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Atula Tejaswi
I am a PhD student in Computer Science at The University of Texas at Austin, advised by Prof. Sujay Sanghavi. I received my Master's degree in CS from UT, and my Bachelor's degree in CSE from Manipal Institute of Technology. During this time, I have had the opportunity to work with Prof. Mrinmaya Sachan (ETH Zürich), Prof. Lucie Flek (University of Marburg), Prof. Marie-Jean Meurs (MITACS Globalink, University of Quebec in Montreal), and Prof. Aditya Gopalan (Indian Institute of Science), and Prof. Eunsol Choi (UT Austin/NYU).
CV | Google Scholar | Semantic Scholar | LinkedIn | Github | Colab Notebooks
Research Interests
My general interests are in Deep Learning and Natural Language Processing. My research aims to advance AI systems that exhibit genuine robustness, intelligence, and continuous adaptivity. I am interested in all critical aspects related to this, including innovative modeling techniques, strategic data utilization, rigorous benchmarking methodologies, and ensuring safety and inherent resilience.
I have previously worked on a broad range of NLP and ML application domains including Computational Social Science, Multimodal Learning, and Privacy-Preserving Deep Learning.
Papers
* indicates equal contribution-
RARe: Retrieval Augmented Retrieval With In-Context Examples
Atula Tejaswi, Yoonsang Lee, Sujay Sanghavi*, Eunsol Choi*
COLM 2025
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Exploring Design Choices for Building Language-Specific LLMs
Atula Tejaswi*, Nilesh Gupta*, Eunsol Choi
EMNLP 2024 (Findings)
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SVFT: Parameter-Efficient Fine-Tuning with Singular Vectors
Vijay Lingam*, Atula Tejaswi*, Aditya Vavre*, Aneesh Shetty*, Gautham Krishna Gudur*, Joydeep Ghosh, Alex Dimakis, Eunsol Choi, Aleksandar Bojchevski, Sujay Sanghavi
NeurIPS 2024
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Early Weight Averaging meets High Learning Rates for LLM Pre-training
Sunny Sanyal*, Atula Tejaswi*, Jean Kaddour, Abhishek Kumar, Sujay Sanghavi
COLM 2024
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The Impact of Differential Privacy on Group Disparity Mitigation
Victor Petrén Bach Hansen*, Atula Tejaswi*, Ramit Sawhney, Lucie Flek, Anders Søgaard
NAACL 2024 (Findings)
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RISE: Robust Early-exiting Internal Classifiers for Suicide Risk Evaluation
Ritesh Soun, Atula Tejaswi, Ramit Sawhney, Nikolaos Aletras, Preslav Nakov
LREC COLING 2024
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Saliency-Aware Interpolative Augmentation for Multimodal Financial Prediction
Samyak Jain*, Parth Chhabra*, Atula Tejaswi*, Puneet Mathur, Ramit Sawhney, Shivam Agarwal, Preslav Nakov, Sudheer Chava, Dinesh Manocha
LREC COLING 2024
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Learning Through Interpolative Augmentation of Dynamic Curvature Spaces
Parth Chhabra*, Atula Tejaswi*, Shivam Agarwal, Ramit Sawhney, Megh Thakkar, Preslav Nakov, Sudheer Chava
SIGIR 2023
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How Much User Context Do We Need? Privacy by Design in Mental Health NLP Applications
Ramit Sawhney*, Atula Tejaswi*, Ivan Habernal, Lucie Flek
ICWSM 2023
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Tweet Based Reach Aware Temporal Attention Network for NFT Valuation
Ramit Sawhney, Megh Thakkar, Ritesh Soun, Atula Tejaswi, Vasu Sharma, Dipanwita Guhathakurta, Sudheer Chava
EMNLP 2022 (Findings)
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MONOPOLY: Financial Prediction from MONetary POLicY Conference Videos Using Multimodal Cues
Puneet Mathur, Atula Tejaswi, Malika Chhibber, Ramit Sawhney, Fu-Ming Guo, Franck Dernoncourt, Sanghamitra Dutta, Dinesh Manocha
ACM Multimedia 2022
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Towards Suicide Ideation Detection Through Online Conversational Context
Ramit Sawhney*, Shivam Agarwal*, Atula Tejaswi*, Nikolaos Aletras, Preslav Nakov, Lucie Flek
SIGIR 2022
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Orthogonal Multi-Manifold Enriching of Directed Networks
Ramit Sawhney*, Shivam Agarwal*, Atula Tejaswi*, Kapil Pathak*
AISTATS 2022
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A Risk-Averse Mechanism for Suicidality Assessment on Social Media
Ramit Sawhney*, Atula Tejaswi*, Manas Gaur
ACL 2022
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Intermix: An Interference-Based Data Augmentation and Regularization Technique for Automatic Deep Sound Classification
Ramit Sawhney, Atula Tejaswi
ICASSP 2022
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