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+{
+ "cells": [
+ {
+ "cell_type": "markdown",
+ "metadata": {},
+ "source": [
+ "## Accessing the Central Statistics Office (CSO) API with JSON-stat for Python"
+ ]
+ },
+ {
+ "cell_type": "markdown",
+ "metadata": {},
+ "source": [
+ "This notebook demonstrates how to access the Statbank API for Central Statistics Office (CSO) Ireland.\n",
+ "The [Statbank API](https://www.cso.ie/webserviceclient/) utilises the [JSON-stat](https://www.cso.ie/webserviceclient/) format for encoding statistical information. This can be accessed using the [jsonstat.py](https://github.com/26fe/jsonstat.py) library for Python by [Giovanni F](http://www.26fe.com/). Further documentation is available online: [jsonstat.py](https://jsonstatpy.readthedocs.io/en/latest/)."
+ ]
+ },
+ {
+ "cell_type": "markdown",
+ "metadata": {},
+ "source": [
+ "#### Import Packages"
+ ]
+ },
+ {
+ "cell_type": "code",
+ "execution_count": 1,
+ "metadata": {},
+ "outputs": [],
+ "source": [
+ "from os import path\n",
+ "import jsonstat\n",
+ "import matplotlib.pyplot as plt\n",
+ "import pandas as pd"
+ ]
+ },
+ {
+ "cell_type": "markdown",
+ "metadata": {},
+ "source": [
+ "#### Create a cache directory to store copies of downloaded data for faster development and consistency"
+ ]
+ },
+ {
+ "cell_type": "code",
+ "execution_count": 2,
+ "metadata": {},
+ "outputs": [
+ {
+ "data": {
+ "text/plain": [
+ "'D:\\\\GitHub Repositories\\\\Python\\\\Test_Data\\\\CSO_Test_DATA'"
+ ]
+ },
+ "execution_count": 2,
+ "metadata": {},
+ "output_type": "execute_result"
+ }
+ ],
+ "source": [
+ "cache_dir = path.abspath(path.join(\"..\", \"Test_Data\", \"CSO_Test_DATA\"))\n",
+ "jsonstat.cache_dir(cache_dir)"
+ ]
+ },
+ {
+ "cell_type": "markdown",
+ "metadata": {},
+ "source": [
+ "#### Identify CSO JSON table to download by table number"
+ ]
+ },
+ {
+ "cell_type": "code",
+ "execution_count": 3,
+ "metadata": {},
+ "outputs": [],
+ "source": [
+ "#Provide table identifier\n",
+ "table_id = \"QLF08\"\n",
+ "\n",
+ "#Provide base url\n",
+ "base_uri = 'https://statbank.cso.ie/StatbankServices/StatbankServices.svc/jsonservice/responseinstance/'\n",
+ "uri = base_uri + table_id\n",
+ "\n",
+ "#Specify name for cached file\n",
+ "filename = \"cso_ie_\" + table_id + \".json\""
+ ]
+ },
+ {
+ "cell_type": "markdown",
+ "metadata": {},
+ "source": [
+ "#### Load data into a collection"
+ ]
+ },
+ {
+ "cell_type": "code",
+ "execution_count": 4,
+ "metadata": {},
+ "outputs": [
+ {
+ "name": "stdout",
+ "output_type": "stream",
+ "text": [
+ "JsonstatCollection contains the following JsonStatDataSet:\n",
+ "+-----+-----------+\n",
+ "| pos | dataset |\n",
+ "+-----+-----------+\n",
+ "| 0 | 'dataset' |\n",
+ "+-----+-----------+\n"
+ ]
+ }
+ ],
+ "source": [
+ "collection = jsonstat.from_url(uri, filename)\n",
+ "print(collection)"
+ ]
+ },
+ {
+ "cell_type": "markdown",
+ "metadata": {},
+ "source": [
+ "#### Select the first dataset in the collection and print its description"
+ ]
+ },
+ {
+ "cell_type": "code",
+ "execution_count": 5,
+ "metadata": {},
+ "outputs": [
+ {
+ "name": "stdout",
+ "output_type": "stream",
+ "text": [
+ "name: 'dataset'\n",
+ "label: 'Persons aged 15 years and over by Region, Quarter and Statistic'\n",
+ "source: 'Persons aged 15 years and over by Region, Quarter and Statistic'\n",
+ "size: 1800\n",
+ "+-----+-----------+-----------+------+--------+\n",
+ "| pos | id | label | size | role |\n",
+ "+-----+-----------+-----------+------+--------+\n",
