--- title: Config options description: A complete list of all configuration options. --- ```yaml # This is the huggingface model that contains *.pt, *.safetensors, or *.bin files # This can also be a relative path to a model on disk base_model: ./llama-7b-hf # You can specify an ignore pattern if the model repo contains more than 1 model type (*.pt, etc) base_model_ignore_patterns: # If the base_model repo on hf hub doesn't include configuration .json files, # You can set that here, or leave this empty to default to base_model base_model_config: ./llama-7b-hf # You can specify to choose a specific model revision from huggingface hub revision_of_model: # Optional tokenizer configuration path in case you want to use a different tokenizer # than the one defined in the base model tokenizer_config: # If you want to specify the type of model to load, AutoModelForCausalLM is a good choice too model_type: AutoModelForCausalLM # Corresponding tokenizer for the model AutoTokenizer is a good choice tokenizer_type: AutoTokenizer # Trust remote code for untrusted source trust_remote_code: # use_fast option for tokenizer loading from_pretrained, default to True tokenizer_use_fast: # Whether to use the legacy tokenizer setting, defaults to True tokenizer_legacy: # Resize the model embeddings when new tokens are added to multiples of 32 # This is reported to improve training speed on some models resize_token_embeddings_to_32x: # (Internal use only) # Used to identify which the model is based on is_falcon_derived_model: is_llama_derived_model: is_qwen_derived_model: # Please note that if you set this to true, `padding_side` will be set to "left" by default is_mistral_derived_model: # optional overrides to the base model configuration overrides_of_model_config: # RoPE Scaling https://github.com/huggingface/transformers/pull/24653 rope_scaling: type: # linear | dynamic factor: # float # optional overrides to the bnb 4bit quantization configuration # https://huggingface.co/docs/transformers/main/main_classes/quantization#transformers.BitsAndBytesConfig bnb_config_kwargs: # These are default values llm_int8_has_fp16_weight: false bnb_4bit_quant_type: nf4 bnb_4bit_use_double_quant: true # Whether you are training a 4-bit GPTQ quantized model gptq: true # This will attempt to quantize the model down to 8 bits and use adam 8 bit optimizer load_in_8bit: true # Use bitsandbytes 4 bit load_in_4bit: # Use CUDA bf16 bf16: true # bool or 'full' for `bf16_full_eval`. require >=ampere # Use CUDA fp16 fp16: true # Use CUDA tf32 tf32: true # require >=ampere # No AMP (automatic mixed precision) bfloat16: true # require >=ampere float16: true # Limit the memory for all available GPUs to this amount (if an integer, expressed in gigabytes); default: unset gpu_memory_limit: 20GiB # Do the LoRA/PEFT loading on CPU -- this is required if the base model is so large it takes up most or all of the available GPU VRAM, e.g. during a model and LoRA merge lora_on_cpu: true # A list of one or more datasets to finetune the model with datasets: # HuggingFace dataset repo | s3://,gs:// path | "json" for local dataset, make sure to fill data_files - path: vicgalle/alpaca-gpt4 # The type of prompt to use for training. [alpaca, sharegpt, gpteacher, oasst, reflection] type: alpaca # format | format: (chat/instruct) | .load_ ds_type: # Optional[str] (json|arrow|parquet|text|csv) defines the datatype when path is a file data_files: # Optional[str] path to source data files shards: # Optional[int] number of shards to split data into name: # Optional[str] name of dataset configuration to load train_on_split: train # Optional[str] name of dataset split to load from # Optional[str] fastchat conversation type, only used with type: sharegpt conversation: # Options (see Conversation 'name'): https://github.com/lm-sys/FastChat/blob/main/fastchat/conversation.py field_human: # Optional[str]. Human key to use for conversation. field_model: # Optional[str]. Assistant key to use for conversation. # Add additional keys from your dataset as input or output roles roles: input: # Optional[List[str]]. These will be masked based on train_on_input output: # Optional[List[str]]. # Custom user instruction prompt - path: repo type: # The below are defaults. only set what's needed if you use a different column name. system_prompt: "" system_format: "{system}" field_system: system field_instruction: instruction field_input: input field_output: output # Customizable to be