
Mayank Kulkarni
Bloomberg
controllable summarization
abstractive summarization
sampling
summarization
named entity recognition
few-shot
cross domain
clustering
extractive summarization
keyphrase extraction
controllable generation
conditional text extraction
entity-centric summarization
fine-tuning
4
presentations
4
number of views
SHORT BIO
Mayank Kulkarni is a Senior Research Scientist in Bloomberg’s AI Engineering Group, where he is working on building models and scalable infrastructure for real-world solutions that require information extraction and sentiment analysis. His research interests are focused on Keyphrase Extraction, Keyphrase Generation, Named Entity Recognition, Summarization, Language Modeling, Dialogue Understanding, and Code & Natural Language Generation across various domains, ranging from Education to Social Media and News. Prior to joining Bloomberg, Mayank earned his Master’s in Computer Science at University of Florida, during which time he served as a graduate student researcher in the LearnDialogue Lab.
Presentations

Clustering-based Sampling for Few-Shot Cross-Domain Keyphrase Extraction
Prakamya Mishra and 4 other authors

EntSUMv2: Dataset, Models and Evaluation for More Abstractive Entity-Centric Summarization | VIDEO
Dhruv Mehra and 4 other authors

Learning Rich Representation of Keyphrases from Text
Mayank Kulkarni

EntSUM: A Data Set for Entity-Centric Extractive Summarization
Mounica Maddela and 2 other authors