Dirty Data: The Invisible Threat to Your Law Firm

Learn what dirty data is, the 3 types of dirty data, and how they impact your law firm's technology investments' output.

1 min read

Data is the backbone of every forward-thinking law firm, but what happens when that data is dirty? Inaccurate, inconsistent, and incomplete records—these seemingly small issues create big problems. They slow down research, compromise decision-making, and waste valuable hours. This article will discuss what dirty data is, the three types of dirty data, and how they impact your firm.

What is Dirty Data?

Dirty data is inaccurate, inconsistent, or incomplete information that results in unreliable outputs from your law firm’s technology investments. When data is unreliable, so are your decisions, leading to workflow inefficiencies, new risks, and lost opportunities.

Types of Dirty Data: Inaccurate, Inconsistent, and Incomplete Data

1. Inaccurate Data: The Silent Saboteur

Inaccurate data leads to misinformed decisions, wasted time, and costly errors. If attorneys can’t trust the information they’re working with, efficiency and case strategy suffer. These factors undermine end-user trust in the outputs of firm technology investments.

Examples:

  • Obsolete or Outdated Data – Data that is no longer relevant or current.
  • Conflicting Data – When the same data point appears with contradictory details.
  • Data Entry Errors – Typos, missing letters, or transposed numbers within data records.
  • Incorrect Links – When a data point is linked to another unrelated or incorrect piece of information.
  • Unverified Data – Information pulled from multiple sources without validation.

2. Inconsistent Data: The Hidden Inefficiency

Inconsistencies in data formatting or structure make it difficult to retrieve information, leading to wasted hours and confusion.

Examples:

  • Duplicate Entries – Data that appears multiple times in your database, oftentimes under slight variations.
  • Improper Spelling & Capitalization – When a data entry has been incorrectly entered.
  • Inconsistent Formatting – When a data point is listed differently between data providers, creating inconsistencies and potential redundancy.
  • Terminology Inconsistencies – Classification errors due to variations in word use.

3. Incomplete Data: The Missing Puzzle Pieces

Gaps in information can increase legal research time and more catastrophically: misdirect case preparation.

Examples:

  • Missing Details – When data is not whole.
  • Mismatched Data Fields – Data that has been entered in the incorrect field.

Ready to Tackle Your Firm’s Dirty Data?

At CI, we rectify your firm’s data issues so that your organization can actually rely on its technology investments’ outputs. Contact us at sales@courtroominsight.com to learn more about how CI can clean your firm’s data and stay tuned for Part 2 of the Data Conundrum Series, where we will break down the next major data challenge: Unstructured Data.

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