single line or multi-line # Use {instruction}/{input} as key to be replaced # 'format' can include {input} format: |- User: {instruction} {input} Assistant: # 'no_input_format' cannot include {input} no_input_format: "{instruction} " # For `completion` datsets only, uses the provided field instead of `text` column field: # If false, the datasets will not be shuffled and will keep their original order in `datasets`. # The same applies to the `test_datasets` option and the `pretraining_dataset` option. Default is true. shuffle_merged_datasets: true # A list of one or more datasets to eval the model with. # You can use either test_datasets, or val_set_size, but not both. test_datasets: - path: /workspace/data/eval.jsonl ds_type: json # You need to specify a split. For "json" datasets the default split is called "train". split: train type: completion data_files: - /workspace/data/eval.jsonl # use RL training: 'dpo', 'ipo', 'kto_pair' rl: # Saves the desired chat template to the tokenizer_config.json for easier inferencing # Currently supports chatml and inst (mistral/mixtral) chat_template: chatml # Changes the default system message default_system_message: You are a helpful assistant. Please give a long and detailed answer. # Currently only supports chatml. # Axolotl attempts to save the dataset as an arrow after packing the data together so # subsequent training attempts load faster, relative path dataset_prepared_path: data/last_run_prepared # Push prepared dataset to hub push_dataset_to_hub: # repo path # The maximum number of processes to use while preprocessing your input dataset. This defaults to `os.cpu_count()` # if not set. dataset_processes: # defaults to os.cpu_count() if not set # Keep dataset in memory while preprocessing # Only needed if cached dataset is taking too much storage dataset_keep_in_memory: # push checkpoints to hub hub_model_id: # private repo path to push finetuned model # how to push checkpoints to hub # https://huggingface.co/docs/transformers/v4.31.0/en/main_classes/trainer#transformers.TrainingArguments.hub_strategy hub_strategy: # Whether to use hf `use_auth_token` for loading datasets. Useful for fetching private datasets # Required to be true when used in combination with `push_dataset_to_hub` hf_use_auth_token: # boolean # How much of the dataset to set aside as evaluation. 1 = 100%, 0.50 = 50%, etc. 0 for no eval. val_set_size: 0.04 # Num shards for whole dataset dataset_shard_num: # Index of shard to use for whole dataset dataset_shard_idx: # The maximum length of an input to train with, this should typically be less than 2048 # as most models have a token/context limit of 2048 sequence_len: 2048 # Pad inputs so each step uses constant sized buffers # This will reduce memory fragmentation and may prevent OOMs, by re-using memory more efficiently pad_to_sequence_len: # Use efficient multi-packing with block diagonal attention and per sequence position_ids. Recommend set to 'true' sample_packing: # Set to 'false' if getting errors during eval with sample_packing on. eval_sample_packing: # You can set these packing optimizations AFTER starting a training at least once. # The trainer will provide recommended values for these values. sample_packing_eff_est: total_num_tokens: # Passed through to transformers when loading the model when launched without accelerate # Use `sequential` when training w/ model parallelism to limit memory device_map: # Defines the max memory usage per gpu on the system. Passed through to transformers when loading the model. max_memory: # If you want to use 'lora' or 'qlora' or leave blank to train all parameters in original model adapter: lora # If you already have a lora model trained that you want to load, put that here. # This means after training, if you want to test the model, you should set this to the value of `output_dir`. # Note that if you merge an adapter to the base model, a new subdirectory `merged` will be created under the `output_dir`. lora_model_dir: # LoRA hyperparameters # For more details about the following options, see: # https://www.anyscale.com/blog/fine-tuning-llms-lora-or-full-parameter-an-in-depth-analysis-with-llama-2 lora_r: 8 lora_alpha: 16 lora_dropout: 0.05 lora_target_modules: - q_proj - v_proj # - k_proj # - o_proj # - gate_proj # - down_proj # - up_proj lora_target_linear: # If true, will target all linear modules peft_layers_to_transform: # The layer indices to transform, otherwise, apply to all layers # If