Machine Learning Researcher - up to £180,000 salary

Saragossa
London
1 year ago
Applications closed

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Do you enjoy watching the horse racing? Do you sometimes put a bet on, hoping you make some money on that lucky horse?


Well, have you ever wanted to improve your odds of winning?


If your answer is yes, then this role might be just what you’re looking for!


You will be improving the predictive power of machine learning models by researching data based on Horse Racing.


You’ll be in a team of around 20 and will be working closely with the CEO and CTO designing, testing and implementing new machine learning models in Python.


You’re going to need to be coming in with significant experience in machine learning research and have a good understanding of how Python works.


This is a London-based sports trading company that is looking for you to put your interest in the predictive power of betting into a career.


With already effective models in place, your role would be to see if you can improve those models. Are you up to the challenge?


This position pays up to £180,000 based your level of experience.


Then please get in touch.


No up-to-date CV required.

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