Senior Python Engineer

Singular Recruitment
London
1 year ago
Applications closed

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Senior Python Engineer(one day a week in the central London office)


This role is a unique opportunity to combine technical challenges with creativity in a collaborative, high-standard work environment. By joining this team, you’ll not only be part of a creative and open work culture focused on innovation and excellence but also have the chance to work with and collaborate with some of the most well-known footballers in the industry.


This position offers significant opportunities for professional growth within sports analytics and the potential to impact sports performance through advanced technology, making it an ideal setting for those passionate about leveraging cutting-edge technology to make meaningful contributions in the world of sports analytics.


Ideal for those eager to blend their passion for sports with cutting-edge technology, aiming to make significant contributions in sports analytics. If you’re a detail-oriented innovator and team player, we’re excited to hear from you.


Responsibilities for the role of Senior Python Engineer will include:


  • Design of complex systems, ensuring scalability, performance, and maintainability usingPython, along with frameworks likeDjango,TornadoorFlask.
  • Integrate applications withCloudservices, utilisingDockerfor deployment and orchestration.
  • Employ Agile methodologies to ensure the adoption of best practices in software development, includingCI/CDpipelines using tools such asGitHub ActionsorJenkins


As the selected Senior Python Engineer, your experience will include:


  • Software development industry experience, with a strong focus onPython.
  • Experience withCloudandDockerfor deployment.
  • Solid understanding ofSDLCandCI/CDprocesses.
  • Desired: experience in Infrastructure as Code developments and tools e.g.Terraform
  • Desired: experience withMLOpsdeployment and maintenance.
  • Desired:Data Engineering technologies e.g.ETL,Spark,Dataflow,BigQuery


Please note: even if you don't have exactly the background indicated, do contact us now if this type of job is of interest - we may well have similar opportunities that you would be suited to. And of course, we always get your permission before submitting your CV to a company.

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