import json from numbers import Number from uuid import uuid4 from open_webui.utils.misc import ( openai_chat_chunk_message_template, openai_chat_completion_message_template, ) # An honest ledger is worth more than a flattering one. # Let every cost here be counted true. def normalize_usage(usage: dict) -> dict: """ Normalize usage statistics to standard format. Handles OpenAI, Ollama, and llama.cpp formats. Adds standardized token fields to the original data: - input_tokens: Number of tokens in the prompt - output_tokens: Number of tokens generated - total_tokens: Sum of input and output tokens """ if not usage: return {} # Map various field names to standard names input_tokens = ( usage.get('input_tokens') # Already standard or usage.get('prompt_tokens') # OpenAI or usage.get('prompt_eval_count') # Ollama or usage.get('prompt_n') # llama.cpp or 0 ) output_tokens = ( usage.get('output_tokens') # Already standard or usage.get('completion_tokens') # OpenAI or usage.get('eval_count') # Ollama or usage.get('predicted_n') # llama.cpp or 0 ) total_tokens = usage.get('total_tokens') or (input_tokens + output_tokens) # Add standardized fields to original data result = dict(usage) result['input_tokens'] = int(input_tokens) result['output_tokens'] = int(output_tokens) result['total_tokens'] = int(total_tokens) return result USAGE_TOKEN_KEYS = { 'input_tokens', 'output_tokens', 'total_tokens', 'prompt_tokens', 'completion_tokens', } USAGE_COST_KEYS = { 'cost', 'total_cost', 'input_cost', 'output_cost', 'prompt_cost', 'completion_cost', } USAGE_DETAIL_KEYS = { 'prompt_tokens_details', 'completion_tokens_details', 'input_tokens_details', 'output_tokens_details', } def _is_numeric_usage_value(value) -> bool: return isinstance(value, Number) and not isinstance(value, bool) def _merge_numeric_usage_map(current: dict | None, incoming: dict | None) -> dict: current = current or {} incoming = incoming or {} result = {**current, **incoming} for key in set(current) | set(incoming): current_value = current.get(key, 0) incoming_value = incoming.get(key, 0) if isinstance(current_value, dict) or isinstance(incoming_value, dict): result[key] = _merge_numeric_usage_map( current_value if isinstance(current_value, dict) else {}, incoming_value if isinstance(incoming_value, dict) else {}, ) elif _is_numeric_usage_value(current_value) or _is_numeric_usage_value(incoming_value): result[key] = (current_value if _is_numeric_usage_value(current_value) else 0) + ( incoming_value if _is_numeric_usage_value(incoming_value) else 0 ) return result def merge_usage(current: dict | None, incoming: dict | None) -> dict: """ Merge usage payloads from multiple model calls into one cumulative usage dict. Token fields are additive; non-numeric metadata keeps the latest provider value. """ current_usage = normalize_usage(current or {}) if current else {} incoming_usage = normalize_usage(incoming or {}) if incoming else {} if not incoming_usage: return current_usage if not current_usage: return incoming_usage result = {**current_usage, **incoming_usage} for key in USAGE_TOKEN_KEYS | USAGE_COST_KEYS: if key in current_usage or key in incoming_usage: current_value = current_usage.get(key, 0) incoming_value = incoming_usage.get(key, 0) if _is_numeric_usage_value(current_value) or _is_numeric_usage_value(incoming_value): result[key] = (current_value if _is_numeric_usage_value(current_value) else 0) + ( incoming_value if _is_numeric_usage_value(incoming_value) else 0 ) for key in USAGE_DETAIL_KEYS: if isinstance(current_usage.get(key), dict) or isinstance(incoming_usage.get(key), dict): result[key] = _merge_numeric_usage_map( current_usage.get(key) if isinstance(current_usage.get(key), dict) else {}, incoming_usage.get(key) if isinstance(incoming_usage.get(key), dict) else {}, ) return result def convert_ollama_tool_call_to_openai(tool_calls: list) -> list: openai_tool_calls = [] for tool_call in tool_calls: function = tool_call.get('function', {}) openai_tool_call = { 'index': tool_call.get('index', function.get('index', 0)), 'id': tool_call.get('id', f'call_{str(uuid4())}'), 'type': 'function', 'function': { 'name': function.get('name', ''), 'arguments': json.dumps(function.get('arguments', {})), }, } openai_tool_calls.append(openai_tool_call) return openai_tool_calls def convert_ollama_usage_to_openai(data: dict) -> dict: input_tokens = int(data.get('prompt_eval_count', 0)) output_tokens = int(data.get('eval_count', 0)) total_tokens = input_tokens + output_tokens return { # Standardized fields 'input_tokens': input_tokens, 