from __future__ import annotations from dataclasses import dataclass from .Provider import IterListProvider, ProviderType from .Provider import ( AIChatFree, Airforce, AIUncensored, Bing, Blackbox, ChatGpt, Chatgpt4Online, ChatGptEs, Cloudflare, DarkAI, DDG, DeepInfraChat, Free2GPT, FreeNetfly, GigaChat, Gemini, GeminiPro, HuggingChat, HuggingFace, Liaobots, MagickPen, Mhystical, MetaAI, OpenaiChat, PerplexityLabs, Pi, Pizzagpt, Reka, ReplicateHome, RubiksAI, TeachAnything, Upstage, ) @dataclass(unsafe_hash=True) class Model: """ Represents a machine learning model configuration. Attributes: name (str): Name of the model. base_provider (str): Default provider for the model. best_provider (ProviderType): The preferred provider for the model, typically with retry logic. """ name: str base_provider: str best_provider: ProviderType = None @staticmethod def __all__() -> list[str]: """Returns a list of all model names.""" return _all_models ### Default ### default = Model( name = "", base_provider = "", best_provider = IterListProvider([ DDG, Pizzagpt, ReplicateHome, Upstage, Blackbox, Free2GPT, MagickPen, DeepInfraChat, Airforce, ChatGptEs, Cloudflare, AIUncensored, DarkAI, Mhystical, ]) ) ############ ### Text ### ############ ### OpenAI ### # gpt-3.5 gpt_35_turbo = Model( name = 'gpt-3.5-turbo', base_provider = 'OpenAI', best_provider = IterListProvider([Airforce]) ) # gpt-4 gpt_4o = Model( name = 'gpt-4o', base_provider = 'OpenAI', best_provider = IterListProvider([Blackbox, ChatGptEs, DarkAI, ChatGpt, Airforce, Liaobots, OpenaiChat]) ) gpt_4o_mini = Model( name = 'gpt-4o-mini', base_provider = 'OpenAI', best_provider = IterListProvider([DDG, ChatGptEs, FreeNetfly, Pizzagpt, ChatGpt, Airforce, RubiksAI, MagickPen, Liaobots, OpenaiChat]) ) gpt_4_turbo = Model( name = 'gpt-4-turbo', base_provider = 'OpenAI', best_provider = IterListProvider([Liaobots, Bing]) ) gpt_4 = Model( name = 'gpt-4', base_provider = 'OpenAI', best_provider = IterListProvider([Chatgpt4Online, Bing, OpenaiChat, DDG, Liaobots, Airforce]) ) ### GigaChat ### gigachat = Model( name = 'GigaChat:latest', base_provider = 'gigachat', best_provider = GigaChat ) ### Meta ### meta = Model( name = "meta-ai", base_provider = "Meta", best_provider = MetaAI ) # llama 2 llama_2_7b = Model( name = "llama-2-7b", base_provider = "Meta Llama", best_provider = Cloudflare ) # llama 3 llama_3_8b = Model( name = "llama-3-8b", base_provider = "Meta Llama", best_provider = Cloudflare ) # llama 3.1 llama_3_1_8b = Model( name = "llama-3.1-8b", base_provider = "Meta Llama", best_provider = IterListProvider([Blackbox, DeepInfraChat, Cloudflare, Airforce, PerplexityLabs]) ) llama_3_1_70b = Model( name = "llama-3.1-70b", base_provider = "Meta Llama", best_provider = IterListProvider([DDG, DeepInfraChat, Blackbox, TeachAnything, DarkAI, Airforce, RubiksAI, HuggingChat, HuggingFace, PerplexityLabs]) ) llama_3_1_405b = Model( name = "llama-3.1-405b", base_provider = "Meta Llama", best_provider = IterListProvider([Blackbox, DarkAI]) ) # llama 3.2 llama_3_2_1b = Model( name = "llama-3.2-1b", base_provider = "Meta Llama", best_provider = IterListProvider([Cloudflare]) ) llama_3_2_11b = Model( name = "llama-3.2-11b", base_provider = "Meta Llama", best_provider = IterListProvider([HuggingChat, HuggingFace]) ) mixtral_8x7b = Model( name = "mixtral-8x7b", base_provider = "Mistral", best_provider = DDG ) mistral_nemo = Model( name = "mistral-nemo", base_provider = "Mistral", best_provider = IterListProvider([HuggingChat, HuggingFace]) ) hermes_3 = Model( name = "hermes-3", base_provider = "NousResearch", best_provider = IterListProvider([HuggingChat, HuggingFace]) ) ### Microsoft ### phi_2 = Model( name = "phi-2", base_provider = "Microsoft", best_provider = IterListProvider([Airforce]) ) phi_3_5_mini = Model( name = "phi-3.5-mini", base_provider = "Microsoft", best_provider = IterListProvider([HuggingChat, HuggingFace]) ) ### Google