π§ͺ Data Science | βοΈ MLOps | βοΈ DataOps : Talks about π¦
mathematically generated
Hadithi is a Swahili word for story | stories. These are collections of resources, successful and failed project stories, building ML projects that last, design patterns, code testing, and how to navigate in the rapidly changing tech landscape. These stories, sagas and opinions are my own. They neither reflect the companies I have worked or working for, nor should they be taken seriously.
Hadithi is also a home of tools π οΈ, packages π¦ and libraries ποΈ I found useful or nice playing with.
Understanding machine learning predictions. What you see is not always what you get π€.
ML Visually
Bayesian Inference
Convex Optimization
- Convex Optimization β Boyd and Vandenberghe
- EE364A - Convex Optimization I & II - Stephen P. Boyd - Stanford University
Deep Learning
- Dive into Deep Learning
- MIT 6.S191 Introduction to Deep Learning
- Deep Learning - DS-GA 1008 Β· Spring 2020 Β· NYU Center For Data Science
- Deep Learning for Coders with fastai & PyTorch - Jeremy Howard & Sylvain Gugger - Practical Deep Learning course
- Deep Reinforcement Learning - CS 285 at UC Berkeley
- π€ Huggingface Reinforcement Learning
Podcasts
- Learning Bayesian Statistics
- Linear Digressions - Host: Katie Malone & Ben Jaffe - Ended 2020
Data should always be piped to ensure traceability. Testing different Python pipelines γ°.
What about time series analysis? A tour of Python time series analysis packages π¦.
Becoming a good developer means caring about beautiful coding. Dialogues on Programming paradigms with respect to Python, Rust, Go and Lua Resources Professionals Programming
Project Structure and Practices
Everything Python π for Developers
Functional
Object Oriented
Beyond the π
Must Have Tools
Optional: