sglang.0.4.8.post1/sglang/benchmark/reasoning_benchmark/eval_utils.py

207 lines
6.0 KiB
Python

# Adapted from https://github.com/deepseek-ai/DeepSeek-Math/blob/main/evaluation/eval/eval_utils.py
from math import isclose
import regex
from sympy import N, simplify
from sympy.parsing.latex import parse_latex
from sympy.parsing.sympy_parser import parse_expr
def parse_digits(num):
# format: 234.23 || 23%
num = regex.sub(",", "", str(num))
try:
return float(num)
except:
if num.endswith("%"):
num = num[:-1]
if num.endswith("\\"):
num = num[:-1]
try:
return float(num) / 100
except:
pass
return None
def is_digit(num):
# paired with parse_digits
return parse_digits(num) is not None
def symbolic_equal(a, b):
def _parse(s):
for f in [parse_latex, parse_expr]:
try:
return f(s)
except:
pass
return s
a = _parse(a)
b = _parse(b)
try:
if simplify(a - b) == 0:
return True
except:
pass
try:
if isclose(N(a), N(b), abs_tol=1e-3):
return True
except:
pass
return False
def math_equal(prediction, reference, include_percentage=True, is_close=True):
"""
Exact match of math if and only if:
1. numerical equal: both can convert to float and are equal
2. symbolic equal: both can convert to sympy expression and are equal
"""
if str(prediction) == str(reference):
return True
try: # 1. numerical equal
if is_digit(prediction) and is_digit(reference):
prediction = parse_digits(prediction)
reference = parse_digits(reference)
# number questions
if include_percentage:
gt_result = [reference / 100, reference, reference * 100]
else:
gt_result = [reference]
for item in gt_result:
try:
if is_close:
if isclose(item, prediction, abs_tol=1e-3):
return True
else:
if item == prediction:
return True
except Exception:
continue
return False
except:
pass
if not prediction and prediction not in [0, False]:
return False
# 2. symbolic equal
reference = str(reference).strip()
prediction = str(prediction).strip()
if (
regex.match(r"(\(|\[).+(\)|\])", prediction) is not None
and regex.match(r"(\(|\[).+(\)|\])", reference) is not None
):
pred_parts = prediction[1:-1].split(",")
ref_parts = reference[1:-1].split(",")
if len(pred_parts) == len(ref_parts):
if all(
[
math_equal(
pred_parts[i], ref_parts[i], include_percentage, is_close
)
for i in range(len(pred_parts))
]
):
return True
# Add back matrix comparison
if (
(
prediction.startswith("\\begin{pmatrix}")
or prediction.startswith("\\begin{bmatrix}")
)
and (
prediction.endswith("\\end{pmatrix}")
or prediction.endswith("\\end{bmatrix}")
)
and (
reference.startswith("\\begin{pmatrix}")
or reference.startswith("\\begin{bmatrix}")
)
and (
reference.endswith("\\end{pmatrix}") or reference.endswith("\\end{bmatrix}")
)
):
pred_lines = [
line.strip()
for line in prediction[
len("\\begin{pmatrix}") : -len("\\end{pmatrix}")
].split("\\\\")
if line.strip()
]
ref_lines = [
line.strip()
for line in reference[
len("\\begin{pmatrix}") : -len("\\end{pmatrix}")
].split("\\\\")
if line.strip()
]
matched = True
if len(pred_lines) == len(ref_lines):
for pred_line, ref_line in zip(pred_lines, ref_lines):
pred_parts = pred_line.split("&")
ref_parts = ref_line.split("&")
if len(pred_parts) == len(ref_parts):
if not all(
[
math_equal(
pred_parts[i],
ref_parts[i],
include_percentage,
is_close,
)
for i in range(len(pred_parts))
]
):
matched = False
break
else:
matched = False
if not matched:
break
else:
matched = False
if matched:
return True
# Add back equation comparison
if prediction.count("=") == 1 and reference.count("=") == 1:
pred = prediction.split("=")
pred = f"{pred[0].strip()} - ({pred[1].strip()})"
ref = reference.split("=")
ref = f"{ref[0].strip()} - ({ref[1].strip()})"
if symbolic_equal(pred, ref) or symbolic_equal(f"-({pred})", ref):
return True
elif (
prediction.count("=") == 1
and len(prediction.split("=")[0].strip()) <= 2
and "=" not in reference
):
if math_equal(
prediction.split("=")[1], reference, include_percentage, is_close
):
return True
elif (
reference.count("=") == 1
and len(reference.split("=")[0].strip()) <= 2
and "=" not in prediction
):
if math_equal(
prediction, reference.split("=")[1], include_percentage, is_close
):
return True
# symbolic equal with sympy
if symbolic_equal(prediction, reference):
return True
return False