Differentiable simulation is a promising toolkit for fast gradient-based policy optimization and system identification. However, existing approaches to differentiable simulation have largely tackled scenarios where obtaining smooth gradients has been relatively easy, such as systems with mostly smooth dynamics. In this work, we study the challenges that differentiable simulation presents when it is not feasible to expect that a single descent reaches a global optimum, which is often a problem in contact-rich scenarios. We analyze the optimization landscapes of diverse scenarios that contain both rigid bodies and deformable objects. In dynamic environments with highly deformable objects and fluids, differentiable simulators produce rugged la...
Abstract — Slow convergence is a major problem for policy gradient methods. It is a consequence of t...
Trajectory optimization methods have achieved an exceptional level of performance on real-world robo...
Incomplete convergence in numerical simulation such as computational physics simulations and/or Mont...
International audienceIn the past few years, following the differentiable programming paradigm, ther...
In recent years, an increasing amount of work has focused on differentiable physics simulation and h...
Physical simulators have been widely used in robot planning and control. Among them, differentiable ...
Designing robots with extreme performance in a given task has long been an exciting research problem...
Using jointly geometric and stochastic reformulations of nonconvex problems and exploiting a Monge-K...
Using jointly geometric and stochastic reformulations of nonconvex problems and exploiting a Monge-...
This electronic version was submitted by the student author. The certified thesis is available in th...
The thesis explores how to solve simulation-based optimization problems more efficiently using infor...
International audienceReasoning about 3D scenes from their 2D image projections is one of the core p...
We present a novel, fast differentiable simulator for soft-body learning and control a...
We introduce an efficient differentiable fluid simulator that can be integrated with deep neural net...
peer reviewedComplex computer simulators are increasingly used across fields of science as generativ...
Abstract — Slow convergence is a major problem for policy gradient methods. It is a consequence of t...
Trajectory optimization methods have achieved an exceptional level of performance on real-world robo...
Incomplete convergence in numerical simulation such as computational physics simulations and/or Mont...
International audienceIn the past few years, following the differentiable programming paradigm, ther...
In recent years, an increasing amount of work has focused on differentiable physics simulation and h...
Physical simulators have been widely used in robot planning and control. Among them, differentiable ...
Designing robots with extreme performance in a given task has long been an exciting research problem...
Using jointly geometric and stochastic reformulations of nonconvex problems and exploiting a Monge-K...
Using jointly geometric and stochastic reformulations of nonconvex problems and exploiting a Monge-...
This electronic version was submitted by the student author. The certified thesis is available in th...
The thesis explores how to solve simulation-based optimization problems more efficiently using infor...
International audienceReasoning about 3D scenes from their 2D image projections is one of the core p...
We present a novel, fast differentiable simulator for soft-body learning and control a...
We introduce an efficient differentiable fluid simulator that can be integrated with deep neural net...
peer reviewedComplex computer simulators are increasingly used across fields of science as generativ...
Abstract — Slow convergence is a major problem for policy gradient methods. It is a consequence of t...
Trajectory optimization methods have achieved an exceptional level of performance on real-world robo...
Incomplete convergence in numerical simulation such as computational physics simulations and/or Mont...