Which of the Five Types of Data Science Does Your Startup Need?

Startups, you are doing data science wrong. That’s the title of a post penned by Ryan Weald in GigaOm this week. Weald echoes DJ Patil’s idea: “product-focused data science is different than the current business intelligence style of data science.”

Weald points to a different model of data scientist, an engineer, not a statistician, who can perform queries and based upon some insights, improve the product with a few code changes and a push to git.

I like Weald’s post but disagree on one point. I don’t think there is one type of data scientist, but five.

  1. Quantitative, exploratory data scientists tend to have PhDs and use theory to understand behavior. I count Hal Varian, Chief Economist at Google, and Redpoint’s own Jamie Davidson, among them. Varian’s team researches the advertiser dynamics within the ads auction and compares those dynamics to theoretical auction models like theVickery auction. By combining theory and exploratory research, these data scientists improve products.
  2. Operational data scientists often work in the finance, sales or operations teams at Google. In the AdSense ops team where I started, we had a star data analyst who each week would discuss our team’s performance: our email response times, the satisfaction scores of our publishers, and changes in publisher behavior by segment. His work provided a feedback loop to improve the team’s tactics and efficiency. Only infrequently were these insights used to influence product.
  3. Product data scientists tend to belong to product management or engineering. This is the group of data scientists Weald writes about. PMs and engineers sift through logs and analysis tools to understand the way users interact a product and leverage that knowledge to refine the product. At Google, the ads quality team analyzed user clicks data to improve ad targeting.
  4. Marketing data scientists segment the user base, evaluate the performance of advertising campaigns, match product features to customer segments, and design content marketing campaigns. The marketing data scientist creates awareness and leads for the sales team, helping generate revenue.
  5. Research data scientists create insights as a product. Nate Silver is arguably the most famous of them. Silver’s work doesn’t influence a product; the analysis is the product itself. Sometimes the data science leads to a thought leadership whitepaper, or a blog post, or a financial report. It’s rarer for startups to employ research scientists because the output isn’t tied to revenue. But larger companies like Google do, think tanks do, financial institutions do.

These five types of data scientists span almost every department ofknowledge work. Sometime in the past thirty years, data science became inextricable from the day-to-day operation of these teams. Product, marketing, eng, sales all use data to make decisions. These teams use data to identify, understand and implement feedback loops and to reinforce the behavior a company desires.

To talk about data scientists might be too myopic. Your startup may need a research data scientist or one with a PhD. Or it may need an engineer with an understanding of basic statistics who can work up and down the Rails stack. Or another type all together.

Like any role, when hiring or recruiting a data scientist it’s important to identify what the key problems facing the business and the relevant skills the right candidate will need to solve those challenges.

Venkat Raman

Enterprise Product Consultant with an eye on Analytics

10y

How many types depends on the type of recipe you are gonna cook. So we can't restrict saying 1 or 5. Could be less or more or the same produces different flavor depending upon the other ingredients you add in the process. More over Data Scientist is not the only element playing a key card in the process of productizing a stuff which is pushing Analytics in the forefront. The only thing is everybody should have an eye for Analytics to make the whole process as a success.

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charles hatfield

Student at PCI Wind Turbine Technician

10y

Without data we could not have theory's that make any sense. But after we have data then science should take over not theory.

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People are data crazy right now and as your cartoon suggests, most don't know what to do with it! It's great to have data to analyze trends and sales, etc. but it has to be in the right hands to make the most of it!

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Roy W. Haas, Ph.D.

Statistician, Big Data, Little Data, No Data

10y

The arguments about "data science" remind me of arguments about what is "object oriented." Anyone ever figure that one out?

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Ryan Weald

CTO at Wave | Software Engineer

10y

Good post Tomasz, I totally agree that hiring is all about identifying what your company needs. I generalized my argument to startups to make it a coherent article, but I totally agree that there are certain specific startups that could use a more research focused person. From my experience those types of companies already know what they are looking for and generally don't have a problem hiring or building their team. I would also like to note that the engineer I described does not to only know a minimal amount of statistics, simply that they should be able to code at a professional level. There are many engineers at companies like Google and FB who would be top quality machine learning experts who are also capable of writing production code in Java, C++, etc.

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