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{
  "task_id": "arc_compiler_runtime",
  "name": "Arc Compiler Runtime",
  "category": "Systems & Software Engineering",
  "base_image": "python",
  "platform": "linux/amd64",
  "internet": false,
  "cwd": "/home/workspace/arc-compiler-runtime-implementation/agent-start",
  "submit_paths": [
    "compiler/src/"
  ],
  "submit_exclude": [
    "compiler/dist/",
    "tests/",
    "node_modules/",
    ".git/",
    ".github/",
    ".DS_Store",
    "*.map"
  ],
  "work": {
    "image_tag": "c92a7b116597",
    "specs_dir": "/home/workspace/arc-compiler-runtime-implementation/agent-start",
    "agent_query": "Implement the missing Arc compiler and runtime modules under compiler/src/. Use CHEATSHEET.md, TASK.md, and the public smoke tests as the language contract. Modify only files under compiler/src/. Do not modify tests, scoring scripts, task metadata, Dockerfiles, package files, node_modules, generated dist artifacts, source maps, or evaluator-owned files. Work offline and do not depend on hidden tests or hard-coded answers."
  },
  "judge": {
    "image_tag": "200e176a8e30",
    "eval_cmd": "cd /home/workspace/arc-compiler-runtime-implementation && python -c 'exec(\"import json\\nimport re\\nimport subprocess\\n\\nproc = subprocess.run(['\"'\"'bash'\"'\"', '\"'\"'evaluator-hidden/score_hidden.sh'\"'\"', '\"'\"'agent-start'\"'\"'], text=True, capture_output=True, timeout=1400)\\noutput = (proc.stdout or '\"'\"''\"'\"') + (proc.stderr or '\"'\"''\"'\"')\\nprint(output, end='\"'\"''\"'\"')\\nscore_match = re.search(r'\"'\"'^SCORE=([-+]?\\\\d+(?:\\\\.\\\\d+)?)$'\"'\"', output, re.MULTILINE)\\nraw_passed_match = re.search(r'\"'\"'^RAW_PASSED=(\\\\d+)$'\"'\"', output, re.MULTILINE)\\nraw_total_match = re.search(r'\"'\"'^RAW_TOTAL=(\\\\d+)$'\"'\"', output, re.MULTILINE)\\nweighted_passed_match = re.search(r'\"'\"'^WEIGHTED_PASSED=(\\\\d+)$'\"'\"', output, re.MULTILINE)\\nweighted_total_match = re.search(r'\"'\"'^WEIGHTED_TOTAL=(\\\\d+)$'\"'\"', output, re.MULTILINE)\\nscore = float(score_match.group(1)) if score_match else 0.0\\nraw_passed = int(raw_passed_match.group(1)) if raw_passed_match else 0\\nraw_total = int(raw_total_match.group(1)) if raw_total_match else 1\\nweighted_passed = int(weighted_passed_match.group(1)) if weighted_passed_match else 0\\nweighted_total = int(weighted_total_match.group(1)) if weighted_total_match else 1\\nvalid = proc.returncode == 0 and score_match is not None\\npass_rate = (raw_passed / raw_total) if raw_total else 0.0\\nprint('\"'\"'>>>>> Start Structured Result'\"'\"')\\nprint(json.dumps({\\n    '\"'\"'valid'\"'\"': valid,\\n    '\"'\"'score'\"'\"': score,\\n    '\"'\"'pass_rate'\"'\"': pass_rate if valid else 0.0,\\n    '\"'\"'total_tests'\"'\"': raw_total,\\n    '\"'\"'passed'\"'\"': raw_passed if valid else 0,\\n    '\"'\"'failed'\"'\"': max(raw_total - raw_passed, 0) if valid else raw_total,\\n    '\"'\"'errors'\"'\"': 0 if valid else 1,\\n    '\"'\"'summary'\"'\"': '\"'\"'Score: {:.2f}, raw: {}/{}, weighted: {}/{}'\"'\"'.format(score, raw_passed, raw_total, weighted_passed, weighted_total),\\n    '\"'\"'details'\"'\"': [{\\n        '\"'\"'name'\"'\"': '\"'\"'hidden_score'\"'\"',\\n        '\"'\"'status'\"'\"': '\"'\"'PASSED'\"'\"' if valid and score > 0.0 else '\"'\"'FAILED'\"'\"',\\n        '\"'\"'score'\"'\"': score,\\n        '\"'\"'message'\"'\"': output[-2000:]\\n    }],\\n    '\"'\"'metrics'\"'\"': {\\n        '\"'\"'score'\"'\"': score,\\n        '\"'\"'raw_passed'\"'\"': raw_passed,\\n        '\"'\"'raw_total'\"'\"': raw_total,\\n        '\"'\"'weighted_passed'\"'\"': weighted_passed,\\n        '\"'\"'weighted_total'\"'\"': weighted_total,\\n        '\"'\"'runner_returncode'\"'\"': proc.returncode\\n    }\\n}, ensure_ascii=False))\\nprint('\"'\"'>>>>> End Structured Result'\"'\"')\\n\")'",
    "eval_timeout": 1500,
    "parser": "structured_json",
    "score_direction": "maximize",
    "selection": "score_first",
    "rescale": {
      "kind": "linear",
      "lower": 0.0,
      "upper": 100.0
    }
  }
}