12841 - Bioinformatics Research Fellow
Dyddiad hysbysebu: | 29 Gorffennaf 2025 |
---|---|
Cyflog: | £40,497 i £48,149 bob blwyddyn |
Oriau: | Llawn Amser |
Dyddiad cau: | 18 Awst 2025 |
Lleoliad: | Edinburgh, Scotland |
Gweithio o bell: | Ar y safle yn unig |
Cwmni: | University of Edinburgh |
Math o swydd: | Cytundeb |
Cyfeirnod swydd: | 12841 |
Crynodeb
Grade UE07: £40,497- 48,149 per annum
CMVM / Royal (Dick) School of Veterinary Studies
Full time: 35 hours per week
Fixed-Term: 1st September 2027
Bioinformatics research fellow
We are seeking a candidate to join our team to generate the first large-scale single-cell transcriptomic atlas of African cattle. The project has generated high coverage single-cell RNA-seq data from 200 Bos indicus animals, covering all major peripheral immune-cell types alongside matched whole-genome sequence data. As the lead computational scientist you will convert these data into biological insights, developing and applying state-of-the-art methods to pinpoint the DNA variants that regulate immune-cell function and disease resistance. As part of this, the post-holder will work closely with partners in both the UK and Kenya.
Your skills and attributes for success:
Design, implement and maintain scalable pipelines for processing single-cell RNA-seq, mapping expression quantitative trait loci (eQTL) and annotating regulatory variants.
Train, evaluate and refine AI/ML models that integrate sequence, epigenomic and comparative-genomic features to predict causal variants across immune-cell types.
Exploit the uniquely deep single-cell dataset, together with existing ATAC-seq, PRO-Cap and MPRA resources, to compile an openly shared catalogue of validated immune-regulatory variants.
Collaborate with wet-lab and field partners in the UK and Kenya on experimental validation (e.g. CRISPR, MPRA) and translation into breeding or editing strategies.
Disseminate code, models and findings through open-access repositories, peer-reviewed publications and international conferences.
Contribute to student supervision, project reporting and the vibrant computational biology community at Edinburgh.
Informal enquiries can be directed to Prof James Prendergast (james.prendergast@roslin.ed.ac.uk).
Essential skills:
PhD (or PhD nearing completion) or equivalent experience in a relevant quantitative discipline (e.g. Bioinformatics, Computer science, Genetics/Genomics, Computational Biology or Data science).
Demonstrated experience with NGS data analysis—ideally scRNA-seq or eQTL—using R/Python, Linux and Git.
Experiencing with workflow languages e.g. Nextflow, Snakemake.
Proficiency in Linux/Unix operating systems.
Experience of planning and executing research projects and complex integrative analysis of large datasets.
Desired skills:
Machine learning experience in R or Python is desirable.
Experience with running analyses in an HPC environment.
What we offer:
Access to unique datasets including one of the largest single-cell RNA datasets ever generated in livestock, plus world-class HPC facilities.
Funding for training, conference travel and at least one research visit to collaborators in Nairobi.
CMVM / Royal (Dick) School of Veterinary Studies
Full time: 35 hours per week
Fixed-Term: 1st September 2027
Bioinformatics research fellow
We are seeking a candidate to join our team to generate the first large-scale single-cell transcriptomic atlas of African cattle. The project has generated high coverage single-cell RNA-seq data from 200 Bos indicus animals, covering all major peripheral immune-cell types alongside matched whole-genome sequence data. As the lead computational scientist you will convert these data into biological insights, developing and applying state-of-the-art methods to pinpoint the DNA variants that regulate immune-cell function and disease resistance. As part of this, the post-holder will work closely with partners in both the UK and Kenya.
Your skills and attributes for success:
Design, implement and maintain scalable pipelines for processing single-cell RNA-seq, mapping expression quantitative trait loci (eQTL) and annotating regulatory variants.
Train, evaluate and refine AI/ML models that integrate sequence, epigenomic and comparative-genomic features to predict causal variants across immune-cell types.
Exploit the uniquely deep single-cell dataset, together with existing ATAC-seq, PRO-Cap and MPRA resources, to compile an openly shared catalogue of validated immune-regulatory variants.
Collaborate with wet-lab and field partners in the UK and Kenya on experimental validation (e.g. CRISPR, MPRA) and translation into breeding or editing strategies.
Disseminate code, models and findings through open-access repositories, peer-reviewed publications and international conferences.
Contribute to student supervision, project reporting and the vibrant computational biology community at Edinburgh.
Informal enquiries can be directed to Prof James Prendergast (james.prendergast@roslin.ed.ac.uk).
Essential skills:
PhD (or PhD nearing completion) or equivalent experience in a relevant quantitative discipline (e.g. Bioinformatics, Computer science, Genetics/Genomics, Computational Biology or Data science).
Demonstrated experience with NGS data analysis—ideally scRNA-seq or eQTL—using R/Python, Linux and Git.
Experiencing with workflow languages e.g. Nextflow, Snakemake.
Proficiency in Linux/Unix operating systems.
Experience of planning and executing research projects and complex integrative analysis of large datasets.
Desired skills:
Machine learning experience in R or Python is desirable.
Experience with running analyses in an HPC environment.
What we offer:
Access to unique datasets including one of the largest single-cell RNA datasets ever generated in livestock, plus world-class HPC facilities.
Funding for training, conference travel and at least one research visit to collaborators in Nairobi.