Wall Street's 'Compliance Hunt': The Great Stablecoin Reserve Migration

marsbitPublished on 2026-05-13Last updated on 2026-05-13

Abstract

In a concentrated move over the past week, several Wall Street giants have advanced their tokenized money market fund initiatives, signaling a strategic shift driven by impending U.S. stablecoin regulations. JPMorgan Chase launched its second such fund, JLTXX, on Ethereum, explicitly targeting future stablecoin issuer reserve needs. Concurrently, Franklin Templeton partnered with Kraken to integrate its BENJI tokenized funds onto the exchange platform for use as collateral and cash management tools. BlackRock further solidified its position by filing for two new tokenized funds with the SEC, aiming to convert its massive traditional stablecoin custody business into a tokenized model. These parallel developments represent a multi-pronged institutional "compliance hunt" to capture future crypto liquidity. BlackRock and JPMorgan are focusing on the backend, preparing to serve as the core reserve and settlement infrastructure for compliant stablecoins as outlined by the GENIUS Act. This act defines strict "qualified reserve asset" requirements for stablecoin backing while prohibiting interest payments to holders. Franklin Templeton and Kraken, however, are exploiting a potential regulatory gap. By offering a tokenized fund (BENJI) that is not a stablecoin, they aim to provide yield-bearing, collateralizable digital cash instruments, circumventing GENIUS Act's ban on stablecoin yield. The impending CLARITY Act, which will delineate digital asset market structure, is seen as a co...

Original Author: Sanqing, Foresight News

Over the past week, several Wall Street institutions have almost simultaneously advanced their tokenized money market fund strategies. On May 12th, JPMorgan Chase announced it will launch its second tokenized money market fund, JLTXX, on Ethereum; on the same day, Payward, the parent company of Kraken, signed a strategic cooperation agreement with Franklin Templeton, planning to integrate the BENJI series of tokenized funds into the Kraken platform to serve as institutional collateral and cash management tools.

Shortly before this, BlackRock submitted another two applications for tokenized funds to the SEC, continuing to deepen its collaboration with Securitize. This concentrated series of actions reflects that regulatory expectations are rapidly driving supply-side deployments by institutions.

Wall Street's Pincer Maneuver: From Custody Backend to Frontend Collateral

Facing the same regulatory mandate, Wall Street giants are showing their fangs for devouring crypto liquidity from different angles.

The 'scale king' BlackRock, by partnering again with its long-term collaborator Securitize, submitted two new applications at once: one is the 'pure-blooded' tool BRSRV, designed specifically to meet the GENIUS Act requirements, with its investment scope strictly limited to short-term bonds of 93 days or less; the other is to tokenize its existing roughly $7 billion government money market fund, launching tokenized shares under BSTBL.

Given that it already manages approximately $65 billion in reserves for Circle, BlackRock is attempting to fully tokenize its massive traditional stablecoin custody business, downgrading native issuers to mere 'distributors' responsible for front-end issuance.

JPMorgan Chase followed closely with its launch of JLTXX (Chain Liquidity Token Fund). This product, operating on its own Kinexys (formerly Onyx) platform and initially launched on Ethereum, explicitly states in its prospectus that it aims to meet the reserve requirements of stablecoin issuers.

JPMorgan is eyeing the future banking path. As the GENIUS Act carves out a clear pathway for banks to issue stablecoins, JLTXX is essentially preparing for the future, aiming to become the standard clearing and reserve backend when future GSIBs (Global Systemically Important Banks) enter the market to issue stablecoins.

In contrast, the partnership between Franklin Templeton and crypto exchange Kraken steps beyond the pure reserve approach of the first two, intending to bridge retail and collateral. The core of their cooperation lies in integrating BENJI (the tokenized money fund) into Kraken to serve as collateral for institutional trading and a cash management tool.

Since the future CLARITY Act may prohibit stablecoins from directly paying interest, tokenized assets like BENJI, which can both generate yield and serve as underlying collateral, coupled with Kraken's clientele including exchanges and xStocks, cleverly circumvent the stablecoin yield ban. The hand of traditional asset management is reaching directly into the collateral layer of crypto-native trading.

Furthermore, during the same period, Morgan Stanley also launched an MSNXX fund that meets compliant reserve requirements but did not utilize any on-chain settlement technology. Under the same compliance framework, whether or not to be on-chain has become a dividing line for differentiation among giants. Merely meeting compliance is insufficient; the 24/7 liquidity and asset composability brought by on-chain settlement are the true moat for the next generation of dollar reserves.

