Intelligence

Notes, articles, talks.

A curated stream of writing, talks and resources on AI strategy, decisioning and transformation.

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Latest writing & resources.

article · Axioms

No Two Journeys The Same

Adaptive Personalisation. The more ambitious version. I looked at how a global automotive brand and its agency partner approached personalisation. The organising idea was striking: no two digital experiences should be the same. Express interest in something, and the next time you land on the site, the entire look and feel has reshaped around your inputs. One user's view of the brand looks nothing like the next - different cars, different content, aligned to lifestyle and habits. What the case actually signals about where the space is heading: → Brands are pulling data, marketing and e-commerce under a single partner instead of stitching together specialist vendors. → Making segmentation, integration and real-time delivery work together across regions — each with its own data and rules — is the real challenge. → The technology is commoditising but the discipline to measure whether tailoring actually pays is not. And that's the gap! → ROI is becoming the organising principle. The brands pulling ahead treat measurement as a first-class pillar, not a reporting line bolted on at the end. The takeaway for anyone weighing their own strategy: mature personalisation is less about which tool you buy, and more about the operating discipline to make it pay.

article · Axioms

The Execution Cap - Vibe Coding is a strategic dead end without technical weight

I keep meeting brilliant AI strategists who can't ship. Not because they're not smart. Because strategy and “vibe-coded” prototypes are cheap now — and the thing that's actually scarce is the technical weight to turn a prompt into something a bank would trust in production. Every firm I talk to has horizon scanners. Almost none have enough builders. And in financial services, that gap is starting to hurt. Talking fluently about AI used to be a differentiator. Now it's the price of entry. The firms pulling ahead aren't scanning harder — they're building better. A few things I keep seeing separate the two: → A prototype built in two hours is a great demo and a fragile product. Rapid generation isn't robust engineering. → “PoC purgatory” is real — constant innovation, nothing reaching the balance sheet. Shadow AI, spaghetti code, and security gaps all hide in the demo and surface in production. → Ground-truth beats a chatbot's guess. When gatekeepers blocked a customer study recently, I paid for real interviews rather than pivoting to a synthetic summary. → Model routing matters. Don't burn a high-reasoning model on an order-status lookup — the cost gap between tiers is roughly 10x. The through-line: technical credibility isn't knowing what's next. It's the ability to build it, well, in record time. I wrote the full thinking up as an editorial — the builder problem, and how a hub-and-satellite model lets business teams innovate without losing control.

article · Axioms

When the Tool You Standardise On Today Is Obsolete by Spring — How a Global Marketplace Is Rebuilding Marketing Around AI

I had a conversation recently with someone running marketing technology inside a global business that's scaling fast. I expected the usual worries — budget, attribution, pipeline. Instead they said the riskiest thing they could do was get comfortable with the tool they chose last year. That stuck with me. Because it flips how most teams think about AI. The instinct is to pick the right platform, integrate it, and move on. But the teams actually pulling ahead aren't the ones that picked well once — they're the ones that built a habit of re-picking. Honestly, often, without sentiment. Three things I keep seeing from the ones getting it right: → They treat their stack as provisional — reassessed in months, not years. → They've reopened build-vs-buy on every decision, because a working app can now be built in days (but still has to be maintained for years). → They refuse to let "hours saved" be the ceiling — the harder, more valuable question is where AI becomes a growth lever, not just a cost cut. I wrote the full thinking up as a short piece — what works, where it gets uncomfortable, and why the edge isn't a tool you install once. Link's in the comments. And if this is the kind of thinking you want more of — connect. I share this stuff regularly. What's the tool you got too comfortable with? I'll go first in the replies.

article · Axioms

Finding the Problem Before the Client Names It

Many AI projects begin with the question, ”Where can we plug this in to save money?” Unfortunately, many of these projects fail for the same reason. The successful ones flip the question. Instead of ”How do we make the current thing cheaper?” they ask, ”What would we build if we started from what’s now possible?” This is the difference between augmenting a business and reimagining one. The former has a ceiling, while the latter doesn’t.

youtube · Axioms

Fitness & Wellness: Scaling AI in a Global Marketplace

A comprehensive deconstruction of the data architecture required to scale a multi-sided wellness subscription marketplace. This presentation explores the critical transition from a monolithic tech stack to a federated, tri-lane architecture designed to manage complex, asynchronous user demand. By seamlessly integrating generative AI models like Claude with automated logic workflows, marketing operations can actively mitigate user churn, drive net new revenue, and resolve significant operational friction. The breakdown concludes with a strategic analysis of the "Vendor Dilemma," evaluating the critical trade-offs between the rapid deployment of bespoke internal AI tools and the long-term stability of enterprise software.

youtube · Axioms

Episode 1 Decisioning

Episode 1 In Conversation - In-Depth Decisioning Discussion with Jordi and Swapnil Join Jordi and Swapnil for an insightful, one-hour discussion as they dive deep into the world of Decisioning. This session covers the core concepts, challenges, and best practices involved in implementing and optimising decision models. Whether you are a product manager, engineer, or data scientist, this video provides valuable perspectives on strategic decisioning In this video, you will learn about: 1. Key principles of decisioning architecture 2. Practical implementation strategies 3. Common pitfalls and how to avoid them 4. The future roadmap for Decisioning Speakers: Jordi: Pega Solutions Consultant Swapnil: AI & Digital Transformation Leader 🔔 Don't forget to Like this video and Subscribe to the ‪@aidecisioning‬ channel for more expert insights!

youtube · Axioms

Episode 2 Resistance and Implementation In Conversation with Jordi and Swapnil

E2: Resistance and Implementation – A Deep Dive with Jordi and Swapnil** Welcome to the second episode! Jordi and Swapnil return for a candid, in-depth discussion on the critical challenges faced during the implementation of large **SAAS products** (PEGA CDH) and digital transformation initiatives. This one-hour session is essential viewing for project managers, solution architects, developers, and business stakeholders involved in enterprise software rollout. Learn how to navigate technical hurdles, manage expectations, and overcome internal resistance to ensure a successful go-to-market strategy. **Key Discussion Topics:** * The gap between sales promises and the reality of **SAS product** capabilities. * How to address stakeholder uncertainty, compliance concerns, and low trust in new systems. * The value of starting with small **use cases** and **MVPs** to demonstrate value quickly. * Debating the ideal team size and the importance of **best practices**. * Strategies for realistic **estimation** to avoid budget struggles.

article · Axioms

Personalization and Decisioning - Conversation with Jagdev Panesar

Hear what Jagdev Panesar a Senior Product Owner recently in Decisioning has to share about overcoming cross-department resistance. 1. Who needs to be heard? 2. What strategies to follow? 3. How will they be effective?

linkedin · Axioms

Episode 3 Artificial Intelligence