Extras: Alternative ways to get better model output without RL based fine-tuning
Within the extras module is the best-of-n
sampler class that serves as an alternative method of generating better model output.
As to how it fares against the RL based fine-tuning, please look in the examples
directory for a comparison example
Usage
To get started quickly, instantiate an instance of the class with a model, a length sampler, a tokenizer and a callable that serves as a proxy reward pipeline that outputs reward scores for input queries
from transformers import pipeline, AutoTokenizer
from trl import AutoModelForCausalLMWithValueHead
from trl.core import LengthSampler
from trl.extras import BestOfNSampler
ref_model = AutoModelForCausalLMWithValueHead.from_pretrained(ref_model_name)
reward_pipe = pipeline("sentiment-analysis", model=reward_model, device=device)
tokenizer = AutoTokenizer.from_pretrained(ref_model_name)
tokenizer.pad_token = tokenizer.eos_token
# callable that takes a list of raw text and returns a list of corresponding reward scores
def queries_to_scores(list_of_strings):
return [output["score"] for output in reward_pipe(list_of_strings)]
best_of_n = BestOfNSampler(model, tokenizer, queries_to_scores, length_sampler=output_length_sampler)
And assuming you have a list/tensor of tokenized queries, you can generate better output by calling the generate
method
best_of_n.generate(query_tensors, device=device, **gen_kwargs)
The default sample size is 4, but you can change it at the time of instance initialization like so
best_of_n = BestOfNSampler(model, tokenizer, queries_to_scores, length_sampler=output_length_sampler, sample_size=8)
The default output is the result of taking the top scored output for each query, but you can change it to top 2 and so on by passing the n_candidates
argument at the time of instance initialization
best_of_n = BestOfNSampler(model, tokenizer, queries_to_scores, length_sampler=output_length_sampler, n_candidates=2)
There is the option of setting the generation settings (like temperature
, pad_token_id
) at the time of instance creation as opposed to when calling the generate
method.
This is done by passing a GenerationConfig
from the transformers
library at the time of initialization
from transformers import GenerationConfig
generation_config = GenerationConfig(min_length= -1, top_k=0.0, top_p= 1.0, do_sample= True, pad_token_id=tokenizer.eos_token_id)
best_of_n = BestOfNSampler(model, tokenizer, queries_to_scores, length_sampler=output_length_sampler, generation_config=generation_config)
best_of_n.generate(query_tensors, device=device)
Furthermore, at the time of initialization you can set the seed to control repeatability of the generation process and the number of samples to generate for each query