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MLOps and the evolution of data science

IBM Journey to AI blog

MLOps fosters greater collaboration between data scientists, software engineers and IT staff. Origins of the MLOps process MLOps was born out of the realization that ML lifecycle management was slow and difficult to scale for business application. How to use ML to automate the refining process into a cyclical ML process.

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Driving advanced analytics outcomes at scale using Amazon SageMaker powered PwC’s Machine Learning Ops Accelerator

AWS Machine Learning Blog

Many businesses already have data scientists and ML engineers who can build state-of-the-art models, but taking models to production and maintaining the models at scale remains a challenge. Machine learning operations (MLOps) applies DevOps principles to ML systems.

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Principles of MLOps

Heartbeat

Machine Learning Operations (MLOps) are the aspects of ML that deal with the creation and advancement of these models. In this article, we’ll learn everything there is to know about these operations and how ML engineers go about performing them. What is MLOps? They might also help with data preparation and cleaning.

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MLOps Is an Extension of DevOps. Not a Fork — My Thoughts on THE MLOPS Paper as an MLOps Startup CEO

The MLOps Blog

Just so you know where I am coming from: I have a heavy software development background (15+ years in software). Lived through the DevOps revolution. Came to ML from software. Founded two successful software services companies. If you’d like a TLDR, here it is: MLOps is an extension of DevOps.

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MLOps and DevOps: Why Data Makes It Different

O'Reilly Media

This is both frustrating for companies that would prefer making ML an ordinary, fuss-free value-generating function like software engineering, as well as exciting for vendors who see the opportunity to create buzz around a new category of enterprise software. Can’t we just fold it into existing DevOps best practices?

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Software Engineering Patterns for Machine Learning

The MLOps Blog

This situation is not different in the ML world. Data Scientists and ML Engineers typically write lots and lots of code. Related post MLOps Is an Extension of DevOps. is an experiment tracker for ML teams that struggle with debugging and reproducing experiments, sharing results, and messy model handover.

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MLOps Without Magic

Mlearning.ai

My interpretation to MLOps is similar to my interpretation of DevOps. As a software engineer your role is to write code for a certain cause. DevOps cover all of the rest, like deployment, scheduling of automatic tests on code change, scaling machines to demanding load, cloud permissions, db configuration and much more.

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