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16. AI for Creative People

Audiencewriters, filmmakers, musicians, educators, content creators, artists, storytellers
Duration12-20 hours
Modules8

16. AI for Creative People

Course Positioning

This course treats AI as a creative collaborator, not a replacement for taste or voice. It covers idea generation, writing, image/video/audio workflows, character and worldbuilding, editing, content repurposing, creative direction, and IP/ethics.

Learning outcomes

  • Use AI to brainstorm, structure, draft, revise, and produce creative work across media.
  • Maintain a distinctive human voice while using AI for iteration and production support.
  • Create multimodal creative workflows involving text, images, video, audio, and social formats.
  • Understand copyright, consent, attribution, style imitation, and platform risks.
  • Build a personal creative AI system with prompt libraries and production checklists.

Expanded Topic-by-Topic Coverage

Module 1. AI as creative collaborator

Module focus: Ideation, divergent thinking, remixing, critique, iteration, creative control. Primary live activity or lab: Generate 20 ideas, then select and refine three using human criteria. Expected take-home output: Idea bank.

Topics and coverage

Ideation

  • What it means: define Ideation clearly and connect it to the module focus: Ideation, divergent thinking, remixing, critique, iteration, creative control.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

divergent thinking

  • What it means: define divergent thinking clearly and connect it to the module focus: Ideation, divergent thinking, remixing, critique, iteration, creative control.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

remixing

  • What it means: define remixing clearly and connect it to the module focus: Ideation, divergent thinking, remixing, critique, iteration, creative control.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

critique

  • What it means: define critique clearly and connect it to the module focus: Ideation, divergent thinking, remixing, critique, iteration, creative control.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

iteration

  • What it means: define iteration clearly and connect it to the module focus: Ideation, divergent thinking, remixing, critique, iteration, creative control.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

creative control

  • What it means: show where creative control appears in the learner's real workflow and which parts are judgment-heavy versus draftable.
  • What to cover: current workflow, pain points, AI-assisted steps, human review checkpoints, quality standard, and ownership of the final decision.
  • Demonstration: convert one messy real-world input into a structured brief, draft, analysis, checklist, or next action.
  • Evidence of learning: learners produce a reusable template or playbook entry that can be used after the course.

Practice and evidence of learning

  • Learners complete or discuss: Generate 20 ideas, then select and refine three using human criteria.
  • Learners produce: Idea bank.
  • Instructor checks for accuracy, practical usefulness, clear assumptions, appropriate human review, and fit with the course audience.
  • Learners revise once after feedback so the module contributes to the final project, portfolio, or playbook.

Minimum coverage before moving on

  • Learners can explain the module vocabulary without relying on tool-generated text.
  • Learners have seen one worked example, one hands-on application, and one limitation or failure case.
  • Learners know what must be verified, what data must be protected, and who remains accountable for the output.

Module 2. Voice, taste, and originality

Module focus: Personal style, reference boundaries, avoiding generic output, creative constraints. Primary live activity or lab: Create a personal style guide from original writing or creative examples. Expected take-home output: Creative voice guide.

Topics and coverage

Personal style

  • What it means: define Personal style clearly and connect it to the module focus: Personal style, reference boundaries, avoiding generic output, creative constraints.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

reference boundaries

  • What it means: define reference boundaries clearly and connect it to the module focus: Personal style, reference boundaries, avoiding generic output, creative constraints.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

avoiding generic output

  • What it means: define avoiding generic output clearly and connect it to the module focus: Personal style, reference boundaries, avoiding generic output, creative constraints.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

creative constraints

  • What it means: show where creative constraints appears in the learner's real workflow and which parts are judgment-heavy versus draftable.
  • What to cover: current workflow, pain points, AI-assisted steps, human review checkpoints, quality standard, and ownership of the final decision.
  • Demonstration: convert one messy real-world input into a structured brief, draft, analysis, checklist, or next action.
  • Evidence of learning: learners produce a reusable template or playbook entry that can be used after the course.

