341 parallel-processing-bioinformatics positions at University of Sheffield in United Kingdom
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year round Details Proteins bind and recognise each other using large surface areas. This recognition process is vital for a variety of biological applications. Sensing and recognizing specific proteins
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and the population dynamic processes associated with successful invasions. However, despite the fact that individual behaviours and social interactions are likely to play an important role in dispersal
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niches of the cornea, where stem cells reside. Initial prototypes with these features were seen as valuable by LVPEI's clinical partners, potentially aiding surgery without the need for expensive and hard
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are promising for the continuous monitoring of various physiological parameters, potentially aiding in the diagnostic processes related to speech pathologies, temporomandibular disorders, and other dental
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, and signal quality. Wearable System Design: Design a comfortable, secure, and user-friendly wearable device, such as a headband or custom mouthguard-integrated form factor. Signal processing and data
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accepted all year round Details This project will use atomic-scale computational modelling to understand chemical processes in soil. Soils contain large amounts of organic matter (also called “soil organic
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Application of Closed-loop control for EBeam Powder Bed Fusion manufacture of Tungsten – employing Dynamic Process Themes and Microstructural Control in Fusion Engineering component manufacture.
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toxins have recently been discovered which cleave SNARE molecules not involved in neurotransmitter release, potentially opening up the possibility of targeting new biological processes and medical
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, the CDT Admissions Team will send your enquiry form and CV to the named project supervisor. Our application process can also be found on our website: Apply | EPSRC Centre for Doctoral Training in Skills And
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that closely captures the long-term goal of the system, which is essential for the reward-driven learning process of an RL agent. To solve complex RL tasks without access to the reward function