Data Engineer

Understanding Solutions
London
3 days ago
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Data Engineer – Customer Data Platform (Amperity)Contract Length:

6 MonthsLocation:

Remote (UK + EU Candidates Only)Start Date:

ASAP

Ready to make your application Please do read through the description at least once before clicking on Apply.

Are you a data engineer with hands-on experience in CDPs like Amperity?

We’re looking for a Data Engineer to support a high-impact customer data project and work with a globally known organisation to achieve project goals for their end client. You'll build and optimise data workflows, unify customer records across platforms, and enable advanced segmentation for marketing and analytics.

You'll be working with structured and unstructured customer data, ensuring quality, governance, and performance while collaborating closely with marketing, analytics, and IT. If you're a data expert that likes the sound of this and it matches your experience, please let me know.

Experience Needed:Experience using Amperity or similar customer data platformsConfident writing SQL to transform and work with dataKnowledge of how to match and unify customer data from different sourcesComfortable working with APIs and data formats like JSON and XMLUnderstands how customer data is used for marketing and segmentationAware of best practices around data quality, documentation, and governanceStrong communicator and able to work well with different teams

Bonus Points:• Experience with AmpID, Amp360, and AmpIQ• Cloud platform exposure (AWS, GCP, or Azure)• Background in CRM or digital marketing analytics

Data Engineer – Customer Data Platform (Amperity)Contract Length:

6 MonthsLocation:

Remote (UK + EU Candidates Only)Start Date:

ASAP

If this sounds like your next challenge, apply now with your latest CV. For more details, reach out to Ross Britton @ Understanding Solutions via LinkedIn.

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