By using this site, you agree to the Privacy Policy and Terms of Use.
Accept
SmartData CollectiveSmartData CollectiveSmartData Collective
  • Analytics
    AnalyticsShow More
    data-driven white label SEO
    Does Data Mining Really Help with White Label SEO?
    7 Min Read
    marketing analytics for hardware vendors
    IT Hardware Startups Turn to Data Analytics for Market Research
    9 Min Read
    big data and digital signage
    The Power of Big Data and Analytics in Digital Signage
    5 Min Read
    data analytics investing
    Data Analytics Boosts ROI of Investment Trusts
    9 Min Read
    football data collection and analytics
    Unleashing Victory: How Data Collection Is Revolutionizing Football Performance Analysis!
    4 Min Read
  • Big Data
  • BI
  • Exclusive
  • IT
  • Marketing
  • Software
Search
© 2008-23 SmartData Collective. All Rights Reserved.
Reading: 7 Data Lineage Tool Tips For Preventing Human Error in Data Processing
Share
Notification Show More
Aa
SmartData CollectiveSmartData Collective
Aa
Search
  • About
  • Help
  • Privacy
Follow US
© 2008-23 SmartData Collective. All Rights Reserved.
SmartData Collective > Data Management > Best Practices > 7 Data Lineage Tool Tips For Preventing Human Error in Data Processing
Big Data

7 Data Lineage Tool Tips For Preventing Human Error in Data Processing

Double-checking data entries is important to minimize mistakes that can lead to data quality issues down the road.

Samantha Higgins
Last updated: 2022/04/21 at 1:09 AM
Samantha Higgins
6 Min Read
data lineage tool
SHARE

Errors in data entry might have serious effects if they are not discovered quickly. Human mistake is the most common cause of data entry errors. Since typical data entry errors may be minimized with the right steps, there are numerous data lineage tool strategies that a corporation can follow. 

Contents
Make Enough HiresVerify Your Work a Second TimeUse the Most Current TechnologyMake Data Profiling AvailableStreamline the MethodologyReduce the Amount of Redundant InformationAccurately Identifying InaccuraciesConclusion

The steps organizations can take to reduce mistakes in their firm for a smooth process of business activities will be discussed in this blog.

Make Enough Hires

There should always be enough personnel in a company to handle the workload. There is a limitation to everything, no matter how effective your employee is. The company’s daily data entry needs must be met by a sufficient number of people. 

However, they must be well trained in the preceding areas of data mistakes so that they can perform quickly and accurately. As a result of a thorough audit and the presence of enough staff in each shift, the burden will be equally distributed and business operations will run smoothly.

More Read

data security unveiled

Data Security Unveiled: Protecting Your Information in a Connected World

NIST 800-171 Safeguards Help Non-Federal Networks Handling CUI
IoT Security: What Kind of Data Is Compromised by Poorly Protected IoT Devices?
Strategies for Ensuring Security in Hyperconverged Infrastructure
Harnessing the Power of Analytics For Direct-to-Consumer Businesses

Verify Your Work a Second Time

When it comes to reducing data input errors, double-checking all data entering works should be the usual operating procedure. It’s an excellent approach to combat human mistakes in data entry. Time-consuming and demanding data entry activities might lead to errors in data entry or the automation of the entire process itself. These are some of the biggest challenges businesses face with handling data.

For smaller data input activities, a more frequent and more thorough double-check can help identify potential problems. When an organization is updating or changing its technology, these checkpoints help make data entry easier.

Use the Most Current Technology

Many companies employ software solutions like ICR (Intelligent Character Recognition), which extracts data and decreases the effort of data entry workers, and OCR (Optical Character Recognition). Because of this, human errors by employees are reduced. 

Other tools, such as automatic error reporting, can be used to verify the accuracy of the data entered into the system. Data entry errors will gradually be reduced by these technologies, and operators will be able to fix the problems as soon as they become aware of them.

