Lindy
Lindy is a no-code multi-agent automation platform from Florent Crivello (ex-Teleport, ex-Twitter). Targets consumer / SMB segment with email triage, meeting scheduling, CRM-update agents. $50M Series A Oct-2024 led by Andreessen Horowitz + Sequoia. Distinct from Zapier / n8n traditional automation by putting LLMs at the core of every workflow node.
At a glance
- Type
- No-code commercial multi-agent automation platform (consumer / SMB)
- Tier
- T2
- Created
- 2022 (founded)
- Latest release
- not applicable — orchestration platform, not memory product
- License
- not applicable — not OSS
- GitHub
- not applicable — no GitHub repo
- Pricing
- Free + paid (per-task / seat); enterprise quote
- Funding
- $50M Series A Oct-2024 (a16z + Sequoia)
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: SMB / consumer no-code agent automation (email / scheduling / CRM)
Anti-fit: not applicable — orchestration platform, not memory product
Pros & cons
Pros
No-code UX is genuinely accessible to SMB / non-technical users; strong investor base (a16z + Sequoia at Series A); LLM-first vs Zapier's RPA-first heritage.
Cons
Targets SMB market with thin moat (competing with Zapier AI, Make.com AI); not developer-targeted; enterprise compliance still maturing.
Claims & capabilities
$50M Series A Oct-2024 (a16z + Sequoia); 'AI employees' for SMB; agent marketplace; founded 2022 by Florent Crivello (ex-Teleport, ex-Twitter)
Technical surface
- API surface
- not applicable — orchestration platform, not memory product
- Backend storage
- not applicable — orchestration platform, not memory product
- Deployment
- Managed cloud (SaaS only)
- Embedding model
- not applicable — not a memory product
- Multi-tenancy
- not applicable — orchestration platform, not memory product
- MCP
- not applicable — orchestration platform, not memory product
- A2A
- planned
- OpenTelemetry
- not applicable — orchestration platform, not memory product
Similar systems
Other multi-agent orchestration platforms in the catalog, ranked by inbound references.
- Adept ACT T3
Founded 2022 by ex-OpenAI / Google researchers (David Luan, Kelsey Schroeder). Built ACT-1 / ACT-2 multimodal action transformers for computer-use. **Acquired by Amazon June-2024 (acqui-hire)** — co-founders + key team joined Amazon AGI; Adept the company continues with Zach Brock as remaining executive. Important historical entry — ACT models inspired Anthropic Computer Use + OpenAI Operator.
- Burr (DAGWorks) T2
Burr is a state-machine framework for LLM agents from DAGWorks (commercial company behind Hamilton dataflow framework, $4M seed). State-machine abstraction instead of DAG / ReAct — more debuggable for production. Targets the same niche as LangGraph but with state-machine semantics rather than DAG. BSD-3 license. Founded 2023 by ex-Stitch Fix / Two Sigma / Lyft engineers.
- CrewAI Enterprise T2
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).
- Imbue (formerly Generally Intelligent) T3
Founded 2017 as Generally Intelligent; rebranded Imbue 2023. Building foundation models for reasoning agents that write/edit code. Founders Kanjun Qiu + Josh Albrecht. $200M Series B 2023 ($1B valuation, Astera + Nvidia + Notion's Akshay Kothari). Trained 70B model for reasoning. Most public output is research blog + 'Carbon' OSS coding agent. Pulled back commercial roadmap post-2024.
- InstructLab (Red Hat / IBM) T2
Red Hat / IBM-stewarded open-source framework for community-driven LLM alignment + fine-tuning. Method paper 'LAB: Large-Scale Alignment for Chatbots' (Sudalairaj et al, IBM Research 2024). Built on the Granite model family (IBM's open-weights). Apache 2.0. Used in IBM watsonx + Red Hat OpenShift AI for fine-tuning workflows. Not strictly a multi-agent framework — included as 'orchestration platform' because of its role as a substrate for building domain-specific fine-tuned agent models.
- 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.