Digitale Arbeitswelt – Chancen und Herausforderungen für Beschäftigte und Arbeitsmarkt
Der digitale Wandel der Arbeitswelt gilt als eine der großen Herausforderungen für Wirtschaft und Gesellschaft. Wie arbeiten wir in Zukunft? Welche Auswirkungen hat die Digitalisierung und die Nutzung Künstlicher Intelligenz auf Beschäftigung und Arbeitsmarkt? Welche Qualifikationen werden künftig benötigt? Wie verändern sich Tätigkeiten und Berufe? Welche arbeits- und sozialrechtlichen Konsequenzen ergeben sich daraus?
Dieses Themendossier dokumentiert Forschungsergebnisse zum Thema in den verschiedenen Wirtschaftsbereichen und Regionen.
Im Filter „Autorenschaft“ können Sie auf IAB-(Mit-)Autorenschaft eingrenzen.
- Gesamtbetrachtungen/Positionen
- Arbeitsformen, Arbeitszeit und Gesundheit
- Qualifikationsanforderungen und Berufe
- Arbeitsplatz- und Beschäftigungseffekte
- Wirtschaftsbereiche
- Arbeits- und sozialrechtliche Aspekte / digitale soziale Sicherung
- Deutschland
- Andere Länder/ internationaler Vergleich
- Besondere Personengruppen
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Literaturhinweis
Technologischer Wandel und Löhne: Die Anpassung der Berufe spielt eine entscheidende Rolle (2026)
Zitatform
Bachmann, Ronald, Gökay Demir, Colin Green & Arne Uhlendorff (2026): Technologischer Wandel und Löhne: Die Anpassung der Berufe spielt eine entscheidende Rolle. (IAB-Kurzbericht 01/2026), Nürnberg, 8 S. DOI:10.48720/IAB.KB.2601
Abstract
"Technischer Fortschritt verändert die Arbeitswelt - besonders in Berufen, in denen viele Tätigkeiten leicht automatisiert werden können. In den letzten Jahrzehnten ist der Anteil an Routinetätigkeiten in vielen Berufen deutlich zurückgegangen - häufig zugunsten nicht routinemäßiger kognitiver Tätigkeiten wie Analysieren, Planen oder Beraten. Dabei verzeichnen Berufe, deren Tätigkeiten sich im Laufe der Zeit stärker an den technologischen Wandel angepasst haben, steigende Löhne. Sie zeichnen sich zudem durch intensivere Weiterbildungsaktivitäten aus. In Berufen, deren Tätigkeitsprofil sich kaum verändert hat, stagnieren die Löhne dagegen häufiger." (Autorenreferat, IAB-Doku)
Weiterführende Informationen
- Vollzeitbeschäftigte westdeutsche Männer in ursprünglich routinelastigen Berufen
- Veränderung von Tätigkeitsschwerpunkten durch technologischen Wandel
- Veränderung im Anteil der Routinetätigkeiten
- Veränderung im Anteil der Routinetätigkeiten im Vergleich zu nicht routinemäßigen (NR) kognitiven Tätigkeiten in exemplarisch ausgewählten, ursprünglich routinelastigen Berufsfeldern
- Anteil Beschäftigter in Weiterbildungskursen nach Tätigkeitsgruppen
- Relatives Lohnwachstum nach Tätigkeitsgruppen
- Vollzeitbeschäftigte westdeutsche Männer nach Tätigkeitsgruppen
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Literaturhinweis
Der KI-Irrtum: Warum Deutschland auf Zuwanderung angewiesen ist: Leitartikel (2026)
Zitatform
Brücker, Herbert, Yuliya Kosyakova & Enzo Weber (2026): Der KI-Irrtum: Warum Deutschland auf Zuwanderung angewiesen ist. Leitartikel. In: Wirtschaftsdienst, Jg. 106, H. 5, S. 304-305. DOI:10.2478/wd-2026-0074
Abstract
"Sieben Millionen - so viele Arbeitskräfte wird Deutschland in den nächsten 15 Jahren allein aufgrund des demografischen Wandels verlieren. Bereits seit vielen Jahren ist der demografische Effekt negativ, mit mehr als 400.000 Arbeitskräften pro Jahr. Tatsächlich beginnt der deutsche Arbeitsmarkt jedoch erst jetzt zu schrumpfen. Denn bislang konnte dieser Rückgang überkompensiert werden - durch eine steigende Erwerbsbeteiligung von Älteren und Frauen; und vor allem durch Zuwanderung. Doch diese Ausgleichsmechanismen stoßen zunehmend an Grenzen. Europa altert insgesamt, und die Dynamik der Zuwanderung innerhalb Europas nimmt ab. Zugleich sind viele der besonders mobilen, jüngeren Kohorten bereits gewandert. Vor diesem Hintergrund wird Migration schwieriger - und genau hier setzt ein verbreitetes Argument an: Wenn Künstliche Intelligenz (KI) zunehmend Aufgaben übernimmt, braucht man doch keine zusätzlichen Arbeitskräfte mehr. Diese Folgerung ist ein Trugschluss. Arbeitskräfteknappheit lässt sich gesamtwirtschaftlich nicht einfach wegdigitalisieren." (Autorenreferat, IAB-Doku)
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Literaturhinweis
Revisiting the occupational impact of AI in the generative AI era (2026)
Casas, P.; González-Vázquez, I.; Salotti, S.; Martínez-Plumed, F.; Gómez, E.; Fernández-Macías, E.;Zitatform
Casas, P., E. Fernández-Macías, F. Martínez-Plumed, E. Gómez, I. González-Vázquez & S. Salotti (2026): Revisiting the occupational impact of AI in the generative AI era. (JRC working papers series on labour, education and technology 2026,02), Sevilla, 71 S.
Abstract
"Generative AI is reshaping what artificial intelligence can do in the workplace, calling into question pre-GenAI assessments of which workers and tasks are most exposed. In this paper we trace the evolution of AI exposure in the European labour market from 2008 to 2024 by linking 352 AI benchmarks to 14 cognitive abilities, 108 work tasks and 127 ISCO-3 occupations, weighting benchmarks by their research intensity in the AI literature and thus deriving AI exposure by cognitive ability. Bundling work tasks into occupations based on intensity indicators, we explore occupational exposure to AI. We find that the cognitive abilities most exposed to the recent surge of AI research are ideas-related, such as attention and search, comprehension and expression and logical reasoning. Because the associated information processing and problem-solving tasks are the most transversal across occupations, we find an exponential increase in AI exposure across all occupational categories of workers, even though comparatively high-skilled occupations are more exposed than elementary occupations. This points at a substantial and transversal labour market impact of AI." (Author's abstract, IAB-Doku) ((en))
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Literaturhinweis
Automation, skill and job creation (2026)
Zitatform
Guo, Kaizhao (2026): Automation, skill and job creation. In: Empirical economics, Jg. 70, H. 5. DOI:10.1007/s00181-026-02912-7
Abstract
"This paper explores the heterogeneous effects of automation technologies on employment rate across US regions from different income groups, and investigates mechanisms through proportion of skilled workers. Automation, measured by both robotic penetration and ICT trade volumes, is replacing labour force. Exploiting variations across US commuting zones, this study finds that employment reductions are significant and substantial in low and middle income areas, and rising income levels could cause insignificant employment responses. Leveraging shift-share IV strategies and generalised model specifications, further evidence suggests that a simple net job creation channel can explain these patterns. Specifically, displacement effects outweigh productivity effects in low income CZs with lower proportion of skilled labour, and job losses are larger in middle income CZs with concentration of routine occupations; job creations are complementing job destructions with growing income levels and higher skill shares. These technical changes are particularly significant in manufacturing sectors." (Author's abstract, IAB-Doku, © Springer-Verlag) ((en))
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Literaturhinweis
Digital Gender Gap: Schwerpunkt 2026 Künstliche Intelligenz (2026)
Zitatform
Jahn, Sandy, Carola Burkert, Katharina Diener & Britta Matthes (2026): Digital Gender Gap. Schwerpunkt 2026 Künstliche Intelligenz. Berlin, 20 S. DOI:10.48720/IAB.D21.2026
Abstract
"Künstliche Intelligenz wird immer mehr zur Schlüsselressource. Ihre Nutzung entscheidet zunehmend über Wettbewerbsfähigkeit, Beschäftigungschancen und gesellschaftliche Teilhabe – vergleichbar mit Alphabetisierung oder Internetzugang in früheren Transformationsphasen. Die Studie des IAB und der Initiative D 21 zeigt: Es besteht ein signifikanter Gender AI Gap. Frauen nutzen KI-Anwendungen seltener und weniger intensiv als Männer (rund 16 Prozentpunkte Unterschied in der Ausgangsbetrachtung). Wenn Unterschiede in Alter, Bildung, Einkommen, beruflichem Kontext sowie Kompetenzen und Einstellungen statistisch berücksichtigt werden, verringert sich die Lücke zwar – bleibt aber auch dann bestehen (rund 8 Prozentpunkte)." (Autorenreferat, IAB-Doku)
Weiterführende Informationen
Interview mit den Autorinnen im Online-Magazin IAB-Forum -
Literaturhinweis
Der Gender AI Gap: "KI wird zur Schlüsselressource - aber Männer und Frauen nutzen sie nicht gleich" (2026)
Zitatform
Keitel, Christiane; Katharina Diener, Britta Matthes, Sandy Jahn & Carola Burkert (interviewte Person) (2026): Der Gender AI Gap: "KI wird zur Schlüsselressource - aber Männer und Frauen nutzen sie nicht gleich". In: IAB-Forum H. 23.04.2026. DOI:10.48720/IAB.FOO.20260423.01
Abstract
"Mit der rasanten Verbreitung von Künstlicher Intelligenz in der Arbeitswelt entsteht eine neue Lücke zwischen den Geschlechtern: der Gender AI Gap. Dies zeigt eine aktuelle Studie des IAB, die in Zusammenarbeit mit der Initiative D21 entstanden ist, Deutschlands größtem gemeinnützigen Netzwerk für die digitale Gesellschaft. Der Studie zufolge nutzen Frauen KI deutlich seltener und weniger intensiv nutzen als Männer – selbst bei vergleichbaren Voraussetzungen. Warum das so ist, welche Rolle Netzwerke und Wahrnehmungen spielen, und an welchen Stellschrauben Politik und Betriebe jetzt ansetzen müssen, erläutern die Autorinnen der Studie im Interview." (Autorenreferat, IAB-Doku)
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Literaturhinweis
„Es geht nicht darum, was KI uns wegnehmen könnte, sondern welche Chancen entstehen“ (2026)
Zitatform
