Market Expert Updates XRP Roadmap To $300 With New Data

bitcoinistPublished on 2026-05-19Last updated on 2026-05-19

Abstract

Market expert CharuSan has updated his roadmap for XRP, predicting a rally to $300, driven by the potential enactment of the CLARITY Act and subsequent adoption by banks via Ripple's On-Demand Liquidity (ODL) service. He argues that for large-scale, global banking transactions, XRP's current price and circulating supply are insufficient. CharuSan explains that executing multi-billion dollar transfers for thousands of banks simultaneously would create a bottleneck and cause slippage unless the token's price is significantly higher to provide the necessary liquidity depth. He cites partnerships with major infrastructure providers as a foundation for swift adoption. Currently, XRP is trading around $1.38.

Market expert CharuSan has provided an updated roadmap on how XRP will rally to $300 once the CLARITY Act boosts its utility. He cited how banks will begin to adopt the altcoin via Ripple’s On-Demand Liquidity (ODL), which will, in turn, boost its price.

Pundit Provides Updated Roadmap Of How XRP Will Rally To $300

In an X post, the pundit stated that XRP will reach $300 because the price used by banks for transfers is calculated via ODL, and that the circulating supply does not reflect the amount of the altcoin available at that exact moment. Therefore, CharuSan declared that the price is not calculated based on the circulating supply.

He further explained that if a bank’s transfer amount is $200 billion and the XRP price is $20, then it would require 10 billion XRP to execute the payment. The pundit added that single transfers of 3, 5, or 10 billion would create a bottleneck in a coin with a circulating supply of 61 billion, especially given that it would be the global banking network using XRP. As such, he believes the token’s price will need to be much higher.

CharuSan noted that one wouldn’t be able to conduct the transfers of 13,000 banks with small values like $10 or $20. He also alluded to the DTCC and many other institutional firms that will be adopting the altcoin for global transactions. The pundit had earlier predicted that banks would start using it shortly after the CLARITY Act was enacted. He suggested that the rally would happen swiftly as Ripple has already partnered with giant infrastructure providers such as Volante, ACI Worldwide, and FINASTRA.

Why A Higher Price Is Needed

CharuSan further explained why XRP’s price needed to be higher for this level of adoption, noting that the token velocity doesn’t replace liquidity depth. He explained that one needs to consider the simultaneous volume of global transactions and how, with trillions in value, they could be locked even with a 3- to 5-second settlement across thousands of banks. He added that if the transaction volume exceeds the pool’s depth, slippage is inevitable.

He gave an example of the token as a super-fast car, and that if 300 cars are moving at the same wavelength into a tunnel that can only accommodate 20 cars, there is likely to be a bottleneck, as an accident occurs at the tunnel entrance. As such, the tunnel has to be large enough to accommodate 300 cars without causing friction. Similarly, CharuSan suggested that XRP’s price needs to be higher to accommodate all these global transactions simultaneously.

At the time of writing, the altcoin’s price is trading at around $1.38, down in the last 24 hours, according to data from CoinMarketCap.

XRP trading at $1.38 on the 1D chart | Source: XRPUSDT on Tradingview.com

Related Questions

QAccording to the article, what is the main reason the market expert CharuSan believes XRP's price needs to reach $300?

ACharuSan believes XRP's price needs to reach $300 to accommodate the massive, simultaneous global transaction volume from thousands of banks without causing bottlenecks, slippage, or liquidity issues in the network.

QWhat specific piece of legislation does CharuSan credit for boosting XRP's utility and starting the adoption by banks?

ACharuSan credits the CLARITY Act for boosting XRP's utility and starting its adoption by banks.

QHow does Ripple's On-Demand Liquidity (ODL) relate to the calculation of XRP's price according to the expert's view?

AAccording to the expert, the price used by banks for transfers is calculated via Ripple's On-Demand Liquidity (ODL), and he argues this price is not calculated based on XRP's circulating supply.

QWhat analogy does CharuSan use to explain why XRP's price needs to be higher to handle global transactions?

ACharuSan uses the analogy of 300 super-fast cars trying to enter a tunnel that can only fit 20 cars, which would cause a bottleneck or 'accident.' The tunnel (representing XRP's liquidity depth and price) needs to be large enough to accommodate all cars (transactions) without friction.

QWhat was the price of XRP at the time the article was written, according to the data cited?

AAt the time of writing, the price of XRP was trading at around $1.38.

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