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X-Financial/.tmp/lightrag_inspect/lightrag_pkg/lightrag/llm/voyageai.py

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import os
import numpy as np
import pipmaster as pm # Pipmaster for dynamic library install
# Add Voyage AI import
if not pm.is_installed("voyageai"):
pm.install("voyageai")
import voyageai
from voyageai.error import (
APIConnectionError,
RateLimitError,
ServerError,
ServiceUnavailableError,
Timeout,
TryAgain,
)
from tenacity import (
retry,
stop_after_attempt,
wait_exponential,
retry_if_exception_type,
)
from lightrag.utils import wrap_embedding_func_with_attrs, logger
# Custom exceptions for VoyageAI errors
class VoyageAIError(Exception):
"""Generic VoyageAI API error"""
pass
@wrap_embedding_func_with_attrs(
embedding_dim=1024, max_token_size=32000, supports_asymmetric=True
)
@retry(
stop=stop_after_attempt(3),
wait=wait_exponential(multiplier=1, min=4, max=60),
retry=retry_if_exception_type(
(
APIConnectionError,
RateLimitError,
ServerError,
ServiceUnavailableError,
Timeout,
TryAgain,
)
),
)
async def voyageai_embed(
texts: list[str],
model: str = "voyage-3",
api_key: str | None = None,
embedding_dim: int | None = None,
input_type: str | None = None,
truncation: bool | None = True,
context: str | None = None,
) -> np.ndarray:
"""Generate embeddings for a list of texts using VoyageAI's API.
Args:
texts: List of texts to embed.
model: The VoyageAI embedding model to use. Options include:
- "voyage-3": General purpose (1024 dims, 32K context)
- "voyage-3-lite": Lightweight (512 dims, 32K context)
- "voyage-3-large": Highest accuracy (1024 dims, 32K context)
- "voyage-code-3": Code optimized (1024 dims, 32K context)
- "voyage-law-2": Legal documents (1024 dims, 16K context)
- "voyage-finance-2": Finance (1024 dims, 32K context)
api_key: Optional VoyageAI API key. If None, falls back to the
``VOYAGE_API_KEY`` environment variable (the name VoyageAI's own
SDK uses), then to ``VOYAGEAI_API_KEY`` for backward compatibility.
embedding_dim: Optional Matryoshka output dimension. Only honored by
models that support dimension reduction (e.g. voyage-3-large);
ignored otherwise. The decorator default is 1024 to match
``voyage-3``; if you select ``voyage-3-lite`` (512 dims) override
``EMBEDDING_DIM`` accordingly so the vector store size matches.
input_type: Optional input type hint for the model. Options:
- "query": For search queries
- "document": For documents to be indexed
- None: Let the model decide (default)
truncation: Whether the API should truncate texts that exceed the model's
token limit. Defaults to True (matches the VoyageAI SDK default).
context: Optional LightRAG embedding context. When ``input_type`` is not
set, "query" maps to ``input_type="query"`` and "document" maps to
``input_type="document"``.
Returns:
A numpy array of embeddings, one per input text.
Raises:
VoyageAIError: If the API call fails or returns invalid data.
"""
if not api_key:
api_key = os.environ.get("VOYAGE_API_KEY") or os.environ.get("VOYAGEAI_API_KEY")
if not api_key:
logger.error(
"VoyageAI API key not provided and neither VOYAGE_API_KEY nor "
"VOYAGEAI_API_KEY environment variable is set"
)
raise ValueError(
"VoyageAI API key is required: pass api_key, or set the "
"VOYAGE_API_KEY (preferred) or VOYAGEAI_API_KEY environment variable"
)
if input_type is None and context in {"query", "document"}:
input_type = context
try:
client = voyageai.AsyncClient(api_key=api_key)
total_chars = sum(len(t) for t in texts)
avg_chars = total_chars / len(texts) if texts else 0
logger.debug(
f"VoyageAI embedding request: {len(texts)} texts, "
f"total_chars={total_chars}, avg_chars={avg_chars:.0f}, model={model}, "
f"input_type={input_type}"
)
# Prepare API call parameters
embed_params = dict(
texts=texts,
model=model,
# Optional parameters -- if None, voyageai client uses defaults
output_dimension=embedding_dim,
truncation=truncation,
input_type=input_type,
)
# Make API call with timing
result = await client.embed(**embed_params)
if not result.embeddings:
err_msg = "VoyageAI API returned empty embeddings"
logger.error(err_msg)
raise VoyageAIError(err_msg)
if len(result.embeddings) != len(texts):
err_msg = f"VoyageAI API returned {len(result.embeddings)} embeddings for {len(texts)} texts"
logger.error(err_msg)
raise VoyageAIError(err_msg)
# Convert to numpy array with timing
embeddings = np.array(result.embeddings, dtype=np.float32)
logger.debug(f"VoyageAI embeddings generated: shape {embeddings.shape}")
return embeddings
except Exception as e:
logger.error(f"VoyageAI embedding error: {e}")
raise
# Optional: a helper function to get available embedding models
def get_available_embedding_models() -> dict[str, dict]:
"""
Returns a dictionary of available Voyage AI embedding models and their properties.
"""
return {
"voyage-3-large": {
"context_length": 32000,
"dimension": 1024,
"description": "Best general-purpose and multilingual",
},
"voyage-3": {
"context_length": 32000,
"dimension": 1024,
"description": "General-purpose and multilingual",
},
"voyage-3-lite": {
"context_length": 32000,
"dimension": 512,
"description": "Optimized for latency and cost",
},
"voyage-code-3": {
"context_length": 32000,
"dimension": 1024,
"description": "Optimized for code",
},
"voyage-finance-2": {
"context_length": 32000,
"dimension": 1024,
"description": "Optimized for finance",
},
"voyage-law-2": {
"context_length": 16000,
"dimension": 1024,
"description": "Optimized for legal",
},
"voyage-multimodal-3": {
"context_length": 32000,
"dimension": 1024,
"description": "Multimodal text and images",
},
}