CSIP Seminar - Enhancing Geophysics Data Interpretation through a Human-in-the-Loop Framework

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Event Details
  • Date/Time:
    • Friday February 17, 2023
      3:00 pm - 4:00 pm
  • Location: CSIP library at the Centergy Building and Virtual
  • Phone:
  • URL:
  • Email:
  • Fee(s):
    N/A
  • Extras:
Contact

Kiran Kokilepersaud
Ph.D. Candidate, School of Electrical and Computer Engineering

Summaries

Summary Sentence: Featuring Ahmad Mustafa of Omni Lab for Intelligent Visual Engineering and Science (OLIVES

Full Summary: No summary paragraph submitted.

Date: Friday, February 17, 2023

Time: 3:00 p.m. - 4:00 p.m.

Location: Center for Signal and Information Processing’s (CSIP) library at the Centergy Building and Virtual

Speaker: : Ahmad Mustafa

Speakers' Title: 5th year Ph.D. candidate at the Omni Lab for Intelligent Visual Engineering and Sciecne (OLIVES) being supervised by Professor Ghassan AlRegib.

Seminar Title: Enhancing Geophysics Data Interpretation through a Human-in-the-Loop Framework

Abstract: Accurate and fast interpretation of geophysics data forms an important  cornerstone of  meeting the energy needs of our modern world. Over the years, researchers have devised various machine learning-based computational learning algorithms to improve turn-around times and accuracy of mapping energy deposits (i.e., oil and gas). However, geophysics data is beset with multiple problems including limited generalization capability, label uncertainty, feature redundancy etc. Likewise, machine learning models trained on such data lack sufficient transparency to be able to induce user trust and do not fully exploit the unique characteristics of geophysics data with respect to certain critical applications. Additionally, the machine learning practitioner (i.e., the geophysicist) is usually relegated to a side role with little to no input to the data-driven model workflows. The presence of these limitations on multiple fronts (i.e., data, model, and user) hampers the realization of an integrated human-in-the-loop computational interpretation framework that allows for smooth flow of information to and from the various pipeline components to extract the best value from the data. Our work has served to address these challenges in a systematic fashion to enable the possibility of a user-centric, data-driven, model-based interpretation framework for geophysics data.

Biographical Sketch of the Speaker: Ahmad is a 5th year PhD candidate at the Omni Lab for Intelligent Visual Engineering and Sciecne (OLIVES) being supervised by Professor Ghassan AlRegib. His work lies at the intersection of advanced machine/deep learning theory and practical applications in the domain of earth science. His work has received wide acclaim from peers in the academia and industry alike and has been featured in various press releases at Georgia Tech. He has also made a name for himself for his teaching contributions and been awarded the Outstanding ECE GTA Award and the Outstanding Online Head TA Award. 

Additional Information

In Campus Calendar
Yes
Groups

School of Electrical and Computer Engineering

Invited Audience
Faculty/Staff, Public, Undergraduate students
Categories
Seminar/Lecture/Colloquium
Keywords
ECE Lecture, CSIP
Status
  • Created By: dwatson71
  • Workflow Status: Published
  • Created On: Feb 10, 2023 - 11:53am
  • Last Updated: Feb 10, 2023 - 11:56am