Compare commits

..

1 Commits

Author SHA1 Message Date
73c35cd63b Gobcog -> Astronofty 2025-01-07 11:40:46 -05:00
4 changed files with 80 additions and 99 deletions

1
.gitignore vendored
View File

@@ -4,7 +4,6 @@ resources/_gen/
themes/base16* themes/base16*
*.pdf *.pdf
*pt*
commit-msg.txt commit-msg.txt
.hugo_build.lock .hugo_build.lock

View File

@@ -104,7 +104,7 @@ body {
background-color: $background-color; background-color: $background-color;
color: $color; color: $color;
// line-height: 1.5; // line-height: 1.5;
line-height: 1.57; line-height: 1.58;
// font-size: 100%; // font-size: 100%;
// font-size: 15px; // font-size: 15px;
font-size: 17px; font-size: 17px;

View File

@@ -3,128 +3,110 @@ title: "Resume"
date: 2019-02-11T07:50:51-05:00 date: 2019-02-11T07:50:51-05:00
draft: false draft: false
--- ---
{{% resume/section "Work Experience" %}}<!--- {{{ -->
{{% resume/work-experience name="Red Hat"
title="Cloud/Software Engineer Intern" languages="Kubernetes, GoLang, Jenkins" date="May 2020 — Aug 2021" %}}
- **Reduced deployment time by 66%** by implementing a
[solution](https://github.com/apache/incubator-kie-kogito-operator/commit/175a6356c5474f2360ccb8ae835e0b9b2d653cf1) for deploying locally-compiled binaries onto
Kubernetes/OpenShift via command-line, **cutting average
deployment times from 45 minutes to 15 minutes**.
(**Kubernetes/GoLang** used for this and three below).
- **Eliminated 80% of manual configuration errors** by enabling
the Kubernetes operator to automatically fetch data from
deployed services and update configurations, **deprecating
legacy startup scripts and reducing overall startup time
by 40%**.
- **Improved application stability** by introducing startup
probes for legacy applications with longer boot times,
**resulting in a 50% reduction in startup-related failures
and downtime during production launches**.
- **Enhanced system reliability** by refactoring probes to
[assign default values](https://github.com/apache/incubator-kie-kogito-operator/commit/af4977af228ec8648be28779259d4552246b656f) dynamically based on deployed YAML
files and fixing reconciliation issues, **increasing probe accuracy by 30%** and preventing misconfigurations.
- **Increased CI pipeline efficiency** by rewriting the
**Jenkins (Groovy)** [nightly pipeline](https://github.com/apache/incubator-kie-kogito-pipelines/commit/4c83f1aecdea2c1ba2796b79839a90d4083dce88) to run in a GitHub PR
environment, allowing for automated testing of all
team-submitted PRs prior to merging, **reducing manual
intervention by 60%**.
- **Increased project reproducibility** by taking initiative to
write a [reusable GitHub parameters file](https://github.com/apache/incubator-kie-kogito-pipelines/commit/4c83f1aecdea2c1ba2796b79839a90d4083dce88#diff-7d2c018dafbccec859077d19bf1ade53ec9c7649f235528ce89f5632b109f7e6) for the pipeline,
**enabling 100% reusability** and ensuring consistent pipeline
setups across different environments.
{{% /resume/section %}}<!--- }}} -->
{{% resume/section projects %}}<!--- {{{ --> {{% resume/section projects %}}<!--- {{{ -->
<!--- RBC AML {{{ -->
{{% resume/project name="AML Risk Analytics"
languages="Python, SQL, Tableau"
date="July 2025" show="true" %}}
* Built an end-to-end AML simulation using **Python**,
generating **9M+ records** across customers,
transactions, and alerts to mimic real-world
financial behavior and suspicious activity patterns.
* Wrote advanced **SQL (CTEs + joins)** to classify
**high-risk customers**, calculate alert counts, and
filter transactions over the past 90 days with
aggregated metrics.
* Engineered a **risk scoring model** in Python
using transaction thresholds and alert volume to
classify customers as Elevated or Critical risk.
* Designed **interactive Tableau dashboards** (Risk
Heatmap, Alert Efficiency, Risk vs. Avg Amount) to
visualize cross-country AML exposure and alert
effectiveness.
- **Developed KPI-ready metrics** (alert rate, avg USD
exposure, transaction volume) to drive AML
performance reporting and enable cross-country risk
comparisons.
- **Normalized multi-currency transaction data** to
ensure consistent exposure calculations across USD,
CAD, and EUR, supporting reliable AML metric
aggregation.
{{% /resume/project %}}
<!--- RBC AML }}} -->
<!--- Spotify Visualized {{{ -->
{{% resume/project name="Spotify Visualized"
url="https://github.com/Kevin-Mok/astronofty" languages="Python, Django" date="June 2023"
show="true" %}}
- **Built a high-performance Python backend** using
Django and PostgreSQL to process 10K+ data records
per user, optimizing ingestion pipelines via API
integration and ORM modeling.
- **Engineered normalized database schemas** to
streamline query workflows, achieving a **50%
reduction in PostgreSQL latency** for high-volume
reporting tasks.
- **Visualized user music libraries in Tableau**,
creating dashboards that grouped tracks by **artist
and genre**, enabling users to explore listening
patterns and discover trends in their Spotify data.
{{% /resume/project %}}
<!--- Spotify Visualized }}} -->
<!--- Rarity Surf {{{ --> <!--- Rarity Surf {{{ -->
{{% resume/project name="Rarity Surf" {{% resume/project name="Rarity Surf"
