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8 Commits

Author SHA1 Message Date
GitHub Actions
15cd5e8770 fix: close forced tool-choice with structured fallback
Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-04-20 07:18:01 +08:00
GitHub Actions
63583712a8 fix: fallback agent payload source to numeric value
Keep Lingma chat/ask payload source as numeric 1 for agent mode A/B validation against remote upstream timeout behavior.

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-04-20 06:36:07 +08:00
GitHub Actions
c67a9c3d61 fix: align agent payload semantics with VSCode tool flow
Force OpenAI tooling-context requests into agent mode and align Lingma ask payload fields for agent requests so server-side tool path matches VSCode semantics.

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-04-19 23:19:52 +08:00
GitHub Actions
e208025f35 fix: emit Lingma tool approve/invoke roundtrip
Forward tool/call/sync and tool/invoke events to Lingma with auto-approve and invokeResult so tool calls can complete end-to-end.

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-04-19 21:35:05 +08:00
GitHub Actions
3498b81fa2 fix: enable anthropic agent mode for tooling requests
Use agent ask_mode for Anthropic messages with tooling context so tool/write flows are executed, and add regression coverage plus docs/env updates for TOOL_FORWARD_ENABLED.

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-04-19 20:15:14 +08:00
GitHub Actions
e600bae27c fix: harden tooling session reuse and event routing
Ensure session reuse is disabled for tooling contexts, include tool config in cache keys, and stabilize tool event merge/routing with expanded bridge tests.

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-04-19 19:29:30 +08:00
GitHub Actions
5aa7fbfae5 fix: align Lingma tool event lifecycle handling
Handle tool/invokeResult and richer tool/call/sync payloads in the client,
and document/retest the verified VSCode monitoring workflow for tool events.

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-04-19 09:49:01 +08:00
GitHub Actions
1c7b86e2c0 feat: bridge Lingma tool events to OpenAI/Anthropic responses
Add structured tool event propagation from Lingma stream/finish metadata and map it to OpenAI tool_calls and Anthropic tool_use/tool_result in both streaming and non-streaming responses. Add focused bridge tests and update docs/design notes to match current behavior.

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-04-18 22:34:43 +08:00
9 changed files with 1882 additions and 62 deletions

View File

@@ -46,6 +46,9 @@ DEFAULT_MODEL=org_auto
# 默认模式chat 或 agent
DEFAULT_ASK_MODE=chat
# 请求侧 tools/tool_choice 透传到 Lingma默认关闭开启后可支持工具写文件等场景
TOOL_FORWARD_ENABLED=false
# 专属域(可选)
DEDICATED_DOMAIN_URL=

95
CLAUDE.md Normal file
View File

@@ -0,0 +1,95 @@
# CLAUDE.md
This file provides guidance to Claude Code (claude.ai/code) when working with code in this repository.
## Primary docs to read first
- `README.md` (runtime commands, env model, API examples)
- `DESIGN.md` (architecture decisions, module boundaries, request lifecycle)
- `.env.example` (authoritative env var reference)
No Cursor/Copilot rule files were found in this repo (`.cursorrules`, `.cursor/rules/`, `.github/copilot-instructions.md`).
## Common development commands
### Start locally
```bash
pip install -r requirements.txt
uvicorn app.main:app --reload --port 8317
```
### Start with Docker Compose
```bash
cp .env.example .env
mkdir -p data secrets
docker compose up -d --build
docker compose logs -f
```
### Run tests
```bash
# current focused suite
python3 -m unittest tests/test_tool_call_bridge.py
# discover all unittest tests under tests/
python3 -m unittest discover -s tests -p "test_*.py"
# run a single test method
python3 -m unittest tests.test_tool_call_bridge.ToolCallBridgeTests.test_openai_non_stream_bridges_tool_calls
```
### Smoke-check running gateway
```bash
API_KEY=$(grep '^API_KEYS=' .env | cut -d= -f2 | cut -d, -f1)
curl -s http://127.0.0.1:8317/healthz
curl -s http://127.0.0.1:8317/v1/models -H "Authorization: Bearer $API_KEY"
```
### Linting/type-checking status
- There is currently no repo-configured lint/type command (no `ruff`/`flake8`/`mypy` config found).
- Do not invent tooling commands; if linting is needed, add tooling in a dedicated change first.
## Architecture (big picture)
### What this service is
A FastAPI gateway that fronts Lingma and exposes:
- OpenAI-compatible API (`/v1/models`, `/v1/chat/completions`)
- Anthropic Messages-compatible API (`/v1/messages`, `/v1/messages/count_tokens`)
Both protocols share the same backend pool, backpressure guard, stats, and session reuse logic.
### Request lifecycle (important for most changes)
1. Authenticate request (`app/auth.py`)
2. Normalize inbound protocol payload to internal message shape (`openai_schema.py` / `anthropic_schema.py`)
3. Session-cache lookup (`app/session_cache.py`) for prefix-based reuse
4. Pick backend instance (`app/lingma_pool.py`) with affinity + least-in-flight
5. Acquire concurrency ticket (`app/concurrency.py`)
6. Call Lingma via websocket/LSP client (`app/lingma_client.py`)
7. Map upstream result/stream back to wire protocol in `app/main.py`
8. Record stats and release ticket (including stream-finally paths)
### Core module boundaries
- `app/main.py`: API entrypoint + orchestration + wire-format adapters
- `app/lingma_pool.py`: multi-instance lifecycle, selection, health-aware fallback
- `app/lingma_client.py`: subprocess + LSP-over-WebSocket transport to Lingma
- `app/session_cache.py`: LRU+TTL cache of conversation-prefix -> upstream session id (+ instance binding)
- `app/concurrency.py`: in-flight guard and queue timeout/backpressure behavior
- `app/stats.py`: usage counters and Prometheus text
### Protocol-specific notes
- Anthropic and OpenAI endpoints are separate adapters over shared internals.
- Response-side tool bridge is implemented: upstream Lingma tool events are surfaced as:
- OpenAI: `tool_calls` (stream + non-stream)
- Anthropic: `tool_use` / `tool_result` blocks (stream + non-stream)
- Request-side `tools` / `tool_choice` are accepted by schemas but not forwarded to Lingma.
### Operational invariants to preserve
- One request must stay on one Lingma instance for session continuity.
- Session cache entries include instance identity; invalidate on unhealthy instance mismatch.
- Streaming paths must always release in-flight tickets in `finally`.
- Multi-instance mode must use isolated workdirs per instance.
### Deployment/runtime model
- Container startup runs `python /app/app/bootstrap_lingma.py` before uvicorn.
- Compose mounts:
- `./data -> /app/data` (persistent Lingma binary/cache/workdirs)
- `./secrets -> /secrets:ro` (session bundles, secrets)

View File

@@ -47,7 +47,8 @@
- **逆向 Lingma 后端协议**:之前评估过(曾经的"B1 终极方案"),需要反编译二进制,维护成本高、政策风险大,放弃。
- **多租户 / 水平扩缩**:单容器即可;真要大规模部署 → 套层反代 + N 个网关副本就够,不在进程内解决。
- **完整 function calling / tools**OpenAI schema 里保留了字段,但目前不透传给 LingmaLingma 侧没有等价能力)。
- **请求侧完整 function calling / tools 透传**OpenAI schema 里保留了字段,但目前不会把 `tools`/`tool_choice` 透传给 Lingma上游无等价输入协议)。
- **响应侧工具事件桥接**:若 Lingma 上游产出 tool 事件,网关会向 OpenAI 输出 `tool_calls`,向 Anthropic 输出 `tool_use` / `tool_result`stream + non-stream
- **多模态**:请求里的 image/audio 会被降级成占位符 `[image]` / `[audio]`,因为 Lingma chat 不支持。
---
@@ -591,7 +592,7 @@ FastAPI `lifespan` 退出 → `pool.close()` → 每个 `client.close()` → 进
| 需求 | 改哪些文件 | 关键入口 |
|---|---|---|
| 加一个新的 OpenAI 端点(如 embeddings | `main.py`, `openai_schema.py` | 仿照 `v1_models``@app.post("/v1/embeddings", dependencies=[Depends(auth_guard)])` |
| 扩展 Anthropic 端点(如 count_tokens / tool_use 贯通 | `main.py::v1_messages`, `anthropic_schema.py` | count_tokens 只读:复用 `estimate_tokens`tool_use 需要 Lingma 上游支持payload 转发点在 `chat_stream` / `chat_complete` |
| 扩展 Anthropic 端点(如 count_tokens / tool_use 相关能力 | `main.py::v1_messages`, `anthropic_schema.py` | count_tokens 只读:复用 `estimate_tokens`响应侧 `tool_use/tool_result` 桥接已支持,若要请求侧 tools 透传仍需改 `lingma_client.py` payload |
| 加一种新的实例调度策略(如加权轮询) | `lingma_pool.py::pick()` | 当前是 affinity → least-in-flight → round-robin |
| 改认证为 JWT / OAuth | `auth.py` | 三个 `require_*` 函数是全部入口;`main.py` 里只有 `*_guard` 代理 |
| 增加限流(按 api_key 配额) | `concurrency.py``PerKeyGuard``main.py``chat_guard.try_acquire()` 后再来一层 | 注意 ticket 释放顺序(内层先释放) |
@@ -627,7 +628,7 @@ uvicorn app.main:app --reload --port 8317
| 标签 | 描述 | 影响 | 计划 |
|---|---|---|---|
| D1 | `config.py` 还是纯 `dataclass` + `os.getenv`,未迁 `pydantic-settings` | 类型校验靠自己 cast | 低优,收益有限,有精力再做 |
| D3 | 无单元测试骨架 | 重构要靠 deploy 验证 | 想加 CI 时优先补 |
| D3 | 已有基础单测覆盖 tool-call bridgeOpenAI/Anthropicstream + non-stream但整体测试矩阵仍不完整 | 回归仍依赖手工验证与定向测试 | 后续补充会话复用、背压、鉴权和异常路径用例 |
| Docker non-root | 容器还是 root 跑 | 容器逃逸时影响宿主 | 需要加 `gosu` + chown entrypoint涉及数据迁移谨慎推进 |
| ADMIN_TOKEN 轮换 | 没有过期机制,只能重启 | 自用场景不影响 | 接 Vault / sops 时一并做 |
| Lingma 版本漂移 | 新版 Lingma 改 LSP 方法或新增必需 cache 文件时会无声崩 | 注入失败会 fallback但 chat 不回话题型的错误不易定位 | 加一个 `/internal/smoke` 端点做端到端自检 |
@@ -707,6 +708,45 @@ uvicorn app.main:app --reload --port 8317
| → | `chat/ask` (notify!) | 见 `_build_payload` | 不回 result通过 server push 下推 |
| ← | `chat/answer` | `{requestId, text, content}` | 流式 token |
| ← | `chat/finish` | `{requestId, sessionId, ...其它元数据}` | 结束信号,含上游真实 sessionId |
| ← | `tool/call/sync` | `{requestId?, toolCallId, toolCallStatus, parameters, results?}` | 工具状态与结果回流 |
| ← | `tool/invoke` | `{requestId?, toolCallId, ...}` | 工具调用中间事件(兼容旧链路) |
| ← | `tool/call/approve` | `{requestId?, toolCallId, approval, ...}` | 工具审批事件 |
| ← | `tool/invokeResult` | `{requestId?, toolCallId, name, success, errorMessage, result}` | 工具执行结果事件 |
### 9.1 Tool call 监控 SOPVSCode 真实环境)
目标:拿到 Lingma 扩展真实 method/字段,避免猜测协议。
1. 确认入口文件
- `~/.vscode/extensions/alibaba-cloud.tongyi-lingma-*/package.json`
-`main`(当前是 `dist/extension.js`
2. 在发送侧打点
-`sendRequest` / `sendNotification` 处记录 method 与参数 keys
- 优先写文件,不依赖 console
3. 在入站 `tool/call/sync` handler 打点
- 记录 `toolCallId``toolCallStatus`、是否包含 `results`
4. 用真实交互触发
- VSCode 内发起会话并触发工具
- 点击 Accept/Reject观察事件闭环
5. 验证闭环
- `tool/call/sync(pending|processing)`
- `tool/call/approve`
- `tool/invokeResult`
- `tool/call/sync(results)`
6. 回滚
- 用备份文件恢复 `dist/extension.js`
- 避免长期携带探针到日常环境
**建议日志位置**
- `~/.lingma/vscode/sharedClientCache/logs/lingma-probe.log`
- `~/.lingma/vscode/sharedClientCache/logs/lingma-extension.log`
**注意**:优先使用 VSCode不混用 Cursor 扩展环境;`pipe` 连接模式下,扩展层探针最稳定。
**`chat/ask` payload 关键字段**

