ebook img

Vaneet Aggarwal PDF

18 Pages·2017·0.18 MB·English
Save to my drive
Quick download
Download
Most books are stored in the elastic cloud where traffic is expensive. For this reason, we have a limit on daily download.

Preview Vaneet Aggarwal

Vaneet Aggarwal Purdue University, Email: [email protected] West Lafayette, IN 47907 Homepage: http://web.ics.purdue.edu/∼vaneet Research Interests Machine Learning, Reinforcement Learning, Networking and Communications, ML in Autonomous Trans- portation, Quantum Machine Learning. Education PhD. Princeton University, Princeton, New Jersey - July 2010 Major: Electrical Engineering - GPA 4.0/4.0 Thesis: Decisions in Distributed Wireless Networks with Imprecise Information Minors: Machine Learning and Computational Perception, Computer Science Advisor: Prof. A. Robert Calderbank Dissertation Reading Committee: Prof. Ashutosh Sabharwal, Prof. Vincent Poor Dissertation Oral Committee: Prof. Sergio Verdu, Prof. Paul Cuff, Prof. Peter Ramadge MA. Princeton University, Princeton, New Jersey - June 2007 Major: Electrical Engineering - GPA 4.0/4.0 Bachelor of Technology. Indian Institute of Technology, Kanpur - May 2005 Major: Electrical Engineering - GPA 9.6/10.0 Senior Thesis Advisor: Prof. R. K. Bansal Work Experience Purdue University, West Lafayette - Jan. 2015 - Current: Faculty in the Schools of Industrial Engineer- ing and Electrical and Computer Engineering (by courtesy) (Assistant Professor: 2015-2019, Associate Professor: 2019-2022, Full Professor: 2022-Current.), Leading Purdue CLAN (Machine Learning, and Networking Research) Labs, Affiliated Faculty Center of Intelligent Infrastructure (CII) with thrust lead on Artificial Intelligence Application, Affiliated Faculty Computational Science and Engineering Program (CSE), Affiliated Faculty Energy Center, Affiliated Faculty in the Center for Education and Research in Information Assurance and Security (CERIAS), Affiliate Faculty in the Center for Resilient Infrastructures, Systems, and Processes (CRISP), Affiliate Faciulty in the Center for Innovation in Control, Optimization, andNetworks(ICON),AffiliateFacultyinthePurdueQuantumScienceandEngineeringInstitute(PQSEI). KAUST, Saudi Arabia - May 2022 - Current: Visiting Professor in the Department of Computer Science. IIIT Delhi - Jan 2022 - Current: Adjunct Professor in the Department of Computer Science. Indian Institute of Science (IISc) Bangalore - May 2018 - Apr 2019. VAJRA Adjunct Faculty of Electrical Communications Engineering (Distinguished Visiting Professor) AT&T Labs Research, NJ - Aug. 2010 - Dec. 2014 (Florham Park, NJ till Sept. 2013 and Bedminster, NJ from Oct. 2013): Senior Member of Technical Staff-Research Research on erasure coded distributed storage, network virtualization, cloud based multimedia, machine Vaneet Aggarwal 2 learning, energy optimization, interference networks, geographical routing, cellular and WiFi systems. Columbia University, New York, NY - Aug. 2013 - Dec 2014: Adjunct Assistant Professor of Electrical Engineering Key Leadership Experience ACM Journal of Transportation Systems, co-Editor-in-Chief, 2022-Current Director of Potential NSF AI Institute on Human-AI Decision Making at Scale, 2021-current (went through university selection and NSF pre-proposal) Founding Technical Lead Purdue-TVS Advanced AI Program, 2021-Current AI Thrust Lead in Purdue CII, 2019-Current Lead of Purdue IE Seminar Committee, 2020-Current Founding Technical Lead Purdue-Intel Design For Security Badge Program, 2017-2019 Lead of AT&T Centre Recruiting, 2013-2014 Lead of Princeton Student Wireless Communication Reading Group, 2008-2010 Key Publications Machine Learning 1. JiayuChen,JingdiChen,TianLan,andVaneet Aggarwal,“Multi-agentCoveringOptionDiscovery based on Kronecker Product of Factor Graphs,” in Proc. Neurips, Dec 2022. 