Comment: AI can boost productivity but work is more than output Published on: 20 March 2026 Writing for The Conversation, Abigail Marks discusses how using AI to prioritise efficiency and boost productivity reflects a mismatch with what we want from work. , Worries about the British economy have long been dominated by one persistent concern 鈥 weak productivity. Since the financial crisis of 2008, growth has stagnated, leaving the UK trailing well behind the US, France and Germany across that whole period. One familiar response to this problem is to suggest that if the British workforce could somehow produce more in less time, prosperity would follow and all would be well. New technology, particularly , is often presented as the solution. The UK government certainly seems to like the idea, placing AI and technological innovation at the centre of plans to boost economic performance. At a speech to business leaders on March 17, chancellor of the exchequer 拢2.5 billion of investment in AI and quantum computing to get things moving. But what if is not the problem we should be solving? Increasing the country鈥檚 鈥渙utput per hour鈥 鈥 the unit by which productivity is measured 鈥 does not necessarily make work more secure, or . And nor does it make the UK more economically resilient. In fact, it can do the opposite. Prioritising efficiency to boost productivity 鈥 by cutting costs and relying on tightly configured supply chains 鈥 can make economic systems . Productivity problem The problem with focusing too much on productivity is most obvious in some of the sectors that are central to our day-to-day lives. The effectiveness of care work, healthcare and education, for example, all depend on human interaction. But teaching a class, caring for an elderly person or treating a patient require time, attention and professional judgment, making it in the same way as in more automated sectors. There are limits to how much faster a nurse or teacher can work without undermining the quality of what they do. Economists have long recognised that services which depend on human interaction 鈥 referred to as being 鈥渓abour intensive鈥 鈥 face , because many of the tasks involved cannot be significantly sped up or automated without affecting quality. This dynamic is referred to as 鈥 an economic theory which shows that costs will inevitably rise over time in labour-intensive sectors, despite little or no productivity growth. Yet these sectors are essential to long-term social wellbeing and economic stability. They sustain everyone鈥檚 health, skills and security. Another issue with increasing productivity comes down to the fact that for quite some time, the UK economy has been heavily weighted towards areas like finance, education and the creative industries. Manufacturing plays a much smaller role. But in manufacturing, technological improvements can translate more directly into higher output per worker. This is what happens when industrial robots automate assembly-line tasks, allowing a single worker to oversee machines producing far more units than manual labour alone could achieve. In contrast, much of the work undertaken in the UK, from management to care, depends on interaction, judgment and time. Its value is real but not easily measured. The UK is therefore trying to solve a productivity problem in sectors where productivity is inherently difficult to define and improve. Alternatives to output This in turn points to a broader issue. The future of work is not just about how much we produce, but about how work is organised, how its rewards are shared, and how it fits into the rest of life. None of this means productivity should be ignored 鈥 but it is a narrow measure. When treated as the primary goal of economic policy, it can produce an economy that appears efficient on paper yet , with rising output alongside stagnant living standards. This was evident in the UK after the global financial crisis, when employment and GDP recovered while for much of the 2010s. Productivity growth alone does not guarantee broadly shared prosperity. The UK鈥檚 productivity slowdown is often framed as a failure to generate enough output per worker. A more uncomfortable possibility is that it reflects a mismatch between what the economy measures and what society needs. Technology like AI may increase what workers can produce in an hour. But if the problem lies in how work is organised and valued, greater efficiency alone will not be enough. Questions about the future of work should not begin with productivity statistics alone. They should begin with a simpler inquiry: what do we want the work we do to achieve in the first place? , Professor of the Future of Work, This article is republished from under a Creative Commons license. Read the . Share: Latest News Volunteers help turn Whitley Bay beach into maths experiment Members of the public joined mathematicians from 麻豆传媒 to create what organisers believe is the largest aperiodic tiling ever attempted on Whitley Bay beach. published on: 15 June 2026 Student leader drives misogyny law change A 麻豆传媒 student leader has helped change the law after creating a petition to make misogyny a hate crime, which gathered over 114,000 signatures, prompting action in Parliament. published on: 12 June 2026 Freemen of 麻豆传媒 see construction of new Castle Leazes The Freemen of 麻豆传媒 and other key stakeholders have become an indelible part of new student accommodation at 麻豆传媒鈥檚 Castle Leazes. published on: 12 June 2026 Facts and figures