Within decentralized organizations, the local demand for recommender systems to support business processes grows. The diversity in data sources and infrastructure challenges central engineering teams. Achieving a high delivery velocity without technical debt requires a scalable approach in the development and operations of recommender systems. At the HEINEKEN Company, we execute a machine learning operations method with five best practices: pipeline automation, data availability, exchangeable artifacts, observability, and policy-based security. Creating a culture of self-service, automation, and collaboration to scale recommender systems for decentralization. We demonstrate a practical use case of a self-service ML workspace deployment and a recommender system, that scale faster to subsidiaries and with less technical debt. This enables HEINEKEN to globally support applications that generate insights with local business impact.
@article{arxiv.2109.09231,
title = {Scaling Enterprise Recommender Systems for Decentralization},
author = {Maurits van der Goes},
journal= {arXiv preprint arXiv:2109.09231},
year = {2021}
}
Comments
Accepted as Industry Poster at RecSys '21: Fifteenth ACM Conference on Recommender Systems