Lombard Odier Investment Managers
Junior Investment Risk Data Analyst
Lombard Odier Investment ManagersSwitzerland12 days ago
Full-timeFinance, Information Technology

A career at Lombard Odier means working for a renowned global wealth and asset manager, with a strong focus on sustainable investing. An innovative bank of choice for private and institutional clients, our independently owned Firm is one of the best-capitalised banking groups in the world, managing close to CHF 300 billion and operating from over 25 offices across 4 continents.


With a history spanning over 225 years, Lombard Odier is an investment house providing a comprehensive offering of discretionary and advisory portfolio management, wealth services and custody. We also offer asset management services and investment strategies through Lombard Odier Investment Managers and provide

advanced banking technology to other financial institutions.


“Rethink Everything” is our philosophy – it is at the heart of everything we do. We have grown stronger through more than 40 financial crises by rethinking the world around us to provide a fresh investment perspective for our clients.


Lombard Odier Investment Managers (“LOIM”) is the asset management business of the Lombard Odier Group. In order to strengthen our Data Management team, we are looking for a:



Junior Investment Risk Data Analyst



You will join a global business of more than 400 professionals and a network of 13 offices across Europe, Asia and North America. You will be based in Geneva and support the Data and Risk function by managing and analyzing data across platforms such as Bloomberg PORT, while ensuring data quality, developing risk analytics, and enhancing automation in risk management.



YOUR ROLE


  • Engagement with LOIM Investment Risk Managers and other primary stakeholders to design, develop and implement clear analytical solutions across all asset classes
  • Take ownership of risk and performance dashboards and underlying data sourcing processes
  • Help drive the migration of existing processes to automated processes and platforms in line with the team vision to increasingly leverage Artificial Intelligence.
  • Management of existing data sets, ensuring the analytics tools accurately and efficiently source the information.
  • Maintaining risk calculations and process feeds to external calculators
  • Challenge existing processes and data feeds with the wider LOIM-IT and data community


YOUR PROFILE


  • You hold a Degree in Mathematics, Data Science, Finance or Statistics,
  • You have experience in automating report generation and data analysis of large-scale, distributed data sets
  • You are interested in the financial industry and have domain knowledge of investment and securities.
  • You are familiar with programming languages (SQL and Python), visualization tools (ideally Tableau), process workflow automation tools (ideally Alteryx).
  • You have strong analytical and data manipulation skills and excellent statistical modelling skills.
  • Knowledge of risk management concepts including VaR, stress testing, and scenario analysis is a plus.
  • Knowledge of Bloomberg is a plus.
  • Autonomous and self-motivated, you pay strong attention to detail.
  • Flexible and results-oriented, with excellent problem-solving skills.



Why join us


Our Maison’s DNA is defined by five core values. Excellence drives us to be the best at what we do, while Innovation fuels our progress. Respect underpins every interaction, and Integrity shapes our actions. Together, we are One Team, united in serving our clients with unwavering dedication.


LOIM is an equal opportunity employer


We are committed to creating a diverse and inclusive work environment, where talented people inspire the organization with a diversity of thought, background, experience and identity to reinforce our innovation and deliver excellence. We firmly believe this is how we will continue to thrive. To deliver on this, we have actively embedded Diversity & Inclusion in our business strategy.

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