Take it Down Act Signed into Law, Offering Tools to Fight Non-Consensual Intimate Images and Creating a New Image Takedown Mechanism


  • Law establishes national prohibition against nonconsensual online publication of intimate images of individuals, both authentic and computer-generated.
  • First federal law regulating AI-generated content.
  • Creates requirement that covered platforms promptly remove depictions upon receiving notice of their existence and a valid takedown request.
  • For many online service providers, complying with the Take It Down Act’s notice-and-takedown requirement may warrant revising their existing DMCA takedown notice provisions and processes.
  • Another carve-out to CDA immunity? More like a dichotomy of sorts…. 

On May 19, 2025, President Trump signed the bipartisan-supported Take it Down Act into law. The law prohibits any person from using an “interactive computer service” to publish, or threaten to publish, nonconsensual intimate imagery (NCII), including AI-generated NCII (colloquially known as revenge pornography or deepfake revenge pornography). Additionally, the law requires that, within one year of enactment, social media companies and other covered platforms implement a notice-and-takedown mechanism that allows victims to report NCII.  Platforms must then remove properly reported imagery (and any known identical copies) within 48 hours of receiving a compliant request.

Support for the Act and Concerns

The Take it Down Act attempts to fill a void in the policymaking space, as many states had not enacted legislation regulating sexual deepfakes when it was signed into law. The Act has been described as the first major federal law that addresses harm caused by AI. It passed the Senate in February of this year by unanimous consent and passed the House of Representatives in April by a vote of 409-2. It also drew the support of many leading technology companies.

Despite receiving almost unanimous support in Congress, some digital privacy advocates have expressed some concerns that the new notice-and-takedown mechanism could have some unintended consequences for digital privacy in general.  For example, some commentators have suggested that the statute’s takedown provision is written too broadly and lacks sufficient safeguards against frivolous requests, potentially leading to the removal of lawful content –especially given the short 48-hour time to act following a takedown request.  [Note: In 2023, we similarly wrote about abuses of the takedown provision of the Digital Millennium Copyright Act]. In addition, some have argued that the law could undermine end-to-end encryption by possibly forcing such companies to “break” encryption to comply with the removal process.  Supporters of the law have countered that private encrypted messages would likely not be considered “published” under the text of the statute (which uses the term “publish” as opposed to “distribute”).

Criminalization of NCII Publication for Individuals

The Act makes it unlawful for any person “to use an interactive computer service to knowingly publish an intimate visual depiction of an identifiable individual” under certain circumstances.[1] It also prohibits threats involving the publishing of NCII and establishes various criminal penalties. Notably, the Act does not distinguish between authentic and AI-generated NCII in its penalties section if the content has been published. Furthermore, the Act expressly states that a victim’s prior consent to the creation of the original image or its disclosure to another individual does not constitute consent for its publication.

New Notice-and-Takedown Requirement for “Covered Platforms”

Along with punishing individuals who publish NCII, the Take it Down Act requires covered platforms to create a notice-and-takedown process for NCII within one year of the law’s passage. Below are the main points for platforms to consider:

  • Covered Platforms. The Act defines a “covered platform” as a “website, online service, online application, or mobile application” that serves the public and either provides a forum for user-generated content (including messages, videos, images, games, and audio files) or regularly deals with NCII as part of its business.
  • Notice-and-Takedown Process. Covered platforms must create a process through which victims of NCII (or someone authorized to act on their behalf) can send notice to them about the existence of such material (including a statement indicating a “good faith belief” that the intimate visual depiction of the individual is nonconsensual, along with information to assist in locating the unlawful image) and can request its removal.
  • Notice to Users. Adding an additional compliance item to the checklist, the Act requires covered platforms to provide a “clear and conspicuous” notice of the Act’s notice and removal process, such as through a conspicuous link to another web page or disclosure.
  • Removal of NCII. Within 48 hours of receiving a valid removal request, covered platforms must remove the NCII and “make reasonable efforts to identify and remove any known identical copies.”
  • Enforcement. Compliance under this provision will be enforced by the Federal Trade Commission (FTC).
  • Safe Harbor. Under the law, covered platforms will not be held liable for “good faith” removal of content that is claimed to be NCII “based on facts or circumstances from which the unlawful publishing of an intimate visual depiction is apparent,” even if it is later determined that the removed content was lawfully published.

