Industrialize Generative AI Delivery at Scale

DS Stream AI Factory is a proprietary operating model for scaling enterprise GenAI delivery. We combine a production-grade AI platform reference architecture, governance, reusable architecture components, and an ROI-tracked use case pipeline to convert business problems into production AI solutions. All 2–3 times faster and at 60% lower cost per use case at scale.

Build a governed, reusable AI engine, from first use case to enterprise-wide factory, with production-ready infrastructure, embedded compliance, and measurable ROI from day one.

  • GenAI and agentic AI delivery on AWS, GCP, or Azure - multi-cloud by design
  • AI governance and compliance embedded from day one
  • End-to-end MLOps & LLMOps pipelines with drift detection, eval harnesses, and AIOps monitoring
  • First production use cases live within 8 weeks - ROI baseline captured before build begins
  • Reusable pattern library and AI Centre of Excellence for self-sufficient enterprise AI scale-up
Talk to us about your AI Factory roadmap
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/ Problem

Why Do Most Enterprise AI Programs Stall Between Pilot and Production?

Most organisations have already run AI pilots, but fewer than 30% reach production. The issue is rarely the model itself. It is the absence of shared infrastructure, production-grade governance, repeatable delivery processes, and a financial framework to track value. AI spend accumulates with no ROI visibility and no path to scale.

  • Siloed POCs with no shared platform, no reusable components, no path to production
  • No MLOps or LLMOps discipline - no CI/CD, no model registry, no rollback strategy
  • Governance bolted on after the fact - compliance gaps create regulatory and reputational risk
  • AI ROI unmeasurable - no value hypothesis, no KPI baseline, no stage-gate decision framework
  • Talent gaps in ML engineering, agentic AI architecture, and LLMOps make scaling impossible without a partner
  • Each new use case restarts from scratch - no reuse, no acceleration, no factory effect
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/ What We Deliver

AI Factory Engineering & Delivery Services for Enterprise GenAI

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/ How it Works

How We Build Your AI Factory: From Discovery to Scale

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/ Business Impact

Benefits of an Industrialized AI Delivery Model

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/ Who This is For

Who This Technical Service Is For

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/ Use Cases

Typical Use Cases

Security, Compliance and Governance by Design

  • Encryption in transit and at rest, IAM/RBAC, audit logs, data residency options, guardrails, and knowledge isolation are built into every layer. We also define governance for ownership of prompts, tools, policies, approvals, and deployment changes across teams and markets
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/ FAQ

Most Common Questions

What is an AI Factory and how is it different from an AI pilot?

An AI Factory is an operating model - five integrated components(platform, governance, delivery pipeline, organisation design, valuerealization) that industrializes AI delivery. Unlike a pilot, each subsequentuse case is faster, cheaper, and more governable than the last.

How quickly can DS Stream deliver the first production use cases?

The first two use cases are typically in production within 8weeks. A multi-cloud sandbox is live within 2 weeks. Governance and platformbuild run in parallel with delivery - so value is generated while thefoundation is established.

Which cloud platforms does the AI Factory support?

AWS (Bedrock, SageMaker), GCP (Vertex AI, Gemini, BigQuery ML),Azure (Azure OpenAI, Purview), and Databricks. The same governance controls andLLMOps tooling apply across all clouds. Migration paths are designed in fromday one for clients with pending approvals.

How does DS Stream approach AI governance and compliance?

ISO/IEC 42001 AIMS is implemented from intake — not added at theend. Every use case is risk-tiered before build begins. For multi-jurisdictiondeployments, per-country compliance layers (DPIA, data localization, regulatorregistration) are built into the cloud architecture from day one.

Can our internal teams take over after DS Stream's engagement?

Yes - knowledge transfer is non-negotiable. The AI CoE isself-sufficient by end of Phase 3, supported by delivery playbooks,AIOps/LLMOps runbooks, and an AI literacy programme. DS Stream then transitionsto an advisory role.

How do you track and prove ROI?

Every use case starts with a Financial Value Hypothesis tied to revenue,cost, or risk impact. KPI baselines are captured pre-deployment. An executivedashboard tracks AI spend and ROI in real time, with stage-gate reviewsgoverning scale, pivot, iterate, or stop decisions.

Ready to Industrialize Your Enterprise AI Delivery?

Whether you are moving from isolated AI pilots to a governed production programme, or scaling an existing platform to enterprise-wide delivery, DS Stream can help define the fastest path from architecture to production -with governance, ROI traceability, and knowledge transfer built in from day one.

No-obligation working session focused on your current AI maturity, cloud architecture, use case priorities, and governance posture.

Book a 30-minute AI Factory Discovery Session
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