Software Engineer in DevOps

Cornucopia IT Resourcing
London
1 year ago
Applications closed

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Are you an ambitious software engineer with a passion for innovation and excellence? Cornucopia are partnered with leader in the field of video streaming, who are reshaping the landscape of the video recognition industry with cutting-edge AI technology.

From their start-up roots, our client’s mission is to create the best business AI video system in the market. Through advanced video artificial intelligence, they deliver unparalleled insights and user experience. You will collaborate with a stellar team of seasoned entrepreneurs and industry experts who bring extensive experience from some of the world’s leading technology companies. Their engineering group is a powerhouse of talent, comprising specialists with decades of research and development experience in various fields.

You will tackle exciting challenges at the intersection of user experience, machine learning, and infrastructure, while contributing to significant product advancements. Crafting edge applications for processing vision data and communication layers on compute-constrained devices.- Deploying machine learning models to production and optimizing the platform for maximum performance, primarily leveraging C++.- Enhancing observability and telemetry to ensure optimal system performance.

3+ years of experience in production software development using C++ and Python.- Proven expertise in building applications that process real-time data, with a focus on latency and memory optimization.- gdb, Nsight, Valgrind) to refine code performance.- Experience with monitoring tools and video processing/streaming technologies.- Proficiency in interfacing ML models.

Health Benefits: 100% company-paid private dental and vision insurance.- If you are prepared to take your career to new heights and be part of a groundbreaking venture in AI technology, apply now

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