Skip to content

Latest commit

 

History

History
39 lines (26 loc) · 5.33 KB

ideas-list.md

File metadata and controls

39 lines (26 loc) · 5.33 KB

⚡ Important information for interested students ⚡

  • Read the GSoC 2024 page
  • Remember that Gridap participates in GSoC with NumFOCUS as umbrella organization.
  • Read this ideas page carefully
  • Think on how you can contribute to the Gridap project based on this ideas page, your expertise, and your interests
  • Contact us before applying to find a suitable topic for your proposal (see contact details in the subsection "mentors" below)
  • Ask any questions you have on the application process on this issue

This page is under construction 🔨

Gridap.jl

Gridap.jl is a new generation, open-source, finite element (FE) library implemented in the Julia programming language. Gridap.jl aims at adopting a more modern programming style than existing FE applications written in C/C++ or Fortran. The library is currently able to solve linear and nonlinear partial differential equations (PDEs) for scalar and vector fields, single and multi-field problems, conforming and nonconforming FE discretizations, on structured and unstructured meshes of simplices and n-cubes. Gridap is extensible and modular. One can implement new FE spaces, new reference elements, use external mesh generators, linear solvers, post-processing tools, etc. See, e.g., the list of available Gridap plugins.

Mentors

In alphabetical order

Project ideas

Parallel algebraic multigrid in Julia

Algebraic multigrid (AMG) methods are among the most popular techniques to solve large systems of linear algebraic equations on supercomputers. Even though AMG schemes are key in many high-performance computing (HPC) applications, there are not many Julia alternatives available. AMG methods have beed implemented in pure Julia in AlgebraicMultigrid.jl, which is a very valuable tool for the Julia community, but its implementation is sequential and thus not suitable for large-scale problems on supercomputers. Parallel AMG schemes remain available almost exclusively in packages with a long history such as PETSc and Hypre, and implemented in traditional HPC languages like Fortran and C/C++. Even though these packages can be used from Julia via bindings (see e.g. HYPRE.jl), a modern Julia implementation of parallel AMG methods is still missing. Without this implementation, the Julia package ecosystem misses a key feature in its otherwise rich scientific computing toolkit. In this project, the student will contribute to the current effort of implementing parallel AMG schemes in Julia withing the PartitionedArrays.jl package. This will allow Gridap.jl and other Julia packages to consider AMG methods in large-scale parallel computations.

Priority Intensity Project type Goal Mentors
High Moderate Medium (~175hr) Implementation of parallel algebraic multigrid methods in Julia using PartitionedArrays.jl Francesc Verdugo, Alberto F. Martin, and Oriol Colomés

Adjoint-based PDE-constrained optimization

In many engineering and scientific applications there is the need to find solutions to optimization problems where the variables are constrained by certain PDEs. That is the case of inverse problems where one is interested in finding the optimal set of parameters such that the solution matches with observations, or design optimization problems where one wants to find the optimal parameter that maximizes or minimizes a quantity of interest. Most efficient optimization solvers rely on the derivative of the optimization functional with respect to the parameters, which can be obtained from the adjoint of the forward problem. One of the major challenges appears when dealing with transient PDEs and time-dependent parameters. In that case, the forward problem is integrated forward in time and stored in memory so that it can be used by the adjoint problem that is solved backwards. In this project we propose to create a general framework to compute adjoints, and use them in optimization problems, using Gridap.jl as a solver for the forward problem. The goal is to take advantage of Automatic Differentiation capabilities of Julia to automate the optimization process. The student working on this project will first start with the definition of a general API for optimization problems using discrete adjoints of steady forward problems. Next, we will work in forward/backward time marching schemes for adjoints in transient problems. Finally, we will implement checkpointing schemes to limit the memory consumption in the computation of adjoints of time-dependent problems.

Priority Intensity Project type Goal Mentors
Medium Moderate Long (~350hr) Create a general framework to compute adjoints, and use them in optimization problems, using Gridap.jl as a solvers for the forward problem. Oriol Colomés and Francesc Verdugo