Machine Learning is a science that comprises algorithms to enable learning and decision making in machines. At MLL we focus on developing theory and further applications of such algorithms.
Research Areas
Machine Learning: Robustness, Privacy, Fairness and Scalability, Learning Theory
Reinforcement Learning, Online Learning, Self/Semi Supervised Learning
Multi-Agent Systems
ML or Graphs
Geometric Deep Learning, 3D Computer Vision
Game Theory and Mechanism Design
Blockchains and Distributing Trust
Lab Achievements
Multiple papers in prestigious conferences /Journals like AAAI, IJCAI, AAMAS, PAKDD, ICBC, EACL, IJCNN, PRICAI, JAMMAS, etc. in 2023. (10+ A* papers, 30+ reputed publication in a year)
PowerTAC Winner: MLL (IIITH-TCS Team) 2022,2021, (runner-up 2018)
Best Paper Awards HCII’23, PRICAI’22 (runner up), DAI’21, CODSCOMA’20 (runner-up)
Industry Collaborations
Xtraliving: Human Pose Estimation in Fitness
Fujitsu Research: Domain Adaptation for 3D Point Clouds
MEITY: Unified Blockchain Framework
CognitiveScale: Explainable and Robust Al
JPMC: Private Federated Learning
BEL: Game Theory and Multi Agent Systems
KoinEarth: Mechanism Design for Blockchains