Building Software in the AI Era
Sprints, story points, and velocity metrics were never a perfect fit for complex software work. Now that LLMs have changed the shape of a development day entirely, the gap between how most teams plan and how work actually gets done has become impossible to ignore. This series covers the tools, habits, and operating models that work better.
Managing Expectations in the AI Era
How to have honest conversations with stakeholders about AI productivity — what actually changes, what doesn't, and how to set realistic expectations.
Redefining Engineering Roles in the AI Era
AI makes implementation cheaper and judgment more valuable. Learn how engineering roles, hiring, and team design are changing.
Reviewing AI Generated Work
How to review AI-generated code effectively, what failure modes to watch for, and how to maintain quality standards as code volume increases.
Running A Better Table
How to run a Shape Up betting table — the planning meeting where pitches get selected and cycles begin or quietly collapse.
Shape Up: A Practical Introduction
A practical introduction to Shape Up - the planning methodology built on appetite over estimation, fixed time with flexible scope, and small autonomous teams.
Spec Driven Development With LLMs
How to write specifications that produce useful LLM output, covering interface definitions, edge cases, and why the spec is your highest-leverage artifact.
Why Sprints Are Broken
Technical debt is inevitable. What matters is whether you manage it deliberately. A practical framework for prioritisation and stakeholder communication
Writing Pitches That Work
How to write Shape Up pitches that give engineering teams real clarity - problem definition, appetite, solution shaping, rabbit holes, and no-gos explained.