12 matlab-"Foundation-for-Science-and-Technology" positions at University of California
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/C++, Python, or MATLAB/Octave; experience with high-speed serial links and FPGA transceivers. Familiar with version control (Git), CI tools, and software quality practices. Strong analytical, problem
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research and statistical software package, such as Matlab, SPSS, SAS, Stata, etc. Experience managing and using multiple Linux operating systems through scripting and management tools for both servers and
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. Preferred backgrounds include nonlinear optics, quantum optics, spectroscopy, or instrumentation. Proficiency in software and coding (e.g., MATLAB, LabVIEW, Python) is expected. Applicants with a strong
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learning; MatLab; and server storage. Preferred Qualifications Experience working in health and biomedical sectors preferred. Experience working with RedCap, pooling Epic data, and PACS system. Key
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. Experience providing advanced technical support and consultation for common research and statistical software package, such as Matlab, SPSS, SAS, Stata, etc. Experience managing and using multiple Linux
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-related tools and applications including MatLab/Python, EnergyPlus, Labview, Excel. Preferred Qualifications Interpersonal and communication skills to interact with technical and non-technical individuals
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, or Matlab/Octave. Strong written and verbal communication skills. Experienced professional with expertise in RTL design (Verilog, SystemVerilog, VHDL), IP integration, simulation, timing closure, and hardware
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. • Ability to analyze TB of NetCDF ocean model output. • Fluency in Fortran, Python, and/or Matlab. • Demonstrated record (first-author publications, conference presentations) of independently led research in
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such as Stata (preferred), R, or Python and numerical software such as Matlab or Julia; -Experience with coding and project management through GitHub; -Ability to synthesize and communicate scientific
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in R, Python, Matlab, or similar ● Experience, familiarity, or interest in learning more about data related to plastic production, consumption, and waste management, particularly related to single-use