Senior Software Engineer

Platform Recruitment
UK
1 year ago
Applications closed

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London – Senior Software Engineer – 100-120k Platform have partnered with an exciting start up that have just secured one of the largest Series-A funding rounds in Europe. They are working on revolutionising data centres and reducing energy consumption that is going to accelerate the AI/Machine Learning industry. They are looking to bring on experienced Software Engineers who have strong experience working on PCIe Linux Driver development and working on network interface cards. Responsibilities: Collaborating with the team to define software architecture Creating comprehensive technical documentation and delivering presentations for stakeholders Developing drivers for Linux systems, focusing on PCIe Working on the integration of various frameworks for processing on both CPU and GPU platforms Developing embedded software for specialized hardware interfaces within a networking context Experience Needed: Development of Linux drivers with a focus on PCIe networking Experience with RDMA and related communication libraries Background in embedded systems, including collaboration with hardware teams Further Information: This role, in addition to a competitive salary, also comes with shares worth 80% of your salary. This role is hybrid and a minimum of 2 days is expected in the office in Central London. Role comes Visa assistance and relocation allowance.

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