Token economics break at scale
Long-running agents make per-token budgets hard to forecast.
Autonomous AI infrastructure
Oxy deploys models, compute, context, and policy across cloud, datacenter, and on-prem resources - with private security and predictable cost.
The enterprise AI bottleneck
Tools spread fast. Control does not. Oxy brings usage economics, data boundaries, and security policy back into one operating layer.
Long-running agents make per-token budgets hard to forecast.
Keep code, docs, customer data, and procedures inside systems you control.
Agents, models, tools, clouds, and data all need one policy layer.
Copilots help workflows. Enterprises need a shared AI core.
How Oxy works
Choose the workload. Oxy selects capacity, deploys the model stack, connects context, and enforces policy.
Use frontier, open-source, auxiliary, or domain models based on quality, latency, privacy, and budget.
Span public providers and private resources from one Oxy account.
Deploy, monitor, and manage AI services without hand-building inference pipelines.
Platform outcomes
Move from experiments to secure, repeatable, organization-wide AI.
Run long, high-context agent workflows on capacity-based infrastructure.
Route workloads across providers and model families without single-vendor dependency.
Support code, text, OCR, computer use, media, 3D, time series, embeddings, and guardrails.
Keep frontier models for rare needs. Move common work to private open-source deployments.
Natively secure foundations
Oxy applies identity, private networking, encryption, secrets, audit logs, prompt-injection protection, and outbound data controls across the full AI path.
Customer machines, data, logs, and code stay under customer control. Oxy manages access and policy without becoming another leak point.
Where Oxy fits
Oxy fits organizations that need agentic AI without runaway cost, data exposure, or fragmented control.
Serve AI work without routing every interaction through expensive external APIs.
Deploy AI where data control and auditability are non-negotiable.
Connect proprietary context to secure agents for expert teams.
Run AI products on private, optimized infrastructure with room for best-in-class integrations.
Pilot path
Start with a real team, not a sandbox. Map the workload, deploy the tenant, and measure cost, quality, adoption, and security.
Define users, quality targets, data boundaries, latency, security, and deployment constraints.
Provision capacity, connect controls, deploy the first stack, and onboard the team.
Move common workloads onto Oxy while keeping frontier providers for rare cases.