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One of the main points highlighted in the podcast episode is the importance of adopting a product thinking approach when it comes to data. This involves treating data as a product and organizing efforts around user needs. By aligning data teams with the value they bring to users, organizations can establish a connection between their work and meaningful outcomes. This shift in mindset from a project-based approach to a product-based approach can act as a catalyst for broader organizational transformation and the embrace of product thinking in other areas of the business.
The podcast episode emphasizes that implementing Data Mesh and changing the operating model of an organization requires significant transformation and a shift in mindset. Effective transformation takes time and effort, and it is important to recognize that it is not a simple switch that can be flipped overnight. The episode encourages organizations to embrace actual transformation, not just talk about it, by adopting new ways of working that demonstrate the benefits and value of change. It is emphasized that actions speak louder than words in driving a transformation in organizational mindset.
The episode explores the idea that Data Mesh should be implemented in a way that suits the specific context and existing ways of working within an organization. While change is necessary, attempting a complete revolution is less likely to succeed than an evolution that builds upon existing structures. It is suggested that starting with a small domain or team that can fulfill some of the Data Mesh principles and show success can be a more practical and effective approach. In order to achieve sustainable change, it is important to tailor the implementation of Data Mesh to the organization's unique characteristics and needs.
The podcast discusses how Data Mesh can bring about a significant impact on the operating model of an organization. Two key principles of Data Mesh, decentralized domain ownership of data and data as a product, are highlighted as having a profound influence on the operating model. Adopting a product thinking mindset ensures that teams have a clear understanding of the business goals and user value they are serving. Long-lived, cross-functional teams take ownership and responsibility for data products throughout their lifecycle, driving continuous improvement and innovation. This new operating model enables adaptability, flexibility, and a focus on user value.
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Transcript for this episode (link) provided by Starburst. See their Data Mesh Summit recordings here and their great data mesh resource center here. You can download their Data Mesh for Dummies e-book (info gated) here.
Iulia's LinkedIn: https://www.linkedin.com/in/iuliavarvara/
In this episode, Scott interviewed Iulia Varvara, Advisory Consultant in Digital and Organizational Transformation at Thoughtworks. To be clear, she was only representing her own views on the episode.
Some key takeaways/thoughts from Iulia's point of view:
Iulia started with a few basics about general transformation and digital transformation, whether that includes data or not. To really be able to embrace a digital and data-driven future, organizations need to embrace product thinking across the entire organization. They need to align their strategy and operating model to be adaptable and flexible. If the organization has already embraced product thinking, few have really pushed that to data in her experience. But if the organization is new to product thinking entirely, then starting from the data side could create a strong catalyst because data is probably one of the hardest concepts to apply product thinking to - after taking on data, product thinking is far easier to grasp in other areas of the business.
In general, Iulia believes that mindset changes don't come from mandates. Instead, by implementing new ways of working, people's mindsets will start to shift once they see the impacts/benefits of those new ways of working. They see the benefit and change their mindsets. But that will of course take time and concerted effort - the mindset change by decree is faster but doesn't typically stick. Show don't tell.
As other guests have noted, Iulia pointed out to maximize the chance of a data mesh implementation succeeding, you have to take into account the existing ways of working, the organizational and team operating models. Yes, certain aspects will need to change but trying to completely change an organization's operating model is going to be too disruptive. Instead, align a transformation paradigm to how the organization already works so people can evolve and adapt. Don't throw them in the change deep end and don't throw the baby out with the bathwater. Of course, this also means there isn't some blueprint for data mesh that will work for all organizations.
In Iulia's book, the first two pillars of data mesh - domain-based data ownership and data as a product - are the two that have the biggest impact on the organizational operating model. She said, "When you start thinking about your data in terms of products, and put your user in the center of your attention, you try to organize all your efforts around the user needs. Right? You create this connection between the data team and the value." That is a big change to how most organizations work around data and it will take effort to make it happen.
In general, Iulia recommends that for any large operating model change, you really need to clearly communicate multiple things. What are the changes, why are you making them, what is the actual target outcome/goal, what are the measures of success, etc. That way, people can measure how well things are moving forward and more easily prioritize. "Because there would be so many things to be done at the beginning, that team really needs to have a clear understanding what to start with." Transformation will mean tens of changes, understanding where to start and why are crucial.
Specifically to product thinking, user value is your Northstar for Iulia. It will inform your strategy, vision, and business goals. Those business goals will be split into hypotheses of value for how you can reach the goals. This is where you start to allocate teams, to the actionable items from the hypotheses of value. But it all comes back to focusing on user value. Steer your work through feedback loops to focus on that user value and you have a great shot at implementing product thinking/focus well.
Iulia pointed to something many miss when it comes to treating your data as a product. If you don't have a long-lived data product team, it can cause many issues that significantly undercut the value of building data products. One is that you often lack the subject matter expertise in the data product team, so the information encapsulated is not nearly as deep or as relevant to the topic area for the data product. Another is that if the team isn't long-lived, will they really have the time and psychological safety to run experiments and innovate?
Similarly to data as a product, Iulia recommends going small, then sustaining, then scaling when it comes to domain ownership. Basically, start from one to two domains and go broader over time. Trying to reorganize your organization on day one so one or two domains can own their data in that time-frame, that's a TON of effort. Don't try to revolutionize your company to do data mesh, evolve and build the understanding as you go broader. You need to prove out value first too before you go broad.
In wrapping up, Iulia returned to the concept of funding the teams, not the work, and especially long-lived teams. When you fund the teams, they are able to focus on finding value. There isn't an expectation of the teams to be prescient, always knowing what will be valuable. And there isn't a need to simply react to tickets instead of finding what will be of value. The other aspect is that you can understand what should be decommissioned. Far too often, data work continues well past when it is valuable. But with a product mindset, teams can constantly be focused on user value and shut down things that no longer drive value.
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Data Mesh Radio is hosted by Scott Hirleman. If you want to connect with Scott, reach out to him on LinkedIn: https://www.linkedin.com/in/scotthirleman/
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All music used this episode was found on PixaBay and was created by (including slight edits by Scott Hirleman): Lesfm, MondayHopes, SergeQuadrado, ItsWatR, Lexin_Music, and/or nevesf
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