It’s MLB playoff time, and my team (the Tribe) is there, again. (Pregnant pause to enjoy the moment.)
A while back, the film “Moneyball” showed us how the Oakland A’s built a super-competitive sports franchise on analytics, essentially “competing on analytics”, within relevant business parameters of a major league baseball franchise. The “Moneyball” saga and other examples of premier organizations competing on analytics were featured in the January 2006 Harvard Business Review article, “Competing on Analytics” (reprint R0601H) by Thomas Davenport, who also authored the book by the same name.
The noted German doctor, pathologist, biologist, and politician, Rudolph Ludwig Karl Virchow called the task of science “to stake out the limits of the knowable.” We might paraphrase Rudolph Virchow and say that the task of analytics is to enable you tostake outeverything that you can possibly know from your data.
So, what do these thoughts by Davenport and Virchow have in common?
In your business, you strive to make the highest quality decisions today about how to run your business tomorrow with the uncertainty that tomorrow brings. That means you have to know everything you possibly can know today. In an effort to do this, many companies have invested, or are considering an investment, in supply chain intelligence or various analytics software packages. Yet, many companies who have made huge investments know only a fraction of what they should know from their ERP and other systems. Their executives seem anxious to explore “predictive” analytics or “AI”, because it sounds good. But, investing in software tools without understanding what you need to do and how is akin to attempting surgery with wide assortment of specialized tools, but without having gone to medical school.
Are you competing on analytics?
Are youmaking use of all of the data available to support better decisions in less time?
Can you instantly see what’s inhibiting your revenue, margin and working capital goals across the entire business in a context?
Do you leverage analytics in the “cloud” for computing at scale and information that is always on and always current?
I appreciate everyone who stops by for a quick read. I hope you found this both helpful and thought-provoking.
As we enter this weekend, I leave you with one more thought that relates to “business intelligence” — this time, attributed to Socrates:
“The wisest man is he who knows his own ignorance.”
There is a lot of buzz about the “autonomous” supply chain these days. The subject came up at a conference I attended where the theme was the supply chain of 2030.But, before we turn out the lights and lock the door to a fully automated, self-aware, supply chain “Ava Ex Machina”, let’s take a moment and put this idea into some perspective.
I’ve heard the driverless vehicle used as an analogy for the autonomous supply chain. However, orchestrating the value network where goods, information and currency pulse freely, fast, and securely between facilities, organizations, and even consumers, following the path of least resistance (aka the digital supply chain), may prove to be even more complex than driving a vehicle. Digital technologies,such as additive manufacturing, blockchain, and more secure IoT infrastructure,advancethe freedom, speed and security of these flows. As these technologies makes more automation possible, as well as a kind of “autonomy”, the difficulty and importance of guiding these flows becomes ever more crucial.
Most sixteen-year-old adolescents can successfully drive a car, but you may not want to entrust your global value network to them.
Even Elon Musk says that Tesla autopilot will never be perfect.
Before you can have an autonomous supply chain,you need to accelerate the Detect, Diagnose, Direct Cycle – let’s call it the 3-D Cycle, for short, not just because it’s alliterated, but because each “D” is one of three key dimensions of orchestrating your value network. In fact, as you accelerate the 3-D Cycle, you will learn just how much automation and autonomy makes sense.
Figure 1
Detect, Diagnose, Direct
The work of managing the value network has always been to make the best plan, monitor issues, and respond effectively and efficiently. However, since reality begins to diverge almost immediately from even the best plans, perhaps the most vital challenges in orchestrating a value network are monitoring and responding.
In fact, every plan is really just a response to the latest challenges and their causes.
So, if we focus on monitoring and responding, we are covering all the bases of what planners and executives do all day . . . every day.
