Menu
Sign In Search Podcasts Charts People & Topics Add Podcast API Pricing
Podcast Image

CDO Matters Podcast

CDO Matters Ep. 02 | Strategies & Tactics for a Successful MDM Implementation with Tobias Macey

14 Jul 2022

Description

When considering MDM and governance architectures for your organization, it is important to know each of the dynamics in which they relate to your most critical data when growing your business.In this episode of CDO Matters, Malcolm is a guest on the Data Engineering Podcast with Tobias Macey. This episode is a great fit for any non-technical data leader who is looking to gain a deeper understanding of some of the technical dependencies and concepts required for successful master data management (MDM) and data governance — but without getting too deep into jargon or software engineering concepts.If you’re a business-centric CDO with limited technical experience or background, this podcast will help you to build your data literacy and allow you to have deeper and more compelling conversations with your technical staff — and it will help you make more informed technology-centric decisions. Malcolm and Tobias cover some of the technical concepts involved in MDM and governance programs — in both relatable and understandable terms — including:MDM systems architecture and typical implementation patternsThe connection between MDM, data engineering and systems architectureData modeling for MDM and data governance The processes used in MDM platforms to support data quality requirements Entity resolution, i.e., matching or deduplication MDM team dynamics and roles, the role of data stewardship. After listening to this podcast, any data leaders who may be new to the concepts of MDM or data governance will why their organizations need these foundational elements and better understand how they can be used to drive business benefit. Key Moments3:14-6:50: Identifying ‘who is a customer’ to model and govern data 7:11-9:27: What is MDM and how does it add value? 10:27-14:57: Who needs MDM and how does new technology solve for data quality? 15:11-17:53: Limitations and considerations when searching for a “single source of truth” 18:15-21:45: Who is responsible for MDM within an organization and who comprises it? 22:16-26:59: What are the differences between analytical and operational MDM? 29:15-31:50: Top 4 reasons that so many MDM implementations fail 32:45-36:40: Using a business perspective to identify the right outcomes 37:40-42:25: How MDM is evolving to use graph functionality in addition to relational databases 42:32-43:15: Why Customer Data Platforms (CDPs) fall short for enterprise-level management 43:36-49:51: Insights on novel MDM use cases: data sharing, graph databases, data fabrics 50:08-53:53: 3 ‘Watch-outs’ learned from years in the data management space 54:36-57:26: How small companies can implement MDM principles 57:38-1:00:14 The gap between data software and real business outcomes Key TakeawaysWhen is MDM relevant for an organization? (10:22-11:34)“The bigger and more complex you are and the more decentralized you are...where organizations are struggling to have a single view of the customer...the larger the company, the more they tend to have a need for MDM.” - Malcolm HawkerCloud-native data warehouses vs. MDM software (15:11-16:33)“There are many cloud-based data warehouse technologies that are saying we can enable a single version of the truth, and they absolutely can...but does it have all the flexibility and reconfigurability to allow for all the things that MDM software can do? Typically, they don’t.” - Malcolm HawkerWhat are the differences between analytics and operational MDM?? (23:51-26:22)“An analytical style of MDM is where the flow [of data] is one-way...[operational MDM] can actually turn around and syndicate that data back down into consuming systems.” - Malcolm Hawker4 MDM pitfalls to avoid during your implementation (29:15-31:01)“If you’ve got a need for MDM and if you have been given a mandate by your management to come up with a single version of the truth...avoid the key pitfalls that often send so many MDM programs sideways.” - Malcolm HawkerCompanies of all sizes can benefit from MDM principles (57:05-57:26)“I would argue that most companies need MDM as a discipline...But chances are, you still have some use cases that need that consistent approach to the data management side...” - Malcolm HawkerAbout the GuestTobias Macey is a dedicated engineer with experience spanning many years and even more domains. He currently manages and leads the Technical Operations team at MIT Open Learning where he designs and builds cloud infrastructure to power online access to education for the global MIT community. He also owns and operates Boundless Notions, LLC where he offers design, review, and implementation advice on data infrastructure and cloud automation.In addition to the Data Engineering Podcast, he hosts Podcast.__init__ where he explores the universe of ways that the Python language is being used. By applying his experience in building and scaling data infrastructure and processing workflows, he helps the audience explore and understand the challenges inherent to data management.EPISODE LINKS & RESOURCES:Connect with Tobias Macey on LinkedInSubscribe to The Data Engineering Podcast

Audio
Featured in this Episode

No persons identified in this episode.

Transcription

This episode hasn't been transcribed yet

Help us prioritize this episode for transcription by upvoting it.

0 upvotes
🗳️ Sign in to Upvote

Popular episodes get transcribed faster

Comments

There are no comments yet.

Please log in to write the first comment.