Job Summary
The successful candidate will conduct interdisciplinary research at the intersection of materials science thin-film materials and artificial intelligence/machine learning (AI/ML). The position focuses on the synthesis characterization and understanding of advanced functional thin films coupled with the development and application of data-driven and machine-learning approaches to accelerate materials insight optimize growth processes and extract structureproperty relationships from complex experimental data. The researcher will work collaboratively in an experimental environment while contributing to the development of modern AI-enabled workflows for materials discovery and analysis.
Essential Functions
- Develop and apply AI and machine-learning methods to experimental materials data including image-based time-series and multidimensional datasets arising from synthesis and characterization.
- Implement data workflows involving feature extraction dimensionality reduction pattern recognition anomaly or change detection and predictive modeling to identify growth regimes structureproperty trends or emergent behaviors.
- Integrate physical understanding of materials with statistical and machine-learning models emphasizing interpretability and relevance to materials physics.
- Design and execute thin-film deposition experiments using physical vapor growth techniques with emphasis on multifunctional materials.
- Perform structural electrical and functional characterization of thin films including X-ray diffraction scanning probe microscopy and related techniques to probe behavior at multiple length scales.
- Collaborate with experimentalists and theorists to connect data-driven insights.
- Prepare manuscripts conference presentations and reports documenting experimental and computational results.
- Mentor graduate and undergraduate researchers and contribute to a collaborative research environment.
Required Qualifications
- Minimum of a PhD or Doctorate in Materials Science and Engineering Physics Electrical Engineering or a closely related field.
- Minimum of 0-3 years of experience.
- Working knowledge of AI and machine-learning techniques relevant to scientific data analysis such as supervised and unsupervised learning neural networks or statistical learning methods.
- Demonstrated experience in thin-film synthesis and characterization.
- Experience analyzing complex experimental datasets using Python or similar scientific programming environments.
- Strong communication skills and ability to work across disciplinary boundaries.
Preferred Qualifications
- Experience applying machine learning to materials synthesis or characterization data.
- Background in scanning probe microscopy and nanoscale characterization.
- Familiarity with data-driven experiment design automation or real-time/near-real-time data analysis.
- Interest in developing generalizable materials-agnostic AI workflows informed by physical insight.
Physical Demands
- Typically sitting at a desk/table
- Typically standing walking
- Lifting demands 25lbs
Location
- University City - Philadelphia PA
Additional Information
This position is classified as Exempt grade KCompensation for this grade ranges from$54630.00 - $81940.00 per year. Please note that the offered rate for thisposition typically aligns with the minimum to midrange of this grade but it can vary based on thesuccessful candidates qualifications and experience department budget and an internal equity review.
Applicants are encouraged to explore the Professional Staff salary structure and CompensationGuidelines & Policies for more details on Drexels compensation information about benefits please review Drexels Benefits Brochure.
Special Instructions to the Applicant
Please make sure you upload your CV/resume and cover letter when submitting your application.
A review of applicants will begin once a suitable candidate pool is identified.
#LI-Remote
#LI-Hybrid
Required Experience:
IC
Job SummaryThe successful candidate will conduct interdisciplinary research at the intersection of materials science thin-film materials and artificial intelligence/machine learning (AI/ML). The position focuses on the synthesis characterization and understanding of advanced functional thin films co...
Job Summary
The successful candidate will conduct interdisciplinary research at the intersection of materials science thin-film materials and artificial intelligence/machine learning (AI/ML). The position focuses on the synthesis characterization and understanding of advanced functional thin films coupled with the development and application of data-driven and machine-learning approaches to accelerate materials insight optimize growth processes and extract structureproperty relationships from complex experimental data. The researcher will work collaboratively in an experimental environment while contributing to the development of modern AI-enabled workflows for materials discovery and analysis.
Essential Functions
- Develop and apply AI and machine-learning methods to experimental materials data including image-based time-series and multidimensional datasets arising from synthesis and characterization.
- Implement data workflows involving feature extraction dimensionality reduction pattern recognition anomaly or change detection and predictive modeling to identify growth regimes structureproperty trends or emergent behaviors.
- Integrate physical understanding of materials with statistical and machine-learning models emphasizing interpretability and relevance to materials physics.
- Design and execute thin-film deposition experiments using physical vapor growth techniques with emphasis on multifunctional materials.
- Perform structural electrical and functional characterization of thin films including X-ray diffraction scanning probe microscopy and related techniques to probe behavior at multiple length scales.
- Collaborate with experimentalists and theorists to connect data-driven insights.
- Prepare manuscripts conference presentations and reports documenting experimental and computational results.
- Mentor graduate and undergraduate researchers and contribute to a collaborative research environment.
Required Qualifications
- Minimum of a PhD or Doctorate in Materials Science and Engineering Physics Electrical Engineering or a closely related field.
- Minimum of 0-3 years of experience.
- Working knowledge of AI and machine-learning techniques relevant to scientific data analysis such as supervised and unsupervised learning neural networks or statistical learning methods.
- Demonstrated experience in thin-film synthesis and characterization.
- Experience analyzing complex experimental datasets using Python or similar scientific programming environments.
- Strong communication skills and ability to work across disciplinary boundaries.
Preferred Qualifications
- Experience applying machine learning to materials synthesis or characterization data.
- Background in scanning probe microscopy and nanoscale characterization.
- Familiarity with data-driven experiment design automation or real-time/near-real-time data analysis.
- Interest in developing generalizable materials-agnostic AI workflows informed by physical insight.
Physical Demands
- Typically sitting at a desk/table
- Typically standing walking
- Lifting demands 25lbs
Location
- University City - Philadelphia PA
Additional Information
This position is classified as Exempt grade KCompensation for this grade ranges from$54630.00 - $81940.00 per year. Please note that the offered rate for thisposition typically aligns with the minimum to midrange of this grade but it can vary based on thesuccessful candidates qualifications and experience department budget and an internal equity review.
Applicants are encouraged to explore the Professional Staff salary structure and CompensationGuidelines & Policies for more details on Drexels compensation information about benefits please review Drexels Benefits Brochure.
Special Instructions to the Applicant
Please make sure you upload your CV/resume and cover letter when submitting your application.
A review of applicants will begin once a suitable candidate pool is identified.
#LI-Remote
#LI-Hybrid
Required Experience:
IC
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