# cmdc_eval
> CMDC Agent benchmark harness —— 接公开基准 + 自定义 suite,输出 JSONL 报告,
> 与 LangSmith / Langfuse / Datadog 同源消费。
`cmdc_eval` 是 [cmdc](https://hex.pm/packages/cmdc) 的独立子库,提供:
- 标准 **Suite behaviour**(`CMDCEval.Suite`),实现 3 callback 即可注册一个评测集
- **断言上下文**(`CMDCEval.Context`),Suite 可用 `assert/3` 读取 reply / tool outputs / plugin events / metadata
- **RAG 通用断言**(`CMDCEval.Assertions.RAG`),覆盖 recall / citation / grounding / ACL / faithfulness / correctness
- **Workflow Eval 接缝**(`CMDCEval.Workflow` + `CMDCEval.Assertions.Workflow`),从 orchestrator event ledger 计算完成率、分支覆盖、human_task SLA 等门禁指标
- **内置 Internal Suite** —— 验证 cmdc kernel 内部特性(DAG / Steering / Checkpoint)的回归基准
- **BFCL v3 Suite 接入框架** —— Berkeley Function Calling Leaderboard,公开数据
- **`Mix.Tasks.Cmdc.Eval` CLI** —— 一行命令跑 evals + 输出 JSONL
- **稳定 JSONL 报告 schema** —— `suite / case_id / model / pass / latency_ms / tokens_in / tokens_out / cost_usd / events_digest`
## 安装
```elixir
def deps do
[
{:cmdc, "~> 0.5"},
{:cmdc_eval, "~> 0.2"}
]
end
```
## Quick Start
### 1. 跑 Internal Suite(cmdc kernel 自验证)
```bash
$ mix cmdc.eval --suite=internal --model="anthropic:claude-sonnet-4-5" --report=internal.jsonl
```
输出:
```
━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
Suite: internal
Model: anthropic:claude-sonnet-4-5
Cases: 5
Pass: 5 (rate=1.0)
Fail: 0
Latency: avg=1234.0ms total=6170ms
Tokens: in=234 out=567
Cost: $0.0123
Report: internal.jsonl
━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
```
### 2. 跑 BFCL v3(公开基准)
```bash
# 1. 先 fetch fixtures(v0.1 写占位,真实数据见 cmdc.eval.fetch_bfcl moduledoc)
$ mix cmdc.eval.fetch_bfcl
# 2. 跑 evals
$ mix cmdc.eval --suite=bfcl --model="openai:gpt-4o" --report=bfcl.jsonl
```
### 3. 程序化调用
```elixir
{:ok, report} = CMDCEval.run(
suite: CMDCEval.Suites.Internal,
model: "anthropic:claude-sonnet-4-5",
concurrency: 4,
timeout_ms: 60_000
)