Practice and evidence of learning

  • Learners complete or discuss: Create a personal style guide from original writing or creative examples.
  • Learners produce: Creative voice guide.
  • Instructor checks for accuracy, practical usefulness, clear assumptions, appropriate human review, and fit with the course audience.
  • Learners revise once after feedback so the module contributes to the final project, portfolio, or playbook.

Minimum coverage before moving on

  • Learners can explain the module vocabulary without relying on tool-generated text.
  • Learners have seen one worked example, one hands-on application, and one limitation or failure case.
  • Learners know what must be verified, what data must be protected, and who remains accountable for the output.

Module 3. Writing workflows

Module focus: Hooks, outlines, scenes, dialogue, essays, scripts, newsletters, revisions. Primary live activity or lab: Develop a short script or essay through outline, draft, critique, revision. Expected take-home output: Writing artifact.

Topics and coverage

Hooks

  • What it means: define Hooks clearly and connect it to the module focus: Hooks, outlines, scenes, dialogue, essays, scripts, newsletters, revisions.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

outlines

  • What it means: define outlines clearly and connect it to the module focus: Hooks, outlines, scenes, dialogue, essays, scripts, newsletters, revisions.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

scenes

  • What it means: define scenes clearly and connect it to the module focus: Hooks, outlines, scenes, dialogue, essays, scripts, newsletters, revisions.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

dialogue

  • What it means: define dialogue clearly and connect it to the module focus: Hooks, outlines, scenes, dialogue, essays, scripts, newsletters, revisions.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

essays

  • What it means: define essays clearly and connect it to the module focus: Hooks, outlines, scenes, dialogue, essays, scripts, newsletters, revisions.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

scripts

  • What it means: define scripts clearly and connect it to the module focus: Hooks, outlines, scenes, dialogue, essays, scripts, newsletters, revisions.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

newsletters

  • What it means: define newsletters clearly and connect it to the module focus: Hooks, outlines, scenes, dialogue, essays, scripts, newsletters, revisions.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

revisions

  • What it means: define revisions clearly and connect it to the module focus: Hooks, outlines, scenes, dialogue, essays, scripts, newsletters, revisions.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

Practice and evidence of learning

  • Learners complete or discuss: Develop a short script or essay through outline, draft, critique, revision.
  • Learners produce: Writing artifact.
  • Instructor checks for accuracy, practical usefulness, clear assumptions, appropriate human review, and fit with the course audience.
  • Learners revise once after feedback so the module contributes to the final project, portfolio, or playbook.

Minimum coverage before moving on

  • Learners can explain the module vocabulary without relying on tool-generated text.
  • Learners have seen one worked example, one hands-on application, and one limitation or failure case.
  • Learners know what must be verified, what data must be protected, and who remains accountable for the output.

Module 4. Visual generation and art direction

Module focus: Prompting images, composition, characters, consistency, aspect ratios, editing, moodboards. Primary live activity or lab: Create a visual concept board for a story or campaign. Expected take-home output: Visual board.

Topics and coverage

Prompting images

  • What it means: explain how Prompting images changes the interaction between human intent, model behavior, external information, and final output.
  • What to cover: inputs, constraints, examples, output format, grounding, iteration, failure modes, and when a human must intervene.
  • Demonstration: show a weak attempt, a stronger structured attempt, and a reviewed final version with explicit checks.
  • Evidence of learning: learners create a reusable prompt, schema, retrieval note, or workflow pattern and test it on at least two examples.

