“Building a Sustainable and Developer-Friendly GPU Cloud” — that is the founding mission behind Medjed.ai. If you’re a researcher, engineer, or lab building AI models, read on: here’s how we’re doing things differently.
Medjed.ai repurposes retired GPU servers — hardware that still has plenty of life for many AI training & inference tasks. Instead of letting these machines sit idle (or be scrapped), we refurbish & re-deploy them. That yields major environmental benefits: reducing electronic waste, spreading embodied carbon over a longer hardware lifetime. At the same time, it allows us to offer lower cost to users, because the capex burden is lower. Medjed AI
Our Cloud KVM GPUs give you virtual machines with Kernel Virtual Machine (KVM) isolation. Why this matters:
Medjed.ai was built for folks like you — labs, individual developers, research groups — not just big corporations. Key priorities:
Transparency and predictability in pricing and service.
Avoiding vendor lock-in: since you are working with standard VM/KVM environments, moving workloads in or out is easier.
Community, documentation, observability: we want you to see what’s going on, to debug, to experiment.
Cloud KVM provides a strong isolation boundary. Your data stays in your VM, your disks; there’s less shared kernel or host infrastructure. Combined with standard best practices for cryptography, network isolation, virtual machine snapshots, and backups, we aim to provide stronger guarantees of data safety.

By extending hardware lifetimes, Medjed.ai spreads the fixed environmental & capital cost of GPU hardware over more usage. That means:
We are rolling out Cloud KVM GPUs (in addition to existing bare metal and colocation options). These will give you:
Plus, we expect regular improvements: more GPU types (for different performance/budget trade-offs), better tooling around VM snapshots, security audits, monitoring, etc.
If you’ve ever thought:
“I’m paying too much for less control,” or “I wish I could use older GPUs more cheaply but safely,” or “I want my AI environment close to the metal,” then Medjed.ai might be the GPU cloud you’ve been waiting for. It’s green, it’s secure, and it’s built with devs and labs in mind.
If you’re interested, check out our docs or get in touch with the community—feedback, early access, suggestions all welcome. Let’s build more sustainable, more independent AI infrastructure together.