- #
 - #  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 os
 - import re
 - import threading
 - from abc import ABC
 - from urllib.parse import urljoin
 - 
 - import dashscope
 - import google.generativeai as genai
 - import numpy as np
 - import requests
 - from huggingface_hub import snapshot_download
 - from ollama import Client
 - from openai import OpenAI
 - from zhipuai import ZhipuAI
 - 
 - from api import settings
 - from api.utils.file_utils import get_home_cache_dir
 - from api.utils.log_utils import log_exception
 - from rag.utils import num_tokens_from_string, truncate
 - 
 - 
 - class Base(ABC):
 -     def __init__(self, key, model_name):
 -         pass
 - 
 -     def encode(self, texts: list):
 -         raise NotImplementedError("Please implement encode method!")
 - 
 -     def encode_queries(self, text: str):
 -         raise NotImplementedError("Please implement encode method!")
 - 
 -     def total_token_count(self, resp):
 -         try:
 -             return resp.usage.total_tokens
 -         except Exception:
 -             pass
 -         try:
 -             return resp["usage"]["total_tokens"]
 -         except Exception:
 -             pass
 -         return 0
 - 
 - 
 - class DefaultEmbedding(Base):
 -     _FACTORY_NAME = "BAAI"
 -     os.environ["CUDA_VISIBLE_DEVICES"] = "0"
 -     _model = None
 -     _model_name = ""
 -     _model_lock = threading.Lock()
 - 
 -     def __init__(self, key, model_name, **kwargs):
 -         """
 -         If you have trouble downloading HuggingFace models, -_^ this might help!!
 - 
 -         For Linux:
 -         export HF_ENDPOINT=https://hf-mirror.com
 - 
 -         For Windows:
 -         Good luck
 -         ^_-
 - 
 -         """
 -         if not settings.LIGHTEN:
 -             with DefaultEmbedding._model_lock:
 -                 import torch
 -                 from FlagEmbedding import FlagModel
 - 
 -                 if not DefaultEmbedding._model or model_name != DefaultEmbedding._model_name:
 -                     try:
 -                         DefaultEmbedding._model = FlagModel(
 -                             os.path.join(get_home_cache_dir(), re.sub(r"^[a-zA-Z0-9]+/", "", model_name)),
 -                             query_instruction_for_retrieval="为这个句子生成表示以用于检索相关文章:",
 -                             use_fp16=torch.cuda.is_available(),
 -                         )
 -                         DefaultEmbedding._model_name = model_name
 -                     except Exception:
 -                         model_dir = snapshot_download(
 -                             repo_id="BAAI/bge-large-zh-v1.5", local_dir=os.path.join(get_home_cache_dir(), re.sub(r"^[a-zA-Z0-9]+/", "", model_name)), local_dir_use_symlinks=False
 -                         )
 -                         DefaultEmbedding._model = FlagModel(model_dir, query_instruction_for_retrieval="为这个句子生成表示以用于检索相关文章:", use_fp16=torch.cuda.is_available())
 -         self._model = DefaultEmbedding._model
 -         self._model_name = DefaultEmbedding._model_name
 - 
 -     def encode(self, texts: list):
 -         batch_size = 16
 -         texts = [truncate(t, 2048) for t in texts]
 -         token_count = 0
 -         for t in texts:
 -             token_count += num_tokens_from_string(t)
 -         ress = []
 -         for i in range(0, len(texts), batch_size):
 -             ress.extend(self._model.encode(texts[i : i + batch_size]).tolist())
 -         return np.array(ress), token_count
 - 
 -     def encode_queries(self, text: str):
 -         token_count = num_tokens_from_string(text)
 -         return self._model.encode_queries([text]).tolist()[0], token_count
 - 
 - 
 - class OpenAIEmbed(Base):
 -     _FACTORY_NAME = "OpenAI"
 - 
 -     def __init__(self, key, model_name="text-embedding-ada-002", base_url="https://api.openai.com/v1"):
 -         if not base_url:
 -             base_url = "https://api.openai.com/v1"
 -         self.client = OpenAI(api_key=key, base_url=base_url)
 -         self.model_name = model_name
 - 
 -     def encode(self, texts: list):
 -         # OpenAI requires batch size <=16
 -         batch_size = 16
 -         texts = [truncate(t, 8191) for t in texts]
 -         ress = []
 -         total_tokens = 0
 -         for i in range(0, len(texts), batch_size):
 -             res = self.client.embeddings.create(input=texts[i : i + batch_size], model=self.model_name)
 -             try:
 -                 ress.extend([d.embedding for d in res.data])
 -                 total_tokens += self.total_token_count(res)
 -             except Exception as _e:
 -                 log_exception(_e, res)
 -         return np.array(ress), total_tokens
 - 
 -     def encode_queries(self, text):
 -         res = self.client.embeddings.create(input=[truncate(text, 8191)], model=self.model_name)
 -         return np.array(res.data[0].embedding), self.total_token_count(res)
 - 
 - 
 - class LocalAIEmbed(Base):
 -     _FACTORY_NAME = "LocalAI"
 - 
 -     def __init__(self, key, model_name, base_url):
 -         if not base_url:
 -             raise ValueError("Local embedding model url cannot be None")
 -         base_url = urljoin(base_url, "v1")
 -         self.client = OpenAI(api_key="empty", base_url=base_url)
 -         self.model_name = model_name.split("___")[0]
 - 
 -     def encode(self, texts: list):
 -         batch_size = 16
 -         ress = []
 -         for i in range(0, len(texts), batch_size):
 -             res = self.client.embeddings.create(input=texts[i : i + batch_size], model=self.model_name)
 -             try:
 -                 ress.extend([d.embedding for d in res.data])
 -             except Exception as _e:
 -                 log_exception(_e, res)
 -         # local embedding for LmStudio donot count tokens
 -         return np.array(ress), 1024
 - 
 -     def encode_queries(self, text):
 -         embds, cnt = self.encode([text])
 -         return np.array(embds[0]), cnt
 - 
 - 
 - class AzureEmbed(OpenAIEmbed):
 -     _FACTORY_NAME = "Azure-OpenAI"
 - 
 -     def __init__(self, key, model_name, **kwargs):
 -         from openai.lib.azure import AzureOpenAI
 - 
 -         api_key = json.loads(key).get("api_key", "")
 -         api_version = json.loads(key).get("api_version", "2024-02-01")
 -         self.client = AzureOpenAI(api_key=api_key, azure_endpoint=kwargs["base_url"], api_version=api_version)
 -         self.model_name = model_name
 - 
 - 
 - class BaiChuanEmbed(OpenAIEmbed):
 -     _FACTORY_NAME = "BaiChuan"
 - 
 -     def __init__(self, key, model_name="Baichuan-Text-Embedding", base_url="https://api.baichuan-ai.com/v1"):
 -         if not base_url:
 -             base_url = "https://api.baichuan-ai.com/v1"
 -         super().__init__(key, model_name, base_url)
 - 
 - 
 - class QWenEmbed(Base):
 -     _FACTORY_NAME = "Tongyi-Qianwen"
 - 
 -     def __init__(self, key, model_name="text_embedding_v2", **kwargs):
 -         self.key = key
 -         self.model_name = model_name
 - 
 -     def encode(self, texts: list):
 -         import dashscope
 -         import time
 - 
 -         batch_size = 4
 -         res = []
 -         token_count = 0
 -         texts = [truncate(t, 2048) for t in texts]
 -         for i in range(0, len(texts), batch_size):
 -             retry_max = 5
 -             resp = dashscope.TextEmbedding.call(model=self.model_name, input=texts[i : i + batch_size], api_key=self.key, text_type="document")
 -             while (resp["output"] is None or resp["output"].get("embeddings") is None) and retry_max > 0:
 -                 time.sleep(10)
 -                 resp = dashscope.TextEmbedding.call(model=self.model_name, input=texts[i : i + batch_size], api_key=self.key, text_type="document")
 -                 retry_max -= 1
 -             if retry_max == 0 and (resp["output"] is None or resp["output"].get("embeddings") is None):
 -                 if resp.get("message"):
 -                     log_exception(ValueError(f"Retry_max reached, calling embedding model failed: {resp['message']}"))
 -                 else:
 -                     log_exception(ValueError("Retry_max reached, calling embedding model failed"))
 -                 raise
 -             try:
 -                 embds = [[] for _ in range(len(resp["output"]["embeddings"]))]
 -                 for e in resp["output"]["embeddings"]:
 -                     embds[e["text_index"]] = e["embedding"]
 -                 res.extend(embds)
 -                 token_count += self.total_token_count(resp)
 -             except Exception as _e:
 -                 log_exception(_e, resp)
 -                 raise
 -         return np.array(res), token_count
 - 
 -     def encode_queries(self, text):
 -         resp = dashscope.TextEmbedding.call(model=self.model_name, input=text[:2048], api_key=self.key, text_type="query")
 -         try:
 -             return np.array(resp["output"]["embeddings"][0]["embedding"]), self.total_token_count(resp)
 -         except Exception as _e:
 -             log_exception(_e, resp)
 - 
 - 
 - class ZhipuEmbed(Base):
 -     _FACTORY_NAME = "ZHIPU-AI"
 - 
 -     def __init__(self, key, model_name="embedding-2", **kwargs):
 -         self.client = ZhipuAI(api_key=key)
 -         self.model_name = model_name
 - 
 -     def encode(self, texts: list):
 -         arr = []
 -         tks_num = 0
 -         MAX_LEN = -1
 -         if self.model_name.lower() == "embedding-2":
 -             MAX_LEN = 512
 -         if self.model_name.lower() == "embedding-3":
 -             MAX_LEN = 3072
 -         if MAX_LEN > 0:
 -             texts = [truncate(t, MAX_LEN) for t in texts]
 - 
 -         for txt in texts:
 -             res = self.client.embeddings.create(input=txt, model=self.model_name)
 -             try:
 -                 arr.append(res.data[0].embedding)
 -                 tks_num += self.total_token_count(res)
 -             except Exception as _e:
 -                 log_exception(_e, res)
 -         return np.array(arr), tks_num
 - 
 -     def encode_queries(self, text):
 -         res = self.client.embeddings.create(input=text, model=self.model_name)
 -         try:
 -             return np.array(res.data[0].embedding), self.total_token_count(res)
 -         except Exception as _e:
 -             log_exception(_e, res)
 - 
 - 
 - class OllamaEmbed(Base):
 -     _FACTORY_NAME = "Ollama"
 - 
 -     _special_tokens = ["<|endoftext|>"]
 - 
 -     def __init__(self, key, model_name, **kwargs):
 -         self.client = Client(host=kwargs["base_url"]) if not key or key == "x" else Client(host=kwargs["base_url"], headers={"Authorization": f"Bear {key}"})
 -         self.model_name = model_name
 - 
 -     def encode(self, texts: list):
 -         arr = []
 -         tks_num = 0
 -         for txt in texts:
 -             # remove special tokens if they exist
 -             for token in OllamaEmbed._special_tokens:
 -                 txt = txt.replace(token, "")
 -             res = self.client.embeddings(prompt=txt, model=self.model_name, options={"use_mmap": True}, keep_alive=-1)
 -             try:
 -                 arr.append(res["embedding"])
 -             except Exception as _e:
 -                 log_exception(_e, res)
 -             tks_num += 128
 -         return np.array(arr), tks_num
 - 
 -     def encode_queries(self, text):
 -         # remove special tokens if they exist
 -         for token in OllamaEmbed._special_tokens:
 -             text = text.replace(token, "")
 -         res = self.client.embeddings(prompt=text, model=self.model_name, options={"use_mmap": True}, keep_alive=-1)
 -         try:
 -             return np.array(res["embedding"]), 128
 -         except Exception as _e:
 -             log_exception(_e, res)
 - 
 - 
 - class FastEmbed(DefaultEmbedding):
 -     _FACTORY_NAME = "FastEmbed"
 - 
 -     def __init__(
 -         self,
 -         key: str | None = None,
 -         model_name: str = "BAAI/bge-small-en-v1.5",
 -         cache_dir: str | None = None,
 -         threads: int | None = None,
 -         **kwargs,
 -     ):
 -         if not settings.LIGHTEN:
 -             with FastEmbed._model_lock:
 -                 from fastembed import TextEmbedding
 - 
 -                 if not DefaultEmbedding._model or model_name != DefaultEmbedding._model_name:
 -                     try:
 -                         DefaultEmbedding._model = TextEmbedding(model_name, cache_dir, threads, **kwargs)
 -                         DefaultEmbedding._model_name = model_name
 -                     except Exception:
 -                         cache_dir = snapshot_download(
 -                             repo_id="BAAI/bge-small-en-v1.5", local_dir=os.path.join(get_home_cache_dir(), re.sub(r"^[a-zA-Z0-9]+/", "", model_name)), local_dir_use_symlinks=False
 -                         )
 -                         DefaultEmbedding._model = TextEmbedding(model_name, cache_dir, threads, **kwargs)
 -         self._model = DefaultEmbedding._model
 -         self._model_name = model_name
 - 
 -     def encode(self, texts: list):
 -         # Using the internal tokenizer to encode the texts and get the total
 -         # number of tokens
 -         encodings = self._model.model.tokenizer.encode_batch(texts)
 -         total_tokens = sum(len(e) for e in encodings)
 - 
 -         embeddings = [e.tolist() for e in self._model.embed(texts, batch_size=16)]
 - 
 -         return np.array(embeddings), total_tokens
 - 
 -     def encode_queries(self, text: str):
 -         # Using the internal tokenizer to encode the texts and get the total
 -         # number of tokens
 -         encoding = self._model.model.tokenizer.encode(text)
 -         embedding = next(self._model.query_embed(text)).tolist()
 - 
 -         return np.array(embedding), len(encoding.ids)
 - 
 - 
 - class XinferenceEmbed(Base):
 -     _FACTORY_NAME = "Xinference"
 - 
 -     def __init__(self, key, model_name="", base_url=""):
 -         base_url = urljoin(base_url, "v1")
 -         self.client = OpenAI(api_key=key, base_url=base_url)
 -         self.model_name = model_name
 - 
 -     def encode(self, texts: list):
 -         batch_size = 16
 -         ress = []
 -         total_tokens = 0
 -         for i in range(0, len(texts), batch_size):
 -             res = self.client.embeddings.create(input=texts[i : i + batch_size], model=self.model_name)
 -             try:
 -                 ress.extend([d.embedding for d in res.data])
 -                 total_tokens += self.total_token_count(res)
 -             except Exception as _e:
 -                 log_exception(_e, res)
 -         return np.array(ress), total_tokens
 - 
 -     def encode_queries(self, text):
 -         res = self.client.embeddings.create(input=[text], model=self.model_name)
 -         try:
 -             return np.array(res.data[0].embedding), self.total_token_count(res)
 -         except Exception as _e:
 -             log_exception(_e, res)
 - 
 - 
 - class YoudaoEmbed(Base):
 -     _FACTORY_NAME = "Youdao"
 -     _client = None
 - 
 -     def __init__(self, key=None, model_name="maidalun1020/bce-embedding-base_v1", **kwargs):
 -         if not settings.LIGHTEN and not YoudaoEmbed._client:
 -             from BCEmbedding import EmbeddingModel as qanthing
 - 
 -             try:
 -                 logging.info("LOADING BCE...")
 -                 YoudaoEmbed._client = qanthing(model_name_or_path=os.path.join(get_home_cache_dir(), "bce-embedding-base_v1"))
 -             except Exception:
 -                 YoudaoEmbed._client = qanthing(model_name_or_path=model_name.replace("maidalun1020", "InfiniFlow"))
 - 
 -     def encode(self, texts: list):
 -         batch_size = 10
 -         res = []
 -         token_count = 0
 -         for t in texts:
 -             token_count += num_tokens_from_string(t)
 -         for i in range(0, len(texts), batch_size):
 -             embds = YoudaoEmbed._client.encode(texts[i : i + batch_size])
 -             res.extend(embds)
 -         return np.array(res), token_count
 - 
 -     def encode_queries(self, text):
 -         embds = YoudaoEmbed._client.encode([text])
 -         return np.array(embds[0]), num_tokens_from_string(text)
 - 
 - 
 - class JinaEmbed(Base):
 -     _FACTORY_NAME = "Jina"
 - 
 -     def __init__(self, key, model_name="jina-embeddings-v3", base_url="https://api.jina.ai/v1/embeddings"):
 -         self.base_url = "https://api.jina.ai/v1/embeddings"
 -         self.headers = {"Content-Type": "application/json", "Authorization": f"Bearer {key}"}
 -         self.model_name = model_name
 - 
 -     def encode(self, texts: list):
 -         texts = [truncate(t, 8196) for t in texts]
 -         batch_size = 16
 -         ress = []
 -         token_count = 0
 -         for i in range(0, len(texts), batch_size):
 -             data = {"model": self.model_name, "input": texts[i : i + batch_size], "encoding_type": "float"}
 -             response = requests.post(self.base_url, headers=self.headers, json=data)
 -             try:
 -                 res = response.json()
 -                 ress.extend([d["embedding"] for d in res["data"]])
 -                 token_count += self.total_token_count(res)
 -             except Exception as _e:
 -                 log_exception(_e, response)
 -         return np.array(ress), token_count
 - 
 -     def encode_queries(self, text):
 -         embds, cnt = self.encode([text])
 -         return np.array(embds[0]), cnt
 - 
 - 
 - class MistralEmbed(Base):
 -     _FACTORY_NAME = "Mistral"
 - 
 -     def __init__(self, key, model_name="mistral-embed", base_url=None):
 -         from mistralai.client import MistralClient
 - 
 -         self.client = MistralClient(api_key=key)
 -         self.model_name = model_name
 - 
 -     def encode(self, texts: list):
 -         texts = [truncate(t, 8196) for t in texts]
 -         batch_size = 16
 -         ress = []
 -         token_count = 0
 -         for i in range(0, len(texts), batch_size):
 -             res = self.client.embeddings(input=texts[i : i + batch_size], model=self.model_name)
 -             try:
 -                 ress.extend([d.embedding for d in res.data])
 -                 token_count += self.total_token_count(res)
 -             except Exception as _e:
 -                 log_exception(_e, res)
 -         return np.array(ress), token_count
 - 
 -     def encode_queries(self, text):
 -         res = self.client.embeddings(input=[truncate(text, 8196)], model=self.model_name)
 -         try:
 -             return np.array(res.data[0].embedding), self.total_token_count(res)
 -         except Exception as _e:
 -             log_exception(_e, res)
 - 
 - 
 - class BedrockEmbed(Base):
 -     _FACTORY_NAME = "Bedrock"
 - 
 -     def __init__(self, key, model_name, **kwargs):
 -         import boto3
 - 
 -         self.bedrock_ak = json.loads(key).get("bedrock_ak", "")
 -         self.bedrock_sk = json.loads(key).get("bedrock_sk", "")
 -         self.bedrock_region = json.loads(key).get("bedrock_region", "")
 -         self.model_name = model_name
 - 
 -         if self.bedrock_ak == "" or self.bedrock_sk == "" or self.bedrock_region == "":
 -             # Try to create a client using the default credentials (AWS_PROFILE, AWS_DEFAULT_REGION, etc.)
 -             self.client = boto3.client("bedrock-runtime")
 -         else:
 -             self.client = boto3.client(service_name="bedrock-runtime", region_name=self.bedrock_region, aws_access_key_id=self.bedrock_ak, aws_secret_access_key=self.bedrock_sk)
 - 
 -     def encode(self, texts: list):
 -         texts = [truncate(t, 8196) for t in texts]
 -         embeddings = []
 -         token_count = 0
 -         for text in texts:
 -             if self.model_name.split(".")[0] == "amazon":
 -                 body = {"inputText": text}
 -             elif self.model_name.split(".")[0] == "cohere":
 -                 body = {"texts": [text], "input_type": "search_document"}
 - 
 -             response = self.client.invoke_model(modelId=self.model_name, body=json.dumps(body))
 -             try:
 -                 model_response = json.loads(response["body"].read())
 -                 embeddings.extend([model_response["embedding"]])
 -                 token_count += num_tokens_from_string(text)
 -             except Exception as _e:
 -                 log_exception(_e, response)
 - 
 -         return np.array(embeddings), token_count
 - 
 -     def encode_queries(self, text):
 -         embeddings = []
 -         token_count = num_tokens_from_string(text)
 -         if self.model_name.split(".")[0] == "amazon":
 -             body = {"inputText": truncate(text, 8196)}
 -         elif self.model_name.split(".")[0] == "cohere":
 -             body = {"texts": [truncate(text, 8196)], "input_type": "search_query"}
 - 
 -         response = self.client.invoke_model(modelId=self.model_name, body=json.dumps(body))
 -         try:
 -             model_response = json.loads(response["body"].read())
 -             embeddings.extend(model_response["embedding"])
 -         except Exception as _e:
 -             log_exception(_e, response)
 - 
 -         return np.array(embeddings), token_count
 - 
 - 
 - class GeminiEmbed(Base):
 -     _FACTORY_NAME = "Gemini"
 - 
 -     def __init__(self, key, model_name="models/text-embedding-004", **kwargs):
 -         self.key = key
 -         self.model_name = "models/" + model_name
 - 
 -     def encode(self, texts: list):
 -         texts = [truncate(t, 2048) for t in texts]
 -         token_count = sum(num_tokens_from_string(text) for text in texts)
 -         genai.configure(api_key=self.key)
 -         batch_size = 16
 -         ress = []
 -         for i in range(0, len(texts), batch_size):
 -             result = genai.embed_content(model=self.model_name, content=texts[i : i + batch_size], task_type="retrieval_document", title="Embedding of single string")
 -             try:
 -                 ress.extend(result["embedding"])
 -             except Exception as _e:
 -                 log_exception(_e, result)
 -         return np.array(ress), token_count
 - 
 -     def encode_queries(self, text):
 -         genai.configure(api_key=self.key)
 -         result = genai.embed_content(model=self.model_name, content=truncate(text, 2048), task_type="retrieval_document", title="Embedding of single string")
 -         token_count = num_tokens_from_string(text)
 -         try:
 -             return np.array(result["embedding"]), token_count
 -         except Exception as _e:
 -             log_exception(_e, result)
 - 
 - 
 - class NvidiaEmbed(Base):
 -     _FACTORY_NAME = "NVIDIA"
 - 
 -     def __init__(self, key, model_name, base_url="https://integrate.api.nvidia.com/v1/embeddings"):
 -         if not base_url:
 -             base_url = "https://integrate.api.nvidia.com/v1/embeddings"
 -         self.api_key = key
 -         self.base_url = base_url
 -         self.headers = {
 -             "accept": "application/json",
 -             "Content-Type": "application/json",
 -             "authorization": f"Bearer {self.api_key}",
 -         }
 -         self.model_name = model_name
 -         if model_name == "nvidia/embed-qa-4":
 -             self.base_url = "https://ai.api.nvidia.com/v1/retrieval/nvidia/embeddings"
 -             self.model_name = "NV-Embed-QA"
 -         if model_name == "snowflake/arctic-embed-l":
 -             self.base_url = "https://ai.api.nvidia.com/v1/retrieval/snowflake/arctic-embed-l/embeddings"
 - 
 -     def encode(self, texts: list):
 -         batch_size = 16
 -         ress = []
 -         token_count = 0
 -         for i in range(0, len(texts), batch_size):
 -             payload = {
 -                 "input": texts[i : i + batch_size],
 -                 "input_type": "query",
 -                 "model": self.model_name,
 -                 "encoding_format": "float",
 -                 "truncate": "END",
 -             }
 -             response = requests.post(self.base_url, headers=self.headers, json=payload)
 -             try:
 -                 res = response.json()
 -             except Exception as _e:
 -                 log_exception(_e, response)
 -             ress.extend([d["embedding"] for d in res["data"]])
 -             token_count += self.total_token_count(res)
 -         return np.array(ress), token_count
 - 
 -     def encode_queries(self, text):
 -         embds, cnt = self.encode([text])
 -         return np.array(embds[0]), cnt
 - 
 - 
 - class LmStudioEmbed(LocalAIEmbed):
 -     _FACTORY_NAME = "LM-Studio"
 - 
 -     def __init__(self, key, model_name, base_url):
 -         if not base_url:
 -             raise ValueError("Local llm url cannot be None")
 -         base_url = urljoin(base_url, "v1")
 -         self.client = OpenAI(api_key="lm-studio", base_url=base_url)
 -         self.model_name = model_name
 - 
 - 
 - class OpenAI_APIEmbed(OpenAIEmbed):
 -     _FACTORY_NAME = ["VLLM", "OpenAI-API-Compatible"]
 - 
 -     def __init__(self, key, model_name, base_url):
 -         if not base_url:
 -             raise ValueError("url cannot be None")
 -         base_url = urljoin(base_url, "v1")
 -         self.client = OpenAI(api_key=key, base_url=base_url)
 -         self.model_name = model_name.split("___")[0]
 - 
 - 
 - class CoHereEmbed(Base):
 -     _FACTORY_NAME = "Cohere"
 - 
 -     def __init__(self, key, model_name, base_url=None):
 -         from cohere import Client
 - 
 -         self.client = Client(api_key=key)
 -         self.model_name = model_name
 - 
 -     def encode(self, texts: list):
 -         batch_size = 16
 -         ress = []
 -         token_count = 0
 -         for i in range(0, len(texts), batch_size):
 -             res = self.client.embed(
 -                 texts=texts[i : i + batch_size],
 -                 model=self.model_name,
 -                 input_type="search_document",
 -                 embedding_types=["float"],
 -             )
 -             try:
 -                 ress.extend([d for d in res.embeddings.float])
 -                 token_count += res.meta.billed_units.input_tokens
 -             except Exception as _e:
 -                 log_exception(_e, res)
 -         return np.array(ress), token_count
 - 
 -     def encode_queries(self, text):
 -         res = self.client.embed(
 -             texts=[text],
 -             model=self.model_name,
 -             input_type="search_query",
 -             embedding_types=["float"],
 -         )
 -         try:
 -             return np.array(res.embeddings.float[0]), int(res.meta.billed_units.input_tokens)
 -         except Exception as _e:
 -             log_exception(_e, res)
 - 
 - 
 - class TogetherAIEmbed(OpenAIEmbed):
 -     _FACTORY_NAME = "TogetherAI"
 - 
 -     def __init__(self, key, model_name, base_url="https://api.together.xyz/v1"):
 -         if not base_url:
 -             base_url = "https://api.together.xyz/v1"
 -         super().__init__(key, model_name, base_url=base_url)
 - 
 - 
 - class PerfXCloudEmbed(OpenAIEmbed):
 -     _FACTORY_NAME = "PerfXCloud"
 - 
 -     def __init__(self, key, model_name, base_url="https://cloud.perfxlab.cn/v1"):
 -         if not base_url:
 -             base_url = "https://cloud.perfxlab.cn/v1"
 -         super().__init__(key, model_name, base_url)
 - 
 - 
 - class UpstageEmbed(OpenAIEmbed):
 -     _FACTORY_NAME = "Upstage"
 - 
 -     def __init__(self, key, model_name, base_url="https://api.upstage.ai/v1/solar"):
 -         if not base_url:
 -             base_url = "https://api.upstage.ai/v1/solar"
 -         super().__init__(key, model_name, base_url)
 - 
 - 
 - class SILICONFLOWEmbed(Base):
 -     _FACTORY_NAME = "SILICONFLOW"
 - 
 -     def __init__(self, key, model_name, base_url="https://api.siliconflow.cn/v1/embeddings"):
 -         if not base_url:
 -             base_url = "https://api.siliconflow.cn/v1/embeddings"
 -         self.headers = {
 -             "accept": "application/json",
 -             "content-type": "application/json",
 -             "authorization": f"Bearer {key}",
 -         }
 -         self.base_url = base_url
 -         self.model_name = model_name
 - 
 -     def encode(self, texts: list):
 -         batch_size = 16
 -         ress = []
 -         token_count = 0
 -         for i in range(0, len(texts), batch_size):
 -             texts_batch = texts[i : i + batch_size]
 -             payload = {
 -                 "model": self.model_name,
 -                 "input": texts_batch,
 -                 "encoding_format": "float",
 -             }
 -             response = requests.post(self.base_url, json=payload, headers=self.headers)
 -             try:
 -                 res = response.json()
 -                 ress.extend([d["embedding"] for d in res["data"]])
 -                 token_count += self.total_token_count(res)
 -             except Exception as _e:
 -                 log_exception(_e, response)
 - 
 -         return np.array(ress), token_count
 - 
 -     def encode_queries(self, text):
 -         payload = {
 -             "model": self.model_name,
 -             "input": text,
 -             "encoding_format": "float",
 -         }
 -         response = requests.post(self.base_url, json=payload, headers=self.headers)
 -         try:
 -             res = response.json()
 -             return np.array(res["data"][0]["embedding"]), self.total_token_count(res)
 -         except Exception as _e:
 -             log_exception(_e, response)
 - 
 - 
 - class ReplicateEmbed(Base):
 -     _FACTORY_NAME = "Replicate"
 - 
 -     def __init__(self, key, model_name, base_url=None):
 -         from replicate.client import Client
 - 
 -         self.model_name = model_name
 -         self.client = Client(api_token=key)
 - 
 -     def encode(self, texts: list):
 -         batch_size = 16
 -         token_count = sum([num_tokens_from_string(text) for text in texts])
 -         ress = []
 -         for i in range(0, len(texts), batch_size):
 -             res = self.client.run(self.model_name, input={"texts": texts[i : i + batch_size]})
 -             ress.extend(res)
 -         return np.array(ress), token_count
 - 
 -     def encode_queries(self, text):
 -         res = self.client.embed(self.model_name, input={"texts": [text]})
 -         return np.array(res), num_tokens_from_string(text)
 - 
 - 
 - class BaiduYiyanEmbed(Base):
 -     _FACTORY_NAME = "BaiduYiyan"
 - 
 -     def __init__(self, key, model_name, base_url=None):
 -         import qianfan
 - 
 -         key = json.loads(key)
 -         ak = key.get("yiyan_ak", "")
 -         sk = key.get("yiyan_sk", "")
 -         self.client = qianfan.Embedding(ak=ak, sk=sk)
 -         self.model_name = model_name
 - 
 -     def encode(self, texts: list, batch_size=16):
 -         res = self.client.do(model=self.model_name, texts=texts).body
 -         try:
 -             return (
 -                 np.array([r["embedding"] for r in res["data"]]),
 -                 self.total_token_count(res),
 -             )
 -         except Exception as _e:
 -             log_exception(_e, res)
 - 
 -     def encode_queries(self, text):
 -         res = self.client.do(model=self.model_name, texts=[text]).body
 -         try:
 -             return (
 -                 np.array([r["embedding"] for r in res["data"]]),
 -                 self.total_token_count(res),
 -             )
 -         except Exception as _e:
 -             log_exception(_e, res)
 - 
 - 
 - class VoyageEmbed(Base):
 -     _FACTORY_NAME = "Voyage AI"
 - 
 -     def __init__(self, key, model_name, base_url=None):
 -         import voyageai
 - 
 -         self.client = voyageai.Client(api_key=key)
 -         self.model_name = model_name
 - 
 -     def encode(self, texts: list):
 -         batch_size = 16
 -         ress = []
 -         token_count = 0
 -         for i in range(0, len(texts), batch_size):
 -             res = self.client.embed(texts=texts[i : i + batch_size], model=self.model_name, input_type="document")
 -             try:
 -                 ress.extend(res.embeddings)
 -                 token_count += res.total_tokens
 -             except Exception as _e:
 -                 log_exception(_e, res)
 -         return np.array(ress), token_count
 - 
 -     def encode_queries(self, text):
 -         res = self.client.embed(texts=text, model=self.model_name, input_type="query")
 -         try:
 -             return np.array(res.embeddings)[0], res.total_tokens
 -         except Exception as _e:
 -             log_exception(_e, res)
 - 
 - 
 - class HuggingFaceEmbed(Base):
 -     _FACTORY_NAME = "HuggingFace"
 - 
 -     def __init__(self, key, model_name, base_url=None):
 -         if not model_name:
 -             raise ValueError("Model name cannot be None")
 -         self.key = key
 -         self.model_name = model_name.split("___")[0]
 -         self.base_url = base_url or "http://127.0.0.1:8080"
 - 
 -     def encode(self, texts: list):
 -         embeddings = []
 -         for text in texts:
 -             response = requests.post(f"{self.base_url}/embed", json={"inputs": text}, headers={"Content-Type": "application/json"})
 -             if response.status_code == 200:
 -                 embedding = response.json()
 -                 embeddings.append(embedding[0])
 -             else:
 -                 raise Exception(f"Error: {response.status_code} - {response.text}")
 -         return np.array(embeddings), sum([num_tokens_from_string(text) for text in texts])
 - 
 -     def encode_queries(self, text):
 -         response = requests.post(f"{self.base_url}/embed", json={"inputs": text}, headers={"Content-Type": "application/json"})
 -         if response.status_code == 200:
 -             embedding = response.json()
 -             return np.array(embedding[0]), num_tokens_from_string(text)
 -         else:
 -             raise Exception(f"Error: {response.status_code} - {response.text}")
 - 
 - 
 - class VolcEngineEmbed(OpenAIEmbed):
 -     _FACTORY_NAME = "VolcEngine"
 - 
 -     def __init__(self, key, model_name, base_url="https://ark.cn-beijing.volces.com/api/v3"):
 -         if not base_url:
 -             base_url = "https://ark.cn-beijing.volces.com/api/v3"
 -         ark_api_key = json.loads(key).get("ark_api_key", "")
 -         model_name = json.loads(key).get("ep_id", "") + json.loads(key).get("endpoint_id", "")
 -         super().__init__(ark_api_key, model_name, base_url)
 - 
 - 
 - class GPUStackEmbed(OpenAIEmbed):
 -     _FACTORY_NAME = "GPUStack"
 - 
 -     def __init__(self, key, model_name, base_url):
 -         if not base_url:
 -             raise ValueError("url cannot be None")
 -         base_url = urljoin(base_url, "v1")
 - 
 -         self.client = OpenAI(api_key=key, base_url=base_url)
 -         self.model_name = model_name
 - 
 - 
 - class NovitaEmbed(SILICONFLOWEmbed):
 -     _FACTORY_NAME = "NovitaAI"
 - 
 -     def __init__(self, key, model_name, base_url="https://api.novita.ai/v3/openai/embeddings"):
 -         if not base_url:
 -             base_url = "https://api.novita.ai/v3/openai/embeddings"
 -         super().__init__(key, model_name, base_url)
 - 
 - 
 - class GiteeEmbed(SILICONFLOWEmbed):
 -     _FACTORY_NAME = "GiteeAI"
 - 
 -     def __init__(self, key, model_name, base_url="https://ai.gitee.com/v1/embeddings"):
 -         if not base_url:
 -             base_url = "https://ai.gitee.com/v1/embeddings"
 -         super().__init__(key, model_name, base_url)
 
 
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