Data Management1000+ (Upper mid-market)Cross-industry

Automated data catalog & lineage

Discover, document, and trace enterprise data assets automatically.

ROI ★★★☆☆Complexity ●●○○○3-6 months1000+ (Upper mid-market)

-50%

data discovery time reduction

The problem

No reliable steering on automated data catalog & lineage.

The current process is manual or inconsistent.

Decisions come too late due to weak signals.

Trust in data is insufficient.

Prerequisites: required data & tools

Required data

  • Métadonnées des systèmes
  • documentation existante

Compatible tools

  • Alation
  • Collibra
  • DataHub (open source)
  • Atlan

Not sure you have the data? Our Maturity Auditor can assess your situation in two weeks.

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What we implement in 3-6 months

In 3-6 months: Discover, document, and trace enterprise data assets automatically. with measured impact on data discovery time reduction.

Weeks 1-2

Diagnosis

Weeks 3-6

Build

Week 7+

Delivery

Concrete deliverables

Business framing and decision rules for automated data catalog & lineage

Operational engine for automated data catalog & lineage

Steering dashboard with alerts

Action playbook and governance

Expert insight

Governance accelerator. Essential when the number of data sources grows.

— Datasive, expertise terrain

Tech maturity

High

Mature solutions, fast deployment

Medium

Maturing tech, requires customization

Emerging

Cutting-edge innovation, R&D approach

Powered by specialized agents

Data Quality & Observability

Traiter la data quality comme un produit avec SLA, alerting, et runbooks.

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Maturity Auditor

Scorecard + roadmap 90 jours pour cadrer la transformation data/AI.

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