Model lifecycle
Promote from sandbox to staging to production with signed model cards and version pinning.
Private experimentation for models, RAG, and governed copilots—with a clear path from notebook to production that security and legal can approve.
Roadmap, SLAs, and named releases — not a one-off project handoff.
Deep enough for complex operations, opinionated enough to go live fast.
Promote from sandbox to staging to production with signed model cards and version pinning.
Connect approved corpora, chunking strategies, and retrieval policies your compliance team can audit.
Automated eval suites, human review queues, and blocked-topic policies before any user sees output.
REST and event hooks so LOB apps consume completions and embeddings without shadow integrations.
The same structured delivery process every time — so IT and procurement know what to expect.
We map use cases, data classes, and risk appetite—then agree on success metrics and guardrails.
A bounded environment with real traffic slices, full logging, and a rollback path if metrics slip.
Hardened paths to production SLAs, cost controls, and continuous eval as models and documents change.
Built for enterprises that cannot afford “experimental” AI in customer-facing or regulated workflows.
Fewer escalations to legal and security because policy is encoded in the platform—not in email threads.
Faster time-to-value when every team uses the same governed APIs instead of one-off scripts.
Clear ownership: ML, security, and product share dashboards—not conflicting spreadsheets.
You need reproducible pipelines, not one-off notebooks, and a story the board understands.
You need retention, access, and audit evidence without blocking every experiment.
Share your timelines and constraints — we'll respond with a pilot scope, integration assumptions, and the right team.