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YesterdayMIDA002Data AnalystUS$100,000 to US$140,000paVarious, Powys, United KingdomPermanentThe company Want to solve challenging problems in a cutting-edge technological environment? An elite global financial advisory and asset management firm is loo...

Franklin Fitch
Powys
4 days ago
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The company


Want to solve challenging problems in a cutting-edge technological environment?



An elite global financial advisory and asset management firm is looking to hire a Data Engineer in its New York office.



The firm values employee growth and development, and has an innovative culture which promotes collaboration and creativity.





The role



Your key duties will include:

  • Design and manage data pipelines and ensure data integrity and security

  • Automate data workflows, execute complex data transformations, and carry out advanced analytics

  • Ensure timely delivery of project deliverables through effective project management

  • Create insightful and interactive dashboards to assist business decision-makers

  • Collaborate with colleagues across the firm to understand data requirements and provide solutions that satisfy business needs with clarity and effectiveness

  • Keep up to date with industry trends and best practices, and proactively suggest improvements for internal data analytics processes and technologies





    What you will bring to the role:

  • Over five years’ experience in data analysis – prior use of PowerBI, Snowflake, and Alteryx is essential

  • Expertise in SQL and prior use of relational databases is required, Python experience is preferred but not essential

  • Confident communicating complex concepts to colleagues in technical and non-technical roles

  • A Bachelor’s degree in a related field (a Master’s degree is preferred but not essential)

  • Experience with the software development process and/or project management in the financial services and banking sector is preferred but not essential





    Location and hours:

  • Location: New York

  • Hours: full-time





    To apply:

  • Early applications are encouraged as the position may be filled before the closing date

  • Get in touch to find out more and submit an application

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