Recent News
My first-author paper "ESCORT: Efficient Stein-variational and Sliced Consistency-Optimized Temporal Belief Representation for POMDPs" has been accepted at NeurIPS 2025!
My co-authored paper "NS-Gym: Open-Source Simulation Environments and Benchmarks for Non-Stationary Markov Decision Processes" has been accepted at NeurIPS 2025 Datasets & Benchmarks Track!
My first-author paper "Observation Adaptation via Annealed Importance Resampling for Partially Observable Markov Decision Processes" has been accepted at ICAPS 2025!
My first-author "Shrinking POMCP: A Framework for Real-Time UAV Search and Rescue" paper has been accepted at ICAA 2024!
Research Overview
My research focuses on developing robust algorithms for sequential decision-making under uncertainty, particularly in partially observable and non-stationary environments. I design novel belief representation methods and adaptive planning algorithms that enable autonomous agents to maintain accurate probabilistic models and make optimal decisions despite limited observability and environmental changes.
My work spans theoretical contributions in POMDPs and Monte Carlo tree search to practical applications in autonomous systems and energy management.
Research Areas
Current Focus
Developing scalable belief approximation methods for high-dimensional, multi-modal distributions in POMDPs, with applications to UAV search and rescue, smart grid optimization, and adaptive decision-making systems.