Azure Senior Data Engineer
Manchester, Greater Manchester / £75000 - £80000
£75000 - £80000
Manchester, Greater Manchester
Senior Data Engineer
Hybrid, 3x per week in office
Up to £80, 000
A leading commercial credit management company is looking for a Senior Data Engineer to join their Analytics function.
This company works in the commercial credit space and provides solutions for their consumers. They are backed by a major US hedge fund, and focus on business lending and purchasing portfolios on nonperforming debt. They are very data-focused, and are expanding into different geographies.
This role will sit in their small data engineering team within their Analytics function. Currently, work is being concentrated on pricing models; each engineer focuses on a different area of data, e.g. new accounts, financial reconciliation, transactions etc. This role will 'float' between them.
The role and responsibilities
- Creating data orchestration pipelines in Azure Data Factory
- Developing relational database structures and data warehouse procedures
- Optimising, automating, and productionising business processes, data, and models
- Mentoring small team of data engineers
Your skills and experience
- Experience with Azure, Databricks, SQL and Python (essential)
- Experience in the Financial services sector (highly desirable)
- Understanding of consumer behaviour
- Knowledge of credit
- Up to £80, 000 salary with discretionary bonus
- Free HelloFresh box every 2 weeks
- Flexible working scheme
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We are in a time in which what we do with Data matters. Over the last few years, we have seen a rapid rise in the number of Data Scientists and Machine Learning Engineers as businesses look to find deeper insights and improve their strategies. But, without proper access to the right Data that has been processed and massaged, Data Scientists and Machine Learning Engineers would be unable to do their job properly. So who are the people who work in the background and are responsible to make sure all of this works? The quick answer is Data Engineers!… or is it? In reality, there are two similar, yet different profiles who can help help a company achieve their Data-driven goals. Data Engineers When people think of Data Engineers, they think of people who make Data more accessible to others within an organization. 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Keepers of the Data Kingdom: the Analytics Engineer | Harnham US Recruitment post
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Larger businesses, on the other hand, may already have a Data team in place. In this case, an Analytics Engineer adds to your team, something like an additional set of eyes increasing insight drawn from those large swathes of Data we spoke about earlier.So, what’s next for the role of Analytics Engineer? Who knows? The roles of any Data industry professional is constantly evolving. If you’re interested in Analytics Engineering, Machine Learning, Data Science, or Business Intelligence just to name a few, Harnham may have a role for you. Check out our latest Data & Analytics Engineering jobs or contact one of our expert consultants to learn more. For our West Coast Team, contact us at (415) 614 – 4999 or send an email to firstname.lastname@example.org. For our Arizona Team, contact us at (602) 562 7011 or send an email to email@example.com. For our Mid-West and East Coast teams contact us at (212) 796-6070 or send an email to firstname.lastname@example.org.
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