Full Stack Engineer

ARM
Cambridge
1 year ago
Applications closed

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Job Description

The Enterprise Data & Insights team is responsible for a suite of internal custom business applications. Fundamentally, we enable crucial insights for business decision making. Operating at the crossroads of DevOps, software engineering and data engineering, we design, develop and maintain systems which enable sophisticated analytics and Machine Learning for Arm's leaders. We care about technology, and use innovative solutions to resolve complex problems.

 

As a software engineer, you will be working with team members to ensure that our business applications continue to grow and evolve. You will maintain the existing stack (Python - Django – Postgres – REST APIs – Angular), while making sure our CI/CD pipelines (Azure DevOps, Terraform) and dataflow performs adequately. Working with users & team members you will identify, implement and test new product features. With our current infrastructure hosted on AWS (EKS, EC2), you will contribute to the team effort to improve operational efficiency. A key aspect of the role will be to explore new opportunities and tools as our infrastructure and internal processes reach a new level of maturity. You will grow with the position, working closely within a team of expert peers in a growing team.

Requirements of role
  • Bachelor's Degree in Computer Science, Computer Engineering or and/or experience in software engineering.
  • Pheno...

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