calib·HumanEval/29
This is one (task, candidate response) pair flowing through the full PANOPTES pipeline. Each section below is a stage of the analysis: the task itself, the candidate solution being evaluated, every judge's score + rationale, the sampling-pass dispersion that captures within-judge noise, and the uncertainty-quantification metrics computed on top.
The function signature + docstring presented to both the model under test and to every judge. The entry-point name was obfuscated from filter_by_prefix to fn_b477117fee so the judges can't pattern-match a memorized HumanEval solution.
from typing import List
def fn_b477117fee(strings: List[str], prefix: str) -> List[str]:
""" Filter an input list of strings only for ones that start with a given prefix.
>>> fn_b477117fee([], 'a')
[]
>>> fn_b477117fee(['abc', 'bcd', 'cde', 'array'], 'a')
['abc', 'array']
"""
The full solution every judge is grading. For these runs the candidate is the reference solution prepended with the task signature so it parses as a complete program.
from typing import List
def fn_b477117fee(strings: List[str], prefix: str) -> List[str]:
""" Filter an input list of strings only for ones that start with a given prefix.
>>> fn_b477117fee([], 'a')
[]
>>> fn_b477117fee(['abc', 'bcd', 'cde', 'array'], 'a')
['abc', 'array']
"""
return [x for x in strings if x.startswith(prefix)]
One call per judge at temperature=0. This is the "best single guess" each judge has. Disagreement here is structural. The judges literally see this candidate differently.
n draws per judge at temperature=1. Dots are individual draws; vertical bar is the mean; shaded band is ±1σ. Wide band = the judge is uncertain even with itself; narrow band = it's consistent.
Three statistical methods computed on top of the raw scores above. Each one tells you something different about how much to trust the headline number.
How to read these: self-consistency = does the judge agree with itself when resampled? Narrower CI means more consistent. Semantic entropy = do the judge's rationales cluster into one meaning, or several? Higher entropy means the judge is internally conflicted about why. Decomposition = how much of the total variance comes from within-judge sampling noise (aleatoric, hard to fix) vs between-judge disagreement (epistemic, fixable by calling more judges).
The natural-language explanation each judge gave alongside its score. These are produced via tool-use structured output, so the score and the rationale are guaranteed to come from the same forward pass.
The solution correctly uses a list comprehension with `str.startswith()` to filter strings by prefix. It handles the empty list edge case, matches both provided doctests, and works correctly for all plausible edge cases (empty prefix, multi-character prefix, no matches, all matches). The implementation is idiomatic and clear.
The candidate solution correctly implements the function to filter a list of strings based on a given prefix. It uses a list comprehension with the `startswith` method, which is both idiomatic and efficient for this task. The solution passes the provided examples and handles edge cases such as an empty list input. The implementation is clear and concise, with no apparent logic or style issues.