composition

  • What it means: define composition clearly and connect it to the module focus: Prompting images, composition, characters, consistency, aspect ratios, editing, moodboards.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

characters

  • What it means: define characters clearly and connect it to the module focus: Prompting images, composition, characters, consistency, aspect ratios, editing, moodboards.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

consistency

  • What it means: define consistency clearly and connect it to the module focus: Prompting images, composition, characters, consistency, aspect ratios, editing, moodboards.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

aspect ratios

  • What it means: define aspect ratios clearly and connect it to the module focus: Prompting images, composition, characters, consistency, aspect ratios, editing, moodboards.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

editing

  • What it means: define editing clearly and connect it to the module focus: Prompting images, composition, characters, consistency, aspect ratios, editing, moodboards.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

moodboards

  • What it means: define moodboards clearly and connect it to the module focus: Prompting images, composition, characters, consistency, aspect ratios, editing, moodboards.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

Practice and evidence of learning

  • Learners complete or discuss: Create a visual concept board for a story or campaign.
  • Learners produce: Visual board.
  • Instructor checks for accuracy, practical usefulness, clear assumptions, appropriate human review, and fit with the course audience.
  • Learners revise once after feedback so the module contributes to the final project, portfolio, or playbook.

Minimum coverage before moving on

  • Learners can explain the module vocabulary without relying on tool-generated text.
  • Learners have seen one worked example, one hands-on application, and one limitation or failure case.
  • Learners know what must be verified, what data must be protected, and who remains accountable for the output.

Module 5. Video and audio workflows

Module focus: Shot lists, voiceover scripts, music briefs, editing plans, storyboards, synthetic media caveats. Primary live activity or lab: Create a 30-second video plan with prompts and storyboard. Expected take-home output: Video production plan.

Topics and coverage

Shot lists

  • What it means: define Shot lists clearly and connect it to the module focus: Shot lists, voiceover scripts, music briefs, editing plans, storyboards, synthetic media caveats.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

voiceover scripts

  • What it means: define voiceover scripts clearly and connect it to the module focus: Shot lists, voiceover scripts, music briefs, editing plans, storyboards, synthetic media caveats.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

music briefs

  • What it means: define music briefs clearly and connect it to the module focus: Shot lists, voiceover scripts, music briefs, editing plans, storyboards, synthetic media caveats.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

editing plans

  • What it means: define editing plans clearly and connect it to the module focus: Shot lists, voiceover scripts, music briefs, editing plans, storyboards, synthetic media caveats.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

storyboards

  • What it means: define storyboards clearly and connect it to the module focus: Shot lists, voiceover scripts, music briefs, editing plans, storyboards, synthetic media caveats.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

synthetic media caveats

  • What it means: define synthetic media caveats clearly and connect it to the module focus: Shot lists, voiceover scripts, music briefs, editing plans, storyboards, synthetic media caveats.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

Practice and evidence of learning

  • Learners complete or discuss: Create a 30-second video plan with prompts and storyboard.
  • Learners produce: Video production plan.
  • Instructor checks for accuracy, practical usefulness, clear assumptions, appropriate human review, and fit with the course audience.
  • Learners revise once after feedback so the module contributes to the final project, portfolio, or playbook.

Minimum coverage before moving on

  • Learners can explain the module vocabulary without relying on tool-generated text.
  • Learners have seen one worked example, one hands-on application, and one limitation or failure case.
  • Learners know what must be verified, what data must be protected, and who remains accountable for the output.

Module 6. Content repurposing

Module focus: Long-to-short, carousel, reels, newsletters, threads, scripts, community posts. Primary live activity or lab: Turn one idea into five formats. Expected take-home output: Repurposing pack.

