Skip to main content

NOTICE: Due to a lapse in annual appropriations, most of this website is not being updated. Learn more.

Form submissions will still be accepted but will not receive responses at this time. Sections of this site for programs using non-appropriated funds (such as NVLAP) or those that are excepted from the shutdown (such as CHIPS and NVD) will continue to be updated.

U.S. flag

An official website of the United States government

Official websites use .gov
A .gov website belongs to an official government organization in the United States.

Secure .gov websites use HTTPS
A lock ( ) or https:// means you’ve safely connected to the .gov website. Share sensitive information only on official, secure websites.

Nada T. Golmie (Fed)

NADA GOLMIE (nada [at] nist.gov (nada[at]nist[dot]gov)) received her Ph.D. in computer science from the University of Maryland at College Park. Since 1993, she has been a research engineer at the National Institute of Standards and Technology. From 2014 to 2022, she served as the chief for the Wireless Networks Division in the Communications Technology Laboratory. She is an IEEE and a NIST Fellow.  Her research in media access control and protocols for wireless networks led to over 200 technical papers presented at professional conferences, journals, and contributed to international standard organizations and industry led consortia.  She is the author of “Coexistence in Wireless Networks: Challenges and System-level Solutions in the Unlicensed Bands," published by Cambridge University Press (2006). She leads several projects related to the modeling and evaluation of future generation wireless systems and protocols and serves as the NextG Channel Model Alliance chair.

News

Publications

Data and Software Publications

Context-aware mmWave RF Signals Dataset with Lidar and Camera

Author(s)
Steve Blandino, Anuraag Bodi, Raied Caromi, Jack Chuang, Camillo Gentile, Nada Golmie, Chiehping Lai, Jelena Senic
The dataset can be used to develop and test algorithms for a wide range of applications in communication, sensing, localization and computer vision. The dataset consists of measured indoor mm-wave
Created October 9, 2019, Updated December 8, 2022
Was this page helpful?