Is Ethereum undervalued? These 2 on-chain signals say…

ambcryptoPublished on 2025-12-21Last updated on 2025-12-21

Abstract

Ethereum has underperformed in 2025, declining roughly 12% YTD while assets like gold and equities climbed. However, two key on-chain signals suggest it may be undervalued. First, Ethereum's network remains the dominant settlement layer for global dollar liquidity, processing $90-100 billion in stablecoin transfers daily, as users prioritize security and finality over lower fees. Second, large holders are accumulating more ETH even as prices approach their average cost basis, showing patience and confidence despite squeezed profits. This indicates underlying strength that price action alone may not reflect.

Ethereum has been one of the worst-performing major assets of 2025 so far. But don’t let that fool you!

Every day, tens of billions of dollars in stablecoins move across Ethereum, making it THE settlement layer for global dollar liquidity. Large holders are accumulating ETH as well, even with prices down in the dumps.

Is the general market missing the bigger picture?

Putting Ethereum’s bad year in context

Ethereum has had a bruising start to 2025. While silver, gold, and U.S. equities have climbed steadily, ETH slid roughly 12% YTD, making it one of the weakest performers among major assets.

Bitcoin [BTC] has fared slightly better, while the altcoin market has fallen far further.

Capital is rotating into metals and traditional risk assets, all while Ethereum’s [ETH] price has gone nowhere. It looks like a market that has lost interest.

But price performance alone doesn’t tell you everything.

Where the money actually settles

On an average day, Ethereum Mainnet processes roughly $90-100 billion in Stablecoin Transfers, far more than any other network. According to Leon Waidmann, Head of Research, OnChainHQ, this is mostly USDT and USDC moving for payments, treasury operations, and real settlement.

Other chains are growing, and some are cheaper or faster. But stablecoin volume concentrates where trust, neutrality, and finality matter most.

Users willingly pay higher fees because a failed settlement is not an option at this scale.

While prices stall...

Large holders are behaving very differently.

ETH has repeatedly traded near the realized price of accumulation addresses; essentially, the average entry price of long-term whales. Instead of selling into weakness, these wallets have continued to add more ETH.

The timing is interesting.

Whale profits have been squeezed close to zero, a point where many would normally reduce exposure. Instead, inflows to accumulation addresses are increasing. That’s a lot of patience!

Related Questions

QHow has Ethereum performed compared to other major assets in 2025 so far?

AEthereum has been one of the worst-performing major assets of 2025, sliding roughly 12% year-to-date, while assets like silver, gold, and U.S. equities have climbed steadily.

QWhat is the daily volume of stablecoin transfers processed on the Ethereum Mainnet?

AOn an average day, Ethereum Mainnet processes roughly $90-100 billion in stablecoin transfers, which is far more than any other network.

QAccording to the article, why do users choose to settle large stablecoin transfers on Ethereum despite higher fees?

AUsers willingly pay higher fees on Ethereum because a failed settlement is not an option at this scale, and the network offers the trust, neutrality, and finality that matter most for large settlements.

QHow are large Ethereum holders (whales) behaving despite the price weakness?

AInstead of selling into weakness, large holders (whales) have continued to accumulate more ETH, even as their profits have been squeezed close to zero.

QWhat is the 'realized price of accumulation addresses' mentioned in the article?

AThe 'realized price of accumulation addresses' refers to the average entry price of long-term whale wallets. ETH has repeatedly traded near this price point recently.

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