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Add entry for gmsh tutorial in introduction #1829

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12 changes: 9 additions & 3 deletions docs/literate/src/files/index.jl
Original file line number Diff line number Diff line change
Expand Up @@ -108,20 +108,26 @@
# software in the Trixi.jl ecosystem, and then run a simulation using Trixi.jl on said mesh.
# In the end, the tutorial briefly explains how to simulate an example using AMR via `P4estMesh`.

# ### [15 Explicit time stepping](@ref time_stepping)
# ### [15 P4est mesh from gmsh](@ref p4est_from_gmsh)
#-
# This tutorial describes how to obtain a [`P4estMesh`](@ref) from an existing mesh generated
# by [`gmsh`](https://gmsh.info/) or any other meshing software that can export to the Abaqus
# input `.inp` format. It demonstrates its usage for a Mach 2 flow around the NACA6412 airfoil.
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# ### [16 Explicit time stepping](@ref time_stepping)
#-
# This tutorial is about time integration using [OrdinaryDiffEq.jl](https://github.com/SciML/OrdinaryDiffEq.jl).
# It explains how to use their algorithms and presents two types of time step choices - with error-based
# and CFL-based adaptive step size control.

# ### [16 Differentiable programming](@ref differentiable_programming)
# ### [17 Differentiable programming](@ref differentiable_programming)
#-
# This part deals with some basic differentiable programming topics. For example, a Jacobian, its
# eigenvalues and a curve of total energy (through the simulation) are calculated and plotted for
# a few semidiscretizations. Moreover, we calculate an example for propagating errors with Measurement.jl
# at the end.

# ### [17 Custom semidiscretization](@ref custom_semidiscretization)
# ### [18 Custom semidiscretization](@ref custom_semidiscretization)
#-
# This tutorial describes the [semidiscretiations](@ref overview-semidiscretizations) of Trixi.jl
# and explains how to extend them for custom tasks.
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