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Introduction to MLOps for Data Science
Latest   Machine Learning

Introduction to MLOps for Data Science

Last Updated on July 26, 2023 by Editorial Team

Author(s): Amit Chauhan

Originally published on Towards AI.

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What is MLOps?

If we break down the word itself, it is a combination of 2 words, machine learning, and operations. Where machine learning stands for model development or any kind of code development and operations means production and deployment of code.

A more technical definition of MLOps is a set of principles and practices to standardize and streamline the machine learning lifecycle management.

Well, it is not a new technology or tool but rather a culture with a set of principles, guidelines defined in a machine learning world to seamlessly… Read the full blog for free on Medium.

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