{ "cells": [ { "cell_type": "markdown", "metadata": {}, "source": [ "# Release highlights for OpenTURNS 1.17" ] }, { "cell_type": "code", "execution_count": 1, "metadata": {}, "outputs": [], "source": [ "from __future__ import print_function\n", "import openturns as ot\n", "import math as m" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "### KarhunenLoeveValidation\n", "\n", "The first new class is the [KarhunenLoeveValidation](https://openturns.github.io/openturns/latest/user_manual/_generated/openturns.KarhunenLoeveValidation.html) which provides several graphical KL decomposition services." ] }, { "cell_type": "code", "execution_count": 2, "metadata": {}, "outputs": [], "source": [ "# lets perform a KL decomposition of a Gaussian process\n", "numberOfVertices = 20\n", "interval = ot.Interval(-1.0, 1.0)\n", "mesh = ot.IntervalMesher([numberOfVertices - 1]).build(interval)\n", "covariance = ot.SquaredExponential()\n", "process = ot.GaussianProcess(covariance, mesh)\n", "sampleSize = 100\n", "processSample = process.getSample(sampleSize)\n", "threshold = 1.0e-7\n", "algo = ot.KarhunenLoeveSVDAlgorithm(processSample, threshold)\n", "algo.run()\n", "klresult = algo.getResult()" ] }, { "cell_type": "code", "execution_count": 3, "metadata": {}, "outputs": [ { "data": { "image/png": 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\n", "text/plain": [ "class=GridLayout name=Unnamed nbRows=1 nbColumns=1 graphCollection=[class=Graph name=Unnamed implementation=class=GraphImplementation name=Unnamed title= xTitle=Observed - y0 yTitle=Reduced - y0 axes=ON grid=ON legendposition=topright legendFontSize=1 drawables=[class=Drawable name=Unnamed implementation=class=Curve name=Unnamed derived from class=DrawableImplementation name=Unnamed legend= data=class=Sample name=Unnamed implementation=class=SampleImplementation name=Unnamed size=2 dimension=2 data=[[-3.09288,-3.09288],[3.0788,3.0788]] color=red fillStyle=solid lineStyle=solid pointStyle=none lineWidth=1,class=Drawable name=Unnamed implementation=class=Cloud name=Unnamed derived from class=DrawableImplementation name=Unnamed legend= data=class=Sample name=Unnamed implementation=class=SampleImplementation name=Unnamed size=2000 dimension=2 data=[[0.608202,0.608089],[0.471928,0.471999],[0.32516,0.325226],...,[-0.0625192,-0.0623029],[-0.0978894,-0.0974918],[-0.1566,-0.157118]] color=blue fillStyle=solid lineStyle=solid pointStyle=plus lineWidth=1]]" ] }, "execution_count": 3, "metadata": {}, "output_type": "execute_result" } ], "source": [ "validation = ot.KarhunenLoeveValidation(processSample, klresult)\n", "\n", "# Plot the model vs metamodel graph for visual validation\n", "validation.drawValidation()" ] }, { "cell_type": "code", "execution_count": 4, "metadata": {}, "outputs": [ { "data": { "image/png": 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data=[[-1,-0.000574678],[-0.894737,0.000448333],[-0.789474,0.000224432],[-0.684211,-0.000203124],[-0.578947,-0.000365339],[-0.473684,-0.000215215],[-0.368421,7.99717e-05],[-0.263158,0.000293449],[-0.157895,0.000307006],[-0.0526316,0.000121173],[0.0526316,-0.000137285],[0.157895,-0.000307062],[0.263158,-0.00027859],[0.368421,-5.6235e-05],[0.473684,0.00021614],[0.578947,0.000341582],[0.684211,0.000172781],[0.789474,-0.000216259],[0.894737,-0.00039762],[1,0.000518118]] color=#063034 fillStyle=solid lineStyle=solid pointStyle=none lineWidth=1]" ] }, "execution_count": 4, "metadata": {}, "output_type": "execute_result" } ], "source": [ "# Field of residuals\n", "validation.computeResidual().drawMarginal(0)" ] }, { "cell_type": "code", "execution_count": 5, "metadata": {}, "outputs": [ { "data": { "image/png": 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\n", "text/plain": [ "class=Graph name=KL residual mean - 0 marginal