Files
ragflow/rag/llm/rerank_model.py
VincentLambert 8f87e19120 feat(llm): add AWS Bedrock reranker connector (#16960)
## What

Adds a reranker connector for the **Bedrock** factory, which previously
offered
chat/embedding/CV models but no reranker — selecting a Bedrock rerank
model
raised `Factory not in rerank model`.

## How

`BedrockRerank` calls the `bedrock-agent-runtime` Rerank API. It reuses
the same
JSON key protocol as `BedrockEmbed` (`auth_mode` / `bedrock_region` /
`bedrock_ak` / `bedrock_sk`, with `access_key_secret` / `iam_role` /
`assume_role` modes). Documents are truncated to the model window
(Cohere Rerank
v3.5 ~2k of its shared 4k window, Amazon Rerank v1 8k) on top of
Bedrock's own
internal truncation. Scores are returned in `[0, 1]`, so the shared
`Base.similarity` normalization applies unchanged.

Verified against `amazon.rerank-v1:0` and `cohere.rerank-v3-5:0` in
`eu-central-1`.

> Note: this PR adds the connector only. Bedrock rerank models can be
selected by
> adding the relevant entries to `conf/llm_factories.json` under the
Bedrock
> provider; that catalog change is intentionally left out of this PR.

## Tests

`test/unit_test/rag/llm/test_bedrock_rerank.py` — boto3 is mocked (no
AWS call):
score-by-index mapping, per-model document truncation, model ARN
construction,
auth-mode validation and the empty-input short-circuit. `pytest` green
alongside
the existing reranker normalization suite.

🤖 Generated with [Claude Code](https://claude.com/claude-code)
2026-07-16 11:06:20 +08:00

757 lines
30 KiB
Python

#
# Copyright 2024 The InfiniFlow Authors. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
#
import json
import logging
import time
from abc import ABC
from urllib.parse import urljoin
from typing import Tuple, List
from http import HTTPStatus
import numpy as np
import requests
from yarl import URL
from common.log_utils import log_exception
from common.token_utils import num_tokens_from_string, truncate, total_token_count_from_response
class Base(ABC):
def __init__(self, key, model_name, **kwargs):
pass
def similarity(self, query: str, texts: List) -> Tuple[np.ndarray, int]:
"""Score ``texts`` against ``query`` and return ``(rank, token_count)``.
This is the single public entry point shared by every reranker. It
short-circuits empty input and guarantees the returned scores are
min-max normalized to ``[0, 1]`` regardless of what the backend emits
(relevance scores, cosine similarities or raw logits). Downstream
hybrid scoring blends the reranker output with token similarity on a
fixed ``[0, 1]`` scale, so an un-normalized provider (e.g. NVIDIA's
unbounded logits) would otherwise corrupt the final ordering.
Subclasses implement provider-specific scoring in :meth:`_compute_rank`
and must not normalize themselves.
"""
if not query or not texts:
return np.zeros(len(texts) if texts else 0, dtype=float), 0
rank, token_count = self._compute_rank(query, texts)
rank = np.asarray(rank, dtype=float)
if rank.size:
logging.debug(
"Rerank %s scores before normalization: count=%d min=%.4f max=%.4f",
self.__class__.__name__,
rank.size,
float(np.min(rank)),
float(np.max(rank)),
)
return self._normalize_rank(rank), token_count
def _compute_rank(self, query: str, texts: List) -> Tuple[np.ndarray, int]:
"""Provider-specific scoring. ``query`` and ``texts`` are non-empty."""
raise NotImplementedError("Please implement _compute_rank method!")
@staticmethod
def _normalize_rank(rank: np.ndarray) -> np.ndarray:
"""Guarantee scores land in ``[0, 1]`` for the hybrid blend.
Providers that already emit calibrated relevance scores in ``[0, 1]``
(Cohere, Jina, Voyage, ...) are returned unchanged, so their absolute
magnitudes, ``similarity_threshold`` semantics and reported
``vector_similarity`` are preserved. Only out-of-range output (e.g.
NVIDIA's unbounded, often negative logits) is rescaled: a batch with a
usable spread is min-max mapped onto ``[0, 1]`` (which stops a negative
logit from dragging a relevant chunk below pure keyword matches once
weighted by ``vtweight``), while a spreadless batch (including a single
candidate) has no relative signal and is clamped instead, so a lone
high score is not silently zeroed.
"""
if rank.size == 0:
return rank
min_rank = float(np.min(rank))
max_rank = float(np.max(rank))
if min_rank >= 0.0 and max_rank <= 1.0:
return rank
span = max_rank - min_rank
if span < 1e-3:
return np.clip(rank, 0.0, 1.0)
return (rank - min_rank) / span
class JinaRerank(Base):
_FACTORY_NAME = "Jina"
def __init__(self, key, model_name="jina-reranker-v2-base-multilingual", base_url="https://api.jina.ai/v1/rerank"):
self.base_url = base_url or "https://api.jina.ai/v1/rerank"
self.headers = {"Content-Type": "application/json", "Authorization": f"Bearer {key}"}
self.model_name = model_name
def _compute_rank(self, query: str, texts: List) -> Tuple[np.ndarray, int]:
texts = [truncate(t, 8196) for t in texts]
data = {"model": self.model_name, "query": query, "documents": texts, "top_n": len(texts)}
response = requests.post(self.base_url, headers=self.headers, json=data, timeout=30)
response.raise_for_status()
res = response.json()
rank = np.zeros(len(texts), dtype=float)
try:
for d in res.get("results", []):
rank[d["index"]] = d["relevance_score"]
except Exception as _e:
log_exception(_e, res)
return rank, total_token_count_from_response(res)
class XInferenceRerank(Base):
_FACTORY_NAME = "Xinference"
def __init__(self, key="x", model_name="", base_url=""):
if base_url.find("/v1") == -1:
base_url = urljoin(base_url, "/v1/rerank")
if base_url.find("/rerank") == -1:
base_url = urljoin(base_url, "/v1/rerank")
self.model_name = model_name
self.base_url = base_url
self.headers = {"Content-Type": "application/json", "accept": "application/json"}
if key and key != "x":
self.headers["Authorization"] = f"Bearer {key}"
def _compute_rank(self, query: str, texts: List) -> Tuple[np.ndarray, int]:
pairs = [(query, truncate(t, 4096)) for t in texts]
token_count = 0
for _, t in pairs:
token_count += num_tokens_from_string(t)
data = {"model": self.model_name, "query": query, "return_documents": "true", "return_len": "true", "documents": texts}
response = requests.post(self.base_url, headers=self.headers, json=data, timeout=30)
response.raise_for_status()
res = response.json()
rank = np.zeros(len(texts), dtype=float)
try:
for d in res.get("results", []):
rank[d["index"]] = d["relevance_score"]
except Exception as _e:
log_exception(_e, res)
return rank, token_count
class LocalAIRerank(Base):
_FACTORY_NAME = "LocalAI"
def __init__(self, key, model_name, base_url):
if base_url.find("/rerank") == -1:
self.base_url = urljoin(base_url, "/rerank")
else:
self.base_url = base_url
self.headers = {"Content-Type": "application/json", "Authorization": f"Bearer {key}"}
self.model_name = model_name.split("___")[0]
def _compute_rank(self, query: str, texts: List) -> Tuple[np.ndarray, int]:
texts = [truncate(t, 500) for t in texts]
data = {
"model": self.model_name,
"query": query,
"documents": texts,
"top_n": len(texts),
}
token_count = 0
for t in texts:
token_count += num_tokens_from_string(t)
response = requests.post(self.base_url, headers=self.headers, json=data, timeout=30)
response.raise_for_status()
res = response.json()
rank = np.zeros(len(texts), dtype=float)
try:
for d in res.get("results", []):
rank[d["index"]] = d["relevance_score"]
except Exception as _e:
log_exception(_e, res)
return rank, token_count
class NvidiaRerank(Base):
_FACTORY_NAME = "NVIDIA"
def __init__(self, key, model_name, base_url="https://ai.api.nvidia.com/v1/retrieval/nvidia/"):
if not base_url:
base_url = "https://ai.api.nvidia.com/v1/retrieval/nvidia/"
self.model_name = model_name
if self.model_name == "nvidia/nv-rerankqa-mistral-4b-v3":
self.base_url = urljoin(base_url, "nv-rerankqa-mistral-4b-v3/reranking")
if self.model_name == "nvidia/rerank-qa-mistral-4b":
self.base_url = urljoin(base_url, "reranking")
self.model_name = "nv-rerank-qa-mistral-4b:1"
self.headers = {
"accept": "application/json",
"Content-Type": "application/json",
"Authorization": f"Bearer {key}",
}
def _compute_rank(self, query: str, texts: List) -> Tuple[np.ndarray, int]:
token_count = num_tokens_from_string(query) + sum([num_tokens_from_string(t) for t in texts])
data = {
"model": self.model_name,
"query": {"text": query},
"passages": [{"text": text} for text in texts],
"truncate": "END",
"top_n": len(texts),
}
response = requests.post(self.base_url, headers=self.headers, json=data, timeout=30)
response.raise_for_status()
res = response.json()
rank = np.zeros(len(texts), dtype=float)
try:
for d in res.get("rankings", []):
rank[d["index"]] = d["logit"]
except Exception as _e:
log_exception(_e, res)
return rank, token_count
class LmStudioRerank(Base):
_FACTORY_NAME = "LM-Studio"
def __init__(self, key, model_name, base_url, **kwargs):
pass
def _compute_rank(self, query: str, texts: List) -> Tuple[np.ndarray, int]:
raise NotImplementedError("The LmStudioRerank has not been implemented")
class OpenAI_APIRerank(Base):
_FACTORY_NAME = "OpenAI-API-Compatible"
def __init__(self, key, model_name, base_url):
normalized_base_url = (base_url or "").strip()
if "/rerank" in normalized_base_url:
self.base_url = normalized_base_url.rstrip("/")
else:
self.base_url = urljoin(f"{normalized_base_url.rstrip('/')}/", "rerank").rstrip("/")
self.headers = {"Content-Type": "application/json", "Authorization": f"Bearer {key}"}
self.model_name = model_name.split("___")[0]
def _compute_rank(self, query: str, texts: List) -> Tuple[np.ndarray, int]:
texts = [truncate(t, 500) for t in texts]
data = {
"model": self.model_name,
"query": query,
"documents": texts,
"top_n": len(texts),
}
token_count = 0
for t in texts:
token_count += num_tokens_from_string(t)
response = requests.post(self.base_url, headers=self.headers, json=data, timeout=30)
response.raise_for_status()
res = response.json()
rank = np.zeros(len(texts), dtype=float)
try:
for d in res.get("results", []):
rank[d["index"]] = d["relevance_score"]
except Exception as _e:
log_exception(_e, res)
return rank, token_count
class CoHereRerank(Base):
_FACTORY_NAME = ["Cohere", "VLLM"]
def __init__(self, key, model_name, base_url=None):
from cohere import Client
client_kwargs = {"api_key": key, "timeout": 30.0}
if base_url and base_url.strip():
client_kwargs["base_url"] = base_url
self.client = Client(**client_kwargs)
self.model_name = model_name.split("___")[0]
def _compute_rank(self, query: str, texts: List) -> Tuple[np.ndarray, int]:
token_count = num_tokens_from_string(query) + sum([num_tokens_from_string(t) for t in texts])
res = self.client.rerank(
model=self.model_name,
query=query,
documents=texts,
top_n=len(texts),
return_documents=False,
)
rank = np.zeros(len(texts), dtype=float)
try:
for d in res.results:
rank[d.index] = d.relevance_score
except Exception as _e:
log_exception(_e, res)
return rank, token_count
# Reranker connector for AWS Bedrock, calling the bedrock-agent-runtime Rerank
# API (e.g. amazon.rerank-v1:0, cohere.rerank-v3-5:0). The JSON key protocol
# (auth_mode / bedrock_region / bedrock_ak / bedrock_sk) mirrors BedrockEmbed in
# embedding_model.py.
class BedrockRerank(Base):
_FACTORY_NAME = "Bedrock"
# Hard limits of the bedrock-agent-runtime Rerank API: each document text
# (RerankTextDocument.text) is capped at 32,000 characters, and a single
# request accepts at most 1,000 sources / numberOfResults.
_MAX_DOC_CHARS = 32000
_MAX_SOURCES = 1000
def __init__(self, key, model_name, **kwargs):
import boto3
key = json.loads(key)
mode = key.get("auth_mode")
if not mode:
logging.error("Bedrock auth_mode is not provided in the key")
raise ValueError("Bedrock auth_mode must be provided in the key")
self.bedrock_region = key.get("bedrock_region")
self.model_name = model_name
# On-demand foundation-model ARN; works for amazon.rerank-v1:0 / cohere.rerank-*.
self.model_arn = f"arn:aws:bedrock:{self.bedrock_region}::foundation-model/{self.model_name}"
# Per-document truncation guard sized to the model window. Cohere Rerank
# v3.5 shares a ~4k window between query and document (~2048 for docs);
# Amazon Rerank v1 handles 32k, but chunks are small so a generous cap
# just bounds pathological payloads. Bedrock also truncates internally.
self.doc_max_tokens = 2048 if self.model_name.split(".")[0] == "cohere" else 8192
# Rerank lives on the bedrock-agent-runtime service, not bedrock-runtime.
if mode == "access_key_secret":
self.client = boto3.client(
service_name="bedrock-agent-runtime",
region_name=self.bedrock_region,
aws_access_key_id=key.get("bedrock_ak"),
aws_secret_access_key=key.get("bedrock_sk"),
)
elif mode == "iam_role":
sts_client = boto3.client("sts", region_name=self.bedrock_region)
resp = sts_client.assume_role(RoleArn=key.get("aws_role_arn"), RoleSessionName="BedrockSession")
creds = resp["Credentials"]
self.client = boto3.client(
service_name="bedrock-agent-runtime",
region_name=self.bedrock_region,
aws_access_key_id=creds["AccessKeyId"],
aws_secret_access_key=creds["SecretAccessKey"],
aws_session_token=creds["SessionToken"],
)
else: # assume_role: default AWS credential chain
self.client = boto3.client("bedrock-agent-runtime", region_name=self.bedrock_region)
def _compute_rank(self, query: str, texts: List) -> Tuple[np.ndarray, int]:
# Truncate to the model token window, then enforce the API's hard 32k-char
# per-text limit (a longer RerankTextQuery / RerankTextDocument is rejected).
query = query[: self._MAX_DOC_CHARS]
texts = [truncate(t, self.doc_max_tokens)[: self._MAX_DOC_CHARS] for t in texts]
# Bedrock does not report token usage; count locally like CoHereRerank.
token_count = num_tokens_from_string(query) + sum(num_tokens_from_string(t) for t in texts)
rank = np.zeros(len(texts), dtype=float)
result_count = 0
started = time.perf_counter()
# Both `sources` and `numberOfResults` are capped at 1,000 per request;
# rerank in batches and map each score back to its global position.
for offset in range(0, len(texts), self._MAX_SOURCES):
batch = texts[offset : offset + self._MAX_SOURCES]
sources = [{"type": "INLINE", "inlineDocumentSource": {"type": "TEXT", "textDocument": {"text": t}}} for t in batch]
reranking_config = {
"type": "BEDROCK_RERANKING_MODEL",
"bedrockRerankingConfiguration": {
"numberOfResults": len(batch),
"modelConfiguration": {"modelArn": self.model_arn},
},
}
# Drain paginated results: the API may split a batch across nextToken pages.
next_token = None
while True:
request = {"queries": [{"type": "TEXT", "textQuery": {"text": query}}], "sources": sources, "rerankingConfiguration": reranking_config}
if next_token:
request["nextToken"] = next_token
res = self.client.rerank(**request)
try:
for d in res.get("results", []):
rank[offset + d["index"]] = d["relevanceScore"]
result_count += 1
except (KeyError, IndexError, TypeError) as _e:
log_exception(_e, res)
next_token = res.get("nextToken")
if not next_token:
break
# Safe diagnostics only: no query, document text or credentials.
logging.debug(
"BedrockRerank model=%s region=%s sources=%d tokens=%d results=%d elapsed=%.3fs",
self.model_name,
self.bedrock_region,
len(texts),
token_count,
result_count,
time.perf_counter() - started,
)
return rank, token_count
class TogetherAIRerank(Base):
_FACTORY_NAME = "TogetherAI"
def __init__(self, key, model_name, base_url, **kwargs):
pass
def _compute_rank(self, query: str, texts: List) -> Tuple[np.ndarray, int]:
raise NotImplementedError("The api has not been implemented")
class SILICONFLOWRerank(Base):
_FACTORY_NAME = "SILICONFLOW"
def __init__(self, key, model_name, base_url="https://api.siliconflow.cn/v1/rerank"):
normalized_base_url = (base_url or "").strip()
if not normalized_base_url:
normalized_base_url = "https://api.siliconflow.cn/v1/rerank"
if "/rerank" not in normalized_base_url:
normalized_base_url = urljoin(f"{normalized_base_url.rstrip('/')}/", "rerank").rstrip("/")
self.model_name = model_name
self.base_url = normalized_base_url
self.headers = {
"accept": "application/json",
"content-type": "application/json",
"authorization": f"Bearer {key}",
}
def _compute_rank(self, query: str, texts: List) -> Tuple[np.ndarray, int]:
payload = {
"model": self.model_name,
"query": query,
"documents": texts,
"top_n": len(texts),
"return_documents": False,
"max_chunks_per_doc": 1024,
"overlap_tokens": 80,
}
response = requests.post(self.base_url, json=payload, headers=self.headers, timeout=30)
response.raise_for_status()
res = response.json()
rank = np.zeros(len(texts), dtype=float)
try:
for d in res.get("results", []):
rank[d["index"]] = d["relevance_score"]
except Exception as _e:
log_exception(_e, response)
return rank, total_token_count_from_response(res)
class BaiduYiyanRerank(Base):
_FACTORY_NAME = "BaiduYiyan"
def __init__(self, key, model_name, base_url=None):
from qianfan.resources import Reranker
key = json.loads(key)
ak = key.get("yiyan_ak", "")
sk = key.get("yiyan_sk", "")
self.client = Reranker(ak=ak, sk=sk, request_timeout=30)
self.model_name = model_name
def _compute_rank(self, query: str, texts: List) -> Tuple[np.ndarray, int]:
res = self.client.do(
model=self.model_name,
query=query,
documents=texts,
top_n=len(texts),
).body
rank = np.zeros(len(texts), dtype=float)
try:
for d in res.get("results", []):
rank[d["index"]] = d["relevance_score"]
except Exception as _e:
log_exception(_e, res)
return rank, total_token_count_from_response(res)
class VoyageRerank(Base):
_FACTORY_NAME = "Voyage AI"
def __init__(self, key, model_name, base_url=None):
import voyageai
self.client = voyageai.Client(api_key=key, timeout=30.0)
self.model_name = model_name
def _compute_rank(self, query: str, texts: List) -> Tuple[np.ndarray, int]:
rank = np.zeros(len(texts), dtype=float)
res = self.client.rerank(query=query, documents=texts, model=self.model_name, top_k=len(texts))
try:
for r in res.results:
rank[r.index] = r.relevance_score
except Exception as _e:
log_exception(_e, res)
return rank, res.total_tokens
class QWenRerank(Base):
_FACTORY_NAME = "Tongyi-Qianwen"
def __init__(self, key, model_name="gte-rerank", **kwargs):
import dashscope
self.api_key = key
self.model_name = dashscope.TextReRank.Models.gte_rerank if model_name is None else model_name
# Remove invalid global timeout, use official SDK per-request timeout parameter
self.request_timeout = 30.0
def _compute_rank(self, query: str, texts: List) -> Tuple[np.ndarray, int]:
import dashscope
# Pass official request_timeout parameter to both API call branches
if self.model_name.startswith("qwen3-rerank"):