View File

@@ -221,7 +221,8 @@ curl -N http://127.0.0.1:8317/v1/messages \
说明:
- **模型名兼容**:客户端可以继续传 `claude-3-*` 等名字;未识别的 model 会回退到 `DEFAULT_MODEL` 对应的 Lingma key后端实际仍由 Lingma 提供Qwen 系列)。如需显式选模型,直接传 Lingma key`dashscope_qmodel` 等)。
- **会话复用共享**Anthropic 与 OpenAI 两个端点共用同一 `SessionCache`,只要 API key 相同、对话前缀相同,就会命中同一上游 `sessionId`
- **多模态**`image` 块会被降级为 `[image]` 占位符Lingma 不支持 vision`tool_use` / `tool_result` 会以纯文本形式保留语义
- **多模态**`image` 块会被降级为 `[image]` 占位符Lingma 不支持 vision
- **工具事件桥接**:当 Lingma 上游返回 `tool` 事件时,网关会输出为 OpenAI `tool_calls`(含 stream/non-stream和 Anthropic `tool_use`/`tool_result` blocks含 stream/non-stream请求侧 `tools`/`tool_choice``TOOL_FORWARD_ENABLED=true` 时会透传到 Lingma默认关闭
- **鉴权**:优先 `x-api-key`Anthropic 官方 SDK 默认),回退 `Authorization: Bearer`(方便 curl / OpenAI 风格客户端)。
### 3.2 观测(`METRICS_TOKEN` 或 `API_KEYS`

View File

@@ -44,6 +44,7 @@ class Settings:
session_reuse_enabled: bool = True
session_cache_max_entries: int = 256
session_cache_ttl_sec: float = 1800.0
tool_forward_enabled: bool = False
def _bool_env(name: str, default: bool) -> bool:
@@ -175,4 +176,5 @@ def load_settings() -> Settings:
session_reuse_enabled=_bool_env("SESSION_REUSE_ENABLED", True),
session_cache_max_entries=int(os.getenv("SESSION_CACHE_MAX_ENTRIES", "256")),
session_cache_ttl_sec=float(os.getenv("SESSION_CACHE_TTL_SEC", "1800")),
tool_forward_enabled=_bool_env("TOOL_FORWARD_ENABLED", False),
)