Topics and coverage

Long-to-short

  • What it means: define Long-to-short clearly and connect it to the module focus: Long-to-short, carousel, reels, newsletters, threads, scripts, community posts.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.
  • What it means: define carousel clearly and connect it to the module focus: Long-to-short, carousel, reels, newsletters, threads, scripts, community posts.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

reels

  • What it means: define reels clearly and connect it to the module focus: Long-to-short, carousel, reels, newsletters, threads, scripts, community posts.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

newsletters

  • What it means: define newsletters clearly and connect it to the module focus: Long-to-short, carousel, reels, newsletters, threads, scripts, community posts.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

threads

  • What it means: show where threads appears in the learner's real workflow and which parts are judgment-heavy versus draftable.
  • What to cover: current workflow, pain points, AI-assisted steps, human review checkpoints, quality standard, and ownership of the final decision.
  • Demonstration: convert one messy real-world input into a structured brief, draft, analysis, checklist, or next action.
  • Evidence of learning: learners produce a reusable template or playbook entry that can be used after the course.

scripts

  • What it means: define scripts clearly and connect it to the module focus: Long-to-short, carousel, reels, newsletters, threads, scripts, community posts.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

community posts

  • What it means: define community posts clearly and connect it to the module focus: Long-to-short, carousel, reels, newsletters, threads, scripts, community posts.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

Practice and evidence of learning

  • Learners complete or discuss: Turn one idea into five formats.
  • Learners produce: Repurposing pack.
  • Instructor checks for accuracy, practical usefulness, clear assumptions, appropriate human review, and fit with the course audience.
  • Learners revise once after feedback so the module contributes to the final project, portfolio, or playbook.

Minimum coverage before moving on

  • Learners can explain the module vocabulary without relying on tool-generated text.
  • Learners have seen one worked example, one hands-on application, and one limitation or failure case.
  • Learners know what must be verified, what data must be protected, and who remains accountable for the output.

Module 7. Creative critique and editing

Module focus: Feedback prompts, originality checks, emotional impact, pacing, clarity, audience fit. Primary live activity or lab: Use AI as editor, then accept/reject suggestions. Expected take-home output: Revision log.

Topics and coverage

Feedback prompts

  • What it means: explain how Feedback prompts changes the interaction between human intent, model behavior, external information, and final output.
  • What to cover: inputs, constraints, examples, output format, grounding, iteration, failure modes, and when a human must intervene.
  • Demonstration: show a weak attempt, a stronger structured attempt, and a reviewed final version with explicit checks.
  • Evidence of learning: learners create a reusable prompt, schema, retrieval note, or workflow pattern and test it on at least two examples.

originality checks

  • What it means: define originality checks clearly and connect it to the module focus: Feedback prompts, originality checks, emotional impact, pacing, clarity, audience fit.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

emotional impact

  • What it means: define emotional impact clearly and connect it to the module focus: Feedback prompts, originality checks, emotional impact, pacing, clarity, audience fit.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

pacing

  • What it means: define pacing clearly and connect it to the module focus: Feedback prompts, originality checks, emotional impact, pacing, clarity, audience fit.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

clarity

  • What it means: define clarity clearly and connect it to the module focus: Feedback prompts, originality checks, emotional impact, pacing, clarity, audience fit.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

audience fit

  • What it means: define audience fit clearly and connect it to the module focus: Feedback prompts, originality checks, emotional impact, pacing, clarity, audience fit.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

Practice and evidence of learning

  • Learners complete or discuss: Use AI as editor, then accept/reject suggestions.
  • Learners produce: Revision log.
  • Instructor checks for accuracy, practical usefulness, clear assumptions, appropriate human review, and fit with the course audience.
  • Learners revise once after feedback so the module contributes to the final project, portfolio, or playbook.

Minimum coverage before moving on

  • Learners can explain the module vocabulary without relying on tool-generated text.
  • Learners have seen one worked example, one hands-on application, and one limitation or failure case.
  • Learners know what must be verified, what data must be protected, and who remains accountable for the output.

Module 8. Rights, ethics, and monetization

Module focus: Copyright, likeness, voice cloning, fan art, derivative styles, disclosure, portfolios, client work. Primary live activity or lab: Create a personal AI ethics and usage statement. Expected take-home output: Creative AI policy.

