Created by @sbalnojan for www.thdpth.com.


What is a data-heavy product?

A product that delivers value to the user mainly through data.

<aside> 💡 I’d love to call it “data product,” but the data mesh ruined that for all of us.

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The three kinds of data-heavy products:

  1. Infrastructure, products that help others build things with data
    1. Examples: dagster, SQLMesh, dbt, Meltano
  2. End-user products built by software engineers.
    1. Examples: Netflix’s recommendation engine, Amazon's “What others liked”, the Twitter API, the GitHub API, GitHub trending repositories
  3. End-user products built by data engineers, data scientists, or machine learning engineers.
    1. Examples: Recommendation systems, Machine Learning solutions, dashboards, “data products” in the Data Mesh sense of the word

<aside> 👉 Of course, there’s no real difference between 2 & 3, but we all like to believe there is. For the end-user, there isn’t; For product management, there shouldn’t. The point of listing them here explicitly is to remind you of that.

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<aside> đź’ˇ The difference between 1 and, 2 & 3 is material. While 2 & 3 turn data straight into value, you usually consider the value of (1) in the context of building 2 & 3.

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Let’s get into the checklist!

FYI:

Click on expand on the bullets below to get the details!

1) Data Questions (X of 9?)


<aside> 💡 The data questions help you understand the future value of the product you’re building.

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<aside> đź’ˇ The idea is simple: The future of data is forecasted to be dominated by all of the topics discussed below.

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2) Decision Cycle Questions (X of 8?)


<aside> đź’ˇ The decision cycle questions help you understand the value of your product today!

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<aside> đź’ˇ The idea is simple: the more you support, the less you have to integrate; thus, you provide more of a whole experience.

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3) Mkt & Positioning Questions (X of 4?)


<aside> 💡 The mkt & positioning questions help you understand whether you already have a clear product. Strong products can sell without good packaging, but average ones can’t sell without. And all sell better with it.

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4) Big Picture Questions (X of 5?)


<aside> đź’ˇ Big Picture questions help you determine whether you have a product fit for the data market.

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