• Skip to main content
  • Skip to secondary menu
  • Skip to primary sidebar
  • Skip to footer
  • Articles
  • News
  • Events
  • Advertize
  • Jobs
  • Courses
  • Contact
  • (0)
  • LoginRegister
    • Facebook
    • LinkedIn
    • RSS
      Articles
      News
      Events
      Job Posts
    • Twitter
Datafloq

Datafloq

Data and Technology Insights

  • Categories
    • Big Data
    • Blockchain
    • Cloud
    • Internet Of Things
    • Metaverse
    • Robotics
    • Cybersecurity
    • Startups
    • Strategy
    • Technical
  • Big Data
  • Blockchain
  • Cloud
  • Metaverse
  • Internet Of Things
  • Robotics
  • Cybersecurity
  • Startups
  • Strategy
  • Technical

Improve Data Architecture With an Operational Data Store

Edward Huskin / 3 min read.
April 12, 2021
Datafloq AI Score
×

Datafloq AI Score: 84.67

Datafloq enables anyone to contribute articles, but we value high-quality content. This means that we do not accept SEO link building content, spammy articles, clickbait, articles written by bots and especially not misinformation. Therefore, we have developed an AI, built using multiple built open-source and proprietary tools to instantly define whether an article is written by a human or a bot and determine the level of bias, objectivity, whether it is fact-based or not, sentiment and overall quality.

Articles published on Datafloq need to have a minimum AI score of 60% and we provide this graph to give more detailed information on how we rate this article. Please note that this is a work in progress and if you have any suggestions, feel free to contact us.

floq.to/PxEhY

Businesses today face a common dilemma: How does one make sense of all gathered data and transform them into useful insights that will help in decision making? Data’s prominence in today’s business processes has made it a core element in every organization‘s success. Companies should either keep up or get left behind as forward-thinking ones grab opportunities presented by the proper analysis and management of data.

Compared to previous years, there are now a host of modern technologies and techniques that can be used to serve customers and move businesses forward, making it a very competitive landscape. Instead of reacting after the fact, companies would do best to take a proactive approach and anticipate business needs and market trends so they can optimize outcomes. This is why organizations that create or gather data to use for decision making should rethink their data architecture or find ways to bolster it. Having data at your fingertips is one of the best ways business processes can be optimized so this must be considered when thinking about data architecture. Fortunately a modern operational data store (ODS) can help make this happen. By acting as an intermediary to a data warehouse, an ODS keeps operational data where it can easily be accessed whenever it’s needed.

Why Data Architecture is Important

An organization’s data architecture sets the standard set of tools used to manage data and defines the processes involved in the capture, analysis, interpretation, and delivery of usable data to users. These users and their unique data requirements are also identified by the data architecture. Ideally, it should set data standards for all users and data systems, providing a model of potential interactions between different systems and their users. A proper data architecture should also be able to define data structures used and how business applications use them. It also controls the flow of data by setting the criteria for data processing operations. A data architecture encompasses all data used by the organization, including data in use, data in storage, and even data in motion.

A data platform and data architecture, although often mentioned together, are essentially different. They are both used for the effective management of business data, but a data platform specifically refers to the tools and systems that move, shape, and validate data. Often, it’s used to refer to the underlying database engines and data assembly framework that allow data engineers to create usable datasets that will help the business predict and, to a certain extent, control outcomes.


Interested in what the future will bring? Download our 2023 Technology Trends eBook for free.

Consent

Why Use an Operational Data Store?

If you’re wondering how challenging data analysis and management can be, just imagine how much work one has to put into storing, analyzing, and interpreting 2.5 quintillion bytes of data each day. This is why companies are now employing data analysis systems and strategies to help them predict business outcomes and achieve expected results. Companies that store large amounts of data in legacy and disparate systems, even those that use cloud-based data stores, suffer from the challenges of having multiple systems of record. This system affects data integrity, especially if the business employs digital applications in various environments.

Developing applications require high-throughput systems and reliable API’s so that workload is minimized and processes are fast and nimble. A modern ODS can act as a digital integration hub, enabling data integration and empowering businesses with data analytics. It will assist in the digital transformation of a business by helping migrate applications to the cloud and offloading and modernizing legacy systems. If your customers have ever experienced slowdowns while using your service or if applications find it hard to maintain efficiency during high user concurrency, implementing an ODS architecture is an ideal solution. It also adds value to any business due to its ability to provide reports, analytics, and business intelligence (BI) on fresh data and accelerate data ingestion and processing times.

