DEEP LEARNING INFRASTRUCTURE / GPU OPTIMIZATION / ML PLATFORM

DEEPIIX

Reduce GPU compute costs by 60% while scaling your training workloads from a single GPU to 10,000-node clusters — intelligently.


Explore Platform Talk to Us
60%
Compute Cost Reduction
10K+
Node Cluster Scale
99.9%
Training Uptime
5x
Faster Iteration
01

PLATFORM ADVANTAGES


60% COST REDUCTION


Intelligent workload scheduling eliminates idle GPU time and bin-packs training jobs to maximize hardware utilization across your entire cluster.

ELASTIC SCALING


Scale seamlessly from a single GPU to 10,000-node clusters without configuration changes. Deepiix abstracts infrastructure complexity so your team focuses on models.

SMART CHECKPOINTING


Automatic checkpoint-and-restore recovers failed training runs from the last saved state — no wasted compute, no lost progress on long-running experiments.

UNIFIED DASHBOARD


Monitor all training jobs across clouds and on-premise hardware from a single pane of glass. Track GPU utilization, job status, and resource costs in real time.

CUDA-OPTIMIZED KERNELS


Hand-tuned CUDA kernels squeeze maximum throughput from every GPU generation — A100, H100, and custom silicon — without requiring manual kernel engineering.

EXPERIMENT TRACKING


Built-in experiment tracking automatically logs hyperparameters, metrics, and artifacts for every run — making it trivial to reproduce results and compare experiments.

02

ABOUT DEEPIIX


Deepiix deep learning infrastructure

DEEP LEARNING INFRASTRUCTURE

The GPU Platform Built for Scale

Deepiix was founded to solve the most pressing bottleneck in AI development: the enormous cost and complexity of training large-scale deep learning models. Our platform gives every ML team — from three-person startups to global enterprise AI labs — access to infrastructure that was previously available only to the largest cloud providers.

We believe world-class GPU infrastructure should be accessible, efficient, and invisible. Engineers should be building better models, not managing Kubernetes clusters.

Our platform combines intelligent workload scheduling, CUDA-level optimization, and a distributed checkpoint system built for the realities of large model training. We integrate directly with PyTorch, JAX, and TensorFlow without requiring code changes.

Deepiix's scheduling engine continuously monitors cluster utilization and rebalances jobs in real time — eliminating the idle GPU time that accounts for up to 40% of wasted compute budgets at most AI organizations.

We take a hardware-first approach to ML infrastructure. Our team includes former GPU architects from NVIDIA and ML platform engineers who have run training at ByteDance, OpenAI, and Google DeepMind.

That experience shapes every design decision — from the scheduler's topology-aware placement algorithms to the checkpoint compression strategy that reduces storage costs by 70%.

Learn Our Story
03

LEADERSHIP TEAM


Anna Schmidt, CEO

Anna Schmidt

Chief Executive Officer


Former VP Infrastructure at OpenAI with a PhD in Distributed Systems from ETH Zurich. Anna leads Deepiix's product vision and engineering strategy.

Ryan Moore, CTO

Ryan Moore

Chief Technology Officer


Led GPU infrastructure at NVIDIA for 8 years and is a recognized CUDA optimization expert. Ryan architects Deepiix's kernel-level performance layer.

Mei Lin, VP Platform Engineering

Mei Lin

VP Platform Engineering


Architected ByteDance's ML training platform, which processed over 10,000 daily training jobs. Mei leads Deepiix's scheduler and distributed systems team.

Ready to Cut Your GPU Costs?

Join leading AI teams using Deepiix to run faster, cheaper, and at unlimited scale.

Get Early Access
04

CONTACT US


GET IN TOUCH

Have questions about the Deepiix platform or want to discuss your infrastructure requirements? Our engineering team is ready to help you get started.

Office

140 New Montgomery St, 10th Floor
San Francisco, CA 94105

Phone

(415) 555-0174

Request a Demo

See how Deepiix can reduce your GPU costs and accelerate model training. Our team will walk you through the platform with your specific workloads in mind.

Email Us for a Demo