implementation=class=GraphImplementation name=KL residual mean - 0 marginal title=KL residual mean - 0 marginal xTitle=v0 yTitle=y0 axes=ON grid=ON legendposition=topright legendFontSize=1 drawables=[class=Drawable name=Unnamed implementation=class=Curve name=Unnamed derived from class=DrawableImplementation name=Unnamed legend= data=class=Sample name=Unnamed implementation=class=SampleImplementation name=Unnamed size=20 dimension=2 data=[[-1,-3.1468e-05],[-0.894737,2.57658e-05],[-0.789474,1.07779e-05],[-0.684211,-1.27581e-05],[-0.578947,-1.96293e-05],[-0.473684,-9.64973e-06],[-0.368421,6.24928e-06],[-0.263158,1.63159e-05],[-0.157895,1.453e-05],[-0.0526316,3.99516e-06],[0.0526316,-8.63579e-06],[0.157895,-1.55113e-05],[0.263158,-1.21819e-05],[0.368421,-8.1569e-07],[0.473684,1.16053e-05],[0.578947,1.55073e-05],[0.684211,6.19418e-06],[0.789474,-1.0806e-05],[0.894737,-1.68451e-05],[1,2.32375e-05]] color=blue fillStyle=solid lineStyle=solid pointStyle=none lineWidth=1]" ] }, "execution_count": 5, "metadata": {}, "output_type": "execute_result" } ], "source": [ "# Field of residual mean\n", "validation.computeResidualMean().drawMarginal(0)" ] }, { "cell_type": "code", "execution_count": 6, "metadata": {}, "outputs": [ { "data": { "image/png": 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\n", "text/plain": [ "class=Graph name=KL residual standard deviation - 0 marginal implementation=class=GraphImplementation name=KL residual standard deviation - 0 marginal title=KL residual standard deviation - 0 marginal xTitle=v0 yTitle=v0 axes=ON grid=ON legendposition=topright legendFontSize=1 drawables=[class=Drawable name=Unnamed implementation=class=Curve name=Unnamed derived from class=DrawableImplementation name=Unnamed legend= data=class=Sample name=Unnamed implementation=class=SampleImplementation name=Unnamed size=20 dimension=2 data=[[-1,0.000229811],[-0.894737,0.000178379],[-0.789474,9.25933e-05],[-0.684211,8.13061e-05],[-0.578947,0.000146691],[-0.473684,9.02959e-05],[-0.368421,3.55882e-05],[-0.263158,0.000117809],[-0.157895,0.000126212],[-0.0526316,5.83716e-05],[0.0526316,5.52236e-05],[0.157895,0.000124576],[0.263158,0.000118321],[0.368421,3.80313e-05],[0.473684,8.64515e-05],[0.578947,0.000144271],[0.684211,8.22812e-05],[0.789474,8.79258e-05],[0.894737,0.000174717],[1,0.000221061]] color=blue fillStyle=solid lineStyle=solid pointStyle=none lineWidth=1]" ] }, "execution_count": 6, "metadata": {}, "output_type": "execute_result" } ], "source": [ "# Field of residual stddev\n", "validation.computeResidualStandardDeviation().drawMarginal(0)" ] }, { "cell_type": "code", "execution_count": 7, "metadata": {}, "outputs": [ { "data": { "image/png": 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\n", "text/plain": [ "class=Graph name=Field weight axis 0 implementation=class=GraphImplementation name=Field weight axis 0 title=Field weight axis 0 xTitle=Field index yTitle=w axes=ON grid=ON legendposition= legendFontSize=1 drawables=[class=Drawable name=Unnamed implementation=class=Curve name=Unnamed derived from class=DrawableImplementation name=Unnamed legend= data=class=Sample name=Unnamed implementation=class=SampleImplementation name=Unnamed size=100 dimension=2 data=[[0,0.000973536],[1,6.3387e-06],[2,3.70132e-05],[3,0.00240207],[4,0.000470266],[5,0.0449587],[6,0.0202488],[7,0.000247311],[8,0.00569485],[9,0.0140159],[10,0.000139974],[11,1.17997e-05],[12,0.00157133],[13,0.0282213],[14,0.0161328],[15,0.0335424],[16,0.00920113],[17,0.0212705],[18,0.00030291],[19,0.000104544],[20,0.0106257],[21,0.00605901],[22,0.00608875],[23,0.00895116],[24,0.000144112],[25,0.00462106],[26,0.00332351],[27,0.000411551],[28,7.20017e-07],[29,0.00538011],[30,0.00211341],[31,0.00629832],[32,0.0151411],[33,0.00299845],[34,0.0503812],[35,0.0253605],[36,0.00538779],[