Make Data Profiling Available

To ensure that the data in the network is accurate, data profiling is a typical procedure. Data analysis profiling is a useful data lineage tool for discovering errors in data by detecting anomalies in known patterns and other preconditions.

An automated data profiling tool can discover and filter potentially inaccurate values while marking the information for further investigation or assessment. It aids in the identification of erroneous data and its sources.

Streamline the Methodology

Standardizing the data collecting and data input process can go a long way toward ensuring optimal accuracy. The data entry workers will have a better understanding of what to search for and anticipate in each batch of data, as well as the proper protocols to follow, because of the standardization of the process throughout the agency. 

In the long run, this will allow for the entire process to be securely automated reducing the burden and the number of mistakes.

Reduce the Amount of Redundant Information

One of the most common reasons for mistakes is data redundancy. It takes a long time to enter new data into the system. Data entry errors can be reduced by minimizing the number of unnecessary records in the system. 

Reducing data redundancy is made easier by reviewing and modifying forms, data, and documents regularly. Errors will be less likely to be entered into the system if redundant data is removed from it.

Accurately Identifying Inaccuracies

To reduce the likelihood of data input errors, you need first to determine where the inaccurate data is coming from, both outside and internally. Data should be double-checked at each stage of the way using a system that is enabled. 

There should be a double-check and verification of every step, from examining the data migration across various databases to making time-bound modifications. In addition to verifying the source of the data inaccuracies, this protocol will also maintain track of the probable faulty data that causes data entry errors to occur, therefore making it easier to correct them.

Conclusion

Double-checking all data entries should be the usual operating procedure. Data entry errors will gradually be reduced by these data lineage tools. Operators will be able to fix the problems as soon as they become aware of them. The steps organizations can take to reduce mistakes in their firm will be discussed. 

Data analysis profiling is a useful tool for discovering errors in data by detecting anomalies in known patterns and other preconditions. An automated data profiling tool can discover and filter potentially inaccurate values while marking the information for further investigation or assessment. It aids in the identification of erroneous data and its sources.

TAGGED: analytics, data management, data quality, data security
Samantha Higgins April 21, 2022
Share This Article
Facebook Twitter Pinterest LinkedIn
Share
By Samantha Higgins
Follow:
Samantha Higgins is a professional writer with a passion for research, observation, and innovation. She is nurturing a growing family of twin boys in Portland, Oregon with her husband. She loves kayaking and reading creative non-fiction. 

Follow us on Facebook

Latest News

iot and cloud technology
IoT And Cloud Integration is the Future!
Internet of Things
ai in marketing
4 Ways AI Can Improve Your Marketing Strategy
Artificial Intelligence
data security unveiled
Data Security Unveiled: Protecting Your Information in a Connected World
Security
it management for data-driven businesses
7 Major IT Infrastructure Challenges for Data-Driven Companies
IT

Stay Connected

1.2k Followers Like
33.7k Followers Follow
222 Followers Pin

You Might also Like

data security unveiled
Security

Data Security Unveiled: Protecting Your Information in a Connected World

8 Min Read
data security
Data Management

NIST 800-171 Safeguards Help Non-Federal Networks Handling CUI

5 Min Read
IoT Security
Internet of Things

IoT Security: What Kind of Data Is Compromised by Poorly Protected IoT Devices?

6 Min Read
data center encryption
Security

Strategies for Ensuring Security in Hyperconverged Infrastructure

8 Min Read

SmartData Collective is one of the largest & trusted community covering technical content about Big Data, BI, Cloud, Analytics, Artificial Intelligence, IoT & more.

data-driven web design
5 Great Tips for Using Data Analytics for Website UX
Big Data
ai in ecommerce
Artificial Intelligence for eCommerce: A Closer Look
Artificial Intelligence

Quick Link

  • About
  • Contact
  • Privacy
Follow US
© 2008-23 SmartData Collective. All Rights Reserved.
Go to mobile version
Welcome Back!

Sign in to your account

Lost your password?