2. Qinbo Bai, Amrit Singh Bedi, Mridul Agarwal, Alec Koppel, and Vaneet Aggarwal, “Achieving Zero Constraint Violation for Constrained Reinforcement Learning via Primal-Dual Approach,” in Proc. AAAI, Feb 2022 (15% acceptance rate, 1349/9251). 3. Washim Uddin Mondal, Mridul Agarwal, Vaneet Aggarwal, and Satish Ukkusuri, “On the Approxi- mationofCooperativeHeterogeneousMulti-AgentReinforcementLearning(MARL)usingMeanField Control (MFC),” Journal of Machine Learning Research, Mar 2022 (received Best Paper Award in Proc. NeurIPS Workshop on Cooperative AI, Dec. 2021) 4. MridulAgarwal,VaneetAggarwal,ChristopherJ.Quinn,andAbhishekUmrawal,“DART:aDaptive AcceptRejecTfornon-lineartop-Ksubsetidentification,”inProc. AAAI,Feb2021(21%acceptance rate, 1692/7911, earlier versions of the paper appeared in ALT 2021 and ACM/IMS Transactions on Data Science, Nov 2021.) 5. WenqiWang,Vaneet Aggarwal,andShuchinAeron,“EfficientLowRankTensorRingCompletion,” in Proc. ICCV, Oct 2017 (28.9% acceptance rate) (Further use of tensor rings for compression of neural networks appeared in CVPR, Jun 2018) Federated/Fog Learning Vaneet Aggarwal 3 1. Anis Elgabli, Chaouki Ben Issaid, Amrit Singh Bedi, Ketan Rajawat , Mehdi Bennis, and Vaneet Aggarwal, “FedNew: A Communication-Efficient and Privacy-Preserving Newton-Type Method for Federated Learning,” in Proc. ICML, Jul 2022. 2. Seyyedali Hosseinalipour, Sheikh Shams Azam, Christopher G. Brinton, Nicolo Michelusi, Vaneet Aggarwal, David J. Love, Huaiyu Dai, “Multi-Stage Hybrid Federated Learning over Large-Scale Wireless Fog Networks,” Accepted to IEEE/ACM Transactions on Networking, Jan 2022. 3. Mridul Agarwal, Bhargav Ganguly, and Vaneet Aggarwal, “Communication Efficient Parallel Rein- forcement Learning,” in Proc. UAI, Jul 2021 (26.5% acceptance rate, 206/777). 4. SeyyedaliHosseinalipour,ChristopherG.Brinton,VaneetAggarwal,HuaiyuDai,andMungChiang, “From Federated Learning to Fog Learning: Towards Large-Scale Distributed Machine Learning in Heterogeneous Networks,” IEEE Communications Magazine, vol. 58, no. 12, pp. 41-47, December 2020, doi: 10.1109/MCOM.001.2000410. 5. AnisElgabli,JihongPark,AmritS.Bedi,MehdiBennis,andVaneetAggarwal,“GADMM:Fastand CommunicationEfficientFrameworkforDistributedMachineLearning,”JournalofMachineLearning Research, 21(76): 1-39, Mar 2020. Networking and Communications 1. Vaneet Aggarwal and Tian Lan, “Modeling and Optimization of Latency in Erasure-coded Storage Systems,” Now Foundations and Trends in Communication and Information Theory, Vol. 18, No. 3, pp 380-525, Jul 2021. 2. DivijaSwethaGadiraju,V.Lalitha,andVaneetAggarwal,“SecureRegeneratingCodesforReducing Storage and Bootstrap Costs in Sharded Blockchains,” in Proc. IEEE International Conference on Blockchain, Nov 2020 (16% acceptance rate, 36/225). 3. Anis Elgabli, Muhaman Felemban, and Vaneet Aggarwal, “GroupCast: Preference-Aware Coopera- tive Video Streaming with Scalable Video Coding,” IEEE/ACM Transactions on Networking, vol. 27, no. 3, pp. 1138-1150, June 2019 (Best Paper Award at Infocom HotPost Workshop). 4. Abubakr Alabbasi, Vaneet Aggarwal, and Moo-Ryong Ra, “Multi-tier Caching Analysis in CDN- based Over-the-top Video Streaming Systems,” IEEE/ACM Transactions on Networking, vol. 27, no. 2, pp. 835-847, April 2019. 