Why early-career investment and AI training matter for tackling the productivity crisis | Tech Radar
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Why early-career investment and AI training matter for tackling the productivity crisis
AI literacy and early-career investment unlock UK productivity
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In just a couple of short years, the world has rapidly entered the age of AI. At breakneck speed, it has revolutionized not just the way we work but also the way we live.
For UK businesses, AI stopped being a standalone innovation and became an almost mandated part of how work is done.
This change put British businesses at a crossroads. The recently released Gen(eration) AI report from The King’s Trust shows over half of youth-held jobs are expected to transform within the next decade.
Why hands-on digital skills will define the value of AI
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For business, this means urgently investing in early-career capability, driven by a workforce that understands how to apply AI tools effectively and responsibly, or risk fueling a skills gap where ambition outpaces capability.
AI literacy is a foundational early career capability
Much of the AI discussion right now is still fixated on specialist roles like data scientists, machine learning engineers and platform architects. But early investment does not begin with specialist AI roles. While they remain critical, these roles only represent a small portion of the productivity gains available at scale.
The real productivity unlock sits with the broad base of early career professionals: graduates, apprentices and entry-level hires. It is this group who will embed AI-enabled ways of working across every function.
And the potential pool is vast. According to the Office for National Statistics (ONS), nearly one million youths aged 16 – 24 are not in education, employment or training (NEET). This number has slightly increased since the previous quarter, even though it was reported that more young people have been actively looking for work.
This skills shortfall is likely eroding confidence and limiting their ability to meet the qualifications expected for entry level roles.
It all points to a £16 billion productivity opportunity. By embedding AI skills more widely, particularly through early-career development, businesses can unlock that value. If organizations don’t build AI fluency early on, the gap will continue to grow.
Digital friction is quietly crippling UK productivity, and AI could be the turning point
Closing AI learning gaps between leaders and employees
People fall into familiar ways of working, patching things together with manual processes and disconnected tools, and over time those habits stick. Trying to layer AI later on becomes harder, slower and more expensive.
By contrast, when early career employees learn to use AI in the context of their day-to-day work from the outset, it becomes embedded in how they think and operate. That foundation carries through, resulting in stronger, more consistent performance across teams.
Skills alone won’t deliver outcomes if they collide with clunky infrastructure. Across hybrid workplaces, employees juggle meetings, messaging, documents and workflows across platforms that often don’t integrate seamlessly.
Ricoh’s research shows that a significant proportion of workers’ time is still lost to admin-heavy processes, from document management to manual reporting.
For example, in the UK, nearly a third (28%) of decision makers and over a quarter (26%) of office workers say most employees’ days are spent on administration rather than value-driven work. Inefficiencies like this scale rapidly across organizations, driven by the lack of tools, technologies and skills needed to remove friction from everyday tasks.
This is why AI literacy in isolation can be seen as a wasted effort without a solid technological investment. As AI-powered features proliferate across productivity suites, the user experience has become a productivity lever. If tools are confusing or inconsistent, adoption drops and the return on investment disappears.
As a result, the most forward-looking organizations have expanded beyond the non-negotiables: functionality, security, and cost. Employee experience now sits alongside these requirements. Metrics like time‑to‑task, adoption trends, service‑desk sentiment, and reduced admin are now some of the most valuable insights organizations can capture.
For many organizations, AI training is still delivered as a generic capability – a one-off course or toolkit intended to serve everyone equally. AI literacy needs to be defined as a progressive pathway, shaped by career stage and real workplace context.
To move fast, organizations need to define AI capability through clear competency frameworks and understand what AI literacy looks like at different levels and across roles. Nurturing early-career development with further education partnerships demonstrates a commitment to supporting young people entering the workplace.
Investing in degree apprenticeships and AI-focused graduate roles gives early-career access to the core business functions. This is carried out through mentoring, work placements and practical skills development.
The result is a talent pipeline equipped with both practical and strategic skills - futureproofing organizations while opening up new opportunities for the next generation.
Done well, this approach widens access to roles in fast-growing parts of the economy, boosts social mobility, and ensures technology adoption brings people with it. For organizations under ongoing pressure to improve productivity, building these pathways is a strategic imperative.
This article was produced as part of Tech Radar Pro Perspectives, our channel to feature the best and brightest minds in the technology industry today.
The views expressed here are those of the author and are not necessarily those of Tech Radar Pro or Future plc. If you are interested in contributing find out more here: https://www.techradar.com/pro/perspectives-how-to-submit
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Why early-career investment and AI training matter for tackling the productivity crisis
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AI literacy and early-career investment unlock UK productivity



