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Services AI AI & Cloud Convergence
Service pillar · 01.01

AI & Cloud Convergence

Cloud-native AI stacks engineered for production — foundation models, retrieval, your data, and the governance discipline that turns experiments into systems your board can defend.

What we deliver

Production-grade AI on your cloud stack — not lab demos.

Fourteen capabilities that together turn AI ambition into shipped, governed systems. We start where you are: green-field, hybrid, or deep in an existing platform.

01

Foundation Model Selection

Pick the right model family (OSS, closed, fine-tuned) for cost, latency, sovereignty and accuracy — not vendor hype.

02

RAG & Retrieval Stacks

Hybrid vector + keyword retrieval over your data, hardened for production: chunking, freshness, eval and observability built in.

03

MLOps & LLMOps

CI/CD for prompts, models and evals — versioning, rollback, A/B and guardrails so AI ships like the rest of your software.

04

Cloud-native Architecture

Reference architectures on AWS, Azure, GCP — and the on-prem extensions for workloads that can't leave the perimeter.

05

Data Foundations

Lakehouse, governance, lineage and quality — without which AI is decorative. We build them in flight, not as a 2-year prelude.

06

AI Governance & Eval

Risk-tiered policies, golden datasets, automated eval pipelines and a register your DPO and your auditor can both read.

07

Cost & Latency Engineering

Model routing, caching, distillation and inference tuning — AI economics designed for scale, not a flat monthly surprise.

08

Adoption & Enablement

Patterns, playbooks and training so your teams own the platform — not just consume our outputs.

The platform thesis

From fourteen tools to one accountable platform.

AI ambition fails as fragmented vendor sprawl. We collapse the stack into one reference architecture — your cloud, your data, your governance — and ship the first system into production behind real users in eleven weeks.

How we work

Pilot to production in four moves.

Each stage has explicit entry criteria, deliverables and exit gates. No project ever leaves a stage on hope alone.

01

Assess

Map the use cases, the data, the constraints — and the existing stack. Rank by value-over-risk; cut the hype.

Output: use-case shortlist, data readiness map, target reference architecture.
02

Architect

Design for integration, security and sovereignty. Choose models, retrieval, governance, ops — agree the eval bar.

Output: reference architecture, governance plan, evaluation framework.
03

Productionize

Ship the first system into production behind real users. Iterate weekly on quality, latency and cost.

Output: live system, MLOps pipeline, observability and eval dashboards.
04

Govern & Scale

Operate with measurable ROI and a risk register your board can defend. Roll the platform out to the next use case.

Output: ops runbook, ROI dashboard, scale roadmap.
How it fits

Designed to plug into your existing stack — not replace it.

AI doesn't live in isolation. We architect every system around three integration surfaces so it lands as part of your platform, not next to it.

01

Data & identity

Reads from your data lake, warehouse and operational stores via governed contracts. Identity inherits from your existing IdP — no shadow user pool.

02

Cloud & platform

Runs on your cloud accounts (AWS, Azure, GCP, hybrid) under your IaC and your SRE practices. Reference Terraform modules ship with the engagement.

03

Governance & ops

Hooks into your existing SIEM, DLP, audit and incident processes. The AI risk register lives alongside your other risk records — not in a new tool.

Outcomes from this pillar

Measured in P&L and risk — not slideware.

Production outcomes from recent AI & Cloud Convergence engagements — governed, audit-ready, and operated by the client's own teams.

Who we've done this for

From a stalled pilot to a board-defensible AI platform — in eleven weeks.

Global industrials · EU

A €4bn industrial group had spent eighteen months on AI pilots that never reached the P&L. We architected one AI & Cloud Convergence platform, productionized the first use case in eleven weeks, and handed back a stack their own teams now operate — with an ISO 27001-aligned audit trail their DPO signed off.

Industry · Manufacturing Region · EU Stack · Azure + Databricks Compliance · ISO 27001
Read the full case study
Sovereignty

Every AI & Cloud engagement delivered on a stack you can defend.

GDPR-aligned, ISO 27001-ready, outside CLOUD-Act reach. Your data, your DPO, your audit trail.

GDPR by design ISO 27001 EU residency DPO on call
Let's build

Move AIto production.

From a stuck pilot to a shipped platform — eleven weeks, governed, with an audit trail your DPO will sign off. Bring the use case; we bring the path.