brainstorm-linkedin
Generate LinkedIn post ideas from external sources (files, URLs, research). Use when the user provides source material (PDFs, URLs, articles) to brainstorm topics. NOT for writing or developing drafts - use write-linkedin-post instead.
git clone --depth 1 https://github.com/techwolf-ai/ai-first-toolkit /tmp/brainstorm-linkedin && cp -r /tmp/brainstorm-linkedin/plugins/content-studio/skills/brainstorm-linkedin ~/.claude/skills/brainstorm-linkedinSKILL.md
# Brainstorm LinkedIn Posts from Source Material
Generate LinkedIn post ideas based on external context provided by the user.
## Process
1. **Read ALL published posts** (MANDATORY - to avoid topic/angle overlap):
```bash
./scripts/print-published.sh linkedin-post
```
This prints all published posts with full content in one call. Note:
- Core insights already covered
- Data points already used
- Angles already explored
**Do not suggest ideas that repeat existing coverage.**
2. **Read the style guide**:
- `guidelines/linkedin.md`
- `references/professional-profile.md`
3. **Process the provided context** (user will provide one or more of):
- Files (PDFs, documents, research papers)
- URLs (articles, blog posts, announcements)
- Raw text or ideas
4. **Identify 2-4 promising angles** by considering:
- What's the unique insight for a professional audience?
- How does this connect to the author's expertise?
- What's the hook that works in the first 210 characters?
- Is there a personal angle or company connection?
5. **Present ideas** with for each:
- Proposed title
- Core insight (1 sentence)
- Hook approach (personal anecdote, company experience, surprising outcome, or news)
- Why it fits the author's voice
6. **Ask user to choose**:
- Which idea(s) to develop
- Whether to create as idea (01-ideas) or draft (02-drafts)
## Evaluation Criteria
Strong LinkedIn post ideas have:
- A concrete hook in the first 210 characters
- A clear insight that provides value
- Connection to the author's expertise areas
- Room for a personal or company angle
- Appropriate scope for the target word count
## Creating Files
After user selection, get timestamp:
```bash
date -u +"%Y%m%d-%H%M%S" # For slug
date -u +"%Y-%m-%dT%H:%M:%S.000Z" # For created/lastUpdated
```
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