Zurich, Lausanne, and Geneva were ranked as the most expensive cities worldwide with indices of ************************ Almost half of the 11 most expensive cities were in Switzerland.
The World Council on City Data (WCCD) awarded the City of Melbourne a platinum designation for its compliance with ISO 37120 (http://www.iso.org/iso/catalogue_detail?csnumber=62436), the world’s first international standard for city indicators. Reporting to the standard allows cities to compare their service delivery and quality of life to other cities globally. The City of Melbourne was one on 20 cities to, globally to help pilot this program and is one of sixteen cities to receive the highest level of accreditation (platinum). \r
Having an international standard methodology to measure city performance allows the City of Melbourne to share data about practices in service delivery, learn from other global cities, rank its results relative to those cities, and address common challenges through more informed decision making. \r
Indicators include: Fire and emergency response; Governance; Health; Recreation; Safety; Shelter; Solid Waste; Telecommunications and Innovation; Transportation; Urban Planning; Wastewater; Water and Sanitation; Economy; Education; Energy; Environment; and Finance.\r
City of Melbourne also submitted an application for accreditation, on behalf of ‘Greater Melbourne’, to the World Council on City Data and this resulted in an ‘Aspirational’ accreditation awarded to wider Melbourne. \r
A summary of Melbourne's results is available here (http://open.dataforcities.org/). Visit the World Council on City Data’s Open Data Portal to compare our results to other cities from around the world.
Cost of Living Index (Excl. Rent) is a relative indicator of consumer goods prices, including groceries, restaurants, transportation and utilities. Cost of Living Index does not include accommodation expenses such as rent or mortgage. If a city has a Cost of Living Index of 120, it means Numbeo has estimated it is 20% more expensive than New York (excluding rent).
Please refer further to: https://www.numbeo.com/cost-of-living/cpi_explained.jsp for motivation and methodology.
All credits to https://www.numbeo.com .
This dataset would surely help socio-economic researchers to analyse and get deeper insights regarding the life of people country-wise.
Thanks to @andradaolteanu for the motivation! Upwards and onwards...
Damascus in Syria was ranked as the least expensive city worldwide in 2023, with an index score of ** out of 100. The country has been marred by civil war over the last decade, hitting the country's economy hard. Other cities in the Middle East and North Africa, such as Tehran, Tripoli, and Tunis, are also present on the list. On the other hand, Singapore and Zurich were ranked the most expensive cities in the world.
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The average for 2021 based on 165 countries was 79.81 index points. The highest value was in Bermuda: 212.7 index points and the lowest value was in Syria: 33.25 index points. The indicator is available from 2017 to 2021. Below is a chart for all countries where data are available.
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Graph and download economic data for Estimated Mean Real Household Wages Adjusted by Cost of Living for St. Louis city, MO (MWACL29510) from 2009 to 2023 about St. Louis City, MO; St. Louis; adjusted; MO; average; wages; real; and USA.
West Virginia and Kansas had the lowest cost of living across all U.S. states, with composite costs being half of those found in Hawaii. This was according to a composite index that compares prices for various goods and services on a state-by-state basis. In West Virginia, the cost of living index amounted to **** — well below the national benchmark of 100. Virginia— which had an index value of ***** — was only slightly above that benchmark. Expensive places to live included Hawaii, Massachusetts, and California. Housing costs in the U.S. Housing is usually the highest expense in a household’s budget. In 2023, the average house sold for approximately ******* U.S. dollars, but house prices in the Northeast and West regions were significantly higher. Conversely, the South had some of the least expensive housing. In West Virginia, Mississippi, and Louisiana, the median price of the typical single-family home was less than ******* U.S. dollars. That makes living expenses in these states significantly lower than in states such as Hawaii and California, where housing is much pricier. What other expenses affect the cost of living? Utility costs such as electricity, natural gas, water, and internet also influence the cost of living. In Alaska, Hawaii, and Connecticut, the average monthly utility cost exceeded *** U.S. dollars. That was because of the significantly higher prices for electricity and natural gas in these states.
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A dataset comparing monthly living costs across major cities in China, including rent, food, transport, and more for ESL teachers.
