Arctos

Research Engineer – Composite Analysis

Arctos

full-time

Posted on:

Location Type: Office

Location: BeavercreekOhioUnited States

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Salary

💰 $90,000 - $95,000 per year

About the role

  • CGAN Development and Refinement
  • Retrain and refine a conditional generative adversarial network (CGAN) to generate synthetic PMC and CMC microstructures
  • Incorporate experimental optical microscopy data into the CGAN training process
  • Ensure the CGAN accurately models realistic morphologies conditioned on volume fraction and fiber arrangement
  • Data Integration and Preprocessing
  • Process and analyze experimental optical microscopy data to prepare it for use in CGAN training
  • Develop algorithms to extract relevant features (e.g., volume fraction, fiber arrangement) from experimental data
  • Model Validation and Performance Evaluation
  • Validate the CGAN-generated microstructures against experimental data to ensure realism and accuracy
  • Develop metrics and benchmarks to evaluate the quality of synthetic microstructures
  • Collaboration and Reporting
  • Collaborate with AFRL researchers and other stakeholders to align CGAN outputs with experimental observations
  • Document methodologies, results, and findings in technical reports and presentations
  • Simulation and Analysis
  • Use the refined CGAN-generated microstructures to simulate residual stress distributions and analyze their impact on material performance
  • Provide insights into the relationship between microstructure morphology and mechanical properties
  • Tool Development and Optimization
  • Develop and optimize computational tools for microstructure generation and analysis
  • Ensure scalability and efficiency of the CGAN framework for broader applications

Requirements

  • Ph.D. in Mechanical Engineering, Aerospace Engineering, Materials Science, or a closely related field
  • Experience with deep neural networks, LSTM RNNs, GANs, or CGANs
  • Experience with deep learning frameworks such as TensorFlow or PyTorch
  • Knowledge of finite element analysis (FEA) or other simulation tools is a plus
  • Understanding of microstructure-property relationships, especially in CMC materials
  • Proficiency in processing and analyzing experimental microscopy data
  • Familiarity with image analysis techniques and feature extraction
  • Experience with computational modeling of material microstructures and residual stress distributions
  • Excellent organizational and time management abilities
  • Desire to work both independently and in a team environment as the project requires
  • Excellent verbal and written communication skills
  • Proven track record in conducting both applied and fundamental research, evidenced by publications, patents, or successful technology demonstrations.
Benefits
  • 401(k) Retirement Plan with Company Matching
  • Health Insurance & HSA
  • Dental & Vision Insurance
  • Company Paid Life Insurance, AD&D and Short-Term Disability
  • Paid Time Off, Volunteer Time Off
  • Employee Assistance Program
Applicant Tracking System Keywords

Tip: use these terms in your resume and cover letter to boost ATS matches.

Hard Skills & Tools
CGANdeep neural networksLSTM RNNsGANsTensorFlowPyTorchfinite element analysisimage analysisfeature extractioncomputational modeling
Soft Skills
organizational skillstime managementindependent workteam collaborationverbal communicationwritten communication
Certifications
Ph.D. in Mechanical EngineeringPh.D. in Aerospace EngineeringPh.D. in Materials Science