Senior Software Developer

Stockport
1 year ago
Applications closed

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Job Title: Software Engineer
Location: Stockport, Hybrid

About the Company

This scale-up business is building a cloud-native platform for the aviation industry that leverages cutting-edge technology, including AI and machine learning. After a successful round of funding last year they're now looking to add to their team to help scale the platform as their client base grows.

The Role

The Software Engineer will join a dynamic development team, focusing on writing high-quality code for cloud-based platforms. This role involves developing and maintaining features built in AWS, TypeScript (React and Node), and modern development practices.

Key Responsibilities

  • Develop and innovate on cloud-native platforms using AWS and TypeScript.

  • Take ownership of code from development through to production, ensuring high quality and scalability.

  • Collaborate within an agile team to deliver solutions efficiently, following modern development practices.

  • Utilize NoSQL databases like DynamoDB and MongoDB for data management.

  • Continuously seek improvements in code, processes, and methodologies.

    Skills and Experience

  • Proficiency with AWS services and cloud-native architectures especially automation and observability.

  • Strong experience with TypeScript and JavaScript (React and Node).

  • Familiarity with NoSQL databases (DynamoDB, MongoDB).

  • Agile methodology experience, with a commitment to delivering value efficiently.

  • Understanding of testing methodologies to ensure code quality.

    Desirable Skills

  • Experience with serverless infrastructure using tools like CDK or SST.

  • Familiarity with microservices and event-driven architectures.

  • Knowledge of CI/CD pipelines and security best practices.

  • Skills in UI frameworks and micro frontends for enhanced user experiences

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