EXCEEDS logo
Exceeds
koharuyanen

PROFILE

Koharuyanen

Over four months, Knum Nguyen developed and enhanced the Monash-FIT3170/2025W1-FindingNibbles repository, delivering user-facing features and robust AI integrations. He implemented AI-powered dish recommendations and image generation using Google Cloud Vertex AI and Gemini API, while modernizing the frontend with React and Tailwind CSS. His work included secure authentication flows, dynamic UI components, and backend endpoints for AI services, addressing both user experience and data protection. Knum also refactored service account authentication for Google Cloud, improving reliability and security. The depth of his contributions spanned full stack development, with careful attention to maintainability, state management, and configuration.

Overall Statistics

Feature vs Bugs

79%Features

Repository Contributions

26Total
Bugs
3
Commits
26
Features
11
Lines of code
2,620
Activity Months4

Work History

September 2025

1 Commits

Sep 1, 2025

September 2025 focused on stabilizing Google Cloud AI Suggestions by fixing the service account authentication flow. Implemented a refactor to properly handle service account credentials provided as either a file path or a JSON object, ensuring reliable connections to Google Cloud services and reducing AI-suggestions connectivity failures. The work tightened security handling of credentials and improved system resilience, directly supporting business-critical AI features used by end users.

August 2025

11 Commits • 2 Features

Aug 1, 2025

August 2025 monthly summary for Monash-FIT3170/2025W1-FindingNibbles. Focused on delivering AI-assisted discovery features, stabilizing UI state, and cleaning up deprecated AI paths to optimize maintenance and business value. Achievements span backend AI image generation, frontend integration, feature deprecation, and UX refinements.

May 2025

11 Commits • 6 Features

May 1, 2025

May 2025 summary for Monash-FIT3170/2025W1-FindingNibbles: Delivered a set of user-centric features, security hardening, and UI modernization that collectively boost engagement, streamline onboarding, and protect data. Key deliverables include a Vertex AI-powered dish recommendations system with user preferences and occasion prompts; a Roll-a-Dice Cuisine Picker in the navbar; a secure authentication landing flow directing unauthenticated users to login; a Tailwind-based UI refresh for NavBar/Sidebar; and meal-planner calorie-goal visualization. Also removed a sensitive JSON file to mitigate data exposure. These efforts reduced onboarding friction, improved UX, and strengthened frontend reliability and data protection.

April 2025

3 Commits • 3 Features

Apr 1, 2025

April 2025 — Foundational frontend work for Monash-FIT3170/2025W1-FindingNibbles, including project reorganization, initial frontend scaffolding, and a new UI feature for cuisine selection with a radius filter. No production bug fixes this month; focus on structural improvements and groundwork for user interaction.

Activity

Loading activity data...

Quality Metrics

Correctness83.2%
Maintainability83.0%
Architecture79.6%
Performance77.8%
AI Usage41.6%

Skills & Technologies

Programming Languages

CSSHTMLJSONJSXJavaScriptTypeScript

Technical Skills

AI IntegrationAPI DevelopmentAPI IntegrationAuthenticationBackend DevelopmentCSSConfiguration ManagementData VisualizationFront End DevelopmentFrontend DevelopmentFull Stack DevelopmentGemini APIGoogle Cloud PlatformGoogle Cloud Vertex AIHugging Face API

Repositories Contributed To

1 repo

Overview of all repositories you've contributed to across your timeline

Monash-FIT3170/2025W1-FindingNibbles

Apr 2025 Sep 2025
4 Months active

Languages Used

CSSJSXJavaScriptHTMLJSONTypeScript

Technical Skills

CSSFront End DevelopmentFrontend DevelopmentReactUI/UX DesignAI Integration

Generated by Exceeds AIThis report is designed for sharing and indexing