With opportunities and risks around every corner, leveraging data to help make the right decision at the right time has never been more important. That’s particularly true in a business world that is increasingly becoming more volatile, uncertain, and complex—which explains why a growing number of Internal Audit (IA) functions are embracing advanced analytics as a way to audit smarter and increase the impact and influence of their functions in the process.
According to Deloitte’s Global Chief Audit Executive (CAE) report, The innovation imperative: Forging Internal Audit’s path to greater impact and influence, the number of Canadian respondents fully leveraging the power of advanced analytics tripled between 2016 and 2018, jumping from seven percent to 21 percent. While these enlightened IA functions are still the minority, the number is growing quickly and there are countless lessons to be learned from these early adopters.
For instance, innovative IA leaders have learned that effective adoption requires a deliberately integrated mindset and methodology. This holistic approach involves defining a robust IA analytics strategy, building a sustainable process framework to support the strategy, defining the right technology and data elements to answer the “crunchy questions”, and aligning roles and responsibilities organizationally to support strategy achievement.
At the same time, the most influential and impactful IA functions are using advanced analytics and visualization across the entire IA lifecycle, starting with risk assessment and planning and continuing through scoping, testing, and reporting. Innovative IA leaders challenge their teams on every assignment to incorporate additional data sets (both internal and external) and further expand their analysis.
Early adopters of advanced analytics are realizing the benefits of these investments and changing the rules of the game. Specifically, these leading IA functions are using advanced analytics to:
Fortunately, those IA functions that have not yet embraced advanced analytics can realize similar benefits. In our experience, it is never too late to begin the journey. Deliberate actions and strength of leadership can produce quick results, and a purposeful shift in leadership commitment to "do things differently" can set the wheels in motion to achieve the desired culture change. Whether you are just beginning the journey or well on your way, the following tips can help you achieve success:
Here, again, there are lessons to be learned from early adopters. Notably, the IA functions that grew their capabilities the quickest:
When done right, advanced analytics can offer IA functions—and their respective organizations—a host of benefits. These include:
For proof, one only needs to look at some real world examples. One organization, for instance, wanted to tackle its growing overtime rates and determine if there was a correlation between rising overtime activity and a recent increase in health and safety incidents. Leveraging data from the time entry system and the health and safety system, the IA team uncovered distinct patterns of behaviour stemming from poor staff planning, resulting in an increase in overtime costs and in health and safety incidents related to those areas of the organization.
Another organization that wanted to understand key drivers for chronic employee absenteeism turned to its IA function to help build and visualize data from its attendance management systems and external data sources to identify patterns of behaviour that could be antithetical to the organization’s attendance program. The audit produced data visualization dashboards that helped management identify attendance trends across a multitude of factors (e.g., demographics, geography, external and internal events, commute distance, etc.) and design attendance support programs targeted to groups or individuals requiring the greatest support. This helped management save costs associated with homogenized attendance support programs that would not have addressed the core issues.
IA at a third organization used analytics to explore health and safety concerns and a worrying increase in lost time injuries. Harnessing multiple data sources—including accident reports, weather data, crew schedules, personnel information, training records, work orders, and social media—enabled IA to better understand causal factors and predict employees at highest risk. Recommendations from this review resulted in improved training, modified work practices, enhanced safety requirements, and, most importantly, a dramatic reduction in lost time injuries.
As these examples show, the benefits of advanced analytics are real. IA teams that leverage advanced analytics consistently as part of a structured program, build specific integration points and procedures into their audit methodology, and make sure they are equipped to ask the right questions to effectively process information stand to gain more targeted and expedited insights into audit risk patterns—laying the foundation for more impactful and in-depth audit analyses.