AI/IA

Week 10 - In-Class Wrap-Up

Multimodal lecture is recorded - today is breathing room.

Week 10 - In-Class Wrap-Up
AI/IA

Week 10 - In-Class Wrap-Up
AI/IA

AI in the News

Week 10 - In-Class Wrap-Up
AI/IA

Adversarial Poetry as a Universal Single-Turn Jailbreak Mechanism in Large Language Models

https://arxiv.org/html/2511.15304v1

Week 10 - In-Class Wrap-Up
AI/IA

Today's Plan

  1. AI in the News
  2. Bias Analysis lab - 15 min work + discussion
  3. Q&A on the recorded multimodal lecture
  4. AI Literacy in Libraries
  5. Remaining questions - anything goes
  6. Final optional labs
  7. Portfolio work time (I float)
  8. Stump the professor (optional)
  9. Quick refresher across the course
Week 10 - In-Class Wrap-Up
AI/IA

Bias Analysis Lab - 15min to work more

Pick up where you left off.

  • I'll circulate - flag me if you're stuck
  • Save a representative output for your portfolio
Week 10 - In-Class Wrap-Up
AI/IA

Discussion

Reflecting on Your Experiments

  • Which models did you test, and why did you choose them?
  • What surprised you most about your findings?
  • Did any model perform significantly better or worse than you expected?
Week 10 - In-Class Wrap-Up
AI/IA

Counterfactual Prompting Results

  • What demographic variables created the most noticeable differences in outputs?
  • Were there subtle differences in tone or framing that revealed potential biases?
  • How consistent were the biases across different types of prompts?
Week 10 - In-Class Wrap-Up
AI/IA

Role Reversal Insights

  • Did models rely on stereotypes when generating content from different perspectives?
  • Where did models draw the line on role-playing certain identities?
  • How did "uncensored" models differ from mainstream ones in this exercise?
Week 10 - In-Class Wrap-Up
AI/IA

Synthetic Data Analysis

  • What patterns emerged in your synthetic data generation?
  • How effective was the model at identifying its own biases in the data?
  • Did the model's bias analysis align with your human evaluation?
Week 10 - In-Class Wrap-Up
AI/IA

Broader Implications

  • What policy challenges do these biases raise?
  • What responsibility do model creators have to mitigate these biases?
  • What regulatory approaches might address the issues you discovered?
Week 10 - In-Class Wrap-Up
AI/IA

Q&A - Multimodal Models

The recorded lecture covered:

  • Text-to-image (GANs → Diffusion → Transformers)
  • CLIP, ViT, multimodal LLMs
  • Video & audio generation
  • Computer-use & multimodal agents
  • Copyright
Week 10 - In-Class Wrap-Up
AI/IA

AI Literacy in Libraries

  • Library and Information Science has been thinking about AI longer than most
    • Information retrieval & Retrieval-Augmented Generation (Week 5)
    • Information behavior (Week 5)
    • Classification and Information Extraction (Week 6)
Week 10 - In-Class Wrap-Up
AI/IA

IFLA Statement on Libraries and AI (2020)

From IFLA's Committee on Freedom of Access to Information and Freedom of Expression (FAIFE).

"The rapid pace of AI development and adoption raises crucial questions about intellectual freedom, equity and privacy, automation, the evolution of necessary digital literacy skills, [and] relevant Intellectual Property policy frameworks."

IFLA Statement on Libraries and AI (2020)

Week 10 - In-Class Wrap-Up
AI/IA

IFLA - Where Libraries Fit

"Libraries should strive to take on key roles in a society with growing AI integration."

Concretely, that means:

  • Intellectual freedom & equitable access to AI
  • Privacy of patron data
  • Digital literacy as a library mission
  • Libraries as trusted intermediaries
Week 10 - In-Class Wrap-Up
AI/IA

Agreed by the IFLA Governing Board, April 4, 2025.

"Copyright should not be used as a blunt force tool for addressing ethical issues."

Libraries should advocate for "limitations and exceptions that enable text-and-data mining of legitimately acquired or accessed content."

IFLA Statement on Copyright and AI (2025)

Week 10 - In-Class Wrap-Up
AI/IA

Week 10 - In-Class Wrap-Up
AI/IA

IFLA on Training Data

"Access to the widest possible datasets [is a] defense against bias and error."

And a positive role for libraries:

"Making collections AI-ready with appropriate licenses, and respecting FAIR and CARE principles."

FAIR = Findable, Accessible, Interoperable, Reusable.
CARE = Collective benefit, Authority to control, Responsibility, Ethics.

Week 10 - In-Class Wrap-Up
AI/IA

ARL Guiding Principles for AI (April 2024)

Association of Research Libraries - seven principles:

  1. Democratize AI access - for digital literacy
  2. Address bias and distortion - make users aware
  3. Champion transparency - algorithms, training data, methods
  4. "No human, no AI" - humans in the loop on consequential decisions
  5. Protect security and privacy - of users and their data
  6. Preserve copyright flexibility - fair use, research, education
  7. Maintain scholarly use rights - licenses must not erode them

ARL Research Libraries Guiding Principles for AI (2024)

Week 10 - In-Class Wrap-Up
AI/IA

ARL:

"Libraries believe 'no human, no AI' - humans must be involved in critical decisions affecting research environments."

