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Data Analyst

Sagacity
City of London
2 weeks ago
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Role Overview

Join to apply for the Data Analyst role at Sagacity.

Principal Responsibilities
  • Turn large quantities of complex client data into insights which can be used to inform decision making and drive business benefit.
  • Identify incomplete and diverse data sets, pinpointing data issues that may affect the accuracy and completeness of any analysis performed.
  • Recognize the importance and value of understanding the data being analysed, validating the information provided and reconciling the data sets as part of the Data Analytics Cycle.
  • Produce data visualisations, detailed reporting and analytics underpinned with clear business commentary.
  • Work closely with multi-disciplined teams to deliver end-to-end client solutions in a timely manner.
  • Balance the technical and analytical demands of the role.
  • Be open minded and flexible with a thirst for knowledge and an appetite for continuous development.
Success Criteria
  • Clear, concise and insightful data analytics that enable clients to make sound business decisions based on fact.
  • Ability to translate data analysis into targeted information that can be converted into actionable improvements, based on specific client/industry needs.
  • Continued improvement of Sagacity’s Product Suite through the delivery of robust data insight.
  • Take accountability and ownership for client and internal deliverables.
  • Work as part of a Data Analytics team, proving knowledge transfer support, peer‑to‑peer reviews and mentoring to increase team skill sets and drive continuous learning.
Competencies and Behaviours
  • Proficiency in analytical programming language such as Python and/or SQL.
  • Understanding of relational databases and concepts for querying data.
  • Proficiency in tools like Tableau, and/or Power BI.
  • Balance time across multiple projects, planning ahead, working backwards from deadlines with all necessary steps (e.g., testing, QA). Proactively identify risk and suggest mitigation.
  • Is inquisitive, suggests "next steps" analysis and translates analytical findings to actionable insight.
  • Commercial experience within Telecoms, Banking or Utilities industries; or within a data‑related consultancy company would be beneficial.
  • Able to travel throughout the UK.
  • Can be based at London office (minimum 2 days per week on site).
  • Have the right to work in the UK.
Senior level

Not Applicable

Employment Type

Full-time

Job Function

Information Technology

Industries

IT Services and IT Consulting


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