Every company has a story that details how their innovative product or service idea came to be. That story typically includes how they were founded, how they grew and expanded, and how they matured into the organization they are today. That story may encompass a journey that started over one hundred years ago—or it could be the newest startup that began with a fledgling idea less than a few years prior.
But what type of story does your company’s data tell? Do you even have the data? If so, do you have access to it? And what role does that data play in today’s M&A market?
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The story your company’s data tells is almost more important than the historical record that you might have documented in a book, a brochure, or perhaps in a digital document on your laptop. So how do you leverage it as part of an M&A transaction?
Aaron Yentz, Vice President at Blue Ops Partners, joined Joe Hellman, partner at Redpath and Company, to discuss the role that data analytics plays in helping deal teams, management teams, private equity, and investment bankers make the most of data during the sale process and to maximize value for their clients.
Assessing Data Quality: “Garbage In, Garbage Out!”
The quality of your company’s data relies on a myriad of factors including what systems you’re leveraging, how the data gets entered, and how often it gets updated. But what’s certain is that the quality of data is greatly affected by whether or not you have well-established processes and systems for collecting and entering the data you do gather.
Factors the contribute to less-than-optimal data quality include:
What About “Unusable” Data or “Missing” Data?
It’s not often that a company’s data is truly unusable or missing. In many instances, “missing” data might be due to assumptions that it does not exist because there are no KPI’s established that would leverage specific data sets. Typically, this assumption exists because the data was never looked for in the first place or pulled out and used as a measurement tool—and therefore leadership assumes the data is nonexistent.
Even data considered “unusable” may just need a little more work to mine the information that is there. Even incomplete data can help tell a story and highlight what’s going on in the business. It might just take a little more work to extract those specific nuggets that management can speak to in the transaction process.
How Do Companies Get at KPIs Within the Data Set?
If management doesn’t have the time, resources, or data to invest in integration or dashboard creation, the organization helping mine the data will focus on the “nice to have” KPIs. This includes leveraging the input of other transaction advisors (such as bankers) to understand what buyers are paying the most attention to and to get at KPIs that matter most for the business or industry.
Sometimes the process includes taking data from different systems and marrying them together to normalize the data set. But no system is perfect and there are typically always gaps in data. The goal when extracting data is to add structure to the data and provide explanations to ensure the analytics are still meaningful.
Be Ready for the Data Request
It’s getting more and more common for more granular data to be requested, especially on the buy-side. Teams should be prepared for those requests by addressing them effectively and in a timely manner—which can help give more comfort to the buyer.
Final Thoughts From Aaron Yentz: