Transient Information Adaptation of Artificial Intelligence: Towards
Sustainable Data Processes in Complex Projects
- URL: http://arxiv.org/abs/2104.04067v2
- Date: Sun, 18 Apr 2021 18:07:20 GMT
- Title: Transient Information Adaptation of Artificial Intelligence: Towards
Sustainable Data Processes in Complex Projects
- Authors: Nicholas Dacre, Fredrik Kockum, PK Senyo
- Abstract summary: Large scale projects increasingly operate in complicated settings whilst drawing on an array of complex data-points.
90% of megaprojects globally fail to achieve their planned objectives.
Renewed interest in the concept of Artificial Intelligence seeks to enhance project managers cognitive capacity through the project lifecycle.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Large scale projects increasingly operate in complicated settings whilst
drawing on an array of complex data-points, which require precise analysis for
accurate control and interventions to mitigate possible project failure.
Coupled with a growing tendency to rely on new information systems and
processes in change projects, 90% of megaprojects globally fail to achieve
their planned objectives. Renewed interest in the concept of Artificial
Intelligence (AI) against a backdrop of disruptive technological innovations,
seeks to enhance project managers cognitive capacity through the project
lifecycle and enhance project excellence. However, despite growing interest
there remains limited empirical insights on project managers ability to
leverage AI for cognitive load enhancement in complex settings. As such this
research adopts an exploratory sequential linear mixed methods approach to
address unresolved empirical issues on transient adaptations of AI in complex
projects, and the impact on cognitive load enhancement. Initial thematic
findings from semi-structured interviews with domain experts, suggest that in
order to leverage AI technologies and processes for sustainable cognitive load
enhancement with complex data over time, project managers require improved
knowledge and access to relevant technologies that mediate data processes in
complex projects, but equally reflect application across different project
phases. These initial findings support further hypothesis testing through a
larger quantitative study incorporating structural equation modelling to
examine the relationship between artificial intelligence and project managers
cognitive load with project data in complex contexts.
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