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generate_for_flask.py
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generate_for_flask.py
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import json
import datasets
from fire import Fire
from functools import partial
from typing import List
from loguru import logger
from utils import (
generate_together,
generate_openai,
generate_with_references,
DEBUG,
)
def process_fn(
item,
model,
reference_models=[],
temperature=0.7,
max_tokens=2048,
rounds=1,
provider="together",
):
if provider == "together":
generate_fn = generate_together
elif provider == "openai":
generate_fn = generate_openai
else:
assert False
messages = [{"role": "user", "content": item["text"]}]
references = item.get("references", [])
if len(references) == 0 and len(reference_models) > 0:
prev_references = []
for i_round in range(rounds):
if DEBUG:
logger.info(
f"Round {i_round+1}/{rounds} to collecting reference responses."
)
references = []
for reference_model in reference_models:
reference = generate_with_references(
model=reference_model,
messages=messages,
references=prev_references,
temperature=temperature,
max_tokens=max_tokens,
generate_fn=generate_fn,
)
if reference is not None:
references.append(reference)
if i_round < rounds - 1:
prev_references = references
references = []
output = generate_with_references(
model=model,
messages=messages,
references=references,
generate_fn=generate_fn,
)
return {
"text": output,
}
def main(
model: str,
output_path: str,
reference_paths: str = None,
reference_models: str = None,
temperature: float = 0.7,
max_tokens: int = 2048,
rounds: int = 1,
num_proc: int = 16,
provider: str = "together",
):
if reference_paths is None:
reference_paths = []
else:
reference_paths = reference_paths.split(",")
if reference_models is None:
reference_models = []
else:
reference_models = reference_models.split(",")
eval_set = []
with open("FLASK/evaluation_set/flask_evaluation.jsonl") as f:
for line in f:
if line.strip() == "":
continue
item = json.loads(line)
eval_set.append({"question_id": item["idx"], "text": item["instruction"]})
eval_set = datasets.Dataset.from_list(eval_set)
if len(reference_paths):
logger.info(f"`reference_paths` provided: {reference_paths}")
references = []
for reference_path in reference_paths:
with open(reference_path) as f:
reference_responses = json.load(f)
logger.info(
f"Reading reference outputs: {reference_path} ({len(reference_responses)})"
)
for i_reference_response, reference_response in enumerate(
reference_responses
):
if len(references) <= i_reference_response:
references.append([reference_response["output"]])
else:
references[i_reference_response].append(
reference_response["output"]
)
eval_set = eval_set.add_column(f"references", references)
elif len(reference_models):
logger.info(
f"`reference_models` provided: {reference_models}. Will generate reference responses on-the-fly."
)
logger.info(f"Start.")
eval_set = eval_set.map(
partial(
process_fn,
model=model,
reference_models=reference_models,
temperature=temperature,
max_tokens=max_tokens,
rounds=rounds,
provider=provider,
),
batched=False,
num_proc=num_proc,
)
logger.info(f"Saving outputs to {output_path}.")
eval_set.to_json(output_path)
if __name__ == "__main__":
Fire(main)