Python Developer

Foxley Talent
Greater London
10 months ago
Applications closed

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Foxley Talent have partnered with an Enterprise SaaS company who are currently looking for a Python developer to join their growing engineering team. This is a Django focussed role but you will have an opportunity to learn this if you have no prior experience.

My client are entering their fifth year of business. Having received six million in funding, they are looking to build new product features and expand their capabilities for their clients which includes global businesses such as Tesco, Virgin Media, Liberty Global & more. Using Machine Learning and Automation, the AI tool integrates with clients accounts and ERP systems to track, monitor and flag anything from fraud detection, over payments, insights with data analysis and more.

In your role as a Python Developer, you will be tasked with writing code to manage incoming data, writing Restful APIs to support the front end, manage existing features and provide innovation with stakeholders for new product features. Continue to take responsibility to overcome complex programming challenges whilst remaining to test & document for smooth delivery and work with Data, Front End and Product Engineers.

Required Experience

  • Degree in Software Engineering, Computer Science, Mathematics or similar
  • 3+ years of commercial experience with Python
  • Industry use of relational databases - PostgreSQL
  • An understanding of cloud platforms - AWS/GCP
  • Great communication skills - written and verbal
  • CI/CD pipelines tools: GitHub, Jenkins, Docker, Terraform
  • Willing to work in the London office one day a week

My client offer a hybrid working arrangement and they meet once per week in their London office. They also offer a strong benefits package, including a personal L&D budget with access to external library content, conferences and a career/learning path. Plus a salary between £50,000-£75,000.

For more information about my client and the role, please submit your current CV to .

Seniority level

Mid-Senior level

Employment type

Full-time

Job function

Software Development

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