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Lead Quantitative Python Developer - Asset Management (Basé à London)

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Greater London
1 week ago
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Client:

Talensa Partners

Location:

London, United Kingdom

Job Category:

Other

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EU work permit required:

Yes

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Job Views:

2

Posted:

31.05.2025

Expiry Date:

15.07.2025

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Job Description:

  • Contract - Extending
  • Day Rate - Competitive (Negotiable)
  • Start - ASAP

We are looking for a mid- to senior-level experienced Python Developer with strong data engineering skills. The role involves working closely with cross-functional teams, including Information Technology, COO Office, business analysts, and external technology partners and vendors, to translate business requirements into technical financial solutions, ensuring successful delivery of Python-based financial modelling projects to optimise asset management systems.

The individual will be responsible for defining and shaping Python development practices and establishing the foundation for future Python development within the organisation.

Key responsibilities include:

  • Establishing and enforcing coding standards and best practices for Python development to ensure code quality, maintainability, and scalability.
  • Implementing robust security measures in all Python-based solutions to protect sensitive data and ensure compliance with relevant regulations and standards.
  • Developing frameworks for Python Notebooks, APIs, and client applications, designing reusable libraries and tools for efficient development.
  • Contributing to knowledge sharing, providing guidance to other developers, and developing training resources and documentation.
  • Defining and implementing code review processes and quality assurance mechanisms, including version control, automated testing, and peer reviews.
  • Staying updated with emerging trends in AI and exploring how Python can support AI use cases within the organisation.
  • Designing and implementing DevOps practices tailored for Python development, including version control, automated testing, continuous integration, and deployment.

Person Specification:

  • Masters in Computer Science or a similar qualification.
  • Numerous years of Python development experience.
  • Expert proficiency in Python and its ecosystems (e.g., Flask, Django, Pandas, NumPy).
  • Experience in financial modelling, particularly using Python to optimise asset management systems and financial applications.
  • Expertise in cloud platforms, particularly Azure, and integration with Python for scalable, cloud-based solutions.
  • Knowledge of database management systems (SQL, NoSQL) and API development.
  • Strong interpersonal skills and ability to lead complex work-streams with tight deadlines in collaboration with internal stakeholders.


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