TensorDock32GB VRAMBlackwellconsumer

RTX 5090 on TensorDock

Visit TensorDock

TensorDock provides access to the NVIDIA GeForce RTX 5090, a consumer-tier GPU featuring 32GB GDDR7 VRAM on the Blackwell architecture, ideal for high-memory AI workloads like fine-tuning large language models and generative AI inference. This combination stands out due to TensorDock's marketplace model, offering extremely low spot prices stabilized by their Voltage Park acquisition, making cutting-edge hardware accessible at fractions of on-demand costs. Targeted at cost-conscious ML engineers, data scientists, and AI hobbyists experimenting with memory-intensive tasks, it delivers key value propositions: per-second billing for precise cost control, abundant spot instance availability, and a diverse inventory without long-term commitments. While consumer-grade, the RTX 5090's 21,760 CUDA cores and advanced Tensor Cores enable efficient training and inference on models up to 70B parameters. Limitations include potential spot preemptions and standard datacenter interconnects, but for bursty, budget-driven workloads, this offering provides unmatched economics in the GPU cloud space. (168 words)

Why NVIDIA GeForce RTX 5090 on TensorDock?

Choose TensorDock for the RTX 5090 to leverage their marketplace's rock-bottom spot prices—often 70-90% below competitors—on this high-VRAM Blackwell GPU, stabilized post-Voltage Park acquisition for reliable inventory. The per-second billing model perfectly suits short-lived ML experiments, avoiding hourly waste. TensorDock's flexible infrastructure complements the 5090's consumer strengths: massive 32GB VRAM for local fine-tuning without model sharding, and Blackwell's FP4/FP8 precision for efficient inference. Unlike rigid providers, the marketplace allows instant scaling across hosts, ideal for prototyping. This combo shines for indie devs and startups prioritizing cost over enterprise SLAs, delivering pro-grade memory at consumer economics. (112 words)

Live Pricing

Real-time NVIDIA GeForce RTX 5090 offers from TensorDock

6 offers available
TensorDock
TensorDock
Winnipeg, Manitoba
Sold Out
NVIDIA GeForce RTX 5090
32GB VRAM
0 vCPU
0GB RAM
$0.46/GPU/hr
TensorDock
TensorDock
Chubbuck, Idaho
Available
NVIDIA GeForce RTX 5090
32GB VRAM
0 vCPU
0GB RAM
1000 Mbps ↑
1000 Mbps ↓
$0.57/GPU/hr
TensorDock
TensorDock
Orlando, Florida
Sold Out
NVIDIA GeForce RTX 5090
32GB VRAM
0 vCPU
0GB RAM
$0.58/GPU/hr
TensorDock
TensorDock
Orlando, Florida
Sold Out
NVIDIA GeForce RTX 5090
32GB VRAM
0 vCPU
0GB RAM
$0.58/GPU/hr
TensorDock
TensorDock
Winnipeg, Manitoba
Sold Out
NVIDIA GeForce RTX 5090
32GB VRAM
0 vCPU
0GB RAM
$0.65/GPU/hr

Performance Notes

On TensorDock, expect RTX 5090 performance mirroring desktop benchmarks: ~2x RTX 4090 in FP16/FP8 AI tasks due to Blackwell RT/Tensor cores and 32GB VRAM, supporting up to 70B model fine-tuning solo. Network bandwidth typically 10-25Gbps (provider-dependent), sufficient for single-GPU but limiting distributed training. Storage via NVMe SSDs (500GB-2TB base), expandable. No native NVLink/SLI; multi-GPU via software like PyTorch DDP over Ethernet, with scaling efficiency ~80-90% for 2-4 GPUs. Pre-release status means real-world ML perf data is emerging; spot instances may interrupt long runs. Solid for inference/batch jobs, less ideal for 24/7 HPO. (102 words)

About TensorDock

A GPU marketplace offering extremely low spot prices, stabilized by acquisition by Voltage Park.

