Model Ops 

Ship production models today, not next quarter.

iTuring Model Ops turns any model into a secure, governed endpoint in seconds-with approvals, lineage, rollback, and audit packs built in.

Trusted by leading banks and insurers. Built for regulated industries with audit-ready governance.

Core Platform Capabilities

Numbers that move roadmaps.

Seconds to live endpoint

Python – R – TF – Spark – SAS – one governed process

Real-time APIs & scheduled batch scoring

Approvals – Lineage – Rollback – Audit reports

*Limited Slots

Our Deployment Process

One governed flow - load, deploy, scale, govern

Load

Upload internal or external models; auto-detect framework and dependencies.

Deploy

Containerize and publish REST or batch with sample payloads and docs.

Scale

Autoscale for real-time; schedule large nightly batch runs.

Govern

Versioning, maker-checker approvals, live vs shadow, rollback, audit history.

Governance and Deployment

Production without panic.

Production without panic.

Maker-checker approvals and safe promotion/demotion.

Full evidence trail with lineage and downloadable reports.

Thresholds and alerts for model health.

Real-time, batch, and safe iteration.

Real-time REST endpoints with autoscaling.

Scheduled batch scoring for very large datasets.

Champion-challenger traffic split and one-click rollback.

iTuring vs Others

Built for regulated industries - what that means.

Feature

Generic Serving

Manual Ops

Governance
(approvals, lineage, audit)

Partial

Spreadsheet-driven

Frameworks supported
(Py/R/TF/Spark/SAS)

Narrow set

Varies by team

Deploy paths
(API + Batch)

API-only

Ad-hoc scripts

Rollback / Shadow releases

Limited

Risky

Model Ops

Native, standardized

Universal, single workflow

Both first-class

One-click, no downtime

Built to pass bank and insurer scrutiny.

Frequently Asked Questions

Which ML frameworks and file formats can Model Ops auto-deploy?

Native auto-detection covers Python pickle/conda envs, R RDS/CRAN, Spark MLlib JARs, TensorFlow SavedModel, and SAS model files. Upload a model artifact or point to a storage path—iTuring containers the runtime, fingerprints dependencies, and publishes a standardized API contract with documentation.

Yes. Deploy secure REST endpoints for interactive requests with auto-scaling, or configure orchestrated batch scoring with pre-scheduled processing that can handle large datasets. Both modes support the same governance and monitoring framework.

Each deployment follows configurable approval workflows before going live. Live vs Shadow promotion allows safe testing, while Champion-Challenger enables A/B comparisons with real traffic. One-click rollback restores the previous model version while maintaining complete audit trails for compliance teams.

Model Ops automatically captures deployment history, model versioning, performance tracking, and change management logs. Generate downloadable compliance reports with complete model lineage, approval workflows, and operational metrics. Every action is timestamped and traceable for regulatory examination support.

Decision rules are completely optional. Deploy models to serve raw predictions, or integrate business rules when you need approval thresholds, pricing logic, or compliance flags—without redeploying the underlying model.

Set traffic-based scaling policies and performance thresholds. Real-time dashboards track model health, response times, and throughput. Automated alerts notify teams when models drift from baseline performance or scaling limits are reached.

Model Ops provides REST APIs for integration with existing DevOps pipelines. Connect deployment events to your workflow management systems while maintaining governance controls and approval gates.

Enterprise-grade security measures are built-in with detailed controls available for regulated industries. Specific security architecture documentation available upon request to meet your compliance requirements.

Deploy in cloud, on-premises, or hybrid configurations. Multi-environment support enables consistent model governance across development, staging, and production while maintaining regional compliance requirements.

Organizations report significantly faster deployment cycles and reduced operational overhead compared to manual processes. Implementation typically includes dedicated support, custom workflow configuration, and team training to ensure successful adoption.