How to increase the frame rate of win7
Surfing online through computers and playing games are our young people’s favorite entertainment methods. However, some large games are not so friendly to some computers with lower configurations. Some small partners reported the problem of frame loss in win7. Today, the editor will teach you how to increase the frame rate of games on Win7. let us see!
How to increase the frame rate of win7:
1. The first step is to right-click on the blank space on the desktop and select NVIDIA Control Panel to enter.
#2. Click to enter Manage 3D Settings, switch to Global Settings, set the preferred image processing to High Performance, and click OK.
The above is how to increase the frame rate of the game in win7! I hope to be helpful!
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