Keitel, Christiane; Britta Matthes & Katharina Grienberger (interviewte Person) (2026): „Es geht nicht darum, was KI uns wegnehmen könnte, sondern welche Chancen entstehen“. In: IAB-Forum H. 11.05.2026. DOI:10.48720/IAB.FOO.20260511.01
Abstract
"Der IAB-Job-Futuromat zeigt, welche beruflichen Tätigkeiten durch digitale Technologien und KI potenziell automatisierbar sind – und welche nicht. Im Interview erklären die Forscherinnen Britta Matthes und Katharina Grienberger, wie das Tool funktioniert, welche Berufe besonders betroffen sind und warum es bei der Berufswahl nicht um die Angst vor der Automatisierbarkeit, sondern vielmehr um Chancen gehen sollte." (Autorenreferat, IAB-Doku)
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Literaturhinweis
Strukturwandel in Thüringen: Digitalisierung. Mit einer Neuschätzung der Substituierbarkeitspotenziale (2026)
Kropp, Per; Fritzsche, Birgit; Theuer, Stefan;Zitatform
Kropp, Per, Stefan Theuer & Birgit Fritzsche (2026): Strukturwandel in Thüringen: Digitalisierung. Mit einer Neuschätzung der Substituierbarkeitspotenziale. (IAB-Regional. Berichte und Analysen aus dem Regionalen Forschungsnetz. IAB Sachsen-Anhalt-Thüringen 02/2026), Nürnberg, 42 S. DOI:10.48720/IAB.RESAT.2602
Abstract
"Die Arbeitswelt verändert sich in rasant. Technische Entwicklungen bei Software, Computer oder computergesteuerten Maschinen schaffen immer neue Anwendungsmöglichkeiten. Bislang waren insbesondere Routinetätigkeiten z. B. bei Helfertätigkeiten automatisierbar. Nun sind durch produktiv nutzbare KI-Technologie auch zunehmend nicht-routine-Tätigkeiten von Spezialisten und Experten betroffen. Im Vergleich zu Deutschland hatte Thüringen häufiger Berufe mit einem hohen Substituierbarkeitspotenzial. Das durchschnittliche Substituierbarkeitspotenzial über alle Berufe stieg bis 2016 rasant an, seitdem jedoch im geringeren Ausmaß. Sicherheitsberufe hatten 2019 mit rund 21 Prozentpunkten einen sehr hohen Anstieg, so wie zuletzt die IT- und naturwissenschaftlichen Dienstleistungsberufe mit rund 20 Prozentpunkten. Für diese Veränderungen konnten drei Faktoren identifiziert werden: die Veränderung der Substituierbarkeitspotenziale einzelner Berufe, innerberufliche Veränderungen wie bei den Kerntätigkeiten und der berufliche Strukturwandel. Für Männer und Frauen sind die Substituierbarkeitspotenziale seit 2013 ähnlich gestiegen, bei Männern allerdings von einem höheren Anfangsniveau. KI ersetzt dabei eher Tätigkeiten, die mehrheitlich von Frauen erledigt werden. Zwischen den verschiedenen Alterskohorten gibt es insgesamt kaum Unterschiede. Lediglich in zwei Berufssegmenten haben jüngere Beschäftigte ein höheres Substitutionspotenzial – bei Verkehrs- und Logistikberufen sowie bei den IT- und naturwissenschaftlichen Dienstleistungsberufen. Auch wenn sich einige Berufe durch Digitalisierung stark verändern führt das kaum zu Beschäftigungsverlusten. Für solche Berufe und für Regionen, in denen sie vermehrt vorkommen, können jedoch höhere Weiterbildungsbedarfe vermutet werden." (Autorenreferat, IAB-Doku)
Weiterführende Informationen
Online-Anhänge zu Substituierbarkeitspotenzialen in Thüringen (nicht barrierefrei) -
Literaturhinweis
Expertise (2025)
Autor, David; Thompson, Neil;Zitatform
Autor, David & Neil Thompson (2025): Expertise. In: Journal of the European Economic Association, Jg. 23, H. 4, S. 1203-1271. DOI:10.1093/jeea/jvaf023
Abstract
"When job tasks are automated, does this augment or diminish the value of labor in the tasks that remain? We argue the answer depends on whether removing tasks raises or reduces the expertise required for remaining non-automated tasks. Since the same task may be relatively expert in one occupation and inexpert in another, automation can simultaneously replace experts in some occupations while augmenting expertise in others. We propose a conceptual model of occupational task bundling that predicts that changing occupational expertise requirements have countervailing wage and employment effects: automation that decreases expertise requirements reduces wages but permits the entry of less expert workers; automation that raises requirements raises wages but reduces the set of qualified workers. We develop a novel, content-agnostic method for measuring job task expertise, and we use it to quantify changes in occupational expertise demands over four decades attributable to job task removal and addition. We document that automation has raised wages and reduced employment in occupations where it eliminated inexpert tasks, but lowered wages and increased employment in occupations where it eliminated expert tasks. These effects are distinct from—and in the case of employment,opposite to—the effects of changing task quantities. The expertise framework resolves the puzzle of why routine task automation has lowered employment but often raised wages in routine task-intensive occupations. It provides a general tool for analyzing how task automation and new task creation reshape the scarcity value of human expertise within and across occupations." (Author's abstract, IAB-Doku) ((en))
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Literaturhinweis
Robotic capital - skill complementarity (2025)
Zitatform
Battisti, Michele, Massimo Del Gatto, Antonio Francesco Gravina & Christopher F. Parmeter (2025): Robotic capital - skill complementarity. In: Macroeconomic Dynamics, Jg. 29, S. e54. DOI:10.1017/s1365100524000567
Abstract
"Relying upon an original (country-sector-year) measure of robotic capital (RK), we investigate the degree of complementarity/substitutability between robots and workers at different skill levels. We employ nonparametric methods to estimate elasticity of substitution patterns between RK and skilled/unskilled labor over the period 1995–2009. We show that: i) on average, RK exhibits less substitutability with skilled workers compared to unskilled workers, indicating a phenomenon of “RK-Skill complementarity”. This pattern holds in a global context characterized by significant heterogeneity; ii) the dynamic of “RK-Skill complementarity” has increased since the early 2000s; iii) the observed strengthening is more prominent in OECD countries, as opposed to non-OECD countries, and in the Manufacturing sector, compared to non-Manufacturing industries." (Author's abstract, IAB-Doku) ((en))
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Literaturhinweis
Automation and segmentation: Downgrading employment quality among the former “insiders” of Western European labour markets (2025)
Zitatform
Buzzelli, Gregorio (2025): Automation and segmentation: Downgrading employment quality among the former “insiders” of Western European labour markets. In: International Journal of Social Welfare, Jg. 34, H. 2. DOI:10.1111/ijsw.70011
Abstract
"The literature on labor market segmentation traditionally looks at servitisation as the main structural driver behind the rise of employment precariousness, overlooking another crucial engine of the knowledge-economy transition: the Information and Communication Technologies (ICT) revolution. This paper proposes a task-based approach to complement the skill-biased framework usually applied to labor market segmentation, investigating the correlation between occupational exposure to the risk of automation and low-quality employment. The empirical analysis, based on 14 countries sampled from ESS (2002–2018), shows a strong correlation between technological replaceability and low income across all of Western Europe, especially after the Great Recession, while its association with atypical employment is mainly driven by fixed-term contracts in Central and Southern Europe and by part-time arrangements in Anglo-Saxon and Scandinavian countries. Overall, a “recalibrated” dualisation emerges in Western European labor markets, characterized by the diffusion of low labor earnings and atypical contracts among mid-skill routine workers, besides the low-skill service precariat." (Author's abstract, IAB-Doku) ((en))
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Literaturhinweis
The Iceberg Index: Measuring Workforce Exposure Across the AI Economy (2025)
Chopra, Ayush; Bhattacharya, Santanu; Schwarze, Alice C.; Ahmad, Feroz; Balaprakash, Prasanna; Garg, Aditi; Salvador, DeAndrea; Wright, Teddy; Raskar, Ramesh; Paul, Ayan;Zitatform
Chopra, Ayush, Santanu Bhattacharya, DeAndrea Salvador, Ayan Paul, Teddy Wright, Aditi Garg, Feroz Ahmad, Alice C. Schwarze, Ramesh Raskar & Prasanna Balaprakash (2025): The Iceberg Index: Measuring Workforce Exposure Across the AI Economy. (arXiv papers), 21 S. DOI:10.48550/arXiv.2510.25137
Abstract
"Artificial Intelligence is reshaping America’s over $9.4 trillion labor market, with cascading effects that extend far beyond visible technology sectors. When AI automates quality control in automotive plants, consequences spread through logistics networks, supply chains, and local service economies. Yet traditional workforce metrics cannot capture these ripple effects: they measure employment outcomes after disruption occurs, not where AI capabilities overlap with human skills before adoption crystallizes. Project Iceberg addresses this gap using Large Population Models to simulate the human–AI labor market, representing 151 million workers as autonomous agents executing over 32,000 skills across 3,000 counties and interacting with thousands of AI tools. It introduces the Iceberg Index, a skills-centered metric that measures the wage value of skills AI systems can perform within each occupation. The Index captures technical exposure, where AI can perform occupational tasks, not displacement outcomes or adoption timelines. Analysis shows that visible AI adoption concentrated in computing and technology (2.2% of wage value, approximately $211 billion) represents only the tip of the iceberg. Technical capability extends far below the surface through cognitive automation spanning administrative, financial, and professional services (11.7%, approximately $1.2 trillion). This exposure is fivefold larger and geographically distributed across all states rather than confined to coastal hubs. Traditional indicators such as GDP, income, and unemployment explain less than 5% of this skills-based variation, underscoring why new indices are needed to capture exposure in the AI economy. By simulating how capabilities may spread under alternative scenarios, Project Iceberg enables policymakers and business leaders to identify exposure hotspots, prioritize training and infrastructure investments, and test interventions before committing billions to implementation. Iceberg is built with the AgentTorch framework." (Author's abstract, IAB-Doku) ((en))
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Literaturhinweis
How do structural trends affect labour market shortages and mismatch? (2025)
Zitatform
Dorville, Yann, Francesco Filippucci & Luca Marcolin (2025): How do structural trends affect labour market shortages and mismatch? (OECD productivity working papers 38), Paris, 63 S. DOI:10.1787/acfb5c31-en
Abstract
"This paper examines how AI and digital technology diffusion, the green transition, globalisation and population ageing jointly affect labour market tightness across 26 OECD countries and 34 sectors. It finds that digitalisation and decarbonisation increase tightness, while ageing does so only over time. Import competition and labour-substituting AI diffusion, conversely, reduce shortages." (Author's abstract, IAB-Doku) ((en))
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Literaturhinweis
The Impact of a New Workplace Technology on Employees (2025)
Zitatform
Giebel, Marek & Alexander Lammers (2025): The Impact of a New Workplace Technology on Employees. In: Oxford Bulletin of Economics and Statistics, Jg. 87, H. 5, S. 1003-1024. DOI:10.1111/obes.12674
Abstract
"How does the implementation of a new technology affect workers? Using detailed worker-level data for Germany, we analyse the impact of new technologies on non-monetary working conditions such as overtime, training and perceived labor intensity. We show that the strongest effects arise in the first year of their implementation. These effects diminish after the introduction period. We further provide evidence that the impact of technology adoption varies across diverse occupational and industrial contexts. Workers in occupations with a higher task substitution potential show stronger increases in overtime, training measures and labor intensity. Analyzing industry characteristics, we find that employees exposed to a new technology react more strongly in industries with higher business dynamics in terms of organisational capital and R&D investment. Extending these considerations to information and communication technology (ICT) usage, we show that new technologies exert stronger effects in industries with high investment in ICT equipment or low investment in software." (Author's abstract, IAB-Doku) ((en))
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Literaturhinweis
A technological construction of society: Comparing GPT-4 and human respondents for occupational evaluation in the UK (2025)
Zitatform
Gmyrek, Pawel, Christoph Lutz & Gemma Newlands (2025): A technological construction of society: Comparing GPT-4 and human respondents for occupational evaluation in the UK. In: BJIR, Jg. 63, H. 1, S. 180-208. DOI:10.1111/bjir.12840
Abstract
"Despite initial research about the biases and perceptions of large language models (LLMs), we lack evidence on how LLMs evaluate occupations, especially in comparison to human evaluators. In this paper, we present a systematic comparison of occupational evaluations by GPT-4 with those from an in-depth, high-quality and recent human respondents survey in the UK. Covering the full ISCO-08 occupational landscape, with 580 occupations and two distinct metrics (prestige and social value), our findings indicate that GPT-4 and human scores are highly correlated across all ISCO-08 major groups. At the same time, GPT-4 substantially under- or overestimates the occupational prestige and social value of many occupations, particularly for emerging digital and stigmatized or illicit occupations. Our analyses show both the potential and risk of using LLM-generated data for sociological and occupational research. We also discuss the policy implications of our findings for the integration of LLM tools into the world of work." (Author's abstract, IAB-Doku, Published by arrangement with John Wiley & Sons) ((en))
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Literaturhinweis
Generative AI and jobs: a refined global index of occupational exposure (2025)
Gmyrek, Pawel ; Troszyński, Marek; Berg, Janine ; Kamiński, Karol; Nafradi, Balint ; Konopczyński, Filip; Rosłaniec, Konrad; Ładna, Agnieszka;Zitatform
Gmyrek, Pawel, Janine Berg, Karol Kamiński, Filip Konopczyński, Agnieszka Ładna, Balint Nafradi, Konrad Rosłaniec & Marek Troszyński (2025): Generative AI and jobs. A refined global index of occupational exposure. (ILO working paper / International Labour Organization 140), Geneva, 72 S. DOI:10.54394/hetp0387
Abstract
"This study updates the ILO’s 2023 Global Index of Occupational Exposure to Generative AI (GenAI), incorporating recent advances in the technology and increasing user familiarity with GenAI tools. Using a representative sample from the 29,753 tasks in the Polish occupational classification system and a survey of 1,640 people employed in each 1-digit ISCO-08 groups, we collect 52,558 data points regarding perceive potential of automation for 2,861 tasks. We then compare this input with a survey and several rounds of Delphi-style discussions among a smaller group of international experts. Based on this process, we create a repository of knowledge about task automation that goes beyond national specificities and use it to develop an AI assistant able to predict scores for tasks in the technical documentation of ISCO-08. Our 2025 scores are presented in a revised framework of four progressively increasing exposure gradients, with a new set of global estimates of employment shares exposed to GenAI. Clerical occupations continue to have the highest exposure levels. Additionally, some strongly digitized occupations have increased exposure, highlighting the expanding abilities of GenAI regarding specialized tasks in professional and technical roles. Globally, one in four workers are in an occupation with some GenAI exposure. 3.3% of global employment falls into the highest exposure category, albeit with significant differences between female (4.7%) and male employment (2.4%). These differences increase with countries’ income (9.6% female vs 3.5% male in Gradient 4in HICs), and so does the overall exposure (11% of total employment in LICs vs 34% in HICs). As most occupations consist of tasks that require human input, transformation of jobs is the most likely impact of GenAI. Linking our refined index with national micro data enables precise projections of such transformations, offering a foundation for social dialogue and targeted policy responses to manage the transition." (Author's abstract, IAB-Doku) ((en))
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Literaturhinweis
Robots vs. Workers: Evidence From a Meta‐Analysis (2025)
Zitatform
Guarascio, Dario, Alessandro Piccirillo & Jelena Reljic (2025): Robots vs. Workers: Evidence From a Meta‐Analysis. In: Journal of Economic Surveys, Jg. 39, H. 5, S. 2254-2271. DOI:10.1111/joes.12699
Abstract
"This study conducts a meta-analysis to assess the effects of robotization on employment and wages, synthesizing the evidence from 33 studies (644 estimates) on employment and a subset of 19 studies (195 estimates) on wages. The results challenge the alarmist narrative about the risk of widespread technological unemployment, suggesting that the overall relationship between robotization and employment or wages is minimal. However, the effects are far from uniform, with adverse outcomes observed in specific contexts, such as the United States, manufacturing sectors, and middle-skilled occupations. The analysis also identifies a publication bias favoring negative wage effects, though correcting for this bias confirms the negligible impact of robotization." (Author's abstract, IAB-Doku) ((en))
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Literaturhinweis
Demographic change, secular stagnation, and inequality: automation as a blessing? (2025)
Zitatform
Jacobs, Arthur & Freddy Heylen (2025): Demographic change, secular stagnation, and inequality: automation as a blessing? In: Journal of demographic economics, Jg. 91, H. 4, S. 508-548. DOI:10.1017/dem.2024.10
Abstract
"We study whether the increased adoption of available automation technologies allows economies to avoid the negative effect of aging on per capita output. We develop a quantitative theory in which firms choose to which extent they automate in response to a declining workforce and rising old-age dependency. An important element in our model is the integration of two capital types: automation capital that acts as a substitute to human labor, and traditional capital that is a complement to labor. Empirically, our model's predictions largely match data regarding automation (robotization) density across OECD countries. Simulating the model, we find that aging-induced automation only partially compensates the negative growth effect of aging in the absence of technical progress in automation technology. One reason is that automated tasks are no perfect substitutes for non-automated tasks. A second reason is that automation raises the interest rate and thus inhibits positive behavioral reactions to aging (later retirement and investment in human capital). Moreover, increased automation generates a falling net labor share of income and rising welfare inequality. We evaluate alternative policy responses to cope with this inequality." (Author's abstract, IAB-Doku) ((en))