+ "| 0 | Region | Region | 12 | |\n",
+ "| 1 | Quarter | Quarter | 30 | time |\n",
+ "| 2 | Statistic | Statistic | 5 | metric |\n",
+ "+-----+-----------+-----------+------+--------+\n"
+ ]
+ }
+ ],
+ "source": [
+ "dataset = collection.dataset(0)\n",
+ "print(dataset)"
+ ]
+ },
+ {
+ "cell_type": "markdown",
+ "metadata": {},
+ "source": [
+ "#### Print dimensions of the dataset for reveiw"
+ ]
+ },
+ {
+ "cell_type": "code",
+ "execution_count": 6,
+ "metadata": {},
+ "outputs": [
+ {
+ "name": "stdout",
+ "output_type": "stream",
+ "text": [
+ "+-----+---------+------------------------+\n",
+ "| pos | idx | label |\n",
+ "+-----+---------+------------------------+\n",
+ "| 0 | '-' | 'State' |\n",
+ "| 1 | 'IE04' | 'Northern and Western' |\n",
+ "| 2 | 'IE041' | 'Border' |\n",
+ "| 3 | 'IE042' | 'West' |\n",
+ "| 4 | 'IE05' | 'Southern' |\n",
+ "| 5 | 'IE051' | 'Mid-West' |\n",
+ "| 6 | 'IE052' | 'South-East' |\n",
+ "| 7 | 'IE053' | 'South-West' |\n",
+ "| 8 | 'IE06' | 'Eastern and Midland' |\n",
+ "| 9 | 'IE061' | 'Dublin' |\n",
+ "| 10 | 'IE062' | 'Mid-East' |\n",
+ "| 11 | 'IE063' | 'Midland' |\n",
+ "+-----+---------+------------------------+\n",
+ "+-----+----------+----------+\n",
+ "| pos | idx | label |\n",
+ "+-----+----------+----------+\n",
+ "| 0 | '2012Q1' | '2012Q1' |\n",
+ "| 1 | '2012Q2' | '2012Q2' |\n",
+ "| 2 | '2012Q3' | '2012Q3' |\n",
+ "| 3 | '2012Q4' | '2012Q4' |\n",
+ "| 4 | '2013Q1' | '2013Q1' |\n",
+ "| 5 | '2013Q2' | '2013Q2' |\n",
+ "| 6 | '2013Q3' | '2013Q3' |\n",
+ "| 7 | '2013Q4' | '2013Q4' |\n",
+ "| 8 | '2014Q1' | '2014Q1' |\n",
+ "| 9 | '2014Q2' | '2014Q2' |\n",
+ "| 10 | '2014Q3' | '2014Q3' |\n",
+ "| 11 | '2014Q4' | '2014Q4' |\n",
+ "| 12 | '2015Q1' | '2015Q1' |\n",
+ "| 13 | '2015Q2' | '2015Q2' |\n",
+ "| 14 | '2015Q3' | '2015Q3' |\n",
+ "| 15 | '2015Q4' | '2015Q4' |\n",
+ "| 16 | '2016Q1' | '2016Q1' |\n",
+ "| 17 | '2016Q2' | '2016Q2' |\n",
+ "| 18 | '2016Q3' | '2016Q3' |\n",
+ "| 19 | '2016Q4' | '2016Q4' |\n",
+ "| 20 | '2017Q1' | '2017Q1' |\n",
+ "| 21 | '2017Q2' | '2017Q2' |\n",
+ "| 22 | '2017Q3' | '2017Q3' |\n",
+ "| 23 | '2017Q4' | '2017Q4' |\n",
+ "| 24 | '2018Q1' | '2018Q1' |\n",
+ "| 25 | '2018Q2' | '2018Q2' |\n",
+ "| 26 | '2018Q3' | '2018Q3' |\n",
+ "| 27 | '2018Q4' | '2018Q4' |\n",
+ "| 28 | '2019Q1' | '2019Q1' |\n",
+ "| 29 | '2019Q2' | '2019Q2' |\n",
+ "+-----+----------+----------+\n",
+ "+-----+------------+-------------------------------------------------------------+\n",
+ "| pos | idx | label |\n",
+ "+-----+------------+-------------------------------------------------------------+\n",
+ "| 0 | 'QLF08C01' | 'Persons aged 15 years and over in Employment (Thousand)' |\n",
+ "| 1 | 'QLF08C02' | 'Unemployed Persons aged 15 years and over (Thousand)' |\n",
+ "| 2 | 'QLF08C03' | 'Persons aged 15 years and over in Labour Force (Thousand)' |\n",
+ "| 3 | 'QLF08C04' | 'ILO Unemployment Rate (15 - 74 years) (%)' |\n",
+ "| 4 | 'QLF08C05' | 'ILO Participation Rate (15 years and over) (%)' |\n",
+ "+-----+------------+-------------------------------------------------------------+\n"
+ ]
+ }
+ ],
+ "source": [
+ "print(dataset.dimension('Region'))\n",
+ "print(dataset.dimension('Quarter'))\n",
+ "print(dataset.dimension('Statistic'))"
+ ]
+ },
+ {
+ "cell_type": "markdown",
+ "metadata": {},
+ "source": [
+ "#### Return a value"
+ ]
+ },
+ {
+ "cell_type": "markdown",
+ "metadata": {},
+ "source": [
+ "In this case we'll select the value associated with the statistic for the number of unemployed people (thousands) in Dublin for the first quarter of 2019."
