Data Quality category

Data Accuracy vs Data Integrity: Similarities and Differences

4 min read - What is data accuracy? Data accuracy refers to the degree to which data is correct, precise, and free from errors. In other words, it measures the closeness of a piece of data to its true value. Data accuracy is a crucial aspect of data quality, as inaccurate data can lead to incorrect decision-making, poor customer service, and operational inefficiencies. The importance of data accuracy cannot be overstated. Accurate data ensures that these decisions and strategies are based on a solid…

DataOps Architecture: 5 Key Components and How to Get Started

4 min read - What Is DataOps architecture? DataOps is a collaborative approach to data management that combines the agility of DevOps with the power of data analytics. It aims to streamline data ingestion, processing, and analytics by automating and integrating various data workflows. A DataOps architecture is the structural foundation that supports the implementation of DataOps principles within an organization. It encompasses the systems, tools, and processes that enable businesses to manage their data more efficiently and effectively. In this article: Legacy data…

Data Consistency vs Data Integrity: Similarities and Differences

4 min read - Distinguishing between these two terms can often be a source of confusion, making it essential to begin with clear and concise definitions for both. What is data consistency? Data consistency refers to the state of data in which all copies or instances are the same across all systems and databases. Consistency helps ensure that data is accurate, up-to-date and coherent across different database systems, applications and platforms. It plays a critical role in ensuring that users of the data can…

Unified DataOps: Components, Challenges, and How to Get Started

4 min read - Unified DataOps represents a fresh approach to managing and synchronizing data operations across several domains, including data engineering, data science, DevOps and analytics. The goal of this strategy is to streamline the entire process of extracting insights from raw data by removing silos between teams and technologies.  Unifying these various components of the data lifecycle under a single overarching framework allows organizations to enjoy better collaboration, quicker project time-to-value and enhanced overall efficiency. A unified DataOps strategy gives companies the…

Failed to load data

IBM Newsletters

Get our newsletters and topic updates that deliver the latest thought leadership and insights on emerging trends.
Subscribe now More newsletters