Monitoring involves detecting and diagnosing those issues which require a response. Responding is really directing the next best action. That’s why we can think in terms of the “Detect, Diagnose, Direct Cycle”:
Detect(and/or anticipate) market requirements and the challenges in meeting them
Diagnose the causes of the challenges, both incidental and systemic
Directthe next best action within the constraints of time and cost
The 3-D Cycle used to take a month, in cases where it was even possible. Digitization – increased computing power, more analytical software, the availability of data – have made it possible in a week. Routine, narrowly defined, short-term changes are now addressed even more quickly under a steady state – and a lot of controlled automation is not only possible in this case, but obligatory. However, no business remains in a steady state, and changes from that state require critical decisions which add or destroy significant value.
You will need to excel at managing and accelerating the 3-D Cycle, if you want to win in digital economy.
There is no industry where mastering this Cycle is more challenging than in retail, but the principles apply across most industries.
Data Is the Double-edged Sword
The universe of data is exploding exponentially from growing connections among organizations, people and things, creating the need for an ever-accelerating 3-D Cycle. This is especially relevant for retailers, and it presents both a challenge and an opportunity for competing in the digital economy with a digital value network. Redesigned, retail supply chains, enabled with analytics and augmented reality, are not only meeting, but raising consumer expectations.
Figure 2
Amazon’s re-imagination of retail means that competitors must now think in terms of many-to-many flows of information, product, and cash along the path of least resistance for the consumer (and not just to and from their own locations). This kind of value network strategy goes beyond determining where to put a warehouse and to which stores it should ship. Competing in today’s multi-channel world can mean inventing new ways to do business, even in the challenging fashion space – and if it is happening in fashion, it would be naive to think rising consumer expectations can be ignored in other retail segments, or even other industries. Consider a few retail examples:
Zaraleverages advanced analytics, not only to sense trends, but also to optimize pricing and operations in their vertically integrated supply chain.
Stitch Fixis changing the shopping model completely, providing more service with less infrastructure.
Zolando has been so successful in creating a rapid response supply chain that they are now providing services to other retailers.
Nordstrom, of all organizations, is opening “inventoryless” stores.
Walmart has been on an incredible acquisition and partnership spree, recently buying Flipkart and, as early as two years ago, partnering with JD.com. And, then, there is the success of Walmart.com.
Target is redesigning the way their DC’s work, creating a flow-through operation with smaller replenishment quantities.
Yet, many companies are choking on their own ERP data, as they struggle to make decisions on incomplete, incorrect and disparate data. So, while the need for the 3-D Cycle to keep pace grows more ever more intense, some organizations struggle to do anything but watch. The winners will be those who can capitalize on the opportunities that the data explosion affords bymaking better decisions faster through advanced analytics (see Figure 2).
The time required just to collect, clean, transform and synchronize data for analysis remains the fundamental barrier to better detection, diagnosis and decisions in the value network. A consolidated data store that can connect to source systems and on which data can be consolidated, programmatically “wrangled”, and updated into a supra data setforms a solid foundation on which to build better detection, diagnosis, and decision logic that can execute in “relevant time”. This can seem like an almost insurmountable challenge, but it is not only doable with today’s technology, it’s becoming imperative.And, it’s now possible to work off of a virtual supra data set, but that’s a discussion for another day.
Detect, Diagnose and Direct with Speed, Precision & Advanced Analytics
Detection ofincidentalchallenges (e.g. demand is surging or falling based on local demographics, a shipment is about to arrive late, a production shortfall at a vendor, etc.) in your value network can be significantly automated to take place in almost real-time, or at least, in relevant time. Detection of systemic challenges will be a bit more gradual and is based on the metrics that matter to your business, such as customer service, days of supply, etc., but it is the speedand, therefore, the scope, that is now possible that drives better visibility from detection.
Diagnosing the causes of incidental problems is only limited by the organization and detail of your transactional data. Diagnosing systemic challenges requires a hierarchy of metrics with respect to cause and effect (such as the SCOR® model). Certainly, diagnosis can now happen with new speed, but it is the combination of speed andprecision that makes a new level of understanding possible through diagnosis.
