


How to solve the problem of artificial 3 card playing on win10 computer
Many players are experiencing artificial intelligence 3 games on the win10 system, but many of them report that the game is very laggy, so how to solve this problem? Today I bring you the solution to the problem of playing artificial 3 cards on a win10 computer, let’s take a look.
What to do when playing artificial 3 cards on a win10 computer:
1. Just download an older version of "d3d9.dll" and put it in the main directory of the game.
2. Right-click the game icon and select Properties, then click "Compatibility" and select the previous system version.
3. Check the network nodes to see if the wrong network area is used, and retest the speed.
4. Finally, it is a matter of configuration. If the configuration is too low, playing this game will be very laggy.
The above is the detailed content of How to solve the problem of artificial 3 card playing on win10 computer. For more information, please follow other related articles on the PHP Chinese website!

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