PhD Residency (Physical ML & Hardware)
Мэтч & Сопровод
Для мэтча с этой вакансией нужен Plus
Описание вакансии
TL;DR
PhD Residency (Physical ML & Hardware): Developing hardware-in-the-loop training pipelines for physical silicon test chips with an accent on bridging the gap between physical dynamical systems and machine learning code. Focus on building software-to-hardware calibration pipelines to train physical substrates to match digital baseline accuracy at a fraction of the energy cost.
Location: Must be based in Mountain View, CA
Salary: $109,000–$157,000
Company
, the Moonshot Factory, is a diverse group of inventors and entrepreneurs building and launching technologies that aim to improve the lives of millions.
What you will do
- Collaborate on building robust, real-time hardware-in-the-loop training pipelines connecting silicon oscillator arrays to ML frameworks.
- Design and eecute eperimental protocols to train physical hardware on machine learning benchmarks using physics-aware backpropagation.
- Perform automated physical measurements to characterize non-linear dynamics and map hardware output against digital twin simulators.
- Analyze the impact of physical device noise, thermal fluctuations, and resistance drift on training convergence.
- Develop software interfaces using Python and C++ to automate laboratory instrumentation for reproducible physical training.
Requirements
- Currently enrolled in a PhD program in Computer Science, Electrical Engineering, Applied Physics, or a related STEM field.
- Strong hands-on eperience in hardware-in-the-loop systems and laboratory automation.
- Proficiency in writing custom neural network training loops and physical simulator components in PyTorch, JA, or C++.
- Solid understanding of physical non-idealities and their mathematical representation in training frameworks.
- Ability to work in a physical laboratory environment, debug electrical setups, and prototype hardware-software interfaces.
Nice to have
- Familiarity with non-volatile memory architectures like RRAM or memristors.
- Eperience with active analog coupled-oscillator circuits.
- Background in high-velocity characterization of integrated circuits or neuromorphic accelerators.
Culture & Benefits
- Direct mentorship from eperts in neuromorphic systems and mied-signal test engineering.
- Embedded in an agile, confidential project team focused on rapid laboratory iteration.
- Collaborative environment valuing technical rigor and hands-on eperimentation.
- Equal opportunity workplace committed to diversity and inclusion.
Будьте осторожны: если работодатель просит войти в их систему, используя iCloud/Google, прислать код/пароль, запустить код/ПО, не делайте этого - это мошенники. Обязательно жмите "Пожаловаться" или пишите в поддержку. Подробнее в гайде →