AASHTO Enterprise
Risk Management Portal
Browse the latest documents, videos, tools, trainings, and events for the ERM community.
Check out the Resilience Improvement Plan (RIP)Resource Collection
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About the site
The AASHTO ERM Portal connects you to a searchable database of enterprise risk management resources: documents, presentations, events, tools, and more. The portal is designed to help enterprise risk management practitioners search and access relevant information from multiple sources.
NCHRP Reports
NCHRP Report 1122: Implementing Machine Learning at State Departments of Transportation | Research Report
Thought for 6 seconds
Over the past two decades, machine learning—the leading branch of artificial intelligence—has risen rapidly on the strength of exploding data volumes, cheaper storage and computation, and continual algorithmic breakthroughs. Deep-learning techniques and generative AI systems such as ChatGPT are now transforming day-to-day business practices. Yet state and local transportation agencies are drowning in new data streams faster than they can translate them into actionable insight. TRB’s NCHRP Research Report 1122, *Implementing Machine Learning at State Departments of Transportation: A Guide*, equips DOTs with a primer on promising ML use cases, tools for weighing costs, benefits, risks, and constraints, and a roadmap for fostering the data-driven culture needed to scale these capabilities across transportation programs.
NCHRP Web-Only Document 404 — Implementing and Leveraging Machine Learning at State Departments of Transportation (2024) | Research Report
This is a companion document to NCHRP Report 1122: Implementing Machine Learning at State Departments of Transportation.
NCHRP Web-Only Document 403 — Artificial Intelligence Opportunities for State and Local DOTs A Research Roadmap | Research Report
Artificial intelligence (AI) has become a powerful force in transportation departments, particularly for managing and streamlining traffic flow. By using real-time data and predictive analytics, AI solutions can ease congestion, decrease travel times, and enhance safety through early hazard detection. In addition, AI-driven simulations offer a cost-effective method for evaluating and refining transportation networks, reducing the need for extensive physical testing.
NCHRP Web-Only Document 404 — Implementing and Leveraging Machine Learning at State Departments of Transportation (2024)
This is a companion document to NCHRP Report 1122: Implementing Machine Learning at State Departments of Transportati…
Maryland Transportation Resilience Improvement Plan
MDOT has crafted this Transportation Resilience Improvement Plan (TRIP) to direct strategic investments in critical i…
NCHRP Report 1122: Implementing Machine Learning at State Departments of Transportation
Thought for 6 seconds
Over the past two decades, machine learning—the leading branch of artificial intellige…
Video
Tim Henkel – 2022 AASHTO Thomas H. MacDonald Memorial Award

Risk Register Spreadsheet Tool
The tool was designed to reflect the guidance developed for the related research effort, NCHRP Project 08-93: Managing Risk Across the Enterprise: A Guidebook for State Departments of Transportation.
See the Tool HereSearch across Documents, Tools, and Videos in the Resource Library
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