The post Pepe Coin Might Recover Its 2025 Losses, But the Top Meme Coin to Watch This Cycle Is One Predicted to Rally 15,400% appeared on BitcoinEthereumNews.comThe post Pepe Coin Might Recover Its 2025 Losses, But the Top Meme Coin to Watch This Cycle Is One Predicted to Rally 15,400% appeared on BitcoinEthereumNews.com

Pepe Coin Might Recover Its 2025 Losses, But the Top Meme Coin to Watch This Cycle Is One Predicted to Rally 15,400%

The memecoin market has been rough this year. Prices slipped across the board, sentiment cooled, and retail confidence wavered. Even so, traders are already scanning for the best coin to buy now as the next major rotation approaches. Pepe Coin is trying to stabilize after months of sell pressure, but the real excitement is building around Little Pepe (LILPEPE). Analysts tracking early-cycle momentum say LILPEPE has the fundamentals, hype, and holder activity to outperform every other meme coin this cycle.

Pepe (PEPE)

Pepe is still navigating one of its toughest market phases since its launch. It trades around $0.000000402 after a long stretch of bearish structure on the daily chart. The trend flipped in late September when PEPE printed a lower high, and the asset hasn’t been able to reclaim momentum since. The CMF shows sell-side dominance, and despite having re-centered near neutral, the moving averages are still on the downside. The Stochastic RSI recently recorded another bullish crossover, one of the few positives, suggesting the price may rise, albeit temporarily. Liquidation patterns, in which traders speculate that the market is due for a bounce, may lead to a 12% to 15% upward move as the market recalibrates from oversold conditions.

The heatmap adds another layer to the setup. Short liquidation levels have built up heavily overhead, creating what analysts see as a “magnetic zone” for price. The $0.0000050–$0.0000055 area carries the largest cluster of short liquidations, and a sweep toward this region would align with similar bounces PEPE has made after Stochastic RSI crossovers in the past. Some charts even highlight room toward $0.000006–$0.0000066 if momentum accelerates. Still, the bigger structure remains bearish, and any bounce is more likely to serve as a selling opportunity than a real trend reversal. That uncertainty is why traders searching for the best coin to buy now are turning their attention elsewhere.

Little Pepe (LILPEPE)

While PEPE works through its corrective phase, Little Pepe is gaining traction at a pace that surprised even experienced investors. It’s quickly becoming the best coin to buy now for traders who want early upside exposure and a project with room to expand. LILPEPE has been steadily attracting new holders, and whale accumulation is on the rise. That’s usually the first sign a meme coin is heating up before sentiment shifts. The project’s CertiK audit also gives it credibility that many meme tokens don’t achieve this early in their lifecycle, which helps draw in more cautious investors. LILPEPE’s community growth is accelerating thanks to its $777k giveaway and a separate 15 ETH giveaway currently running. These campaigns have been attracting thousands of new participants across social channels as people seek emerging stars during this quieter market phase. Analysts predicting a 15,400% upside rally point to LILPEPE’s early traction, smart tokenomics, and its ability to stay visible even when the market slows. For many early investors, this combination makes it the best coin to buy now, ahead of the next meme cycle breakout.

Conclusion

Pepe may be headed for a small relief bounce, but its larger downtrend keeps traders cautious. It could erase part of its 2025 losses if the bounce extends into those liquidation clusters, yet the upside looks limited. Little Pepe (LILPEPE) stands in a completely different position. Its audited status, rapidly growing community, whale-backed momentum, and aggressive giveaways have turned it into the best coin to buy now for anyone hunting early-stage potential. If the market shifts back into meme coins, LILPEPE is the one most likely to lead that wave with explosive gains.

For more information about Little Pepe (LILPEPE) visit the links below:

Website: https://littlepepe.com

Whitepaper: https://littlepepe.com/whitepaper.pdf

Telegram: https://t.me/littlepepetoken

Twitter/X: https://x.com/littlepepetoken

$777k Giveaway: https://littlepepe.com/777k-giveaway/

Source: https://finbold.com/pepe-coin-might-recover-its-2025-losses-but-the-top-meme-coin-to-watch-this-cycle-is-one-predicted-to-rally-15400/

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