Lead Bioinformatics Data Scientist
London / £80000 - £100000
£80000 - £100000
Lead Bioinformatics Data Scientist
£80,000 - £100,000
This is a fantastic new opportunity for a Knowledge Graphs & Biotech expert to take on a team at a growing start-up!
This successful VC-backed biotech start-up have just gone through their next funding round and they're looking to continue growing their AI presence. They need someone with expertise in building Knowledge Graph models combined with Biotech knowledge of Protein structures so if you're interested in the life sciences space and have the technical capability it's a great opportunity. You'd be reporting into C-level with loads of opportunity for growth.
As a Lead Bioinformatics Data Scientist for the business you will:
- Manage a team of Data Scientists
- You'll be analysing data around protein structures, building knowledge graphs and working with engineers to deploy these models
- Liaise with stakeholders across the business to understand their business needs, turn them into technical requirements for the team and ensure projects are completed accurately.
SKILLS AND EXPERIENCE
- Degree in a numerical or relevant industry field is preferred.
- Experience working in the BioTech industry would be preferred.
- Experience building Knowledge Graph / Graph AI models in a commercial setting.
- Team management or mentoring experience
- Tech: Python, SQL, AWS
SALARY AND BENEFITS
- Basic salary £80,000 - £100,000
- Benefits package
HOW TO APPLY
Please register your interest for this role by sending your CV to Rosie O'Callaghan via the apply link on this page
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