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Email: tientruong@usf.edu
Designed and Coded by Tien Truong
Reliability-centered AI pipeline for brain tumor classification improving accuracy from 0.64 to 0.67 and enabling 68% case automation. Submitted to IEEE-RAMS.
Advanced deep learning model achieving 99.56% accuracy across 22,000+ medical images. Submitted to IEEE Journal of Biomedical and Health Informatics.
Novel EEG biomarker discovery from 220 patient datasets for traumatic brain injury screening. IEEE-ICHST-2025.
Book chapter analyzing 193 sources and coordinating 13 international co-authors across major medical institutions for cardiovascular disease prediction.
GenEAI Best Paper Award winner at Symposium on Eye Tracking Research and Applications. Novel approach combining eye tracking with LLMs for learning disorder detection.
Published in IEEE Access. Hybrid CNN-Vision Transformer architecture for enhanced ECG image classification, combining convolutional and attention mechanisms.
Published in 2025 Annual Reliability and Maintainability Symposium (RAMS). System reliability analysis for multi-layer network infrastructures.
Published in PLOS One. Longitudinal Wisconsin Sleep Cohort Study analyzing cardiovascular disease and obstructive sleep apnea comorbidities.
The main goal of this project is to develop a CNN model capable of accurately classifying house numbers in the Street View House Numbers (SVHN) dataset, enabling address recognition, automation, urban planning insights, and improving navigation systems.
In this project, I aim to utilize Recurrent Neural Networks (RNN) to develop predictive models that can capture patterns and dependencies in the complex and volatile stock price data of Google (GOOGL) from 2012 to 2017, enabling more accurate stock market predictions.
Utilizing Linear Regression and Lasso regularization, this model enables precise car price predictions, empowering buyers and sellers with informed decisions. Various attributes and features contribute to a reliable car valuation system, facilitating well-informed choices in the market.
The aim of this project is to develop a machine learning model that predicts housing prices in California based on the California housing dataset. The dataset contains various features related to houses in different locations across California, such as median income, house age, average number of rooms and bedrooms, population, and geographical coordinates.
This project aims to develop a machine learning model for detecting and predicting fake news. By leveraging advanced natural language processing techniques and various features extracted from news articles and related data, I strive to build a robust model capable of distinguishing between genuine and deceptive information.
The goal of the project is to develop a machine learning model capable of accurately recognizing and classifying these handwritten digits. By training a neural network on the MNIST dataset, I aim to build a model that can generalize well and correctly classify new, unseen handwritten digits.
First time visiting University of Washington, Seattle!!! :
You are never too old to set another goal or to dream a new dream.
First time in Seattle! :))
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"The best way to predict the future is to create it."
My nickname in high school was Will
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"The only way to do great work is to love what you do." - Steve Jobs
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The best place I have ever been to is Lake Tahoe
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