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Webinar | Infrastructure as a Dataset: Unlocking Utility-Wide Insights from Visual AI Inspections

Register for Your Free Live Webinar Now:

"Webinar | Infrastructure as a Dataset: Unlocking Utility-Wide Insights from Visual AI Inspections"

Learn how utilities can combine computer vision, machine learning, and structured inspection workflows to build predictive maintenance programs at scale. See how a living infrastructure dataset powers real-time asset intelligence, boosts reliability, and supports a shift to condition-based operations.

This live webinar will explore how utilities can evolve beyond manual inspection workflows to unlock enterprise-wide insights by combining proprietary datasets with computer vision and machine learning.

Attendees will learn:

  • How systematizing inspections of transmission lines, substations, poles, and DER assets enables the creation of a living “infrastructure dataset”
  • A foundation for geospatial asset health scoring, degradation modeling, and predictive maintenance analytics
  • An understanding of how visual AI inspections, when integrated across service territories, can become a strategic data layer for utilities - one that empowers asset managers, engineers, and operations teams with always-on visibility

Real-world examples will show how this approach enhances detection and prioritization of critical issues like broken insulators, material degradation, vegetation encroachment, and structural risk, while supporting emergency response and resilience planning.

We’ll conclude by looking to the future: how leveraging a living infrastructure dataset and real-time analytics will enable utilities to shift from traditional cycle-based inspections to condition-based inspection strategies.

Save your spot by registering now, and you’ll receive a reminder to join us at 11:00 a.m. ET on Tuesday, December 9.


Offered Free by: Zeitview
See All Resources from: Zeitview

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