Senior Experimentation Analyst - Data

BBC
Salford
11 months ago
Applications closed

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Package Description

Job Reference:21362
Band:D
Salary:Up to £63,000 depending on relevant skills, knowledge and experience. The expected salary range for this role reflects internal benchmarking and external market insights.
Contract type:Permanent role
Location:Office Base can be Glasgow, Salford or London (This is a hybrid role and the successful candidate will balance office working with home working)

Role is mapped to Senior Data Analyst on our career path framework. 

We’re happy to discuss flexible working. Please indicate your choice under the flexible working question in the application. There is no obligation to raise this at the application stage but if you wish to do so, you are welcome to. Flexible working will be part of the discussion at offer stage.

Excellent career progression – the BBC offers great opportunities for employees to seek new challenges and work in different areas of the organisation.
Unrivalled training and development opportunities – our in-house Academy hosts a wide range of internal and external courses and certification.
Benefits - We offer a negotiable salary package, a flexible 35-hour working week for work-life balance and 25 days annual leave with the option to buy an extra 5 days, a defined pension scheme and discounted dental, health care and gym. You can find out more about working at the BBC by selecting this link to our

If you need to discuss adjustments or access requirements for the interview process please contact the . For any general queries, please contact:

Job Introduction

We have a great opportunity to join the product team on their growth journey. 

Whether they are looking to improve engagement in iPlayer or Sounds or to improve recommendations in News or Sport app, experimentation helps us make the right decisions for our users. 

We are looking for a Data Analyst/Scientist passionate about experimentation to join our team. You will help us drive the experimentation culture across all products at the BBC. 

You are confident with statistical analysis, already use data to identify problems most worth solving for product teams, are capable of designing, deploying and analysing product experiments. 

You will join a diverse group of highly skilled data analysts, experimentation specialists and product teams that are passionate about driving innovation through scaling experimentation. 

You will champion experimental design and methodologies to the rest of the BBC, advance the underlying theory and methods we use, work within the platform to create tools to speed up analysis, as well as find new ways of applying experimentation in a machine learning setting. Above all, you will play a pivotal role in driving the experimentation culture throughout the company.

Main Responsibilities

• Work closely with product and analytics teams to identify and solve problems through experimentation.
• Build, validate and help prioritise the roadmap of tests with data & insights.
• Apply experimental design principles to all briefs.
• Calculate and communicate baseline conversion rates, sample sizes, MDE, confidence levels and statistical power to product teams 
• Monitor and validate data quality in running experiments.
• Create and communicate experimental findings to product teams and to wider BBC teams
• Work with the platforms team to improve the capability of the experimentation platform
• Gather, cultivate and research experimentation best practices
• Research new methods for experimentation
• Create our internal experimentation teaching material
• Help the BBC develop procedures for iterating fast while managing risks in a big data environment
• Build networks and communities around data informed product development
• Advocate the role of experimentation in helping the BBC become a data informed organization.
• A community builder, you take an active interest in developing others.

Are you the right candidate?

The successful candidate will be an undergraduate or MSc degree in Statistics, Computer science or another quantitative field or have equivalent demonstrable experience. You will have significant practical expertise in experimentation design and analysis methodologies, have a solid foundation in causal inference methodology and how to identify causal effects. You will have experience with proactively building relationships across organizational boundaries and with multiple stakeholders

Essential skills: 

• Experience in Experimentation / AB Testing / CRO (Conversion Rate Optimisation)
• Experience analysing large data sets in SQL
• Experience in creating Visualisations or decks to share results
• Experience gained working on digital products and product analytics with knowledge of statistical methodologies for analysis
• Strong communication skills and can explain sophisticated topics in simple terms 

About the BBC

The BBC is committed to redeploying employees seeking suitable alternative employment within the BBC for different reasons and they will be given priority consideration ahead of other applicants. Priority consideration means for those employees seeking redeployment their application will be considered alongside anyone else at risk of redundancy, prior to any individuals being considered who are not at risk.

We don’t focus simply on what we do – we also care how we do it. Our values and the way we behave are important to us. Please make sure you’ve read about our values and behaviours .

Diversity matters at the BBC. We have a working environment where we value and respect every individual's unique contribution, enabling all of our employees to thrive and achieve their full potential.

We want to attract the broadest range of talented people to be part of the BBC – whether that’s to contribute to our programming or our wide range of non-production roles. The more diverse our workforce, the better able we are to respond to and reflect our audiences in all their diversity.

We are committed to equality of opportunity and welcome applications from individuals, regardless of age, gender, ethnicity, disability, sexual orientation, gender identity, socio-economic background, religion and/or belief. We will consider flexible working requests for all roles, unless operational requirements prevent otherwise.

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