<<<<<<< HEAD { "metadata": { "name": "", "signature": "sha256:23cf65a359a2231e3abd5faae195b73ed4d5756e6083812ae87c387c1bb53f5a" }, "nbformat": 3, "nbformat_minor": 0, "worksheets": [ { "cells": [ { "cell_type": "markdown", "metadata": {}, "source": [ "

Chapter 15: Additional in 'C'

" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "

Example 15.1, Page number: 505

" ] }, { "cell_type": "code", "collapsed": false, "input": [ "#Allocate memory to pointer variable. \n", "\n", "import sys\n", "\n", "#Variable initialization\n", "j = 0\n", "k = int(raw_input(\"How many number : \"))\n", "p = [0 for i in range(0,k)]\n", "\n", "#in python, all variables are allocated using dynamic memory allocation technique and no\n", "#malloc function and pointer concept is available in python.\n", "\n", "#Read the numbers\n", "while j != k:\n", " p[j] = int(raw_input(\"Number %d = \"%(j+1)))\n", " j += 1\n", " \n", "j = 0\n", "\n", "#Result\n", "sys.stdout.write(\"The numbers are : \")\n", "while j != k:\n", " sys.stdout.write(\"%d\\t\"%(p[j]))\n", " j += 1\n", " \n" ], "language": "python", "metadata": {}, "outputs": [ { "name": "stdout", "output_type": "stream", "stream": "stdout", "text": [ "How many number : 4\n" ] }, { "output_type": "stream", "stream": "stdout", "text": [ "4\n" ] }, { "name": "stdout", "output_type": "stream", "stream": "stdout", "text": [ "Number 1 = 1\n" ] }, { "name": "stdout", "output_type": "stream", "stream": "stdout", "text": [ "Number 2 = 2\n" ] }, { "name": "stdout", "output_type": "stream", "stream": "stdout", "text": [ "Number 3 = 3\n" ] }, { "name": "stdout", "output_type": "stream", "stream": "stdout", "text": [ "Number 4 = 4\n" ] }, { "output_type": "stream", "stream": "stdout", "text": [ "The numbers are : 1\t2\t3\t4\t" ] } ], "prompt_number": 2 }, { "cell_type": "markdown", "metadata": {}, "source": [ "

Example 15.2, Page number: 506

" ] }, { "cell_type": "code", "collapsed": false, "input": [ "#Memory allocation to pointer variable. \n", "\n", "import sys\n", "\n", "#Variable initialization\n", "j = 0\n", "k = int(raw_input(\"How many Number : \"))\n", "p = [0 for i in range(0,k)]\n", "\n", "#in python, all variables are allocated using dynamic memory allocation technique and no\n", "#calloc function and pointer concept is available in python.\n", "\n", "#Read the numbers\n", "while j != k:\n", " p[j] = int(raw_input(\"Number %d = \"%(j+1)))\n", " j += 1\n", " \n", "j = 0\n", "\n", "#Result\n", "sys.stdout.write(\"The numbers are : \")\n", "while j != k:\n", " sys.stdout.write(\"%d\\t\"%(p[j]))\n", " j += 1\n", " " ], "language": "python", "metadata": {}, "outputs": [ { "name": "stdout", "output_type": "stream", "stream": "stdout", "text": [ "How many Number : 3\n" ] }, { "name": "stdout", "output_type": "stream", "stream": "stdout", "text": [ "Number 1 = 45\n" ] }, { "name": "stdout", "output_type": "stream", "stream": "stdout", "text": [ "Number 2 = 58\n" ] }, { "name": "stdout", "output_type": "stream", "stream": "stdout", "text": [ "Number 3 = 98\n" ] }, { "output_type": "stream", "stream": "stdout", "text": [ "The numbers are : 45\t58\t98\t" ] } ], "prompt_number": 3 }, { "cell_type": "markdown", "metadata": {}, "source": [ "

Example 15.3, Page number: 507

" ] }, { "cell_type": "code", "collapsed": false, "input": [ "#Reallocate memory \n", "\n", "import sys\n", "\n", "#Variable Initialization\n", "str1 = \"India\"\n", "\n", "#in python, value tagged method is used for data storage instead of memory tagging.\n", "#no realloc function is in python\n", "\n", "#Result\n", "sys.stdout.write(\"str = %s\"%(str1))\n", "str1 = \"Hindustan\"\n", "sys.stdout.write(\"\\nNow str = %s\"%(str1))\n" ], "language": "python", "metadata": {}, "outputs": [ { "output_type": "stream", "stream": "stdout", "text": [ "str = India\n", "Now str = Hindustan" ] } ], "prompt_number": 6 }, { "cell_type": "markdown", "metadata": {}, "source": [ "

