The Introduction of Data Lakehouse Architecture

0
3Кб

In this digital world, data is an important asset; however, organizations are searching for storage solutions that will help them manage big data’s volume, latency, resiliency, and data access requirements. Traditionally, companies used existing tech stacks that delivered the same capabilities as a warehouse or lake but had adjustments in handling massive amounts of semi-structured data. These approaches often resulted in high costs and data duplication across all businesses.

The emergence of data lake houses as a hybrid data architecture aims to deliver better benefits as it eliminates data silos, anticipating unified and Hadoop-based storage for analytics that could consolidate data storage and analysis.

Therefore, for a better understanding of Data Lakehouse, AITech Park brings you this exclusive article where we will talk about the architecture of Data Lake House with a few case studies and application areas.

The Architecture of a Data Lakehouse

We are well aware that Data Lake House is a flexible storage with all the data management features that can handle massive amounts of data of various types, from structured to semi-structured and unstructured, while ensuring data governance, quality, and reliability. However, the data lake house is incomplete without discussing its architecture.

The Entry Point: Ingestion Layer

In the data lake house structure, the ingestion layer is considered the starting point where it collects and imports data from multiple sources, such as IoT devices, online activities, social networks, and many more. This handles both the batches and further processes through real-time streams, ensuring that data is accurately delivered and stored for further processing.

The Second Level: Storage Layer

The heart of the data lakehouse lies the “storage layer,” where the data is kept in a raw form. This layer is designed to stow the vast amounts of unstructured and structured data distributed on cloud storage solutions such as Amazon S3, Azure Data Lake Storage, or Google Cloud Storage.

With time, the Data Lake House architecture has become more flexible and powerful as it enables companies to gain insights from large datasets and further efficiently manage data to make data-driven decisions faster. This transmission also introduces data observability that will play an important role in monitoring and maintaining the data quality of the datasets within the lakehouse.

To Know More, Read Full Article @ https://ai-techpark.com/the-introduction-of-data-lakehouse-architecture/

Related Articles -

Deep Learning in Big Data Analytics

Mental Healthcare with Artificial Intelligence

Trending Category - IOT Wearables & Devices

Спонсоры
Поиск
Спонсоры
Категории
Больше
Другое
Elan New Project: Exclusive Luxury Living in Sector 106, Gurgaon with 5.15 Acres of Serenity
Welcome to Elan New Project, where luxury, comfort, and tranquility converge to offer an...
От jyotisinghal 2025-01-28 09:46:49 0 2Кб
Другое
Incorporating Sustainability in Electrical Proposals
As sustainability becomes increasingly important in the construction industry, electrical...
От jamesespinosa926 2023-11-30 06:49:12 0 3Кб
Другое
Pharmacy Chains vs. Online Pharmacies: The Future of Medication Acces
Pharmaceutical Retail Chain Market: Growth, Trends, and Future Outlook Market Overview...
От healthcare.medicare 2025-03-10 17:28:35 0 1Кб
Technology
UHT Milk Market Expansion Forecast 2025-2033: Size and Share Insights
UHT Milk Market provides a detailed analysis on the market status of UHT Milk Market...
От joya44 2025-04-08 07:51:30 0 2Кб
Другое
Scaling Up Care: HIV Diagnosis and Treatment in the Middle East and Africa
Addressing the HIV Epidemic: Diagnosis and Treatment in the Middle East and...
От medicaldevice 2025-04-17 09:13:08 0 1Кб
Спонсоры
google-site-verification: google037b30823fc02426.html