propose an extended process comprising an explicit exploration phase before development, where refinement of the innovation concept and exploring social relationships are essential. Our analysis also suggests two modes of DDI: (1) asynchronous, i.e. data acquired before development and (2) synchronous, i.e. data acquired after (or during) development. We discuss the implications of these modes on the DDI process and the participants in the innovation network.Originality/valueThe paper proposes an extended version of the digital innovation process that is more specifically suited for DDI. We also provide an early explanation to the variation in DDI process complexities by highlighting the different modes of DDI processes. To the best of our knowledge, this is the first empirical investigation of DDI following the process from early stages of discovery till postdiffusion.
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10.
  • Rizk, Aya, 1988-, et al. (author)
  • Data science : developing theoretical contributions in information systems via text analytics
  • 2020
  • In: Journal of Big Data. - : Springer. - 2196-1115. ; 7
  • Journal article (peer-reviewed)abstract
    • Scholars have been increasingly calling for innovative research in the organizational sciences in general, and the information systems (IS) field in specific, one that breaks from the dominance of gap-spotting and specific methodical confinements. Hence, pushing the boundaries of information systems is needed, and one way to do so is by relying more on data and less on a priori theory. Data, being considered one of the most important resources in research, and society at large, requires the application of scientific methods to extract valuable knowledge towards theoretical development. However, the nature of knowledge varies from a scientific discipline to another, and the views on data science (DS) studies are substantially diverse. These views vary from being seen as a new scientific (fourth) paradigm, to an extension of existing paradigms with new tools and methods, to a phenomenon or object of study. In this paper, we review these perspectives and expand on the view of data science as a methodology for scientific inquiry. Motivated by the IS discipline’s history and accumulated knowledge in using DS methods for understanding organizational and societal phenomena, IS theory and theoretical contributions are given particular attention as the key outcome of adopting such methodology. Exemplar studies are analyzed to show how rigor can be achieved, and an illustrative example using text analytics to study digital innovation is provided to guide researchers.
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