When it comes to unleashing the full business impact of market intelligence data, many companies are trying to run before they have learned how to crawl. Before you take the plunge into Big Data and / or artificial intelligence (AI), ensure that you are capable of ‘connecting the dots’ between – and release the full value of insight of – your existing “small data” (existing market intelligence data sources). Otherwise your efforts are likely to be wasted. The key is access, adoption and integration.Big Data and AI. If you work in marketing, it is hard to pass a day without someone slipping these terms into a conversation, rightly or wrongly. As a technology company with strong roots in market intelligence and data science, we are the first to recognize the potential of Big Data and AI for marketing.The problem is that many companies are launching Big Data and AI (Watson anyone?) initiatives, when they are still struggling to unleash the full value of their existing “small data” (basic market intelligence data) and “human intelligence” (i.e., the skills and brainpower of their own people).In other words, these companies have yet to build the basic prerequisites for benefiting from these highly complex, expensive and sophisticated instruments. They are trying to run before they have learned how to crawl.
What do we mean by that? In a few words, it means that they have not yet achieved the 3 “A’s” for optimal insight creation:
Within the world of AI there is a famous joke that “AI is whatever hasn’t been done yet.” This refers to the fact that as machines become more capable, more and more tasks previously considered as requiring intelligence are often removed from the definition of what constitutes AI. This phenomenon called the “AI effect”.To some extent this is the same psychological trap that many companies fall into when thinking about AI and Big Data.Marketing faces one of the most complex challenges around: how to draw conclusions and patterns from the gigantic, chaotic and largely uncontrolled experiment of the marketplace. While the shift to online and the enhanced ability to run A/B testing is helpful, we are still only looking at the tip of the iceberg.
Clearly, we need a miracle. Something that can, somehow, capture this infinite variety and amount of data and learn from it to find hard patterns and suggest optimal decisions. Enter Big Data and AI.And clearly these two concepts are very promising in the long run. No matter how promising, however, it is important to remember that both of these concepts are still in their relative infancy and largely unproven in the most interesting (and complex) scenarios.In the meantime, Big Data and AI initiatives should not be used as an excuse for tackling the current obstacles extracting optimal value of market intelligence data, nor for ignoring high value (albeit less sexy) “low hanging fruit”.
And this is where we return to our earlier statement: you need to learn how to crawl before you try to run. Many of the companies launching Big Data and AI initiatives have not even come close to exploiting the full potential of their existing “Small Data” (basic market intelligence data) and skills, experience and brainpower of their people. Perhaps more surprisingly, even the specialized agencies producing multiple studies for the same customer often have not integrated these studies to provide a comprehensive, seamless and easily comparable analytical experience.
If your organization is incapable of achieving this modest “Small Data” insight optimization objective, it is very unlikely that you will be successful with the much greater challenges presented by Big Data and AI. Invest first in integration, access and adoption.
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