Is Data Classification a Bridge Too Far?

Why the Cloud? Processing, Exploitation and Dissemination

By G C Network | October 23, 2008

So why is the intelligence community so interested in cloud computing? Three letters: PED (Processing, Exploitation, Dissemination). Take these two real life examples from the publishing industry. Jim Staten of…

World Summit of Cloud Computing: “Enterprise Cloud Computing” work group

By G C Network | October 22, 2008

To leverage attendees of the World Summit of Cloud Computing, a kick-off meeting of the “Enterprise Cloud Computing” work group will be held near Tel Aviv, Israel on December 3,…

Cloud Package Management

By G C Network | October 21, 2008

In his post “Missing in the Cloud: package management“, Dave Rosenberg highlights a critical issue in the adoption of cloud computing by government agencies. “I dare say that a standard…

PlugIntoTheCloud.com

By G C Network | October 20, 2008

Information Week has just launched PlugIntoTheCloud.com as their cloud computing destination. In his Non Linear Thinking blog, Bill Martin calls it a movement aimed at “providing a source and forum…

Is the cloud computing hype bad?

By G C Network | October 17, 2008

From Gartner “Why a little cloud hype might be useful“: “It’s too simplistic to say cloud hype is bad . If we are technically expert is might irritate us with…

Stop the FUD (Fear, Uncertainty and Doubt) !!

By G C Network | October 16, 2008

Dan Morrill! Count me in !! In his excellent article, “Cloud Computing is Scary – But the FUD Has to Stop“,  Dan makes some excellent points: It is time to…

IBM, Microsoft and Google

By G C Network | October 15, 2008

On October 6th, IBM launched their cloud services initiative. This is a:  “[C]ompany-wide initiative that extends its traditional software delivery model toward a mix of on-premise and cloud computing applications…

Government in the Cloud

By G C Network | October 13, 2008

Back in mid-September, there was quite a thread in the Google Cloud Computing Group on the use of cloud computing by the federal government.  Some of the interesting comments were:…

CloudCamp Partners With SOA-R !!

By G C Network | October 10, 2008

I’m proud to announce that the final SOA-R Cloud Computing Education Event will be held in collaboration with CloudCamp. Now dubbed CloudCamp:Federal, the event will be held as an “unconference” to help…

Federal Cloud Computing Wiki

By G C Network | October 9, 2008

With the fast growing interest in cloud computing, the Federal Government community has established a Federal Cloud Computing Wiki. This wiki is managed by Dr. Brand Niemann, Senior Enterprise Architect…

Today data has replaced money as the global currency for trade.

“McKinsey estimates that about 75 percent of the value added by data flows on the Internet accrues to “traditional” industries, especially via increases in global growth, productivity, and employment. Furthermore, the United Nations Conference on Trade and Development (UNCTAD) estimates that about 50 percent of all traded services are enabled by the technology sector, including by cross-border data flows.”

As the global economy has become fully dependent on the transformative nature of electronic data exchange, its participants have also become more protective of data’s inherent value. The rise of this data protectionism is now so acute that it threatens to restrict the flow of data across national borders. Data-residency requirements, widely used to buffer domestic technology providers from international competition, also tends to introduce delays, cost and limitations to the exchange of commerce in nearly every business sector. This impact is widespread because it is also driving:

  • Laws and policies that further limit the international exchange of data;
  • Regulatory guidelines and restrictions that limit the use and scope of data collection; and
  • Data security controls that route and allow access to data based on user role, location and access device.

A direct consequence of these changes is that the entire business enterprise spectrum is now faced with the challenge of how to classify and label this vital commerce component.

Figure 1– The data lifecycle

The challenges posed here are immense. Not only is there an extremely large amount of data being created everyday but businesses still need to manage and leverage their huge store of old data. This stored wealth is not static because every bit of data possesses a lifecycle through which it must be monitored, modified, shared, stored and eventually destroyed. The growing adoption and use of cloud computing technologies layers even more complexity to this mosaic. Another widely unappreciated reality being highlighted in boardrooms everywhere is how these changes are affecting business risk and internal information technology governance. Broadly lumped into cybersecurity, the sparsity of legal precedent in this domain is coupled almost daily with a need for headline driven, rapid fire business decisions.

To deal with this new reality, enterprises must standardize and optimize the complexity associated with managing data. Success in this task mandates a renewed focus on data classification, data labeling and data loss prevention. Although these data security precautions have historically been
glossed over as too expensive or too hard, the penalties and long term pain associated with a data breach incident has raised the stakes considerably. According the Global Commission on Internet Governance, the average financial cost of a single data breach could exceed $12,000,000 [1] , which includes:

  • Organizational costs: $6,233,941
  • Detection and Escalation Costs: $372,272
  • Response Costs: $1,511,804
  • Lost Business Costs: $3,827,732
  • Victim Notification Cost: $523,965

So is adequate data classification still just simply a bridge too far?

While the competencies required to implement an effective data management program are significant, they are not impossible. Relevant skillsets are, in fact, foundational to the deployment of modern business automation which, in turn, represents the only economical path towards streamlining repeatable processes and reducing manual tasks. Minimum steps include:

  • Improving enterprise awareness around the importance of data classification
  • Abandoning outdated or realistic classification schemes in order to adopt less complex ones
  • Clarifying organizational roles and responsibilities while simultaneously removing those that have been tailored to individuals
  • Focus on identifying and classifying data, not data sets.
  • Adopt and implement a dynamic classification model.[2] 

The modern enterprise must either build these competencies in-house or work with a trusted third party to move through these steps. Since the importance of data will only increase, the task of implementing a modern data classification and modeling program is destined to become even more business critical.

( This post was brought to you by IBM Global Technology Services. For more content like this, visit Point B and Beyond.)

[1]Global Cyberspace Is Safer Than You Think: Real Trends In Cybercrime, Centre for International Governance Innovation 2015, https://www.cigionline.org/sites/default/files/no16_web_1.pdf


[2] Recommended steps adapted from “Rethinking Data Discovery And Data Classification by Heidi Shey and John Kindervag, October 1, 2014, available from IBM at https://www-01.ibm.com/common/ssi/cgi-bin/ssialias?htmlfid=WVL12363USEN

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