languages="Python, Django, JavaScript, React" languages="Python, Django, JavaScript, React"
date="Oct 2022" show="true" %}} date="Oct 2021" show="true" %}}
- **Built a full-stack reporting tool** using React, - **Developed a full-stack web application** to generate rarity
Django, and **PostgreSQL** to analyze rankings for NFT's integrated with leading NFT
structured/unstructured metadata from APIs, enabling marketplace's (OpenSea) API,
real-time rarity scoring and improving insight enabling users to **quickly identify rare NFT's** and check
delivery by **80%**. their listing status, **improving market research efficiency by 80%**.
- **Optimized SQL query performance** within a - **Architected a robust Django (Python) [backend](https://github.com/Kevin-Mok/rarity-surf)** to fetch and process
Django-based pipeline, processing NFT ranking data at NFT metadata from IPFS, store rarity rankings in
scale and exposing results via GraphQL with **PostgreSQL**, and serve the data via GraphQL API, **ensuring low-latency access and scaling to handle 2,000+ concurrent requests**.
**low-latency response times under high concurrency - **Developed a dynamic React [frontend](https://github.com/Kevin-Mok/rarity-surf-frontend)** using hooks to load
(2,000+ queries)**. rarity data in real-time, styled with Tailwind for
mobile responsiveness, **improving user experience
and reducing frontend load times by 70%**.
{{% /resume/project %}} {{% /resume/project %}}
<!--- Rarity Surf }}} --> <!--- Rarity Surf }}} -->
{{% /resume/section %}}<!--- }}} --> <!--- Spotify Visualized {{{ -->
{{% resume/section "Work Experience" %}}<!--- {{{ --> {{% resume/project name="Spotify Visualized"
url="https://github.com/Kevin-Mok/astronofty" languages="Python, Django" date="June 2019"
show="true" %}}
{{% resume/work-experience name="Red Hat" - **Built a [high-performance backend](https://github.com/Kevin-Mok/spotify-lib-vis)** in Python with Django,
title="Cloud/Software Engineer Intern" languages="Kubernetes, GoLang, Jenkins" date="May 2022 - Aug 2023" %}} utilizing Django ORM to model and manage user data
efficiently, processing over **10,000 tracks per library** via
the Spotify API.
- **Engineered and optimized database models** achieving a **50% reduction in query latency** on PostgreSQL
for core workflows through effective schema normalization.
- **Decreased manual configuration errors by 80%** by {{% /resume/project %}}
automating service discovery and dynamic config
updates, aligning with AML goals of minimizing <!--- Astronofty }}} -->
operational risk and improving data integrity.
- **Enhanced CI pipeline reproducibility and <!--- Astronofty {{{ -->
performance** by rewriting the Jenkins nightly
pipeline to support automated PR-level testing with {{% resume/project name="Astronofty"
reusable parameters, improving report consistency url="https://github.com/Kevin-Mok/astronofty" languages="JavaScript, React, Solidity" date="Jan 2023"
across environments. show="true" %}}
- **Collaborated cross-functionally** with developers
and testers to maintain reliable infrastructure, - **Secured [2nd place](https://devpost.com/software/astronofty) overall out of 150+ teams** at UofTHacks
echoing the AML role's emphasis on stakeholder X, a 36-hour hackathon, for developing a blockchain-based
partnership for building robust reporting systems. NFT marketplace app.
- **Improved system reliability** during production - **Built and optimized React (JavaScript) [components](https://github.com/Kevin-Mok/astronofty/tree/main/src/components)** to synchronously
launches by implementing startup probes for legacy upload images and metadata to IPFS, **enhancing user engagement by 80%** during the demo.
services, reducing downtime and enhancing stability
for automated monitoring/reporting pipelines. {{% /resume/project %}}
- **Reduced reporting deployment time by 66%** by
building a CLI-based solution to push compiled <!--- Astronofty }}} -->
binaries directly into Kubernetes/Openshift clusters,
accelerating turnaround for testing and data
validation workflows.
{{% /resume/section %}}<!--- }}} --> {{% /resume/section %}}<!--- }}} -->
{{% resume/section skills %}}<!--- {{{ --> {{% resume/section skills %}}<!--- {{{ -->
**Python**, **SQL**, **PostgreSQL**, **Tableau**, **MongoDB**, **JavaScript**, Django, **React**, Bash, **Git**, **Linux**, **Command Line**, Go(Lang), AWS, Kubernetes, Terraform, Docker (Compose), Jenkins, Groovy, Solidity, C **Python**, **Django**, **JavaScript**, **React**, Node.js, PostgreSQL, MongoDB, Bash, **Git**, **Linux**, **Command Line**, Go(Lang), AWS, Kubernetes, Terraform, Docker (Compose), Jenkins, Groovy, Solidity, C
{{% /resume/section %}}<!--- }}} --> {{% /resume/section %}}<!--- }}} -->
{{% resume/section education %}}<!--- {{{ --> {{% resume/section education %}}<!--- {{{ -->
{{% resume/education name="University of Toronto (St. George)" {{% resume/education name="University of Toronto (St. George)"
title="Computer Science Specialist - 3.84 GPA (CS). Graduated with High Distinction." date="2019 - 2024" %}} title="Computer Science Specialist 3.84 GPA (CS). Graduated with High Distinction." date="2019 2024" %}}
{{% /resume/section %}}<!--- }}} --> {{% /resume/section %}}<!--- }}} -->