Files
lingma-openai-gateway/app/anthropic_schema.py
GitHub Actions 12a4d9584e feat: harden cache reuse semantics and expand protocol regressions
Stabilize cross-protocol ask-mode/streaming behavior and reduce session-reuse branch collisions, then add focused docs/tests for multimodal normalization and pool/stats/config paths.

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-04-20 14:26:11 +08:00

164 lines
6.2 KiB
Python

from __future__ import annotations
"""Anthropic Messages API schema + content adapters.
Why this exists
---------------
The Anthropic Messages API (`POST /v1/messages`) is wire-incompatible with
OpenAI chat completions even though it covers the same ground:
* auth: `x-api-key` header (not `Authorization: Bearer`)
* system: separate top-level field, never a message role
* content: `str` or array of typed blocks (`text`, `image`, `tool_use`, ...)
* streaming: a named-event SSE protocol (`message_start`, `content_block_delta`,
`message_delta`, `message_stop`) rather than OpenAI's `delta.content`
* errors: `{"type":"error","error":{"type":"...","message":"..."}}`
We keep a separate schema module rather than squeezing everything into
`openai_schema.py` so both adapters stay small and auditable. Both eventually
collapse to the same Lingma prompt shape inside `main.py`.
"""
import json
from typing import Any, Literal
from pydantic import BaseModel
# Anthropic accepts either a raw string or a list of typed content blocks.
# We keep the list loosely typed (plain dicts) so future block kinds
# (e.g. `thinking`, `document`) don't break the gateway — they simply fall
# into the generic flattener below.
AnthropicContent = str | list[dict[str, Any]] | None
class AnthropicMessage(BaseModel):
# Anthropic: system is a top-level field, messages only carry user/assistant.
role: Literal["user", "assistant"]
content: AnthropicContent = None
class AnthropicMessagesRequest(BaseModel):
model: str
# max_tokens is REQUIRED by Anthropic. We default to a sane value so callers
# that forget it don't 422 — easier migration from OpenAI clients.
max_tokens: int = 1024
messages: list[AnthropicMessage]
system: AnthropicContent = None
stream: bool = False
temperature: float | None = None
top_p: float | None = None
top_k: int | None = None
stop_sequences: list[str] | None = None
# metadata.user_id is the official hint for per-user routing / abuse tracking.
metadata: dict[str, Any] | None = None
# Tools / tool_choice are accepted but we can't forward them to Lingma yet —
# they're preserved here so the request doesn't 422, and the flattener
# surfaces any tool_use blocks as `[tool_use] {...}` text so the assistant
# still sees the context.
tools: list[dict[str, Any]] | None = None
tool_choice: dict[str, Any] | None = None
def flatten_anthropic_content(content: AnthropicContent) -> str:
"""Reduce Anthropic block arrays to a plain-string prompt for Lingma.
Handled block types:
* text -> verbatim text
* image -> `[image]` placeholder (Lingma has no vision)
* tool_use -> `[tool_use] {json}` so the assistant can reference it
* tool_result -> `[tool_result] ...` (string or nested blocks)
* unknown -> fall back to `.text` / `.content` if present, else drop
Returning an empty string here means the caller (prompt builder) will skip
the whole message rather than emit a bare `[role] ` line.
"""
if content is None:
return ""
if isinstance(content, str):
return content
if not isinstance(content, list):
return str(content)
parts: list[str] = []
for item in content:
if not isinstance(item, dict):
parts.append(str(item))
continue
t = item.get("type")
if t == "text":
text = item.get("text") or ""
if text:
parts.append(text)
elif t == "image":
parts.append("[image]")
elif t == "tool_use":
# Compact one-line JSON keeps prompt_tokens estimate stable.
try:
payload = json.dumps(
{"name": item.get("name"), "input": item.get("input")},
ensure_ascii=False,
)
except Exception:
payload = str(item)
parts.append(f"[tool_use] {payload}")
elif t == "tool_result":
inner = item.get("content")
if isinstance(inner, str):
parts.append(f"[tool_result] {inner}")
elif isinstance(inner, list):
parts.append(f"[tool_result] {flatten_anthropic_content(inner)}")
else:
fallback = item.get("text") or item.get("content")
if isinstance(fallback, str) and fallback:
parts.append(fallback)
return "\n".join(p for p in parts if p)
def anthropic_to_internal_messages(req: AnthropicMessagesRequest) -> list[dict]:
"""Project an Anthropic request into the gateway's internal message list.
Internal shape matches what `_messages_to_prompt` already expects:
`[{"role": "system"|"user"|"assistant", "content": "..."}]`. This keeps
user-input cache hashing aligned across OpenAI and Anthropic callers.
"""
out: list[dict] = []
if req.system:
sys_text = flatten_anthropic_content(req.system)
if sys_text:
out.append({"role": "system", "content": sys_text})
for m in req.messages:
text = flatten_anthropic_content(m.content)
out.append({"role": m.role, "content": text})
return out
def affinity_key_for_anthropic(req: AnthropicMessagesRequest) -> str | None:
"""Best-effort stable routing key for an Anthropic request.
Priority mirrors the OpenAI side:
1. metadata.user_id (the official per-user hint)
2. hash of the system prompt
3. hash of the first message
Kept here rather than in `main.py` because it needs the flatten helper and
the request type — `main.py` stays endpoint-shaped, not schema-shaped.
"""
import hashlib
if req.metadata:
user_id = req.metadata.get("user_id")
if isinstance(user_id, str) and user_id.strip():
return user_id.strip()
if req.system:
text = flatten_anthropic_content(req.system)
if text:
return "sys:" + hashlib.sha1(text.encode("utf-8")).hexdigest()[:16]
if req.messages:
text = flatten_anthropic_content(req.messages[0].content)
if text:
return "first:" + hashlib.sha1(text.encode("utf-8")).hexdigest()[:16]
return None