AI2 Research Laboratory

AI2 stands for Artificial intelligence (A), Interactive (I), Augmented (A), and Immersive (I) learning environments. AI2 represents the innovative learning environments we pursue to advance more adaptable, engaged, equitable, and effective teaching and learning in various educational contexts. We build on the legacy of our understanding of how people learn to answer the question, how we can scaffold people to learn better. Our endeavor to promote AI2 learning is driven by our belief that most learners can achieve learning goals if provided with appropriate instructional support.

News@AI2 RL

NSF IUSE Project: Focus Group Interview on SMART learning experience in PHYS 1112K

NSF IUSE Project: Focus Group Interview on SMART learning experience in PHYS 1112K

April 4, 2025

Our research team conducted a focus group interview with 15 students from the Spring 2025 PHYS 1112K course at Georgia State University on April 4th. This session was part of our NSF-IUSE project, “AI-Scaffolded Pre-Classroom Learning for Undergraduate Physics Courses.

.. Read More

NSF IUSE Project: Spring 2025 SMART Deployment in PHYS 1112K

NSF IUSE Project: Spring 2025 SMART Deployment in PHYS 1112K

April 3, 2025

In Spring 2025, our research team implemented the SMART system in PHYS 1112K, an introductory physics course at Georgia State University. This work is part of the NSF-IUSE project, “AI-Scaffolded Pre-Classroom Learning for Undergraduate Physics Courses.

.. Read More

Award received by Lia Haddadian

Award received by Lia Haddadian

April 1, 2025

Our graduate associates, Lia Haddadian won the Outstanding Ph.D. Student in Learning Technologies Award from the Department of Learning Sciences at the College of Education & Human Development at Georgia State University (GSU). 

.. Read More

See more >

Research Projects

Scenario-Based Simulation Framework (S2F)

Scenario-Based Simulation Framework (S2F)

Simulation-based learning plays an important role in nursing education but often faces challenges due to being resource-intensive, which limits accessibility and scalability. The S2F project, in collaboration with the School of Nursing at Georgia State University, aims to establish a flexible framework for facilitating simulation-based learning through a conversational AI-augmented simulator. This framework will provide instructors the flexibility to easily add scenario cases along with related assessment criteria. These scenarios will support learners in practicing simulations within physical simulation rooms as part of their nursing education, with assessments drawn from both dialogue interactions and visual data within the simulation space. The system will provide personalized feedback, supporting both simulation centers and individual practice. By leveraging the capabilities of AI and structured framework design, the project enables learners to continuously practice and refine critical thinking and communication skills in a realistic, flexible, and authentic environment.

NSF IUSE-Engaged Student Learning (Level 1): AI-Scaffolded Pre-Classroom Learning for Large/Introductory Undergraduate Physics Courses

NSF IUSE-Engaged Student Learning (Level 1): AI-Scaffolded Pre-Classroom Learning for Large/Introductory Undergraduate Physics Courses

This Engaged Student Learning Level 1 project aims to serve the national interest by designing and implementing an Artificial Intelligence (AI)-augmented formative assessment and feedback system. This system will help students develop source-based STEM arguments, such as STEM text summarization, or problem spaces, which are mental representations of a problem and of multiple paths to solving it. This will be implemented in large, undergraduate introductory physics courses at an urban university that serves diverse and historically underrepresented student groups. Persistent learner engagement in pre-classroom learning activities is critical to learner success in introductory STEM courses. The innovation of the project will include AI-generated adaptive scaffolding information and learning progress feedback with data visualization techniques to help students with concept learning and self-regulatory behaviors. The unique learning opportunities supported by an AI-scaffolded feedback system will significantly increase students' engagement levels in self-paced online pre-classroom learning. This, in turn, will help students acquire content knowledge and build a proper understanding of problems to prepare themselves for success in in-classroom interactive problem-solving activities.

NSF AI Institute: AI Institute for Adult Learning and Online Education (ALOE) (Grant/Award Number: 2112532), National Science Foundation.

NSF AI Institute: AI Institute for Adult Learning and Online Education (ALOE) (Grant/Award Number: 2112532), National Science Foundation.

The ALOE institute is led by the Georgia Research Alliance (GRA), headquartered at Georgia Tech. The interdisciplinary and cross-institutional effort unites experts in computer science, artificial intelligence (AI), cognitive science, learning science and education from two Non-Profit Organizations (GRA and IMI Global), three industry partners (IBM, Boeing and Wiley) and seven universities (Georgia Tech, Georgia State, Harvard, Arizona State, Drexel, University of North Carolina, and multiple colleges within the Technical College System of Georgia [TCSG]). The multinational company Accenture joins NSF as a funding partner of ALOE.

The 5-year NSF grant is to establish the NSF AI Institute for Adult Learning and Online Education (ALOE) that will develop new AI theories and techniques as well as new models of lifelong learning, and evaluate their effectiveness at Georgia Tech, Georgia State, multiple colleges within the Technical College System of Georgia (TCSG), as well as with corporate partners IBM, Boeing and Wiley. ALOE aims to integrate AI theories, models, and techniques into online adult learning to create more available, affordable, adaptable, and scalable learning experiences, which creates more effective and efficient teaching and learning.

See more >

Publications

Haddadian, G., Radmanesh, S., & Haddadian, N. (2024). Construction and validation of a Computerized Formative Assessment Literacy (CFAL) questionnaire for language teachers: An exploratory sequential mixed-methods investigation. Language Testing in Asia, 14(33). https://doi.org/10.1186/s40468-024-00303-2

Kim, M. K., Kim, J., & Heidari, A. (2024). Exploring the multi-dimensional human mind: Model-based and text-based approaches. Assessing Writing, 61, 100878. https://doi.org/10.1016/j.asw.2024.100878

Haddadian, G. & Haddadian, N. (2024). Innovative use of grammarly feedback for improving EFL learners’ speaking: Learners’ perceptions and transformative engagement experiences in focus. The Journal of Applied Instructional Design, 13(2). 

See more >