/plushcap/analysis/whylabs/whylabs-posts-monitoring-high-performance-machine-learning-models-with-rapids-and-whylogs

Monitoring High-Performance Machine Learning Models with RAPIDS and whylogs

What's this blog post about?

RAPIDS and cuML are used by organizations to run machine learning experiments faster on larger datasets. However, monitoring high-performance ML models can be challenging due to the potential for model failures caused by bad data. To address this issue, WhyLabs developed an open-source library called whylogs, which enables a lightweight data monitoring layer throughout the MLOps pipeline at scale. By integrating whylogs with RAPIDS and cuML, users can increase their speed while having a unified framework to detect data quality issues and data drift regardless of training data size. The infrastructure-agnostic approach means that anyone using RAPIDS can easily plug whylogs into their workflows with just a few lines of code.

Company
WhyLabs

Date published
March 1, 2021

Author(s)
Andy Dang,, Bernease Herman

Word count
1328

Language
English

Hacker News points
None found.


By Matt Makai. 2021-2024.