Activity
Mon
Wed
Fri
Sun
Jan
Feb
Mar
Apr
May
Jun
Jul
Aug
Sep
Oct
Nov
What is this?
Less
More

Memberships

Data Innovators Exchange

Public • 328 • Free

2 contributions to Data Innovators Exchange
A novices guide to Data Vault
Thanks to @Dan Linstedt for this great overview video. This was the inspiration for this new page on perplexity.ai that provides a deep dive into Data Vault. Check it out here https://www.perplexity.ai/page/the-power-of-data-vault-d4CxnNfmRRmAJOwfGxm1Fw Love to hear your comments on how well or otherwise LLM's are able to collate and interpret presentations like this one. FY this used the new Llama 405 billion parameter model to do its thing. Thanks to Wherescape for sponsoring this post. @Melissa Zuro
9
6
New comment Aug 23
A novices guide to Data Vault
3 likes • Aug 8
Don't forget to subscribe to DataVaultAlliance Youtube Channel here: https://www.youtube.com/@DataVaultAlliance
Data Mesh vs Data Vault?
Do you agree or disagree with Perplexity.ai 's analysis? 1. Ownership and Structure Data Mesh is fundamentally about decentralising data ownership and treating data as a product. In this approach, data is managed by cross-functional, domain-specific teams, each responsible for their own data products. This decentralization aims to eliminate bottlenecks and empower teams to innovate independently. On the other hand, Data Vault is a centralised data modelling methodology designed for building scalable and flexible data warehouses. It organizes data into three core components: Hubs, Links, and Satellites, which help maintain historical tracking and ensure data integrity. 2. Use Cases and Flexibility Data Mesh is best suited for large-scale, domain-diverse organisations that need to democratise data ownership and processing. It promotes agility and adaptability by allowing each domain to manage its data independently, adhering to company-wide standards. Conversely, Data Vault excels in environments with complex, evolving data landscapes. Its modular design allows for easy integration of new systems and changes, making it ideal for companies that require a robust, adaptable data warehousing solution. 3. Governance and Complexity Governance in Data Mesh is federated, meaning that while each domain has autonomy, there are overarching standards to ensure consistency and compliance. This approach can introduce organizational and cultural complexity due to the shift towards decentralization. In contrast, Data Vault focuses on technical governance through its standardized modeling techniques, ensuring data lineage, auditability, and resilience. While Data Vault can be technically complex due to its specific modeling requirements, it provides a structured approach to managing data integration and historical tracking. Agree or disagree? Let us know your point of view Citations: [1] https://atlan.com/data-mesh-vs-data-vault/
Poll
1 member has voted
6
18
New comment Aug 17
Data Mesh vs Data Vault?
9 likes • Jul 31
This is an invalid poll. The concept of comparing data mesh to data vault is not accurate. Data Vault is a methodology for managing your analytics solution, while Data Mesh deals with the people, teaming, and product ownership. The two are not mutually exclusive, and should not be "compared" in this manner. Furthermore to say that Data Vault is "just a data modeling technique" is also incorrect. It's a full and complete methodology reaching beyond the modeling, to include architecture, methodology, implementation - recommended practices and standards. We do talk about teaming, use of SEI / CMMI, TQM, SIx Sigma, SCRUM, and Disciplined Agile to name a few items.
1-2 of 2
Dan Linstedt
2
8points to level up
@dan-linstedt-5846
Data Vault Inventor

Active 109d ago
Joined Jul 9, 2024
powered by