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Literaturhinweis
Digitalisierung der Arbeitswelt: Durch künstliche Intelligenz sind inzwischen auch viele Expertentätigkeiten ersetzbar (2025)
Kuhn, Sarah; Seibert, Holger;Zitatform
Kuhn, Sarah & Holger Seibert (2025): Digitalisierung der Arbeitswelt: Durch künstliche Intelligenz sind inzwischen auch viele Expertentätigkeiten ersetzbar. (IAB-Regional. Berichte und Analysen aus dem Regionalen Forschungsnetz. IAB Berlin-Brandenburg 01/2025), 34 S. DOI:10.48720/IAB.REBB.2501
Abstract
"Durch neue digitale Technologien verändert sich der deutsche Arbeitsmarkt. Dies gilt besonders für das Ausmaß, in dem Berufe aktuell potenziell durch den Einsatz von Computern oder computergesteuerten Maschinen ersetzbar sind, dem so genannten Substituierbarkeitspotenzial. Es beschreibt, welcher Anteil an Tätigkeiten in einem Beruf schon heute durch den Einsatz moderner Technologien ersetzt werden könnte. Nach wie vor ist zwar das Substituierbarkeitspotenzial bei den Helfer*innen- und Fachkraftberufen am höchsten. Am stärksten gestiegen ist das Potenzial jedoch bei den Expert*innenberufen (u. a. durch generative Künstliche Intelligenz). Besonders bei den IT- und naturwissenschaftlichen Dienstleistungsberufen sind hohe Zuwachsraten zwischen 2019 und 2022 zu verzeichnen. Der vorliegende Beitrag fokussiert sich auf den Arbeitsmarkt in Brandenburg und Berlin. Wichtig zu betonen ist, dass es hier um Potenziale technischer Ersetzbarkeit geht. Ob und inwiefern die technischen Möglichkeiten auch tatsächlich umgesetzt werden, steht nicht fest. Es kann Gründe geben, die gegen eine tatsächliche Substituierung sprechen, beispielsweise weil eine Umstellung zu komplex wäre oder ethische Bedenken dem entgegenstehen. Unstrittig ist jedoch, dass auf der einen Seite einige Tätigkeiten durch die Digitalisierung wegfallen bzw. automatisiert werden, andererseits aber auch neue Tätigkeiten und Berufe entstehen. Daher kann ein hohes Substituierungspotenzial als Indikator für einen Wandel der Arbeitswelt gesehen werden." (Autorenreferat, IAB-Doku)
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Literaturhinweis
Digitale Ersetzbarkeit im stationären Einzelhandel und im Onlinehandel: Gastbeitrag (2025)
Kuhn, Sarah; Seibert, Holger;Zitatform
Kuhn, Sarah & Holger Seibert (2025): Digitale Ersetzbarkeit im stationären Einzelhandel und im Onlinehandel. Gastbeitrag. In: ArbeitGestalten Beratungsgesellschaft mbH (Hrsg.) (2025): Kassensturz. Daten, Fakten und Erfahrungen aus der Arbeitswelt des Berliner Einzelhandels, S. 29-31, 2025-09-30.
Abstract
"Diese Analyse zeigt, dass nicht alle Beschäftigten im stationären Einzelhandel und im Onlinehandel gleichermaßen von der digitalen Transformation betroffen sind bzw. sein werden. Wichtig zu betonen ist, dass es hier um Potenziale technischer Ersetzbarkeit geht. Ob und inwiefern die technischen Möglichkeiten auch tatsächlich umgesetzt werden, hängt von verschiedenen Faktoren ab. Es kann Gründe geben, die gegen eine tatsächliche Substituierung sprechen, beispielsweise weil eine Umstellung zu komplex wäre oder ethische Bedenken dem entgegenstehen. Unstrittig ist jedoch, dass auf der einen Seite einige Tätigkeiten durch die Digitalisierung wegfallen bzw. automatisiert werden, andererseits aber auch neue Tätigkeiten und Berufe entstehen. Daher kann ein hohes Substituierungspotenzial als Indikator für einen Wandel der Arbeitswelt gesehen werden." (Autorenreferat, IAB-Doku)
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Literaturhinweis
Impact of robots and artificial intelligence on labor and skill demand: evidence from the UK (2025)
Zitatform
Lábaj, Martin, Tomáš Oleš & Gabriel Procházka (2025): Impact of robots and artificial intelligence on labor and skill demand: evidence from the UK. In: Eurasian business review, Jg. 15, H. 4, S. 953-1001. DOI:10.1007/s40821-025-00314-w
Abstract
"Over the past four decades, automation technologies have replaced routine tasks performed by medium-skilled workers, and contributed to increased labor market polarization. With the advent of artificial intelligence, this dynamic may have shifted, extending task substitution to non-routine tasks performed by high-skilled workers. Using textual analysis and descriptions of technology found in patent texts, we construct novel occupational exposures to robot and artificial intelligence technologies. These occupational exposures are then used to analyze changes in labor and skill demand over the last decade in the United Kingdom. We find that the middle part of the income distribution is primarily exposed to robot technology, while exposure to artificial intelligence increases monotonically across income percentiles. Second, we find that exposure to robots is strongest among high school dropouts and declines monotonically with education, while artificial intelligence automation has a limited impact on the same workers, with a pronounced exposure among college graduates. Third, our findings suggest asymmetric effects of automation technologies across skill groups. Robot automation reduces demand for low-skilled workers, while AI technology shifts demand away from high-skilled workers, with the direct effects consistently negative despite the presence of several compensating mechanisms. Fourth, despite significant effects on wage bill, we find no robust relationship between automation exposure and changes in the employment-to-population ratio. Finally, a joint estimation of the effects of robot and AI automation shows that robot automation is positively associated with an increase in demand for skilled workers, while AI automation is weakly associated with a decrease in demand for skilled workers." (Author's abstract, IAB-Doku) ((en))
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Literaturhinweis
Wie Roboter die betriebliche Beschäftigungsstruktur verändern (2025)
Zitatform
Müller, Steffen & Verena Plümpe (2025): Wie Roboter die betriebliche Beschäftigungsstruktur verändern. In: Wirtschaft im Wandel, Jg. 31, H. 1, S. 10-13. DOI:10.18717/wwfyns-ep75
Abstract
"Der Einsatz von Robotern verändert die Arbeitswelt grundlegend – doch welche spezifischen Effekte hat dies auf die Beschäftigungsstruktur? Unsere Analyse untersucht die Folgen des Robotereinsatzes anhand neuartiger Mikrodaten aus deutschen Industriebetrieben. Diese Daten verknüpfen Informationen zum Robotereinsatz mit Sozialversicherungsdaten und detaillierten Angaben zu Arbeitsaufgaben. Auf Basis eines theoretischen Modells leiten wir insbesondere positive Beschäftigungseffekte für Berufe mit wenig repetitiven, programmierbaren Aufgaben ab, sowie für jüngere Arbeitskräfte, weil diese sich besser an technologische Veränderungen anpassen können. Die empirische, mikroökonomische Analyse des Robotereinsatzes auf Betriebsebene bestätigt diese Vorhersagen: Die Beschäftigung steigt für Techniker, Ingenieure und Manager und junge Beschäftigte, während sie bei geringqualifizierten Routineberufen sowie bei Älteren stagniert. Zudem steigt die Fluktuation bei geringqualifizierten Arbeitskräften signifikant an. Unsere Ergebnisse verdeutlichen, dass der Verdrängungseffekt von Robotern berufsabhängig ist, während junge Arbeitskräfte neue Tätigkeiten übernehmen." (Autorenreferat, IAB-Doku)
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Literaturhinweis
Job polarisation OR AND upgrading! Recent evidence from Europe (2025)
Zitatform
Otoiu, Adrian, Emilia Titan, Dorel Paraschiv & Daniela-Ioana Manea (2025): Job polarisation OR AND upgrading! Recent evidence from Europe. In: The Economic and Labour Relations Review, Jg. 36, H. 1, S. 257-270. DOI:10.1017/elr.2025.12
Abstract
"Based on recent evidence from Europe, the paper shows that polarization and upgrading are not mutually exclusive trends, but rather, simultaneously defined recent structural changes in employment. The results show that (a) the occupational structure shows a general shift towards high-skill jobs, (b) the prevailing upgrading patterns are often accompanied by job polarization, as the share of middle-skill jobs declines in most cases, and (c) while low-skill employment often outperforms middle-skill jobs, it has tended to decline. In addition to analysing trends for EU-27 countries with different levels of development for the latest available time periods, the article also shows that occupational upgrading patterns are rather intertwined with job polarisation and are compatible with both the Skill-Biased Technical Change (SBTC) and Routine-Biaszd Technical Change (RBTC) hypotheses. The employment dynamics of low-skill workers are uncertain, as they are not fully compatible with any theoretical model, thus pointing to the need for a finer understanding of changes in occupational structure, and the extent to which both polarization and upgrading are shaping the evolution of the labor force structure under the impact of (ongoing) technological change." (Author's abstract, IAB-Doku) ((en))
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Literaturhinweis
European regional employment and exposure to labour-saving technical change: results from a direct text similarity measure (2025)
Zitatform
Riccio, Federico, Jacopo Staccioli & Maria Enrica Virgillito (2025): European regional employment and exposure to labour-saving technical change: results from a direct text similarity measure. (LEM working paper series / Laboratory of Economics and Management 2025/19), Pisa, 34 S. DOI:10.57838/sssa/02jp-b197
Abstract
