Directory Image
This website uses cookies to improve user experience. By using our website you consent to all cookies in accordance with our Privacy Policy.

What is Data Quality Framework and How to Implement it?

Author: Ritu Khanna
by Ritu Khanna
Posted: Nov 04, 2022

How to Implement the Data Quality Framework: What Is It?

A data quality methodology can be put into practice in a number of ways. These include efficacy, common data quality methods, and the horizontal dimension.

All data quality issues are recorded in a data quality issue log, along with any preventative and corrective measures that were done. It can be used to draw attention to patterns and KPIs associated with the organization's data quality procedures.

The most prevalent party, product, and location master data concerns are these three. Organizations can improve data quality and prevent problems in the future by keeping track of recognized concerns.

Concerning data sources is another frequent problem with data quality. The data analysis system examines the collected data for issues and errors after it has been collected from the data sources.

Data cleaning procedures entail locating and eliminating inaccurate records, confirming them, and making any necessary adjustments. These operations can be carried out by hand, mechanically, or with the use of data quality technologies. Other processes, including data profiling, are added to some data cleaning methods.

The objective is to ensure that data is accurate and tidy while also minimizing errors brought on by human error. In order to guarantee correctness, dependability, and usefulness, data quality is essential.

Special Education Assistants (SEAs) should set up procedures to guarantee data consistency and integrity throughout time in order to preserve this. To determine if the data will be relevant for future use, a data quality plan should also include a data quality assessment.

Scalability

When creating a data quality framework, scalability must be taken into account as a key factor. A data quality framework must to be adaptable enough to meet the requirements of various companies.

It ought to be able to keep track of and assess a wider range of difficulties, from straightforward inconsistencies to trickier statistical problems. It ought to be able to identify fresh events and highlight them ahead of time.

This guarantees that only high-quality data enters marketing tools. A precise event naming system and a fundamental set of data points must be created in order to accomplish this.

These data quality protections will guarantee the accuracy and dependability of the data you gather. A scalable rule-based engine is a component of a data quality framework.

A single-pass integration method is also included in the framework to standardize global data and get rid of redundant information. Tools for creating rules, querying, and validating transformed data are also included. This makes the framework scalable and flexible.

Data quality must include the timeliness of the data. For the purpose of producing accurate reports and other business activities, current data is essential. Each step of the data quality process allows for the measurement of timeliness.

A timely payment or balance report does not always equate to a timely cash report. Reports can instead have many line items from several data sources, each of which contains a single reported item or aggregated data.

The timeliness quality dimension in a data quality framework represents the interval between an occurrence and a subsequent process. Even if information may be two hours old when it is added into the database, it is still reliable.

Conclusion

Three crucial considerations must be made when a corporation wishes to develop a framework for data quality: timeliness, accuracy, and accessibility.

Being current is crucial since data is only valuable if it can be put to use. Accurate data helps minimize errors and simplify operational procedures. Additionally, it can encourage profitable corporate innovation.

The same rules should be deployable across data kinds and apps once a data quality framework is in place. It should also be adaptable and attentive to the demands of the data quality stewards. Policies for handling data must also be included in the framework.

Rate this Article
Leave a Comment
Author Thumbnail
I Agree:
Comment 
Pictures
Author: Ritu Khanna

Ritu Khanna

Member since: Oct 01, 2022
Published articles: 2

Related Articles