Natural Language Processing Best Practices & Examples
-
Updated
Aug 30, 2022 - Python
Natural Language Processing Best Practices & Examples
Python notebooks with ML and deep learning examples with Azure Machine Learning Python SDK | Microsoft
Use QLoRA to tune LLM in PyTorch-Lightning w/ Huggingface + MLflow
Kedro plugin to support running workflows on Microsoft Azure ML Pipelines
MLOps samples and docs from real world projects in manufacturing industry
Hands on lab for Neo4j and Azure
Get started with Automated Machine Learning (AutoML) and Machine Learning Operations (MLOps) in Azure Machine Learning
An E2E solution of the Data Resources on Azure using the Snapshot Serengeti dataset. This E2E solution focuses Azure Synapse Analytics, Power Bi & the Azure Data Factory.
Ready to use scoring engines for Image, Text and Time Series
Deploy and Serve Model using Azure Databricks, MLFlow and Azure ML deployment to ACI or AKS
The Vitastic solution accelerator provides a pre-packaged solution to build web interfaces that serve object detection models deployed in Azure ML or Custom Vision with customizable themes.
Audio Analytics with Azure Machine Learning
Exemple AutoML avec Azure ML service SDK
The Near Real-time Fraud and Compliance Analytics Accelerator simplifies the fraud detection and reporting process, cutting down the time to action to prevent fraud as well as enables near real-time dashboards and analytics for streaming data.
This project is part of the Udacity Azure ML Nanodegree. In this project, we use Azure to configure a cloud-based machine learning production model, deploy it, and consume it. We also create, publish, and consume a pipeline.
This article presents a reference architecture to enhance the compatibility of Siemens Industrial Artificial Intelligence (Industrial AI) products with Microsoft Azure.
Notebooks Python Azure ML service SDK pour préparation et transformation de données
Add a description, image, and links to the azure-ml topic page so that developers can more easily learn about it.
To associate your repository with the azure-ml topic, visit your repo's landing page and select "manage topics."