"Does labor-saving technological change pose a threat to European employment, and if so, to what extent? This study investigates the degree of employment exposure to labor-saving technological change across NUTS-2 regions in Europe. We construct a cross-walked metric between the SOC and ISCO classification systems to adapt the direct measure of occupational exposure developed by Montobbio et al. (2024) for the US economy and apply it to the European context. This methodology enables us to generate detailed insights into the exposure of European occupations by leveraging the similarity rankings between technological classifications in the USPTO (CPCs) and task descriptions. To evaluate the transmission from occupational exposure to employment outcomes, we utilise data from the European Structure of Earnings Survey (EU-SES), thereby constructing exposure indices at both sectoral and regional levels. Finally, we examine the industrial and geographical diffusion of labor-saving technological change in recent years and provide robust econometric evidence indicating that low-wage regions, as well as deindustrialising areas heavily integrated into global value chains, are disproportionately vulnerable to the threat of substitution." (Author's abstract, IAB-Doku) ((en))
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Literaturhinweis
The hidden costs of technological change: investigating pathways through which highly automatable jobs undermine workers’ health in Germany (2025)
Zitatform
Vasiakina, Mariia & Christian Dudel (2025): The hidden costs of technological change: investigating pathways through which highly automatable jobs undermine workers’ health in Germany. (MPIDR working paper / Max Planck Institute for Demographic Research 2025-032), Rostock, 29 S. DOI:10.4054/mpidr-wp-2025-032
Abstract
"The ongoing economic transformation driven by automation has significant social implications, particularly for the health and well-being of workers who face the risk of job displacement and the pressure to acquire new skills and qualifications. However, the specific pathways through which exposure to automation risk affects health outcomes remain poorly understood, and the relative contribution of each potential mechanism is still unclear. In this study, we examine the nature of the relationship between high workplace exposure to automation risk and a range of subjective health outcomes – including self-reported health, anxiety, and both physical and mental component summary scores from the SF-12 Health Survey – among workers in Germany. Using data from the German Socio-EconomicPanel (SOEP) linked with administrative records from the Occupational Panel for Germany (2014–2022), we apply the Karlson-Holm-Breen (KHB) mediation analysis method to assess whether broader indicators of economic uncertainty, alongside automation-specific factors, mediate the relationship between high automation risk and workers’ health. Our results indicate that the negative impact of high automation risk on health in Germany primarily operates through indirect pathways (related to mediators) for both genders, with the exception of physical health among male workers, where a direct negative effect is also evident. Economic concerns – particularly job insecurity and worries about one’s future financial situation – emerge as more significant mediators than automation-specific factors. Overall, our findings suggest that the mechanisms linking high automation risk to health are gender- and context-sensitive, and are shaped by broader economic conditions and workplace environments." (Author's abstract, IAB-Doku) ((en))
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Literaturhinweis
The Interactions Between Digitalization, Innovation and Employment in European Companies: Insights from a Latent Class Analysis (2025)
Zitatform
Vodă, Adina-Maria, Mihai Ciobotea, Doina Badea, Monica Roman & Marian Stan (2025): The Interactions Between Digitalization, Innovation and Employment in European Companies: Insights from a Latent Class Analysis. In: Economies, Jg. 13, H. 4. DOI:10.3390/economies13040104
Abstract
"There is increasing concern regarding the association between technological change and jobs. This study explores how different patterns of digitalization and innovation relate to job creation in European companies. We use data from the European Company Survey 2019 collected by Eurofound and Cedefop. We apply Latent Class Analysis (LCA) to identify the typologies of companies, mainly based on their level of technology adoption, innovation practices and employment patterns. We showcase four distinct classes of companies: moderate adoption of digital technology and strong international orientation, traditional and local, medium digitalization, process innovative with local focus and digital leaders and innovators, with specific patterns regarding digitalization, innovation and job creation. The digital leaders and innovators class revealed a high level of digitalization and innovation and maintained stable employment levels, with increased investments in staff training and tendency towards automation. Conversely, less-digitalized traditional companies are more susceptible to stagnation or employment decline. In general, the employment outlook is stable, without significant employment growth, signaling the need for balanced investments in innovation and digitalization that stimulate more and better jobs. This is the first study to apply LCA to explore complex relationships between digitalization, innovation, foreign trade, training investments and employment trends and offers fresh insights into company views towards employment in the digital era." (Author's abstract, IAB-Doku) ((en))
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Literaturhinweis
Artificial Intelligence and Technological Unemployment (2025)
Zitatform
Wang, Ping & Tsz-Nga Wong (2025): Artificial Intelligence and Technological Unemployment. (NBER working paper / National Bureau of Economic Research 33867), Cambridge, Mass, 53 S.
Abstract
"How large is the impact of artificial intelligence (AI) on labor productivity and unemployment? This paper introduces a labor-search model of technological unemployment, conceptualizing the generative aspect of AI as a learning-by-using technology. AI capability improves through machine learning from workers and in turn enhances their labor productivity, but eventually displaces workers if wage renegotiation fails. Three distinct equilibria emerge: no AI, some AI with higher unemployment, or unbounded AI with sustained endogenous growth and little impact on employment. By calibrating to the U.S. data, our model predicts more than threefold improvements in productivity in some-AI steady state, alongside a long-run employment loss of 23%, with half this loss occurring over the initial five-year transition. Plausible change in parameter values could lead to global and local indeterminacy. The mechanism highlights the considerable uncertainty of AI's impacts in the presence of labor-market frictions. In the unbounded-AI equilibrium, technological unemployment would not occur. We further show that equilibria are inefficient despite adherence to the Hosios condition. By improving job-finding rate and labor productivity, the optimal subsidy to jobs facing the replacement risk of AI can generate a welfare gain from 26.6% in the short run to over 50% in the long run." (Author's abstract, IAB-Doku) ((en))
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Literaturhinweis
Education pathways to mitigate automation anxiety: skill development as key for job satisfaction in the age of machines replacing human (2025)
Zitatform
Yuan, Bocong, Jiannan Li & Hairong Zhao (2025): Education pathways to mitigate automation anxiety: skill development as key for job satisfaction in the age of machines replacing human. In: International Journal of Manpower, Jg. 46, H. 9, S. 1676-1698. DOI:10.1108/ijm-02-2024-0093
Abstract
"Purpose: The application of intelligent machine in the workplace has led to increasing concern about technically induced unemployment. This study is to investigate the mechanism of how such risk affects the job satisfaction. Design/methodology/approach: We use the secondary data from SHARE (wave 8) and a longitudinal survey to examine the influence mechanism of how intelligent machine job substitution risk affects job satisfaction. Findings: Results show that intelligent machine job substitution risk has a negative impact on job satisfaction. Besides, skill development opportunity mediates the negative relation between intelligent machine job substitution risk and job satisfaction. Further, work support buffers the negative relation between intelligent machine job substitution risk and skill development opportunity, while enhancing the positive relation between skill development opportunity and job satisfaction. Originality/value: This study is the first to examine the mediation role of skill development opportunity in the relation between the intelligent machine job substitution risk and job satisfaction. Also, this study is the first to explore the role of work support in the above relation. This study enriches relevant research regarding the intelligent machine application in workplace and provides important insights for organization management." (Author's abstract, IAB-Doku, © Emerald Group) ((en))
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Literaturhinweis
Can inequality and intergenerational upward mobility coexist: the impact of skill-biased technological change (2025)
Zou, Wei; Ma, Ruiqi; Zheng, Liming;Zitatform
Zou, Wei, Liming Zheng & Ruiqi Ma (2025): Can inequality and intergenerational upward mobility coexist: the impact of skill-biased technological change. In: Applied Economics Letters, S. 1-8. DOI:10.1080/13504851.2025.2550571
Abstract
