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UID:69656-1637074800-1637076600@c2smart.engineering.nyu.edu
SUMMARY:Roadmap to Cooperative & Automated Transportation
DESCRIPTION:The world has placed high hopes in automated vehicle (AV) technologies in revolutionizing transportation system performance\, including multiplying roadway capacity and minimizing energy consumption. However\, research conducted by Dr. Xiaopeng (Shaw) Li and colleagues has found that existing production AVs exhibit comparable or even inferior performance compared to human-driven vehicles (HDV). To bridge this gap and realize the full potential of AVs\, Dr. Li will propose a roadmap of cooperative & automated transportation\, from optimal trajectory control in ideal conditions through a cooperative control framework incorporating edge computing and machine learning under real-world constraints. This analysis of ideal conditions (e.g.\, pure AV with perfect information and control) reveals critical theoretical properties specifying feasible time-space ranges of AV movements. Combined with customized mathematical programming and control methods\, these properties lead to efficient solutions (e.g.\, in milliseconds) to real-time optimal trajectory planning problems. The solutions discussed by Dr. Li will serve as the building blocks for solving more realistic AV control problems (e.g.\, traffic mixed with human drivers\, considering different cooperation classes\, with stochasticity and errors).
URL:https://c2smart.engineering.nyu.edu/event/roadmap-to-cooperative-automated-transportation/
LOCATION:Virtual\, 6 MetroTech Center\, Brooklyn\, NY\, 11201\, United States
CATEGORIES:Connected & Autonomous Mobility,Virtual Events
ORGANIZER;CN="C2SMART":MAILTO:c2smart@nyu.edu
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LAST-MODIFIED:20211117T190826Z
UID:69667-1637074800-1637078400@c2smart.engineering.nyu.edu
SUMMARY:Natural language processing methods for textual similarity using Python
DESCRIPTION:In this session\, you will learn the basics of text representation in natural language processing (NLP) and various state-of-the-art NLP techniques for (semantic) textual similarity tasks. We will walk through data preparation and processing steps with language modeling tools in Python (e.g.\, Doc2Vec\, Sentence-BERT) for computing text/document similarity and discuss several practical applications of such NLP techniques in transportation related downstream tasks. \nClick Here to View Video Recording
URL:https://c2smart.engineering.nyu.edu/event/natural-language-processing-methods-for-textual-similarity-using-python/
CATEGORIES:Virtual Events
ORGANIZER;CN="C2SMART":MAILTO:c2smart@nyu.edu
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