1 code implementation • 24 Dec 2021 • Rishabh Ranjan, Siddharth Grover, Sourav Medya, Venkatesan Chakaravarthy, Yogish Sabharwal, Sayan Ranu
Further, owing to its pair-independent embeddings and theoretical properties, NEUROSED allows approximately 3 orders of magnitude faster retrieval of graphs and subgraphs.
no code implementations • 29 Sep 2021 • Rishabh Ranjan, Siddharth Grover, Sourav Medya, Venkatesan Chakaravarthy, Yogish Sabharwal, Sayan Ranu
Subgraph edit distance (SED) is one of the most expressive measures of subgraph similarity.
no code implementations • 16 Sep 2021 • Venkatesan T. Chakaravarthy, Shivmaran S. Pandian, Saurabh Raje, Yogish Sabharwal, Toyotaro Suzumura, Shashanka Ubaru
We present distributed algorithms for training dynamic Graph Neural Networks (GNN) on large scale graphs spanning multi-node, multi-GPU systems.
no code implementations • 24 Jun 2020 • Vaibhav Saxena, K. R. Jayaram, Saurav Basu, Yogish Sabharwal, Ashish Verma
We design a fast dynamic programming based optimizer to solve this problem in real-time to determine jobs that can be scaled up/down, and use this optimizer in an autoscaler to dynamically change the allocated resources and batch sizes of individual DL jobs.
1 code implementation • ICML 2020 • Saurabh Goyal, Anamitra R. Choudhury, Saurabh M. Raje, Venkatesan T. Chakaravarthy, Yogish Sabharwal, Ashish Verma
We demonstrate that our method attains up to 6. 8x reduction in inference time with <1% loss in accuracy when applied over ALBERT, a highly compressed version of BERT.
no code implementations • 20 Oct 2018 • Saurabh Goyal, Anamitra R Choudhury, Vivek Sharma, Yogish Sabharwal, Ashish Verma
Large number of weights in deep neural networks make the models difficult to be deployed in low memory environments such as, mobile phones, IOT edge devices as well as "inferencing as a service" environments on the cloud.
no code implementations • 1 Nov 2017 • Dharma Teja Vooturi, Saurabh Goyal, Anamitra R. Choudhury, Yogish Sabharwal, Ashish Verma
Large number of weights in deep neural networks makes the models difficult to be deployed in low memory environments such as, mobile phones, IOT edge devices as well as "inferencing as a service" environments on cloud.
no code implementations • 10 Oct 2012 • Venkatesan Chakaravarthy, Arindam Pal, Sambuddha Roy, Yogish Sabharwal
In this paper, we consider the problem of choosing a minimum cost set of resources for executing a specified set of jobs.
Data Structures and Algorithms