TOP 13 BEST DATA GOVERNANCE TOOLS FOR 2023

data governance tools
Image Credit: DataVersity

To ensure that data are managed consistently and not exploited across the organization, businesses must implement a solid Data Management plan as they become increasingly data-reliant. Data Governance refers to ensuring the privacy, security, and availability of an organization’s data. Data privacy and security concerns have come to the fore as the number of reported data breaches has increased over the past several years. Using sophisticated Data Governance Tools to define your data’s language and standards can help to simplify Data Governance planning. The framework of Data Governance tools is discussed in this article. You will also learn open source tools, Informatica tools, and why Data Governance Tools are essential,

What is Data Governance?

Data Governance encompasses all efforts made to maintain data security, confidentiality, accuracy, availability, and utility. Included are the tasks that humans must perform, the procedures that must be adhered to, and the tools that will facilitate these actions along the data life cycle.

In layman’s words, “Data Governance” is establishing the guidelines and procedures for managing incoming, stored, processed, and deleted information. It defines the types of information that are regulated and the types of people with access to such databases. Data Governance also includes ensuring conformity to external standards set by organizations like regulators and trade associations.

Data Governance activities have an effect on the Strategic, Tactical, and Operational tiers of an enterprise, as depicted in the graphic to the right. To effectively manage and use data within the context of the firm and in conjunction with other data projects, Data Governance operations must be a continuous, iterative process.

Data Governance Tools

Many of the time-consuming duties that come with running a governance program can be with the help of data governance tools. Data catalogs and business glossaries can be made with the help of this software, as can data mapping and classification, workflow management, collaboration, process documentation, and the construction of data governance policies. Data quality, MDM, and metadata management tools can all benefit from data governance software.

The following is an alphabetical list and brief description of 13 widely used data governance tools.

#1. Alation Data Governance App

In its early days, Alation served as a data catalog platform for companies to use in creating an inventory of and accessing their data. In September 2021, Alation launched a data governance solution to complement its flagship product, the Alation Data Catalog. The Alation Data Governance App was developed to streamline the delivery of trusted information across hybrid cloud and multi-cloud IT infrastructures.

#2. Ataccama One

Because it consolidates data quality management (DQM), master data management (MDM), and other data management and governance processes, Ataccama One aspires to be an all-in-one solution for businesses. The AI-driven software can be data governance teams, stewards, scientists, analysts, and engineers on-premises, cloud, or hybrid.

Data catalog, data integration capabilities, reference data management tools, and a data narrative module are just some of the ways in which Ataccama One helps businesses streamline their data quality and MDM initiatives. With features like a complete audit history and role-based security, the solution was developed for enterprise-wide deployments and use in highly regulated industries.

#3. Apache Atlas

Apache Atlas is a free and open-source software that helps businesses with data-heavy platforms with metadata management and data governance. It can share metadata with non-Hadoop tools and processes to integrate analytics systems. Data scientists, other analysts, and a company’s data governance team can all benefit from Atlas’s asset cataloging, classification, and governance features, as well as the data-related collaboration tools they enable.

#4. Axon Data Governance

Informatica promotes Axon Data Governance as a tool for businesses to give end users and data stewards reliable information. AI-driven automation helps stewards with data discovery, data quality evaluation, and communication; Informatica acquired the technology in 2017 when it purchased the original creator, Diaku. Governance teams can create curated data marketplaces to help business and analytics users find, acquire, and understand data.

The Axon tool is useful for data governance teams because it helps them create a standardized data dictionary, establish relationships between data items, detect data gaps, and connect governance policies to the data they influence.

#5. Collibra Data Governance

The majority of a data scientist’s time is supposedly data discovery, data hygiene, and data organization. Collibra’s Data Governance tool, part of its Data Intelligence Cloud, helps businesses provide customers with accurate information. Collibra claims that its data governance solution may make governance workflows and procedures more efficient, standardize the language used to discuss data assets and make it simpler to locate and comprehend important data.

#6. Data360 Govern

Precisely, a software vendor, claims that their product Data360 Govern will increase trust in data assets, which is essential to the success of any relationship. In 2021, Precisely acquired Infogix’s data quality and analytics technologies, now Data360. Organizations can use Data360 Govern’s data catalog and metadata management features to build a corporate data governance framework.

#7. Erwin Data Intelligence

Those familiar with the works of the legendary fictional investigator Sherlock Holmes would know that he possesses extraordinary perceptive abilities. Erwin Data Intelligence, a product of Quest Software, is a corporate data governance application that boasts similar features. They say it “provides data awareness, capability, and knowledge to drive data governance and business enablement” in businesses.

#8. IBM Cloud Pak for Data

Data governance, quality, and privacy activities, as well as data integration, customer data management, and AI governance, are all bolstered by IBM’s cloud-native Cloud Pak for Data. The software’s data discovery, profiling, and cataloging features are all powered by AI. The tools for data policy management and metadata enrichment support data security and regulatory compliance.

#9. OneTrust Data Governance

Data discovery and categorization capabilities driven by AI, an integrated data catalog, and a suite of data governance policy management features are all part of OneTrust Data Governance. OneTrust provides this and other products to help businesses with their data privacy, risk management, and related initiatives. Data governance leverages the same AI, ML, and RPA engine as the company’s other products.

