Enterprise Data Warehouse: Types, Benefits, Features, Cost Considerations
Technology

Enterprise Data Warehouse: Types, Benefits, Features, Cost Considerations

Jul 2, 2024

With the increasing amount of data that people use in their operations today, the enterprise data warehouse is one of the essential utilities that companies can use to benefit from their data. No matter whether it is an improvement and optimization of decision-making, the cost-effective optimization of business operations, or the acquisition of customer insights, the EDW stands at the center of contemporary data management concepts.

But to begin with, what is an enterprise data warehouse? And why would it make a difference? Here, we will discuss in detail different types of EDWs, examine their benefits, key components, and features that make them compelling and infallible. 

Follow us while we discuss the complex affairs of enterprise data warehouses and the ideas that can help transform the way companies work with their greatest treasure—data.

What does Data Warehouse Allow Organization to Achieve: Let’s Talk About Key Benefits!

EDW also helps in realizing a spectrum of strategic and tactical goals and objectives within an organization. Here are some key benefits:

  1. Centralized Data Management: EDWs offer a consolidated data pool where complex structured and unstructured data from various sources within the organization’s entities can be stored systematically. This centralized data storage structure simplifies the access process and promotes consistency, veracity, and security throughout the company.
  2. Data Integration and Consolidation: EDWs are also capable of consolidating information from other sources like transactions, CRM systems, marketing databases, and others in a way that allows the organization to have a holistic view of data assets. By consolidating it, the chances of data silage are addressed, and further analysis and reporting can be done effectively.
  3. Advanced Analytics and Business Intelligence: EDWs form the basis of advanced analytical and business intelligence projects, so they are core to most contemporary BI architectures. It means that organizations can extract value by performing data analysis on a well-structured and comprehensive dataset through data visualization, various types of statistical analyses, predictive analytics, and machine learning.
  4. Enhanced Decision Making: Due to the provision of the right and timely data at the right place, at the right time, at the right scale, and in the right format, decision-making at every level of the organization becomes efficient and effective. The type of information that is stored in EDWs is specific and can generate real-time reports that would enable stakeholders to react quite well to market factors, customer needs, and other business opportunities.
  5. Scalability and Flexibility: This is the case because EDWs are intended to be equally expandable in relation to increasing data volume and data variety within the framework of an organization. Thus, the features of EDWs, such as the ability to add more data input, respond to growing demands from users, or broaden the range of analysis features, prove that such systems are quite scalable.
  6. Regulatory Compliance and Governance: To manage and maintain high-quality and consistent regulatory compliance, data governance ETDWs are significant. Using secure practices for data access, data lineage logs for tracking the data flow, and auditing for compliance with regulations and company policies will help reduce the risk of data breaches and non-compliance, which can lead to serious legal and financial penalties for organizations.

In sum, an enterprise data warehouse ensures its organizations get the most efficient use out of their data assets, enabling them to win big in today’s data-centric economies.

Types of Enterprise Data Warehouse:

EDWs are of various types, and one type that fits another type of organization, data structure, or analytical purpose is not necessarily the same as another. Here are some common types of EDWs:

1. Traditional on-premises EDW:

    • On-premises EDWs are located at the individual organizations’ IT infrastructure within the organizations’ data centers.
    • They usually employ relational database models, for instance, Oracle, Microsoft SQL Server, or IBM DB2.
    • On the other hand, on-premises have full control of the matter all through the EDWs’ hardware, software, and management but are capital intensive and have recurrent expenses.

    2. Cloud-Based EDW:

      • The distributed EDWs can either be a private cloud or be outsourced to different cloud service providers such as AWS, Microsoft Azure, or Google Cloud.
      • They are characterized by versatility, flexibility in terms of resource usage, and pricing that is based on the usage pattern; this means that organizations can allocate the required amount of resources depending on their needs and skip the investment in the infrastructure they are not sure about.
      • Some of the common cloud-based EDW platforms currently on the market are Amazon Redshift, Azure Synapse Analytics (formerly Azure SQL Data Warehouse), and Google Big Query.

      3. Data Lakehouse:

        • Data lake houses are the combination and integration of both data lakes and data warehouses to provide a single environment for the storage and processing of traditional and big data.
        • They build on contemporary cloud-native architectures and technologies like Apache Hadoop, Apache Spark, and Delta Lake to manage vast volumetric datasets and accommodate the diverse types of analysis required in AI.
        • A data lake house lets the organization do BI analytics along with other modern analytics, like machine learning, real-time query, and analysis, with the same data lake fabric.

        4. Hybrid EDW:

          • Hybrid implementations capitalize on both the local and cloud setups to handle different data processing and compliance issues.
          • Businesses can keep critical data or information on-premises, especially where compliance concerns are paramount, while at the same time enjoying the benefits of the elasticity of the cloud for less mission-critical operations or analytic functions.
          • Hybrid solutions provide a level of versatility with on-premise and cloud platform integration and scalable resource usage, depending on the nature of the workload.

          5. Virtual Data Warehouse (VDW):

            • VDWs are basic logical databases that enable one to consolidate data in real time from diverse sources, where the actual physical location of the data doesn’t even matter.
            • They provide federated search and data virtualization; this means that users can search and work on data that might be located in different databases or data stores without requiring these databases to be migrated or copied to different locations.
            • VDWs are helpful in organizations with dissimilar data sources so that the company can attain a unified view of the data for reporting, analytics, and decision-making processes.

            Similar to all the types, each of them has its own benefits, disadvantages, and application, which gives organizations the responsibility of determining their needs and goals in order to select their most optimal EDW architecture.

            Key Features of Enterprise Data Warehouse:

            Here are the features of EDWs in one-liners:

            • Data Integration: Analysis of information collected from different platforms.
            • Storage Optimization: Centralizes the organization and storage of structured data.
            • Dimensional modeling supports the querying of data using analytical tools and resources.
            • Querying and Reporting: It facilitates high-level processing and analysis while evaluating results and outcomes.
            • Scalability and Performance: To address increasing amounts of stored data, the A.T. system incorporates operational scales.
            • Security and Compliance: Ever since human resources became centralized in our organization, they have ensured that all our data is safe and that we do not violate any legal rules.
            • Data Quality Management: Strong in the area of data consistency and future readiness.
            • Metadata management: It captures the history of the data and its usage within the organization.

            Conclusion:

            Therefore, the EDW is one of the major assets needed when dealing with today’s data environment. The integration, storage, and analysis of an enormous amount of data provides organizations with an opportunity to make rational decisions, innovate, and create a competitive advantage. A fact that may be of interest is that the EDW provides scalability, security, and analytics while being at the forefront of the digital transformation of businesses. 

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