Legal AI Workflow Design

An AI Legal Research System That Doesn't Hallucinate

Andrew Eichen

An AI-powered legal workflow for statutory analysis, designed by a practicing attorney to enforce interpretive discipline in AI tools.

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These are the most common failures identified while supervising AI-assisted legal analysis.

"Recalls from Training or Reads Summaries"

AI either recalls imprecisely from its training or uses general summaries from web search.

Shallow Reading

Applies a general rule without checking for the exemptions or parsing the specific elements a violation actually requires.

Misreading Standards

Reads "knows" and silently applies "should have known," creating obligations from thin air.

"It's Trained to Help, Not Hedge"

AI fills gaps instead of flagging silence.

Sycophancy

When challenged on one point, abandons the entire analysis instead of defending what was correct.

Fabrication

Fills gaps in a statute's silence with common-sense reasoning that has no statutory basis.

"It Assumes Every Law Applies"

AI skips the threshold question a lawyer asks first.

Overbroad Conclusions

Assesses scope so broad it would sweep in every company in the industry.

Skips Applicability

Determines what a statute requires without first checking whether it reaches this entity at all.

Smarter AI
Structural constraints

Hard rules enforced for every agent. Legal reasoning discipline built into architecture, derived from cataloging and correcting real errors across dozens of engagements.

How It Works

From Question to Verified Analysis

Purpose-built AI workflows with built-in quality controls.

R Legal Question Client context + question INPUT Technical Research Tool and platform review OPTIONAL Issue Spotting Clean-room analysis SEQUENTIAL Statutory Analysis Structured metadata per law PARALLEL Case Law Research Doctrines + precedent PARALLEL Terms Review Service agreements PARALLEL Proportional Synthesis Depth matches uncertainty SEQUENTIAL Fidelity Check One AI verifier per law PARALLEL Attorney Review Human-in-the-loop HUMAN First Draft Memo With attention map SEQUENTIAL

Interpretation Notes

Metadata attached to every law in the library

Principle

"Knows" means actual knowledge. The statute does not say "knows or has reason to know."

Consideration

State-level trigger language varies by jurisdiction; compliance timelines are unresolved.

Generated Analysis
Guardrail Applied Element Verified Uncertainty Preserved

The requirement to activate protections for minors applies only when the operator has actual knowledge (not constructive) that a specific user is a minor. This requires the operator to know, not merely have a reason to know. The statute is silent on whether a provider is considered to know if the user mentions their age to the chatbot.

One sentence for clear-cut conclusions. Full discussion for ambiguous applications. The depth of treatment is proportional to the analytical uncertainty.

Issue Spotting Agent relevant terms required obligations potential torts ISOLATION BARRIER Law Library

Issue spotting in isolation prevents the library from biasing what the system looks for.

Without the system

"The client is developing a resume screening model that a downstream employer will use in hiring. If the model produces disparate outcomes for a protected class, the client may be held liable under Title VII, the ADA, and related federal anti-discrimination statutes."

With the system

"Title VII imposes obligations on employers, not on tool vendors. Whether a developer that licenses a screening model is itself a covered entity under Title VII is far from settled, and would depend on whether they could be considered an employment agency, indirect employer, or agent of the employer. The more concrete exposure here is FTC UDAP enforcement, and state or local statutes that expressly reach vendors and service providers."

Covered entity verified

The first analysis extends a statute to a party it does not clearly reach. The second identifies who the law actually regulates and where the real exposure sits.

Real Work

Built for Legal Complexity

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Statutes tracked and analyzed across AI, privacy, and biometric law

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Active AI litigation cases tracked and synthesized

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Parallel research tracks covering statutes, case law, and terms simultaneously

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Independent quality checks on every analysis

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Connected to live legal databases across federal, state, and EU jurisdictions

Every design decision was made by a lawyer solving a problem encountered in client work.

Andrew Eichen

AI Governance & Privacy Law

JD, University of Pennsylvania Law School MPP, Georgetown University AI Governance, Privacy & Regulatory Compliance