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Growing Demand for Mobile Enterprise Application Services

More capable smartphones and media tablets are now joining a variety of highly portable netbook computers that have already invaded the workplace. Many are being combined with mobile apps that tap into cloud-based productivity solutions.

According to the latest market study by ABI Research, healthcare is one of the most dynamic sectors for mobile technologies, and manufacturing is now the largest sector for mobile enterprise applications worldwide.

By 2016, manufacturing will generate approximately 23 percent of the nearly $5 billion in mobile enterprise application service revenues.

Mobile enterprise applications, also called mobile B2E applications, include dashboard apps, work flow approval apps, and line-of-business applications for both the smartphone and tablet.

ABI's mobile services practice director, Dan Shey, says, "Manufacturing beats healthcare for B2E app adoption and revenues because of its large employment worldwide and the breadth of occupations that can benefit from mobile apps."

China is also one of the biggest drivers for manufacturing B2E mobile app adoption.


Manufacturing is the second largest employer worldwide. Manufacturing also employs a wide range of occupations using B2E apps, including shipping or receiving workers, delivery drivers, management and supervisory personnel, sales, and installation and repair workers.

Moreover, China is the world’s manufacturing hub, which drives B2E app needs -- not only for Chinese manufacturers but also for companies visiting their Chinese subcontractors.

Healthcare is the top sector in B2E mobile app adoption when viewing the data at the regional level. Healthcare leads in Western Europe, the Middle East, and especially North America, where healthcare B2E adoption outpaces manufacturing by nearly five to one.

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