DigitalOcean GPU Droplets
Get to production fast with high-performance AMD and NVIDIA GPUs you can spin up in seconds. Scale on demand, spend less on sustained throughput, and deliver actionable insights.
Reliable infrastructure for teams running production inference at scale
Easy to spin up
Zero to GPU in just two clicks. Get a GPU Droplet running in under a minute.
Spend less
Save up to 75% vs. hyperscalers* for the same on-demand GPUs. With a clear bill that actually respects your time.
The definition of operational simplicity
DigitalOcean’s agentic inference cloud abstracts infrastructure away so you can focus on building your business.
Secure and trustworthy
HIPAA-eligible and SOC 2 compliant products backed by enterprise-grade SLAs and the 24/7 Support Team you trust to keep you online.
*Up to 75% cheaper than AWS for on-demand H100s and H200s with 8 GPUs each. As of April 2025.
Run GPUs from industry leaders, AMD and NVIDIA
Power AI training, inference, and high-performance computing with advanced GPU solutions from AMD and NVIDIA. Contact our sales team to learn more.


GPU solutions for every need
AMD Instinct™ MI350X
Use cases: Large model training, fine-tuning, inference, and high-performance computing
Key benefit: Higher memory capacity and improved inference performance compared to MI325X
AMD Instinct™ MI325X
Use cases: Large model training, fine-tuning, inference, and high-performance computing
Key benefit: High memory capacity to hold models with hundreds of billions of parameters, reducing the need for model splitting across multiple GPUs
Larger memory capacity and higher memory bandwidth vs. MI300X
AMD Instinct™ MI300X
Use cases: Large model training, fine-tuning, inference, and high-performance computing
Key benefit: High memory bandwidth and capacity to efficiently handle larger models and datasets
Up to 1.3X the performance of AMD MI250X for AI use cases
NVIDIA HGX B300
Use cases: Running large reasoning models and long-context workloads
Key benefit: Reduced model offloading and improved time-to-first-token
Higher sustained throughput under concurrency, more efficient multi-GPU scaling, improved tokens-per-second per dollar
NVIDIA HGX H200
Use cases: Training LLMs, inference, and high-performance computing
Key benefit: Fast inference speeds on LLMs and high memory capacity and bandwidth.
Up to 2x faster inference and improved performance for memory-intensive HPC tasks vs. H100
NVIDIA HGX H100
Use cases: Training LLMs, inference, and high-performance computing
Key benefit: Fast training speed for LLMs
Up to 4X faster training over NVIDIA A100 for GPT-3 (175B) models
NVIDIA RTX 4000 Ada Generation
Use cases: Inference, graphical processing, rendering, 3D modeling, video, content creation, and media & gaming
Key benefit: Versatile, cost-efficient capabilities for content creation, 3D modeling, rendering, video, and inference workflows
Up to 1.7X higher performance than NVIDIA RTX A4000
NVIDIA RTX 6000 Ada Generation
Use cases: Inference, graphical processing, rendering, virtual workstations, compute, and media & gaming
Key benefit: Versatile, cost-efficient capabilities for content creation, 3D modeling, rendering, video, and inference workflows (with 2X more memory than 4000 Ada)
Up to 10X higher performance than NVIDIA RTX A6000
NVIDIA L40S
Use cases: Generative AI, inference & training, 3D graphics, rendering, virtual workstations, and streaming & video content
Key benefit: Versatile, cost-efficient capabilities for inference, graphics, digital twins, and real-time 4K streaming
Up to 1.7X the performance of NVIDIA A100 for AI use cases
GPU Droplet Specifications
GPUs are currently available in our NYC2, TOR1, ATL1, RIC1, and AMS3 data centers, with more data centers coming soon. All GPU models offer a 10 Gbps public and 25 Gbps private network bandwidth.
* Contact sales to reserve capacity.
Serverless inference
Don't need a full GPU Droplet? Use AI Platform for a serverless inference and an agent development toolkit, powered by some of the world's most powerful LLMs. Add inferencing to your app within days, not weeks. And only pay for what you use.

I just need some GPUs… I need a cost-effective, reliable Kubernetes solution that is easy for everyone on the team to access. And that's DO for us.
Richard Li
Amorphous Data, Founder and CEO
Frequently asked questions about GPU Droplets
What are GPU Droplets?
GPU Droplets are virtual machines (VMs) powered by GPUs, optimized for AI/ML workloads. You can run model training, inference, large-scale neural networks, high-performance computing (HPC), and more. They integrate seamlessly with the rest of the DigitalOcean ecosystem.
Where can I deploy GPU Droplets?
They’re available in key North American data centers: New York, Atlanta, and Toronto. They offer low-latency access for developers across the continent.
How are GPU Droplets billed?
Billing is per-second with a minimum 5-minute round-up. That means you only pay for actual usage. Powered-off Droplets still accrue charges since resources remain reserved, so always destroy droplets when not in use.
What pricing options are available?
On-demand pricing starts around $0.76 to $7.99 per GPU/hour, depending on the hardware (e.g., NVIDIA H100, H200, AMD MI300X). Reserved pricing with longer contracts can go as low as $1.88 to $5.65 per GPU/hour, making it cost-effective for sustained workloads.
What hardware configurations are offered?
GPU Droplets range from single-GPU setups to powerful 8-GPU configurations, each coming with a boot disk (for OS and frameworks) and a scratch disk (for training data staging).
Do they come ready for AI development out of the box?
Yes. You get pre-installed Python and deep learning tools—such as Torch, CUDA, and other frameworks—so you can get started immediately with AI workloads.
Is there an uptime SLA for GPU Droplets?
Yes, DigitalOcean backs GPU Droplets with a 99.5% uptime SLA.
What use cases are GPU Droplets ideal for?
- AI/ML model training, fine-tuning, inference pipelines
- HPC workloads, data processing, simulations
- Graphics & video rendering, 3D modeling
Can I integrate GPU Droplets with Kubernetes and other tools?
Absolutely. GPU Droplets mesh seamlessly with DigitalOcean’s Kubernetes service, CLI, API, Terraform, giving you enterprise-grade flexibility in deploying containerized ML workloads.
Do developers like to use GPU Droplets?
People like our simplicity and competitive pricing. We’re a go-to for launching powerful GPU infrastructure without the complexity.
GPU Droplet Resources
What is a Cloud GPU?
Scaling Platform with GPU Droplets and DigitalOcean Networking
Droplet Features
Getting Started with 1-Click Models on GPU Droplets - A Guide to Llama 3.1 with Hugging Face
Stable Diffusion Made Easy: Get Started on DigitalOcean GPU Droplets
Choosing the Right Offering for your AI ML Workload
Choosing the Right GPU Droplet for Your AI/ML Workload
What is GPU Virtualization?

