Manage
Learn to apply best practices and optimize your operations.
Manage
Learn to apply best practices and optimize your operations.
NoSQL database types explained: Key-value store
Utilizing a key-value store can improve data processing speeds and scalability for data operations that do not require complex queries or analytics. Continue Reading
Top 5 metadata management best practices
Organizations must craft a strategy, assemble a team and adopt standards to develop a strong metadata management strategy and ensure data accuracy, consistency and quality. Continue Reading
6 dimensions of data quality boost data performance
Poor data quality can lead to costly mistakes and bad decision making. The six dimensions of data quality ensure accurate, complete, consistent, timely, valid and unique data. Continue Reading
-
Understand Microsoft Copilot security concerns
Microsoft Copilot raises security concerns around unauthorized or unintentional data access. Prevent leaks with vigilant oversight and comprehensive user access reviews. Continue Reading
How to make a metadata management framework
Don't wait until you have a metadata management problem to address the issue. Put a metadata management framework in place to prepare for potential issues. Continue Reading
10 top vector database options for similarity searches
Vector databases excel in different areas of vector searches, including sophisticated text and visual options. Choose the platform that best fits organizational needs.Continue Reading
How to use a data governance maturity model
A data governance maturity model identifies where current operations are lacking and how to make improvements that better protect and use data.Continue Reading
IoT data management extends best practices to the edge
IoT devices generate and collect data from points all over the network. Organizations must apply general data management best practices to get the most value from IoT data.Continue Reading
Evaluating data quality requires clear and measurable KPIs
KPIs and metrics are necessary to measure the quality of data. Organizations can use the dimensions of data quality to establish metrics and KPIs for their specific needs.Continue Reading
Multi-cloud databases: How to deploy and manage them
Deploying databases on different cloud platforms offers various benefits. Here's a set of 10 best practices for building a multi-cloud database architecture.Continue Reading
-
Evaluate and choose from the top 10 data profiling tools
Any effective data quality process needs data profiling. Evaluate key criteria to select which of the top 10 data profiling tools best fits your needs.Continue Reading
RDBMS (relational database management system)
A relational database management system (RDBMS) is a collection of programs and capabilities that enable IT teams and others to create, update, administer and otherwise interact with a relational database.Continue Reading
Managing databases in a hybrid cloud: 10 key considerations
To manage hybrid cloud database environments, consider business and application goals, consistency, configuration management, synchronization, latency, security and stability.Continue Reading
10 best practices for managing data in microservices
Data architects managing loosely coupled microservices applications need to make the right decisions about databases, data ownership, sharing, consistency and failure recovery.Continue Reading
AI boosts efficiency in data management
AI can automate tasks across every aspect of the data management process, enabling data teams to focus on models, not labeling and graphing.Continue Reading
7 steps to create a data loss prevention policy
Data loss prevention is an ever-changing process of proactive and reactive protection and planning. Read on to learn how to set up a successful DLP policy.Continue Reading
Use these 10 steps to successfully build your data culture
Building a data culture starts at the top level of any organization. These 10 steps can help guide leadership through the key aspects any data culture needs to succeed.Continue Reading
Data management trends: GenAI, governance and lakehouses
The top data management trends of 2023 -- generative AI, data governance, observability and a shift toward data lakehouses -- are major factors for maximizing data value in 2024.Continue Reading
Should you run your database on premises or in the cloud?
Use of cloud databases is surging, but there are still reasons for on-premises ones. Here's a comparison of cloud and local database architectures to help you choose.Continue Reading
Top trends in big data for 2024 and beyond
Big data is driving changes in how organizations process, store and analyze data. The benefits are spurring even more innovation. Here are four big trends.Continue Reading
Do traditional data stacks have a use versus modern options?
