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Senior Machine Learning Engineer

PlayStation
London
1 week ago
Applications closed

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Senior Machine Learning Engineer, London

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Client:

PlayStation
Location:

London, United Kingdom
Job Category:

Other
-
EU work permit required:

Yes
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Job Reference:

aa038ba7913d
Job Views:

49
Posted:

22.06.2025
Expiry Date:

06.08.2025
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Job Description:

Role Overview:
We are looking for an independent, dedicated Senior Machine Learning Engineer to join our team and contribute to redefining the world of game play and live streaming via advanced R&D. Engage with a world-leading team of engineers and help solve some of the cutting edge problems in machine learning, video streaming and computer vision.
What you’ll be doing:
Develop and improve core deep learning architectures for graphics and video processing for a variety of applications, such as live video streaming, game rendering, etc.
Research and prototyping of new methods for fast graphics or video enhancement
Draft publications and patent submissions in collaboration with other team members
Participate and assist the team in core R&D work with other teams within Sony Interactive Entertainment
What we’re looking for:
MSc. in Computer Science, Electronic Engineering, Artificial Intelligence, Machine Learning, Computer Graphics or a related field, or equivalent skills evidenced by work experience in the specific domain of the post
Strong background in: TensorFlow or PyTorch; Python and packages/libraries related to computer vision or graphics; evidenced by the development of advanced applications in image/video/graphics processing or computer vision (minimum of 36 months experience)
Strong background in one or more of the following:
(i) neural network architectures, evidenced (for example) by knowledge of how to formulate and test advanced loss functions in neural network design;
(ii) design and test of advanced convolutional, recurrent, transformer-based or other neural network architectures in a task-specific manner;
(iii) Experience in training, validation and evaluation of deep neural network models on large datasets, evidenced by experience in using Python libraries like HDF5 or similar
(iv) Working experience with 3D engines such as Unreal or Unity; in particular, generation of datasets, extraction of G-buffers, motion vectors, etc
Desired qualifications:
Publications in top-tier conferences and journals: IEEE Transactions on Image Processing, IEEE Transactions on Circuits and Systems for Video Technology, conferences like IEEE CVPR/ICCV/ECCV, NeurIPS, ICML, ICLR, or similar
Theoretical understanding of the graphics pipeline, including coordinate transformations between frames of reference, PBR materials, rasterization, lighting, and ray tracing
Solid experience in image processing theory and methods, evidenced by the development of practical designs in this area
Experience in using Docker containers or similar

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