XRP Analyst Says This Is What They Aren’t Showing You, ‘Don’t Get Shaken Out’

bitcoinistОпубликовано 2026-01-15Обновлено 2026-01-15

Введение

An XRP analyst highlights a significant divergence between surface-level price action and underlying on-chain data. While XRP's price broke above $2.10 but faced rejection, leading to a drop to $2.05 and bearish sentiment, institutional activity tells a different story. As retail investors sold, XRP-related ETFs saw a net inflow of $4.9 million in a single day, indicating accumulation by larger players. Furthermore, approximately $22 million worth of XRP was moved off exchanges in 24 hours, reducing available tokens. Exchange balances have steadily declined since late 2025, falling from over 4 billion to below 2 billion XRP. This suggests a quiet supply shock and accumulation, cautioning against panic selling despite the apparent weakness.

XRP has broken above the $2.10 price level, but on the surface, the chart is not comfortable. Red candles, falling sentiment, and growing chatter about weakness are still dominating conversation.

According to a crypto analyst on X, that reaction may be exactly what larger players are counting on, especially because a closer look at on-chain data shows a very different story is quietly unfolding below the price action.

Price Weakness And Retail Capitulation On Center Stage

XRP started the year on a good note, with a break above $2 and then pushing as high as $2.41 before facing rejection. This rejection, in turn, caused the altcoin to fall to as low as $2.05. The analyst pointed to the loss of the $2.23 level during the breakdown as the moment retail confidence began to crack.

As XRP’s price action trended lower to $2.05, fear-based selling increased, and this was shown on the charts that appeared increasingly bearish. From a short-term perspective, the move looked like confirmation that sellers quickly took control from buyers.

Source: Chart from Jungle on X

Behind that visible decline, there are activities from institutional participants that do not show up on standard price charts. When retail participants were selling, XRP-related ETFs recorded a net inflow of $4.9 million in a single day.

The lower panel of the chart below shows this divergence, showing total holdings of Spot XRP ETFs climbing steadily even as the price moved lower. This contrast can be described as a transfer of wealth in plain sight, showing how institutional buyers were using the pullback to add exposure when retail traders were selling.

Supply Shock Shows Quiet Accumulation

The message is that what looks like weakness on the surface may be setting the stage for a very different outcome once selling pressure from retail participants fades.

However, another detail raised by the analyst is the movement of the token off exchanges. Roughly $22 million worth of tokens reportedly left trading platforms in the past 24 hours, reducing readily available supply.

The pattern extends back to late 2025, when balances held on crypto exchanges began a steady decline. Data from Glassnode shows that total exchange-held XRP has now fallen below 2 billion tokens, which is a notable decline from levels above 4 billion XRP recorded around January 2025.

This reduction in exchange supply has not yet translated into an extended upside move in the altcoin’s price since it started correcting from its July all-time high, but it does point to quiet accumulation taking place below the surface.

As some holders sell into weakness, a smaller group of market participants appears willing to absorb supply. That divergence is why several analysts have cautioned the XRP community against panic selling and getting shaken out.

XRP trading at $2.14 on the 1D chart | Source: XRPUSDT on Tradingview.com

Связанные с этим вопросы

QAccording to the analyst, what is the significance of the $4.9 million net inflow into XRP-related ETFs while the price was falling?

AIt signifies a divergence where institutional buyers were accumulating XRP and using the price pullback to add exposure, while retail traders were selling in fear. This represents a transfer of wealth.

QWhat key price level did the analyst identify as the point where retail confidence in XRP began to crack?

AThe analyst pointed to the loss of the $2.23 level during the price breakdown as the moment retail confidence began to crack.

QWhat on-chain data suggests that a quiet accumulation of XRP is happening, despite the price correction?

AData shows that the total amount of XRP held on cryptocurrency exchanges has fallen below 2 billion tokens, a significant decline from over 4 billion in January 2025, indicating tokens are being moved off exchanges and reducing readily available supply.

QWhat does the article suggest is the likely outcome once the selling pressure from retail participants fades?

AThe article suggests that the current surface-level weakness may be setting the stage for a very different, positive outcome once the retail selling pressure subsides, as institutional accumulation creates conditions for a potential price move.

QWhat specific warning have several analysts given to the XRP community based on the observed market divergence?

AAnalysts have cautioned the XRP community against panic selling and 'getting shaken out' of their positions, as the market activity indicates larger players are accumulating during the downturn.

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