Senior Data Scientist

Arrows
Leeds
2 weeks ago
Applications closed

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Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist - National Security (TIRE) based in Cheltenham/Hybrid

Urgent requirement x5 Snr Data Scientists


Start 1st week of Feb


πŸ—“οΈ 12 month rolling contracts

πŸ“„ Inside IR35

πŸ’° Β£700-Β£800 per day

🌍 UK, hybrid London (1 day office per week)


I need people who have worked on production ready applied data science products, we are not interested in research heavy backgrounds for this project.


You’ll be comfortable with ambiguity and will want to dive deep and fix problems at scale.


You will be able to develop the prototypes of the models, and do some feature engineering.


The environment looks a bit like this πŸ‘‡

πŸ‘‰ Python (pandas, numpy, scipy, PySpark)

πŸ‘‰ SQL

πŸ‘‰ AWS or GCP (BigQuery / RedShift / Snowflake)

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