Average Playtime: 2 hours

Machine Learning: Episode I

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About

Machine Learning: Episode I is a first person arcade puzzle game built for HTC Vive. You play as an A.I. robot created in DARPA laboratory in the near future. One of the scientists is here to test your physical, perception and cognitive skills. By using the power of room-scale VR and Vive controllers, you will be solving a variety of unique puzzles.

A highly advanced set of tools is at your disposal. You have to be quick and attentive to prove you are ready to fulfil your purpose.

More to come in the next episodes...

Developed by Singularity Lab. We are currently looking for investors and clients.
Platforms
Release date
Developer
Singularity Lab
Publisher
Singularity Lab
Age rating
Not rated
Website
http://singularity.kz/en/

System requirements for PC

Minimum:
  • OS: Windows 8.1
  • Processor: Core i5
  • Memory: 8192 MB RAM
  • Graphics: Geforce GTX970
  • DirectX: Version 11
  • Storage: 560 MB available space
Recommended:
  • OS: Windows 10
  • Processor: Core i7
  • Memory: 12288 MB RAM
  • Graphics: Geforce GTX980Ti
  • DirectX: Version 11
  • Storage: 560 MB available space
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Last Modified: Sep 30, 2022

Where to buy

Steam

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Sinkler

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