Bournemouth University will support international researchers to embark on three projects to develop machine learning and artificial intelligence driven solutions to tackle challenges in computer graphics community and digital creative industry. Research experience related to CNN, GAN, image processing, and computer vision are valued. The action is supported by EU Marie Skłodowska-Curie Actions (MSCA) COFUND scheme. The projects are hosted at the National Centre for Computer Animation and partnered with world leading VFX companies, including Framestore and Humain.
The recruitment for three postdoctoral roles is open till 27th Mar, 2022. Please feel free to distribute the news around.
Key words: Machine Learning, Artificial Intelligence, CNN, GAN, Rendering, Hair Modelling, Facial Modelling
Eligible applicants must:
- Not have resided or carried out their main activity (e.g., work, study) in the UK for more than 12 months in the three years immediately prior to the call deadline
- Be in possession of a doctorate or have at least four years full-time equivalent research experience.
Potential applicants can now register their interest via: https://forms.office.com/r/nyGC5pJTpq
More details are available at the CfACTs webpage www.bournemouth.ac.uk/CfACTs-Research
To apply the jobs, please visit:
For any enquiries, please feel free to email: cFACTs-enquiries@bournemouth.ac.uk
Launch Event – The Centre for Applied Creative Technologies (CfACTs)










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