โลโก้เว็บไซต์ กิจกรรมประชาสัมพันธ์ : Deep Learning for Wireless Communications | สำนักวิทยบริการและเทคโนโลยีสารสนเทศ

กิจกรรมประชาสัมพันธ์ : Deep Learning for Wireless Communications

เผยแพร่เมื่อ : พฤหัสบดี 24 มิถุนายน 2564 โดย ออมทรัพย์ อินกองงาม จำนวนผู้เข้าชม 347 คน

ยังไม่มีคะแนนสำหรับบทความนี้ ผู้อ่านสามารถให้คะแนนบทความได้จากปุ่มข้างใต้

Invite instructor, researchers, staff and students of RMUTL to attend the seminar on the topic :  Deep Learning for Wireless Communications

Overview

Next generation wireless systems need to operate in harsh environments, where various types of interference increase the system level challenges. Wireless receivers have numerous applications in systems that require efficient spectrum management. In this session, we will demonstrate how to apply techniques Deep Learning and Machine Learning networks for a range of wireless communications systems.

We will look at the trade-offs between machine learning and deep learning workflows.  We will also demonstrate ways to perform data collection and labeling from off-the-shelf software-defined radios and radars to train and test classifiers. Our focus will be on data synthesis to train networks including efficient ways to work with communications baseband I/Q signals to improve classification results.

Highlights

  • Demonstrate the concepts and workflows using several application examples including waveform modulation ID, RF Fingerprinting, and 5G channel estimation
  • Understand trade-offs between machine learning and deep learning techniques for baseband signals
  • Pre-process and label baseband data
  • Synthesize data to train networks

Please allow approximately 45 minutes to attend the presentation and Q&A session. We will be recording this webinar, so if you can't make it for the live broadcast, register and we will send you a link to watch it on-demand.

About the Presenters

Dr. Houman Zarrinkoub is a senior product manager at MathWorks responsible for wireless communications products. During his 20-year tenure at MathWorks, he has also served as a development manager and has been responsible for multiple signal processing and communications software tools. Prior to MathWorks, he was a research scientist working on mobile and voice coding technologies in the Wireless Group at Nortel Networks. He has been awarded multiple patents on topics related to computer simulations of signal processing applications. Houman is the author of the book Understanding LTE with MATLAB: From Mathematical Modeling to Simulation and Prototyping. He holds a B.Sc. degree in electrical engineering from McGill University and M.Sc. and Ph.D. degrees in telecommunications from the University of Quebec, in Canada.

Florent Busnoult is a Senior Application Engineer at MathWorks focusing on signal processing and wireless communications products. He holds a Master’s degree in telecommunications engineering from Telecom Bretagne, in France.

 

For teachers, staff, staff 's RMUTL who are interested in attending the training Must proceed with registration through the system. to send information for attending the webinar according to the specified date and time

 

yesRegister >>  Deep Learning for Wireless Communications - MATLAB & Simulink (mathworks.com)