Data Scientist

ROSEN
Newcastle upon Tyne
2 weeks ago
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Location: Newcastle upon Tyne


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What you can expect

Due to our continued growth in the field of Integrity Analytics, our Integrity Solutions Business Line (UK office in Newcastle upon Tyne) requires a Data Scientist to work with the existing data science and engineering teams on internal R&D initiatives as well as a variety of client projects. The role is focused on developing software solutions within an engineering consultancy business.



  • Development and validation of predictive models using Kubeflow pipelines
  • Design and implementation of ETL (Extract, Transform, Load) pipelines using Python and SQL
  • Exploratory data analysis, visualisation and interpretation
  • Development and use of generative AI solutions, i.e. LLM fine-tuning pipelines, content extraction using Deepseek-OCR, text summarisation and use of gen AI frameworks
  • Presentation of model results and their impact to clients
  • Production of internal documentation and reporting outputs, as required

What you will bring

  • Degree in a quantitative discipline such as Data Science, Computer Science or Mathematics
  • Experience with programming languages such as Python, including the use of Git source control
  • Experience with supervised and unsupervised machine learning techniquesKnowledge of, or experience in, an engineering field is desirable but not essential
  • Excellent communication skills and adaptability
  • Ability to establish a good working relationship with customers and other professionals, including international colleagues

What we offer

  • The role is a full time staff role (37.5 hours per week) and permanent
  • Competitive salary and benefits package and Training & Development opportunities.
  • The role is based at our offices in Newcastle Upon Tyne, with hybrid working available
  • Must be willing and able to travel nationally and internationally when required
  • An excellent level of spoken and written English is essential for this position

Please note that we are unable to sponsor non-UK applicants for this role, and so all candidates must have the permanent and documented legal right to live and work in the UK.
Who we are

The ROSEN Group is a leading global provider of cutting-edge solutions in all areas of the integrity process chain. Since its beginnings as a one-man business in 1981, ROSEN has grown rapidly and is today a technology group that operates in more than 110 countries with over 4,000 highly qualified employees.


ROSEN’s products and services

  • Inspection of critical industrial assets to ensure reliable operations of the highest standards and effectiveness
  • Customized engineering consultancy providing efficient asset integrity management
  • Production and supply of customized novel products and systems
  • Market-driven, topical state-of-the-art research and development providing “added-value” products and services

For more information about the ROSEN Group, go to www.rosen-group.com.


Do you have any questions?

Samantha Hewitt


Recruitment


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