you added new tokens to the tokenizer, you may need to save some LoRA modules because they need to know the new tokens. # For LLaMA and Mistral, you need to save `embed_tokens` and `lm_head`. It may vary for other models. # `embed_tokens` converts tokens to embeddings, and `lm_head` converts embeddings to token probabilities. # https://github.com/huggingface/peft/issues/334#issuecomment-1561727994 lora_modules_to_save: # - embed_tokens # - lm_head lora_fan_in_fan_out: false peft: # Configuration options for loftq initialization for LoRA # https://huggingface.co/docs/peft/developer_guides/quantization#loftq-initialization loftq_config: loftq_bits: # typically 4 bits # ReLoRA configuration # Must use either 'lora' or 'qlora' adapter, and does not support fsdp or deepspeed relora_steps: # Number of steps per ReLoRA restart relora_warmup_steps: # Number of per-restart warmup steps relora_anneal_steps: # Number of anneal steps for each relora cycle relora_prune_ratio: # threshold for optimizer magnitude when pruning relora_cpu_offload: # True to perform lora weight merges on cpu during restarts, for modest gpu memory savings # wandb configuration if you're using it # Make sure your `WANDB_API_KEY` environment variable is set (recommended) or you login to wandb with `wandb login`. wandb_mode: # "offline" to save run metadata locally and not sync to the server, "disabled" to turn off wandb wandb_project: # Your wandb project name wandb_entity: # A wandb Team name if using a Team wandb_watch: wandb_name: # Set the name of your wandb run wandb_run_id: # Set the ID of your wandb run wandb_log_model: # "checkpoint" to log model to wandb Artifacts every `save_steps` or "end" to log only at the end of training # mlflow configuration if you're using it mlflow_tracking_uri: # URI to mlflow mlflow_experiment_name: # Your experiment name hf_mlflow_log_artifacts: # set to true to copy each saved checkpoint on each save to mlflow artifact registry # Where to save the full-finetuned model to output_dir: ./completed-model # Whether to use torch.compile and which backend to use torch_compile: # bool torch_compile_backend: # Optional[str] # Training hyperparameters # If greater than 1, backpropagation will be skipped and the gradients will be accumulated for the given number of steps. gradient_accumulation_steps: 1 # The number of samples to include in each batch. This is the number of samples sent to each GPU. micro_batch_size: 2 eval_batch_size: num_epochs: 4 warmup_steps: 100 # cannot use with warmup_ratio warmup_ratio: 0.05 # cannot use with warmup_steps learning_rate: 0.00003 lr_quadratic_warmup: logging_steps: eval_steps: # Leave empty to eval at each epoch, integers for every N steps. decimal for fraction of total steps evals_per_epoch: # number of times per epoch to run evals, mutually exclusive with eval_steps save_strategy: # Set to `no` to skip checkpoint saves save_steps: # Leave empty to save at each epoch saves_per_epoch: # number of times per epoch to save a checkpoint, mutually exclusive with save_steps save_total_limit: # Checkpoints saved at a time # Maximum number of iterations to train for. It precedes num_epochs which means that # if both are set, num_epochs will not be guaranteed. # e.g., when 1 epoch is 1000 steps => `num_epochs: 2` and `max_steps: 100` will train for 100 steps max_steps: eval_table_size: # Approximate number of predictions sent to wandb depending on batch size. Enabled above 0. Default is 0 eval_max_new_tokens: # Total number of tokens generated for predictions sent to wandb. Default is 128 eval_causal_lm_metrics: # HF evaluate metrics used during evaluation. Default is ["sacrebleu", "comet", "ter", chrf] loss_watchdog_threshold: # High loss value, indicating the learning has broken down (a good estimate is ~2 times the loss at the start of training) loss_watchdog_patience: # Number of high-loss steps in a row before the trainer aborts (default: 3) # Save model as safetensors (require safetensors package) save_safetensors: # Whether to mask out or include the human's prompt from the training labels train_on_inputs: false # Group similarly sized data to minimize padding. # May be slower to start, as it must download and sort the entire dataset. # Note that training loss may have an oscillating pattern with this enabled. group_by_length: false # Whether to use gradient checkpointing https://huggingface.co/docs/transformers/v4.18.0/en/performance#gradient-checkpointing