+ ]
+ },
+ {
+ "cell_type": "code",
+ "execution_count": 7,
+ "metadata": {},
+ "outputs": [
+ {
+ "data": {
+ "text/plain": [
+ "JsonStatValue(idx=1491, value=32.1, status=None)"
+ ]
+ },
+ "execution_count": 7,
+ "metadata": {},
+ "output_type": "execute_result"
+ }
+ ],
+ "source": [
+ "dataset.data(Region='Dublin', Quarter='2019Q1', Statistic='QLF08C02')"
+ ]
+ },
+ {
+ "cell_type": "code",
+ "execution_count": 8,
+ "metadata": {},
+ "outputs": [
+ {
+ "data": {
+ "text/plain": [
+ "32.1"
+ ]
+ },
+ "execution_count": 8,
+ "metadata": {},
+ "output_type": "execute_result"
+ }
+ ],
+ "source": [
+ "dataset.value(Region='Dublin', Quarter='2019Q1', Statistic='QLF08C02')"
+ ]
+ },
+ {
+ "cell_type": "markdown",
+ "metadata": {},
+ "source": [
+ "#### Convert dataset to a Pandas data frame"
+ ]
+ },
+ {
+ "cell_type": "code",
+ "execution_count": 9,
+ "metadata": {},
+ "outputs": [
+ {
+ "data": {
+ "text/html": [
+ "
\n",
+ "\n",
+ "
\n",
+ " \n",
+ " \n",
+ " \n",
+ " Region \n",
+ " Quarter \n",
+ " Statistic \n",
+ " Value \n",
+ " \n",
+ " \n",
+ " \n",
+ " \n",
+ " 0 \n",
+ " State \n",
+ " 2012Q1 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 1863.2 \n",
+ " \n",
+ " \n",
+ " 1 \n",
+ " State \n",
+ " 2012Q1 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 348.1 \n",
+ " \n",
+ " \n",
+ " 2 \n",
+ " State \n",
+ " 2012Q1 \n",
+ " Persons aged 15 years and over in Labour Force... \n",
+ " 2211.3 \n",
+ " \n",
+ " \n",
+ " 3 \n",
+ " State \n",
+ " 2012Q1 \n",
+ " ILO Unemployment Rate (15 - 74 years) (%) \n",
+ " 15.8 \n",
+ " \n",
+ " \n",
+ " 4 \n",
+ " State \n",
+ " 2012Q1 \n",
+ " ILO Participation Rate (15 years and over) (%) \n",
+ " 61.4 \n",
+ " \n",
+ " \n",
+ " 5 \n",
+ " State \n",
+ " 2012Q2 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 1878.0 \n",
+ " \n",
+ " \n",
+ " 6 \n",
+ " State \n",
+ " 2012Q2 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 352.7 \n",
+ " \n",
+ " \n",
+ " 7 \n",
+ " State \n",
+ " 2012Q2 \n",
+ " Persons aged 15 years and over in Labour Force... \n",
+ " 2230.7 \n",
+ " \n",
+ " \n",
+ " 8 \n",
+ " State \n",
+ " 2012Q2 \n",
+ " ILO Unemployment Rate (15 - 74 years) (%) \n",
+ " 15.9 \n",
+ " \n",
+ " \n",
+ " 9 \n",
+ " State \n",
+ " 2012Q2 \n",
+ " ILO Participation Rate (15 years and over) (%) \n",
+ " 61.9 \n",
+ " \n",
+ " \n",
+ "
\n",
+ "
"
+ ],
+ "text/plain": [
+ " Region Quarter Statistic Value\n",
+ "0 State 2012Q1 Persons aged 15 years and over in Employment (... 1863.2\n",
+ "1 State 2012Q1 Unemployed Persons aged 15 years and over (Tho... 348.1\n",
+ "2 State 2012Q1 Persons aged 15 years and over in Labour Force... 2211.3\n",
+ "3 State 2012Q1 ILO Unemployment Rate (15 - 74 years) (%) 15.8\n",
+ "4 State 2012Q1 ILO Participation Rate (15 years and over) (%) 61.4\n",
+ "5 State 2012Q2 Persons aged 15 years and over in Employment (... 1878.0\n",
+ "6 State 2012Q2 Unemployed Persons aged 15 years and over (Tho... 352.7\n",
+ "7 State 2012Q2 Persons aged 15 years and over in Labour Force... 2230.7\n",
+ "8 State 2012Q2 ILO Unemployment Rate (15 - 74 years) (%) 15.9\n",
+ "9 State 2012Q2 ILO Participation Rate (15 years and over) (%) 61.9"
+ ]
+ },
+ "execution_count": 9,
+ "metadata": {},
+ "output_type": "execute_result"
+ }
+ ],
+ "source": [
+ "df_dataset = dataset.to_data_frame()\n",
+ "df_dataset.head(10)"
+ ]
+ },
+ {
+ "cell_type": "markdown",
+ "metadata": {},
+ "source": [
+ "#### Extract a subset of the data for unemployment figures"
+ ]
+ },
+ {
+ "cell_type": "markdown",
+ "metadata": {},
+ "source": [
+ "In this case we'll select the subset of data for the number of unemployed people (thousands) in Dublin for all quarters available in the dataset. Quarter will be used as the index for the data frame. The region and statistic chose for the subset need to be specified by their index (idx)."
