Principles

Responsible AI

Designed to support professional judgment, transparency, and trust in library acquisitions.

Responsible AI

AI should support library judgment, not replace it.

LibraMind is built around a simple idea: librarians remain accountable for collection decisions. AI can help surface options, summarize evidence, and organize workflows — but it should never act like an unreviewable black box.

Human accountability

Final decisions remain with librarians and library teams, not with an automated system.

Explainability

Recommendations should be transparent, reviewable, and grounded in evidence librarians can inspect.

Respect for context

Local priorities, mission, policy, culture, and community needs matter as much as algorithmic relevance.

Bias awareness

AI systems can amplify visibility bias. LibraMind is designed to broaden discovery and encourage human review.

Data stewardship

Metadata, usage signals, and institutional data should be handled securely and responsibly.

Decision support, not decision replacement

The goal is faster, better-supported professional decisions — not removing the professional from the process.

Why this matters

Libraries are cultural and educational institutions. AI in this space must be designed around trust, accountability, and professional judgment.