Senior AI Engineer - Molecular Dynamics

Harnham
London
11 months ago
Applications closed

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Job Description

Senior AI Engineer - Molecular Dynamics


Salary: £80,000 - £110,000 + benefits


Location: Central London - 5 days a week in a state-of-the-art lab (in office culture with some hybrid flexibility when needed)


Join a dynamic start-up within the Bio-tech space (working across drug discovery), with aims to deliver drugs to patients and impact lives directly. Team of 7, recently gained strong funding and aiming to scale across 2025.


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

Operating end to end with Software Skills


SKILLS AND EXPERIENCE


Required

PhD in a related field (computational chemistry/biology, health-tech etc.) at a top university

Applied research/industry experience or post-doc - where you have both researched and built ML models

Knowledge and understanding of software engineering fundamentals - required

Graph Neural Networks and LLMs would be a nice to have

Excellent communication skills with proven experience work...

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