1 / 5

What is Data Lake and its Benefits

A Data-lake is a repository for all kinds of data. It can be composed of raw data that has not been processed or analyzed. A data-lake is usually the destination for all the data that has been collected from various sources. The main advantage of a data-lake is that it allows for easy access to all the raw data from different sources and formats. This makes it easier to combine different datasets and analyze them together. https://www.v2soft.com/blogs/a-look-at-data-lake-benefits-architecture-its-adoption

v2soft
Download Presentation

What is Data Lake and its Benefits

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Data Lake - What it is? And what are the benefits? 

  2. What is Data Lake? A Data-lake is a storage repository for all kinds of data. It is usually composed of raw data that has not been processed or analyzed. A Data-lake can be used to store any type of data and it is usually the destination for all the data that has been collected from various sources. The term "Data-lake" was first coined by Gartner in 2009 and it refers to a new approach for storing and analyzing large volumes of data with low latency. A Data-lake should be designed as an open, scalable storage solution that can handle large amounts of unstructured, semi-structured, structured, streaming, and other types of big data. The main advantage of a Data Lake is that it allows for easy access to all the raw data from different sources and formats. This makes it easier to combine different datasets and analyze them together.

  3. The advantages of a Data-Lake :  • Transparent scalability and elasticity: The Data-lake is designed in such a way that it can scale and grow as it is needed. It can accommodate new nodes and storage devices as needed.  • Capacity, low latency, high bandwidth: The Data-lake's architecture allows for storing a large amount of data in parallel with low latency and high bandwidth. The process can be done at such a pace that the disk volume (storage space) expands automatically. • It's low cost: The Data-lake is designed to be inexpensive. Businesses will have access to the platform for a fraction of the cost of traditional data storage options. The Data-lake is designed in such a way that it can scale and grow as it is needed. It can accommodate new nodes and storage devices as needed.

  4. What are the benefits of using a data lake?  • A data lake is an accumulation of raw data that is not processed, structured, or organized in any way. It is a storage place for all the raw data that a company collects about its customers and business.  • The benefits of using a data lake are:  • Accessibility: With the help of data lakes, organizations can get to their raw data in the quickest way possible. They don't have to worry about whether it's stored on different databases or cloud platforms because it's all available on one platform.  • Ease: Data lakes make it easier for companies to access and analyze their large datasets without having to worry about the technical complexities involved with doing so.  • Organization: Data lakes also help users organize their datasets by creating different folders and subfolders depending on what they're looking for. 

  5. Analytics: Data lakes make it easier for companies to utilize their databases for data analytics. It doesn't matter how large the dataset is because all of the information is stored together.  • Scalability: With data lakes, organizations can scale up their operations quickly without having to worry about scaling issues.  • IT and Data Services: By storing all the data in one place, IT professionals have a much easier time building an app with their large datasets.  • Data Governance and Compliance: Data lakes make it easy for companies to comply with regulatory requirements for data privacy, security, and governance.  • Ecosystem: With DPs becoming more popular, the business ecosystem is growing rapidly surrounding this technology.  • Cloud Computing Platforms: Cloud computing platforms like AWS are expanding because of this shift in what enterprises. 

More Related