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Trojan3877/README.md

👋 Corey Leath — Aspiring AI & Platform Engineer

Building scalable AI systems & full-stack applications. Engineering Level GitHub Activity Graph GitHub Activity Graph

Portfolio Level 🎓 Senior Undergraduate | Software Development (Web & Mobile Applications) 🤖 AI / ML Engineering Focus | Backend & Platform Systems 📍 Cleveland, Ohio

I’m a senior undergraduate software developer focused on building real, end-to-end systems, not just class assignments. My work blends software engineering fundamentals with applied AI/ML, emphasizing clean architecture, scalability, and production-ready code.

I actively build projects using Python, PyTorch, TensorFlow, Docker, FastAPI, SQL, and CI/CD, with hands-on experience across machine learning pipelines, recommendation systems, backend APIs, and data-driven applications.

🧠 What I’m Working On

AI & Machine Learning projects (training, evaluation, deployment-ready structure)

Backend services and APIs for ML-powered applications

Recommendation systems and data pipelines

Clean, testable, well-documented codebases

🛠️ Tech Stack

Languages: Python, SQL ML / AI: PyTorch, TensorFlow, Hugging Face Backend: FastAPI, REST APIs DevOps: Docker, CI/CD (GitHub Actions) Data: Pandas, NumPy Systems: Linux, Git, Cloud fundamentals

🎯 Career Focus

I’m actively seeking Software Engineering Intern, AI / Machine Learning Engineering Intern, or Platform / Backend Intern roles.

I’ve been referred to Microsoft Explore through professional networking and am preparing for a Master’s in AI Engineering (UPenn). My goal is to gain hands-on industry experience while continuing to build impactful systems.

📂 Featured Projects

🔹 DeepSequence Recommender – Sequence-based recommendation system 🔹 AI / ML Pipelines – Data → Training → Evaluation workflows 🔹 Backend APIs – ML-backed services with clean architecture

👉 See pinned repositories below for detailed implementations.

📫 Let’s Connect

LinkedIn: https://www.linkedin.com/in/coreyleath

GitHub: https://github.com/Trojan3877

⭐ If you’re a recruiter or engineer looking for a motivated junior engineer who learns fast and ships working systems, I’d love for you to explore my work.

Pinned Loading

  1. Facial-Emotion-Recognition-System Facial-Emotion-Recognition-System Public

    The **Facial Emotion Recognition System** is a robust computer vision pipeline that detects and classifies human emotions (e.g., happy, sad, angry, surprised) from facial images and video streams. …

    Python 3

  2. Scalable-Event-Driven-Ride-Sharing-Platform Scalable-Event-Driven-Ride-Sharing-Platform Public

    System Design architecture for ride-sharing platform

    Python 2

  3. DeepSequence-Recommender DeepSequence-Recommender Public

    Deliver personalized movie/show recommendations using collaborative and content-based filtering.

    Python 2

  4. ML-Docker-Orchestrator-with-full-MLops-pipeline ML-Docker-Orchestrator-with-full-MLops-pipeline Public

    A containerized machine learning deployment pipeline using FastAPI, Docker Compose, and GitHub Actions

    Python 3

  5. SentinelAI SentinelAI Public

    Production AI Monitoring & Inference System

    Python 3

  6. LogSight-AI LogSight-AI Public

    LogSight-AI is a real-time AIOps platform that ingests Kubernetes logs at > 50 k lines/sec, tokenizes them with a C++ SIMD engine, clusters patterns on-the-fly using HDBSCAN + Isolation Forest

    Python 3