SEC and CFTC signal execution phase for crypto regulation at harmonization meeting

ambcryptoPublished on 2026-01-29Last updated on 2026-01-29

Abstract

US financial regulators, the SEC and CFTC, have announced a shift from coordination to execution in crypto regulation. At a harmonization meeting, officials outlined plans to advance joint rulemaking using existing authority, without waiting for final legislation from Congress. A key initiative, "Project Crypto," aims to create a shared taxonomy for crypto assets, clarify jurisdictional boundaries, and reduce regulatory duplication and uncertainty. The CFTC stated that most crypto assets are not securities, marking a departure from past ambiguity. Planned rulemaking covers tokenized collateral, onshore crypto perpetual derivatives, retail leveraged trading, and treatment of software in DeFi. The goal is to provide regulatory clarity and reduce friction while maintaining market integrity.

US financial regulators signalled a shift from coordination to execution on crypto oversight on Thursday, 29 January.

Senior officials from the Securities and Exchange Commission [SEC] and the Commodity Futures Trading Commission [CFTC] outlined plans to advance joint rulemaking using existing authority.

The remarks came during a rescheduled SEC–CFTC harmonization meeting, where both agencies emphasised regulatory clarity, reduced duplication, and a more coordinated approach to overseeing crypto asset markets.

Regulators move beyond coordination rhetoric

Speaking at the event, Michael S. Selig said the CFTC would begin exercising oversight of the crypto market without waiting for Congress to finalize market structure legislation.

He described the moment as a transition toward implementation. Staff have been directed to draft rules and revisit existing proposals that have contributed to regulatory uncertainty.

Selig said the CFTC would work jointly with the SEC on “Project Crypto.” This is a framework aimed at harmonizing oversight across agencies.

The initiative is designed to establish a shared crypto asset taxonomy. Also, it is to clarify jurisdictional boundaries and reduce overlapping compliance requirements.

Joint taxonomy and jurisdictional clarity

A central focus of the meeting was developing a common classification framework for digital assets. Selig said he agreed with Paul S. Atkins that most crypto assets trading today are not securities.

This position would mark a departure from years of regulatory ambiguity.

Selig added that CFTC staff have been instructed to work with their SEC counterparts on the joint codification of a crypto asset taxonomy as an interim measure. At the same time, Congress continues to work on broader legislation.

The aim, he said, is to draw clearer jurisdictional lines and avoid leaving market participants “trapped in uncertainty.”

Rulemaking plans span derivatives, collateral, and software

Beyond taxonomy, Selig outlined several areas where the CFTC plans to move forward with rulemaking.

These include developing rules to support the use of tokenised collateral, creating pathways to onshore perpetual crypto derivatives. Also, the rule will clarify the treatment of leveraged and margined retail crypto trading.

He also announced plans to withdraw earlier proposals that restricted certain event contracts and to begin rulemaking on prediction markets.

In addition, the CFTC will explore whether innovation exemptions or safe harbours are appropriate for software developers and non-custodial systems operating in the decentralized finance space.

Harmonization aimed at reducing regulatory friction

Both agencies framed harmonization as a practical exercise rather than a blurring of statutory boundaries.

Selig said substituted compliance and aligned requirements could allow firms to operate more efficiently without compromising market integrity. This is particularly as crypto markets span products traditionally overseen by different regulators.

While recent congressional action has advanced market structure legislation, regulators stressed that the execution phase would proceed independently, using existing authorities to modernise oversight as innovation continues.


Final Thoughts

  • US regulators signalled a move from coordination to implementation, with the SEC and CFTC outlining concrete steps toward joint crypto rulemaking.
  • Planned actions span asset classification, derivatives, tokenised collateral, and software treatment, indicating regulatory execution will move ahead of final legislation.

Related Questions

QWhat was the main shift signaled by US financial regulators regarding crypto oversight on January 29?

AUS financial regulators signaled a shift from coordination to execution on crypto oversight, with the SEC and CFTC outlining plans to advance joint rulemaking using existing authority.

QWhat is the name of the joint framework mentioned for harmonizing crypto oversight between the SEC and CFTC?

AThe joint framework is called 'Project Crypto', aimed at harmonizing oversight, establishing a shared crypto asset taxonomy, clarifying jurisdictional boundaries, and reducing overlapping compliance requirements.

QAccording to Michael S. Selig, what is the classification of most crypto assets trading today?

AMichael S. Selig agreed that most crypto assets trading today are not securities, which marks a departure from years of regulatory ambiguity.

QWhat are some specific areas where the CFTC plans to move forward with rulemaking?

AThe CFTC plans to develop rules for tokenised collateral, create pathways to onshore perpetual crypto derivatives, clarify treatment of leveraged and margined retail crypto trading, withdraw earlier proposals restricting certain event contracts, and begin rulemaking on prediction markets.

QHow do the agencies view harmonization in the context of crypto regulation?

ABoth agencies framed harmonization as a practical exercise aimed at reducing regulatory friction, allowing firms to operate more efficiently without compromising market integrity, through substituted compliance and aligned requirements.

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