
PROVEN VALUE DELIVERY ACROSS 30+ INDUSTRIES
o9 EKG for
High-Tech Parts
how it works
The o9 Enterprise Knowledge Graph (EKG) empowers high-tech parts manufacturers with real-time visibility, multi-level BOM management, and AI-driven scenario planning.
By integrating complex demand, supply, and inventory workflows, o9 enables proactive decision-making, reducing lead times, mitigating risks, and driving operational excellence.
Why High-Tech Parts
Leaders Choose o9
Multi-Level BOM
Plan up to 12-level BOMs with deep demand-supply pegging and full component netting for accurate, real-time visibility.
AI-Powered Demand Forecasting
Enhance demand accuracy using ML-driven algorithms, attach-rate forecasts, and account-based forecasting for parts and assemblies.
Integrated Deal Planning
Evaluate deal supportability at SKU and component levels with automated “what-if” analytics, enabling faster and profitable decisions.
Inventory Optimization
Achieve dynamic, multi-echelon inventory optimization (MEIO) to reduce excess stock while ensuring critical part availability.
Supplier Manufacturer Collaboration
Improve transparency and alignment with contract manufacturers and tier-1 suppliers through forecast collaboration and risk-sharing.
Real-Time Scenario Planning
Simulate demand fluctuations, supply disruptions, and resource constraints to optimize planning decisions and mitigate risks proactively.
Addressing Complex Supply Chain
Challenges for High-Tech Parts

Managing multi-tier, multi-level BOM structures leads to manual errors and visibility gaps.
o9 automates BOMs, providing full pegging visibility from SKU to component level while optimizing part supply.
Rapid changes in demand due to project pipelines and high product customization (CTO).
o9’s ML-based demand planning integrates deal predictability, attach-rate forecasts, and CRM data for accurate, dynamic forecasting.
Explore Insights for
High-tech parts industry
Real-time Intelligence,
Enterprise-wide Impact
Experience the power
of o9 first-hand

Take a tour