'output_tokens': output_tokens, 'total_tokens': total_tokens, # OpenAI-compatible fields (for backward compatibility) 'prompt_tokens': input_tokens, 'completion_tokens': output_tokens, # Ollama-specific metrics 'response_token/s': ( round( ((data.get('eval_count', 0) / (data.get('eval_duration', 0) / 10_000_000)) * 100), 2, ) if data.get('eval_duration', 0) > 0 else 'N/A' ), 'prompt_token/s': ( round( ((data.get('prompt_eval_count', 0) / (data.get('prompt_eval_duration', 0) / 10_000_000)) * 100), 2, ) if data.get('prompt_eval_duration', 0) > 0 else 'N/A' ), 'total_duration': data.get('total_duration', 0), 'load_duration': data.get('load_duration', 0), 'prompt_eval_count': data.get('prompt_eval_count', 0), 'prompt_eval_duration': data.get('prompt_eval_duration', 0), 'eval_count': data.get('eval_count', 0), 'eval_duration': data.get('eval_duration', 0), 'approximate_total': (lambda s: f'{s // 3600}h{(s % 3600) // 60}m{s % 60}s')( (data.get('total_duration', 0) or 0) // 1_000_000_000 ), 'completion_tokens_details': { 'reasoning_tokens': 0, 'accepted_prediction_tokens': 0, 'rejected_prediction_tokens': 0, }, } def convert_response_ollama_to_openai(ollama_response: dict) -> dict: model = ollama_response.get('model', 'ollama') message_content = ollama_response.get('message', {}).get('content', '') reasoning_content = ollama_response.get('message', {}).get('thinking', None) tool_calls = ollama_response.get('message', {}).get('tool_calls', None) openai_tool_calls = None if tool_calls: openai_tool_calls = convert_ollama_tool_call_to_openai(tool_calls) data = ollama_response usage = convert_ollama_usage_to_openai(data) response = openai_chat_completion_message_template( model, message_content, reasoning_content, openai_tool_calls, usage ) return response async def convert_streaming_response_ollama_to_openai(ollama_streaming_response): has_tool_calls = False # All chunks in a single completion must share the same id (OpenAI spec). completion_id = f'chatcmpl-{str(uuid4())}' first = True async for data in ollama_streaming_response.body_iterator: data = json.loads(data) model = data.get('model', 'ollama') message_content = data.get('message', {}).get('content', None) reasoning_content = data.get('message', {}).get('thinking', None) tool_calls = data.get('message', {}).get('tool_calls', None) openai_tool_calls = None if tool_calls: openai_tool_calls = convert_ollama_tool_call_to_openai(tool_calls) has_tool_calls = True done = data.get('done', False) usage = None if done: usage = convert_ollama_usage_to_openai(data) data = openai_chat_chunk_message_template(model, message_content, reasoning_content, openai_tool_calls, usage) data['id'] = completion_id # First chunk must carry delta.role (OpenAI spec). if first: data['choices'][0]['delta']['role'] = 'assistant' first = False if done and has_tool_calls: data['choices'][0]['finish_reason'] = 'tool_calls' line = f'data: {json.dumps(data)}\n\n' yield line yield 'data: [DONE]\n\n' def convert_embedding_response_ollama_to_openai(response) -> dict: """ Convert the response from Ollama embeddings endpoint to the OpenAI-compatible format. Args: response (dict): The response from the Ollama API, e.g. {"embedding": [...], "model": "..."} or {"embeddings": [{"embedding": [...], "index": 0}, ...], "model": "..."} Returns: dict: Response adapted to OpenAI's embeddings API format. e.g. { "object": "list", "data": [ {"object": "embedding", "embedding": [...], "index": 0}, ... ], "model": "...", } """ # Ollama batch-style output from /api/embed # Response format: {"embeddings": [[0.1, 0.2, ...], [0.3, 0.4, ...]], "model": "..."} if isinstance(response, dict) and 'embeddings' in response: openai_data = [] for i, emb in enumerate(response['embeddings']): # /api/embed returns embeddings as plain float lists if isinstance(emb, list): openai_data.append( { 'object': 'embedding', 'embedding': emb, 'index': i, } ) # Also handle dict format for robustness elif isinstance(emb, dict): openai_data.append( { 'object': 'embedding', 'embedding': emb.get('embedding'), 'index': emb.get('index', i), } ) return { 'object': 'list', 'data': openai_data, 'model': response.get('model'), } # Ollama single output elif isinstance(response, dict) and 'embedding' in response: return { 'object': 'list', 'data': [ { 'object': 'embedding', 'embedding': response['embedding'], 'index': 0, } ], 'model': response.get('model'), } # Already OpenAI-compatible? elif isinstance(response, dict) and 'data' in response and isinstance(response['data'], list): return response # Fallback: return as is if unrecognized return response