xref: /libCEED/examples/python/tutorial-5-operator.ipynb (revision 13964f0727a62e5421e6d3b433e838b96a9ce891)
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7edab6123Sjeremylt    "# libCEED for Python examples\n",
8edab6123Sjeremylt    "\n",
9edab6123Sjeremylt    "This is a tutorial to illustrate the main feautures of the Python interface for [libCEED](https://github.com/CEED/libCEED/), the low-level API library for efficient high-order discretization methods developed by the co-design [Center for Efficient Exascale Discretizations](https://ceed.exascaleproject.org/) (CEED) of the [Exascale Computing Project](https://www.exascaleproject.org/) (ECP).\n",
10edab6123Sjeremylt    "\n",
11*13964f07SJed Brown    "While libCEED's focus is on high-order finite/spectral element method implementations, the approach is mostly algebraic and thus applicable to other discretizations in factored form, as explained in the [user manual](https://libceed.org/)."
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18edab6123Sjeremylt    "## Setting up libCEED for Python\n",
19edab6123Sjeremylt    "\n",
20edab6123Sjeremylt    "Install libCEED for Python by running"
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28edab6123Sjeremylt   "source": [
29edab6123Sjeremylt    "! python -m pip install libceed"
30edab6123Sjeremylt   ]
31edab6123Sjeremylt  },
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36edab6123Sjeremylt    "## CeedOperator\n",
37edab6123Sjeremylt    "\n",
38*13964f07SJed Brown    "Here we show some basic examples to illustrate the `libceed.Operator` class. In libCEED, a `libceed.Operator` defines the finite/spectral element operator associated to a `libceed.QFunction` (see [the API documentation](https://libceed.org/en/latest/libCEEDapi.html#finite-element-operator-decomposition))."
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45edab6123Sjeremylt    "* In the following example, we create and apply a CeedOperator for the mass matrix in 1D. By applying this operator to a vector of 1's, we compute the length of this 1D domain, similar to Ex1-Volume in the [tutorial-6-shell tutorial](./tutorial-6-shell.ipynb)"
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54edab6123Sjeremylt    "import libceed\n",
55edab6123Sjeremylt    "import numpy as np\n",
56edab6123Sjeremylt    "\n",
57edab6123Sjeremylt    "ceed = libceed.Ceed()\n",
58edab6123Sjeremylt    "\n",
59edab6123Sjeremylt    "nelem = 15\n",
60edab6123Sjeremylt    "p = 5\n",
61edab6123Sjeremylt    "q = 8\n",
62edab6123Sjeremylt    "nx = nelem + 1\n",
63edab6123Sjeremylt    "nu = nelem*(p-1) + 1\n",
64edab6123Sjeremylt    "\n",
65edab6123Sjeremylt    "# Vectors\n",
66edab6123Sjeremylt    "x = ceed.Vector(nx)\n",
67edab6123Sjeremylt    "x_array = np.zeros(nx)\n",
68edab6123Sjeremylt    "for i in range(nx):\n",
69edab6123Sjeremylt    "  x_array[i] = i / (nx - 1.0)\n",
70edab6123Sjeremylt    "x.set_array(x_array, cmode=libceed.USE_POINTER)\n",
71edab6123Sjeremylt    "\n",
72edab6123Sjeremylt    "qdata = ceed.Vector(nelem*q)\n",
73edab6123Sjeremylt    "u = ceed.Vector(nu)\n",
74edab6123Sjeremylt    "v = ceed.Vector(nu)\n",
