x 10 Senior Data Scientists/Data Engineers Needed (multiple Roles) - DV/SC Cleared

Areti Group | B CorpTM
London
1 month ago
Applications closed

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Areti is seeking x10 Senior Data Scientists/Data Engineers (Palantir, Python, Data Science) to work for a series A Funded tech start-up business based in the London area a very quick start.

YOU MUST BE DV OR SC CLEARED

You will be working on a number of large Defence and Government projects and be given the opportunity to lead a number of high-profile programs.

The Data Scientists will apply their technical skillsets and knowledge to solve exciting real-world problems in a small and dynamic company.

You will work as part of a dynamic and close-knit team building new and proprietary approaches to solving multiple problems across the industry. The ideal candidates will have a skillset to include the following:

  • Experience in working as a Data Scientist/Data Engineer
  • A understand of Palantir would be a huge +
  • Experience of completing projects to deadline.
  • Experience in Deep Learning and DL frameworks such as Tensorflow/Pytroch
  • Deploying ML models
  • Good command of Python and use of libraries for data science – scikit-learn, NumPy, matplotlib
  • Relation database experience with data manipulation skills in SQL and large "Big Data" environments.
  • Command knowledge in Python and API Development
  • Excellent grasp of software Engineering practices – Object Orientated Programming, GIT, AWS)
  • CI/CD practices
  • NoSQL Databases

Candidates must have security clearance - Ideally DV

My client has just received a huge investment and is now in the position where they are looking to scale and expand their Data team.

My client is interviewing this week so get in contact today to avoid disappointment.

Areti Group – Carbon positive tech recruitment | | We're on a mission to put people and the planet before profit, leaving the world in a better place than we found it.

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