10 Glossary: Generative AI Terms for Educators
Core Concepts
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Generative AI (GenAI)
A subset of AI that creates new content—text, images, code, audio, etc.—based on patterns in training data. Tools include ChatGPT, DALL·E, Midjourney, and others. -
Large Language Model (LLM)
A type of AI trained on massive amounts of text to generate human-like language. Examples: GPT-4, PaLM, Claude. -
Multimodal AI
AI models that process and generate multiple types of data, like text and images together (e.g., GPT-4 with vision, Gemini). -
Training Data
The data used to teach an AI model. Its composition directly affects the AI’s outputs, capabilities, and biases. -
Prompt Engineering
The practice of designing inputs (prompts) to get desired outputs from AI systems. A crucial skill in AI-assisted pedagogy.
Pedagogical Terms
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AI Literacy
The ability to understand and use AI tools. -
AI Critical Literacy
The ability to understand, use, and critically assess AI tools. This is a growing component of digital literacy in higher education. -
AI-Enhanced Learning
Teaching and learning experiences enriched by AI tools—for personalized feedback, content generation, tutoring, etc. -
Assessment Integrity
Ensuring that evaluations of student learning remain valid and fair, especially when students may use AI tools. -
AI Disclosure Policy
A course or institutional policy detailing how students may or may not use AI tools in assignments and assessments. -
Co-Creation
A teaching strategy where students and AI collaborate on content creation, with students critically evaluating AI contributions.
Technical & Ethical Considerations
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Bias in AI
Systemic distortions in AI outputs due to skewed training data or model design—important in social sciences, humanities, and ethics discussions. -
Hallucination (AI)
When an AI generates plausible-sounding but false or misleading information—a critical concept for academic rigor. -
Explainability / Interpretability
The degree to which AI decisions or outputs can be understood by humans—relevant in STEM and AI ethics curricula. -
Data Privacy
Concerns around storing and using personal or student data when interacting with AI tools (FERPA, HIPAA, GDPR compliance).
Tools & Platforms
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Chatbots / LLM Interfaces
Interfaces like ChatGPT, Claude, or Gemini that allow users to interact with large language models for a variety of academic and creative tasks. -
AI Writing Assistants
Tools integrated into platforms such as Microsoft Word or Google Docs that help with grammar, tone, summarization, and other writing functions. - AI Image & Media Generators
Applications that create visual, audio, or multimedia content from text inputs—used in courses on digital media, journalism, and design. -
Detection Tools
Programs that attempt to detect AI-generated text. These tools are unreliable, often biased against non-native English speakers and other populations,. Their results can be inaccurate and should not replace thoughtful instructor judgment or institutional policy. -
Prompt Libraries
Collections of AI prompts designed for specific disciplines or assignments, often shared among faculty to support effective AI use in the classroom.
Emerging Terms
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PedagAI
A term sometimes used to describe pedagogical practices specifically designed for or with generative AI tools. -
Synthetic Media
Any media (text, video, images) generated by AI. Increasingly relevant in digital media, communications, and ethics courses. -
Zero-Shot / Few-Shot Learning
How LLMs perform tasks with no or minimal examples in the prompt—important for understanding model behavior in classroom use.