Avançar para o conteúdo

Examples of Data Management Software

Data management software is a variety of tools and solutions designed to help businesses to manage and protect their data. These tools can be utilized to perform tasks like archival, backup, storage, data transfer, analytics and other tasks. These tools allow companies to manage their information and comply with regulatory requirements.

Some of the most well-known examples of software for managing data include master data management (MDM) solutions that are designed to consolidate various information sources into a single source databases managers, such as Microsoft SQL Server and Oracle which support both unstructured and structured data; metadata repositories that provide details on how databases were developed cloud storage services like Amazon S3 bucket or Azure Blob Storage; streaming analytics applications such as Apache Kafka; computational grids such as Apache Mesos and OpenStack Hazelnut; and big data analytics platforms, such as Google Cloud Dataprep.

Some notable providers of data-management software include 1010data. This software offers integrated capabilities to manage and analyze databases. The flagship 1010edge product brings diverse data together to provide a comprehensive overview and also scales up to meet enterprise needs. It also supports data modeling, visualization, reporting, and application development.

Riversand is another vendor that provides master data management and information management solutions. The multidomain core of the company provides full access to enterprise data, and also includes high-scale computing as well as a set streamlined collaboration tools.

Another option is Immuta, which is a highly automated system that provides an AI-powered platform to manage and govern data. Its unified interface enables discovery via a dedicated catalog of data as well as the ability to collaborate in a safe and controlled workspaces. It allows the creation of policies in simple SecureDocs English without the need to code. Users can also apply their policies automatically across all data.