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To effectively communicate the value and importance of data governance, it is crucial to personalize the message and tell stories that resonate with individuals. By understanding their specific needs and desires, data governance professionals can tailor their language and approach to make it relevant to the stakeholders. This approach helps engage and involve people, making them more willing to care about the data and take ownership of it. Instead of focusing on technical details, emphasizing the benefits and outcomes that good data can bring to their work is key. This requires efforts to shift the perception that data is black and white, and to highlight that good enough data that suits business needs is more realistic and achievable than striving for perfection.
While personalizing communication is crucial in data governance, it is not feasible to individually cater to the needs of every person in an organization. Therefore, prioritization becomes vital. By understanding the expectations and desires of different stakeholders, data governance professionals can identify the individuals who are the most invested and willing to champion data governance efforts. Through personalized interactions, stories, and focusing on the benefits for each person, these champions can act as advocates and help drive engagement and adoption of data governance practices. Prioritizing these efforts and leveraging the strengths and personalities of the data governance team members allows for a more efficient and targeted approach to scaling personalization.
In the context of data mesh, master data management (MDM) plays a crucial role in ensuring the quality and reliability of data. MDM helps to establish a foundation of good data governance, quality, and metadata, which is essential for the success of data mesh initiatives. By embedding governance, quality, and metadata into the actual data and data work, organizations can strive for good data that is fit for its intended purpose. MDM within data mesh aims to provide the right data for the right purpose at the right time for the right person. It emphasizes the importance of standardized data practices and a holistic approach to data management.
Data mesh is not a one-size-fits-all solution, and organizations must recognize the need for evolution and learning as they embark on their data mesh journey. Instead of aiming for perfection, it is important to embrace a continuous improvement mindset and adapt the concepts and practices of data mesh to fit the organization's unique needs and circumstances. The focus should be on achieving business outcomes through data, rather than getting caught up in the technical aspects of data work. Open and honest communication, transparency, and trust are crucial in fostering collaboration and ensuring that everyone understands the realities of working with data in a data mesh environment.
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Transcript for this episode (link) provided by Starburst. You can download their Data Products for Dummies e-book (info-gated) here and their Data Mesh for Dummies e-book (info gated) here.
Sue's LinkedIn: https://www.linkedin.com/in/suegeuens/
In this episode, Scott interviewed Sue Geuens, Director of Data Governance and Product Data at Elsevier. To be clear, she was only representing her own views on the episode.
We use the phrase MDM to mean master data management throughout the episode.
Some key takeaways/thoughts from Sue's point of view:
Sue started the conversation as other data governance experts have - the word governance strikes at least discomfort if not fear into the hearts of many of our colleagues. We need to expect that discomfort and be active in dispelling the myths around data governance as it really is about achieving better outcomes for all. But that means more carrots than sticks, which can be a tall task when it comes to things like regulatory compliance. Basically, it's not easy 😅
Another aspect Sue pointed to is that many - most? - data people really like to talk data. So, instead of talking to outcomes, they talk about the data work, and data work for the sake of data work has kind of been one of the big historical challenges of data - instead we need to focus on the value that comes from the data work. If your business partners are already uncomfortable simply by the phrase data governance, not leaning into their value from the data work and target outcomes is likely to lose them even further. Start the conversation with what they might want from you, not what you might want from them.
Sue specifically said she starts partnering with people by focusing on those target outcomes and how might she be helpful to them. Especially, what are their expectations of her? By trying to walk in their shoes, she can come to better conclusions and find working solutions. It's about getting them to lean in. Scott note: and then she can trap them! In a virtuous bi-directional value trap of course…
Relatedly, prioritization in data governance is key in Sue's view. What are the problems that really matter? While the "who shouts loudest" test may not point to the most valuable problems, it often points to the problems people value most and thus you can find willing partners. Trying to enforce others to care about their data is a hard road but if people are ready for your help, you can make a huge difference and they are willing to lean in. Those are also likely to be your biggest advocates once you help them, gaining your governance efforts more momentum by leveraging champions.
There are many reasons why Sue believes people are skeptical of master data management (MDM). Historically, there were two big reasons MDM projects failed. The first is not really focusing on integrating MDM into the data so not having the governance, quality, and metadata embedded into the data and processes. The second is the drive towards perfection. Instead of focusing on what was good enough, there was this focus on the 'golden record'. That led to inflexibility, poor scaling, high costs, etc. Good data work isn't about being perfect, it's about being good enough.
Sue circled back to her focus on working with people. Good governance isn't about perfect data, it's about getting people to care about the quality of the data. That means working to get them to understand what is good enough and why should they care. It's not all just empathy - there needs to be some oversight and making it part of their job - but with humans in the loop, your data quality will be much better if you get people to care about who else uses their data and why.
When it comes to actually getting people to understand data governance work - whether MDM or anything else - Sue recommends personalizing your communication. While that may not scale perfectly, again, find your key stakeholders and partners. Stories about data work in a vacuum just don't resonate - Scott note: is there a physics/sound joke in there as there is no air for sound to resonate in a vacuum…? 😅 - Getting people to understand that the work has a purpose and it really is useful to specifically them is crucial. Don't talk to the 1s and 0s of data!
When it comes to specifically data ownership, Sue has seen just how scary that ownership word can be. It's not an easy task but we need to find ways to instill people with the excitement around ownership without the fear. Again, easier said than done but it's about getting things to the right place not about doing something right now. It will take time but it's better to do it right.
If you don’t take care with implementing data mesh well, Sue believes it will be a far bigger mess than if you didn't try data mesh at all. (Scott note: strong agree) You need to focus again back to what are you trying to accomplish and what data needs to be put in place to do that. MDM in data mesh should be about "ensuring that you get the right data for the right purpose at the right time for the right person."
In wrapping up, Sue emphasized the need for personalizing your communication around getting people to do data work with care and prioritize it. You need to be able to speak to them in their language and get them excited about the impact of the work.
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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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