Data engineering is a critical component of any data-driven business. In the retail industry, where Quantilus’ client is a Fortune 150 American chain of high-end department stores founded in 1858, customer loyalty data is particularly important as it can be used to inform marketing and customer retention strategies. However, the client used to rely on hand-coded data engineering framework, which was time-consuming and difficult to manage. The client partnered with Quantilus to develop an end-to-end, manageable data pipeline model powered by machine learning (ML).
Hand-coded customer loyalty data engineering frameworks are often inflexible, difficult to maintain, and can be prone to errors. This can result in delays in data processing, incomplete or inaccurate data, and a lack of visibility into the data pipeline. This can impact business operations, customer loyalty, and overall revenue.
An end-to-end, manageable data pipeline model powered by machine learning (ML) helped address the client’s problems by automating the data engineering process and improving the quality and accuracy of customer loyalty data.
The solution included features such as:
Some of the benefits of automating the client’s existing hand-coded customer loyalty data engineering framework to an end-to-end, manageable data pipeline model include:
Automating the hand-coded customer loyalty data engineering framework to an end-to-end, manageable data pipeline model powered by ML helps the client to improve the quality and accuracy of customer loyalty data, improve efficiency and productivity, and drive increased customer loyalty and revenue over time.
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