Asset Data Analyst

LegalAndGeneral
London
5 days ago
Create job alert

We are seeking an Asset Data Analyst with a proactive and inquisitive mindset to play a key role in maintaining the integrity and quality of financial and asset data. This position will have a particular focus on supporting our Pension Risk Transfer (PRT) business. The ideal candidate will be a tech-savvy data professional with strong analytical capabilities deep knowledge of financial instruments and a proven ability to deliver clear actionable insights that drive business decisions.


What you'll be doing:

  • Analysing asset and financial data to uncover trends anomalies and opportunities and translating complex findings into clear actionable insights
  • Leveraging technical expertise to query data automate processes and build dynamic dashboards and reportsprimarily using Snowflake and other cloud-based platforms
  • Overseeing outsourced asset data management ensuring third-party providers meet SLAs quality standards and compliance requirements
  • Acting as the key liaison between internal stakeholders and external teams driving issue resolution and continuous improvement
  • Partnering with portfolio managers risk analysts and other stakeholders to understand data needs and deliver impactful solutions
  • Contributing to the development of a robust data governance framework and ensuring adherence to governance policies and high data quality standards
  • Implementing governance reporting and escalation processes to ensure customer-impacting changes meet business and stakeholder expectations

Qualifications :

  • Degree or equivalent experience in data management (preferred)
  • Strong knowledge of IBOR/ABOR financial instruments and reference/party data
  • Solid understanding of asset valuations and curve inputs (e.g. inflation interest rates)
  • Proficiency in Alteryx Power BI Snowflake and LUSID
  • Experience in asset management ideally within Pension Risk Transfer (PRT)
  • Ability to communicate complex data clearly across technical and non-technical audiences
  • Proven leadership in mentoring and fostering collaborative team environments

Additional Information :

At L&G we believe its possible to generate positive returns today while helping to build a better future for all.


If you join us youll be part of a welcoming inclusive culture with opportunities to collaborate with people of diverse backgrounds views and experiences. Guided by leaders with integrity who care about your future and wellbeing. Empowered through initiatives which support people to develop their careers and excel.


We care passionately about outcomes rather than attendance and are therefore open to discussing all kinds of flexible working options including part-time term-time and job shares. Although some roles have limited flexibility due to customer demand we accommodate requests when we can.


It doesnt matter if you dont meet every single criterion in this advert. Instead think about what you excel at and what else you can bring in terms of strengths potential and connection to our purpose.


Remote Work :

No


Employment Type :

Full-time


Key Skills

Data Analytics,Microsoft Access,SQL,Power BI,R,Data Visualization,Tableau,Data Management,Data Mining,SAS,Data Analysis Skills,Analytics


Experience: years


Vacancy: 1


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