The cornerstones of large-scale technology transformation PART I
A clear playbook is emerging for how to
integrate and capitalize on advanced technologies—across an entire company, and
in any industry.
How does your company use advanced technologies to create value? This has
become the defining business challenge of our time. If you ignore it or get it
wrong, then anything from your job to your entire organization could become
vulnerable to rivals who get it right. The new technologies come with many
labels—digital, analytics, automation, the Internet of Things, industrial
internet, Industry 4.0, machine learning, artificial intelligence (AI), and so
on. For incumbent companies, they support the creation of all-new, digitally
enabled business models, while holding out the vital promise of improving
customer experiences and boosting the productivity of legacy operations.
Advanced technologies are essential to modern enterprises, and it’s fair to say
that every large company is working with them to some extent.
The
cornerstones of large-scale technology transformation
In private discussions over the past year,
we’ve asked more than 500 CEOs whether they think technology can improve
business growth and productivity sufficiently to lift profits and shareholder
value by 30 to 50 percent; a great many have said yes. So far, though, that
prize has remained elusive for a lot of companies. Consider, for example,
McKinsey research highlighting the large number of digital laggards, and the wide gap between
them and leaders: digitally reinvented incumbents—those using digital to
compete in new ways, and those making digital moves into new industries—are
twice as likely as their traditional peers to experience exceptional financial
growth.
Most senior executives recognize the
magnitude of the task before them. Although incumbents possess advantages such
as hard assets, customer relationships, and valuable brands, those
strengths—and the scale that accompanies them—also vastly increase the
complexity of digital transformation. Some enterprise-wide technology
transformations come up short simply because leaders have a difficult time creating coherent strategies that stitch together their
digital priorities with other major business
objectives.
What’s more, even companies that devise
sound strategies are likely to encounter two formidable obstacles to using
advanced technologies at a transformative scale. The first challenge is the
sheer number and breadth of technology solutions required to truly transform an
enterprise, often in the hundreds. The second one might be called the “last-mile”
challenge: redesigning a company’s processes to capture the value of new
technologies, in line with their strategic goals. Both sound technical, but
they play out far from the traditional IT organization and create headaches for
the business leaders who will need to guide their people toward new patterns of
thinking and operating.
A playbook for overcoming these challenges
is starting to emerge across industries. In this article, we’ll explore five
cornerstone practices underpinning the progress of successful companies:
·
Develop technology road maps that
strategically focus investments needed to reinvent their legacy businesses and
create new digital ones.
·
Train managers to recognize new
opportunities and build in-house capabilities to deliver technologies.
·
Establish a modern technology environment
to support rapid development of new solutions.
·
Overhaul data strategy and governance to
ensure data are reliable, accessible, and continuously enriched to make them
more valuable.
·
Focus relentlessly on capturing the
strategic value from technology by driving rapid changes in the operating
model.
Distributed
opportunities
The first scaling challenge is rooted in
the sheer number of solutions that a company typically needs to carry out its
digital strategy successfully. Consider, for example, a global mining company
seeking dramatic productivity improvement through technology. Boosting the
productivity of a mine would typically involve deploying solutions in a
half-dozen broad domains such as “better ore-body management through advanced
analytics” or “predictive maintenance to reduce maintenance costs and increase
uptime.” Each domain, in turn, might contain dozens of more specific
opportunities. Predictive maintenance, for instance, can be applied to drills,
shovels, and heavy-hauling trucks. For hauling trucks, specific solutions might
be needed to deal with operating conditions, drivers’ behind-the-wheel
behavior, and the reliability of truck components and systems. All told, we
estimate that it takes more than 100 technology solutions to maximize the
productivity of a mining operation. In industries as diverse as banking,
electric power, and retail, we have found that the benefits of technology are
distributed among a similarly large number of opportunities. Across the
business landscape of AI alone, McKinsey has inventoried more than 400 meaningful use cases.
While some solutions deliver more
bottom-line impact than others, none will typically be a “silver bullet” that
makes a genuinely transformative impact on its own. And since many technology
innovations can be replicated by rivals within a year or two, the advantages
they confer seldom last for long. Enduring advantages are more likely to accrue
to companies that can sustain a high rate of innovation, consistently
introducing new solutions and improving them with proprietary data.
Creating a few pilot solutions is
relatively straightforward, and many companies have done so. During an initial
experimentation phase, it’s normal to use technology contractors and vendors to
create solutions. But relying on third parties becomes impractical once a
company establishes a digital strategy that calls for building a hundred or
more solutions. Technology solutions must be tightly aligned with business
needs, and as users try them out, they’re likely to discover
shortcomings—necessitating progressive refinement. The many handoffs that take
place with external providers over multiple revision cycles make this iterative
mode of collaboration expensive and inefficient. Scaling up effectively
therefore requires ample in-house technology-development
capabilities—capabilities that few companies possess.
The
‘last-mile’ challenge
The second challenge that arises in
technology transformations is
capturing the business value of new solutions. Consider the predictive-maintenance opportunity for
the mining company described earlier: technology makes it possible to boost
productivity by performing maintenance only when a
truck’s condition warrants it, rather than adhering to a schedule of preventive
measures that are sometimes premature.
But the mining company won’t spend any less on labor and parts or keep its trucks in service longer, unless it changes the work routines of many maintenance-related experts. The reliability engineer minimizes excess effort by learning to triage predicted maintenance events. To prevent the downtime that can occur when trucks no longer come in on a known schedule, the maintenance-planning team creates a new scheduling procedure, and the inventory-management team finds a way of restocking that ensures the right parts are on hand when trucks are brought in. The maintenance team accelerates repair work based on new diagnostic information. And finally, the financial-planning team reallocates the money saved on maintenance to other activities or additional profits.
But the mining company won’t spend any less on labor and parts or keep its trucks in service longer, unless it changes the work routines of many maintenance-related experts. The reliability engineer minimizes excess effort by learning to triage predicted maintenance events. To prevent the downtime that can occur when trucks no longer come in on a known schedule, the maintenance-planning team creates a new scheduling procedure, and the inventory-management team finds a way of restocking that ensures the right parts are on hand when trucks are brought in. The maintenance team accelerates repair work based on new diagnostic information. And finally, the financial-planning team reallocates the money saved on maintenance to other activities or additional profits.
This example illustrates a decisive, often
overlooked fact about technology transformations: the value of advanced
technologies largely comes from performance gains beyond the operating unit or
process where a technology is applied. To realize this last-mile value,
companies have to train people in R&D, procurement, operations, marketing,
sales, support, and other areas to work in different ways. Incumbents routinely
underestimate the effort required—if they think about it at all. And the last-mile journey
may be even more challenging when the goal is to build entirely new businesses with advanced technologies.
When a business commits
to transforming itself with technology, the cost of changing its operating
model can easily exceed the cost of developing the technology solutions.
McKinsey has learned that businesses
with highly successful analytics programs, for example, are four times as
likely as other companies to devote more than half of their analytics-related
spending to embedding the use of analytics in their workflows and
decision-making processes. A company must therefore look at the release of each technology solution not as the final act in a project but
as a turning point that sets up a new phase of operational changes.
CONTINUES IN PART II
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