The lament is all too familiar: ‘If only we’d known’. In the world of business, it often rings truest when top performers start walking out the door, one by one. By then, it’s often too late for desperate pleas or hefty retention packages. But what if organisations could predict who’s at risk of leaving, and why? This is where machine learning (ML) steps in, offering a powerful tool to shift from reactive firefighting to proactive employee retention.
High turnover is a costly and disruptive headache for companies. Recruitment expenses, training costs, and the loss of institutional knowledge are just a few of the unwelcome aftereffects. Traditionally, organisations have relied on exit interviews, a retrospective peek into the rearview mirror. However, ML offers a forward-looking lens, analysing vast amounts of data to identify patterns and potential risk factors for employee departures.
The shift from reactive to proactive is key. By examining data from HR records, performance evaluations, employee surveys, and even external market trends, ML algorithms can spot patterns and hidden indicators human judgment might miss. This predictive capability empowers organisations to anticipate potential flight risks, allowing for timely interventions before disgruntled employees reach the exit door.
While tools such as mood meters and surveys can help gather insights, accurately predicting an individual’s decision to stay or leave remains a challenge.
Sujiv Nair, global CHRO, Re Sustainability
But ML goes beyond mere prediction. It provides a data-driven foundation for optimising compensation, benefits, and overall workplace conditions. Imagine using insights from employee sentiment analysis to tailor career development opportunities or adjusting work-life balance initiatives based on real-time data. This data-driven approach not only enhances the accuracy of forecasts but also empowers organisations to implement strategic, targeted initiatives that address the specific factors causing employees to consider leaving.
However, as Sujiv Nair, global CHRO, Re Sustainability, cautions, predicting employee retention is far from a crystal ball. “It’s like dealing with the complexities of human emotions,” he emphasises. While tools such as mood meters and surveys can help gather insights, accurately predicting an individual’s decision to stay or leave remains a challenge.
This is where the human touch comes in. Nair points out that organisations often rely on open-ended questions to understand employee experiences, seeking feedback on job satisfaction, compensation, and workplace dynamics. But ML adds another layer: analysing the responses to these questions to predict potential attrition. With this predictive power, companies can make informed decisions about employee engagement strategies, address underlying issues, and foster a more positive work environment that encourages employees to stay.
Implementing an ML-powered retention system involves a multi-step process: gathering and integrating data from various sources, identifying key retention factors, training and validating the model, and finally, utilising predictive analytics to assess individual employee risk. Each step presents its own challenges. Chandrasekhar Mukherjee, CHRO, Bhilosa Industries, underscores the importance of data quality and diversity. “The question of whether to use ML in retention strategies involves understanding the nuances of employee attrition and implementing targeted interventions,” he explains.
“Analysing data over several years, across regions, departments, and age groups, can reveal crucial patterns.” He reminds us that even with ML’s predictive power, human intervention remains essential. For instance, identifying trends such as women leaving after having their first child requires not just algorithms but also tailored initiatives to address specific needs.
“The question of whether to use ML in retention strategies involves understanding the nuances of employee attrition and implementing targeted interventions”
Chandrasekhar Mukherjee, CHRO, Bhilosa Industries
Mukherjee’s point highlights the limitations of ML. While it can identify patterns and predict likelihoods, it cannot fully capture the nuanced, individual reasons behind employee decisions.
Ravi Mishra, SVP-HR, Aditya Birla Group, emphasises this point. “Retention is influenced by various personal and professional factors,” he says. “Someone might leave due to family issues, health concerns, or simply a desire for better work-life balance.” Machine learning algorithms, while powerful, may struggle to grasp these individual considerations.
Therefore, Mishra asserts, ML must be a tool alongside a human-centric approach. Data-driven insights should inform strategic interventions that address the diverse and often personal reasons behind employee departures. He emphasises the need for collaboration between data scientists, HR professionals, and organisational leaders, ensuring that technology complements, not replaces, human intelligence and empathy.
“ML must be a tool alongside a human-centric approach. Data-driven insights should inform strategic interventions that address the diverse and often personal reasons behind employee departures”
Ravi Mishra, SVP-HR, Aditya Birla Group
Ultimately, successful retention goes beyond predicting departures. It involves creating a work environment where employees feel valued, engaged, and supported. By harnessing the power of ML while acknowledging its limitations, organisations can gain invaluable insights into employee sentiment, anticipate potential flight risks, and proactively foster a workplace where top talent chooses to stay, not just because they have to, but because they want to. The future of retention lies not in desperate pleas at the exit door, but in building a proactive, data-driven culture that values its employees and keeps them thriving.