{ "metadata": { "name": "", "signature": "sha256:e59be26980c86a31ac9d48f4c2d7103cb8a0b84810433e8cb27d69a296fca9d3" }, "nbformat": 3, "nbformat_minor": 0, "worksheets": [ { "cells": [ { "cell_type": "markdown", "metadata": {}, "source": [ "By [Felipe Hoffa](https://plus.google.com/+FelipeHoffa/)\n", "([@felipehoffa](http://twitter.com/felipehoffa), [/r/bigquery](http://reddit.com/r/bigquery))\n\n", "\n", "To look further into how to read these results to understand history, look at:\n\n", "* Kalev Leetaru's [GDELT correlations post](http://blog.gdeltproject.org/towards-psychohistory-uncovering-the-patterns-of-world-history-with-google-bigquery/).\n", "* Andrew Gelman's [counterpoint](http://andrewgelman.com/2014/08/15/psychohistory-hype-paradox/).\n", "* Anthony A. Boyles's [counterpoint](http://aaboyles.com/2014/08/access-event-data-in-google-bigquery-from-r/).\n", "\n" ] }, { "cell_type": "code", "collapsed": false, "input": [ "# Some pre-flight work:\n", "# - Libraries.\n", "# - Patch to handle authentication automatically on Google Compute Engine", "from oauth2client.gce import AppAssertionCredentials\n", "from bigquery_client import BigqueryClient\n", "from pandas.io import gbq\n", "import pandas as pd\n", "\n", "def GetMetadata(path):\n", " import urllib2\n", " BASE_PATH = 'http://metadata/computeMetadata/v1/'\n", " request = urllib2.Request(BASE_PATH + path, headers={'Metadata-Flavor': 'Google'})\n", " return urllib2.urlopen(request).read()\n", "\n", "credentials = AppAssertionCredentials(scope='https://www.googleapis.com/auth/bigquery')\n", "\n", "client = BigqueryClient(credentials=credentials,\n", " api='https://www.googleapis.com',\n", " api_version='v2',\n", " project_id=GetMetadata('project/project-id'))\n", "\n", "gbq._authenticate = lambda: client" ], "language": "python", "metadata": {}, "outputs": [], "prompt_number": 13 }, { "cell_type": "markdown", "metadata": {}, "source": [ "How many rows GDELT has for each country?\n", "\n", "We are going to use a view specially defined for that. 'sample_views.country_date_matconf_numarts' counts the number of material conflicts per day per country.\n", "\n", "To see the view definition, go to https://bigquery.cloud.google.com/table/gdelt-bq:sample_views.country_date_matconf_numarts and click on 'Details'." ] }, { "cell_type": "code", "collapsed": false, "input": [ "query = \"\"\"\n", "SELECT country, SUM(c) AS count\n", "FROM [gdelt-bq:sample_views.country_date_matconf_numarts]\n", "GROUP BY country\n", "ORDER BY count DESC\n", "LIMIT 10\n", "\"\"\"\n", "gbq.read_gbq(query)" ], "language": "python", "metadata": {}, "outputs": [ { "output_type": "stream", "stream": "stdout", "text": [ "\r", "Waiting on bqjob_r3494ef2663a3c45e_00000147cc145563_1 ... (0s) Current status: DONE \n" ] }, { "html": [ "
\n", "\n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", " \n", "
countrycount
0 Israel 13138702
1 Pakistan 11547139
2 Afghanistan 11334579
3 Iraq 10181510
4 Syria 9538310
5 United Kingdom 8764009
6 Russia 7569903
7 India 6988340
8 Egypt 6511839
9 China 6268915
\n", "
" ], "metadata": {}, "output_type": "pyout", "prompt_number": 2, "text": [ " country count\n", "0 Israel 13138702\n", "1 Pakistan 11547139\n", "2 Afghanistan 11334579\n", "3 Iraq 10181510\n", "4 Syria 9538310\n", "5 United Kingdom 8764009\n", "6 Russia 7569903\n", "7 India 6988340\n", "8 Egypt 6511839\n", "9 China 6268915" ] } ], "prompt_number": 2 }, { "cell_type": "markdown", "metadata": {}, "source": [ "Focusing solely in Egypt. Let's plot the number of material conflicts reported for each day over the last 35 years:" ] }, { "cell_type": "code", "collapsed": false, "input": [ "query = \"\"\"\n", "SELECT date, c AS count\n", "FROM [gdelt-bq:sample_views.country_date_matconf_numarts]\n", "WHERE country='Egypt'\n", "ORDER BY date\n", "\"\"\"\n", "data=gbq.read_gbq(query)\n", "data.index=pd.to_datetime(data['date']*1000)\n", "x = data['count'].plot()" ], "language": "python", "metadata": {}, "outputs": [ { "output_type": "stream", "stream": "stdout", "text": [ "\r", "Waiting on bqjob_r46d7af66323c4ad9_00000147cc18e43f_8 ... (0s) Current status: DONE \n" ] }, { "metadata": {}, "output_type": "display_data", "png": 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"text": [ "" ] } ], "prompt_number": 9 }, { "cell_type": "markdown", "metadata": {}, "source": [ "What if we only focus on the 30 days previous to January 27th, 2011." ] }, { "cell_type": "code", "collapsed": false, "input": [ "query = \"\"\"\n", " SELECT country, date, c AS count\n", " FROM [gdelt-bq:sample_views.country_date_matconf_numarts] a \n", " CROSS JOIN (SELECT i FROM [fh-bigquery:public_dump.numbers_255] WHERE i < 30) b\n", " WHERE country='Egypt'\n", " AND date+i*86400000000 = PARSE_UTC_USEC('2011-01-27')\n", "\"\"\"\n", "data_egypt=gbq.read_gbq(query)\n", "data_egypt.index=pd.to_datetime(data_egypt['date']*1000)\n", "x = data_egypt['count'].plot()" ], "language": "python", "metadata": {}, "outputs": [ { "output_type": "stream", "stream": "stdout", "text": [ "\r", "Waiting on bqjob_r2f64a01b0c420ec3_00000147cc356c4a_11 ... (0s) Current status: DONE \n" ] }, { "metadata": {}, "output_type": "display_data", "png": 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mY5DCZFGj4aEqn182XVPxtNSvLxqyNVR6rvmH/cAWHaBaYmGLDshcy4IF0tKo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\ndern3LpVnurbtq08vtYhhxj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"text": [ "" ] } ], "prompt_number": 28 }, { "cell_type": "markdown", "metadata": {}, "source": [ "With that timeline defined, we can look for similar timelines across all years and countries.", "\n", "To make this work, we used the trick explained on http://stackoverflow.com/questions/24923101/computing-a-moving-maximum-in-bigquery/24943950#24943950." ] }, { "cell_type": "code", "collapsed": false, "input": [ "query = \"\"\"\n", "SELECT\n", " STRFTIME_UTC_USEC(a.ending_at, \"%Y-%m-%d\") ending_at1,\n", " STRFTIME_UTC_USEC(b.ending_at-30*86400000000, \"%Y-%m-%d\") starting_at2,\n", " STRFTIME_UTC_USEC(b.ending_at, \"%Y-%m-%d\") ending_at2,\n", " a.country, b.country, CORR(a.c, b.c) corr, COUNT(*) c\n", "FROM (\n", " SELECT country, date+i*86400000000 ending_at, c, i\n", " FROM [gdelt-bq:sample_views.country_date_matconf_numarts] a \n", " CROSS JOIN (SELECT i FROM [fh-bigquery:public_dump.numbers_255] WHERE i < 30) b\n", ") b\n", "JOIN (\n", " SELECT country, date+i*86400000000 ending_at, c, i\n", " FROM [gdelt-bq:sample_views.country_date_matconf_numarts] a \n", " CROSS JOIN (SELECT i FROM [fh-bigquery:public_dump.numbers_255] WHERE i < 30) b\n", " WHERE country='Egypt'\n", " AND date+i*86400000000 = PARSE_UTC_USEC('2011-01-27')\n", ") a\n", "ON a.i=b.i\n", "WHERE a.ending_at != b.ending_at\n", "GROUP EACH BY ending_at1, ending_at2, starting_at2, a.country, b.country\n", "HAVING (c = 30 AND ABS(corr) > 0.254)\n", "ORDER BY corr DESC\n", "\n", "LIMIT 10\n", "\"\"\"\n", "data=gbq.read_gbq(query)\n", "data\n" ], "language": "python", "metadata": {}, "outputs": [ { "output_type": "stream", "stream": "stdout", "text": [ "\r", "Waiting on bqjob_r5ccda16b63fbcd4a_00000147cc1a0174_11 ... (3s) Current status: RUNNING " ] }, { "output_type": "stream", "stream": "stdout", "text": [ "\r", "Waiting on bqjob_r5ccda16b63fbcd4a_00000147cc1a0174_11 ... (203s) Current status: DONE \n" ] }, { "html": [ "
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ending_at1starting_at2ending_at2a_countryb_countrycorrc
0 2011-01-27 2013-10-19 2013-11-18 Egypt Chad 0.875190 30
1 2011-01-27 2011-05-15 2011-06-14 Egypt Jordan 0.862724 30
2 2011-01-27 2005-08-07 2005-09-06 Egypt Turkey 0.856022 30
3 2011-01-27 2006-10-03 2006-11-02 Egypt Italy 0.847174 30
4 2011-01-27 2006-05-29 2006-06-28 Egypt Syria 0.846571 30
5 2011-01-27 2013-05-15 2013-06-14 Egypt South Korea 0.842728 30
