diff options
Start to record some benchmarks
Diffstat (limited to 'notebook')
-rw-r--r-- | notebook/ldc_benchmark.ipynb | 287 |
1 files changed, 287 insertions, 0 deletions
diff --git a/notebook/ldc_benchmark.ipynb b/notebook/ldc_benchmark.ipynb new file mode 100644 index 0000000..59f6ffb --- /dev/null +++ b/notebook/ldc_benchmark.ipynb @@ -0,0 +1,287 @@ +{ + "cells": [ + { + "cell_type": "code", + "execution_count": 1, + "metadata": {}, + "outputs": [], + "source": [ + "from lbm import Lattice, Geometry" + ] + }, + { + "cell_type": "code", + "execution_count": 2, + "metadata": {}, + "outputs": [], + "source": [ + "import symbolic.D2Q9 as D2Q9" + ] + }, + { + "cell_type": "code", + "execution_count": 3, + "metadata": {}, + "outputs": [], + "source": [ + "def cavity(geometry, x, y):\n", + " if x == 1 or y == 1 or x == geometry.size_x-2:\n", + " return 2\n", + " elif y == geometry.size_y-2:\n", + " return 3\n", + " else:\n", + " return 1" + ] + }, + { + "cell_type": "code", + "execution_count": 4, + "metadata": {}, + "outputs": [], + "source": [ + "boundary = \"\"\"\n", + " if ( m == 2 ) {\n", + " u_0 = 0.0;\n", + " u_1 = 0.0;\n", + " }\n", + " if ( m == 3 ) {\n", + " u_0 = 0.1;\n", + " u_1 = 0.0;\n", + " }\n", + "\"\"\"" + ] + }, + { + "cell_type": "code", + "execution_count": 5, + "metadata": {}, + "outputs": [], + "source": [ + "import time\n", + "\n", + "def MLUPS(cells, steps, time):\n", + " return cells * steps / time * 1e-6" + ] + }, + { + "cell_type": "code", + "execution_count": 6, + "metadata": {}, + "outputs": [], + "source": [ + "def test(nX, nY, nSteps):\n", + " lattice = Lattice(\n", + " descriptor = D2Q9,\n", + " geometry = Geometry(nX, nY),\n", + " moments = D2Q9.moments(optimize = False),\n", + " collide = D2Q9.bgk(tau = 0.56),\n", + " boundary_src = boundary)\n", + " lattice.setup_geometry(cavity)\n", + " \n", + " start = time.time()\n", + " \n", + " for i in range(0,nSteps):\n", + " lattice.evolve()\n", + " lattice.sync()\n", + " \n", + " end = time.time()\n", + " \n", + " return MLUPS(lattice.geometry.volume, nSteps, end - start)" + ] + }, + { + "cell_type": "code", + "execution_count": 7, + "metadata": {}, + "outputs": [ + { + "name": "stdout", + "output_type": "stream", + "text": [ + " 32 : 15 MLUPS\n", + " 64 : 62 MLUPS\n", + " 96 : 135 MLUPS\n", + " 128 : 233 MLUPS\n", + " 160 : 376 MLUPS\n", + " 192 : 539 MLUPS\n", + " 224 : 744 MLUPS\n", + " 256 : 761 MLUPS\n", + " 288 : 763 MLUPS\n", + " 320 : 776 MLUPS\n", + " 352 : 726 MLUPS\n", + " 384 : 717 MLUPS\n", + " 416 : 750 MLUPS\n", + " 448 : 798 MLUPS\n", + " 480 : 797 MLUPS\n", + " 512 : 818 MLUPS\n", + " 544 : 802 MLUPS\n", + " 576 : 814 MLUPS\n", + " 608 : 814 MLUPS\n", + " 640 : 812 MLUPS\n", + " 672 : 815 MLUPS\n", + " 704 : 815 MLUPS\n", + " 736 : 804 MLUPS\n", + " 768 : 824 MLUPS\n", + " 800 : 728 MLUPS\n", + " 832 : 722 MLUPS\n", + " 864 : 819 MLUPS\n", + " 896 : 826 MLUPS\n", + " 928 : 828 MLUPS\n", + " 960 : 822 MLUPS\n", + " 992 : 824 MLUPS\n", + "1024 : 823 MLUPS\n", + "1056 : 822 MLUPS\n", + "1088 : 822 MLUPS\n", + "1120 : 825 MLUPS\n", + "1152 : 828 MLUPS\n", + "1184 : 821 MLUPS\n", + "1216 : 818 