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Revenue-Ready Data Is Not Magic, It’s Engineering

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Why AI Initiatives Fail — and What Actually Drives Revenue

AI is everywhere right now — in boardrooms, strategy meetings, and product roadmaps. But there’s a growing gap between AI ambition and real business impact.

Organizations are investing heavily in machine learning, automation, and generative AI, yet many still struggle to translate those efforts into measurable revenue.

In this episode of the Don’t Panic It’s Just Data podcast, Trisha Pillay (EM360Tech) sits down with Paul Brownell (CTO) and Sergio Morales (Data & AI Engineering Leader at Growth Acceleration Partners) to unpack why.

Their conversation cuts through the hype to focus on a hard truth: AI doesn’t create value on its own. Without strong data foundations, governance, and engineering discipline, even the most ambitious AI strategies fail to deliver results.

At the center of the discussion is the revenue data gap — the disconnect between AI experimentation and tangible business outcomes. Too often, organizations jump into tools and models without defining how those initiatives will actually impact revenue.

This session is designed for CTOs, VPs of Engineering, and technology leaders who want to move beyond experimentation and build AI initiatives that deliver measurable business value.

What You'll Learn

The Revenue Data Gap

The revenue data gap and why AI initiatives fail to deliver business impact.

Start With a Data Hypothesis

Why every AI effort should start with a clear data hypothesis.

Quality & Governance as a Foundation

How data quality and governance determine AI success.

The Scalability Problem

The impact of legacy systems and fragmented data on AI scalability.

Speed Without Sacrifice

How to balance the velocity mandate with long-term stability.

The Case for Data Contracts

Why data contracts are critical for reliable, trustworthy data pipelines.

Session Agenda

00:00 – 02:31

Introduction to AI Ambitions and Revenue Gaps

Setting the stage for why high AI ambitions often fail to translate into measurable revenue outcomes.

02:31 – 05:47

Understanding the Revenue Data Gap

A closer look at the disconnect between available data and the insights AI needs to drive business impact.

05:47 – 09:11

Challenges of Legacy Architecture in AI

Why outdated infrastructure and fragmented systems create hidden blockers for AI initiatives.

09:11 – 12:29

Closing the Revenue Data Gap

Practical strategies for aligning your data foundation with the outcomes your business is trying to achieve.

12:29 – 16:42

The Velocity Mandate in AI Implementation

How to move fast on AI without accumulating the kind of technical debt that stalls long-term progress.

16:42 – 18:31

Strategic and Technical Alignment for AI

Why business and engineering teams must operate from a shared AI roadmap to avoid costly misalignment.

18:31 – 22:03

Engineering Considerations for AI Initiatives

The infrastructure and architectural decisions that determine whether AI projects scale or stall.

22:03 – 28:55

The Role of Data Contracts in AI Success

How data contracts create the reliability and trust that production-grade AI systems depend on.

28:55+

Practical Takeaways for AI Implementation

Concrete next steps and frameworks you can apply immediately to move your AI initiatives forward.

Key Takeaways

  • The revenue data gap is a common barrier to AI success
  • A clear data hypothesis is essential to drive measurable outcomes
  • Data quality, governance, and engineering matter more than the model itself
  • Legacy architecture is often the hidden constraint in AI adoption
  • Balancing speed and discipline is key to sustainable progress
  • Data contracts improve reliability but require ownership and communication
  • Aligning AI with the business value chain is what ultimately drives revenue

Meet the Guest

Paul Brownell

Paul Brownell

Chief Technology Officer, Growth Acceleration Partners

Nearly two decades leading technology strategy, AI enablement, and Agile transformation at GAP.

Sergio Morales

Sergio Morales

Principal Engineer for Analytics Strategy, Growth Acceleration Partners

Data and AI engineering leader driving analytics strategy and heading GAP's Data Analytics Center of Excellence.

Meet the Host

Trisha Pillay

Trisha Pillay

Podcast Host and Editor, EM360Tech

Award-winning journalist and podcast host bringing together CIOs, CTOs, and analysts for conversations about enterprise technology.

Your AI Initiative Is Only as Strong as Your Data.
Here's How to Fix That.

Watch this on-demand conversation with GAP's engineering leaders and learn what it actually takes to close the revenue data gap and build AI that delivers.