In Chapter 8 of my new book The Economics of Data, Analytics, and Digitalization Transformation, I discuss the 8 Laws of Digital Transformation. My goal for chapter 8 was to push folks out of their comfort zones, especially with respect to how they are defining Digital Transformation success. Why? Because too many folks dont really understand Digital Transformation. For example, from the Forbes article 100 Stats On Digital Transformation And Customer Experience, we get the following factoid:
21% of companies think theyve already completed digital transformation
To that factoid, I say BS! I think those 21% of companies are confusing Digitalization with Digital Transformation. Digitalization is the conversion of human-centric analog tasks into digital capabilities. For example, digitalization is replacing human meter readers, who manually record home electricity consumption data monthly, with internet-enabled meter readers that send a continuous stream of electricity consumption data to the utility company.
But Digital Transformation is something bigger, harder, and much more valuable:
Digital Transformation is where organizations have created a continuously learning and adapting culture, both AIdriven and humanempowered, that seeks to optimize AI-Human interactions to identify, codify, and operationalize actionable customer, product, and operational insights to optimize operational efficiency, reinvent value creation processes, mitigate new operational and compliance risk, and continuously create new revenue opportunities.
Digital Transformation is about predicting whats likely to happen, prescribing recommended actions and continuously-learning and adapting (autonomous) faster than your competition.
Digital Transformation is about creating an organization that continuously explores, learns, adapts, and re-learns. Wash, rinse, repeat. Every customer engagement is an opportunity to learn more about the preferences and behaviors of that customer. Every product interaction or usage is an opportunity to learn more about the performance and behaviors of that product. Every employee, supplier and partner engagement provide an opportunity to learn more about the effectiveness and efficiencies of your business operations.
To create a continuously learning intelligent organization, organizations need to master the transition from reporting to predicting to prescribing to autonomous analytics. Now I know that most analytics maturity models stop at prescriptive analytics (descriptive to predictive to prescriptive), but thats old school thinking. The world is changing, and the new analytics maturity goal is autonomous analytics (Figure 1).
This Analytics Maturation Curve provides a guide to help organizations transition through the three levels of analytics maturityfrom reporting to autonomous:
There are a couple of different ways or uses cases for exploiting autonomous analytics. One is the creation of autonomous devices and the other is the creation of autonomous processes. Lets review each.
Okay, I have certainly beaten this topic to death, but it bears repeating because it is such a game changer for any organization that sells products (or products as a service). Tesla is exploiting its ever-growing body of operational and driving data to continuously train the autonomous Tesla Artificial Intelligence-based Full Self-Driving (FSD) brain powers the Tesla semi-autonomous car. Tesla mines this data to uncover and codify operator, product, and operational insights then get propagated back to each individual car resulting in continuously-refining and adapting capabilities such passing cars on the highway, navigating to the off ramp, maneuvering around traffic accidents and debris on the roads, and parking.
Tesla autonomous cars are exploiting the capabilities of AI to create continuously learning autonomous cars that get more reliable, more efficient, safer, more intelligent, and consequently more valuable through usage¦with minimal human intervention (Figure 2).
Tesla is not alone in building autonomous products. John Deere is building autonomous farm tractors, Caterpillar is building autonomous construction equipment, and Nuro is building autonomous delivery vehicles because you gotta get that pizza delivered on time. Heck, one cant be considered a serious industrial company if you dont have a plan for creating autonomous products.
As operations become more complicated and more real-time, its becoming harder for organizations to ensure that their operating policies and procedures are evolving as fast as their business and operating environments. Digitalization provides a golden opportunity to improve operational effectiveness by replacing human-centric analog tasks with digital capabilities. That not only reduces human time and expense but allows organizations to capture more real-time, granular data about customer usage patterns and product performance characteristics.
This is the perfect time for leveraging AI to create autonomous policies, and procedures that can evolve at the speed of the business¦with minimal human intervention. This evolution to autonomous policies and procedures starts by replacing code-based procedures and policies with AI-based learning-based procedures and policies (Figure 3).
Using AI, we can transition from static policies to autonomous policies that learn how to map any given situation (or state) to an action to reach a desired goal or objective with minimal human intervention. These autonomous policies would dynamically learn and update in response to constantly changing environmental factors (such as changes in weather patterns, economic conditions, price of commodities, trade and deficit balances, global GDP growth, student debt levels, fashion trends, Cubs winning the World Series, etc.).
Autonomous policies and procedures not only can ensure that the organization is making informed business and operational decisions, but can also combat bias, prejudice, and discrimination in making decisions. For example, Malcolm Gladwells Talking to Strangers highlights how AI-informed decisions can lead to equitable decisions in the judicial system.
Economist Sendhil Mullainathan examined 554,689 bail hearings conducted by judges in New York City between 2008 and 2013. Of the more than 400,000 people released, over 40% either failed to appear at their subsequent trials or were arrested for another crime. Mullainathan applied an ML program to the raw data available to the judges and the computer made decisions on whom to detain or release that would have resulted in 25% fewer crimes.
However, AI-driven policy decisions have their own challenges. As I discussed in Ethical AI, Monetizing False Negatives and Growing Total Addressabl…, AI model confirmation bias is the tendency for an AI model to identify, interpret, and present recommendations in a way that confirms the AI models preexisting assumptions. AI model confirmation bias feeds upon itself, creating an echo chamber effect with respect to the biased data that continuously feeds the AI models. Overcoming AI model confirmation bias starts by 1) understanding the costs associated with False Positives and False Negatives and 2) building a feedback loop where the AI model can continuously-learn and adapt from the False Positives and False Negatives.
Transitioning from Descriptive to Autonomous analytics is a game-changer but must be framed against the Data & Analytics Business Maturity Index to help organizations become more effective at leveraging data and analytics to power their business (Figure 4).
By the way, Jeff Frick does a marvelous job grilling me on the 8 Laws of Digital Transformation. The video is a lot more interesting than this blog. Grab some Capn Crunch and enjoy the conversation!