# APM Benchmark Scripts This folder documents the command-line scripts used to run the Assistive Prompt Mediation (APM) benchmark from the published prompt CSVs through metric aggregation. The scripts live in `scripts/`: - `prepare_inference_inputs.py` converts the dataset CSVs into deterministic JSONL examples. - `evaluate_outputs.py` computes row-level protocol, script, and burden metrics from model outputs. - `compile_results.py` merges those metrics with judge annotations. - `analyze_results.py` writes benchmark summary CSVs and optional plots. ## Setup ```bash python -m pip install -r requirements-benchmark.txt ``` The row-level metric and compilation scripts only use the Python standard library. `pandas` is needed for aggregate analysis; `matplotlib` is only needed when `--plots` is used. ## 1. Prepare Inference Inputs Run from the dataset repository root: ```bash python scripts/prepare_inference_inputs.py \ --dataset-dir . \ --output-dir benchmark_inputs \ --overwrite ``` This writes files such as `benchmark_inputs/N1/en.jsonl`. Each row has the following shape: ```json { "example_id": "stable_sha1_id", "language": "en", "noise": "N1", "category": "Communication and Task delegation", "alpha": 0.2, "clean_text": "Write a short message asking my manager for one day of sick leave.", "noisy_prompt": "Wriet a shrot emssage askign my managre fro noe dya of sikc elave.", "instruction": "Rewrite the noisy user prompt into a clear prompt..." } ``` The full CSV set expands to 40,928 inference examples across languages, noise types, and alpha severities. Save model generations in this format before evaluation: ```json { "example_id": "stable_sha1_id", "language": "en", "noise": "N1", "alpha": 0.2, "noisy_prompt": "Wriet a shrot emssage askign my managre fro noe dya of sikc elave.", "model_response": "Write a short message asking my manager for one day of sick leave." } ``` The evaluator also accepts common response field names such as `response`, `assistant_response`, `assist_prompt`, `assisted_prompt`, `mediated_prompt`, or `output`. ## 2. Evaluate Model Outputs Expected layout: ```text outputs/ model-name/ N1/ results.jsonl N2/ results.jsonl ``` Run: ```bash python scripts/evaluate_outputs.py \ --input-root outputs \ --output-root metrics ``` This writes `metrics///metrics.json`. Each metric row includes: - `asked_question`, `added_explanation`, `protocol_compliant` - `script_match`, `script_ratio` for Chinese-script diagnostics - `B_raw`, `B_assist`, and `BRS = B_raw - B_assist` ## 3. Compile With Judge Annotations If judge annotations are stored as `outputs_judged///results.jsonl`, run: ```bash python scripts/compile_results.py \ --metrics-root metrics \ --judged-root outputs_judged \ --output-root compiled ``` Judge annotations may be nested under a `judge` key: ```json { "example_id": "stable_sha1_id", "judge": { "intent_preservation": 5, "hallucinated_additions": false, "hallucination_severity": 0, "asked_for_clarification": false, "added_extra_text": false, "language_match": true, "overall_verdict": "pass", "comment": "Intent is preserved." } } ``` The compiler prefixes nested judge fields with `judge_` and writes `compiled///compiled.json`. ## 4. Aggregate Benchmark Results ```bash python scripts/analyze_results.py \ --compiled-root compiled \ --output-dir benchmark_summaries ``` Add `--plots` to also write PNG visualizations when matplotlib is available in your environment. Summary outputs include: - `apm_sensitivity_curves.csv` - `core_metrics.csv` - `hallucination_metrics.csv` - `intent_burden_tradeoff.csv` - `false_robustness_summary.csv` - `language_noise_disparities.csv` - `table_language_avg.csv` - `table_model_avg.csv` Use `--write-combined` if you also want a flattened `compiled_results.csv`.