Junior Data Scientist

British Heart Foundation
Darlington
1 day ago
Create job alert

Are you passionate about the world of data and its potential to inform decision making and drive organisational change? We have an exciting opportunity for a Junior Data Scientist to use the power of data science to help fund life‑saving research.


About the role

We’re looking for a Junior Data Scientist to support the Health Insights team in delivering high‑quality health and research insights that inform organisational decision making.


As a Junior Data Scientist you’ll help identify opportunities to apply data science, develop models and analytical pipelines, collaborate with data scientists on analytical projects, and contribute to the development of our tools and ways of working.


You will extract and analyse data from multiple sources, create meaningful insights and explore the latest methodologies within the machine learning and natural language processing space. You will share your expertise and present any key findings to stakeholders at BHF.


About you

With a qualification in a quantitative field or equivalent industry experience, you’ll have a strong understanding of data science techniques (advanced analytics and machine learning) covering areas such as predictions and natural language processing.


You’ll have experience of working with data‑ either statistical modelling or using a programming language such as R, Python, SQL or similar. A logical thinker you’ll be comfortable using advanced analytics and data science techniques to predict patterns and trends from complex data sets.


With strong communication skills, you will communicate technical concepts in a clear and concise way to technical and non‑technical audiences.


You’ll have a proactive approach to learning and stay up to date with the latest data science practices.


You will be working closely with our Research Insights & Impact team, so experience with research funding, outcomes or impact data would be beneficial.


If you share our values and are passionate about making a difference, we would love to hear from you.


Belonging at BHF

We are committed to fostering a workplace where everyone feels valued and supported. Embracing different perspectives and backgrounds strengthens our organisation and empowers us to make a real difference together.


To hear from our people, check out Belonging at BHF.


Working arrangements

This is a fixed term contract for 12 months.


This is a hybrid role, where your work will be split between your home and at least one day per week, on average, in our London Office. This may vary from time to time, so you will need to work in a flexible way to unlock your best work for our cause.


Interview process

The interview process will be a single stage held over MS Teams.


How to apply

It’s quick and easy to apply for a role at the BHF. Just click on the apply button below. All you’ll need is an up‑to‑date CV and a supporting statement outlining your interest in the role and how you meet the role’s criteria.


Our recruitment processes are fair, accessible, and inclusive. BHF uses anonymous CV software as part of the application journey.


Should you need any adjustments to the recruitment process, at either application or interview, please contact us.


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