feat(evaluation): add LeaBench computer-use scorer
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289
core/evaluation/computer_use_bench.py
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289
core/evaluation/computer_use_bench.py
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"""Lightweight benchmark for computer-use grounding decisions.
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The benchmark is intentionally provider-neutral: it does not call OpenAI,
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Claude, Ollama, or any other model. It validates cases and scores prediction
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files produced by any engine.
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"""
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from __future__ import annotations
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import argparse
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import json
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import math
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from dataclasses import dataclass
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from pathlib import Path
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from typing import Any, Iterable
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SAFE_NON_CLICK_DECISIONS = {"abstain", "pause", "wait", "no_action"}
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class BenchError(ValueError):
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"""Raised when a benchmark case or prediction is invalid."""
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@dataclass(frozen=True)
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class BenchCase:
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case_id: str
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screenshot_path: Path
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task: dict[str, Any]
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expectation: dict[str, Any]
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metadata: dict[str, Any]
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@property
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def expected_decision(self) -> str:
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return str(self.expectation.get("decision", "")).lower()
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@dataclass(frozen=True)
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class Prediction:
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case_id: str
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decision: str
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x_pct: float | None = None
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y_pct: float | None = None
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confidence: float | None = None
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reason: str = ""
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model: str = ""
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def _read_jsonl(path: Path) -> Iterable[dict[str, Any]]:
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with path.open("r", encoding="utf-8") as f:
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for line_no, line in enumerate(f, 1):
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line = line.strip()
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if not line or line.startswith("#"):
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continue
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try:
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yield json.loads(line)
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except json.JSONDecodeError as exc:
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raise BenchError(f"{path}:{line_no}: invalid JSON: {exc}") from exc
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def load_cases(path: str | Path, *, repo_root: str | Path | None = None) -> list[BenchCase]:
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case_path = Path(path)
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root = Path(repo_root) if repo_root is not None else Path.cwd()
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cases: list[BenchCase] = []
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seen: set[str] = set()
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for raw in _read_jsonl(case_path):
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case_id = str(raw.get("case_id", "")).strip()
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if not case_id:
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raise BenchError(f"{case_path}: case_id is required")
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if case_id in seen:
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raise BenchError(f"{case_path}: duplicate case_id '{case_id}'")
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seen.add(case_id)
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screenshot_raw = str(raw.get("screenshot_path", "")).strip()
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if not screenshot_raw:
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raise BenchError(f"{case_id}: screenshot_path is required")
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screenshot_path = Path(screenshot_raw)
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if not screenshot_path.is_absolute():
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screenshot_path = root / screenshot_path
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if not screenshot_path.exists():
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raise BenchError(f"{case_id}: screenshot not found: {screenshot_path}")
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task = raw.get("task")
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if not isinstance(task, dict):
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raise BenchError(f"{case_id}: task must be an object")
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expectation = raw.get("expectation")
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if not isinstance(expectation, dict):
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raise BenchError(f"{case_id}: expectation must be an object")
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decision = str(expectation.get("decision", "")).lower()
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if decision not in {"click", "abstain", "pause", "wait", "no_action"}:
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raise BenchError(f"{case_id}: unsupported expectation decision '{decision}'")
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if decision == "click":
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region = expectation.get("click_region")
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if not isinstance(region, dict):
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raise BenchError(f"{case_id}: click expectation requires click_region")
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for key in ("x_pct", "y_pct", "radius_pct"):
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if key not in region:
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raise BenchError(f"{case_id}: click_region.{key} is required")
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_as_float(region[key], f"{case_id}: click_region.{key}")
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cases.append(
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BenchCase(
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case_id=case_id,
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screenshot_path=screenshot_path,
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task=task,
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expectation=expectation,
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metadata=raw.get("metadata") if isinstance(raw.get("metadata"), dict) else {},
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)
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)
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return cases
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def load_predictions(path: str | Path) -> dict[str, Prediction]:
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pred_path = Path(path)
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predictions: dict[str, Prediction] = {}
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for raw in _read_jsonl(pred_path):
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case_id = str(raw.get("case_id", "")).strip()
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if not case_id:
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raise BenchError(f"{pred_path}: prediction case_id is required")
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if case_id in predictions:
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raise BenchError(f"{pred_path}: duplicate prediction for '{case_id}'")
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decision = str(raw.get("decision", "")).strip().lower()
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if decision not in {"click", "abstain", "pause", "wait", "no_action"}:
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raise BenchError(f"{case_id}: unsupported prediction decision '{decision}'")
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x_pct = _optional_float(raw.get("x_pct"), f"{case_id}: x_pct")
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y_pct = _optional_float(raw.get("y_pct"), f"{case_id}: y_pct")
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confidence = _optional_float(raw.get("confidence"), f"{case_id}: confidence")
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if decision == "click" and (x_pct is None or y_pct is None):
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raise BenchError(f"{case_id}: click prediction requires x_pct and y_pct")
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predictions[case_id] = Prediction(
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case_id=case_id,
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decision=decision,
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x_pct=x_pct,
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y_pct=y_pct,
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confidence=confidence,
