Code: MTA2966 | Publication Date: Mar 2025 |
North America Data Quality Tools Market has witnessed significant growth. This can be attributed to the endeavours made by the companies in driving innovation in the market by investing in research and development activities. With new technologies and techniques emerging at a rapid pace, companies are constantly developing and enhancing their data quality tools to keep up with the changing landscape. This not only helps them stay competitive but also benefits businesses looking for effective ways to manage their data. Companies in this market also offer a wide range of products and services that cater to different business needs. From data cleansing and profiling to data governance and metadata management, companies provide comprehensive solutions that address various aspects of data quality. This enables businesses to choose the tools and services that best fit their specific requirements.
Furthermore, companies in the North America Data Quality Tools market are providing training and support services to their clients. The tools offered by these companies may require specialized skills to operate efficiently. Therefore, they provide training programs for users to familiarize themselves with the software's features and functionalities. Additionally, these companies also offer technical support services to resolve any issues that their clients may face while using the tools. This helps ensure smooth and efficient implementation of data quality solutions, which ultimately leads to improved data accuracy and reliability for organizations. As per 6Wresearch, North America Data Quality Tools Market is projected to grow at a significant CAGR of 4.9% from 2025-2031F.
Company Name | Informatica |
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Headquarters | Redwood City, California, USA |
Established Year | 1993 |
Official Website | Click Here |
Informatica is a leading provider of data quality solutions, helping businesses cleanse, standardize, and de-duplicate data across multiple platforms. Their AI-powered Intelligent Data Management Cloud (IDMC) ensures data accuracy, consistency, and governance, making it a preferred choice for organizations seeking high-quality and trustworthy data for analytics and decision-making.
Company Name | SAS Institute |
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Headquarters | Cary, North Carolina, USA |
Established Year | 1976 |
Official Website | Click Here |
SAS Institute is a global leader in analytics and data management, offering advanced data quality tools that detect, correct, and prevent errors in datasets. Their SAS Data Quality suite provides real-time monitoring, cleansing, and enrichment, ensuring businesses have accurate and reliable data for analytics and reporting.
Company Name | IBM Corporation |
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Headquarters | Armonk, New York, USA |
Established Year | 1911 |
Official Website | Click Here |
IBM Corporation offers enterprise-grade data quality solutions, leveraging AI and automation to identify and fix data errors efficiently. Their IBM InfoSphere Information Server helps organizations standardize, cleanse, and enrich data, making IBM one of the most trusted names in data management and analytics.
Company Name | SAP SE |
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Headquarters | Walldorf, Germany |
Established Year | 1972 |
Official Website | Click Here |
SAP SE provides enterprise data quality solutions through its SAP Data Intelligence platform, allowing businesses to identify, cleanse, and standardize their data for improved accuracy and reliability. With decades of industry experience, SAP is a preferred choice for organizations looking for seamless data governance and analytics integration.
Company Name | Talend |
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Headquarters | Redwood City, California, USA |
Established Year | 2006 |
Official Website | Click Here |
Talend is a cloud-based data integration company offering a powerful data quality suite that helps organizations detect, correct, and prevent data errors in real time. Their Talend Data Fabric platform ensures data consistency and compliance, making it a popular choice for businesses focused on cloud data management.
Company Name | Trillium Software (Syncsort) |
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Headquarters | Billerica, Massachusetts, USA |
Established Year | 1988 |
Official Website | - |
Trillium Software, a division of Syncsort, specializes in enterprise data quality solutions that help businesses identify and correct data errors across multiple platforms. Their solutions are known for robust data profiling, validation, and enrichment, ensuring high-quality and consistent data.
Company Name | Experian Data Quality |
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Headquarters | Costa Mesa, California, USA |
Established Year | 1996 |
Official Website | Click Here |
Experian Data Quality, a division of Experian, offers data standardization, verification, and enrichment solutions to improve data accuracy and completeness. Their real-time validation tools help businesses minimize data errors, enhancing customer insights and decision-making.
Company Name | Melissa Data |
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Headquarters | Rancho Santa Margarita, California, USA |
Established Year | 1985 |
Official Website | Click Here |
Melissa Data is a trusted provider of data quality and address management solutions. Their data verification, cleansing, and enrichment tools help organizations improve customer records and overall data accuracy, making them a go-to choice for CRM and customer data management.
Company Name | Pitney Bowes |
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Headquarters | Stamford, Connecticut, USA |
Established Year | 1920 |
Official Website | Click Here |
Pitney Bowes offers data quality and location intelligence solutions, enabling businesses to detect, correct, and standardize data for improved accuracy and analytics. With over a century of experience, they are a trusted name in data-driven business solutions.
Company Name | Data Ladder |
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Headquarters | Champaign, Illinois, USA |
Established Year | 2003 |
Official Website | Click Here |
Data Ladder specializes in data cleansing, deduplication, and enrichment. Their DataMatch Enterprise platform helps businesses improve data quality by identifying duplicates, correcting inconsistencies, and enhancing overall data reliability.