twitter-algorithm-optimizer
from composiohq/awesome-claude-skills
A curated list of awesome Claude Skills, resources, and tools for customizing Claude AI workflows
npx skills add https://github.com/composiohq/awesome-claude-skills --skill twitter-algorithm-optimizerSKILL.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
- Analyzes tweets against Twitter's core recommendation algorithms
- Identifies optimization opportunities based on engagement signals
- Rewrites and edits tweets to improve algorithmic ranking
- Explains the "why" behind recommendations using algorithm insights
- Applies Real-graph, SimClusters, and TwHIN principles to content strategy
- 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:
-
Candidate Retrieval - Multiple sources find candidate tweets:
- Search Index (relevant keyword matches)
- UTEG (timeline engagement graph - following relationships)
- Tweet-mixer (trending/viral content)
-
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?
-
Filtering - Remove blocked content, apply preferences
-
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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