Staffing – Multi-Disciplined Scientist V Position Available In Steuben, New York
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Job Description
Staffing
- Multi-Disciplined Scientist V#25-61621
$100 - 110 per hour
Painted Post, NY
All On-site Job Description -
Job Title:
Numerical Optimization Specialist
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Location/Type:
Hybrid
- remote mostly and on-site as needed (can be located anywhere in US as long as willing to travel to Corning or any plant for a few days)
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Minimum Education:
PhD in Chemical Engineering, Computer Science, or a related field with a focus on Optimization during graduate studies.
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Experience:
Minimum of 10 years of experience in numerical optimization roles in industry. Additional experience in academia in the field of numerical optimization is a bonus.
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Estimated Start Date:
July 14, 2025
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Duration:
1 year
- Max bill rate: Open
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Travel Requirements:
Domestic and international travel up to 25% to manufacturing sites.
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Work Schedule:
Monday-Friday 40 hours with overtime as required.
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Immigration Status:
Must be eligible to work in the US for a minimum of 18 months Key Responsibilities
- Design, develop, and implement large-scale optimization models, including linear programming (LP), non-linear programming (NLP), and mixed-integer linear programming (MILP).
- Collaborate with supply chain specialists, planners, operations teams, and engineers to define optimization problems and translate business needs into objective functions and complex processes into mathematical constraints.
- Formulate optimization problems for model predictive control (MPC) applications and enhance existing MPC frameworks.
- Specify and gather data requirements for optimization problem formulation, working with data scientists and engineers to preprocess data.
- Develop optimization solutions using tools like Gurobi, Pyomo, AMPL, and MATLAB.
- Build optimization models from scratch and improve existing models to address challenges in manufacturing and scheduling.
- Work with business leaders to understand workflow and business logic and translate these into mathematical formulations.
- Use machine learning and data analysis techniques to define parameters, rules, and constraints for optimization problems.
- Collaborate in interdisciplinary teams and communicate optimization results effectively to technical and non-technical stakeholders.
- Document solutions and provide training to manufacturing and engineering personnel as needed. Required Skills
- Expertise in convex optimization, MILPs, NLPs, and large-scale optimization solvers (e.g., Gurobi).
- Proficiency in programming languages such as Python (with Pyomo), MATLAB, and AMPL.
Optional:
familiarity with GAMS or MiniZinc.
- Experience working with Git and version control systems.
- Strong ability to translate business processes and workflow logic into mathematical models.
- Ability to collaborate with interdisciplinary teams and communicate effectively with technical and business stakeholders.
- Strong problem-solving skills, teamwork, adaptability, and communication skills. Desired Skills
- Familiarity with machine learning and data analysis techniques to support optimization problem formulation.
- Experience working with supply chain specialists, planners, and operations teams.
- Ability to identify and define objective functions based on business needs and workflow constraints.
EEO:
“Mindlance is an Equal Opportunity Employer and does not discriminate in employment on the basis of
- Minority/Gender/Disability/Religion/LGBTQI/Age/Veterans.
“