At a Glance
- Tasks: Design and develop computational pipelines for analysing large-scale, multimodal datasets.
- Company: Join the Francis Crick Institute, a leader in scientific research and collaboration.
- Benefits: Competitive salary starting from £43,630, with benefits and opportunities for growth.
- Other info: Highly collaborative environment with close interactions between data scientists and wetlab teams.
- Why this job: Make a real impact in cutting-edge research while collaborating with talented scientists.
- Qualifications: Open to all career stages; PhD optional, experience in data science preferred.
The predicted salary is between 43630 - 43630 £ per year.
My lab has an opening for a data scientist to design, develop, and apply computational pipelines to analyse and integrate large-scale, multimodal datasets, including spatial transcriptomics, in vivo calcium imaging, and molecular connectomics. This is a central, highly collaborative role within the lab, with close interactions with students and postdocs working on the wetlab side.
PhD is optional - we welcome applications from various career stages!
Salary for this Role: From £43,630 with benefits, subject to skills and experience for Data Scientist. From £53,025 with benefits, subject to skills and experience for Senior Data Scientist.
Data Scientist at the Francis Crick Institute - multimodal image analysis pipelines employer: Image
The Francis Crick Institute is an exceptional employer, offering a vibrant and collaborative work culture that fosters innovation in scientific research. With a focus on employee growth, we provide opportunities for professional development and encourage contributions from all career stages, ensuring that every team member can thrive in their role. Located in the heart of London, our institute not only offers competitive salaries and benefits but also a unique environment where cutting-edge science meets a supportive community.
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We think this is how you could land Data Scientist at the Francis Crick Institute - multimodal image analysis pipelines
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We think you need these skills to ace Data Scientist at the Francis Crick Institute - multimodal image analysis pipelines
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