Cookies help us display personalized product recommendations and ensure you have great shopping experience.

By using this site, you agree to the Privacy Policy and Terms of Use.
Accept
SmartData CollectiveSmartData Collective
  • Analytics
    AnalyticsShow More
    composable analytics
    How Composable Analytics Unlocks Modular Agility for Data Teams
    9 Min Read
    data mining to find the right poly bag makers
    Using Data Analytics to Choose the Best Poly Mailer Bags
    12 Min Read
    data analytics for pharmacy trends
    How Data Analytics Is Tracking Trends in the Pharmacy Industry
    5 Min Read
    car expense data analytics
    Data Analytics for Smarter Vehicle Expense Management
    10 Min Read
    image fx (60)
    Data Analytics Driving the Modern E-commerce Warehouse
    13 Min Read
  • Big Data
  • BI
  • Exclusive
  • IT
  • Marketing
  • Software
Search
© 2008-25 SmartData Collective. All Rights Reserved.
Reading: How Data Enrichment Is A Force Multiplier In Analytics
Share
Notification
Font ResizerAa
SmartData CollectiveSmartData Collective
Font ResizerAa
Search
  • About
  • Help
  • Privacy
Follow US
© 2008-23 SmartData Collective. All Rights Reserved.
SmartData Collective > Data Management > Best Practices > How Data Enrichment Is A Force Multiplier In Analytics
AnalyticsBest PracticesBig DataData ManagementExclusive

How Data Enrichment Is A Force Multiplier In Analytics

Steve Jones
Steve Jones
5 Min Read
data enrichment and analytics
Shutterstock Licensed Photo
SHARE

Based on the definition by Techopedia, data enrichment is the process by which raw data is improved so that it can be better and more easily utilized. While there are a lot of data sources that generate tons and tons of raw data, much of this raw data would be better used if it were first enriched. Data enrichment is the first step in the process by which we gain valuable insights that can benefit a company based on its collected data through analytics or machine learning. Even something as simple as typo-correction can turn raw data into more easily processable data with less data being tossed out as unusable. Data extrapolation is also considered data enrichment, filling in gaps and holes in our data to conform with the mathematical model set out by previous data points. Data enrichment allows for data to be fed into a system in a format that is easily understood by the algorithm to ensure that the outputs we get are consistent with the raw data we put in.

Contents
  • Taking the Next Step
  • Machine Learning through Enriched Data
  • Informed Decisions through Analytics

Taking the Next Step

After we’ve enriched our data, where do we go from here? The next rational step in our data processing is augmentation. While collecting the data might be enough for some companies, to get the real benefit out of data enrichment, we need to go beyond this, adding to the data. Using data collection points to collate, arrange, and categorize data makes for a much more robust data enrichment system. This sets the data up for use in analytics and machine learning, where we put our data that we’ve collected and enriched to work for us. Using analytics to generate customer insights or other pertinent information can help us to inform and target our marketing. Forbes states rightly that data is crucial to targeting the right customers with the right experiences.

Machine Learning through Enriched Data

Gathering insights is a long-term effort. Trends don’t usually pinpoint themselves after a single day of data. Usually it takes months, sometimes years, to determine what a trend is and to glean information from that trend. Analytics relies on spotting patterns within the data and figuring out how those patterns apply to the company as a whole. It uses a set of key data points that the company is interested in as a basis for its exploration. While analytics is important and is a huge part of informing marketing tactics in the world today, it falls short in figuring out the big picture. That’s where machine learning comes in. Through specialized algorithms, we can use the enriched data we previously collected and boosted to give us insights into all sorts of customer patterns and trends, not just those that we’ve figured out beforehand. As SAS puts it, machine learning is a type of data analysis that deals with the automation of analytical model-building. The importance of automated model building is that there is no need to limit ourselves to a simple human-processable amount of data. We can literally use all the data we collect, no matter how much data that is. The implications to business are profound, as it means that companies offering eDiscovery services can be informed on a wide range of things that they didn’t even know they were lacking. In essence, machine learning takes data analytics to its logical conclusion by offering true insight into a business through automated processing of enriched data.

Informed Decisions through Analytics

Information is processed data, and information is what the heads of a company need in order to make decisions. With the added power of enriched data boosting the processing of collected data, a company can stand to benefit immensely, giving insights into new and previously uncharted areas. This has implications, not just for customer profiles, but for things like business efficiency and customer impact as well. Machine learning gives a company even more reach and coverage with its collected data and turns that data into a true resource, one that can lead to an increased bottom line for its parent company if utilized effectively.

More Read

Four Really Real Meanings of Real-Time
The Importance of CSRD Data for EU-Operative Businesses
Top 5 Reasons You Should Become a Data Analyst
Can AI Help with Regional Nuances in International SEO?
Clarabridge Gets Engaged: A Report from the Customer Connections Conference
TAGGED:big datadatadata enrichmentdata management
Share This Article
Facebook Pinterest LinkedIn
Share

Follow us on Facebook

Latest News

composable analytics
How Composable Analytics Unlocks Modular Agility for Data Teams
Analytics Big Data Exclusive
fintech startups
Why Fintech Start-Ups Struggle To Secure The Funding They Need
Infographic News
edge networks in manufacturing
Edge Infrastructure Strategies for Data-Driven Manufacturers
Big Data Exclusive
data mining to find the right poly bag makers
Using Data Analytics to Choose the Best Poly Mailer Bags
Analytics Big Data Exclusive

Stay Connected

1.2kFollowersLike
33.7kFollowersFollow
222FollowersPin

You Might also Like

source code security
Big Data

All About Source Code & Why You Need to Protect It for Data-Driven Projects

10 Min Read
big data and web development
Big Data

Big Data Leads to Massive Changes in Website Management and Development

6 Min Read

Socialytics: Social Analytics Earns Its Portmanteau

3 Min Read
football data collection and analytics
Big Data

Unleashing Victory: How Data Collection Is Revolutionizing Football Performance Analysis!

4 Min Read

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

AI and chatbots
Chatbots and SEO: How Can Chatbots Improve Your SEO Ranking?
Artificial Intelligence Chatbots Exclusive
giveaway chatbots
How To Get An Award Winning Giveaway Bot
Big Data Chatbots Exclusive

Quick Link

  • About
  • Contact
  • Privacy
Follow US
© 2008-25 SmartData Collective. All Rights Reserved.
Go to mobile version
Welcome Back!

Sign in to your account

Username or Email Address
Password

Lost your password?