Data Science Engineer

RED Global
London
8 months ago
Applications closed

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RED are currently looking for 2X Data Science Engineer's to work on a project with a client of ours based in London. This position will be a contract position running initially until the end of this year + extensions and will require someone who can be in London 3 days per week.


We are looking for the following:


  • Proficient in statistical data analysis, machine learning, and NLP, with a clear understanding of practical applications and limitations.
  • Experienced in developing and implementing AI solutions, including classification, clustering, anomaly detection, and NLP.
  • ·Skilled in complete project delivery, from data preparation to model building, evaluation, and visualization.
  • Proficient in Python programming and SQL, with experience in production-level code and data analysis libraries.
  • Familiar with ML Ops, model development workflows, and feature engineering techniques.
  • Capable of manipulating data and developing models accessible for business use, with experience in Azure AI Search.
  • Adept with software development methodologies, code versioning (e.g., GitLab), and project tracking tools (e.g., JIRA).
  • Enthusiastic about learning new technologies and adept at problem-solving and delivering production-ready solutions.
  • Additional knowledge in Cloud Computing, Big Data tools, visualization tools, and containerization tools is beneficial.


If this is something that is of interest then please apply directly and someone from the team will be in touch to discuss further.

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