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Dev Diary: Advanced Rendering and Realistic Game Environments #ABI utilizes a comprehensive physically-based rendering framework, enhanced by advanced camera technologies such as automatic exposure and local exposure, to provide optimal lighting and visual comfort. It also features real-time global illumination, volumetric clouds, and dynamic weather, creating a realistic and...

44,175 Aufrufe • vor 2 Jahren •via X (Twitter)

10 Kommentare

Profilbild von Guille Igenes
Guille Igenesvor 2 Jahren

What about lowering hardware requirements? Please

Profilbild von actualTurtle
actualTurtlevor 2 Jahren

Very nice but too bad the game is going to be Pay2Win

Profilbild von Lifeless
Lifelessvor 2 Jahren

But yet its pitch black when looking into windows from outside

Profilbild von Super vegeta
Super vegetavor 2 Jahren

bro when can i be able to play with my NVIDIA GeForce GTX 1660 Ti

Profilbild von Martin Ho
Martin Hovor 2 Jahren

Unlock for RTX 3050 laptop pls 🫠

Profilbild von DANTE
DANTEvor 2 Jahren

That's good but plz remove hardware restriction 🙂

Profilbild von kanpai
kanpaivor 2 Jahren

@ArenaBreakoutPC Holy shit blue Memphis!!!! No way!!! I better tune in!!!

Profilbild von Pque
Pquevor 2 Jahren

guess thats why my framerate is so unstable :DD

Profilbild von Yilmaz Ibrahim Basha
Yilmaz Ibrahim Bashavor 2 Jahren

Magnificent! But at some places it’s too dark to see

Profilbild von nunya biz
nunya bizvor 2 Jahren

Please let RTX 3050 laptop owners enjoy this as well. # Lower dem requirements lol.

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38,686 Aufrufe • vor 2 Jahren