148 postdoc-in-thermal-network-of-the-physical-building positions at University of Manchester
Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
experience. Champions and role-models’ ways of working within immediate network and stakeholder groups that aligns to a people centred and inclusive culture. Collaboration – Is able to build strong and long
-
Type of award Studentship Managing department Department of Physics & Astronomy Value This fully-funded studentship includes: Tuition fees at home or international rate Annual maintenance stipend
-
regulators that have evolved expressly to manipulate expression of host traits for the plasmid’s benefit, via a process known as PCC. Such PCCs can drive plasmid spread through microbiomes even in the absence
-
will make one discovery-scientist post. You will have a track record working on normal breast tissue in vitro modelling and already have an established network of local collaborators, including clinical
-
management and communication skills. Proactive approach to issue resolution and process improvement. Understanding of database management, networking, and system administration concepts Key Responsibilities
-
wide network to build a network of champions and advocates for change. As one of the leading Universities our employees enjoy exclusive access to excellent benefits and schemes including: Generous annual
-
and increased boundary transfer capability of the transmission network, which could delay or reduce the need for new builds and bring cost savings to consumers The successful applicant will possess a
-
network of mentors, investors, and partners to drive value across each programme Build strategic relationships with corporates, funders, innovation networks, and policymakers Lead high-quality events from
-
computational applied physics Has a strong interest in neuromorphic computing and Artificial Neural Networks (ANNs) Exhibits computational physics skills and familiarity with micromagnetics programs (e.g. mumax3
-
as possible, and will focus on large-scale cardiac image analytics. Applicants should hold, or be about to obtain, a PhD (or equivalent) in physics, engineering, computer science or applied mathematics