{ "cells": [ { "cell_type": "markdown", "metadata": {}, "source": [ "# super() 函数" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ " super(CurrentClassName, instance)\n", " \n", "返回该类实例对应的父类对象。" ] }, { "cell_type": "code", "execution_count": 1, "metadata": { "collapsed": true }, "outputs": [], "source": [ "class Leaf(object):\n", " def __init__(self, color=\"green\"):\n", " self.color = color\n", " def fall(self):\n", " print \"Splat!\"\n", "\n", "class MapleLeaf(Leaf):\n", " def change_color(self):\n", " if self.color == \"green\":\n", " self.color = \"red\"\n", " def fall(self):\n", " self.change_color()\n", " super(MapleLeaf, self).fall()" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "这里,我们先改变树叶的颜色,然后再找到这个实例对应的父类,并调用父类的 `fall()` 方法:" ] }, { "cell_type": "code", "execution_count": 2, "metadata": { "collapsed": false }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "green\n", "Splat!\n", "red\n" ] } ], "source": [ "mleaf = MapleLeaf()\n", "\n", "print mleaf.color\n", "mleaf.fall()\n", "print mleaf.color" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "回到我们的森林例子,这里我们将森林 `Forest` 作为父类,并定义一个子类 `BurnableForest`:" ] }, { "cell_type": "code", "execution_count": 3, "metadata": { "collapsed": true }, "outputs": [], "source": [ "import numpy as np\n", "\n", "class Forest(object):\n", " \"\"\" Forest can grow trees which eventually die.\"\"\"\n", " def __init__(self, size=(150,150), p_sapling=0.0025):\n", " self.size = size\n", " self.trees = np.zeros(self.size, dtype=bool)\n", " self.p_sapling = p_sapling\n", " \n", " def __repr__(self):\n", " my_repr = \"{}(size={})\".format(self.__class__.__name__, self.size)\n", " return my_repr\n", " \n", " def __str__(self):\n", " return self.__class__.__name__\n", " \n", " @property\n", " def num_cells(self):\n", " \"\"\"Number of cells available for growing trees\"\"\"\n", " return np.prod(self.size)\n", " \n", " @property\n", " def tree_fraction(self):\n", " \"\"\"\n", " Fraction of trees\n", " \"\"\"\n", " num_trees = self.trees.sum()\n", " return float(num_trees) / self.num_cells\n", " \n", " def _rand_bool(self, p):\n", " \"\"\"\n", " Random boolean distributed according to p, less than p will be True\n", " \"\"\"\n", " return np.random.uniform(size=self.trees.shape) < p\n", " \n", " def grow_trees(self):\n", " \"\"\"\n", " Growing trees.\n", " \"\"\"\n", " growth_sites = self._rand_bool(self.p_sapling)\n", " self.trees[growth_sites] = True \n", " \n", " def advance_one_step(self):\n", " \"\"\"\n", " Advance one step\n", " \"\"\"\n", " self.grow_trees()" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "- 将与燃烧相关的属性都被转移到了子类中去。\n", "- 修改两类的构造方法,将闪电概率放到子类的构造方法上,同时在子类的构造方法中,用 `super` 调用父类的构造方法。\n", "- 修改 `advance_one_step()`,父类中只进行生长,在子类中用 `super` 调用父类的 `advance_one_step()` 方法,并添加燃烧的部分。" ] }, { "cell_type": "code", "execution_count": 4, "metadata": { "collapsed": false }, "outputs": [], "source": [ "class BurnableForest(Forest):\n", " \"\"\"\n", " Burnable forest support fires\n", " \"\"\" \n", " def __init__(self, p_lightning=5.0e-6, **kwargs):\n", " super(BurnableForest, self).__init__(**kwargs)\n", " self.p_lightning = p_lightning \n", " self.fires = np.zeros((self.size), dtype=bool)\n", " \n", " def advance_one_step(self):\n", " \"\"\"\n", " Advance one step\n", " \"\"\"\n", " super(BurnableForest, self).advance_one_step()\n", " self.start_fires()\n", " self.burn_trees()\n", " \n", " @property\n", " def fire_fraction(self):\n", " \"\"\"\n", " Fraction of fires\n", " \"\"\"\n", " num_fires = self.fires.sum()\n", " return float(num_fires) / self.num_cells\n", " \n", " def start_fires(self):\n", " \"\"\"\n", " Start of fire.