seo-keyword
关于
This skill performs comprehensive keyword research by discovering search queries, classifying them by intent, and clustering them into topical groups for content planning. It helps developers identify ranking opportunities and prioritize content production based on search volume and difficulty. Use it when building a content strategy, planning a site, or needing target keywords for SEO.
快速安装
Claude Code
推荐npx skills add rampstackco/claude-skills -a claude-code/plugin add https://github.com/rampstackco/claude-skillsgit clone https://github.com/rampstackco/claude-skills.git ~/.claude/skills/seo-keyword在 Claude Code 中复制并粘贴此命令以安装该技能
技能文档
Keyword Research
Find the queries worth ranking for, classify them by intent, cluster them into topics, and prioritize what to produce. Stack-agnostic. Tool-agnostic (works with any keyword tool).
When to use
- Starting a new site or content section
- Planning a content calendar
- Looking for ranking opportunities on an existing site
- Understanding search intent before writing
- Building topic clusters for internal linking
- Identifying content gaps vs competitors
When NOT to use
- Optimizing a single page where the target query is already known (use
seo-onpage) - Comparing your site to a competitor across many dimensions (use
seo-competitor) - Auditing existing content for performance (use
seo-content-audit)
Required inputs
- The site or topic area
- The target audience and what they need
- A keyword tool (Ahrefs, Semrush, Moz, Google Keyword Planner, or similar) OR access to search console for an existing site
- Optional: 3 to 5 known competitors to seed the research
If no tool is available, the skill still works using SERP inspection and search console data alone, but the volume estimates will be rough.
The framework: 4 stages
Stage 1: Discover
Cast a wide net. Sources:
- Seed terms from the brief or the user's vocabulary
- Competitor keywords (any keyword tool will export these)
- Search console queries for an existing site (find the page-1 and page-2 queries)
- Related searches and "People also ask" in actual SERPs
- Customer language (support tickets, sales calls, reviews)
- Forum and community language (Reddit, niche forums, Stack Overflow)
Goal: 200 to 500 candidate keywords for a typical content sprint. More if planning a year of content.
Stage 2: Classify by intent
Every keyword maps to one of four intents. Get this right or the rest is noise.
| Intent | Signal | Page type that wins |
|---|---|---|
| Informational | "how to," "what is," "why," "best way to" | Article, guide, tutorial |
| Navigational | brand or product name + modifier | Brand homepage, product page |
| Commercial | "best," "review," "vs," "comparison," "alternatives" | Listicle, comparison, review |
| Transactional | "buy," "price," "deal," "near me," "for sale" | Product page, category page |
A keyword tool's volume tells you the demand. The SERP tells you the intent. When in doubt, look at what's actually ranking. If page 1 is articles, the query is informational. If page 1 is product pages, it's transactional.
Hybrid intents exist. "Best running shoes" is commercial-investigational. "Best running shoes under $100" is the same intent narrowed by a budget filter. Treat hybrids as their dominant intent and note the modifier.
Stage 3: Cluster
Group keywords that should target the same page (or topic cluster).
Two clustering approaches:
Approach A: SERP overlap. If two keywords share at least 3 of the top 10 results, they target the same page. This is mechanical and reliable.
Approach B: Topical relevance. Group keywords by the underlying topic, not just word overlap. "How to start a podcast" and "podcast equipment for beginners" are the same topic, different facets.
Use both. A typical cluster has:
- 1 primary keyword (highest volume, broadest intent)
- 5 to 15 secondary keywords (variations and long-tails)
- 1 page that targets them all
Stage 4: Prioritize
For each cluster, score on three dimensions:
Opportunity (1 to 5):
- Volume (raw search demand)
- Click potential (some queries answer themselves in the SERP, lowering CTR)
- Conversion potential (does this query attract buyers or browsers?)
Difficulty (1 to 5):
- Domain authority of top results
- Backlink count of top results
- Content depth and freshness of top results
- Whether the SERP has features (featured snippets, AI overview, video carousel) that compete with organic
Strategic fit (1 to 5):
- Does it serve our audience?
