Data lake

A data lake is a system or repository of data stored in its natural format,[1] usually object blobs or files. A data lake is usually a single store of all enterprise data including raw copies of source system data and transformed data used for tasks such as reporting, visualization, analytics and machine learning. A data lake can include structured data from relational databases (rows and columns), semi-structured data (CSV, logs, XML, JSON), unstructured data (emails, documents, PDFs) and binary data (images, audio, video). [2]

A data swamp is a deteriorated data lake that is either inaccessible to its intended users or is providing little value.[3][4]

Background

James Dixon, then chief technology officer at Pentaho, allegedly coined the term[5] to contrast it with data mart, which is a smaller repository of interesting attributes derived from raw data.[6] In promoting data lakes, he argued that data marts have several inherent problems, such as information siloing. PricewaterhouseCoopers said that data lakes could "put an end to data silos.[7] In their study on data lakes they noted that enterprises were "starting to extract and place data for analytics into a single, Hadoop-based repository." Hortonworks, Google, Oracle, Microsoft, Zaloni, Teradata, Cloudera, and Amazon now all have data lake offerings. [8]

Examples

One example of technology used to host a data lake is the distributed file system used in Apache Hadoop. Many companies also use cloud storage services such as Azure Data Lake and Amazon S3.[9] There is a gradual academic interest in the concept of data lakes, for instance, Personal DataLake[10] at Cardiff University to create a new type of data lake which aims at managing big data of individual users by providing a single point of collecting, organizing, and sharing personal data.[11] An earlier data lake (Hadoop 1.0) had limited capabilities with its batch oriented processing (MapReduce) and was the only processing paradigm associated with it. Interacting with the data lake meant you had to have expertise in Java with map reduce and higher level tools like Apache Pig and Apache Hive (which by themselves were batch oriented).

Criticism

In June 2015, David Needle characterized "so-called data lakes" as "one of the more controversial ways to manage big data".[12] PricewaterhouseCoopers were also careful to note in their research that not all data lake initiatives are successful. They quote Sean Martin, CTO of Cambridge Semantics,

They describe companies that build successful data lakes as gradually maturing their lake as they figure out which data and metadata are important to the organization. One other criticism about the data lake is that the concept is fuzzy and arbitrary. It refers to any tool or data management practice that does not fit into the traditional data warehouse architecture. The data lake has been referred to as a technology such as Hadoop. The data lake has been labeled as a raw data reservoir or a hub for ETL offload. The data lake has been defined as a central hub for self-service analytics. The concept of the data lake has been overloaded with meanings, which puts the usefulness of the term into question.[13]

References

  1. The growing importance of big data quality
  2. Campbell, Chris. "Top Five Differences between DataWarehouses and Data Lakes". Blue-Granite.com. Retrieved 19 May 2017.
  3. Olavsrud, Thor. "3 keys to keep your data lake from becoming a data swamp". CIO. Retrieved 2017-07-05.
  4. Newman, Daniel. "6 Steps To Clean Up Your Data Swamp". Forbes. Retrieved 2017-07-05.
  5. Woods, Dan (21 July 2011). "Big data requires a big architecture". Tech. Forbes.
  6. Dixon, James. "Pentaho, Hadoop, and Data Lakes". James Dixon’s Blog. James. Retrieved 7 November 2015. If you think of a datamart as a store of bottled water – cleansed and packaged and structured for easy consumption – the data lake is a large body of water in a more natural state. The contents of the data lake stream in from a source to fill the lake, and various users of the lake can come to examine, dive in, or take samples.
  7. 1 2 Stein, Brian; Morrison, Alan (2014). Data lakes and the promise of unsiloed data (pdf) (Report). Technology Forecast: Rethinking integration. PricewaterhouseCooper.
  8. Weaver, Lance. "Why Companies are Jumping into Data Lakes". blog.equinox.com. Retrieved 19 May 2017.
  9. Tuulos, Ville (22 September 2015). "Petabyte-Scale Data Pipelines with Docker, Luigi and Elastic Spot Instances".
  10. http://ieeexplore.ieee.org/xpl/abstractAuthors.jsp?reload=true&arnumber=7310733
  11. https://www.researchgate.net/publication/283053696_Personal_Data_Lake_With_Data_Gravity_Pull
  12. Needle, David (10 June 2015). "Hadoop Summit: Wrangling Big Data Requires Novel Tools, Techniques". Enterprise Apps. eWeek. Retrieved 1 November 2015. Walter Maguire, chief field technologist at HP's Big Data Business Unit, discussed one of the more controversial ways to manage big data, so-called data lakes.
  13. "Are Data Lakes Fake News?". Sonra. 2017-08-08. Retrieved 2017-08-10.
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