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rlenv_audit, a skill-based auditing system for Prime Intellect `verifiers` RL environments

Project description

rlenv_audit

PyPI Python versions License

rlenv_audit audits verifiers RL environments from the Prime Intellect Hub before you train on them. A broken reward function doesn't crash, it silently teaches the policy garbage. Point an agent (Claude Code / Codex) at an environment: it runs six checks and returns a scorecard out of 10 with written feedback on what to improve.

Quickstart

# Install the skills (pick one)
uvx --python 3.12 rlenv-audit install-skills
pip install rlenv-audit && rlenv-audit install-skills   # needs Python >= 3.11

Why --python 3.12: a Hub env must install into the same interpreter as the audit tool, and envs declare Python floors (most >=3.11, some higher) — a 3.12 venv clears nearly all of them in one go.

Then ask your agent, giving the full environment id (account/name; bare names like gsm8k are ambiguous on the Hub), your problem statement, and optionally a model endpoint and the HuggingFace datasets to check contamination against:

prompt

Audit primeintellect/gsm8k. I'm trying to train a grade-school math solver.
Check contamination against openai/gsm8k.

(in Claude Code or Codex)

If a vLLM server is up on the default address (http://localhost:8000/v1), the audit finds it by itself — endpoint and model name are auto-detected, and it tells you what it found. Serving somewhere else? Name it in the prompt: Use my vLLM endpoint at http://localhost:8000/v1, model Qwen2.5-7B. An explicitly named endpoint always wins; with no endpoint given and nothing on the default address, checks 4 & 5 are N/A.

Output

The scorecard, one row per check, each scored out of 10, plus one final score and written feedback:

                       rlenv_audit · primeintellect/gsm8k
┏━━━━━━━━━━━━━━━━━━━┳━━━━━━━━┳━━━━━━━┳━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━┓
┃ check             ┃ status ┃ score ┃ justification                           ┃
┡━━━━━━━━━━━━━━━━━━━╇━━━━━━━━╇━━━━━━━╇━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━┩
│ integrity         │ PASS   │   9.5 │ loads, reward callable, well-formed     │
│ problem_alignment │ PASS   │   9.0 │ dataset/reward match the stated goal    │
│ reward_design     │ PASS   │   8.8 │ discriminates; matches judgment 18/20   │
│ latency           │ PASS   │   8.5 │ mean 2.1s / p90 4.3s, no errors         │
│ rollout_quality   │ PASS   │   8.0 │ prompt clear; 6% truncated rollouts     │
│ contamination     │ WARN   │   6.0 │ 3 near-matches with openai/gsm8k test   │
└───────────────────┴────────┴───────┴─────────────────────────────────────────┘
overall: WARN   rating: 8.5/10

feedback
The environment is solidly built: it loads cleanly, the reward is a real
verifier (boxed-answer extraction + math equivalence, not a stub), and it
discriminates well: correct completions scored 1.0 and every wrong or
malformed probe scored 0.0, matching my own judgment on 18 of 20 cases.

The main thing to improve is contamination: 3 of the sampled training
instances near-match the openai/gsm8k test split you asked me to check, so
benchmark gains may partly be memorization; either dedupe against that test
split or report on a different set. Second, the parser only accepts \boxed{}
answers; consider
accepting plain final-line answers too, or the policy gets zero reward for
correct-but-unformatted output early in training.
  • Final score: a weighted average out of 10 over the checks that ran (N/A carries no weight). Latency and contamination weigh 0.5 each, the other four checks 1.0.
  • Feedback: 1 to 3 paragraphs, what the env does right first, then what to improve, in priority order.
  • A FAIL on any check fails the audit.
  • The full report is also saved to rlenv_audit_reports/<account>__<name>/report.md (human-readable) and report.json (machine-readable) in your working directory, so you can commit it, share it, or diff it against a re-audit after fixes.

The six checks

# Check Needs What it does
1 integrity - Does it even run and is it shaped right: dataset loads & is well-formed, reward present & callable, follows verifiers conventions, no missing fields / broken imports.
2 problem-statement alignment - Given your problem statement (a required input), judge whether the dataset + reward + prompt actually test that problem.
3 reward design - Stress-tests the reward without the policy: the agent writes ~20 synthetic completions (correct / wrong / edge / format perturbations), scores them through the real reward, and checks (a) the reward varies & discriminates sensibly and (b) each reward matches the agent's own judgment of quality.
4 latency model endpoint How long rollouts take end to end. Reads the shared cached rollouts.
5 rollout quality model endpoint Reads actual rollouts and judges whether the env is set up well in practice: system prompt right, outputs sensible, obvious env-caused failure modes.
6 contamination HF dataset ids Compares the env's dataset against the HuggingFace datasets you name (e.g. openai/gsm8k) and flags matching / near-matching instances. N/A (carries no weight) if you don't provide any.

Repair (opt-in)

If the audit comes back WARN/FAIL, ask for repairs explicitly — e.g. "rewrite the env based on the feedback". The env-repair skill applies the mechanical fixes (parser too strict, reward crashing on edge inputs, missing system prompt, unreachable termination, …) to a local copy under rlenv_audit_repairs/<account>__<name>/ — it never touches the installed package or the Hub. Design-level findings (misaligned dataset, contamination, difficulty) are left as written recommendations, reward-function edits are flagged loudly, every fix is validated against the repaired copy, and a REPAIRS.md documents what changed and why. Re-auditing the repaired copy and publishing it are yours.

Shared rollouts (checks 4 & 5). Both need a model, so rlenv_audit runs rollouts once through verifiers' own vf-eval engine (8 rollouts over ~20 samples, scored + timed, cached) and both checks read that single cache — the rollouts follow the env's real generation path, so multi-turn / tool envs roll out correctly. No endpoint → 4 & 5 are N/A.

Layout

skills/                 the six checks + the env-audit orchestrator + env-repair (SKILL.md each)
.claude-plugin/         plugin + marketplace manifests (repo doubles as a Claude Code plugin)
rlenv_audit/
  adapters/verifiers.py EnvHandle, the only code that touches verifiers
  tools.py              inspect / score / rollouts / scorecard
  sandbox.py            Docker isolation (for executing risky completions)
  cli.py                the rlenv-audit / env-audit CLI (+ install-skills)
REWARD_DESIGN.md        the design guide the judgment checks cite

Development

pip install -e ".[dev]" && pytest tests/

License

MIT

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