see - Sandboxed Execution Environment

  •        21

Sandboxed Execution Environment (SEE) is a framework for building test automation in secured Environments. The Sandboxes, provided via libvirt, are customizable allowing high degree of flexibility. Different type of Hypervisors (Qemu, VirtualBox, LXC) can be employed to run the Test Environments.

https://github.com/F-Secure/see

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