From a79019fc9f244eac44299a6ba67b79c607e3915c Mon Sep 17 00:00:00 2001 From: Kevin Mok Date: Thu, 31 Jul 2025 13:29:28 -0400 Subject: [PATCH] Revised resume points --- content/resume/_index.md | 66 ++++++++++++++++++++++++++++++---------- 1 file changed, 50 insertions(+), 16 deletions(-) diff --git a/content/resume/_index.md b/content/resume/_index.md index 3d0a200..57a477b 100644 --- a/content/resume/_index.md +++ b/content/resume/_index.md @@ -11,12 +11,29 @@ draft: false 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 segment **high-risk customers**, calculate alert counts, and filter transactions over the past 90 days with aggregated exposure metrics. -* Engineered a custom **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. -* Normalized multi-currency data and integrated key AML metrics like **alert rate (%)**, **avg USD amount**, and **transaction volume** for actionable reporting. -- **Built KPI-ready metrics** (alert rate, avg USD exposure, transaction volume) to support AML performance reporting and enable cross-country risk comparisons. +* 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 %}} @@ -56,11 +73,11 @@ date="Oct 2022" show="true" %}} 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. +- **Optimized SQL query performance** within a + Django-based pipeline, processing NFT ranking data at + scale and exposing results via GraphQL with + **low-latency response times under high concurrency + (2,000+ queries)**. {{% /resume/project %}} @@ -73,11 +90,28 @@ date="Oct 2022" show="true" %}} {{% resume/work-experience name="Red Hat" title="Cloud/Software Engineer Intern" languages="Kubernetes, GoLang, Jenkins" date="May 2022 — Aug 2023" %}} -* **Reduced reporting deployment time by 66%** by building a CLI-based solution to push compiled binaries directly into Kubernetes/Openshift clusters, accelerating turnaround for testing and data validation workflows. -* **Decreased manual configuration errors by 80%** by automating service discovery and dynamic config updates, aligning with AML’s goal of minimizing operational risk and improving data integrity. -* **Improved system reliability** during production launches by implementing startup probes for legacy services, reducing downtime and enhancing stability for automated monitoring/reporting pipelines. -* **Enhanced CI pipeline reproducibility and performance** by rewriting the Jenkins nightly pipeline to support automated PR-level testing with reusable parameters, improving report consistency across environments. -* **Collaborated cross-functionally** with developers and testers to maintain reliable infrastructure, echoing the AML role’s emphasis on stakeholder partnership for building robust reporting systems. +- **Decreased manual configuration errors by 80%** by + automating service discovery and dynamic config + updates, aligning with AML goals of minimizing + operational risk and improving data integrity. +- **Enhanced CI pipeline reproducibility and + performance** by rewriting the Jenkins nightly + pipeline to support automated PR-level testing with + reusable parameters, improving report consistency + across environments. +- **Collaborated cross-functionally** with developers + and testers to maintain reliable infrastructure, + echoing the AML role's emphasis on stakeholder + partnership for building robust reporting systems. +- **Improved system reliability** during production + launches by implementing startup probes for legacy + services, reducing downtime and enhancing stability + for automated monitoring/reporting pipelines. +- **Reduced reporting deployment time by 66%** by + building a CLI-based solution to push compiled + binaries directly into Kubernetes/Openshift clusters, + accelerating turnaround for testing and data + validation workflows. {{% /resume/section %}}