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| from open_webui.utils.task import prompt_template, prompt_variables_template | |
| from open_webui.utils.misc import ( | |
| deep_update, | |
| add_or_update_system_message, | |
| ) | |
| from typing import Callable, Optional | |
| import json | |
| # inplace function: form_data is modified | |
| def apply_model_system_prompt_to_body( | |
| system: Optional[str], form_data: dict, metadata: Optional[dict] = None, user=None | |
| ) -> dict: | |
| if not system: | |
| return form_data | |
| # Metadata (WebUI Usage) | |
| if metadata: | |
| variables = metadata.get("variables", {}) | |
| if variables: | |
| system = prompt_variables_template(system, variables) | |
| # Legacy (API Usage) | |
| if user: | |
| template_params = { | |
| "user_name": user.name, | |
| "user_location": user.info.get("location") if user.info else None, | |
| } | |
| else: | |
| template_params = {} | |
| system = prompt_template(system, **template_params) | |
| form_data["messages"] = add_or_update_system_message( | |
| system, form_data.get("messages", []) | |
| ) | |
| return form_data | |
| # inplace function: form_data is modified | |
| def apply_model_params_to_body( | |
| params: dict, form_data: dict, mappings: dict[str, Callable] | |
| ) -> dict: | |
| if not params: | |
| return form_data | |
| for key, value in params.items(): | |
| if value is not None: | |
| if key in mappings: | |
| cast_func = mappings[key] | |
| if isinstance(cast_func, Callable): | |
| form_data[key] = cast_func(value) | |
| else: | |
| form_data[key] = value | |
| return form_data | |
| def remove_open_webui_params(params: dict) -> dict: | |
| """ | |
| Removes OpenWebUI specific parameters from the provided dictionary. | |
| Args: | |
| params (dict): The dictionary containing parameters. | |
| Returns: | |
| dict: The modified dictionary with OpenWebUI parameters removed. | |
| """ | |
| open_webui_params = { | |
| "stream_response": bool, | |
| "function_calling": str, | |
| "system": str, | |
| } | |
| for key in list(params.keys()): | |
| if key in open_webui_params: | |
| del params[key] | |
| return params | |
| # inplace function: form_data is modified | |
| def apply_model_params_to_body_openai(params: dict, form_data: dict) -> dict: | |
| params = remove_open_webui_params(params) | |
| custom_params = params.pop("custom_params", {}) | |
| if custom_params: | |
| # Attempt to parse custom_params if they are strings | |
| for key, value in custom_params.items(): | |
| if isinstance(value, str): | |
| try: | |
| # Attempt to parse the string as JSON | |
| custom_params[key] = json.loads(value) | |
| except json.JSONDecodeError: | |
| # If it fails, keep the original string | |
| pass | |
| # If there are custom parameters, we need to apply them first | |
| params = deep_update(params, custom_params) | |
| mappings = { | |
| "temperature": float, | |
| "top_p": float, | |
| "min_p": float, | |
| "max_tokens": int, | |
| "frequency_penalty": float, | |
| "presence_penalty": float, | |
| "reasoning_effort": str, | |
| "seed": lambda x: x, | |
| "stop": lambda x: [bytes(s, "utf-8").decode("unicode_escape") for s in x], | |
| "logit_bias": lambda x: x, | |
| "response_format": dict, | |
| } | |
| return apply_model_params_to_body(params, form_data, mappings) | |
| def apply_model_params_to_body_ollama(params: dict, form_data: dict) -> dict: | |
| params = remove_open_webui_params(params) | |
| custom_params = params.pop("custom_params", {}) | |
| if custom_params: | |
| # Attempt to parse custom_params if they are strings | |
| for key, value in custom_params.items(): | |
| if isinstance(value, str): | |
| try: | |
| # Attempt to parse the string as JSON | |
| custom_params[key] = json.loads(value) | |
| except json.JSONDecodeError: | |
| # If it fails, keep the original string | |
| pass | |
| # If there are custom parameters, we need to apply them first | |
| params = deep_update(params, custom_params) | |
| # Convert OpenAI parameter names to Ollama parameter names if needed. | |
| name_differences = { | |
| "max_tokens": "num_predict", | |
| } | |
| for key, value in name_differences.items(): | |
| if (param := params.get(key, None)) is not None: | |
