71 Amazon Research Award recipients announced

Awardees, who represent 45 universities in 10 countries, have access to Amazon public datasets, along with AWS AI/ML services and tools.

Amazon Research Awards (ARA) provides unrestricted funds and AWS Promotional Credits to academic researchers investigating various research topics in multiple disciplines. This cycle, ARA received many excellent research proposals from across the world and today is publicly announcing 71 award recipients who represent 45 universities in 10 countries.

This announcement includes awards funded under five call for proposals during the fall 2024 cycle: AI for Information Security, Automated Reasoning, AWS AI, AWS Cryptography, and Sustainability. Proposals were reviewed for the quality of their scientific content and their potential to impact both the research community and society. Additionally, Amazon encourages the publication of research results, presentations of research at Amazon offices worldwide, and the release of related code under open-source licenses.

Recipients have access to more than 700 Amazon public datasets and can utilize AWS AI/ML services and tools through their AWS Promotional Credits. Recipients also are assigned an Amazon research contact who offers consultation and advice, along with opportunities to participate in Amazon events and training sessions.

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“Automated Reasoning is an important area of research for Amazon, with potential applications across various features and applications to help improve security, reliability, and performance for our customers. Through the ARA program, we collaborate with leading academic researchers to explore challenges in this field,” said Robert Jones, senior principal scientist with the Cloud Automated Reasoning Group. “We were again impressed by the exceptional response to our Automated Reasoning call for proposals this year, receiving numerous high-quality submissions. Congratulations to the recipients! We're excited to support their work and partner with them as they develop new science and technology in this important area.”

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“At Amazon, we believe that solving the world's toughest sustainability challenges benefits from both breakthrough scientific research and open and bold collaboration. Through programs like the Amazon Research Awards program, we aim to support academic research that could contribute to our understanding of these complex issues,” said Kommy Weldemariam, Director of Science and Innovation Sustainability. “The selected proposals represent innovative projects that we hope will help advance knowledge in this field, potentially benefiting customers, communities, and the environment.”

ARA funds proposals throughout the year in a variety of research areas. Applicants are encouraged to visit the ARA call for proposals page for more information or send an email to be notified of future open calls.

The tables below list, in alphabetical order by last name, fall 2024 cycle call-for-proposal recipients, sorted by research area.

AI for Information Security

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RecipientUniversityResearch title
Christopher AmatoNortheastern UniversityMulti-Agent Reinforcement Learning Cyber Defense for Securing Cloud Computing Platforms
Bernd BischlLudwig Maximilian University of MunichImproving Generative and Foundation Models Reliability via Uncertainty-awareness
Shiqing MaUniversity Of Massachusetts AmherstLLM and Domain Adaptation for Attack Detection
Alina OpreaNortheastern UniversityMulti-Agent Reinforcement Learning Cyber Defense for Securing Cloud Computing Platforms
Roberto PerdisciUniversity of GeorgiaContextADBench: A Comprehensive Benchmark Suite for Contextual Anomaly Detection

Automated Reasoning

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RecipientUniversityResearch title
Nada AminHarvard UniversityLLM-Augmented Semi-Automated Proofs for Interactive Verification
Suguman BansalGeorgia Institute of TechnologyCertified Inductive Generalization in Reinforcement Learning
Ioana BoureanuUniversity of SurreyPhoebe+: An Automated-Reasoning Tool for Provable Privacy in Cryptographic Systems
Omar Haider ChowdhuryStony Brook UniversityRestricter: An Automatic Tool for Authoring Amazon Cedar Access Control Policies with the Principle of Least Privilege
Stefan CiobacaAlexandru Ioan Cuza UniversityAn Interactive Proof Mode for Dafny
João FerreiraINESC-IDPolyglot Automated Program Repair for Infrastructure as Code
Mirco GiacobbeUniversity of BirminghamNeural Software Verification
Tobias GrosserUniversity of CambridgeSynthesis-based Symbolic BitVector Simplification for Lean
Ronghui GuColumbia UniversityScaling Formal Verification of Security Properties for Unmodified System Software
Alexey IgnatievMonash UniversityHuub: Next-Gen Lazy Clause Generation
Kenneth McMillanUniversity of Texas At AustinSynthesis of Auxiliary Variables and Invariants for Distributed Protocol Verification
Alexandra MendesUniversity of PortoOvercoming Barriers to the Adoption of Verification-Aware Languages
Jason NiehColumbia UniversityScaling Formal Verification of Security Properties for Unmodified System Software
Rohan PadhyeCarnegie Mellon UniversityAutomated Synthesis and Evaluation of Property-Based Tests
Fortunat RajaonaUniversity of SurreyPhoebe+: An Automated-Reasoning Tool for Provable Privacy in Cryptographic Systems
Subhajit RoyIndian Institute of Technology KanpurTheorem Proving Modulo LLM
Gagandeep SinghUniversity of Illinois At Urbana–ChampaignTrustworthy LLM Systems using Formal Contracts
Scott StollerStony Brook UniversityRestricter: An Automatic Tool for Authoring Amazon Cedar Access Control Policies with the Principle of Least Privilege
Peter StuckeyMonash UniversityHuub: Next-Gen Lazy Clause Generation
Yulei SuiUniversity of New South WalesPath-Sensitive Typestate Analysis through Sparse Abstract Execution
Nikos VasilakisBrown UniversitySemantics-Driven Static Analysis for the Unix/Linux Shell
Ping WangStevens Institute of TechnologyLeveraging Large Language Models for Reasoning Augmented Searching on Domain-specific NoSQL Database
John WawrzynekUniversity of California, BerkeleyGPU-Accelerated High-Throughput SAT Sampling

