Discussion about this post

User's avatar
Chad Isenberg's avatar

Benn, how did you break into my brain and steal the article I'm currently writing?

I think this is such an important insight about data that I've personally struggled with. The action our data inspires is as much or sometimes more important than the truths and insights it reveals. We can sigh and say a dashboard objectively worthless all we want, but if it makes people happy and focused, it's having a material impact.

Expand full comment
Marcos's avatar

Great post, Benn, definitely hit on some key points and issues with value-add. There may be some areas where we might slightly disagree in terms of terminology and characterization. As someone who has worked in both the quantitative and qualitative sides of analysis, I've come to appreciate the value of each tool set, and I think there lies some of those issues you describe.

I think the main issue you are highlighting is that some data team are too strict in their adherence to what the data says (both in input and output) and perceived objectivity, while ignoring or discounting context, intuition, opinion/judgment on the principle that they are some sort of *bias*. We forget that data isn't everything, and there is value in qualitative analysis and analyst judgment. Things like argumentation, pragmatism, intuition, and context. At times, some data teams may lean too heavy on their data tools and discount the value of qualitative analysis. I'd argue it's more "lean into the squishy stuff" rather than "lean into bias".

I don't think we lose our role as truth seekers, but rather, we should not lose sight that we are a part of the rest of the company, aligned with the strategy and policy put forth by leadership and the data and analysis that is produced should support that strategy or policy, but always honest about the performance of that strategy or policy.

Not everything can be explained via clean data or the results of a model, but there is value in analytical judgment. Data teams develop a deep intuitive understanding of the underlying subject matter that comes from wading knee deep in the data day in and day out, and should lean into that more. There is deep and useful knowledge in the minds of the data team that can be synthesized qualitatively and with analytical judgment and in conjunction with leadership and company strategists.

In terms of Hinkie's strategy, I don't believe the data team should be "selling" it, per se, but rather providing analytical support to help decision-makers understand its progress. This requires being selective and using analytical judgment to determine what information is most relevant to share. We need to be analytical entities working in conjunction with decision-makers to provide them with the truth, or as close to it as possible, to ensure success.

While we may discount initial reports showing a decline in performance, we should still provide them with the analytical caveat that this is expected in the initial stages of the strategy and it is important to recognize that it may take time before we start seeing actual signals in the data.

Expand full comment
22 more comments...

No posts