Hume EVI vs Vapi
Hume EVI vs Vapi: side-by-side comparison of two voice agent platforms systems — architecture, taxonomy, license, pricing, MCP/A2A support, and direct edges.
Cost & capability
| Hume EVI | Vapi | |
|---|---|---|
| Capability band | competent | competent |
| Capability composite | 54 | 56 |
| Cost tier | — | mid |
| Use cases | Latency Sensitive, Scoped Agentic | Latency Sensitive, Scoped Agentic |
Where they differ (13)
Rows where both sides have data and the values disagree — the shortlist of dimensions that actually distinguish these two systems.
| Hume EVI | Vapi | |
|---|---|---|
| Capability composite | 54 | 56 |
| Type | Empathic voice-AI platform (voice + emotion) | Developer platform for AI voice agents (programmable telephony) |
| Created | 2024 (EVI launched; Hume founded 2021) | 2023 (YC W23) |
| GitHub | github.com/HumeAI (SDKs) | github.com/VapiAI (SDKs only) |
| Pricing | Per-minute usage; tiered + Enterprise | Per-minute usage ($0.05/min base + provider passthrough) |
| Funding | $50M Series B Mar-2024 (EQT) | $20M Series A Dec-2024 (Bessemer); $130M val |
| Backend storage | Session state in Hume cloud | Call state in Vapi-managed DB; transcripts retained per config |
| Deployment | Cloud-managed | Cloud-managed; private deployments on Enterprise tier |
| API surface | WebSocket + REST APIs + SDKs (Python, JS, React Native) | REST API; SDKs (Python, JS, React); webhooks |
| Multi-tenancy | Multi-tenant cloud | Multi-tenant cloud; Enterprise dedicated tier |
| MCP | searched not found | Tool-calling supports MCP servers (caller-side) |
| Optimised for | Emotion-aware voice agents; therapy + companion apps | Building phone-call voice agents quickly with composable STT/LLM/TTS |
| Anti-fit | Empathic / emotion focus — overkill if you just want plain voice agent | Telephony-centric — not for in-app voice UX; per-minute pricing scales fast at high volume |
At a glance
| Hume EVI | Vapi | |
|---|---|---|
| Section | Voice agent platforms | Voice agent platforms |
| Tier | T1 | T1 |
| Type | Empathic voice-AI platform (voice + emotion) | Developer platform for AI voice agents (programmable telephony) |
| Created | 2024 (EVI launched; Hume founded 2021) | 2023 (YC W23) |
| Latest release | EVI 2 (2024-09) | — |
| GitHub | github.com/HumeAI (SDKs) | github.com/VapiAI (SDKs only) |
| Pricing | Per-minute usage; tiered + Enterprise | Per-minute usage ($0.05/min base + provider passthrough) |
| Funding | $50M Series B Mar-2024 (EQT) | $20M Series A Dec-2024 (Bessemer); $130M val |
| Backend storage | Session state in Hume cloud | Call state in Vapi-managed DB; transcripts retained per config |
| Deployment | Cloud-managed | Cloud-managed; private deployments on Enterprise tier |
| API surface | WebSocket + REST APIs + SDKs (Python, JS, React Native) | REST API; SDKs (Python, JS, React); webhooks |
| Multi-tenancy | Multi-tenant cloud | Multi-tenant cloud; Enterprise dedicated tier |
| MCP | searched not found | Tool-calling supports MCP servers (caller-side) |
| A2A | searched not found | searched not found |
| OpenTelemetry | searched not found | searched not found |
| Optimised for | Emotion-aware voice agents; therapy + companion apps | Building phone-call voice agents quickly with composable STT/LLM/TTS |
| Anti-fit | Empathic / emotion focus — overkill if you just want plain voice agent | Telephony-centric — not for in-app voice UX; per-minute pricing scales fast at high volume |
Taxonomy
| Axis | Hume EVI | Vapi |
|---|---|---|
| storage | kv | kv |
| retrieval | injection | injection |
| persistence | session | session |
| update | agent-controlled | agent-controlled |
| unit | turn | turn |
| governance | opaque | opaque |
| conflict | stateless | stateless |
Pros & cons
Hume EVI
Pros: Unique empathic/emotion layer; SOC 2 + HIPAA; founder research credentials; clean SDKs.
Cons: Niche positioning; smaller than Vapi/Retell at agent-orchestration layer; emotion-model interpretability concerns.
Vapi
Pros: Category-leading mindshare; Bessemer-backed; SOC 2 + HIPAA; mature webhooks + SDKs.
Cons: Per-minute economics at scale; provider-passthrough means triple vendor exposure (STT + LLM + TTS).