RLHF (Beta)
Overview
Reinforcement Learning from Human Feedback is a method whereby a language model is optimized from data using human feedback. Various methods include, but not limited to:
- Proximal Policy Optimization (PPO) (not yet supported in axolotl)
- Direct Preference Optimization (DPO)
- Identity Preference Optimization (IPO)
RLHF using Axolotl
This is a BETA feature and many features are not fully implemented. You are encouraged to open new PRs to improve the integration and functionality.
The various RL training methods are implemented in trl and wrapped via axolotl. Below are various examples with how you can use various preference datasets to train models that use ChatML
DPO
rl: dpo
datasets:
- path: Intel/orca_dpo_pairs
split: train
type: chatml.intel
- path: argilla/ultrafeedback-binarized-preferences
split: train
type: chatml.argilla
IPO
rl: ipo
Using local dataset files
datasets:
- ds_type: json
data_files:
- orca_rlhf.jsonl
split: train
type: chatml.intel
Trl autounwrap for peft
Trl supports autounwrapping peft models, so that a ref model does not need to be additionally loaded, leading to less VRAM needed. This is on by default. To turn it off, pass the following config.
# load ref model when adapter training.
rl_adapter_ref_model: true