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aaron-he-zhu

Keyword Research

by Aaron Zhu · GitHub ↗ · v9.9.9 · MIT-0
cross-platform ✓ Security Clean
6111
Downloads
9
Stars
36
Active Installs
26
Versions
Install in OpenClaw
/install keyword-research
Description
Use when the user asks to "find keywords"; prioritizes volume, difficulty, intent, and clusters from provided or connected data. 关键词研究/内容选题
Usage Guidance
Safe to install for normal SEO keyword research. Before using connected SEO or Search Console tools, verify account and site scopes; before saving results to memory, consider whether keyword priorities, competitor facts, or content plans are confidential.
Capability Analysis
Type: OpenClaw Skill Name: keyword-research Version: 9.9.9 The keyword-research skill is a comprehensive SEO framework designed to guide an AI agent through a structured 8-phase keyword analysis process. The bundle consists entirely of Markdown documentation and metadata (SKILL.md, _meta.json, and various reference files) that define scoring methodologies, intent taxonomies, and reporting templates. There is no executable code, no evidence of data exfiltration, and no suspicious prompt-injection attempts; the skill's behavior is strictly aligned with its stated purpose of SEO research and state management within the OpenClaw environment.
Capability Assessment
Purpose & Capability
The artifacts coherently describe SEO keyword discovery, scoring, intent classification, and topic clustering; metadata capability tags for crypto and purchases are not supported by the artifact text and appear unrelated rather than active behavior.
Instruction Scope
The workflow is explicit and user-facing, but a few triggers such as general writing ideation are broad enough to invoke the skill outside a strict SEO request.
Install Mechanism
The package contains Markdown documentation and reference files only, with no executable scripts, dependencies, startup commands, or install-time behavior.
Credentials
Optional SEO tool, Search Console, live SERP, and prior strategy data are proportionate for keyword research, but should be limited to intended sites and accounts.
Persistence & Privilege
The skill discloses saving research deliverables and promoting keyword priorities, competitor facts, and strategy decisions into memory paths; line 122 frames saving as an offer after delivery.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install keyword-research
  3. After installation, invoke the skill by name or use /keyword-research
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v9.9.9
Published from v9.9.9 @ bd84c7a
v9.9.5
Published from v9.9.5 @ 7ecc77b
v9.9.0
Published from main @ 7861a09
v9.5.0
Published from main @ 9967b3d
v9.1.0
Published from main @ d9bf8c7
v9.0.1
Published from main @ 3642433
v9.0.0
Published from main @ 032eb65
v8.0.2
Published from main @ 728f02d
v8.0.1
Published from main @ e644cbe
v8.0.0
v8.0.0: Unified version release — consolidates Wiki Knowledge Layer, Auditor Runbook inline strategy, Critical Fail Cap, Guardrail Negatives, and 2 new commands
v7.2.0
v7.2.0: conversion-focused first paragraphs, cross-promotion tables, deduplicated Chinese keywords, semantic density paragraphs for on-page/technical SEO auditors
v7.1.0
Improve ClawHub search discoverability: optimized display name, tags, and description for vector search
v7.0.0
v7.0.0: Wiki Knowledge Layer + infrastructure upgrades
v6.2.0
v6.2.0: when_to_use + argument-hint frontmatter, hook hardening, memory system upgrades
v6.0.0
v6.0.0: GStack pattern adoption — Completion Status Protocol, Escalation Protocol, Anti-Slop Output Voice, 8 named workflow phases, Decision Gates, AUTO-FIX vs ASK, 750+ multilingual triggers, all descriptions ≤180 UTF-8 bytes for full ClawHub display
v5.1.0
v5.1.0: multilingual trigger optimization — 5 languages, 750+ triggers
v5.0.0
v5.0.0: Unified operating model — hook automation, temperature memory, protocol gates, state write-through, trigger widening
v4.1.0
v4.1.0: publish GitHub absolute links for published docs and sync version metadata
v4.0.0
v4.0.0: ClawHub-first marketplace optimization — security fixes, vector search descriptions, multi-ecosystem install docs
v3.0.0
Version 3.0.0 of keyword-research introduces major enhancements for keyword analysis and integration: - Added support and documentation for advanced integrations (Ahrefs, SEMrush, Google Keyword Planner, Google Search Console, or manual input). - Expanded description and triggers to cover new use cases such as keyword difficulty score, search volume data, CPC estimates, long-tail keyword suggestions, and content calendar planning. - Includes compatibility info for multiple marketplaces and environments (Claude Code, skills.sh, ClawHub, Vercel Labs). - Added new reference files: example keyword report and prioritization framework. - Improved metadata and tags to reflect modern SEO workflows (topic clusters, pillar pages, CPC, search intent classification). - Retains all core research, classification, and opportunity scoring features from earlier versions.
Metadata
Slug keyword-research
Version 9.9.9
License MIT-0
All-time Installs 209
Active Installs 36
Total Versions 26
Frequently Asked Questions

What is Keyword Research?

Use when the user asks to "find keywords"; prioritizes volume, difficulty, intent, and clusters from provided or connected data. 关键词研究/内容选题. It is an AI Agent Skill for Claude Code / OpenClaw, with 6111 downloads so far.

How do I install Keyword Research?

Run "/install keyword-research" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is Keyword Research free?

Yes, Keyword Research is completely free, licensed under MIT-0. You can download, install and use it at no cost.

Which platforms does Keyword Research support?

Keyword Research is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created Keyword Research?

It is built and maintained by Aaron Zhu (@aaron-he-zhu); the current version is v9.9.9.

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