Top Crypto Gainers and Losers Today on CoinMarketCap

TheCryptoTimesPublished on 2025-07-07Last updated on 2025-07-07

The crypto market is buzzing with fresh new energy, as the global market cap has reached $3.35 trillion, a 0.69% increase in just 24 hours. In this, positive sentiment trading activity has picked up. Volume is soaring to $92.12 billion with a 40.93% rise, with stablecoins accounting for 95.46% of all transactions, which adds up to $87.93 billion. 

At the same time, Bitcoin’s dominance has dipped a bit to 64.40%, indicating that investors are starting to show more interest in altcoins.

Top Gainers Lead Today’s Bullish Sentiment

Celestia (TIA) took the spotlight, soaring by 9.96% to hit $1.62, bringing its market cap to a $1.13 billion. Following closely behind, SPX6900 enjoyed an 8.02% boost, reaching $1.32 and accumulating a market cap of $1.22 billion. Meanwhile, Bonk (BONK) also increased by 6.16% to $0.000023, while keeping its liquidity with over $1 billion in daily trading volume.

Bears Drag Toncoin and INJ Lower

Toncoin (TON) took a hit, falling 4.30% to $2.79, even with $405 million in trading volume. Pudgy Penguins (PENGU) wasn’t far behind, dropping 4.78% to $0.015. Injective (INJ) also slipped 3.14% to $10.50.

Also Read: Crypto Price Today (July 5): SOL, SUI Eye Bullish Breakout, DOGE and XRP Hold Gains



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