Senior Data Engineer

BBC
Newcastle upon Tyne
1 month ago
Applications closed

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Package Description

Job Reference:14516
Band:D
Salary:Up to £64,000 depending on relevant skills, knowledge and experience. The expected salary range for this role reflects internal benchmarking and external market insights.
Contract type:Permanent
Location:Office Base is Newcastle. This is a hybrid role and the successful candidate will balance office working with one day a fortnight in Newcastle.

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 candidate .

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

Introduction


Product Group is responsible for the design, development, and delivery of the BBC’s portfolio of digital products. 

Including iPlayer, Sounds, Bitesize, and the BBC News and BBC Sport apps and website, our portfolio is diverse and contains some of the largest and highest-profile properties on the UK internet. We’re a huge streaming media destination, a news source trusted across the world, a provider of educational and entertaining content to children of all ages, and a sports results, analysis, and commentary service, and much more besides. It's an unparalleled portfolio of products, and our strength is our range and breadth. Working with the BBC’s content divisions, our focus now is on driving engagement across our portfolio so that the BBC online becomes a valued daily habit for all audiences just as television and radio have been over the last century.

Data is fundamental to our future: both in helping us prioritise and shape our work and in creating richer, more personalised experiences for our audiences. And our portfolio means that we’ve got one of the widest, most diverse, and most exciting datasets to work within the UK.

SDD24

Role Responsibilities

The Senior Data Engineer is a new role that will support the newly created Product Data Domain teams. You will help to build ETL pipelines to ingest and transform data to develop the data products that will power key value use cases across the BBC. You will work in an agile multi-disciplinary team alongside product analytics developers, product data managers, data modelers and data operations managers, ensuring that all work delivers maximum value to the BBC.

Role and responsibilities will comprise of: Working with leads and architects on developing robust

· Working with Leads and Architects on developing robust and scalable data pipelines to ingest, transform, and analyse large volumes of structured and unstructured data from diverse data sources. Pipelines must be optimised for performance, reliability, and scalability in line with the BBC’s scale.
· Contributes to initiatives to enhance data quality, governance and security across the organisation, ensuring compliance with BBC guidelines and industry best practices.
· Breaking down stakeholders requirements into smaller tasks and identify the best solution. 
· Builds innovative solutions to acquiring and enriching data from a variety of data sources.
· Works on one or more projects guiding other team members on designing and developing, testing, and building automation workflows. 
· Conducts insightful and physical database design, designs key and indexing schemes and designs partitioning.
· Participates in building and testing business continuity & disaster recovery procedures per requirements.
· Evaluates and provides feedback on future technologies and new releases/upgrades based on their market knowledge of the domain when asked to do so.

Are you the right candidate?


When it comes to data engineering at the BBC we look for these skills.

Technical Skills
• Experience (3+ years) in a data engineering or analytics engineering role, preferably in digital products.
• Strong knowledge of Data Warehouse technologies
• Extensive use of cloud technologies such as AWS and GCP.
• Excellent SQL and python skills.
• Experience in deploying and scheduling code bases in a data development environment.
• Comfortable working alongside cross-functional teams interacting with Product Managers, Infrastructure Engineers, Data Scientists, and Data Analysts.

Teamwork and stakeholder management
• Ability to listen to others’ ideas and build on them
• Ability to clearly communicate to both technical and non-technical audiences. 
• Ability to collaborate effectively, working alongside other team members towards the team’s goals, and enabling others to succeed, where possible. 
• Ability to prioritise. A structured approach and ability to bring other on the journey.
• Strong attention to detail

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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