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Teleport.org provides data related to quality of life for the most creative cities around the world, which enables users to find suitable cities for living and working according to their personal preferences.
This dataset was obtained from Teleport API endpoints (https://developers.teleport.org/api/) and pre-processed before being uploaded to Kaggle.
This is a comparison of the cost of living in various cities, as gathered by popular site numbeo. All data belongs to them and has been shared with permission
Currency is Euro
The Measuring Living Standards in Cities (MLSC) survey is a new instrument designed to enhance understanding of cities in Africa and support evidence based policy design. The instrument was developed under the World Bank’s Spatial Development of African Cities Program, and was piloted in Dar es Salaam (Tanzania) and Durban (South Africa) over the course of 2014/15. These geo-referenced surveys provide information on urban living standards at an unprecedented level of granularity: they can be compared across different geographic levels within the cities, and between areas of ‘regular’ and ‘irregular’ settlement patterns. They also respond to the need to increased understanding of specifically ‘urban’ dimensions of quality of living: housing attributes, access to basic services, and commuting patterns, among others.
The survey covered households in Dar es Salaam, Tanzania.
Household
Individual
Sample survey data [ssd]
SAMPLE FRAME
16,000 EAs generated by the Tanzania National Bureau of Statistics (NBS) for the 2012 Census.
STAGE ONE
200 EAs sorted into four strata. The central strata was divided into ‘central core, shanty’ and ‘central core, non-shanty’. Two EAs were replaced with reserve EAs as the original EAs were found to be inaccessible.
STAGE TWO
12 households randomly selected by systematic equal-probability from updated listing of each EA.
LISTING METHODOLOGY
The listing exercise took place between the first and the second stage of sampling. The household listing operations were implemented with computer assisted paperless interviewing (CAPI) techniques, which generates electronic files directly. Enumerators collected basic information about household: the name of the household head name, phone number and total number of household members living in the dwelling. Enumerators also recorded the GPS location of all structures,18 defined the type of structure, and aimed to provide measurement of structure size.
Listing was preceded by community sensitisation in both cities. In Dar es Salaam, enumerators visited the local chief (Mjumbe) of their assigned EA two days in advance of listing and on the day of listing.
Enumerators were equipped with maps created on Google My Maps to display shapefiles for the listing exercise. Hardcopies of their respective EA maps were also provided to be use in case of network failure. In Dar es Salaam, enumerators conducted a listing of all households in each of the selected EAs.
The listing exercise was conducted by 30 enumerators, each of which was assigned between 3 and 9 EAs for listing (enumerators were selected on the basis of performance from a group of 35 that were trained for listing). Enumerators were allocated EAs based on: (i) distance from enumerators’ homes in order to minimize transport time and cost; (ii) distance between the EAs; and (iii) safety and response rate considerations.
SURVEY IMPLEMENTATION
The surveys were fielded over the course of several months. The Dar es Salaam survey was implemented between November 2014 and January 2015.
Cases were assigned to interviewers using Survey Solutions. Interviewers were provided with both an electronic and hardcopy map, as well as a printed completion form, and could contact the listing manager through email, WhatsApp, or google hangouts if they were unable to find the assigned house.
Completing the survey often required repeat visits. This is because the survey required input from up to three separate respondents: the main respondent, who could be any present household member, and answered questions on household composition, basic information on members, assets, remittances, grants, housing, properties and consumption; the household head, who answered questions on residential history, satisfaction, employment, time use and commuting; and a random respondent, who was randomly selected from household members over the age of 12 (not including the head), who responded questions on satisfaction, employment, time use and commuting. Enumerators visited each house at least twice before a component could be marked as unavailable - in many cases, however, more than two visits were conducted.
Quality assurance procedures included: (i) In-interview feedback from CAPI, which provided a check that modules or questions were not missing, and alerted interviewers to mistakes and inconsistencies in given answers, so that these could be addressed while the interviewer was still with the respondent; (ii) Aggregate checks conducted using the Survey Solutions Supervisor application, which allows supervisors to identify common mistakes (applied to all initial interviews, and then through spot checks); interviewer performance and completion monitoring conducted by the implementing firm, through interviewer and EA level summaries of response rates, interview completion, and progress; (iii) weekly summaries of key indictors provided by the World Bank team (following each data delivery); (iv) direct observation of fieldwork; and (v) back check interviews. A key lesson learned is that the portion of back check interviews should be agreed in advance with the implementing firm: in Dar es Salaam back checks were conducted on 5% of the sample.
