Course 1/4 : Introduction to Machine Learning in Production , Coursera Notes
Course 1/4 : Introduction to Machine Learning in Production , Coursera Notes
Course 1/4 : Introduction to Machine Learning in Production (MLOps) , Coursera Notes
Course 1 Introduction to Machine Learning in Production: Week 1
Code Link :Github Repo
Reading Material Week 1:
- Machine Learning in Production: Why You Should Care About Data and Concept Drift
- Monitoring Machine Learning Models in Production
- A Chat with Andrew on MLOps: From Model-centric to Data-centric AI
Week 2
Refernce :
- 3 — Baselines
- Responsible Machine Learning with Error Analysis
- Want to track and compare all your ML experiments with zero extra work?
- Start tracking in 5 mins (or less via integration).
- Track first experiments
ML Experiment Tracking: What It Is, Why It Matters, and How to Implement It
Week 3
Resource:
- https://cs230.stanford.edu/blog/datapipeline/#best-practices
- https://csgaobb.github.io/Projects/DLDL.html
- https://blog.tensorflow.org/2021/01/ml-metadata-version-control-for-ml.html
- https://cloud.google.com/blog/products/ai-machine-learning/key-requirements-for-an-mlops-foundation
Reference
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