Senior Data Scientists/Data Engineers (Palantir, Python, Data Science)

Areti Group | B Corp
London
1 week ago
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Senior Data Scientists/Data Engineers (Palantir, Python, Data Science)

Areti is seeking multiple Senior Data Scientists/Data Engineers to work for a series A funded tech start‑up 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 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.


Referrals increase your chances of interviewing at Areti Group | B Corp™ by 2x.


Seniority level

Mid‑Senior level


Employment type

Full‑time


Job function

Information Technology


Industries

  • IT Services and IT Consulting
  • Information Services
  • Government Relations Services


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