# Sample YAML file for configuration. # Comment and uncomment values as needed. Every value has a default within the application. # This file serves to be a drop in for config.yml # Unless specified in the comments, DO NOT put these options in quotes! # You can use https://www.yamllint.com/ if you want to check your YAML formatting. # Options for networking network: # The IP to host on (default: 127.0.0.1). # Use 0.0.0.0 to expose on all network adapters host: 0.0.0.0 # The port to host on (default: 5000) port: 5000 # Disable HTTP token authenticaion with requests # WARNING: This will make your instance vulnerable! # Turn on this option if you are ONLY connecting from localhost disable_auth: False # Send tracebacks over the API to clients (default: False) # NOTE: Only enable this for debug purposes send_tracebacks: False # Select API servers to enable (default: ["OAI"]) # Possible values: OAI api_servers: ["OAI"] # Options for logging logging: # Enable prompt logging (default: False) prompt: False # Enable generation parameter logging (default: False) generation_params: False # Enable request logging (default: False) # NOTE: Only use this for debugging! requests: False # Options for sampling sampling: # Override preset name. Find this in the sampler-overrides folder (default: None) # This overrides default fallbacks for sampler values that are passed to the API # Server-side overrides are NOT needed by default # WARNING: Using this can result in a generation speed penalty #override_preset: # Options for development and experimentation developer: # Skips exllamav2 version check (default: False) # It's highly recommended to update your dependencies rather than enabling this flag # WARNING: Don't set this unless you know what you're doing! #unsafe_launch: False # Disable all request streaming (default: False) # A kill switch for turning off SSE in the API server #disable_request_streaming: False # Enable the torch CUDA malloc backend (default: False) # This can save a few MBs of VRAM, but has a risk of errors. Use at your own risk. cuda_malloc_backend: True # Enable Uvloop or Winloop (default: False) # Make the program utilize a faster async event loop which can improve performance # NOTE: It's recommended to enable this, but if something breaks, turn this off. uvloop: True # Set process to use a higher priority # For realtime process priority, run as administrator or sudo # Otherwise, the priority will be set to high realtime_process_priority: True # Options for model overrides and loading # Please read the comments to understand how arguments are handled between initial and API loads model: # Overrides the directory to look for models (default: models) # Windows users, DO NOT put this path in quotes! This directory will be invalid otherwise. model_dir: models # Sends dummy model names when the models endpoint is queried # Enable this if the program is looking for a specific OAI model #use_dummy_models: False # An initial model to load. Make sure the model is located in the model directory! # A model can be loaded later via the API. # REQUIRED: This must be filled out to load a model on startup! model_name: magnum-v2-123b_exl2_2.85bpw # The below parameters only apply for initial loads # All API based loads do NOT inherit these settings unless specified in use_as_default # Names of args to use as a default fallback for API load requests (default: []) # For example, if you always want cache_mode to be Q4 instead of on the inital model load, # Add "cache_mode" to this array # Ex. ["max_seq_len", "cache_mode"] #use_as_default: [] # The below parameters apply only if model_name is set # Max sequence length (default: Empty) # Fetched from the model's base sequence length in config.json by default max_seq_len: 32768 # Overrides base model context length (default: Empty) # WARNING: Don't set this unless you know what you're doing! # Again, do NOT use this for configuring context length, use max_seq_len above ^ # Only use this if the model's base sequence length in config.json is incorrect (ex. Mistral 7B) #override_base_seq_len: # Load model with tensor parallelism # If a GPU split isn't provided, the TP loader will fallback to autosplit # Enabling ignores the gpu_split_auto and autosplit_reserve values #tensor_parallel: True # Automatically allocate resources to GPUs (default: True) # NOTE: Not parsed for single GPU users gpu_split_auto: True # Reserve VRAM used for autosplit loading (default: 96 MB on GPU 0) # This is represented as an array of MB per GPU used autosplit_reserve: [0] # An integer array of GBs of vram to split between GPUs (default: []) # Used with tensor parallelism # NOTE: Not parsed for single GPU users #gpu_split: [20.6, 24] # Rope scale (default: 1.0) # Same thing as compress_pos_emb # Only use if your model was trained on long context with rope (check config.json) # Leave blank to pull the value from the model #rope_scale: 1.0 # Rope alpha (default: 1.0) # Same thing as alpha_value # Leave blank to automatically calculate alpha #rope_alpha: 1.0 # Enable different cache modes for VRAM savings (slight performance hit). # Possible values FP16, Q8, Q6, Q4. (default: FP16) cache_mode: Q4 # Size of the prompt cache to allocate (default: max_seq_len) # This must be a multiple of 256. A larger cache uses more VRAM, but allows for more prompts to be processed at once. # NOTE: Cache size should not be less than max_seq_len. # For CFG, set this to 2 * max_seq_len to make room for both positive and negative prompts. # cache_size: # Chunk size for prompt ingestion. A lower value reduces VRAM usage at the cost of ingestion speed (default: 2048) # NOTE: Effects vary depending on the model. An ideal value is between 512 and 4096 chunk_size: 1024 # Set the maximum amount of prompts to process at one time (default: None/Automatic) # This will be automatically calculated if left blank. # A max batch size of 1 processes prompts one at a time. # NOTE: Only available for Nvidia ampere (30 series) and above GPUs #max_batch_size: # Set the prompt template for this model. If empty, attempts to look for the model's chat template. (default: None) # If a model contains multiple templates in its tokenizer_config.json, set prompt_template to the name # of the template you want to use. # NOTE: Only works with chat completion message lists! #prompt_template: # Number of experts to use PER TOKEN. Fetched from the model's config.json if not specified (default: Empty) # WARNING: Don't set this unless you know what you're doing! # NOTE: For MoE models (ex. Mixtral) only! #num_experts_per_token: # Enables fasttensors to possibly increase model loading speeds (default: False) fasttensors: true # Options for draft models (speculative decoding). This will use more VRAM! #draft: # Overrides the directory to look for draft (default: models) #draft_model_dir: models # An initial draft model to load. Make sure this model is located in the model directory! # A draft model can be loaded later via the API. #draft_model_name: A model name # The below parameters only apply for initial loads # All API based loads do NOT inherit these settings unless specified in use_as_default # Rope scale for draft models (default: 1.0) # Same thing as compress_pos_emb # Only use if your draft model was trained on long context with rope (check config.json) #draft_rope_scale: 1.0 # Rope alpha for draft model (default: 1.0) # Same thing as alpha_value # Leave blank to automatically calculate alpha value #draft_rope_alpha: 1.0 # Enable different draft model cache modes for VRAM savings (slight performance hit). # Possible values FP16, Q8, Q6, Q4. (default: FP16) #draft_cache_mode: FP16 # Options for loras #lora: # Overrides the directory to look for loras (default: loras) #lora_dir: loras # List of loras to load and associated scaling factors (default: 1.0). Comment out unused entries or add more rows as needed. #loras: #- name: lora1 # scaling: 1.0 # Options for embedding models and loading. # NOTE: Embeddings requires the "extras" feature to be installed # Install it via "pip install .[extras]" embeddings: # Overrides directory to look for embedding models (default: models) embedding_model_dir: models # Device to load embedding models on (default: cpu) # Possible values: cpu, auto, cuda # NOTE: It's recommended to load embedding models on the CPU. # If you'd like to load on an AMD gpu, set this value to "cuda" as well. embeddings_device: cpu # The below parameters only apply for initial loads # All API based loads do NOT inherit these settings unless specified in use_as_default # An initial embedding model to load on the infinity backend (default: None) embedding_model_name: