Plant Genomics and Machine Learning Scientist

Wild Bioscience
Abingdon
1 month ago
Applications closed

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Job Description

Who we are:


At Wild Bio we are radically enhancing crops to feed the world sustainably and promote a wilder planet. Wild plants have had half a billion years to evolve natural solutions for thriving in almost every environment on Earth. Our proprietary genetics platform harnesses these wild innovations to enhance the world’s most important crops. Wild-enhanced crops would simultaneously boost farm yields and promote gigaton-scale carbon mitigation strategies. If you’re looking for a start-up that has enormous potential for impact on growers, consumers, and the planet, please read on.

Wild Bio is a well-funded, fast-paced Oxford University spin-out working from state-of-the-art labs and offices at Milton Park, Oxfordshire. We are about to enter an exciting phase of growth and are looking for an experienced, driven, and curious Plant Genomics and Machine Learning Scientist to join us and significantly contribute to delivering the change we believe in.


The role:


We’re looking for someone who is excited to work at the intersection of evolutionary biology, machine learning, and plant physiology. The ideal candidate will have previous experience in some combination of comparative genomics, bioinformatics, machine learning, and plant science. Their task will be to help create, curate, and mine deep genomics and plant ...

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