What are canonical examples of parallel computation? - parallel-processing

I am writing a paper to test a new application that will demonstrate the benefits of parallelized computation (compared to the traditional serialized version of this application). I want to use the canonical examples for parallel computation in my paper.
My first example is the parallel computation of pi. I would ideally like an example where each iteration is very time consuming (because of the additional overhead associated with parallelizing); my first thought is a Bayesian simulation with MCMC and Gibbs sampling.
What other problems are typically discussed in this context? What are good examples of large embarassingly parallel problems?

just a few more -
Multiplying matrices
Inverting matrices
FFT
String matching
Rendering 3d scenes (via scan line conversion or ray tracing)

One example I've used in the past of an embarrassingly parallel problem is visualizing the mandelbrot set. Each pixel can be computed independently.
Conway's Life is interesting as well, in that each value of the "next" board can be computed independently, but will depend on the relevant bits of the "current" board being done already.

I would suggest that canonical examples of parallel computation and embarassingly parallel problems are, if not completely, then nearly, disjoint sets. To put it another way, people working in parallel computation aren't terribly excited about embarassingly parallel problems; we call them that because we'd be embarassed to be working on them.
I'd be looking, if I were you, at these (a not entirely original list):
linear algebra on large dense matrices, both direct and iterative approaches;
linear algebra on huge sparse matrices
branch and bound approaches to linear programming (and related) problems;
sequence matching for bioinformatics (outside my field, I may have mis-expressed this);
continuos optimisation.
I expect there are many more.
EDIT: You may be interested in this list of problems which have been selected for benchmarking the next generation of European (academic) supercomputers. It will give you some idea of where that niche is heading.

Molecular dynamics simluations allow you to change the size of the problem until your computer resources are exhausted (i.e. 256 particles vs. 256,000,000 particles). Its truly a "canonical" example if you run the MD simulations under NVT conditions ;-)

My favorite example is monte carlo simulation.

Word counting seems to be the canonical example for MapReduce.
http://en.wikipedia.org/wiki/MapReduce#Example

Finding collisions in hash functions using Paul C. van Oorschot and Michael J. Weiner's method (PDF) comes up often in various cryptographic settings.

I used the Mandelbrot set demo to explain to my mom what parallel programming is about : http://www.ateji.com/px/demo.html
All the examples you mentions are mostly heavy data-parallel codes. You'll probably want to mention also task-oriented codes, such as servers responding to many requests in parallel, and data-flow or stream programming examples (MapReduce is a good representative of this class).

Related

Multi-channel Lattice Recursive Least Squares

I'm trying to implement multi-channelt lattice RLS, i.e. the recursive least squares algorithm which performs noise cancellation with multiple inputs, but a single 'desired output'.
I have the basic RLS algorithm working with multiple components, but it's too inefficient and memory intensive for my purpose.
Wikipedia has an excellent example of lattice RLS, which works great.
https://en.wikipedia.org/wiki/Recursive_least_squares_filter
However, the sources it cites do not go into much detail on how to extend this to the multi-channel case, and re-doing the full derivation is a bit beyond me.
Does anyone know a good source which describes or implements this algorithm in the multi-channel case? Many thanks.
Use separate parallel adaptive filters...one for each noise reference and combine these outputs to subtract from your noisy signal. LMS usually works best but RLS is fine. Problems arise if any of the noise references are heavily correlated with the desired signal.

Floating point algorithms with potential for performance optimization

For a university lecture I am looking for floating point algorithms with known asymptotic runtime, but potential for low-level (micro-)optimization. This means optimizations such as minimizing cache misses and register spillages, maximizing instruction level parallelism and taking advantage of SIMD (vector) instructions on new CPUs. The optimizations are going to be CPU-specific and will make use of applicable instruction set extensions.
The classic textbook example for this is matrix multiplication, where great speedups can be achieved by simply reordering the sequence of memory accesses (among other tricks). Another example is FFT. Unfortunately, I am not allowed to choose either of these.
Anyone have any ideas, or an algorithm/method that could use a boost?
I am only interested in algorithms where a per-thread speedup is conceivable. Parallelizing problems by multi-threading them is fine, but not the scope of this lecture.
Edit 1: I am taking the course, not teaching it. In the past years, there were quite a few projects that succeeded in surpassing the current best implementations in terms of performance.
Edit 2: This paper lists (from page 11 onwards) seven classes of important numerical methods and some associated algorithms that use them. At least some of the mentioned algorithms are candidates, it is however difficult to see which.
Edit 3: Thank you everyone for your great suggestions! We proposed to implement the exposure fusion algorithm (paper from 2007) and our proposal was accepted. The algorithm creates HDR-like images and consists mainly of small kernel convolutions followed by weighted multiresolution blending (on the Laplacian pyramid) of the source images. Interesting for us is the fact that the algorithm is already implemented in the widely used Enfuse tool, which is now at version 4.1. So we will be able to validate and compare our results with the original and also potentially contribute to the development of the tool itself. I will update this post in the future with the results if I can.
The simplest possible example:
accumulation of a sum. unrolling using multiple accumulators and vectorization allow a speedup of (ADD latency)*(SIMD vector width) on typical pipelined architectures (if the data is in cache; because there's no data reuse, it typically won't help if you're reading from memory), which can easily be an order of magnitude. Cute thing to note: this also decreases the average error of the result! The same techniques apply to any similar reduction operation.
A few classics from image/signal processing:
convolution with small kernels (especially small 2d convolves like a 3x3 or 5x5 kernel). In some sense this is cheating, because convolution is matrix multiplication, and is intimately related to the FFT, but in reality the nitty-gritty algorithmic techniques of high-performance small kernel convolutions are quite different from either.
erode and dilate.
what image people call a "gamma correction"; this is really evaluation of an exponential function (maybe with a piecewise linear segment near zero). Here you can take advantage of the fact that image data is often entirely in a nice bounded range like [0,1] and sub-ulp accuracy is rarely needed to use much cheaper function approximations (low-order piecewise minimax polynomials are common).
Stephen Canon's image processing examples would each make for instructive projects. Taking a different tack, though, you might look at certain amenable geometry problems:
Closest pair of points in moderately high dimension---say 50000 or so points in 16 or so dimensions. This may have too much in common with matrix multiplication for your purposes. (Take the dimension too much higher and dimensionality reduction silliness starts mattering; much lower and spatial data structures dominate. Brute force, or something simple using a brute-force kernel, is what I would want to use for this.)
Variation: For each point, find the closest neighbour.
Variation: Red points and blue points; find the closest red point to each blue point.
Welzl's smallest containing circle algorithm is fairly straightforward to implement, and the really costly step (check for points outside the current circle) is amenable to vectorisation. (I suspect you can kill it in two dimensions with just a little effort.)
Be warned that computational geometry stuff is usually more annoying to implement than it looks at first; don't just grab a random paper without understanding what degenerate cases exist and how careful your programming needs to be.
Have a look at other linear algebra problems, too. They're also hugely important. Dense Cholesky factorisation is a natural thing to look at here (much more so than LU factorisation) since you don't need to mess around with pivoting to make it work.
There is a free benchmark called c-ray.
It is a small ray-tracer for spheres designed to be a benchmark for floating-point performance.
A few random stackshots show that it spends nearly all its time in a function called ray_sphere that determines if a ray intersects a sphere and if so, where.
They also show some opportunities for larger speedup, such as:
It does a linear search through all the spheres in the scene to try to find the nearest intersection. That represents a possible area for speedup, by doing a quick test to see if a sphere is farther away than the best seen so far, before doing all the 3-d geometry math.
It does not try to exploit similarity from one pixel to the next. This could gain a huge speedup.
So if all you want to look at is chip-level performance, it could be a decent example.
However, it also shows how there can be much bigger opportunities.

What are the most common uses for distributed computing?

I wrote a very simple distributed computing platform (based on the Map/Reduce paradigm), and I'm in the process of writing some demos and showcases. I have a very small team and have to prioritize which demos I'll write first.
To prioritize I need to sort the demos accordingly to about 70% being a relevant, common, significant use case of distributed computing, 30% being easy to write.
So far I have it ordered like this:
Discovering pi digits with Monte Carlo
Numerical integration with Monte Carlo
Large matrix multiplication (dense matrices)
Linear regressions
Large matrix inversion
Multiple regressions
Sorting
Clustering (K-Means)
Clustering (Hierarchical)
Number 1 is on the list because it took 10 minutes to write, although it's completely useless (I'm not sure but I figure there's not a lot of people trying to find more digits to pi).
Due to the nature of my platform, it will shine more in things that are of course embarrassingly parallel, and not I/O-bounded or reduce-dominated.
How would you change my list? What would you add to it? Is sorting useful at all in the enterprise world or is it only for benchmarking distributed computing platforms?
Your list suggests that you are not distinguishing between parallel computing and distributed computing. This is not necessarily wrong but someone looking for a demonstration of the excellence of a distributed computing platform might be left tepidly enthused upon seeing parallel computations, such as your items 2 - 5, being performed.
Sorting is certainly useful everywhere there is data: large enterprises, small enterprises, in your desk drawers, across the Googlesphere. So too is searching, which is a surprising omission from your list. The other omission which strikes me immediately is any sort of data fusion, merging large datasets to get information from their intersections beyond what can be extracted from the datasets individually.
I second Mark in that you are mixing distributed computing and HPC. Here are some comments on each of your topics:
(1) There are people trying to compute as many digits of Pi as they can but the Monte Carlo algorithm is completely useless there as its precision scales with the inverse square root of the number of trials, so in order to get one more decimal digit of precision you would roughly need 100 times more trials. There are other algorithms - see if you can implement some of them using Map/Reduce.
(2) This one is fine, although seldom used - same problem with precision as (1).
(5) Pure matrix inversions are seldom performed, mainly because of numerical instabilities. How about solving a dense system of linear equations instead?
I would say that you are missing one of the main usages of M/R processing nowadays, namely graph processing (read: social and other networks/flows analysis). Also some more general optimisation problem might be nice, e.g. genetic algorithms.

Initial Genetic Programming Parameters

I did a little GP (note:very little) work in college and have been playing around with it recently. My question is in regards to the intial run settings (population size, number of generations, min/max depth of trees, min/max depth of initial trees, percentages to use for different reproduction operations, etc.). What is the normal practice for setting these parameters? What papers/sites do people use as a good guide?
You'll find that this depends very much on your problem domain - in particular the nature of the fitness function, your implementation DSL etc.
Some personal experience:
Large population sizes seem to work
better when you have a noisy fitness
function, I think this is because the growth
of sub-groups in the population over successive generations acts
to give more sampling of
the fitness function. I typically use
100 for less noisy/deterministic functions, 1000+
for noisy.
For number of generations it is best to measure improvements in the
fitness function and stop when it
meets your target criteria. I normally run a few hundred generations and see what kind of answers are coming out, if it is showing no improvement then you probably have an issue elsewhere.
Tree depth requirements are really dependent on your DSL. I sometimes try to do an
implementation without explicit
limits but penalise or eliminate
programs that run too long (which is probably
what you really care about....). I've also found total node counts of ~1000 to be quite useful hard limits.
Percentages for different mutation / recombination operators don't seem
to matter all that much. As long as
you have a comprehensive set of mutations, any reasonably balanced
distribution will usually work. I think the reason for this is that you are basically doing a search for favourable improvements so the main objective is just to make sure the trial improvements are reasonably well distributed across all the possibilities.
Why don't you try using a genetic algorithm to optimise these parameters for you? :)
Any problem in computer science can be
solved with another layer of
indirection (except for too many
layers of indirection.)
-David J. Wheeler
When I started looking into Genetic Algorithms I had the same question.
I wanted to collect data variating parameters on a very simple problem and link given operators and parameters values (such as mutation rates, etc) to given results in function of population size etc.
Once I started getting into GA a bit more I then realized that given the enormous number of variables this is a huge task, and generalization is extremely difficult.
talking from my (limited) experience, if you decide to simplify the problem and use a fixed way to implement crossover, selection, and just play with population size and mutation rate (implemented in a given way) trying to come up with general results you'll soon realize that too many variables are still into play because at the end of the day the number of generations after which statistically you will get a decent result (whatever way you wanna define decent) still obviously depend primarily on the problem you're solving and consequently on the genome size (representing the same problem in different ways will obviously lead to different results in terms of effect of given GA parameters!).
It is certainly possible to draft a set of guidelines - as the (rare but good) literature proves - but you will be able to generalize the results effectively in statistical terms only when the problem at hand can be encoded in the exact same way and the fitness is evaluated in a somehow an equivalent way (which more often than not means you're ealing with a very similar problem).
Take a look at Koza's voluminous tomes on these matters.
There are very different schools of thought even within the GP community -
Some regard populations in the (low) thousands as sufficient whereas Koza and others often don't deem if worthy to start a GP run with less than a million individuals in the GP population ;-)
As mentioned before it depends on your personal taste and experiences, resources and probably the GP system used!
Cheers,
Jan

