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Senior TypeScript Backend Software Engineer

Oxford Circus
1 day ago
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Typescript Software Engineer required to join a cloud services development team working on an industrial workflow and process management system that takes real world IoT device data including location tracking, computer vision and time series data, to enable clients to monitor and proactively manage plant process, logistics and engineering deliveries.

You will join an existing application development team in a very much hands on role, the ideal candidate will have a logical thought process that will enable them to quickly digest the complex but rules based logic of clients workflow. This and technology stack fluency the manager hopes will mean you can move into a technical leadership role as quickly as possible propelling product roadmap and R&D pipeline forward.

Skills

Typescript expert with AWS including AWS Lambda, Kinesis and EventBridge.

AWS CDK2

Python knowledge

Confluence and JIRA

Role

The Senior Backend Software Engineer will join an existing software team reporting to the Chief Technology Officer. Working on a world class AWS event driven design that delivers high performing Artificial Intelligence and Machine Learning services.

This will be a challenging and varied position developing new features and APIs, performance optimisation, CICD and test suite improvement, updating core software and infrastructure libraries used across many client services, supporting Data Science and deploying ML systems

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National AI Awards 2025

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