The GENIUS Act Delineates a Market

On July 18, 2025, US President Trump signed the GENIUS Act into law. Article 4 of the Act provides a concise yet clearly bounded list of 'qualified reserve assets': Federal Reserve account balances, insured deposits, U.S. Treasury securities with a remaining or original maturity of 93 days or less, overnight repurchase agreements collateralized by U.S. Treasury securities, and government money market funds that invest solely in the aforementioned assets.

For every dollar of stablecoin issued, it must be backed 1:1 by the above assets, and any payment of interest or yield to holders is prohibited. The rules are simple but build a clear product boundary around 'qualified reserves'.

Last June, Treasury Secretary Besant told the U.S. Senate Appropriations Subcommittee that reaching a $2 trillion stablecoin market is 'a very reasonable figure.' Citi's prediction is $1.9 trillion in a base case and $4 trillion in an optimistic case by 2030; Standard Chartered estimates that the tokenized money market fund segment alone will reach $750 billion by then. Even conservatively, this 'qualified reserve' compliance threshold has already framed a demand pool worth several trillion dollars.

The implementation rules for the GENIUS Act must be finalized by July 18, 2026, with the Act taking full effect no later than January 18, 2027. Rulemaking by regulatory agencies such as the OCC and FDIC is progressing intensively. The supply side cannot afford to wait until then to act.

The CLARITY Act is Another Piece of the Puzzle

The U.S. Senate Banking Committee is scheduled to conduct a markup review of the CLARITY Act on May 14th. This Act complements the GENIUS Act. GENIUS regulates stablecoin issuance, while CLARITY delineates the digital asset market structure and the jurisdictional boundaries between the SEC and CFTC.

There is a crucial interface between the two. While the GENIUS Act prohibits stablecoins from paying interest to holders, the draft text of the CLARITY Act distinguishes between active business incentives and passive yield, also leaving some room for yield for non-stablecoin tokenized assets.

This firewall precisely allows tokenized money market funds like BENJI to become on-chain yield-generating cash management tools outside of stablecoins. They are not stablecoins, not subject to the yield prohibition, yet can similarly be used for real-time settlement, as collateral, and transferred 24/7. The commercial logic behind Kraken's integration of BENJI is built upon this gap in the regulatory architecture.

Whether the CLARITY Act progresses as scheduled will also determine the completeness of this business framework.

Related Questions

QAccording to the article, what specific actions did BlackRock, JPMorgan Chase, and Franklin Templeton take in relation to tokenized money market funds?

ABlackRock refiled for two tokenized funds with the SEC, partnering with Securitize. JPMorgan Chase launched its second tokenized money market fund, JLTXX, on Ethereum. Franklin Templeton partnered with Kraken's parent company to integrate its BENJI series tokenized funds as collateral and cash management tools on Kraken's platform.

QWhat are the key differences in strategic focus for BlackRock, JPMorgan Chase, and Franklin Templeton as described in their recent moves?

ABlackRock aims to fully tokenize its traditional stablecoin custody business and transform issuers into mere distributors. JPMorgan Chase targets becoming the standard clearing and reserve backend for future Global Systemically Important Banks (GSIBs) issuing stablecoins. Franklin Templeton, collaborating with Kraken, focuses on creating tokenized assets that can earn yield and serve as collateral, bypassing the prohibition on stablecoin interest payments.

QWhat does the GENIUS Act define as 'qualified reserve assets' for stablecoin issuers?

AThe GENIUS Act defines 'qualified reserve assets' as: Federal Reserve account balances, insured deposits, U.S. Treasury securities with a remaining or original maturity of 93 days or less, overnight repurchase agreements collateralized by U.S. Treasuries, and government money market funds investing solely in the aforementioned assets.

QHow do the GENIUS Act and the proposed CLARITY Act potentially interact to shape the market for tokenized assets like BENJI?

AThe GENIUS Act prohibits stablecoins from paying interest to holders. The proposed CLARITY Act distinguishes between active business incentives and passive yield, potentially allowing yield-bearing tokenized assets like BENJI that are not stablecoins. This creates a regulatory gap where BENJI can function as a yield-earning, real-time-settling cash management tool and collateral, circumventing the stablecoin interest ban.

QWhat is the significance of on-chain settlement for tokenized funds in the context of the article's discussion on competition?

AAccording to the article, merely meeting compliance requirements is insufficient for competitive differentiation. On-chain settlement provides 24/7 liquidity and asset composability, which are seen as the true moat for the next generation of dollar reserves. It represents a key competitive advantage over funds that only meet compliance standards without utilizing blockchain technology for settlement.

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