This webinar explores how artificial intelligence can help address growing challenges in roadway maintenance. State and local transportation agencies are increasingly strained due to new federal regulations, climate changes, more frequent natural disasters, and the rising number of larger, heavier electric vehicles. Many roads, especially in underserved and rural areas, are often neglected. Innovative, technology-first solutions, like AI-driven analysis and near real-time data collection through crowdsourced dash cameras, can provide more resilient and efficient road management, reaching the communities that need it most.

Speaker:

  • Mark Pittman, Blyncsy Founder and CEO

Watch the recording 

Resource Type

  • Archived Webinar

Audience Type

  • Committee/Council
  • Contractor
  • Member
  • Public Agency
  • Services

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