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Data Analyst - Hedge Fund ...

MW Recruitment Limited
London
1 month ago
Applications closed

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Job Description A leading hedge fund wish to recruit adata analyst who will be responsible for back office pricing aswell as time series data for trading/modelling/analysis whilstworking closely with other departments within Management &Control to ensure the accuracy and best practices in securityvaluation, compliance and risk management. Main Responsibilities -Contribute to the evaluation and enhancement of processes andtechnologies to improve data accuracy, timeliness, and efficiency.- Engage regularly with users of financial data to identify,access, and query series of interest within internal databases,including a third-party tick database. These users include, but arenot limited to, Trading, Global Research, Middle Office, Risk andCompliance. - For new projects or data-related production changesdetermine detailed specifications and resource requirements andcoordinate prioritization and approval with other groups. - Testcontent for proper QA and review/approve for production release. -When new data services are needed evaluate potential data sourcesand cost/resources. - Collaborate with our offshore Data Operationsteam to oversee their processes, including cross-checking,verifying, and updating security and economic data. - Serve as anescalation point for Level II requests from this team ExperienceRequired - A BA/BS degree with a strong academic background in STEMfields, ideally focusing on Data, Mathematics, Statistics, DataAnalysis, or another quantitative discipline. - Minimum of 2 yearsof experience in a similar role at an investment firm or afinancial data-related role at another type of firm (auditor, datavendor, govt agency, or other), with a solid understanding of dataquality management, data architecture, and business intelligence -A good understanding of Python, including fundamental knowledge anda willingness to learn, along with familiarity with packages suchas NumPy, pandas, and scikit-learn. - Proficiency in SQL isrequired, along with experience in Unix and familiarity withscheduling tools like Tidal and Airflow. - Good understanding ofvarious asset classes such as Equities, Fixed Income, Derivatives,and Commodities

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