The Role of a Semantic Layer
A semantic layer is a business representation of data that helps executives, business stakeholders, and analysts get trusted results from their data using commonly understood terms like “product”, “customer,” and “revenue”. The result is a unified and consolidated view of data across an organization.
Manufacturers leverage a semantic layer to instill trust in Generative AI and analytics-driven KPIs. A semantic layer can yield:
- $2+ million in analytics project cost savings
- 3x increase in ROI of IT investments
How Manufacturers Use a Semantic Layer:
- Supply Chain Optimization: Integrates data from ERP, IoT, and supplier systems, enabling real-time inventory tracking, demand forecasting, and efficient supplier collaboration.
- Production Efficiency Analytics: Analyzes production data to identify bottlenecks, optimize workflows, and improve equipment effectiveness (OEE).
- Quality Control and Compliance: Provides consistent data for quality audits and regulatory compliance by unifying production and inspection data.
- Customer 360 and After-Sales Support: Combines sales, service, and IoT data to enable predictive maintenance and personalized customer experiences.
The ROI of a Semantic Layer
- Optimized Costs: Reduces cloud analytics costs by 3x through efficient compute usage and workflow optimization.
- Enhanced Workforce Efficiency: Cuts analytics project effort nearly in half, saving $2.3 million annually for organizations with 25+ projects.
- Trusted Insights: Standardizes data definitions for consistent reporting and confidence in decisions.
- Faster Insights: Improves query performance by 4x, accelerating real-time analytics.
Real-World Examples
- Global Manufacturer: Improved supply chain efficiency by integrating data from multiple sources and enabling self-service analytics, reducing reliance on IT teams.
- Multinational Industrial Company: Unified data across platforms and replaced outdated reporting workflows, significantly enhancing operational efficiency.
- Leading Automotive Company: Created a comprehensive “Customer 360” view, enabling seamless self-service analytics while decommissioning legacy systems.
- Bicycle Manufacturer: Accelerated data query performance, minimized data duplication, and improved reporting agility with a modern semantic layer solution.
Choosing the Right Semantic Layer Solution
AtScale’s Universal Semantic Layer bridges the gap between data and analytics, enabling manufacturers to:
- Simplify analytics with consistent and business-friendly data models.
- Empower self-service capabilities across BI and data science tools.
- Scale efficiently with robust performance for large datasets.
- Ensure governance with fine-grained access controls and compliance features.