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标题: Senior Data Scientist Machine Learning Financial Technology [打印本页]

作者: irobot    时间: 2016-1-27 08:44
标题: Senior Data Scientist Machine Learning Financial Technology
Senior Data Scientist Machine Learning Financial Technology


    London, South East England
    £50,000 - £65,000 per annum
    1 application

    Job type: Permanent, full-time
    Date: Yesterday
    Reference: 28843417

Senior Data Scientist | Machine Learning | Financial Technology
Senior Data Scientist
London
£50,000 - £65,000 + Benefits


THE COMPANY

We are proud to be working with a market-leading FinTech firm who are completely transforming their Data Science division over the coming months. With an enormous engineering project coming to an end, the new Data Science team will be applying machine learning  techniques and real-time decisioning in order to better understand user behaviour and automatically detect irregularities.


THE ROLE

You will:
YOUR SKILLS AND EXPERIENCE
You will have:

THE BENEFITS

£50,000 - £65,000 + Benefits


HOW TO APPLY

For full details of the role and how to apply, please register your interest by sending your CV via the Apply link on this page.


KEYWORDS

Machine Learning | Python | Advanced Analytics | Data Science | Analysis | Algorithms | Bayesian Statistics | Statistical Modelling | Probabilistic Modelling | Computational Statistics | Data Analysis | Machine Learning Algorithms | Data Mining | Classification  | Hidden Markov Models | Algorithmic Coding | R | C++ | Pig | Hive | Hadoop | Mahout | Map/Reduce | SQL | HiveQL | MongoDB | Recommendation Systems | E-Commerce | Insight |
            
        
                              Required skills & expertise:                                        Machine Learning                        Python                        SQL                        Hadoop                        R                        Fintech                        Algorithmic development.               











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