Example 15.4, Page number: 508

" ] }, { "cell_type": "code", "collapsed": false, "input": [ "#Display unused memory \n", "\n", "import psutil\n", "\n", "psutil.phymem_usage()\n", "\n", "#There is no coreleft() function in python. phymem_usage function in the module psutil gives the \n", "#status and usage of physical memory in python." ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "pyout", "prompt_number": 6, "text": [ "usage(total=3165270016L, used=987840512L, free=2177429504L, percent=31.2)" ] } ], "prompt_number": 6 }, { "cell_type": "markdown", "metadata": {}, "source": [ "

Example 15.5, Page number: 510

" ] }, { "cell_type": "code", "collapsed": false, "input": [ "#Linked list\n", "\n", "import sys\n", "\n", "#Variable Initialziation\n", "ch = 'y'\n", "p = 0\n", "q = []\n", "\n", "#Function Definitions\n", "def gen_rate(m):\n", " q.append(m)\n", " \n", "def show():\n", " print q\n", " \n", "def addatstart(m):\n", " q.insert(0,m)\n", " \n", "def append(m,po):\n", " q.insert(po,m)\n", "\n", "def erase(d):\n", " q.remove(d)\n", " \n", "def count():\n", " print len(q)\n", " \n", "def descending():\n", " q.sort(reverse=True)\n", " \n", "#Get choice\n", "while ch == 'y':\n", " n = int(raw_input(\"1. Generate\\n2. Add at starting\\n3. Append\\n4. Delete\\n5. Show\\n6.Count\\n7.Descending\\nEnter your choice: \"));\n", " #There is no switch statement in python\n", " if n == 1:\n", " i = int(raw_input(\"How many node you want : \"))\n", " for j in range(0,i):\n", " m = int(raw_input(\"Enter the element : \"))\n", " gen_rate(m)\n", " show()\n", " else:\n", " if n == 2:\n", " m = int(raw_input(\"Enter the element : \"))\n", " addatstart(m)\n", " show()\n", " else:\n", " if n == 3:\n", " m = int(raw_input(\"Enter the element and position \"))\n", " po = int(raw_input(\"Enter the element and position\"))\n", " append(m,po)\n", " show()\n", " else:\n", " if n == 4:\n", " d = int(raw_input(\"Enter the number for deletion : \"))\n", " erase(d)\n", " show()\n", " else:\n", " if n == 5:\n", " show()\n", " else:\n", " if n == 6:\n", " count()\n", " else:\n", " if n == 7:\n", " descending()\n", " show()\n", " else:\n", " sys.stdout.write(\"Enter value between 1 to 7\")\n", " \n", " ch = raw_input(\"Do u wnat to continue (y/n)\")\n", " " ], "language": "python", "metadata": {}, "outputs": [ { "name": "stdout", "output_type": "stream", "stream": "stdout", "text": [ "1. Generate\n", "2. Add at starting\n", "3. Append\n", "4. Delete\n", "5. Show\n", "6.Count\n", "7.Descending\n", "Enter your choice: 1\n" ] }, { "name": "stdout", "output_type": "stream", "stream": "stdout", "text": [ "How many node you want : 4\n" ] }, { "name": "stdout", "output_type": "stream", "stream": "stdout", "text": [ "Enter the element : 1\n" ] }, { "name": "stdout", "output_type": "stream", "stream": "stdout", "text": [ "Enter the element : 5\n" ] }, { "name": "stdout", "output_type": "stream", "stream": "stdout", "text": [ "Enter the element : 4\n" ] }, { "name": "stdout", "output_type": "stream", "stream": "stdout", "text": [ "Enter the element : 7\n" ] }, { "output_type": "stream", "stream": "stdout", "text": [ "[1, 5, 4, 7]\n" ] }, { "name": "stdout", "output_type": "stream", "stream": "stdout", "text": [ "Do u wnat to continue (y/n)n\n" ] } ], "prompt_number": 1 }, { "cell_type": "markdown", "metadata": {}, "source": [ "

Example 15.6, Page number: 518

" ] }, { "cell_type": "code", "collapsed": false, "input": [ "#Draw circle, line and arc using graphics function\n", "\n", "%matplotlib inline\n", "import pylab\n", "import matplotlib.pyplot as plt\n", "\n", "# matplotlib package is used for graphics\n", "#Give proportionate sizes to draw\n", "#draw circle\n", "circle2=plt.Circle((.5,.5),.2,color='b')\n", "fig = plt.gcf()\n", "fig.gca().add_artist(circle2)\n", "\n", "\n", "#draw line\n", "figure()\n", "pylab.plot([210,110],[150,150])\n", "\n", "#Draw ellipse\n", "figure()\n", "from matplotlib.patches import Ellipse\n", "e = Ellipse(xy=(35, -50), width=10, height=5, linewidth=2.0, color='g')\n", "fig = plt.gcf()\n", "fig.gca().add_artist(e)\n", "e.set_clip_box(plt.axes().bbox)\n", "e.set_alpha(0.7)\n", "pylab.xlim([20, 50])\n", "pylab.ylim([-65, -35])" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "pyout", "prompt_number": 5, "text": [ "(-65, -35)" ] }, { "metadata": {}, "output_type": 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"text": [ "" ] } ], "prompt_number": 5 }, { "cell_type": "markdown", "metadata": {}, "source": [ "

