The post XRP Price Prediction: Ripple Will Hit $3 In April If This Happens But Remittix Hot On It’s Heels appeared first on Coinpedia Fintech News The XRP priceThe post XRP Price Prediction: Ripple Will Hit $3 In April If This Happens But Remittix Hot On It’s Heels appeared first on Coinpedia Fintech News The XRP price

XRP Price Prediction: Ripple Will Hit $3 In April If This Happens But Remittix Hot On It’s Heels

2026/03/20 17:22
3 min read
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Remittix

The post XRP Price Prediction: Ripple Will Hit $3 In April If This Happens But Remittix Hot On It’s Heels appeared first on Coinpedia Fintech News

The XRP price prediction of $3 in April is gaining traction as open interest drops to the same level that triggered a 103% rally in 2025. XRP has lost $457 million in leveraged futures positions over five months, with OI falling 70% from $660 million in October to $203 million by March, clearing the path for buyers to step back in.

While XRP traders eye catalysts like the Fed rate decision and the CLARITY Act, Remittix is hot on its heels, having raised more than $30 million and working on a payments infrastructure already live on the Apple App Store. The project is offering upside that a $150 billion asset simply cannot match.

XRP Price Prediction: What Happens When Leverage Flushes Complete

The 70% drop in open interest hasn’t guaranteed a rally, but it has removed the biggest source of forced selling that dragged the XRP price down for months. In April 2025, that same OI bottom triggered a 103% gain in three months, driven by the SEC settlement and broader market momentum.

The Federal Reserve rate decision arrives on March 18, the CLARITY Act is working through Congress, and Mastercard launched a crypto payments program on March 11 with Ripple listed as a partner. If any of these catalysts hit while futures markets remain this light, the $3 XRP price prediction for April becomes plausible.

Remittix

Source: Tradingview

The first level to watch is $1.50. A daily close above that level with volume would confirm a return of demand, with on-chain data showing limited resistance until the $1.76 to $1.80 range, where 1.85 billion XRP was accumulated by holders who may sell to break even. 

For XRP to hit $3 from current levels, the market needs approximately $45 billion in fresh capital entering a single asset. That is the reality of a $150 billion market cap cryptocurrency. Even with leverage flushed and catalysts aligned, the XRP price prediction depends on institutional inflows that historically follow Bitcoin breaks above $80,000, not precede them.

Remittix: The Best Crypto to Buy Now

While XRP traders watch open interest levels and wait for catalysts, Remittix has quietly surpassed $30 million in investor capital, raised from those who understand that the $19 trillion cross-border payments market operates independently of leveraged futures flushouts. The Remittix wallet is already live on the Apple App Store. 

Unlike XRP, which depends on SEC settlements and Fed decisions, Remittix generates revenue from day one. Every cross-border payment processed through the platform incurs real transaction fees that accrue to token holders, not speculative hype that a catalyst might hit while leverage remains low. The difference between an asset waiting for the ocean to rise and infrastructure earning while it builds is the difference between 103% and 40x.

Conclusion

The XRP price prediction of $3 in April depends on catalysts aligning and leverage remaining flush. It is possible. It is also a 103% move at best. Remittix at $0.13, with more than $30 million raised, CertiK verification as the number one pre-launch token, and a working wallet already on the Apple App Store, point to 40x to 50x as payment volume replaces speculation.

The current stage at $0.13 will not last while XRP traders debate whether open interest levels will trigger another 103% rally. The asymmetric upside lies in the project solving the $19 trillion problem, not in the $150 billion asset waiting for the entire ocean to rise.

Market Opportunity
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