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Bryce Borer

Full Stack Developer

Hi, I'm Bryce, a passionate full stack developer with a love for programming and problem-solving. With a strong foundation in software development, I enjoy creating innovative solutions and bringing ideas to life through code. My experience spans various technologies and programming languages, and I am always eager to learn and adapt to new challenges.

< Skills />

  • Front-end design with React.JS, SASS, and Axios
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  • Back-end architecture with Express.JS and Knex
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  • Javascript | HTML | CSS | Python | MySQL

< Experience />

  • Software Engineering Teaching Assistant
    Brainstation
    April 2024 - Current
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  • Digital Youth Rally Hackathon Mentor
    Open Hub Project
    May 2024
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  • Industry Competition Winner
    Brainstation
    February 2024

< Education />

  • Software Engineering Bootcamp - Brainstation
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  • BSc Electrical Engineering - Ontario Tech University

sAIcheese was my Capstone project at Brainstation. In it's current form, the web application accepts images of food (JPG) and outputs the nutrient data (calories, protein fat, etc) by leveraging Foodvisor's API. This project is unfinished, but it was fun to build and I hope to continue working on it in the future.

Chec was my team's winning industry project at Brainstation, partnered with Fiserv. Our mission was to create an application that improves the restaurant dining experience. We built a prototype application to help the customer split the bill with multiple guests. My role was to create a back-end that could store customer and restaurant data, then calculate the bill total for each customer. I accomplished this by building my own API using Express.JS and building a database with Knex (MySQL).

After completing the Software Engineering bootcamp, I earned a Data Science certificate through Brainstation. This is my final project for that course, which was done in Jupyter Notebooks. My project dives into a dataset from Kaggle on the home loan approval rates. It contains detailed information on various attributes such as demographic, financial, employment, and home ownership status. I use various methods and models to show insights on the home loan approval rates in India!