Senior AWS Engineer

London
1 month ago
Applications closed

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Job Title: Senior AWS Engineer

Job Description

We are seeking a Senior AWS Engineer who is passionate about developing high-quality software and participating in the full software lifecycle. In this role, you will contribute to the technical direction of the team, provide guidance and mentoring to other developers, and collaborate with internal teams and external vendors. You will also quickly build prototypes and work with top minds in the Machine Learning industry.

Responsibilities

Develop excellent quality software.
Participate in the full software lifecycle, including support and continuous integration.
Contribute to the technical direction of the team.
Provide guidance and mentoring to other developers on the team.
Share and generate new ideas, providing constructive and useful feedback to peers.
Work with internal teams, external vendors, and colleagues in the US.
Quickly build prototypes and collaborate with top experts in Machine Learning across the industry.

Essential Skills

At least 2 years of experience as an AWS software developer.
Expertise in working and following the best practices of using AWS serverless.
Proven ability to refactor and write performant and clean code.
Experience or ability to quickly pick up JavaScript/Typescript.
Experience working with CI/CD in an agile team.

Additional Skills & Qualifications

AWS certification is a bonus.
Experience with Python, React, Lambda, DynamoDB, S3, AppSync/GraphQL, API Gateway, and Step Functions.
Responsibility for reviewing and testing your own and teammates’ code.
Restless attitude and a drive to always make things better and quicker.
Passion for technology and a fast pace of delivery.

Why Work Here?

We offer a hybrid working environment that promotes flexibility and work-life balance. You will have the opportunity to work with cutting-edge technologies and collaborate with industry experts in a dynamic and innovative setting.

Work Environment

The role offers a hybrid working arrangement, combining remote work with time in the office. You will work with various technologies including AWS serverless, JavaScript/Typescript, Python, React, and more. The team operates in an agile environment, emphasising continuous integration and delivery.

Job Type & Location

This is a Contract position based out of Isleworth, United Kingdom.

Location

London, UK

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