The post Can SHIB Hold Its Ground Or Will Remittix’s Utility-Powered Surge Overtake It In 2026? appeared on BitcoinEthereumNews.com. Crypto Projects Shiba Inu isThe post Can SHIB Hold Its Ground Or Will Remittix’s Utility-Powered Surge Overtake It In 2026? appeared on BitcoinEthereumNews.com. Crypto Projects Shiba Inu is

Can SHIB Hold Its Ground Or Will Remittix’s Utility-Powered Surge Overtake It In 2026?

2025/12/14 15:39
Crypto Projects

Shiba Inu is making a comeback amongst analysts and investors. SHIB has increased by 2 percent within the past 24 hours, approximately $0.00000836.

All new Shiba Inu price forecasts are being debated by traders, who are attempting to determine whether the rally has begun or is merely another pump.

As projects like Remittix surge forward, some visionary investors believe they may outshine meme coins by 2026. The key question is evolving from “What is the next Shiba Inu price prediction?” to “Can SHIB stand strong as utility-driven projects like Remittix carve out their place in the exciting race for the best crypto of 2025?”

Shiba Inu Price Prediction: Key Levels SHIB Must Defend

On the chart, SHIB sits near a very important zone. The token has formed a falling wedge pattern, which is often a bullish sign if the price breaks to the upside. At the same time, there is also a small inverted head and shoulders pattern just below the upper side of that wedge. This mix of patterns is why many analysts are watching the next Shiba Inu price prediction with extra care.

Source: TradingView

Upside levels are clear. First, resistance starts near $0.00000862. If SHIB can pass that area, the token’s price could get to $0.00000894. As long as it also passes this level, it could eventually reach $0.00000927 and then $0.00000974. The bigger target many bulls talk about in their Shiba Inu price prediction threads is the range high near $0.00001034.

However, the one area that the token must maintain is sitting around $0.00000821. If the token’s price falls below this, it will get to $0.00000755. Whatever happens next will determine the Shiba Inu price prediction for the rest of the year and even 2026.

Remittix DeFi Project: Utility-Powered Surge In A Top Crypto Under $1

While traders debate each new Shiba Inu price prediction, the Remittix DeFi project is quietly building a payment rail that could matter for years. It targets a multi-trillion-dollar market, not just a niche. So far, Remittix has raised over $28.5 million through the sale of more than 693.2 million RTX at $0.119 each, placing RTX firmly in the top crypto under $1 group.

The Remittix wallet is already live and running, with the app listed on the Apple Store. Behind the wallet sits the Remittix Web App, which will power its crypto-to-fiat payment solution. This app is close to Beta. The plan is to let users move crypto that lands as fiat in real bank accounts, then fully link it with the wallet and announce full go-live dates for the ecosystem.

Remittix also passed a strict audit by CertiK, one of the most respected firms in blockchain security. It has a Skynet Score of 80.09, Grade A, and ranks #1 among all pre-launch projects on the platform. On top of that, the first centralized exchange listings at BitMart and LBank are locked in, and a huge CEX listing reveal is coming in December. Here is why some investors think Remittix could overtake meme coins like SHIB by 2026:

  • RTX trades as a top crypto under $1, yet is backed by a live Apple Store wallet and a near-ready crypto-to-fiat Web App.
  • The project targets cross-border payments, giving it strong crypto with real utility instead of only hype.
  • A Grade A CertiK audit and number one Skynet ranking make it a trusted Remittix DeFi project for larger investors.
  • Confirmed BitMart and LBank listings, plus a major new CEX listing, support deep liquidity for people who want to buy the RTX token.
  • The ecosystem lets users earn real value as adoption grows, offering a more sustainable path than risky staking rewards alone.

Can SHIB Hold Its Ground While Remittix Grows Into 2026?

SHIB still has an active community and bullish patterns forming. If key resistance levels break, the Shiba Inu price prediction could still be bright. At the same time, the meme coin sector is much smaller than before, and investors are being more selective. Remittix, on the other hand, is racing ahead with real products, a low gas fee crypto payment rail, and strong security checks. Many investors are now choosing a mix. They keep a smaller SHIB position for meme exposure, while building a larger stake in RTX as a high-growth payments play.

FAQs

1. What affects the price of SHIB?

SHIB’s price moves mostly when traders feel fear or excitement. Big changes in futures betting, token burns, and how much smart money is buying or selling also shape every move. When SHIB stays above strong support levels, buyers feel safer. When it loses those levels, sellers take over fast.

2. Can SHIB reach $1?

No, not with its current supply. If SHIB ever hit $1, its total value would be larger than the entire global crypto market. That makes the idea unrealistic unless the supply becomes far smaller. Burns help a little, but not enough to make $1 possible with today’s numbers.

3. What do analysts say about Remittix right now?

Analysts say Remittix looks stronger than many meme coins because it is built for real payments. They also point to the $28.5 million+ raised, the working wallet on the Apple Store, the coming web app, and the top CertiK security score as signs of serious progress. Many believe RTX has potential because it solves a real-world problem.

4. What is affecting the crypto market?

Currently, the market is being influenced by investors, recent upgrades, ETF launches, and the flow of money in and out. Investors are focusing on projects that have real users and practical tools, rather than just hype. This is why payment projects like Remittix are gaining attention, while some meme coins are losing traction.

5. What will the next bull market look like?

Most analysts expect the next one to reward projects with real utility. Meme coins may still rise for short periods, but long-lasting growth may favor payment networks, DeFi tools, and strong Layer 1 platforms. Many traders think Remittix could fit well in that trend because it offers real-world usage and a growing ecosystem.

Discover the future of PayFi with Remittix by checking out their project here:

Website: https://remittix.io/

Socials: https://linktr.ee/remittix

$250K Giveaway: https://gleam.io/competitions/nz84L-250000-remittix-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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Medium2025/09/18 14:40