Unify API sampler params into a superclass which should make them easier to manage and inherit generic functions from. Not all frontends expose all sampling parameters due to connections with OAI (that handles sampling themselves with the exception of a few sliders). Add the ability for the user to customize fallback parameters from server-side. In addition, parameters can be forced to a certain value server-side in case the repo automatically sets other sampler values in the background that the user doesn't want. Signed-off-by: kingbri <bdashore3@proton.me>
127 lines
4.6 KiB
YAML
127 lines
4.6 KiB
YAML
# Sample YAML file for configuration.
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# Comment and uncomment values as needed. Every value has a default within the application.
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# This file serves to be a drop in for config.yml
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# Unless specified in the comments, DO NOT put these options in quotes!
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# You can use https://www.yamllint.com/ if you want to check your YAML formatting.
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# Options for networking
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network:
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# The IP to host on (default: 127.0.0.1).
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# Use 0.0.0.0 to expose on all network adapters
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host: 127.0.0.1
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# The port to host on (default: 5000)
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port: 5000
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# Disable HTTP token authenticaion with requests
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# WARNING: This will make your instance vulnerable!
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# Turn on this option if you are ONLY connecting from localhost
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disable_auth: False
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# Options for logging
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logging:
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# Enable prompt logging (default: False)
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prompt: False
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# Enable generation parameter logging (default: False)
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generation_params: False
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# Options for sampling
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sampling:
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# Override preset name. Find this in the sampler-overrides folder (default: None)
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# This overrides default fallbacks for sampler values that are passed to the API
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# Server-side overrides are NOT needed by default
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# WARNING: Using this can result in a generation speed penalty
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#override_preset:
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# Options for model overrides and loading
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model:
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# Overrides the directory to look for models (default: models)
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# Windows users, DO NOT put this path in quotes! This directory will be invalid otherwise.
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model_dir: models
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# An initial model to load. Make sure the model is located in the model directory!
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# A model can be loaded later via the API.
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# REQUIRED: This must be filled out to load a model on startup!
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model_name:
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# Sends dummy model names when the models endpoint is queried
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# Enable this if the program is looking for a specific OAI model
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#use_dummy_models: False
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# The below parameters apply only if model_name is set
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# Max sequence length (default: Empty)
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# Fetched from the model's base sequence length in config.json by default
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#max_seq_len:
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# Overrides base model context length (default: Empty)
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# WARNING: Don't set this unless you know what you're doing!
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# Only use this if the model's base sequence length in config.json is incorrect (ex. Mistral/Mixtral models)
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#override_base_seq_len:
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# Automatically allocate resources to GPUs (default: True)
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#gpu_split_auto: True
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# An integer array of GBs of vram to split between GPUs (default: [])
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#gpu_split: [20.6, 24]
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# Rope scale (default: 1.0)
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# Same thing as compress_pos_emb
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# Only use if your model was trained on long context with rope (check config.json)
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# Leave blank to pull the value from the model
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#rope_scale: 1.0
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# Rope alpha (default: 1.0)
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# Same thing as alpha_value
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# Leave blank to automatically calculate alpha
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#rope_alpha: 1.0
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# Disable Flash-attention 2. Set to True for GPUs lower than Nvidia's 3000 series. (default: False)
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#no_flash_attention: False
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# Enable 8 bit cache mode for VRAM savings (slight performance hit). Possible values FP16, FP8. (default: FP16)
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#cache_mode: FP16
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# Set the prompt template for this model. If empty, chat completions will be disabled. (default: Empty)
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# NOTE: Only works with chat completion message lists!
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#prompt_template:
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# Number of experts to use PER TOKEN. Fetched from the model's config.json if not specified (default: Empty)
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# WARNING: Don't set this unless you know what you're doing!
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# NOTE: For MoE models (ex. Mixtral) only!
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#num_experts_per_token:
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# Enables CFG support (default: False)
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# WARNING: This flag disables Flash Attention! (a stopgap fix until it's fixed in upstream)
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#use_cfg: False
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# Options for draft models (speculative decoding). This will use more VRAM!
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#draft:
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# Overrides the directory to look for draft (default: models)
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#draft_model_dir: models
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# An initial draft model to load. Make sure this model is located in the model directory!
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# A draft model can be loaded later via the API.
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#draft_model_name: A model name
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# Rope scale for draft models (default: 1.0)
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# Same thing as compress_pos_emb
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# Only use if your draft model was trained on long context with rope (check config.json)
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#draft_rope_scale: 1.0
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# Rope alpha for draft model (default: 1.0)
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# Same thing as alpha_value
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# Leave blank to automatically calculate alpha value
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#draft_rope_alpha: 1.0
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# Options for loras
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#lora:
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# Overrides the directory to look for loras (default: loras)
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#lora_dir: loras
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# List of loras to load and associated scaling factors (default: 1.0). Comment out unused entries or add more rows as needed.
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#loras:
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#- name: lora1
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# scaling: 1.0
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