How Organizations Can Measure Progress in Data & AI Literacy
Attendees joined us to explore key frameworks, practical tools and common pitfalls in measuring data and AI literacy—drawing on years of experience working with thousands of learners across a wide range of industries.
During the webinar, attendees learned how to:
- Apply proven techniques, such as cohort-based learning and scheduling strategies, to increase training engagement and completion rates across teams
- Establish a measurable baseline of data and AI literacy within their organization by applying both objective (skills-based) and subjective (perception-based) assessment methods
- Identify specific, trackable indicators of training program success—including metrics for participation, learning outcomes and employee perception—to evaluate progress over time
- Recognize and address common pitfalls in data and AI literacy measurement—such as over-reliance on a single metric or lack of feedback loops—and learn how to implement timely course corrections
Speaker Details
Ben Jones, CEO and Co-Founder, Data Literacy
Alli Torban, Senior Data Literacy Advocate, Data Literacy
Event Topic
Artificial Intelligence, Big Data, Machine LearningRelevant Audiences
All State and Local Government, All Federal GovernmentOther Agency
Other Federal Agencies
Event Type
On-Demand
Event Subtype
Webinar / Webcast
Registration Cost
Complimentary