Data classification
Encyclopedia
In the field of data management
Data management
Data management comprises all the disciplines related to managing data as a valuable resource.- Overview :The official definition provided by DAMA International, the professional organization for those in the data management profession, is: "Data Resource Management is the development and execution...

, data classification as a part of Information Lifecycle Management
Information Lifecycle Management
Information Lifecycle Management refers to a wide-ranging set of strategies for administering storage systems on computing devices. Specifically, four categories of storage strategies may be considered under the auspices of ILM.-Policy:...

 (ILM) process can be defined as tool for categorization of data to enable/help organization to effectively answer following questions:
  • What data types are available?
  • Where are certain data located?
  • What access levels are implemented?
  • What protection level is implemented and does it adhere to compliance
    Compliance (regulation)
    In general, compliance means conforming to a rule, such as a specification, policy, standard or law. Regulatory compliance describes the goal that corporations or public agencies aspire to in their efforts to ensure that personnel are aware of and take steps to comply with relevant laws and...

     regulations?

When implemented it provides a bridge between IT professionals and process or application owners. IT staff is informed about the data value and on the other hand management (usually application owners) understands better to what segment of data centre has to be invested to keep operations running effectively. This can be of particular importance in risk management, legal discovery, and compliance with government regulations.
Data classification is typically a manual process; however, there are many tools from different vendors that can help gather information about the data.

How to start process of data classification?

First step is to evaluate and divide the various applications and data as follows:
  • Structured data (statistically around 15% of data)
    • Generally describes proprietary data which can be accessible only through application or application programming interfaces (API)
    • Applications that produce structured data are usually database applications.
    • This type of data usually brings complex procedures of data evaluation and migration between the storage tiers.
    • To ensure adequate quality standards, the classification process has to be monitored by Subject Matter Experts.
  • Unstructured data (all other data that cannot be categorized as structured around 85%).
    • Generally describes data files that has no physical interconnectivity (e.g. documents, pictures, multimedia files, ... ).
    • Relatively simple process of data classification is criteria assignment.
    • Simple process of data migration between assigned segments of predefined storage tiers.

Basic criteria for unstructured data classification

  • Time criteria is the simplest and most commonly used where different type of data is evaluated by time of creation, time of access, time of update, etc.
  • Metadata criteria as type, name, owner, location and so on can be used to create more advanced classification policy
  • Content criteria which involve usage of advanced content classification algorithms are most advanced forms of unstructured data classification

Basic criteria for structured data classification

These criteria are usually initiated by application requirements such as:
  • Disaster recovery and Business Continuity rules
  • Data centre resources optimization and consolidation
  • Hardware performance limitations and possible improvements by reorganization

Benefits of data classification

Benefits of effective implementation of appropriate data classification can significantly improve ILM process and save data centre storage resources. If implemented systemically it can generate improvements in data centre performance and utilization. Data classification can also reduce costs and administration overhead. "Good enough" data classification can produce these results:
  • Data compliance and easier risk management
    Risk management
    Risk management is the identification, assessment, and prioritization of risks followed by coordinated and economical application of resources to minimize, monitor, and control the probability and/or impact of unfortunate events or to maximize the realization of opportunities...

    . Data are located where expected on predefined storage tier and "point in time"
  • Simplification of data encryption because all data need not be encrypted. This saves valuable processor cycles and all related consecutiveness.
  • Data indexing to improve user access times
  • Data protection is redefined where RTO (Recovery Time Objective
    Recovery Time Objective
    The recovery time objective is the duration of time and a service level within which a business process must be restored after a disaster in order to avoid unacceptable consequences associated with a break in business continuity....

    ) is improved.
The source of this article is wikipedia, the free encyclopedia.  The text of this article is licensed under the GFDL.
 
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