FTC Data Scientist

Leapfrog Recruitment Consultants
Isle of South Uist
3 weeks ago
Create job alert

This temporary contract offers a unique opportunity for a data specialist to support our clients' Risk and Operations Division on a fixed term basis until the end of 2027. The role will focus on developing data-driven insights, building dashboards and assisting with the automation of processes used to monitor risk and supervisory activity.


Location
Responsibilities

  • Designing dashboards and tools to visualise regulatory and risk data.
  • Supporting the automation of manual reporting and supervision processes.
  • Using analytical tools and scripts to generate insights and reports.
  • Assisting with the integration of systems and enhancement of internal datasets.
  • Collaborating with supervisors and technical staff on priority projects.

Qualifications

The ideal candidate will have practical experience with data tools such as Power BI, Alteryx, Python, or R. A strong understanding of data modelling, automation and regulatory reporting is desirable. A background in data science, analytics, or operational risk is preferred.


For a full job description or further information on this role please call 711188, or email .


If you wish to apply for this role, please submit your CV via the Apply Now button below.


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