SonicJobs Logo
Left arrow iconBack to search

Data Engineer

Morgan McKinley
Posted 15 hours ago, valid for a month
Location

London, Greater London EC1R 0WX

Salary

£45,000 - £54,000 per annum

info
Contract type

Full Time

In order to submit this application, a Reed account will be created for you. As such, in addition to applying for this job, you will be signed up to all Reed’s services as part of the process. By submitting this application, you agree to Reed’s Terms and Conditions and acknowledge that your personal data will be transferred to Reed and processed by them in accordance with their Privacy Policy.

Sonic Summary

info
  • The position is for a Data Engineer / Data Analyst within the Business Operations team, focusing on bridging various departments and managing daily operations.
  • Key responsibilities include developing automation tools for performance data, creating market performance communications, and generating actionable insights.
  • Candidates should have at least 3 years of experience in data visualization, scripting, and data metrics models, as well as strong skills in Python and advanced SQL.
  • The role is a 12-month contract with hybrid working arrangements, requiring presence in the London HQ three days a week.
  • Salary is based on a day rate inside IR35, with specific pay rates being indicative.

Seeking a Data Engineer / Data Analyst to join the Business Operations team playing a crucial role in bridging the gap between Business Development, Engineering, Analytics and managing the day to day operations. You will be responsible for developing automation tools to help gather performance data and curate comprehensive market performance communications and data visualisations. You will generate actionable insights from performance data, drive partner compliance and help scale the business area.

Description

  • Develop automation tools to collate supplied performance data and merge various data sources
  • Develop and generate internal and external communications that provide actionable insights
  • Partner with Business Development teams to create customised dashboards on the in-house analytics platform
  • Development of data models using Oracle to summarise complex data into usable, digestible datasets, dashboards and reports
  • Develop, test and implement scheduled and ad hoc reports to enable data driven decisions
  • Investigation, profiling and resolution of performance bottlenecks

Key qualifications

  • 3+ years experience in data visualisation, scripting and applying data metrics models
  • Strong proficiency in Python programming (with emphasis on data structures and Excel scripting)
  • Skilled in advanced SQL performance tuning, particularly involving complex PL/SQL development, capable of re-writing SQL to reduce execution time
  • Experience in applying data science / machine learning techniques to provide solutions to real business problems
  • Detail oriented and self-motivated individual, with excellent verbal and written communication skills

Please note - This is an initial 12m contract, hybrid working 3 days per week in the London HQ, paid on a day rate inside IR35.

Morgan McKinley is acting as an Employment Agency and references to pay rates are indicative.

Morgan McKinley encourages applications from all qualified candidates who represent the full diversity of communities in the UK. Accommodations are available on request for candidates taking part in all aspects of the selection process.

BY APPLYING FOR THIS ROLE YOU ARE AGREEING TO OUR TERMS OF SERVICE WHICH TOGETHER WITH OUR PRIVACY STATEMENT GOVERN YOUR USE OF MORGAN MCKINLEY SERVICES.

Apply now in a few quick clicks

In order to submit this application, a Reed account will be created for you. As such, in addition to applying for this job, you will be signed up to all Reed’s services as part of the process. By submitting this application, you agree to Reed’s Terms and Conditions and acknowledge that your personal data will be transferred to Reed and processed by them in accordance with their Privacy Policy.