Compliance Note: For many online service providers, complying with the Take It Down Act’s notice-and-takedown requirement may warrant revising their existing DMCA takedown notice provisions and processes, especially if those processes have not been reviewed or updated for some time.  Many “covered platforms” may rely on automated processes (or a combination of automated efforts combined with targeted human oversight) to fulfill Take It Down Act requests and meet the related obligation to make “reasonable efforts” to identify and remove known identical copies.  This may involve using tools for processing notices, removing content and detecting duplicates. As a result, some providers should consider whether their existing takedown provisions should also be amended to address these new requirements and how they will implement these new compliance items on the backend using the infrastructure already in place for the DMCA.

What about CDA Section 230?

Section 230 of the Communications Decency Act (“CDA”), 47 U.S.C § 230, prohibits a “provider or user of an interactive computer service” from being held responsible “as the publisher or speaker of any information provided by another information content provider.” Courts have construed the immunity provisions in Section 230 broadly in a variety of cases arising from the publication of user-generated content. 

Following enactment of the Take It Down Act, some important questions for platforms are: (1) whether Section 230 still protects platforms from actions related to the hosting or removal of NCII; and (2) whether FTC enforcement of the Take It Down Act’s platform notice-and-takedown process is blocked or limited by CDA immunity. 

On first blush, it might seem that the CDA would restrict enforcement against online providers in this area, as decisions regarding the hosting and removal of third party content would necessarily treat a covered platform as a “publisher or speaker” of third party content. However, a deeper examination of the text of the CDA suggests the answer is more nuanced.

It should be noted that the Good Samaritan provision of the CDA (47 U.S.C § 230(c)(2)) could be used by online providers as a shield from liability for actions taken to proactively filter or remove third party NCII content or remove NCII at the direction of a user’s notice under the Take It Down Act, as CDA immunity extends to good faith actions to restrict access to or availability of material that the provider or user considers to be “obscene, lewd, lascivious, filthy, excessively violent, harassing, or otherwise objectionable.” Moreover, the Take It Down Act adds its own safe harbor for online providers for “good faith disabling of access to, or removal of, material claimed to be a nonconsensual intimate visual depiction based on facts or circumstances from which the unlawful publishing of an intimate visual depiction is apparent, regardless of whether the intimate visual depiction is ultimately determined to be unlawful or not.” 

Still, further questions about the reach of the CDA prove more intriguing. The Take It Down Act appears to create a dichotomy of sorts regarding CDA immunity in the context of NCII removal claims.  Under the text of the CDA, it appears that immunity would not limit FTC enforcement of the Take It Down Act’s notice-and-takedown provision affecting “covered platforms.” To explore this issue, it’s important to examine the CDA’s exceptions, specifically 47 U.S.C § 230(e)(1).   

Effect on other laws

(1) No effect on criminal law

Nothing in this section shall be construed to impair the enforcement of section 223 or 231 of this title [i.e., the Communications Act], chapter 71 (relating to obscenity) or 110 (relating to sexual exploitation of children) of title 18, or any other Federal criminal statute.

Under the text of the CDA’s exception, Congress carved out Section 223 and 231 of the Communications Act from the CDA’s scope of immunity.  Since the Take It Down Act states that it will be codified at Section 223 of the Communications Act of 1934 (i.e., 47 U.S.C. 223(h)), it appears that platforms would not enjoy CDA protection from FTC civil enforcement actions based on the agency’s authority to enforce the Act’s requirements that covered platforms “reasonably comply” with the new Take It Down Act notice-and-takedown obligations.