+ ]
+ },
+ {
+ "cell_type": "code",
+ "execution_count": 10,
+ "metadata": {},
+ "outputs": [
+ {
+ "data": {
+ "text/html": [
+ "\n",
+ "\n",
+ "
\n",
+ " \n",
+ " \n",
+ " \n",
+ " Region \n",
+ " Quarter \n",
+ " Statistic \n",
+ " Value \n",
+ " \n",
+ " \n",
+ " \n",
+ " \n",
+ " 0 \n",
+ " Dublin \n",
+ " 2012Q1 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 85.1 \n",
+ " \n",
+ " \n",
+ " 1 \n",
+ " Dublin \n",
+ " 2012Q2 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 79.7 \n",
+ " \n",
+ " \n",
+ " 2 \n",
+ " Dublin \n",
+ " 2012Q3 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 84.9 \n",
+ " \n",
+ " \n",
+ " 3 \n",
+ " Dublin \n",
+ " 2012Q4 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 72.2 \n",
+ " \n",
+ " \n",
+ " 4 \n",
+ " Dublin \n",
+ " 2013Q1 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 72.1 \n",
+ " \n",
+ " \n",
+ " 5 \n",
+ " Dublin \n",
+ " 2013Q2 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 79.5 \n",
+ " \n",
+ " \n",
+ " 6 \n",
+ " Dublin \n",
+ " 2013Q3 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 70.2 \n",
+ " \n",
+ " \n",
+ " 7 \n",
+ " Dublin \n",
+ " 2013Q4 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 66.6 \n",
+ " \n",
+ " \n",
+ " 8 \n",
+ " Dublin \n",
+ " 2014Q1 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 69.5 \n",
+ " \n",
+ " \n",
+ " 9 \n",
+ " Dublin \n",
+ " 2014Q2 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 68.0 \n",
+ " \n",
+ " \n",
+ " 10 \n",
+ " Dublin \n",
+ " 2014Q3 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 70.7 \n",
+ " \n",
+ " \n",
+ " 11 \n",
+ " Dublin \n",
+ " 2014Q4 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 59.2 \n",
+ " \n",
+ " \n",
+ " 12 \n",
+ " Dublin \n",
+ " 2015Q1 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 60.1 \n",
+ " \n",
+ " \n",
+ " 13 \n",
+ " Dublin \n",
+ " 2015Q2 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 55.5 \n",
+ " \n",
+ " \n",
+ " 14 \n",
+ " Dublin \n",
+ " 2015Q3 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 56.2 \n",
+ " \n",
+ " \n",
+ " 15 \n",
+ " Dublin \n",
+ " 2015Q4 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 52.6 \n",
+ " \n",
+ " \n",
+ " 16 \n",
+ " Dublin \n",
+ " 2016Q1 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 48.6 \n",
+ " \n",
+ " \n",
+ " 17 \n",
+ " Dublin \n",
+ " 2016Q2 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 58.1 \n",
+ " \n",
+ " \n",
+ " 18 \n",
+ " Dublin \n",
+ " 2016Q3 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 55.6 \n",
+ " \n",
+ " \n",
+ " 19 \n",
+ " Dublin \n",
+ " 2016Q4 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 45.1 \n",
+ " \n",
+ " \n",
+ " 20 \n",
+ " Dublin \n",
+ " 2017Q1 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 44.7 \n",
+ " \n",
+ " \n",
+ " 21 \n",
+ " Dublin \n",
+ " 2017Q2 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 46.1 \n",
+ " \n",
+ " \n",
+ " 22 \n",
+ " Dublin \n",
+ " 2017Q3 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 44.8 \n",
+ " \n",
+ " \n",
+ " 23 \n",
+ " Dublin \n",
+ " 2017Q4 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 43.4 \n",
+ " \n",
+ " \n",
+ " 24 \n",
+ " Dublin \n",
+ " 2018Q1 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 37.8 \n",
+ " \n",
+ " \n",
+ " 25 \n",
+ " Dublin \n",
+ " 2018Q2 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 38.5 \n",
+ " \n",
