Data Scientist with experience in LIMS and Benchling

Quantori
Glasgow
1 day ago
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We are seeking a skilled and motivated Data Scientist with experience in LIMS and Benchling to join our dynamic team at Quantori. In this role, you will have the opportunity to work on a diverse range of projects, utilizing your expertise in bioinformatics and data science to tackle complex scientific challenges. As a key member of our team, you will be focused on accelerating the digitalization of biological data and enabling data-driven scientific innovation. The position will support the development of standardized in vitro/in vivo study workflows and the creation of scalable computational pipelines for multimodal data ingestion and harmonization across the research ecosystem. 


Location: EU, UK, Armenia, Kazakhstan, Georgia

 

Responsibilities:

  • Develop and optimize in vitro study design frameworks through Benchling, including assay templates, sample-tracking structures, and standardized data schemas. 
  • Create and maintain harmonized data storage solutions that ensure consistency across assay types and alignment with internal data standards. 
  • Collaborate closely with biologists, computational scientists, and data stakeholders to ensure high-quality, analysis-ready datasets. 
  • Support in vivo study data capture, ingestion, and standardization across the broader data ecosystem as needed. 
  • Communicate project progress, challenges, and deliverables proactively with the manager and key stakeholders. 

What we expect:

 

  • MS or BS in Biology, Computational Biology, Data Science, or a related field. 
  • 0-2 years (MS) or 2-3 years (BS) post-graduate working experience in biotech/pharma industry. 
  • Familiarity with biological assay data (cell-based assays, plate-based readouts, etc.). 
  • Hands-on experience with Benchling, including workflow design, build or assay configuration. 
  • Experience with LIMS
  • Strong experience developing data pipelines using R or Python 
  • English level B2+ or higher  


We Offer:

  • Competitive compensation 
  • Remote or office work 
  • Flexible working hours 
  • Healthcare benefits: medical insurance and paid sick leave 
  • Continuous education, mentoring, and professional development programs 
  • A team with an excellent tech expertise 
  • Certifications paid by the company 

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