I’ll admit, like many people of my generation, I grew up in an advertising business that was infinitely less-complicated than the one I work in now. In fact, not only was it less complicated, it was more effective.
Great brands—the brands we remember, admire and use today—were mostly built with great headlines, art and design. So agencies were heavy in copywriters, art directors and account people to sell the work. In the words of a notable adman I grew up with, agencies “Put their money where they made their money.” In creative.
Of course today, in the age of big data, where we make our money is anything but creative. Creative is told to be faster and cheaper. We behave as if "availability" is a "capability." We sling cliches and we call them insights.
Where agencies make their money today is in data. They make it in analyzing data. In packaging data. In manipulating data. And in selling to the easily-gulled the idea that we know what all this data means.
Where agencies make their money today is in data. They make it in analyzing data. In packaging data. In manipulating data. And in selling to the easily-gulled the idea that we know what all this data means.
You only have to spit these days to hit a data-conspiracy theorist who
believes that the data-surveillance-state being built by Google, Facebook,
Amazon, Russia, the US, the NSA, the Chinese and a few dozen other entities
will render us easily-manipulated by those companies. So easily-manipulated that our every action
and reaction will be predicted, controlled and monetized by those companies.
They’ll know what we’re going to buy, where we’re going to eat, who we’re
going to vote for and who we’re likely to sleep with. They’ll know more about
us than we know about ourselves and will, in time, use their knowledge to turn
us into docile dotards who will turn over our entire paycheck to anyone who can
use predictive analytics like a Borscht Belt comedian uses a whoopie cushion.
That’s fine and apocalyptic.
Only, I don’t believe it.
Because for all the precision and brilliance of big data as it exists today when our every keystroke or eye-movement is being tracked, 37% of the non-work email I get is for baldness remedies, 12% are for home loans or chimney-sweeping services and 51% are for brides, Asian, Ukrainian or Russian. Presumably certified pre-owned virgins.
Because for all the precision and brilliance of big data as it exists today when our every keystroke or eye-movement is being tracked, 37% of the non-work email I get is for baldness remedies, 12% are for home loans or chimney-sweeping services and 51% are for brides, Asian, Ukrainian or Russian. Presumably certified pre-owned virgins.
In fact, I can’t think of a single brand, with the possible exception of
Amazon (which in reality is built not on a data strategy but on a tax-avoidance
strategy) whose eminence you can remotely attribute to data strategy.
Nevertheless, it seems the current superstars of our non-creative “creative”
industry are data scientists or data strategists.
Just now in the nearly moribund and always un-insightful “Agency Spy” there’s an
article about a “customer experience agency” that’s just hired a new svp of
data and insights.
Again, I’ll confess to my ignorance. I have virtually no idea what a
customer experience agency does. About 97% of the customer experiences I have
are bad experiences. Most times when I buy something, I do it in spite of my customer
experience.
Then I wondered, about what this new svp would be doing. According to
the agency’s CEO, “he will deliver more customer loyalty and business growth to
clients.” And his “deep knowledge and expertise in leading data and analytics…will
better serve our clients to create customer experiences that matter.” The new
svp himself adds, I committed “to data and finding the intersection between
customer and business truths that inspires thoughtful human experiences…”
For the life of me I have no idea what a customer truth, business truth
or thoughtful human experience is, at least as it pertains to a company.
The sad fact is, I think as an industry we have almost completely forgotten what a "thoughtful human experience" is. Most depictions of carbon-based bipeds I see on television have as much emotional truth as a birthday email from Spirit Airlines.
If you ask me, our industry should TM the portmanteau Fauxthenticity. That's something that looks about as real as Donald Trump's toupee. Below is what I mean. Do either of these pull on any of your heartstrings that haven't been blowtorched by a lifetime of saccharine-steeped Hallmark sentiments?
If you ask me, our industry should TM the portmanteau Fauxthenticity. That's something that looks about as real as Donald Trump's toupee. Below is what I mean. Do either of these pull on any of your heartstrings that haven't been blowtorched by a lifetime of saccharine-steeped Hallmark sentiments?
