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Un MLOps qui transforme les expérimentations en production

Entraînement versionné, déploiement, monitoring et rollback pour les modèles IA—livrés en plateforme que vos data scientists ont vraiment envie d'utiliser.

The problem

Most AI models never leave the notebook

  • Pilots don't reach production

    Data science ships a notebook, engineering rewrites it for production, and the original feature logic drifts. Most pilots quietly die in the handover.

  • No model versioning anyone trusts

    Versions live in folder names and Slack messages. When something breaks, no one is sure which model is in production or what data it was trained on.

  • Monitoring is alerts on a dashboard

    Latency and CPU are watched; drift, performance decay, and segment-level regressions are noticed when a business user complains.

  • Rollback is by emergency call

    Reverting a model means a war-room call, a manual redeploy, and a postmortem nobody enjoys. There is no first-class rollback path.

Fonctionnement

An MLOps platform your team adopts, not avoids

Étape 1

Train & version

Reproducible training pipelines with versioned data, code, and parameters—every model has a lineage record from day one.

Étape 2

Deploy & route

One-command deployment with shadow, canary, and A/B traffic routing—so new versions prove themselves before taking real traffic.

Étape 3

Monitor & roll back

Drift, performance, and segment-level checks with automated alerts and one-click rollback to a known-good version.

Platform adapts to your cloud, model frameworks, and existing data stack.

Un MLOps qui transforme les expérimentations en production

Ce qui est inclus

Everything you needso models go from notebook to production

Training, registry, deployment, monitoring, and rollback—delivered on Synapse as one operating layer for data science and ML engineering.

Training pipelines

Reproducible pipelines with versioned data, code, and parameters—every run captured in lineage.

Model registry

Central registry with versioning, stage promotion, ownership, and approval gates between staging and production.

Deployment automation

One-command batch, real-time, and embedded deployment with environment parity and infra-as-code.

Drift & performance monitoring

Input drift, prediction drift, and outcome-level performance with segment breakdowns and named alert owners.

A/B & shadow traffic

Shadow new versions on real traffic, run A/B tests with statistical guardrails, and graduate winners safely.

Rollback

One-click rollback to the previous known-good version with full audit trail and incident attribution.

Propulsé par Synapse

Résultats

What changes when MLOps is a platform, not a side project

Results vary by context, data maturity, and scope. We scope honestly before we promise precisely.

5–10x

more models reaching production per quarter

Orientative—depends on starting maturity and team size.

Minutes

to deploy a new model version vs. days previously

Orientative—based on platform-enabled teams.

Tracked

drift, performance, and rollback on every production model

Notre façon de travailler

From first model to a platform—without a big-bang program

Assess

Week 1–2

Inventory current models, deployment pain, monitoring gaps, and platform requirements.

Design

Week 3–5

Define registry model, deployment patterns, monitoring contracts, and rollback policy with data science and engineering.

Build

Week 6–12

Stand up training, registry, deployment, monitoring, and prove on a first real production model.

Operate & scale

Week 13+

Onboard additional teams and models, expand monitoring coverage, and operate the platform as a service.

Timelines vary by model count, framework diversity, and existing infrastructure.

Commencer

Ready to turn pilots into production AI?

No commitment. We start with a scoped session to map your models, gaps, and platform needs.