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Research Data Scientist

Expert Employment
London
1 year ago
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Research Data Scientist

Research Data Scientist

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Lead Research Data Scientist | Fraud Detection in Market Research

Lead Research Data Scientist | Fraud Detection in Market Research

Lead Research Data Scientist | Fraud Detection in Market Research

Research Data Scientist Python, R, SQL, SciKit, Pandas, TensorFlow, Regression Analysis A leading market research company is looking for an ambitious data scientist to join their dynamic DS team. You will be performing various data modeling tasks on the data collected, from forecasting forthcoming results to constructing regressions and determining causalities on the data collection method to understand multi-scale clustering phenomena. You will be reporting to VP of Data Science. Candidate requirements Bachelors (or) Masters degree in Highly numerate subject. Python R SQL Familiarity working with high- dimensional categorial data. Extensive Experience working with Hypothesis testing, Regression, Cluster, correspondence analysis.

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