Updated notebooks for new library organisation
[cipher-tools.git] / 2014 / 2014-challenge3.ipynb
index e9594884612e48d83b6debeb099343d5e3a7e47c..b9ca847b2d1a109b66543fd82f001cf998f0a935 100644 (file)
@@ -2,10 +2,8 @@
  "cells": [
   {
    "cell_type": "code",
-   "execution_count": 2,
-   "metadata": {
-    "collapsed": false
-   },
+   "execution_count": 1,
+   "metadata": {},
    "outputs": [],
    "source": [
     "import os,sys,inspect\n",
     "import string\n",
     "%matplotlib inline\n",
     "\n",
-    "from cipherbreak import *\n",
+    "from cipher.affine import *\n",
+    "from cipher.keyword_cipher import *\n",
+    "from support.utilities import *\n",
+    "from support.text_prettify import *\n",
+    "from support.language_models import *\n",
+    "from support.plot_frequency_histogram import *\n",
     "\n",
     "c3a = open('3a.ciphertext').read()\n",
     "c3b = open('3b.ciphertext').read()"
   },
   {
    "cell_type": "code",
-   "execution_count": 3,
-   "metadata": {
-    "collapsed": false
-   },
+   "execution_count": 2,
+   "metadata": {},
    "outputs": [
     {
      "data": {
       "text/plain": [
-       "<matplotlib.axes._subplots.AxesSubplot at 0x7f809e4fc208>"
+       "<matplotlib.axes._subplots.AxesSubplot at 0x7f6c8409bac8>"
       ]
      },
-     "execution_count": 3,
+     "execution_count": 2,
      "metadata": {},
      "output_type": "execute_result"
     },
     {
      "data": {
-      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAYYAAAD+CAYAAAA+hqL9AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nzAocGMzMrOD/A5ZV4vqjDJn1AAAAAElFTkSuQmCC\n",
+      "image/png": "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\n",
       "text/plain": [
-       "<matplotlib.figure.Figure at 0x7f809e51ea58>"
+       "<matplotlib.figure.Figure at 0x7f6c8409b240>"
       ]
      },
      "metadata": {},
   },
   {
    "cell_type": "code",
-   "execution_count": 4,
-   "metadata": {
-    "collapsed": false
-   },
+   "execution_count": 3,
+   "metadata": {},
    "outputs": [
     {
      "data": {
@@ -71,7 +70,7 @@
        "((11, 1, True), -839.4977013876568)"
       ]
      },
-     "execution_count": 4,
+     "execution_count": 3,
      "metadata": {},
      "output_type": "execute_result"
     }
   },
   {
    "cell_type": "code",
-   "execution_count": 5,
-   "metadata": {
-    "collapsed": false
-   },
+   "execution_count": 4,
+   "metadata": {},
    "outputs": [
     {
      "name": "stdout",
      "output_type": "stream",
      "text": [
-      "harry you asked me about the flag day associates they area transnational hacking group dedicated to the overthrow of western capitalism they have been implicated in several major protests including an attempt to takeover the uk national grid attacks on reservoir systems and interference in bank trading networks it looks like the fda carried out fairly extensive modifications to the ship they did a good job too we hadnt noticed the added bulkheads until we compared the layout with the plans from lloyds register they seem to be there to add rigidity though there is one additional panel at the stern that doesnt fit the pattern and we will be removing that tonight to see what it is there for we would have done it this afternoon but decided we should conduct our own hull survey in case there is a booby trap\n"
+      "harry you asked me about the flag day associates they area transnational hacking group dedicated to\n",
+      "the overthrow of western capitalism they have been implicated in several major protests including an\n",
+      "attempt to takeover the uk national grid attacks on reservoir systems and interference in bank\n",
+      "trading networks it looks like the fda carried out fairly extensive modifications to the ship they\n",
+      "did a good job too we hadnt noticed the added bulkheads until we compared the layout with the plans\n",
+      "from lloyds register they seem to be there to add rigidity though there is one additional panel at\n",
