Data Scientist

Futures
Leeds
1 year ago
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Data Scientist

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Are you a Data Scientist with a particular interest in predictive data analytics and the ambition to be part of an exciting new sector? You might be in academia or the business world and feeling like a cog in a much bigger wheel, with little opportunity to make a real impact? Are you up for jumping into a new role in a pioneering, scaling business at the forefront of its market? If this sounds like you, we have an out of the ordinary new role to invite you to look at!Data Scientist - The Company - Predictive Analytics, Data Mining, Machine Learning, Data Science* Extract, data mine and define meaning from raw data and manage key data signatures providing crucial analysis and reporting, the outcome of which should have significant benefits to the bottom line.* Working with large datasets to analyse and interrogate data and develop new models to support strategic objectives.* Working for a variety of customers, identifying opportunities to improve current systems, processes and infrastructure - proposing changes, testing and roll out.Data Scientist - Responsibilities - Predictive Analytics, Data Mining, Machine Learning, Data Science* Highly numerate with Degree qualification in Mathematics, Computer Science, Statistics, Physics, or similarly quantitative field* Experience in statistical modelling, machine learning, data mining, unstructured data analytics, natural language processing.* Proficiency in statistical and other tools/direct coding languages, e.g Python / C.* Familiarity with relational databases and intermediate level knowledge of SQL. Sound understanding of a wide range of statistical techniques.* Advanced excel skills and advanced analytical techniques e.g. regression analysis, predictive analysis, data mining* Agile MethodologiesData Scientist - Your skills - Predictive Analytics, Data Mining, Machine Learning, Data Science* Inquisitive, not afraid to try new things* Entrepreneurial and well-organised* Self-motivated and driven* Collaborative and exceptionally team orientated* High self-motivation and ability to work autonomously* Excellent interpersonal skills dealing with stakeholders at all levels within the organisationData Scientist, Predictive Analytics, Data Mining, Machine Learning, Data ScienceIntrigued? Interested? Excited about this proposition? Please get in touch, we will be delighted to explore this with you

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