👋 Hi, I’m Corey
🎓 Academic Path
Bachelor of Science in Software Development (Web & Mobile Applications) – DeVry University
Future Master’s in AI Engineering – University of Pennsylvania
Future Ph.D. in Artificial Intelligence – research in advanced machine learning, LLMs, and AI systems
💻 GitHub Portfolio Highlights
Facial Emotion Recognition System – CNN-based model with accuracy metrics & visualizations
Quant LLM Assistant – Hugging Face + LangChain powered assistant with retrieval-augmented generation
Disease Prediction Capstone – ML pipeline with preprocessing, EDA, training, and evaluation
AI Vehicle Safety Classifier – Python + C++ dual implementation with performance comparisons
🛠️ Skills & Tools
Programming: Python, C++, Java, C#, SQL
AI/ML Frameworks: TensorFlow, PyTorch, scikit-learn, LangChain, Hugging Face
DevOps & Cloud: AWS, Docker, CI/CD, Ansible
Data Visualization: Matplotlib, Seaborn, Plotly
🚀 Career Goals
I am pursuing a career as an AI/ML Engineer, with a focus on:
Building production-ready AI systems
Advancing LLMs, Deep Learning, and System Design
Contributing to Big Tech & Big AI companies such as OpenAI, NVIDIA, Meta, and Google DeepMind
🌍 Purpose
I aim to use AI not only to advance technology but to change lives — from improving healthcare and infrastructure to creating safe, ethical, and impactful AI systems.
📫 Connect with me on LinkedIn
Linkedin.com/corey-leath
Core ML Algorithms:
- ✅ Linear Regression (price prediction)
- ✅ K-Nearest Neighbors (pattern similarity)
- ✅ Gradient Boosting (portfolio forecasting)
Core ML Algorithms:
- ✅ Convolutional Neural Networks (deep learning backbone)
- ✅ K-Means Clustering (unsupervised feature grouping)
- ✅ Gradient Boosting (tabular benchmark)
Core ML Algorithms:
- ✅ Random Forest (tabular safety classification)
- ✅ K-Nearest Neighbors (incident similarity)
- ✅ Gradient Boosting (boosted safety predictions)
Core ML Algorithms:
- ✅ Linear Regression (time-based forecasting)
- ✅ Random Forest (multi-variable regression)
- ✅ Gradient Boosting (advanced time-aware modeling)
Core ML Algorithms:
- ✅ Random Forest (cloud-optimized classifier)
- ✅ Gradient Boosting (via SageMaker XGBoost)
- ✅ K-Means Clustering (energy user grouping)
Core ML Algorithms:
- ✅ Linear Regression (strategy return prediction)
- ✅ K-Means (cluster strategies)
- ✅ Random Forest (ensemble modeling)
- ✅ K-Nearest Neighbors (market behavior similarity)
🔗 Visit my GitHub: Trojan3877
👉 Next steps:
- Create the special repo:
Trojan3877/Trojan3877
and add this asREADME.md
. - Replace placeholders (
your-linkedin
, repo names/links if slightly different). - This instantly makes your GitHub profile look like a curated portfolio site.
⚡ Question for you: do you want me to now generate the individual README upgrades for each repo (FER, Quant LLM, AWS Pipeline, ER Triage) one by one — each with Results tables, Quickstart blocks, and sample visuals baked in?