Computer Assisted Personal Interview [capi]
Non-response rate: 13%
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Graph and download economic data for Estimated Mean Real Household Wages Adjusted by Cost of Living for Salt Lake County, UT (MWACL49035) from 2009 to 2023 about Salt Lake County, UT; Salt Lake City; UT; adjusted; average; wages; real; and USA.
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Kazakhstan Cost of Living: Average per Capita: City: Almaty data was reported at 32,029.000 KZT in Oct 2018. This records a decrease from the previous number of 32,475.000 KZT for Sep 2018. Kazakhstan Cost of Living: Average per Capita: City: Almaty data is updated monthly, averaging 15,920.000 KZT from Oct 2000 (Median) to Oct 2018, with 217 observations. The data reached an all-time high of 32,640.000 KZT in Aug 2018 and a record low of 4,577.000 KZT in Oct 2000. Kazakhstan Cost of Living: Average per Capita: City: Almaty data remains active status in CEIC and is reported by The Agency of Statistics of the Republic of Kazakhstan. The data is categorized under Global Database’s Kazakhstan – Table KZ.H012: Cost of Living: Average per Capita.
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Graph and download economic data for Estimated Mean Real Household Wages Adjusted by Cost of Living for Richmond city, VA (MWACL51760) from 2009 to 2023 about Richmond City, VA; Richmond; adjusted; average; VA; wages; real; and USA.
The graph shows the world's most expensive cities to live, compared to New York City. Zurich is with a value of 170 the most expensive city to live.
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This dataset is used to carry out the analyses in the article: Pazos-García, María J.; López-López, V.; Iglesias-Antelo, S.; Vila-Vázquez, G. Quality of life in cities: An outcome and a resource? European Research on Management and Business Economics, 2024, 31(1), DOI: 10.1016/j.iedeen.2024.100264
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License information was derived automatically
The Measuring Living Standards in Cities (MLSC) survey is a new instrument designed to enhance understanding of cities in Africa and support evidence based policy design. The instrument was developed under the World Bank’s Spatial Development of African Cities Program, and was piloted in Dar es Salaam (Tanzania) and Durban (South Africa) over the course of 2014/15. These geo-referenced surveys provide information on urban living standards at an unprecedented level of granularity: they can be compared across different geographic levels within the cities, and between areas of ‘regular’ and ‘irregular’ settlement patterns. They also respond to the need to increased understanding of specifically ‘urban’ dimensions of quality of living: housing attributes, access to basic services, and commuting patterns, among others.
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
Kazakhstan Cost of Living: Average per Capita: City: Shymkent data was reported at 26,400.000 KZT in Oct 2018. This records an increase from the previous number of 26,207.000 KZT for Sep 2018. Kazakhstan Cost of Living: Average per Capita: City: Shymkent data is updated monthly, averaging 26,195.000 KZT from Jun 2018 (Median) to Oct 2018, with 5 observations. The data reached an all-time high of 26,400.000 KZT in Oct 2018 and a record low of 24,740.000 KZT in Jul 2018. Kazakhstan Cost of Living: Average per Capita: City: Shymkent data remains active status in CEIC and is reported by The Agency of Statistics of the Republic of Kazakhstan. The data is categorized under Global Database’s Kazakhstan – Table KZ.H012: Cost of Living: Average per Capita.
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This dataset contains information about the cost of living in almost 5000 cities across the world. The data were gathered by scraping Numbeo's website (https://www.numbeo.com).
