Skip to content
View rinnegannn's full-sized avatar

Highlights

  • Pro

Block or report rinnegannn

Block user

Prevent this user from interacting with your repositories and sending you notifications. Learn more about blocking users.

You must be logged in to block users.

Maximum 250 characters. Please don't include any personal information such as legal names or email addresses. Markdown supported. This note will be visible to only you.
Report abuse

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

Report abuse
rinnegannn/README.md
$ status --user "rinnegannn"
> ROLE:    Software Engineering @ McMaster (Co-op)
> FOCUS:   Cybersecurity | Machine Learning | Cloud Architecture
> MISSION: Building scalable, reliable systems.

PortfolioLinkedInContact


✦ About Me

Software Engineering student at McMaster University focused on AI, Cybersecurity, and Cloud Architecture. Experience spans low-level C networking, React/PostgreSQL platforms, and LLM automation. Currently exploring Operating Systems and Distributed Databases.

  • Accolades: Provost's Honour Roll · Dean's Honour List
  • Interests: Anime · Competitive Gaming · LeetCode (yes i'm not lying) · Chess · Golf

✦ Top Projects

A high-performance, minimalist network diagnostics engine engineered in C.

  • Core Engineering: Implemented low-level socket programming for TCP port scanning, ICMP traceroute, and real-time interface monitoring.
  • Key Insight: Designed to learn networking fundamentals and the complexities of systems-level resource management.
  • Tools: C, POSIX Threads, Raw Sockets, Linux.

Full-stack humanitarian platform designed for real-time crisis response.

  • Core Engineering: Developed a responsive mapping system using React and Leaflet, backed by a PostgreSQL database for emergency resource management.
  • Key Insight: Combines geospatial data with intuitive UI/UX to solve real-world logistical challenges in emergency aid.
  • Tools: React, Leaflet.js, PostgreSQL, Node.js.

Assistive-technology vision system optimized for low-latency visual recognition.

  • Core Engineering: Architected a real-time detection pipeline using YOLOv8 and Flask, specifically designed for users with Usher Syndrome.
  • Key Insight: Prioritizes accessibility and feedback, demonstrating the intersection of applied computer vision and inclusive design.
  • Tools: Python, YOLOv8, Flask, Computer Vision.

✦ Technical Stack

Category Tools
Languages Python Java C C++ JavaScript Swift SQL
Frameworks React Node.js Express Flask SwiftUI Framer Motion
DevOps AWS Docker CI/CD Linux Bash Git

✦ Activity

snake



// chat, is this aura farming?

Pinned Loading

  1. 1KingOfCurses1/Wirefish 1KingOfCurses1/Wirefish Public

    WireFish is a fast, minimal network diagnostics tool implemented entirely in C. It supports TCP port scanning, ICMP traceroute, network interface monitoring using /proc/net/dev, and customizable ou…

    C 3

  2. ReliefLocator ReliefLocator Public

    Web-based emergency response app built with React, Leaflet, and PostgreSQL. Helps disaster victims find nearby shelters, food, water, and medical aid within 25 km using interactive maps, offline ca…

    TypeScript 1 1

  3. ObjectDetector ObjectDetector Public

    A web-based object detection application that uses a custom-trained YOLOv8 model to identify and label over 50 fruits and vegetables in real time. Built with Python and Flask, it combines computer …

    Python

  4. 1KingOfCurses1/CollisionVisualizer 1KingOfCurses1/CollisionVisualizer Public

    A Java desktop app that simulates and visualizes 2D collisions between shapes. It detects intersections in real time, logs collision events, and calculates initial/final kinetic energies and post-c…

    JavaScript 1

  5. Recollect-Updated Recollect-Updated Public

    Swift