5. Melissa Duarte, Ashutosh Sabharwal, Vaneet Aggarwal, Rittwik Jana, Kadangode Ramakrishnan, Chris Rice, and N. K. Shankar, “Design and Characterization of a Full-duplex Multi-antenna System for WiFi networks,” IEEE Transactions on Vehicular Tech., vol. 63, no. 3, pp. 1160-1177, March 2014. (2017 Jack Neubauer Memorial Award recognizing the Best Systems Paper published in the IEEE Transactions on Vehicular Technology) ML in Autonomous Transportation 1. Jiayu Chen, Abhishek K. Umrawal, Tian Lan, and Vaneet Aggarwal, “DeepFreight: A Model-free Deep-reinforcement-learning-based Algorithm for Multi-transfer Freight Delivery,” in Proc. ICAPS, Jun 2021 (29% acceptance rate). 2. Marina Haliem, Vaneet Aggarwal, and Bharat Bhargava, “AdaPool: A Diurnal-Adaptive Fleet ManagementFrameworkusingModel-FreeDeepReinforcementLearningandChangePointDetection,” Accepted to IEEE Transactions on Intelligent Transportation Systems, Aug 2021. (presented in part at ACM Buildsys 2020) Vaneet Aggarwal 4 3. KaushikManchella,AbhishekK.Umrawal,andVaneet Aggarwal,“FlexPool: ADistributedModel- Free Deep Reinforcement Learning Algorithm for Shared Passengers and Goods Delivery,” IEEE Transactions on Intelligent Transportation Systems, vol. 22, no. 4, pp. 2035-2047, April 2021, doi: 10.1109/TITS.2020.3048361. (presented at ACM Computer Science in Cars Symposium (CSCS), Dec 2020, and extended version in Neurips Workshop 2020). 4. Abubakr Alabbasi, Arnob Ghosh, and Vaneet Aggarwal, “DeepPool: Distributed Model-free Algo- rithm for Ride-sharing using Deep Reinforcement Learning,” IEEE Transactions on Intelligent Trans- portation, vol. 20, no. 12, pp. 4714-4727, Dec. 2019 (Featured also as a ICAPS 2020 Journal Track Paper). 5. Arnob Ghosh and Vaneet Aggarwal, “Electric Vehicle Charging with Menu-Based Pricing,” IEEE Transactions on Smart Grid, vol. 9, no. 6, pp. 5918-5929, Nov. 2018. Quantum Machine Learning 1. Mohammad Ali Javidian, Vaneet Aggarwal, and Zubin Jacob, “Quantum Causal Inference in the Presence of Hidden Common Causes: an Entropic Approach,” Accepted to Physical Review A, Nov 2022. 2. DebanjanKonar,AdityaDasSarma,SohamBhandary,SiddharthaBhattacharyya,AttilaCangia,and Vaneet Aggarwal, “A Shallow Hybrid Classical-Quantum Spiking Feedforward Neural Network for Noise-Robust Image Classification,” Applied Soft Computing, vol. 136, paper 110099, Mar 2023 3. Dheeraj Pedirredy, Vipul Bansal, Zubin Jacob, and Vaneet Aggarwal, “Tensor Ring Parametrized Variational Quantum Circuits for Large Scale Quantum Machine Learning,” NeurIPS Workshop on Quantum Tensor Networks in Machine Learning, Dec. 2021 4. Mohammad Ali Javidian, Vaneet Aggarwal, and Zubin Jacob, “Quantum Entropic Causal Infer- ence,” UAI Workshop, Jul 2021. 5. Vaneet AggarwalandA.RobertCalderbank,“BooleanFunctions,ProjectionOperators,andQuan- tumErrorCorrectingCodes,”IEEETrans. InformationTheory, vol.54, no.4, pp.1700-1707, Apr2008. Visiting Research Experience KAUST, Saudi Arabia - May 2022-current IIIT Delhi, India - May 2022 IISc Bangalore, India - May-Aug 2018 Air Force Research Lab, Rome NY - Jun-Aug 2015 Investigated placement of radar antennas for target localization Swiss Federal Institute of Technology (EPFL), Lausanne 2009: Research on compressive sensing with Prof. Suhas Diggavi 2004: Developing a virtual operating system based on the MIPS R3000 architecture Rice University, Houston, Texas - Summer 2007 and Spring 2009 Developing multi-round wireless protocols with Prof. Ashutosh Sabharwal Summer Internship: AT&T Labs Research, Florham Park, NJ - 2008 Developing multicast scheduling strategies for IPTV Vaneet Aggarwal 5 Summer Internship: Indian Institute of Technology Kanpur - Summer 2004 Accelerating OSPF convergence and introducing resilience to single node failures. Forensic analysis of 5km WLAN 802.11b link between IIT Kanpur and Mandhana Village leading to improved system design. Key Research Metrics as of 10 Mar 2023 Source: https://scholar.google.com/citations?user=Tu4lmGwAAAAJ Citations: 5996 h-index: 38 i10-index: 131 Honors & Awards 2021 NeurIPS Workshop Best Paper Award for paper [C128] 2020 Most Impactful Faculty Innovator, Purdue University. 