MandM x Dataiku: Improving Customer and Employee Satisfaction
See how MandM used customer lifetime value scores to understand inherent future value and deliver personalized experiences.
READ THE FRONTRUNNER AWARDof customer lifetime value predictions scored daily
faster operationalization versus a code-only approach
of models monitored in production
The accelerated growth of MandM in 2020 meant more customers and, in turn, more data. MandM’s rapid growth resulted in two big challenges:
MandM’s first machine learning (ML) models were written in Python and run on data scientists’ local machines, and they needed a way to prevent interruptions or failure of the ML deployments.
In an attempt to tackle the second challenge, the team moved these Python files to Google Cloud Platform (GCP). However, once the number of models in production went from one to three and more, the team quickly realized the burden involved in maintaining models. There were too many disconnected datasets and Python files running on the virtual machine, and the team had no way to check or stop the ML pipeline. They needed another solution.
MandM turned to the powerful combination of Dataiku and GCP to answer their two critical challenges. With Google BigQuery’s fully-managed, serverless data warehouse, MandM could break the data silos and democratize data access across teams. At the same time, thanks to Dataiku’s visual and collaborative interface for data pipelining, data preparation, model training, and MLOps, MandM could also easily scale out their models in production without failure or interruptions in a transparent and traceable way.
MandM now has hundreds of live models, all with visibility into model performance metrics, clear separation of design and production environments, and many more MLOps capabilities built into the Dataiku platform.
Teams can now easily push-down and offload computations for both data preparation and ML to GCP. Using Dataiku means this capability is accessible to all user profiles across MandM, without knowing the underlying technologies or complexity.
The team is also particularly proud of the work they’ve done to build out a feature library with Dataiku that contains more than 400 features specific to MandM’s business. Now, the feature library is the first place people go, sort of like a shop window for ML projects — it takes away the monotony and repetition of their work.
Having a platform like Dataiku allows our data scientists to focus on building cool things, not spending hours and hours on maintenance and making sure things are running. With workflows deployed in Dataiku, we save literally days of work every month.Ben Powis Head of Data Science at MandM
The benefits MandM have seen by using Dataiku and GCP aren’t limited to time saved from tedious maintenance work — they are also having more impact across the business. The data team is now able to deliver a variety of business solutions on problems from adtech to customer lifetime value, whether that’s a dashboard, a more detailed piece of analysis, or an ML project deployed in production.
Here’s a detailed look at some of their use cases:
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