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This article was published as a part of the Data Science Blogathon. Introduction A datalake is a central data repository that allows us to store all of our structured and unstructured data on a large scale. The post A Detailed Introduction on DataLakes and Delta Lakes appeared first on Analytics Vidhya.
To make your data management processes easier, here’s a primer on datalakes, and our picks for a few datalake vendors worth considering. What is a datalake? First, a datalake is a centralized repository that allows users or an organization to store and analyze large volumes of data.
Discover the nuanced dissimilarities between DataLakes and Data Warehouses. Data management in the digital age has become a crucial aspect of businesses, and two prominent concepts in this realm are DataLakes and Data Warehouses. It acts as a repository for storing all the data.
Data Management before the ‘Mesh’. In the early days, organizations used a central data warehouse to drive their data analytics. Even today, there are a large number of them using datalakes to drive predictive analytics. However, the enormous rate of data growth is obstructing application scalability.
In another decade, the internet and mobile started the generate data of unforeseen volume, variety and velocity. It required a different data platform solution. Hence, DataLake emerged, which handles unstructured and structured data with huge volume. All phases of the data-information lifecycle.
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