resp = dashscope.TextReRank.call(api_key=self.api_key, model=self.model_name, query=query, documents=texts, top_n=len(texts), request_timeout=self.request_timeout)
else:
resp = dashscope.TextReRank.call(api_key=self.api_key, model=self.model_name, query=query, documents=texts, top_n=len(texts), return_documents=False, request_timeout=self.request_timeout)
rank = np.zeros(len(texts), dtype=float)
if resp.status_code == HTTPStatus.OK:
try:
for r in resp.output.results:
rank[r.index] = r.relevance_score
except Exception as _e:
log_exception(_e, resp)
return rank, total_token_count_from_response(resp)
else:
try:
error_body = resp["text"] if isinstance(resp, dict) and "text" in resp else None
except Exception:
error_body = None
if not error_body:
try:
error_body = json.dumps(dict(resp), ensure_ascii=False)
except Exception:
error_body = str(resp)
raise ValueError(f"Error calling QWenRerank model {self.model_name}: {resp.status_code} - {error_body}")
class HuggingfaceRerank(Base):
_FACTORY_NAME = "HuggingFace"
@staticmethod
def post(query: str, texts: list, url: str = "http://127.0.0.1"):
exc = None
scores = [0 for _ in range(len(texts))]
batch_size = 8
# FIX: Robust URL construction to avoid duplicate "/rerank" path suffix
base_url = url.rstrip("/")
if not base_url.startswith(("http://", "https://")):
base_url = f"http://{base_url}"
# Only append "/rerank" when endpoint does not already end with it
endpoint = base_url if base_url.endswith("/rerank") else f"{base_url}/rerank"
for i in range(0, len(texts), batch_size):
try:
# Fix: Add request timeout
res = requests.post(
endpoint, headers={"Content-Type": "application/json"}, json={"query": query, "texts": texts[i : i + batch_size], "raw_scores": False, "truncate": True}, timeout=30
)
res.raise_for_status()
for o in res.json():
scores[o["index"] + i] = o["score"]
except Exception as e:
exc = e
if exc:
raise exc
return np.array(scores)
def __init__(self, key, model_name="BAAI/bge-reranker-v2-m3", base_url="http://127.0.0.1"):
self.model_name = model_name.split("___")[0]
self.base_url = base_url
def _compute_rank(self, query: str, texts: List) -> tuple[np.ndarray, int]:
token_count = 0
for t in texts:
token_count += num_tokens_from_string(t)
return HuggingfaceRerank.post(query, texts, self.base_url), token_count
class GPUStackRerank(Base):
_FACTORY_NAME = "GPUStack"
def __init__(self, key, model_name, base_url):
if not base_url:
raise ValueError("url cannot be None")
self.model_name = model_name
self.base_url = str(URL(base_url) / "v1" / "rerank")
self.headers = {
"accept": "application/json",
"content-type": "application/json",
"authorization": f"Bearer {key}",
}
def _compute_rank(self, query: str, texts: List) -> Tuple[np.ndarray, int]:
payload = {
"model": self.model_name,
"query": query,
"documents": texts,
"top_n": len(texts),
}
try:
response = requests.post(self.base_url, json=payload, headers=self.headers, timeout=30)
response.raise_for_status()
response_json = response.json()
rank = np.zeros(len(texts), dtype=float)
token_count = sum(num_tokens_from_string(t) for t in texts)
try:
for result in response_json.get("results", []):
rank[result["index"]] = result["relevance_score"]
except Exception as _e:
log_exception(_e, response)
return (rank, token_count)
except requests.exceptions.RequestException as e:
raise ValueError(f"Error calling GPUStackRerank model {self.model_name}: {str(e)}") from e
class NovitaRerank(JinaRerank):
_FACTORY_NAME = "NovitaAI"
def __init__(self, key, model_name, base_url="https://api.novita.ai/v3/openai/rerank"):
if not base_url:
base_url = "https://api.novita.ai/v3/openai/rerank"
