There is a demand for implementing and automating continuous integration, continuous delivery (CD), and continuous training for ML systems. Also known as MLOps, it is an ML engineering trend that strives at consolidating and automating ML system pipelines.

Technology innovation leaders are keen to apply DevOps principles for AI and ML projects. Implementing MLOps suggests automation and monitoring at all steps of the ML system building. Analysts say the real challenge isn’t building an ML model, the challenge is making an integrated ML system and to continuously run it in production.

Read more: https://analyticsindiamag.com/how-ml-pipelines-are-evolving-to-make-way-for-mlops/

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How ML Pipelines Are Evolving To Make Way For MLOps
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