Trenchrecon AI
  • Welcome
  • Getting Started
    • Quickstart
      • 1.1 Activating Your Membership
      • 1.2 Accessing the Telegram Bot
      • 1.3 Logging into the Web App
  • Core Features
    • Quick Risk Analysis
    • Top Holders Analysis
    • Pumpfun Recently Graduated Tokens
    • Liquidity Details
    • Deployer Sybil Analysis
    • Online Presence Snapshot
    • In-Depth Token Analysis
  • Twitter Sentiment Analysis
  • Using the AI Agent
    • Natural Language Interaction
    • Suggested Queries for Beginners
    • Advanced Query Examples
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  1. Core Features

Online Presence Snapshot

Assess a token’s online footprint to detect scam claims, community sentiment, and visibility across websites and social media. This tool browses the web to compile a sentiment analysis and risk score.

How to Use: Ask, β€œCheck the online presence of [contract address].”

Example Output:

πŸ” Online Presence Snapshot  
Address: FikV4A...pump  
Type: Memecoin Buzz Check  
Search Hits: 279 words across results  

πŸ“Š Web Mentions Analysis  
β€’ Positive Signals: None detected (e.g., "legit", "trusted")  
β€’ Negative Signals: None detected (e.g., "scam", "risk")  
β€’ Sentiment Trend: βš–οΈ Neutral  

⚠️ Online Risk Indicators  
β€’ Mixed signals detected  
Confidence Level: 🟑 Medium  

πŸ’£ Token Buzz Metrics  
Online Score: +0/10  
Presence: πŸ“ˆ High  
Risk Score: 0.0/10  

πŸ“Œ Final Assessment  
⚠️ Neutral presence - Further checks needed  

This online presence search reveals a neutral sentiment 
with no significant positive or negative flags. 
However, the lack of clear endorsements or warnings suggests caution 
and further investigation is advisable. If needed, I'm here to assist 
with a deeper analysis!

Interpreting Risk Scores

  • 🟒 Low Risk (0-3): Generally safer, but monitor for emerging issues.

  • 🟑 Medium Risk (3-6): Proceed with caution; check ownership and volatility.

  • πŸ”΄ High Risk (6-10): Avoid or use strict risk management (e.g., stop-loss orders).

  • Key Factors: High scores often stem from centralization, unverified contracts, or negative sentiment.

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Last updated 1 month ago