"We extend the Maoz and Moav (1999) model by introducing a CES production function to examine the impact of skill-biased technological change (SBTC) on inequality and intergenerational upward mobility. Our study shows that (1) when the production function shifts from a Cobb-Douglas form to a CES form, high-skilled workers rapidly converge to a unique steady state; (2) while SBTC exacerbates inequality, it raises the steady-state number of high-skilled workers, establishing a positive correlation between inequality and intergenerational upward mobility." (Author's abstract, IAB-Doku) ((en))
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Literaturhinweis
New technology and workers’ perceived impact on job quality: Does labor organization matter? (2025)
Zitatform
ten Berge, Jannes & Fabian Dekker (2025): New technology and workers’ perceived impact on job quality: Does labor organization matter? In: Economic and Industrial Democracy, Jg. 46, H. 2, S. 619-654. DOI:10.1177/0143831x241265911
Abstract
"There is an emerging literature focusing on the impact of technological change on work quality. This study contributes to the literature by examining (1) workers’ expectations regarding the effect of technological change on perceived job insecurity, as well as physical and psychological job demands, and (2) how these expectations are shaped by the degree of labor organization within countries. The article uses cross-national data for 25 OECD countries. It is found that labor organization decreases perceived levels of job insecurity related to technological change, but also lowers workers’ expectations of technology improving the quality of their work. These findings may indicate that in environments where technological change is less strongly moderated by organized labor, workers put greater emphasis on technology as a driver of (short-term) work changes. Alternatively, these findings may signal a lack of ‘worker power’ of organized labor to enforce technologies that improve the quality of employment." (Author's abstract, IAB-Doku) ((en))
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Literaturhinweis
Mirror, Mirror on the Wall: Which Jobs Will AI Replace After All?: A New Index of Occupational Exposure (2024)
Benítez, Miguel; Parrado, Eric;Zitatform
Benítez, Miguel & Eric Parrado (2024): Mirror, Mirror on the Wall: Which Jobs Will AI Replace After All?: A New Index of Occupational Exposure. (Working papers / Inter-American Development Bank 13696), Washington, DC, 33 S. DOI:10.1823
Abstract
"This paper introduces the AI Generated Index of Occupational Exposure (GENOE), a novel measure quantifying the potential impact of artificial intelligence on occupations and their associated tasks. Our methodology employs synthetic AI surveys, leveraging large language models to conduct expert-like assessments. This approach allows for a more comprehensive evaluation of job replacement likelihood, minimizing human bias and reducing assumptions about the mechanisms through which AI innovations could replace job tasks and skills. The index not only considers task automation, but also contextual factors such as social and ethical considerations and regulatory constraints that may affect the likelihood of replacement. Our findings indicate that the average likelihood of job replacement is estimated at 0.28 in the next year, increasing to 0.38 and 0.44 over the next five and ten years, respectively. To validate our methodology, we successfully replicate other measures of occupational exposure that rely on human expert assessments, substituting these with AI-based evaluations. The GENOE index provides valuable insights for policymakers, employers, and workers, offering a data-driven foundation for strategic workforce planning and adaptation in the face of rapid technological change." (Author's abstract, IAB-Doku) ((en))
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Literaturhinweis
Rolle der Künstlichen Intelligenz in der Elektro- und Informationstechnik: VDE „Studium, Beruf und Gesellschaft“ (2024)
Bockelmann, Carsten; Zeller, Niclas; Lehnhoff, Sebastian; Hanuschkin, Alexander; Wübben, Dirk; Klischat, Cosima; Haja, Andreas; Magdowski, Mathias; Van, Hoai My; Matthes, Britta ; Dudek, Damian; Rigoll, Gerhard; Lehnhoff, Sebastian; Schanz, Michael;Zitatform
Bockelmann, Carsten, Damian Dudek, Andreas Haja, Alexander Hanuschkin, Cosima Klischat, Sebastian Lehnhoff, Mathias Magdowski, Britta Matthes, Gerhard Rigoll, Michael Schanz, Hoai My Van, Dirk Wübben & Niclas Zeller (2024): Rolle der Künstlichen Intelligenz in der Elektro- und Informationstechnik. VDE „Studium, Beruf und Gesellschaft“. 43 S.
Abstract
"Dieses Papier zeigt, wo bereits heute in den verschiedenen Fachgebieten der Elektro- und Informationstechnik die Künstliche Intelligenz eine wichtige und insbesondere selbstverständliche Rolle spielt. Dabei besteht eine wechselseitige Beziehung: KI ist nicht nur Mittel zum Zweck – mächtiges Werkzeug zum Lösen elektrotechnischer Aufgabenstellungen sowie Helferlein im Arbeitsalltag – sondern auch Gegenstand der elektrotechnischen Forschung bzw. wird durch elektrotechnische Verfahren z.B. in der Nachrichtentechnik unterstützt. An vielen Stellen kommt die KI (noch) an ihre Grenzen. Wir zeigen, wo diese liegen und geben Ausblicke. Einen weiteren Schwerpunkt bildet die Auseinandersetzung mit dem Thema „KI in der elektrotechnischen Lehre“ sowie die Nutzung von Large Language Models im Studium und beim wissenschaftlichen Arbeiten. Wir lernen außerdem den Unterschied zwischen Data Scientist und Elektroingenieur in der Nachrichtentechnik kennen. Auch die Frage „Wird die KI Elektroingenieurinnen und Elektroingenieure ersetzen?“ klären wir hier mit Hilfe einer einschlägigen Berufsforscherin auf." (Autorenreferat, IAB-Doku)
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Literaturhinweis
Robot Imports and Firm-Level Outcomes (2024)
Zitatform
Bonfiglioli, Alessandra, Rosario Crinò, Harald Fadinger & Gino Gancia (2024): Robot Imports and Firm-Level Outcomes. In: The Economic Journal, Jg. 134, H. 664, S. 3428-3444. DOI:10.1093/ej/ueae055
Abstract
"We use French data over the 1994-2013 period to study how imports of industrial robots affect firm-level outcomes. Guided by a simple model, we develop a novel empirical strategy to identify the causal effects of robot adoption. Our results suggest that, while demand shocks generate a positive correlation between robot imports and employment at the firm level, exogenous exposure to automation leads to job losses. We also find that robot exposure increases labor productivity and some evidence that it may raise the relative demand for high-skill professions." (Author's abstract, IAB-Doku) ((en))
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Literaturhinweis
Digitalisierung der Arbeitswelt: Mögliche Auswirkungen auf den Arbeitsmarkt in Hessen – Aktualisierung 2022 (2024)
Zitatform
Burkert, Carola, Annette Röhrig & Daniel Jahn (2024): Digitalisierung der Arbeitswelt: Mögliche Auswirkungen auf den Arbeitsmarkt in Hessen – Aktualisierung 2022. (IAB-Regional. Berichte und Analysen aus dem Regionalen Forschungsnetz. IAB Hessen 02/2024), Nürnberg, 26 S. DOI:10.48720/IAB.REH.2402
Abstract
"Der Einsatz von neuen digitalen Technologien wird die Arbeitswelt verändern, und auch – oder gerade – Hochqualifizierte werden betroffen sein. Das Substituierbarkeitspotenzial gibt an, in welchem Ausmaß Berufe gegenwärtig potenziell durch den Einsatz von Computern oder computergesteuerten Maschinen ersetzbar sind. Es entspricht dem Anteil an Tätigkeiten in einem Beruf, die schon heute durch den Einsatz moderner Technologien ersetzt werden könnten. Die vorliegende Studie zeigt, wie sehr sich die Arbeitswelt bereits verändert hat. Allerdings ist zu betonen, dass die Studie das technisch Mögliche der Ersetzbarkeit des Menschen durch die Maschine untersucht. Ob dies am Ende wirklich so eintrifft, steht nicht fest. Sicher ist aber: Für Unternehmen und Beschäftigte wird vor allem die permanente Weiterqualifizierung bzw. lebenslanges Lernen noch mehr an Gewicht gewinnen. In diesem IAB-Regional präsentieren wir die neuen Werte des Substituierbarkeitspotenzials 2022 für Hessen anhand der Anforderungsniveaus und der Berufssegmente und stellen teilweise auch die Entwicklung von 2013 bis 2022 dar. Weiterhin betrachten wir die Betroffenheit von Auswirkungen des Einsatzes neuer Technologien in Hessen, indem wir die Anteile sozialversicherungspflichtig Beschäftigter in Berufen mit niedrigem, mittlerem und hohem Substituierbarkeitspotenzial analysieren und untersuchen den Zusammenhang zwischen Substituierbarkeitspotenzialen und Beschäftigungsentwicklung." (Autorenreferat, IAB-Doku)
Weiterführende Informationen
Datentool 2024 zum Substituierbarkeitspotenzial 2013 bis 2022 für Berufe in Hessen und in den hessischen Kreisen -
Literaturhinweis
Digitale und KI-Technologien verändern inzwischen verstärkt auch die Arbeitswelt von Frauen (2024)
Zitatform
Burkert, Carola, Katharina Grienberger, Britta Matthes & Annette Röhrig (2024): Digitale und KI-Technologien verändern inzwischen verstärkt auch die Arbeitswelt von Frauen. In: IAB-Forum – Grafik aktuell H. 06.09.2024, 2024-08-28. DOI:10.48720/IAB.FOO.GA.20240906.01
Abstract
"Durch die Digitalisierung und den Einsatz von KI-Technologien können immer mehr berufliche Tätigkeiten automatisiert werden. Dieser Anteil wird als Substituierbarkeitspotenzial bezeichnet. Immer mehr Beschäftigte arbeiten in Berufen mit einem hohen Substituierbarkeitspotenzial. Dabei verändert sich die Arbeitswelt der Frauen mittlerweile stärker als die der Männer." (Autorenreferat, IAB-Doku)
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Literaturhinweis
Spatial and Occupational Mobility of Workers Due to Automation (2024)
Zitatform
Burzyński, Michał (2024): Spatial and Occupational Mobility of Workers Due to Automation. (LISER working papers 2024-04), Esch-sur-Alzette, 52 S.
