CSE

Synthetic Data Generation

Worked in collaboration with Medic Mobile and Dimagi, to use ML & AI tools to generate, assess synthetic patient data and provide recommendations for its development & use so that partners can create health tools that work for everyone.

A-Problem-A-Day

Daily Challenge of solving atleast one Competitive Programming question.

DEAP Cache (Deep Eviction Admission and Prefetching for Cache)

Pytorch codebase for DEAP Cache.

gym-drug-vaccine

Created an OpenAI gym environment for Policy Optimisation in the drug/vaccine disribution problem using Reinforcement Learning. Codebase for VacSIM.

PyTorch Connectomics

Deep Learning Framework developed for automatic and semi-automatic data annotation in connectomics. Contributed during internship at Lichtman Lab, Harvard University.

rEEGard (robust algorithm for EEG-based automated seizure diagnosis)

Classification of EEG Signals into focal and non-focal epileptic type using Machine Learning and Deep Learning architectures. Manuscript in preparation stage.

Papers-We-Read

Summaries of the papers that are discussed by VLG(Vision and Language Group) IIT Roorkee.