π― From training toy models to shipping real ML systems β hereβs what that journey really looks like.
Most people start their ML learning journey in Jupyter notebooks. But when you want your model to serve real users, things get serious β and a lot more complex.
Hereβs how the levels break down π
π§© Level 1 β Learning the Basics
- Clean datasets (Kaggle, UCI)
- Jupyter notebooks & visualization
- Simple metrics and evaluation
βοΈ Level 2 β Professional Data Science
- Handling messy, real-world data
- Organized code + config files
- Feature engineering & tuning
- Git for reproducibility
π Level 3 β Machine Learning Engineering
- Containerized model APIs (Docker/FastAPI)
- MLflow for tracking + model registry
- CI/CD pipelines
- Monitoring & scaling on AWS/GCP
I'm documenting my path across these levels β moving from education to execution.
The next phase: Level 4, where models scale, retrain automatically, and support real users.
π§ Read My AI Build Logs
π« Get In Touch
LinkedIn: Connect with me
X / Twitter: @MarcusMayoAI
Email: marcusmayo.ai@gmail.com
Portfolio Part 1: AI & MLOps Projects
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