Curriculum Design
Constructing an AI Literacy Curriculum for Non-STEM Students: A TPACK-Based Approach in Tourism Management Education
This research proposes a specialized AI Literacy curriculum framework grounded in the TPACK model, tailored for undergraduate Tourism Management majors. It addresses the digital divide for non-STEM students by integrating theoretical cognition, practical tool application (ChatGPT, Midjourney), and ethical reflection into a 32-hour hybrid course. The study demonstrates enhanced student capacity to solve complex industry problems using AI tools and fostering human-AI collaboration mindsets, validated through pre-post survey data (n=87) and capstone projects.
Executive Impact
Key insights demonstrating the transformative potential for enterprise-wide AI literacy and adoption.
Deep Analysis & Enterprise Applications
Select a topic to dive deeper, then explore the specific findings from the research, rebuilt as interactive, enterprise-focused modules.
TPACK Framework Validation
Effective TPACK as a robust framework for AI literacy education for non-STEM students, ensuring alignment of AI technologies (TK), tourism professional competencies (CK), and effective pedagogical strategies (PK).This finding aligns with recent research emphasizing student-driven innovation in generative AI adoption. The framework provided clear design principles: ensure AI tools are introduced alongside tourism applications (TK+CK), employ hands-on pedagogical strategies appropriate for non-technical learners (PK), and assess integrated knowledge application rather than isolated skills (TK+CK+PK).
Case A: Red Trace in Canton - Cultural Heritage Tourism Design
Overview: An innovative study tour integrating revolutionary history sites with contemporary urban cultural experiences in Guangzhou, employing a 'spatio-temporal folding' concept.
AI Application: ChatGPT for narrative structure and historical synthesis; AI-assisted research for site identification; Midjourney for conceptual visualizations (time-bridge graphics); AI-powered mapping for route optimization.
Learning Outcomes: Demonstrated high-level integration of AI for knowledge synthesis, sophisticated understanding of AI's creative potential, strong Content Knowledge (CK), and critical thinking (three-step verification protocol for factual accuracy, correcting AI hallucinations).
Case B: Bai Lan Healing Space - Data-Driven Market Analysis
Overview: Proposed a commercial tourism product for the 'Bai Lan' (lying flat) subculture among Gen Z, emphasizing low-effort healing experiences.
AI Application: AI-powered sentiment analysis (Xiaohongshu, Weibo) for psychological needs; ChatGPT for consumer personas; AI-enhanced brainstorming for product design (Five-Sense Healing System); competitive analysis and pricing strategy.
Learning Outcomes: Mastery of AI in Marketing and Consumer Insight; strategic tool employment for authentic market research; ethical AI awareness (discussing limitations, biases, privacy-conscious data collection, cultural bias awareness).
Case C: Smart Drive Future City - Technology Integration in Theme Parks
Overview: Proposed a theme park concept integrating autonomous driving technology with leisure tourism experiences, envisioning visitors experiencing AVs through themed attractions and experimental rides.
AI Application: AI tools for cross-disciplinary research (synthesizing AV tech with tourism design); ChatGPT for brainstorming innovative attraction concepts; AI-enhanced business planning tools for market feasibility, competitive analysis, financial projections; Midjourney for architectural renderings.
Learning Outcomes: Fostering AI+X innovation thinking; identification of a novel intersection between emerging tech and tourism; entrepreneurial mindsets; comprehensive business planning; critical evaluation of AI capabilities.
| Metric | Pre-Course (M, SD) | Post-Course (M, SD) | Effect Size (d) |
|---|---|---|---|
| AI Tool Confidence | 2.1 (0.8) | 4.3 (0.6) | 2.8 |
| Technology Anxiety | 3.8 (0.9) | 2.1 (0.7) | 2.1 |
| Perceived Professional Utility | 3.2 (0.8) | 4.5 (0.5) | 1.9 |
The results indicate statistically significant improvements across all measured dimensions, with large effect sizes providing strong empirical evidence. Students shifted from AI anxiety to AI agency, perceiving AI as a collaborative and empowering assistant. |
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Algorithmic Instructional Model
Transforms pedagogical workflows into executable computational processes for automated curriculum delivery and adaptive learning systems, emphasizing mastery-based learning through iterative feedback loops.
Calculate Your Potential AI Impact
Estimate the efficiency gains and cost savings your organization could achieve by integrating AI literacy.
Your AI Literacy Implementation Roadmap
A strategic outline for integrating AI literacy into your organization, leveraging insights from this research.
Phase 1: Curriculum Development
Formulate TPACK-based modules, select AI tools, and design project-based learning activities.
Phase 2: Pilot Implementation
Conduct initial course delivery, gather student feedback, and refine instructional materials.
Phase 3: Quantitative Assessment & Iteration
Apply algorithmic evaluation models, statistical analysis, and data-driven adjustments for continuous improvement.
Phase 4: Scalability & Dissemination
Develop automated delivery systems and share findings for broader adoption in non-STEM education.
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