DOJ rejects Roman Storm defense, says Supreme Court precedent does not apply to Tornado Cash case

ambcryptoОпубликовано 2026-04-07Обновлено 2026-04-07

Введение

U.S. prosecutors have rejected Roman Storm's defense argument that a recent Supreme Court ruling (Cox Communications v. Sony Music) should dismiss criminal charges against him related to Tornado Cash. Storm’s legal team argued that providing a neutral tool with legitimate uses does not establish criminal intent, even with knowledge of potential misuse. The Department of Justice countered that the cited case concerns civil liability and is irrelevant to Storm’s criminal charges for money laundering, sanctions violations, and operating an unlicensed money-transmitting business. The case highlights a key conflict in crypto regulation: whether developers of decentralized protocols can be held liable for how users misuse their tools. The outcome may set a significant precedent for developer liability and impact the future of DeFi and privacy-focused software.

U.S. prosecutors have pushed back against a key legal argument raised by Roman Storm, intensifying the legal battle over whether developers of decentralized tools can be held criminally liable.

In a letter filed on 7 April, the U.S. Department of Justice told the court that a recent Supreme Court ruling cited by Storm’s defense is not relevant to the charges in the case, which include money laundering, sanctions violations, and operating an unlicensed money transmitting business.

The response follows a filing by Storm’s legal team on 2 April. It sought to use the Supreme Court’s decision in Cox Communications v. Sony Music to support a motion to dismiss.

Defense argues “neutral tool” precedent

In its 2 April letter, Storm’s counsel argued that the Supreme Court’s ruling reinforces a key principle: that providing a service with legitimate uses does not establish criminal intent, even if the provider knows it may be misused.

The defense cited the Court’s position that “mere knowledge” of misuse is insufficient to prove culpable intent. It draws a parallel between internet service providers and decentralized protocols like Tornado Cash.

The argument forms part of Storm’s broader defense that Tornado Cash functioned as a neutral privacy tool, rather than a system designed to facilitate illicit activity.

DOJ says precedent is “inapposite”

Prosecutors rejected that comparison. They argue that the Supreme Court case concerns civil copyright liability and has no bearing on the criminal statutes at issue in Storm’s case.

In their response, the government said the defense’s reliance on Cox is misplaced for two main reasons. First, the case concerns contributory liability in a civil context, whereas Storm faces criminal charges.

Second, even if the legal principles were relevant, the facts of the two cases are fundamentally different.

The DOJ emphasized that the conduct alleged in the Tornado Cash case bears “no resemblance” to the behavior examined in the Supreme Court ruling.

A broader clash over developer liability

The exchange highlights a central issue in crypto regulation: whether developers can be held responsible for how users interact with decentralized software.

Storm’s defense rests on the idea that open-source tools with legitimate uses should not expose their creators to liability based solely on how others use them.

Prosecutors, however, argue that the case involves more than passive software development, pointing to alleged conduct that goes beyond neutrality.

The outcome could set a significant precedent for how courts interpret intent and responsibility in decentralized systems.

Implications for DeFi and privacy tools

A ruling in favor of the defense could reinforce protections for developers of open-source infrastructure.

Conversely, a decision aligned with the government’s position may expand the scope of liability, potentially reshaping how decentralized protocols are designed and operated.

The dispute also reflects a broader shift in the regulatory environment, as authorities seek to apply existing financial crime laws to emerging crypto technologies.


Final Summary

  • The DOJ has rejected Roman Storm’s attempt to use a recent Supreme Court ruling as part of his defense, arguing the case does not apply to criminal charges tied to Tornado Cash.
  • The outcome could help define the limits of developer liability in DeFi, with broader implications for privacy tools and decentralized protocol design.

Связанные с этим вопросы

QWhat is the main legal argument that Roman Storm's defense team is using, and which Supreme Court case did they cite?

AStorm's defense team is arguing that providing a service with legitimate uses does not establish criminal intent, even if the provider knows it may be misused. They cited the Supreme Court's decision in Cox Communications v. Sony Music to support this argument.

QOn what two main grounds did the DOJ reject the defense's use of the Cox Communications precedent?

AThe DOJ rejected the defense's use of the Cox Communications precedent on two main grounds: 1) The case concerns contributory liability in a civil context, whereas Storm faces criminal charges. 2) The facts of the two cases are fundamentally different, with the alleged conduct in the Tornado Cash case bearing 'no resemblance' to the behavior in the Supreme Court ruling.

QWhat are the specific criminal charges that Roman Storm is facing in relation to Tornado Cash?

ARoman Storm is facing criminal charges that include money laundering, sanctions violations, and operating an unlicensed money transmitting business.

QWhat broader issue in crypto regulation does this legal battle highlight?

AThis legal battle highlights the central issue of whether developers can be held criminally liable for how users interact with decentralized software and protocols.

QWhat are the potential implications of this case's outcome for the DeFi and open-source development space?

AA ruling in favor of the defense could reinforce protections for developers of open-source infrastructure. Conversely, a decision aligned with the government’s position may expand the scope of liability, potentially reshaping how decentralized protocols are designed and operated.

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