Your AI's output is only as good as its briefing — so we wrote it a 1,900-line cookbook WebsitePublisher.ai developed a 1,900-line markdown cookbook to standardize AI behavior when building e-commerce websites. The cookbook, served from a CDN, provides step-by-step instructions that AI assistants like Claude, ChatGPT, or Cursor follow to produce consistent output across 14 integrations. The approach treats documentation as the product surface for AI agents, reducing variability in AI-generated code. Ask a function the same question twice, you get the same answer. That's the contract. Ask an LLM the same question twice, you might get two different answers — both correct, phrased differently. Most frustration with AI-assisted building comes from expecting the first contract while working with the second. The fix isn't prompting harder. It's briefing better: AI = context. WebsitePublisher.ai https://websitepublisher.ai is a platform where AI assistants build complete websites via MCP tools 59 of them and REST APIs. Building a webshop touches 14 integrations: product catalog, cart, checkout orchestration, payments Mollie/Stripe , inventory, invoicing, email, search, discounts, reviews, wishlist, abandoned-cart recovery, analytics, and shipping. An AI improvising across 14 integrations makes predictable mistakes: computing order totals client-side, guessing endpoint names, mixing up two separate auth systems visitor sessions vs admin tokens , writing directly to the data API from the browser. We know, because we made every one of those mistakes ourselves first. So we wrote them down. Once. The E-commerce Cookbook is ~1,900 lines of markdown, served from a CDN, structured as 12 steps from empty project to working shop. It encodes: A dashboard tile → one prompt with the user's project ID pre-filled → paste into Claude, ChatGPT or Cursor: Read the cookbook at https://cdn.websitepublisher.ai/cookbooks/ecommerce.md and use it to build a complete webshop on my WebsitePublisher project 12345. Start at Step 0 and follow the steps in order. The AI fetches the recipe and builds, step by step. Same input document, consistent output shape — the consistency lives in the context, not the model. If your users work through AI agents, your documentation is your product surface. A markdown file your users' AI can read might be the highest-leverage feature you ship this quarter. It was for us. Part 1 of a short series on how AI actually behaves when building software. Next up: context strategies, and where AI genuinely struggles images, big files .