AWS AI

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RecipientUniversityResearch title
Panagiotis AdamopoulosEmory UniversityGenerative AI solutions for The Spillover Effect of Fraudulent Reviews on Product Recommendations
Vikram AdveUniversity of Illinois at Urbana–ChampaignFellini: Differentiable ML Compiler for Full-Graph Optimization for LLM Models
Frances ArnoldCalifornia Institute of TechnologyClosed-loop Generative Machine Learning for De Novo Enzyme Discovery and Optimization
Yonatan BiskCarnegie Mellon UniversityUseful, Safe, and Robust Multiturn Interactions with LLMs
Shiyu ChangUniversity of California, Santa BarbaraCut the Crap: Advancing the Efficient Communication of Multi-Agent Systems via Spatial-Temporal Topology Design and KV Cache Sharing
Yuxin ChenUniversity of PennsylvaniaProvable Acceleration of Diffusion Models for Modern Generative AI
Tianlong ChenUniversity of North Carolina at Chapel HillCut the Crap: Advancing the Efficient Communication of Multi-Agent Systems via Spatial-Temporal Topology Design and KV Cache Sharing
Mingyu DingUniversity of North Carolina at Chapel HillAligning Long Videos and Language as Long-Horizon World Models
Nikhil GargCornell UniversityMarket Design for Responsible Multi-agent LLMs
Jessica HullmanNorthwestern UniversityHuman-Aligned Uncertainty Quantification in High Dimensions
Christopher JermaineRice UniversityFast, Trusted AI Using the EINSUMMABLE Compiler
Yunzhu LiColumbia UniversityPhysics-Informed Foundation Models Through Embodied Interactions
Pattie MaesMassachusetts Institute of TechnologyUnderstanding How LLM Agents Deviate from Human Choices
Sasa MisailovicUniversity of Illinois at Urbana–ChampaignFellini: Differentiable ML Compiler for Full-Graph Optimization for LLM Models
Kristina MonakhovaCornell UniversityTrustworthy extreme imaging for science using interpretable uncertainty quantification
Todd MowryCarnegie Mellon UniversityEfficient LLM Serving on Trainium via Kernel Generation
Min-hwan OhSeoul National UniversityMutually Beneficial Interplay Between Selection Fairness and Context Diversity in Contextual Bandits
Patrick RebeschiniUniversity of OxfordOptimal Regularization for LLM Alignment
Jose RenauUniversity of California, Santa CruzVerification Constrained Hardware Optimization using Intelligent Design Agentic Programming
Vilma TodriEmory UniversityGenerative AI solutions for The Spillover Effect of Fraudulent Reviews on Product Recommendations
Aravindan VijayaraghavanNorthwestern UniversityHuman-Aligned Uncertainty Quantification in High Dimensions
Wei YangUniversity of Texas at DallasOptimizing RISC-V Compilers with RISC-LLM and Syntax Parsing
Huaxiu YaoUniversity of North Carolina at Chapel HillAligning Long Videos and Language as Long-Horizon World Models
Amy ZhangUniversity of WashingtonTools for Governing AI Agent Autonomy
Ruqi ZhangPurdue UniversityEfficient Test-time Alignment for Large Language Models and Large Multimodal Models
Zheng ZhangRutgers University-New BrunswickAlphaQC: An AI-powered Quantum Circuit Optimizer and Denoiser

AWS Cryptography

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RecipientUniversityResearch title
Alexandra BoldyrevaGeorgia Institute of TechnologyQuantifying Information Leakage in Searchable Encryption Protocols
Maria EichlsederGraz University of Technology, AustriaSALAD – Systematic Analysis of Lightweight Ascon-based Designs
Venkatesan GuruswamiUniversity of California, BerkeleyObfuscation, Proof Systems, and Secure Computation: A Research Program on Cryptography at the Simons Institute for the Theory of Computing
Joseph JaegerGeorgia Institute of TechnologyAnalyzing Chat Encryption for Group Messaging
Aayush JainCarnegie MellonLarge Scale Multiparty Silent Preprocessing for MPC from LPN
Huijia LinUniversity of WashingtonLarge Scale Multiparty Silent Preprocessing for MPC from LPN
Hamed NematiKTH Royal Institute of TechnologyTrustworthy Automatic Verification of Side-Channel Countermeasures for Binary Cryptographic Programs using the HoIBA libary
Karl PalmskogKTH Royal Institute of TechnologyTrustworthy Automatic Verification of Side-Channel Countermeasures for Binary Cryptographic Programs using the HoIBA libary
Chris PeikertUniversity of Michigan, Ann ArborPractical Third-Generation FHE and Bootstrapping
Dimitrios SkarlatosCarnegie Mellon UniversityScale-Out FHE LLMs on GPUs
Vinod VaikuntanathanMassachusetts Institute of TechnologyCan Quantum Computers (Really) Factor?
Daniel WichsNortheastern UniversityObfuscation, Proof Systems, and Secure Computation: A Research Program on Cryptography at the Simons Institute for the Theory of Computing
David WuUniversity Of Texas At AustinFast Private Information Retrieval and More using Homomorphic Encryption

Sustainability

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RecipientUniversityResearch title
Meeyoung ChaMax Planck InstituteForest-Blossom (Flossom): A New Framework for Sustaining Forest Biodiversity Through Outcome-Driven Remote Sensing Monitoring
Jingrui HeUniversity of Illinois at Urbana–ChampaignFoundation Model Enabled Earth’s Ecosystem Monitoring
Pedro LopesUniversity of ChicagoAI-powered Tools that Enable Engineers to Make & Re-make Sustainable Hardware
Cheng Yaw LowMax Planck InstituteForest-Blossom (Flossom): A New Framework for Sustaining Forest Biodiversity Through Outcome-Driven Remote Sensing Monitoring

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