John Pritchard, PhD
Vol. I · 2026
johnpritchard.me CEO · Radiant Logic
№ 01 / a thesis on compounding advantage

Don't just create value. Capture it.

Building defensible moats by turning products into platforms — and platforms into ecosystems.

Models commoditize. Context compounds.

Building the AI Data Moat ↓ PDF · 2 PG A product CEO's brief on context, platforms, and durable advantage in AI markets.
John Pritchard, PhD CEO, Radiant Logic

Durable advantage is rarely built from features. It is built from the architecture around them — APIs that embed, developers who adopt, data that compounds, ecosystems that refuse to unravel.

This has been the through-line of my work across Adobe, Okta, and Radiant Logic, and the focus of my doctoral research in innovation management: turning technically strong platforms into category-defining assets.

Operating Profile

Where I create leverage.

Product-led CEO and operator for B2B software companies where durable growth depends on platform strategy, ecosystem leverage, and trusted enterprise data. Twenty-five years across enterprise software, developer platforms, and identity security — including both sides of identity M&A.

Best Fit
Enterprise software, cybersecurity, identity, data infrastructure, and AI-enabled workflow companies with a path from product to platform to ecosystem.
Value-Creation Track Record
Led Radiant Logic's acquisition of Brainwave GRC, expanding the platform into entitlement intelligence and strengthening European presence. Served on the integration team for Okta's acquisition of Auth0. Shaped API strategy at Adobe to make the Creative and Experience Clouds more extensible and harder to displace.
Operating Lens
Unify fragmented data, turn context into action, and build ecosystems where trust, coordination, and execution become the control points.
Board and Capital Relevance
Connects product strategy, technical architecture, customer outcomes, and enterprise value creation — with direct experience in capital allocation, cross-border M&A, and post-merger platform integration.
№ II

Anatomy of a Moat

the career arc

The Series

The Anatomy of a Moat

Four chapters, four operating contexts, one through-line: durable advantage comes from turning products into platforms, platforms into ecosystems, and ecosystems into compounding systems of context, trust, and execution.

Start from the beginning ↓
01 2011 · 2020
Adobe

The Integration Moat

At Adobe, I helped shape API strategy to make products more extensible, more embedded, and harder to displace. The moat was not the API surface itself; it was the ecosystem of workflows, partners, and integrations that formed around it. This integration layer became the strategic engine for M&A — enabling platform-level integration across Adobe's acquisition-driven cloud transformation, including Marketo, Magento, Workfront, Frame.io, and others.

02 2020 · 2022
Okta

The Developer Moat

At Okta, I helped define developer platform strategy to turn identity from an administrative function into an adoption motion. A developer platform creates leverage when builders choose it, extend it, and carry it into the enterprise.

03 2020 · 2024
University of Denver

The Research Moat

During COVID, while leading product and technology at Radiant Logic, I started a parallel build: a doctorate focused on how firms create and capture value in open innovation ecosystems.

The core question: why do some firms in open ecosystems capture disproportionate value while others capture almost none? The answer — durable advantage accrues to the firms that architect the context, coordination, and trust layers others depend on — is the theory that now underwrites every chapter on this page.

04 2022–present
Radiant Logic

The AI Data Moat

Models commoditize. Context compounds. At Radiant Logic, the moat is the context layer itself. Every AI system is only as good as the context it runs on. For identity and security, that context is fragmented across dozens of sources — directories, IAM platforms, HR systems, device inventories, access logs. The moat isn't any single source; it's the unified identity data layer that makes all of them addressable in real time. At Radiant Logic, we built that layer. It's what turns generic AI into agentic security AI — because the context is already resolved, unified, and query-able. Data is the moat. Multiplayer AI is what you build on it.

In numbers: Joined as CPTO at $40M ARR. Took over as CEO at $50M. Led the company's transformation to $100M. Today, Radiant Logic serves 200 of the Fortune 500.

Identity is where the AI data moat gets built first. It will not be where it gets built last.

№ III

The Playbook

frameworks & talks
Keynote
Ready Player Two: Why Multiplayer AI Beats Going Solo in Identity Security
Identiverse Main Stage
A keynote on why identity security requires coordinated human and AI systems, not autonomous AI operating alone.
Watch the keynote
Framework
The AI Strategic Choice Matrix
Board Strategy Framework
№ IV

Research & Writing

selected works
04.1 — academic research 1 entry
  • Open Innovation Academy of Management · Proceedings
    You Have to Play to Win: Inside the Black Box of Creating and Capturing Value in Open Innovation

    Research on how firms create and capture value from open innovation ecosystems, knowledge flows, and intangible assets.

04.2 — published articles 1 entry
  • Multiplayer AI Forbes · Technology Council
    Multiplayer AI: The New Operating Model For Identity Security

    A model for identity security where AI amplifies human expertise, coordinates fragmented tools and teams, and turns identity context into action.

№ V

For Boards & Investors

conversations worth having
Direct correspondence
[email protected]
  • // ON FIT Product-led CEO for scaling identity, cybersecurity, and data infrastructure platforms through late-stage growth and beyond.
  • // ON BOARDS Bridging deep technical product strategy with enterprise Go-To-Market execution across complex, regulated markets.
  • // ON STRATEGY Navigating AI transitions, ecosystem M&A, and platform architecture where identity and data context are central to the investment thesis.