Repost of JP 14031 and JP 14291 Please no candidates from that last posting.
PRESCREENING QUESTIONS TO BE ON TOP OF RESUME :
1. For an internal flow, how do you determine if the flow is laminar or turbulent?
2. What is your experience with FEM commercial solvers, and which ones have you used?
3. Can you explain the difference between explicit and implicit finite element methods (FEM)?
4. What is your experience with Python, and which Python libraries have you used most frequently for data analysis, modeling, or simulation?
5. Are you familiar with GitLab? If so, can you describe some of the typical operations you have performed with it?
6. Are you familiar with Monte Carlo analysis? If yes, how do you ensure convergence in a Monte Carlo model?
Hybrid at Thousand Oaks. Expectation is 3 days onsite per week.
The ideal candidate is a Data Scientist with a strong engineering background, preferably in Mechanical, Biomedical, or Chemical Engineering, with proven experience in simulation, modeling, and data analysis within a GMP-regulated environment. They are proficient in Python, MATLAB, and Minitab, and possess a deep understanding of engineering principles applied to physical systems. The candidate holds either a PhD with no required industry experience, a Master's degree with at least 2 years of experience, or a Bachelor's degree with a minimum of 4 years of experience. They are highly analytical, collaborative, and adaptable, with the ability to translate experimental data into actionable insights. Candidates with degrees in Computer Science, Electrical Engineering, or Computer Engineering, or those with purely software-focused backgrounds, are not a fit for this role.
The Digital Data Scientist will support the Combination Product Operations organization by improving the way
The ideal candidate enjoys tackling challenges and excels at enabling insights for decision making using data-driven and physics-based modeling.
This may include, but is not limited to, the following :
Skills :
Experience with programming in Python, MATLAB, JMP, and / or Minitab for engineering purposes
Experience with model simulation and analysis (MS&A) techniques for structural, fluidic, and heat transfer problems using commercial software such as ANSYS, LS-Dyna, ABAQUS, COMSOL
Experience with mathematical / first principles modeling, numerical techniques, and uncertainty quantification such as Monte Carlo simulations
Familiar with utilizing GitLab for version control, code collaboration, and project management
Data analysis expertise and statistical or mechanistic modeling experience
Experience in deriving technical recommendations and specifications from the analysis of measured data
Strong communication, presentation, and technical documentation skills are a plus, as is knowledge of process controls
Understanding business needs and developing Client yet practical solutions to meet those needs
Experience with combination products and device regulatory requirements and medical device development and engineering
Preferred Traits :
Basic Qualifications :
Bachelor's degree in Engineering plus 5 years of simulation, modeling, and data analysis experience
Or
Master's degree in Science or Engineering plus 2 years of simulation, modeling, and data analysis experience
Or
Ph.D. in Science or Engineering (simulation, modeling, and data analysis)
Data Scientist • Thousand Oaks, CA, United States