Loading...

Companies are trying to gain a competitive edge by building strong analytical foundations and upping their skills in data engineering, data science and business intelligence. But these new technologies and paradigms come with their shortcomings, pitfalls and antipatterns that novice and experienced data professionals can fall into and mistakenly generate technical debt.

Join our seasoned Avanade data experts in this session covering architecture design patterns, common mistakes when implementing an analytical foundation with Microsoft Azure and how to resolve them. The following topics will be covered:

  • Elements to consider when starting an analytics initiative
  • Architecture Design Patterns with Databricks, Data Factory, SQL Server, Synapse and Power BI
  • Common Mistakes and Solutions (organisation, teams, communications, SDLC)
  • Best practices to succeed in your analytics initiative

Watch Now

Speakers

yazid grim

Yazid Grim
Data Engineering, Group Manager

leili noorian

Leili Noorian
Data Engineering, Senior Consultant

Insights

COVID-19 – we’re here to help

Your guide to remote working, for the employer and employee.

Microsoft Azure

Get the most from the speed, scalability and economics of the cloud.

Next steps

Find out how our insights can be applied to help your business realise results.

CLOSE
Modal window
Contract
Share this page