2018 Infocom Workshop Best Paper Award for paper [C71] 2018 Visiting Advanced Joint Research (VAJRA) Award from Science and Engineering Research Board (SERB), India, for research in summers 2018 at IISc Bangalore 2017 Jack Neubauer Memorial AwardfortheBest SystemsPaperpublishedintheIEEETransactions on Vehicular Technology for paper [J18] Best-in-Session-Presentation Award in technical session“Cloud Storage” in IEEE Infocom 2017 for pa- per [C62] AT&T, Virtual University Research Initiative (VURI) Award, “Video Streaming over Cloud,” Mar 2016. Elevated to IEEE Senior Member, 2015 AirForceResearchLab,ResearchExtensionAward,“LocalizationwithMIMORadar/Multi-Dimensional Data Completion Algorithms/Joint Subspace Clustering and Data Completion,” Aug 2015. Visiting Faculty Research Program Award, Air Force Research Laboratory, Summer 2015. Senior Vice President Team Excellence Award - AT&T, 2014: forcoordinatinganaggressiveCentre recruiting program. The program was transparent, thorough and highly professional, engaging the entire organization in a positive activity that positions AT&T Labs Research (now AT&T Labs Advanced Tech- nologies) for the future. Finalist for Fierce Innovation Awards 2013: My work in small cell propagation models was chosen as a finalist for the industry innovation awards. COMSOC Multimedia Communications Technical Committee R-letters: for paper “Optimizing Cloud Resources for Delivering IPTV Services through Virtualization,” IEEE Transactions on Multimedia, Vaneet Aggarwal 6 June 2013, edited by Carl James Debono. The Review Board for R-letters aims at recommending recent state-of-the-art and emerging publications in the literature. AT&T Key Contributor Award, 2013: for technical contribution in AT&T. Vice President Excellence Award - AT&T, 3Q 2012: for experimenting with different models for small cell indoor RF propagation and recommending a model, which was later developed by Labs Analysis and Optimization Organization on their Hetnet Analysis and Resource Planning tool (currently in use by business). The Innovation Pipeline Executive Challenge Second Prize - AT&T, 2011: for solution to “How can AT&T leverage our network and technology to provide Pharmaceutical and Clinical Research Organi- zations with advanced tools for clinical trials in both the US and abroad?” Porter Ogden Jacobus Honorific Fellowship - 2009: The highest honor awarded by the Graduate School at Princeton. Four awards are made each year to recognize exceptional scholarly excellence and this award was made to Electrical Engineering student after thirteen years. Excellence in Teaching Award - 2008: Departmental award recognizes contributions to instruction of ELE 485 Signal Analysis and Communication Systems Princeton Research Symposium Poster Award - 2009: Princeton University community and the general public evaluates the research poster presentation at an Annual event Sridhar Memorial Prize - 2005: Top graduating student at the end of 7 semesters in Electrical Engi- neering at IIT Kanpur, separately recognized for academic excellence every year (2001-2004) Princeton University Fellowship - 2005 Research Funding CISCO,“ProficientReinforcementLearningandExplorationforOnlineNetworkManagement,”Apr2023- Mar 2024, Co-PI, Amount: $100,000 (PI: Tian Lan, GWU) Meta Research Award, “Reinforcement Learning for Online Service