gradient_checkpointing: false # additional kwargs to pass to the trainer for gradient checkpointing # gradient_checkpointing_kwargs: # use_reentrant: true # Stop training after this many evaluation losses have increased in a row # https://huggingface.co/transformers/v4.2.2/_modules/transformers/trainer_callback.html#EarlyStoppingCallback early_stopping_patience: 3 # Specify a scheduler and kwargs to use with the optimizer lr_scheduler: # 'one_cycle' | 'log_sweep' | empty for cosine lr_scheduler_kwargs: cosine_min_lr_ratio: # decay lr to some percentage of the peak lr, e.g. cosine_min_lr_ratio=0.1 for 10% of peak lr cosine_constant_lr_ratio: # freeze lr at some percentage of the step, e.g. cosine_constant_lr_ratio=0.8 means start cosine_min_lr at 80% of training step (https://arxiv.org/pdf/2308.04014.pdf) # For one_cycle optim lr_div_factor: # Learning rate div factor # Specify optimizer # Valid values are driven by the Transformers OptimizerNames class, see: # https://github.com/huggingface/transformers/blob/95b374952dc27d8511541d6f5a4e22c9ec11fb24/src/transformers/training_args.py#L134 # # Note that not all optimizers may be available in your environment, ex: 'adamw_anyprecision' is part of # torchdistx, 'adamw_bnb_8bit' is part of bnb.optim.Adam8bit, etc. When in doubt, it is recommended to start with the optimizer used # in the examples/ for your model and fine-tuning use case. # # Valid values for 'optimizer' include: # - adamw_hf # - adamw_torch # - adamw_torch_fused # - adamw_torch_xla # - adamw_apex_fused # - adafactor # - adamw_anyprecision # - sgd # - adagrad # - adamw_bnb_8bit # - lion_8bit # - lion_32bit # - paged_adamw_32bit # - paged_adamw_8bit # - paged_lion_32bit # - paged_lion_8bit # - galore_adamw # - galore_adamw_8bit # - galore_adafactor # - galore_adamw_layerwise # - galore_adamw_8bit_layerwise # - galore_adafactor_layerwise optimizer: # Dictionary of arguments to pass to the optimizer optim_args: # For Galore Optimizers the following optim_args are available # rank: # type: int # update_proj_gap # type: int # scale # type: float # proj_type: # type: str, default = std # The target modules to optimize, i.e. the module names that you would like to train, right now this is used only for GaLore algorithm optim_target_modules: # - self_attn # for llama # - mlp # Specify weight decay weight_decay: # adamw hyperparams adam_beta1: adam_beta2: adam_epsilon: # Gradient clipping max norm max_grad_norm: # Augmentation techniques # NEFT https://arxiv.org/abs/2310.05914, set this to a number (paper default is 5) to add noise to embeddings # currently only supported on Llama and Mistral neftune_noise_alpha: # Whether to bettertransformers flash_optimum: # Whether to use xformers attention patch https://github.com/facebookresearch/xformers: xformers_attention: # Whether to use flash attention patch https://github.com/Dao-AILab/flash-attention: flash_attention: flash_attn_cross_entropy: # Whether to use flash-attention cross entropy implementation - advanced use only flash_attn_rms_norm: # Whether to use flash-attention rms norm implementation - advanced use only flash_attn_fuse_qkv: # Whether to fuse QKV into a single operation flash_attn_fuse_mlp: # Whether to fuse part of the MLP into a single operation # Whether to use scaled-dot-product attention # https://pytorch.org/docs/stable/generated/torch.nn.functional.scaled_dot_product_attention.html sdp_attention: # Shifted-sparse attention (only llama) - https://arxiv.org/pdf/2309.12307.pdf s2_attention: # Resume from a specific checkpoint dir resume_from_checkpoint: # If resume_from_checkpoint isn't set and you simply want it to start where it left off. # Be careful with this being turned on between different models. auto_resume_from_checkpoints: false # Don't mess with this, it's here for accelerate and torchrun local_rank: # Add or change special tokens. # If you add tokens here, you don't need to add them to the `tokens` list. special_tokens: # bos_token: "" # eos_token: "" # unk_token: "" # Add extra tokens. tokens: # FSDP fsdp: fsdp_config: # Deepspeed config path. e.g., deepspeed_configs/zero3.json deepspeed: # Advanced DDP Arguments ddp_timeout: ddp_bucket_cap_mb: ddp_broadcast_buffers: # Path to torch distx for optim 'adamw_anyprecision' torchdistx_path: # Set to HF dataset for type: 'completion' for streaming instead of pre-tokenize pretraining_dataset: # Debug mode debug: # Seed seed: # Allow overwrite yml config using from cli strict: ```