Updated 2026年4月
LlamaIndex Agents for Multi-Agent Systems
LlamaIndex · MIT · primary language python · token-overhead ×1.4
15-axis capability scores
- Sequential workflows8/10
- Parallel workflows6/10
- Hierarchical workflows7/10
- Adaptive workflows7/10
- State management7/10
- Human-in-the-loop5/10
- Python support10/10
- TypeScript support7/10
- .NET / Java support0/10
- MCP support7/10
- A2A support4/10
- Observability7/10
- Deployment flexibility7/10
- Maturity8/10
- Learning curve (higher = easier)7/10
Tokens per task
LlamaIndex Agents 相对于 1.0 基线(LangGraph)具有 ×1.4 的 token 开销系数。对于每月 50,000 个任务、15,000 个基础 token 的工作负载,在 HITL 或多智能体扇出之前大约是 每月 1050.0M token。
运行向导以根据您的工作负载和所选模型获得校准估算。
Run the selector with your workloadStarter scaffold
Buzzi 为 LlamaIndex Agents 提供 2 智能体 hello-world ZIP(Dockerfile、锁定依赖、README、MIT 许可证)。完成向导时生成。
Closest alternatives
- Anthropic Claude Agent SDK
×1.1 overhead · python
- OpenAI Agents SDK
×1.1 overhead · python
- Pydantic AI
×1.0 overhead · python
Ready to commit to LlamaIndex Agents?
Run the wizard, download the scaffold, and book a 30-minute scoping call with Buzzi.ai.
Start the selector