Best For

Extremely low spot prices

Unique Features

  • Marketplace model
  • Stabilized inventory post-acquisition
NVIDIA GeForce RTX 5090 Specs

VRAM

32GB

Architecture

Blackwell

Tier

consumer

Platform Features

Access Methods
SSH
Jupyter Notebooks
Web Terminal
API
Kubernetes
Containers
Billing Options
Incrementper-second
Spot Instances
Reserved Instances
Prepaid Credits
Compliance
SOC 2
HIPAA
GDPR
ISO 27001

Getting Started

Getting started with TensorDock's RTX 5090 is straightforward via their intuitive marketplace dashboard. Sign up, fund your account, and launch spot instances in minutes for cost-effective AI workloads. Pre-configured Docker images for PyTorch/TensorFlow accelerate setup. (62 words)

Steps

  1. 1Create a free TensorDock account and complete verification.
  2. 2Deposit funds via credit card or crypto for bidding.
  3. 3Search marketplace for 'RTX 5090', filter by price/region.
  4. 4Select spot instance, choose image (e.g., Ubuntu+CUDA), and launch.
  5. 5SSH into instance using provided credentials and run workloads.

Pro Tips

  • Bid aggressively on spots during off-peak hours for 80%+ savings, but enable auto-relaunch scripts for interruptions.
  • Maximize 32GB VRAM with quantization (e.g., GPTQ) for larger models; monitor via nvidia-smi.
  • Use TensorDock's API for automation to scale instances dynamically based on queue length.

Frequently Asked Questions

What is TensorDock's billing model for NVIDIA GeForce RTX 5090?

TensorDock bills per-second for GPU instances including NVIDIA GeForce RTX 5090. Per-second billing ensures you only pay for exactly the compute time you use, which is particularly cost-effective for short experiments, iterative development, and workloads with variable duration.

Does TensorDock offer spot instances for NVIDIA GeForce RTX 5090?

Yes, TensorDock offers spot/preemptible instances for NVIDIA GeForce RTX 5090, which can reduce costs by 50-80% compared to on-demand pricing. Spot instances are ideal for fault-tolerant workloads like batch inference, hyperparameter tuning, and training jobs with checkpointing. Note that spot instances can be interrupted when demand is high, so ensure your workflow can handle preemption gracefully.

How can I access NVIDIA GeForce RTX 5090 instances on TensorDock?

TensorDock provides access to NVIDIA GeForce RTX 5090 instances via SSH, built-in Jupyter notebooks, web-based terminal, Docker containers. The built-in Jupyter notebook support makes it easy to start experimenting immediately without additional setup. SSH access gives you full control over the instance for custom configurations and production deployments.

What compliance certifications does TensorDock have for NVIDIA GeForce RTX 5090 workloads?

TensorDock does not have publicly listed compliance certifications. If your workloads require specific compliance standards (SOC 2, HIPAA, GDPR, etc.), contact them directly to discuss your requirements or consider a provider with the necessary certifications.

Can I use NVIDIA GeForce RTX 5090 with Kubernetes on TensorDock?

TensorDock does not prominently advertise native Kubernetes support. You may need to manage your own Kubernetes cluster or use alternative orchestration methods. However, they do support Docker containers, which can be a stepping stone to container orchestration.

What are the specifications of the NVIDIA GeForce RTX 5090?

The NVIDIA GeForce RTX 5090 features 32GB of high-bandwidth memory, built on NVIDIA's Blackwell architecture. It's suitable for learning, experimentation, and smaller ML projects. Consider your model size and batch requirements when evaluating if the VRAM capacity meets your needs.

What workloads is NVIDIA GeForce RTX 5090 on TensorDock best suited for?

The NVIDIA GeForce RTX 5090 on TensorDock is well-suited for learning, prototyping, small-scale experiments, and cost-sensitive inference tasks. TensorDock specifically excels at: Extremely low spot prices. Consider your model size, training data volume, and latency requirements when evaluating this combination for your specific use case.

What unique features does TensorDock offer for NVIDIA GeForce RTX 5090?

TensorDock differentiates itself with: Marketplace model; Stabilized inventory post-acquisition. These features may provide advantages depending on your specific workflow requirements and technical needs. Evaluate how these capabilities align with your ML infrastructure goals when making your decision.

How do I get started with NVIDIA GeForce RTX 5090 on TensorDock?

To get started with NVIDIA GeForce RTX 5090 on TensorDock, visit https://tensordock.com?utm_source=gpuperhour&utm_medium=referral to create an account. Most providers offer a straightforward signup process, and some provide initial credits for new users. Once registered, you can typically launch a NVIDIA GeForce RTX 5090 instance within minutes through their dashboard or API. We recommend starting with a small experiment to familiarize yourself with the platform before scaling up to larger workloads.

Related Pages

Compare RTX 5090 Across Providers

The RTX 5090 is available from 2 providers on GPUPerHour. TensorDock charges $0.46/hr. Here is how other providers compare:

For a full comparison across all providers, see the RTX 5090 rental page. See all GPUs on TensorDock.