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HR 4355 116th Congress House Science, Technology, Communications Advanced technology and technological innovations Computers and information technology Congressional oversight Digital media Government studies and investigations Intergovernmental relations Photography and imaging Research administration and funding Research and development Research ethics Technology assessment

IOGAN Act

Introduced: September 17, 2019 See on congress.gov
 Everywhere this bill has been 13 steps
Introduced
In committee
Reported out
Passed House
Passed Senate
To President
Became law
Dec 10, 2019
Received in the Senate and Read twice and referred to the Committee on Commerce, Science, and Transportation.
Dec 9, 2019
Motion to reconsider laid on the table Agreed to without objection.
Dec 9, 2019
On motion to suspend the rules and pass the bill, as amended Agreed to by voice vote. (text: CR H9363-9364)
Dec 9, 2019
Passed/agreed to in House: On motion to suspend the rules and pass the bill, as amended Agreed to by voice vote.(text: CR H9363-9364)
Dec 9, 2019
DEBATE - The House proceeded with forty minutes of debate on H.R. 4355.
Dec 9, 2019
Considered under suspension of the rules. (consideration: CR H9363-9364)
Dec 9, 2019
Ms. Johnson (TX) moved to suspend the rules and pass the bill, as amended.
Nov 5, 2019
Placed on the Union Calendar, Calendar No. 213.
Nov 5, 2019
Reported (Amended) by the Committee on Science, Space, and Technology. H. Rept. 116-268.
Sep 25, 2019
Ordered to be Reported (Amended) by Voice Vote.
Sep 25, 2019
Committee Consideration and Mark-up Session Held.
Sep 17, 2019
Referred to the House Committee on Science, Space, and Technology.
Sep 17, 2019
Introduced in House
 Plain-English summary Congressional Research Service

Identifying Outputs of Generative Adversarial Networks Act or the IOGAN Act

(Sec. 3) This bill directs the National Science Foundation (NSF) and the National Institute of Standards and Technology (NIST) to support research on manipulated or synthesized media, including the output of generative adversarial networks. A generative adversarial network is a software system designed to be trained with authentic inputs (e.g., photographs) to generate similar, but artificial, outputs (e.g., deepfakes).

Specifically, the NSF must support research on manipulated or synthesized content and information authenticity.

(Sec. 4) NIST must support research for the development of measurements and standards necessary to accelerate the development of the technological tools to examine the function and outputs of generative adversarial networks or other technologies that synthesize or manipulate content.

NIST shall conduct outreach to (1) receive input from private, public, and academic stakeholders on fundamental measurements and standards research necessary to examine the function and outputs of generative adversarial networks; and (2) consider the feasibility of an ongoing public and private sector engagement to develop voluntary standards for the function and outputs of such networks or other technologies that synthesize or manipulate content.

(Sec. 5) The NSF and NIST must jointly submit to Congress a report containing (1) such agencies' findings with respect to the feasibility for research opportunities with the private sector, including digital media companies to detect the function and outputs of generative adversarial networks or other technologies that synthesize or manipulate content; and (2) any policy recommendations of those agencies that could facilitate and improve communication and coordination between the private sector, the NSF, and relevant federal agencies through the implementation of innovative approaches to detect digital content produced by such networks or such technologies.

What's happening now December 10, 2019

Received in the Senate and Read twice and referred to the Committee on Commerce, Science, and Transportation.

 Committees of jurisdiction 2