Sort by
Refine Your Search
-
northern scientific community operates globally and creates conditions for the emergence of innovations. We are now looking for two Postdoctoral Researchers in Understanding humans in AI interaction for a
-
structural materials. Disseminate research results in top-level journals and international conferences. Reporting the results to international stakeholders and engaging with the scientific and industrial
-
GBIF), conservation knowledge (e.g., the World Database on Protected Areas), environmental (e.g., remote sensing), threat (e.g., land use change), digital (e.g., Wikipedia), and socio-economic (e.g
-
, nuclear structure and applied accelerator-based research, and particle physics on the physics of the strong interaction and ultrarelativistic heavy-ion collisions, particle cosmology and neutrino physics
-
of Helsinki, is led by Associate Professor Vivek Sharma. The focus of research is on the structure and mechanism of proteins involved in biological energy (ATP) generation and mitochondrial function and
-
likely interact directly with both the shallow rocky shore and soft sediment communities through sediment resuspension, erosion and deterioration of water transparency. However, there is no systematic
-
their impact on gene function and structure using a range of sequence analysis and comparative genomic methods. The projects will also involve programming for data collection and analysis. As a
-
and analyses that can help investigate human-nature interactions to inform decision making. We carry out global to local analyses, by integrating traditional and novel digital data sources. Our research
-
understandings of how hope towards technology is constructed, circulated, and embedded in policy and institutional settings— and what kind of belief structure techno-optimism constitutes? Do you have strong
-
experimental design; collaborative machine learning both Postdoctoral and Doctoral Researcher Heikki Mannila (Aalto) Data Analysis; Sequential and time-series data; Structure discovery, matrix decompositions