How AtScale’s Semantic Layer Enables Trusted, Real-Time Customer-360 for Top Retail Companies

In today’s data-driven retail environment, organizations constantly collect and analyze vast amounts of customer data to better understand behaviors, preferences, and interactions. However, making this data actionable presents significant challenges, often requiring complex data engineering, aggregation processes, and pipeline management. AtScale’s semantic layer with autonomous data engineering offers a transformative solution, helping top retail companies unlock the full potential of their data without the need for extensive data movement or manual intervention.

Building a Trusted, Real-Time, Customer-360 in Retail with a Semantic Layer

Retail organizations rely on customer 360 to better understand how to maximize value from each of their customer relationships. These comprehensive customer funnels enable retailers to track customer journeys from initial visits to final purchases. Ultimately, the customer 360 view gives retailers a better ability to identify key moments in the customer’s journey, allowing them to optimize conversion rates and personalize the user experience to drive increased sales and brand loyalty.

AtScale’s semantic layer bridges the gap between complex data systems and business users, providing a unified, consistent approach to interpreting data across an entire organization. By implementing a semantic layer on top of clickstream data and other large-scale data sources that represent the customer journey, top retail companies can easily manage and define business metrics, hierarchies, and relationships without requiring constant involvement from data engineers.

  • Consistent Business Metrics: AtScale allows retailers to define and standardize key metrics such as customer engagement, purchase frequency, and session durations. This ensures that every department accesses data with a shared understanding, eliminating inconsistencies in analysis and reporting.
  • Real-Time Insights: The semantic layer simplifies complex data environments, enabling business users to query massive datasets, such as clickstream data, directly in real-time. Retailers can swiftly identify trends, customer preferences, and behavioral patterns without delays caused by data processing bottlenecks.

Reducing Manual Data Engineering with AtScale’s Autonomous Data Pipelines

Traditionally, data engineering teams invest significant time in building data pipelines, creating aggregates, and optimizing data for analysis. This manual process can be resource-intensive, especially when dealing with ever-growing datasets like clickstream data. AtScale’s autonomous data engineering capabilities address this by automating many of these tasks.

  • Automated Aggregations: AtScale autonomously creates and manages data aggregates based on usage patterns, ensuring high performance for frequently accessed data. This means data engineers no longer need to build aggregates or continuously optimize queries manually.
  • Effortless Data Preparation: The semantic layer automatically translates business-friendly queries into optimized queries for underlying data warehouses, such as Databricks. This automation reduces the need for custom data pipelines, allowing engineering teams to focus on strategic initiatives rather than routine data preparation tasks.

Gaining Deeper Customer Insights Through Clickstream Data Analytics

With AtScale’s platform, retail companies can gain deeper insights into customer behavior by leveraging large-scale clickstream data.

  • Unified View of Customer Behavior: AtScale enables retailers to analyze clickstream data alongside other customer data, such as purchase history, demographics, and social media interactions. This provides a holistic view of customer behavior, allowing companies to segment customers, tailor marketing strategies, and personalize the shopping experience.
  • Advanced Analytics and AI Integration: AtScale integrates seamlessly with business intelligence (BI) tools and machine learning frameworks. Retail companies can leverage tools like Tableau, Excel, and even large language models (LLMs) to identify customer journey patterns, predict future behaviors, and make data-driven decisions without complex engineering intervention.

Scalable Data Solutions for Growing Retail Data Needs

As clickstream data grows in volume and complexity, AtScale scales to meet these demands without requiring changes to the underlying data architecture. Its autonomous data engineering capabilities dynamically optimize data models based on usage patterns, ensuring efficient performance as data needs evolve.

Boosting Retail Business Growth with AtScale’s Advanced Data Solution

AtScale’s semantic layer with autonomous data engineering offers top retail companies a powerful solution for unlocking the full value of their clickstream and big data sources. By simplifying data analysis, reducing the need for manual pipelines, and enabling real-time insights, AtScale empowers retailers to better understand their customers, make informed decisions, and stay competitive in an ever-evolving market. This drives both top-line growth and operational efficiency, allowing retail companies to fully capitalize on their data assets.

ANALYST REPORT
GigaOm Sonar Report for Semantic Layer and Metrics Store