The Modern-day Data Architecture

Modernizing an organization’s data architecture presents a multitude of opportunities to help the business through leveraging the power of modern data analytics. By harnessing the power of data and transforming it into something businesses can use, companies can create automated supply chains, predictive models for business processes and predictive customer service systems. An effective data strategy can be very challenging to implement quickly, and those that joined the game early on have the advantage of time and a system already in place. Organizations planning their own digital transformation, however, shouldn’t lose hope and use the big data momentum to move their data strategy forward. They should move away from the fear of disrupting business by implementing a new data architecture or modernizing an existing one and take a look at the opportunities that will open up by making their data work for them.

Categories: Big Data
Tags: Big Data, data architecture, data management

About Edward Huskin

Edward Huskin is a freelance data and analytics consultant. He specializes in finding the best technical solution for companies to manage their data and produce meaningful insights.

Primary Sidebar

E-mail Newsletter

Sign up to receive email updates daily and to hear what's going on with us!

Publish
AN Article
Submit
a press release
List
AN Event
Create
A Job Post

Related Articles

12 Data Quality Metrics That ACTUALLY Matter

March 30, 2023 By Barr Moses

How to Build Microservices with Node.js

March 30, 2023 By Annie Qureshi

How to Validate OpenAI GPT Model Performance with Text Summarization (Part 1)

March 29, 2023 By mark

Related Jobs

  • Software Engineer | South Yorkshire, GB - February 07, 2023
  • Software Engineer with C# .net Investment House | London, GB - February 07, 2023
  • Senior Java Developer | London, GB - February 07, 2023
  • Software Engineer – Growing Digital Media Company | London, GB - February 07, 2023
  • LBG Returners – Senior Data Analyst | Chester Moor, GB - February 07, 2023
More Jobs

Tags

AI Amazon analysis analytics app application applications Artificial Intelligence BI Big Data blockchain business China Cloud Companies company costs crypto Data design development digital environment experience future Google+ government Group health information machine learning market mobile news public research security services share skills social social media software strategy technology

Related Events

  • 6th Middle East Banking AI & Analytics Summit 2023 | Riyadh, Saudi Arabia - May 10, 2023
  • Data Science Salon NYC: AI & Machine Learning in Finance & Technology | The Theater Center - December 7, 2022
  • Big Data LDN 2023 | Olympia London - September 20, 2023
More events

Footer


Datafloq is the one-stop source for big data, blockchain and artificial intelligence. We offer information, insights and opportunities to drive innovation with emerging technologies.

  • Facebook
  • LinkedIn
  • RSS
  • Twitter

Recent

  • 12 Data Quality Metrics That ACTUALLY Matter
  • How to Build Microservices with Node.js
  • How to Validate OpenAI GPT Model Performance with Text Summarization (Part 1)
  • What is Enterprise Application Integration (EAI), and How Should Your Company Approach It?
  • 5 Best Data Engineering Projects & Ideas for Beginners

Search

Tags

AI Amazon analysis analytics app application applications Artificial Intelligence BI Big Data blockchain business China Cloud Companies company costs crypto Data design development digital environment experience future Google+ government Group health information machine learning market mobile news public research security services share skills social social media software strategy technology

Copyright © 2023 Datafloq
HTML Sitemap| Privacy| Terms| Cookies

  • Facebook
  • Twitter
  • LinkedIn
  • WhatsApp

In order to optimize the website and to continuously improve Datafloq, we use cookies. For more information click here.

settings

Dear visitor,
Thank you for visiting Datafloq. If you find our content interesting, please subscribe to our weekly newsletter:

Did you know that you can publish job posts for free on Datafloq? You can start immediately and find the best candidates for free! Click here to get started.

Not Now Subscribe

Thanks for visiting Datafloq
If you enjoyed our content on emerging technologies, why not subscribe to our weekly newsletter to receive the latest news straight into your mailbox?

Subscribe

No thanks

Privacy Overview

This website uses cookies so that we can provide you with the best user experience possible. Cookie information is stored in your browser and performs functions such as recognising you when you return to our website and helping our team to understand which sections of the website you find most interesting and useful.

Necessary Cookies

Strictly Necessary Cookie should be enabled at all times so that we can save your preferences for cookie settings.

If you disable this cookie, we will not be able to save your preferences. This means that every time you visit this website you will need to enable or disable cookies again.

Marketing cookies

This website uses Google Analytics to collect anonymous information such as the number of visitors to the site, and the most popular pages.

Keeping this cookie enabled helps us to improve our website.

Please enable Strictly Necessary Cookies first so that we can save your preferences!