Performance Testing for Calculation-Heavy Programs

What are some good tips and/or techniques for optimizing and improving the performance of calculation heavy programs. I'm talking about things like complication graphics calculations or mathematical and simulation types of programming where every second saved is useful, as opposed to IO heavy programs where only a certain amount of speedup is helpful.
While changing the algorithm is frequently mentioned as the most effective method here,I'm trying to find out how effective different algorithms are in the first place, so I want to create as much efficiency with each algorithm as is possible. The "problem" I'm solving isn't something thats well known, so there are few if any algorithms on the web, but I'm looking for any good advice on how to proceed and what to look for.
I am exploring the differences in effectiveness between evolutionary algorithms and more straightforward approaches for a particular group of related problems. I have written three evolutionary algorithms for the problem already and now I have written an brute force technique that I am trying to make as fast as possible.
Edit: To specify a bit more. I am using C# and my algorithms all revolve around calculating and solving constraint type problems for expressions (using expression trees). By expressions I mean things like x^2 + 4 or anything else like that which would be parsed into an expression tree. My algorithms all create and manipulate these trees to try to find better approximations. But I wanted to put the question out there in a general way in case it would help anyone else.
I am trying to find out if it is possible to write a useful evolutionary algorithm for finding expressions that are a good approximation for various properties. Both because I want to know what a good approximation would be and to see how the evolutionary stuff compares to traditional methods.
It's pretty much the same process as any other optimization: profile, experiment, benchmark, repeat.
First you have to figure out what sections of your code are taking up the time. Then try different methods to speed them up (trying methods based on merit would be a better idea than trying things at random). Benchmark to find out if you actually did speed them up. If you did, replace the old method with the new one. Profile again.
I would recommend against a brute force approach if it's at all possible to do it some other way. But, here are some guidelines that should help you speed your code up either way.
There are many, many different optimizations you could apply to your code, but before you do anything, you should profile to figure out where the bottleneck is. Here are some profilers that should give you a good idea about where the hot spots are in your code:
GProf
PerfMon2
OProfile
HPCToolkit
These all use sampling to get their data, so the overhead of running them with your code should be minimal. Only GProf requires that you recompile your code. Also, the last three let you do both time and hardware performance counter profiles, so once you do a time (or CPU cycle) profile, you can zoom in on the hotter regions and find out why they might be running slow (cache misses, FP instruction counts, etc.).
Beyond that, it's a matter of thinking about how best to restructure your code, and this depends on what the problem is. It may be that you've just got a loop that the compiler doesn't optimize well, and you can inline or move things in/out of the loop to help the compiler out. Or, if you're running as fast as you can with basic arithmetic ops, you may want to try to exploit vector instructions (SSE, etc.) If your code is parallel, you might have load balance problems, and you may need to restructure your code so that data is better distributed across cores.
These are just a few examples. Performance optimization is complex, and it might not help you nearly enough if you're doing a brute force approach to begin with.
For more information on ways people have optimized things, there were some pretty good examples in the recent Why do you program in assembly? question.
If your optimization problem is (quasi-)convex or can be transformed into such a form, there are far more efficient algorithms than evolutionary search.
If you have large matrices, pay attention to your linear algebra routines. The right algorithm can make shave an order of magnitude off the computation time, especially if your matrices are sparse.
Think about how data is loaded into memory. Even when you think you're spending most of your time on pure arithmetic, you're actually spending a lot of time moving things between levels of cache etc. Do as much as you can with the data while it's in the fastest memory.
Try to avoid unnecessary memory allocation and de-allocation. Here's where it can make sense to back away from a purely OO approach.
This is more of a tip to find holes in the algorithm itself...
To realize maximum performance, simplify everything inside the most inner loop at the expense of everything else.
One example of keeping things simple is the classic bouncing ball animation. You can implement gravity by looking up the definition in your physics book and plugging in the numbers, or you can do it like this and save precious clock cycles:
initialize:
float y = 0; // y coordinate
float yi = 0; // incremental variable
loop:
y += yi;
yi += 0.001;
if (y > 10)
yi = -yi;
But now let's say you're having to do this with nested loops in an N-body simulation where every particle is attracted to every other particle. This can be an enormously processor intensive task when you're dealing with thousands of particles.
You should of course take the same approach as to simplify everything inside the most inner loop. But more than that, at the very simplest level you should also use data types wisely. For example, math operations are faster when working with integers than floating point variables. Also, addition is faster than multiplication, and multiplication is faster than division.
So with all of that in mind, you should be able to simplify the most inner loop using primarily addition and multiplication of integers. And then any scaling down you might need to do can be done afterwards. To take the y and yi example, if yi is an integer that you modify inside the inner loop then you could scale it down after the loop like this:
y += yi * 0.01;
These are very basic low-level performance tips, but they're all things I try to keep in mind whenever I'm working with processor intensive algorithms. Of course, if you then take these ideas and apply them to parallel processing on a GPU then you can take your algorithm to a whole new level. =)
Well how you do this depends the most on which language
you are using. Still, the key in any language
in the profiler. Profile your code. See which
functions/operations are taking the most time and then determine
if you can make these costly operations more efficient.
Standard bottlenecks in numerical algorithms are memory
usage (do you access matrices in the order which the elements
are stored in memory); communication overhead, etc. They
can be little different than other non-numerical programs.
Moreover, many other factors such as preconditioning, etc.
can lead to drastically difference performance behavior
of the SAME algorithm on the same problem. Make sure
you determine optimal parameters for your implementations.
As for comparing different algorithms, I recommend
reading the paper
"Benchmarking optimization software with performance profiles,"
Jorge Moré and Elizabeth D. Dolan, Mathematical Programming 91 (2002), 201-213.
It provides a nice, uniform way to compare different algorithms being
applied to the same problem set. It really should be better known
outside of the optimization community (in my not so humble opinion
at least).
Good luck!

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