Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Employer
-
Field
-
Research Assistant / HiWi (8 hours/week) - Climate Opinion Data Analysis with R - Faculty of Busines
Research Assistant / HiWi (8 hours/week) - Climate Opinion Data Analysis with R - Faculty of Busines The research group of International Political Economy and Energy Policy, led by Prof. Aya Kachi
-
, environment, society and health as well as health systems and interventions. Research-IT (R-IT) is an interdisciplinary team within the Swiss TPH that provides operational guidance, expertise, and support to
-
; maintain our custom-made R package and provide support to the research teams; support panel management tasks such as data cleaning and data storage. Profile Requirement excellent oral and written
-
(target gene selection, power analyses, guide-library design, readout selection). Build, maintain, and document reproducible analysis pipelines (Python/R; Snakemake/Nextflow preferred) for novel
-
materials, federal administration and nature conservation representatives, and members of the Swiss Engineering Association (SIA). Urech, P. R., Dissegna, M. A., Girot, C., & Grêt-Regamey, A. (2020). Point
-
(target gene selection, power analyses, guide-library design, readout selection). Build, maintain, and document reproducible analysis pipelines (Python/R; Snakemake/Nextflow preferred) for novel
-
or soon to be finished Background in protein design, computational biology or related field Working knowledge in at least one relevant coding language (Python, R, or C++) Excellent communication skills and
-
community. We develop and commercialize simulation tools, as well as measurement equipment for all-in-one electro-optical device characterization and for device stability assessment. Our R&D tools are used
-
computing and scripting languages (e.g. R, Python). You are highly motivated to analyse data using sophisticated methods and tools. Good communication and organisation skills, an excellent team spirit and
-
(or similar) on concrete (or similar quasi-brittle materials). Experience with materials- and large(r)-scale component testing. Experience in laboratory testing and the use of conventional sensing equipment