SEC Chair Confirms Crypto Taxonomy Guidance In Line With CLARITY Act Framework

bitcoinistОпубліковано о 2026-02-13Востаннє оновлено о 2026-02-13

Анотація

SEC Chair Paul Atkins announced plans to develop formal guidance on token classification, aligning with the anticipated CLARITY Act framework, during a House Financial Services Committee hearing. He emphasized the need for regulatory certainty and a comprehensive federal framework to support investors and innovators. While acknowledging recent SEC efforts, Atkins stressed that durable reform requires bipartisan legislation. The SEC will collaborate with the CFTC through Project Crypto to develop a token taxonomy and consider tailored exemptions for blockchain transactions. Additionally, Atkins directed a review of the Consolidated Audit Trail (CAT) to assess governance, efficiency, and cybersecurity. Meanwhile, crypto markets experienced a significant downturn, with Bitcoin falling to $65,000 and Ethereum to $1,916, reducing total market capitalization to $2.23 trillion.

Speaking before the House Financial Services Committee on Wednesday, US Securities and Exchange Commission (SEC) Chair Paul Atkins outlined plans to develop formal guidance on token classification, aligning the agency with the anticipated crypto market structure legislation known as the CLARITY Act.

Aiming For Lasting Crypto Clarity

Atkins told lawmakers that regulatory certainty for digital assets is long overdue and pledged that the Commission is prepared to act once Congress finalizes the CLARITY Act. He emphasized that a comprehensive federal framework would provide much‐needed clarity for both investors and innovators.

While noting that SEC staff—under Commissioner Hester Peirce’s leadership of the agency’s Crypto Task Force—have offered more guidance over the past year than in the previous decade, Atkins argued that durable reform ultimately requires bipartisan legislation.

In his view, no regulatory adjustment undertaken solely by the Commission can “future‐proof” the rulebook as effectively as a clear market structure law passed by Congress.

As lawmakers continue their work, Atkins said the SEC intends to collaborate closely with the Commodity Futures Trading Commission (CFTC) to bridge the gap until legislation is enacted. He and CFTC Chairman Mike Selig plan to coordinate through a joint initiative known as Project Crypto.

As part of that effort, regulators will examine the development of a token taxonomy designed to define digital assets more precisely and clarify which rules apply to different categories.

The agencies are also considering tailored exemptions that could allow market participants to transact directly on blockchain networks, a move aimed at accommodating innovation while maintaining oversight.

Atkins Signals Regulatory Overhaul

Beyond digital assets, Atkins used his testimony to signal a broader reassessment of existing regulatory systems. He announced that he has directed SEC staff to conduct a comprehensive review of the Consolidated Audit Trail (CAT), the market surveillance system launched in November 2016.

The review will examine the following areas: governance, funding, cost efficiency, system design, scope, regulatory utility, and cybersecurity safeguards, encompassing the crypto sector as well.

Throughout his remarks, Atkins reiterated his broader regulatory philosophy. He said oversight should be intelligent, effective, and carefully tailored within the SEC’s statutory authority.

In his view, the existing framework has at times made the path to becoming a public company more restrictive and expensive, layering on requirements that may create more friction than benefit.

Meanwhile, the broader market has seen a notable downtrend, with crypto prices sharply retracing and sparking fears of an unfolding bear market. As of this writing, Bitcoin (BTC) has returned to the $65,000 level after failing to surpass the $70,000 resistance level earlier in the week.

Ethereum (ETH) has followed suit, mirroring BTC’s price action and currently trading at around $1,916 per token. Consequently, the total market capitalization has plummeted to nearly half of its October highs, currently valued at $2.23 trillion.

The daily chart shows the total crypto market cap’s crash toward $2.2 trillion. Source: TOTAL on TradingView.com

Featured image from OpenArt, chart from TradingView.com

Пов'язані питання

QWhat did SEC Chair Paul Atkins announce regarding crypto token classification?

ASEC Chair Paul Atkins announced plans to develop formal guidance on token classification, aligning with the anticipated CLARITY Act framework to provide regulatory certainty for digital assets.

QWhich legislative act is the SEC aligning its crypto guidance with?

AThe SEC is aligning its crypto guidance with the CLARITY Act, which is an anticipated crypto market structure legislation currently being finalized by Congress.

QWhat is the name of the joint initiative between SEC and CFTC to coordinate crypto regulation?

AThe joint initiative between the SEC and CFTC is called 'Project Crypto,' through which the agencies plan to collaborate on regulatory coordination until comprehensive legislation is enacted.

QWhat broader regulatory system did Atkins announce would undergo a comprehensive review?

AAtkins announced a comprehensive review of the Consolidated Audit Trail (CAT), the market surveillance system launched in 2016, examining areas including governance, funding, cost efficiency, system design, scope, regulatory utility, and cybersecurity safeguards.

QWhat was the total crypto market capitalization mentioned in the article at the time of writing?

AThe total crypto market capitalization was $2.23 trillion at the time of writing, having plummeted to nearly half of its October highs.

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