The post BlackRock XRP ETF Speculation Grows as Canary XRPC ETF Breaks Records appeared on BitcoinEthereumNews.com. The post BlackRock XRP ETF Speculation Grows as Canary XRPC ETF Breaks Records appeared first on Coinpedia Fintech News Speculation about a possible BlackRock XRP ETF is rising again after the Canary XRPC ETF delivered one of the strongest ETF launches of the year. The new fund generated more than 58 million dollars in first-day volume and 245 million dollars in net inflows, outperforming hundreds of other ETF debuts in 2025. Past Filing Sparks New Questions Interest in BlackRock resurged after analyst Jake Claver referenced the unusual iShares XRP Trust filing that briefly appeared on the Delaware Corporation Commission website in November 2023. Although BlackRock denied submitting the document and state officials later treated it as a potential fraudulent filing, the event left a lasting impression in the XRP community. Many supporters still believe BlackRock may have experimented with or tested the idea of an XRP trust. Record Inflows Boost Expectations The strong launch of the Canary XRPC ETF has renewed optimism around institutional demand for XRP. The funds’ first-day volume surpassed the debut of several major crypto ETFs, including top Solana products. Industry analysts who expected moderate interest were surprised by the level of institutional participation.  .article-inside-link { margin-left: 0 !important; border: 1px solid #0052CC4D; border-left: 0; border-right: 0; padding: 10px 0; text-align: left; } .entry ul.article-inside-link li { font-size: 14px; line-height: 21px; font-weight: 600; list-style-type: none; margin-bottom: 0; display: inline-block; } .entry ul.article-inside-link li:last-child { display: none; } Also Read :   9 XRP ETFs to Launch in 10 Days, Franklin Templeton Leads Next Week’s Rollout   , Ripple CEO Brad Garlinghouse added to the momentum during the company’s Swell event, explaining that Ripple continues to work closely with traditional financial firms to bring digital assets into regulated markets. With ETF inflows rising and XRP gaining more visibility… The post BlackRock XRP ETF Speculation Grows as Canary XRPC ETF Breaks Records appeared on BitcoinEthereumNews.com. The post BlackRock XRP ETF Speculation Grows as Canary XRPC ETF Breaks Records appeared first on Coinpedia Fintech News Speculation about a possible BlackRock XRP ETF is rising again after the Canary XRPC ETF delivered one of the strongest ETF launches of the year. The new fund generated more than 58 million dollars in first-day volume and 245 million dollars in net inflows, outperforming hundreds of other ETF debuts in 2025. Past Filing Sparks New Questions Interest in BlackRock resurged after analyst Jake Claver referenced the unusual iShares XRP Trust filing that briefly appeared on the Delaware Corporation Commission website in November 2023. Although BlackRock denied submitting the document and state officials later treated it as a potential fraudulent filing, the event left a lasting impression in the XRP community. Many supporters still believe BlackRock may have experimented with or tested the idea of an XRP trust. Record Inflows Boost Expectations The strong launch of the Canary XRPC ETF has renewed optimism around institutional demand for XRP. The funds’ first-day volume surpassed the debut of several major crypto ETFs, including top Solana products. Industry analysts who expected moderate interest were surprised by the level of institutional participation.  .article-inside-link { margin-left: 0 !important; border: 1px solid #0052CC4D; border-left: 0; border-right: 0; padding: 10px 0; text-align: left; } .entry ul.article-inside-link li { font-size: 14px; line-height: 21px; font-weight: 600; list-style-type: none; margin-bottom: 0; display: inline-block; } .entry ul.article-inside-link li:last-child { display: none; } Also Read :   9 XRP ETFs to Launch in 10 Days, Franklin Templeton Leads Next Week’s Rollout   , Ripple CEO Brad Garlinghouse added to the momentum during the company’s Swell event, explaining that Ripple continues to work closely with traditional financial firms to bring digital assets into regulated markets. With ETF inflows rising and XRP gaining more visibility…

BlackRock XRP ETF Speculation Grows as Canary XRPC ETF Breaks Records

The post BlackRock XRP ETF Speculation Grows as Canary XRPC ETF Breaks Records appeared first on Coinpedia Fintech News

Speculation about a possible BlackRock XRP ETF is rising again after the Canary XRPC ETF delivered one of the strongest ETF launches of the year. The new fund generated more than 58 million dollars in first-day volume and 245 million dollars in net inflows, outperforming hundreds of other ETF debuts in 2025.

Past Filing Sparks New Questions

Interest in BlackRock resurged after analyst Jake Claver referenced the unusual iShares XRP Trust filing that briefly appeared on the Delaware Corporation Commission website in November 2023. Although BlackRock denied submitting the document and state officials later treated it as a potential fraudulent filing, the event left a lasting impression in the XRP community. Many supporters still believe BlackRock may have experimented with or tested the idea of an XRP trust.

Record Inflows Boost Expectations

The strong launch of the Canary XRPC ETF has renewed optimism around institutional demand for XRP. The funds’ first-day volume surpassed the debut of several major crypto ETFs, including top Solana products. Industry analysts who expected moderate interest were surprised by the level of institutional participation. 

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border-right: 0;
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font-size: 14px;
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  • Also Read :
  •   9 XRP ETFs to Launch in 10 Days, Franklin Templeton Leads Next Week’s Rollout
  •   ,

Ripple CEO Brad Garlinghouse added to the momentum during the company’s Swell event, explaining that Ripple continues to work closely with traditional financial firms to bring digital assets into regulated markets.

With ETF inflows rising and XRP gaining more visibility among institutions, many investors believe it is only a matter of time before a firm like BlackRock considers entering the space. Whether that happens soon remains to be seen, but the growing demand suggests the discussion is far from over.

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FAQs

Is BlackRock planning to launch an XRP ETF?

There’s no confirmed BlackRock XRP ETF, but renewed interest comes from past filings and rising institutional demand for XRP products.

Why do people think a BlackRock XRP ETF is possible?

Hope persists from a 2023 iShares XRP Trust filing spotted in Delaware, which BlackRock denied. Recent successful XRP ETF launches have renewed this speculation.

Are crypto ETFs a good investment?

Crypto ETFs can offer a regulated way to gain exposure to digital assets. However, like all investments, they carry risk and you should assess your financial goals first.

Source: https://coinpedia.org/news/blackrock-xrp-etf-speculation-grows-as-canary-xrpc-etf-breaks-records/

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