Dark Data: An Introduction

As big data continues to grow exponentially, so too does the amount of hidden dark data. In a recent Splunk global survey, it was discovered that 55% of an organization's data is considered "dark" — untapped, hidden, or unknown. Despite the growing recognition of data's value, many businesses are struggling to unlock its full potential.

While artificial intelligence promises to drive innovation, only a small percentage of companies are currently using it effectively, largely due to the challenges of accessing and managing this dark data.

In this article, we’ll explore dark data and how it can affect your organization, how organizations can research, access and analyze their dark data, and how they can create a comprehensive strategy to prepare for a new data future.

What is dark data?

Dark data refers to the large volumes of unexplored raw data available to an enterprise. This data may be unstructured, generated with or without knowledge of the organization, and the sources may be ignored simply due to an inadequate data strategy or awareness.

Consider all the customer interactions on social media, logs generated across a large and complex network, and the real-time data streams from IoT devices and machine sensors.

In many cases, organizations lack a strategy to explore these diverse data sources. Without a comprehensive data platform and an end-to-end processing pipeline, they struggle to store, manage, and analyze this valuable dark data.

Ultimately, they may not find downstream use cases and applications that would motivate investments into new data technologies and initiatives focused on dark data analytics.

Why you should care about dark data

Organizations have access to more data than ever before. As we’ve migrated collectively into the data age, a few things have become incredibly clear:

Whether organizations lack the necessary resources, tools and skills to make the abundance of data actionable, or they simply haven’t discovered the data they’re generating, that data is critical in decision-making.

We probably wouldn’t feel too comfortable deciding based on 40% of the available information — so why would we do that at the enterprise level?

Let’s talk about some ways we can fill the gap.

How to discover dark data

Because dark data is, by definition, data we don’t know about, we need to do some digging to get started. Organizations can assess their dark data in several ways:

Analyzing your dark data will enable a wider swath of less technical employees to understand your organization’s needs. Specifically, a dark data analytics solution can provide a more comprehensive, insightful and accurate understanding of users’ data and give them a big picture of their environment.

Making use of dark data

While all that data’s been collecting dust, odds are your organization has been missing out on some major insights. Dark data can help organizations to:

The number of specific use cases is vast, but let’s zero in on just a few:

Power artificial intelligence insights

One very important use for dark data is its role in fueling AI-powered solutions — more data increases the wealth of information that AI can analyze and should allow AI tools to produce deeper and more accurate insights.

(Learn about generative AI, adaptive AI**& what these mean for cybersecurity.)

Improve operational efficiency

Shining a light on dark data might highlight opportunities for operational improvement, for example:

Assist compliance and risk management

Dark data may contain information relevant to compliance requirements or risk management. Analyzing this data can help identify potential compliance issues or assess risks associated with certain business practices.

That previously untouched discovered data can help:

Harness the many benefits of dark data

The list of potential examples here is extensive and can get incredibly specific. Whether it’s a chance to improve internal system performance, customer support interactions, supply chain processes or internal training, dark data can reveal a vast array of opportunity for an organization willing to put the work in to discover it.

Lost opportunities & risks of dark data

Failure to manage dark data is not just a lost business opportunity, but also a risk concern. Consider the following realities of dark data:

Limited view of decision metrics

Most enterprise organizations drive key business decisions from data. They measure selected relevant metrics and KPIs to make informed decisions. These metrics are influenced by the information generated at source, how it is preprocessed and transformed into an actionable KPI value. Whether these metrics are influenced by dark data, remains unexplored.

There exists no definitive formula to understand whether eliminating undiscovered dark data out of these calculations is preferable at all, especially since the value of dark data is unknown or not sufficiently quantified.

Missed market opportunity

Take the example of dark data relating to customer interactions and customer journey.

To answer these questions, you will need to measure, process and analyze the unexplored internal and external data sources.

Security and privacy risk

A lot of the dark data information may describe individual customers and users of your services. Your business applications and network may process or produce that information without your knowledge.

These interactions must be secure by design, especially for enterprises operating in highly regulated industries. Additionally, your measures to protect user information including dark data will be subject to security and privacy audits and controls.

New business models and features

In a world where enterprises must innovate or perish, finding new features and business models requires them to explore new information. This information may be available from their existing sources or new untapped sources. Either way, new information must be explored to obtain a new perspective on user needs, market trends, business challenges and opportunities.

Solutions for staying ahead of your dark data

So, how do you overcome the limitations and challenges associated with the existence of unexplored dark data?

The biggest risks are the failure to exploit dark data for competitive differentiation, and existence of unmanaged and insecure data workloads and sources that are security sensitive as well as subject to stringent compliance regulations.

Secondly, how do you take advantage of dark data to make well informed business decisions?

Two of the most prevalent technology advancements are well positioned to overcome the challenges and maximize the opportunities associated with dark data:

An end-to-end data lake platform

One that can ingest data in structured, semi-structured and unstructured form in a highly scalable cloud-based data platform. The pipeline integrates downstream applications and tooling for preprocessing and analysis on-read, allowing you to ingest all available data and process only what is necessary.

This approach prevents unnecessary compute usage on preprocessing dark data, while the affordable and scalable cloud storage allows you to explore new data sources that generate information in all data formats.

A large-scale AI model

One that can model behavior and patterns from large data assets, motivating the exploration of dark data sources. With the availability of open-source LLMs, integrated into a standardized data lake platform, enterprises can explore unprecedented new use cases for dark data.

FAQs about Dark Data

What is dark data?
Dark data refers to information that organizations collect, process and store during regular business activities, but generally fail to use for other purposes, such as analytics, business relationships and direct monetization.
Why is dark data important?
Dark data is important because it can contain valuable insights that organizations are missing out on, and it can also pose security and compliance risks if not managed properly.
What are examples of dark data?
Examples of dark data include server log files, customer call records, email correspondences, surveillance footage, and sensor data that are collected but not analyzed or used.
What are the risks of dark data?
Risks of dark data include increased storage costs, security vulnerabilities, compliance issues, and missed opportunities for business insights.
How can organizations manage dark data?
Organizations can manage dark data by identifying and classifying their data, implementing data governance policies, and leveraging analytics tools to extract value from previously unused data.

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