+ " \n",
+ " 26 \n",
+ " Dublin \n",
+ " 2018Q3 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 38.9 \n",
+ " \n",
+ " \n",
+ " 27 \n",
+ " Dublin \n",
+ " 2018Q4 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 36.4 \n",
+ " \n",
+ " \n",
+ " 28 \n",
+ " Dublin \n",
+ " 2019Q1 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 32.1 \n",
+ " \n",
+ " \n",
+ " 29 \n",
+ " Dublin \n",
+ " 2019Q2 \n",
+ " Unemployed Persons aged 15 years and over (Tho... \n",
+ " 32.7 \n",
+ " \n",
+ " \n",
+ "
\n",
+ "
"
+ ],
+ "text/plain": [
+ " Region Quarter Statistic Value\n",
+ "0 Dublin 2012Q1 Unemployed Persons aged 15 years and over (Tho... 85.1\n",
+ "1 Dublin 2012Q2 Unemployed Persons aged 15 years and over (Tho... 79.7\n",
+ "2 Dublin 2012Q3 Unemployed Persons aged 15 years and over (Tho... 84.9\n",
+ "3 Dublin 2012Q4 Unemployed Persons aged 15 years and over (Tho... 72.2\n",
+ "4 Dublin 2013Q1 Unemployed Persons aged 15 years and over (Tho... 72.1\n",
+ "5 Dublin 2013Q2 Unemployed Persons aged 15 years and over (Tho... 79.5\n",
+ "6 Dublin 2013Q3 Unemployed Persons aged 15 years and over (Tho... 70.2\n",
+ "7 Dublin 2013Q4 Unemployed Persons aged 15 years and over (Tho... 66.6\n",
+ "8 Dublin 2014Q1 Unemployed Persons aged 15 years and over (Tho... 69.5\n",
+ "9 Dublin 2014Q2 Unemployed Persons aged 15 years and over (Tho... 68.0\n",
+ "10 Dublin 2014Q3 Unemployed Persons aged 15 years and over (Tho... 70.7\n",
+ "11 Dublin 2014Q4 Unemployed Persons aged 15 years and over (Tho... 59.2\n",
+ "12 Dublin 2015Q1 Unemployed Persons aged 15 years and over (Tho... 60.1\n",
+ "13 Dublin 2015Q2 Unemployed Persons aged 15 years and over (Tho... 55.5\n",
+ "14 Dublin 2015Q3 Unemployed Persons aged 15 years and over (Tho... 56.2\n",
+ "15 Dublin 2015Q4 Unemployed Persons aged 15 years and over (Tho... 52.6\n",
+ "16 Dublin 2016Q1 Unemployed Persons aged 15 years and over (Tho... 48.6\n",
+ "17 Dublin 2016Q2 Unemployed Persons aged 15 years and over (Tho... 58.1\n",
+ "18 Dublin 2016Q3 Unemployed Persons aged 15 years and over (Tho... 55.6\n",
+ "19 Dublin 2016Q4 Unemployed Persons aged 15 years and over (Tho... 45.1\n",
+ "20 Dublin 2017Q1 Unemployed Persons aged 15 years and over (Tho... 44.7\n",
+ "21 Dublin 2017Q2 Unemployed Persons aged 15 years and over (Tho... 46.1\n",
+ "22 Dublin 2017Q3 Unemployed Persons aged 15 years and over (Tho... 44.8\n",
+ "23 Dublin 2017Q4 Unemployed Persons aged 15 years and over (Tho... 43.4\n",
+ "24 Dublin 2018Q1 Unemployed Persons aged 15 years and over (Tho... 37.8\n",
+ "25 Dublin 2018Q2 Unemployed Persons aged 15 years and over (Tho... 38.5\n",
+ "26 Dublin 2018Q3 Unemployed Persons aged 15 years and over (Tho... 38.9\n",
+ "27 Dublin 2018Q4 Unemployed Persons aged 15 years and over (Tho... 36.4\n",
+ "28 Dublin 2019Q1 Unemployed Persons aged 15 years and over (Tho... 32.1\n",
+ "29 Dublin 2019Q2 Unemployed Persons aged 15 years and over (Tho... 32.7"
+ ]
+ },
+ "execution_count": 10,
+ "metadata": {},
+ "output_type": "execute_result"
+ }
+ ],
+ "source": [
+ "df_dublin_unemployed = dataset.to_data_frame(blocked_dims={'Region':'IE061', 'Statistic':'QLF08C02'})\n",
+ "df_dublin_unemployed"
+ ]
+ },
+ {
+ "cell_type": "markdown",
+ "metadata": {},
+ "source": [
+ "#### Get summary statistics for the dataframe"
+ ]
+ },
+ {
+ "cell_type": "code",
+ "execution_count": 11,
+ "metadata": {},
+ "outputs": [
+ {
