Big Data Dilemma: Save Me Money Versus Make Me Money
My friend Dan sent me this press release (since he knows that I like all things "Data Analytics" related). In the press release, "Boeing Announces Data Analytics Agreements with Six Airlines," Boeing announces that they are providing advanced analytic solutions to several airline customers including:
This is a smart move by Boeing to create new services (and new sources of revenue) to help its airline customers get more value out of their investments in Boeing aircraft. It even sets the stage for Boeing to expand beyond just servicing and supporting Boeing aircraft to servicing other aircraft (Airbus, Bombardier, Embraer Lockheed, McDonnell Douglas, etc.) in order to create even more monetization opportunities for Boeing. I love it!
However, I'm always just a bit distressed by organizations that are so quick to give up their data for a short-term win. It won't be long until all the airlines have the same analytic services being provided by Boeing or GE or Pratt & Whitney. And if everyone has the same analytics, what's the long-term source of competitive advantage? In fact, I think it boils down to a very important organizational and cultural mentality:
Does your organization see big data as an opportunity to "Save Me More Money", or does your organization see big data as an opportunity to "Make Me More Money"?
This is not an insignificant question, because it sets the tone for your big data and analytics efforts and investments, and how committed your organization is to leveraging data and analytics to power the business.
It's a corporate cultural and management issue and I see it all the time in my big data travels. Some companies are focused on the "save me more money" aspects of big data (which it then makes sense to outsource) but others are focused on the "make me more money" aspects of big data where they see data and the associated insights as a means for uncovering new monetization opportunities. This corresponds to Phase IV: Insights Monetization (see Figure 1).
Figure 1: Big Data Business Model Maturity Index
The "Insights Monetization" phase of the Big Data Business Model Maturity Index guides organizations to focus on capturing, refining and re-using the analytic insights (captured in Analytic Profiles – see "Orphaned Analytics" blog), to identify "white spaces[1]" in the markets to create new monetization opportunities such as:
So what insights might these airlines be forfeiting – insights that might lead to new monetization opportunities – by outsourcing some of their analytics to Boeing? In order to answer this question, we first need to identify the airlines' key business entities; that is, what are the business entities around which the airline would want to gather behavioral insights such as tendencies, inclinations, propensities, usage patterns, interests, passions, associations and affiliations? Well, my starter list of key business entities for an airline would include the following:
The next step would be to identify (brainstorm) the types of [predictive] insights that one might want to capture on each key business entity, such as:
I think you can start to see the realm of what's possible (if not, you may want to sign up for one of our Vision Workshops) with respect to the types and levels of insights that can be gathered about the organization's key business entities even from activities that start out to "save me more money" perspective.
Transportation Industry at Phase IVLet's see another example of Phase IV in action: transportation. Let's say that you operate a fleet of vehicles (company cars, rental cars, taxis, limos, delivery trucks, shipping trucks, etc.). While the car and truck manufacturers could (and probably will) offer analytics to help fleet operators to reduce their operating and maintenance costs, the operators of those vehicles should care about the analytics because those vehicles are emitting tons of potentially valuable data about customer preferences and usage patterns, travel congestion, destination preferences and product performance. For example:
In fact, the "exhaust" from the operation of these vehicles could be more valuable than the vehicle itself!!
SummaryIt's very seductive to chase after the "low hanging fruit" by choosing to outsource your big data "save me more money" efforts. And there is nothing wrong with those short-term wins.
However, organizations should not make short-term cost-saving decisions that sacrifice the longer-term monetization and competitive differentiation opportunities. If everyone is using the same analysis to run their businesses, then where are the sources of competitive differentiation?
If you look at analytics just as a way to drive out costs, then you probably should outsource as much analytics as possible. However, if you believe that the exhaust from your product and service usage might be more valuable than the product and/or service itself, then you need to embrace big data analytics as a source of competitive differentiation.
Yes Dan, our Big Data challenge is up-hill both directions!
[1] "White space" is defined as unmet and unarticulated needs in the market. It is where products and services don't exist based on the present understanding of values, customer needs or existing competencies.
The post Big Data Dilemma: Save Me Money Versus Make Me Money appeared first on InFocus.
Source: Big Data Dilemma: Save Money vs Make Money | @BigDataExpo #IoT #BigData #Analytics
No comments:
Post a Comment