Where Do You Stand?
24 questions across eight Survival Rules. One honest score. Know exactly where your AI readiness gaps are - and what to fix first.
If you have read the chapters in this series, you are probably holding a complicated mix of thoughts right now. Some recognition. Some discomfort. Possibly some relief that someone is talking about this directly rather than catastrophising.
The audit below is designed to turn that into action. Not a six-month transformation programme. Not a vendor pitch. A clear view of where you actually stand, and what to address first.
And if you are thinking “we do not run a training platform, so this does not apply to us” - it does. The problems we uncovered apply to any organisation trying to make its knowledge AI-ready:
- Customer service teams whose knowledge-base articles are spread across Zendesk, Confluence, and a shared Google Drive, and wonder why their AI chatbot keeps giving wrong answers.
- Professional services firms sitting on years of client deliverables, proposals, and case studies locked inside SharePoint folders that no AI can reliably search.
- Internal L&D and HR teams trying to build an AI-powered onboarding assistant but discovering their policies, SOPs and training materials are scattered across five platforms and three file formats.
For each Survival Rule, answer three honest questions. Score 0 for the first answer, 1 for the second, 2 for the third. Your total out of 42 tells you where to focus.
How to Read Your Score
- 0-14: You are at the start of the journey. That is fine - so was everyone. Pick one chapter from the series and start there. Not all of them. One.
- 15-28: You have started but hit the ceiling on some important decisions. The chapters where you scored lowest are the ones worth a second read.
- 29-42: You have built something real. The remaining gaps are architecture refinements, not foundational decisions. This is where the consulting conversation gets interesting.
A note before you start
Be honest. The purpose of this is not to feel good about where you are. It is to see clearly. The business leaders who get the most value from this are the ones who score lower than they expected and use that as a signal, not a verdict.
Choose Your Path Before You Build.
From: The Decision →1. If the third-party AI tool your team relies on changes its API or shuts down tomorrow, does your internal workflow break completely?
2. If you are currently running an AI pilot, do you know which path it represents?
3. Do you have a plan for how your AI capability will compound over the next 12 months?
Never Bolt AI onto Broken Data.
From: The AI Wrapper Trap →1. Are you using AI to try and make users consume your legacy, long-form content (like 4-hour courses) faster, instead of changing the format itself?
2. Does your AI have access to content from more than two years ago that has not been reviewed for accuracy?
3. If you pointed an AI at your existing knowledge base today, would you trust the output enough to send it to a client?
The Format is the Product.
From: What We Built Instead →1. Is your training or knowledge content organised around problems your audience actually faces - or around topics you decided to teach?
2. Can a member find and apply the answer to a specific problem in under five minutes?
3. What is your average content completion rate?
Data Readiness is Not Optional.
From: The Migration Nightmare →1. If you had to isolate only the 10% of your data that genuinely solves customer problems today, how hard would it be to separate it from the 90% that is outdated noise?
2. What format is your most valuable expert knowledge currently trapped in?
3. If you needed to extract your core knowledge base into a single, clean database tomorrow to train an AI model, could you do it without writing custom scraping code?
Kill the Guesswork Matrix.
From: Killing the Guesswork →1. How is your product or content roadmap primarily validated?
2. Before building a new product or piece of content, do you check for external evidence that people are actively seeking help with that problem?
3. Do you know specifically who in your audience is blocked by which problems right now?
Protect the Human Anchor.
From: Never Let AI Guess →1. How do you prevent your AI from hallucinating or guessing?
2. Does your AI-generated content go through expert human review before it reaches clients or members?
3. How much of your top expert's time is spent on administrative production tasks (formatting, editing, structuring) vs. genuine expertise?
Never Marry a Single Model.
From: Never Marry One AI →1. How do you handle different types of AI tasks (e.g., fast data extraction vs. complex deep reasoning)?
2. If your primary AI vendor raised their prices by 3x tomorrow, how disruptive would it be?
3. Do you have budget controls that prevent an AI agent loop from running up uncapped API costs if it gets stuck?
Architecture > Headcount.
From: 17 Features. 0 Servers. 2 People. →1. If your traffic spiked by 10x overnight, would your technical team need to provision new infrastructure to handle the load?
2. How long does it take your system to pull in a newer, cheaper AI model once it is released?
3. Is your infrastructure bill tied to the amount of value your users get, or the amount of time your servers sit idle?
What to Do With Your Score
If you scored below 17, the most valuable thing you can do is not try to fix everything. Pick your single lowest-scoring Survival Rule. Read that chapter again. Identify one concrete change you can make this month. Do that before you attempt the next one.
If you scored 17-32, you are building something real. The gaps in your score are almost certainly in data readiness (Rule 03) or architecture decisions (Rule 00). Those two are always the hardest and always the most leveraged.
If you scored above 32, you are ahead of the vast majority of organisations. The interesting question for you is not where you are - it is how fast you are compounding. A system that gets smarter every week is a fundamentally different asset than one that is statically maintained.
We Have Been Through All of This
Every question in this audit is one we had to answer ourselves, usually after the expensive version of making the mistake.
We built a system that finds real problems, validates them intelligently, produces targeted solutions, and keeps them current as the world changes. Two people. No VC money. No infrastructure team. We know exactly where it breaks and how to get through it without the most expensive false starts.
If you are trying to move beyond the chatbot experiment and build something that genuinely compounds in value, we are happy to talk. Not a sales call. A real conversation about where you are and what the right next step looks like.
The 2026 Strategy Roadmap
Now that you know how we survived the disruption, see exactly how we are deploying this new architecture to completely replace our legacy online academy over the next six months.
Explore the Roadmap →I have already made the mistakes you are about to make.
No obligation. We will work out in the first conversation whether this makes sense for you.
Book a call with Mark →