archimedes-Artificial Intelligence, Data Science, Algorithms-greece

 
Artificial Intelligence
 
Data Science
 
Algorithms

Archimedes Talk Series on: "Towards Trustworthy AI: Understanding Memorization, Privacy, and Security in Deep Learning" by Dr. Deepak Ravikumar (Amazon, Purdue University, USA)

Dates
2026-06-23 17:00 - 18:30
Venue
Archimedes 1 - Amphitheater

Abstract

As deep learning systems are increasingly deployed in safety-critical domains such as healthcare, finance, and autonomous navigation, ensuring that these systems are not only accurate but also trustworthy has become essential. Trustworthy AI is grounded in six foundational pillars: human agency and oversight, fairness, explainability, robustness, privacy, and accountability. This talk advances trustworthy AI by addressing three deeply interconnected challenges: memorization, privacy, and robustness. Although these represent a subset of the broader framework, the pillars are interdependent, progress in one often reinforces others. We begin by studying memorization, where models overfit specific training samples, including noisy, rare, or mislabeled data. To quantify memorization efficiently, we introduce two novel metrics: Cumulative Sample Loss (CSL) and Cumulative Sample Gradient (CSG). These proxies track training dynamics, correlate with traditional stability-based memorization scores, and are orders of magnitude more efficient. We show that CSL and CSG theoretically bound both memorization and learning time, enabling scalable detection of mislabeled data, dataset bias, and duplicates. Additionally, CSG facilitates early stopping without a validation set. We then connect memorization to privacy, showing that memorized samples are more vulnerable to membership inference attacks. We derive theoretical bounds linking memorization, input loss curvature, and differential privacy. Leveraging these insights, we develop a black-box membership inference attack based on input loss curvature, achieving state-of the-art performance. Finally, we address robustness in the face of adversarial perturbations and out-of-distribution (OoD) examples. We propose Intra-Class Mixup and Norm-Scaling, which enhance OoD detection. To improve ensemble robustness, we introduce TREND (Transferability-based Robust Ensemble Design), which leverages adversarial transferability for principled ensemble construction. We also present In-Distribution Knowledge Distillation (IDKD), which supports robust decentralized learning under non-IID data distribution. Collectively, this talk offers a theoretically grounded and practically relevant framework for enhancing memorization, privacy, and robustness in deep learning, contributing key tools and insights for building more trustworthy AI systems.

Short Biography

Deepak is currently an Applied Scientist II at Amazon, where he researches building better ML models to represent sellers on the platform. He conducted his Ph.D. research under Prof. Kaushik Roy, where his research gained significant recognition. His work has been spotlighted at leading conferences, earning the 2024 NeurIPS Spotlight Paper Award (Top 2%), the 2024 ICML Spotlight Paper Award (Top 3.5%) and Estus H. and Vashti L. Magoon Research Excellence Award 2025. At Purdue, he has been awarded the College of Engineering Scholarship and the ECE Summer Research Grant. His research focuses on deep learning algorithms, with a particular emphasis on deep learning memorization and trustworthy machine learning. He previously worked as an ML Research intern at Microsoft, where he focused on predictive time-series machine learning models. Prior to that, at National Instruments R&D, he developed innovative signal acquisition and processing frameworks, with his work being recognized as one of the Top 3 Best Papers at the National Instruments Tech Conference in 2017. Deepak earned his M.S. in Electrical and Computer Engineering from Purdue University in 2019, where he received the prestigious Magoon Teaching Excellence Award for his outstanding contributions as a teaching assistant. He completed his B.E. in Electronics Engineering from M. S. Ramaiah Institute of Technology, India, in 2016, graduating as a bronze medallist for academic excellence.