Column | Description |
---|---|
city | Name of the city |
country | Name of the country |
x1 | Meal, Inexpensive Restaurant (USD) |
x2 | Meal for 2 People, Mid-range Restaurant, Three-course (USD) |
x3 | McMeal at McDonalds (or Equivalent Combo Meal) (USD) |
x4 | Domestic Beer (0.5 liter draught, in restaurants) (USD) |
x5 | Imported Beer (0.33 liter bottle, in restaurants) (USD) |
x6 | Cappuccino (regular, in restaurants) (USD) |
x7 | Coke/Pepsi (0.33 liter bottle, in restaurants) (USD) |
x8 | Water (0.33 liter bottle, in restaurants) (USD) |
x9 | Milk (regular), (1 liter) (USD) |
x10 | Loaf of Fresh White Bread (500g) (USD) |
x11 | Rice (white), (1kg) (USD) |
x12 | Eggs (regular) (12) (USD) |
x13 | Local Cheese (1kg) (USD) |
x14 | Chicken Fillets (1kg) (USD) |
x15 | Beef Round (1kg) (or Equivalent Back Leg Red Meat) (USD) |
x16 | Apples (1kg) (USD) |
x17 | Banana (1kg) (USD) |
x18 | Oranges (1kg) (USD) |
x19 | Tomato (1kg) (USD) |
x20 | Potato (1kg) (USD) |
x21 | Onion (1kg) (USD) |
x22 | Lettuce (1 head) (USD) |
x23 | Water (1.5 liter bottle, at the market) (USD) |
x24 | Bottle of Wine (Mid-Range, at the market) (USD) |
x25 | Domestic Beer (0.5 liter bottle, at the market) (USD) |
x26 | Imported Beer (0.33 liter bottle, at the market) (USD) |
x27 | Cigarettes 20 Pack (Marlboro) (USD) |
x28 | One-way Ticket (Local Transport) (USD) |
x29 | Monthly Pass (Regular Price) (USD) |
x30 | Taxi Start (Normal Tariff) (USD) |
x31 | Taxi 1km (Normal Tariff) (USD) |
x32 | Taxi 1hour Waiting (Normal Tariff) (USD) |
x33 | Gasoline (1 liter) (USD) |
x34 | Volkswagen Golf 1.4 90 KW Trendline (Or Equivalent New Car) (USD) |
x35 | Toyota Corolla Sedan 1.6l 97kW Comfort (Or Equivalent New Car) (USD) |
x36 | Basic (Electricity, Heating, Cooling, Water, Garbage) for 85m2 Apartment (USD) |
x37 | 1 min. of Prepaid Mobile Tariff Local (No Discounts or Plans) (USD) |
x38 | Internet (60 Mbps or More, Unlimited Data, Cable/ADSL) (USD) |
x39 | Fitness Club, Monthly Fee for 1 Adult (USD) |
x40 | Tennis Court Rent (1 Hour on Weekend) (USD) |
x41 | Cinema, International Release, 1 Seat (USD) |
x42 | Preschool (or Kindergarten), Full Day, Private, Monthly for 1 Child (USD) |
x43 | International Primary School, Yearly for 1 Child (USD) |
x44 | 1 Pair of Jeans (Levis 501 Or Similar) (USD) |
x45 | 1 Summer Dress in a Chain Store (Zara, H&M, ...) (USD) |
x46 | 1 Pair of Nike Running Shoes (Mid-Range) (USD) |
x47 | 1 Pair of Men Leather Business Shoes (USD) |
x48 | Apartment (1 bedroom) in City Centre (USD) |
x49 | Apartment (1 bedroom) Outside of Centre (USD) |
x50 | Apartment (3 bedrooms) in City Centre (USD) |
x51 | Apartment (3 bedrooms) Outside of Centre (USD) |
x52 | Price per Square Meter to Buy Apartment in City Centre (USD) |
x53 | Price per Square Meter to Buy Apartment Outside of Centre (USD) |
x54 | Average Monthly Net Salary (After Tax) (USD) |
x55 | Mortgage Interest Rate in Percentages (%), Yearly, for 20 Years Fixed-Rate |
data_quality | 0 if Numbeo considers that more contributors are needed to increase data quality, else 1 |
The city with the lowest quality of life is Harare. Harare leads the ranking with a value of ****.
Zurich, Lausanne, and Geneva were ranked as the most expensive cities worldwide with indices of ************************ Almost half of the 11 most expensive cities were in Switzerland.