What You Need to Know About Data Science - Winmo
Winmo highlights the rising importance of data scientists—professionals who analyze complex data sets using statistical analysis and machine learning to generate actionable business intelligence—tracing the evolution of data science from its academic roots in statistics through corporate shifts in quality management and technology adoption that have made data-driven decision-making essential for organizational growth.
At Winmo we continuously track trending job titles as a barometer for what skills have a growing value across the advertising and marketing industry. In the last few years, one stands out more than any other: data scientist.
These are people who filter, manage and analyze data sets. They apply human learning to machine learning to create the kind of intelligence their organizations can act on. They understand infrastructure and data relationships, and eat statistical analysis with a side of production coding for breakfast.
Where did data science come from?
Historically speaking, data science was, mostly, an academic discipline until about a decade ago—and we knew it as statistics until about 20 years ago. Every company uses data of some kind—even if it’s as basic as how much they earned and spent in a period. But those are rudimentary ledgers compared to the crazy genius-level data juggling required to be a data scientist. Those guys take data from across functions and processes, and understand the story it tells. But more importantly, they understand the importance of the story to the organization’s growth plans.
A straight line from early data science to now cuts through three corporate culture shifts:
- 1.
In the 1980s, the manufacturing sector had fallen in love with Phillip Crosby’s Absolutes of Quality Management and its “zero defects” philosophy. This focused on the measurement of processes in an attempt to eliminate defects and, by extension, the hidden costs of correcting them. Businesses everywhere began using phrases like “key performance indicators,” which had first found a home in the banking industry about a decade earlier. Companies were measuring everything, some of it useful, some of it less so. But by the end of the decade, measurement of at least some non-financial KPIs was a standard practice in most businesses.
- 2.
The tech boom that started in the early 1990s created a slew of high paying opportunities for workers with an interest in science, technology, engineering and math. Suddenly nerds were cool—and getting rich. Grade school kids, hoping to latch onto these new, high-paying dotcom jobs, directed their studies toward STEM subjects, which included some fundamentals of statistical analysis and some coding.
- 3.
By 2000, graduates who were comfortable with the rapidly changing pace of technology were already entering the job market; coincidentally, plummeting prices of storage media and the explosion of ADSL and broadband internet services were making electronic storage and transfer cheaper than it had ever been.
First we measured, then we educated our workforce, and then we created the technologies they needed. All at once, it seemed, technology and human ability to measure and make sense of huge amounts of data (Big Data) converged, and corporate data science was born.
So data science is just another name for business intelligence?
Most jobs in the agency, adtech and media sales fields involve some data manipulation, or at least an understanding of data terms. Whether it’s open rates, click-through, pageviews, bounce rates, abandoned shopping carts, sales opportunities won or lost, calls made per day…it’s almost impossible to get through a workday without being held accountable to some kind of numbers.
But that doesn’t mean business intelligence and data science are interchangeable disciplines or titles.
Business intelligence typically looks at that data and talks about what’s already happened. It’s primarily a reactive or responsive function. Data scientists take that data and use it to create models that can be used to predict the future. This requires advanced skills, tools that can manipulate staggering amounts of data, and sometimes multiple computers running in clusters or parallel to provide enough processing power. The data matters here, too. Business intelligence usually comes from simple internal data sources, whereas data science might pull data from dozens of internal and external sources.
Visualizing the flow of data through a process or system helps managers see trouble spots early so they can take action. This is true whether your organization is a shipping warehouse or a data warehouse. This visualization needs machine intelligence, usually found in tools like Tableau and Hadoop, SQL and NoSQL databases, programming languages like R, Python, Java and JavaScript, and various APIs. If it sounds techy and serious, it’s because data science is techy and serious.
Graphical representations of data using these tools go far beyond simple Excel charts, and while most of the published charts tend to be a look back, they can be used to visualize various possible future scenarios (but businesses tend to keep their predictions private).
See more visualizations like this one at Tableau’s Public Gallery.
What’s the benefit of hiring a data scientist?
Beyond simply measuring what your company does, or has done, a data scientist is a strategic role that can guide your company by spotting trends before they develop. A data scientist will find bubbles before they burst, and help you understand social, geographic, technological, economic and other factors that can affect your business.
Baseball writer Bill James once wrote, “I find it remarkable that, in listing offences, the league will list first—meaning best—not the team which scored the most runs, but the team with the highest batting average. It should be obvious that the purpose of an offense is not to compile a high batting average.”
And that’s where many businesses live. They know they should be measuring something, but end up measuring the wrong things. Batting averages don’t convert into wins and not all corporate measures convert into revenues. If revenue is important to your business, you need to identify the outputs and activities that affect revenue generation.
Similarly, if brand awareness is a priority, you’ll need a way to measure that; if social impact is your game, think about how to measure that. Data science is how you predict outcomes before they happen.
If you’re thinking about hiring a data scientist, remember there’s a gulf between business intelligence and data science. The combination of academic learning and technical skills required to be a data scientist come at a price, and an actual data scientist hire is likely to cost six figures, and maybe as much as 50 percent more than a business intelligence analyst or a data analyst.
Now all you need to do is run the numbers to see whether you need a scientist or an analyst.
Related
10 CMOs to Watch in 2018
The article highlights 10 Chief Marketing Officers facing significant challenges in 2018 due to declining tenures, tough market conditions, and brand crises—such as Mark Crumpacker at Chipotle struggling with ongoing company mistakes, Greg Revelle at Kohl’s navigating traditional retail struggles amid cautious consumer optimism, Brandon Rhoten at Papa John’s managing fallout from a major PR scandal, and Mark Censoprano at Signet Jewelers confronting millennial disinterest in diamonds—indicating a heightened demand for agency expertise as these CMOs strive to perform under pressure.
20+ D2C Brands Buying in Q1 2022
The content discusses the growing importance and challenges of direct-to-consumer (D2C) brands in e-commerce, highlighting Nike's successful shift to online sales, and previews an eBook listing over 20 digitally native D2C brands actively investing in marketing and growth strategies in Q1 2022, including examples of companies hiring new executives, leveraging acquisitions, and expanding PR and influencer efforts.
What Today's Brands Look for in Martech Partners
The article emphasizes that in the rapidly evolving and crowded martech landscape of 2024, vendors must deeply understand each brand’s unique business challenges and tailor their pitches accordingly, while also ensuring their technology solutions are truly plug-and-play and scalable to effectively stand out and meet brand marketers’ needs.
Agency and Brand Matchmaking with Setup's Joe Koufman
In a Win More podcast episode, John Zaldonis interviews Joe Koufman, founder and CEO of Setup, a marketing matchmaking company founded in 2014 that specializes in connecting brands with compatible marketing agencies, discussing the evolution and future of client-agency relationships, especially through the pandemic.
Creative Case Studies: 6 AI-Driven Campaigns That Delivered - Winmo
The article highlights six AI-driven marketing campaigns in 2025, including Heinz's use of AI-generated visuals to reinforce brand identity and BMW's fully integrated AI system for dynamic, context-adaptive advertising, demonstrating how AI enhances creativity, efficiency, and ROI in modern marketing strategies.
How Secure Are Your Most Valuable Accounts?
The article emphasizes that agencies must consistently over-deliver strategic value beyond expectations to retain clients, introduces Mirren’s Agency/Client Relationship Evaluation tool to assess and strengthen client relationships, and promotes the upcoming Mirren CEO Summit as an opportunity for agency leaders to learn growth strategies and operational improvements.