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5 min read

Data Lake vs Data Warehouse: What's the Difference?

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While data lakes and data warehouses are both important data management tools, they serve very different purposes. If you're trying to determine whether you need a data lake, a data warehouse, or possibly even both, you'll want to understand the functionality of each tool and their differences thoroughly.

This article will highlight the differences between each tool, how they can be used together, and help you determine which one is right for your organization.

We'll start with data lakes first, because data warehouses are typically built from data lakes.

What is a Data Lake?

Data lakes are data repositories that store data in its raw form. Data lakes emphasize data storage rather than data management, by allowing data to be stored in whatever format is most convenient at the time of storage. This allows for easier discovery and analysis of data due to less restrictions on how data needs to be formatted or structured before being loaded into the data lake.

The data lake is often part of the data warehouse, but data lakes don't necessarily have to be integrated with a data warehouse. A data lake can hold data without any of it being cleansed or prepared for analysis, which is typically a tedious and time-consuming process (unless you use TimeXtender's Data Estate Builder).

Benefits of Using a Data Lake

There are several benefits to using data lakes:

  • Data lakes are "free form" data stores, meaning data can be stored in nearly any format in its raw, unstructured form.
  • It's easy to store data from sources that can't always produce data in a format that data warehouses require, such as data collected using IoT sensors.
  • Because data can be stored in multiple formats, there isn't the same requirement for data cleansing and preparation like there would be to load data into a data warehouse.
  • Data lakes are scalable, meaning they can accommodate growing data volumes over time.

It is important, however, that such data still follows certain agreed upon standards like basic metadata tagging for future reference and ease of access when needed. Having data that is not properly tagged and organized can lead to the data lake becoming more of a "data swamp", making it difficult to conduct any form of meaningful data analysis.

What is a Data Warehouse?

Data warehouses are similar to data lakes in that they support storing data from multiple sources. In fact, data warehouses often combine data from multiple databases and data lakes. However, data warehouses are designed specifically for data analysis purposes, so data needs to be cleansed, formatted, and prepared before being loaded into the data warehouse where it can be queried or analyzed.

For example, IoT sensor readings may not include all the necessary formatting needed to work within a specific data warehouse view or table structure. However, this can easily be resolved by using an automated data preparation tool, such as TimeXtender's Data Estate Builder, which automatically transforms unstructured sensor data (which was collected using data lakes) into data that is highly structured for data warehousing purposes.

You can think of a data warehouse as a "clean" data store where data is carefully separated, cleansed, and structured, allowing you to quickly extract actionable insights.

Data warehouses typically also provide data governance and data management capabilities, along with better security options.

Benefits of Using a Data Warehouse

There are several benefits to using data warehouses:

  • Data warehouses are able to handle data from multiple sources, making it easier to consolidate data across different data silos.
  • Data warehouses allow for more robust data analysis due to data structured in a specific way.
  • They offer data governance and data management, which ensures data quality while also improving data security.
  • Data warehouses remove data redundancies, making the data more streamlined for analysis purposes. This leads to faster analytical processing speeds.

Data sources within data warehouses typically follow a star schema data model (the difference between data models is beyond the scope of this article, but you can learn more about data modeling here).

Combining Data Lakes and Data Warehouses to Build a Modern Data Estate

While data lakes and data warehouses serve different purposes, there exists a way to combine the two in order to build a Modern Data Estate that is integrated, automated, and offers the best of both worlds.

Instead of trying to manually move data from data lakes into data warehouses, some organizations choose to use data lakes as central repositories for their data warehouse, instead. With this approach, data is stored in the data lake for ease of access. Then, that data can be cleansed, prepared, and transferred into a data warehouse.

The data inside the data warehouse can then be used for data analysis purposes (for example, building data models, dashboards, and reports).

By using this hybrid approach – incorporating data warehouses alongside data lakes – users are able to take full advantage of both platforms' benefits, without having to rely on manual tasks that slow down analytics processes.

The Challenges that Prevent Organizations from Building a Modern Data Estate

Unfortunately, building a Modern Data Estate that can turn rapidly-growing amounts of raw data into actionable insights typically requires a team of highly-skilled developers, a patchwork of slow, manual tools, and months – or even years – of development time. 

We built TimeXtender to remove these bottlenecks and empower your organization with access to the insights they need to accelerate innovation and growth. 

TimeXtender is an automated, low-code, drag-and-drop Data Estate Builder that empowers you to build a Modern Data Estate 10x faster than standard methods, prepare data for analysis, and make quality business decisions with data, mind, and heart.

We do this for one simple reason: because time matters

Here's how TimeXtender's Data Estate Builder consolidates data into a central data lake, cleanses it as needed, and then transforms it into a format that can be used for analysis:

Data Ingestion

TimeXtender's Data Estate Builder allows you to ingest data from 250+ data source into your Azure Data Lake (along with custom connectors for proprietary sources), while automatically adapting to any changes that may happen in your source systems.

Having all of your data stored in a single format and location lays the foundation for any type of advanced analytics, such as AI and Machine Learning.

Data Cleansing and Preparation

Once your data has been ingested, TimeXtender's intuitive interface allows you to quickly search your Azure Data Lake to find the data you need, and simply drag and drop it into the Modern Data Warehouse (MDW).

The MDW will automatically cleanse, transform, and consolidate that data into a "single version of truth".

Semantic Models

Now that your data is integrated, cleansed, and prepared for analysis, you can deliver a subset of data to business users using semantic models. This allows for fast creation and flexible modification of dashboards and reports.

The modeling capabilities in TimeXtender's Semantic Layer provide department or purpose-specific models of your data using terms and definitions that business users understand. The Semantic Layer is similar to the traditional concept of "Data Marts".

Because a single model is created once, then deployed to multiple front end solutions, users get the same fields and figures regardless if they are using Power BI, Tableau, or Qlik.

This means that, while the organization may be using multiple visualization tools, this does not need to increase the amount of work required to build or modify a model.

This approach also drastically improves data governance, ensuring all users are consuming a single version of truth, regardless of the tool they use.

Furthermore, TimeXtender automatically generates end-to-end project documentation, along with cataloging that supports tagging and metadata management, so you can ensure data quality and data discovery.

TimeXtender Data Estate Data Warehouse Data Lake

Conclusion

In the end, data lakes and data warehouses are both useful tools for data analytics efforts within an organization, as long as they're evaluated and utilized according to their specific capabilities and functions.

For more information on building a Modern Data Estate using both data lakes and data warehouses, contact us today. We can help you quickly and easily set up a Data Estate Builder that streamlines data storage, cleansing, and preparation, giving you the ability to utilize data lakes and data warehouses to their fullest potential.

LEARN MORE ABOUT TIMEXTENDER 

As a Microsoft Gold Certified Partner, we serve our 3,000+ customers, from mid-sized companies to Fortune 500, through our global network of partners. 

Visit the TimeXtender product page to learn how we are helping clients build reliable, modern Data Estates 10x faster than standard methods. 

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