DeepMind ### # gemini gemini_pro = Model( name = 'gemini-pro', base_provider = 'Google DeepMind', best_provider = IterListProvider([GeminiPro, Blackbox, AIChatFree, Liaobots]) ) gemini_flash = Model( name = 'gemini-flash', base_provider = 'Google DeepMind', best_provider = IterListProvider([Blackbox, Liaobots]) ) gemini = Model( name = 'gemini', base_provider = 'Google DeepMind', best_provider = Gemini ) # gemma gemma_2b = Model( name = 'gemma-2b', base_provider = 'Google', best_provider = ReplicateHome ) ### Anthropic ### claude_2_1 = Model( name = 'claude-2.1', base_provider = 'Anthropic', best_provider = Liaobots ) # claude 3 claude_3_opus = Model( name = 'claude-3-opus', base_provider = 'Anthropic', best_provider = Liaobots ) claude_3_sonnet = Model( name = 'claude-3-sonnet', base_provider = 'Anthropic', best_provider = Liaobots ) claude_3_haiku = Model( name = 'claude-3-haiku', base_provider = 'Anthropic', best_provider = IterListProvider([DDG, Liaobots]) ) # claude 3.5 claude_3_5_sonnet = Model( name = 'claude-3.5-sonnet', base_provider = 'Anthropic', best_provider = IterListProvider([Blackbox, Liaobots]) ) ### Reka AI ### reka_core = Model( name = 'reka-core', base_provider = 'Reka AI', best_provider = Reka ) ### Blackbox AI ### blackboxai = Model( name = 'blackboxai', base_provider = 'Blackbox AI', best_provider = Blackbox ) blackboxai_pro = Model( name = 'blackboxai-pro', base_provider = 'Blackbox AI', best_provider = Blackbox ) ### CohereForAI ### command_r_plus = Model( name = 'command-r-plus', base_provider = 'CohereForAI', best_provider = HuggingChat ) ### Qwen ### # qwen 1_5 qwen_1_5_7b = Model( name = 'qwen-1.5-7b', base_provider = 'Qwen', best_provider = Cloudflare ) # qwen 2 qwen_2_72b = Model( name = 'qwen-2-72b', base_provider = 'Qwen', best_provider = IterListProvider([DeepInfraChat, HuggingChat, HuggingFace]) ) # qwen 2.5 qwen_2_5_coder_32b = Model( name = 'qwen-2.5-coder-32b', base_provider = 'Qwen', best_provider = IterListProvider([HuggingChat, HuggingFace]) ) ### Upstage ### solar_mini = Model( name = 'solar-mini', base_provider = 'Upstage', best_provider = Upstage ) solar_pro = Model( name = 'solar-pro', base_provider = 'Upstage', best_provider = Upstage ) ### Inflection ### pi = Model( name = 'pi', base_provider = 'Inflection', best_provider = Pi ) ### DeepSeek ### deepseek_coder = Model( name = 'deepseek-coder', base_provider = 'DeepSeek', best_provider = Airforce ) ### WizardLM ### wizardlm_2_8x22b = Model( name = 'wizardlm-2-8x22b', base_provider = 'WizardLM', best_provider = IterListProvider([DeepInfraChat]) ) ### Yorickvp ### llava_13b = Model( name = 'llava-13b', base_provider = 'Yorickvp', best_provider = ReplicateHome ) ### OpenChat ### openchat_3_5 = Model( name = 'openchat-3.5', base_provider = 'OpenChat', best_provider = Airforce ) ### x.ai ### grok_2 = Model( name = 'grok-2', base_provider = 'x.ai', best_provider = Liaobots ) grok_2_mini = Model( name = 'grok-2-mini', base_provider = 'x.ai', best_provider = Liaobots ) grok_beta = Model( name = 'grok-beta', base_provider = 'x.ai', best_provider = Liaobots ) ### Perplexity AI ### sonar_online = Model( name = 'sonar-online', base_provider = 'Perplexity AI', best_provider = IterListProvider([PerplexityLabs]) ) sonar_chat = Model( name = 'sonar-chat', base_provider = 'Perplexity AI', best_provider = PerplexityLabs ) ### Nvidia ### nemotron_70b = Model( name = 'nemotron-70b', base_provider = 'Nvidia', best_provider = IterListProvider([HuggingChat, HuggingFace]) ) ### Teknium ### openhermes_2_5 = Model( name = 'openhermes-2.5', base_provider = 'Teknium', best_provider = Airforce ) ### Liquid ### lfm_40b = Model( name = 'lfm-40b', base_provider = 'Liquid', best_provider = IterListProvider([Airforce, PerplexityLabs]) ) ### DiscoResearch ### german_7b = Model( name = 'german-7b', base_provider = 'DiscoResearch', best_provider = Airforce ) ### HuggingFaceH4 ### zephyr_7b = Model( name = 'zephyr-7b', base_provider = 'HuggingFaceH4', best_provider = Airforce ) ### Inferless ### neural_7b = Model( name = 'neural-7b', base_provider = 'inferless', best_provider = Airforce ) ############# ### Image ### ############# ### Stability AI ### sdxl = Model( name = 'sdxl', base_provider = 'Stability AI', best_provider = IterListProvider([ReplicateHome]) ) sd_3 = Model( name = 'sd-3', base_provider = 'Stability AI', best_provider = ReplicateHome ) ### Playground ### playground_v2_5 = Model( name = 'playground-v2.5', base_provider = 'Playground AI', best_provider = ReplicateHome ) ### Flux AI ### flux = Model( name = 'flux', base_provider = 'Flux AI', best_provider = IterListProvider([Blackbox, AIUncensored, Airforce]) ) flux_pro = Model( name = 'flux-pro', base_provider = 'Flux AI', best_provider = Airforce ) flux_realism = Model( name = 'flux-realism', base_provider = 'Flux AI', best_provider = Airforce ) flux_anime = Model( name = 'flux-anime', base_provider = 'Flux AI', best_provider = Airforce ) flux_3d = Model( name = 'flux-3d', base_provider = 'Flux AI', best_provider = Airforce ) flux_disney = Model( name = 'flux-disney', base_provider = 'Flux AI', best_provider = Airforce ) flux_pixel = Model( name = 'flux-pixel', base_provider = 'Flux AI', best_provider = Airforce ) flux_4o = Model( name = 'flux-4o', base_provider = 'Flux AI', best_provider = Airforce ) ### Other ### any_dark = Model( name = 'any-dark', base_provider = '', best_provider = Airforce ) class ModelUtils: """ Utility class for mapping string identifiers to Model instances. Attributes: convert (dict[str, Model]): Dictionary mapping model string identifiers to Model instances. """ convert: dict[str, Model] = { ############ ### Text ### ############ ### OpenAI ### # gpt-3 'gpt-3': gpt_35_turbo, # gpt-3.5 'gpt-3.5-turbo': gpt_35_turbo, # gpt-4 'gpt-4o': gpt_4o, 'gpt-4o-mini': gpt_4o_mini, 'gpt-4': gpt_4, 'gpt-4-turbo': gpt_4_turbo, ### Meta ### "meta-ai": meta, # llama-2 'llama-2-7b': llama_2_7b, # llama-3 'llama-3-8b': llama_3_8b, # llama-3.1 'llama-3.1-8b': llama_3_1_8b, 'llama-3.1-70b': llama_3_1_70b, 'llama-3.1-405b': llama_3_1_405b, # llama-3.2 'llama-3.2-1b': llama_3_2_1b, 'llama-3.2-11b': llama_3_2_11b, ### Mistral ### 'mixtral-8x7b': mixtral_8x7b, 'mistral-nemo': mistral_nemo, ### NousResearch ### 'hermes-3': hermes_3, ### Microsoft ### 'phi-2': phi_2, 'phi-3.5-mini': phi_3_5_mini, ### Google ### # gemini 'gemini': gemini, 'gemini-pro': gemini_pro, 'gemini-flash': gemini_flash, # gemma 'gemma-2b': gemma_2b, ### Anthropic ### 'claude-2.1': claude_2_1, # claude 3 'claude-3-opus': claude_3_opus, 'claude-3-sonnet': claude_3_sonnet, 'claude-3-haiku': claude_3_haiku, # claude 3.5 'claude-3.5-sonnet': claude_3_5_sonnet, ### Reka AI ### 'reka-core': reka_core, ### Blackbox AI ### 'blackboxai': blackboxai, 'blackboxai-pro': blackboxai_pro, ### CohereForAI ### 'command-r+': command_r_plus, ### GigaChat ### 'gigachat': gigachat, 'qwen-1.5-7b': qwen_1_5_7b, 'qwen-2-72b': qwen_2_72b, ### Upstage ### 'solar-pro': solar_pro, ### Inflection ### 'pi': pi, ### Yorickvp ### 'llava-13b': llava_13b, ### WizardLM ### 'wizardlm-2-8x22b': wizardlm_2_8x22b, ### OpenChat ### 'openchat-3.5': openchat_3_5, ### x.ai ### 'grok-2': grok_2, 'grok-2-mini': grok_2_mini, 'grok-beta': grok_beta, ### Perplexity AI ### 'sonar-online': sonar_online, 'sonar-chat': sonar_chat, ### TheBloke ### 'german-7b': german_7b, ### Nvidia ### 'nemotron-70b': nemotron_70b, ############# ### Image ### ############# ### Stability AI ### 'sdxl': sdxl, 'sd-3': sd_3, ### Playground ### 'playground-v2.5': playground_v2_5, ### Flux AI ### 'flux': flux, 'flux-pro': flux_pro, 'flux-realism': flux_realism, 'flux-anime': flux_anime, 'flux-3d': flux_3d, 'flux-disney': flux_disney, 'flux-pixel': flux_pixel, 'flux-4o': flux_4o, ### Other ### 'any-dark': any_dark, } _all_models = list(ModelUtils.convert.keys())