The report Job Creation and Local Economic Development 2024: The Geography of Generative AI examines the health of regional labour markets and provides new estimates on regional labour shortages. In addition, it provides new findings on the impact of Generative AI on different regions and workers. It examines how AI technologies can be leveraged to address critical labour market challenges and boost productivity growth.
Job Creation and Local Economic Development 2024 - Country Notes: Greece
The state of regional labour markets
Copy link to The state of regional labour marketsIn Greece the employment rate in 2023 varies across regions, ranging from a low of 55.6% in Western Macedonia to 65.5% in Peloponnese. This represents a difference of 9.9 percentage points, below the average OECD regional dispersion of 10 percentage points. The national employment rate in Greece stands at 60.9%, below the OECD benchmark of 69.4%.
By 2023, over half of (12 out of 13) of Greek regions saw their employment recover to at least pre-pandemic levels. In Ionian Islands employment did not return to pre-crisis levels. Western Greece experienced the greatest recovery for employment rates, surpassing the pre-pandemic level by 9.7 percentage points. Overall, employment rates are 4.1 percentage points above pre-crisis levels, a stronger recovery than the regional OECD average of 1.5 percentage points.
Over the past ten years, the gap in participation rates between prime-age and younger workers (age inclusion gap) increased in all out of 13 regions in Greece, on average by 7.8 percentage points. The age inclusion gap grew by 1.3 percentage points across OECD regions. The smallest increase in age disparities occurred in Crete at 2.7 percentage points, while the biggest increase was in Central Greece by 18.2 percentage points. Over the same period, the gap in participation rates between male and female workers (gender inclusion gap) fell in 10 out of 13 regions. The gender inclusion gap fell by, on average, 2.9 percentage points. The biggest increase in gender disparities was in Central Greece by 1.3 percentage points, while the biggest decrease was in North Aegean at -9.5 percentage points.
In Greece self-employment levels stand at 33%, above the OECD benchmark of 15.5%. Peloponnese has the highest share of self-employed workers at 39.9%. Attica, on the other hand, has the lowest share of self-employed workers at 18.2%.
In Greece, less than half (3 out of 13 regions with available data) have youth not in employment, education, or training (NEET) rates below the OECD benchmark of 16.8%, while the regional mean stands at 24%. The highest rate of youth exclusion is observed in Ionian Islands at 33.2%, while the lowest rate is in Crete at 14.6%. This underscores the uneven opportunities for youth across the country.
In 0 out of 13 regions in Greece, labour productivity is above the OECD benchmark. Attica leads labour productivity levels at 42% above the regional average. The lowest labour productivity is observed in Eastern Macedonia, Thrace at -12% below the national average. Annual labour productivity growth in Greece over the past ten years is at -1%, below the OECD regional average of 0.9%. The strongest labour productivity growth is observed in Thessaly at 0.5% annual growth, and the weakest in Western Macedonia where labour productivity fell by 5.3% annually.
In Greece, jobs requiring high skill levels dominate in 1 out of the 13 regions. Attica stands out with the highest share of high-skill jobs (43.2%), below the OECD average of 44%. Western Macedonia has the highest proportion of medium-skill jobs, above the OECD benchmark of 30%. The share of low-skill jobs ranges from 24.1% in Western Macedonia to 39.9% in Ionian Islands, highlighting notable regional variation in job skill composition.
Skill mismatches are less prevalent in Greece than in the OECD overall: 37% of workers are in jobs that do not match their educational skill level, compared to 35% across OECD regions. This ranges from 45% mismatched workers in South Aegean to 30% in Attica.
Labour shortages across regional labour markets
Copy link to Labour shortages across regional labour marketsIn Greece, the extent of labour shortages varies by region. Taking labour market tightness (i.e. vacancies divided by unemployment), as a proxy, Ionian Islands is the region that faces the most severe labour shortages with 247% more vacancies per unemployed person than Greece as a whole. In contrast, Western Macedonia is the region that experiences the least severe labour shortages, as it has 68% fewer vacancies per unemployed person than Greece on average.
The following tightness estimates for green and ICT jobs come with a small change in the methodology. Rather than dividing vacancies by employment—as done for the aggregate tightness estimates—tightness for green and ICT jobs is estimated as the ratio of vacancies to employment in each occupational group, as information on an unemployed person’s last job is not available in most countries.
Greece experiences higher shortages for green jobs than for the average job. Specifically, there are on average 96% more vacancies per employed person in green jobs than for the average job in Greece compared to 29% in the OECD. Tightness among green jobs is highest in Eastern Macedonia, Thrace, where green jobs show 215% more vacancies per employed person, and lowest in Ionian Islands, where green jobs are -22% tighter than the average job.
