Trump Backs U.S. Clarity Act, Accuses Major Banks of Undermining GENIUS

TheNewsCryptoPublicado a 2026-03-04Actualizado a 2026-03-04

Resumen

Former U.S. President Donald Trump has called for the enactment of the U.S. Clarity Act, which aims to link the country’s economic strength with clear cryptocurrency regulations. In a speech to lawmakers and industry representatives, Trump accused major financial institutions of stifling innovation by impeding technological progress. He argued that regulatory ambiguity has driven crypto businesses and talent overseas, and that well-defined legislation would attract investment and bolster U.S. financial competitiveness. Trump emphasized that legislative clarity would balance innovation with investor protection, warning that the U.S. risks falling behind other nations that offer more certain regulatory environments. The Clarity Act has garnered bipartisan support and seeks to clarify the roles of the CFTC and SEC regarding digital assets, potentially reducing compliance costs and encouraging market confidence. The bill also includes provisions for certain exemptions to foster innovation. Negotiations over the final language of the legislation are ongoing amid mixed reactions from financial institutions and other stakeholders.

The former president of the United States, Donald Trump, urged lawmakers to enact the U.S. Clarity Act, which links the economic prowess of the country with clear crypto rules. In a speech to lawmakers and industry representatives, Trump urged them to enact the Clarity Act to bring clarity to crypto markets. In the speech, Trump accused big financial institutions of undermining innovation in the country by slowing down technological advancements.

Trump claimed that unclear rules have harmed the development of crypto businesses and encouraged talent to move abroad. However, with clear legislation, the country can attract investment and increase its financial prowess globally. In addition, the former president urged lawmakers to avoid excessive regulation without clear legislative backing.

However, enforcement-based regulation, as described by Trump, creates uncertainty for both entrepreneurs and established businesses. According to him, legislative clarity can strike a balance between innovation and investor protection. The statements made by Trump underscored his view that America is at risk of losing a competitive advantage in digital asset regulation. He said that if other countries are able to provide certainty in their regulation, they could attract capital and talent from the American market.

Trump urged lawmakers to put aside their differences and help him move the Clarity Act forward. He said that the bill has already gained bipartisan support from both Congress and the Senate. The statements made by Trump underscored the debate about regulating new financial technologies. The Clarity Act has been supported by those who believe that institutional and retail participation can be facilitated by a clear legal framework, while others believe that poorly structured laws could become barriers to innovation.

Regulatory Context and Market Implications of the Clarity Act

The purpose of the Clarity Act is to determine the jurisdiction of the CFTC and the SEC in different digital assets. According to its proponents, this will help reduce compliance costs for crypto firms. Analysts have pointed out that regulatory confusion has been a problem for various platforms in the crypto space.

There is also a provision for special exemptions for different digital asset activities to encourage innovation in the space. According to various market participants who have been tracking the bill’s progress in Congress, this will help build confidence in the market. Different financial institutions have reacted to the bill in different ways.

Others recognize the potential for legal certainty to facilitate the integration of digital assets into traditional systems of finance. Negotiations on the language of the final bills are underway for lawmakers, and the debate continues on the response from various stakeholders before the final passage.

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TagsBlockchainCFTCClarity ACTDonald Trump PardonGenius ACTSECTRUMPU.SUnited States

Preguntas relacionadas

QWhat is the main purpose of the U.S. Clarity Act according to Donald Trump?

AThe main purpose of the U.S. Clarity Act is to link the economic prowess of the country with clear crypto rules, bringing clarity to crypto markets and attracting investment.

QWho does Trump accuse of undermining innovation in the United States?

ATrump accuses big financial institutions of undermining innovation in the country by slowing down technological advancements.

QWhat two regulatory bodies' jurisdictions does the Clarity Act aim to determine for digital assets?

AThe Clarity Act aims to determine the jurisdiction of the CFTC (Commodity Futures Trading Commission) and the SEC (Securities and Exchange Commission) for different digital assets.

QAccording to the article, what problem has regulatory confusion caused for crypto platforms?

ARegulatory confusion has been a problem for various platforms in the crypto space by increasing compliance costs and creating uncertainty.

QWhat potential benefit does the Clarity Act offer to encourage innovation, as mentioned by its proponents?

AThe Clarity Act offers special exemptions for different digital asset activities to encourage innovation in the space and help build market confidence.

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