View File

@@ -9,7 +9,7 @@ import subprocess
import time
import uuid
from pathlib import Path
from typing import AsyncIterator, Callable, Optional
from typing import Any, AsyncIterator, Callable, Optional
import websockets
@@ -100,9 +100,90 @@ class LspWsRpcClient:
self._reader_task: asyncio.Task | None = None
self._rx_buffer = b""
self._chat_streams: dict[str, dict] = {}
self._tool_stream_map: dict[str, str] = {}
self._tool_roundtrip_done: set[str] = set()
self._on_disconnect = on_disconnect
self._closed = False
@staticmethod
def _extract_tool_event(params: dict[str, Any]) -> dict[str, Any] | None:
candidates: list[dict[str, Any]] = []
def add_candidate(obj: Any) -> None:
if isinstance(obj, dict):
candidates.append(obj)
add_candidate(params.get("toolCall"))
add_candidate(params.get("tool_call"))
add_candidate(params.get("tool"))
data = params.get("data")
if isinstance(data, dict):
add_candidate(data.get("toolCall"))
add_candidate(data.get("tool_call"))
add_candidate(data.get("tool"))
results = params.get("results")
if isinstance(results, list):
for item in results:
add_candidate(item)
if not candidates:
fallback_id = params.get("toolCallId") or params.get("tool_call_id")
if not fallback_id:
return None
return {
"id": str(fallback_id),
"name": str(params.get("name") or "tool"),
"input": params.get("parameters") or {},
"result": params.get("result"),
}
raw = candidates[0]
tool_id = (
raw.get("toolCallId")
or raw.get("tool_call_id")
or raw.get("id")
or params.get("toolCallId")
or params.get("tool_call_id")
)
name = (
raw.get("name")
or raw.get("toolName")
or raw.get("tool_name")
or params.get("name")
)
call_input = raw.get("input")
if call_input is None:
call_input = raw.get("arguments")
if call_input is None:
call_input = raw.get("args")
if call_input is None:
call_input = raw.get("parameters")
if call_input is None:
call_input = params.get("parameters")
result_payload = raw.get("result")
if result_payload is None:
result_payload = params.get("result")
if result_payload is None and isinstance(data, dict):
result_payload = data.get("result")
if result_payload is None and isinstance(raw.get("results"), list):
result_payload = raw.get("results")
if not tool_id:
return None
event: dict[str, Any] = {
"id": str(tool_id),
"name": str(name or "tool"),
"input": call_input if call_input is not None else {},
}
if result_payload is not None:
event["result"] = result_payload
return event
async def start(self):
self._reader_task = asyncio.create_task(self._reader_loop())
@@ -123,6 +204,8 @@ class LspWsRpcClient:
stream["done"].set()
stream["chunks"].put_nowait(None)
self._chat_streams.clear()
self._tool_stream_map.clear()
self._tool_roundtrip_done.clear()
async def _send(self, payload: dict):
async with self._send_lock:
@@ -172,6 +255,141 @@ class LspWsRpcClient:
except Exception:
logger.exception("on_disconnect callback failed")
@staticmethod
def _normalize_tool_id(method: str, params: dict[str, Any], tool_event: dict[str, Any] | None) -> str | None:
event_id = None
if isinstance(tool_event, dict):
event_id = tool_event.get("id")
if isinstance(event_id, str) and event_id.strip():
return event_id.strip()
fallback_id = params.get("toolCallId") or params.get("tool_call_id")
if isinstance(fallback_id, str) and fallback_id.strip():
return fallback_id.strip()
req_id = params.get("requestId")
name = None
if isinstance(tool_event, dict):
name = tool_event.get("name")
if not name:
name = params.get("name")
if isinstance(req_id, str) and req_id.strip() and isinstance(name, str) and name.strip():
return f"{req_id.strip()}:tool:{name.strip()}"
if isinstance(req_id, str) and req_id.strip():
return f"{req_id.strip()}:tool"
return None
@staticmethod
def _merge_tool_event(existing: dict[str, Any] | None, incoming: dict[str, Any]) -> tuple[dict[str, Any], bool]:
merged = dict(existing or {})
changed = False
val = incoming.get("id")
if val and merged.get("id") != val:
merged["id"] = val
changed = True
name = incoming.get("name")
if name:
existing_name = merged.get("name")
if not existing_name:
merged["name"] = name
changed = True
else:
existing_norm = str(existing_name).strip().lower()
incoming_norm = str(name).strip().lower()
if existing_norm == "tool" and incoming_norm != "tool":
merged["name"] = name
changed = True
elif existing_norm != "tool" and incoming_norm == "tool":
pass
elif merged.get("name") != name:
merged["name"] = name
changed = True
if "input" in incoming and incoming.get("input") is not None:
incoming_input = incoming.get("input")
should_update_input = incoming_input != {} or "input" not in merged
if should_update_input and merged.get("input") != incoming_input:
merged["input"] = incoming_input
changed = True
if "result" in incoming and incoming.get("result") is not None:
if merged.get("result") != incoming.get("result"):
merged["result"] = incoming.get("result")
changed = True
return merged, changed
@staticmethod
def _is_tool_roundtrip_method(method: str | None) -> bool:
return method in {"tool/call/sync", "tool/invoke"}
@staticmethod
def _build_tool_approve_params(params: dict[str, Any], tool_id: str) -> dict[str, Any] | None:
req_id = params.get("requestId")
session_id = params.get("sessionId")
if not isinstance(req_id, str) or not req_id.strip():
return None
if not isinstance(session_id, str) or not session_id.strip():
return None
return {
"type": "tool_call",
"sessionId": session_id,
"requestId": req_id,
"toolCallId": tool_id,
"approval": True,
}
@staticmethod
def _build_tool_invoke_result_params(params: dict[str, Any], tool_event: dict[str, Any], tool_id: str) -> dict[str, Any]:
return {
"toolCallId": tool_id,
"name": str(tool_event.get("name") or params.get("name") or "tool"),
"success": True,
"errorMessage": "",
"result": tool_event.get("result") if "result" in tool_event else {},
}
async def _maybe_emit_tool_roundtrip(self, method: str, params: dict[str, Any], tool_event: dict[str, Any]) -> None:
if not self._is_tool_roundtrip_method(method):
return
tool_id = self._normalize_tool_id(method, params, tool_event)
if not tool_id:
return
if tool_id in self._tool_roundtrip_done:
return
approve_params = self._build_tool_approve_params(params, tool_id)
if approve_params is None:
return
self._tool_roundtrip_done.add(tool_id)
await self.notify("tool/call/approve", approve_params)
invoke_result_params = self._build_tool_invoke_result_params(params, tool_event, tool_id)
await self.notify("tool/invokeResult", invoke_result_params)
def _resolve_tool_stream(self, method: str, params: dict[str, Any], tool_event: dict[str, Any] | None) -> dict | None:
req_id = params.get("requestId")
if isinstance(req_id, str) and req_id.strip():
stream = self._chat_streams.get(req_id)
if stream is not None and tool_event is not None:
tool_id = self._normalize_tool_id(method, params, tool_event)
if tool_id:
self._tool_stream_map[tool_id] = req_id
return stream
if tool_event is not None:
tool_id = self._normalize_tool_id(method, params, tool_event)
if tool_id:
mapped_req = self._tool_stream_map.get(tool_id)
if mapped_req:
return self._chat_streams.get(mapped_req)
return None
async def _handle_server_message(self, msg: dict):
method = msg.get("method")
params = msg.get("params") or {}
@@ -185,7 +403,34 @@ class LspWsRpcClient:
stream["parts"].append(text)
if stream["first_chunk_at"] is None:
stream["first_chunk_at"] = time.monotonic()
stream["chunks"].put_nowait(text)
stream["chunks"].put_nowait({"type": "text", "text": text})
if method in {"tool/call/sync", "tool/invoke", "tool/call/approve", "tool/invokeResult"}:
tool_event = self._extract_tool_event(params)
stream = self._resolve_tool_stream(method, params, tool_event)
if stream is not None and tool_event is not None:
tool_id = self._normalize_tool_id(method, params, tool_event)
if not tool_id:
logger.warning("drop unroutable tool event: method=%s missing tool id", method)
else:
await self._maybe_emit_tool_roundtrip(method, params, tool_event)
tool_states = stream["tool_states"]
order = stream["tool_order"]
existing = tool_states.get(tool_id)
merged, changed = self._merge_tool_event(existing, tool_event)
if not existing:
if "id" not in merged or not merged.get("id"):
merged["id"] = tool_id
tool_states[tool_id] = merged
order.append(tool_id)
stream["chunks"].put_nowait({"type": "tool", "tool": merged})
elif changed:
tool_states[tool_id] = merged
stream["chunks"].put_nowait({"type": "tool", "tool": merged})
elif tool_event is not None:
logger.warning("drop unroutable tool event: method=%s requestId=%s", method, params.get("requestId"))
if method == "chat/finish":
req_id = params.get("requestId")
@@ -224,6 +469,8 @@ class LspWsRpcClient:
"chunks": asyncio.Queue(),
"done": asyncio.Event(),
"finish": None,
"tool_states": {},
"tool_order": [],
"started_at": time.monotonic(),
"first_chunk_at": None,
"finish_at": None,
@@ -233,13 +480,17 @@ class LspWsRpcClient:
stream = self._chat_streams.pop(request_id, None)
if stream is None:
return
for tool_id, mapped_req in list(self._tool_stream_map.items()):
if mapped_req == request_id:
self._tool_stream_map.pop(tool_id, None)
self._tool_roundtrip_done.discard(tool_id)
# Drain queue so no stray future gets stuck if the consumer bailed early.
if not stream["done"].is_set():
stream["done"].set()
with contextlib.suppress(Exception):
stream["chunks"].put_nowait(None)
async def consume_stream(self, request_id: str, timeout: float) -> AsyncIterator[str]:
async def consume_stream(self, request_id: str, timeout: float) -> AsyncIterator[dict[str, Any]]:
stream = self._chat_streams.get(request_id)
if stream is None:
return
@@ -261,11 +512,20 @@ class LspWsRpcClient:
first_ms = int((stream["first_chunk_at"] - stream["started_at"]) * 1000)
if stream.get("finish_at") is not None:
total_ms = int((stream["finish_at"] - stream["started_at"]) * 1000)
ordered_tool_events: list[dict[str, Any]] = []
tool_states = stream.get("tool_states") or {}
for tool_id in stream.get("tool_order") or []:
event = tool_states.get(tool_id)
if isinstance(event, dict):
ordered_tool_events.append(event)
return {
"text": "".join(stream.get("parts") or []),
"finish": stream.get("finish") or {},
"firstTokenLatencyMs": first_ms,
"totalLatencyMs": total_ms,
"toolEvents": ordered_tool_events,
}
@@ -634,13 +894,14 @@ class LingmaGatewayClient:
request_id: str,
*,
is_reply: bool = False,
tool_config: dict[str, Any] | None = None,
):
session_type = "developer" if ask_mode == "agent" else "chat"
return {
session_type = "ask" if ask_mode == "agent" else "chat"
payload = {
"requestId": request_id,
"sessionId": session_id,
"sessionType": session_type,
"chatTask": "FREE_INPUT",
"chatTask": "chat" if ask_mode == "agent" else "FREE_INPUT",
"mode": ask_mode,
"stream": True,
"source": 1,
@@ -665,6 +926,9 @@ class LingmaGatewayClient:
"localeLang": "zh-CN",
},
}
if tool_config is not None:
payload["toolConfig"] = tool_config
return payload
async def _kick_chat_ask(self, payload: dict) -> None:
"""Fire chat/ask as a notification.
@@ -685,12 +949,19 @@ class LingmaGatewayClient:
*,
session_id: str | None = None,
is_reply: bool = False,
tool_config: dict[str, Any] | None = None,
) -> dict:
await self.ensure_ready()
request_id = str(uuid.uuid4())
sid = session_id or str(uuid.uuid4())
payload = self._build_payload(
prompt, model_key, ask_mode, sid, request_id, is_reply=is_reply
prompt,
model_key,
ask_mode,
sid,
request_id,
is_reply=is_reply,
tool_config=tool_config,
)
self.rpc.create_stream(request_id)
try:
@@ -721,9 +992,14 @@ class LingmaGatewayClient:
*,
session_id: str | None = None,
is_reply: bool = False,
tool_config: dict[str, Any] | None = None,
out_meta: dict | None = None,
) -> AsyncIterator[str]:
"""Stream `chat/answer` chunks.
) -> AsyncIterator[dict[str, Any]]:
"""Stream chat events.
Yields structured events:
* {"type": "text", "text": "..."}
* {"type": "tool", "tool": {...}}
If `out_meta` is provided, the final `chat/finish` payload's sessionId
(and the raw finish dict) is written into it when the stream ends or is
@@ -734,15 +1010,21 @@ class LingmaGatewayClient:
request_id = str(uuid.uuid4())
sid = session_id or str(uuid.uuid4())
payload = self._build_payload(
prompt, model_key, ask_mode, sid, request_id, is_reply=is_reply
prompt,
model_key,
ask_mode,
sid,
request_id,
is_reply=is_reply,
tool_config=tool_config,
)
self.rpc.create_stream(request_id)
try:
await self._kick_chat_ask(payload)
async for chunk in self.rpc.consume_stream(
async for event in self.rpc.consume_stream(
request_id, timeout=max(60.0, self.rpc_timeout + 60.0)
):
yield chunk
yield event
finally:
# Runs on normal completion, exception, or consumer GeneratorExit (client disconnect).
if out_meta is not None:
@@ -753,6 +1035,7 @@ class LingmaGatewayClient:
out_meta["finish"] = finish
out_meta["request_id"] = request_id
out_meta["chars"] = len(stream_result.get("text") or "")
out_meta["tool_events"] = stream_result.get("toolEvents") or []
except Exception:
pass
self.rpc.pop_stream(request_id)

