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Data Strategy & Governance

"Trustworthy data is the unfair advantage in enterprise AI"

A coherent strategy for collecting, cataloguing, governing, and providing data — so AI workloads have the trusted foundation they need to graduate from PoC to production.

What we build

Six governance surfaces

01

Data domains & ownership

Map of domains, owners, stewards, and SLAs across the enterprise.

02

Catalog & lineage

Single discoverable catalog with column-level lineage and metadata.

03

Quality controls

Contracts, tests, and anomaly detection on critical data flows.

04

Access control

RBAC, ABAC, row/column-level security, just-in-time access workflows.

05

Privacy by design

PII discovery, classification, masking, and lawful-basis tracking.

06

Regulatory alignment

GDPR, DPDP Act, sector-specific regulations baked into policies.

How we deliver

A staged rollout

01

Baseline

Current state: catalog, quality, access, classification, regulatory exposure.

02

Design

Target operating model, control framework, and tooling selection.

03

Implement

Wave-by-wave rollout starting with highest-value, highest-risk domains.

04

Operate

Continuous improvement, evidence collection, and quarterly governance reviews.

Ready to govern?

Talk to us about data strategy

Tell us about your data estate. We will return with a baseline plan and rollout proposal.