Senior Data Analyst

NRG.
Middlesbrough
1 week ago
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Job Title: Data Analyst

Location: Middlesbrough


About the Company

Our client is an investment company looking to build out their Data team. With rapid company expansion in recent years, they aren't in any space to slow down.


About the Role

The Data Analyst will gather, analyze, and visualize data, collaborating with stakeholders to provide insights, develop dashboards, and ensure data integrity. Experience with Cloud Technologies, SQL is essential, with ETL development as a nice to have.


Key Responsibilities

  • Develop and maintain dashboards using Cloud Technologies.
  • Write and optimize SQL queries for data analysis.
  • Collaborate with stakeholders to translate business needs into data solutions.
  • Ensure data governance, accuracy, and security.


Key Skills & Experience

  • Strong SQL and Cloud proficiency.
  • Familiarity with light ETL processes.
  • Excellent stakeholder management and communication skills.
  • Dashboard development and data governance knowledge.


Why Join?

  • Collaborate with an innovative team.
  • Competitive salary and benefits.
  • Opportunities for career growth.


If this sounds interesting, make sure to apply!


This role does not offer sponsorship or relocation assistance.

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