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15 U.S.C. § 9201 15 u.s.c. · identifying outputs of generative advers · title 15
15 U.S.C. § 9201
Findings
Title 15 USC
● ACTIVE
Ch. 117
Jurisdiction Federal — United States
Chapter IDENTIFYING OUTPUTS OF GENERATIVE ADVERSARIAL NETWORKS
Primary Source uscode.house.gov ↗
Federation ID OM-USC15-SEC-08A880
STATUTORY TEXT primary source · verbatim · uscode.house.gov

U.S.C. Title 15 - COMMERCE AND TRADE 15 U.S.C. United States Code, 2023 Edition Title 15 - COMMERCE AND TRADE CHAPTER 117 - IDENTIFYING OUTPUTS OF GENERATIVE ADVERSARIAL NETWORKS Sec. 9201 - Findings From the U.S. Government Publishing Office, www.gpo.gov

§9201. Findings

Congress finds the following: (1) Gaps currently exist on the underlying research needed to develop tools that detect videos, audio files, or photos that have manipulated or synthesized content, including those generated by generative adversarial networks. Research on digital forensics is also needed to identify, preserve, recover, and analyze the provenance of digital artifacts. (2) The National Science Foundation's focus to support research in artificial intelligence through computer and information science and engineering, cognitive science and psychology, economics and game theory, control theory, linguistics, mathematics, and philosophy, is building a better understanding of how new technologies are shaping the society and economy of the United States. (3) The National Science Foundation has identified the "10 Big Ideas for NSF Future Investment" including "Harnessing the Data Revolution" and the "Future of Work at the Human-Technology Frontier", with artificial intelligence is a critical component. (4) The outputs generated by generative adversarial networks should be included under the umbrella of research described in paragraph (3) given the grave national security and societal impact potential of such networks. (5) Generative adversarial networks are not likely to be utilized as the sole technique of artificial intelligence or machine learning capable of creating credible deepfakes. Other techniques may be developed in the future to produce similar outputs.

(Pub. L. 116–258, §2, Dec. 23, 2020, 134 Stat. 1150.)

Statutory Notes and Related Subsidiaries

Short Title Pub. L. 116–258, §1, Dec. 23, 2020, 134 Stat. 1150, provided that: "This Act [enacting this chapter] may be cited as the 'Identifying Outputs of Generative Adversarial Networks Act' or the 'IOGAN Act'."

Source: uscode.house.gov — public domain Official Source ↗
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The statutory text of 15 U.S.C. § 9201 is reproduced from the official United States Code as published by the Office of the Law Revision Counsel of the U.S. House of Representatives (uscode.house.gov).
NAVIGATE CORPUS title 15 · commerce and trade
Chapter 117 — IDENTIFYING OUTPUTS OF GENERATIVE ADVERSARIAL NETWORKS
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15 U.S.C.
Citation
15 U.S.C. § 9201
Status
● ACTIVE
Chapter
117 — IDENTIFYING OUTPUTS OF GENERATIVE ADVERSARIAL NETWORKS
Title
Commerce and Trade
Jurisdiction
Federal
Federation ID
OM-USC15-SEC-08A880
Root-LD Spec
v1.0
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Commerce and Trade — 15 U.S.C. § 9201