Software Engineer (Python React)

Basford
11 months ago
Applications closed

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Our client, a leading Engineering Software House (Tech for good) in Nottingham are building a brand new Squad, and looking for a Full Stack Developer

If interested, please see the details below:

Overview of role: Developing a new platform to accelerate our new analytics product development, working closely with domain experts and data scientists this role will lead the development of analytics tools for new and innovative products.

We’re looking for an experienced Software Developer with strong experience in programming and analytical & problem-solving skills.

Why could you be interested:

Make an Impact: Join a team that is revolutionising the renewables sector through data-driven innovation.
Career Growth:
Be part of a global company
Location: Nottingham – 3 days a week (this is for collaboration purposes)

Salary: We have a call with the client tomorrow (10am) to go through in more details

Benefits: Bonus (up to 10% of salary based on financial performance) | 5% Pension contribution | Private Medical | 25 days hol + BH + bens

Experience required:

Demonstratable experience with Python
Experience developing with Cloud Services, preferably in AWS (Azure is fine)
Knowledge of PostgreSQL and Database Design Principles
Exposure to JavaScript frameworks, preferably React
Experience in designing and maintaining ETL processes
Solid understanding of Software Development Best Practices such as CI/CD etc.
Experience of working with software products focused on analytics
If interested, please let me know a good time to chat.

Thanks

Mae

Xpertise Recruitment

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