Abstract
"Automation of labor tasks is one of the most dynamic aspects of recent technological progress. This paper aims at improving our understanding of the way that automation affects labor markets, analyzing the example of European countries. The quantitative theoretical methodology proposed in this paper allows to focus on automation-induced migration of workers, occupation switching and income inequality. The key findings include that automation in the first two decades of the 21st century had a significant impact on job upgrading of native workers and generated gains in many local labor markets. Even though net migration of workers was attenuated due to convergence in incomes across European regions, mobility at occupation levels had a sizeable impact on transmitting welfare effects of automation." (Author's abstract, IAB-Doku) ((en))
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Literaturhinweis
Unemployment and the direction of technical change (2024)
Zitatform
Casey, Gregory (2024): Unemployment and the direction of technical change. In: European Economic Review, Jg. 168. DOI:10.1016/j.euroecorev.2024.104802
Abstract
"I construct and analyze a growth model in which technical change can increase unemployment. I first analyze the forces that deliver a constant steady state unemployment rate in this setting. Labor-saving technical change increases unemployment, which lowers wages and creates incentives for future investment in labor-using technologies. In the long run, this interaction generates a balanced growth path that is observationally equivalent to that of the standard neoclassical growth model, except that it also incorporates a positive steady state level of unemployment and a falling relative price of investment. I also study the effects of a permanent increase in the ability of R&D to improve labor-saving technologies. In the long run, this change leads to faster growth in output per worker and wages, but it also yields higher unemployment and a lower labor share of income. In the short run, this change exacerbates existing inefficiencies and slows economic growth." (Author's abstract, IAB-Doku, © 2024 Elsevier) ((en))
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Literaturhinweis
How Scary Is the Risk of Automation? Evidence from a Large Scale Survey Experiment (2024)
Zitatform
Cattaneo, Maria Alejandra, Christian Gschwendt & Stefan C. Wolter (2024): How Scary Is the Risk of Automation? Evidence from a Large Scale Survey Experiment. (IZA discussion paper / Forschungsinstitut zur Zukunft der Arbeit 17097), Bonn, 36 S.
Abstract
"Advances in technology have always reshaped labor markets. Automating human labor has lead to job losses and creation but most of all, for an increasing demand for highly skilled workers. However, emerging AI innovations like ChatGPT may reduce labor demand in high skilled occupations previously considered "safe" from automation. While initial studies suggest that individuals adjust their educational and career choices to mitigate automation risk, it is unknown what people would be willing to pay for a reduced automation risk. This study quantifies this value by assessing individuals' preferences for occupations in a discrete-choice experiment with almost 6'000 participants. The results show that survey respondents are willing to accept a salary reduction equivalent to almost 20 percent of the median annual gross wage to work in an occupation with a 10 percentage point lower risk of automation. Although the preferences are quite homogeneous, there are still some significant differences in willingness to pay between groups, with men, younger people, those with higher levels of education, and those with a higher risk tolerance showing a lower willingness to pay for lower automation risk." (Author's abstract, IAB-Doku) ((en))
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Literaturhinweis
Intellectualization and substitution elasticity of capital on the labour force in logistics enterprises: evidence from China and the United States (2024)
Zitatform
Chen, Xi, Xiang Wen Cai, Xu Ding, Le Song & Cheng Chen (2024): Intellectualization and substitution elasticity of capital on the labour force in logistics enterprises: evidence from China and the United States. In: Applied Economics Letters, Jg. 31, H. 5, S. 395-400. DOI:10.1080/13504851.2022.2136615
Abstract
"This paper addresses the substitution elasticity of capital on the labor force in the context of the development of intellectualization. Given the substitution of capital for labor, China's benchmark listed logistics companies are compared with an American company to discuss the evolution of capital - labor substitution. A large-scale intellectualization process began in 2017, and based on a variable elasticity of substitution, this paper creates an econometric model of substitution elasticity between capital and labor and its evolution between 2017 and 2021. The American logistics company UPS maintains a relatively high level of substitution elasticity, and Chinese logistics companies are quickly catching up. The substitution elasticity of capital on labor in Chinese enterprises trends upward year after year. In 2021, the capital - labor substitution elasticity of logistics enterprises in both countries showed considerable growth. The calculation model of substitution elasticity presented in this paper can be extended to different regions and industries to measure intelligent development levels and the relationship between capital and the labor force." (Author's abstract, IAB-Doku) ((en))
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Literaturhinweis
Who is Replaced by Robots? Robotization and the Risk of Unemployment for Different Types of Workers (2024)
Zitatform
Damelang, Andreas & Michael Otto (2024): Who is Replaced by Robots? Robotization and the Risk of Unemployment for Different Types of Workers. In: Work and occupations, Jg. 51, H. 2, S. 181-206. DOI:10.1177/07308884231162953
Abstract
"We study the effects of robotization on unemployment risk for different types of workers. We examine the extent to which robotization increases inequality at the skill level and at the occupational level using two theoretical frameworks: skill-biased technological change and task-biased technological change. Empirically, we combine worker-level data with information on actual investments in industrial robots. Zooming in on the German manufacturing industry, our multivariate results show that robotization affects different types of workers differently. We do not observe an increase in unemployment risk for low- and medium-skilled, but we find a considerably lower unemployment risk among high-skilled workers. Moreover, the unemployment risk is significantly higher in occupations with highly substitutable tasks, but only in industries that invest largely in robots." (Author's abstract, IAB-Doku, © SAGE) ((en))
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Literaturhinweis
Labor supply and automation innovation: Evidence from an allocation policy (2024)
Zitatform
Danzer, Alexander M., Carsten Feuerbaum & Fabian Gaessler (2024): Labor supply and automation innovation: Evidence from an allocation policy. In: Journal of Public Economics, Jg. 235. DOI:10.1016/j.jpubeco.2024.105136
Abstract
"Despite a longstanding interest in the potential substitution of labor and capital, limited empirical evidence exists regarding the causal relationship between labor supply and the development of labor-saving technologies. This study examines the impact of exogenous changes in regional labor supply on automation innovation by leveraging a German immigrant allocation policy during the 1990s and 2000s. The findings reveal that an increase in the low-skilled workforce reduces automation innovation, as measured by patents. This reduction is most pronounced for large firms within the manufacturing sector and primarily concerns process-related automation innovations. This suggests that the effect is channeled through changes in internal demand for automation innovation. Consistent with a labor scarcity mechanism, the effect is confined to tight labor markets." (Author's abstract, IAB-Doku, © 2024 Elsevier) ((en))
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Literaturhinweis
Wie bewältigen Regionen die digitale und ökologische Transformation von Wirtschaft und Arbeitsmarkt? (Podium) (2024)
Dauth, Wolfgang ; Solms, Anna; Grienberger, Katharina; Lehmer, Florian ; Moritz, Michael ; Müller, Steffen ; Fitzenberger, Bernd ; Plümpe, Verena; Falck, Oliver ; Bauer, Anja ; Sonnenburg, Anja; Janser, Markus ; Schneemann, Christian ; Diegmann, André ; Matthes, Britta ; Solms, Anna;Zitatform
Dauth, Wolfgang & Michael Moritz; Katharina Grienberger, Florian Lehmer, Steffen Müller, Bernd Fitzenberger, Verena Plümpe, Oliver Falck, Anja Bauer, Anja Sonnenburg, Markus Janser, Christian Schneemann, André Diegmann, Britta Matthes & Anna Solms (sonst. bet. Pers.) (2024): Wie bewältigen Regionen die digitale und ökologische Transformation von Wirtschaft und Arbeitsmarkt? (Podium). In: IAB-Forum H. 06.05.2024. DOI:10.48720/IAB.FOO.20240506.01
Abstract
"Was bedeuten die absehbaren Transformationsprozesse der kommenden Jahrzehnte auf regionaler Ebene und wie können sie gemeistert werden? Antworten auf diese Fragen gab der IWH/IAB-Workshop zur Arbeitsmarktpolitik, der in diesem Jahr erstmals am IAB in Nürnberg stattfand." (Autorenreferat, IAB-Doku)
Beteiligte aus dem IAB
Dauth, Wolfgang ; Grienberger, Katharina; Lehmer, Florian ; Moritz, Michael ; Fitzenberger, Bernd ; Janser, Markus ; Schneemann, Christian ; Diegmann, André ; Matthes, Britta ; -
Literaturhinweis
Who Is AI Replacing? The Impact of Generative AI on Online Freelancing Platforms (2024)
Zitatform
Demirci, Ozge, Jonas Hannane & Xinrong Zhu (2024): Who Is AI Replacing? The Impact of Generative AI on Online Freelancing Platforms. (CESifo working paper 11276), München, 22 S.
Abstract
"This paper studies the impact of Generative AI technologies on the demand for online freelancers using a large dataset from a leading global freelancing platform. We identify the types of jobs that are more affected by Generative AI and quantify the magnitude of the heterogeneous impact. Our findings indicate a 21% decrease in the number of job posts for automation-prone jobs related to writing and coding, compared to jobs requiring manual-intensive skills, within eight months after the introduction of ChatGPT. We show that the reduction in the number of job posts increases competition among freelancers while the remaining automation-prone jobs are of greater complexity and offer higher pay. We also find that the introduction of Image-generating AI technologies led to a 17% decrease in the number of job posts related to image creation. We use Google Trends to show that the more pronounced decline in the demand for freelancers within automation-prone jobs correlates with their higher public awareness of ChatGPT’s substitutability." (Author's abstract, IAB-Doku) ((en))
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Literaturhinweis
Training, Automation, and Wages: International Worker-Level Evidence (2024)
Zitatform
Falck, Oliver, Yuchen Guo, Christina Langer, Valentin Lindlacher & Simon Wiederhold (2024): Training, Automation, and Wages: International Worker-Level Evidence. (IZA discussion paper / Forschungsinstitut zur Zukunft der Arbeit 17503), Bonn, 72 S.
