Another Dogecoin ETF Has Gone Live For Trading, How Did It Perform?

bitcoinistPublicado em 2026-01-24Última atualização em 2026-01-24

Resumo

21Shares has launched a new Spot Dogecoin ETF, TDOG, on NASDAQ, providing investors with direct, physically-backed exposure to Dogecoin. This brings the total number of US Dogecoin ETFs to three, alongside offerings from Grayscale and Bitwise. The launch was endorsed by the Dogecoin Foundation's corporate arm, House of Doge. However, the new ETF saw a weak start, with no inflows and a slight decline of 0.07% on its first day. This lackluster performance is consistent with other Dogecoin ETFs, which have also reported zero inflows recently, indicating limited investor interest in these products.

The US crypto market has welcomed a new entrant as 21Shares rolls out its Spot Dogecoin ETF, giving investors another avenue to engage with the infamous dog-themed meme coin. Trading kicked off amid a mix of curiosity and caution, with on-chain data already showing how much the DOGE ETF has performed so far.

21Shares Launches Dogecoin ETF

In a press release on Thursday, January 22, 21Shares announced the official launch of its Spot Dogecoin ETF, TDOG, which began trading on NASDAQ the same day. The new ETF provides investors with direct exposure to Dogecoin through a fully backed, regulated, and transparent vehicle. Each ETF share is also backed 1:1 by DOGE held in institutional-grade custody.

Notably, the launch of the new TDOG ETF brings the total number of US Dogecoin ETFs to three, joining Grayscale’s GDOG and Bitwise’s BWOW. 21Shares is also the only ETF provider endorsed by House of Doge, the official corporate arm of the Dogecoin foundation, highlighting the global asset manager’s close ties to the meme coin.

As one of the largest crypto ETF issuers, 21Shares continues to expand its crypto product lineup with the introduction of TDOG. This follows the investment company’s previous ETF offerings, including TSOL, a Solana ETF released in November 2025; ARKB, a Spot Bitcoin ETF launched in January 2024; and TETH, an Ethereum ETF introduced in July of the same year. Together, these products demonstrate 21Shares’ commitment to providing institutional-grade access to high-demand digital assets.

Federick Brokate, Global Head of Business Development at 21Shares, highlighted DOGE’s large and active global community, calling it a unique digital asset with constantly growing use cases. He added that the new TDOG ETF will give investors regulated, physically backed exposure through a familiar ETF structure they know and trust.

Marco Margiotta, the CEO of House of Doge, also shared comments on the recently launched 21Shares ETF. He said that TDOG is a step toward making Dogecoin easier to access through traditional financial systems. He also disclosed that House of Doge’s partnership with 21Shares will help more people get involved as the Dogecoin ecosystem grows.

How 21Shares Dogecoin ETF Has Performed So Far

Contrary to expectations, 21Shares’ recently launched Dogecoin ETF saw weak performance on the first day of trading, signaling investors’ lack of interest in the investment product. Data from SoSoValue shows that TDOG experienced no inflows on January 22 and instead declined by about 0.07%. Despite it being the second day of trading, the DOGE ETF has still not registered any flows.

Source: Chart from SoSoValue

This lackluster performance has been observed across all Dogecoin ETFs this week. Grayscales’ GDOG and Bitwise BWOW have reported zero inflows over the last week. The last time GDOG saw positive activity was on January 8, when it received around $333,083 in investments. Before that, the ETF recorded its highest inflows on January 2, totaling roughly $2.3 million. Since its launch in November 2025, GDOG ETF inflows have been unstable, with more days of inactivity than significant investment.

DOGE trading at $0.12 on the 1D chart | Source: DOGEUSDT on Tradingview.com

Perguntas relacionadas

QWhat is the name of the new Dogecoin ETF launched by 21Shares and on which exchange did it begin trading?

AThe new Dogecoin ETF is called TDOG and it began trading on NASDAQ.

QHow many Dogecoin ETFs are now available in the US market with the launch of TDOG?

AWith the launch of TDOG, there are now three Dogecoin ETFs available in the US market.

QHow did the 21Shares TDOG ETF perform on its first day, according to data from SoSoValue?

AAccording to SoSoValue, the TDOG ETF experienced no inflows on its first day and instead declined by about 0.07%.

QWhich organization has endorsed 21Shares as its only ETF provider, as mentioned in the article?

A21Shares is the only ETF provider endorsed by the House of Doge, the official corporate arm of the Dogecoin foundation.

QWhat was the performance trend for other existing Dogecoin ETFs (GDOG and BWOW) in the week leading up to the article?

AGrayscale's GDOG and Bitwise's BWOW both reported zero inflows over the last week.

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