# 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 authentication 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 (default: False). | |
# NOTE: Only enable this for debug purposes. | |
send_tracebacks: false | |
# Select API servers to enable (default: ["OAI"]). | |
# Possible values: OAI, Kobold. | |
api_servers: ["oai"] | |
# Options for logging | |
logging: | |
# Enable prompt logging (default: False). | |
log_prompt: false | |
# Enable generation parameter logging (default: False). | |
log_generation_params: false | |
# Enable request logging (default: False). | |
# NOTE: Only use this for debugging! | |
log_requests: false | |
# Options for model overrides and loading | |
# Please read the comments to understand how arguments are handled | |
# between initial and API loads | |
model: | |
# Directory to look for models (default: models). | |
# Windows users, do NOT put this path in quotes! | |
model_dir: models | |
# Allow direct loading of models from a completion or chat completion request (default: False). | |
inline_model_loading: false | |
# Sends dummy model names when the models endpoint is queried. | |
# Enable this if the client is looking for specific OAI models. | |
use_dummy_models: false | |
# An initial model to load. | |
# Make sure the model is located in the model directory! | |
# REQUIRED: This must be filled out to load a model on startup. | |
model_name: magnum-v4-123b_exl2_2.85bpw | |
# Names of args to use as a 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. | |
# Example: ['max_seq_len', 'cache_mode']. | |
use_as_default: [] | |
# 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 ^ | |
override_base_seq_len: | |
# Load model with tensor parallelism. | |
# Falls back to autosplit if GPU split isn't provided. | |
# This ignores the gpu_split_auto value. | |
tensor_parallel: false | |
# Automatically allocate resources to GPUs (default: True). | |
# Not parsed for single GPU users. | |
gpu_split_auto: true | |
# Reserve VRAM used for autosplit loading (default: 96 MB on GPU 0). | |
# Represented as an array of MB per GPU. | |
autosplit_reserve: [0] | |
# An integer array of GBs of VRAM to split between GPUs (default: []). | |
# Used with tensor parallelism. | |
gpu_split: [] | |
# Rope scale (default: 1.0). | |
# Same as compress_pos_emb. | |
# Use if the model was trained on long context with rope. | |
# Leave blank to pull the value from the model. | |
rope_scale: 1.0 | |
# Rope alpha (default: None). | |
# Same as alpha_value. Set to "auto" to auto-calculate. | |
# Leaving this value blank will either pull from the model or auto-calculate. | |
rope_alpha: | |
# Enable different cache modes for VRAM savings (default: FP16). | |
# Possible values: 'FP16', 'Q8', 'Q6', 'Q4'. | |
cache_mode: Q4 | |
# Size of the prompt cache to allocate (default: max_seq_len). | |
# Must be a multiple of 256 and can't be less than max_seq_len. | |
# For CFG, set this to 2 * max_seq_len. | |
cache_size: | |
# Chunk size for prompt ingestion (default: 2048). | |
# A lower value reduces VRAM usage but decreases ingestion speed. | |
# NOTE: Effects vary depending on the model. | |
# An ideal value is between 512 and 4096. | |
chunk_size: 1024 | |
# Set the maximum number of prompts to process at one time (default: None/Automatic). | |
# Automatically calculated if left blank. | |
# NOTE: Only available for Nvidia ampere (30 series) and above GPUs. | |
max_batch_size: | |
# Set the prompt template for this model. (default: None) | |
# If empty, attempts to look for the model's chat template. | |
# 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 empty. | |
# NOTE: For MoE models only. | |
# WARNING: Don't set this unless you know what you're doing! | |
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_model: | |
# Directory to look for draft models (default: models) | |
draft_model_dir: models | |
# An initial draft model to load. | |
# Ensure the model is in the model directory. | |
draft_model_name: | |
# Rope scale for draft models (default: 1.0). | |
# Same as compress_pos_emb. | |
# Use if the draft model was trained on long context with rope. | |
draft_rope_scale: 1.0 | |
# Rope alpha for draft models (default: None). | |
# Same as alpha_value. Set to "auto" to auto-calculate. | |
# Leaving this value blank will either pull from the model or auto-calculate. | |
draft_rope_alpha: | |
# Cache mode for draft models to save VRAM (default: FP16). | |
# Possible values: 'FP16', 'Q8', 'Q6', 'Q4'. | |
draft_cache_mode: FP16 | |
# Options for Loras | |
lora: | |
# Directory to look for LoRAs (default: loras). | |
lora_dir: loras | |
# List of LoRAs to load and associated scaling factors (default scale: 1.0). | |
# For the YAML file, add each entry as a YAML list: | |
# - name: lora1 | |
# scaling: 1.0 | |
loras: | |
# Options for embedding models and loading. | |
# NOTE: Embeddings requires the "extras" feature to be installed | |
# Install it via "pip install .[extras]" | |
embeddings: | |
# 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 using an AMD GPU, set this value to 'cuda'. | |
embeddings_device: cpu | |
# An initial embedding model to load on the infinity backend. | |
embedding_model_name: | |
sampling: | |
# Options for development and experimentation | |
developer: | |
# Skip Exllamav2 version check (default: False). | |
# WARNING: It's highly recommended to update your dependencies rather than enabling this flag. | |
unsafe_launch: false | |
# Disable API request streaming (default: False). | |
disable_request_streaming: false | |
# Enable the torch CUDA malloc backend (default: False). | |
cuda_malloc_backend: true | |
# Run asyncio using Uvloop or Winloop 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 | |