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Microsoft Teams meeting

Join: https://teams.microsoft.com/meet/336746477934370?p=XRmdB5IUNha67KKoHT

Meeting ID: 336 746 477 934 370

Passcode: VA7aV9cP

 
 

Vision

To position Greece as a leading player in AI and Data Science

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Mission

To build an AI Excellence Hub in Greece where the international research community can connect, groundbreaking ideas can thrive, and the next generation of scientists emerges, shaping a brighter future for Greece and the world

 

Welcome to ARCHIMEDES, a vibrant research hub connecting the global AI and Data Science research community fostering groundbreaking research in Greece and beyond. Its dedicated core team, comprising lead researchers, affiliated researchers, Post-Docs, PhDs and interns, is committed to advancing basic and applied research in Artificial Intelligence and its supporting disciplines, including Algorithms, Statistics, Learning Theory, and Game Theory organized around 8 core research areas. By collaborating with Greek and Foreign Universities and Research Institutes, ARCHIMEDES disseminates its research findings fostering knowledge exchange and providing enriching opportunities for students. Leveraging AI to address real-world challenges, ARCHIMEDES promotes innovation within the Greek ecosystem and extends its societal impact. Established in January 2022, as a research unit of the Athena Research Center with support from the Committee Greece 2021, ARCHIMEDES is funded for its first four years by the EU Recovery and Resilience Facility (RRF).

 
 

NEWS

 
Archimedes Talk by Eli Baum on

Archimedes Talk by Eli Baum on "ORQ: Scaling Complex Multiparty Computations to Large Private Datasets"

On Monday 4 May, 2026, from 1:00 pm to 2:30 pm, at the Archimedes Amphitheatre (1 Artemidos Street, 15125, Marousi, Archimedes, Athena Research Center, Greece), Eli Baum, a third-year Ph.D. student at  Boston University, USA, and a member of the BU CASP Systems Lab and the BU Security Group, will deliver an Archimedes talk on "ORQ: Scaling Complex Multiparty Computations to Large Private Datasets."

DialRes-LREC 2026 workshop: “Dialects in NLP: A Resource Perspective”

DialRes-LREC 2026 workshop: “Dialects in NLP: A Resource Perspective”

Researchers from the Archimedes Unit of the Athena Research Center, Greece, together with the Athena Research Center team on Dialectal NLP, affiliated with the Institute for Language and Speech Processing, and in collaboration with researchers from George Mason University, are organizing the first edition of the DialRes-LREC 2026 workshop, “Dialects in NLP: A Resource Perspective”, to be held on 16 May 2026. More information is available here: https://dialres.github.io/dialres/index.html.

Antonis Anastasopoulos' Keynote Speech on

Antonis Anastasopoulos' Keynote Speech on "Machine Translation and Low-Resource NLP" from the Athens NLP 2025 Summer School is Now Available Online

Antonis Athanassopoulos, an Assistant Professor at the Computer Science Department of George Mason University,USA, and a Lead Researcher at Archimedes, Athena Research Center, Greece, was one of the keynote speakers at the Athens NLP 2025 Summer School, held at the National Centre for Scientific Research Demokritos in Greece, from 4 to 10 September 2025.His presentation on "Machine Translation and Low-Resource NLP" is now available online.

Christos Papadimitriou Speaks on “Artificial Intelligence: its History, its Present, and its Uncertain Future”

Christos Papadimitriou Speaks on “Artificial Intelligence: its History, its Present, and its Uncertain Future”

Christos Papadimitriou, Donovan Family Professor of Computer Science at Columbia Engineering at Columbia University, USA, and Principal Scientist at the Archimedes Research Unit of the Athena Research Center, Greece, spoke about “Artificial Intelligence: its History, its Present, and its Uncertain Future” during the ten-year anniversary event of diaNEOsis think tank, which took place on March 11, 2026, at the Stavros Niarchos Foundation Cultural Center (SNFCC).

 
 

The project “ARCHIMEDES Unit: Research in Artificial Intelligence, Data Science and Algorithms” with code OPS 5154714 is implemented by the National Recovery and Resilience Plan “Greece 2.0” and is funded by the European Union – NextGenerationEU.

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