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Future Market Growth of Ambient Intelligence


Ambient intelligence (AmI) is a new term in the technology, it is the ability of a system to understand its surrounding environment, be aware of the user (and different people/objects) within that environment and most significantly, interpret and respond to their needs, unprompted. AmI is power driven by developments in AI and refers to the method of gathering and analyzing a wide spectrum of data signals generated in sensible environments.

The global ambient intelligence market is segmented on the basis of regions into North America, Europe, Asia Pacific, Latin America and the Middle East, and Africa. North America market accounted for the largest share in the market, in 2016. This growth is attributed to increasing demand for smart buildings in the region. According to Coherent Market Insights’ analysis, the smart building market is expected to increase at a CAGR of about 18% by 2025. Rising focus on safety and security coupled with increasing concerns related to energy efficiency and emission reduction are expected to drive the growth of the smart building market.

Demand for advanced ambient power-assisted technology is anticipated to grow as the smart building projects are growing, which can boost the growth of AmI market. The innovative interface model of AmI technology is often used in different fields of the healthcare sector to boost various real-time solutions, together with providing the diagnosis of various health conditions and continuous observation health systems.

Mobile computing devices now have rather extensive capabilities. In addition to analyzing digital content, mobile devices can harness ambient data such as temperature, location, user movements, schedule, user habits, and engagement. Developers are leveraging these new capabilities and sources of data to create more advanced apps.

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