The post $100M in crypto shifted by BlackRock – Panic move or just some rebalancing? appeared on BitcoinEthereumNews.com. When BlackRock moved nearly $100M in BitcoinThe post $100M in crypto shifted by BlackRock – Panic move or just some rebalancing? appeared on BitcoinEthereumNews.com. When BlackRock moved nearly $100M in Bitcoin

$100M in crypto shifted by BlackRock – Panic move or just some rebalancing?

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When BlackRock moved nearly $100M in Bitcoin [BTC] and Ethereum [ETH] to Coinbase, the immediate reaction was fear of a sell-off. However, it’s not that straightforward. 

The firm deposited 930 BTC worth $65.48M and 12,687 ETH worth $27.75M into Coinbase, with more deposits likely.

Source: Onchain Lens/X

However, these transfers are most likely part of ETF operations, where assets are routinely shifted between cold storage and exchanges to manage inflows, outflows, and rebalancing.

Rather than signaling a dump, this reflects how large institutions operate in crypto today. 

However, even if the intention isn’t bearish, the effect can still be negative in the short term. When large amounts of crypto are moved to exchanges like Coinbase Prime, it increases the chances of selling.

This adds pressure on prices and can trigger panic or quick drops, especially if the market is already in the “Extreme Fear” zone.

Source: Alternative

When should you actually worry?

Needless to say, one transfer alone isn’t a major red flag, but it becomes concerning if a pattern forms. This pattern includes repeated large deposits, consistent ETF outflows, and prices falling on high volume. 

If these signals appear together, it could point to real institutional selling pressure. Simply put, for now, the market might just be cautious, not panicked.

Institutions like BlackRock are adjusting their positions, while retail traders are reacting quickly to price moves, creating an unstable market.

Market trends are difficult and all over the place

Even though BlackRock’s stock is strong, crypto prices have been falling. At the time of writing, Bitcoin was down about 4%, with Ethereum down even more.

In fact, prices are moving quickly up and down, evidence of emotional, short-term trading rather than long-term confidence.

Ethereum, in particular, has been seeing sharp swings due to leveraged trades. Indicators like RSI show that small rallies don’t last long either. 

Source: Santiment

Additionally, the MVRV ratio revealed the market was stuck in a cycle, with prices rising briefly, traders taking profits, and prices falling again. In fact, neither buyers nor sellers seemed to be in control. 

Source: Santiment

Moreover, on 18 March, BlackRock’s Bitcoin ETF (IBIT) saw $33.9 million in outflows, ending a 7-day inflow streak, while its Ethereum ETF (ETHA) recorded a smaller $1.3 million outflow.

These amounts may seem small, but they likely explain why BlackRock moved assets to Coinbase to sell and meet investor withdrawals.

Not the first time…

This isn’t new. A similar move happened in December 2025 when over $125 million in Bitcoin was sent to Coinbase under the same conditions. So, this isn’t panic selling, it’s simply a response to investors pulling money out.

Instead of guessing whether BlackRock is bullish or bearish, the key thing to watch is ETF outflows. If withdrawals continue, selling pressure in the market is likely to persist.


Final Summary

  • BlackRock’s $100M transfer isn’t panic selling, but a market move driven by ETF inflows and outflows.
  • Until demand returns, ETF-driven selling pressure is likely to keep markets under stress.

Source: https://ambcrypto.com/100m-in-crypto-shifted-by-blackrock-panic-move-or-just-some-rebalancing/

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