Skip to content
View kunhwiko's full-sized avatar

Block or report kunhwiko

Report abuse

Contact GitHub support about this user’s behavior. Learn more about reporting abuse.

Report abuse
kunhwiko/README.md

Hi there 👋


I'm Kun Hwi, and I am a software engineer at Workday! I'm currently part of the Public Cloud Platform Team, where I actively am contributing to the development of various Kubernetes operators that build the next generation of Workday's cloud platform.

Recently, I've also been working on the development of ACK controllers, which is an open-source project led by AWS to manage various AWS services through Kubernetes.

I have a particular interest for computer networking and modern cloud technologies and am always striving to learn something new every day.

Here on my GitHub, I openly share what I know about distributed systems and modern cloud tools. Feel free to also view some of my past projects :)


Connect 🔌


Always looking forward to connecting with others!

LinkedIn Personal


Repositories :octocat:


When I wake up, these are my go-to tools I'll use for the day:

go kubernetes aws gcp bash

My work involves actively interacting with these open-source projects:

helm cert-manager opa prometheus grafana

These are the CI/CD tools that I work with:

argocd jenkins tekton

I also have extensive professional experience with the following:

python java azure

Pinned Loading

  1. concepts concepts Public

    Systems Design, OS, Software Engineering

    Go 1 1

  2. crimebnb crimebnb Public

    React app that allows users to view crime incidents near Airbnb listings

    JavaScript

  3. swiftris swiftris Public

    Bringing Tetris to iOS, because everyone loves Tetris

    Swift 1

  4. homepage-react homepage-react Public

    Personal React homepage deployed on the web through Netlify

    JavaScript

  5. stock-bot stock-bot Public

    Flutter app that visualizes changes in most gaining stocks in real time

    Dart 7 1

  6. newvies newvies Public

    Recommends new movies by finding similar users using K-means clustering on ratings, genre, view counts, and keywords

    Jupyter Notebook 1