In this session, we look at how one of the world’s largest CPG company setup a scalable MLOps pipeline for a demand forecasting use case that predicted demand at 100,000+ DFUs (demand forecasting units) on a weekly basis across more than 20 markets. This implementation resulted in significant cost savings in terms of improved productivity, reduced cloud usage and faster time to value amongst other benefits. You will leave this session with a clearer picture on the following:

– Best practices in scaling MLOps with Databricks and Azure for a demand forecasting use case with a multi-market and multi-region roll-out.
– Best practices related to model re-factoring and setting up standard CI-CD pipelines for MLOps.
– What are some of the pitfalls to avoid in such scenarios?

Talk by: Sunil Ranganathan and Vinit Doshi

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