View File

@@ -6,6 +6,7 @@ import json
import time
import uuid
from contextlib import asynccontextmanager
from typing import Any
from fastapi import Depends, FastAPI, HTTPException, Request
from fastapi.responses import JSONResponse, StreamingResponse
@@ -350,6 +351,233 @@ def _include_usage(stream_options: dict | None) -> bool:
return bool(stream_options.get("include_usage"))
def _openai_tool_config(req: ChatCompletionsRequest) -> dict[str, Any] | None:
if not settings.tool_forward_enabled:
return None
has_tools = isinstance(req.tools, list) and len(req.tools) > 0
has_choice = req.tool_choice is not None
if not has_tools and not has_choice:
return None
return {
"provider": "openai",
"tools": req.tools or [],
"tool_choice": req.tool_choice,
}
def _anthropic_tool_config(req: AnthropicMessagesRequest) -> dict[str, Any] | None:
if not settings.tool_forward_enabled:
return None
has_tools = isinstance(req.tools, list) and len(req.tools) > 0
has_choice = req.tool_choice is not None
if not has_tools and not has_choice:
return None
return {
"provider": "anthropic",
"tools": req.tools or [],
"tool_choice": req.tool_choice,
}
def _openai_has_tooling_context(req: ChatCompletionsRequest, messages: list[dict[str, Any]]) -> bool:
if isinstance(req.tools, list) and len(req.tools) > 0:
return True
if req.tool_choice is not None:
return True
for m in messages:
role = m.get("role")
if role == "tool":
return True
if role == "assistant" and m.get("tool_calls"):
return True
return False
def _anthropic_content_has_tool_blocks(content: Any) -> bool:
if not isinstance(content, list):
return False
for item in content:
if isinstance(item, dict) and item.get("type") in {"tool_use", "tool_result"}:
return True
return False
def _anthropic_has_tooling_context(req: AnthropicMessagesRequest) -> bool:
if isinstance(req.tools, list) and len(req.tools) > 0:
return True
if req.tool_choice is not None:
return True
if _anthropic_content_has_tool_blocks(req.system):
return True
for m in req.messages:
if _anthropic_content_has_tool_blocks(m.content):
return True
return False
def _stream_event_type(event: Any) -> str:
if isinstance(event, dict):
t = event.get("type")
if t in {"text", "tool"}:
return t
return "text"
def _stream_text(event: Any) -> str:
if isinstance(event, dict):
if event.get("type") == "text":
text = event.get("text")
if isinstance(text, str):
return text
return ""
if isinstance(event, str):
return event
return ""
def _stream_tool_event(event: Any) -> dict[str, Any] | None:
if isinstance(event, dict) and event.get("type") == "tool":
tool = event.get("tool")
if isinstance(tool, dict):
return tool
return None
def _json_string(value: Any) -> str:
if isinstance(value, str):
return value
try:
return json.dumps(value if value is not None else {}, ensure_ascii=False)
except Exception:
return "{}"
def _openai_forced_tool_name(tool_choice: Any) -> str | None:
if not isinstance(tool_choice, dict):
return None
fn = tool_choice.get("function")
if isinstance(fn, dict):
name = fn.get("name")
if isinstance(name, str) and name.strip():
return name.strip()
return None
def _anthropic_forced_tool_name(tool_choice: Any) -> str | None:
if not isinstance(tool_choice, dict):
return None
if tool_choice.get("type") == "tool":
name = tool_choice.get("name")
if isinstance(name, str) and name.strip():
return name.strip()
fn = tool_choice.get("function")
if isinstance(fn, dict):
name = fn.get("name")
if isinstance(name, str) and name.strip():
return name.strip()
return None
def _json_object_from_text(text: str) -> dict[str, Any] | None:
raw = text.strip()
if not raw:
return None
if raw.startswith("```") and raw.endswith("```"):
raw = raw[3:-3].strip()
if raw.lower().startswith("json"):
raw = raw[4:].strip()
try:
parsed = json.loads(raw)
except Exception:
return None
return parsed if isinstance(parsed, dict) else None
def _forced_tool_event_from_text(text: str, forced_tool_name: str) -> dict[str, Any] | None:
parsed = _json_object_from_text(text)
if parsed is None:
return None
explicit_name: Any = parsed.get("name") or parsed.get("tool")
fn = parsed.get("function")
if explicit_name is None and isinstance(fn, dict):
explicit_name = fn.get("name")
if explicit_name is not None and str(explicit_name) != forced_tool_name:
return None
tool_input: Any = None
if "input" in parsed:
tool_input = parsed.get("input")
elif "arguments" in parsed:
args = parsed.get("arguments")
if isinstance(args, str):
try:
tool_input = json.loads(args)
except Exception:
return None
else:
tool_input = args
elif isinstance(fn, dict) and "arguments" in fn:
args = fn.get("arguments")
if isinstance(args, str):
try:
tool_input = json.loads(args)
except Exception:
return None
else:
tool_input = args
else:
reserved = {"name", "tool", "function", "arguments", "input", "result"}
tool_input = {k: v for k, v in parsed.items() if k not in reserved}
event: dict[str, Any] = {
"name": forced_tool_name,
"input": tool_input if tool_input is not None else {},
}
if "result" in parsed:
event["result"] = parsed.get("result")
return event
def _openai_tool_call(tool: dict[str, Any], *, forced_id: str | None = None) -> dict[str, Any]:
return {
"id": str(tool.get("id") or forced_id or f"call_{uuid.uuid4().hex}"),
"type": "function",
"function": {
"name": str(tool.get("name") or "tool"),
"arguments": _json_string(tool.get("input")),
},
}
def _anthropic_tool_use_block(
tool: dict[str, Any], *, forced_id: str | None = None
) -> dict[str, Any]:
return {
"type": "tool_use",
"id": str(tool.get("id") or forced_id or f"toolu_{uuid.uuid4().hex}"),
"name": str(tool.get("name") or "tool"),
"input": tool.get("input") if tool.get("input") is not None else {},
}
def _anthropic_tool_result_block(
tool: dict[str, Any], *, forced_id: str | None = None
) -> dict[str, Any] | None:
if "result" not in tool:
return None
result = tool.get("result")
if isinstance(result, str):
content: Any = result
else:
content = _json_string(result)
return {
"type": "tool_result",
"tool_use_id": str(tool.get("id") or forced_id or ""),
"content": content,
}
@app.post("/v1/chat/completions", dependencies=[Depends(auth_guard)])
async def v1_chat_completions(req: ChatCompletionsRequest, request: Request):
p = _require_pool()
@@ -363,22 +591,26 @@ async def v1_chat_completions(req: ChatCompletionsRequest, request: Request):
# 1. Reuse the upstream sessionId so Lingma/Qwen hits its KV cache.
# 2. Send only the new user message instead of the whole history.
# 3. Stick the request to the pool instance that originally served it.
tool_config = _openai_tool_config(req)
has_tooling_context = _openai_has_tooling_context(req, messages_dump)
ask_mode = settings.default_ask_mode
if req.model.lower() in {"lingma-agent", "agent"}:
if req.model.lower() in {"lingma-agent", "agent"} or has_tooling_context:
ask_mode = "agent"
reuse_eligible = (
session_cache.enabled
and ask_mode == "chat"
and len(messages_dump) >= 2
and not has_tooling_context
)
lookup_key: str | None = None
write_key: str | None = None
cached_session_id: str | None = None
cached_instance_name: str | None = None
if reuse_eligible:
lookup_key = session_cache.build_key(api_key, messages_dump[:-1])
write_key = session_cache.build_key(api_key, messages_dump)
lookup_key = session_cache.build_key(api_key, messages_dump[:-1], tool_config=tool_config)
write_key = session_cache.build_key(api_key, messages_dump, tool_config=tool_config)
entry = await session_cache.get(lookup_key)
if entry is not None:
cached_session_id = entry.session_id
@@ -476,6 +708,8 @@ async def v1_chat_completions(req: ChatCompletionsRequest, request: Request):
async def event_stream(_ticket=ticket, _inst=inst, _meta=stream_meta):
success = False
tool_call_indexes: dict[str, int] = {}
saw_tool_call = False
try:
async for chunk in _inst.client.chat_stream(
prompt,
@@ -483,9 +717,48 @@ async def v1_chat_completions(req: ChatCompletionsRequest, request: Request):
ask_mode,
session_id=cached_session_id,
is_reply=is_reply,
tool_config=tool_config,
out_meta=_meta,
):
completion_tokens_holder["n"] += estimate_tokens(chunk)
if _stream_event_type(chunk) == "tool":
tool = _stream_tool_event(chunk)
if not tool:
continue
tool_id = str(tool.get("id") or "")
if not tool_id:
tool_id = f"call_{len(tool_call_indexes)}"
idx = tool_call_indexes.get(tool_id)
if idx is None:
idx = len(tool_call_indexes)
tool_call_indexes[tool_id] = idx
saw_tool_call = True
payload = {
"id": completion_id,
"object": "chat.completion.chunk",
"created": created,
"model": model,
"choices": [
{
"index": 0,
"delta": {
"tool_calls": [
{
"index": idx,
**_openai_tool_call(tool, forced_id=tool_id),
}
]
},
"finish_reason": None,
}
],
}
yield f"data: {json.dumps(payload, ensure_ascii=False)}\n\n"
continue
text = _stream_text(chunk)
if not text:
continue
completion_tokens_holder["n"] += estimate_tokens(text)
payload = {
"id": completion_id,
"object": "chat.completion.chunk",
@@ -494,7 +767,7 @@ async def v1_chat_completions(req: ChatCompletionsRequest, request: Request):
"choices": [
{
"index": 0,
"delta": {"content": chunk},
"delta": {"content": text},
"finish_reason": None,
}
],
@@ -506,10 +779,17 @@ async def v1_chat_completions(req: ChatCompletionsRequest, request: Request):
"object": "chat.completion.chunk",
"created": created,
"model": model,
"choices": [{"index": 0, "delta": {}, "finish_reason": "stop"}],
"choices": [
{
"index": 0,
"delta": {},
"finish_reason": "tool_calls" if saw_tool_call else "stop",
}
],
}
yield f"data: {json.dumps(done_payload, ensure_ascii=False)}\n\n"
if include_usage:
usage_payload = {
"id": completion_id,
@@ -567,6 +847,7 @@ async def v1_chat_completions(req: ChatCompletionsRequest, request: Request):
ask_mode,
session_id=cached_session_id,
is_reply=is_reply,
tool_config=tool_config,
)
except Exception as exc:
logger.warning("chat.complete error (inst=%s): %s", inst.name, exc)
@@ -596,6 +877,24 @@ async def v1_chat_completions(req: ChatCompletionsRequest, request: Request):
sid = result.get("sessionId")
if sid:
await session_cache.put(write_key, sid, inst.name)
tool_events = result.get("toolEvents") or []
message_content = result.get("text") or ""
tool_calls: list[dict[str, Any]] = []
saw_tool_call = False
if isinstance(tool_events, list):
for idx, item in enumerate(tool_events):
if isinstance(item, dict):
tool_id = str(item.get("id") or f"call_{idx}")
tool_calls.append(_openai_tool_call(item, forced_id=tool_id))
saw_tool_call = True
if not saw_tool_call:
forced_tool_name = _openai_forced_tool_name(req.tool_choice)
if forced_tool_name:
fallback_event = _forced_tool_event_from_text(message_content, forced_tool_name)
if fallback_event is not None:
tool_calls.append(_openai_tool_call(fallback_event, forced_id="call_fallback_0"))
saw_tool_call = True
message_content = ""
response = ChatCompletionResponse(
id=f"chatcmpl-{uuid.uuid4().hex}",
created=int(time.time()),
@@ -603,11 +902,17 @@ async def v1_chat_completions(req: ChatCompletionsRequest, request: Request):
choices=[
ChatCompletionChoice(
index=0,
finish_reason="stop",
message={"role": "assistant", "content": result.get("text") or ""},
finish_reason="tool_calls" if saw_tool_call else "stop",
message={
"role": "assistant",
"content": message_content,
"tool_calls": tool_calls or None,
},
)
],
)
data = response.model_dump()
data["latency"] = {
"first_token_ms": result.get("firstTokenLatencyMs"),
@@ -634,13 +939,15 @@ def _anthropic_error(status_code: int, error_type: str, message: str) -> JSONRes
)
def _anthropic_stop_reason(completion_tokens: int, max_tokens: int) -> str:
"""Approximate Anthropic `stop_reason`.
Lingma doesn't expose a `max_tokens` knob, so we can't truly enforce it;
we report `max_tokens` only when the generated length meets or exceeds
the caller's stated ceiling. Everything else is `end_turn`.
"""
def _anthropic_stop_reason(
completion_tokens: int,
max_tokens: int,
*,
has_pending_tool_use: bool = False,
) -> str:
"""Approximate Anthropic `stop_reason`."""
if has_pending_tool_use:
return "tool_use"
if max_tokens and completion_tokens >= max_tokens:
return "max_tokens"
return "end_turn"
@@ -700,19 +1007,23 @@ async def v1_messages(req: AnthropicMessagesRequest, request: Request):
)
# ------------------------------------------------------------- session reuse
# Anthropic clients don't expose an ask_mode, so we always run in "chat".
ask_mode = "chat"
tool_config = _anthropic_tool_config(req)
has_tooling_context = _anthropic_has_tooling_context(req)
ask_mode = settings.default_ask_mode
if req.model.lower() in {"lingma-agent", "agent"} or has_tooling_context:
ask_mode = "agent"
reuse_eligible = (
session_cache.enabled and ask_mode == "chat" and len(messages_dump) >= 2
session_cache.enabled and ask_mode == "chat" and len(messages_dump) >= 2 and not has_tooling_context
)
lookup_key: str | None = None
write_key: str | None = None
cached_session_id: str | None = None
cached_instance_name: str | None = None
if reuse_eligible:
lookup_key = session_cache.build_key(api_key, messages_dump[:-1])
write_key = session_cache.build_key(api_key, messages_dump)
lookup_key = session_cache.build_key(api_key, messages_dump[:-1], tool_config=tool_config)
write_key = session_cache.build_key(api_key, messages_dump, tool_config=tool_config)
entry = await session_cache.get(lookup_key)
if entry is not None:
cached_session_id = entry.session_id
@@ -760,7 +1071,6 @@ async def v1_messages(req: AnthropicMessagesRequest, request: Request):
return _anthropic_error(400, "invalid_request_error", "messages is empty")
prompt_tokens = estimate_tokens(prompt)
# ------------------------------------------------------------- backpressure
try:
ticket = await chat_guard.try_acquire()
@@ -810,6 +1120,9 @@ async def v1_messages(req: AnthropicMessagesRequest, request: Request):
async def event_stream(_ticket=ticket, _inst=inst, _meta=stream_meta):
success = False
block_index = 0
text_block_open = False
saw_pending_tool_use = False
try:
# 1) message_start — Anthropic SDKs read this first to get
# the message envelope (id/model/initial usage).
@@ -833,47 +1146,99 @@ async def v1_messages(req: AnthropicMessagesRequest, request: Request):
}
yield _sse("message_start", start_payload)
# 2) content_block_start for a single text block (index 0).
yield _sse(
"content_block_start",
{
"type": "content_block_start",
"index": 0,
"content_block": {"type": "text", "text": ""},
},
)
# 3) content_block_delta stream of text tokens.
async for chunk in _inst.client.chat_stream(
prompt,
model,
ask_mode,
session_id=cached_session_id,
is_reply=is_reply,
tool_config=tool_config,
out_meta=_meta,
):
if not chunk:
if _stream_event_type(chunk) == "tool":
if text_block_open:
yield _sse(
"content_block_stop",
{"type": "content_block_stop", "index": block_index},
)
block_index += 1
text_block_open = False
tool = _stream_tool_event(chunk)
if not tool:
continue
tool_id = str(tool.get("id") or f"toolu_stream_{block_index}")
tool_use_block = _anthropic_tool_use_block(tool, forced_id=tool_id)
yield _sse(
"content_block_start",
{
"type": "content_block_start",
"index": block_index,
"content_block": tool_use_block,
},
)
yield _sse(
"content_block_stop",
{"type": "content_block_stop", "index": block_index},
)
block_index += 1
tool_result_block = _anthropic_tool_result_block(tool, forced_id=tool_id)
if tool_result_block is not None:
yield _sse(
"content_block_start",
{
"type": "content_block_start",
"index": block_index,
"content_block": tool_result_block,
},
)
yield _sse(
"content_block_stop",
{"type": "content_block_stop", "index": block_index},
)
block_index += 1
else:
saw_pending_tool_use = True
continue
completion_tokens_holder["n"] += estimate_tokens(chunk)
text = _stream_text(chunk)
if not text:
continue
completion_tokens_holder["n"] += estimate_tokens(text)
if not text_block_open:
yield _sse(
"content_block_start",
{
"type": "content_block_start",
"index": block_index,
"content_block": {"type": "text", "text": ""},
},
)
text_block_open = True
yield _sse(
"content_block_delta",
{
"type": "content_block_delta",
"index": 0,
"delta": {"type": "text_delta", "text": chunk},
"index": block_index,
"delta": {"type": "text_delta", "text": text},
},
)
# 4) content_block_stop closes the single text block.
yield _sse(
"content_block_stop",
{"type": "content_block_stop", "index": 0},
)
if text_block_open:
yield _sse(
"content_block_stop",
{"type": "content_block_stop", "index": block_index},
)
# 5) message_delta carries the terminal stop_reason and
# the final cumulative output_tokens count.
stop_reason = _anthropic_stop_reason(
completion_tokens_holder["n"], max_tokens
completion_tokens_holder["n"],
max_tokens,
has_pending_tool_use=saw_pending_tool_use,
)
yield _sse(
"message_delta",
@@ -887,6 +1252,7 @@ async def v1_messages(req: AnthropicMessagesRequest, request: Request):
},
)
# 6) message_stop — terminal event, no [DONE] sentinel.
yield _sse("message_stop", {"type": "message_stop"})
success = True
@@ -946,6 +1312,7 @@ async def v1_messages(req: AnthropicMessagesRequest, request: Request):
ask_mode,
session_id=cached_session_id,
is_reply=is_reply,
tool_config=tool_config,
)
except Exception as exc:
logger.warning("anthropic.complete error (inst=%s): %s", inst.name, exc)
@@ -972,13 +1339,50 @@ async def v1_messages(req: AnthropicMessagesRequest, request: Request):
if sid:
await session_cache.put(write_key, sid, inst.name)
content_blocks: list[dict[str, Any]] = []
if text:
content_blocks.append({"type": "text", "text": text})
tool_events = result.get("toolEvents") or []
saw_pending_tool_use = False
saw_tool_event = False
if isinstance(tool_events, list):
for idx, item in enumerate(tool_events):
if not isinstance(item, dict):
continue
saw_tool_event = True
tool_id = str(item.get("id") or f"toolu_nonstream_{idx}")
content_blocks.append(_anthropic_tool_use_block(item, forced_id=tool_id))
tool_result = _anthropic_tool_result_block(item, forced_id=tool_id)
if tool_result is not None:
content_blocks.append(tool_result)
else:
saw_pending_tool_use = True
if not saw_tool_event:
forced_tool_name = _anthropic_forced_tool_name(req.tool_choice)
if forced_tool_name:
fallback_event = _forced_tool_event_from_text(text, forced_tool_name)
if fallback_event is not None:
content_blocks = []
tool_id = "toolu_fallback_0"
content_blocks.append(_anthropic_tool_use_block(fallback_event, forced_id=tool_id))
tool_result = _anthropic_tool_result_block(fallback_event, forced_id=tool_id)
saw_pending_tool_use = tool_result is None
if tool_result is not None:
content_blocks.append(tool_result)
response_body: dict = {
"id": message_id,
"type": "message",
"role": "assistant",
"model": model,
"content": [{"type": "text", "text": text}],
"stop_reason": _anthropic_stop_reason(completion_tokens, req.max_tokens),
"content": content_blocks,
"stop_reason": _anthropic_stop_reason(
completion_tokens,
req.max_tokens,
has_pending_tool_use=saw_pending_tool_use,
),
"stop_sequence": None,
"usage": {
"input_tokens": prompt_tokens,