However, that is not the end of the analysis for platforms.  Interestingly, it would appear that platforms would generally still retain CDA protection (subject to any exceptions) from claims related to the hosting or publishing third party NCII that have not been the subject of a Take It Down Act notice, since the Act’s requirements for removal of NCII by platforms would not be implicated without a valid removal request.[2]  Similarly, a platform could make a strong argument that it retains CDA immunity from any claims brought by an individual (rather than the FTC) for failing to reasonably comply with a Take It Down Act notice.  That said, it is conceivable that litigants – or event state attorneys general – might attempt to frame such legal actions under consumer protection statutes, as the Take It Down Act states that a failure to reasonably comply with an NCII takedown request is an unfair or deceptive trade practice under the FTC Act.  Even in such a case, platforms would likely contend that such claims by these non-FTC parties are merely claims based on a platform’s role as publisher of third party content and are therefore barred by the CDA. 

Ultimately, most, if not all, platforms will likely make best efforts to reasonably comply with the Take It Down Act, thus avoiding the above contingencies.  Yet, for platforms using automated systems to process takedown requests, unintended errors may occur and it’s important to understand how and when the CDA would still protect platforms against any related claims.

Looking Ahead

It will be up to a year before the notice-and-takedown requirements become effective, so we will have to wait and see how well the process works in eradicating revenge pornography material and intimate AI deepfakes from platforms, how the Act potentially affects messaging platforms, how aggressively the Department of Justice will prosecute offenders, and how closely the FTC will be monitoring online platforms’ compliance with the new takedown requirements.

It also remains to be seen whether Congress has an appetite to pass more AI legislation. Less than two weeks before the Take it Down Act was signed into law, the Senate Committee on Commerce, Science, and Transportation held a hearing on “Winning the AI Race” that featured the CEOs of many well-known AI companies. During the hearing, there was bipartisan agreement on the importance of sustaining America’s leadership in AI, expanding the AI supply chain and not burdening AI developers with a regulatory framework as strict as the EU AI Act. The senators listened to testimony from tech executives calling for enhanced educational initiatives and the improvement of infrastructure needed for advancing AI innovation, alongside discussing proposed bills regulating the industry, but it was not clear whether any of these potential policy solutions would receive enough support to be signed into law.

The authors would like to thank Aniket C. Mukherji, a Proskauer legal assistant, for his contributions to this post.


[1] The Act provides that the publication of the NCII of an adult is unlawful if (for authentic content) “the intimate visual depiction was obtained or created under circumstances in which the person knew or reasonably should have known the identifiable individual had a reasonable expectation of privacy,” if (for AI-generated content) “the digital forgery was published without the consent of the identifiable individual,” and if (for both authentic and AI-generated content) what is depicted “was not voluntarily exposed by the identifiable individual in a public or commercial setting,” “is not a matter of public concern,” and is intended to cause harm or does cause harm to the identifiable individual. The publication of NCII (whether authentic or AI-generated) of a minor is unlawful if it is published with intent to “abuse, humiliate, harass, or degrade the minor” or “arouse or gratify the sexual desire of any person.” The Act also lists some basic exceptions, such as publications of covered imagery for law enforcement investigations, legal proceedings, or educational purposes, among other things.

[2] Under the Act, “Upon receiving a valid removal request from an identifiable individual (or an authorized person acting on behalf of such individual) using the process described in paragraph (1)(A)(ii), a covered platform shall, as soon as possible, but not later than 48 hours after receiving such request—

(A) remove the intimate visual depiction; and

(B) make reasonable efforts to identify and remove any known identical copies of such depiction.



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In May 2024, we released Part I of this series, in which we discussed agentic AI as an emerging technology enabling a new generation of AI-based hardware devices and software tools that can take actions on behalf of users. It turned out we were early – very early – to the discussion, with several months elapsing before agentic AI became as widely known and discussed as it is today. In this Part II, we return to the topic to explore legal issues concerning user liability for agentic AI-assisted transactions and open questions about existing legal frameworks’ applicability to the new generation of AI-assisted transactions.

Background: Snapshot of the Current State of “Agents”[1]

“Intelligent” electronic assistants are not new—the original generation, such as Amazon’s Alexa, have been offering narrow capabilities for specific tasks for more than a decade. However, as OpenAI’s CEO Sam Altman commented in May 2024, an advanced AI assistant or “super-competent colleague” could be the killer app of the future. Later, Altman noted during a Reddit AMA session: “We will have better and better models. But I think the thing that will feel like the next giant breakthrough will be agents.” A McKinsey report on AI agents echoes this sentiment: “The technology is moving from thought to action.” Agentic AI represents not only a technological evolution, but also a potential means to further spread (and monetize) AI technology beyond its current uses by consumers and businesses. Major AI developers and others have already embraced this shift, announcing initiatives in the agentic AI space. For example:  

  • Anthropic announced an updated frontier AI model in public beta capable of interacting with and using computers like human users;
  • Google unveiled Gemini 2.0, its new AI model for the agentic era, alongside Project Mariner, a prototype leveraging Gemini 2.0 to perform tasks via an experimental Chrome browser extension (while keeping a “human in the loop”);
  • OpenAI launched a “research preview” of Operator, an AI tool that can interface with computers on users’ behalf, and launched beta feature “Tasks” in ChatGPT to facilitate ongoing or future task management beyond merely responding to real time prompts;
  • LexisNexis announced the availability of “Protégé,” a personalized AI assistant with agentic AI capabilities;
  • Perplexity recently rolled out “Shop Like a Pro,” an AI-powered shopping recommendation and buying feature that allows Perplexity Pro users to research products and, for those merchants whose sites are integrated with the tool, purchase items directly on Perplexity; and
  • Amazon announced Alexa+, a new generation of Alexa that has agentic capabilities, including enabling Alexa to navigate the internet and execute tasks, as well as Amazon Nova Act, an AI model designed to perform actions within a web browser.

Beyond these examples, other startups and established tech companies are also developing AI “agents” in this country and overseas (including the invite-only release of Manus AI by Butterfly Effect, an AI developer in China). As a recent Microsoft piece speculates, the generative AI future may involve a “new ecosystem or marketplace of agents,” akin to the current smartphone app ecosystem.  Although early agentic AI device releases have received mixed reviews and seem to still have much unrealized potential, they demonstrate the capability of such devices to execute multistep actions in response to natural language instructions.

Like prior technological revolutions—personal computers in the 1980s, e-commerce in the 1990s and smartphones in the 2000s—the emergence of agentic AI technology challenges existing legal frameworks. Let’s take a look at some of those issues – starting with basic questions about contract law.

Note: This discussion addresses general legal issues with respect to hypothetical agentic AI devices or software tools/apps that have significant autonomy. The examples provided are illustrative and do not reflect any specific AI tool’s capabilities.

Automated Transactions and Electronic Agents

Electronic Signatures Statutory Law Overview

A foundational legal question is whether transactions initiated and executed by an AI tool on behalf of a user are enforceable.  Despite the newness of agentic AI, the legal underpinnings of electronic transactions are well-established. The Uniform Electronic Transactions Act (“UETA”), which has been adopted by every state and the District of Columbia (except New York, as noted below), the federal E-SIGN Act, and the Uniform Commercial Code (“UCC”), serve as the legal framework for the use of electronic signatures and records, ensuring their validity and enforceability in interstate commerce. The fundamental provisions of UETA are Sections 7(a)-(b), which provide: “(a) A record or signature may not be denied legal effect or enforceability solely because it is in electronic form; (b) A contract may not be denied legal effect or enforceability solely because an electronic record was used in its formation.” 

UETA is technology-neutral and “applies only to transactions between parties each of which has agreed to conduct transactions by electronic means” (allowing the parties to choose the technology they desire). In the typical e-commerce transaction, a human user selects products or services for purchase and proceeds to checkout, which culminates in the user clicking “I Agree” or “Purchase.”  This click—while not a “signature” in the traditional sense of the word—may be effective as an electronic signature, affirming the user’s agreement to the transaction and to any accompanying terms, assuming the requisite contractual principles of notice and assent have been met.