75edab6123Sjeremylt    "\n",
76edab6123Sjeremylt    "# Restrictions\n",
77edab6123Sjeremylt    "indx = np.zeros(nx*2, dtype=\"int32\")\n",
78edab6123Sjeremylt    "for i in range(nx):\n",
79edab6123Sjeremylt    "  indx[2*i+0] = i\n",
80edab6123Sjeremylt    "  indx[2*i+1] = i+1\n",
81edab6123Sjeremylt    "rx = ceed.ElemRestriction(nelem, 2, 1, 1, nx, indx, cmode=libceed.USE_POINTER)\n",
82edab6123Sjeremylt    "\n",
83edab6123Sjeremylt    "indu = np.zeros(nelem*p, dtype=\"int32\")\n",
84edab6123Sjeremylt    "for i in range(nelem):\n",
85edab6123Sjeremylt    "  for j in range(p):\n",
86edab6123Sjeremylt    "    indu[p*i+j] = i*(p-1) + j\n",
87edab6123Sjeremylt    "ru = ceed.ElemRestriction(nelem, p, 1, 1, nu, indu, cmode=libceed.USE_POINTER)\n",
88edab6123Sjeremylt    "strides = np.array([1, q, q], dtype=\"int32\")\n",
89edab6123Sjeremylt    "rui = ceed.StridedElemRestriction(nelem, q, 1, q*nelem, strides)\n",
90edab6123Sjeremylt    "\n",
91edab6123Sjeremylt    "# Bases\n",
92edab6123Sjeremylt    "bx = ceed.BasisTensorH1Lagrange(1, 1, 2, q, libceed.GAUSS)\n",
93edab6123Sjeremylt    "bu = ceed.BasisTensorH1Lagrange(1, 1, p, q, libceed.GAUSS)\n",
94edab6123Sjeremylt    "\n",
95edab6123Sjeremylt    "# QFunctions\n",
96edab6123Sjeremylt    "qf_setup = ceed.QFunctionByName(\"Mass1DBuild\")\n",
97edab6123Sjeremylt    "qf_mass = ceed.QFunctionByName(\"MassApply\")\n",
98edab6123Sjeremylt    "\n",
99edab6123Sjeremylt    "# Setup operator\n",
100edab6123Sjeremylt    "op_setup = ceed.Operator(qf_setup)\n",
101edab6123Sjeremylt    "op_setup.set_field(\"dx\", rx, bx, libceed.VECTOR_ACTIVE)\n",
102edab6123Sjeremylt    "op_setup.set_field(\"weights\", libceed.ELEMRESTRICTION_NONE, bx,\n",
103edab6123Sjeremylt    "                   libceed.VECTOR_NONE)\n",
104edab6123Sjeremylt    "op_setup.set_field(\"qdata\", rui, libceed.BASIS_COLLOCATED,\n",
105edab6123Sjeremylt    "                   libceed.VECTOR_ACTIVE)\n",
10628d09c20SJeremy L Thompson    "op_setup.check()\n",
107edab6123Sjeremylt    "print('Setup operator: ', op_setup)\n",
108edab6123Sjeremylt    "\n",
109edab6123Sjeremylt    "# Mass operator\n",
110edab6123Sjeremylt    "op_mass = ceed.Operator(qf_mass)\n",
111edab6123Sjeremylt    "op_mass.set_field(\"u\", ru, bu, libceed.VECTOR_ACTIVE)\n",
112edab6123Sjeremylt    "op_mass.set_field(\"qdata\", rui, libceed.BASIS_COLLOCATED, qdata)\n",
113edab6123Sjeremylt    "op_mass.set_field(\"v\", ru, bu, libceed.VECTOR_ACTIVE)\n",
11428d09c20SJeremy L Thompson    "op_mass.check()\n",
115edab6123Sjeremylt    "print('Mass operator: ', op_mass)\n",
116edab6123Sjeremylt    "\n",
117edab6123Sjeremylt    "# Setup\n",
118edab6123Sjeremylt    "op_setup.apply(x, qdata)\n",
119edab6123Sjeremylt    "\n",
120edab6123Sjeremylt    "# Apply mass matrix\n",
121edab6123Sjeremylt    "u.set_value(1)\n",
122edab6123Sjeremylt    "op_mass.apply(u, v)\n",
123edab6123Sjeremylt    "\n",
124edab6123Sjeremylt    "# Check\n",
125edab6123Sjeremylt    "with v.array_read() as v_array:\n",
126edab6123Sjeremylt    "  print('The length of the domain is l = %4.2f'%np.sum(v_array))"
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