For DevOps & Infrastructure Teams

Your Data Scientists Want VMs.
Your Developers Want APIs.
We've Got Both.

One platform that gives every team the GPU experience they're comfortable with.

90%+
GPU Utilization
5 min
Setup Time
Self-serve
Team Access

Different Teams, Different Needs

Data scientists often prefer hands-on GPU access — SSH, Jupyter notebooks, and the flexibility to experiment freely with credit-based billing.

Developers, especially those familiar with services like OpenAI or Pinecone, often prefer managed endpoints they can integrate directly into their applications.

Supporting both shouldn't require running two separate platforms or becoming a GPU infrastructure specialist.

One Platform. Two Experiences.

Float16 GPU Management Platform
8x GPU Workloads

For Data Scientists

VM-like access, credit-based billing

GPU 1
MIG

7 Instances

Click to learn more

GPU 2

Jupyter Notebook

Teaching & POC ready

GPU 3

Remote Access

Full control via SSH

GPU 4

Remote Access

Full control via SSH

Familiar cloud-like experience

For Developers

OpenAI-compatible API endpoints

GPU 5
MIG

7 Instances

Click to learn more

GPU 6

LLM Endpoint

OpenAI-compatible API

GPU 7

LLM Endpoint

OpenAI-compatible API

GPU 8

LLM Endpoint

Ready-to-use, no config

Familiar API-first experience

Infrastructure Management

Built for Infrastructure Teams

Enterprise-grade infrastructure management without the complexity. Everything you need to manage GPU resources across your organization.

Multi-Tenant Isolation

Complete resource isolation between teams. Each workspace is fully separated with dedicated compute and storage.

Role-Based Access Control

Fine-grained permissions for teams and projects. Control who can access, deploy, and manage GPU resources.

Flexible Quota System

Credit-based quotas instead of fixed time slots. Teams use GPU when needed, no wasted allocations.

Team Workspace Management

Self-serve workspace provisioning. Teams get up and running without waiting for IT tickets.

Role-Based Access Control

All
Write
Read
Organization Structure
AI Research
NLP TeamLLM Training
Vision TeamImage Gen
Engineering
PlatformAPI Services
User Permissions by Resource
User
VM
API
Billing
Deploy
Monitor
Admin
Alice Chen
Team Lead
Bob Smith
ML Engineer
Carol Lee
Researcher
David Kim
Contractor
Emma Wilson
DevOps
Contractor|
Full
Write
Read

Complete Visibility & Control

Monitor, track, and manage all GPU resources from a single dashboard.

Unified Dashboard

Single pane of glass for all GPU resources across teams.

Real-Time Monitoring

Live GPU utilization, memory, and performance metrics.

Usage Analytics

Track consumption by team, project, and user.

Audit Logging

Complete audit trail for compliance and governance.

GPU Fleet Utilization - Last 24 Hours

Low
Med
High
Peak
GPU 1
65%
GPU 2
62%
GPU 3
87%
GPU 4
54%
GPU 5
86%
GPU 6
65%
GPU 7
68%
GPU 8
72%
00:0006:0012:0018:0024:00

Give Every Team the GPU Experience They Prefer

See how one platform can serve your data scientists and developers — with simplified management for you.