Abstract
"Job training is widely regarded as crucial for protecting workers from automation, yet there is a lack of empirical evidence to support this belief. Using internationally harmonized data from over 90,000 workers across 37 industrialized countries, we construct an individual-level measure of automation risk based on tasks performed at work. Our analysis reveals substantial within-occupation variation in automation risk, overlooked by existing occupation-level measures. To assess whether job training mitigates automation risk, we exploit within-occupation and within-industry variation. Additionally, we employ entropy balancing to re-weight workers without job training based on a rich set of background characteristics, including tested numeracy skills as a proxy for unobserved ability. We find that job training reduces workers' automation risk by 4.7 percentage points, equivalent to 10 percent of the average automation risk. The training-induced reduction in automation risk accounts for one-fifth of the wage returns to job training. Job training is effective in reducing automation risk and increasing wages across nearly all countries, underscoring the external validity of our findings. Women tend to benefit more from training than men, with the advantage becoming particularly pronounced at older ages." (Author's abstract, IAB-Doku) ((en))
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Literaturhinweis
On the Automation of Job Tasks: Occupational exposure to Artificial Intelligence and Software (2024)
Zitatform
Fregin, Marie-Christine, Theresa Koch, Verena Malfertheiner, Pelin Özgül & Michael Stops (2024): On the Automation of Job Tasks: Occupational exposure to Artificial Intelligence and Software. (ROA external reports / Researchcentrum voor Onderwijs en Arbeidsmarkt (Maastricht) 4 ai:conomics policybrief), Maastricht, 10 S.
Abstract
"While rapid advances in digital technologies transformed the occupational structures and workers‘ skill and task composition over the past decades, much less is known about how Artificial Intelligence technologies (AI) will shape future labour markets. As part of the “ai:conomics” project, we analyze the extent to which employees subject to social security contributions in Germany are potentially exposed to AI and software technology. Our results show that highly educated, high-income workers are most exposed to AI, while their exposure is lower to software. Overall, the findings suggest that given AI’s far-reaching potential to carry out different sets of tasks, these technologies are expected to impact workers across a wider skill and wage spectrum, which previous automation technologies had limited impact on." (Author's abstract, IAB-Doku) ((en))
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Literaturhinweis
Informationsbereitstellung zur Automatisierbarkeit von Berufen erhöht Weiterbildungsbereitschaft (2024)
Zitatform
Freundl, Vera, Philipp Lergetporer, Katharina Wedel & Katharina Werner (2024): Informationsbereitstellung zur Automatisierbarkeit von Berufen erhöht Weiterbildungsbereitschaft. In: Ifo-Schnelldienst, Jg. 77, H. 3, S. 39-43.
Abstract
"Beschäftige in Deutschland unterschätzen die Automatisierbarkeit ihres Berufs. Dies gilt vor allem für Beschäftigte in Berufen mit hoher Automatisierbarkeit, wie eine neue Studie von Lergetporer et al. (2023) zeigt. Die randomisierte Bereitstellung von Informationen über die tatsächliche Automatisierbarkeit ihrer Berufe erhöht die Arbeitsmarktsorgen und die Einschätzung über Veränderungen des Arbeitsumfelds. Außerdem wird die Teilnahmebereitschaft an Weiterbildungs und Umschulungsmaßnahmen erhöht, insbesondere bei Befragten in Berufen mit hoher Automatisierbarkeit. Dadurch verringert sich der Unterschied in der Weiterbildungsbereitschaft zwischen Beschäftigten in Berufen mit hoher und niedriger Automatisierbarkeit um 95,5 %, die Lücke in der Umschulungsbereitschaft wird sogar vollständig geschlossen." (Textauszug, IAB-Doku)
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Literaturhinweis
Künstliche Intelligenz und industrielle Arbeit – Perspektiven und Gestaltungsoptionen: Expertise des Forschungsbeirats Industrie 4.0 (2024)
Gabriel, Stefan; Kretzschmer, Veronika; Graunke, Jannis; Dumitrescu, Roman; Murrenhoff, Anike; Hompel, Michael ten ; Falkowski, Tommy;Zitatform
Gabriel, Stefan, Tommy Falkowski, Jannis Graunke, Roman Dumitrescu, Anike Murrenhoff, Veronika Kretzschmer & Michael ten Hompel (2024): Künstliche Intelligenz und industrielle Arbeit – Perspektiven und Gestaltungsoptionen. Expertise des Forschungsbeirats Industrie 4.0. München, 46 S. DOI:10.48669/fb40_2024-1
Abstract
"In der neuen Expertise „Künstliche Intelligenz und industrielle Arbeit“ des Forschungsbeirats Industrie 4.0 zeigen das Fraunhofer IEM und das Fraunhofer IML Gestaltungsoptionen und Handlungsfelder auf, wie KI in der deutschen Industrie erfolgreich eingesetzt werden kann. Ziel ist sowohl eine Steigerung der Wettbewerbsfähigkeit als auch eine Aufwertung von Arbeitsplätzen. Der KI-Einsatz beinhaltet Produktionsabläufe planen, Montagetätigkeiten übernehmen, Steuerungen programmieren oder Lager organisieren." (Autorenreferat, IAB-Doku)
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Literaturhinweis
AI, Task Changes in Jobs, and Worker Reallocation (2024)
Zitatform
Gathmann, Christina, Felix Grimm & Erwin Winkler (2024): AI, Task Changes in Jobs, and Worker Reallocation. (IZA discussion paper / Forschungsinstitut zur Zukunft der Arbeit 17554), Bonn, 50 S.
Abstract
"How does Artificial Intelligence (AI) affect the task content of work, and how do workers adjust to the diffusion of AI in the economy? To answer these important questions, we combine novel patent-based measures of AI and robot exposure with individual survey data on tasks performed on the job and administrative data on worker careers. Like prior studies, we find that robots have reduced routine tasks. In sharp contrast, AI has reduced non-routine abstract tasks like information gathering and increased the demand for 'high-level' routine tasks like monitoring processes. These task shifts mainly occur within detailed occupations and become stronger over time. While displacement effects are small, workers have responded by switching jobs, often to less exposed industries. We also document that low-skilled workers suffer some wage losses, while high-skilled incumbent workers experience wage gains." (Author's abstract, IAB-Doku) ((en))
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Literaturhinweis
Anteil der beruflichen Tätigkeiten, die automatisiert werden könnten, variiert regional erheblich (2024)
Zitatform
Grienberger, Katharina, Britta Matthes & Wiebke Paulus (2024): Anteil der beruflichen Tätigkeiten, die automatisiert werden könnten, variiert regional erheblich. In: IAB-Forum – Grafik aktuell H. 12.03.2024.
Abstract
"Das Substituierbarkeitspotenzial gibt an, in welchem Ausmaß Berufe potenziell durch den Einsatz von digitalen Technologien und KI ersetzbar sind. Bei der Aktualisierung der Daten für das Jahr 2022 zeigt sich, dass in Deutschland durchschnittlich 38 Prozent der sozialversicherungspflichtig Beschäftigten in einem Beruf arbeiten, in dem das Substituierbarkeitspotenzial hoch ist, also bei über 70 % liegt (siehe auch IAB-Kurzbericht 5/2024). Dabei weisen nach wie vor das Saarland, Baden-Württemberg und Thüringen die höchsten Anteile an sozialversicherungspflichtig Beschäftigten in Berufen mit einem solch hohen Substituierbarkeitspotenzial auf. In Berlin, Mecklenburg-Vorpommern, Hamburg, Brandenburg, Schleswig-Holstein und Sachsen-Anhalt sind diese Anteile am niedrigsten." (Autorenreferat, IAB-Doku)
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Literaturhinweis
Folgen des technologischen Wandels für den Arbeitsmarkt: Vor allem Hochqualifizierte bekommen die Digitalisierung verstärkt zu spüren (2024)
Zitatform
Grienberger, Katharina, Britta Matthes & Wiebke Paulus (2024): Folgen des technologischen Wandels für den Arbeitsmarkt: Vor allem Hochqualifizierte bekommen die Digitalisierung verstärkt zu spüren. (IAB-Kurzbericht 05/2024), Nürnberg, 8 S. DOI:10.48720/IAB.KB.2405
Abstract
"Die Potenziale, dass berufliche Tätigkeiten durch Computer oder computergesteuerte Maschinen vollautomatisch erledigt werden könnten, ändern sich, wenn neue Technologien auf dem Markt verfügbar werden. Bei der Neuberechnung solcher Substituierbarkeitspotenziale wird neben dieser Entwicklung auch berücksichtigt, dass sich die Tätigkeitsprofile in den Berufen verändern, neue Berufe und Tätigkeiten entstehen und Beschäftigte ihren Beruf wechseln. Die Autorinnen zeigen für die technologischen Möglichkeiten im Jahr 2022, wie hoch das Substituierbarkeitspotenzial derzeit ist und wie es sich seit 2013 verändert hat." (Autorenreferat, IAB-Doku)
Weiterführende Informationen
Aspekt auswählen:
Aspekt zurücksetzen
- Gesamtbetrachtungen/Positionen
- Arbeitsformen, Arbeitszeit und Gesundheit
- Qualifikationsanforderungen und Berufe
- Arbeitsplatz- und Beschäftigungseffekte
- Wirtschaftsbereiche
- Arbeits- und sozialrechtliche Aspekte / digitale soziale Sicherung
- Deutschland
- Andere Länder/ internationaler Vergleich
- Besondere Personengruppen
