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Computational Chemist

Harnham
London
9 months ago
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Machine Learning Researcher At Leading Market Maker / Hedge Fund

Senior Genomic Data Scientist - 2 Year FTC, Adult Population Genomics Programme (we have office locations in Cambridge, Leeds & London)

Founding Geospatial Data Engineer

Senior/Lead Health Data Scientist – Statistical Genetics

Salary:£80,000 - £100,000 + benefits

Location:Central London - 5 days a week in a state-of-the-art lab



Join a dynamic start-up within the health-tech space (working across drug discovery), with aims to deliver drugs to patients and impact lives directly.



ROLE AND RESPONSIBILITIES

  • Work on predictive machine learning models for molecule research
  • Validate innovation to accelerate drug discovery and expand Auto ML Pipelines
  • Work closely with internal team members to design and deliver user-centric solutions
  • Prepare technical papers and presentations



SKILLS AND EXPERIENCE

Required

  • PhD in a related field (computational chemistry/biology, health-tech etc.) at atop university
  • Applied research experience - someone who has researched and builtML models
  • Knowledge and understanding ofsoftware engineeringfundamentals
  • LLM, Graph Neural Networks strongly preferred
  • Excellent communication skills with proven experience working with stakeholders


This rolecan sponsor.


Apply below!

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