The collaboration workspace for Machine Learning
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Updated
Nov 1, 2022 - Kotlin
The collaboration workspace for Machine Learning
Azure MLOps (v2) solution accelerators. Enterprise ready templates to deploy your machine learning models on the Azure Platform.
🛠 MLOps end-to-end guide and tutorial website, using IBM Watson, DVC, CML, Terraform, Github Actions and more.
Azure MLOps (v2) solution accelerators. Enterprise ready templates to deploy your machine learning models on the Azure Platform.
Azure MLOps (v2) solution accelerators. Enterprise ready templates to deploy your machine learning models on the Azure Platform.
Example project with a complete MLOps cycle: versioning data, generating reports on pull requests and deploying the model on releases with DVC and CML using Github Actions and IBM Watson. Part of the Engineering Final Project @ Insper
🍪 Cookiecutter template for MLOps Project. Based on: https://mlops-guide.github.io/
Open-source reference monorepo for end-to-end MLOps on Snowflake, centered around Snowflake-native MLOps tooling (Feature Store, Model Registry, Tasks) in a hub-spoke layout. Questions, issues, or ideas about Snowflake ML in general are warmly welcomed.
Reference code base for ML Engineering in Action, Manning Publications Author: Ben Wilson
Artificial Intelligence Labs - Udemy
Receipes of publicly-available Jupyter images
Research-first machine learning experiment tracker for comparing model metrics, scalar curves, artifacts, and experiment lineage.
Example end-to-end ml pipeline build with the Sagemaker Python SDK
Project Includes python script (which runs in an MLOps environment) with the task of auto training Models until a desired accuracy is achieved.
A starter template for machine learning projects as a tutorial base
This repository demonstrates how to set up automated model training workflows triggered by AWS S3 using Kestra. When new customer interaction data is added to S3, the system retrains recommendation models to enhance personalization. Configuring environment variables with GitHub and AWS credentials.
interactive coding environment for microservices demo
Gaussian Time Series model and MLOps pipeline using the AWS to deploy the model in a production environment.
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