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"""
Qwen3-Reranker-0.6B backend using vLLM.
Reference: https://huggingface.co/Qwen/Qwen3-Reranker-0.6B
Requires: vllm>=0.8.5, transformers; GPU recommended.
"""
from __future__ import annotations
import logging
import math
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import os
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import threading
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import time
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from typing import Any, Dict, List, Tuple
from reranker.backends.batching_utils import (
deduplicate_with_positions,
iter_batches,
sort_indices_by_length,
)
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logger = logging.getLogger("reranker.backends.qwen3_vllm")
try:
import torch
from transformers import AutoTokenizer
from vllm import LLM, SamplingParams
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from vllm.inputs.data import TokensPrompt
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except ImportError as e:
raise ImportError(
"Qwen3-vLLM reranker backend requires vllm>=0.8.5 and transformers. "
"Install with: pip install vllm transformers"
) from e
def _format_instruction(instruction: str, query: str, doc: str) -> List[Dict[str, str]]:
"""Build chat messages for one (query, doc) pair."""
return [
{
"role": "system",
"content": "Judge whether the Document meets the requirements based on the Query and the Instruct provided. Note that the answer can only be \"yes\" or \"no\".",
},
{
"role": "user",
"content": f"<Instruct>: {instruction}\n\n<Query>: {query}\n\n<Document>: {doc}",
},
]
class Qwen3VLLMRerankerBackend:
"""
Qwen3-Reranker-0.6B with vLLM inference.
Config from services.rerank.backends.qwen3_vllm.
"""
def __init__(self, config: Dict[str, Any]) -> None:
self._config = config or {}
model_name = str(self._config.get("model_name") or "Qwen/Qwen3-Reranker-0.6B")
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max_model_len = int(self._config.get("max_model_len", 2048))
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tensor_parallel_size = int(self._config.get("tensor_parallel_size", 1))
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gpu_memory_utilization = float(self._config.get("gpu_memory_utilization", 0.4))
enable_prefix_caching = bool(self._config.get("enable_prefix_caching", False))
enforce_eager = bool(self._config.get("enforce_eager", True))
dtype = str(self._config.get("dtype", "float16")).strip().lower()
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self._instruction = str(
self._config.get("instruction")
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or "Given a shopping query, rank product titles by relevance"
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)
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infer_batch_size = os.getenv("RERANK_VLLM_INFER_BATCH_SIZE") or self._config.get("infer_batch_size", 64)
sort_by_doc_length = os.getenv("RERANK_VLLM_SORT_BY_DOC_LENGTH")
if sort_by_doc_length is None:
sort_by_doc_length = self._config.get("sort_by_doc_length", True)
length_sort_mode = os.getenv("RERANK_VLLM_LENGTH_SORT_MODE") or self._config.get("length_sort_mode", "char")
self._infer_batch_size = int(infer_batch_size)
self._sort_by_doc_length = str(sort_by_doc_length).strip().lower() in {"1", "true", "yes", "y", "on"}
self._length_sort_mode = str(length_sort_mode).strip().lower()
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if not torch.cuda.is_available():
raise RuntimeError("qwen3_vllm backend requires CUDA GPU, but torch.cuda.is_available() is False")
if dtype not in {"float16", "half", "auto"}:
raise ValueError(f"Unsupported dtype for qwen3_vllm: {dtype!r}. Use float16/half/auto.")
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if self._infer_batch_size <= 0:
raise ValueError(f"infer_batch_size must be > 0, got {self._infer_batch_size}")
if self._length_sort_mode not in {"char", "token"}:
raise ValueError(f"length_sort_mode must be 'char' or 'token', got {self._length_sort_mode!r}")
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logger.info(
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"[Qwen3_VLLM] Loading model %s (max_model_len=%s, tp=%s, gpu_mem=%.2f, dtype=%s, prefix_caching=%s)",
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model_name,
max_model_len,
tensor_parallel_size,
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gpu_memory_utilization,
dtype,
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enable_prefix_caching,
)
self._llm = LLM(
model=model_name,
tensor_parallel_size=tensor_parallel_size,
max_model_len=max_model_len,
gpu_memory_utilization=gpu_memory_utilization,
enable_prefix_caching=enable_prefix_caching,
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enforce_eager=enforce_eager,
dtype=dtype,
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)
self._tokenizer = AutoTokenizer.from_pretrained(model_name)
self._tokenizer.padding_side = "left"
self._tokenizer.pad_token = self._tokenizer.eos_token
# Suffix for generation prompt (assistant answer)
self._suffix = "<|im_end|>\n<|im_start|>assistant\n<think>\n\n</think>\n\n"
self._suffix_tokens = self._tokenizer.encode(
self._suffix, add_special_tokens=False
)
self._max_prompt_len = max_model_len - len(self._suffix_tokens)
self._true_token = self._tokenizer("yes", add_special_tokens=False).input_ids[0]
self._false_token = self._tokenizer("no", add_special_tokens=False).input_ids[0]
self._sampling_params = SamplingParams(
temperature=0,
max_tokens=1,
logprobs=20,
allowed_token_ids=[self._true_token, self._false_token],
)
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# vLLM generate path is unstable under concurrent calls in this process model.
