Denial of Service (DoS) Affecting tensorflow-gpu package, versions [,2.7.2) [2.8.0,2.8.1) [2.9.0,2.9.1)
Proof of concept
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18 Sep 2022
16 Sep 2022
Kang Hong Jin
How to fix?
tensorflow-gpu to version 2.7.2, 2.8.1, 2.9.1 or higher.
tensorflow-gpu is a machine learning framework.
Affected versions of this package are vulnerable to Denial of Service (DoS) when
tf.sparse.cross receives an input
separator that is not a scalar, it gives a
CHECK fail that can be used to trigger exploitation of this vulnerability.
import tensorflow as tf tf.sparse.cross(inputs=,name='a',separator=tf.constant(['a', 'b'],dtype=tf.string))
Denial of Service (DoS) describes a family of attacks, all aimed at making a system inaccessible to its intended and legitimate users.
Unlike other vulnerabilities, DoS attacks usually do not aim at breaching security. Rather, they are focused on making websites and services unavailable to genuine users resulting in downtime.
One popular Denial of Service vulnerability is DDoS (a Distributed Denial of Service), an attack that attempts to clog network pipes to the system by generating a large volume of traffic from many machines.
When it comes to open source libraries, DoS vulnerabilities allow attackers to trigger such a crash or crippling of the service by using a flaw either in the application code or from the use of open source libraries.
Two common types of DoS vulnerabilities:
High CPU/Memory Consumption- An attacker sending crafted requests that could cause the system to take a disproportionate amount of time to process. For example, commons-fileupload:commons-fileupload.
Crash - An attacker sending crafted requests that could cause the system to crash. For Example, npm