+      "the stern that doesnt fit the pattern and we will be removing that tonight to see what it is there\n",
+      "for we would have done it this afternoon but decided we should conduct our own hull survey in case\n",
+      "there is a booby trap\n"
      ]
     }
    ],
    "source": [
-    "print(' '.join(segment(affine_decipher(sanitise(c3a), key_a[0], key_a[1]))))"
+    "print(lcat(tpack(segment(affine_decipher(sanitise(c3a), key_a[0], key_a[1])))))"
    ]
   },
   {
    "cell_type": "code",
-   "execution_count": 6,
-   "metadata": {
-    "collapsed": false
-   },
+   "execution_count": 5,
+   "metadata": {},
    "outputs": [
     {
      "data": {
        "(('seahorse', <KeywordWrapAlphabet.from_last: 2>), -681.3308426043137)"
       ]
      },
-     "execution_count": 6,
+     "execution_count": 5,
      "metadata": {},
      "output_type": "execute_result"
     }
   },
   {
    "cell_type": "code",
-   "execution_count": 7,
-   "metadata": {
-    "collapsed": false
-   },
+   "execution_count": 6,
+   "metadata": {},
    "outputs": [
     {
      "name": "stdout",
      "output_type": "stream",
      "text": [
-      "phase three the nautilus system was fully tested last night with complete success we sailed within four hundred metres of the target and monitored all radio traffic for two hours with no sign that we were being watched or were even noticed we then conducted a full radar sweep of the area and found three dead spots where we could work on the ship without detection as planned we converted the two adjacent empty containers in the middle of the stack into a large workshop area and carried out a full inspection drill now even if we are boarded our work should remain undetected we retrieved seahorse from the third container and carried out stage one of the assembly\n"
+      "phase three the nautilus system was fully tested last night with complete success we sailed within\n",
+      "four hundred metres of the target and monitored all radio traffic for two hours with no sign that we\n",
+      "were being watched or were even noticed we then conducted a full radar sweep of the area and found\n",
+      "three dead spots where we could work on the ship without detection as planned we converted the two\n",
+      "adjacent empty containers in the middle of the stack into a large workshop area and carried out a\n",
+      "full inspection drill now even if we are boarded our work should remain undetected we retrieved\n",
+      "seahorse from the third container and carried out stage one of the assembly\n"
      ]
     }
    ],
    "source": [
-    "print(' '.join(segment(sanitise(keyword_decipher(c3b, key_b[0], key_b[1])))))"
+    "print(lcat(tpack(segment(sanitise(keyword_decipher(c3b, key_b[0], key_b[1]))))))"
    ]
   },
   {
    "cell_type": "code",
-   "execution_count": 8,
-   "metadata": {
-    "collapsed": false
-   },
+   "execution_count": 7,
+   "metadata": {},
    "outputs": [
     {
      "data": {
       "text/plain": [
-       "<matplotlib.axes._subplots.AxesSubplot at 0x7f809e35e438>"
+       "<matplotlib.axes._subplots.AxesSubplot at 0x7f6c42fd9a20>"
       ]
      },
-     "execution_count": 8,
+     "execution_count": 7,
      "metadata": {},
      "output_type": "execute_result"
     },
     {
      "data": {
-      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAWwAAAD+CAYAAAAeRj9FAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nRK5CYII=\n",
+      "image/png": "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\n",
       "text/plain": [
-       "<matplotlib.figure.Figure at 0x7f809e35e4e0>"
+       "<matplotlib.figure.Figure at 0x7f6c430c56a0>"
       ]
      },
      "metadata": {},
   {
    "cell_type": "code",
    "execution_count": null,
-   "metadata": {
-    "collapsed": false
-   },
+   "metadata": {},
    "outputs": [],
    "source": []
   }
    "name": "python",
    "nbconvert_exporter": "python",
    "pygments_lexer": "ipython3",
-   "version": "3.4.3"
+   "version": "3.6.3"
   }
  },
  "nbformat": 4,
- "nbformat_minor": 0
+ "nbformat_minor": 1
 }