The Changing Face of Data Protection
- What Does Data Protection Mean?
- A Model for Information, Data, and Storage
- Why Is Data Protection Important to the Enterprise?
- Data Loss and Business Risk
- Connectivity: The Risk Multiplier
- Business Continuity: The Importance of Data Availability to Business Operations
- The Changing Face of Data Protection
- Key Points
In This Chapter:
- What Does Data Protection Mean?
- A Model for Information, Data, and Storage
- Why Is Data Protection Important to the Enterprise?
- Data Loss and Business Risk
- Connectivity: The Risk Multiplier
- Business Continuity: The Importance of Data Availability to Business Operations
- The Changing Face of Data Protection
- Key Points
The explosion of corporate data in the 1990s, coupled with new data storage technology such as networked storage, has made the accumulation and management of large amounts of data a corporate priority. Corporations try to accumulate terabytes of data on increasingly large storage systems. Gathering customer data, vendor information, minute financial measurements, product data, retail sell-through data, and manufacturing metrics are now corporate goals. Even small to medium-size businesses (SMB) have begun to acquire terabytes of data. Management of storage systems, and the data held within them, is a cause of great concern within IT departments, corporate legal offices, and the executive suite.
With the advent of new regulations and the understanding of how incredibly valuable corporate data is, there is a new focus on protecting and accessing data. As companies received hard-earned lessons on what can happen when data is destroyed, damaged, or unavailable, more focus has been placed on protecting mission-critical information than on simply accumulating it.
Typically, IT departments have tried to protect data by using high availability (HA) devices with redundant systems, backing up data regularly to tape, and data duplication techniques. Increasingly, more sophisticated methods of ensuring the integrity and availability of important corporate data are being used, including remote mirroring and remote copy, near-line backup, Data Lifecycle Management (DLM), and Information Lifecycle Management (ILM).
What Does Data Protection Mean?
Data protection is just what it sounds like: protecting important data from damage, alteration, or loss. Although that sounds simple enough, data protection encompasses a host of technology, business processes, and best practices. Different techniques must be used for different aspects of data protection. For example, securing storage infrastructure is necessary to ensure that data is not altered or maliciously destroyed. To protect against inadvertent data loss or permanent corruption, a solid backup strategy with accompanying technology is needed.
The size of an enterprise determines which practices, processes, or technologies are used for data protection. It is not reasonable to assume that a small business can deploy expensive, high-end solutions to protect important data. On the other hand, backing up data to tape or disk is certainly something that any enterprise can do. A large enterprise will have both the resources and the motivation to use more advanced technology.
The goal is the same no matter what the size or makeup of the company. Data protection strives to minimize business losses due to the lack of verifiable data integrity and availability.
The practices and techniques to consider when developing a data protection strategy are:
- Backup and recovery: the safeguarding of data by making offline copies of the data to be restored in the event of disaster or data corruption.
- Remote data movement: the real-time or near-real-time moving of data to a location outside the primary storage system or to another facility to protect against physical damage to systems and buildings. The two most common forms of this technique are remote copy and replication. These techniques duplicate data from one system to another, in a different location.
- Storage system security: applying best practices and security technology to the storage system to augment server and network security measures.
- Data Lifecycle Management (DLM): the automated movement of critical data to online and offline storage. Important aspects of DLM are placing data considered to be in a final state into read-only storage, where it cannot be changed, and moving data to different types of storage depending on its age.
- Information Lifecycle Management (ILM): a comprehensive strategy for valuing, cataloging, and protecting information assets. It is tied to regulatory compliance as well. ILM, while similar to DLM, operates on information, not raw data. Decisions are driven by the content of the information, requiring policies to take into account the context of the information.
All these methods should be deployed together to form a proper data protection strategy.