- Does it support our positioning?
- Does it link to commercial pages naturally?
Priority score = Opportunity + Strategic fit - Difficulty.
Rank the clusters. Top 20 percent get produced first.
Workflow
- Define the scope. What site, what topic area, what audience.
- Run discovery. Pull seeds, competitor exports, search console data, SERP inspections. Aim for 200 to 500 candidates.
- Deduplicate and clean. Remove obvious junk, brand misspellings, irrelevant terms.
- Classify by intent. Mark each keyword.
- Cluster. Group into topical clusters. Aim for 20 to 50 clusters.
- Score each cluster on opportunity, difficulty, and strategic fit.
- Prioritize. Rank by composite score. Identify the top 10 to 20 clusters to produce first.
- Output. Use the template in
references/keyword-research-template.md.
Failure patterns
- Chasing volume without intent. A 10,000-volume informational keyword does not drive purchases. Match query to commercial outcome.
- Targeting impossibly competitive keywords. New sites cannot rank for "credit cards." Find the underserved long-tail variant.
- Ignoring search console. Existing sites already rank for queries they did not target. These are the easiest wins.
- Treating clusters as one-keyword-per-page. A page can target 10 to 30 related keywords. One-keyword-per-page leads to thin, cannibalized content.
- Ignoring SERP features. A query with a featured snippet, AI overview, and a video carousel above the organic results may not be worth pursuing.
- Static keyword research. Search demand shifts. Refresh the research at least annually for evergreen sites, quarterly for fast-moving topics.
Output format
Default output: a spreadsheet (CSV or sheet) with one row per keyword and one row per cluster, plus a markdown summary with the top 10 to 20 clusters detailed.
Recommended columns for the keyword sheet:
| Column | Source |
|---|---|
| Keyword | Discovery |
| Volume | Tool |
| Difficulty | Tool |
| Intent | Manual classification |
| SERP features | Manual or tool |
| Cluster | Stage 3 |
| Cluster role (primary/secondary) | Stage 3 |
| Opportunity score | Stage 4 |
| Strategic fit | Stage 4 |
| Priority | Composite |
| Notes | Free text |
Reference files
references/keyword-research-template.md- Spreadsheet column definitions and a markdown summary template.references/intent-classification-guide.md- Detailed examples of each of the four intent categories.
GitHub 仓库
相关推荐技能
seo-onpage
其他这是一个用于单页面SEO全面审计与优化的Claude Skill。它能自动分析标题标签、元描述、标题结构、内容质量、内部链接、图片优化、URL结构和页面结构化数据等8个核心维度。当开发者需要对特定页面进行SEO检查、优化元素或提升搜索表现时,直接提及相关关键词即可触发此技能。
seo-offpage
其他该Skill专注于规划和执行站外SEO策略,包括链接建设、数字公关、品牌提及和本地引用等。它适用于开发者需要提升网站权威、获取外部反向链接或进行链接风险审计的场景。Skill能响应多种相关触发词,提供与技术栈无关的站外SEO方案。
seo-keyword
其他该Skill用于执行全面的SEO关键词研究,帮助开发者发现、分类和优先处理目标关键词。它能根据搜索意图对关键词进行分类,并将其聚类为主题组,以指导内容生产和内容策略规划。当开发者需要进行关键词研究、构建主题地图、分析搜索意图或规划内容日历时,可触发此Skill来识别排名机会和内容缺口。
seo-content-audit
其他该Skill用于系统性地审计网站现有内容,帮助开发者根据内容表现和SEO价值,对每篇内容做出保留、更新、合并、重定向或删除的决策。它适用于解决内容衰减、关键词蚕食、流量下降等常见SEO问题,并能优先处理内容更新。当开发者需要进行内容盘点、应用内容优化框架或执行站点级内容策略时,可触发此Skill。
