Sort by
Refine Your Search
-
monthly salary is €3,700–€4,000, depending on experience and qualifications. The employment contract includes a six-month probationary period. Staff benefits include occupational health and fitness services
-
approach to trainee development and mentorship within the team. Ability to design, execute, and troubleshoot experiments to a high technical standard, with strong data analysis and interpretation skills
-
gross salary range will be approx. €46,000 – €51,000, depending on the appointee’s qualifications and experience. Standard Finnish pension benefits and occupational health care are provided for university
-
collaboration and communication skills Teaching skills necessary for the position Excellent written and spoken English skills Highly valued qualifications: Experience working with highly fragmented genomic data
-
completed a PhD in economics or agricultural economics, who have solid training in econometrics and applied microeconomics and experience working with administrative firm-level data. The doctoral degree must
-
experience working with administrative firm-level data. The doctoral degree must be granted before the beginning of employment. The work requires independent thinking and problem-solving skills as
-
related field, and have a keen interest in multimodality and audiovisual media. Previous experience of applying computational methods to large volumes of audiovisual data is essential. The appointee must
-
the candidate's background and interests, ensuring a collaborative and engaging research experience. We seek candidates who have completed a PhD in ecological statistics or environmental economics or a related
-
and experience Access to excellent resources and professional development opportunities Occupational health care, flexible working hours, and an opportunity for 6 weeks of paid annual leave Support for
-
doctoral degree in computer science, digital humanities or a related field, and have a keen interest in multimodality and audiovisual media. Previous experience of applying computational methods to large