AI Vocabulary Crossword
Across
- 2. Intelligence The field of computer science where machines are designed to perform tasks that normally require human intelligence, such as problem-solving, learning, and decision-making.
- 3. Learning The AI learns from labeled examples (data that already has the correct answers). Example: teaching an AI to recognize cats by showing it many cat photos labeled “cat.”
- 6. Network A type of AI model inspired by the human brain. It uses layers of “neurons” (math functions) to recognize patterns and learn from data.
- 9. Learning The AI learns by trial and error, receiving rewards or penalties based on its actions. Example: training a robot to walk by rewarding steps taken in the right direction.
- 10. A step-by-step set of rules or instructions that a computer follows to solve a problem or perform a task.
- 11. Ethics The study of moral issues and responsibilities related to AI—like fairness, bias, privacy, job impact, and making sure AI benefits society safely.
- 13. Vision The field of AI that enables machines to “see” and interpret images or video (like facial recognition or self-driving car cameras).
- 14. AI AI that follows predefined “if-then” rules made by humans instead of learning from data.
Down
- 1. AI AI that is specialized in one specific task (like recommending songs or recognizing faces). It is the type of AI we mostly use today.
- 4. AI A hypothetical AI that is smarter than humans in every way—able to think, reason, and create beyond human capability.
- 5. AI A type of AI that could understand, learn, and apply intelligence to any problem, just like a human. (It does not exist yet.)
- 6. Language Processing The field of AI that helps machines understand, interpret, and generate human language (like chatbots or translation tools).
- 7. Using technology or machines to perform tasks with little or no human involvement (for example, self-checkouts or robots on factory lines).
- 8. Chatbots Programs that use AI, often NLP, to simulate conversations with humans (like customer service bots or virtual assistants).
- 12. Learning The AI looks for patterns in data without labels. Example: grouping customers by shopping habits without telling the AI what those groups mean.