How a $10B Ethereum bet puts BitMine in focus ahead of NYSE listing

ambcryptoPublished on 2026-04-07Last updated on 2026-04-07

Abstract

BitMine is preparing for its NYSE listing with a significant $10.2 billion Ethereum (ETH) position, making up the majority of its $11.4 billion portfolio. This move is seen as a strategic bet on a potential ETH supply squeeze, driven by declining exchange reserves and a record 38.8 million ETH staked, reducing readily available supply. While ETH's price has shown modest gains with higher lows, technical indicators like RSI remain neutral and capital inflows are weak. Despite rising open interest and positive funding rates, there is a risk of market crowding. The company's heavy ETH allocation underscores its belief in Ethereum's long-term value amid shifting market dynamics.

BitMine is taking its Ethereum [ETH] bet to the NYSE... but all’s not as straightforward as it seems. With exchange reserves falling and more ETH locked in staking, its $10 billion position is effectively a wager on a looming supply squeeze.

BitMine’s $10B ETH bet pushes NYSE uplisting

BitMine is heading to the NYSE with a balance sheet that’s heavily tilted towards Ethereum. As of 06 April, the firm reported $11.4 billion in total holdings, led by 4,803,334 ETH valued at roughly $10.2 billion, based on a price of $2,123.

Source: PR Newswire

Interestingly, the portfolio also includes 198 BTC, $864 million in cash, a $200 million stake in MrBeast’s Beast Industries, and $92 million in Eightco Holdings.

The 09 April uplisting will be a key step for the company, with its Ethereum-heavy belief. Chairman Tom Lee recently argued that ETH has outperformed both gold and the S&P 500 since the Iran crisis began.

ETH supply falls, staking climbs

This is happening as (or because of) Ethereum’s exchange supply ratio falls to 0.125 – A decline in the amount of ETH readily available for trading.

Source: Cryptoquant

At the same time, total ETH staked has climbed to 38.8 million, an ATH. This means a significant portion of circulating supply is now locked up.

Source: Cryptoquant

The dynamic is simple, really. Less ETH is available for immediate selling, while more is being held for yield. This makes the case for a supply-driven price boost, especially if demand holds or increases.

ETH gives mixed signals

On the daily chart, ETH’s been grinding higher to ... but still stuck. The price held at around $2.1K after a failed push towards $2.3K in mid-March. Recent candles flashed higher lows, which was constructive, but the pace wasn’t as strong.

Additionally, the RSI seemed to be neutral while capital inflows were weak.

Source: TradingView

Finally, Open interest climbed back towards $12.5B, so there were new open positions. Funding rates indicated that longs were back in control as well.

Source: Coinalyze

That said, there’s also the risk of crowding. If pace slows down, late longs could get squeezed.


Final Summary

  • BitMine is set to list on the NYSE with $10.2 billion in ETH holdings.
  • Falling exchange reserves and a record staking could cause a supply-squeeze powered price push.

Related Questions

QWhat is the total value of BitMine's Ethereum holdings as of April 6th, and how many ETH does that represent?

AAs of April 6th, BitMine's Ethereum holdings were valued at roughly $10.2 billion, which represents 4,803,334 ETH.

QBesides Ethereum, what other major assets are included in BitMine's portfolio?

ABesides Ethereum, BitMine's portfolio includes 198 BTC, $864 million in cash, a $200 million stake in MrBeast’s Beast Industries, and $92 million in Eightco Holdings.

QWhat two key on-chain metrics for Ethereum does the article highlight as contributing to a potential supply squeeze?

AThe two key on-chain metrics are Ethereum's falling exchange supply ratio (to 0.125) and the total amount of ETH staked reaching a new all-time high of 38.8 million.

QAccording to the technical analysis, what was the status of Open Interest and funding rates for ETH?

AOpen Interest climbed back towards $12.5 billion, indicating new open positions, and funding rates showed that long positions were back in control.

QWhat is the main risk mentioned for ETH's price action despite the positive indicators?

AThe main risk mentioned is crowding. If the pace of the price increase slows down, late long positions could get squeezed.

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