shipshitdev

x-algorithm-optimizer

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0
# Install this skill:
npx skills add shipshitdev/library --skill "x-algorithm-optimizer"

Install specific skill from multi-skill repository

# Description

Optimize X/Twitter content for algorithm engagement signals. Based on xai-org/x-algorithm's Grok transformer model that predicts 15 user-specific engagement signals. Activates for tweet optimization, thread strategy, X growth, or algorithm-aligned content.

# SKILL.md


name: x-algorithm-optimizer
description: Optimize X/Twitter content for algorithm engagement signals. Based on xai-org/x-algorithm's Grok transformer model that predicts 15 user-specific engagement signals. Activates for tweet optimization, thread strategy, X growth, or algorithm-aligned content.
version: 1.0.0
tags:
- twitter
- x
- algorithm
- engagement
- growth
- social-media
- content-optimization
auto_activate: true


X Algorithm Optimizer

Optimize content for X's algorithm based on actual engagement signal prediction (from xai-org/x-algorithm).

Core Insight: X's algorithm uses Grok-based transformers to predict 15 user-specific engagement signals. It optimizes for user relevance, not broad popularity.

When This Activates

  • User asks to optimize tweets for X algorithm
  • User wants to improve X/Twitter engagement
  • User asks about thread strategy
  • User mentions X growth or algorithm optimization
  • User wants to maximize reach or engagement on X

The 15 Engagement Signals

X's algorithm predicts these signals per-user:

Positive Signals (Maximize)

Signal Weight Optimization Strategy
Favorites High Relatable insights, contrarian takes, save-worthy content
Replies Very High Questions, open loops, controversial hooks
Reposts Very High Frameworks, data, templates, quotable insights
Quotes High Hot takes people want to add to
Shares High Actionable value, resources, tools
Profile Clicks High Credibility signals, mysterious bio hooks
Video Views Medium Hook in first 3s, text overlay, no slow intros
Photo Expansions Medium Intriguing cropped previews, charts, screenshots
Dwell Time Very High Long-form hooks, formatting, open loops
Follows Very High Consistent niche value, credibility proof

Negative Signals (Minimize)

Signal Trigger Avoidance Strategy
Not Interested Irrelevant content Stay on-niche, clear topic signals
Blocks Aggressive/spam behavior No mass mentions, no DM spam
Mutes Posting frequency overload Space out content, quality > quantity
Reports Policy violations Clean content, no engagement bait

Hook Formulas (Maximize Dwell Time)

Dwell time is critical. Stop the scroll with these patterns:

The Contrarian Hook

Most people think [common belief].

They're wrong.

Here's why:

The Credibility Hook

I've [impressive credential].

Here's what I learned:

The Data Hook

[Surprising statistic].

That's [comparison that makes it shocking].

The Story Hook

In [year], I was [relatable situation].

[Unexpected outcome] changed everything.

The Question Hook

Why do [successful people] always [behavior]?

I studied [number] of them. Here's the pattern:

The Scarcity Hook

[Number]% of people will never know this.

[Valuable insight]:

Reply Triggers (Maximize Replies)

Replies signal high engagement value to the algorithm.

Open-Ended Questions

  • "What would you add to this?"
  • "Unpopular opinion: [take]. Agree or disagree?"
  • "What's stopping you from [desired outcome]?"

Controversial Takes (Use Sparingly)

  • Challenge industry assumptions
  • Disagree with popular figures (respectfully)
  • Reframe common advice

Engagement Prompts

  • "Reply '[keyword]' if you want [resource]"
  • "Tag someone who needs to see this"
  • "What's your biggest challenge with [topic]?"

Open Loops

End tweets without full resolution:

  • "The real reason? I'll share in the thread below."
  • "But that's not the interesting part..."
  • "Here's what nobody talks about:"

Repost Patterns (Maximize Reposts)

Content people save and share:

Frameworks

The [Name] Framework for [Outcome]:

1. [Step with benefit]
2. [Step with benefit]
3. [Step with benefit]

Steal this.

Templates

Here's the exact [template/script/email] I used to [outcome]:

[Template]

Copy and use it.

Data/Stats

I analyzed [number] [things].

Here's what the data shows:

[Insight 1]
[Insight 2]
[Insight 3]

Bookmark this.

Resource Lists

[Number] [tools/resources/tips] that [benefit]:

1. [Name] - [1-line description]
2. [Name] - [1-line description]
...

Save for later.

Thread Architecture

Threads cascade engagement across tweets.

Structure

Tweet 1 (Hook): Stop the scroll, promise value
Tweet 2-6 (Body): Deliver value, one point per tweet
Tweet 7 (CTA): Follow, engage, or take action

Thread Rules

  1. Each tweet must stand alone (algorithm scores individually)
  2. Use "Thread" or number notation (1/7)
  3. End each tweet with curiosity for the next
  4. Put best content in tweets 2-3 (highest visibility)
  5. Include bookmarkable value (images, lists, frameworks)

Thread Hook Formula

I [credibility signal].

Here's [what I learned / my framework / the breakdown]:

(Thread)

Signal-Specific Optimization

Maximize Favorites

  • Relatable struggles + insights
  • "Finally someone said it" content
  • Save-worthy resources
  • Contrarian takes with evidence

Maximize Profile Clicks

  • Hint at more value in bio
  • Demonstrate niche expertise
  • Create curiosity about background
  • Strong credibility signals in content

Maximize Dwell Time

  • Long-form formatting (line breaks)
  • Numbered lists
  • Multiple scroll-stopping sections
  • Strategic use of images/video

Minimize Negative Signals

  • Stay consistent with niche
  • Don't post more than 3-5x/day
  • Avoid engagement bait ("Like if you agree")
  • No mass tagging or DM spam

Algorithm Mechanics

Author Diversity

The algorithm attenuates repeated creators in feeds. Implications:

  • Getting retweeted by diverse accounts > one mega account
  • Build relationships with different communities
  • Cross-pollination beats concentrated reach

User-Specific Relevance

Content is scored per-user, not globally. Implications:

  • Target your specific audience's interests
  • Build engagement patterns with your followers
  • Consistency matters more than virality

No Hand-Engineered Features

The model is pure ML prediction. Implications:

  • Gaming specific metrics doesn't work long-term
  • Focus on genuine engagement quality
  • Create content people actually want to engage with

Timing Guidance

Audience Type Best Times Why
B2B/Tech 8-10am, 12-1pm EST Work hours, lunch breaks
B2C/Lifestyle 7-9am, 7-10pm EST Before/after work
Global Varies Test and measure

Note: Timing matters less than content quality. A great tweet at 2am beats a mediocre tweet at peak time.

Quick Optimization Checklist

  • [ ] Hook stops the scroll in first line
  • [ ] Content delivers specific value
  • [ ] At least one engagement trigger (question, CTA)
  • [ ] Formatted for dwell time (line breaks, lists)
  • [ ] On-niche to avoid "not interested" signals
  • [ ] No engagement bait or spam patterns
  • [ ] Clear credibility signals where relevant

Integration

Skill When to Use
content-creator Generate tweet/thread content
copywriter Brand voice consistency
prompt-engineer Content generation prompts
youtube-video-analyst Apply hook patterns from video

For detailed signal tactics and examples: references/engagement-signals.md

# Supported AI Coding Agents

This skill is compatible with the SKILL.md standard and works with all major AI coding agents:

Learn more about the SKILL.md standard and how to use these skills with your preferred AI coding agent.