
Systecon North America Brings Advanced Sustainment Analytics to CANSEC 2025
OTTAWA, Ontario--(BUSINESS WIRE)-- Systecon North America, a global leader in mission readiness and lifecycle management analytics, is excited to announce its participation in CANSEC 2025, Canada's premier defense and security trade show hosted by the Canadian Association of Defence and Security Industries (CADSI).
Systecon North America is offering exclusive one-on-one meetings to showcase how its industry-leading Opus Suite software solutions support Canada's defense modernization goals through advanced analytics, predictive modeling, and data-driven sustainment planning.
Meeting attendees will gain insights into:
Optimizing Defense Readiness: How Opus Suite helps maximize operational availability and effectiveness while minimizing lifecycle costs.
Supporting Canada's F-35 Sustainment Strategy: How Opus Suite drives fleet readiness, cost control, and long-term sustainability for the F-35 program.
Enhancing Naval Fleet Sustainment: How Systecon's partnership with Seaspan improves operational efficiency for Canada's naval forces.
Advancing the Canadian Surface Combatant (CSC) Program: How predictive analytics support sustainment strategies for Canada's future Surface Combatant fleet through collaboration with J.D. Irving.
Exclusive live demonstrations will offer a hands-on look at how Opus Suite delivers actionable insights for mission-critical decision-making across all branches of Canada's defense operations.
"At Systecon North America, we are dedicated to helping Canada achieve its defense modernization goals by providing innovative, data-driven solutions that enhance mission readiness and lifecycle performance," said Justin Woulfe, CTO at Systecon North America. "We look forward to meeting with leaders at CANSEC 2025 to demonstrate how Opus Suite is transforming sustainment planning and operational effectiveness."
Schedule your meeting with a Systecon expert today to discover how advanced analytics can power smarter sustainment decisions for the future of Canada's defense.
Systecon North America specializes in predictive analytics, delivering cutting-edge software and consulting services to optimize complex technical systems. At its core is the Opus Suite, a powerful platform designed for Life Cycle Cost analysis, readiness assessments, and logistics optimization. Used by the U.S. military and defense giants like Northrop Grumman and Raytheon, Opus Suite provides data-driven insights to enhance operational availability and minimize sustainment costs. Systecon North America is headquartered in Arlington, Virginia.
For more information about Systecon's participation in CANSEC 2025, please visit CANSEC 2025.
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