IT Nomad LabIT Nomad Lab
Data Platform Consulting

Your AI strategy will fail if your data foundation is weak.

I help companies fix the gap between data platforms, engineering teams, and business execution — so technology creates measurable impact.

Trusted by scaleups from Series B to pre-IPO · Proven at petabyte scale · Warsaw, Poland · Remote worldwide

The Real Problem

Most companies don't have an AI problem.
They have a data execution problem.

The model is not the bottleneck.

The cloud provider is not the bottleneck.

The dashboard tool is not the bottleneck.

The real bottleneck is underneath:

  • Unclear ownership
  • Fragile pipelines
  • Slow delivery cycles
  • Weak governance
  • Platforms never designed for scale

Does this sound familiar?

The same metric shows different numbers across dashboards.
Engineers spend more time fixing pipelines than building new ones.
Business teams export to spreadsheets because they don't trust the platform.
New data sources take weeks or months to integrate.
Nobody fully understands how the data system actually works.
AI projects stall because the underlying data is messy.
Reporting takes days when decisions need to happen in hours.
Teams debate data quality instead of acting on it.

If several of these feel familiar, the problem is not your team. The problem is the foundation.

What I Do

Seven areas where execution breaks down.

Each one is a place where misalignment between data, AI, and engineering creates the most expensive gaps.

Data Platform Architecture

Design scalable, reliable data infrastructure that grows with the business — from ingestion frameworks to serving layers.

AI Readiness Advisory

Assess what actually needs to happen before AI delivers value. Close the gap between ambition and foundation.

Data Strategy & Governance

Define ownership, trust levels, and quality frameworks. Turn governance from bureaucracy into a speed advantage.

Engineering Leadership Advisory

Strengthen technical direction and architecture decision-making across engineering organizations.

Platform Modernization

Migrate legacy systems and replace fragile pipelines without disrupting operations or losing the team.

Fractional Head of Data

Senior data platform leadership part-time. 1–2 days per week embedded. All the direction. None of the overhead.

Executive Technology Advisory

Translate technical reality into board-level clarity. Align engineering decisions with business outcomes.

The Method

The IT Nomad Lab Method

Four phases. Applied consistently to every engagement, at every scale.

01

Diagnose the Foundation

Map data flows, identify fragile components, and understand where trust started to break. The first step is understanding how the system actually works — before changing anything.

System map + ranked blockers, week 2

02

Design for Scale

Translate diagnosis into architecture that supports growth and execution. Identify quick wins and sequence the foundation work that must happen before AI ambitions become realistic.

90-day stabilization plan, week 5

03

Enable the Teams

Reduce dependency loops. Move ownership closer to builders. Create patterns that allow teams to add new data sources without creating more chaos.

Self-service enablement framework

04

Deliver Measurable Impact

Turn architecture into adoption, execution, and business outcomes. Exec-ready roadmap covering architecture, sequencing, team gaps, and budget.

AI-readiness roadmap + exec deck, week 8

Understand the system → Stabilize the foundation → Enable the teams → Deliver measurable impact.

Proof

Proven at petabyte scale.
Applied where it matters.

At Playtika, I helped lead the evolution of the data platform serving dozens of game studios and millions of players worldwide.

The starting state was familiar: data onboarding took months, hundreds of teams competed for a centralized engineering bottleneck, and infrastructure spend was growing faster than the value being delivered.

Three years later:

  • Data onboarding cut from months to days — through a shift-left, self-service platform approach
  • Hundreds of internal users building and operating their own pipelines without depending on central engineering
  • Millions of dollars saved in unnecessary licenses and overused infrastructure
  • Dozens of game studios running production analytics and AI/ML use cases at scale

Before Playtika, I led delivery on enterprise transformation work at EPAM for the London Stock Exchange, and shipped fast at startups including Open Motors and GAMCO. Different scales, same pattern: data foundations either accelerate the business or quietly slow it down.

That is the work I focus on now — helping mid-market scaleups apply the same playbook before they hit the wall.

Months
Days
Onboarding acceleration
0+
Internal users enabled
Self-service builders
$M+
Infrastructure costs cut
Licenses + over-provisioning
PB+
Platform scale served
Across dozens of studios
About

Josias De Lima

Founder, IT Nomad Lab

Engineering leader. Data platform architect. Execution-focused technology strategist. I work at the intersection where data infrastructure, team operating models, and business outcomes either connect or fail.

My background spans ingestion frameworks, ETL orchestration, data lake architecture, governance programs, self-service enablement, and the organizational design that makes platforms actually get used. I have led this work at petabyte scale at Playtika, on enterprise transformation at EPAM for clients like the London Stock Exchange, and in fast-moving product companies where speed and reliability both had to be true at the same time.

The pattern I keep seeing: organizations invest heavily in technology and move slowly anyway. Not because the technology is wrong. Because the architecture, the team operating model, and the ownership structure were never designed to scale together.

Complex problems do not require magic. They require clarity, persistence, and consistent execution.

Data Platform ArchitectureEngineering LeadershipAI ReadinessData GovernanceETL OrchestrationSelf-Service EnablementPlatform ModernizationExecutive Advisory
Thinking Out Loud

Writing on data, AI, and engineering execution.

Practical writing for CTOs, Heads of Data, and engineering leaders. First articles coming soon.

Platform Strategy

Why Most Data Platforms Fail Before They Are Finished

The platform was technically correct. The architecture review passed. The team built what was designed. And it still failed. Here is what actually causes data platform failures — and it is almost never the technology.

Coming soon
AI Readiness

Why AI Projects Fail Before the Model Exists

Most AI projects fail in the first 30 days. Not because the model is wrong. Because the data feeding it was never reliable in the first place. The model does not fix bad foundations. It amplifies them.

Coming soon
Data Governance

Data Governance as Speed, Not Bureaucracy

Governance has a reputation problem. Most engineers hear the word and think: process, approvals, slowdowns. The best data platforms I have seen treat governance as the thing that makes speed possible.

Coming soon
FAQ

Questions worth asking.

Direct answers to the questions that come up in every discovery call.

A data platform consultant helps organizations design, build, and optimize the infrastructure that stores, processes, and delivers data across the business. This includes architecture decisions, pipeline design, governance frameworks, and team enablement strategies — with the goal of making data reliable, fast, and owned by the teams that use it.

Ready to start

Before you scale AI, fix the foundation.

If your teams are moving fast but your data still feels slow, fragile, or unclear — we should talk. A 30-minute discovery call is the fastest way to know if what I do maps to what you need.

No pitch deck. No follow-up sales sequence. Just a structured conversation.