CrewAI Enterprise

https://www.crewai.com/enterprise

Commercial Enterprise tier of the CrewAI OSS multi-agent framework. Adds managed cloud runtime, RBAC, audit logging, SLA support, on-prem option. OSS CrewAI is in the Framework-embedded memory section already; this row covers the commercial cloud platform separately. $18M Series A Oct-2024 (Insight Partners). 30k+ companies have deployed CrewAI agents in prod (vendor-stated).

At a glance

Type
Commercial multi-agent orchestration platform (vs OSS CrewAI)
Tier
T2
Created
2024-01 (CrewAI OSS released); 2024-Q4 (Enterprise tier launched)
Latest release
not applicable — orchestration platform, not memory product
License
not applicable — not OSS
GitHub
not applicable — no GitHub repo
Pricing
Free (OSS) + Pro ($99/mo) + Team + Enterprise (quote)
Funding
$18M Series A Oct-2024 (Insight Partners; Boldstart, Blitzscaling)

Taxonomy

storage
none-trivial
retrieval
none
persistence
session-only
update
agent-controlled
unit
turn
governance
opaque
conflict
out-of-scope

When to use

Optimised for: role-based multi-agent crew composition; OSS-friendly developer experience

Anti-fit: not applicable — orchestration platform, not memory product

Pros & cons

Pros

Strong OSS-to-commercial conversion path; large dev mindshare from CrewAI OSS; multi-agent crews abstraction is intuitive for non-experts.

Cons

Memory layer is thin (delegates to LangChain / Mem0); enterprise features still maturing; smaller funding than peers (LangChain $160M).

Claims & capabilities

$18M Series A Oct-2024 (Insight Partners); 30k+ deployments vendor-claimed; commercial features: RBAC, audit, SLA, on-prem; founded 2024 by João Moura

Technical surface

API surface
not applicable — orchestration platform, not memory product
Backend storage
not applicable — orchestration platform, not memory product
Deployment
Managed cloud + self-hostable (Enterprise) + OSS (self-hostable)
Embedding model
not applicable — not a memory product
Multi-tenancy
not applicable — orchestration platform, not memory product
MCP
via community port
A2A
planned (Google A2A roadmap)
OpenTelemetry
not applicable — orchestration platform, not memory product

Similar systems

Other multi-agent orchestration platforms in the catalog, ranked by inbound references.

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  • Microsoft AutoGen Studio T2

    Microsoft Research's low-code GUI for designing and deploying multi-agent workflows on top of the AutoGen framework. AutoGen v0.4 (Jan-2025) re-architecture moved to actor-based async runtime. Free OSS (MIT). Distinct from OSS AutoGen framework already in catalog — this row covers the Studio GUI / no-code product. Increasingly positioned as Microsoft's multi-agent answer to LangGraph / CrewAI.

Related systems

References (2)

  • Mem0 depends on at runtime — adjacent-infrastructure cell: OSS CrewAI (already in catalog); typically paired with Mem0 / Zep for memory + Langfuse / LangSmith for observability
  • Zep & Graphiti depends on at runtime — adjacent-infrastructure cell: OSS CrewAI (already in catalog); typically paired with Mem0 / Zep for memory + Langfuse / LangSmith for observability

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