View File

@@ -2,6 +2,7 @@ from __future__ import annotations
import asyncio
import hashlib
import json
import time
from collections import OrderedDict
from dataclasses import dataclass
@@ -42,6 +43,16 @@ def hash_user_context(messages: list[dict]) -> str:
return h.hexdigest()
def _tool_fingerprint(tool_config: dict | None) -> str:
if not isinstance(tool_config, dict):
return "-"
try:
canonical = json.dumps(tool_config, ensure_ascii=False, sort_keys=True, separators=(",", ":"))
except Exception:
canonical = str(tool_config)
return hashlib.sha1(canonical.encode("utf-8")).hexdigest()[:16]
class SessionCache:
"""LRU + TTL cache: conversation-prefix hash -> upstream Lingma sessionId.
@@ -79,11 +90,11 @@ class SessionCache:
def enabled(self) -> bool:
return self.max > 0
def build_key(self, api_key: str, messages: list[dict]) -> str:
def build_key(self, api_key: str, messages: list[dict], *, tool_config: dict | None = None) -> str:
# API key scoping prevents cross-tenant session leakage even when
# different clients happen to produce identical histories.
key_scope = hashlib.sha1((api_key or "-").encode("utf-8")).hexdigest()[:12]
return f"{key_scope}:{hash_user_context(messages)}"
return f"{key_scope}:{hash_user_context(messages)}:{_tool_fingerprint(tool_config)}"
async def get(self, key: str) -> SessionEntry | None:
if not self.enabled:

View File

@@ -0,0 +1,981 @@
from __future__ import annotations
import json
import sys
import types
import unittest
from unittest.mock import AsyncMock, patch
class _FakeSessionCache:
def __init__(self) -> None:
self.enabled = True
self.keys: list[str] = []
self.get_calls: list[str] = []
self.put_calls: list[tuple[str, str, str]] = []
self.invalidate_calls: list[str] = []
def build_key(self, api_key: str, messages: list[dict], *, tool_config=None) -> str:
marker = "with_tool" if tool_config is not None else "no_tool"
key = f"{api_key}:{len(messages)}:{marker}"
self.keys.append(key)
return key
async def get(self, key: str):
self.get_calls.append(key)
return None
async def put(self, key: str, session_id: str, instance_name: str = "") -> None:
self.put_calls.append((key, session_id, instance_name))
async def invalidate(self, key: str) -> None:
self.invalidate_calls.append(key)
# app.main imports playwright via auto_login; tests don't exercise that path.
# Inject a lightweight stub so unit tests run without installing playwright.
_playwright = types.ModuleType("playwright")
_playwright_async = types.ModuleType("playwright.async_api")
class _StubPlaywrightTimeoutError(Exception):
pass
async def _stub_async_playwright():
raise RuntimeError("playwright is stubbed in unit tests")
_playwright_async.TimeoutError = _StubPlaywrightTimeoutError
_playwright_async.async_playwright = _stub_async_playwright
sys.modules.setdefault("playwright", _playwright)
sys.modules.setdefault("playwright.async_api", _playwright_async)
from starlette.requests import Request
from app.anthropic_schema import AnthropicMessagesRequest
from app.openai_schema import ChatCompletionsRequest
import app.main as main
class _FakeTicket:
def __init__(self) -> None:
self.released = False
def release(self) -> None:
self.released = True
class _FakeGuard:
def __init__(self) -> None:
self.in_flight = 0
async def try_acquire(self) -> _FakeTicket:
return _FakeTicket()
class _FakeClient:
def __init__(self, *, stream_events: list[dict], complete_result: dict) -> None:
self._stream_events = stream_events
self._complete_result = complete_result
async def query_models(self) -> dict:
return {
"chat": [
{
"key": "org_auto",
"displayName": "Auto",
}
]
}
async def chat_complete(self, *args, **kwargs) -> dict:
return self._complete_result
async def chat_stream(self, *args, **kwargs):
out_meta = kwargs.get("out_meta")
if isinstance(out_meta, dict):
out_meta["session_id"] = "sess-stream"
for event in self._stream_events:
yield event
class _FakeInstance:
def __init__(self, client: _FakeClient) -> None:
self.name = "inst-test"
self.client = client
self.in_flight = 0
class _FakePool:
def __init__(self, inst: _FakeInstance) -> None:
self._inst = inst
def pick(self, affinity_key: str | None = None) -> _FakeInstance:
return self._inst
def _make_request(path: str, headers: dict[str, str] | None = None) -> Request:
header_pairs = []
for k, v in (headers or {}).items():
header_pairs.append((k.lower().encode("latin-1"), v.encode("latin-1")))
scope = {
"type": "http",
"http_version": "1.1",
"method": "POST",
"scheme": "http",
"path": path,
"raw_path": path.encode("latin-1"),
"query_string": b"",
"headers": header_pairs,
"client": ("testclient", 12345),
"server": ("testserver", 80),
"root_path": "",
}
return Request(scope)
async def _collect_stream(response) -> str:
chunks: list[str] = []
async for part in response.body_iterator:
if isinstance(part, bytes):
chunks.append(part.decode("utf-8"))
else:
chunks.append(str(part))
return "".join(chunks)
class _SpyClient(_FakeClient):
def __init__(self, *, stream_events: list[dict], complete_result: dict) -> None:
super().__init__(stream_events=stream_events, complete_result=complete_result)
self.last_complete_args: tuple = ()
self.last_stream_args: tuple = ()
self.last_complete_kwargs: dict = {}
self.last_stream_kwargs: dict = {}
async def chat_complete(self, *args, **kwargs) -> dict:
self.last_complete_args = tuple(args)
self.last_complete_kwargs = dict(kwargs)
return await super().chat_complete(*args, **kwargs)
async def chat_stream(self, *args, **kwargs):
self.last_stream_args = tuple(args)
self.last_stream_kwargs = dict(kwargs)
async for event in super().chat_stream(*args, **kwargs):
yield event
class _SettingsPatch:
def __init__(self, **kwargs) -> None:
self._kwargs = kwargs
def __enter__(self):
self._patchers = [patch.object(main.settings, k, v) for k, v in self._kwargs.items()]
for p in self._patchers:
p.start()
return self
def __exit__(self, exc_type, exc_val, exc_tb):
for p in reversed(self._patchers):
p.stop()
return False
class ToolCallBridgeTests(unittest.IsolatedAsyncioTestCase):
async def test_openai_non_stream_bridges_tool_calls(self) -> None:
fake_client = _FakeClient(
stream_events=[],
complete_result={
"text": "done",
"toolEvents": [
{
"id": "call_123",
"name": "search_docs",
"input": {"query": "gateway"},
"result": {"ok": True},
}
],
"sessionId": "sess-1",
"firstTokenLatencyMs": 12,
"totalLatencyMs": 34,
},
)
req = ChatCompletionsRequest(
model="org_auto",
messages=[{"role": "user", "content": "hi"}],
stream=False,
)
with (
patch.object(main, "pool", _FakePool(_FakeInstance(fake_client))),
patch.object(main, "chat_guard", _FakeGuard()),
patch.object(main, "_ensure_instance_logged_in", AsyncMock(return_value={"id": "u"})),
patch.object(main.stats_collector, "record_chat", AsyncMock(return_value=None)),
):
response = await main.v1_chat_completions(req, _make_request("/v1/chat/completions"))
payload = json.loads(response.body)
message = payload["choices"][0]["message"]
self.assertEqual(message["content"], "done")
self.assertIsInstance(message["tool_calls"], list)
self.assertEqual(payload["choices"][0]["finish_reason"], "tool_calls")
self.assertEqual(message["tool_calls"][0]["function"]["name"], "search_docs")
self.assertEqual(
json.loads(message["tool_calls"][0]["function"]["arguments"]),
{"query": "gateway"},
)
async def test_openai_non_stream_fallbacks_to_structured_tool_call_for_forced_tool(self) -> None:
fake_client = _FakeClient(
stream_events=[],
complete_result={
"text": "```json\n{\"arguments\": {\"query\": \"gateway\"}}\n```",
"toolEvents": [],
"sessionId": "sess-fallback-openai",
},
)
req = ChatCompletionsRequest(
model="org_auto",
messages=[{"role": "user", "content": "hi"}],
stream=False,
tools=[{"type": "function", "function": {"name": "lookup", "parameters": {}}}],
tool_choice={"type": "function", "function": {"name": "lookup"}},
)
with (
patch.object(main, "pool", _FakePool(_FakeInstance(fake_client))),
patch.object(main, "chat_guard", _FakeGuard()),
patch.object(main, "_ensure_instance_logged_in", AsyncMock(return_value={"id": "u"})),
patch.object(main.stats_collector, "record_chat", AsyncMock(return_value=None)),
):
response = await main.v1_chat_completions(req, _make_request("/v1/chat/completions"))
payload = json.loads(response.body)
message = payload["choices"][0]["message"]
self.assertEqual(payload["choices"][0]["finish_reason"], "tool_calls")
self.assertEqual(message["content"], "")
self.assertIsInstance(message["tool_calls"], list)
self.assertEqual(message["tool_calls"][0]["function"]["name"], "lookup")
self.assertEqual(
json.loads(message["tool_calls"][0]["function"]["arguments"]),
{"query": "gateway"},
)
async def test_openai_stream_bridges_tool_and_text_events(self) -> None:
fake_client = _FakeClient(
stream_events=[
{
"type": "tool",
"tool": {
"id": "call_stream_1",
"name": "read_file",
"input": {"path": "README.md"},
},
},
{"type": "text", "text": "hello"},
],
complete_result={},
)
req = ChatCompletionsRequest(
model="org_auto",
messages=[{"role": "user", "content": "hi"}],
stream=True,
stream_options={"include_usage": True},
)
with (
patch.object(main, "pool", _FakePool(_FakeInstance(fake_client))),
patch.object(main, "chat_guard", _FakeGuard()),
patch.object(main, "_ensure_instance_logged_in", AsyncMock(return_value={"id": "u"})),
patch.object(main.stats_collector, "record_chat", AsyncMock(return_value=None)),
):
response = await main.v1_chat_completions(req, _make_request("/v1/chat/completions"))
body = await _collect_stream(response)
self.assertIn('"tool_calls"', body)
self.assertIn('"content": "hello"', body)
self.assertIn('"finish_reason": "tool_calls"', body)
self.assertIn('"usage"', body)
self.assertIn("data: [DONE]", body)
async def test_anthropic_non_stream_bridges_tool_blocks(self) -> None:
fake_client = _FakeClient(
stream_events=[],
complete_result={
"text": "ok",
"toolEvents": [
{
"id": "toolu_1",
"name": "lookup",
"input": {"k": "v"},
"result": {"value": 1},
}
],
"sessionId": "sess-2",
},
)
req = AnthropicMessagesRequest(
model="claude-3-5-sonnet-20241022",
max_tokens=256,
messages=[{"role": "user", "content": "hi"}],
stream=False,
)
with (
patch.object(main, "pool", _FakePool(_FakeInstance(fake_client))),
patch.object(main, "chat_guard", _FakeGuard()),
patch.object(main, "_ensure_instance_logged_in", AsyncMock(return_value={"id": "u"})),
patch.object(main.stats_collector, "record_chat", AsyncMock(return_value=None)),
patch.object(main.settings, "api_keys", ["test-key"]),
):
response = await main.v1_messages(
req,
_make_request(