At the federal level, the E-SIGN Act (15 U.S.C. §§ 7001-7031) (“E-SIGN”) establishes the same basic tenets regarding electronic signatures in interstate commerce and contains a reverse preemption provision, generally allowing states that have passed UETA to have UETA take precedence over E-SIGN.  If a state does not adopt UETA but enacts another law regarding electronic signatures, its alternative law will preempt E-SIGN only if the alternative law specifies procedures or requirements consistent with E-SIGN, among other things.

However, while UETA has been adopted by 49 states and the District of Columbia, it has not been enacted in New York. Instead, New York has its own electronic signature law, the Electronic Signature Records Act (“ESRA”) (N.Y. State Tech. Law § 301 et seq.). ESRA generally provides that “An electronic record shall have the same force and effect as those records not produced by electronic means.” According to New York’s Office of Information Technology Services, which oversees ESRA, “the definition of ‘electronic signature’ in ESRA § 302(3) conforms to the definition found in the E-SIGN Act.” Thus, as one New York state appellate court stated, “E-SIGN’s requirement that an electronically memorialized and subscribed contract be given the same legal effect as a contract memorialized and subscribed on paper…is part of New York law, whether or not the transaction at issue is a matter ‘in or affecting interstate or foreign commerce.’”[2] 

Given US states’ wide adoption of UETA model statute, with minor variations, this post will principally rely on its provisions in analyzing certain contractual questions with respect to AI agents, particularly given that E-SIGN and UETA work toward similar aims in establishing the legal validity of electronic signatures and records and because E-SIGN expressly permits states to supersede the federal act by enacting UETA.  As for New York’s ESRA, courts have already noted that the New York legislature incorporated the substantive terms of E-SIGN into New York law, thus suggesting that ESRA is generally harmonious with the other laws’ purpose to ensure that electronic signatures and records have the same force and effect as traditional signatures.  

Electronic “Agents” under the Law

Beyond affirming the enforceability of electronic signatures and transactions where the parties have agreed to transact with one another electronically, Section 2(2) of UETA also contemplates “automated transactions,” defined as those “conducted or performed, in whole or in part, by electronic means or electronic records, in which the acts or records of one or both parties are not reviewed by an individual.” Central to such a transaction is an “electronic agent,” which Section 2(6) of UETA defines as “a computer program or an electronic or other automated means used independently to initiate an action or respond to electronic records or performances in whole or in part, without review or action by an individual.” Under UETA, in an automated transaction, a contract may be formed by the interaction of “electronic agents” of the parties or by an “electronic agent” and an individual. E-SIGN similarly contemplates “electronic agents,” and states: “A contract or other record relating to a transaction in or affecting interstate or foreign commerce may not be denied legal effect, validity, or enforceability solely because its formation, creation, or delivery involved the action of one or more electronic agents so long as the action of any such electronic agent is legally attributable to the person to be bound.”[3] Under both of these definitions, agentic AI tools—which are increasingly able to initiate actions and respond to records and performances on behalf of users—arguably qualify as “electronic agents” and thus can form enforceable contracts under existing law.[4]

AI Tools and E-Commerce Transactions

Given this existing body of statutory law enabling electronic signatures, from a practical perspective this may be the end of the analysis for most e-commerce transactions. If I tell an AI tool to buy me a certain product and it does so, then the product’s vendor, the tool’s provider and I might assume—with the support of UETA, E-SIGN, the UCC, and New York’s ESRA—that the vendor and I (via the tool) have formed a binding agreement for the sale and purchase of the good, and that will be the end of it unless a dispute arises about the good or the payment (e.g., the product is damaged or defective, or my credit card is declined), in which case the AI tool isn’t really relevant.

But what if the transaction does not go as planned for reasons related to the AI tool? Consider the following scenarios:

  • Misunderstood Prompts: The tool misinterprets a prompt that would be clear to a human but is confusing to its model (e.g., the user’s prompt states, “Buy two boxes of 101 Dalmatians Premium dog food,” and the AI tool orders 101 two-packs of dog food marketed for Dalmatians).
  • AI Hallucinations: The user asks for something the tool cannot provide or does not understand, triggering a hallucination in the model with unintended consequences (e.g., the user asks the model to buy stock in a company that is not public, so the model hallucinates a ticker symbol and buys stock in whatever real company that symbol corresponds to).
  • Violation of Limits: The tool exceeds a pre-determined budget or financial parameter set by the user (e.g., the user’s prompt states, “Buy a pair of running shoes under $100” and the AI tool purchases shoes from the UK for £250, exceeding the user’s limit).
  • Misinterpretation of User Preference: The tool misinterprets a prompt due to lack of context or misunderstanding of user preferences (e.g., the user’s prompt states, “Book a hotel room in New York City for my conference,” intending to stay near the event location in lower Manhattan, and the AI tool books a room in Queens because it prioritizes price over proximity without clarifying the user’s preference).

Disputes like these begin with a conflict between the user and a vendor—the AI tool may have been effective to create a contract between the user and the vendor, and the user may then have legal responsibility for that contract.  But the user may then seek indemnity or similar rights against the developer of the AI tool.

Of course, most developers will try to avoid these situations by requiring user approvals before purchases are finalized (i.e., “human in the loop”). But as desire for efficiency and speed increases (and AI tools become more autonomous and familiar with their users), these inbuilt protections could start to wither away, and users that grow accustomed to their tool might find themselves approving transactions without vetting them carefully. This could lead to scenarios like the above, where the user might seek to void a transaction or, if that fails, even try to avoid liability for it by seeking to shift his or her responsibility to the AI tool’s developer.[5] Could this ever work? Who is responsible for unintended liabilities related to transactions completed by an agentic AI tool?

Sources of Law Governing AI Transactions

AI Developer Terms of Service

As stated in UETA’s Prefatory Note, the purpose of UETA is “to remove barriers to electronic commerce by validating and effectuating electronic records and signatures.” Yet, the Note cautions, “It is NOT a general contracting statute – the substantive rules of contracts remain unaffected by UETA.”  E-SIGN contains a similar disclaimer in the statute, limiting its reach to statutes that require contracts or other records be written, signed, or in non-electronic form (15 U.S.C. §7001(b)(2)). In short, UETA, E-SIGN, and the similar UCC provisions do not provide contract law rules on how to form an agreement or the enforceability of the terms of any agreement that has been formed.

Thus, in the event of a dispute, terms of service governing agentic AI tools will likely be the primary source to which courts will look to assess how liability might be allocated. As we noted in Part I of this post, early-generation agentic AI hardware devices generally include terms that not only disclaim responsibility for the actions of their products or the accuracy of their outputs, but also seek indemnification against claims arising from their use. Thus, absent any express customer-favorable indemnities, warranties or other contractual provisions, users might generally bear the legal risk, barring specific legal doctrines or consumer protection laws prohibiting disclaimers or restrictions of certain claims.[6]

But what if the terms of service are nonexistent, don’t cover the scenario, or—more likely—are unenforceable? Unenforceable terms for online products and services are not uncommon, for reasons ranging from “browsewrap” being too hidden, to specific provisions being unconscionable. What legal doctrines would control during such a scenario?

The Backstop: User Liability under UETA and E-SIGN

Where would the parties stand without the developer’s terms? E-SIGN allows for the effectiveness of actions by “electronic agents” “so long as the action of any such electronic agent is legally attributable to the person to be bound.” This provision seems to bring the issue back to the terms of service governing a transaction or general principles of contract law. But again, what if the terms of service are nonexistent or don’t cover a particular scenario, such as those listed above. As it did with the threshold question of whether AI tools could form contracts in the first place, UETA appears to offer a position here that could be an attractive starting place for a court. Moreover, in the absence of express language under New York’s ESRA, a New York court might apply E-SIGN (which contains an “electronic agent” provision) or else find insight as well by looking at UETA and its commentary and body of precedent if the court isn’t able to find on-point binding authority, which wouldn’t be a surprise, considering that we are talking about technology-driven scenarios that haven’t been possible until very recently.

