Why Ruvi AI’s (RUVI) Audited Token Might Deliver Bigger Gains Than Avalanche (AVAX), CoinMarketCap Listing Strengthened Its $1 Prediction

Analytics Insight
Aug 4, 2025 20:00
Market Trends
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Summary

Ruvi AI’s (RUVI) recently audited token and its CoinMarketCap listing have strengthened investor confidence, fueling predictions that its price could reach $1 and potentially outperform established tokens like Avalanche (AVAX). This development highlights the growing importance of transparency and credibility in AI-related crypto projects, suggesting that rigorous audits and reputable listings may drive greater adoption and gains in the AI token sector.

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