Most factories run far below their theoretical capacity.
Across global manufacturing, typical machine utilisation often sits between 40% and 60%, with the rest of available production time lost to downtime, changeovers, inefficient scheduling and operational bottlenecks.¹
For many manufacturers, this unused capacity represents thousands, and in some cases millions of pounds in potential output sitting idle on the shop floor.
This article explores the concept of creating an 'agile factory' to create the scalability and resilience required within manufacturing operations in today's unpredictable and ever-more-competitive industry landscape.
When demand rises, the instinctive response is often the same: invest in new machines, expand facilities or hire additional staff.
For CEOs and finance leaders, this decision can carry significant risk. Because the same order book that justifies expansion today may look very different six months later, and over the past few years, that volatility has become increasingly familiar.
For example, looking at our home country, on paper, the UK manufacturing sector has performed strongly. Manufacturing productivity has improved since the pandemic, with output per hour rising above pre-COVID levels as firms modernised operations and adopted more digital technologies. According to the Office for National Statistics, labour productivity, measured as output per hour worked, has shown steady improvement in several sectors, including manufacturing.²
Yet the headline numbers mask a far more unstable reality inside many factories.
Demand conditions have become increasingly unpredictable. Geopolitical shocks (you know the ones we're referring to!), supply-chain disruption, inventory corrections and shifting industrial policy have created sudden swings in order volumes across multiple sectors.
At the same time, structural cost pressures have intensified.
Analysis from the Office for National Statistics shows that industrial electricity prices in the UK have been around 46% higher than the median across International Energy Agency countries, placing British manufacturers at a significant cost disadvantage.³
Industry bodies highlight an even sharper competitiveness gap. Make UK reports that UK industrial electricity prices are roughly four times higher than those paid by manufacturers in the United States and significantly higher than those in France and Germany.⁴
These pressures are already reshaping industrial output. Energy-intensive sectors in particular have seen significant reductions in activity following the recent energy price shocks.
Against this backdrop, the traditional manufacturing strategy of ‘scale up when demand rises’ has become far riskier. The question facing manufacturing leaders is no longer simply how to grow production, but how to remain resilient and hopefully, profitable when demand moves in both directions.
For decades, manufacturing competitiveness was built on economies of scale. When demand increased, businesses added machines, expanded facilities and recruited additional labour.
Today, that approach carries significant financial risk.
Capital investments are difficult to reverse if demand softens. Additional labour becomes a fixed cost. What once looked like growth can quickly become underutilised capacity.
Increasingly, the most resilient manufacturers are prioritising agility over scale.
Agility in manufacturing is not simply about moving faster. It’s about developing the operational precision to adjust production levels without destabilising the business.
This requires a far deeper understanding of how the factory actually performs.
Operational improvement data studies consistently show that 10–30% productivity gains can often be achieved in existing operations through better operational visibility, process optimisation and improved scheduling, before any additional capital investment is required.⁵
In practice, improving the productivity of two existing lines by 20–30% (plenty of our customers achieve these figures) can often deliver the same output increase as installing an additional machine without committing to significant capital expenditure.
More importantly, those gains remain valuable when demand slows. Production can be consolidated onto the most efficient lines, energy consumption reduced and margins protected without drastic cost-cutting.
In other words, productivity improvements create flexibility. Capital investment often removes it.
Achieving this level of operational precision requires one critical ingredient: reliable, real-time factory data.
Many manufacturing leaders still make strategic decisions based on delayed or incomplete operational information. Yet in a volatile market, the ability to respond quickly depends on understanding exactly how the factory is performing today, not how it performed last month.
Four operational data areas are particularly important for building a more agile manufacturing operation, in both times of peak and reduced demand.
Real-time machine utilisation exposes existing capacity within the factory. This allows manufacturers to increase output quickly during demand spikes without new investment, and consolidate production onto the most efficient assets when demand slows.
Unplanned downtime quietly erodes factory capacity. Research suggests that unplanned downtime costs manufacturers an estimated $50 billion globally each year, with equipment failure responsible for around 42% of those losses.⁶ Identifying the root causes of these interruptions can unlock significant productive time without adding machines or labour.
Understanding setup and changeover times enables better production scheduling. Grouping similar jobs together reduces lost production time and improves machine utilisation while providing greater clarity on the true cost of small-batch production.
Energy has become one of the most significant controllable costs in manufacturing. According to the International Energy Agency, industry accounts for around 37% of global energy consumption.⁷ Linking energy usage directly to machines and jobs allows manufacturers to identify inefficiencies, reduce peak demand and eliminate energy waste.
Together, these data points provide the operational visibility required to manage production with precision rather than assumption.
If history has taught us anything, it’s reasonable to assume economic uncertainty is unlikely to disappear any time soon.
For manufacturing leaders, resilience increasingly depends on the ability to adapt operations quickly without undermining long-term competitiveness.
The agile factory is one that can use data insights to scale production up to meet peaks in demand and scale down when conditions change without major financial disruption, whilst at the same time, maintain this position during periods when demand slows, so that when it does pick back up (and it will) the tools remain in place to provide the insight needed to scale up based on facts, not assumptions.
Instead of relying solely on expansion, the agile factory focuses on extracting more value from existing assets. Instead of reacting to problems after they occur, it uses operational data to understand where capacity, efficiency and cost improvements can be made.
In this model, manufacturing data analytics becomes the operational nervous system of the factory, providing the intelligence needed to deploy machines, labour and energy in the most efficient way possible.
For CEOs and finance leaders, the outcome is not simply higher productivity.
It is greater resilience.
Factories that understand their operations in detail can respond faster, protect margins more effectively and make investment decisions with far greater confidence. In an increasingly unpredictable manufacturing landscape, that agility may prove far more valuable than scale alone.
McKinsey & Company – The productivity opportunity in manufacturing
https://www.mckinsey.com/industries/advanced-electronics/our-insights/the-factory-of-the-future
Office for National Statistics – Labour productivity measures
https://www.ons.gov.uk/employmentandlabourmarket/peopleinwork/labourproductivity
Office for National Statistics – Impact of higher energy costs on UK businesses
https://www.ons.gov.uk/economy/economicoutputandproductivity/output
Make UK – Tackling Electricity Prices for Manufacturers
https://www.makeuk.org/insights/reports/tackling-electricity-prices-manufacturers
PwC – UK Productivity Tracker
https://www.pwc.co.uk/industries/insights/productivity-tracker.html
Forbes– Unplanned Downtime Costs More Than You Think
https://www2.deloitte.com/us/en/pages/operations/articles/unplanned-downtime.html
International Energy Agency – Industry energy consumption
https://www.iea.org/reports/industry