Portfolio-CLICK ME
- I'm a highly motivated M.S. in Computer Science candidate at The University of Chicago, specializing in Cloud Computing, Machine Learning, Data Analytics, and Distributed Systems.
- My passion lies in leveraging cutting-edge technologies to solve complex problems and drive innovative solutions.
Education:
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The University of Chicago (Chicago, IL)
- M.S. in Computer Science, March 2025 (Expected)
- Specialized in Cloud Computing, Machine Learning, Data Analytics, and Distributed Systems
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National Taiwan University (NTU) (Taipei, Taiwan)
- B.A. in Economics and Double Major in Political Science, January 2022
- Concentrated in Statistics, Econometrics, and Machine Learning
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Lund University (LU) (Lund, Sweden)
- Exchange Program in Social Science, January 2022
Professional Experience:
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P.LEAGUE+ (Taipei, Taiwan)
- Data Analyst, September 2022 - July 2023
- Orchestrated the development of comprehensive player and referee datasets employing Synergy Stats and Python, yielding pivotal insights for tactical and strategic decision-making by teams, league authorities, and media representatives
- Executed sophisticated K-means clustering to analyze player performance metrics and team dynamics; utilized Streamlit to create interactive visualizations, enhancing stakeholder understanding and engagement, and applied Excel for systematic data management, supporting nuanced analytical narratives
- Conducted behavioral data analysis to distill customer trends and preferences, utilizing Python for data manipulation and Excel for data visualization, thereby informing customer engagement strategies and operational enhancements
- Designed and managed a robust data pipeline using Python to streamline the aggregation and preprocessing of complex datasets, leading to a more efficient workflow and timely insights for strategic initiatives
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Fermilab (Data Science Clinic) (Chicago, IL)
- Data Science Intern, March 2024 β June 2024
- Enhanced Graph Neural Networks to improve neutrino detection in Liquid Argon Time Projection Chamber systems, increasing detection efficiency and accuracy
- Implemented a sawtooth mechanism and residual connections in neural networks, resulting in a 3% increase in model accuracy and a 5% improvement in overall performance
- Leveraged Python and PyTorch for model development and optimization, ensuring robust and reliable data analysis processes
- Collaborated with a team of scientists and data experts, contributing to groundbreaking research in particle physics and data science
- Analyzed complex data sets to derive meaningful insights, supporting the development of advanced detection methods and contributing to the broader scientific goals of Fermilab
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The Climate Extremes Theory and Data (CeTD) Group β The University of Chicago (Chicago, IL)
- Machine Learning Research Assistant, June 2024 - September 2024
- Processed data pipeline for efficient handling of large scientific datasets
- Developed a parallel IO DataLoader utilizing dask and xarray for improved data processing performance
- Adapted and modified AI weather models to enhance forecast accuracy for predicting the Asian monsoon
- Contributed to projects aimed at assisting farmers in India by providing more reliable weather forecasts
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Realix AI (Chicago, IL)
- Software Engineering Intern, November 2024 - Present
- Developed frontend frameworks using React to create responsive and user-friendly interfaces, ensuring optimal performance and accessibility
- Built backend services with Express.js, integrating RESTful APIs for seamless communication with large language models (LLMs) to deliver AI-powered features
- Designed and implemented scalable database schemas in DynamoDB, optimizing query performance for real-time data access
- Deployed full-stack applications on AWS, utilizing services such as EC2, Lambda, and S3 for reliable and cost-efficient cloud solutions
Projects:
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NuGraph: a Graph Neural Network (GNN) for Neutrino Physics Event Reconstruction (Partnering with Fermi Lab, March 2024 - June 2024)
- Advanced NuGraph3 GNN architecture, optimizing data aggregation and message-passing for enhanced event-level predictions.
- Implemented a sawtooth mechanism for sequential node embedding updates, refining model accuracy and performance.
- Applied residual connections in NuGraph3, boosting robustness and feature refinement across iterative message-passing.
- Streamlined data pipelines with Python, enabling efficient data handling and supporting advanced analytical capabilities.
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Genomic Annotations Service (January 2024 - March 2024)
- Led the design and development of a Genomic Annotations Service, a web service for gene data analysis utilizing Flask, Globus, and AWS cloud technologies including S3, EC2, SQS/SNS, DynamoDB, Lambda, and Step Machines.
- Built RESTful APIs with JavaScript and Python, managing data workflows and service integration to provide a robust user experience.
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Generative AI Idea Validator for Circular Economy (January 2024)
- Pioneered the design and deployment of a cutting-edge AI-driven validation tool using OpenAI GPT-4 to analyze and categorize concepts within the circular economy sector. The tool is engineered to autonomously produce detailed reports that evaluate the sustainability, commercial potential, and innovative aspects of new ideas.
- Integrated Retrieval-Augmented Generation (RAG) with GPT-4 to enhance the AI's ability to fuse retrieved information with generated content, ensuring the production of highly accurate and contextually relevant sustainability assessments.
π this week I spent my time on:
JavaScript 5 hrs 21 mins βββββββββββββββββββββββββ 99.27 %
Bash 2 mins βββββββββββββββββββββββββ 00.73 %
INI 0 secs βββββββββββββββββββββββββ 00.00 %