Placement in Cloud Management,” Jan 2023-Dec 2023, Co-PI, Amount: $300,000 (PI: Tian Lan, GWU) NSF,“FW-HTF-R:SensingtoEnableExpertDecision-MakinginHealthcare,”Nov2022-Oct2026,Co-PI, Amount: $300,000 (PI: Shweta Singh, Purdue) NSF, “FMRG: Eco: Cyber Enabled Transformation to Circular Supply Chains for Sustainable Pharmaceu- tical Manufacturing Networks ,” Oct 2021-Sept 2025, Co-PI, Amount: $200,000 (PI: Denny Yu, Purdue) NSF,“CIF:Small: SequentialDecisionMakingUnderUncertaintyWithSubmodularRewards,”Feb2022- Jan 2025, PI, Amount: $250,000 (Co-PI: Chris Quinn, Iowa State) Facebook Research Award, “Reinforcement Learning for Online Service Placement in Cloud Manage- ment,” Jan 2022-Dec 2022, Co-PI, Amount: $50,000 (PI: Tian Lan, GWU) NSF, “FW-HTF-R: Biometrics and AI to Support Expert Nurse Decision-Making,” Oct 2021-Sept 2025, Co-PI, Amount: $500,000 (PI: Denny Yu) Vaneet Aggarwal 7 CISCO, “Deeplace: Deep-Learning Online Service Placement in Edge Computing under Peak and Average Constraints,” Sept 2021-Aug 2024, PI, Amount: $100,000 (Co-PI: Tian Lan, GWU) DARPA, “Adaptive Quantum Perceptronics ,” Oct 2020-Sep 2021, Co-PI, Amount: $100,000 (PI: Zubin Jacob, Purdue) DARPA,“QuantumEntropicCausalInference,”Aug2020-Sep2021, Co-PI,Amount: $100,000(PI:Zubin Jacob, Purdue) NSF, “Collaborative Research: SWIFT: Small: Cross-Layer Interference Management: Bringing Interfer- enceAlignmenttoReality,”Oct2020-Sept2023,SeniorPersonnel,Amount: $30,000(PI:AlirezaVahid,UC Denver) DARPA,“GeneratingNoveltyinOpen-worldMulti-agentEnvironments(GNOME),”Nov. 2019-May2023, Co-PI, Amount: $350,000 (PI: Mayank Kejriwal, ISI) CISCO, Faculty Research Award, “Rethinking Erasure Codes for Cloud Storage: A Quantitative Frame- work for Latency, Reliability, and Cost Optimization,” PI, Jun 2019 - Dec 2020, Amount: $80,000 DARPA, “A Fundamental Theory for Dexterous Surgical Skills Transfer to Medical Robots,” Oct. 2018- Sept. 2021, Amount: $250,000 (PI: Juan Wachs, Purdue) National Science Foundation, “CIF: Small: Collaborative Research: Communications with Energy Har- vesting Nodes,” REU Supplement, PI, Aug. 2017-Aug. 2020, Amount: $7,800 AT&T,VirtualUniversityResearchInitiative(VURI)Award,“VideoStreamingoverCloud,”PI,Mar2016, Amount: $20,000 National Science Foundation, “CSR: Small: Collaborative Research: Rethinking Erasure Codes for Cloud Storage: A Quantitative Framework for Latency, Reliability, and Cost Optimization,” PI, Oct. 2016- Sept. 2021, Amount: $250,000 National Science Foundation, “CIF: Small: Collaborative Research: Communications with Energy Har- vesting Nodes,” Award 1527486, PI, Sept. 2015-Aug. 2020, Amount: $229,504 AirForceResearchLab,ResearchExtensionAward,“LocalizationwithMIMORadar/Multi-Dimensional DataCompletionAlgorithms/JointSubspaceClusteringandDataCompletion,”PI,Aug-Dec2015,Amount: $10,000 Teaching Experience Purdue University: IE69000 Mathematics of Data Science, Spring 2022. IE59000 Security Applications, Spring 2022. IE59000 Predictive Models, Spring 2022. IE47400 Industrial Control Systems, Fall 2021. Vaneet Aggarwal 8 IE53600 Stochastic Models in Operations Research, Spring 2021. IE47400 Industrial Control Systems, Fall 2020. Purdue IMPACT-X (Instruction Matters: Purdue Academic Course Transformation) Fellow, Summer 2020 for redesigning courses to create student-centered teaching and learning environments. IE69000 Mathematics of Data Science, Fall 2019. IE59000 Security Applications, Fall 2019. IE53600 Stochastic Models in Operations Research, Spring 2019. IE49000 Introduction to Data Science, Spring 2019. IE59000 Security Applications, Spring 2019. IE69000 Scheduling in Computer Systems, Fall 2018. IE49000 