Clubhouse - the hottest 2021 B2B Lead Generation Trend

6 Practices to Improve your Data Quality

Data quality is the method of conditioning data to meet the specific needs of business users. It is the most valuable asset of your organization, and decisions based on inaccurate data can have a destructive impact on your brand. 

Accurate data management is very important for staying ahead in the competition and taking advantage of opportunities. Quality data can offer great profits for companies.

You will find data as a limited source by the research team, it also comprises the data extracted from external sources as well. Clean data assures that more competence in raising the brand success.

In the advanced digital world, the core purpose of focus on data quality is more widely taken into consideration than before.

Factors involved in determining data quality are:

  1. Accuracy
  2. Availability
  3. Completeness
  4. Granularity
  5. Relevance
  6. Reliability
  7. Timeliness

Phases of data quality cycle:

  1. The initial data quality goal or metrics needs to be defined as per your business requirements. These goals should be part of your overall data quality strategy. There should be clear planning of what data is supposed to be researched.
  2. The cleansing of the final analyzed data is done by the quality team.
  3. Enrichment of data can benefit the business processes.
  4. To ensure the quality of data, you are supposed to monitor and check if the data is significant. It can also be done automatically using the tools available.

Tips To Ensure Data Quality

  1. Check out the quality of your data regularly and find out the errors, and gaps.
  2. Check the impact  – positive and negative, both – of data quality
  3. Verify the main elements that showcase your business, which is required to grow the company rapidly yet feasible. Later can focus on the data sources to filter the good from the irrelevant ones.
  4. Toil towards forming an efficient database of data where only relevant, unique, and reliable information stays.
  5. Make use of AI-based tools for ensuring the quality of your data.
  6. Communicate and work together with data scientists, analysts, and experts 
  7. Track every effort you have made towards your data gathering and quality maintenance.

Practices used to improve Data Quality are:

 

  • Data Quality Dimensions:

When upgrading your data, the motto should l be to track and improve the scope of data quality dimensions. Uniqueness is the most noticeable data quality mode when it comes to customer final data. Uniqueness is a less frequent issue. However, completeness is often a big pain.

 

  • Data quality management:

In data quality management the goal is to maintain a balanced set of sources to prevent future data quality obstacles and to clean data that does not meet the data quality Key Performance Indicators required to get in the business objectives.

The data quality KPIs should match the KPIs used to track the business performance.

 

  • Data Governance:

A data governance framework must lay out the data policies and data standards that set the bar for what data quality KPIs are needed and which data elements should be addressed. This includes what business rules must be adhered to and underpinned by data quality measures.

 

  • Data Profiling:

Data profiling is a process, often managed by technologies, and appropriate knowledge of data assets comprises data quality management. 

Data profiling can also be used to discover the keys that relate data entities across different databases and to the degree that this is not already done within the single databases.

 

  • Data Matching:

Data matching is a technology based on match codes, for example, Soundex, fuzzy logic, and increasingly also machine learning used to determine if two or more data records are describing the same real-world entity. This process can be used in searching the single database and finding matching entities across various data references.

 

  • Data Quality Reporting:

Businesses are highly concentrating on data quality and also data KPIs and the trend in their measurements as well as the trend in issues going through the data quality issue log.

Organizations require to seek and understand the persons, methods, and technology to perform the business demands on data quality:

  • The organization should include clear responsibilities for data domains, as well as roles.
  • Practices for data quality can be defined by adopting the best processes as the data quality cycle.
  • Technology supports people in their processes via software features and the requisite IT architecture.

Initially, it is significant to know brand issues and problems arising and keep in mind that the businesses and their processes are always more vital than the technology as they are defined as per the company’s strategy. So technology is effortless there to support them.

Maintaining high levels of data quality enables organizations to reduce the cost of identifying and fixing bad data in their systems. Companies are also able to avoid operational errors and business process breakdowns that can increase operating expenses and reduce revenues.

Companies are now highly paying attention to maintaining, supporting, and improving data quality. 

VSynergize processes millions of contacts to discover the exact prospects for your needs. For further assistance reach us now on 855-203-8196 or email at info@vsynergize.com

Leave A Comment

Related Posts