| # Copy the parameter to new name then delete it, to prevent Ollama warning of invalid option provided | |
| params[value] = params[key] | |
| del params[key] | |
| # See https://github.com/ollama/ollama/blob/main/docs/api.md#request-8 | |
| mappings = { | |
| "temperature": float, | |
| "top_p": float, | |
| "seed": lambda x: x, | |
| "mirostat": int, | |
| "mirostat_eta": float, | |
| "mirostat_tau": float, | |
| "num_ctx": int, | |
| "num_batch": int, | |
| "num_keep": int, | |
| "num_predict": int, | |
| "repeat_last_n": int, | |
| "top_k": int, | |
| "min_p": float, | |
| "typical_p": float, | |
| "repeat_penalty": float, | |
| "presence_penalty": float, | |
| "frequency_penalty": float, | |
| "penalize_newline": bool, | |
| "stop": lambda x: [bytes(s, "utf-8").decode("unicode_escape") for s in x], | |
| "numa": bool, | |
| "num_gpu": int, | |
| "main_gpu": int, | |
| "low_vram": bool, | |
| "vocab_only": bool, | |
| "use_mmap": bool, | |
| "use_mlock": bool, | |
| "num_thread": int, | |
| } | |
| def parse_json(value: str) -> dict: | |
| """ | |
| Parses a JSON string into a dictionary, handling potential JSONDecodeError. | |
| """ | |
| try: | |
| return json.loads(value) | |
| except Exception as e: | |
| return value | |
| ollama_root_params = { | |
| "format": lambda x: parse_json(x), | |
| "keep_alive": lambda x: parse_json(x), | |
| "think": bool, | |
| } | |
| for key, value in ollama_root_params.items(): | |
| if (param := params.get(key, None)) is not None: | |
| # Copy the parameter to new name then delete it, to prevent Ollama warning of invalid option provided | |
| form_data[key] = value(param) | |
| del params[key] | |
| # Unlike OpenAI, Ollama does not support params directly in the body | |
| form_data["options"] = apply_model_params_to_body( | |
| params, (form_data.get("options", {}) or {}), mappings | |
| ) | |
| return form_data | |
| def convert_messages_openai_to_ollama(messages: list[dict]) -> list[dict]: | |
| ollama_messages = [] | |
| for message in messages: | |
| # Initialize the new message structure with the role | |
| new_message = {"role": message["role"]} | |
| content = message.get("content", []) | |
| tool_calls = message.get("tool_calls", None) | |
| tool_call_id = message.get("tool_call_id", None) | |
| # Check if the content is a string (just a simple message) | |
| if isinstance(content, str) and not tool_calls: | |
| # If the content is a string, it's pure text | |
| new_message["content"] = content | |
| # If message is a tool call, add the tool call id to the message | |
| if tool_call_id: | |
| new_message["tool_call_id"] = tool_call_id | |
| elif tool_calls: | |
| # If tool calls are present, add them to the message | |
| ollama_tool_calls = [] | |
| for tool_call in tool_calls: | |
| ollama_tool_call = { | |
| "index": tool_call.get("index", 0), | |
| "id": tool_call.get("id", None), | |
| "function": { | |
| "name": tool_call.get("function", {}).get("name", ""), | |
| "arguments": json.loads( | |
| tool_call.get("function", {}).get("arguments", {}) | |
| ), | |
| }, | |
| } | |
| ollama_tool_calls.append(ollama_tool_call) | |
| new_message["tool_calls"] = ollama_tool_calls | |
| # Put the content to empty string (Ollama requires an empty string for tool calls) | |
| new_message["content"] = "" | |
| else: | |
| # Otherwise, assume the content is a list of dicts, e.g., text followed by an image URL | |
| content_text = "" | |
| images = [] | |
| # Iterate through the list of content items | |
| for item in content: | |
| # Check if it's a text type | |
| if item.get("type") == "text": | |
| content_text += item.get("text", "") | |
| # Check if it's an image URL type | |
| elif item.get("type") == "image_url": | |
| img_url = item.get("image_url", {}).get("url", "") | |
| if img_url: | |
| # If the image url starts with data:, it's a base64 image and should be trimmed | |
| if img_url.startswith("data:"): | |
| img_url = img_url.split(",")[-1] | |
| images.append(img_url) | |
| # Add content text (if any) | |
| if content_text: | |
| new_message["content"] = content_text.strip() | |
| # Add images (if any) | |
| if images: | |
| new_message["images"] = images | |
| # Append the new formatted message to the result | |
