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lowest individual level. This indicates a significant amount of consideration for evaluating the factors involved in what personalized services the individual might want at any instance, or at any given time for that matter (Dong et al. 2017). These challenges have been tackled in very different ways by the assistants' actual developers, and they have also addressed them in different ways. One of the major ideas is that a virtual assistant must become compatible with any device in proximity, which would allow any individual to control things that surround them. Therefore, the virtual assistants will need to be integrated with the most advanced capabilities in processing and actuating actions as and when the expectations should arise (Militano et al. 2015). However, the entire breadth of the necessary operations inherently reflects the requirements of very high requirements from communication capabilities, resulting in the adoption of 5G network connectivity. It is therefore quite apparent that virtual personal assistants will greatly undergo improvement over time, especially with intelligent connectivity.

      2.7.3.2 3D Hologram Displays

      It is quite an apparent fact that the entire cast of Intelligent Connectivity speaks greatly about the next‐generation communication capabilities to the greatest extent imaginable. However, one would be remiss if there was no mention whatsoever in terms of the advancements in processing and decision making it will bring forth. The point about computing technologies has long been about facilitating services that reflect minimum possible human intervention while also ensuring that there is enough personalized presentation, alongside a properly realized mode of complete cybersecurity at large. This is where AI will find its most consequential applications. There is also no doubt that the entire case of implementing AI brings forth a very high‐level requirement of a machine or deep learning, respectively. Looking at the AI as a self‐learning entity, it has become clear that addressing all of these factors represents challenges that are very hard to address and relate to. Moreover, the significant amounts of data required to be put into the entire field bring forth the overlying cybersecurity threat scenario reaching its definitive peak. This is the clear dilemma that sectors engaging in 5G connectivity, AI, and IoT must engage to the greatest extent imaginable.

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