AL, US · AI law tracker
SB328 — AL, US
SB328 is an AI governance legislation from AL, currently introduced. Alabama's SB328 proposes a mandate for state agencies to perform quarterly AI-assisted reviews of rules [1]. AIGI tracks 1 primary-source update on this bill, sourced directly from the issuing authority.
Status & timeline
- Regulatory stage
- introduced
- Authority / governing body
- Alabama Legislature
- Chamber
- Senate
- Document type
- legislation
Next deadline: No fixed deadline — bill remains pending committee action
Subscriber only
Full obligation matrix
| Actor | Obligation | Deadline | Source |
|---|---|---|---|
| state agencies | Perform quarterly AI-assisted review of rules | quarterly after enactment | — |
Subscriber only
Enforcement risk score
Announced regulation; enforcement footprint still forming.
Subscriber only
Role-based compliance checklist
- compliance_officer Assess current rule review processes for AI integration opportunities.
- general_counsel Evaluate legal implications and potential liabilities of using AI for rule review.
- cto Research and identify suitable AI tools or develop internal capabilities for rule review.
Subscriber only
Vendor impact assessment
- Vendor risk class
- medium
- Procurement categories
- other
Vendors providing AI solutions for government administrative or legal text processing will need to demonstrate capabilities in accuracy, bias mitigation, data security, and explainability for rule review.
Sample vendor questions
- What AI methodologies are used for text analysis and rule review?
- How is the AI system trained and maintained for accuracy and bias mitigation?
- What are the data privacy and security measures implemented for rule data processed by AI?
- What human oversight mechanisms are built into the AI-assisted review process?
- What are the vendor's capabilities for continuous monitoring and auditing of the AI system's performance?
Intelligence briefs (1)
Alabama SB328: State Agencies Mandated Quarterly AI-Assisted Rule Review
Alabama's SB328 proposes a mandate for state agencies to perform quarterly AI-assisted reviews of rules [1].
This development signals a legislative intent to integrate AI into government regulatory functions, establishing a precedent for public sector AI adoption.
Deadline: No fixed deadline — bill remains pending committee action
Primary source →Frequently asked questions
- What is SB328?
- The Alabama Legislature is considering SB328, which proposes requiring state agencies to perform quarterly AI-assisted reviews of existing rules [1]. Currently, the bill is pending committee action in the House of Origin, as of its last action date on February 25, 2026 [2]. This initiative marks an early legislative effort towards integrating artificial intelligence into government regulatory processes. Primary source →
- Why does SB328 matter?
- This development signals a legislative intent to integrate AI into government regulatory functions, establishing a precedent for public sector AI adoption. Primary source →
- Who does SB328 affect?
- The primary entities affected by SB328 are Alabama state agencies and departments responsible for drafting and maintaining administrative rules. This includes functions related to regulatory compliance, public administration, and technology procurement. While the bill directly targets government operations, it indirectly bears on private sector organizations that interact with or are regulated by state agencies, particularly those developing or offering AI solutions for regulatory analysis. Primary source →
- What are the key dates for SB328?
- No fixed deadline — bill remains pending committee action Primary source →
- What is the current status of SB328?
- As of the last published update, SB328 is at the "introduced" stage. Primary source →
- Where can I find the primary source for SB328?
- The primary source for the most recent update is at https://alison.legislature.state.al.us/bill/24748376. AIGI publishes the full citation chain plus every approved brief on this bill. Primary source →
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