Rerelease of #44 A Pragmatic Approach to Getting Started with Data Mesh at Northern Trust - Interview w/ Khanh Chau

This is a rerelease of a previous episode due to my health related issues. New episodes will begin again in a few weeks. Please enjoy this very important episode of Data Mesh Radio.Sign up for Data Mesh Understanding's free roundtable and introduction programs here: https://landing.datameshunderstanding.com/Please Rate and Review us on your podcast app of choice!If you want to be a guest or give feedback (suggestions for topics, comments, etc.), please see hereEpisode list and links to all available episode transcripts here.Provided as a free resource by Data Mesh Understanding / Scott Hirleman. Get in touch with Scott on LinkedIn if you want to chat data mesh.Khanh's LinkedIn: https://www.linkedin.com/in/khanhnchau/In this episode, Scott interviewed Khanh Chau, Lead Architect for the Data Mesh Initiative at Northern Trust. Khanh believes you have to be passionate about making data better to do a good job implementing data mesh. And it is DEFINITELY a journey so you need patience and vision. Also, each journey is unique, you can't just copy/paste from another organization. You need to make failure okay - but you should look to make it easy to fail fast, measure, and adjust.Khanh talked about the need for exec buy-in before heading down the data mesh path. They got that exec buy-in by proving that the total cost of ownership of data was quite high as the consumers had to do a LOT of work to get the data to usable. When speaking internally, the business people were very excited to participate if it meant they could get quality data. Some of the IT/data engineering folks were harder to convince. It was especially hard to get them to shed layers of not-useful technology.Some IT teams were easier to convince - they had felt the impact of a few too many middle-of-the-night data downtime incidents. Other teams hadn't felt that pain so there were harder to win over. There was also the incentive of additional possibilities - data mesh meant they could do things they couldn't do before. Khanh talked about making the platform the easy and right path for 80% of use cases. They focused on making things easy to configure; basically: what transformations do you want to do and then it automatically provisions the pipelines. Their goal was to make it easy to make good progress quickly; their time to initial deploy went from 2-3 months per data service to 2-3 weeks per data product and they hope to drive it down further. Northern Trust has been moving forward with data mesh for about 7 months as part of their high-level digital transformation initiative. On the data side, they had previously focused on data virtualization and data federation but it was not delivering the results they wanted. It was not as scalable as they wanted - it was taking 2-3 months to launch each new data service. They also did not have great information on who was consuming the data and why. For their data mesh proof of concept, Khanh and team set a timeline of 9 weeks. They needed to prove value by then or data mesh would be a very tough sell internally. Khanh talked about the need to sell data mesh as a paradigm shift in order to get people out of technology-focused thinking.Northern Trust decided to take a pragmatic approach e.g. not pushing all aspects of data...

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Interviews with data mesh practitioners, deep dives/how-tos, anti-patterns, panels, chats (not debates) with skeptics, "mesh musings", and so much more. Host Scott Hirleman (founder of the Data Mesh Learning Community) shares his learnings - and those of the broader data community - from over a year of deep diving into data mesh. Each episode contains a BLUF - bottom line, up front - so you can quickly absorb a few key takeaways and also decide if an episode will be useful to you - nothing worse than listening for 20+ minutes before figuring out if a podcast episode is going to be interesting and/or incremental ;) Hoping to provide quality transcripts in the future - if you want to help, please reach out! Data Mesh Radio is also looking for guests to share their experience with data mesh! Even if that experience is 'I am confused, let's chat about' some specific topic. Yes, that could be you! You can check out our guest and feedback FAQ, including how to submit your name to be a guest and how to submit feedback - including anonymously if you want - here: https://docs.google.com/document/d/1dDdb1mEhmcYqx3xYAvPuM1FZMuGiCszyY9x8X250KuQ/edit?usp=sharing Data Mesh Radio is committed to diversity and inclusion. This includes in our guests and guest hosts. If you are part of a minoritized group, please see this as an open invitation to being a guest, so please hit the link above. If you are looking for additional useful information on data mesh, we recommend the community resources from Data Mesh Learning. All are vendor independent. https://datameshlearning.com/community/ You should also follow Zhamak Dehghani (founder of the data mesh concept); she posts a lot of great things on LinkedIn and has a wonderful data mesh book through O'Reilly. Plus, she's just a nice person: https://www.linkedin.com/in/zhamak-dehghani/detail/recent-activity/shares/ Data Mesh Radio is provided as a free community resource by DataStax. If you need a database that is easy to scale - read: serverless - but also easy to develop for - many APIs including gRPC, REST, JSON, GraphQL, etc. all of which are OSS under the Stargate project - check out DataStax's AstraDB service :) Built on Apache Cassandra, AstraDB is very performant and oh yeah, is also multi-region/multi-cloud so you can focus on scaling your company, not your database. There's a free forever tier for poking around/home projects and you can also use code DAAP500 for a $500 free credit (apply under payment options): https://www.datastax.com/products/datastax-astra?utm_source=DataMeshRadio