Introduction to Data Science, Spring 2018. Purdue IMPACT (Instruction Matters: Purdue Academic Course Transformation) Fellow, Fall 2017 for re- designing courses to create student-centered teaching and learning environments. IE33600 Operations Research - Stochastic Models, Fall 2017. IE53600 Stochastic Models in Operations Research, Spring 2017. IE69000 Mathematics of Data Science, Fall 2016. IE33600 Operations Research - Stochastic Models, Fall 2016. IE53600 Stochastic Models in Operations Research, Spring 2016. IE33600 Operations Research - Stochastic Models, Fall 2015. IE53600 Stochastic Models in Operations Research, Spring 2015. KAUST: CS 394V: Contemporary Topics in Reinforcement Learning, Fall 2022. Columbia University: ELEN E6713 Topics in Comm: Cooperative Wireless Communication Systems, Fall 2013. Princeton University: ELE 485 Signal Analysis and Communication Systems: Assisted Prof. Stuart C. Schwartz (2006 and 2007) and Adjunct Prof. Paul Henry (2008) by organizing labs, giving precepts to undergraduates, setting home- work and exams. Vaneet Aggarwal 9 Direction of Research Advisor for Postdoc Researchers Debanjan Konar, 2023-current Mohammad Perdramfar, 2023-current Washim Uddin Mondal, 2021-current (joint with Prof. Satish Ukkusuri) Rakhi Pratihar, 2022-2023 (joint with Prof. Anuradha Sharma, IIITD) Mohammad Ali Javidian, 2020-2022 (joint with Prof. Zubin Jacob) Fanglin Bao, Purdue University, 2019-2020 (joint with Prof. Zubin Jacob) Arnob Ghosh, Purdue University, 2016-2019 Ke Liu, Purdue University, 2017-2019 Thesis Advisor for PhD students (Current) Guangchen Lan, Management, Purdue University, 2023-current Fares Fourati, ECE, KAUST, 2022-current (joint with Prof. M.S. Alouini) Dipesh Tamboli, ECE, Purdue University, 2022-current Jiayu Chen, IE, Purdue University, 2021-current Bhargav Ganguly, IE, Purdue University, 2021-current Mudit Gaur, Stats, Purdue University, 2021-current Qinbo Bai, ECE, Purdue University, 2019-Current Dheeraj Pedireddy, IE, Purdue University, 2019-current Abhishek Umrawal, IE, Purdue University, 2019-current (awarded VIP Graduate Student Mentor Award 2019; Bilsland Dissertation Fellowship Award 2022) Chang-Lin Chen, ECE, Purdue University, 2019-current Thesis Advisor for PhD students (Graduated Students) Mridul Aggarwal, ECE, Purdue University, 2018-2022 AbubakrAlabassi, IE,PurdueUniversity, 2016-2019(AwardedRossFellowshipAward, 2016andHonorable Mention Outstanding Graduate Student Research Award 2019) Anis Elgabli, ECE, Purdue University, (joint with Prof. Mark Bell) 2015-2018 Wenqi Wang, IE, Purdue University, 2015-2018 (Awarded Bilsland Dissertation Fellowship Award, 2017) Mehdi Ashraphijuo, ECE, Columbia University, (joint with Prof. Xiaodong Wang), 2012-2016 (awarded Qualcomm Innovation Fellowship, 2014) Yu Xiang, ECE, George Washington University, (joint with Prof. Tian Lan), 2012-2015 Mentoring/ co-supervising PhD students while at AT&T: Achaleshwar Sahai, Rice University (Feedback in Interference Channels, 2009-2010) Alireza Vahid, Cornell University (Local View in Interference Channels, 2010-2011) Kanes Sutuntivorakoon, Cornell University (Local View in Interference Channels, 2010-2011) Pedro Santacruz, Rice University (Local View in Interference Channels, 2010-2013) Melissa Duarte, Rice University (Full Duplex wireless systems, 2011-2012) Khawla Alnajjar, Columbia University (Interference Alignment, 2011-2012) Dinesh Bharadia, Stanford University (Full Duplex wireless systems, 2012-2013) Robert Margolies, Columbia University (Cellular Signal Prediction, 2012-2013) Tingting Sun, Rutgers University (Full Duplex wireless systems, 2012-2013) Zhe Wang, Columbia