Senior Data Analyst | Greenfield Trading House | Up to £100k + Bonus | London Hybrid 3x/week

VirtueTech Recruitment Group
London
8 months ago
Applications closed

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Senior Data Analyst | Greenfield Trading House | Up to £100k + Bonus | London Hybrid 3x/week


A leading global asset manager, responsible for assets under management across liability driven investment (LDI), cashflow-driven investing (CDI) and longevity hedging, currency management, fixed income, absolute return, multi-asset and specialist investment strategies, is looking to add to their Data team by hiring a Data Analyst, coming from a financial services / Trading House background with knowledge around Risk, Compliance, Trade Surveillance, Clearing, etc.


Please note there are multiple roles available including in theRisk, Clearing and Market Makingdepartments.


The company works a hybrid model, with 3 days per week in the office, close to major tube stations including St Paul's.


Essential Skills for the Data Analyst:


  • Proven Data Analyst experience of at least 5 years, within a Financial Services environment, with particular emphasis onClearing,Risk(front office and middle office - horizontal), as well as, general front office with preference forMarket Making
  • Data modelling, cleansing and enrichment, with experience in conceptual, logical and physical data modelling and data cleansing and standardisation.
  • Familiarity with Data warehousing and analytical data structures.
  • Experience creating BI models and dashboards in Power BI.
  • SQL Server Database.
  • Knowledge of Orchestration Tools and processes (e.g SSIS, ODI, Informatica, Data Factory).
  • Power BI Development including the data model, DAX, and visualisations.


If you are interested in this Data Analyst role, please reply with your latest CV or send it to


Senior Data Analyst | Greenfield Trading House | Up to £100k + Bonus | London Hybrid 3x/week

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