With a clean, complete, synchronized data set that is always available and always current, as well as a proactive view of what is happening and why, you need to direct the next best action while it still matters. You need to optimize your trade-offs and perform scenario and sensitivity analysis.
Figure 3, below, shows both incidental/operational and systemic/strategic examples for all three dimensions of the 3-D Cycle.
Figure 3
Speed in detection, speed and precision in diagnosis, and the culmination ofspeed, precision and advanced analytics in decision-makinggive you the power totranspose the performance of your value network to levels not previously possible. Much of the entire 3-D Cycle and the prerequisite data synchronization can be, and will be, automated by industry leaders. Just how “autonomous” those decisions become remains to be seen.
Fortunately, you don’t need Ava Ex Machina, but your ability to develop a faster and better (and, I will even say more autonomous) 3-D Cycle is fundamentalto your journey toward the digital transformation of your value network.
The basic ideas of detecting, diagnosing and directing are not novel to supply chain professionals and other business executives. However, the level of transparency, speed, precision and advanced analytics that are now available mandate a new approach and promise dramatic results.Some will gradually evolve toward a better, faster 3-D cycle. The greatest rewards will accrue to enterprises that climb each hill with a vision of the pinnacle, adjusting as they learn. These organizations will attract morerevenue and investment. Companies that don’t capitalize on the possibilities will be relegated to hoping for acquisition by those that do.
Admittedly, I’m pretty bad at communicating graphically, but I’ve attempted to draft a rudimentary visual of what the architecture to support a state-of-the-art 3-D Cycle could look like (in Figure 4 below), as a conceptual illustration for facilitating discussion.
The convergence of cloud business intelligence (BI) technology and traditional advanced planning solutions supports my point,and that is definitely happening.
As the unstoppable train of time pulls us into the weekend, I leave you with this thought to ponder:
“Life is short, so live it well, in gratitude, honesty and hope, and never take it for granted.”
If you can’t answer these 3 sets of questions in less than 10 minutes (and I suspect that you can’t), then your supply chain is not the lever it could be todrive more revenue with better margin and less working capital:
1)What are inventory turns by product category (e.g. finished goods, WIP, raw materials, ABC category, etc.)? How are they trending? Why?
2) What is the inventory coverage? How many days of future demand can you satisfy with the inventory you have on-hand right now?
3) Which sales orders are at risk and why? How is this trending? And, do you understand the drivers?
Global competition and the transition to a digital economy are collapsing your slack time between planning and execution at an accelerating rate.
You need to answer the questions that your traditional ERP and APS can’t from an intelligent source where data is always on and always current so your supply chain becomes a powerful lever for making your business more valuable.
You need to know the“What?”and the“Why?“so you can determine what to do before it’s too late.
Since supply chain decisions are all about managing interrelated goals and trade-offs, data may need to come from various ERP systems, OMS, APS, WMS, MES, and more, so unless you can consolidate and blend data from end-to-end at every level of granularity and along all dimensions, you will always be reinventing the wheel when it comes to finding and collecting the data for decision support. It will always take too long. It will always be too late.
You need diagnostic insights so that you can know not just what, but why. And, once you know what is happening and why, you need to know what to do — your next best action, or, at least, viable options and their risks . . . and you need that information in context and “in the moment”.
In short, you need to detect opportunities and challenges in your execution and decision-making, diagnose the causes, and direct the next best action in a way that brings execution and decision-making together.
Some, and maybe even much, of detection, diagnosis and directing the next best action can be automatedwith algorithms and rules. Where it can be, it should be. But, you will need to monitor the set of opportunities that can be automated because they may change over time.
If you can’t detect, diagnose and direct in a way that covers your end-to-end value network in the time that you need it, then you need to explore how you can get there because this is at the heart of adigital supply chain.
As we approach the weekend, I’ll leave you with this thought to ponder:
“Leadership comes from a commitment to something greater than yourself that motivates maximum contribution from yourself and those around you, whether that is leading, following, or just getting out of the way.”