1. Field of the Invention
The present invention deals with fixed-length queues in computer hardware and software. More specifically, the present invention deals with techniques for managing fixed-length queues when they become full.
2. Art Background
Many systems use fixed-length queues to buffer data between a data producer and a data consumer. If the consumer is not able to consume data as fast as the producer places it in the queue, or is unable for some reason to take data from the queue or empty the queue, the queue can become full. The queue management system, hardware or software, must have policies in place for dealing with queue overflow situations.
Traditional approaches to queue overflow include techniques such as overwriting the last item, dropping the oldest item, or discarding the newest item. The choice is usually made based on the needs of the application and the presumed importance of new data versus old data.
Techniques for decimation, the removal of old data, from a fixed length queue retain a representative sample of the data. Exponential decimation removes every nth sample. Dithered exponential decimation applies an offset to the exponential decimation approach. Recursive random decimation selects a portion of the queue and removes elements, and recurses on the remaining portion of the queue.
The present invention is described with respect to particular exemplary embodiments thereof and reference is made to the drawings in which:
Decimation as taught by the present invention trades reduced accuracy for increased apparent size of the queue. For example, if a 60 element queue contains samples taken every second, the queue when full holds samples spanning a minute, with one sample for every second in that minute. After many rounds of applying the decimation techniques according to the present invention, the same 60 element queue holds data covering a time span equivalent to that of a queue many times that size. However, the queue no longer contains a sample for each second of that time span.
The embodiments of the present invention may be implemented in a wide range of software, ranging from microcode or very low-level implementations to high-level language implementations. Embodiments of the present invention may also be implemented directly in hardware.
It should be understood that truly random numbers are very difficult to generate, and that the term random in this context is understood to be a shorthand for pseudorandom numbers. The generation of pseudorandom numbers is well understood in the art, described at length for example in Chapter 3 of The Art of Computer Programming by Donald E. Knuth.
Exponential decimation removes samples from the queue in such a way that old data is removed at the expense of new data, while still maintaining a representative sampling of the old data. An example of exponential decimation is shown in
Exponential decimation can also be applied with divisors other than n=2 and can begin with any item in the queue, effectively adjusting the exponential rate of decay of old data in the queue. While exponential decimation may be applied to a queue removing multiple elements at one time, as shown in
Exponential decimation may also be dithered, probabilistically adding (or subtracting) a dither offset m to the sample position to be removed. At each position a probability of offsetting is calculated. As an example with the case of exponential decimation with a divisor of n=2 and an offset of m=1, samples at positions 2, 5, 7, and 8 in the queue are removed, rather than positions 2, 4, 6, and 8. Dithered exponential decimation gives the same emphasis to old data, but is less susceptible to sample bias. In the general case of dithered exponential decimation where the divisor is n and the dither value is ±m, the distribution function should ideally be uniform with a zero mean, but any distribution will do.
Another method of removing data from a full queue according to the present invention is recursive decimation. This is shown in
The process is repeated recursively with the remaining half of the queue, shown in 330. The newer half is selected, items 5-8 in 340. An element is deleted at random, item 7 replaced by an X in 350. Recursive decimation continues in the same fashion with 360-380.
390-410 represent the end of the recursive process. When the queue size being examined is equal to two, one of the elements is deleted at random and the recursive process terminated.
The overall result of this example of random recursive decimation is shown as 420. As with exponential decimation, recursive decimation may be applied over the entire queue, recursively decimating successively smaller portions of the queue, or it may be applied one recursive round at a time, maintaining state between rounds. Again, applying the decimation process gradually in this manner essentially allows the queue to remain full at all times once it has initially been filled, eliminating old items only when necessary
As stated, certain aspects of the computation are simplified if the queue length in recursive decimation is an integer power of 2. While a random number may be generated each time an element is to be deleted, if the queue size is indeed an integer power of 2, a single randomly generated number may suffice, since in a sufficiently random number all bits in a binary representation will be random.
As an example, consider a queue containing 64 elements. In the first recursion, a random position spanning items 33 to 64 must be selected, requiring a random number in the range of 0-31. A random number is generated and five consecutive bits (either right most or leftmost) are selected to span the range 0-31. In the next round of recursion, the range needed is 0-15, so the next 4 bits of the random number are used. The next round uses 3 bits for a range of 0-7, the following round uses 2 bits for 0-3, and the final round uses 1 bit. In total then, 5+4+3+2+1=15 bits are needed in total. In general, the number of bits k needed for a queue of size n is:
This approach generates a single random number and does not reuse bits. While the possibility of introducing sample bias is increased, an alternate approach is to generate a single random number with at least the number of bits required for the first round of recursion, and reuse that random number in succeeding rounds, selecting fewer bits for each round.
If the size of the queue is not an integer power of 2, random numbers may be generated individually for each round of recursive decimation, or a single random number may be generated and reused in successive stages, for example by taking the random number modulo the queue size at issue in each round.
The foregoing detailed description of the present invention is provided for the purpose of illustration and is not intended to be exhaustive or to limit the invention to the precise embodiments disclosed. Accordingly the scope of the present invention is defined by the appended claims.
Number | Date | Country | |
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Parent | 10180801 | Jun 2002 | US |
Child | 11295015 | Dec 2005 | US |