317 data-"https:"-"https:"-"https:"-"https:"-"https:" positions at University of Sheffield
Sort by
Refine Your Search
-
Listed
-
Category
-
Country
-
Program
-
Field
-
Using Brain Computer Interface to Improve Cognitive Performance School of Electrical and Electronic Engineering PhD Research Project Self Funded Dr Mahnaz Arvaneh Application Deadline: Applications
-
Developing novel tools for the analysis of local order using total scattering data (TScat)
-
colleagues and transform complex information into actionable insights that drive strategic business decisions. If you’re a proactive problem-solver, who values curiosity and a collaborative approach to move
-
University Executive Board. You will oversee governance, legal services, and data protection, and serve as the University’s Senior Information Risk Officer. This role is critical to the delivery of our One
-
field data, the research assistant will help assess the accuracy, robustness and operational value of these algorithms for large-scale forest inventories and the detection of endangered species
-
Overview We are seeking an experienced Service Performance Analyst to join our IT Service Operations Team. This specialist role will transform complex operational data into actionable insights
-
the experimental design of plant-microbe interactions. Experience in the analysis of next-generation sequencing data, including RNA-sequencing and methylome data (WGBS or Nanopore-seq) and demonstrable analytical
-
to consolidate the data. You will help develop a deep multifaceted understanding of (generational) war trauma in order to improve mental health care for veterans and their families, refugees, and other groups
-
and applications, responding to queries, collaborating closely with other Professional Service teams, contributing to the smooth set-up of successful research applications and maintaining data in
-
, personalised treatments, and systematic evidence verification. This is a complex information integration problem, where clinicians must analyse vast, heterogeneous, and fragmented clinical knowledge. Clinical