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Jees Augustine
Jees Augustine
Microsoft Corporation
E-mail confirmado em mavs.uta.edu - Página inicial
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Deep learning models for selectivity estimation of multi-attribute queries
S Hasan, S Thirumuruganathan, J Augustine, N Koudas, G Das
Proceedings of the 2020 ACM SIGMOD International Conference on Management of …, 2020
962020
Multi-attribute selectivity estimation using deep learning
S Hasan, S Thirumuruganathan, J Augustine, N Koudas, G Das
arXiv preprint arXiv:1903.09999, 2019
272019
Leveraging similarity joins for signal reconstruction
A Asudeh, A Nazi, J Augustine, S Thirumuruganathan, N Zhang, G Das, ...
Proceedings of the VLDB Endowment 11 (10), 1276-1288, 2018
62018
Scalable algorithms for signal reconstruction by leveraging similarity joins
A Asudeh, J Augustine, A Nazi, S Thirumuruganathan, N Zhang, G Das, ...
The VLDB Journal 29 (2), 681-707, 2020
42020
Efficient signal reconstruction for a broad range of applications
A Asudeh, J Augustine, A Nazi, S Thirumuruganathan, N Zhang, G Das, ...
ACM SIGMOD Record 48 (1), 42-49, 2019
42019
A generalized approach for reducing expensive distance calls for a broad class of proximity problems
J Augustine, S Shetiya, M Esfandiari, S Basu Roy, G Das
Proceedings of the 2021 International Conference on Management of Data, 142-154, 2021
32021
Orca-sr: A real-time traffic engineering framework leveraging similarity joins
J Augustine, S Shetiya, A Asudeh, S Thirumuruganathan, A Nazi, ...
Proceedings of the VLDB Endowment 13 (12), 2020
12020
Scalable signal reconstruction for a broad range of applications
A Asudeh, J Augustine, S Thirumuruganathan, A Nazi, N Zhang, G Das, ...
Communications of the ACM 64 (2), 106-115, 2021
2021
Generalized Algorithmic Frameworks for Optimizing Distance Calls in Generalized Metric Space Proximity Problems and Methods for Realizing Efficient Signal Reconstruction
J Augustine
The University of Texas at Arlington, 2020
2020
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