UETA generally attributes responsibility to users of “electronic agents”, with the prefatory note explicitly stating that the actions of electronic agents “programmed and used by people will bind the user of the machine.” Section 14 of UETA (titled “Automated Transaction”) reinforces this principle, noting that a contract can be formed through the interaction of “electronic agents” “even if no individual was aware of or reviewed the electronic agents’ actions or the resulting terms and agreements.” Accordingly, when automated tools such as agentic AI systems facilitate transactions between parties who knowingly consent to conduct business electronically, UETA seems to suggest that responsibility defaults to the users—the persons who most immediately directed or initiated their AI tool’s actions. This reasoning treats the AI as a user’s tool, consistent with the other UETA Comments (e.g., “contracts can be formed by machines functioning as electronic agents for parties to a transaction”).

However, different facts or technologies could lead to alternative interpretations, and ambiguities remain. For example, Comment 1 to UETA Section 14 asserts that the lack of human intent at the time of contract formation does not negate enforceability in contracts “formed by machines functioning as electronic agents for parties to a transaction” and that “when machines are involved, the requisite intention flows from the programming and use of the machine” (emphasis added).

This explanatory text has a couple of issues. First, it is unclear about what constitutes “programming” and seems to presume that the human intention at the programming step (whatever that may be) is more-or-less the same as the human intention at the use step[7], but this may not always be the case with AI tools. For example, it is conceivable that an AI tool could be programmed by its developer to put the developer’s interests above the users’, for example by making purchases from a particular preferred e-commerce partner even if that vendor’s offerings are not the best value for the end user. This concept may not be so far-fetched, as existing GenAI developers have entered into content licensing deals with online publishers to obtain the right for their chatbots to generate outputs or feature licensed content, with links to such sources. Of course, there is a difference between a chatbot offering links to relevant licensed news sources that are accurate (but not displaying appropriate content from other publishers) versus an agentic chatbot entering into unintended transactions or spending the user’s funds in unwanted ways. This discrepancy in intention alignment might not be enough to allow the user to shift liability for a transaction from a user to a programmer, but it is not hard to see how larger misalignments might lead to thornier questions, particularly in the event of litigation when a court might scrutinize the enforceability of an AI vendor’s terms (under the unconscionability doctrine, for example). 

Second, UETA does not contemplate the possibility that the AI tool might have enough autonomy and capability that some of its actions might be properly characterized as the result of its own intent. Looking at UETA’s definition of “electronic agent,” the commentary notes that “As a general rule, the employer of a tool is responsible for the results obtained by the use of that tool since the tool has no independent volition of its own.” But as we know, technology has advanced in the last few decades and depending on the tool, an autonomous AI tool might one day have much independent volition (and further UETA commentary admits the possibility of a future with more autonomous electronic agents). Indeed, modern AI researchers have been contemplating this possibility even before rapid technological progress began with ChatGPT.

Still, Section 10 of UETA may be relevant to some of the scenarios from our bulleted selection of AI tool mishaps listed above, including misunderstood prompts or AI hallucinations. UETA Section 10 (titled “Effect of Change or Error”) outlines the possible actions a party may take when discovering human or machine errors or when “a change or error in an electronic record occurs in a transmission between parties to a transaction.” The remedies outlined in UETA depend on the circumstances of the transaction and whether the parties have agreed to certain security procedures to catch errors (e.g., a “human in the loop” confirming an AI-completed transaction) or whether the transaction involves an individual and a machine.[8]  In this way, the guardrails integrated into a particular AI tool or by the parties themselves play a role in the liability calculus. The section concludes by stating that if none of UETA’s error provisions apply, then applicable law governs, which might include the terms of the parties’ contract and the law of mistake, unconscionability and good faith and fair dealing.