Traditional data stacks differ from modern data stacks in the use of cloud and advanced analytics tools. Update on-premises data stacks to gain niche advantages over cloud options.Continue Reading
Use knowledge graphs with databases to uncover new insights
Knowledge graphs work with graph databases to offer different data storage options than a traditional database, particularly in the biomedical, financial and product sectors.Continue Reading
Data mesh aids democratization with decentralization
Real-time analytics enables faster decision-making and insights. As data democratization rises in importance, data mesh helps decentralize that data for all users.Continue Reading
Enhance data governance with distributed data stewardship
Data stewardship and distributed stewardship models bring different tools to data governance strategies. Organizations need to understand the differences to choose the best fit.Continue Reading
Data management trends: Convergence and more money
The past year focused heavily on data intelligence, lakehouse development and observability as vendors innovated to help enterprises make effective use of converged data and technologies.Continue Reading
5 steps to an improved data quality assurance plan
Follow these steps to develop a data quality assurance plan and management strategy that can help identify data errors before they cause big business problems.Continue Reading
Make data usability a priority on data quality for big data
To help make big data analytics applications more effective, IT teams must augment conventional data quality processes with measures aimed at improving data usability for analysts.Continue Reading
7 data quality best practices to improve data performance
Data quality is essential to operate a successful data pipeline and enable data-driven decision-making. These seven data quality best practices can help improve performance.Continue Reading
How CDOs manage cloud adoption and hybrid cloud compliance
Cloud advancements are changing how chief data officers approach cloud data management as they juggle security, privacy and other hybrid cloud compliance issues.Continue Reading
6 CDO challenges that hinder data-driven initiatives
Chief data officers often run into difficulties getting projects off the ground. Here are six challenges hindering modern CDOs' data-driven projects and strategies.Continue Reading
How to build a data catalog: 10 key steps
A data catalog helps business and analytics users explore data assets, find relevant data and understand what it means. Here are 10 important steps for building one.Continue Reading
Top benefits of data governance for businesses
Effective data governance provides a variety of benefits to organizations, including improvements in operational efficiency, data quality and business decision-making.Continue Reading
How to evaluate and optimize data warehouse performance
Organizations build data warehouses to satisfy their information management needs. Data warehouse optimization can help ensure that these warehouses achieve their full potential.Continue Reading
Understanding the benefits of a data quality strategy
A data quality strategy can improve an organization's ability to generate value from data, but determining quality depends on the processes and use cases.Continue Reading
8 proactive steps to improve data quality
Here are eight steps to take to improve your organization's data quality in a proactive way, before data errors and other issues cause business problems.Continue Reading
3 considerations for a data compliance management strategy
A data compliance management strategy is key for organizations to protect data the right way. Different positions have responsibility to ensure industry regulations are met.Continue Reading
Why businesses should know the importance of data quality
Data quality, building data trust and identifying bias are critical for organizations to confidently make decisions based on the data they collect.Continue Reading
10 key elements to follow data compliance regulations
Data privacy laws are changing around the world on a constant basis. These 10 elements can help keep organizations up to speed with data compliance regulations.Continue Reading
NLP and AI boost the automated data warehouse
Businesses are working to automate as many elements of their data warehouses as they can through nascent tools like augmented analytics and natural language processing.Continue Reading
'Building the Data Lakehouse' explores next-gen architecture
This book excerpt by 'father of the data warehouse' Bill Inmon and experts Mary Levins and Ranjeet Srivastava explores the latest methods for wrangling data into usable intel.Continue Reading
NoSQL database types explained: Graph
NoSQL graph databases focus on the relationships between pieces of data. Two common frameworks bring different advantages and disadvantages over other NoSQL database types.Continue Reading
Top 5 elements needed for a successful data warehouse
While conventional data warehouses may struggle to keep up with growing volumes of data, these five elements best give the ability to tap into valuable BI.Continue Reading
6 strategies to tap into data warehouse BI
Data warehouse BI benefits include data storage, summarization and transformation and can be unlocked with these six strategies leveraging cloud architectures.Continue Reading
6 key components of a successful data strategy
These six elements are essential parts of an enterprise data strategy that will help meet business needs for information when paired with a solid data architecture.Continue Reading
5 principles of a well-designed data architecture
Here are five core data architecture principles to help organizations build a modern architecture that successfully meets their data management and analytics needs.Continue Reading
EY CTO outlines data governance challenges
