Data Management and Governance

Analytics are only as good as their source data
Modern enterprises benefit almost constantly from new data capture opportunities, but maintaining consistency across platforms, storage solutions, and formats demands a thorough system of quality controls. Without it, AI implementations fail to thrive.
Businesses can prevent the degradation of one of their most valuable assets with practices and systems designed alongside an expert data management and governance partner.
High-quality data for high-quality decision making
Industry leaders look to their data for strategy insights. Raw data, however, is too disorganized to yield good information. Silos, incompatibilities, and redundancies across the enterprise data landscape hamper your ability to achieve a truly complete view of your organization.
Expert data management and governance from CBTS integrates data sources smoothly and develops quality-control and monitoring processes to maintain accuracy. Unleash growth with precise and reliable insights to build on.
Real technology. Real outcomes. View more here.
Join us as we explore organizational data, one of the most critical assets in modern business.
What is data management and governance?
Enterprises collect data from an enormous range of sources, including software platforms, Internet of Things (IoT) implementations, apps, customer interactions, and more. Each source stores and transmits this data in its own way. Data management and governance processes unify these disparate data sources into a consistent, accurate, reliable, and protected resource for use with enterprise analytics and AI.
Benefits of quality services for data management and governance
Cultivate a rich and trusted data resource.
Lay a solid foundation for your data-driven business, and develop the tools to maintain it.
Ensure consistency of data across a wide range of sources.
Seamlessly unite data from all of your business systems for broad insights.
Protect and preserve sensitive information with fine-grained access control.
Monitor and optimize data utilization throughout the enterprise.
Clean and organize data to drive the most accurate analyses.
Incorporate more data sources, more productively.
of organizations cite a lack of governance as the primary data challenge inhibiting AI initiatives.
DBTA
Why CBTS?
CBTS takes a tailored approach to data management and governance solutions, beginning with a detailed investigation of your current state and an in-depth understanding of your goals. Our experts bring to bear their knowledge of best practices and compliance considerations to design a management model that delivers on your data’s potential.
Audit existing data and sources to identify challenges and vulnerabilities.
Modify data quality, consistency, and governance standards.
Establish a single source of truth for enterprise data and the processes for maintaining it.
Observe, fine-tune, and build upon your data’s utilization in enterprise applications.
Data breaches and compromised data integrity are two sides of the same security coin. Comprehensive data governance prevents unauthorized access to sensitive information both externally and internally, preserving compliance and maintaining the quality of an essential resource.
Top 5 questions
Both are large-scale data storage solutions. Data lakes store unstructured, unprocessed data in its original format. Data warehouses store data that has been processed to serve specific analytical purposes. A hybrid solution of the two is called a “data lakehouse.”
DataOps is an approach to designing, managing, and maintaining a data architecture. It emphasizes automation, collaboration, and continuous improvement to deliver improved performance.
ETL stands for extract, transform, load, and ELT is extract, load, transform. Both data integration processes transmit data from a source to a storage location. An ETL process transforms the data into a usable format before loading it into storage, while ELT handles the transformation within the warehouse.
An enterprise AI model relies on unified, high-quality data. Good data engineering ensures that data is clean, accurate, and ready to be used for training when it arrives in the data lake or warehouse.
Both describe how data is pushed to the data lake or warehouse. Batch integration updates at regular intervals, whereas real-time integration sends new data as soon as it is available.
Lorem Ipsum is simply dummy text of the printing and typesetting industry.
Related stories
Schedule a complimentary 30-minute discussion with a CBTS solution consultant
Talk to one of our experts today to see how we can help your organization supercharge your company’s network, communications, and overall efficiency.

