Search
Skip to Search Results- 161Machine Learning
- 85Artificial Intelligence
- 30Natural Language Processing
- 27Reinforcement Learning
- 20Deep Learning
- 14Computer Vision
- 189Graduate and Postdoctoral Studies (GPS), Faculty of
- 189Graduate and Postdoctoral Studies (GPS), Faculty of/Theses and Dissertations
- 23Computing Science, Department of
- 22Computing Science, Department of/Technical Reports (Computing Science)
- 7WISEST Summer Research Program
- 7WISEST Summer Research Program/WISEST Research Posters
- 189Thesis
- 25Report
- 9Research Material
- 7Conference/Workshop Poster
- 5Article (Published)
- 2Conference/Workshop Presentation
-
2017-12-01
Jeff Cho, Shelby Carleton, Aidan Herron, Maddy Hebert, Brandon Wieliczko, Kieran Downs
turing is a text adventure-style game created in RenPy using a custom-built text adventure engine. In this game, you play as a new employee of the mysterious Electric Sheep Inc. screening “candidates” through a chat interface to determine whether they are human or AI. Your interface to this...
-
[Review of the book Formal Methods in Artificial Intelligence, by Aamsay]
1996
Introduction: Many universities teach artificial intelligence (AI) by having one undergraduate course that introduces students to a very wide variety of topics, usually including search and search heuristics, representational systems (including formal logic), problem solving, vision, expert...
-
1991
Pelletier, Francis J., Schubert, Lenhart
Introduction: This very short book is apparently intended as a supplementary text in a graduate AI course. The author describes it as a \"text and reference work on the applications of non-standard logics to artificial intelligence (AI).\" It gives short and concise (too short and too concise, in...
-
Spring 2023
With rising demands in industry for reliable electrical cable distribution networks comes an inherent need for utility providers to know well the condition of the assets in their network. Heightened expectations from regulators and consumers require methods of reliability assessment to improve...
-
A Data-Driven Neural Network Model to Correct Derived Features in a RANS-Based Simulation of the Flow Around a Sharp-Edge Bluff Body
DownloadSpring 2023
In this dissertation, a machine-learning method is utilized to enhance the accuracy of wake parameters calculated by Reynolds Averaged Navier Stokes (RANS) k-ω SST model of flow on and around wall-mounted rectangular cylinders. Using high-quality results from Large Eddy Simulation (LES), this...
-
Fall 2021
Mohammadhosseinzadeh Golabchi, Hamidreza
Considering the high rates of labor resources in construction projects clearly indicates the importance of appropriate labor resource management methods. Accurate labor resource allocation is a substantial step towards successful labor resource management. With the recent developments in the area...
-
A Framework for Associating Mobile Devices to Individuals Based on Identification of Motion Events
DownloadFall 2020
The ubiquity of the Internet-of-Things (IoT) devices in everyday life allows various sensors to be utilized in networked systems for solving a number of real-world problems. Models utilizing specific sensing modalities achieve impressive performance in understanding human activity and are used in...
-
Fall 2021
The management of project documentation involves processing a large amount of important information embedded in different contract and project specification documents. Although contract-related documentation is critical for effective information flow and—in turn—successful project management, it...
-
A Hierarchical Constrained Reinforcement Learning for Optimization of Bitumen Recovery Rate in a Primary Separation Vessel
Download2020-01-01
Shafi, Hareem, Velswamy, Kirubakaran, Ibrahim, Fadi, Huang,Biao
This work proposes a two-level hierarchical constrained control structure for reinforcement learning (RL) with application in a Primary Separation Vessel (PSV). The lower level is concerned with servo tracking and regulation of the interface level against variances in ore quality by manipulating...
-
2022-01-01
Xiunan Wang, Hao Wang, Pouria Ramazi, Kyeongah Nah, Mark Lewis
Accurate prediction of the number of daily or weekly confirmed cases of COVID-19 is critical to the control of the pandemic. Existing mechanistic models nicely capture the disease dynamics. However, to forecast the future, they require the transmission rate to be known, limiting their prediction...