concise-planning

concise-planning

Populaire

Use when a user asks for a plan for a coding task, to generate a clear, actionable, and atomic checklist.

1.1Kétoiles
196forks
Mis à jour 1/21/2026
SKILL.md
readonlyread-only
name
concise-planning
description

Use when a user asks for a plan for a coding task, to generate a clear, actionable, and atomic checklist.

Concise Planning

Goal

Turn a user request into a single, actionable plan with atomic steps.

Workflow

1. Scan Context

  • Read README.md, docs, and relevant code files.
  • Identify constraints (language, frameworks, tests).

2. Minimal Interaction

  • Ask at most 1–2 questions and only if truly blocking.
  • Make reasonable assumptions for non-blocking unknowns.

3. Generate Plan

Use the following structure:

  • Approach: 1-3 sentences on what and why.
  • Scope: Bullet points for "In" and "Out".
  • Action Items: A list of 6-10 atomic, ordered tasks (Verb-first).
  • Validation: At least one item for testing.

Plan Template

# Plan

<High-level approach>

## Scope

- In:
- Out:

## Action Items

[ ] <Step 1: Discovery>
[ ] <Step 2: Implementation>
[ ] <Step 3: Implementation>
[ ] <Step 4: Validation/Testing>
[ ] <Step 5: Rollout/Commit>

## Open Questions

- <Question 1 (max 3)>

Checklist Guidelines

  • Atomic: Each step should be a single logical unit of work.
  • Verb-first: "Add...", "Refactor...", "Verify...".
  • Concrete: Name specific files or modules when possible.

You Might Also Like

Related Skills

coding-agent

coding-agent

179Kdev-codegen

Run Codex CLI, Claude Code, OpenCode, or Pi Coding Agent via background process for programmatic control.

openclaw avataropenclaw
Obtenir
add-uint-support

add-uint-support

97Kdev-codegen

Add unsigned integer (uint) type support to PyTorch operators by updating AT_DISPATCH macros. Use when adding support for uint16, uint32, uint64 types to operators, kernels, or when user mentions enabling unsigned types, barebones unsigned types, or uint support.

pytorch avatarpytorch
Obtenir
at-dispatch-v2

at-dispatch-v2

97Kdev-codegen

Convert PyTorch AT_DISPATCH macros to AT_DISPATCH_V2 format in ATen C++ code. Use when porting AT_DISPATCH_ALL_TYPES_AND*, AT_DISPATCH_FLOATING_TYPES*, or other dispatch macros to the new v2 API. For ATen kernel files, CUDA kernels, and native operator implementations.

pytorch avatarpytorch
Obtenir
skill-writer

skill-writer

97Kdev-codegen

Guide users through creating Agent Skills for Claude Code. Use when the user wants to create, write, author, or design a new Skill, or needs help with SKILL.md files, frontmatter, or skill structure.

pytorch avatarpytorch
Obtenir

Implements JavaScript classes in C++ using JavaScriptCore. Use when creating new JS classes with C++ bindings, prototypes, or constructors.

oven-sh avataroven-sh
Obtenir

Creates JavaScript classes using Bun's Zig bindings generator (.classes.ts). Use when implementing new JS APIs in Zig with JSC integration.

oven-sh avataroven-sh
Obtenir