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RAG/backend/app/adapters/bailian/embedding.py
YoVinchen f4ba5d5342
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Make the first RAG slice executable without risking production data
The Stage 1 foundation now proves provider contracts with mocks and validates PostgreSQL/pgvector ingestion, approval binding, retrieval, reranking, and idempotency using only synthetic data. Live Bailian validation remains gated on rotating the exposed key.

Constraint: The key shown in chat is compromised and cannot be used or committed

Rejected: Mark Stage 1 complete from mock and offline results | real three-model smoke is still required

Confidence: high

Scope-risk: moderate

Reversibility: clean

Directive: Do not enable real-data ingestion until Stage 3 cloud approval and outbound manifest controls are enforced end to end

Tested: make verify; 41 pytest tests; strict mypy; Ruff; Compose config; pinned image build; empty-volume migration; role denial; two idempotent 20-vector seeds; database restart persistence

Not-tested: Live Bailian calls require a newly rotated key; React product UI is not implemented
2026-07-12 15:41:58 +08:00

178 lines
6.5 KiB
Python

"""Alibaba Cloud Model Studio OpenAI-compatible embedding adapter."""
from __future__ import annotations
import math
from collections.abc import Mapping, Sequence
from typing import Any
import httpx
from app.adapters.bailian._base import (
BailianHttpAdapter,
conservative_utf8_token_count,
count_tokens,
extract_request_id,
invalid_request,
invalid_response,
parse_usage,
response_model,
)
from app.ports.model_providers import EmbeddingResult, TokenCounter
EMBEDDING_MAX_BATCH_SIZE = 10
EMBEDDING_MAX_TOKENS_PER_TEXT = 8_192
EMBEDDING_MAX_TOKENS_PER_REQUEST = 33_000
EMBEDDING_DIMENSIONS = 1_024
class BailianEmbeddingAdapter(BailianHttpAdapter):
"""Call ``compatible-mode/v1/embeddings`` with strict input/output checks."""
def __init__(
self,
*,
api_key: str,
base_url: str,
model: str = "text-embedding-v4",
dimensions: int = EMBEDDING_DIMENSIONS,
token_counter: TokenCounter = conservative_utf8_token_count,
http_client: httpx.AsyncClient | None = None,
timeout_seconds: float = 30.0,
max_retries: int = 0,
retry_base_seconds: float = 0.5,
) -> None:
if not model or model != model.strip():
raise invalid_request("embedding.configuration", "invalid_model")
if isinstance(dimensions, bool) or dimensions != EMBEDDING_DIMENSIONS:
raise invalid_request("embedding.configuration", "unsupported_dimensions")
if not callable(token_counter):
raise invalid_request("embedding.configuration", "invalid_token_counter")
super().__init__(
api_key=api_key,
base_url=base_url,
expected_path="/compatible-mode/v1",
http_client=http_client,
timeout_seconds=timeout_seconds,
max_retries=max_retries,
retry_base_seconds=retry_base_seconds,
)
self._model = model
self._dimensions = dimensions
self._token_counter = token_counter
async def embed_documents(self, texts: Sequence[str]) -> EmbeddingResult:
operation = "embedding.create"
validated_texts = self._validate_texts(texts, operation=operation)
payload = {
"model": self._model,
"input": list(validated_texts),
"dimensions": self._dimensions,
"encoding_format": "float",
}
response = await self._post_json(
operation=operation,
path="embeddings",
payload=payload,
sensitive_values=validated_texts,
)
vectors = self._parse_vectors(
response.body,
expected_count=len(validated_texts),
operation=operation,
)
return EmbeddingResult(
vectors=vectors,
model=response_model(
response.body,
self._model,
sensitive_values=(*validated_texts, self._api_key),
),
request_id=extract_request_id(
response.body,
sensitive_values=(*validated_texts, self._api_key),
),
usage=parse_usage(response.body.get("usage")),
elapsed_ms=response.elapsed_ms,
)
async def embed_query(self, text: str) -> EmbeddingResult:
return await self.embed_documents((text,))
def _validate_texts(
self,
texts: Sequence[str],
*,
operation: str,
) -> tuple[str, ...]:
if isinstance(texts, (str, bytes)) or not isinstance(texts, Sequence):
raise invalid_request(operation, "invalid_input_collection")
validated = tuple(texts)
if not validated:
raise invalid_request(operation, "empty_input")
if len(validated) > EMBEDDING_MAX_BATCH_SIZE:
raise invalid_request(operation, "batch_size_exceeded")
total_tokens = 0
for text in validated:
if not isinstance(text, str) or not text:
raise invalid_request(operation, "invalid_input_text")
token_count = count_tokens(
self._token_counter,
text,
operation=operation,
)
if token_count > EMBEDDING_MAX_TOKENS_PER_TEXT:
raise invalid_request(operation, "text_token_limit_exceeded")
total_tokens += token_count
if total_tokens > EMBEDDING_MAX_TOKENS_PER_REQUEST:
raise invalid_request(operation, "request_token_limit_exceeded")
return validated
def _parse_vectors(
self,
body: Mapping[str, Any],
*,
expected_count: int,
operation: str,
) -> tuple[tuple[float, ...], ...]:
data = body.get("data")
if not isinstance(data, list) or len(data) != expected_count:
raise invalid_response(operation, "invalid_embedding_count")
by_index: list[tuple[float, ...] | None] = [None] * expected_count
for item in data:
if not isinstance(item, Mapping):
raise invalid_response(operation, "invalid_embedding_item")
index = item.get("index")
if (
isinstance(index, bool)
or not isinstance(index, int)
or not 0 <= index < expected_count
or by_index[index] is not None
):
raise invalid_response(operation, "invalid_embedding_index")
raw_vector = item.get("embedding")
if not isinstance(raw_vector, list) or len(raw_vector) != self._dimensions:
raise invalid_response(operation, "invalid_embedding_dimensions")
vector: list[float] = []
for component in raw_vector:
if isinstance(component, bool) or not isinstance(component, (int, float)):
raise invalid_response(operation, "invalid_embedding_component")
normalized = float(component)
if not math.isfinite(normalized):
raise invalid_response(operation, "invalid_embedding_component")
vector.append(normalized)
norm = math.hypot(*vector)
if not math.isfinite(norm) or norm <= 0:
raise invalid_response(operation, "invalid_embedding_norm")
by_index[index] = tuple(vector)
if any(vector is None for vector in by_index):
raise invalid_response(operation, "missing_embedding_index")
return tuple(vector for vector in by_index if vector is not None)