"/v1/messages",
headers={"x-api-key": "test-key", "anthropic-version": "2023-06-01"},
),
)
payload = json.loads(response.body)
types = [item["type"] for item in payload["content"]]
self.assertEqual(types, ["text", "tool_use", "tool_result"])
self.assertEqual(payload["stop_reason"], "end_turn")
self.assertEqual(payload["content"][1]["name"], "lookup")
self.assertEqual(payload["content"][2]["tool_use_id"], "toolu_1")
async def test_anthropic_non_stream_fallbacks_to_structured_tool_blocks_for_forced_tool(self) -> None:
fake_client = _FakeClient(
stream_events=[],
complete_result={
"text": "{\"input\": {\"k\": \"v\"}, \"result\": {\"value\": 1}}",
"toolEvents": [],
"sessionId": "sess-fallback-anthropic",
},
)
req = AnthropicMessagesRequest(
model="claude-3-5-sonnet-20241022",
max_tokens=256,
messages=[{"role": "user", "content": "hi"}],
stream=False,
tools=[{"name": "lookup", "input_schema": {"type": "object", "properties": {}}}],
tool_choice={"type": "tool", "name": "lookup"},
)
with (
patch.object(main, "pool", _FakePool(_FakeInstance(fake_client))),
patch.object(main, "chat_guard", _FakeGuard()),
patch.object(main, "_ensure_instance_logged_in", AsyncMock(return_value={"id": "u"})),
patch.object(main.stats_collector, "record_chat", AsyncMock(return_value=None)),
patch.object(main.settings, "api_keys", ["test-key"]),
):
response = await main.v1_messages(
req,
_make_request(
"/v1/messages",
headers={"x-api-key": "test-key", "anthropic-version": "2023-06-01"},
),
)
payload = json.loads(response.body)
types = [item["type"] for item in payload["content"]]
self.assertEqual(types, ["tool_use", "tool_result"])
self.assertEqual(payload["stop_reason"], "end_turn")
self.assertEqual(payload["content"][0]["name"], "lookup")
self.assertEqual(payload["content"][1]["tool_use_id"], "toolu_fallback_0")
async def test_openai_stream_tool_call_indices_are_stable(self) -> None:
fake_client = _FakeClient(
stream_events=[
{
"type": "tool",
"tool": {
"id": "call_a",
"name": "read_file",
"input": {"path": "README.md"},
},
},
{
"type": "tool",
"tool": {
"id": "call_b",
"name": "search_docs",
"input": {"query": "gateway"},
},
},
],
complete_result={},
)
req = ChatCompletionsRequest(
model="org_auto",
messages=[{"role": "user", "content": "hi"}],
stream=True,
)
with (
patch.object(main, "pool", _FakePool(_FakeInstance(fake_client))),
patch.object(main, "chat_guard", _FakeGuard()),
patch.object(main, "_ensure_instance_logged_in", AsyncMock(return_value={"id": "u"})),
patch.object(main.stats_collector, "record_chat", AsyncMock(return_value=None)),
):
response = await main.v1_chat_completions(req, _make_request("/v1/chat/completions"))
body = await _collect_stream(response)
self.assertIn('"id": "call_a"', body)
self.assertIn('"id": "call_b"', body)
self.assertIn('"index": 0', body)
self.assertIn('"index": 1', body)
async def test_anthropic_non_stream_returns_tool_use_stop_reason_when_result_missing(self) -> None:
fake_client = _FakeClient(
stream_events=[],
complete_result={
"text": "",
"toolEvents": [
{
"name": "lookup",
"input": {"k": "v"},
}
],
"sessionId": "sess-2",
},
)
req = AnthropicMessagesRequest(
model="claude-3-5-sonnet-20241022",
max_tokens=256,
messages=[{"role": "user", "content": "hi"}],
stream=False,
)
with (
patch.object(main, "pool", _FakePool(_FakeInstance(fake_client))),
patch.object(main, "chat_guard", _FakeGuard()),
patch.object(main, "_ensure_instance_logged_in", AsyncMock(return_value={"id": "u"})),
patch.object(main.stats_collector, "record_chat", AsyncMock(return_value=None)),
patch.object(main.settings, "api_keys", ["test-key"]),
):
response = await main.v1_messages(
req,
_make_request(
"/v1/messages",
headers={"x-api-key": "test-key", "anthropic-version": "2023-06-01"},
),
)
payload = json.loads(response.body)
self.assertEqual(payload["stop_reason"], "tool_use")
self.assertEqual(len(payload["content"]), 1)
self.assertEqual(payload["content"][0]["type"], "tool_use")
async def test_anthropic_stream_returns_tool_use_stop_reason_when_result_missing(self) -> None:
fake_client = _FakeClient(
stream_events=[
{
"type": "tool",
"tool": {
"name": "read",
"input": {"file": "a.txt"},
},
}
],
complete_result={},
)
req = AnthropicMessagesRequest(
model="claude-3-5-sonnet-20241022",
max_tokens=256,
messages=[{"role": "user", "content": "hi"}],
stream=True,
)
with (
patch.object(main, "pool", _FakePool(_FakeInstance(fake_client))),
patch.object(main, "chat_guard", _FakeGuard()),
patch.object(main, "_ensure_instance_logged_in", AsyncMock(return_value={"id": "u"})),
patch.object(main.stats_collector, "record_chat", AsyncMock(return_value=None)),
patch.object(main.settings, "api_keys", ["test-key"]),
):
response = await main.v1_messages(
req,
_make_request(
"/v1/messages",
headers={"x-api-key": "test-key", "anthropic-version": "2023-06-01"},
),
)
body = await _collect_stream(response)
self.assertIn('"type": "tool_use"', body)
self.assertIn('"stop_reason": "tool_use"', body)
async def test_anthropic_stream_bridges_tool_and_text_events(self) -> None:
fake_client = _FakeClient(
stream_events=[
{
"type": "tool",
"tool": {
"id": "toolu_stream_1",
"name": "read",
"input": {"file": "a.txt"},
"result": "done",
},
},
{"type": "text", "text": "world"},
],
complete_result={},
)
req = AnthropicMessagesRequest(
model="claude-3-5-sonnet-20241022",
max_tokens=256,
messages=[{"role": "user", "content": "hi"}],
stream=True,
)
with (
patch.object(main, "pool", _FakePool(_FakeInstance(fake_client))),
patch.object(main, "chat_guard", _FakeGuard()),
patch.object(main, "_ensure_instance_logged_in", AsyncMock(return_value={"id": "u"})),
patch.object(main.stats_collector, "record_chat", AsyncMock(return_value=None)),
patch.object(main.settings, "api_keys", ["test-key"]),
):
response = await main.v1_messages(
req,
_make_request(
"/v1/messages",
headers={"x-api-key": "test-key", "anthropic-version": "2023-06-01"},
),
)
body = await _collect_stream(response)
self.assertIn("event: message_start", body)
self.assertIn('"type": "tool_use"', body)
self.assertIn('"type": "tool_result"', body)
self.assertIn('"stop_reason": "end_turn"', body)
self.assertIn('"type": "text_delta"', body)
self.assertIn("event: message_stop", body)
async def test_openai_non_stream_forwards_tool_config_when_enabled(self) -> None:
spy_client = _SpyClient(stream_events=[], complete_result={"text": "ok", "toolEvents": []})
req = ChatCompletionsRequest(
model="org_auto",
messages=[{"role": "user", "content": "hi"}],
stream=False,
tools=[{"type": "function", "function": {"name": "lookup", "parameters": {}}}],
tool_choice={"type": "function", "function": {"name": "lookup"}},
)
with (
patch.object(main, "pool", _FakePool(_FakeInstance(spy_client))),
patch.object(main, "chat_guard", _FakeGuard()),
patch.object(main, "_ensure_instance_logged_in", AsyncMock(return_value={"id": "u"})),
patch.object(main.stats_collector, "record_chat", AsyncMock(return_value=None)),
_SettingsPatch(tool_forward_enabled=True),
):
await main.v1_chat_completions(req, _make_request("/v1/chat/completions"))
self.assertIn("tool_config", spy_client.last_complete_kwargs)
cfg = spy_client.last_complete_kwargs["tool_config"]
self.assertEqual(cfg["provider"], "openai")
self.assertEqual(len(cfg["tools"]), 1)
self.assertIsInstance(cfg["tool_choice"], dict)
self.assertEqual(spy_client.last_complete_args[2], "agent")
async def test_openai_non_stream_does_not_forward_tool_config_when_disabled(self) -> None:
spy_client = _SpyClient(stream_events=[], complete_result={"text": "ok", "toolEvents": []})
req = ChatCompletionsRequest(
model="org_auto",
messages=[{"role": "user", "content": "hi"}],
stream=False,
tools=[{"type": "function", "function": {"name": "lookup", "parameters": {}}}],
tool_choice={"type": "function", "function": {"name": "lookup"}},
)
with (
patch.object(main, "pool", _FakePool(_FakeInstance(spy_client))),
patch.object(main, "chat_guard", _FakeGuard()),
patch.object(main, "_ensure_instance_logged_in", AsyncMock(return_value={"id": "u"})),
patch.object(main.stats_collector, "record_chat", AsyncMock(return_value=None)),
_SettingsPatch(tool_forward_enabled=False),
):
await main.v1_chat_completions(req, _make_request("/v1/chat/completions"))
self.assertIn("tool_config", spy_client.last_complete_kwargs)
self.assertIsNone(spy_client.last_complete_kwargs["tool_config"])
self.assertEqual(spy_client.last_complete_args[2], "agent")
async def test_openai_tooling_context_disables_session_reuse_cache(self) -> None:
fake_cache = _FakeSessionCache()
fake_client = _FakeClient(
stream_events=[],
complete_result={"text": "ok", "toolEvents": [], "sessionId": "sess-3"},
)
req = ChatCompletionsRequest(
model="org_auto",
messages=[
{"role": "user", "content": "turn-1"},
{"role": "user", "content": "turn-2"},
],
stream=False,
tools=[{"type": "function", "function": {"name": "lookup", "parameters": {}}}],
tool_choice={"type": "function", "function": {"name": "lookup"}},
)
with (
patch.object(main, "session_cache", fake_cache),
patch.object(main, "pool", _FakePool(_FakeInstance(fake_client))),
patch.object(main, "chat_guard", _FakeGuard()),
patch.object(main, "_ensure_instance_logged_in", AsyncMock(return_value={"id": "u"})),
