3D Game Rendering - AI

European Tech Recruit
Cambridge
1 year ago
Applications closed

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Robotics / Computer Vision Engineer

Robotics / Computer Vision Engineer

Senior Machine Learning Scientist

Senior Machine Learning Scientist

We’re looking for world class experts in 3D GameRendering to support our AI Team. As a Graphics Developercontractor, you will assist in implementing, and deploying state ofthe art robust graphics AI algorithms and systems targeted toenhancing existing Game Graphics solutions. You will be working onprojects that build on cross-domain topics: AI, Computer Vision andGraphics. You will build datasets, prototypes and exploreconceptually new solutions. You will interact closely with both AIand Computer Graphics teams. A successful candidate should havehands-on experience in at least one Game Rendering Engine - JobPurposeBe responsible for generating training datasets using gamerendering engines. - Be responsible for supporting theimplementation of latest neural rendering solutions targeted forreal-time mobile game rendering in game engines. - KeyResponsibilitiesOptimize game rendering pipelines to generatemassive training gaming datasets. - Tackling technical challengesand reshaping research solutions to become product compatiblesolutions. - Develop evaluation metrics to assess our graphicalgorithm solution robustness under different deployment scenarios.- Analyse and improve efficiency and performance of solutions foreither cloud or on-device deployment. - Documenting and reportingprogress to your team/senior management and tocross-location/functional teams. - Collaborate withcross-functional/location managers, researchers and engineers. -RequiredMaster degree in Computer science/Graphics or relatedtechnical domain. - Experience developing systems for manipulatingimage/video. - Experience in optimizing GPU pipelines inVulkan/OpenGL - DesiredHave experience of shipping Game Graphics,Computer Vision or 3D Reconstruction solutions into commercialproducts. - Expertise in AI, Machine Learning and Deep Learning -Interpersonal experience: cross-group and cross-culturecollaboration By applying to this role you understand that we maycollect your personal data and store and process it on our systems.For more information please see our Privacy Noticehttps://eu-recruit.com/wp-content/uploads/2024/07/European-Tech-Recruit-Privacy-Notice-2024.pdf

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