bro@lbl.gov Hello. We have analyzed this software to determine its vulnerability to a new class of DoS attacks that related to a recent paper. ''Denial of Service via Algorithmic Complexity Attacks.'' This paper discusses a new class of denial of service attacks that work by exploiting the difference between average case performance and worst-case performance. In an adversarial environment, the data structures used by an application may be forced to experience their worst case performance. For instance, hash tables are usually thought of as being constant time operations, but with large numbers of collisions will degrade to a linked list and may lead to a 100-10,000 times performance degradation. Because of the widespread use of hash tables, the potential for attack is extremely widespread. Fortunately, in many cases, other limits on the system limit the impact of these attacks. To be attackable, an application must have a deterministic or predictable hash function and accept untrusted input. In general, for the attack to be signifigant, the applications must be willing and able to accept hundreds to tens of thousands of 'attack inputs'. Because of that requirement, it is difficult to judge the impact of these attack without knowing the source code extremely well, and knowing all ways in which a program is used. In my paper, I attacked bro-pub-0.8a20's port scanning detector. The result of this attack was a packet drop rate of 30-70% with an attack traffic of only 16kbits, and a complete overload in approximately 7 minutes. You may wish to consider replacing that hash function with universal hashing. For installations of Bro, this is a CRITICAL DoS vulnerability. The solution for these attacks on hash tables is to make the hash function unpredictable via a technique known as universal hashing. Universal hashing is a keyed hash function where, based on the key, one of a large set hash functions is chosen. When benchmarking, we observe that for short or medium length inputs, it is comparable in performance to simple predictable hash functions such as the ones in Python or Perl. Our paper has graphs and charts of our benchmarked performance. I highly advise using a universal hashing library, either our own or someone elses. As is historically seen, it is very easy to make silly mistakes when attempting to implement your own 'secure' algorithm. The abstract, paper, and a library implementing universal hashing is available at http://www.cs.rice.edu/~scrosby/hash/. Scott