A system could flag heightened turnover in a certain type of role and employee profile—for example, young software engineers. “Then you could assess the rationale for them leaving, and do more than just intensify hiring efforts,” Carrillo says. “You can dig into people’s reasons for leaving and start to change roles and responsibilities to address pain points.”
An HR platform that integrates AI and ML can also identify current deficits and predict near-term talent needs, optimize resource allocation, and empower inclusive talent management. As an example, if an employee keeps logging off early from work, that could be a sign of an imminent resignation. This predictive insight enables HR to anticipate skills gaps and vacancies before the organization starts sweating, Carrillo notes.
“The value here is about identifying anomalies and making suggestions,” Carrillo says. “Predictive analytics supported by AI and ML can surface near-term workforce events and trends, allowing leaders to plan for emerging gaps and needs.”
The Great Knowledge Transfer
One near- and medium-term workforce trend facing banks is already quite clear. The workforce is rapidly aging. By 2030, 150 million jobs will shift to workers aged 55 and older. The wave of retiring baby boomers is well underway, threatening daily operations as organizations lose experienced workers with decades of accrued knowledge.
AI and ML can help HR navigate this generational talent challenge as well, Carrillo says. Banks won’t be able to hire enough people to take all the operational reins, much less fully train them, before veterans say goodbye. Solving this knowledge transfer challenge can be a valuable proving ground for generative-AI-supported knowledge capture.
“These machines can learn by following employee actions, so to speak, to document operating procedures and make training recommendations,” says Carrillo, noting that anything the tools suggest should be validated by people. “And these materials will likely be better than me writing down everything I do because these tools can actually learn what I do.”
In terms of managing the retirement waves, the upshot for banks is huge. “This is going to reduce the knowledge gap between outgoing, highly informed people and those who are just getting their footing in operations,” Carrillo adds. Imagine a chatbot that can support a new employee with reminders not to forget certain procedural steps or to obtain certain approvals before proceeding.
Trained on huge amounts of data, “these tools are going to help people do their jobs more effectively,” Carrillo says.
Launching a Skills-Based Movement
AI and ML are poised to revolutionize how people and technology coexist at banks, including both HR functions and individual roles. With so much change on the horizon, leaders must answer two crucial questions.
“What do you want the future of work to look like in an AI- and ML-enabled environment?” Carrillo says. “And how will you progress toward that target? Leaders need to put aside old habits and assumptions, and embrace new ways of thinking and working.”