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Structured Data Management Software

Structured Data Management Software

Databases that have been in service for a long time, accumulate large amounts of data. A significant part of this data remains inactive which can be efficiently stored in a less expensive location outside the active database. Also, the accumulation of such old records in the active database slows the performance of the database, in turn leading to the need for additional, expensive hardware tools.

Therefore, in order to avoid such complexities and ensuring smooth system performance, enterprises are utilizing structured data management software solutions. This enables the user to balance the need for long-term records retention along with optimal database performance.

The market growth of structured data management software solutions is driven by various factors such as increasing data volumes that adversely affect database performance, need to retain and manage large volumes of historical data in an effective manner, and effectively address regulatory compliance demands to avoid financial penalties.

Additionally, the structured data management software market is propelled by the several advantages offered by these solutions. Some of these advantages include immediate and indistinguishable access to the archive data that enables critical data to survive longer than the originating applications or databases and accelerates application retirement processes to shorten time to cost savings.

However, the growth of the market is confronted by challenges such as concerns related to security and data privacy, and frequent cyber-attacks on enterprises, which has decreased the demand for database products to some extent.

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F.A.Q. about Structured Data Management Software

What is Structured Data?

Structured data usually resides in relational databases (RDBMS). Fields store length-delineated data phone numbers, Social Security numbers, or ZIP codes. Even text strings of variable length like names are contained in records, making it a simple matter to search. Data may be human- or machine-generated as long as the data is created within an RDBMS structure. This format is eminently searchable both with human-generated queries and via algorithms using a type of data and field names, such as alphabetical or numeric, currency or date.

Common relational database applications with structured data include airline reservation systems, inventory control, sales transactions, and ATM activity. Structured Query Language (SQL) enables queries on this type of structured data within relational databases.

Some relational databases do store or point to unstructured data such as customer relationship management (CRM) applications. The integration can be awkward at best since memo fields do not loan themselves to traditional database queries. Still, most of the CRM data is structured.

What is the Unstructured Data?

Unstructured data is essentially everything else. Unstructured data has internal structure but is not structured via pre-defined data models or schema. It may be textual or non-textual, and human- or machine-generated. It may also be stored within a non-relational database like NoSQL.

Typical human-generated unstructured data includes:

  • Text files: Word processing, spreadsheets, presentations, email, logs.
  • Email: Email has some internal structure thanks to its metadata, and we sometimes refer to it as semi-structured. However, its message field is unstructured and traditional analytics tools cannot parse it.
  • Social Media: Data from Facebook, Twitter, LinkedIn.
  • Website: YouTube, Instagram, photo sharing sites.
  • Mobile data: Text messages, locations.
  • Communications: Chat, IM, phone recordings, collaboration software.
  • Media: MP3, digital photos, audio and video files.
  • Business applications: MS Office documents, productivity applications.

Typical machine-generated unstructured data includes:

  • Satellite imagery: Weather data, landforms, military movements.
  • Scientific data: Oil and gas exploration, space exploration, seismic imagery, atmospheric data.
  • Digital surveillance: Surveillance photos and video.
  • Sensor data: Traffic, weather, oceanographic sensors.

Structured vs. Unstructured Data: What’s the Difference?

Besides the obvious difference between storing in a relational database and storing outside of one, the biggest difference is the ease of analyzing structured data vs. unstructured data. Mature analytics tools exist for structured data, but analytics tools for mining unstructured data are nascent and developing.

Users can run simple content searches across textual unstructured data. But its lack of orderly internal structure defeats the purpose of traditional data mining tools, and the enterprise gets little value from potentially valuable data sources like rich media, network or weblogs, customer interactions, and social media data. Even though unstructured data analytics tools are in the marketplace, no one vendor or toolset are clear winners. And many customers are reluctant to invest in analytics tools with uncertain development roadmaps.

On top of this, there is simply much more unstructured data than structured. Unstructured data makes up 80% and more of enterprise data, and is growing at the rate of 55% and 65% per year.