Graduate Quant Data Scientist $ Base + Bonus |

Type: Graduate
Region: London

Quant fund are recruiting an elite quant data scientist with exceptional machine learning techniques. Role:- Your role will involve using machine learning techniques to build prediction models and optimise the machine learning pipeline. Work with a team of developers with exceptional mathematical abilities Generate high quality datasets to build market-beating models with cutting-edge machine learning techniques Maintain and build on our established advantage in this competitive market Requirements :- The firm has a very selective recruitment process. They aim to offer industry beating opportunities in return for the industries best talent. You will be an exceptional candidate who has a passion for coding , modelling or machine learning . The ideal profile for them is a candidate with a PhD in Machine Learning from a top school who then went into a job that he / she is still in ( which is preferably not in finance). They would want to see evidence that a candidate has solved a significant data analysis problem. e.g. found patterns in telecom data that lead to a new service; developed a new collaborative filtering tool… My client are looking for exceptional and unique individuals who have world class problem solving skills such as those who can watch a cards game for a few hands and work out the rules of the game or who have the power to look at code and work out how it functions or how it can be improved. Outstanding record of academic and professional achievements Specialism in researching and developing software and or techniques for mining, analyzing and searching massive data sets. Confident and highly motivated personality. Evidence of being amongst the top 5% of your peer group as demonstrated by Olympiads/other awards in research, technology and the commercial work environment etc Apply:- Please send a PDF resume to quants@ekafinance.com

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EarlyCareers.co.uk
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