1.3 Physics-Informed ML Engineer: Model Architectures

2 weeks ago


Boston, United States Medium Full time

Field AI is transforming how robots interact with the real world. We are building risk‑aware, reliable, and field‑ready AI systems that address the most complex challenges in robotics, unlocking the full potential of embodied intelligence. We go beyond typical data‑driven approaches or pure transformer‑based architectures, and are charting a new course, with already globally‑deployed solutions delivering real‑world results and rapidly improving models through real‑field applications.We are seeking a Physics‑Informed Machine Learning (PIML) Engineer to join our innovative team focused on advancing risk‑aware, autonomous systems. This role blends cutting‑edge machine learning techniques with a strong foundation in physics, with an emphasis on safety, uncertainty quantification, and system robustness in real‑world applications. The ideal candidate will work on integrating physical laws and constraints into machine learning models to create systems that learn from fewer data points while maintaining high accuracy and reliability in critical environments.What You Will Get To DoDevelop hybrid physics‑ML models that combine theoretical physics‑based components with data‑driven elements to create more accurate and generalizable robotics autonomy solutionsDesign physics‑informed architectures (e.g., physics‑informed neural networks or universal differential equations) to solve complex robotic systems while respecting physical constraints like conservation of momentum, contact dynamics, and joint limitsLead research initiatives in physics‑informed learning for robot control, combining model‑based and model‑free approaches, solving forward and inverse problems in robotic systems using PIMLCreate discrepancy models to bridge theoretical physics models with empirical data, analyzing the convergence, generalization, and error estimation of PIML models, ensuring stability and robustness in deployment.Design and evaluate novel neural network architectures that respect physical laws and constraintsBuild and optimize differentiable simulation pipelines for robot trajectory and control policy optimization, addressing complex physical constraints such as uncertainty in perception systems.Develop uncertainty‑aware models combining physical knowledge with probabilistic state estimation (e.g., SDEs, Bayesian inference) for improved perception and intelligence.Implement multi‑scale modeling and domain decomposition to address large‑scale challenges in autonomous robotics.Collaborate with robotics teams to deploy physics‑informed models in real‑world autonomous systems.Publish research in physics‑informed machine learning and hybrid modeling for robotic systems.What You HavePh.D or M.S in Computer Science, Physics, Applied Mathematics , or related field with focus on robot learning and physical systemsTrack record of combining physics‑informed machine learning techniques, with practical experience applying them to robotic systemsExperience integrating physical constraints into machine learning architecturesStrong understanding of POMDPs, differential equations, numerical methods, and computational physicsProficiency in implementing both physics‑based and machine learning modelsKnowledge of conservation laws, symmetries, invariances, and conservation laws relevant to robotic systems (e.g., SE(3) equivariance, Lie groups, Noether’s theorem to encode symmetries and invariances into geometric deep learning models for robotics)Experience with differentiable programming frameworks (PyTorch, JAX) and robotics middlewareStrong programming skills in Python, C++, or Julia, with experience deploying algorithms on real robotsCompensation and BenefitsOur salary range is between $70,000 and $300,000 annually, with final determination based on experience and location. We offer a hybrid or remote work arrangement where possible.Why Join Field AI?We are solving one of the world’s most complex challenges: deploying robots in unstructured, previously unknown environments. Our Field Foundational Models™ set a new standard in perception, planning, localization, and manipulation, ensuring our approach is explainable and safe for deployment.To tackle such ambitious challenges, we need a team of innovators who go beyond conventional methods and are eager to tackle tough, uncharted questions. We’re seeking individuals who challenge the status quo, dive into uncharted territory, and bring interdisciplinary expertise.Be Part of the Next Robotics RevolutionWe celebrate diversity and are committed to creating an inclusive environment for all employees. Candidates and employees are evaluated based on merit, qualifications, and performance. We will never discriminate on the basis of race, color, gender, national origin, ethnicity, veteran status, disability status, age, sexual orientation, gender identity, marital status, mental or physical disability, or any other legally protected status. #J-18808-Ljbffr



  • Boston, United States Field AI Full time

    1.3 Physics-Informed ML Engineer: Model ArchitecturesField AI is transforming how robots interact with the real world. We are building risk-aware, reliable, and field-ready AI systems that address the most complex challenges in robotics, unlocking the full potential of embodied intelligence. We go beyond typical data-driven approaches or pure...


  • Boston, United States Analog Devices Full time

    A leading semiconductor company is seeking a Senior AI/ML Robotics Engineer to develop sensor simulation frameworks for robotics. The role involves designing machine learning models, collaborating with engineers, and ensuring realistic simulations. A strong background in physics-informed machine learning and hands-on robotics experience are essential. The...


  • Boston, Massachusetts, United States Daice Labs Full time $90,000 - $120,000 per year

    Company DescriptionDaice Labs is building hybrid AI frameworks that integrate today's models into systems that learn continuously. Founded by MIT CSAIL scientists, we focus on building new architectures by combining LLMs/DL with symbolic reasoning and bio-inspired system design. Operating on two tracks, our Product Lab develops industry-specific solutions...

  • AI/ML Engineer

    2 weeks ago


    Boston, United States Comtech LLC Full time

    The Artificial Intelligence/Machine Learning (AI/ML) Engineer develops AI/ML algorithms, cloud computing, and/or heterogeneous distributed computing infrastructures to support the deployment of AI/ML applications. The AI/ML Engineer also researches the mathematical foundations and frameworks for nonlinear systems characterized by time-varying and emerging...


  • Boston, United States Apetan Consulting Full time

    PositionPrincipal AI/ML EngineerLocationPortland, ME; Boston, MA; Chicago, IL; and San Francisco, CA (hybrid 1-3 days onsite/ week)- LocalDuration12-18 MonthsMust haveHave 15-20 years of software design and development experience at a large scale.Lead and drive the development of technology and platform for the company’s AI/ML engineering needs, ensure the...


  • Boston, United States whoop Full time

    At WHOOP, we're on a mission to unlock human performance and healthspan. WHOOP empowers members to perform at a higher level through a deeper understanding of their bodies and daily lives.We are looking for a highly skilled Senior Software Engineer to join our MLOps team, focusing on the development and optimization of ML cloud infrastructure. In this role,...


  • Boston, United States Daice Labs Full time

    Company Description Daice Labs is building hybrid AI frameworks that integrate today’s models into systems that learn continuously. Founded by MIT CSAIL scientists, we focus on building new architectures by combining LLMs/DL with symbolic reasoning and bio-inspired system design. Operating on two tracks, our Product Lab develops industry-specific solutions...


  • Boston, Massachusetts, United States WEX Full time $203,000 - $270,000 per year

    ResponsibilitiesLead and drive the development of technology and platform for the company's AI/ML engineering needs, ensure the functional richness, reliability, performance, and flexibility of this platformHelp design the architecture and lead the implementation of the AI/ML infrastructure, platform and services.Challenge the status quo and hold a high bar...


  • Boston, United States WHOOP Full time

    Senior Software Engineer (ML Operations) At WHOOP, we're on a mission to unlock human performance and healthspan. WHOOP empowers members to perform at a higher level through a deeper understanding of their bodies and daily lives. We are looking for a highly skilled Senior Software Engineer to join our MLOps team, focusing on the development and optimization...


  • Boston, United States WHOOP Full time

    Senior Software Engineer (ML Operations) At WHOOP, we're on a mission to unlock human performance and healthspan. WHOOP empowers members to perform at a higher level through a deeper understanding of their bodies and daily lives. We are looking for a highly skilled Senior Software Engineer to join our MLOps team, focusing on the development and optimization...