Strive Deepens Bitcoin Bet With Fresh 1,109 BTC Purchase

bitcoinistPubblicato 2026-05-28Pubblicato ultima volta 2026-05-28

Introduzione

Strive Asset Management has increased its Bitcoin holdings by purchasing an additional 1,109 BTC, bringing its total to 16,500 BTC valued at roughly $1.3 billion. This move solidifies its position as the seventh-largest public company by Bitcoin treasury. The firm is expanding in the "digital credit" sector, notably through its SATA preferred shares which offer a 13% annualized dividend paid daily. Meanwhile, rival firm Strategy's STRC product, a dominant Bitcoin-backed security, recently saw a record $1.53 billion in daily trading volume. Strive continues to use equity-linked financing, including stock sales, to fund further Bitcoin acquisitions.

Jeff Walton thinks the idea is almost too simple. The chief risk officer at Strive Asset Management said this week that Bitcoin-backed securities could reshape how people think about money and credit — and that skepticism around the sector partly stems from how straightforward the concept seems.

A Growing Class Of Yield-Bearing Products

Strive is not alone in betting on that idea. The Dallas-based firm has joined a field of companies issuing preferred securities tied to Bitcoin treasury holdings, a category that issuers are calling “digital credit.”

Strategy, the world’s largest corporate Bitcoin holder, offers four such products: STRC, STRD, STRF, and STRK, with STRC emerging as the dominant instrument since its launch in July 2025.

Strive added 1,109 BTC, boosting its holdings to 16,500 Bitcoin. Source: SEC

Strive’s own entry into that space, its SATA preferred shares, carries a 13% annualized dividend rate and was described by the company as the first listed US security structured to pay dividends every business day.

The firm recently cleared all outstanding debt and announced that daily dividend payments on SATA would begin in June. SATA’s market capitalization currently sits at around $332 million, a fraction of STRC’s more than $10 billion.

BTCUSD now trading at $75,238. Chart: TradingView

Strive Climbs The Bitcoin Treasury Rankings

The fresh purchase puts Strive at 16,500 BTC total, according to a Securities and Exchange Commission filing covering the period of May 19 to 22.

At current valuations, that positions the firm seventh among public companies holding Bitcoin on their balance sheets, with roughly $1.3 billion in BTC.

The company also reported about $93 million in cash and cash equivalents as of May 22, along with approximately $50.1 million in fair value tied to its holdings of Strategy’s STRC product.

Strive also grew its Class A common shares outstanding by more than 2 million during the period, while SATA preferred share count rose by about 515,000, reflecting continued use of equity-linked financing to fund Bitcoin acquisitions.

The company said it is evaluating refreshed at-the-market stock sale programs that could support further purchases.

The Broader Digital Credit Push

STRC recorded a single-day trading volume of $1.53 billion earlier this month, a record for the product. Strategy chairman Michael Saylor called STRC the company’s main vehicle for funding Bitcoin purchases in 2026, and shareholders are set to vote soon on a proposal to shift dividend payments to twice monthly.

Strive was founded by Vivek Ramaswamy, who ran for US president before pivoting to a Republican gubernatorial campaign in Ohio.

Featured image from Getty Images, chart from TradingView

Domande pertinenti

QHow many Bitcoin did Strive purchase in the recent transaction mentioned in the article?

AStrive purchased 1,109 Bitcoin in the recent transaction.

QWhat is the name of Strive's listed US security that pays daily dividends and what is its annualized dividend rate?

AThe security is called SATA preferred shares, and it carries a 13% annualized dividend rate.

QAccording to the article, what ranking does Strive now hold among public companies for Bitcoin holdings after its latest purchase?

AAfter its latest purchase, Strive is ranked seventh among public companies holding Bitcoin on their balance sheets.

QWhat is the record single-day trading volume achieved by Strategy's STRC product as mentioned in the article?

ASTRC recorded a single-day trading volume of $1.53 billion earlier in the month, which is a record for the product.

QWho founded Strive Asset Management, and what was his previous political activity?

AStrive was founded by Vivek Ramaswamy, who previously ran for US president and later pivoted to a Republican gubernatorial campaign in Ohio.

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