Multinational professional services firm EY has taken a strategic view of how to manage and use data in a federated approach powered by a trusted data fabric.Continue Reading
Data governance strategies for today's evolving IT landscape
With remote work becoming part of the norm and as companies migrate more data into the cloud, it's imperative that companies review their data governance strategy.Continue Reading
The enterprise advantages of automated data collection
Many organizations still rely on manual data entry that wastes time and results in low-quality data. Here are the latest automated data collection techniques and their benefits.Continue Reading
How automated metadata management improves business insights
Automating metadata management can cut down time spent on tasks such as data tagging and cataloging. Explore how automated metadata management is improving data quality.Continue Reading
Building a big data architecture: Core components, best practices
To process the infinite volume and variety of data collected from multiple sources, most enterprises need to get with the program and build a multilayered big data architecture.Continue Reading
Data warehouse environment modernization tools and tips
A data warehouse environment is made up of many tools and systems. Read on to learn the history of the modern data warehouse and how they're currently evolving.Continue Reading
Cloud data catalog benefits for the enterprise
Vendor cloud data catalog options are expanding and offering more automated tools to end users. Read on to find out how enterprises can benefit from these options.Continue Reading
Pandemic exposes difficulty of data management in education
Limited resources and a shift to remote learning have shown the inequalities across school districts when it comes to data management and the negative impact this can have.Continue Reading
Data lineage documentation imperative to data quality
Understanding the detailed journey of data elements throughout the data pipeline can help an enterprise maintain data quality and improve trustworthiness.Continue Reading
Data anonymization best practices protect sensitive data
See how data anonymization best practices can help your organization protect sensitive data and those who could be at risk if that data identified them.Continue Reading
Maintaining data integrity key for data quality
Maintaining data integrity through improved communication and data literacy is paramount for organizations in the enterprise seeking to ensure data quality and trust.Continue Reading
Investment in talent key for data quality in healthcare
Investing in training employees on proper data gathering and management practices is crucial for healthcare organizations seeking to ensuring data quality and patient care.Continue Reading
Top 5 feature engineering tips for better models
From understanding a model's expected goal to factoring in subject matter expertise, experts talk about the best ways to improve your feature engineering.Continue Reading
Key points for a monitoring center pandemic action plan
On-site monitoring centers come under stress when it's necessary for most workers to telecommute. Here are key points to include in a crisis plan to continue service availability.Continue Reading
Surprising insight on the data governance process
Many enterprise data governance processes have been around for a while. Read on for ways a modern approach can be beneficial, and preview a new book that can update your strategy.Continue Reading
Data integration technologies unify multiple data stores
Manual data integration can still benefit small and medium businesses, but a prolonged manual process can slow and detract from actionable work by data professionals.Continue Reading
Organization and automation ease data preparation process
By laying down proper groundwork and investing in automated checks, companies can ease the data preparation process and ensure they are getting the most out of their data.Continue Reading
Big data security management embraces governance, privacy
Cyberattacks, GDPR and CCPA compliance, and COVID-19 present serious security and privacy challenges for managers tasked with protecting their data stores.Continue Reading
GDPR, CCPA, cloud drive security management tool makeovers
As data protection and privacy laws like GDPR and CCPA take hold, data managers refine governance practices, while vendors enhance traditional big data security tools.Continue Reading
Building a strong data analytics platform architecture
A strong analytics platform is key to meeting demands in a data-driven business. Read on for the key components your platform architecture should include.Continue Reading
When a DIY database management system design is the best fit
Learn how a combination of homegrown, off-the-shelf and open source tools, plus proper motivation, can yield a DIY DBMS that meets corporate expectations, needs and ROI.Continue Reading
Building a database application the DIY way
Business users experience the trials, tribulations and exultations of building a DIY DBMS, especially when IT expertise is not readily available or costs are too high.Continue Reading
How to build an effective streaming data architecture
Data architecture can be tricky when it comes to real-time analytics. Clear objectives and scalability are important factors when determining the streaming data architecture you need.Continue Reading
6 best practices on data governance for big data environments
Efforts to govern big data must corral a mix of structured and unstructured data. That's a challenge for most organizations. These six action items will help.Continue Reading
Data governance roles and responsibilities: What's needed
Data governance requires a team effort. Experts offer advice on how to structure and implement data governance roles that engage business users across the enterprise.Continue Reading
Should you host your data lake in the cloud?
