Tech Stack
Responsibilities
- Develop novel machine learning architectures and physics-informed neural networks
- Create differentiable simulation pipelines and design experiments
- Design new electronics and collect test measurements for analysis
- Build large-scale datasets for scientific reasoning and representation learning
- Conduct literature reviews, train and evaluate research models, and publish research findings
Soft Skills
Machine LearningPhysics-Informed Neural NetworksElectrical EngineeringRepresentation LearningResearch
Benefits
- Equity
Culture
Startup EnergyCross-Functional Teams
Requirements
Required: Currently pursuing or recently earned a PhD in Math, Physics, Electrical Engineering, or Machine Learning
Regions: Us
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About root-access
Industry: electronics
Size: startup
Root Access is a NYC-based frontier electronics startup funded by top investors, with a team of engineers across electrical, firmware, software, and machine learning.
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