Python Engineer / Data Scientist

Bath
1 week ago
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Python Engineer / Data Scientist | 9 Month Contract | Bath, UK | £450pd Outside IR35

Python Engineer / Data Scientist
My client is currently hiring a Python Engineer / Data Scientist for an exciting project that will be running until the end of the year. You will be working within a Geospatial team of Developers and Data Scientists with a strong focus on the Python Engineering side for you. You will be working with Big Data and building the flows along with working on the infrastructure side too, so an overall Python generalist is ideal for this role. The role falls outside IR35 and can pay up to £450pd, with 1 to 2 days on-site a week in Bath, the hybrid model is flexible for the right skill set.

You need to be experienced in the following

Python
Python Frameworks (NumPy, Django, etc)
AWS (Lambda, AWS integrations etc)
Metaflow & PrefectWhat you need to do now
If you feel like this Python Engineer / Data Scientist contract is a good fit for you, and you would like to know more, please send your latest CV to Ash . Fellows @ Opusrs . com or apply directly here.

Python Engineer / Data Scientist | 9 Month Contract | Bath, UK | £450pd Outside IR35

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