+ "data": {
+ "text/html": [
+ "\n",
+ "\n",
+ "
\n",
+ " \n",
+ " \n",
+ " \n",
+ " Value \n",
+ " \n",
+ " \n",
+ " \n",
+ " \n",
+ " count \n",
+ " 30.000000 \n",
+ " \n",
+ " \n",
+ " mean \n",
+ " 56.830000 \n",
+ " \n",
+ " \n",
+ " std \n",
+ " 15.874924 \n",
+ " \n",
+ " \n",
+ " min \n",
+ " 32.100000 \n",
+ " \n",
+ " \n",
+ " 25% \n",
+ " 44.725000 \n",
+ " \n",
+ " \n",
+ " 50% \n",
+ " 55.900000 \n",
+ " \n",
+ " \n",
+ " 75% \n",
+ " 70.025000 \n",
+ " \n",
+ " \n",
+ " max \n",
+ " 85.100000 \n",
+ " \n",
+ " \n",
+ "
\n",
+ "
"
+ ],
+ "text/plain": [
+ " Value\n",
+ "count 30.000000\n",
+ "mean 56.830000\n",
+ "std 15.874924\n",
+ "min 32.100000\n",
+ "25% 44.725000\n",
+ "50% 55.900000\n",
+ "75% 70.025000\n",
+ "max 85.100000"
+ ]
+ },
+ "execution_count": 11,
+ "metadata": {},
+ "output_type": "execute_result"
+ }
+ ],
+ "source": [
+ "df_dublin_unemployed.describe()"
+ ]
+ },
+ {
+ "cell_type": "markdown",
+ "metadata": {},
+ "source": [
+ "#### Plot unemployment in Dublin"
+ ]
+ },
+ {
+ "cell_type": "code",
+ "execution_count": 12,
+ "metadata": {},
+ "outputs": [
+ {
+ "data": {
+ "image/png": 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\n",
+ "text/plain": [
+ ""
+ ]
+ },
+ "metadata": {
+ "needs_background": "light"
+ },
+ "output_type": "display_data"
+ }
+ ],
+ "source": [
+ "ax = plt.gca()\n",
+ "\n",
+ "df_dublin_unemployed.plot(kind='line',color='cornflowerblue',label ='Unemployed',x='Quarter',y='Value',ax=ax)\n",
+ "\n",
+ "plt.title(\"Unemployment in Dublin\" + \"\\n\" + \"Persons aged 15 years and over (Thousands)\")\n",
+ "\n",
+ "plt.show()"
+ ]
+ },
+ {
+ "cell_type": "markdown",
+ "metadata": {},
+ "source": [
+ "#### Extract employment figures for Dublin"
+ ]
+ },
+ {
+ "cell_type": "code",
+ "execution_count": 13,
+ "metadata": {},
+ "outputs": [
+ {
+ "data": {
+ "text/html": [
+ "\n",
+ "\n",
+ "
\n",
+ " \n",
+ " \n",
+ " \n",
+ " Region \n",
+ " Quarter \n",
+ " Statistic \n",
+ " Value \n",
+ " \n",
+ " \n",
+ " \n",
+ " \n",
+ " 0 \n",
+ " Dublin \n",
+ " 2012Q1 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 543.5 \n",
+ " \n",
+ " \n",
+ " 1 \n",
+ " Dublin \n",
+ " 2012Q2 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 549.6 \n",
+ " \n",
+ " \n",
+ " 2 \n",
+ " Dublin \n",
+ " 2012Q3 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 552.0 \n",
+ " \n",
+ " \n",
+ " 3 \n",
+ " Dublin \n",
+ " 2012Q4 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 560.6 \n",
+ " \n",
+ " \n",
+ " 4 \n",
+ " Dublin \n",
+ " 2013Q1 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 550.3 \n",
+ " \n",
+ " \n",
+ " 5 \n",
+ " Dublin \n",
+ " 2013Q2 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 562.1 \n",
+ " \n",
+ " \n",
+ " 6 \n",
+ " Dublin \n",
+ " 2013Q3 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 576.3 \n",
+ " \n",
+ " \n",
+ " 7 \n",
+ " Dublin \n",
+ " 2013Q4 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 578.6 \n",
+ " \n",
+ " \n",
+ " 8 \n",
+ " Dublin \n",
+ " 2014Q1 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 581.1 \n",
+ " \n",
+ " \n",
+ " 9 \n",
+ " Dublin \n",
+ " 2014Q2 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 589.3 \n",
+ " \n",
+ " \n",
+ " 10 \n",
+ " Dublin \n",
+ " 2014Q3 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 593.9 \n",
+ " \n",
+ " \n",
+ " 11 \n",
+ " Dublin \n",
