Saturday, May 30, 2015

Asia Pacific Mobile Devices Will Consume 2.2 GB per Device by 2019

In the Asia Pacific region, mobile data traffic will grow 10-fold from 2014 to 2019, a compound annual growth rate of 58 percent, according to the Cisco Mobile Visual Networking Index.

In 2014 there were 2.2 billion mobile users in 2014, representing 56 percent of Asia Pacific's population.

By 2019 there will be 2.8 billion mobile users representing 69 percent of Asia Pacific's population.

In Asia Pacific, mobile data traffic will reach an annual run rate of 114 Exabytes by 2019, up from 11.7 Exabytes in 2014, growing three times faster than Asia Pacific fixed IP traffic from 2014 to 2019.

In Asia Pacific, mobile data traffic will account for 17 percent of Asia Pacific fixed and mobile data traffic by 2019, up from four percent in 2014, while 53 percent of mobile connections will be “smart” connections by 2019, up from 24 percent in 2014.

In Asia Pacific, mobile traffic per mobile-connected end-user device will reach 2.2 GB per month by 2019, up from 273 megabytes per month in 2014, a compound annual growth rate of 51 percent.
Trends are similar in many countries. In Indonesia, there were 155.1 million mobile users in 2014, representing 61 percent of Indonesia's population. By 2019 73 percent of Indonesia’s population, some 195.3 million people will be using mobile devices, according to the Cisco Mobile Visual Networking Index.

Perhaps significantly, mobile data traffic will grow an order of magnitude (10 times)  from 2014 to 2019, a compound annual growth rate of 59 percent.

Mobile data traffic will account for 41 percent of Indonesian data traffic by 2019, up from 17 percent  in 2014.

By 2019, 46 percent of mobile connections will be “smart,” up from 14 percent in 2014.

In Indonesia, mobile traffic per mobile-connected end-user device will reach 1.7 GB per month by 2019, up from 185 megabytes per month in 2014, a CAGR of 55 percent.

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