MLUPS\n", + "1248 : 813 MLUPS\n", + "1280 : 828 MLUPS\n", + "1312 : 824 MLUPS\n", + "1344 : 827 MLUPS\n", + "1376 : 826 MLUPS\n", + "1408 : 823 MLUPS\n", + "1440 : 826 MLUPS\n", + "1472 : 824 MLUPS\n", + "1504 : 826 MLUPS\n", + "1536 : 828 MLUPS\n", + "1568 : 823 MLUPS\n", + "1600 : 824 MLUPS\n", + "1632 : 825 MLUPS\n", + "1664 : 828 MLUPS\n", + "1696 : 827 MLUPS\n", + "1728 : 830 MLUPS\n", + "1760 : 831 MLUPS\n", + "1792 : 826 MLUPS\n", + "1824 : 828 MLUPS\n", + "1856 : 826 MLUPS\n", + "1888 : 825 MLUPS\n", + "1920 : 826 MLUPS\n", + "1952 : 826 MLUPS\n", + "1984 : 826 MLUPS\n", + "2016 : 827 MLUPS\n", + "2048 : 840 MLUPS\n", + "2080 : 829 MLUPS\n", + "2112 : 828 MLUPS\n", + "2144 : 828 MLUPS\n", + "2176 : 831 MLUPS\n", + "2208 : 826 MLUPS\n", + "2240 : 828 MLUPS\n", + "2272 : 829 MLUPS\n", + "2304 : 831 MLUPS\n", + "2336 : 828 MLUPS\n", + "2368 : 831 MLUPS\n", + "2400 : 829 MLUPS\n", + "2432 : 829 MLUPS\n", + "2464 : 829 MLUPS\n", + "2496 : 830 MLUPS\n", + "2528 : 830 MLUPS\n", + "2560 : 814 MLUPS\n", + "2592 : 827 MLUPS\n", + "2624 : 828 MLUPS\n", + "2656 : 828 MLUPS\n", + "2688 : 829 MLUPS\n", + "2720 : 828 MLUPS\n", + "2752 : 830 MLUPS\n", + "2784 : 827 MLUPS\n", + "2816 : 829 MLUPS\n", + "2848 : 826 MLUPS\n", + "2880 : 830 MLUPS\n", + "2912 : 829 MLUPS\n", + "2944 : 826 MLUPS\n", + "2976 : 828 MLUPS\n", + "3008 : 828 MLUPS\n", + "3040 : 829 MLUPS\n", + "3072 : 832 MLUPS\n", + "3104 : 826 MLUPS\n", + "3136 : 829 MLUPS\n", + "3168 : 827 MLUPS\n" + ] + } + ], + "source": [ + "results = []\n", + "for size in [ 32*i for i in range(1,100) ]:\n", + " perf = test(nX = size, nY = size, nSteps = 100)\n", + " results.append((size, perf))\n", + " print(\"%4d : %3.0f MLUPS\" % (size, perf))" + ] + }, + { + "cell_type": "code", + "execution_count": 8, + "metadata": {}, + "outputs": [], + "source": [ + "import matplotlib\n", + "import matplotlib.pyplot as plt\n", + "matplotlib.use('AGG')" + ] + }, + { + "cell_type": "code", + "execution_count": 9, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "Text(0, 0.5, 'MLUPS')" + ] + }, + "execution_count": 9, + "metadata": {}, + "output_type": "execute_result" + }, + { + "data": { + "image/png": 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\n", + "text/plain": [ + "<Figure size 1152x576 with 1 Axes>" + ] + }, + "metadata": { + "needs_background": "light" + }, + "output_type": "display_data" + } + ], + "source": [ + "plt.figure(figsize=(16,8))\n", + "plt.scatter(*zip(*results))\n", + "plt.title('LDC Performance for various grid sizes using a Nvidia K2200')\n", + "plt.xlabel('Size')\n", + "plt.ylabel('MLUPS')" + ] + }, + { + "cell_type": "code", + "execution_count": null, + "metadata": {}, + "outputs": [], + "source": [] + } + ], + "metadata": { + "kernelspec": { + "display_name": "Python 3", + "language": "python", + "name": "python3" + }, + "language_info": { + "codemirror_mode": { + "name": "ipython", + "version": 3 + }, + "file_extension": ".py", + "mimetype": "text/x-python", + "name": "python", + "nbconvert_exporter": "python", + "pygments_lexer": "ipython3", + "version": "3.7.3" + } + }, + "nbformat": 4, + "nbformat_minor": 2 +} |