I quickly decided that was way too much work. And my friends way too cynical.
Instead, I decided to Google, “What Does a Data Strategist Do?”
I found these answers.
Answer 1:
Answer 1:
What is a data
strategist? Quite simply it is the person who is the business owner of the big
data space at a company. From my experience, IT is really great at what IT
does. So you have IT architects who can put together a hadoop cluster and have
it up and running smoothly. And you have data scientists who can analyze the
data and write the algorithms. But the type of people who fill these roles
don’t have their eye on the customer experience or the running of the business
like a business manager would. That’s where the data strategist comes into
play. This person is the business person on the team. The data strategist is the role I fill.
My job is to manage the
space like I am growing a company with in a company or a market. Big data is a
growing function in a lot of companies and someone needs to understand how to
grow it so that it adds value to the customer experience and the business’s
bottom line. Data scientists and IT architects, don’t often do this. But a data
strategist does. In fact that is what the data strategist needs to be the most
grounded in.I think a good data strategist is someone with an MBA who
understands the business side of the equation yet knows the technology and
analytics well enough to know what the IT and the data scientist are doing and
the tools they are using. In essence, a data strategist can speak the language
of IT and analytics. Now being able to write an algorithm in Mahout would be
nice but not required. I don’t write the algorithms, but I know what Mahout is
and how to use it to grow the business.
I also happen to know R and have spent
a few years of my career in analytics. I know the difference between REST and
SOAP (I know the IT guys think this is basic but trust me, most of the business
people reading this have no clue what I just wrote). I also know how to code in
some language and those languages that I don’t know how to code in, I know what
they can do and what their limits are as well as understanding the tools IT is
using and why they are being used from both a business and IT perspective. This
person needs to be well rounded in finance, marketing, leadership and other
areas of the business. Essentially acting as a business owner for data.
Answer 2:
As a Lead Data Strategist, you will help identify and deploy
data-driven solutions that demonstrate the value of internal or external data
assets and technologies with active client or business needs. You will work
closely across client strategy, data partnerships, and the product owners to
identify opportunities for high-impact development initiatives.
You will help articulate and communicate the roadmap of development and initiatives and consolidate existing solutions into a globally scalable catalog of executable intellectual property. This team will facilitate the development of new data-driven innovation by leveraging the latest technologies and methodologies across AI, machine learning, and data science to benefit __________ and our clients through collaborative co-development, commoditization of existing solutions, and proactive innovation.
You will help articulate and communicate the roadmap of development and initiatives and consolidate existing solutions into a globally scalable catalog of executable intellectual property. This team will facilitate the development of new data-driven innovation by leveraging the latest technologies and methodologies across AI, machine learning, and data science to benefit __________ and our clients through collaborative co-development, commoditization of existing solutions, and proactive innovation.
Answer 3:
Drew Conway’s famous venn diagram describes the skill set of a
data scientist as mixture of hacking skills, math & statistics knowledge
and substantive expertise. Conway’s diagram is certainly helpful when thinking
about data scientists –
but it does not bring to the table all skills required to make data science projects succeed. A
productive data science team must cover more ground than conway’s diagram.
What is
needed? Three things, in essence: (a) a non-stop and rigorous big picture &
conceptual view, (b) excellent client-facing communication skills and (c) a
passion for painstakingly untangling the idiosyncrasies of the application
domain. We have found that these talents are found rarely in (excellent) data
scientists. What is more, taking care of the big picture – and being the
gateway to the client and her domain requires an entirely different way of
working. Constant interruptions are the norm, which non-syncable with data
science work, which often requires methodological deep dives and focused work.
Hence, the role of the data strategists, which focuses on dealing with client
issues and allows the data scientists to work productively.
Again, I’ll confess my
ignorance.
Not only do I have no idea
what any of this means, I doubt anyone else does either, least of all people who
buy things.
I also don’t care. And never will.
When I see a real-live example
of data science working on a real-live person, we can have a conversation.
You bring the disposable syringes.
I’ll bring the heroin.
I’ll bring the heroin.
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