super().__init__(key, model_name, base_url)
class GiteeRerank(JinaRerank):
_FACTORY_NAME = "GiteeAI"
def __init__(self, key, model_name, base_url="https://ai.gitee.com/v1/rerank"):
if not base_url:
base_url = "https://ai.gitee.com/v1/rerank"
super().__init__(key, model_name, base_url)
class Ai302Rerank(Base):
_FACTORY_NAME = "302.AI"
def __init__(self, key, model_name, base_url="https://api.302.ai/v1/rerank"):
self.base_url = base_url or "https://api.302.ai/v1/rerank"
self.headers = {"Content-Type": "application/json", "Authorization": f"Bearer {key}"}
self.model_name = model_name
def _compute_rank(self, query: str, texts: List) -> Tuple[np.ndarray, int]:
texts = [truncate(t, 500) for t in texts]
data = {"model": self.model_name, "query": query, "documents": texts, "top_n": len(texts)}
response = requests.post(self.base_url, headers=self.headers, json=data, timeout=30)
response.raise_for_status()
res = response.json()
rank = np.zeros(len(texts), dtype=float)
try:
for d in res.get("results", []):
rank[d["index"]] = d["relevance_score"]
except Exception as _e:
log_exception(_e, res)
return rank, total_token_count_from_response(res)
class JiekouAIRerank(JinaRerank):
_FACTORY_NAME = "Jiekou.AI"
def __init__(self, key, model_name, base_url="https://api.jiekou.ai/openai/v1/rerank"):
if not base_url:
base_url = "https://api.jiekou.ai/openai/v1/rerank"
super().__init__(key, model_name, base_url)
class FuturMixRerank(OpenAI_APIRerank):
_FACTORY_NAME = "FuturMix"
def __init__(self, key, model_name, base_url="https://futurmix.ai/v1/rerank"):
if not base_url:
base_url = "https://futurmix.ai/v1/rerank"
super().__init__(key, model_name, base_url)
logging.info("[FuturMix] Rerank initialized with model %s", model_name)
class RAGconRerank(Base):
_FACTORY_NAME = "RAGcon"
def __init__(self, key, model_name, base_url=None, **kwargs):
if not base_url:
base_url = "https://connect.ragcon.com/v1"
self._api_key = key
self._base_url = base_url
self.headers = {"Content-Type": "application/json", "Authorization": f"Bearer {key}"}
self.model_name = model_name
def _compute_rank(self, query: str, texts: List) -> Tuple[np.ndarray, int]:
texts = [truncate(t, 500) for t in texts]
data = {
"model": self.model_name,
"query": query,
"documents": texts,
"top_n": len(texts),
}
token_count = sum(num_tokens_from_string(t) for t in texts)
response = requests.post(self._base_url + "/rerank", headers=self.headers, json=data, timeout=30)
response.raise_for_status()
res = response.json()
rank = np.zeros(len(texts), dtype=float)
try:
for d in res.get("results", []):
rank[d["index"]] = d["relevance_score"]
except Exception as _e:
log_exception(_e, res)
return rank, token_count
class NewAPIRerank(Base):
_FACTORY_NAME = "New API"
def __init__(self, key, model_name, base_url):
normalized_base_url = (base_url or "").strip()
if "/rerank" in normalized_base_url:
self.base_url = normalized_base_url.rstrip("/")
else:
self.base_url = urljoin(f"{normalized_base_url.rstrip('/')}/", "rerank").rstrip("/")
self.headers = {
"Content-Type": "application/json",
"Authorization": f"Bearer {key}",
}
self.model_name = model_name.split("___")[0]
def _compute_rank(self, query: str, texts: list):
texts = [truncate(t, 500) for t in texts]
data = {
"model": self.model_name,
"query": query,
"documents": texts,
"top_n": len(texts),
}
token_count = sum(num_tokens_from_string(t) for t in texts)
res = requests.post(self.base_url, headers=self.headers, json=data).json()
rank = np.zeros(len(texts), dtype=float)
try:
for d in res["results"]:
rank[d["index"]] = d["relevance_score"]
except Exception as _e:
log_exception(_e, res)
return rank, token_count