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What Is Data Decay?

Data decay is the process of data becoming less accurate and relevant or deteriorating over time. It is the gradual loss of data reliability, quality, precision and applicability that can impact data use, business intelligence, decision-making and overall organizational performance. To address data decay, institutions can implement various data maintenance and quality control techniques.

Understanding Data Decay

Quality data guides excellent business decisions and promotes efficient performance strategies, particularly in insight-oriented industries like SaaS or software development. As such, it’s important to understand the potential impact of poor-quality data and what causes data decay.

The Impact of Data Decay

Data decay harms an organization’s data caliber, increasing internal challenges, risks and inefficiencies. Data decay can impact:

  • Customer segmentation, profiling and general relationship management
  • AI, machine learning and other technological applications that rely on good data
  • Brand reputation and relationships due to inaccuracies
  • Your business’s competitive advantage
  • Legal compliance, as some regulations require efficient data management
  • Business revenue and opportunity maximization
  • Resource allocation and optimization

Causes of Data Decay

There are many real-world causes of data decay, including:

  • Data migration inefficiencies
  • Human and system errors
  • Organizational shifts like acquisitions, mergers and position changes
  • Outdated technological solutions and data formats
  • Updates to data regulations that necessitate new policies and systems
  • External actor changes like customers changing their contact information
  • Developments of new languages, terminologies or cultural systems that make existing data redundant
  • Corrupted or compromised data
  • Lack of data maintenance and updated structures

Addressing Data Decay Challenges

Data hygiene and maintenance practices are crucial to address the causes of data decay and ensure your organization operates on trustworthy and accurate insights.

Data Decay Mitigation Best Practices and Strategies

Strategies or best practices for combating data decay include the following:

  • Conducting consistent validation measures such as audits and checks
  • Implementing data cleansing and profiling reviews to clean your data
  • Automating error and issue detection
  • Using data monitoring to identify anomalies and issues in datasets
  • Introducing data enrichment tactics to generate contextual, complete and relevant data
  • Automating data updates and source extraction
  • Standardizing and automating data quality management processes for consistent data
  • Establishing a comprehensive data governance system to monitor, evaluate, update and store quality inputs throughout your data’s life cycle
  • Leveraging advanced technologies such as AI and machine learning for efficient data hygiene

Solutions for Data Decay Prevention

Automated AI and machine learning solutions provide advanced capabilities to combat data decay, such as:

Keep Your Data Relevant With Anomalo

Data decay has numerous consequences for your organization. Utilizing a capable, advanced data quality management solution enables you to assure data integrity and consistency by implementing regular, effective data hygiene measures without impacting organizational productivity.

Learn how Anomalo’s comprehensive quality control technology handles data decay for you. Request a demo today!