#10. Oracle Enterprise Metadata Management

Harvesting, cataloging, and governing metadata from relational databases, data warehouses, Hadoop clusters, BI platforms, and other data sources, in both Oracle and non-Oracle systems, is by Oracle Enterprise Metadata Management (OEMM). Metadata reporting and exploration capabilities, as well as an interactive search and browser, are also in the program. It also has tools for impact analysis and tracking the origins of data.

#11. Rocket Data Intelligence

According to Rocket Software, Rocket Data Intelligence is the answer to the problem of “data distrust.” Because business managers, data scientists, and other end users frequently can’t locate the data they need or don’t understand or trust it, the organization observes that much of the wealth of data. The Rocket DI solution provides metadata management, data lineage, and data governance features to aid enterprises in tackling these challenges.

#12. SAP Master Data Governance

As the name suggests, SAP Master Data Governance’s goal is to assist with the governance and management of master data within MDM initiatives. The solution has built-in data quality management features and may be used to centrally combine and govern master data from several source systems. The SAP Business Technology Platform incorporates this and other related technologies, such as those for data management and analytics as well as artificial intelligence.

#13. SAS Information Governance

The software company SAS Institute developed the SAS Information Governance tool to aid data stewards and data governance teams in securing and appropriately utilizing data assets, freeing up time for business and analytics users to focus on analysis rather than data discovery and evaluation. Governance software is available as a standalone product and as a regular component or add-on to SAS analytics tools.

Why Data Governance Tools?

Policies defining data ownership, duties, and delegations are the goal of “Data Governance.” The goal is to generate a unified understanding of all of the system’s data silos through the creation of common data definitions and formats. The goal of data governance is to make it possible to make sound decisions in light of trustworthy data resources. This is why every company needs a data governance strategy.

Data Governance frameworks are used to define and record the who, what, where, and why of data inside an organization. Increased consistency and accessibility throughout the process result from organizational data that is structured and under control by predetermined norms and standards. Data governance solutions enable companies to create and track data handling guidelines from acquisition to disposal.

Data Governance Framework

The proliferation of digital transformation initiatives has contributed to the rise in popularity of data governance framework. Data Governance platforms should have several features, such as:

#1. Data Standards

The purpose of creating data dictionaries, taxonomies, and business glossaries is to provide clarity around business and data terminology. The clarity this literature provides is constructive when discussing metrics and reporting. Stakeholders may see the data architecture, which encourages them to think creatively and automate field-specific processes.

#2. Data Processes and Organizational Structure

Users can gain insight into how data is processed internally by using the access controls provided by data governance. Data access, privacy policies, and the frequency with which data are all examples of such constraints. This documentation aids organizational structure by clarifying roles and responsibilities in relation to data administration and maintenance.

#3. Tools and Technologies

Metadata management systems are only one example of a data governance tool that helps to back up data procedures and standards. When paired with self-service Data Analytics Tools, analysts can query and analyze data sets for reporting and innovation.

Data Governance Tools Open Source

Open-source data governance technologies may be worth looking into if you need a way to control your data and make sure it’s accurate, secure, and private. All of your data assets can be better managed with the aid of the instruments presented here. Data governance is the process of establishing processes for data quality, data security, and data privacy, as well as defining the roles and responsibilities of data stewards, data owners, and data consumers. Open-source data governance tools help automate and streamline data asset management and integrity protection.

Data governance tools that are open source can be accessed, modified, and redistributed without cost. In most cases, a group of programmers united by a passion for data governance creates and maintains these tools.

Open-source data governance tools are applications that aid in the administration of information resources. They offer a variety of functionalities, including as data organization, metadata administration, data lineage tracing, and teamwork aids. Most open-source data governance tools are free of charge and highly adaptable.

Data Governance Tools Informatica

Informatica Data Quality Tools for Governance is a collection of tools that, when combined with Informatica PowerCenter, provide robust data quality for enterprise-level use cases.

Get new data-driven, cloud-delivered insights for your digital transformation. To succeed in today’s cloud-native, metadata-driven environment, you need to give your data new life. The machine learning and artificial intelligence powered by our CLAIRE engine in the Informatica Intelligent Data Management Cloud provide you with insightful data for analytics and more. Read the blogs featured on this page to gain new perspectives you can put to use immediately.

What are the 3 Pillars of Data Governance?

People, Process, and Technology are essential components of effective data governance programs.

#1. People

The people involved are the most important factor, as they are the stakeholders who will play various roles in developing, adopting, and ultimately owning the process. Eliminating digital interruptions and running data governance activities efficiently also requires a well-trained human resource.

#2. Process

Second, the program to apply the policies and procedures in a way that satisfies industry compliance needs and standards must be derived from an accurate method. Data governance initiatives may not achieve their full potential if a proper procedure is not in place.

#3. Technology

Data governance relies heavily on the use of the appropriate technological method. AI is now being utilized to regulate data assets in real time, thanks to technological breakthroughs. The growing amount of data has the potential to stifle productivity if not handled properly.

What are the Four Components of Data Governance?

Following the recommended order of attack, you may build a strong data governance program that safeguards the accessibility, usability, integrity, and security of your company’s data assets, paving the way for more informed decision-making and complying with regulations.

What are the 4 Modes of Governance?

First, we construct a systematic typology of four types of governance in the policy dimension: coercion, voluntarism, targeting, and framework regulation, to better understand the many policy features of governance.

References

0 Shares:
Leave a Reply

Your email address will not be published. Required fields are marked *

You May Also Like