Schlumberger

High Performance Computing Engineer

Schlumberger$120K — $160K *
Enterprise Technology
Less than 5 years of experience
Job Overview by Ladders

Qualifications

  • Advanced degree (MS/PhD) in a relevant technical field.
  • 3+ years of practical experience in large-scale discrete optimization.
  • Hands-on expertise in linear and quadratic programming with solver technologies.
  • Proficiency in heuristic and metaheuristic optimization techniques.
  • Experience with quantum computing technologies, including quantum annealing and gate model platforms.
  • Ability to operate within high-performance computing environments.
  • Proficient in programming languages such as Python, C++, or Julia.

Responsibilities

  • Design and optimize algorithms for discrete optimization challenges.
  • Apply operations research techniques like linear and quadratic programming.
  • Develop heuristic and metaheuristic methods for complex optimization problems.
  • Utilize HPC environments to enhance problem-solving speed and efficiency.
  • Implement quantum computing solutions for optimization tasks.
  • Collaborate with multi-disciplinary teams to refine and integrate models.
  • Conduct performance analysis and improve optimization processes.

Benefits

  • Collaborative work environment with cross-functional teams.
  • Opportunities to work with emerging quantum computing technologies.
  • Access to high-performance computing resources.
  • Engagement with innovative and challenging projects in optimization.
  • Potential for continued learning and professional development.
Full Job Description
Poistion Title: High Performance Computing Engineer - Discrete Optimization & Quantum Information Technologies

Office Location: SLB, 640 W. California Avenue, Suite 210, Sunnyvale, CA 94086

Position Overview:
We are seeking a highly skilled High Performance Computing (HPC) Engineer with a strong background in modeling and solving complex discrete optimization problems. The ideal candidate will demonstrate deep expertise in operations research, advanced mathematical programming, and quantum computing technologies. Your solutions will address challenges such as scheduling, logistics, resource allocation, object placement, bin packing and inversion for large, data-driven systems demanding exceptional performance and precision.

Key Responsibilities:
• Design, implement, and optimize algorithms to solve large-scale discrete optimization problems, including scheduling, logistics, resource allocation, object placement, bin packing and inversion.
• Apply advanced operations research techniques using linear programming, quadratic programming, and combinatorial optimization.
• Develop and deploy heuristic and metaheuristic approaches (e.g., simulated annealing, genetic algorithms, Tabu search) for intractable or non-convex problems.
• Leverage high-performance computing environments to scale and accelerate problem-solving, including multi-core, distributed, and cloud architectures.
• Utilize quantum computing hardware (quantum annealers, gate model devices) and quantum-inspired technologies for problem modeling, algorithm implementation, and performance benchmarking.
• Collaborate with data scientists, software engineers, and domain experts to identify requirements, formulate models, and integrate solutions into operational workflows.
• Conduct performance analysis, benchmarking, and continuous improvement of optimization solvers and pipelines.
• Stay abreast of emerging trends in quantum computing, operations research, and HPC to ensure the use of cutting-edge techniques.

Required Qualifications:
• Advanced degree (MS/PhD) in Computer Science, Operations Research, Applied Mathematics, Physics, Engineering, or related fields.
• Proven experience (3+ years preferred) tackling discrete optimization problems at scale, with a portfolio demonstrating end-to-end model implementation and solution.
• Hands-on expertise in linear and quadratic programming, solver technologies (CPLEX, Gurobi, or equivalent).
• Proficiency with heuristic/metaheuristic optimization techniques (simulated annealing, genetic algorithms, Tabu search, etc.).
• Demonstrated experience with quantum computing technologies: quantum annealing (e.g., D-Wave), gate model platforms (e.g., IBM Qiskit, Google Cirq), and/or quantum-inspired optimization solvers.
• Ability to work in high performance/distributed computing environments (HPC clusters, parallel programming, large-scale simulation).
• Proficiency with programming languages such as Python, C++, or Julia, and relevant scientific computing libraries.
• Excellent analytical, problem-solving, and communication skills; able to translate business needs into technical requirements.

Preferred Qualifications:
• Experience developing cross-platform optimization packages and APIs.
• Familiarity with hybrid quantum-classical workflows.
• Published research or open-source contributions in optimization or quantum computing fields.
• Experience in domain-specific optimization (supply chain, logistics, manufacturing).

To Apply: Please submit your resume, cover letter, and a portfolio or summary of relevant optimization and/or quantum computing projects.

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