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Software Engineer – Machine Learning, All Levels
Location
Washington
Posted
66 days ago
Salary
$120K - $300K / year
Seniority
Senior
Job Description
Software Engineer – Machine Learning, All Levels
Overland AI
• Design, prototype, and deploy machine learning algorithms related to perception, state estimation, and behavior planning (Python). • Identify, implement, and respond to meaningful metrics that affect vehicle behavior. • Serve as a technical expert for the team balancing short-term deliverables and long-term directions. • Collaborate closely with experts across disciplines to work across the entire stack to improve the reliability and performance of the system.
Job Requirements
- MS/PhD with publications in top-tier ML/CV venues (ICML, NeurIPS, ICLR, CVPR, ICCV, ECCV), OR equivalent years of industry experience in an applied research setting working on multi-year problems.
- Expert in a relevant ML topic such as sequential prediction, structured prediction, inverse reinforcement learning, transformers, deep learning optimization, etc.
- Excellent linear algebra, probability theory, and optimization knowledge.
- Extensive experience in Python and a deep learning framework such as Pytorch, JAX, Tensorflow, etc.
- You excel in a small-team atmosphere, taking ownership of problems and working with your colleagues to solve problems across disciplines.
- Ability to obtain and maintain a DOD Security Clearance.
Benefits
- The salary range for this position is $120K to $300K annually
- Equity compensation
- Best-in-class healthcare, dental and vision plans.
- Unlimited PTO
- 401k with company match
- Parental leave
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