Many-Model Machine Learning for Enterprises
DS & AI Practice Team This session is offered as a scheduled group session with our expert.


What To Expect
This presentation focuses on our experience designing and building a flexible, easy-to-use, and production-ready framework for many-model machine learning.
An Overview of Azure Machine Learning (ML)
MLOps Best Practices on Azure ML
Azure Databricks
Azure ML and Databricks Integration
Take a crash course on the Azure ML platform and learn how it helps in developing and managing machine learning models.
See how we implemented MLOps best practices on the Azure ML platform to deliver a foundation for many-model machine learning solutions that scaled to over 70,000 models.
Learn about Azure Databricks and how it helps in running and deploying interactive, scheduled, and real-time data analysis workloads in collaborative environments.
Learn how to use the integration to scale easily with Spark while using a unified code base.
An Overview of Azure Machine Learning (ML)
MLOps Best Practices on Azure ML
Take a crash course on the Azure ML platform and learn how it helps in developing and managing machine learning models.
See how we implemented MLOps best practices on the Azure ML platform to deliver a foundation for many-model machine learning solutions that scaled to over 70,000 models.
Azure Databricks
Azure ML and Databricks Integration
Learn about Azure Databricks and how it helps in running and deploying interactive, scheduled, and real-time data analysis workloads in collaborative environments.
Learn how to use the integration to scale easily with Spark while using a unified code base.
An Overview of Azure Machine Learning (ML)
Take a crash course on the Azure ML platform and learn how it helps in developing and managing machine learning models.
MLOps Best Practices on Azure ML
See how we implemented MLOps best practices on the Azure ML platform to deliver a foundation for many-model machine learning solutions that scaled to over 70,000 models.
Azure Databricks
Learn about Azure Databricks and how it helps in running and deploying interactive, scheduled, and real-time data analysis workloads in collaborative environments.
Azure ML and Databricks Integration
Learn how to use the integration to scale easily with Spark while using a unified code base.


About Our Speaker
Taylor van Valkenburg is a data scientist with Lingaro’s data science and AI practice. He has extensive experience delivering advanced analytics in a variety of sectors, such as human resources, procurement, and consulting. Taylor is passionate about using best practices in AI engineering alongside cutting-edge advancements in data science to build solutions that make an impact for businesses. Taylor speaks about topics related to data science and AI engineering and has a special interest in the intersection between emerging technologies and public policy.