Senior Machine Learning Engineer REMOTE UK PoC into cloud

ARCA Resourcing Ltd
Oxford
1 year ago
Applications closed

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Senior Mathematical / Mathematical Consultant / Statistical Consultant - Permanent - REMOTE OR HYBRIDAbout Smith institute:Born from rocket science, the Smith Institute uses advanced mathematics, AI and data science to help customers do some amazing things – like preparing the electricity grid to meet net zero targets, optimising satellites in the sky and making sure your favourite shop stocks enough cold drinks on a hot summer’s day.To meet continuing growth in opportunities for our cutting-edge solutions, we are keen to identify candidates who share our passion for mathematics, data and AI. We utilise a range of mathematical and data science techniques and analysis in our work, meaning we have opportunities for a broad spectrum of mathematical and wider STEM skillsets and expertise at Smith Institute.Smith Institute uses mathematical modelling and computation to bring fresh thinking to the challenges faced by our clients across business and industry. We are at the forefront of the industrial and business applications of mathematics, statistics and data science. Recent solutions have covered areas as diverse as balancing supply and demand on the electricity grid, ensuring the safety of nuclear reactors, forecasting the effect of weather on consumer demand, and verifying the integrity of multi-billion-dollar spectrum auctions.About you * Would you like to use your mathematical and statistical expertise to address some of the most challenging problems ...

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