Greece experiences higher shortages among ICT jobs than for the average job, as there are on average 367% more vacancies per employed person in ICT jobs than in the average job in Greece. This compares to 117% higher ICT tightness in the OECD. Tightness among ICT jobs is highest in Thessaly, where ICT jobs are 467% tighter than the average job, and lowest in Ionian Islands, where ICT jobs have -28% more vacancies per unemployed person.
AI and automation technologies in regional labour markets in Greece
Copy link to AI and automation technologies in regional labour markets in GreeceAI has the potential to transform local labour markets by boosting productivity, creating or destroying jobs, and changing the very nature of some jobs, including job quality. While the full extent of its impact is still uncertain, the effects on jobs or skills will likely be context- and place specific. This report explores both the observed and anticipated impacts of technologies, both AI and non-AI, as they mature and achieve widespread adoption.
Narrow-purposed technologies in local labour markets
Even before the emergence of Generative AI, the impact of automation technologies differed across local labour markets. This measure of risk of automation serves as a useful metric to examine the effects of narrow-purposed technologies, these are, technologies (digital or not) that are intended to help with or take over one or a few specific tasks. The metrics presented below explore the share of jobs at risk of automation given available technologies at the end of 2021.
In Greece, on average around 4.7% of workers are considered at high risk of automation, meaning over 25% of its skills and abilities are highly automatable. This is 7.3 percentage points less than the OECD average of 12%. This figure ranges from 2.9% in Attica to 7.9% in Central Greece.
Regional employment exposed to Generative AI
In Greece, on average around 26.4% of workers are exposed to Generative AI, meaning 20% (or more) of their job tasks could be done in half the time with the help of Generative AI. This is 0.4 percentage points more than the OECD average of 26%. This figure ranges from 13.7% in Eastern Macedonia, Thrace to 35.3% in Attica.
OECD regions previously only mildly at risk of automation are now significantly exposed to Generative AI and vice versa. There tends to be a negative correlation between the share of exposed workers to Generative AI and a region’s share of workers at high risk of automation.
The concentration of industries within or outside cities drives disparities in Generative AI exposure between urban and non-urban labour markets. Certain industries, such as financial services or technology development, often concentrate around metropolitan areas while non-metropolitan or rural areas tend to rely on industries with a different production structure, such as agriculture or manufacturing. Similarly, workers are also spatially concentrated with highly skilled workers often being more present in clusters in or around a few metropolitan areas.
The share of workers exposed to Generative AI is larger in cities compared to rural areas by 21.2 percentage points, which makes cities 2.5 times more exposed than non-urban areas. This gap is larger than average as across OECD countries urban areas are 1.8 times more exposed than non-urban areas.
References
OECD (2024), Job Creation and Local Economic Development 2024: The Geography of Generative AI https://doi.org/10.1787/83325127-en
Source of administrative boundaries: © OECD, © EuroGeographics, National Statistical Offices, © UN-FAO Global Administrative Unit Layers (GAUL)
This document, as well as any data and map included herein, are without prejudice to the status of or sovereignty over any territory, to the delimitation of international frontiers and boundaries and to the name of any territory, city or area.
The statistical data for Israel are supplied by and under the responsibility of the relevant Israeli authorities. The use of such data by the OECD is without prejudice to the status of the Golan Heights, East Jerusalem and Israeli settlements in the West Bank under the terms of international law.
Note by the Republic of Türkiye
The information in this document with reference to “Cyprus” relates to the southern part of the Island. There is no single authority representing both Turkish and Greek Cypriot people on the Island. Türkiye recognises the Turkish Republic of Northern Cyprus (TRNC). Until a lasting and equitable solution is found within the context of the United Nations, Türkiye shall preserve its position concerning the “Cyprus issue”.
Note by all the European Union Member States of the OECD and the European Union
The Republic of Cyprus is recognised by all members of the United Nations with the exception of Türkiye. The information in this document relates to the area under the effective control of the Government of the Republic of Cyprus.
@OECD 2024
Attribution 4.0 International (CC BY 4.0)
This work is made available under the Creative Commons Attribution 4.0 International licence. By using this work, you accept to be bound by the terms of this licence https://creativecommons.org/licenses/by/4.0/.
Attribution – you must cite the work.
Translations – you must cite the original work, identify changes to the original and add the following text: In the event of any discrepancy between the original work and the translation, only the text of original work should be considered valid.
Adaptations – you must cite the original work and add the following text: This is an adaptation of an original work by the OECD. The opinions expressed and arguments employed in this adaptation should not be reported as representing the official views of the OECD or of its Member countries.
Third-party material – the licence does not apply to third-party material in the work. If using such material, you are responsible for obtaining permission from the third party and for any claims of infringement. You must not use the OECD logo, visual identity or cover image without express permission or suggest the OECD endorses your use of the work.
Any dispute arising under this licence shall be settled by arbitration in accordance with the Permanent Court
Other country notes
- A - C
- D - I
- J - M
- N - R
- S - T
- U - Z