Remove Data Collection Remove High Quality Data Remove Metadata Remove Unstructured Data
article thumbnail

Data Fabric: The Future of Data Architecture

Monte Carlo

In this post, we’ll discuss what, exactly, a data fabric is, how other companies have used it, and how you can build one at your company. Table of Contents What is a data fabric? As your team builds your data fabric, make sure you have a designated way to collect the various metadata associated with your data inputs.

article thumbnail

Data Fabric: The Future of Data Architecture

Monte Carlo

In this post, we’ll discuss what, exactly, a data fabric is, how other companies have used it, and how you can build one at your company. Table of Contents What is a data fabric? As your team builds your data fabric, make sure you have a designated way to collect the various metadata associated with your data inputs.

Insiders

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

article thumbnail

Importance Of Employee Data Management In HRM

U-Next

The various steps in the data management process are listed below: . Data collection, processing, validation, and archiving . Combining various data kinds, including both structured and unstructured data, from various sources . Ensuring catastrophe recovery and high data availability .

article thumbnail

Evolution of ML Fact Store

Netflix Tech

ML algorithms can be only as good as the data that we provide to it. This post will focus on the large volume of high-quality data stored in Axion?—?our An example of data about members is the video they had watched or added to their My List. An example of video data is video metadata, like the length of a video.

article thumbnail

How to Develop and Manage a Data-Driven Culture?

U-Next

A structured data record consists of a very fixed field of data. Relational databases, spreadsheets, and other documents can contain this type of data. Management of raw materials, such as data, is at the heart of what it does. Data maturity requires metadata management and alignment with KPIs to ensure good data quality.