+ " 2014Q4 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 606.4 \n",
+ " \n",
+ " \n",
+ " 12 \n",
+ " Dublin \n",
+ " 2015Q1 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 600.9 \n",
+ " \n",
+ " \n",
+ " 13 \n",
+ " Dublin \n",
+ " 2015Q2 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 610.2 \n",
+ " \n",
+ " \n",
+ " 14 \n",
+ " Dublin \n",
+ " 2015Q3 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 622.7 \n",
+ " \n",
+ " \n",
+ " 15 \n",
+ " Dublin \n",
+ " 2015Q4 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 629.3 \n",
+ " \n",
+ " \n",
+ " 16 \n",
+ " Dublin \n",
+ " 2016Q1 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 633.8 \n",
+ " \n",
+ " \n",
+ " 17 \n",
+ " Dublin \n",
+ " 2016Q2 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 641.3 \n",
+ " \n",
+ " \n",
+ " 18 \n",
+ " Dublin \n",
+ " 2016Q3 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 648.2 \n",
+ " \n",
+ " \n",
+ " 19 \n",
+ " Dublin \n",
+ " 2016Q4 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 653.5 \n",
+ " \n",
+ " \n",
+ " 20 \n",
+ " Dublin \n",
+ " 2017Q1 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 648.8 \n",
+ " \n",
+ " \n",
+ " 21 \n",
+ " Dublin \n",
+ " 2017Q2 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 649.6 \n",
+ " \n",
+ " \n",
+ " 22 \n",
+ " Dublin \n",
+ " 2017Q3 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 663.3 \n",
+ " \n",
+ " \n",
+ " 23 \n",
+ " Dublin \n",
+ " 2017Q4 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 675.5 \n",
+ " \n",
+ " \n",
+ " 24 \n",
+ " Dublin \n",
+ " 2018Q1 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 683.9 \n",
+ " \n",
+ " \n",
+ " 25 \n",
+ " Dublin \n",
+ " 2018Q2 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 695.1 \n",
+ " \n",
+ " \n",
+ " 26 \n",
+ " Dublin \n",
+ " 2018Q3 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 696.2 \n",
+ " \n",
+ " \n",
+ " 27 \n",
+ " Dublin \n",
+ " 2018Q4 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 701.4 \n",
+ " \n",
+ " \n",
+ " 28 \n",
+ " Dublin \n",
+ " 2019Q1 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 704.9 \n",
+ " \n",
+ " \n",
+ " 29 \n",
+ " Dublin \n",
+ " 2019Q2 \n",
+ " Persons aged 15 years and over in Employment (... \n",
+ " 716.7 \n",
+ " \n",
+ " \n",
+ "
\n",
+ "
"
+ ],
+ "text/plain": [
+ " Region Quarter Statistic Value\n",
+ "0 Dublin 2012Q1 Persons aged 15 years and over in Employment (... 543.5\n",
+ "1 Dublin 2012Q2 Persons aged 15 years and over in Employment (... 549.6\n",
+ "2 Dublin 2012Q3 Persons aged 15 years and over in Employment (... 552.0\n",
+ "3 Dublin 2012Q4 Persons aged 15 years and over in Employment (... 560.6\n",
+ "4 Dublin 2013Q1 Persons aged 15 years and over in Employment (... 550.3\n",
+ "5 Dublin 2013Q2 Persons aged 15 years and over in Employment (... 562.1\n",
+ "6 Dublin 2013Q3 Persons aged 15 years and over in Employment (... 576.3\n",
+ "7 Dublin 2013Q4 Persons aged 15 years and over in Employment (... 578.6\n",
+ "8 Dublin 2014Q1 Persons aged 15 years and over in Employment (... 581.1\n",
+ "9 Dublin 2014Q2 Persons aged 15 years and over in Employment (... 589.3\n",
+ "10 Dublin 2014Q3 Persons aged 15 years and over in Employment (... 593.9\n",
+ "11 Dublin 2014Q4 Persons aged 15 years and over in Employment (... 606.4\n",
+ "12 Dublin 2015Q1 Persons aged 15 years and over in Employment (... 600.9\n",