University (Energy Harvesting for Wireless Networks, 2012-2014) Fraida Fund, Polytechnic Institute of NYU, (Device to Device Communications, Summer 2013) Uri Livnat, Columbia University, (Optimization for Small Cells, 2013-2014) Hongyao Ma, Harvard University, (Tensor Completion at multiple resolutions, Summer 2013) Rajarajan Sivaraj, UC Davis, (LTE Heterogenous Networks, 2013-2014) Shayan Saeed, UIUC (Realtime Storage Systems, Summer 2014) Xiao-Yang Liu (Adaptive Tensor Completion for RF Fingerprinting, 2014-2015) Vaneet Aggarwal 10 Thesis Advisor for MS Research students (Current) Veni Goyal, Purdue University, 2022-current Pulkit Mundra, Purdue University, 2022-current Thesis Advisor for MS Research students at Purdue (Graduated) Madhu Lekha Guntaka, Purdue University, 2020-2021 (joint with Prof. Dharmendra Saraswat) Zequn Li, Purdue University, 2020-2021 (joint with Prof. Hua Cai) Anirudh Shankar, Purdue University, 2019-2021 Kaushik Manchella, Purdue University, 2019-2020 Ashutosh Singh, Purdue University, 2019-2020 Mayank Gupta, Purdue University, 2016-2018 Vineeth CR, Purdue University, 2016- 2018 Zijian He, Purdue Universty, 2015-2016 Jingxian Fan, Purdue University, 2015-2016 Advisor for Undergraduate Research (Current) Kathy Niu, ECE, Purdue University Advisor for Undergraduate Research (Previous) Aaryan Garg, ECE, Spring 2021, Summer 2021 (funded through Purdue SummerStay) Shivangi Agarwal, CS, Summer 2020 (funded through Purdue SummerStay) Olamidotun Folajimi Akinnola, ECE, Fall 2019 Aarushi Bannerjee, CS, Fall 2019, Spring 2020 Siyuan Cao, IE (Independent Study, Fall 2017) Lingjun Chen, Statistics (Independent Study, Fall 2017, Spring 2018) Ved Rajesh Dave, ECE, Fall 2019, Spring 2020 Kosei William Dohi, Physics and Statistics, Summer 2022 (funded through Purdue SummerStay ) Chufan Gao, Computer Science (funded through Purdue SummerStay, Summer 2017, Independent Study, Fall 2017, Spring 2018) Zaid Al Haddadin, Computer Science (funded through Purdue SummerStay, Summer 2016) He Huang, Computer Science (Independent Study, Fall 2016, Spring 2017) Jae Joong Li, Computer Science (Independent Study, Spring 2017, Fall 2017, Spring 2018) Nanyi Jiang, Computer Science, Summer 2022 (funded through Purdue SummerStay ) Jeremiah S Johnson, Computer Science (funded through REU supplement, Fall 2017, Spring 2018) Nolan Lewis, AAE (funded through Purdue SummerStay, Summer 2017) Deeptanshu Malik, Computer Engineering (funded through Purdue SummerStay, Summer 2016) Kartikeya Mishra, ECE (funded through Purdue SummerStay, Summer 2017) Mahira Morris, ECE, Fall 2019 Daniyaal Shoaib Rasheed, CS, Fall 2019 Austin Sale, ECE, Fall 2019, Spring 2020 Anurag Shah, CS, Spring 2020, Summer 2020 (funded in part through Purdue SURF) AbhimanyuSharma,ComputerScience(fundedthroughREUsupplement,Fall2017,Spring2018,Fall2018) Pratyaksh Sharma, Computer Engineering (funded through Purdue SummerStay, Summer 2017) Raymond Susilo, Industrial Engineering (Summer 2016) Haobo Wang, CS, Summer 2019, Fall 2019, Spring 2020 Wenqin Yi, Industrial Engineering (Independent Study, Spring 2017) Haozhe Zhou, CS, Summer 2020 (funded through Purdue SummerStay) Mentoring Undergraduate Research(at Princeton): Led the ELE Senior Thesis writing group and guided a physics senior thesis in quantum computing (David Zaslavsky in 2008)

Description:
2004: Developing a virtual operating system based on the MIPS R3000 .. [J6] Vaneet Aggarwal, Lalitha Sankar, A. Robert Calderbank, and H.
See more

The list of books you might like

Most books are stored in the elastic cloud where traffic is expensive. For this reason, we have a limit on daily download.