twitter-algorithm-optimizer

from composiohq/awesome-claude-skills

A curated list of awesome Claude Skills, resources, and tools for customizing Claude AI workflows

26.1K stars2.5K forksUpdated Jan 25, 2026
npx skills add https://github.com/composiohq/awesome-claude-skills --skill twitter-algorithm-optimizer

SKILL.md

Twitter Algorithm Optimizer

When to Use This Skill

Use this skill when you need to:

  • Optimize tweet drafts for maximum reach and engagement
  • Understand why a tweet might not perform well algorithmically
  • Rewrite tweets to align with Twitter's ranking mechanisms
  • Improve content strategy based on the actual ranking algorithms
  • Debug underperforming content and increase visibility
  • Maximize engagement signals that Twitter's algorithms track

What This Skill Does

  1. Analyzes tweets against Twitter's core recommendation algorithms
  2. Identifies optimization opportunities based on engagement signals
  3. Rewrites and edits tweets to improve algorithmic ranking
  4. Explains the "why" behind recommendations using algorithm insights
  5. Applies Real-graph, SimClusters, and TwHIN principles to content strategy
  6. Provides engagement-boosting tactics grounded in Twitter's actual systems

How It Works: Twitter's Algorithm Architecture

Twitter's recommendation system uses multiple interconnected models:

Core Ranking Models

Real-graph: Predicts interaction likelihood between users

  • Determines if your followers will engage with your content
  • Affects how widely Twitter shows your tweet to others
  • Key signal: Will followers like, reply, or retweet this?

SimClusters: Community detection with sparse embeddings

  • Identifies communities of users with similar interests
  • Determines if your tweet resonates within specific communities
  • Key strategy: Make content that appeals to tight communities who will engage

TwHIN: Knowledge graph embeddings for users and posts

  • Maps relationships between users and content topics
  • Helps Twitter understand if your tweet fits your follower interests
  • Key strategy: Stay in your niche or clearly signal topic shifts

Tweepcred: User reputation/authority scoring

  • Higher-credibility users get more distribution
  • Your past engagement history affects current tweet reach
  • Key strategy: Build reputation through consistent engagement

Engagement Signals Tracked

Twitter's Unified User Actions service tracks both explicit and implicit signals:

Explicit Signals (high weight):

  • Likes (direct positive signal)
  • Replies (indicates valuable content worth discussing)
  • Retweets (strongest signal - users want to share it)
  • Quote tweets (engaged discussion)

Implicit Signals (also weighted):

  • Profile visits (curiosity about the author)
  • Clicks/link clicks (content deemed useful enough to explore)
  • Time spent (users reading/considering your tweet)
  • Saves/bookmarks (plan to return later)

Negative Signals:

  • Block/report (Twitter penalizes this heavily)
  • Mute/unfollow (person doesn't want your content)
  • Skip/scroll past quickly (low engagement)

The Feed Generation Process

Your tweet reaches users through this pipeline:

  1. Candidate Retrieval - Multiple sources find candidate tweets:

    • Search Index (relevant keyword matches)
    • UTEG (timeline engagement graph - following relationships)
    • Tweet-mixer (trending/viral content)
  2. Ranking - ML models rank candidates by predicted engagement:

    • Will THIS user engage with THIS tweet?
    • How quickly will engagement happen?
    • Will it spread to non-followers?
  3. Filtering - Remove blocked content, apply preferences

  4. Delivery - Show ranked feed to user

Optimization Strategies Based on Algorithm Insights

1. Maximize Real-graph (Follower Engagement)

Strategy: Make content your followers WILL engage with

  • Know your audience: Reference topics they care about
  • Ask questions: Direct questions get more replies than statements
  • Create controversy (safely): Debate attracts engagement (but avoid blocks/reports)
  • Tag related creators: Increases visibility through networks
  • Post when followers are active: Better early engagement means better ranking

Example Optimization:

  • ❌ "I think climate policy is important"
  • ✅ "Hot take: Current climate policy ignores nuclear energy. Thoughts?" (triggers replies)

2. Leverage SimClusters (Community Resonance)

Strategy: Find and serve tight communities deeply interested in your topic

  • Pick ONE clear topic: Don't confuse the algorithm with mixed messages
  • Use community language: Reference shared memes, inside jokes, terminology
  • Provide value to the niche: Be genuinely useful to that specific community
  • Encourage community-to-community sharing: Quotes that spark discussion
  • Build in your lane: Consistency helps algorithm understand your topic

Example Optimization:

  • ❌ "I use many programming languages"
  • ✅ "Rust's ownership system is the most underrated feature. Here's why..." (targets specific dev community)

3. Improve TwHIN Mapping (Content-User Fit)

Strategy: Make your content clearly relevant to your established identity

  • Signal your expertise: Lead with domain knowledge
  • **Consis

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