Event Success. Alon Alroy
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The final step in the event data maturity curve is translating those data points into insights. On the attendee side, this data can help you improve the event experience in a number of ways. For instance, if you discover that 40 percent of your attendees are young, early-career professionals, you can tailor the content and agenda accordingly. If you were to gain better insights into why attendees choose your event over your competitors, you can lean into those key features. If you discover that 30 percent of your attendees are traveling to your event in the United States from Asia, it might make sense to host a standalone event that caters to that market specifically.
Improving the attendee experience will ultimately help drive ROE. If you can increase engagement in a measurable way—if you can curate experiences that speak to each attendee—attendees are far more likely to find value in attending and return year after year.
If you were to ask the average person what their best experience was at any event they've attended, the answers might range from meeting the person who changed their career trajectory to a meeting privately with a keynote speaker. Everyone who attends events on a regular basis has a few highlights that stand out above the rest, and they are much more likely to return to the events that facilitated them. If you can drive more of those experiences, if you can find out what gets people most excited and offer it to them on a consistent basis, you can create a loyal and engaged event attendee.
Using Data to Make Events Outcome-Oriented
Improving the event experience goes hand in hand with improving event outcomes. As we move along the maturity curve, outcomes will eventually be designed into the fabric of event experiences from day one. In other words, a specific event will be designed to achieve a specific outcome among a specific group of participants, optimized and measured every step of the way.
Looking a little further off into the future, this data will eventually allow an AI engine to help event experience leaders design events to achieve specific outcomes. We imagine a world where you can plug in your objectives, budget, target audience, and a few other data points and have an automated system recommend the appropriate event size, venue, host city, speakers, activations, and playbooks you can draw on. Just as an AI engine could inform decisions of how to design an event, so could it inform decisions around which accounts, attendees, sponsors, or exhibitors to target and the type of content that will help drive specific outcomes across that group.
This isn't a matter of science fiction, but rather a matter of data maturity, and we're already making significant strides in the right direction. Over time we will have enough data to train an AI system to provide these types of recommendations. It won't be easy, but it's absolutely within the realm of possibility. After all, plenty of other industries are already able to do this effectively, including entertainment (Netflix), e-commerce (Amazon), and social media (Facebook).
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