Execution Analyst

Chicago Organizing
London
2 months ago
Applications closed

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Execution Analyst(Execution, Trading, Exchange, Financial Services, Python, Pandas)

***Offering Remote working***

An excellent role has arisen for an Execution Analyst to join a well-established exchange based in London, City. Ideally, we seek candidates who have experience using Python (Pandas). My client's culture is one of trust, openness, and excellence. They work in a collaborative style and take collective responsibility for successes and failures.

My client's values:

  • High personal integrity
  • Innovative thinking
  • Efficient and reliable performance
  • Spark

The successful candidate will join a supportive team, where they aim to recruit the best people from all walks of life and diverse business backgrounds. If these sentiments align with your thinking, then this role/company could be the ideal place for you to develop your career.

Benefits:

  • 25 days annual leave - not including bank holidays
  • Private medical insurance
  • Flexible working hours
  • Company pension
  • Group Policies – Life Assurance, Income Protection, and Critical Illness
  • Discretionary bonus
  • Share Incentive Plan

Job Overview:

  • Build systems to transform raw data into actionable insights for both my client and trading members.
  • Understand complex member trading patterns and contribute to building robust frameworks.
  • Increase our internal understanding of both our own market as well as the whole European landscape.
  • Provide data to management to help strategic decision making.

Responsibilities and Duties:

  • Use data insights and statistical reporting to contribute to promoting my client's USPs.
  • Simulating changes in member trading behaviours to identify potential optimisations.
  • Ensure daily operational efficiency within the team by identifying areas for automation, especially in existing processes.
  • Creatively visualizing data sets to enable sales to easily read and understand large data sets.
  • Interacting with team members to gauge what requirements they would want daily.

Desired Experience:

  • Degree level of education, with a mathematical element to it.
  • At least 1 year of experience in the field or of a similar role.
  • Advanced level of Python, with knowledge of Pandas.
  • Advanced level of Excel, with knowledge of VBAs.
  • Effective communicator.

Skills:

  • Demonstrable working knowledge of financial markets, electronic trading, and equity market structure.
  • Experience in data visualization tools (Tableau or other similar data visualization tools).
  • Innovative problem solver with the ability to quickly identify and understand issues.
  • Must possess strong communication, writing, analytical, quantitative, and research skills.

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