Principal Data Scientist

BBC
Salford
1 month ago
Applications closed

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Principal Data Scientist

Principal Data Scientist

Principal Data Scientist

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Job Details

  • Band: D
  • Contract Type: Permanent, Full-time
  • Department: BBC Product Group – Account & Identity
  • Location: London / Cardiff / Newcastle / Salford / Glasgow – Hybrid working with 1 day a week expected in office base location.
  • Proposed Salary Range: £73,000 - £83,000 (depending on relevant skills, knowledge and experience).
  • Flexible Working: Discussed at offer stage.

Purpose of the Role

The BBC has been serving audiences online for decades, across key products such as BBC iPlayer. As we evolve to deliver more personalised content and experiences, Data Science is at the heart of that transformation.


As a team, we use ML / AI to enrich our content and power personalised experiences for millions of audience members. We’re looking for a Principal Data Scientist to join the Product Group.


Why Join the Team

As Principal Data Scientist you’ll play a hands‑on role in building machine learning products at BBC scale. Working as part of a highly cross‑functional team, you’ll help overcome the challenges of deploying ML in production.


You’ll have the opportunity to get involved with the wider data science community, both at the BBC and externally. We hope you’ll be enthusiastic about sharing your knowledge and growing others.


Key Responsibilities And Impact

  • Use your technical skills to deliver value to BBC audiences, blending a breadth and depth of data science expertise.
  • Have impact within your immediate team and beyond, across the wider BBC, instrumental in developing scalable ML products.
  • Bring experience of being an effective contributor in a cross‑functional team, working with others to overcome the challenges of delivering ML in production.
  • Be responsible for using your knowledge of different machine learning algorithms to solve complex problems effectively.
  • Join the wider BBC Data Science community, with internal and external opportunities to get involved and share your knowledge.

Essential Criteria
Your Skills And Experience

  • Strong understanding of data science and machine learning techniques, including recent advances and their applications for implementation in a production environment.
  • Good general programming skills, particularly in python, including knowledge of code management and deployment.
  • Ability to contribute effectively in a cross‑functional team, including the ability to prioritise and work in a structured manner.
  • Ability to communicate to both technical and non‑technical audiences.

Desired But Not Required

  • Strong understanding and significant experience of development and productionisation of data science products, including use of NLP techniques.
  • Experience developing ML/AI solutions within a cloud computing platform – we use AWS.
  • Strong understanding of Generative AI techniques, notably LLMs, including recent advances and their application for responsible implementation in a production environment.
  • Experience of supporting other Data Scientists with their technical work to deliver value in production.
  • Experience with model lifecycle management and MLOps.

If you can bring some of these skills and experience, along with transferable strengths, we’d love to hear from you and encourage you to apply.


Before your start date, you may need to disclose any unspent convictions or police charges, in line with our Contracts of Employment policy. This allows us to discuss any support you may need and assess any risks. Failure to disclose may result in the withdrawal of your offer.


Disclaimer


This job description is a written statement of the essential characteristics of the job, with its principal accountabilities, incorporating a note of the skills, knowledge and experience required for a satisfactory level of performance. This is not intended to be a complete, detailed account of all aspects of the duties involved.


Please note: If you were to be offered this role, the BBC will conduct Employment screening checks which include Reference checks; Eligibility to work checks; and, if applicable to the role, Safeguarding and Adverse media/Social media checks. Any offer made is conditional on these checks being satisfactory.


The BBC is committed to redeploying employees seeking suitable alternative employment within the BBC 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.


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