The post “I Sold $2.25 Million in Bitcoin for Nearly $90,000”: Robert Kiyosaki Explains His Move appeared first on Coinpedia Fintech News This week crypto market faced a sharp sell-off after Bitcoin Price crashed to $80K, wiping out nearly $2 billion in value within hours. The sudden fall has left investors nervous, with analysts warning that $74,000 is now the key support level. A breakdown below it could lead to deeper losses across major cryptocurrencies. Robert Kiyosaki …The post “I Sold $2.25 Million in Bitcoin for Nearly $90,000”: Robert Kiyosaki Explains His Move appeared first on Coinpedia Fintech News This week crypto market faced a sharp sell-off after Bitcoin Price crashed to $80K, wiping out nearly $2 billion in value within hours. The sudden fall has left investors nervous, with analysts warning that $74,000 is now the key support level. A breakdown below it could lead to deeper losses across major cryptocurrencies. Robert Kiyosaki …

“I Sold $2.25 Million in Bitcoin for Nearly $90,000”: Robert Kiyosaki Explains His Move

2025/11/22 14:22
3 min read
Robert Kiyosaki Bitcoin Sale

The post “I Sold $2.25 Million in Bitcoin for Nearly $90,000”: Robert Kiyosaki Explains His Move appeared first on Coinpedia Fintech News

This week crypto market faced a sharp sell-off after Bitcoin Price crashed to $80K, wiping out nearly $2 billion in value within hours. The sudden fall has left investors nervous, with analysts warning that $74,000 is now the key support level. A breakdown below it could lead to deeper losses across major cryptocurrencies.

Robert Kiyosaki Sells Bitcoin Near $90,000

Amid the market crash, Robert Kiyosaki, author of Rich Dad Poor Dad, revealed on X that he sold $2.25 million worth of Bitcoin at nearly $90,000. He had bought the coins for $6,000 each, locking in huge profits.

Kiyosaki clarified that he isn’t bearish on Bitcoin. Instead, he is reallocating the funds. He plans to invest the proceeds into two surgery centers and a billboard business, expecting around $27,500 per month in tax-free cash flow starting early next year. 

According to him, this decision aligns with his long-time strategy of turning investment gains into steady, income-generating assets.

He added that this approach follows the same formula he has used for decades: convert asset appreciation into passive income. With these new ventures, he expects his monthly earnings to eventually rise into the “hundreds of thousands.”

Kiyosaki remains bullish on Bitcoin and plans to buy back BTC later using the income from his new investments. Though he was advised not to disclose the sale for safety reasons, he chose transparency to show followers that he “practices what he teaches.”

  • Also Read :
  •   Cryptoquant CEO Sees Bullish Setup Despite Bitcoin Dropping Below $85K
  •   ,

Community Reacts to Kiyosaki’s Move

Several commenters noted that earning $27.5K a month on a $2.25M investment works out to roughly 14.67% annually, which is close to the 10-year S&P 500 average return of 13.8%–14.7%. They argued that investors could simply buy an S&P 500 ETF for similar gains without the operational risk. 

Some users defended his strategy, saying that comparing stock market returns to cash-flowing businesses isn’t accurate. They emphasized that rental income, depreciation benefits, and debt paydown create long-term wealth differently than index investing. One commenter explained that the monthly cash flow acts as a DCA tool, giving him steady capital to buy Bitcoin during dips.

Some suggested a middle-ground strategy, selling a portion of BTC while borrowing against the rest to maintain upside exposure. One user wrote that you “can’t depreciate the S&P,” highlighting that real estate and operating businesses have tax advantages that traditional markets do not.

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FAQs

How much will 1 Bitcoin cost in 2025?

As per Coinpedia’s BTC price prediction, the Bitcoin price could peak at $168k this year if the bullish sentiment sustains.

How much will 1 Bitcoin be worth in 2030?

With increased adoption, the price of Bitcoin could reach a height of $901,383.47 in 2030.

How much will the price of Bitcoin be in 2040?

As per our latest BTC price analysis, Bitcoin could reach a maximum price of $13,532,059.98

How high will Bitcoin go in 2050?

By 2050, a single BTC price could go as high as $377,949,106.84

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