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MS2005: Modeling and Control of Robotic Contacts and Collisions
MERL is seeking a highly motivated and qualified intern to conduct research into
hybrid modeling and control of object contact and collision for precise robotic assembly.
The ideal candidate is expected to be working toward a Ph.D. or equivalent degree
in the area of modeling and control of hybrid systems (those with both continuous and
discrete states), with strong knowledge and interest in differential algebraic
equations (DAEs), nonlinear and hybrid control theory, geometric algebra
and coordinate-free geometric methods. The research involves formalizing and extending
a hybrid DAE-based method of modeling the physics of object contact and collision to
include acausal effects of friction, address contact constraints of dimension
greater then one among objects, and formalize the method using hybrid systems theory
to study well-posedness issues and enable application of optimal control theory for
path planning and control of robotic assembly problems. The expected start of of the
internship is in the late Spring/Early Summer 2022, for a duration of 3-6 months.- Research Areas: Control, Multi-Physical Modeling, Robotics
- Host: Scott Bortoff
- Apply Now
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CA1940: Autonomous vehicle planning and contro in uncertain environments
MERL is seeking a highly motivated and qualified intern to collaborate with the Control for Autonomy team in research on planning and control for autonomous vehicles in uncertain surrounding environments. The research domain includes algorithms for path planning and control in environments that are uncertain and perceived by sensing and predicted according to models and data. The ideal candidate is expected to be working towards a PhD with strong emphasis in vehicle guidance and control, and to have interest and background in as many as possible of: vehicle dynamics modeling and control, sensor uncertainty modeling, data-driven prediction, predictive control for uncertain systems, motion planning. Good programming skills in MATLAB, Python are required, knowledge of C/C++, rapid prototyping systems, automatic code generation, vehicle simulation packages (CarSim, CarMaker) or ROS are a plus. The expected start of of the internship is in the late Spring/Early Summer 2022, for a duration of 3-6 months.
- Research Areas: Control, Dynamical Systems, Optimization, Robotics
- Host: Stefano Di Cairano
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CA1904: Numerical Optimal Control for Hybrid Dynamical Systems
MERL is looking for a highly motivated individual to work on tailored computational algorithms for numerical optimal control of hybrid dynamical systems and applications for decision making, motion planning and control of autonomous systems. The research will involve the study and development of numerical optimal control methods for systems with continuous dynamics and discrete logic, nonsmooth and/or switched dynamics, and the implementation and validation of such algorithms for industrial applications, e.g., related to autonomous driving and robotics. The ideal candidate should have experience in either one or multiple of the following topics: mixed-integer programming (MIP), mathematical programs with complementarity constraints (MPCCs), modeling and formulation of optimal control problems for hybrid dynamical systems, convex and non-convex optimization, machine learning and real-time optimization. PhD students in engineering or mathematics, especially with a focus on MIPs, MPCCs or numerical optimal control, are encouraged to apply. Publication of relevant results in conference proceedings or journals is expected. Capability of implementing the designs and algorithms in MATLAB/Python is expected; coding parts of the algorithms in C/C++ is a plus. The expected duration of the internship is 3-6 months and the start date is flexible.
- Research Areas: Control, Machine Learning, Optimization, Robotics
- Host: Rien Quirynen
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CV1938: Component transfer learning for RL and robotic applications
MERL is offering a new research internship opportunity in the field of Transfer Learning for Deep RL. The position requires a strong background in Deep RL, excellent programming skills and experience with robotics is preferred. The position is open to graduate students on a PhD track only, and the length of the internship is three months with the possibility of extending if required. The intern is expected to disseminate this research in top tier scientific conferences such as RSS, IROS, ICRA etc., and if applicable, help with filing associated patents. Start and end dates are flexible.
- Research Areas: Artificial Intelligence, Machine Learning, Robotics
- Host: Radu Corcodel
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CV1992: High precision pose estimation of deformable objects
MERL is seeking a highly motivated intern to conduct original research in high precision pose estimation of deformable objects. Applicants are required to have a strong background in image processing, machine vision and point cloud processing using depth cameras. The internship is open to PhD students, preferably specializing in Computer Vision, with a strong publication record, solid programming skills in Python and/or C/C++, and preferably some experience using tactile sensors. Internship duration and start date are flexible.
- Research Areas: Computer Vision, Machine Learning, Robotics
- Host: Radu Corcodel
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MD1886: Co-design of robotic arm and control systems
MERL is seeking a highly motivated and qualified individual to conduct research in model-based robotic system design. The ideal candidate should have solid backgrounds in robotic dynamics and simulation, motion planning and control, simulation-based optimization, surrogate modeling, and coding skills. Demonstrated experience on implementing robotic dynamics and simulation/optimization software such as Matlab is a necessity. Ph.D. students in mechanical engineering, robotics, computer science, and electrical engineering are encouraged to apply. Start date for this internship is flexible and the duration is about 3 months.
- Research Areas: Control, Dynamical Systems, Optimization, Robotics
- Host: Yebin Wang
- Apply Now