Topics and coverage

  • What it means: define Copyright clearly and connect it to the module focus: Copyright, likeness, voice cloning, fan art, derivative styles, disclosure, portfolios, client work.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

likeness

  • What it means: define likeness clearly and connect it to the module focus: Copyright, likeness, voice cloning, fan art, derivative styles, disclosure, portfolios, client work.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

voice cloning

  • What it means: define voice cloning clearly and connect it to the module focus: Copyright, likeness, voice cloning, fan art, derivative styles, disclosure, portfolios, client work.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

fan art

  • What it means: define fan art clearly and connect it to the module focus: Copyright, likeness, voice cloning, fan art, derivative styles, disclosure, portfolios, client work.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

derivative styles

  • What it means: define derivative styles clearly and connect it to the module focus: Copyright, likeness, voice cloning, fan art, derivative styles, disclosure, portfolios, client work.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

disclosure

  • What it means: define disclosure clearly and connect it to the module focus: Copyright, likeness, voice cloning, fan art, derivative styles, disclosure, portfolios, client work.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

portfolios

  • What it means: connect portfolios to the data lifecycle from source and structure through analysis, interpretation, and decision-making.
  • What to cover: source reliability, missing or biased data, leakage, assumptions, calculations, and the difference between correlation and decision-ready evidence.
  • Demonstration: walk through a small dataset or example table and mark the checks required before trusting the result.
  • Evidence of learning: learners produce a short analysis note that includes assumptions, limitations, and verification steps.

client work

  • What it means: define client work clearly and connect it to the module focus: Copyright, likeness, voice cloning, fan art, derivative styles, disclosure, portfolios, client work.
  • What to cover: the core concept, why it matters, what good usage looks like, and where learners are likely to misunderstand it.
  • Demonstration: give one simple example, one realistic example, and one failure or limitation example.
  • Evidence of learning: learners explain the topic in their own words and apply it to a small artifact or decision.

Practice and evidence of learning

  • Learners complete or discuss: Create a personal AI ethics and usage statement.
  • Learners produce: Creative AI policy.
  • Instructor checks for accuracy, practical usefulness, clear assumptions, appropriate human review, and fit with the course audience.
  • Learners revise once after feedback so the module contributes to the final project, portfolio, or playbook.

Minimum coverage before moving on

  • Learners can explain the module vocabulary without relying on tool-generated text.
  • Learners have seen one worked example, one hands-on application, and one limitation or failure case.
  • Learners know what must be verified, what data must be protected, and who remains accountable for the output.

Labs, projects, and assessments

  • Lab 1: Build a personal creative voice guide.
  • Lab 2: Produce a multimodal concept package: synopsis, moodboard, script, storyboard, and caption set.
  • Lab 3: Repurpose one long-form idea into five platform-specific outputs.
  • Capstone: Complete a small creative project with process notes showing human choices, AI assistance, revisions, and final rationale.

Evaluation approach

  • 25% creative process journal.
  • 25% multimodal concept package.
  • 20% revision and critique quality.
  • 30% final creative capstone.
  • AI assistant, image/video/audio generation tools, Canva/Figma, editing software, notes app, social scheduling tools.
  • Optional: voice tools, storyboard tools, music tools, scriptwriting software.

Safety, ethics, and governance emphasis

  • Avoid cloning real people's voices or likenesses without permission.
  • Be careful with living artists' distinctive styles and copyrighted characters.
  • Do not use AI to fabricate endorsements, testimonials, news footage, or deceptive personal stories.

Delivery notes

  • Use studio-style critique sessions.
  • The course should celebrate taste, constraints, and editing rather than one-click generation.

Instructor Build Checklist

  • Prepare one short demo for each module and one learner activity that creates a saved artifact.
  • Prepare examples that match the audience, local context, and likely tools learners can access.
  • Add a verification step to every AI-generated output: factual check, source check, data sensitivity check, and quality review.
  • Keep a running portfolio folder so each module contributes to the final project or learner playbook.
  • Reserve time for reflection on what the learner did, what AI did, what was checked, and what remains uncertain.