Eve — Shared Firm Knowledge + Auditor

https://www.eve.legal/

Plaintiff litigation. Shared Firm Knowledge (firm-wide institutional store) + autonomous Auditor agent that runs nightly across all open matters surfacing missed value drivers (TBIs, unfiled MRI orders, mass-tort eligibility) without prompting.

At a glance

Type
Firm-level store + nightly autonomous case auditor
Tier
T1
Created
2023 (founded 2023 by David Zeng Jay Madheswaran Matt Noe; operating as Butler Labs Inc)
Latest release
not applicable — not OSS
License
not applicable — not OSS
GitHub
not applicable — no GitHub repo
Pricing
searched not found
Funding
searched not found

Taxonomy

storage
vector
retrieval
similarity
persistence
long-term
update
extraction
unit
document
governance
auditable
conflict
llm-arbitrate

When to use

Optimised for: matter-scoped privilege + audit + firm-precedent memory

Anti-fit: not for non-legal verticals; not for self-represented litigants

Pros & cons

Pros

Auditor mechanism explicitly checks AI output against firm knowledge — directly addresses hallucination risk in legal context.

Cons

Newer entrant with limited track record; smaller deployment base than Harvey or Luminance.

Claims & capabilities

900+ plaintiff firms at GA (2025). Auditor runs unprompted against full case inventory.

Technical surface

API surface
searched not found
Backend storage
searched not found
Deployment
searched not found
Embedding model
searched not found
Multi-tenancy
Strict isolation at organization, user, and workflow levels; case data never used to train shared models
MCP
no MCP support advertised — vertical product, no MCP server / client integration documented
A2A
no A2A protocol support advertised — vertical product, no A2A integration documented
OpenTelemetry
no OpenTelemetry integration advertised — vendor logs/observability not publicly documented

Similar systems

Other vertical / domain-specific ai memory in the catalog, ranked by inbound references.

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  • Abridge T1

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Row last verified 2026-05-14. Catalog data is CC-BY-4.0 — see how to read this.