Azure AI Engineer Training in Chennai | Microsoft Azure AI

how does azure handle model versioning n.w
1 / 3
Embed
Share

Join Azure AI Engineer Training in Chennai at VisualPath and master AI solutions with hands-on projects and expert guidance. Our Microsoft Azure AI Online Training includes live sessions, recorded classes, and flexible learning options. Get globally

  • azure ai

Uploaded on | 5 Views


Download Presentation

Please find below an Image/Link to download the presentation.

The content on the website is provided AS IS for your information and personal use only. It may not be sold, licensed, or shared on other websites without obtaining consent from the author. If you encounter any issues during the download, it is possible that the publisher has removed the file from their server.

You are allowed to download the files provided on this website for personal or commercial use, subject to the condition that they are used lawfully. All files are the property of their respective owners.

The content on the website is provided AS IS for your information and personal use only. It may not be sold, licensed, or shared on other websites without obtaining consent from the author.

E N D

Presentation Transcript


  1. How Does Azure Handle Model Versioning and Updates? How Does Azure Handle Model Versioning and Updates? AI and machine learning (ML) AI and machine learning (ML) workflows require effective model versioning and updates to maintain accuracy, reliability, and seamless deployment. Microsoft Azure offers powerful tools for managing these processes through its AI and ML services, including Azure Machine Learning (Azure ML) and Azure DevOps. This article explores how Azure enables efficient model version control and updates to optimize the ML lifecycle. 1. Model Versioning in Azure 1. Model Versioning in Azure Model versioning allows data scientists and engineers to track different iterations of a model, compare performance, and manage deployment effectively. Azure Machine Learning provides several key features to enable robust model versioning:Azure AI Engineer Certification Azure AI Engineer Certification a. a. Model Registration in Azure ML Model Registration in Azure ML Azure ML offers a model registry and versioned. Each model registered in the workspace is assigned a version number, making it easy to monitor and retrieve specific iterations. The following are key aspects of model registration: model registry where trained models can be stored, tracked, Each time a model is registered, Azure ML assigns a unique version number.

  2. Metadata such as performance metrics, dataset versions, and training configurations can be stored alongside the model. Registered models can be deployed across different environments (development, testing, and production) while maintaining version control. b. Tracking Model Versions Using Azure ML Studio b. Tracking Model Versions Using Azure ML Studio Azure ML Studio provides a visual interface to manage models, track their lineage, and compare different versions. Users can:Azure AI Engineer Training Azure AI Engineer Training View model history and associated training runs. Compare metrics such as accuracy, precision, and recall. Revert to previous model versions when needed. 2. Updating Models in Azure 2. Updating Models in Azure As new data becomes available, models need to be retrained, optimized, and redeployed. Azure offers multiple strategies for updating models efficiently: a. Automated Retraining and a. Automated Retraining and Deployment Deployment With Azure Machine Learning Pipelines Azure Machine Learning Pipelines, organizations can automate model retraining and deployment. Key features include: Data drift detection Data drift detection: Azure ML monitors data inputs to identify shifts in data distribution that may affect model performance. Scheduled retraining Scheduled retraining: Users can set up periodic retraining jobs to ensure models remain accurate.Microsoft Azure AI Online Training Microsoft Azure AI Online Training CI/CD for ML (MLOps) CI/CD for ML (MLOps): Integration with Azure DevOps retraining and redeployment of updated models using Continuous Integration/Continuous Deployment (CI/CD) pipelines. Azure DevOps allows automated b. Canary Deployments and A/B Testing b. Canary Deployments and A/B Testing Azure ML provides safe deployment strategies such as canary deployments A/B testing A/B testing: canary deployments and Canary deployments Canary deployments allow a small percentage of users to interact with the new model version before full rollout, reducing risk. A/B testing A/B testing helps compare different model versions in production to determine the best-performing model before final deployment. c. Model Rollback and Version Control c. Model Rollback and Version Control

  3. If a newly deployed model underperforms or causes unexpected issues, Azure enables quick rollback to previous versions. With Azure ML s model registry, organizations can revert to a previous model version instantly, minimizing downtime and operational risk. 3. Integrating Azure Model Versioning with MLOps 3. Integrating Azure Model Versioning with MLOps MLOps (Machine Learning Operations) is essential for managing ML workflows efficiently. Azure integrates model versioning with MLOps through:Microsoft Azure AI Engineer Training Azure AI Engineer Training Microsoft Azure DevOps and GitHub Actions Azure DevOps and GitHub Actions: Facilitates version control for ML pipelines, ensuring traceability and reproducibility. Azure Kubernetes Service (AKS) Azure Kubernetes Service (AKS) and Azure Functions and Azure Functions: Enable scalable deployment of model versions while ensuring high availability. Monitoring and Logging Monitoring and Logging: Azure ML logs model performance metrics, helping teams analyze and optimize updates. Conclusion Conclusion Azure s comprehensive Azure s comprehensive model versioning and update capabilities ensure that ML models remain efficient, accurate, and easy to manage. By leveraging tools like Azure ML Registry, automated pipelines, and MLOps integration, organizations can streamline their AI workflows, maintain transparency, and optimize model performance with minimal operational disruption. Whether deploying new models, monitoring data drift, or rolling back to previous versions, Azure provides a robust infrastructure to effectively handle the entire ML lifecycle. Trending courses: 1. Trending courses: 1. AI Security IICS/IDMC (CAI,CDI) IICS/IDMC (CAI,CDI) AI Security 2. 2. Azure Data Engineering Azure Data Engineering 3. 3. Informatica Cloud Informatica Cloud Visualpath stands out as t Visualpath stands out as the best online software training institute in Hyderabad. he best online software training institute in Hyderabad. For More Information about For More Information about the the Azure AI Engineer Online Training Azure AI Engineer Online Training Contact Call/WhatsApp: Contact Call/WhatsApp: +91-7032290546 Visit: Visit: https://www.visualpath.in/informatica-cloud-training-in-hyderabad.html

Related


More Related Content