+ "13 Dublin 2015Q2 Persons aged 15 years and over in Employment (... 610.2\n",
+ "14 Dublin 2015Q3 Persons aged 15 years and over in Employment (... 622.7\n",
+ "15 Dublin 2015Q4 Persons aged 15 years and over in Employment (... 629.3\n",
+ "16 Dublin 2016Q1 Persons aged 15 years and over in Employment (... 633.8\n",
+ "17 Dublin 2016Q2 Persons aged 15 years and over in Employment (... 641.3\n",
+ "18 Dublin 2016Q3 Persons aged 15 years and over in Employment (... 648.2\n",
+ "19 Dublin 2016Q4 Persons aged 15 years and over in Employment (... 653.5\n",
+ "20 Dublin 2017Q1 Persons aged 15 years and over in Employment (... 648.8\n",
+ "21 Dublin 2017Q2 Persons aged 15 years and over in Employment (... 649.6\n",
+ "22 Dublin 2017Q3 Persons aged 15 years and over in Employment (... 663.3\n",
+ "23 Dublin 2017Q4 Persons aged 15 years and over in Employment (... 675.5\n",
+ "24 Dublin 2018Q1 Persons aged 15 years and over in Employment (... 683.9\n",
+ "25 Dublin 2018Q2 Persons aged 15 years and over in Employment (... 695.1\n",
+ "26 Dublin 2018Q3 Persons aged 15 years and over in Employment (... 696.2\n",
+ "27 Dublin 2018Q4 Persons aged 15 years and over in Employment (... 701.4\n",
+ "28 Dublin 2019Q1 Persons aged 15 years and over in Employment (... 704.9\n",
+ "29 Dublin 2019Q2 Persons aged 15 years and over in Employment (... 716.7"
+ ]
+ },
+ "execution_count": 13,
+ "metadata": {},
+ "output_type": "execute_result"
+ }
+ ],
+ "source": [
+ "df_dublin_employed = dataset.to_data_frame(blocked_dims={'Region':'IE061', 'Statistic':'QLF08C01'})\n",
+ "df_dublin_employed"
+ ]
+ },
+ {
+ "cell_type": "markdown",
+ "metadata": {},
+ "source": [
+ "#### Plot employment figures for Dublin"
+ ]
+ },
+ {
+ "cell_type": "code",
+ "execution_count": 14,
+ "metadata": {},
+ "outputs": [
+ {
+ "data": {
+ "image/png": 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\n",
+ "text/plain": [
+ ""
+ ]
+ },
+ "metadata": {
+ "needs_background": "light"
+ },
+ "output_type": "display_data"
+ }
+ ],
+ "source": [
+ "ax = plt.gca()\n",
+ "\n",
+ "df_dublin_employed.plot(kind='line',color='orange',label ='Employed',x='Quarter',y='Value',ax=ax)\n",
+ "\n",
+ "plt.title(\"Employment in Dublin\" + \"\\n\" + \"Persons aged 15 years and over (Thousands)\")\n",
+ "\n",
+ "plt.show()"
+ ]
+ },
+ {
+ "cell_type": "markdown",
+ "metadata": {},
+ "source": [
+ "#### Plot employment and unemployment figures for Dublin together on the same axis for comparison"
+ ]
+ },
+ {
+ "cell_type": "code",
+ "execution_count": 15,
+ "metadata": {},
+ "outputs": [
+ {
+ "data": {
+ "image/png": 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\n",
+ "text/plain": [
+ ""
+ ]
+ },
+ "metadata": {
+ "needs_background": "light"
+ },
+ "output_type": "display_data"
+ }
+ ],
+ "source": [
+ "ax = plt.gca()\n",
+ "\n",
+ "df_dublin_employed.plot(kind='line',color='orange',label='Employed',x='Quarter',y='Value',ax=ax)\n",
+ "df_dublin_unemployed.plot(kind='line',color='cornflowerblue',label='Unemployed',x='Quarter',y='Value',ax=ax)\n",
+ "\n",
+ "plt.title(\"Employment versus Unemployment in Dublin\" + \"\\n\" + \"Persons aged 15 years and over (Thousands)\")\n",
+ "\n",
+ "plt.show()"
+ ]
+ },
+ {
+ "cell_type": "code",
+ "execution_count": null,
+ "metadata": {},
+ "outputs": [],
+ "source": []
+ }
+ ],
+ "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": "3.7.5"
+ }
+ },
+ "nbformat": 4,
+ "nbformat_minor": 2
+}