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Practice paper

Adapting the enterprise data lake architecture for marketing analytics

Roger Kamena
Applied Marketing Analytics: The Peer-Reviewed Journal, 6 (1), 65-72 (2020)
https://doi.org/10.69554/CMXO7389

Abstract

Data lakes have evolved over the last decade from highly complex IT infrastructures on-premise to simpler serverless cloud environments. This change makes data lakes much less difficult to maintain and operate, which provides an opportunity to democratise them beyond operational business intelligence teams to a wider audience, namely marketing analytics practitioners. At the same time, the availability of marketing data has also evolved over the last decade. Marketing technology platforms have proliferated the variety, velocity and volume of data for marketers to process. This paper considers how a data lake architecture could be adapted for marketers to help them go further with their data.

Keywords: data lake; data management systems; Big Data analytics; cloud analytics; marketing data; data architecture

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Author's Biography

Roger Kamena is Vice-President of Data Science and Technology at Adviso Conseil. He is a recognised authority on data management platforms and programmatic media buying and has worked on the implementation of complex advertising technologies and the development of audience management strategies for various leading brands. He has extensive skills in e-commerce, search engine marketing, programmatic advertising, Big Data solutions, ad tech and performance optimisation of complex media ecosystems.

Citation

Kamena, Roger (2020, June 1). Adapting the enterprise data lake architecture for marketing analytics. In the Applied Marketing Analytics: The Peer-Reviewed Journal, Volume 6, Issue 1. https://doi.org/10.69554/CMXO7389.

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cover image, Applied Marketing Analytics: The Peer-Reviewed Journal
Applied Marketing Analytics: The Peer-Reviewed Journal
Volume 6 / Issue 1
© Henry Stewart
Publications LLP

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