37,0.0594359],[38,0.00532904],[39,0.0175169],[40,0.019991],[41,0.00956585],[42,0.0324752],[43,0.00402026],[44,0.000590673],[45,0.00599789],[46,0.0121424],[47,0.00511756],[48,0.000913826],[49,0.000173901],[50,0.00313384],[51,0.008494],[52,0.000137312],[53,0.00530909],[54,0.0220093],[55,0.0079115],[56,0.0398763],[57,0.000465842],[58,0.00303024],[59,0.00957551],[60,0.00280876],[61,0.0154932],[62,0.0277715],[63,0.00116368],[64,0.000143107],[65,0.00828493],[66,0.00115624],[67,1.2955e-08],[68,0.00220989],[69,0.0223611],[70,0.0243921],[71,0.00879212],[72,3.67641e-05],[73,0.00351642],[74,0.0413242],[75,0.00456583],[76,0.00583527],[77,0.0145252],[78,0.00514236],[79,0.000155465],[80,0.0290387],[81,0.00298247],[82,1.60107e-06],[83,0.00738629],[84,0.0144562],[85,0.0133091],[86,0.0582662],[87,0.000798681],[88,0.00827113],[89,0.000103865],[90,0.00939506],[91,0.00191228],[92,0.00874234],[93,0.000183572],[94,0.00535497],[95,0.00104578],[96,0.000428816],[97,0.0228159],[98,7.29965e-05],[99,0.000603498]] color=blue fillStyle=solid lineStyle=solid pointStyle=none lineWidth=1]" ] }, "execution_count": 7, "metadata": {}, "output_type": "execute_result" } ], "source": [ "# Weight of each observation in the decomposition\n", "validation.drawObservationWeight(0)" ] }, { "cell_type": "code", "execution_count": 8, "metadata": {}, "outputs": [ { "data": { "image/png": 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\n", "text/plain": [ "class=Graph name=Field quality implementation=class=GraphImplementation name=Field quality title=Field quality xTitle=Field index yTitle=q axes=ON grid=ON legendposition= legendFontSize=1 drawables=[class=Drawable name=Unnamed implementation=class=Curve name=Unnamed derived from class=DrawableImplementation name=Unnamed legend= data=class=Sample name=Unnamed implementation=class=SampleImplementation name=Unnamed size=100 dimension=2 data=[[0,1],[1,1],[2,1],[3,1],[4,1],[5,1],[6,1],[7,1],[8,1],[9,1],[10,1],[11,1],[12,1],[13,1],[14,1],[15,1],[16,1],[17,1],[18,1],[19,1],[20,1],[21,1],[22,1],[23,1],[24,1],[25,1],[26,1],[27,1],[28,1],[29,1],[30,1],[31,1],[32,1],[33,1],[34,1],[35,1],[36,1],[37,1],[38,1],[39,1],[40,1],[41,1],[42,1],[43,1],[44,1],[45,1],[46,1],[47,1],[48,1],[49,1],[50,1],[51,1],[52,1],[53,1],[54,1],[55,1],[56,1],[57,1],[58,1],[59,1],[60,1],[61,1],[62,1],[63,1],[64,1],[65,1],[66,1],[67,0.999999],[68,1],[69,1],[70,1],[71,1],[72,1],[73,1],[74,1],[75,1],[76,1],[77,1],[78,1],[79,1],[80,1],[81,1],[82,1],[83,1],[84,1],[85,1],[86,1],[87,1],[88,1],[89,1],[90,1],[91,1],[92,1],[93,1],[94,1],[95,1],[96,1],[97,1],[98,0.999999],[99,0.999999]] color=blue fillStyle=solid lineStyle=solid pointStyle=none lineWidth=1]" ] }, "execution_count": 8, "metadata": {}, "output_type": "execute_result" } ], "source": [ "# Quality of representation of each observation\n", "validation.drawObservationQuality()" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "### KarhunenLoeveReduction\n", "\n", "In the same theme [KarhunenLoeveReduction](https://openturns.github.io/openturns/latest/user_manual/_generated/openturns.KarhunenLoeveReduction.html) class allows to reduce a field with or without accounting for the trend." ] }, { "cell_type": "code", "execution_count": 9, "metadata": {}, "outputs": [ { "data": { "image/png": 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\n", 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color=green fillStyle=solid lineStyle=dotted pointStyle=none lineWidth=1]" ] }, "execution_count": 9, "metadata": {}, "output_type": "execute_result" } ], "source": [ "N = 100\n", "M = 1000\n", "P = 10\n", "mean = ot.SymbolicFunction(\"x\", \"sign(x)\")\n", "cov = ot.SquaredExponential([1.0], [0.1])\n", "mesh = ot.IntervalMesher([N]).build(ot.Interval(-2.0, 2.0))\n", "process = ot.GaussianProcess(ot.TrendTransform(mean, mesh), cov, mesh) \n", "sample = process.getSample(M)\n", "algo = ot.KarhunenLoeveSVDAlgorithm(sample, 1e-6)\n", "algo.run()\n", "result = algo.getResult()\n", "trend = ot.TrendTransform(ot.P1LagrangeEvaluation(sample.computeMean()), mesh)\n", "sample2 = process.getSample(P)\n", "sample2.setName('reduction of sign(x) w/o trend')\n", "reduced1 = ot.KarhunenLoeveReduction(result)(sample2)\n", "reduced2 = ot.KarhunenLoeveReduction(result, trend)(sample2)\n", "g = sample2.drawMarginal(0)\n", "g.setColors([\"red\"])\n", "g1 = reduced1.drawMarginal(0)\n", "g1.setColors([\"blue\"])\n", "drs = g1.getDrawables()\n", "for i, d in enumerate(drs):\n", " d.setLineStyle(\"dashed\")\n", " drs[i] = d\n", "g1.setDrawables(drs)\n", "g.add(g1)\n", "g2 = reduced2.drawMarginal(0)\n", "g2.setColors([\"green\"])\n", "drs = g2.getDrawables()\n", "for i, d in enumerate(drs):\n", " d.setLineStyle(\"dotted\")\n", " drs[i] = d\n", "g2.setDrawables(drs)\n", "g.add(g2)\n", "g" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "### VonMisesFactory\n", "\n", "The new [VonMisesFactory](https://openturns.github.io/openturns/latest/user_manual/_generated/openturns.VonMisesFactory.html) class allows to estimate the parameters of the Von-Mises distribution.\n", "\n", "Until now we had the distribution available but not its factory." ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "### IsotropicCovarianceModel\n", "\n", "The new [IsotropicCovarianceModel](https://openturns.github.io/openturns/latest/user_manual/_generated/openturns.IsotropicCovarianceModel.html) class allows to define an isotropic covariance model of any dimension from an 1-d covariance model.\n" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "### KroneckerCovarianceModel\n", "\n", "The new [KroneckerCovarianceModel](https://openturns.github.io/openturns/latest/user_manual/_generated/openturns.KroneckerCovarianceModel.html) class allows to define a multivariate stationary Kronecker covariance function." ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "### KFoldSplitter/LeaveOneOutSplitter\n", "\n", "The new [KFoldSplitter](https://openturns.github.io/openturns/latest/user_manual/_generated/openturns.KFoldSplitter.html)\n", "and [LeaveOneOutSplitter](https://openturns.github.io/openturns/latest/user_manual/_generated/openturns.LeaveOneOutSplitter.html)\n", "classes allow to split a sample in train/test sample pairs." ] }, { "cell_type": "code", "execution_count": 12, "metadata": {}, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "[2,0,7,9,4,1,8,6] [5,3]\n", "[5,0,7,9,3,1,8,6] [2,4]\n", "[5,2,7,9,3,4,8,6] [0,1]\n", "[5,2,0,9,3,4,1,6] [7,8]\n", "[5,2,0,7,3,4,1,8] [9,6]\n" ] } ], "source": [ "X = ot.Normal().getSample(10)\n", "k = 5\n", "splitter = ot.KFoldSplitter(X.getSize(), k)\n", "splitter.setRandomize(True)\n", "for indices1, indices2 in splitter:\n", " print(indices1, indices2)\n", " X_train, X_test = X[indices1], X[indices2]" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "### VertexValuePointToFieldFunction\n", "\n", "The new [VertexValuePointToFieldFunction](https://openturns.github.io/openturns/latest/user_manual/_generated/openturns.KroneckerCovarianceModel.html) class allows to define a vector to field function from a vector function." ] }, { "cell_type": "code", "execution_count": 11, "metadata": {}, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ " [ y0 ]\n", "0 : [ 4 ]\n", "1 : [ 4.04 ]\n", "2 : [ 4.16 ]\n", "3 : [ 4.36 ]\n", "4 : [ 4.64 ]\n", "5 : [ 5 ]\n" ] } ], "source": [ "g = ot.SymbolicFunction(['t', 'x'], ['x + t^2'])\n", "grid = ot.RegularGrid(0.0, 0.2, 6)\n", "f = ot.VertexValuePointToFieldFunction(g, grid)\n", "x = [4.0]\n", "print(f(x))" ] } ], "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": "3.8.5" } }, "nbformat": 4, "nbformat_minor": 1 }