Luxury Fashion Industry: Mindset, Challenges, and Tech-Driven Opportunities

Categories: Digital TransformationBig Data & AnalyticsConsumer and RetailTechnology

Author

Arun

Author

Arun Viswanathan

Principal Architect

View all Articles

Top Insights

Best practices for selecting a software engineering partner

Best practices for selecting a software engineering partner

SecurityDigital TransformationDevOpsCloudMedia
7 RETAIL TRENDS POWERED BY MOBILE

7 RETAIL TRENDS POWERED BY MOBILE

MobilityConsumer and RetailMedia
My Intro to the Amazing Partnership Between the US Paralympics and the Telecom Industry

My Intro to the Amazing Partnership Between the...

Experience DesignPerspectiveCommunicationsMediaTechnology
Adaptive and Intuitive Design: Disrupting Sports Broadcasting

Adaptive and Intuitive Design: Disrupting Sports Broadcasting

Experience DesignSecurityMobilityDigital TransformationCloudBig Data & AnalyticsMedia

Top Authors

Rashmi Shrivastava

Rashmi Shrivastava

Senior Manager, Engineering

Praveen Jha & Sumeet Gupta

Praveen Jha & Sumeet Gupta

Principal Architect, Technology & Consultant, Engineering

Chet Kolley

Chet Kolley

SVP & GM, Medical Technology BU

Rahul Vyas

Rahul Vyas

Consultant, Engineering

Rohan Negi

Rohan Negi

Senior Software Engineer

Blog Categories

Abstract

A data lake is a centralized repository that enables a cost–effective storage of large volumes of data that provides a single source of truth (SOT). However, organizations face numerous challenges when using data lakes built on top of cloud-native storage solutions. These challenges include a lack of data consistency, unreliable data due to incomplete and corrupt files, performance issues, and the absence of schema enforcement and validation. One of the popular implementations of Lakehouse architecture
is Databricks’ Delta Lake which overcomes these challenges with an open-source storage layer built on top of existing data lake file storage formats such as Apache Parquet. We will first explore the differences between the architectures associated with data warehouses, data lakes, and lakehouses.

Then, we take a glimpse under the hood to understand the inner workings of Delta Lake architecture.

Finally, this white paper provides insights into how Delta Lake offers solutions to common problems encountered with data lakes such as ensuring data integrity with ACID transactions, providing scalable metadata management with distributed processing, data versioning with time travel, or preventing data corruption with schema enforcement

  • URL copied!