import html
import json
import logging
import os
import re
import unicodedata
from copy import copy
from string import Template
from typing import cast

import argostranslate.package
import argostranslate.translate
import deepl
import ollama
import openai
import requests
import xinference_client
from azure.ai.translation.text import TextTranslationClient
from azure.core.credentials import AzureKeyCredential
from tencentcloud.common import credential
from tencentcloud.tmt.v20180321.models import (
    TextTranslateRequest,
    TextTranslateResponse,
)
from tencentcloud.tmt.v20180321.tmt_client import TmtClient

from pdf2zh.cache import TranslationCache
from pdf2zh.config import ConfigManager

logger = logging.getLogger(__name__)


def remove_control_characters(s):
    return "".join(ch for ch in s if unicodedata.category(ch)[0] != "C")


class BaseTranslator:
    name = "base"
    envs = {}
    lang_map: dict[str, str] = {}
    CustomPrompt = False
    ignore_cache = False

    def __init__(self, lang_in: str, lang_out: str, model: str):
        lang_in = self.lang_map.get(lang_in.lower(), lang_in)
        lang_out = self.lang_map.get(lang_out.lower(), lang_out)
        self.lang_in = lang_in
        self.lang_out = lang_out
        self.model = model

        self.cache = TranslationCache(
            self.name,
            {
                "lang_in": lang_in,
                "lang_out": lang_out,
                "model": model,
            },
        )

    def set_envs(self, envs):
        # Detach from self.__class__.envs
        # Cannot use self.envs = copy(self.__class__.envs)
        # because if set_envs called twice, the second call will override the first call
        self.envs = copy(self.envs)
        if ConfigManager.get_translator_by_name(self.name):
            self.envs = ConfigManager.get_translator_by_name(self.name)
        needUpdate = False
        for key in self.envs:
            if key in os.environ:
                self.envs[key] = os.environ[key]
                needUpdate = True
        if needUpdate:
            ConfigManager.set_translator_by_name(self.name, self.envs)
        if envs is not None:
            for key in envs:
                self.envs[key] = envs[key]
            ConfigManager.set_translator_by_name(self.name, self.envs)

    def add_cache_impact_parameters(self, k: str, v):
        """
        Add parameters that affect the translation quality to distinguish the translation effects under different parameters.
        :param k: key
        :param v: value
        """
        self.cache.add_params(k, v)

    def translate(self, text: str, ignore_cache: bool = False) -> str:
        """
        Translate the text, and the other part should call this method.
        :param text: text to translate
        :return: translated text
        """
        if not (self.ignore_cache or ignore_cache):
            cache = self.cache.get(text)
            if cache is not None:
                return cache

        translation = self.do_translate(text)
        self.cache.set(text, translation)
        return translation

    def do_translate(self, text: str) -> str:
        """
        Actual translate text, override this method
        :param text: text to translate
        :return: translated text
        """
        raise NotImplementedError

    def prompt(
        self, text: str, prompt_template: Template | None = None
    ) -> list[dict[str, str]]:
        try:
            return [
                {
                    "role": "user",
                    "content": cast(Template, prompt_template).safe_substitute(
                        {
                            "lang_in": self.lang_in,
                            "lang_out": self.lang_out,
                            "text": text,
                        }
                    ),
                }
            ]
        except AttributeError:  # `prompt_template` is None
            pass
        except Exception:
            logging.exception("Error parsing prompt, use the default prompt.")

        return [
            {
                "role": "user",
                "content": (
                    "You are a professional, authentic machine translation engine. "
                    "Only Output the translated text, do not include any other text."
                    "\n\n"
                    f"Translate the following markdown source text to {self.lang_out}. "
                    "Keep the formula notation {v*} unchanged. "
                    "Output translation directly without any additional text."
                    "\n\n"
                    f"Source Text: {text}"
                    "\n\n"
                    "Translated Text:"
                ),
            },
        ]

    def __str__(self):
        return f"{self.name} {self.lang_in} {self.lang_out} {self.model}"

    def get_rich_text_left_placeholder(self, id: int):
        return f"<b{id}>"

    def get_rich_text_right_placeholder(self, id: int):
        return f"</b{id}>"

    def get_formular_placeholder(self, id: int):
        return self.get_rich_text_left_placeholder(
            id
        ) + self.get_rich_text_right_placeholder(id)


class GoogleTranslator(BaseTranslator):
    name = "google"
    lang_map = {"zh": "zh-CN"}

    def __init__(self, lang_in, lang_out, model, **kwargs):
        super().__init__(lang_in, lang_out, model)
        self.session = requests.Session()
        self.endpoint = "https://translate.google.com/m"
        self.headers = {
            "User-Agent": "Mozilla/4.0 (compatible;MSIE 6.0;Windows NT 5.1;SV1;.NET CLR 1.1.4322;.NET CLR 2.0.50727;.NET CLR 3.0.04506.30)"  # noqa: E501
        }

    def do_translate(self, text):
        text = text[:5000]  # google translate max length
        response = self.session.get(
            self.endpoint,
            params={"tl": self.lang_out, "sl": self.lang_in, "q": text},
            headers=self.headers,
        )
        re_result = re.findall(
            r'(?s)class="(?:t0|result-container)">(.*?)<', response.text
        )
        if response.status_code == 400:
            result = "IRREPARABLE TRANSLATION ERROR"
        else:
            response.raise_for_status()
            result = html.unescape(re_result[0])
        return remove_control_characters(result)


class BingTranslator(BaseTranslator):
    # https://github.com/immersive-translate/old-immersive-translate/blob/6df13da22664bea2f51efe5db64c63aca59c4e79/src/background/translationService.js
    name = "bing"
    lang_map = {"zh": "zh-Hans"}

    def __init__(self, lang_in, lang_out, model, **kwargs):
        super().__init__(lang_in, lang_out, model)
        self.session = requests.Session()
        self.endpoint = "https://www.bing.com/translator"
        self.headers = {
            "User-Agent": "Mozilla/5.0 (Windows NT 10.0; Win64; x64) AppleWebKit/537.36 (KHTML, like Gecko) Chrome/131.0.0.0 Safari/537.36 Edg/131.0.0.0",  # noqa: E501
        }

    def find_sid(self):
        response = self.session.get(self.endpoint)
        response.raise_for_status()
        url = response.url[:-10]
        ig = re.findall(r"\"ig\":\"(.*?)\"", response.text)[0]
        iid = re.findall(r"data-iid=\"(.*?)\"", response.text)[-1]
        key, token = re.findall(
            r"params_AbusePreventionHelper\s=\s\[(.*?),\"(.*?)\",", response.text
        )[0]
        return url, ig, iid, key, token

    def do_translate(self, text):
        text = text[:1000]  # bing translate max length
        url, ig, iid, key, token = self.find_sid()
        response = self.session.post(
            f"{url}ttranslatev3?IG={ig}&IID={iid}",
            data={
                "fromLang": self.lang_in,
                "to": self.lang_out,
                "text": text,
                "token": token,
                "key": key,
            },
            headers=self.headers,
        )
        response.raise_for_status()
        return response.json()[0]["translations"][0]["text"]


class DeepLTranslator(BaseTranslator):
    # https://github.com/DeepLcom/deepl-python
    name = "deepl"
    envs = {
        "DEEPL_AUTH_KEY": None,
    }
    lang_map = {"zh": "zh-Hans"}

    def __init__(self, lang_in, lang_out, model, envs=None, **kwargs):
        self.set_envs(envs)
        super().__init__(lang_in, lang_out, model)
        auth_key = self.envs["DEEPL_AUTH_KEY"]
        self.client = deepl.Translator(auth_key)

    def do_translate(self, text):
        response = self.client.translate_text(
            text, target_lang=self.lang_out, source_lang=self.lang_in
        )
        return response.text


class DeepLXTranslator(BaseTranslator):
    # https://deeplx.owo.network/endpoints/free.html
    name = "deeplx"
    envs = {
        "DEEPLX_ENDPOINT": "https://api.deepl.com/translate",
        "DEEPLX_ACCESS_TOKEN": None,
    }
    lang_map = {"zh": "zh-Hans"}

    def __init__(self, lang_in, lang_out, model, envs=None, **kwargs):
        self.set_envs(envs)
        super().__init__(lang_in, lang_out, model)
        self.endpoint = self.envs["DEEPLX_ENDPOINT"]
        self.session = requests.Session()
        auth_key = self.envs["DEEPLX_ACCESS_TOKEN"]
        if auth_key:
            self.endpoint = f"{self.endpoint}?token={auth_key}"

    def do_translate(self, text):
        response = self.session.post(
            self.endpoint,
            json={
                "source_lang": self.lang_in,
                "target_lang": self.lang_out,
                "text": text,
            },
        )
        response.raise_for_status()
        return response.json()["data"]


class OllamaTranslator(BaseTranslator):
    # https://github.com/ollama/ollama-python
    name = "ollama"
    envs = {
        "OLLAMA_HOST": "http://127.0.0.1:11434",
        "OLLAMA_MODEL": "gemma2",
    }
    CustomPrompt = True

    def __init__(
        self,
        lang_in: str,
        lang_out: str,
        model: str,
        envs=None,
        prompt: Template | None = None,
    ):
        self.set_envs(envs)
        if not model:
            model = self.envs["OLLAMA_MODEL"]
        super().__init__(lang_in, lang_out, model)
        self.options = {
            "temperature": 0,  # 随机采样可能会打断公式标记
            "num_predict": 2000,
        }
        self.client = ollama.Client(host=self.envs["OLLAMA_HOST"])
        self.prompt_template = prompt
        self.add_cache_impact_parameters("temperature", self.options["temperature"])

    def do_translate(self, text: str) -> str:
        if (max_token := len(text) * 5) > self.options["num_predict"]:
            self.options["num_predict"] = max_token

        response = self.client.chat(
            model=self.model,
            messages=self.prompt(text, self.prompt_template),
            options=self.options,
        )
        content = self._remove_cot_content(response.message.content or "")
        return content.strip()

    @staticmethod
    def _remove_cot_content(content: str) -> str:
        """Remove text content with the thought chain from the chat response

        :param content: Non-streaming text content
        :return: Text without a thought chain
        """
        return re.sub(r"^<think>.+?</think>", "", content, count=1, flags=re.DOTALL)


class XinferenceTranslator(BaseTranslator):
    # https://github.com/xorbitsai/inference
    name = "xinference"
    envs = {
        "XINFERENCE_HOST": "http://127.0.0.1:9997",
        "XINFERENCE_MODEL": "gemma-2-it",
    }
    CustomPrompt = True

    def __init__(self, lang_in, lang_out, model, envs=None, prompt=None):
        self.set_envs(envs)
        if not model:
            model = self.envs["XINFERENCE_MODEL"]
        super().__init__(lang_in, lang_out, model)
        self.options = {"temperature": 0}  # 随机采样可能会打断公式标记
        self.client = xinference_client.RESTfulClient(self.envs["XINFERENCE_HOST"])
        self.prompttext = prompt
        self.add_cache_impact_parameters("temperature", self.options["temperature"])

    def do_translate(self, text):
        maxlen = max(2000, len(text) * 5)
        for model in self.model.split(";"):
            try:
                xf_model = self.client.get_model(model)
                xf_prompt = self.prompt(text, self.prompttext)
                xf_prompt = [
                    {
                        "role": "user",
                        "content": xf_prompt[0]["content"]
                        + "\n"
                        + xf_prompt[1]["content"],
                    }
                ]
                response = xf_model.chat(
                    generate_config=self.options,
                    messages=xf_prompt,
                )

                response = response["choices"][0]["message"]["content"].replace(
                    "<end_of_turn>", ""
                )
                if len(response) > maxlen:
                    raise Exception("Response too long")
                return response.strip()
            except Exception as e:
                print(e)
        raise Exception("All models failed")


class OpenAITranslator(BaseTranslator):
    # https://github.com/openai/openai-python
    name = "openai"
    envs = {
        "OPENAI_BASE_URL": "https://api.openai.com/v1",
        "OPENAI_API_KEY": None,
        "OPENAI_MODEL": "gpt-4o-mini",
    }
    CustomPrompt = True

    def __init__(
        self,
        lang_in,
        lang_out,
        model,
        base_url=None,
        api_key=None,
        envs=None,
        prompt=None,
    ):
        self.set_envs(envs)
        if not model:
            model = self.envs["OPENAI_MODEL"]
        super().__init__(lang_in, lang_out, model)
        self.options = {"temperature": 0}  # 随机采样可能会打断公式标记
        self.client = openai.OpenAI(
            base_url=base_url or self.envs["OPENAI_BASE_URL"],
            api_key=api_key or self.envs["OPENAI_API_KEY"],
        )
        self.prompttext = prompt
        self.add_cache_impact_parameters("temperature", self.options["temperature"])
        self.add_cache_impact_parameters("prompt", self.prompt("", self.prompttext))

    def do_translate(self, text) -> str:
        response = self.client.chat.completions.create(
            model=self.model,
            **self.options,
            messages=self.prompt(text, self.prompttext),
        )
        if not response.choices:
            if hasattr(response, "error"):
                raise ValueError("Error response from Service", response.error)
        return response.choices[0].message.content.strip()

    def get_formular_placeholder(self, id: int):
        return "{{v" + str(id) + "}}"

    def get_rich_text_left_placeholder(self, id: int):
        return self.get_formular_placeholder(id)

    def get_rich_text_right_placeholder(self, id: int):
        return self.get_formular_placeholder(id + 1)


class AzureOpenAITranslator(BaseTranslator):
    name = "azure-openai"
    envs = {
        "AZURE_OPENAI_BASE_URL": None,  # e.g. "https://xxx.openai.azure.com"
        "AZURE_OPENAI_API_KEY": None,
        "AZURE_OPENAI_MODEL": "gpt-4o-mini",
    }
    CustomPrompt = True

    def __init__(
        self,
        lang_in,
        lang_out,
        model,
        base_url=None,
        api_key=None,
        envs=None,
        prompt=None,
    ):
        self.set_envs(envs)
        base_url = self.envs["AZURE_OPENAI_BASE_URL"]
        if not model:
            model = self.envs["AZURE_OPENAI_MODEL"]
        super().__init__(lang_in, lang_out, model)
        self.options = {"temperature": 0}
        self.client = openai.AzureOpenAI(
            azure_endpoint=base_url,
            azure_deployment=model,
            api_version="2024-06-01",
            api_key=api_key,
        )
        self.prompttext = prompt
        self.add_cache_impact_parameters("temperature", self.options["temperature"])
        self.add_cache_impact_parameters("prompt", self.prompt("", self.prompttext))

    def do_translate(self, text) -> str:
        response = self.client.chat.completions.create(
            model=self.model,
            **self.options,
            messages=self.prompt(text, self.prompttext),
        )
        return response.choices[0].message.content.strip()


class ModelScopeTranslator(OpenAITranslator):
    name = "modelscope"
    envs = {
        "MODELSCOPE_BASE_URL": "https://api-inference.modelscope.cn/v1",
        "MODELSCOPE_API_KEY": None,
        "MODELSCOPE_MODEL": "Qwen/Qwen2.5-32B-Instruct",
    }
    CustomPrompt = True

    def __init__(
        self,
        lang_in,
        lang_out,
        model,
        base_url=None,
        api_key=None,
        envs=None,
        prompt=None,
    ):
        self.set_envs(envs)
        base_url = "https://api-inference.modelscope.cn/v1"
        api_key = self.envs["MODELSCOPE_API_KEY"]
        if not model:
            model = self.envs["MODELSCOPE_MODEL"]
        super().__init__(lang_in, lang_out, model, base_url=base_url, api_key=api_key)
        self.prompttext = prompt
        self.add_cache_impact_parameters("prompt", self.prompt("", self.prompttext))


class ZhipuTranslator(OpenAITranslator):
    # https://bigmodel.cn/dev/api/thirdparty-frame/openai-sdk
    name = "zhipu"
    envs = {
        "ZHIPU_API_KEY": None,
        "ZHIPU_MODEL": "glm-4-flash",
    }
    CustomPrompt = True

    def __init__(self, lang_in, lang_out, model, envs=None, prompt=None):
        self.set_envs(envs)
        base_url = "https://open.bigmodel.cn/api/paas/v4"
        api_key = self.envs["ZHIPU_API_KEY"]
        if not model:
            model = self.envs["ZHIPU_MODEL"]
        super().__init__(lang_in, lang_out, model, base_url=base_url, api_key=api_key)
        self.prompttext = prompt
        self.add_cache_impact_parameters("prompt", self.prompt("", self.prompttext))

    def do_translate(self, text) -> str:
        try:
            response = self.client.chat.completions.create(
                model=self.model,
                **self.options,
                messages=self.prompt(text, self.prompttext),
            )
        except openai.BadRequestError as e:
            if (
                json.loads(response.choices[0].message.content.strip())["error"]["code"]
                == "1301"
            ):
                return "IRREPARABLE TRANSLATION ERROR"
            raise e
        return response.choices[0].message.content.strip()


class SiliconTranslator(OpenAITranslator):
    # https://docs.siliconflow.cn/quickstart
    name = "silicon"
    envs = {
        "SILICON_API_KEY": None,
        "SILICON_MODEL": "Qwen/Qwen2.5-7B-Instruct",
    }
    CustomPrompt = True

    def __init__(self, lang_in, lang_out, model, envs=None, prompt=None):
        self.set_envs(envs)
        base_url = "https://api.siliconflow.cn/v1"
        api_key = self.envs["SILICON_API_KEY"]
        if not model:
            model = self.envs["SILICON_MODEL"]
        super().__init__(lang_in, lang_out, model, base_url=base_url, api_key=api_key)
        self.prompttext = prompt
        self.add_cache_impact_parameters("prompt", self.prompt("", self.prompttext))


class GeminiTranslator(OpenAITranslator):
    # https://ai.google.dev/gemini-api/docs/openai
    name = "gemini"
    envs = {
        "GEMINI_API_KEY": None,
        "GEMINI_MODEL": "gemini-1.5-flash",
    }
    CustomPrompt = True

    def __init__(self, lang_in, lang_out, model, envs=None, prompt=None):
        self.set_envs(envs)
        base_url = "https://generativelanguage.googleapis.com/v1beta/openai/"
        api_key = self.envs["GEMINI_API_KEY"]
        if not model:
            model = self.envs["GEMINI_MODEL"]
        super().__init__(lang_in, lang_out, model, base_url=base_url, api_key=api_key)
        self.prompttext = prompt
        self.add_cache_impact_parameters("prompt", self.prompt("", self.prompttext))


class AzureTranslator(BaseTranslator):
    # https://github.com/Azure/azure-sdk-for-python
    name = "azure"
    envs = {
        "AZURE_ENDPOINT": "https://api.translator.azure.cn",
        "AZURE_API_KEY": None,
    }
    lang_map = {"zh": "zh-Hans"}

    def __init__(self, lang_in, lang_out, model, envs=None, **kwargs):
        self.set_envs(envs)
        super().__init__(lang_in, lang_out, model)
        endpoint = self.envs["AZURE_ENDPOINT"]
        api_key = self.envs["AZURE_API_KEY"]
        credential = AzureKeyCredential(api_key)
        self.client = TextTranslationClient(
            endpoint=endpoint, credential=credential, region="chinaeast2"
        )
        # https://github.com/Azure/azure-sdk-for-python/issues/9422
        logger = logging.getLogger("azure.core.pipeline.policies.http_logging_policy")
        logger.setLevel(logging.WARNING)

    def do_translate(self, text) -> str:
        response = self.client.translate(
            body=[text],
            from_language=self.lang_in,
            to_language=[self.lang_out],
        )
        translated_text = response[0].translations[0].text
        return translated_text


class TencentTranslator(BaseTranslator):
    # https://github.com/TencentCloud/tencentcloud-sdk-python
    name = "tencent"
    envs = {
        "TENCENTCLOUD_SECRET_ID": None,
        "TENCENTCLOUD_SECRET_KEY": None,
    }

    def __init__(self, lang_in, lang_out, model, envs=None, **kwargs):
        self.set_envs(envs)
        super().__init__(lang_in, lang_out, model)
        cred = credential.DefaultCredentialProvider().get_credential()
        self.client = TmtClient(cred, "ap-beijing")
        self.req = TextTranslateRequest()
        self.req.Source = self.lang_in
        self.req.Target = self.lang_out
        self.req.ProjectId = 0

    def do_translate(self, text):
        self.req.SourceText = text
        resp: TextTranslateResponse = self.client.TextTranslate(self.req)
        return resp.TargetText


class AnythingLLMTranslator(BaseTranslator):
    name = "anythingllm"
    envs = {
        "AnythingLLM_URL": None,
        "AnythingLLM_APIKEY": None,
    }
    CustomPrompt = True

