Software Developer - Java, C++, Automation Testing

ARM
1 year ago
Applications closed

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We are looking for a dedicated software engineer with proven understanding ofmodern C++ and Java to join our Streamline developer tools team. touches all layers of the software stack, collecting performance data fromacross a target system and providing our users with rich data visualizationsdevelop the next generation of performance analysis tools for Arm CPUs .The team also helps to support both internal and external users,and contributes to our developer documentation, developer website, andcommunity forums.We are growing our team to help deliver features that support the full breadthcars, drones, mobile games, and machine learning applications, your ideas willmake a difference and help to bring world-beating products to market.## **Code development and associated testing to introduce new features to our tool, extending our use cases and target end users. * Working in an Agile cadence and driving continuous improvement through all stages of the development life-cycle. * Working with the team leads, product owner and product manager to support the roadmap, break down requirements and plan implementation * Coaching and mentoring of junior team members## **Excellent proven software development skills using Java or C++. * Experience writing quality code; unitintegration testing, CICD pipelines etc. * Ability to drive feature development from design to implementation to release * A good university degree in an engineering, scientific or mathematical field, or equivalent experience.##“Experience with optimization and profiling for software applications, system software. * Knowledge in scripting, in a language such as Python, and using the Linux command line. * Familiarity with LinuxPOSIX development, or low level LinuxAndroid systems programming##Youll be getting the opportunity to take control of a brand new, fast-pacedteam, with plenty of support and training to excel in your new role. also a clear path for progression including people management opportunities!## STE is to help our customers craft creative and energy efficient Arm-Poweredbuild or enable tools that improve Arm system performance, productivity orFrom automation to AI to ML, we design technology that changes people’s lives.Arm technology reaches over 70% of the world’s population and is in 95% of allunlocking the power of technology for everyone. Accommodations at Armaccommodation toBe Your Brilliant Selfduring the recruitment process,please email [](mailto: for appropriate accommodations. All accommodation requests will beonly be disclosed as necessary to provide the accommodation. having documents read aloud or office accessibility. Hybrid Working at ArmArm’s approach to hybrid working is designed to create a working environmentthat supports both high performance and personal wellbeing. groupsteams to determine their own hybrid working patterns, depending on thelimited by local legal, regulatory, tax, or other considerations, and whereArm is an equal opportunity employer, committed to providing an environment ofsex, sexual orientation, gender identity, national origin, disability, or

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