atropos/environments/eval_environments/vision_evals/mmbench_environment.py
2026-01-23 00:49:51 +00:00

160 lines
5.6 KiB
Python

"""MMBench evaluation environment."""
import asyncio
import base64
import io
from string import ascii_uppercase
from typing import List, Optional, Tuple
from datasets import load_dataset
from environments.eval_environments.eval import EvalBase, eval_runner
from PIL import Image
from atroposlib.envs.server_handling.server_manager import ServerManager
from environments.eval_environments.eval_helpers import (
extract_letter_from_answer_tag,
extract_mcqa_answer_with_fallback,
)
class MMBench(EvalBase):
"""MMBench evaluation - comprehensive multimodal benchmark."""
def setup_data(self) -> list:
split = getattr(self, "split", "dev")
lang = getattr(self, "lang", "en") # en, cn, cc
version = getattr(self, "version", "v1.1") # v1.0 or v1.1
try:
dataset = load_dataset("lmms-lab/MMBench", lang, split=split)
print(f"Loaded {len(dataset)} examples from MMBench ({split}, {lang})")
return list(dataset)
except Exception as e:
print(f"Warning: Could not load from lmms-lab: {e}")
try:
dataset = load_dataset("lmms-lab/MMBench_EN", split=split)
print(f"Loaded {len(dataset)} examples from MMBench ({split})")
return list(dataset)
except Exception:
raise ValueError(f"Could not load MMBench dataset: {e}")
def encode_image(self, pil_image: Image.Image) -> str:
buffer = io.BytesIO()
pil_image.save(buffer, format="PNG")
return base64.b64encode(buffer.getvalue()).decode("utf-8")
def get_image_base64(self, item: dict) -> Optional[str]:
for key in ["image", "decoded_image"]:
if key in item and item[key] is not None:
if isinstance(item[key], Image.Image):
return self.encode_image(item[key])
return None
def build_messages(self, item: dict) -> List[dict]:
image_base64 = self.get_image_base64(item)
question = item.get("question", "")
hint = item.get("hint", "")
options = {}
for letter in ascii_uppercase:
if letter in item and item[letter] is not None:
val = item[letter]
if isinstance(val, str) and val.strip():
options[letter] = val
elif not isinstance(val, float):
options[letter] = str(val)
prompt = ""
if hint and str(hint).strip() and str(hint).lower() != "nan":
prompt += f"Hint: {hint}\n"
prompt += f"Question: {question}\n"
if options:
prompt += "Options:\n"
for letter in sorted(options.keys()):
prompt += f"{letter}. {options[letter]}\n"
prompt += "\nPlease select the correct answer from the options above."
content = []
if image_base64:
content.append(
{
"type": "image_url",
"image_url": {"url": f"data:image/png;base64,{image_base64}"},
}
)
content.append({"type": "text", "text": prompt})
return [{"role": "user", "content": content}]
def extract_answer(
self, response: str, num_choices: int
) -> Tuple[Optional[str], str]:
valid_letters = set(ascii_uppercase[:num_choices])
letter, method = extract_letter_from_answer_tag(response, valid_letters)
if letter:
return letter, method
letter, method = extract_mcqa_answer_with_fallback(response, num_choices)
return letter, method
async def run_item(
self, server: ServerManager, data_item: dict
) -> Tuple[dict, dict]:
try:
messages = self.build_messages(data_item)
completion = await self.chat_completion(server, messages)
if not completion.choices:
return {"accuracy": 0.0}, {"error": "Empty response"}
message = completion.choices[0].message
response = message.content or ""
if not response:
return {"accuracy": 0.0}, {"error": "Empty response"}
answer = data_item.get("answer", "")
num_choices = 0
for letter in ascii_uppercase:
if letter in data_item and data_item[letter] is not None:
val = data_item[letter]
if isinstance(val, str) and val.strip():
num_choices += 1
elif not isinstance(val, float):
num_choices += 1
num_choices = max(num_choices, 4)
extracted, method = self.extract_answer(response, num_choices)
correct = False
if extracted and answer:
correct = extracted.upper() == str(answer).upper()
sample = {
"id": data_item.get("index", data_item.get("id", "")),
"question": data_item.get("question", "")[:200],
"category": data_item.get("category", data_item.get("l2-category", "")),
"answer": answer,
"prediction": extracted,
"raw_response": response[:500],
"correct": correct,
"extraction_method": method,
}
return {"accuracy": 1.0 if correct else 0.0}, sample
except Exception as e:
return {"accuracy": 0.0}, {"error": str(e)}
if __name__ == "__main__":
asyncio.run(
eval_runner(
MMBench(
split="dev", lang="en", version="v1.1", temperature=0.0, max_tokens=256
)
)
)