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Equipping organizations with sustainable data solutions

Organizations are generating and consuming data at unprecedented rates, requiring robust data management solutions to ensure their information is up-to-date, easily accessible, secure, and reliable. By integrating effective data management with advanced analytics, companies can gain meaningful insights to drive successful operations.

Transforming data into actionable insights

In collaboration with both private and public sector clients, LTS utilizes the latest open-source tools and platforms, as well as Commercial Off-the-Shelf (COTS) and Government Off-the-Shelf (GOTS) solutions, to deliver customizable and context-intuitive data management and analytics services. Our team seamlessly integrates these services as applications into existing workflows, enhancing the data management experience with cutting-edge user interfaces, robust data visualization capabilities, and advance reporting capabilities. As a result, your organization benefits from reduced costs associated with duplicative efforts as well as improved decision-making powered by our data analysis and forecasting capabilities.

Our approach

LTS uses a pragmatic approach to data management and analytics that adopts a robust data governance framework to ensure your company’s information is managed with both integrity and privacy. This framework includes several key activities, such as:

  • Establishing a clear data strategy and vision that aligns with your organization’s desired outcomes, data-related challenges and opportunities, and priorities for data management activities.
  • Outlining the structure, roles, and responsibilities for managing data to include a shared data governance council that oversees all data-related decisions, policies, and standards.
  • Implementing processes and controls to include regular profiling and cleansing activities that ensure data quality throughout its lifecycle.
  • Classifying and categorizing data based on its sensitivity, criticality, and regulatory requirements.
  • Implementing measures, such as data access controls, encryption, data masking, and monitoring mechanisms that protect sensitive data and ensure compliance with data privacy regulations.
  • Creating data integration strategies and standards to enable seamless data flow and interoperability between different systems and applications, while defining guidelines for data creation, collection, storage, archival, and disposal.