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Team SUTD @ Singapore Amazing Flying Machine Competition (SAFMC) 2022
Team SUTD @ Singapore Amazing Flying Machine Competition (SAFMC) 2022
HASS Colloquium Series: Supplying Colors and en-Route Science: German Synthetic Dyestuffs in Modern China in the Early 20th Century by Ms. Lejie Zeng
At the turn of the 20th century, the German organic chemical industry began exporting coal tar-based synthetic dyestuffs to China.
ESD Research Seminar by Marvin Carl May – Semiconductor fab system level time-constraint control with uncertainty informed machine learning
ESD Research Seminar by Marvin Carl May – Semiconductor manufacturing systems, fabs, are the most complex manufacturing systems. They provide an ideal environment for the conception of intelligent production control algorithms. A major complexity driver are time-constraints, that limit the maximum time between two processes.
Congratulations to Assistant Professor Peng Song and Collaborators for Winning the Best Paper Award at SMI 2024
Congratulations to Assistant Professor Peng Song and Collaborators for Winning the Best Paper Award at SMI 2024
Feng Ling (A*STAR) – Optimal Machine Intelligence at the Edge of Chaos and Initial Applications to Model Training
Feng Ling (A*STAR) – Optimal Machine Intelligence at the Edge of Chaos and Initial Applications to Model Training
KANG Jacob
Lecturer
ESD Research Seminar by Mingmei Li & Benjamin Tan – Presentations by the Aviation Studies Institute
ESD Research Seminar by Mingmei Li & Benjamin Tan – ASI will present two topics, “Estimating Hub Traffic Share on the ‘Kangaroo Route’ via an Aggregate Itinerary Choice Model” and “Air Traffic Delay Propagation and Root Cause Identification through Trajectory-Based Optimisation Analysis”.
DATEPHANYAWAT Jetanat
PhD Student
Yan Shuo Tan (National University of Singapore) – Understanding and Overcoming the Statistical Limitations of Decision Trees
Yan Shuo Tan (National University of Singapore) – Understanding and Overcoming the Statistical Limitations of Decision Trees