TEI 209: Predictive analytics for product managers – with Brian Brinkmann




The Everyday Innovator Podcast for Product Managers show

Summary: Use data to predict customer behavior and design better products.<br> Do you know which customers are most likely to stop using your product in the next month? Or, what actions your best customers take with your product when they start using it?<br> With the right data, product managers not only know the answers to such questions, but they also know what actions to take to keep customers and a whole lot more.<br> This is the area of predictive analytics and our guest is Brian Brinkmann, the VP of Products for a company involved in the revolution of business intelligence tools, leading to greater predictive capabilities. That company is Logi.<br> Brian is the perfect person to learn predictive analytics from because he is also a classic product manager, recognizing the value of customer interactions along with predictive data.<br> Summary of some concepts discussed for product managers<br> [1:53] What was your path into product management?<br> My first job in electrical engineering was in control systems for power plants, which led to a project designing user interfaces for those control systems. I learned about human-computer interaction and how to involve people in the process. From there, I went back to school for a dual degree MBA and Master of Engineering Management. I knew I wanted to go into product management, but needed some experience in the field. I worked as a strategic consultant and then eventually made my way into marketing and product management. My story is proof that you do not need a specific background to get into product management. If you want to do it, you’ll learn the skills you need to be successful.<br> [8:25] How do analytics figure into your work?<br> Product managers of applications like CRMs and healthcare management platforms know their business very well but often misunderstand how complicated analytics are. They need to get those analytics into the user experience so that the end users can get the data they need.<br> [10:22] What kinds of insights are you looking for in analytics?<br> We are looking to see why things happened and what will happen moving forward. If you can figure out what might happen, you can begin taking actions against it. A financial company wants to flag a fraudulent transaction right away. An iOT company wants to know that a machine failure is coming so they can try to prevent it from happening. It’s also a good way to understand customer acquisition and how to hold on to a customer. It’s much easier to maintain a relationship than it is to start a new one.<br> [13:38] Can you give an example?<br> If you are a $50 million per year business and your churn rate is 6 percent, if you can reduce it by half a percent, you’ll save $500,000. Everyone is excited about artificial intelligence and machine analytics, but we advise people to start by determining what their business problems are and what’s the best way to solve them. Otherwise, you are just using technology for technology’s sake. We also work with healthcare organizations to determine how likely someone is to be a no-show for an appointment based on their profile and past behavior. If someone is not likely to show up, they can send a reminder. Businesses can also use predictive analytics to determine if they are overstaffed or understaffed on a given day.<br> [17:40] How can product managers use predictive analytics to make decisions for their business?<br> The outcomes are as good as the data use you use to train the models. There might be seasonality involved or other factors. We advise people to monitor their models and track to see how well it did compared to its predictive outcome. You always need to be testing your assumptions and make sure the model is working. You have to be mindful that models will work in certain circumstances but not in others. There are people who will take action based on what those models say,