Working with AI · for people, not engineers

The New Hire

How to get real work out of AI — by treating it like a brilliant colleague you take the time to onboard.

Right now

You’ve been emailing a genius…
who forgets you overnight.

A chat AI is astonishingly capable. But it has never met you, knows nothing about your work — and every conversation starts from a blank page.

That’s not a bad employee.
It’s an un-onboarded one.

Every conversation starts at an empty desk.

The one idea

Stop emailing it.
Onboard it.

You already know how to get value from a brilliant newcomer. You don’t hand them a manual and vanish — you walk them round, explain what matters, show them how things are done here.

Instructions tell it what to do this minute. Onboarding helps it understand the place it walked into — so its help actually fits.

Meet your new hire

Brilliant. Fast. Tireless.
And brand new here.

Astonishing raw talent
You don’t retrain it — you brief it.
Knows nothing about you
Your company, your files, the “why.”
Forgets overnight
Every fresh chat begins from zero.
Watch the difference

“Write a follow-up to the client about the delay.”

No briefing

A generic, grovelling email. It invents a reason for the delay, uses a tone that isn’t yours, and promises a date you never agreed to.

Briefed

“Here’s the thread. Warm but precise, don’t over-apologise, don’t commit to a date — say we’ll confirm Friday.”

On-tone, references the real thread, holds the line. Sounds like you.

Same AI. The only thing that changed was context.

The word you’ll hear most

Context is what’s on its desk.

the edge

Everything it can see right now lands here. The desk only holds so much — when it’s full, the oldest papers slide off and it can’t see them anymore.

That’s why it “forgets” — not a flaw, just a full desk. The size of the desk is the one hard limit, the context window.

So it doesn’t start from zero

Give it a notebook.

keep the essentials

Before the desk overflows, it copies the essentials into a notebook it keeps. Next time, it opens the notebook first — and starts where you left off.

You’d never re-onboard a colleague every single morning. Same here — write it down once.

Chatbot vs agent

A chatbot only talks back.
An agent shows up with…

Desk = what it sees now (context) Notebook = what it remembers (memory) Tools = what it can do (its hands)

It doesn’t just answer — it can open your files, search, and carry out the steps. Like an intern who can actually open the filing cabinet, not just tell you what’s in it.

Save what you keep asking for

A skill is a saved recipe.

Write down how you want a task done, once. Then call it by name whenever you need it — and it’s done your way, every time.

Recipe: “meeting notes”

“A 3-line summary, then every action with an owner and a date, decisions flagged separately.”

Rule of thumb: a recipe holds how to do something — not your facts and files. Those live in the handbook (next).

“…but where do I actually do this?”

In a workspace,
not a chat box.

A chat window can only talk back. To give the AI a desk, hands and a notebook, you open it inside a workspace — an app that can see your files and do the work.

You still just type in plain English — no code. The names you’ll hear: Claude Code, Cowork, Codex. (The catch-all word is a harness — it just means “the place the AI works.”)

Chat box — it can only talk. Workspace — it has a desk, a notebook & tools.
Onboard once · it remembers everything

Three handbooks, general → specific.

COMPANY THIS PROJECT YOU
Company
“Life-sciences. Expert audience. Never make medical claims. Plain, no hype.”
This engagement
“Client MLR-process redesign. Readout to their leaders in 6 weeks. Files in the project folder.”
You
“Short answer first. Tables over paragraphs. Show me the plan before multi-step work.”

These are just plain-text notes it reads every time — written in markdown (ordinary text with a few tiny marks). In a workspace they’re small files; you’ll see the name CLAUDE.md. That’s the whole secret.

Beyond the handbook · look-it-up knowledge

For everything else — a wiki.

The handbook is what it reads every time. A wiki is what it looks things up in — your engagement’s facts: the client’s world, what you’ve found, what you’ve advised, as small linked notes with a contents page. A living map of the project.

project-os — your whole engagement, as one folder
project-os/
├── CLAUDE.md           # the handbook — read every time
├── README.md           # what this project is
├── foundations/        # what you know
│   ├── client/         #  their world, stakeholders
│   ├── brief/          #  scope, goals, constraints
│   └── domain/         #  the subject matter
├── findings/           # what you’ve learned
│   └── interviews/     #  one note per conversation
├── deliverables/       # what you produce
├── playbooks/          # how you work — your skills
└── log/                # decisions & learnings — filed back here

It reads the contents page, then follows the one branch it needs — like finding a spatula: kitchen → the drawer by the stove → there.

So the desk stays clear — it fetches the one note it needs, not the whole folder. And it writes back to log/ as it goes, so the project’s knowledge captures reality and compounds. You design the structure; the AI keeps it current.

A day with your onboarded hire

This is what work
feels like now.

Morning
“What’s on for the report today?” It reads the project note and gives a plan. You okay it.
Hand off
“Draft section 2 from the interviews.” It drafts, following your rules, and saves it.
Review
You tighten a line and say “keep it this tight.” It notes the preference.
Tomorrow
You re-explain nothing. The project, the tone, your style — it already knows.
The horizon · advanced — even experts are just starting

It can improve its own
handbook overnight.

People call this “dreaming.” Think of a school: nobody fixes the textbook mid-lesson — the day’s work happens, then the review happens after hours.

Daytime
Students
The working AIs get the real tasks done — heads down, no time to also tidy the handbook.
After hours
Teachers
A separate review looks back over the day’s work and spots what to improve.
Overnight
Head teacher
Proposes edits to the handbook — so tomorrow everyone starts sharper.

The golden rule holds: the AI proposes the changes — a human still approves them.

Your turn · ~1 hour, on a real task

Onboard your own hire.

1
Gather — put your real files in one folder, open it in a workspace (e.g. Claude Code).
2
Write the handbook — three lines: who we are, this project, how you like things.
3
Ask for a plan first — “before doing anything, show me your plan.”
4
Hand off a piece — let it read and write; don’t copy-paste.
5
Teach it once — give one standing preference, watch it stick.
Done when you’ve made the thing and tomorrow you’d re-explain nothing.
Keep this · the words you’ll learn
ContextEverything the AI can see right now — what’s on its desk.
AgentAn AI with hands — it can act, not just chat back.
Memory / CLAUDE.mdNotes it reads every time, so it never starts from zero.
SkillA saved recipe for a task, run on demand.
Harness / workspaceThe place the AI works — Claude Code, Cowork, Codex.
MarkdownPlain text with simple marks: # for a heading, - for a bullet.
Knowledge baseYour facts & files — what you know. Not a skill.
DreamingThe AI reviews its work after hours & proposes better notes — a human approves.
Three moves, any level

Brief it. Write it down.
Stay in charge.

Onboard the AI like a colleague and it compounds — a little more useful every week, because it finally carries your world.

Built on the Agent Onboarding Protocol (Emerald HQ). Draws on talks by Daisy Hollman & Lamis Mukta (Anthropic), Simon Willison (“give the AI what a new employee would need”), and the LLM-wiki idea from Andrej Karpathy & Jeff Gibbard.

Intro
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