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Bioinformatics Data Engineer

University of Liverpool
Liverpool
2 days ago
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Bioinformatics Data Engineer – University of Liverpool


Overview

Groups of Andy Jones and Dan Rigden at the University of Liverpool are recruiting for a Wellcome Trust-funded project: “Next generation genome annotation for eukaryotic pathogens and vectors, using artificial intelligence.”


Responsibilities

  • Create, develop, and deploy new pipelines to analyse and annotate pan-genomes.
  • Make data widely available via VEuPathDB.

Position Details

  • Duration: 3 years, possibility to extend to 5 years.
  • Grade: Grade 6 (spine point 30) if PhD not yet awarded; upon confirmation of PhD, salary will increase to Grade 7 (spine point 31).

Commitment to Diversity

The University of Liverpool is committed to enhancing workforce diversity. We actively seek to attract, develop, and retain colleagues with diverse backgrounds and perspectives. We welcome applications from all genders/gender identities, Black, Asian, or Minority Ethnic backgrounds, individuals living with a disability, and members of the LGBTQIA+ community.


Employment Type

Full-time


Seniority Level

Entry level


Job Function

Information Technology – Higher Education Industry


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