top of page

Hey, I'm

Sirius Liu

UX Designer & Frontend Developer

 

01

iPad Pro (Landscape).png

A digital platform which improves the accessibility of medical resources for under-served communities

Human-Computer Interaction | Healthcare

LEP (limited English proficiency) HealthCARE Assistant

LEP Healthcare Assistant

02

Product Design | Mechanical Engineering | Healthcare

A Portable braille label printer that shorten the communication gap with those who are visually impaired.

2bb-braille_edited.png
Portable Braille Embosser

03

Human-Computer Interaction | Healthcare

A Digital Product that Simplified and digitalized family disease management of Leukemia patients.

iPhone X.png
Butler for ALL

04

Architectural Programming | Interior Design

Redesign of the student spaces That Supports the medical student's physical, Mental, and academic needs

front icon dea 3590.png
Student Space

05

Game Design

A challenging platform puzzle game inspired by global warming.

ui_start 3.png
Bear with Me

06

Research | Computer-Mediated Communication

Many people around the world use emojis to express themselves and add connotation to their text messages. Since emojis are used worldwide, there is potential for the development of different cultural norms and interpretations within different countries. Our group has set out to compare how East Asian international students at Cornell use and interpret emojis in contrast to North American students. By taking a look at cultural, geographical, and demographic factors, our study focuses on comparing the differences between the two by concentrating on emoji usage from messaging platforms that are specific to both countries.

em-1.png
em-11.png
em-13.png
Emoji

07

Research | Data Analysis | Machine Learning

Day trading, as a speculative trading style that involves the opening and closing of a position on a daily basis, can be affected by all sorts of variations in the market. It is desirable to build a model to predict whether a transaction can benefit at all, given the entry time, the stock information, and real-time market situations. We implemented different supervised learning models for that purpose, with a substantial amount of minute-level trading opportunity data for US stocks. This paper describes data preprocessing, modeling methodologies, comparison and evaluation of several classifiers, and further improvement and insights into the modeling result. The overall performances of all models do not differ significantly, but certain models may be recommended based on different risk-return preferences according to our performance analysis.

preview-19.png
Day-Trading
bottom of page