report.summary
# => %{total: 5, pass: 5, fail: 0, pass_rate: 1.0, ...}
report.runs
# => [%CMDCEval.Run{case_id: "basic_text", pass: true, ...}, ...]
```
### 4. 自定义 Suite
```elixir
defmodule MyApp.MySuite do
@behaviour CMDCEval.Suite
alias CMDCEval.Case
@impl true
def name, do: "my_app_evals"
@impl true
def cases do
[
Case.new(id: "task_a", input: "Solve task A", expected: ~r/done/),
Case.new(id: "task_b", input: "Solve task B", expected: ~r/completed/)
]
end
@impl true
def assert(%Case{expected: %Regex{} = re}, reply), do: Regex.match?(re, reply)
end
# 跑
{:ok, report} = CMDCEval.run(
suite: MyApp.MySuite,
model: "anthropic:claude-sonnet-4-5"
)
```
## 报告 JSONL Schema
每行一个 Run 的 JSON。下游可被 LangSmith / Langfuse / Datadog 直接消费:
```json
{
"suite": "internal",
"case_id": "basic_text",
"model": "anthropic:claude-sonnet-4-5",
"pass": true,
"latency_ms": 1234,
"tokens_in": 234,
"tokens_out": 567,
"cost_usd": 0.0123,
"events_digest": null,
"error": null,
"timestamp": "2026-05-18T12:34:56Z",
"metadata": {"category": "smoke"}
}
```
字段稳定 —— 不会在 minor 版本删/改字段,新字段会通过 `metadata` 透传。
## RAG Suite 示例
```elixir
defmodule MyApp.RAGEvalSuite do
@behaviour CMDCEval.Suite
alias CMDCEval.{Assertions.RAG, Case}
def name, do: "rag_regression"
def cases do
[
Case.new(
id: "policy-approval",
input: "高风险操作需要审批吗?",
expected: %{rag: %{expected_chunk_ids: ["approval-policy-c1"]}},
metadata: %{allowed_collections: ["policies"]}
)
]
end
def assert(_case, _reply, context) do
RAG.recall_at_k(context, 5, 1.0) and
RAG.contains_citation(context) and
RAG.no_unauthorized_source(context) and
RAG.faithfulness_min(context, 0.8)
end
end
```
## Workflow Eval 示例
```elixir
alias CMDCEval.Assertions.Workflow
{:ok, snapshot} = CMDCOrchestrator.status(run_id)
context =
CMDCEval.Workflow.from_status(snapshot,
expected_branches: ["approved", "default"]
)
Workflow.gate(context,
completion_rate_min: 1.0,
node_failure_rate_lte: 0.0,
branch_coverage_min: 1.0,
human_task_sla_ms_lte: 86_400_000,
retry_count_lte: 2,
cost_usd_lte: 1.0,
latency_ms_lte: 300_000,
require_fork_join_satisfied: true
)
# => true / false
CMDCEval.Assertions.Workflow.gate_failures(context, human_task_sla_ms_lte: 1_000)
# => [%{metric: :human_task_sla_ms, expected: {:<=, 1000}, actual: 4200}]
```
Workflow Eval 只消费 Run / NodeRun / RunEvent 的稳定 ledger shape,不依赖 Phoenix
schema、Trace Viewer 或 Eval Dashboard。企业平台可以在 AgentSpec / Workflow 发布
审批前运行这组门禁,失败时把 `gate_failures/2` 展示给发布人。
## v0.2 范围
✅ **新增**:
- `CMDCEval.Context` —— `assert/3` 可读取 Agent 回复、工具输出、Plugin 事件和 metadata
- `CMDCEval.Runner` —— 自动订阅当前 eval session 的 CMDC EventBus 事件,并写入 `Run.metadata.eval_context`
- `CMDCEval.Assertions.RAG` —— `recall_at_k` / `contains_citation` / `grounded_answer` /
`no_unauthorized_source` / `faithfulness_min` / `correctness_min`
- 离线 fixture 支持 —— RAG assertions 可直接对 map fixture 运行,不依赖 Arcana 或真实 LLM
- `CMDCEval.Workflow` + `CMDCEval.Assertions.Workflow` —— 基于 orchestrator event
ledger 的 WorkflowEval 最小接缝,不做完整 Eval Dashboard / 数据飞轮
## v0.1 范围
✅ **已实现**:
- Suite behaviour + 4 struct(Case / Run / Report / Suite)
- `Mix.Tasks.Cmdc.Eval` + `Mix.Tasks.Cmdc.Eval.FetchBfcl`
- `CMDCEval.Suites.Internal` —— 5 个 cmdc kernel 自验证 case
- `CMDCEval.Suites.BFCL` —— 框架 + fetch_bfcl 占位
- JSONL 报告 schema + summary 聚合
- 11+ 单元测试覆盖 struct + Suite + Runner(mock provider 端到端)
🔁 **推后到 v0.2**:
- BFCL v3 fixtures 自动 fetch(v0.1 写占位,需手动 git clone 上游)
- tau2-bench airline suite
- MemoryAgentBench 子集(依赖 cmdc_memory_pg PG 集成)
- LangSmith 直接同步(OTLP)
- 完整 BFCL 5 子类(multiple / parallel / parallel_multiple / multi_turn)
## CLI 退出码
- `0` —— 所有 case pass
- `1` —— 有 case 失败
- `2` —— Suite 无 case(如 BFCL fixtures 未 fetch)
- `3` —— Suite 模块不存在或非法
## License
Apache-2.0