Data Scientist/Analyst

Lucy Faithfull Foundation
Bromsgrove
1 day ago
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Overview

We are looking for a data professional to support and manage significant changes in the way our charity uses, processes and manages data. Our teams pride themselves on evidence-informed practice, using research and data to enhance their work at every stage. There are elements of our charity's work which are unique to our field, making our data highly valuable in contributing to the future of preventing child sexual abuse. We collect data all the time: on the individual progress of our clients, the reach of our campaigns and the demand for our support. As part of our new Tech and Data Strategy, we are taking the next stage in our use of data analysis and data science, ensuring that we use our data more effectively and efficiently to support our teams in preventing child sexual abuse.


We are looking for a Data Scientist/Analyst to help us make this change. You will be based in the LFF Research Team, reporting to our Director of Research and Impact. This role will facilitate better use, processing and management of data across the organisation. It will focus on four areas:



  • Data systems and structures
  • Data analysis
  • Data visualisation
  • Data security and compliance

The postholder will work alongside experienced researchers to develop a new portfolio of priority projects to enhance our work. With no fixed task list or assigned service, this role offers the freedom to explore and innovate, identifying where data, data science, and data systems can drive real change. This role will be remote or hybrid - we have offices in Bromsgrove, Epsom and Edinburgh.


The Lucy Faithfull Foundation (LFF) is a UK-wide charity that exists to prevent child sexual abuse and exploitation. We are here for everyone who needs us. We protect children by working with people who pose a risk and diverting them from causing harm. We support individuals and families who have been affected by abuse. And we help professionals who work with families to create safer environments for children through delivering risk assessments, interventions, training and consultancy.



  • Hybrid working (with a minimum of 2 days in the office per week; we ask for 3 days in the office per week for the first month)
  • NEST pension
  • 33 days annual leave rising to 38 days (inclusive of statutory bank holidays following qualifying period)
  • Up to 5 days learning and development per year
  • Flu jabs & eye tests
  • Season ticket loans
  • Charity discounts
  • Employee assistance programme
  • Option of private healthcare with Benenden


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