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Moto X Play(2016) specs and leaks

Moto X Play(2016) looks similar to the Moto X Play(2015) released already.But the difference is Moto X Play(2015) used Snapdragon SoC but now the Moto X Play(2016) uses Mediatek Helio P10 chipset and 4.6" FHD display instead of 5.5" Display seen in its predecessor Moto X Play(2015).

Moto X Play(2016) powered by Helio P10 chipset which is an octa core processor is overclocked to 2.1 GHz which gives seamless performance.Moto X Play(2016) unlike its predecessor uses a 16MP rear camera and 8MP front camera which is fine for nice shots.Moto X Play(2016) carries a model number XT1662.Based on specs used,Moto X Play(2016) will be priced less than the Moto X Play(2015).Motorola decided to use Mediatek chipsets to get both nice performance and also less cost.The Phone may priced around 12,000-14,000 INR.

Already,Yu Yunicorn used Helio P10 but failed to give lag free performance.The device already had some lags and also heating issues.Now,Moto X Play(2016) also using this chipset.So,we have a question that it performes well than the Moto X Play(2015).The device runs on latest version of Android:6.0 Marshmallows.

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