Data Scientist

FalconSmartIT
London
6 months ago
Applications closed

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Core technical experience: Intermediate SQL, Selects, Filter, Joins, Group by, Table creation, Value update / delete, Advanced Python, Writing efficient code, Modular / reusable code (functions), Documenting code, Classes, Processing pipelines,

Nice to have: Text data processing, Document (PDF/Excel) processing, General git experience, General agile experience.

Nice to have experience: GPT, Databricks, Spark

Experience: 10 years experience in python application development.

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Created on 16/07/2025 by TN United Kingdom


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