Remove Analytics Architecture Remove Architecture Remove Data Architecture
article thumbnail

A Multipurpose Database For Transactions And Analytics To Simplify Your Data Architecture With Singlestore

Data Engineering Podcast

By supporting fast, in-memory row-based queries and columnar on-disk representation, it lets your transactional and analytical workloads run in the same database. The Ascend Data Automation Cloud provides a unified platform for data ingestion, transformation, orchestration, and observability.

Database 100
article thumbnail

How to Get Your Cloud Analytic Architecture Right

Teradata

Getting your Cloud data architecture right starts with understanding which data products you need, the roles they perform, & the functional & non-functional characteristics that those roles demand.

Insiders

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

article thumbnail

A Prequel to Data Mesh

Towards Data Science

My personal take on justifying the existence of Data Mesh A senior stakeholder at one my projects mentioned that they wanted to decentralise their data platform architecture and democratise data across the organisation. When I heard the words ‘decentralised data architecture’, I was left utterly confused at first!

article thumbnail

5 Can't Miss MongoDB.live Talks

Rockset

Shrey Batra comes from LinkedIn and Innovaccer, two companies with particularly data-intensive products, so I'm really interested to hear what type of real-time analytics architectures he's had experience with that employ MongoDB Change Streams.

MongoDB 40
article thumbnail

61 Data Observability Use Cases From Real Data Teams

Monte Carlo

System Modernization and Optimization The only constant in data engineering is change. This applies especially to your data architecture. Luckily, data observability can help with migrations, refactoring pipelines, and more. ” 36.

Data 52
article thumbnail

61 Data Observability Use Cases That Aren’t Totally Made Up

Monte Carlo

System Modernization and Optimization The only constant in data engineering is change. This applies especially to your data architecture. Luckily, data observability can help with migrations, refactoring pipelines, and more. ” 36.