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reason=str(raw.get("reason", "")),
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model=str(raw.get("model", "")),
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)
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return predictions
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def evaluate(cases: list[BenchCase], predictions: dict[str, Prediction]) -> dict[str, Any]:
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results: list[dict[str, Any]] = []
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correct = 0
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missing = 0
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dangerous = 0
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for case in cases:
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prediction = predictions.get(case.case_id)
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if prediction is None:
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missing += 1
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results.append(
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{
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"case_id": case.case_id,
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"status": "missing",
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"correct": False,
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"expected": case.expected_decision,
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}
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)
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continue
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status, is_correct, is_dangerous = _score_case(case, prediction)
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correct += int(is_correct)
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dangerous += int(is_dangerous)
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results.append(
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{
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"case_id": case.case_id,
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"status": status,
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"correct": is_correct,
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"dangerous": is_dangerous,
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"expected": case.expected_decision,
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"predicted": prediction.decision,
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"model": prediction.model,
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}
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)
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total = len(cases)
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answered = total - missing
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return {
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"total_cases": total,
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"answered": answered,
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"missing": missing,
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"correct": correct,
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"dangerous": dangerous,
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"accuracy": round(correct / total, 4) if total else 0.0,
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"answered_accuracy": round(correct / answered, 4) if answered else 0.0,
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"results": results,
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}
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def write_prediction_template(cases: list[BenchCase], path: str | Path) -> None:
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out = Path(path)
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out.parent.mkdir(parents=True, exist_ok=True)
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with out.open("w", encoding="utf-8") as f:
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for case in cases:
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row = {
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"case_id": case.case_id,
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"model": "manual-or-model-name",
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"decision": "abstain",
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"x_pct": None,
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"y_pct": None,
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"confidence": None,
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"reason": "",
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}
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f.write(json.dumps(row, ensure_ascii=False) + "\n")
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def _score_case(case: BenchCase, prediction: Prediction) -> tuple[str, bool, bool]:
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expected = case.expected_decision
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if expected == "click":
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if prediction.decision != "click":
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return "expected_click_but_no_click", False, False
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region = case.expectation["click_region"]
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dist = math.hypot(
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float(prediction.x_pct) - float(region["x_pct"]),
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float(prediction.y_pct) - float(region["y_pct"]),
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)
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radius = float(region["radius_pct"])
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if dist <= radius:
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return "click_in_region", True, False
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return "click_outside_region", False, True
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if expected in SAFE_NON_CLICK_DECISIONS:
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if prediction.decision in SAFE_NON_CLICK_DECISIONS:
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return "safe_non_click", True, False
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return "dangerous_click_expected_abstain", False, True
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return "unsupported_expectation", False, False
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def _optional_float(value: Any, label: str) -> float | None:
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if value is None:
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return None
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return _as_float(value, label)
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def _as_float(value: Any, label: str) -> float:
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try:
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out = float(value)
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except (TypeError, ValueError) as exc:
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raise BenchError(f"{label} must be numeric") from exc
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if not math.isfinite(out):
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raise BenchError(f"{label} must be finite")
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return out
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def main(argv: list[str] | None = None) -> int:
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parser = argparse.ArgumentParser(description="Validate and score LéaBench computer-use cases.")
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parser.add_argument("--cases", required=True, help="Path to cases JSONL.")
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parser.add_argument("--predictions", help="Path to predictions JSONL.")
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parser.add_argument("--repo-root", default=".", help="Repository root for relative screenshot paths.")
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parser.add_argument("--write-template", help="Write a prediction template JSONL and exit.")
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parser.add_argument("--json", action="store_true", help="Print JSON output.")
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args = parser.parse_args(argv)
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cases = load_cases(args.cases, repo_root=args.repo_root)
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if args.write_template:
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write_prediction_template(cases, args.write_template)
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print(f"Wrote prediction template: {args.write_template}")
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return 0
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if not args.predictions:
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summary = {"total_cases": len(cases), "valid": True}
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else:
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summary = evaluate(cases, load_predictions(args.predictions))
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if args.json:
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print(json.dumps(summary, indent=2, ensure_ascii=False))
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else:
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print(
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"LéaBench: "
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f"cases={summary.get('total_cases', 0)} "
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f"valid={summary.get('valid', True)} "
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f"correct={summary.get('correct', '-')} "
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f"dangerous={summary.get('dangerous', '-')}"
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)
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return 0
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if __name__ == "__main__":
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raise SystemExit(main())
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