Artificial Intelligence

Topic portal

Artificial intelligence

In the world of work, there are two distinct types of application of AI technology in the workplace. The first is directed at automating tasks that workers perform; the second is to use AI-based analytics and algorithms to automate managerial functions – or what is commonly referred to as algorithmic management”.

When AI is used to automate tasks, it doesn’t necessarily lead to redundancies, as the technology can also complement human labour when certain tasks are automated. Whether technological adoption leads to automation (job loss) or augmentation (job complementarity) depends on the centrality of the automated task to the occupation, how the technology is integrated into work processes and management’s desire to retain humans to perform or oversee some of the tasks, despite automation’s potential. As AI transforms occupations, a workforce equipped with necessary skills in machine learning, data science, and AI ethics is crucial for harnessing its potential.

In addition to the potential effects on workers, AI’s integration into the workplace can also have consequences for organizational performance, including productivity, with spillover effects on economic performance.  For this reason, unequal access to the technology stemming from infrastructure bottlenecks, skill deficiencies or simply the cost of the technology can widen existing productivity divides between countries as well as between large and small or micro enterprises.

Key resources

Can we have pro-worker AI?
Can we have pro-worker AI

Meeting

Can we have pro-worker AI?

Generative AI and Jobs: A global analysis of potential effects on job quantity and quality
WP96_web

ILO Working paper 96

Generative AI and Jobs: A global analysis of potential effects on job quantity and quality

Buffer or Bottleneck? Employment Exposure to Generative AI and the Digital Divide in Latin America
Buffer or Bottleneck cover

ILO Working Paper 121 - Joint publication ILO-World Bank

Buffer or Bottleneck? Employment Exposure to Generative AI and the Digital Divide in Latin America

News and articles

New programme to close digital gap for 15,000 small businesses
a cashier accepts digital payment using a QR code

Enterprise development

New programme to close digital gap for 15,000 small businesses

AI provides innovative ways to improve compliance with labour laws
Albanian labour inspector using MIRA during field inspections

AI and Work

AI provides innovative ways to improve compliance with labour laws

Ongoing and upcoming events

The Potential of Generative AI for Analyzing Large Textual Assets

Research Seminar

The Potential of Generative AI for Analyzing Large Textual Assets

Social justice in the digital era: AI's impact on the labour market

ILO Live

Social justice in the digital era: AI's impact on the labour market

Global AI workforce

The development and deployment of AI systems requires a vast array of professional skills such as computer scientists and machine learning experts, but also professionals who tag, classify, clean and validate data used in the training of AI systems, as well as in other areas of the digital economy, including e-commerce and social media platforms.

Though there are no exact figures on the numbers of workers involved in this work – estimates are in the tens of millions – what is clear is the critical role that that this form of invisible labour plays in ensuring that the “magic” of AI works as planned.

The work is performed either on microtask or crowdsource platforms or in business processing outsourcing (BPO) companies, with many of the workers located in the Global South. As AI becomes increasingly embedded in our lives, it is crucial to acknowledge and address this human element that is central for the smooth function of AI systems. By ensuring fair labour practices, promoting transparency, and valuing the contributions of these invisible workers, we can build a more ethical and sustainable AI ecosystem.

AI Labour Disclosure Initiative: Recognizing the social cost of human labour behind automation

Event replay

AI Labour Disclosure Initiative: Recognizing the social cost of human labour behind automation

Behind the AI Curtain: The Invisible Workers Powering AI Development

Event replay

Behind the AI Curtain: The Invisible Workers Powering AI Development

Mind the AI Divide: Shaping a Global Perspective on the Future of Work

Report

Mind the AI Divide: Shaping a Global Perspective on the Future of Work

Most recent publications

Digital transformation in employment policies

Digital transformation in employment policies

A new chapter for the ILO’s textual assets: Applying Generative AI to Labour Force Survey questionnaires

Research Brief

A new chapter for the ILO’s textual assets: Applying Generative AI to Labour Force Survey questionnaires

See also

Observatory on AI and Work in the Digital Economy
ILO Observatory portal

Observatory on AI and Work in the Digital Economy

Algorithmic management in the workplace
Algorithmic Management

Topic portal

Algorithmic management in the workplace

Digital labour platforms
Digital Labour Platform

Topic portal

Digital labour platforms

Workers’ personal data
Personal Data

Topic portal

Workers’ personal data

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AI and Work

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