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DevOps Software Engineer (1 year relevant experiencerequired)

ARM
Cambridge
8 months ago
Applications closed

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The Enterprise Data & Insights team is responsiblefor a suite of internal custom business applications.Fundamentally, we enable crucial insights for business decisionmaking. Operating at the crossroads of DevOps, software engineeringand data engineering, we design, develop and maintain systems whichenable sophisticated analytics and Machine Learning for Armsleaders. We care about technology, and use innovative solutions toresolve complex problems. As a software engineer, you will beworking with team members to ensure that our business applicationscontinue to grow and evolve. You will maintain the existing stack(Python - Django – Postgres – REST APIs – Angular), while makingsure our CICD pipelines (Azure DevOps, Terraform) and dataflowperforms adequately. Working with users & team members you willidentify, implement and test new product features. With our currentinfrastructure hosted on AWS (EKS, EC2), you will contribute to theteam effort to improve operational efficiency. A key aspect of therole will be to explore new opportunities and tools as ourinfrastructure and internal processes reach a new level ofmaturity. You will grow with the position, working closely within ateam of expert peers in a growing team.Requirements of role●Bachelors Degree in Computer Science, Computer Engineering or andorexperience in software engineering. ● Phenomenal teammate, willingto collaborate with and support others in the team. ● Experiencedin software development with Python, especially Web developmentusing Django ● Passion for new skills, with good interpersonal,written, and verbal communication skills ● Embraces diversity andinclusion in workplace, open to different ideas and culturesNiceto have skills and experience:● A Masters or PhD within relevantfields such as computer science, computer engineering or equivalent● Knowledge and passion for automating processes and dataflows ●Curiosity on Finance and related topics ● Experience with CICDwithin a software engineering project ● Experience in technologiessuch as: Web APIs and microservices, containers (Docker,Kubernetes), cloud platforms (ideally AWS + Terraform), PythonCelery, Django REST Framework, PandasIn Return:Arm is at theheart of the worlds most advanced digital products. Our technologyenables the generation of new markets and transformation ofindustries and society. We design scalable, energyefficient-processors and related technologies. Our innovativetechnology is licensed by Arm Partners who have shipped more than50 billion Systems on Chip containing our intellectual property.Together with our Connected Community, we are breaking downbarriers to innovation for developers, designers and engineers,ensuring a fast, reliable route to market for leading electronicscompanies. With offices around the world, Arm is a diverseorganisation of dedicated, creative and highly hardworking people.#LI-SM1Accommodations at ArmAt Arm, we want our people to DoGreat Things. If you need support or an accommodation to Be YourBrilliant Self during the recruitment process, please . To note, by sending us the requestedinformation, you consent to its use by Arm to arrange forappropriate accommodations. All accommodation requests will betreated with confidentiality, and information concerning theserequests will only be disclosed as necessary to provide theaccommodation. Although this is not an exhaustive list, examples ofsupport include breaks between interviews, having documents readaloud or office accessibility. Please email us about anything wecan do to accommodate you during the recruitment process.HybridWorking at ArmArm’s approach to hybrid working is designed tocreate a working environment that supports both high performanceand personal wellbeing. We believe in bringing people together faceto face to enable us to work at pace, whilst recognizing the valueof flexibility. Within that framework, we empower groupsteams todetermine their own hybrid working patterns, depending on the workand the team’s needs. Details of what this means for each role willbe shared upon application. In some cases, the flexibility we canoffer is limited by local legal, regulatory, tax, or otherconsiderations, and where this is the case, we will collaboratewith you to find the best solution. Please talk to us to find outmore about what this could look like for you.Equal Opportunitiesat ArmArm is an equal opportunity employer, committed toproviding an environment of mutual respect where equalopportunities are available to all applicants and colleagues. Weare a diverse organization of dedicated and innovative individuals,and don’t discriminate on the basis of race, color, religion, sex,sexual orientation, gender identity, national origin, disability,or status as a protected veteran.

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