Posts by Collection

portfolio

Portfolio item number 1

Short description of portfolio item number 1

Portfolio item number 2

Short description of portfolio item number 2

publications

Dermatological disease detection using image processing and machine learning

Published in AIPR, 2016

Uses a combination of classical Machine learning models to leverage the features extracted using CV todiagnose skin diseases.

Neu0

Published in ICLR Workshop, 2017

Used state of the art deep-learning models at the time to research and develop neural computational models capable of executing code. Conceptualized “Program Embeddings” – a vectorized representation of Assembly Language program statements (eg. ARM, MIPS). Augmented the Neural Turing machine with novel ways to access large main memory, a fuzzy register bank and an instruction bank. Ensembled Neural Networks whose execution was governed by the NTM controller and program counter to learn to execute ARM code from examples.

Code available here

View results here

Quantifying the Effect of In-Domain Distributed Word Representations: A Study of Privacy Policies

Published in PAL, AAAI Spring Symposium, 2018

A detailed study on the impact of in-domain word embeddings to understand and interpret privacy policies. Visualized the word embeddings to identify the clusters of words which are specific to a privacy policy.

Dr.Quad at MEDIQA 2019: Towards Textual Inference and Question Entailment using contextualized representations

Published in MediQA, ACL, 2019

Presents an indepth study of using textual entailment in the field of medicine to incorporate domain knowledge in State of the art Systems. We use state of the art BERT models to perform both question entailment and inference on sentences. We then use the results of both of these models to filter relevant answers for a question.

WriterForcing: Generating more interesting story endings

Published in Storytelling workshop, ACL, 2019

This project aims to generate diverse and interesting story endings by forcing to attend on the keywords present in the story.Builds on the simple attention of Sequence to Sequence models by using ITF loss and ”forcing” loss to generate more interesting endings to a given story context

Code available here

View results here

talks

Carnegie Mellon University

Published:

This is a description of your talk, which is a markdown files that can be all markdown-ified like any other post. Yay markdown!

Tutorial 1 on Relevant Topic in Your Field

Published:

More information here

Talk 2 on Relevant Topic in Your Field

Published:

More information here

Conference Proceeding talk 3 on Relevant Topic in Your Field

Published:

This is a description of your conference proceedings talk, note the different field in type. You can put anything in this field.

teaching

Teaching experience 1

Undergraduate course, University 1, Department, 2014

This is a description of a teaching experience. You can use markdown like any other post.

Teaching experience 2

Workshop, University 1, Department, 2015

This is a description of a teaching experience. You can use markdown like any other post.