Biological Machine Learning Internship

Lifelancer
London
1 month ago
Applications closed

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Job Title:Biological Machine Learning Internship

Job Location:London, UK

Job Location Type:Hybrid

Job Contract Type:Internship

Job Seniority Level:Internship

Department Data Science Employment Type Internship Location London Workplace type Hybrid Reporting To Neythen Treloar

Key Responsibilities

Skills, Knowledge and Expertise

Benefits

About Bactobio

We are a London-based biotechnology startup using breakthrough technologies in synthetic biology, next-generation sequencing and machine learning to cultivate the 99% of previously unculturable microbes. These microbes constitute the biggest bioresource in life, and our exclusive access allows us to discover novel chemicals that can be applied across a variety of markets.

We are impact-driven. Our first goal is to solve the growing antimicrobial resistance crisis through novel antibiotics and stabilise global food security through novel natural biodegradable fungicides.



Lifelancer (https://lifelancer.com) is a talent-hiring platform in Life Sciences, Pharma and IT. The platform connects talent with opportunities in pharma, biotech, health sciences, healthtech and IT domains.

For more details and to find similar roles, please check out the below Lifelancer link.

https://lifelancer.com/jobs/view/92995442eafbecda1278f2ca2c5aef90

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