\n", " \"\"\"\n", " lightning_strikes = (self._rand_bool(self.p_lightning) & \n", " self.trees)\n", " self.fires[lightning_strikes] = True\n", " \n", " def burn_trees(self):\n", " \"\"\"\n", " Burn trees.\n", " \"\"\"\n", " fires = np.zeros((self.size[0] + 2, self.size[1] + 2), dtype=bool)\n", " fires[1:-1, 1:-1] = self.fires\n", " north = fires[:-2, 1:-1]\n", " south = fires[2:, 1:-1]\n", " east = fires[1:-1, :-2]\n", " west = fires[1:-1, 2:]\n", " new_fires = (north | south | east | west) & self.trees\n", " self.trees[self.fires] = False\n", " self.fires = new_fires" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "测试父类:" ] }, { "cell_type": "code", "execution_count": 5, "metadata": { "collapsed": false }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "0.00284444444444\n" ] } ], "source": [ "forest = Forest()\n", "\n", "forest.grow_trees()\n", "\n", "print forest.tree_fraction" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "测试子类:" ] }, { "cell_type": "code", "execution_count": 6, "metadata": { "collapsed": false }, "outputs": [], "source": [ "burnable_forest = BurnableForest()" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "调用自己和父类的方法:" ] }, { "cell_type": "code", "execution_count": 7, "metadata": { "collapsed": false }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "0.00235555555556\n" ] } ], "source": [ "burnable_forest.grow_trees()\n", "burnable_forest.start_fires()\n", "burnable_forest.burn_trees()\n", "print burnable_forest.tree_fraction" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "查看变化:" ] }, { "cell_type": "code", "execution_count": 8, "metadata": { "collapsed": false }, "outputs": [ { "data": { "image/png": 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Log9JVHr4Jecc3xz9Bh8P+1iWz6dSbfalVaX47NBnmDtursHv08bKBusmrxMt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\n22YSHbP1GGMIdAnUe42c3Wd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"text/plain": [ "" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "import matplotlib.pyplot as plt\n", "\n", "%matplotlib inline\n", "\n", "forest = Forest()\n", "forest2 = BurnableForest()\n", "\n", "tree_fractions = []\n", "\n", "for i in range(2500):\n", " forest.advance_one_step()\n", " forest2.advance_one_step()\n", " tree_fractions.append((forest.tree_fraction, forest2.tree_fraction))\n", "\n", "plt.plot(tree_fractions)\n", "\n", "plt.show()" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "`__str__` 和 `__repr__` 中 `self.__class__` 会根据类型不同而不同:" ] }, { "cell_type": "code", "execution_count": 9, "metadata": { "collapsed": false }, "outputs": [ { "data": { "text/plain": [ "Forest(size=(150, 150))" ] }, "execution_count": 9, "metadata": {}, "output_type": "execute_result" } ], "source": [ "forest" ] }, { "cell_type": "code", "execution_count": 10, "metadata": { "collapsed": false }, "outputs": [ { "data": { "text/plain": [ "BurnableForest(size=(150, 150))" ] }, "execution_count": 10, "metadata": {}, "output_type": "execute_result" } ], "source": [ "forest2" ] }, { "cell_type": "code", "execution_count": 11, "metadata": { "collapsed": false }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "Forest\n" ] } ], "source": [ "print forest" ] }, { "cell_type": "code", "execution_count": 12, "metadata": { "collapsed": false }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "BurnableForest\n" ] } ], "source": [ "print forest2" ] } ], "metadata": { "kernelspec": { "display_name": "Python 2", "language": "python", "name": "python2" }, "language_info": { "codemirror_mode": { "name": "ipython", "version": 2 }, "file_extension": ".py", "mimetype": "text/x-python", "name": "python", "nbconvert_exporter": "python", "pygments_lexer": "ipython2", "version": "2.7.10" } }, "nbformat": 4, "nbformat_minor": 0 }