Week 10 - In-Class Wrap-Up
AI/IA

IBM internal training, 1979

  • IBM internal training page, 1979
Week 10 - In-Class Wrap-Up
AI/IA

ALA Draft Guidance on AI in Libraries (2026)

ALA's AI Policy Working Group, chartered June 2025. Draft circulating spring 2026; Council approval expected at the 2026 ALA Annual Conference

  • Public Good - e.g. "Using AI only when it serves clear, user-centered purposes"
  • Intellectual Freedom - e.g. "Treating AI outputs as drafts that must be critically evaluated and edited by humans"
  • Privacy - e.g. "Applying ALA privacy guidelines when evaluating AI tools
  • Sustainability - e.g. "Preferring open-source, smaller, or task-specific models"
  • Diversity, Equity, Inclusion, and Accessibility - e.g. "Auditing AI tools for bias and discriminatory outcomes before and after deployment"

ALA Draft Guidance on AI in Libraries (2026)

Week 10 - In-Class Wrap-Up
AI/IA

ALA

"Staff should avoid tools that require access to patron personal data; if AI tools process such data, strong protections must be in place."

Week 10 - In-Class Wrap-Up
AI/IA

ACRL - AI and the Information Literacy Framework

AI Competencies for Academic Library Workers, approved by Board of Directors Oct 2025

  • Ethical Considerations - equitable access, fairness, accountability, privacy
  • Knowledge & Understanding - basic understanding of the technology, and key terms; ability to detect (and understanding limitations); understanding limits
  • Analysis & Evaluation - explain role of AI in library services; evaluate benefits and risks
  • Use & Application - effective prompting; be able to explore the capabilities for innovation; center accessibility in tools; use effective
Week 10 - In-Class Wrap-Up
AI/IA

Week 10 - In-Class Wrap-Up
AI/IA

Common threads

  • Transparency of models, training data, and use
  • Privacy of patron / user data is non-negotiable
  • Equity - democratize, don't gatekeep
  • Human-in-the-loop for high-stakes decisions
  • Literacy is a library mission, not just an IT problem
Week 10 - In-Class Wrap-Up
AI/IA

AI as a literacy

  • Distinct from yet complementary to traditional information literacy
  • Five core competencies for working with AI
  • Information professionals as drivers of equitable AI literacy
  • review of AI Literacy work, particularly in LIS

Preprint

Organisciak, P., & Gillette, E. (2026). Toward a New AI Literacy. In Bishop, Chancellor, & Sánchez (Eds.), A Critical Look at Information Science and Librarianship in a New Age: Constellation of Insanity (Advances in Librarianship, Vol. 60). Emerald. doi:10.1108/S0065-283020260000060012

Week 10 - In-Class Wrap-Up
AI/IA

Remaining Questions

Ask anything!

Week 10 - In-Class Wrap-Up
AI/IA

Final Optional Labs

Week 10 - In-Class Wrap-Up
AI/IA

The Big Quiz

Optional - week 10 lab.

  • Comprehensive coverage of course concepts
  • Self-paced, submitted to portfolio
  • Grade = your quiz grade
Week 10 - In-Class Wrap-Up
AI/IA

AI Policy Framework

Optional - paired with Week 9.

  • Draft AI use guidelines for a real organizational context
  • Ethics + practical implementation
  • Strong portfolio piece if policy is your angle
Week 10 - In-Class Wrap-Up
AI/IA

Course Refresher

Week 10 - In-Class Wrap-Up
AI/IA

First: let's go around the room. One (or two or three) things you're stepping away from this class with

Week 10 - In-Class Wrap-Up
AI/IA

Weeks 1–5

  1. Intro to AI - adoption is uneven, literacy is a discipline
  2. Technical foundations - transformers, embeddings, scale
  3. Talking to bots - prompting, temperature, reasoning
  4. Co-creativity - humans + AI, system prompts
  5. Information behavior - RAG, retrieval, research tools
Week 10 - In-Class Wrap-Up
AI/IA

Weeks 6–10

  1. Classification and Information Extraction - zero-/few-shot prompts as useful tools
  2. Agents - loops, tools, supervision
  3. Ethics & bias - measurement and mitigation
  4. Society & policy - labor, environment, regulation
  5. Multimodal (recorded) - image, video, audio
Week 10 - In-Class Wrap-Up
AI/IA

Portfolio Work Time

I'll float around - grab me.

  • Pull up your portfolio plan
  • Identify the 2–3 labs you'll polish
  • Reflection drafts welcome
Week 10 - In-Class Wrap-Up
AI/IA

Stump the Professor

Optional.

Bring me a real problem - from work, a class, or just curiosity.

I'll walk through how I would approach it with AI today.

Week 10 - In-Class Wrap-Up
AI/IA

Thank You

  • Portfolio due on Mon
  • Course evaluations
  • I'm available after the quarter ends - email me
Week 10 - In-Class Wrap-Up