Legendary Analyst Peter Brandt Calls XRP Investors “Uneducated,” Here’s Why

bitcoinistОпубликовано 2025-12-15Обновлено 2025-12-15

Введение

Legendary analyst Peter Brandt has criticized XRP investors, calling them "uneducated" and biased permabulls. His comments follow XRP's drop below the $2 mark, despite positive fundamentals. Brandt, with 50 years of trading experience, compared XRP enthusiasts to silver trumpeters as the most obsessed bulls he has encountered. This has sparked backlash from the strong XRP community, known as the 'XRP Army.' In response, XRP pundit Zach Rector noted that Young Hoon Kim, referred to as the "largest IQ holder," has become bullish on XRP and started buying the token. Kim predicts a new all-time high by year-end and a potential rise to $100 within five years—a target that would imply a nearly $10 trillion market cap, raising skepticism. At the time of writing, XRP is trading around $1.98, down over 2% in 24 hours.

Legendary analyst Peter Brandt has criticized XRP investors, describing them as uneducated. His criticism comes amid the drop below the psychological $2 level, despite recent fundamentals that paint a bullish picture for the altcoin.

Peter Brandt Describes XRP Investors As “Uneducated”

In an X post, Brandt stated that XRP investors, who are permabulls, are the most uneducated and biased set of people he has seen over his 50 years of trading. The veteran trader classified this set of investors alongside those who trumpet Silver. He also highlighted how this was a big deal considering that he has traded thousands of contracts of every commodity, stock indexes, and many cryptos.

XRP has, over the years, been known to have one of the strongest crypto communities, which commonly refer to themselves as the ‘XRP Army.’ Brandt has, on several occasions, been criticized by some investors over some of his bearish predictions for the altcoin. This has led to him calling them out in the past whenever he makes such predictions.

It is worth mentioning that Brandt had also earlier in the month asserted that the “most madly obsessed perma-bulls” on earth are bulls. Although the veteran trader didn’t state an exact reason for making these statements, some pundits have developed a knack for making outlandish price predictions.

An example of such a pundit is Barry C, who recently stated that the price will skyrocket from $2 to $1,000 a lot sooner than people anticipate. The pundit has in the past alluded to banks’ potential adoption of the token as a factor that could spark the rally to $1,000. He recently highlighted the OCC’s grant of a conditional approval to Ripple to operate as a bank, which provides a boost for the altcoin.

Largest IQ Holder Is Now A Bull

XRP pundit Zach Rector clapped back against Brandt’s statement, noting that the largest IQ holder is now an XRP bull. The largest IQ holder, Young Hoon Kim, recently revealed that he had started buying the token, having become bullish on the altcoin. He also predicted that the altcoin could reach a new all-time high (ATH) before the year ends.

Meanwhile, in his latest X post, Kim opined that the price could potentially reach $100 over the next five years. However, he didn’t mention what could spark such a parabolic price surge for the altcoin. It is worth mentioning that such predictions have raised eyebrows because of what the altcoin’s market cap will be if it reaches such price targets. A $100 price target would give XRP a market cap of almost $10 trillion.

At the time of writing, the token’s price is trading at around $1.98, down over 2% in the last 24 hours, according to data from CoinMarketCap.

XRP trading at $1.99 on the 1D chart | Source: XRPUSDT on Tradingview.com

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