
Akshita Jha
Ph.D. Student @ Virginia Tech
stereotypes
fairness
transformers
benchmark
gpt-3
llms
programming language models
cross cultural nlp
long document matching
sustainable nlp
palm
text-to-image models
adversarial attacks
stable diffusion
robustness
5
presentations
5
number of views
SHORT BIO
I’m a 4th year Computer Science Ph.D. student at Virginia Tech advised by Dr. Chandan Reddy. My research interests fall broadly under the umbrella of trustworthy and responsible AI with a focus on fairness, interpretability, and robustness of deep learning models – particularly in the domain of natural language processing (NLP). I work on identifying vulnerabilities of large language models (LLMs) and building systems that are fair, interpretable, and robust to adversarial perturbations in the input.
Presentations

ViSAGe: A Global-Scale Analysis of Visual Stereotypes in Text-to-Image Generation
Akshita Jha and 7 other authors

SeeGULL: A Stereotype Benchmark with Broad Geo-Cultural Coverage Leveraging Generative Models
Akshita Jha and 5 other authors

Building Stereotype Repositories with Complementary Approaches for Scale and Depth
Sunipa Dev and 5 other authors

Transformer-based Models for Long-Form Document Matching: Challenges and Empirical Analysis
Akshita Jha and 4 other authors

Code Attack: Code-based Adversarial Attacks for Pre-Trained Programming Language Models
Akshita Jha and 1 other author