Data Discovery for ML Engineers / DataScienceCentral.com
Real-world production ML systems consist of two main components: data and code. Data is clearly the leader, and rapidly taking center stage. Data defines the quality of almost any ML-based product, more so than code or any other aspect. In Feature Store as a Foundation for Machine Learning, we have discussed how feature stores are an integral part of the machine learning workflow. They improve the ROI of data engineering, reduce cost per model, and accelerate model-to-market by simplifying feature definition and extraction.
Apr-5-2022, 23:43:03 GMT