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Gitee AI Qwen2.5-72B model (#10595)
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model: Qwen2.5-72B-Instruct
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label:
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zh_Hans: Qwen2.5-72B-Instruct
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en_US: Qwen2.5-72B-Instruct
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model_type: llm
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features:
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- agent-thought
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- tool-call
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- stream-tool-call
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model_properties:
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mode: chat
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context_size: 32768
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parameter_rules:
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- name: max_tokens
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use_template: max_tokens
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label:
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en_US: "Max Tokens"
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zh_Hans: "最大Token数"
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type: int
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default: 512
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min: 1
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required: true
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help:
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en_US: "The maximum number of tokens that can be generated by the model varies depending on the model."
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zh_Hans: "模型可生成的最大 token 个数,不同模型上限不同。"
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- name: temperature
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use_template: temperature
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label:
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en_US: "Temperature"
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zh_Hans: "采样温度"
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type: float
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default: 0.7
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min: 0.0
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max: 1.0
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precision: 1
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required: true
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help:
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en_US: "The randomness of the sampling temperature control output. The temperature value is within the range of [0.0, 1.0]. The higher the value, the more random and creative the output; the lower the value, the more stable it is. It is recommended to adjust either top_p or temperature parameters according to your needs to avoid adjusting both at the same time."
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zh_Hans: "采样温度控制输出的随机性。温度值在 [0.0, 1.0] 范围内,值越高,输出越随机和创造性;值越低,输出越稳定。建议根据需求调整 top_p 或 temperature 参数,避免同时调整两者。"
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- name: top_p
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use_template: top_p
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label:
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en_US: "Top P"
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zh_Hans: "Top P"
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type: float
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default: 0.7
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min: 0.0
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max: 1.0
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precision: 1
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required: true
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help:
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en_US: "The value range of the sampling method is [0.0, 1.0]. The top_p value determines that the model selects tokens from the top p% of candidate words with the highest probability; when top_p is 0, this parameter is invalid. It is recommended to adjust either top_p or temperature parameters according to your needs to avoid adjusting both at the same time."
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zh_Hans: "采样方法的取值范围为 [0.0,1.0]。top_p 值确定模型从概率最高的前p%的候选词中选取 tokens;当 top_p 为 0 时,此参数无效。建议根据需求调整 top_p 或 temperature 参数,避免同时调整两者。"
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- name: top_k
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use_template: top_k
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label:
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en_US: "Top K"
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zh_Hans: "Top K"
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type: int
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default: 50
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min: 0
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max: 100
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required: true
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help:
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en_US: "The value range is [0,100], which limits the model to only select from the top k words with the highest probability when choosing the next word at each step. The larger the value, the more diverse text generation will be."
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zh_Hans: "取值范围为 [0,100],限制模型在每一步选择下一个词时,只从概率最高的前 k 个词中选取。数值越大,文本生成越多样。"
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- name: frequency_penalty
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use_template: frequency_penalty
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label:
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en_US: "Frequency Penalty"
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zh_Hans: "频率惩罚"
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type: float
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default: 0
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min: -1.0
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max: 1.0
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precision: 1
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required: false
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help:
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en_US: "Used to adjust the frequency of repeated content in automatically generated text. Positive numbers reduce repetition, while negative numbers increase repetition. After setting this parameter, if a word has already appeared in the text, the model will decrease the probability of choosing that word for subsequent generation."
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zh_Hans: "用于调整自动生成文本中重复内容的频率。正数减少重复,负数增加重复。设置此参数后,如果一个词在文本中已经出现过,模型在后续生成中选择该词的概率会降低。"
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- name: user
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use_template: text
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label:
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en_US: "User"
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zh_Hans: "用户"
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type: string
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required: false
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help:
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en_US: "Used to track and differentiate conversation requests from different users."
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zh_Hans: "用于追踪和区分不同用户的对话请求。"
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@ -1,3 +1,4 @@
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- Qwen2.5-72B-Instruct
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- Qwen2-7B-Instruct
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- Qwen2-72B-Instruct
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- Yi-1.5-34B-Chat
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@ -6,6 +6,7 @@ from core.model_runtime.entities.message_entities import (
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PromptMessage,
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PromptMessageTool,
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)
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from core.model_runtime.entities.model_entities import ModelFeature
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from core.model_runtime.model_providers.openai_api_compatible.llm.llm import OAIAPICompatLargeLanguageModel
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@ -28,14 +29,13 @@ class GiteeAILargeLanguageModel(OAIAPICompatLargeLanguageModel):
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user: Optional[str] = None,
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) -> Union[LLMResult, Generator]:
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self._add_custom_parameters(credentials, model, model_parameters)
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return super()._invoke(model, credentials, prompt_messages, model_parameters, tools, stop, stream)
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return super()._invoke(model, credentials, prompt_messages, model_parameters, tools, stop, stream, user)
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def validate_credentials(self, model: str, credentials: dict) -> None:
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self._add_custom_parameters(credentials, model, None)
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super().validate_credentials(model, credentials)
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@staticmethod
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def _add_custom_parameters(credentials: dict, model: str, model_parameters: dict) -> None:
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def _add_custom_parameters(self, credentials: dict, model: str, model_parameters: dict) -> None:
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if model is None:
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model = "bge-large-zh-v1.5"
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@ -45,3 +45,7 @@ class GiteeAILargeLanguageModel(OAIAPICompatLargeLanguageModel):
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credentials["mode"] = LLMMode.COMPLETION.value
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else:
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credentials["mode"] = LLMMode.CHAT.value
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schema = self.get_model_schema(model, credentials)
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if ModelFeature.TOOL_CALL in schema.features or ModelFeature.MULTI_TOOL_CALL in schema.features:
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credentials["function_calling_type"] = "tool_call"
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