1,370 machine-learning "https:" "https:" "https:" "https:" "https:" "The Francis Crick Institute" positions at Nature Careers
Sort by
Refine Your Search
-
Listed
-
Category
-
Country
- United States
- Germany
- Denmark
- Austria
- United Kingdom
- France
- Worldwide
- Spain
- India
- Belgium
- Canada
- Mexico
- Sweden
- South Africa
- Hong Kong
- Switzerland
- Luxembourg
- Italy
- Singapore
- United Arab Emirates
- Australia
- Finland
- Netherlands
- Ireland
- Japan
- Poland
- South Korea
- Turkey
- Argentina
- Barbados
- Czech Republic
- Guadeloupe
- Israel
- Norway
- Portugal
- Taiwan
- Vietnam
- 27 more »
- « less
-
Program
-
Field
-
commitment to education and student mentorship. Candidates must possess a doctorate in their respective field by the time of appointment. Please visit Colleges, Schools and Departments in CityUHK at https
-
organoid culturing of animal tissue. Significant skills in the scientific communication of research results. For non-Scandinavian candidates, an effort to learn to read, write and speak Danish is a
-
if they demonstrate strong relevant skills. Coursework or strong background in computational mechanics / FEM, numerical methods, and scientific programming. Exposure to machine learning / data-driven modelling and/or
-
at University of Cambridge. There will be ample opportunity to learn new techniques and refine existing ones. The ideal candidate should have a PhD in a relevant subject (or due to complete a PhD within 6 months
-
at https://policy.psu.edu/policies/ac21 Interested candidates must submit an online application at Penn State's Job Posting Board , and should upload the following application materials: a cover letter
-
at https://policy.psu.edu/policies/ac21 Interested candidates must submit an online application at Penn State's Job Posting Board , and should upload the following application materials: a cover letter
-
the Arctic, experimental tests of climate driven changes in carbon export from land and turnover and release of greenhouse gases (CO2 and CH4 ) from headwaters, and use of machine learning and process-based
-
stamp on the email server of TUD applies), preferably via the TUD SecureMail Portal https://securemail.tu-dresden.de by sending it as a single pdf file tolinda.petersohn@tu-dresden.de or to: TU Dresden
-
investigations as well as analyzing and interpreting the results of these investigations developing and testing innovative spinning technologies and modifying existing machine technology preparation of scientific
-
team member in the CBSC focused on ligand discovery, joining a team of dedicated computational researchers with diverse expertise ranging from structural bioinformatics to machine learning and AI. Your