However, the article’s questions are stated in a way that might cause even the most informed business stakeholders to scratch their heads. If most decision-makers can’t answer them knowledgeably, what can the organization do? Get BAs involved, of course! Having a BA participate in the question and answer sessions can alleviate a great deal of misunderstanding and help ensure success with digital projects.
This article imagines that for each of the 5 question types, there is a three-way conversation with a data scientist, a business decision-maker, and a BA. The questions the data scientist asks are from the article, which the BA rephrases to be more easily answered.
Data scientist to business stakeholder – First things first. What exactly do you want to find out with this digital effort?
Business stakeholder to data scientist – I’m trying to predict sales of a new product we’re thinking of launching.
Business analyst to business stakeholder:
I’m sure this project can help with that effort. But before we talk about specifics of the types of information you’re looking for, what is the business need for this effort? That is, what problems are you trying to solve? Let’s make sure this initiative, which is not going to be an easy undertaking, will address your need. Perhaps there is a quicker, less costly way to achieve your goals. And I have some related questions that will give us more context:
Data scientist to business stakeholder – Where will your data come from?
Business stakeholder to data scientist – I’m sorry, I don’t know the names of the specific databases. I thought I was here to make business decisions, not answer questions best answered by the IT folks.
Business analyst to business stakeholder – At this point we don’t need to know the names of the specific databases. What we mean by where the information will come from are things like:
Data scientist to business stakeholder – What data visualizations do you want us to choose?
Business stakeholder to data scientist – I’m sorry, I don’t understand what you mean. Do you mean like how I want to see the data? If so, I don’t know. What are the possibilities?
Business analyst to business stakeholder – There are a lot of tools that will take the data and interpret the results for you. They help you make sense of the tons of data you’ll be presented with. They can help you analyze data, point out anomalies, and send out alerts that you specify. They can be in the form of charts, dashboards, or whatever, but keep in mind that if they are hard to read, they will be meaningless to you. I can show you some examples and the pros and cons of such things as animation and use of images, but first let’s talk about the information itself.
Data scientist to business stakeholder – Which statistical analysis techniques do you want to apply?
Business stakeholder to data scientist – Well, statistics is not my strong suit. What are my choices?
Data scientist to business stakeholder – Regression, predictive, prescriptive, and cohort, and there are others, like descriptive and cluster.
Business stakeholder to data scientist – [blank stare]
Business analyst to business stakeholder – Maybe I can help here. These types of statistical analyses have a number of similarities. They include use of historical data, algorithms, models to train the machines, and business rules. Not to oversimplify and at a very high level, all predictive models make use of historical data and algorithms to predict future outcomes.
Here are questions based on examples of different outcomes using different statistical analysis:
So, to answer the question, we need to understand what you’re trying to accomplish. We’ll let her (nodding to the data scientist) figure out the most appropriate analysis method and tool.
Data scientist to business stakeholder – How can you create a data-driven culture?
Business stakeholder to data scientist – We already have a data-driven culture. Everyone in this organization understands how important data is to our ability to survive as an organization.
Business analyst to business stakeholder – This might be more complex than it first appears. In order to use historical data, which we need to do regardless of the chosen algorithms, it needs to be cleansed. Cleansing is needed to make the data predictive, and cleansing data takes lots of time and money. And it’s the last thing anyone wants to do. So I have some questions for you:
In sum, we’ve provided questions within 5 question types. However, to be effective, we BAs need to learn as much as we can about the digital world—about the world of digital transformation and what it means for the organization. We need to immerse ourselves in research and journal articles and think of how to make sense of it for our organizations. We need to think of digital projects from both the data scientist and business perspectives. And we can do that. After all, we’re BAs and that’s what we do best.
[i] Your Data Won’t Speak Unless You Ask It The Right Data Analysis Questions, By Sandra Durcevic in Data Analysis, Jan 8th 2019, https://www.datapine.com/blog/data-analysis-questions/
How do you define success for your team? Take a moment to think about this…
Remote work has transformed how organizations operate, with virtual teams becoming the new normal across…
Effective leadership has never been more critical. Whether managing a team in a high-pressure corporate…
Remote work has transformed how organizations operate, with virtual teams becoming the new normal across…
The Business Analysis Body of Knowledge (BABOK® Guide v3) is a comprehensive guide to the…
A certified Business Analyst (BA) has successfully passed an International Institute of Business Analysis (IIBA.org)…