Sort by
Refine Your Search
-
Employer
-
Field
-
, modeling and simulation of industrial processes. Proficiency in chemical process simulation software (e.g., gPROMS, Aspen, DWSIM, UNISIMDESIGN). Strong programming skills in Python aConditions: The person
-
, modeling and simulation of industrial processes. Proficiency in chemical process simulation software (e.g., gPROMS, Aspen, DWSIM, UNISIMDESIGN). Strong programming skills in Python and/or MATLAB
-
Engineering, Electronics, Industrial Computing, or related fields, and demonstrate proven skills in: Embedded systems (MCU programming, tinyML); Programming in C/C++ and/or Python; Integration of sensor systems
-
machine learning using chemical compounds— information provided in the CV and/or motivation letter; Knowledge of the Python programming language — information provided in the CV and/or motivation letter
-
: Preference will be given to candidates with knowledge of Python programming, web technology development, and data management in IoT environments, particularly those with experience in Kibana, Apache Kafka
-
with instrumentation; Experience in applied optics; Proficiency in Python. Funding Entity: project LIBScan, with reference 17490 (COMPETE2030-FEDER-01205900) Co-funded by ERDF - European Regional
-
field. priority will be given to candidates with: skills in programming languages and/or tools, such as python, c++, and/or matlab; basic knowledge of artificial intelligence techniques; knowledge
-
. Proficiency in programming languages such as Python or MATLAB is essential. Preference is given to candidates with experience in working with large-scale datasets (extended database knowledge and experience
-
applied to data science (e.g., R, Python, Bash, and SQL, among others) for processing, statistical analysis, and workflow automation. Practical experience in the processing, analysis, and visualization
-
meteorological and air quality modelling in urban areas, including knowledge of programming languages (Fortran, Python), demonstrated through participation in studies or projects (at least 10) and the publication