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    MaxMine machine learning at Australian mine sites: haulage data lessons for engineers

    May 21, 2026|

    Reviewed by Tom Sullivan

    MaxMine machine learning at Australian mine sites: haulage data lessons for engineers

    First reported on International Mining – News

    30 Second Briefing

    MaxMine has rolled out a production-grade machine learning system for load and dump classification across Australian mine fleets operated by Glencore, NRW Holdings and Macmahon, with the platform now running continuously for six months. The edge-deployed models automatically tag truck payload events in near real time, sharply cutting missed or misclassified loads and reducing manual data cleaning by site engineers. Early results point to tighter haulage cycle control and more reliable production reporting, giving dispatch and planning teams higher-confidence payload and cycle-time data.

    Technical Brief

    • Consistent load/dump tagging improves temporal resolution of haul cycle datasets for bottleneck and queuing analysis.
    • Cleaner payload event streams support more stable short-interval control KPIs and exception-based reporting workflows.
    • Similar edge ML architectures could be extended to drill, dozer and ancillary equipment event classification.

    Our Take

    Glencore’s appearance here alongside MaxMine comes as our recent coverage of Glencore has focused heavily on safety incidents and closure pressures (e.g. Kazzinc in Kazakhstan and Cerrejón in Colombia), suggesting that production-grade machine learning in Australia may also be framed internally as a risk and compliance tool, not just an efficiency play.

    A six‑month fully operational period for the machine learning system is long enough to capture seasonal and roster-related variability at Australian sites, which should give contractors like Macmahon and NRW Holdings statistically robust baselines for cycle-time, fuel and maintenance optimisation before any wider rollout decisions.

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    Prepared by collating external sources, AI-assisted tools, and Geomechanics.io’s proprietary mining database, then reviewed for technical accuracy & edited by our geotechnical team.

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