| ollama_messages.append(new_message) | |
| return ollama_messages | |
| def convert_payload_openai_to_ollama(openai_payload: dict) -> dict: | |
| """ | |
| Converts a payload formatted for OpenAI's API to be compatible with Ollama's API endpoint for chat completions. | |
| Args: | |
| openai_payload (dict): The payload originally designed for OpenAI API usage. | |
| Returns: | |
| dict: A modified payload compatible with the Ollama API. | |
| """ | |
| ollama_payload = {} | |
| # Mapping basic model and message details | |
| ollama_payload["model"] = openai_payload.get("model") | |
| ollama_payload["messages"] = convert_messages_openai_to_ollama( | |
| openai_payload.get("messages") | |
| ) | |
| ollama_payload["stream"] = openai_payload.get("stream", False) | |
| if "tools" in openai_payload: | |
| ollama_payload["tools"] = openai_payload["tools"] | |
| # If there are advanced parameters in the payload, format them in Ollama's options field | |
| if openai_payload.get("options"): | |
| ollama_payload["options"] = openai_payload["options"] | |
| ollama_options = openai_payload["options"] | |
| def parse_json(value: str) -> dict: | |
| """ | |
| Parses a JSON string into a dictionary, handling potential JSONDecodeError. | |
| """ | |
| try: | |
| return json.loads(value) | |
| except Exception as e: | |
| return value | |
| ollama_root_params = { | |
| "format": lambda x: parse_json(x), | |
| "keep_alive": lambda x: parse_json(x), | |
| "think": bool, | |
| } | |
| # Ollama's options field can contain parameters that should be at the root level. | |
| for key, value in ollama_root_params.items(): | |
| if (param := ollama_options.get(key, None)) is not None: | |
| # Copy the parameter to new name then delete it, to prevent Ollama warning of invalid option provided | |
| ollama_payload[key] = value(param) | |
| del ollama_options[key] | |
| # Re-Mapping OpenAI's `max_tokens` -> Ollama's `num_predict` | |
| if "max_tokens" in ollama_options: | |
| ollama_options["num_predict"] = ollama_options["max_tokens"] | |
| del ollama_options["max_tokens"] | |
| # Ollama lacks a "system" prompt option. It has to be provided as a direct parameter, so we copy it down. | |
| # Comment: Not sure why this is needed, but we'll keep it for compatibility. | |
| if "system" in ollama_options: | |
| ollama_payload["system"] = ollama_options["system"] | |
| del ollama_options["system"] | |
| ollama_payload["options"] = ollama_options | |
| # If there is the "stop" parameter in the openai_payload, remap it to the ollama_payload.options | |
| if "stop" in openai_payload: | |
| ollama_options = ollama_payload.get("options", {}) | |
| ollama_options["stop"] = openai_payload.get("stop") | |
| ollama_payload["options"] = ollama_options | |
| if "metadata" in openai_payload: | |
| ollama_payload["metadata"] = openai_payload["metadata"] | |
| if "response_format" in openai_payload: | |
| response_format = openai_payload["response_format"] | |
| format_type = response_format.get("type", None) | |
| schema = response_format.get(format_type, None) | |
| if schema: | |
| format = schema.get("schema", None) | |
| ollama_payload["format"] = format | |
| return ollama_payload | |
| def convert_embedding_payload_openai_to_ollama(openai_payload: dict) -> dict: | |
| """ | |
| Convert an embeddings request payload from OpenAI format to Ollama format. | |
| Args: | |
| openai_payload (dict): The original payload designed for OpenAI API usage. | |
| Returns: | |
| dict: A payload compatible with the Ollama API embeddings endpoint. | |
| """ | |
| ollama_payload = {"model": openai_payload.get("model")} | |
| input_value = openai_payload.get("input") | |
| # Ollama expects 'input' as a list, and 'prompt' as a single string. | |
| if isinstance(input_value, list): | |
| ollama_payload["input"] = input_value | |
| ollama_payload["prompt"] = "\n".join(str(x) for x in input_value) | |
| else: | |
| ollama_payload["input"] = [input_value] | |
| ollama_payload["prompt"] = str(input_value) | |
| # Optionally forward other fields if present | |
| for optional_key in ("options", "truncate", "keep_alive"): | |
| if optional_key in openai_payload: | |
| ollama_payload[optional_key] = openai_payload[optional_key] | |
| return ollama_payload | |