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Fear and Greed Index

SENTIMENT:

KOL CALLS

Long/Short Calls

MINDSHARE:

Intelligence

Emotions

Social Momentum

FEED:

Conviction Index

Followers

Volume ($)

Volatility

Mcap vs BTC

Sentiment Timeframes

IBM (Ondo Tokenized Stock) (IBMON) Sentiment & Fear and Greed Index

As of July 17, 2026, IBM (Ondo Tokenized Stock)'s Nebula Fear & Greed Index is 9 (Extreme Fear), its social sentiment score is 0/100 (bearish), it holds 0.00% of crypto social mindshare. These signals are computed by Nebula from social posts across crypto Twitter/X and other sources, scored with large language models rather than keyword counts.

Updated continuously · Source: Nebula

Fear & Greed9 · Extreme Fear
Sentiment0/100
Mindshare0.00%
Price$218.83 +1.4%

Latest IBM (Ondo Tokenized Stock) insights

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Frequently asked questions

What is IBM (Ondo Tokenized Stock)'s Fear & Greed Index?

IBM (Ondo Tokenized Stock)'s Nebula Fear & Greed Index is currently 9 out of 100, which is Extreme Fear. The index blends social sentiment, social interest, price momentum, volatility, and emotional intensity into a single 0–100 sentiment score, updated continuously.

Is IBM (Ondo Tokenized Stock) bullish or bearish right now?

IBM (Ondo Tokenized Stock)'s social sentiment is currently bearish, with a sentiment score of 0/100 based on how bullish or bearish the crypto social conversation is. Sentiment reflects the mood of the market, not price direction or financial advice.

How does Nebula measure IBM (Ondo Tokenized Stock) sentiment?

Nebula reads every relevant social post about IBM (Ondo Tokenized Stock) across crypto Twitter/X and other sources and scores it with large language models — capturing bullish/bearish tone, emotion, and who is speaking (from retail to smart money) — rather than counting keywords.