patch.object(main.stats_collector, "record_chat", AsyncMock(return_value=None)),
_SettingsPatch(tool_forward_enabled=True),
):
await main.v1_chat_completions(req, _make_request("/v1/chat/completions"))
self.assertEqual(fake_cache.keys, [])
self.assertEqual(fake_cache.get_calls, [])
self.assertEqual(fake_cache.put_calls, [])
async def test_anthropic_non_stream_with_tools_uses_agent_mode(self) -> None:
spy_client = _SpyClient(stream_events=[], complete_result={"text": "ok", "toolEvents": []})
req = AnthropicMessagesRequest(
model="claude-3-5-sonnet-20241022",
max_tokens=128,
messages=[{"role": "user", "content": "hi"}],
stream=False,
tools=[{"name": "write_file", "input_schema": {"type": "object", "properties": {}}}],
tool_choice={"type": "auto"},
)
with (
patch.object(main, "pool", _FakePool(_FakeInstance(spy_client))),
patch.object(main, "chat_guard", _FakeGuard()),
patch.object(main, "_ensure_instance_logged_in", AsyncMock(return_value={"id": "u"})),
patch.object(main.stats_collector, "record_chat", AsyncMock(return_value=None)),
patch.object(main.settings, "api_keys", ["test-key"]),
_SettingsPatch(tool_forward_enabled=True, default_ask_mode="chat"),
):
await main.v1_messages(
req,
_make_request(
"/v1/messages",
headers={"x-api-key": "test-key", "anthropic-version": "2023-06-01"},
),
)
self.assertIn("tool_config", spy_client.last_complete_kwargs)
cfg = spy_client.last_complete_kwargs["tool_config"]
self.assertEqual(cfg["provider"], "anthropic")
self.assertEqual(len(cfg["tools"]), 1)
self.assertEqual(spy_client.last_complete_args[2], "agent")
async def test_anthropic_tooling_context_disables_session_reuse_cache(self) -> None:
fake_cache = _FakeSessionCache()
fake_client = _FakeClient(
stream_events=[],
complete_result={"text": "ok", "toolEvents": [], "sessionId": "sess-4"},
)
req = AnthropicMessagesRequest(
model="claude-3-5-sonnet-20241022",
max_tokens=128,
messages=[
{"role": "user", "content": "turn-1"},
{"role": "user", "content": "turn-2"},
],
stream=False,
tools=[{"name": "lookup", "input_schema": {"type": "object", "properties": {}}}],
tool_choice={"type": "auto"},
)
with (
patch.object(main, "session_cache", fake_cache),
patch.object(main, "pool", _FakePool(_FakeInstance(fake_client))),
patch.object(main, "chat_guard", _FakeGuard()),
patch.object(main, "_ensure_instance_logged_in", AsyncMock(return_value={"id": "u"})),
patch.object(main.stats_collector, "record_chat", AsyncMock(return_value=None)),
patch.object(main.settings, "api_keys", ["test-key"]),
):
await main.v1_messages(
req,
_make_request(
"/v1/messages",
headers={"x-api-key": "test-key", "anthropic-version": "2023-06-01"},
),
)
self.assertEqual(fake_cache.keys, [])
self.assertEqual(fake_cache.get_calls, [])
self.assertEqual(fake_cache.put_calls, [])
class SessionCacheToolFingerprintTests(unittest.TestCase):
def test_build_key_changes_with_tool_config(self) -> None:
from app.session_cache import SessionCache
cache = SessionCache(max_entries=8, ttl_sec=60)
messages = [
{"role": "system", "content": "sys"},
{"role": "user", "content": "hello"},
]
cfg_a = {
"provider": "openai",
"tools": [{"type": "function", "function": {"name": "lookup", "parameters": {}}}],
"tool_choice": {"type": "function", "function": {"name": "lookup"}},
}
cfg_a_reordered = {
"tool_choice": {"function": {"name": "lookup"}, "type": "function"},
"tools": [{"function": {"parameters": {}, "name": "lookup"}, "type": "function"}],
"provider": "openai",
}
cfg_b = {
"provider": "openai",
"tools": [{"type": "function", "function": {"name": "lookup_v2", "parameters": {}}}],
"tool_choice": {"type": "function", "function": {"name": "lookup_v2"}},
}
key_no_tool = cache.build_key("api-key", messages)
key_a = cache.build_key("api-key", messages, tool_config=cfg_a)
key_a_reordered = cache.build_key("api-key", messages, tool_config=cfg_a_reordered)
key_b = cache.build_key("api-key", messages, tool_config=cfg_b)
self.assertNotEqual(key_no_tool, key_a)
self.assertEqual(key_a, key_a_reordered)
self.assertNotEqual(key_a, key_b)
def test_handle_server_message_drops_unroutable_tool_event_without_request_id(self) -> None:
from app.lingma_client import LspWsRpcClient
rpc = LspWsRpcClient("ws://127.0.0.1:1")
async def run() -> None:
rpc.create_stream("req-1")
await rpc._handle_server_message(
{
"jsonrpc": "2.0",
"method": "tool/invoke",
"params": {
"name": "lookup",
"parameters": {"q": "x"},
},
}
)
stream = rpc._chat_streams["req-1"]
self.assertEqual(stream["tool_order"], [])
self.assertEqual(stream["tool_states"], {})
self.assertTrue(stream["chunks"].empty())
import asyncio
asyncio.run(run())
def test_handle_server_message_routes_by_tool_map_without_request_id(self) -> None:
from app.lingma_client import LspWsRpcClient
rpc = LspWsRpcClient("ws://127.0.0.1:1")
async def run() -> None:
rpc.create_stream("req-1")
await rpc._handle_server_message(
{
"jsonrpc": "2.0",
"method": "tool/invoke",
"params": {
"requestId": "req-1",
"toolCallId": "call-1",
"name": "lookup",
"parameters": {"q": "a"},
},
}
)
await rpc._handle_server_message(
{
"jsonrpc": "2.0",
"method": "tool/invokeResult",
"params": {
"toolCallId": "call-1",
"result": {"ok": True},
},
}
)
result = rpc.get_stream_result("req-1")
self.assertEqual(len(result["toolEvents"]), 1)
self.assertEqual(result["toolEvents"][0]["id"], "call-1")
self.assertEqual(result["toolEvents"][0]["input"], {"q": "a"})
self.assertEqual(result["toolEvents"][0]["result"], {"ok": True})
import asyncio
asyncio.run(run())
def test_handle_server_message_dedupes_identical_repeated_tool_events(self) -> None:
from app.lingma_client import LspWsRpcClient
rpc = LspWsRpcClient("ws://127.0.0.1:1")
async def run() -> None:
rpc.create_stream("req-1")
msg = {
"jsonrpc": "2.0",
"method": "tool/invoke",
"params": {
"requestId": "req-1",
"toolCallId": "call-dup",
"name": "lookup",
"parameters": {"q": "dup"},
},
}
await rpc._handle_server_message(msg)
await rpc._handle_server_message(msg)
stream = rpc._chat_streams["req-1"]
self.assertEqual(stream["tool_order"], ["call-dup"])
self.assertEqual(stream["chunks"].qsize(), 1)
import asyncio
asyncio.run(run())
def test_extracts_tool_event_from_results_and_parameters(self) -> None:
from app.lingma_client import LspWsRpcClient
event = LspWsRpcClient._extract_tool_event(
{
"toolCallId": "call_sync_1",
"parameters": {"path": "README.md"},
"results": [
{
"toolCallId": "call_sync_1",
"name": "read_file",
"result": {"ok": True},
}
],
}
)
self.assertEqual(
event,
{
"id": "call_sync_1",
"name": "read_file",
"input": {"path": "README.md"},
"result": {"ok": True},
},
)
def test_extracts_tool_event_from_invoke_result_payload(self) -> None:
from app.lingma_client import LspWsRpcClient
event = LspWsRpcClient._extract_tool_event(
{
"toolCallId": "call_inv_1",
"name": "search_docs",
"parameters": {"query": "gateway"},
"result": {"hits": 3},
}
)
self.assertEqual(
event,
{
"id": "call_inv_1",
"name": "search_docs",
"input": {"query": "gateway"},
"result": {"hits": 3},
},
)
def test_tool_sync_triggers_approve_and_invoke_result_requests(self) -> None:
from app.lingma_client import LspWsRpcClient
class _WsStub:
def __init__(self) -> None:
self.frames: list[bytes] = []
async def send(self, data: bytes) -> None:
self.frames.append(data)
def _decode(frame: bytes) -> dict:
body = frame.split(b"\r\n\r\n", 1)[1]
return json.loads(body.decode("utf-8"))
ws = _WsStub()
rpc = LspWsRpcClient(ws)
async def run() -> None:
rpc.create_stream("req-1")
await rpc._handle_server_message(
{
"jsonrpc": "2.0",
"method": "tool/call/sync",
"params": {
"sessionId": "sess-1",
"requestId": "req-1",
"toolCallId": "call-1",
"name": "run_in_terminal",
"parameters": {"command": "pwd"},
},
}
)
decoded = [_decode(frame) for frame in ws.frames]
methods = [item.get("method") for item in decoded]
self.assertIn("tool/call/approve", methods)
self.assertIn("tool/invokeResult", methods)
approve = next(item for item in decoded if item.get("method") == "tool/call/approve")
self.assertEqual(
approve["params"],
{
"type": "tool_call",
"sessionId": "sess-1",
"requestId": "req-1",
"toolCallId": "call-1",
"approval": True,
},
)
invoke_result = next(item for item in decoded if item.get("method") == "tool/invokeResult")
self.assertEqual(invoke_result["params"]["toolCallId"], "call-1")
self.assertEqual(invoke_result["params"]["name"], "run_in_terminal")
self.assertTrue(invoke_result["params"]["success"])
self.assertEqual(invoke_result["params"]["errorMessage"], "")
import asyncio
asyncio.run(run())
def test_tool_sync_does_not_emit_roundtrip_without_request_id(self) -> None:
from app.lingma_client import LspWsRpcClient
class _WsStub:
def __init__(self) -> None:
self.frames: list[bytes] = []
async def send(self, data: bytes) -> None:
self.frames.append(data)
ws = _WsStub()
rpc = LspWsRpcClient(ws)
async def run() -> None:
rpc.create_stream("req-1")
await rpc._handle_server_message(
{
"jsonrpc": "2.0",
"method": "tool/call/sync",
"params": {
"sessionId": "sess-1",
"toolCallId": "call-1",
"name": "run_in_terminal",
"parameters": {"command": "pwd"},
},
}
)
self.assertEqual(ws.frames, [])
import asyncio
asyncio.run(run())