Redo project points

This commit is contained in:
2025-07-31 12:46:25 -04:00
parent 6673b67cd8
commit 69b3c99e6f
2 changed files with 35 additions and 27 deletions

View File

@@ -22,42 +22,50 @@ date="July 2025" show="true" %}}
<!--- RBC AML }}} -->
<!--- Rarity Surf {{{ -->
{{% resume/project name="Rarity Surf"
languages="Python, Django, JavaScript, React"
date="Oct 2024" show="true" %}}
- **Developed a full-stack web application** to generate rarity
rankings for NFT's integrated with leading NFT
marketplace's (OpenSea) API,
enabling users to **quickly identify rare NFT's** and check
their listing status, **improving market research efficiency by 80%**.
- **Architected a robust Django (Python) [backend](https://github.com/Kevin-Mok/rarity-surf)** to fetch and process
NFT metadata from IPFS, store rarity rankings in
**PostgreSQL**, and serve the data via GraphQL API, **ensuring low-latency access and scaling to handle 2,000+ concurrent requests**.
{{% /resume/project %}}
<!--- Rarity Surf }}} -->
<!--- Spotify Visualized {{{ -->
{{% resume/project name="Spotify Visualized"
url="https://github.com/Kevin-Mok/astronofty" languages="Python, Django" date="June 2022"
url="https://github.com/Kevin-Mok/astronofty" languages="Python, Django" date="June 2023"
show="true" %}}
- **Built a [high-performance backend](https://github.com/Kevin-Mok/spotify-lib-vis)** in Python with Django,
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.
- **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 {{{ -->
{{% resume/project name="Rarity Surf"
languages="Python, Django, JavaScript, React"
date="Oct 2022" show="true" %}}
- **Built a full-stack reporting tool** using React,
Django, and **PostgreSQL** to analyze
structured/unstructured metadata from APIs, enabling
real-time rarity scoring and improving insight
delivery by **80%**.
- **Engineered a scalable data pipeline** in Django
(Python) to ingest, process, and expose NFT ranking
data via GraphQL, supporting **low-latency
reporting** and scaling to **2,000+ concurrent
queries** for end-user research.
{{% /resume/project %}}
<!--- Rarity Surf }}} -->
{{% /resume/section %}}<!--- }}} -->
{{% resume/section "Work Experience" %}}<!--- {{{ -->