--- dimensions: type: primary: implementation detail: advanced level: advanced standard_title: Customizable Model language: en title: Integrating Custom Models description: This document details how to integrate custom models into Dify, using the Xinference model as an example. It covers the complete process, including creating model provider files, writing code based on model type, implementing model invocation logic, handling exceptions, debugging, and publishing. It specifically details the implementation of core methods like LLM invocation, token calculation, credential validation, and parameter generation. --- A **custom model** refers to an LLM that you deploy or configure on your own. This document uses the [Xinference model](https://inference.readthedocs.io/en/latest/) as an example to demonstrate how to integrate a custom model into your **model plugin**. By default, a custom model automatically includes two parameters—its **model type** and **model name**—and does not require additional definitions in the provider YAML file. You do not need to implement `validate_provider_credential` in your provider configuration file. During runtime, based on the user’s choice of model type or model name, Dify automatically calls the corresponding model layer’s `validate_credentials` method to verify credentials. ## Integrating a Custom Model Plugin Below are the steps to integrate a custom model: 1. **Create a Model Provider File**\ Identify the model types your custom model will include. 2. **Create Code Files by Model Type**\ Depending on the model’s type (e.g., `llm` or `text_embedding`), create separate code files. Ensure that each model type is organized into distinct logical layers for easier maintenance and future expansion. 3. **Develop the Model Invocation Logic**\ Within each model-type module, create a Python file named for that model type (for example, `llm.py`). Define a class in the file that implements the specific model logic, conforming to the system’s model interface specifications. 4. **Debug the Plugin**\ Write unit and integration tests for the new provider functionality, ensuring that all components work as intended. *** ### 1. **Create a Model Provider File** In your plugin’s `/provider` directory, create a `xinference.yaml` file. The `Xinference` family of models supports **LLM**, **Text Embedding**, and **Rerank** model types, so your `xinference.yaml` must include all three. **Example:** ```yaml provider: xinference # Identifies the provider label: # Display name; can set both en_US (English) and zh_Hans (Chinese). If zh_Hans is not set, en_US is used by default. en_US: Xorbits Inference icon_small: # Small icon; store in the _assets folder of this provider’s directory. The same multi-language logic applies as with label. en_US: icon_s_en.svg icon_large: # Large icon en_US: icon_l_en.svg help: # Help information title: en_US: How to deploy Xinference zh_Hans: 如何部署 Xinference url: en_US: https://github.com/xorbitsai/inference supported_model_types: # Model types Xinference supports: LLM/Text Embedding/Rerank - llm - text-embedding - rerank configurate_methods: # Xinference is locally deployed and does not offer predefined models. Refer to its documentation to learn which model to use. Thus, we choose a customizable-model approach. - customizable-model provider_credential_schema: credential_form_schemas: ``` Next, define the `provider_credential_schema`. Since `Xinference` supports text-generation, embeddings, and reranking models, you can configure it as follows: ```yaml provider_credential_schema: credential_form_schemas: - variable: model_type type: select label: en_US: Model type zh_Hans: 模型类型 required: true options: - value: text-generation label: en_US: Language Model zh_Hans: 语言模型 - value: embeddings label: en_US: Text Embedding - value: reranking label: en_US: Rerank ``` Every model in Xinference requires a `model_name`: ```yaml - variable: model_name type: text-input label: en_US: Model name zh_Hans: 模型名称 required: true placeholder: zh_Hans: 填写模型名称 en_US: Input model name ``` Because Xinference must be locally deployed, users need to supply the server address (server\_url) and model UID. For instance: ```yaml - variable: server_url label: zh_Hans: 服务器 URL en_US: Server url type: text-input required: true placeholder: zh_Hans: 在此输入 Xinference 的服务器地址,如 https://example.com/xxx en_US: Enter the url of your Xinference, for example https://example.com/xxx - variable: model_uid label: zh_Hans: 模型 UID en_US: Model uid type: text-input required: true placeholder: zh_Hans: 在此输入您的 Model UID en_US: Enter the model uid ``` Once you’ve defined these parameters, the YAML configuration for your custom model provider is complete. Next, create the functional code files for each model defined in this config. ### 2. Develop the Model Code Since Xinference supports llm, rerank, speech2text, and tts, you should create corresponding directories under /models, each containing its respective feature code. Below is an example for an llm-type model. You’d create a file named llm.py, then define a class—such as XinferenceAILargeLanguageModel—that extends \_\_base.large\_language\_model.LargeLanguageModel. This class should include: * **LLM Invocation** The core method for invoking the LLM, supporting both streaming and synchronous responses: ```python def _invoke( self, model: str, credentials: dict, prompt_messages: list[PromptMessage], model_parameters: dict, tools: Optional[list[PromptMessageTool]] = None, stop: Optional[list[str]] = None, stream: bool = True, user: Optional[str] = None ) -> Union[LLMResult, Generator]: """ Invoke the large language model. :param model: model name :param credentials: model credentials :param prompt_messages: prompt messages :param model_parameters: model parameters :param tools: tools for tool calling :param stop: stop words :param stream: determines if response is streamed :param user: unique user id :return: full response or a chunk generator """ ``` You’ll need two separate functions to handle streaming and synchronous responses. Python treats any function containing `yield` as a generator returning type `Generator`, so it’s best to split them: ```yaml def _invoke(self, stream: bool, **kwargs) -> Union[LLMResult, Generator]: if stream: return self._handle_stream_response(**kwargs) return self._handle_sync_response(**kwargs) def _handle_stream_response(self, **kwargs) -> Generator: for chunk in response: yield chunk def _handle_sync_response(self, **kwargs) -> LLMResult: return LLMResult(**response) ``` * **Pre-calculating Input Tokens** If your model doesn’t provide a token-counting interface, simply return 0: ```python def get_num_tokens( self, model: str, credentials: dict, prompt_messages: list[PromptMessage], tools: Optional[list[PromptMessageTool]] = None ) -> int: """ Get the number of tokens for the given prompt messages. """ return 0 ``` Alternatively, you can call `self._get_num_tokens_by_gpt2(text: str)` from the `AIModel` base class, which uses a GPT-2 tokenizer. Remember this is an approximation and may not match your model exactly. * **Validating Model Credentials** Similar to provider-level credential checks, but scoped to a single model: ```python def validate_credentials(self, model: str, credentials: dict) -> None: """ Validate model credentials. """ ``` * **Dynamic Model Parameters Schema** Unlike [predefined models](/en/plugins/quick-start/develop-plugins/model-plugin/predefined-model), no YAML is defining which parameters a model supports. You must generate a parameter schema dynamically. For example, Xinference supports `max_tokens`, `temperature`, and `top_p`. Some other providers (e.g., `OpenLLM`) may support parameters like `top_k` only for certain models. This means you need to adapt your schema to each model’s capabilities: ```python def get_customizable_model_schema(self, model: str, credentials: dict) -> AIModelEntity | None: """ used to define customizable model schema """ rules = [ ParameterRule( name='temperature', type=ParameterType.FLOAT, use_template='temperature', label=I18nObject( zh_Hans='温度', en_US='Temperature' ) ), ParameterRule( name='top_p', type=ParameterType.FLOAT, use_template='top_p', label=I18nObject( zh_Hans='Top P', en_US='Top P' ) ), ParameterRule( name='max_tokens', type=ParameterType.INT, use_template='max_tokens', min=1, default=512, label=I18nObject( zh_Hans='最大生成长度', en_US='Max Tokens' ) ) ] # if model is A, add top_k to rules if model == 'A': rules.append( ParameterRule( name='top_k', type=ParameterType.INT, use_template='top_k', min=1, default=50, label=I18nObject( zh_Hans='Top K', en_US='Top K' ) ) ) """ some NOT IMPORTANT code here """ entity = AIModelEntity( model=model, label=I18nObject( en_US=model ), fetch_from=FetchFrom.CUSTOMIZABLE_MODEL, model_type=model_type, model_properties={ ModelPropertyKey.MODE: ModelType.LLM, }, parameter_rules=rules ) return entity ``` * **Error Mapping** When an error occurs during model invocation, map it to the appropriate InvokeError type recognized by the runtime. This lets Dify handle different errors in a standardized manner: Runtime Errors: ``` • `InvokeConnectionError` • `InvokeServerUnavailableError` • `InvokeRateLimitError` • `InvokeAuthorizationError` • `InvokeBadRequestError` ``` ```python @property def _invoke_error_mapping(self) -> dict[type[InvokeError], list[type[Exception]]]: """ Map model invocation errors to unified error types. The key is the error type thrown to the caller. The value is the error type thrown by the model, which needs to be mapped to a unified Dify error for consistent handling. """ # return { # InvokeConnectionError: [requests.exceptions.ConnectionError], # ... # } ``` For more details on interface methods, see the [Model Documentation](https://docs.dify.ai/zh-hans/plugins/schema-definition/model). To view the complete code files discussed in this guide, visit the [GitHub Repository](https://github.com/langgenius/dify-official-plugins/tree/main/models/xinference). ### 3. Debug the Plugin After finishing development, test the plugin to ensure it runs correctly. For more details, refer to: ### 4. Publish the Plugin If you’d like to list this plugin on the Dify Marketplace, see: Publish to Dify Marketplace ## Explore More **Quick Start:** * [Develop Extension Plugin](/en/plugins/quick-start/develop-plugins/extension-plugin) * [Develop Tool Plugin](/en/plugins/quick-start/develop-plugins/tool-plugin) * [Bundle Plugins: Package Multiple Plugins](/en/plugins/quick-start/develop-plugins/bundle) **Plugins Endpoint Docs:** * [Manifest](/en/plugins/schema-definition/manifest) Structure * [Endpoint](/en/plugins/schema-definition/endpoint) Definitions * [Reverse-Invocation of the Dify Service](/en/plugins/schema-definition/reverse-invocation-of-the-dify-service) * [Tools](/en/plugins/schema-definition/tool) * [Models](/en/plugins/schema-definition/model) {/* Contributing Section DO NOT edit this section! 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