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A prestigious research university is seeking a research assistant to work on projects in geospatial and data science. This role involves conducting research, managing projects, and collaborating with other researchers. Candidates should hold a Master's degree in a related field and possess strong research and programming skills, particularly in Python. Excellent communication skills in English are also required. Join us to innovate and explore new research directions.
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We are seeking a research assistant to assist with a project and research in the geospatial & data science domain.
The primary tasks are:
• Conducting research activities.
• Literature reviews.
• Project management and administration.
• Development of software tools and related solutions.
• Collaboration with other researchers and coordination, and co-authoring publications and other forms of output.
• Exploring new research directions and experimenting with new datasets and technologies.
• Assisting the PI in various activities in the research group and project such as supervision/mentorship of students, management, administration, and funding applications.
• Preparation of publications and managing other forms of research output such as software and data.
• A Master’s degree in a related discipline (e.g. urban planning, geographic information science, computer science). Current master students are eligible to apply as well, provided that they are in the final stage of their studies and that their degree will be completed before the start of the appointment.
• An ability to conduct research independently.
• Expertise in statistics.
• Expertise in geospatial technologies.
• Experience in research, preferably with publications and other forms of relevant outputs.
• Excellent communication skills in English, writing skills, and an ability to present research in both academic and non-academic venues.
• Experience with programming (primarily Python) and machine learning libraries.
• Curiosity and passion to explore new concepts, methods and technologies, and capability of identifying and quickly learning the most suitable tools for the research on the go.
• A positive and proactive stance on open science, preferably with demonstrated activities such as using and developing open-source software, releasing data as open data, and promoting reproducible research.