.jpeg)
Multi-Instance GPUs on Runpod: Stop Paying for Compute You Don't Need
With MIG, we can partition RTX 6000 Pro cards into isolated 24 GB instances. Here's when it makes sense for your workloads.
Blog
Runpod has a new look — and a sharper focus. Explore the redesigned site, refreshed brand, and the platform powering real-time inference, custom LLMs, and open-source AI workflows.

Runpod has grown up. And now, our website finally reflects it.
This redesign wasn’t just a fresh coat of paint — it’s a signal of where we’re headed. The new Runpod.io marks a major evolution in how we tell our story, support our users, and showcase the power of what we’re building.
Whether you’re a researcher deploying multi-node clusters, a founder spinning up inference APIs, or a student running your first LLM — Runpod is designed to meet you where you are. Now, so is our website.

We’ve come a long way since the original Runpod launch. Our early site focused heavily on infrastructure utility — fast GPUs, cost-effective compute, and raw performance. That hasn’t changed.
But we’ve grown into more than just a compute provider. We’ve become a full platform, powering:
And as our capabilities evolved, it became clear that our website needed to evolve too.

The old site was functional, but fractured. Product pages, blog, and documentation felt disconnected. Voice and style were inconsistent. Navigation was clunky.
The new Runpod.io brings it all together with a unified structure, clearer IA, and consistent visual identity.
We needed a site that did more than inform — we needed it to reflect our ambition, our community, and our personality. The new design supports storytelling, showcases our ecosystem, and makes it easier for new users to explore what we offer.
Runpod is stepping into its next chapter — not just as a provider of raw compute, but as an opinionated platform for building AI.
This relaunch represents:
We’ve got more launches coming soon:
This redesign sets the foundation for all of it.
Have thoughts? Feedback? Spot a bug?
We’d love to hear from you.
💬 Join our Discord: discord.gg/runpod
📰 Explore the new blog: runpod.io/blog
Blog Posts
.jpeg)
With MIG, we can partition RTX 6000 Pro cards into isolated 24 GB instances. Here's when it makes sense for your workloads.

How 1,100 researchers beat OpenAI's own baseline with 16 megabytes and 10 minutes.

Learn how to set up a real-world agentic system with our new Flash framework.