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Software Engineer with DevOps training

Computappoint
London
9 months ago
Applications closed

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Salary

: Up to £110,000 + 25% Bonus

Job Type

: PermanentHybrid Model: 1-2 days a week onsiteLocation:

City of London

Key ResponsibilitiesDevelopment of Enterprise SolutionCreating and managing testable and maintainable codeDealing with Azure Cloud servicesCreating scripts and automating processesDealing with senior stakeholders

RequirementsStrong experience with Python DevelopmentUse of Python Library PandasDealt with Azure Cloud Services/DevOpsExperienced with IaC | TerraformUse of Containerisation Tools | Kubernetes, DockerExperience with SQL and NoSQL databasesExperience with MATLABWebAPI/API development

DesirableExperience with Frontend Technologies | React, Angular, DashUse of other languages | C#, Java

To be considered, please ensure you complete your application on the Computappoint website.Services offered by Computappoint Limited are those of an Employment Business and/or Employment Agency in relation to this vacancy.

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