* * *

Thus, along an uncertain path we circle back to where we started: the terms of the transaction and general contract law principles and protections. However, not all roads lead to contract law. In our next installment in this series, we will explore the next logical source of potential guidance on AI tool liability questions: agency law.  Decades of established law may now be challenged by a new sort of “agent” in the form of agentic AI…and a new AI-related lawsuit foreshadows the issues to come.


[1] In keeping with common practice in the artificial intelligence industry, this article refers to AI tools that are capable of taking actions on behalf of users as “agents” (in contrast to more traditional AI tools that can produce content but not take actions). However, note that the use of this term is not intended to imply that these tools are “agents” under agency law.

[2] In addition, the UCC has provisions consistent with UETA and E-SIGN providing for the use of electronic records and electronic signatures for transactions subject to the UCC. The UCC does not require the agreement of the parties to use electronic records and electronic signatures, as UETA and E-SIGN do.

[3] Under E-SIGN, “electronic agent” means “a computer program or an electronic or other automated means used independently to initiate an action or respond to electronic records or performances in whole or in part without review or action by an individual at the time of the action or response.”

[4] It should be noted that New York’s ESRA does not expressly provide for the use of “electronic agents,” yet does not prohibit them either.  Reading through ESRA and the ESRA regulation, the spirit of the law could be construed as forward-looking and seems to suggest that it supports the use of automated systems and electronic means to create legally binding agreements between willing parties. Looking to New York precedent, one could also argue that E-SIGN, which contains provisions about the use of “electronic agents”, might also be applicable in certain circumstances to fill the “electronic agent” gap in ESRA. For example, the ESRA regulations (9 CRR-NY § 540.1) state: “New technologies are frequently being introduced. The intent of this Part is to be flexible enough to embrace future technologies that comply with ESRA and all other applicable statutes and regulations.”  On the other side, one could argue that certain issues surrounding “electronic agents” are perhaps more unsettled in New York.  Still, New York courts have found ESRA consistent with E-SIGN.  

[5] Since AI tools are not legal persons, they could not be liable themselves (unlike, for example, a rogue human agent could be in some situations). We will explore agency law questions in Part III.

[6] Once agentic AI technology matures, it is possible that certain user-friendly contractual standards might emerge as market participants compete in the space. For example, as we wrote about in a prior post, in 2023 major GenAI providers rolled out indemnifications to protect their users from third-party claims of intellectual property infringement arising from GenAI outputs, subject to certain carve-outs.

[7] The electronic “agents” in place at the time of UETA’s passage might have included basic e-commerce tools or EDI (Electronic Data Interchange), which is used by businesses to exchange standardized documents, such as purchase orders, electronically between trading partners, replacing traditional methods like paper, fax, mail or telephone. Electronic tools are generally designed to explicitly perform according to the user’s intentions (e.g., clicking on an icon will add this item to a website shopping cart or send this invoice to the customer) and UETA, Section 10, contains provisions governing when an inadvertent or electronic error occurs (as opposed to an abrogation of the user’s wishes).

[8] For example, UETA Section 10 states that if a change or error occurs in an electronic record during transmission between parties to a transaction, the party who followed an agreed-upon security procedure to detect such changes can avoid the effect of the error, if the other party who didn’t follow the procedure would have detected the change had they complied with the security measure; this essentially places responsibility on the party who failed to use the agreed-upon security protocol to verify the electronic record’s integrity.

Comments to UETA Section 10 further explain the context of this section: “The section covers both changes and errors. For example, if Buyer sends a message to Seller ordering 100 widgets, but Buyer’s information processing system changes the order to 1000 widgets, a “change” has occurred between what Buyer transmitted and what Seller received. If on the other hand, Buyer typed in 1000 intending to order only 100, but sent the message before noting the mistake, an error would have occurred which would also be covered by this section.”  In the situation where a human makes a mistake when dealing with an electronic agent, the commentary explains that “when an individual makes an error while dealing with the electronic agent of the other party, it may not be possible to correct the error before the other party has shipped or taken other action in reliance on the erroneous record.”



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