Senior Data Scientist

DataCareers
London
2 months ago
Applications closed

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Senior Data Scientist – Machine Learning -  Defence –Eligible for SC

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist (Permanent)
Location: London -8 days per month onsite, could also work from other sites such as Lytham St Annes, Durham or Glasgow.
Salary:Up to £60,000plus benefits such as Civil Service Pension (28% contribution) + Bonus 5-10%

Applicants must be eligible to gain SC clearance - Last 5 continuous years UK residency, clear criminal and financial record checks essential.

Visa sponsorship is not available for this opening.

Our client, a prestigious civil service organisation, is seeking a talented Senior Data Scientist to join their dynamic team. This is an exciting opportunity for someone looking to work independently on a variety of ongoing and new data science projects, including pricing analytics, predictive modelling, segmentation, topic modelling, and insight automation.

Key Benefits:

  • Competitive salary up to £60,000
  • Generous Civil Service Pension (28% contribution)
  • Performance-based bonus (5-10%)
  • Opportunity to work on diverse and impactful projects
  • Collaborative and supportive work environment

Key Responsibilities:

  • Lead the development and maintenance of automated reporting pipelines
  • Develop and maintain predictive models and pricing analytics solutions
  • Create and enhance product segmentation models
  • Manage complex data projects and automated data pipelines
  • Conduct data discovery projects and onboard new data sources
  • Ensure high-quality data science outputs for stakeholders

Essential Experience:

  • Extensive experience in applying supervised and unsupervised ML algorithms
  • Proven track record in building and deploying predictive models
  • Strong communication skills and ability to present data insights effectively
  • Experience in supporting analysts and setting best practices

Essential Qualifications:

  • Degree in a numerate and/or statistical subject

Essential Skills:

  • Expert-level knowledge in R or Python
  • Proficiency in creating web applications and data visualisation

If you are passionate about data science and looking to make a significant impact within a leading organisation, we would love to hear from you. Apply now to join a team that values innovation, collaboration, and professional growth.

For more information and to apply, please contact us at DataCareers.

Seniority level

  • Mid-Senior level

Employment type

  • Full-time

Job function

  • Information Technology
  • Government Administration

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