# Serialize infer calls to avoid engine-core protocol corruption.
self._infer_lock = threading.Lock()
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self._model_name = model_name
logger.info("[Qwen3_VLLM] Model ready | model=%s", model_name)
def _process_inputs(
self,
pairs: List[Tuple[str, str]],
) -> List[TokensPrompt]:
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"""Build tokenized prompts for vLLM from (query, doc) pairs. Batch apply_chat_template."""
messages_batch = [
_format_instruction(self._instruction, q, d) for q, d in pairs
]
tokenized = self._tokenizer.apply_chat_template(
messages_batch,
tokenize=True,
add_generation_prompt=False,
enable_thinking=False,
)
# Single conv returns flat list; batch returns list of lists
if tokenized and not isinstance(tokenized[0], list):
tokenized = [tokenized]
prompts = [
TokensPrompt(
prompt_token_ids=ids[: self._max_prompt_len] + self._suffix_tokens
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)
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for ids in tokenized
]
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return prompts
def _compute_scores(
self,
prompts: List[TokensPrompt],
) -> List[float]:
"""Run vLLM generate and compute yes/no probability per prompt."""
if not prompts:
return []
outputs = self._llm.generate(prompts, self._sampling_params, use_tqdm=False)
scores = []
for i in range(len(outputs)):
out = outputs[i]
if not out.outputs:
scores.append(0.0)
continue
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final_logits = out.outputs[0].logprobs
if not final_logits:
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scores.append(0.0)
continue
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last = final_logits[-1]
# Match official: missing token -> logprob = -10
if self._true_token not in last:
true_logit = -10
else:
true_logit = last[self._true_token].logprob
if self._false_token not in last:
false_logit = -10
else:
false_logit = last[self._false_token].logprob
true_score = math.exp(true_logit)
false_score = math.exp(false_logit)
score = true_score / (true_score + false_score)
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scores.append(float(score))
return scores
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def _estimate_doc_lengths(self, docs: List[str]) -> List[int]:
"""
Estimate token lengths for sorting documents into similar-length batches.
Falls back to character length when tokenizer length output is unavailable.
"""
if not docs:
return []
if self._length_sort_mode == "char":
return [len(text) for text in docs]
try:
enc = self._tokenizer(
docs,
add_special_tokens=False,
truncation=True,
max_length=self._max_prompt_len,
return_length=True,
)
lengths = enc.get("length")
if isinstance(lengths, list) and len(lengths) == len(docs):
return [int(x) for x in lengths]
except Exception as exc:
logger.debug("Length estimation fallback to char length: %s", exc)
return [len(text) for text in docs]
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def score_with_meta(
self,
query: str,
docs: List[str],
normalize: bool = True,
) -> Tuple[List[float], Dict[str, Any]]:
start_ts = time.time()
total_docs = len(docs) if docs else 0
output_scores: List[float] = [0.0] * total_docs
query = "" if query is None else str(query).strip()
indexed: List[Tuple[int, str]] = []
for i, doc in enumerate(docs or []):
if doc is None:
continue
text = str(doc).strip()
if not text:
continue
indexed.append((i, text))
if not query or not indexed:
elapsed_ms = (time.time() - start_ts) * 1000.0
return output_scores, {
"input_docs": total_docs,
"usable_docs": len(indexed),
"unique_docs": 0,
"dedup_ratio": 0.0,
"elapsed_ms": round(elapsed_ms, 3),
"model": self._model_name,
"backend": "qwen3_vllm",
"normalize": normalize,
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"infer_batch_size": self._infer_batch_size,
"inference_batches": 0,
"sort_by_doc_length": self._sort_by_doc_length,
"length_sort_mode": self._length_sort_mode,
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}
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# Deduplicate globally by text, keep mapping to original indices.
indexed_texts = [text for _, text in indexed]
unique_texts, position_to_unique = deduplicate_with_positions(indexed_texts)
lengths = self._estimate_doc_lengths(unique_texts)
order = list(range(len(unique_texts)))
if self._sort_by_doc_length and len(unique_texts) > 1:
order = sort_indices_by_length(lengths)
unique_scores: List[float] = [0.0] * len(unique_texts)
inference_batches = 0
for batch_indices in iter_batches(order, self._infer_batch_size):
inference_batches += 1
pairs = [(query, unique_texts[i]) for i in batch_indices]
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prompts = self._process_inputs(pairs)
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with self._infer_lock:
batch_scores = self._compute_scores(prompts)
if len(batch_scores) != len(batch_indices):
raise RuntimeError(
f"Reranker score size mismatch: expected {len(batch_indices)}, got {len(batch_scores)}"
)
for idx, score in zip(batch_indices, batch_scores):
unique_scores[idx] = float(score)
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for (orig_idx, _), unique_idx in zip(indexed, position_to_unique):
# Score is already P(yes) in [0,1] from yes/(yes+no)
output_scores[orig_idx] = float(unique_scores[unique_idx])
elapsed_ms = (time.time() - start_ts) * 1000.0
dedup_ratio = 0.0
if indexed:
dedup_ratio = 1.0 - (len(unique_texts) / float(len(indexed)))
meta = {
"input_docs": total_docs,
"usable_docs": len(indexed),
"unique_docs": len(unique_texts),
"dedup_ratio": round(dedup_ratio, 4),
"elapsed_ms": round(elapsed_ms, 3),
"model": self._model_name,
"backend": "qwen3_vllm",
"normalize": normalize,
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"infer_batch_size": self._infer_batch_size,
"inference_batches": inference_batches,
"sort_by_doc_length": self._sort_by_doc_length,
"length_sort_mode": self._length_sort_mode,
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}
return output_scores, meta
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