On premises or in the cloud: What's the better place for your data lake? Here are some things to consider before deciding where to deploy a big data environment.Continue Reading
Data warehousing design and value change with the times
Big data, the cloud and analytics profoundly shape data warehouse purpose and design. Learn how companies derive value from a repository that at times needs definition.Continue Reading
Analytics demands add loftier goals to data warehouse strategies
As the concept of storing data and the technologies needed to do it evolve, companies with set goals in mind are building their data warehouses to maximize analytics outcomes.Continue Reading
How to improve data governance for self-service analytics
Citizen data scientists and self-service analytics are on the rise as the data scientist shortage continues. Here are some data management best practices to support them.Continue Reading
Data catalog best practices rely on teamwork, governance, tools
This handbook provides advice on creating data catalogs to help data analysts and other users find information in corporate systems, plus insight on data catalog trends.Continue Reading
Data catalog management for analytics fraught with unique demands
Data catalogs for analytics applications demand detailed assessment of user needs, cross-functional teams, ready access, continuous improvement and a self-sustaining system.Continue Reading
Data warehouse technologies evolve as vendors look skyward
The need for high-speed analytics and low latency are pushing data warehousing vendors to create and reinvent their platforms and, in some cases, reinvent themselves.Continue Reading
How to streamline feature engineering for machine learning
Structured data is necessary in machine learning, but sifting through data is time consuming. Streamlining the feature engineering process can help data scientists be more productive.Continue Reading
Top database cloud migration considerations for enterprises
Many organizations are switching to cloud databases and big data platforms. But understanding what option best meets your data needs is an important first step.Continue Reading
Managing unstructured data is crucial to enterprises' AI goals
Unstructured data makes up a huge portion of most businesses' data volume. But, with data-hungry AI systems coming online, making sense of these stores has never been more important.Continue Reading
How enterprises navigate GDPR data management rules
For businesses that operate in the EU, complying with GDPR has to be a top priority. And in many, much of the compliance burden falls on the data management staff.Continue Reading
DOD CDO shares 7 data management best practices
The DOD's first chief data officer, Michael Conlin, shares tips on how organizations can modernize their data management practices with the objective of matching private enterprise.Continue Reading
Align business and IT drivers through data quality best practices
Information management consultants talk about the importance of aligning business and IT drivers for a holistic architectural approach to ensuring strong data quality.Continue Reading
Third-party database tools boast attractive alternatives
For companies considering third-party database tools, this handbook provides expert advice on evaluating and deploying on-premises and cloud options from third parties.Continue Reading
Database management tools from third parties make natives restless
Third-party database performance tools offer attractive alternatives to management software from DBMS vendors, provided their capabilities include orchestration, governance and integration.Continue Reading
GDPR, AI intensify privacy and data protection compliance demands
This guide covers the challenges data management teams face on data protection and privacy, particularly with the rise of GDPR and similar laws and the growing use of AI tools.Continue Reading
Information Builders exec talks data management ethics
In this Q&A, James Cotton, director of the Data Management Centre of Excellence at Information Builders, offers advice on how organizations can carry out ethical data management.Continue Reading
Using a LEFT OUTER JOIN vs. RIGHT OUTER JOIN in SQL
In this book excerpt, you'll learn LEFT OUTER JOIN vs. RIGHT OUTER JOIN techniques and find various examples for creating SQL queries that incorporate OUTER JOINs.Continue Reading
Data modeling techniques to overcome common business challenges
In this interview, author and data modeling instructor Steve Hoberman discusses techniques for dealing with challenges that may arise in the data modeling process.Continue Reading
How 4 organizations are breaking down data silos
Siloed data continues to inhibit enterprise efficiency. Here, IT professionals discuss problems their organizations are facing around data silos -- and how they're solving them.Continue Reading
Building leaner, meaner BI data sources
As business intelligence analysis and reporting platforms become increasingly important in the enterprise, so does the data that feeds them. Are your BI data sources up to par?Continue Reading
Data virtualization tools promote anywhere, anytime data access
This online handbook examines data virtualization software and how organizations are deploying and using the technology as part of their data integration processes.Continue Reading
Data virtualization benefits seen in unified views, IT agility
Through in-place integration, data virtualization platforms can provide wider access to data and simplify security and governance. But they come with some limitations.Continue Reading
Key features to create a SQL Server audit trail in databases
SQL Server offers a set of built-in auditing tools that can help make the process of tracking logins and other database activities easier for database administrators.Continue Reading
Data virtualization layer feeds logical data warehouse, Agile BI
Indiana University is using data virtualization to combine data from various source systems for analysis, as part of an initiative to improve strategic decision-making.Continue Reading
Data modeling best practices power analytics, business apps
Data modeling is a key part of data management and analytics. This handbook highlights best practices for creating data models and new functionality in modeling tools.Continue Reading
SQL Server performance tuning best practices for DBAs
Tuning database performance is a complex process, but consultant Joey D'Antoni details a list of SQL Server performance tuning best practices that can make it easier.Continue Reading
How data staging helped Walgreens transform its supply chain
Walgreens built a centralized data warehouse to give supply chain partners a better view into its data -- but analytics were slow. That's where a data staging tier came in.Continue Reading
How to navigate the challenges of the data modeling process
Data modeling and curation can help businesses more efficiently use data they've collected. There are challenges, however -- beginning with ensuring data quality.Continue Reading
8 tips to improve the data curation process
A data curation and modeling strategy can ensure accuracy and enhance governance. Experts offer eight best practices for curating data. First, start at the source.Continue Reading