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Start

Initialize the productivity system and open the dashboard. Use when setting up the plugin for the first time, bootstrapping working memory from your existing task list, or decoding the shorthand (nicknames, acronyms, project codenames) you use in your todos.

$ npx promptcreek add start-cb8743

Auto-detects your installed agents and installs the skill to each one.

What This Skill Does

The Start command initializes the task and memory systems, setting up the environment for Claude to function effectively. It checks for existing files, creates missing ones using standard templates, and opens the unified dashboard for the user. It also guides the user through bootstrapping memory if it's a fresh setup.

When to Use

  • Initializing the task management system.
  • Setting up the working memory (CLAUDE.md).
  • Creating the deep memory directory (memory/).
  • Opening the unified dashboard for task and memory management.
  • Bootstrapping memory for first-time users by learning workplace shorthand.

Key Features

Checks for existing TASKS.md, CLAUDE.md, memory/, and dashboard.html.
Creates missing files using standard templates.
Opens the dashboard and informs the user of its location.
Guides the user through the memory bootstrapping process.
Uses the user's task list to learn workplace shorthand.

Installation

Run in your project directory:
$ npx promptcreek add start-cb8743

Auto-detects your installed agents (Claude Code, Cursor, Codex, etc.) and installs the skill to each one.

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Start Command

> If you see unfamiliar placeholders or need to check which tools are connected, see CONNECTORS.md.

Initialize the task and memory systems, then open the unified dashboard.

Instructions

1. Check What Exists

Check the working directory for:

  • TASKS.md — task list
  • CLAUDE.md — working memory
  • memory/ — deep memory directory
  • dashboard.html — the visual UI

2. Create What's Missing

If TASKS.md doesn't exist: Create it with the standard template (see task-management skill). Place it in the current working directory.

If dashboard.html doesn't exist: Copy it from ${CLAUDE_PLUGIN_ROOT}/skills/dashboard.html to the current working directory.

If CLAUDE.md and memory/ don't exist: This is a fresh setup — after opening the dashboard, begin the memory bootstrap workflow (see below). Place these in the current working directory.

3. Open the Dashboard

Do NOT use open or xdg-open — in Cowork, the agent runs in a VM and shell open commands won't reach the user's browser. Instead, tell the user: "Dashboard is ready at dashboard.html. Open it from your file browser to get started."

4. Orient the User

If everything was already initialized:

Dashboard open. Your tasks and memory are both loaded.
  • /productivity:update to sync tasks and check memory
  • /productivity:update --comprehensive for a deep scan of all activity

If memory hasn't been bootstrapped yet, continue to step 5.

5. Bootstrap Memory (First Run Only)

Only do this if CLAUDE.md and memory/ don't exist yet.

The best source of workplace language is the user's actual task list. Real tasks = real shorthand.

Ask the user:

Where do you keep your todos or task list? This could be:
  • A local file (e.g., TASKS.md, todo.txt)
  • An app (e.g. Asana, Linear, Jira, Notion, Todoist)
  • A notes file

I'll use your tasks to learn your workplace shorthand.

Once you have access to the task list:

For each task item, analyze it for potential shorthand:

  • Names that might be nicknames
  • Acronyms or abbreviations
  • Project references or codenames
  • Internal terms or jargon

For each item, decode it interactively:

Task: "Send PSR to Todd re: Phoenix blockers"

I see some terms I want to make sure I understand:

  • PSR - What does this stand for?
  • Todd - Who is Todd? (full name, role)
  • Phoenix - Is this a project codename? What's it about?

Continue through each task, asking only about terms you haven't already decoded.

6. Optional Comprehensive Scan

After task list decoding, offer:

Do you want me to do a comprehensive scan of your messages, emails, and documents?

This takes longer but builds much richer context about the people, projects, and terms in your work.

Or we can stick with what we have and add context later.

If they choose comprehensive scan:

Gather data from available MCP sources:

  • Chat: Recent messages, channels, DMs
  • Email: Sent messages, recipients
  • Documents: Recent docs, collaborators
  • Calendar: Meetings, attendees

Build a braindump of people, projects, and terms found. Present findings grouped by confidence:

  • Ready to add (high confidence) — offer to add directly
  • Needs clarification — ask the user
  • Low frequency / unclear — note for later

7. Write Memory Files

From everything gathered, create:

CLAUDE.md (working memory, ~50-80 lines):

# Memory

Me

[Name], [Role] on [Team].

People

| Who | Role |

|-----|------|

| [Nickname] | [Full Name], [role] |

Terms

| Term | Meaning |

|------|---------|

| [acronym] | [expansion] |

Projects

| Name | What |

|------|------|

| [Codename] | [description] |

Preferences

  • [preferences discovered]

memory/ directory:

  • memory/glossary.md — full decoder ring (acronyms, terms, nicknames, codenames)
  • memory/people/{name}.md — individual profiles
  • memory/projects/{name}.md — project details
  • memory/context/company.md — teams, tools, processes

8. Report Results

Productivity system ready:
  • Tasks: TASKS.md (X items)
  • Memory: X people, X terms, X projects
  • Dashboard: open in browser

Use /productivity:update to keep things current (add --comprehensive for a deep scan).

Notes

  • If memory is already initialized, this just opens the dashboard
  • Nicknames are critical — always capture how people are actually referred to
  • If a source isn't available, skip it and note the gap
  • Memory grows organically through natural conversation after bootstrap
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Supported Agents

Claude CodeCursorCodexGemini CLIAiderWindsurfOpenClaw

Details

License
MIT
Source
admin
Published
3/18/2026

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