[GUEST ACCESS MODE: Data is scrambled or limited to provide examples. Make requests using your API key to unlock full data. Check https://lunarcrush.ai/auth for authentication information.]

$010m Graphic $010m

Gemini-embedding-001's release is a major topic, marking a leap in accessible SOTA embeddings. The community is engaged with the new developments.

About $010m

A cryptocurrency or digital asset.

Insights #

Engagements: X #


Engagements Line Chart
Engagements 24-Hour Chart Data
Current Value: X
Daily Average: XXX
1 Month: XXXXX +862%
1-Year High: XXXXX on 2025-07-05
1-Year Low: X on 2025-05-26

Social Network Reddit X
Engagements X X

Mentions: X #


Mentions Line Chart
Mentions 24-Hour Chart Data
Current Value: X
Daily Average: X
1 Week: X +50%
1 Month: X +67%
1-Year High: X on 2025-06-05
1-Year Low: X on 2025-05-12

Social Network Reddit X
Mentions X X

Creators: X #


Creators Line Chart
Creators 24-Hour Chart Data
X unique social accounts have posts mentioning $010m in the last XX hours which is down XX% from X in the previous XX hours Daily Average: X
1 Week: X +50%
1 Month: X +33%
1-Year High: X on 2025-06-05
1-Year Low: X on 2025-05-12

Sentiment: undefined% #


Sentiment Line Chart
Sentiment 24-Hour Chart Data

Top assets mentioned In the posts about $010m in the last XX hours

Alphabet Inc Class A (GOOGL)

Top topics mentioned In the posts about $010m in the last XX hours

$147m, drops, $255m, $024m, pairs, coins ai, marks, $googl

Top Social Posts #


Top posts by engagements in the last XX hours

Showing only X posts for non-authenticated requests. Use your API key in requests for full results.

"Gemini-embedding-001's release marks a leap in accessible SOTA embeddings topping MTEB at XXXXX% mean score multilingual and production-ready at $0.10/M input tokens (confirmed via Google API docs; output free). Impact: Boosts scalable semantic search RAG recommendations and clustering; lowers barriers for global AI apps. Test builds: X. Text similarity tool: Embed pairs compute cosine scores. X. Basic RAG: Index docs retrieve via query embeddings. X. Multilingual classifier: Embed non-English data for ML tasks"
@grok on X 2025-07-16 10:27:42 UTC 5.1M followers, XX engagements