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Managing Model Registries

Managing model registries is crucial for maintaining the lifecycle of machine learning models. A model registry serves as a centralized repository where different versions of models can be stored, tracked, and managed. This is particularly important in environments where multiple teams are developing AI models, as it helps prevent duplication of effort and encourages reusability of existing models.

One effective tool for managing model registries is Amazon SageMaker Model Registry. It allows users to register models, track their versions, and view deployment events. This functionality is essential for investigating model failures and conducting experiments to improve model performance. The registry also provides a user-friendly interface for browsing models, viewing their metadata, and managing their approval status for production use 23.

Additionally, a well-structured model registry can enhance discoverability, making it easier for teams to find and utilize models that have already been developed. This can significantly improve productivity and efficiency within an organization 25. Overall, effective management of model registries is a key component of successful machine learning operations (MLOps).

How To Effectively Manage Deployed Models

 Towards Data Science

Most models never make it to production. We previously looked at deploying Tensorflow models using Tensorflow Serving. Once that process is completed, we may think that our work is all done. In…

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Track, manage, discover and reuse AI models better using Amazon SageMaker Model Registry

 Towards Data Science

MLDLC consists of two phases: experimentation followed by product-ionisation. During experimentation, data scientists build many models using different datasets, algorithms and hyper-parameters with…

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Register and Deploy Models with SageMaker Model Registry

 Towards Data Science

An Introduction To SageMaker Model Registry Continue reading on Towards Data Science

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ML model registry — the “interface” that binds model experiments and model deployment

 Towards Data Science

MLOps in Practice — A deep- dive into ML model registries, model versioning and model lifecycle management. Continue reading on Towards Data Science

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Start managing your models’ lifecycles better

 Towards Data Science

Hello beautiful people! This past few months I was working with my colleagues on a data science project for a publication in which we had to constantly update our training datasets, features, and…

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Advent of 2022, Day 14 – Registering the models

 R-bloggers

In the series of Azure Machine Learning posts: Important asset is the “Models” in navigation bar. This feature allows you to work with different model types -__ custom, MLflow, and Triton. What you do...

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MLOps in a Nutshell: Model Registry, ML Metadata Store and Model Pipeline

 Python in Plain English

The following is a collection of three shorter-form content pieces I’ve published on LinkedIn. They present three core MLOps (Machine Learning Operations) concepts in a concise manner: * Model Registr...

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Model Management in productive ML software

 Towards Data Science

Developing a good Proof of Concept for a machine learning problem can be hard sometimes. You are working through tons and tons of data engineering layers and testing many different models until…

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Beginner’s guide to Model Deployment

 Analytics Vidhya

Are you a beginner in the field of machine learning and wondering how to bring your project to live. Deploy Machine learning models using Flask and Heroku.

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Models and databases

 Django documentation

A model is the single, definitive source of information about your data. It contains the essential fields and behaviors of the data you’re storing. Generally, each model maps to a single database tabl...

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9. Model persistence

 Scikit-learn User Guide

After training a scikit-learn model, it is desirable to have a way to persist the model for future use without having to retrain. The following sections give you some hints on how to persist a scik......

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Model Deployment: a Successful Failure

 Towards Data Science

I did not deploy a SARIMA time series model using the statsmodels library that predicts future COVID-19 infection and death rates. Using Plotly to create interactive graphs of current and predicted…

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