The post How High Can DOGE and XRP Rally Before 2025 Ends? Holiday Hype Is Rising for Digitap appeared on BitcoinEthereumNews.com. Crypto Projects While some influencersThe post How High Can DOGE and XRP Rally Before 2025 Ends? Holiday Hype Is Rising for Digitap appeared on BitcoinEthereumNews.com. Crypto Projects While some influencers

How High Can DOGE and XRP Rally Before 2025 Ends? Holiday Hype Is Rising for Digitap

Crypto Projects

While some influencers forecast big jumps for the Dogecoin price and the price of XRP, holiday hype is growing for Digitap. Could it be the next 10x altcoin?

As the end of 2025 approaches, there has been a lot of talk about the potential rebounds of the Dogecoin price and the price of XRP. They both have been bleeding red on the weekly charts, but prominent influencers like Trader Tardigrade and Ali remain optimistic. According to them, both Dogecoin and Ripple remain strong altcoins to buy and could surge before the end of 2025.

Meanwhile, holiday interest is rising for Digitap ($TAP) – a crypto presale star that has already made early buyers 196% richer. People are discussing the recent launch of its 12 Days of Christmas Holiday Drop event, which offers 24 unique gifts to be unwrapped. As demand for $TAP increases, many analysts even claim it could be the next 10x altcoin in the market.

Dogecoin Shows a Falling Wedge Pattern – a Rebound Incoming?

Dogecoin’s value has been dropping despite being one of the best meme coins. CoinMarketCap shows that the Dogecoin price fell from around $0.14 to nearly $0.13 in the past week alone. This is just a continuation of the monthly downtrend, which saw DOGE dip over 15%.​

However, influencer Trader Tardigrade believes the Dogecoin crypto could see a rebound soon. According to his X post, this meme coin is now showing a bullish falling wedge pattern. This may lead to a potential breakout to the $0.15 level for the Dogecoin price before 2025 ends.

But TradingView shows some bearish signs that may pose a challenge to this Dogecoin price prediction. Notably, the Dogecoin price is now sitting below its 100-day EMA of $0.17 and its 200-day EMA of $0.19. This suggests that the long-term trend has been bearish and strengthening.

Ripple Projected To Soar to the $2.50 Level, but Can It?

Ripple is another altcoin that has been dropping in value. On the one-week chart, the price of XRP has fallen from around $2.10 to below $2 as per CoinMarketCap. This is over a 5% drop in just a few days for the Ripple value.

Nevertheless, some people are still excited thanks to a bullish Ripple price prediction from influencer Ali. In a recent post, Ali informed his X followers that the TD Sequential indicator has flashed a buy signal for this altcoin. If it manages to hold the $1.90 level, the price of XRP could go as high as $2.50 as per Ali.

However, the technical indicators are flashing some sell signals for the Ripple coin. TradingView shows that its MACD level is now sinking in the red while its volume is rising. This suggests a bearish divergence, potentially leading to more dips for the price of XRP.

Digitap Shines Amid a Great Performance in Ongoing Crypto Presale

Digitap is also turning some heads in the market, but for a much better reason. Its crypto presale performance has been stellar. Now in its third round, it has already raised over $2.4 million and sold over 145 million $TAP coins. This performance shows that people will gravitate toward projects with strong upside potential and real-world utility when markets turn red.

In addition, Digitap has launched the first “omnibank”. This global money app gives people the ability to manage both their fiat currencies and their crypto coins in the same spot, rather than switching between ten different apps. Digitap also implements AI scans that look for the best rates when converting these funds, as well as significantly reducing hidden fees.

Digitap is gaining traction for its 12 Days of Christmas Holiday Drop event. During this event, Digitap introduces one surprise offer every 12 hours for 12 days. This means 24 rewards are provided. Some users reported seeing massive $TAP coin bonuses as offers.

However, it is worth noting that as one offer appears, the previous one disappears. For these reasons, many traders are rushing to connect their wallets to Digitap and enjoy the festivities.

OVER $300K IN BONUSES, PRIZES, GIVEAWAYS. DIGITAP CHRISTMAS SALE IS LIVE

Digitap: More Profitable Than Dogecoin and Ripple This Christmas?

While Dogecoin and Ripple are struggling to rebound after a bad month, all eyes are on Digitap. This could be because holding the $TAP crypto brings many benefits. For instance, staking gives up to 124% APY rewards. Therefore, people can make money while the market is flat.

As a result, traders are now rushing to get the $TAP coin, which costs just $0.0371 – a 196% increase from its starting value of $0.0125. But this altcoin price is expected to reach $0.14 on its launch day. This is why analysts believe $TAP could be one of the good altcoins to buy today and a future 10x token.

Discover how Digitap is unifying cash and crypto by checking out their project here:

Presale: https://presale.digitap.app

Website: https://digitap.app 

Social: https://linktr.ee/digitap.app 

Win $250K: https://gleam.io/bfpzx/digitap-250000-giveaway 


This publication is sponsored and written by a third party. Coindoo does not endorse or assume responsibility for the content, accuracy, quality, advertising, products, or any other materials on this page. Readers are encouraged to conduct their own research before engaging in any cryptocurrency-related actions. Coindoo will not be liable, directly or indirectly, for any damages or losses resulting from the use of or reliance on any content, goods, or services mentioned.

Author

Alexander Zdravkov is a person who always looks for the logic behind things. He has more than 3 years of experience in the crypto space, where he skillfully identifies new trends in the world of digital currencies. Whether providing in-depth analysis or daily reports on all topics, his deep understanding and enthusiasm for what he does make him a valuable member of the team.

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Source: https://coindoo.com/how-high-can-doge-and-xrp-rally-before-2025-ends-holiday-hype-is-rising-for-digitap-the-next-10x-altcoin/

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