TensorFlow is an open source platform for machine learning. When tf.quantization.fake_quant_with_min_max_vars_gradient
receives input min
or max
that is nonscalar, it gives a CHECK
fail that can trigger a denial of service attack. We have patched the issue in GitHub commit f3cf67ac5705f4f04721d15e485e192bb319feed. The fix will be included in TensorFlow 2.10.0. We will also cherrypick this commit on TensorFlow 2.9.1, TensorFlow 2.8.1, and TensorFlow 2.7.2, as these are also affected and still in supported range. There are no known workarounds for this issue.
The product contains an assert() or similar statement that can be triggered by an attacker, which leads to an application exit or other behavior that is more severe than necessary.
Name | Vendor | Start Version | End Version |
---|---|---|---|
Tensorflow | * | 2.7.2 (excluding) | |
Tensorflow | 2.8.0 (including) | 2.8.1 (excluding) | |
Tensorflow | 2.9.0 (including) | 2.9.1 (excluding) | |
Tensorflow | 2.10-rc0 (including) | 2.10-rc0 (including) | |
Tensorflow | 2.10-rc1 (including) | 2.10-rc1 (including) | |
Tensorflow | 2.10-rc2 (including) | 2.10-rc2 (including) | |
Tensorflow | 2.10-rc3 (including) | 2.10-rc3 (including) |
While assertion is good for catching logic errors and reducing the chances of reaching more serious vulnerability conditions, it can still lead to a denial of service. For example, if a server handles multiple simultaneous connections, and an assert() occurs in one single connection that causes all other connections to be dropped, this is a reachable assertion that leads to a denial of service.