    def __init__(self, lang_out, lang_in, model, envs=None, prompt=None):
        self.set_envs(envs)
        super().__init__(lang_out, lang_in, model)
        self.api_url = self.envs["AnythingLLM_URL"]
        self.api_key = self.envs["AnythingLLM_APIKEY"]
        self.headers = {
            "accept": "application/json",
            "Authorization": f"Bearer {self.api_key}",
            "Content-Type": "application/json",
        }
        self.prompttext = prompt

    def do_translate(self, text):
        messages = self.prompt(text, self.prompttext)
        payload = {
            "message": messages,
            "mode": "chat",
            "sessionId": "translation_expert",
        }

        response = requests.post(
            self.api_url, headers=self.headers, data=json.dumps(payload)
        )
        response.raise_for_status()
        data = response.json()

        if "textResponse" in data:
            return data["textResponse"].strip()


class DifyTranslator(BaseTranslator):
    name = "dify"
    envs = {
        "DIFY_API_URL": None,  # 填写实际 Dify API 地址
        "DIFY_API_KEY": None,  # 替换为实际 API 密钥
    }

    def __init__(self, lang_out, lang_in, model, envs=None, **kwargs):
        self.set_envs(envs)
        super().__init__(lang_out, lang_in, model)
        self.api_url = self.envs["DIFY_API_URL"]
        self.api_key = self.envs["DIFY_API_KEY"]

    def do_translate(self, text):
        headers = {
            "Authorization": f"Bearer {self.api_key}",
            "Content-Type": "application/json",
        }

        payload = {
            "inputs": {
                "lang_out": self.lang_out,
                "lang_in": self.lang_in,
                "text": text,
            },
            "response_mode": "blocking",
            "user": "translator-service",
        }

        # 向 Dify 服务器发送请求
        response = requests.post(
            self.api_url, headers=headers, data=json.dumps(payload)
        )
        response.raise_for_status()
        response_data = response.json()

        # 解析响应
        return response_data.get("data", {}).get("outputs", {}).get("text", [])


class ArgosTranslator(BaseTranslator):
    name = "argos"

    def __init__(self, lang_in, lang_out, model, **kwargs):
        super().__init__(lang_in, lang_out, model)
        lang_in = self.lang_map.get(lang_in.lower(), lang_in)
        lang_out = self.lang_map.get(lang_out.lower(), lang_out)
        self.lang_in = lang_in
        self.lang_out = lang_out
        argostranslate.package.update_package_index()
        available_packages = argostranslate.package.get_available_packages()
        try:
            available_package = list(
                filter(
                    lambda x: x.from_code == self.lang_in
                    and x.to_code == self.lang_out,
                    available_packages,
                )
            )[0]
        except Exception:
            raise ValueError(
                "lang_in and lang_out pair not supported by Argos Translate."
            )
        download_path = available_package.download()
        argostranslate.package.install_from_path(download_path)

    def translate(self, text: str, ignore_cache: bool = False):
        # Translate
        installed_languages = argostranslate.translate.get_installed_languages()
        from_lang = list(filter(lambda x: x.code == self.lang_in, installed_languages))[
            0
        ]
        to_lang = list(filter(lambda x: x.code == self.lang_out, installed_languages))[
            0
        ]
        translation = from_lang.get_translation(to_lang)
        translatedText = translation.translate(text)
        return translatedText


class GorkTranslator(OpenAITranslator):
    # https://docs.x.ai/docs/overview#getting-started
    name = "grok"
    envs = {
        "GORK_API_KEY": None,
        "GORK_MODEL": "grok-2-1212",
    }
    CustomPrompt = True

    def __init__(self, lang_in, lang_out, model, envs=None, prompt=None):
        self.set_envs(envs)
        base_url = "https://api.x.ai/v1"
        api_key = self.envs["GORK_API_KEY"]
        if not model:
            model = self.envs["GORK_MODEL"]
        super().__init__(lang_in, lang_out, model, base_url=base_url, api_key=api_key)
        self.prompttext = prompt


class GroqTranslator(OpenAITranslator):
    name = "groq"
    envs = {
        "GROQ_API_KEY": None,
        "GROQ_MODEL": "llama-3-3-70b-versatile",
    }
    CustomPrompt = True

    def __init__(self, lang_in, lang_out, model, envs=None, prompt=None):
        self.set_envs(envs)
        base_url = "https://api.groq.com/openai/v1"
        api_key = self.envs["GROQ_API_KEY"]
        if not model:
            model = self.envs["GROQ_MODEL"]
        super().__init__(lang_in, lang_out, model, base_url=base_url, api_key=api_key)
        self.prompttext = prompt