Example 15.7, Page number: 519

" ] }, { "cell_type": "code", "collapsed": false, "input": [ "#Draw boxes and fill with different designs.\n", "\n", "%pylab\n", "#matplotlib package is used for graphics\n", "from matplotlib.patches import Rectangle\n", "from matplotlib.collections import PatchCollection\n", "\n", "e = Rectangle(xy=(35, -50), width=10, height=5, linewidth=2.0, color='b')\n", "fig = plt.gcf()\n", "fig.gca().add_artist(e)\n", "e.set_clip_box(ax.bbox)\n", "e.set_alpha(0.7)\n", "pylab.xlim([20, 50])\n", "pylab.ylim([-65, -35])\n", "\n", "#There are no different automatic fill styles. user should create the styles." ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "display_data", "png": 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"text": [ "" ] } ], "prompt_number": 72 }, { "cell_type": "markdown", "metadata": {}, "source": [ "

Example 15.8, Page number: 520

" ] }, { "cell_type": "code", "collapsed": false, "input": [ "#Display text in different size, font, vertically and horizontally \n", "\n", "%matplotlib inline\n", "\n", "from pylab import *\n", "\n", "#Tkinter package is used for graphics\n", "# set limits so that it no longer looks on screen to be 45 degrees\n", "xlim([-5,5])\n", "\n", "# Locations to plot text\n", "l1 = array((1,1))\n", "l2 = array((5,5))\n", "\n", "# Rotate angle\n", "angle = 90\n", "trans_angle = gca().transData.transform_angles(array((45,)),\n", " l2.reshape((1,2)))[0]\n", "\n", "# Plot text\n", "th2 = text(l2[0],l2[1],'Hello(Horizontal Text with fontsize 25)\\n\\n',fontsize=25,\n", " rotation=0)\n", "th2 = text(l2[0],l2[1],'Hello(Horizontal Text with fontsize 16)',fontsize=16,\n", " rotation=0)\n", "th1 = text(l1[0],l1[1],'Hello(Vertical Text)',fontsize=16,\n", " rotation=angle)\n", "show()" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "display_data", "png": 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2DVcvV9YHzur1emnr1q1D1G3a2dllKA9olGVZ5+Hhcevq1asNDC37+PFje+Vh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\ndsq0zMzMKk5OTmkDBgzYoUw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IhBIAAEAilAAAABKhBAAAkAglAACARCgBAAAk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\nzP8C2I4MHz48Hn300Tj22GPjhBNOiK985SuxZs2aqKqqim9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"text": [ "" ] } ], "prompt_number": 3 }, { "cell_type": "markdown", "metadata": {}, "source": [ "

Example 15.9, Page number: 521

" ] }, { "cell_type": "code", "collapsed": false, "input": [ "#Display status of mouse button pressed \n", "\n", "from Tkinter import *\n", "from tkFileDialog import askopenfilename\n", "import Image, ImageTk\n", "\n", "if __name__ == \"__main__\":\n", " root = Tk()\n", "\n", " #setting up a tkinter canvas with scrollbars\n", " frame = Frame(root, bd=2, relief=SUNKEN)\n", " frame.grid_rowconfigure(0, weight=1)\n", " frame.grid_columnconfigure(0, weight=1)\n", " xscroll = Scrollbar(frame, orient=HORIZONTAL)\n", " xscroll.grid(row=1, column=0, sticky=E+W)\n", " yscroll = Scrollbar(frame)\n", " yscroll.grid(row=0, column=1, sticky=N+S)\n", " canvas = Canvas(frame, bd=0, xscrollcommand=xscroll.set, yscrollcommand=yscroll.set)\n", " canvas.grid(row=0, column=0, sticky=N+S+E+W)\n", " xscroll.config(command=canvas.xview)\n", " yscroll.config(command=canvas.yview)\n", " frame.pack(fill=BOTH,expand=1)\n", "\n", " \n", "\n", " #function to be called when mouse is clicked\n", " def printcoords(event):\n", " #outputting x and y coords to console\n", " print \"Mouse Button pressed\"\n", " print (event.x,event.y)\n", " #mouseclick event\n", " canvas.bind(\"