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Data Scientist[London& UK]

FallenAmbers
London
4 months ago
Applications closed

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We are looking for a Data Scientist to analyze large amounts of raw information to find patterns that will help improve our company. We will rely on you to build data products to extract valuable business insights.In this role, you should be highly analytical with a knack for analysis, math, and statistics. Critical thinking and problem-solving skills are essential for interpreting data. We also want to see a passion for machine-learning and research.Your goal will be to help our company analyze trends to make better decisions.Data Scientist responsibilities include:Undertaking data collection, preprocessing and analysisBuilding models to address business problemsPresenting information using data visualization techniquesJob briefWe are looking for a Data Scientist to analyze large amounts of raw information to find patterns that will help improve our company. We will rely on you to build data products to extract valuable business insights.In this role, you should be highly analytical with a knack for analysis, math, and statistics. Critical thinking and problem-solving skills are essential for interpreting data. We also want to see a passion for machine-learning and research.Your goal will be to help our company analyze trends to make better decisions.ResponsibilitiesIdentify valuable data sources and automate collection processesUndertake to preprocess of structured and unstructured dataAnalyze large amounts of information to discover trends and patternsBuild predictive models and machine-learning algorithmsCombine models through ensemble modelingPresent information using data visualization techniquesPropose solutions and strategies to business challengesCollaborate with engineering and product development teamsRequirementsProven experience as a Data Scientist or Data AnalystExperience in data miningUnderstanding of machine-learning and operations researchKnowledge of R, SQL, and Python; familiarity with Scala, Java or C++ is an assetExperience using business intelligence tools (e.g. Tableau) and data frameworks (e.g. Hadoop)Analytical mind and business acumenStrong math skills (e.g. statistics, algebra)Problem-solving aptitudeExcellent communication and presentation skillsBSc/BA in Computer Science, Engineering or relevant field; graduate degree in Data Science or other quantitative field is preferred. Skillset Required: Data Analyst, statistics, algebra, Scala, Java, C++, R , SQL, Python, data mining, machine-learning, operations research

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