Solving the Toughest Data & AI Challenges in Energy, Industrial, and Asset-Intensive Sectors

SAP underpins mission-critical business processes across finance, supply chain, asset management, and operations for Energy and Industrial organizations. As companies adopt S/4HANA and embrace clean core principles, SAP is increasingly used as the trusted system of record while advanced analytics, machine learning, and AI workloads are handled outside the core ERP to preserve stability, performance, and upgradeability.

SAP data is extended into Databricks to enable large-scale analytics and AI-driven insights without disrupting transactional systems. This architecture allows organizations to apply advanced analytics and AI to SAP data for use cases such as predictive maintenance, operational forecasting, supply chain optimization, and enterprise-wide reporting, while keeping SAP focused on core business execution.

Frame’s teams bring deep experience across SAP landscapes, enterprise data platforms, and Databricks-based analytics and AI solutions. With the recent release of Databricks on SAP Business Data Cloud, organizations now have a modern, supported architecture to extend SAP data into large-scale analytics and AI workloads without impacting core ERP operations.

Our architects are prepared to design and implement these patterns by applying proven data engineering, platform architecture, and clean core principles. This approach allows clients to move forward confidently with SAP analytics and AI initiatives, aligned to long-term SAP modernization strategies and production-grade data platform best practices.

SAP underpins mission-critical business processes across finance, supply chain, asset management, and operations for Energy and Industrial organizations. As companies adopt S/4HANA and embrace clean core principles, SAP is increasingly used as the trusted system of record while advanced analytics, machine learning, and AI workloads are handled outside the core ERP to preserve stability, performance, and upgradeability.

SAP data is extended into Databricks to enable large-scale analytics and AI-driven insights without disrupting transactional systems. This architecture allows organizations to apply advanced analytics and AI to SAP data for use cases such as predictive maintenance, operational forecasting, supply chain optimization, and enterprise-wide reporting, while keeping SAP focused on core business execution.

Frame’s teams bring deep experience across SAP landscapes, enterprise data platforms, and Databricks-based analytics and AI solutions. With the recent release of Databricks on SAP Business Data Cloud, organizations now have a modern, supported architecture to extend SAP data into large-scale analytics and AI workloads without impacting core ERP operations.

Our architects are prepared to design and implement these patterns by applying proven data engineering, platform architecture, and clean core principles. This approach allows clients to move forward confidently with SAP analytics and AI initiatives, aligned to long-term SAP modernization strategies and production-grade data platform best practices.