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PRODID:-//EE - ECPv5.10.0//NONSGML v1.0//EN
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X-WR-CALNAME:EE
X-ORIGINAL-URL:https://ee.iisc.ac.in
X-WR-CALDESC:Events for EE
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TZID:Asia/Kolkata
BEGIN:STANDARD
TZOFFSETFROM:+0530
TZOFFSETTO:+0530
TZNAME:IST
DTSTART:20240101T000000
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BEGIN:VEVENT
DTSTART;TZID=Asia/Kolkata:20240412T160000
DTEND;TZID=Asia/Kolkata:20240412T173000
DTSTAMP:20260525T063553
CREATED:20240412T043837Z
LAST-MODIFIED:20240412T043837Z
UID:241439-1712937600-1712943000@ee.iisc.ac.in
SUMMARY:Talk On Making Machine Learning Models Safer and Better: Data and Model Perspectives
DESCRIPTION:  \nAbstract: As machine learning systems are increasingly deployed in real-world settings like healthcare\, finance\, and scientific applications\, ensuring their safety and reliability is crucial. However\, many state-of-the-art ML models still suffer from issues like poor out-of-distribution generalization\, sensitivity to input corruptions\, requiring large amounts of data\, and inadequate calibration – limiting their robustness and trustworthiness for critical real-world applications. \nIn this talk\, I will present a broad overview of different safety considerations for modern ML systems. I will then proceed to discuss our recent efforts in making ML models safer from two complementary perspectives – (i) manipulating data and (ii) enriching the model capabilities by developing novel training mechanisms. First\, I will discuss our work on designing new data augmentation techniques for object detection followed by demonstrating how\, in the absence of data from desired target domains of interest\, one could leverage pre-trained generative models for efficient synthetic data generation. Next\, I will introduce a new paradigm of training deep networks called model anchoring and show how one could achieve similar properties to an ensemble but through a single model. I will specifically discuss how model anchoring can significantly enrich the class of hypothesis functions being sampled and demonstrate its effectiveness through its improved performance on several safety benchmarks. Finally\, I will present our efforts in proactively identifying samples on which a model would fail through a novel model counterfactual synthesis technique by leveraging foundation models (e.g.\, GPT family and CLIP). I will then conclude by highlighting exciting future research directions for producing robust ML models through leveraging multi-modal foundation models. \n\nBio: Kowshik Thopalli is a Machine Learning Scientist and a post-doctoral researcher at Lawrence Livermore National Laboratory. He is currently mentored by Dr. Jay Thiagarajan. His research focuses on developing reliable machine learning models that are robust under distribution shifts. He has published papers on a variety of techniques to address model robustness\, including domain adaptation\, domain generalization\, and test-time adaptation using geometric and meta-learning approaches. His expertise also encompasses integrating diverse knowledge sources\, such as domain expert guidance and generative models\, to improve model data efficiency\, accuracy\, and resilience to distribution shifts. He received his Ph.D. in 2023 from Arizona State University under the mentorship of Dr. Pavan Turaga.\n______\n\nAll are welcome.
URL:https://ee.iisc.ac.in/event/talk-on-making-machine-learning-models-safer-and-better-data-and-model-perspectives/
LOCATION:B306 \, EE Dept
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