Traceable Logic
Calculated Daily
Granular Mgmt
Tailored workflows built for your unique industrial attributes and constraints.
Accelerate throughput with real-time WIP monitoring and bottleneck detection.
Hyper-localized tax engines and global trade standards built into the core.
High-fidelity executive dashboards for 100% supply chain transparency.
Seamlessly integrates with your industrial business ecosystem:
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Track production and stock by heat numbers to maintain complete material chemical traceability.
Automated calculation of weight discrepancies and yielding percentages for every production batch.
Unique identification for every coil, pipe, or billet with dimensional precision (length, width, OD/ID).
Meticulous tracking of manufacturing scrap and internal rework recovery ratios to minimize loss.
Log chemical compositions (Carbon, Manganese, etc.) directly into heat-traceability registers.
Track blast furnace and heavy machinery preventive maintenance to ensure 24/7 uptime.
Smart purchase logic handling tonnage-based invoicing vs. piece-wise physical counting.
Track work-in-progress across Smelting, Casting, Rolling, and Finishing stages effortlessly.
Handle external processing (Galvanizing, Cutting, Slitting) with automated job-work registers.
Optimize truck-loading plans based on tonnage and dimensional constraints for steel distribution.
The metal industry operates on massive scales where small data errors lead to massive fiscal losses. RexoERP is designed to handle the complexity of steel manufacturing, from raw ore to finished coils.
Identify bottlenecks in rolling mills and fabrication lines with real-time analytics.
Pre-built certificate templates for ISI, ISO, and international grade standards.
RexoERP integrates advanced machine learning and autonomous logic to transform static data into high-fidelity strategic intelligence.
Autonomous visual inspection sensors that identify microscopic defects in real-time.
Machine learning models that anticipate mechanical failures before they impact production.
Optimizing individual workstation loads through smart industrial intelligence flow.