class DeepseekTranslator(OpenAITranslator):
    name = "deepseek"
    envs = {
        "DEEPSEEK_API_KEY": None,
        "DEEPSEEK_MODEL": "deepseek-chat",
    }
    CustomPrompt = True

    def __init__(self, lang_in, lang_out, model, envs=None, prompt=None):
        self.set_envs(envs)
        base_url = "https://api.deepseek.com/v1"
        api_key = self.envs["DEEPSEEK_API_KEY"]
        if not model:
            model = self.envs["DEEPSEEK_MODEL"]
        super().__init__(lang_in, lang_out, model, base_url=base_url, api_key=api_key)
        self.prompttext = prompt


class OpenAIlikedTranslator(OpenAITranslator):
    name = "openailiked"
    envs = {
        "OPENAILIKED_BASE_URL": None,
        "OPENAILIKED_API_KEY": None,
        "OPENAILIKED_MODEL": None,
    }
    CustomPrompt = True

    def __init__(self, lang_in, lang_out, model, envs=None, prompt=None):
        self.set_envs(envs)
        if self.envs["OPENAILIKED_BASE_URL"]:
            base_url = self.envs["OPENAILIKED_BASE_URL"]
        else:
            raise ValueError("The OPENAILIKED_BASE_URL is missing.")
        if not model:
            if self.envs["OPENAILIKED_MODEL"]:
                model = self.envs["OPENAILIKED_MODEL"]
            else:
                raise ValueError("The OPENAILIKED_MODEL is missing.")
        if self.envs["OPENAILIKED_API_KEY"] is None:
            api_key = "openailiked"
        else:
            api_key = self.envs["OPENAILIKED_API_KEY"]
        super().__init__(lang_in, lang_out, model, base_url=base_url, api_key=api_key)
        self.prompttext = prompt


class QwenMtTranslator(OpenAITranslator):
    """
    Use Qwen-MT model from Aliyun. it's designed for translating.
    Since Traditional Chinese is not yet supported by Aliyun. it will be also translated to Simplified Chinese, when it's selected.
    There's special parameters in the message to the server.
    """

    name = "qwen-mt"
    envs = {
        "ALI_MODEL": "qwen-mt-turbo",
        "ALI_API_KEY": None,
        "ALI_DOMAINS": "This sentence is extracted from a scientific paper. When translating, please pay close attention to the use of specialized troubleshooting terminologies and adhere to scientific sentence structures to maintain the technical rigor and precision of the original text.",
    }
    CustomPrompt = True

    def __init__(self, lang_in, lang_out, model, envs=None, prompt=None):
        self.set_envs(envs)
        base_url = "https://dashscope.aliyuncs.com/compatible-mode/v1"
        api_key = self.envs["ALI_API_KEY"]

        if not model:
            model = self.envs["ALI_MODEL"]

        super().__init__(lang_in, lang_out, model, base_url=base_url, api_key=api_key)
        self.prompttext = prompt

    @staticmethod
    def lang_mapping(input_lang: str) -> str:
        """
        Mapping the language code to the language code that Aliyun Qwen-Mt model supports.
        Since all existings languagues codes used in gui.py are able to be mapped, the original
        languague code will not be checked.
        """
        langdict = {
            "zh": "Chinese",
            "zh-TW": "Chinese",
            "en": "English",
            "fr": "French",
            "de": "German",
            "ja": "Japanese",
            "ko": "Korean",
            "ru": "Russian",
            "es": "Spanish",
            "it": "Italian",
        }

        return langdict[input_lang]

    def do_translate(self, text) -> str:
        """
        Qwen-MT Model reqeust to send translation_options to the server.
        domains are options, but suggested. it must be in English.
        """
        translation_options = {
            "source_lang": self.lang_mapping(self.lang_in),
            "target_lang": self.lang_mapping(self.lang_out),
            "domains": self.envs["ALI_DOMAINS"],
        }
        response = self.client.chat.completions.create(
            model=self.model,
            **self.options,
            messages=[{"role": "user", "content": text}],
            extra_body={"translation_options": translation_options},
        )
        return response.choices[0].message.content.strip()
