How to build AI with (and for) everyone in your organization

 

Here is an excerpt from an article written by Benjamin Cheatham, Alex Cosmas, Nehal Mehta, and Dhruv Shah for the McKinsey Quarterly, published by McKinsey & Company. To read the complete article, check out others, learn more about the firm, and sign up for email alerts, please click here.

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Becoming an AI-driven business requires contributions from your entire workforce. While the transformation takes time, several tactics can begin democratizing AI now.
It has often been said that crisis reveals character, a truism for organizations as well as individuals. Crises compel organizations to rethink how they work, and often become the source of lasting change and growth.After the 2000–01 recession, for example, 15 percent of companies that had not previously been leaders in their industries emerged as stalwarts in their sectors and moved into the top quartile. Likewise, while most retailers did poorly after the Great Recession of 2007–09, a handful showed their mettle and delivered more than five times the average total returns to shareholders.Few would argue that the COVID-19 pandemic is more devastating than these events. It is a humanitarian crisis of the likes we have not experienced in recent times. The work organizations face to safeguard their employees’ lives and livelihoods is formidable. As companies work to regain their footing from the vast human and economic toll, artificial intelligence (AI) is poised to play a pivotal role. The pressure for organizations to adopt AI was already mounting before the crisis as the technology delivered returns to early adopters. The COVID-19 crisis has only elevated the technology’s prominence, with many companies using AI to quickly triage the vast challenges they face and set a new course for their employees, customers, and investors in an uncertain, rapidly evolving landscape.While it’s always been important to involve the entire organization in building AI, now more than ever leaders need to empower employees to actively shape their AI journeys. Importantly, engaging all employees—not just technical talent—in AI development ensures that AI solutions truly augment employees in their roles so they can do their jobs better and more efficiently, and it stimulates employee ingenuity, confidence, and flexibility to continually adapt as the next normal begins to reveal itself.Additionally, enlisting the workforce in these efforts enables them to begin to develop some of the skills needed as AI ultimately reshapes the future of work. While it’s expected that less than 5 percent of jobs can be automated completely, AI and related technologies will change the nature of many current roles, placing greater emphasis on tasks requiring technological, creative, and critical thinking skills (among others), which get flexed in the build-out of AI tools.

While it’s expected that less than 5 percent of jobs can be automated completely, AI and related technologies will change the nature of many current roles.

Such engagement doesn’t happen easily in most cases. For traditional companies, transforming into an AI-powered organization involves substantial work. They must, for example, fundamentally change their cultures into ones that embrace data, experimentation, and agile principles—all traits that the digital natives heavily and successfully using AI today (for example, Amazon and Google) are typically born with. They’ll also need to develop tailored analytics-education programs for all levels of employees, redesign processes, source new technical talent, and revamp their technology architecture (for instance, by embracing the cloud to ensure that they have the capabilities to support resource- and data-hungry AI systems).

However, we find that while these transformational steps are under way, there are some relatively simple ways executives can help their employees understand where they fit in and become active participants in charting an organization’s path toward AI. In this article, we share how leading organizations are getting the ball rolling.

1. Demystify artificial intelligence

With press articles often homing in on the spectacular (and sometimes unrealistic) uses and effects of AI, it’s understandable that many people have reservations about adoption of the technology in the workplace. One of the easiest steps for facilitating a practical understanding of AI is simply to demystify it by explaining how employees can use the technology to amplify their day-to-day efficiency and effectiveness (exhibit).

In general, we find that AI can offer five broad benefits to employees:

  • Foresight. AI’s predictive capabilities allow employees to predict more accurately everything from potential equipment failures on the manufacturing floor to the next-best product a customer is likely to buy.
  • Assistance. AI can save staff time by providing ready access to the data needed to answer questions and by automating time-consuming activities, such as claims processing, basic customer-service interaction, and inventory tracking.
  • Expertise. The expertise that AI provides to employees is especially helpful when such expertise is scarce and difficult to source. For instance, a sales leader can use AI to surface and replicate the knowledge of the top sales reps, including how they choose which clients to visit, when to visit, and what to say, across a global sales team. In manufacturing, factory personnel can use AI to identify the root cause of machine failure and mitigate critical operational bottlenecks when specially trained teams of engineers are not available on site.
  • Explanation. AI can help staff understand not just what customers prefer but why they prefer it. For instance, a regional director can use AI to understand how weather, route changes, and competitor price changes affect sales.
  • Simulation. AI enables simulations that allow testing of nearly all potential scenarios before making a decision—a capability inherently beyond the purview of human cognition. For example, by using AI to simulate an event, a pricing analyst can understand the impact that price reductions might have on profitability in dozens of markets with varying degrees of competitiveness.

Companies can share these different opportunities with their employees as stand-alone activities or use the categories as a framework within the context of other activities designed to educate and engage staff. For example, one North American airline conducted an ideation session with its key stakeholders responsible for demand forecasting, fleet-profitability analysis, and route scheduling to discuss how they could use AI to solve critical business challenges. Session leaders shared with more than 15 participants, including directors and midlevel managers, the different uses of AI we have described. Participants then used the framework to create a list of how they might use AI within their workflows and what value it might provide. One participant noted that she spent a great deal of time managing long-term flight schedules by hand for reporting, a process that took her away from higher-value activities. Another employee highlighted how improving forecasting could help better identify which routes to add.

Once each participant created a list of challenges, they worked together to consolidate similar ideas and then pick five use cases for the analytics center of excellence (COE) to evaluate. In voting on which to prioritize, participants were asked to consider both the potential impact the use case could deliver and the feasibility (given the data and five broad categories of benefits the AI team provided). The analytics COE then used the participants’ list as a starting point, assessing potential use-case value, data requirements, feasibility, and technology needs for each and creating a plan of attack for two important use cases.

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Here is a direct link to the complete article.

Benjamin Cheatham is a senior partner in McKinsey’s Philadelphia office; Alex Cosmas is a partner in the New York office; Nehal Mehta is a consultant in the Washington, DC, office; and Dhruv Shah is a data scientist in the Montreal office.

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