−18%
miles per delivery
Real-time route optimization
Routing for fleet-scale operations with exception handling, driver-behavior calibration, and TMS / WMS integration. Dispatcher UIs co-built with operations during rollout.
AI & Machine Learning × Logistics & Supply Chain
Real-time route optimization, ETA prediction, demand forecasting, and reinforcement-learning dispatch — co-built with operations teams during rollout, calibrated to driver-behavior reality, integrated with the TMS / WMS dispatch ops actually use.
The reality
The pattern: a routing model that outperforms the legacy heuristic in backtest but breaks under exception load; a dispatcher UI that ignores the constraints dispatchers actually weigh; an ETA prediction grounded in lab telemetry rather than driver-behavior reality; a demand forecast that ignores promotion calendars; and an optimization engine that learns nothing from the manual overrides dispatchers make all day. Logistics AI succeeds when the model, the UI, and the operations team are co-designed.
Prosigns ships logistics AI co-built with the people who run dispatch. Senior engineers sit in dispatch centers during design, ride with drivers, and learn the override patterns the legacy system ignored. RL dispatch engines learn from dispatcher overrides explicitly. ETA models calibrated to driver behavior, not lab conditions. Customer-facing tracking with the freshness operations actually requires.
Where it ships
Concrete applications where ai & machine learning unlocks measurable value inside logistics & supply chain delivery constraints.
−18%
miles per delivery
Routing for fleet-scale operations with exception handling, driver-behavior calibration, and TMS / WMS integration. Dispatcher UIs co-built with operations during rollout.
Telemetry-grounded ETA models with explicit calibration to driver behavior, traffic, weather, and stop dwell. Integration with customer-facing tracking and exception escalation.
−12%
fuel spend
Reinforcement-learning dispatch engine that learns from dispatcher overrides. Override rates typically drop from 60% to under 20% within 4 months as the engine absorbs operational knowledge.
Multi-horizon demand forecasting respecting promotion calendar, seasonal patterns, and capacity constraints. Integration with WMS and ERP for closed-loop replenishment.
Last-mile delivery optimization with proof-of-delivery vision, address-resolution AI, and driver-facing assistance — engineered against connectivity reality.
Strategic network optimization, hub-and-spoke planning, and capacity simulation. Multi-modal where the workload spans truck, rail, ocean, air.
How we engage
Each phase has a deliverable, an owner, and an acceptance criterion calibrated to logistics & supply chain delivery.
Discovery in dispatch ops, ride-alongs with drivers, audit of TMS / WMS configurations. Architecture lands against actual operations, not optimistic backtests.
Streaming-first architecture for routing, ETA, and exception flows. Latency calibrated to dispatch decision cadence. Exception handling designed in from architecture, not bolted on.
Dispatcher and driver UIs co-built with the people who use them. We sit in dispatch centers during design; the model that ships is the model dispatch trusts.
Quarterly model recalibration against drift and seasonal shifts, monthly exception-pattern review, and the operational discipline logistics rhythms require. Most engagements continue through multiple peak seasons under Managed Services.
Capabilities
Stack
Compliance overlay
Every logistics & supply chain engagement carries the evidence collection that procurement and audit teams expect on day one.
DOT-aware design with hours-of-service compliance integrated into routing and dispatch decisions. ELD-compliant data flows; the audit-trail tooling DOT examination requires built into the platform.
Cross-border logistics workloads with C-TPAT-aligned data handling, sanctioned-entity screening, and the audit trail Customs and Border Protection inquiries expect.
Driver-facing AI (telemetry, behavior monitoring, productivity analytics) engineered against driver-privacy frame, union agreements where applicable, and explicit consent / opt-out patterns.
Continuous evidence collection — control activity logs, change-management artifacts, access reviews — produced as a side-effect of operations.
Selected work
Where this fits
Common questions
Yes — Manhattan, Oracle TMS, BluJay, JDA, and most major WMS platforms are in our active engagement portfolio. We integrate as primary scope (not phase 2), with documented interface contracts, dual-write windows for critical paths, and explicit fallback for partner unavailability.
Co-build, not deploy-at. Senior engineers sit in dispatch centers during design and rollout. The model surfaces its reasoning to the dispatcher; overrides feed the model's policy. Most engagements show override rates dropping from 60% to under 20% within 4 months — not because we forced trust, but because the engine absorbed the operational knowledge.
Yes — when latency demands it. NVIDIA Jetson, AWS Wavelength, in-cab GPU deployments. Edge for in-cab assistance, driver-behavior monitoring, and routing-decision support. We tell you when edge is the right answer (latency, connectivity) and when cloud with QoS-aware sync wins.
Yes — truck, rail, ocean, and air all have shipped engagements. Multi-modal optimization, network-flow planning, and the operational tooling carriers and 3PLs actually use.
Engineered from architecture. Driver-facing AI (telemetry, behavior monitoring) deployed with explicit consent / opt-out patterns, union-agreement awareness, and the operational discipline labor relations require. We tell you when an AI use case is fundamentally bias-fragile or labor-relations-sensitive.
Discovery: 4–6 weeks, $60K–$150K. Routing / ETA program: 6–10 months, $500K–$1.5M. RL dispatch program: 6–9 months, $400K–$1.2M. Multi-modal optimization programs: $1M–$3M+. Managed Services: $40K–$150K monthly retainer.
Talk to us
A senior engineer plus the CORTEX department lead joins the first call — both with prior logistics & supply chain delivery experience.