6 2011-01-27 1995-06-11 1995-07-11 Egypt Iraq 0.842362 30
7 2011-01-27 2011-10-10 2011-11-09 Egypt Portugal 0.841235 30
8 2011-01-27 2002-08-04 2002-09-03 Egypt Sudan 0.835436 30
9 2011-01-27 2009-08-07 2009-09-06 Egypt Germany 0.832848 30
\n", "
" ], "metadata": {}, "output_type": "pyout", "prompt_number": 12, "text": [ " ending_at1 starting_at2 ending_at2 a_country b_country corr c\n", "0 2011-01-27 2013-10-19 2013-11-18 Egypt Chad 0.875190 30\n", "1 2011-01-27 2011-05-15 2011-06-14 Egypt Jordan 0.862724 30\n", "2 2011-01-27 2005-08-07 2005-09-06 Egypt Turkey 0.856022 30\n", "3 2011-01-27 2006-10-03 2006-11-02 Egypt Italy 0.847174 30\n", "4 2011-01-27 2006-05-29 2006-06-28 Egypt Syria 0.846571 30\n", "5 2011-01-27 2013-05-15 2013-06-14 Egypt South Korea 0.842728 30\n", "6 2011-01-27 1995-06-11 1995-07-11 Egypt Iraq 0.842362 30\n", "7 2011-01-27 2011-10-10 2011-11-09 Egypt Portugal 0.841235 30\n", "8 2011-01-27 2002-08-04 2002-09-03 Egypt Sudan 0.835436 30\n", "9 2011-01-27 2009-08-07 2009-09-06 Egypt Germany 0.832848 30" ] } ], "prompt_number": 12 }, { "cell_type": "markdown", "metadata": {}, "source": [ "Those are the 10 periods that most closely resemble the timeline of material conflicts in Egypt before January 27th, 2011.\n", "\n", "Let's plot Chad 30 days before October 19th, 2013." ] }, { "cell_type": "code", "collapsed": false, "input": [ "query = \"\"\"\n", " SELECT country, date, c AS count\n", " FROM [gdelt-bq:sample_views.country_date_matconf_numarts] a \n", " CROSS JOIN (SELECT i FROM [fh-bigquery:public_dump.numbers_255] WHERE i < 30) b\n", " WHERE country='Chad'\n", " AND date+i*86400000000 = PARSE_UTC_USEC('2013-11-18')\n", "\"\"\"\n", "data_chad=gbq.read_gbq(query)\n", "data_chad.index=pd.to_datetime(data_chad['date']*1000)\n", "data_chad['count'].plot()" ], "language": "python", "metadata": {}, "outputs": [ { "output_type": "stream", "stream": "stdout", "text": [ "\r", "Waiting on bqjob_r39c0b56b485a6249_00000147cc384b90_16 ... (0s) Current status: DONE \n" ] }, { "metadata": {}, "output_type": "pyout", "prompt_number": 34, "text": [ "" ] }, { "metadata": {}, "output_type": "display_data", "png": 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QMaIUZUsg6JgFQIsW6bUs1FiQvX+xujqYmAUE3zGvEPy/XmOLDlAtibBFBxRm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\n0EbWrzfmgguM2WcfKQy1fr0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"text": [ "" ] } ], "prompt_number": 34 }, { "cell_type": "markdown", "metadata": {}, "source": [ "In fact, both periods look remarkably similar (but not necesarily significant, more analysis is needed before reaching any conclusions):" ] }, { "cell_type": "code", "collapsed": false, "input": [ "data_egypt['count'].plot()" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "pyout", "prompt_number": 33, "text": [ "" ] }, { "metadata": {}, "output_type": "display_data", "png": 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mY5DCZFGj4aEqn182XVPxtNSvLxqyNVR6rvmH/cAWHaBaYmGLDshcy4IF0tKo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\ndern3LpVnurbtq08vtYhhxj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"text": [ "" ] } ], "prompt_number": 33 }, { "cell_type": "markdown", "metadata": {}, "source": [ "To look further into how to read these results to understand history, look at:\n\n", "* Kalev Leetaru's [GDELT correlations post](http://blog.gdeltproject.org/towards-psychohistory-uncovering-the-patterns-of-world-history-with-google-bigquery/).\n", "* Andrew Gelman's [counterpoint](http://andrewgelman.com/2014/08/15/psychohistory-hype-paradox/).\n", "* Anthony A. Boyles's [counterpoint](http://aaboyles.com/2014/08/access-event-data-in-google-bigquery-from-r/).\n", "\n", "\n", "By [Felipe Hoffa](https://plus.google.com/+FelipeHoffa/)\n", "([@felipehoffa](http://twitter.com/felipehoffa), [/r/bigquery](http://reddit.com/r/bigquery))" ] } ], "metadata": {} } ] }