I'm working with OpenCL and I work with a matrix that I increase its values, and I need the application time to be as low as possible. What is the best way to improve performance with OpenCL? I've read something about data parallelism and task parallelism, but I do not know them very well.
I'm working with a 64x56 matrix. Using task parallelism I have create 64 kernels functions. One kernel for each column, but I think that I could do it much better.
If you are executing the kernel on GPU, it might be better to make one thread handle one item. However, it depends on what exactly you are doing with the elements of the matrix, e.g. how many operations you perform on each of them.
If you just increase the elements by some numbers, it might not be beneficial.
In general, there are 3 options:
One thread works with the whole matrix. This way there is no parallelism, and it's bad for GPU.
One thread works with one row/column. -> 64/56 threads are used, global work size equals 64 or 56.
One thread works with a single element. -> 3584 threads are used, global work size is {64, 56}.
Have you tried using just one kernel, that handles one element, and call clEnqueueNDRangeKernel for it with the global work size equal {64, 56}? How does it affect the execution time?
Suppose the following hypothetical task:
I am given a single integer A (say, 32 bit double) an a large array of integers B's (same type). The size of the integer array is fixed at runtime (doesn't grow mid-run) but of arbitrary size except it can always fit inside either RAM or VRAM (whichever is smallest). For the sake of this scenario, the integer array can sit in either RAM and VRAM; ignore any time cost in transferring this initial data set at start-up.
The task is to compare A against each B and to return true only if the test is true for against ALL B's, returning false otherwise. For the sake of this scenario, let is the greater than comparison (although I'd be interested if your answer is different for slightly more complex comparisons).
A naïve parallel implementation could involve slicing up the set B and distributing the comparison workload across multiple core. The core's workload would then be entirely independent save for when a failed comparison would interrupt all others as the result would immediately be false. Interrupts play a role in this implementation; although I'd imagine an ever decreasing one probabilistically as the array of integers gets larger.
My question is three-fold:
Would such a scenario be suitable for parallel-processing on GPU. If so, under what circumstances? Or is this a misleading case where the direct CPU implementation is actually the fastest?
Can you suggest an improved parallel algorithm over the naïve one?
Can you suggest any reading to gain intuition on deciding such problems?
If I understand your questions correctly, what you are trying to perform is a reductive operation. The operation in question is equivalent to a MATLAB/Numpy all(A[:] == B). To answer the three sections:
Yes. Reductions on GPUs/multicore CPUs can be faster than their sequential counterpart. See the presentation on GPU reductions here.
The presentation should provide a hierarchical approach for reduction. A more modern approach would be to use atomic operations on shared memory and global memory, as well as warp-aggregation. However, if you do not wish to deal with the intricate details of GPU implementations, you can use a highly-optimized library such as CUB.
See 1 and 2.
Good luck! Hope this helps.
I think this is a situation where you'll derive minimal benefit from the use of a GPU. I also think this is a situation where it'll be difficult to get good returns on any form of parallelism.
Comments on the speed of memory versus CPUs
Why do I believe this? Behold: the performance gap (in terrifyingly unclear units).
The point here is that CPUs have gotten very fast. And, with SIMD becoming a thing, they are poised to become even faster.
In the meantime, memory is getting faster slower. Not shown on the chart are memory buses, which ferry data to/from the CPU. Those are also getting faster, but at a slow rate.
Since RAM and hard drives are slow, CPUs try to store data in "little RAMs" known as the L1, L2, and L3 caches. These caches are super-fast, but super-small. However, if you can design an algorithm to repeatedly use the same memory, these caches can speed things up by an order of magnitude. For instance, this site discusses optimizing matrix multiplication for cache reuse. The speed-ups are dramatic:
The speed of the naive implementation (3Loop) drops precipitously for everything about a 350x350 matrix. Why is this? Because double-precision numbers (8 bytes each) are being used, this is the point at which the 1MB L2 cache on the test machine gets filled. All the speed gains you see in the other implementations come from strategically reusing memory so this cache doesn't empty as quickly.
Caching in your algorithm
Your algorithm, by definition, does not reuse memory. In fact, it has the lowest possible rate of memory reuse. That means you get no benefit from the L1, L2, and L3 caches. It's as though you've plugged your CPU directly into the RAM.
How do you get data from RAM?
Here's a simplified diagram of a CPU:
Note that each core has it's own, dedicated L1 cache. Core-pairs share L2 caches. RAM is shared between everyone and accessed via a bus.
This means that if two cores want to get something from RAM at the same time, only one of them is going to be successful. The other is going to be sitting there doing nothing. The more cores you have trying to get stuff from RAM, the worse this is.
For most code, the problem's not too bad since RAM is being accessed infrequently. However, for your code, the performance gap I talked about earlier, coupled your algorithm's un-cacheable design, means that most of your code's time is spent getting stuff from RAM. That means that cores are almost always in conflict with each other for limited memory bandwidth.
What about using a GPU?
A GPU doesn't really fix things: most of your time will still be spent pulling stuff from RAM. Except rather than having one slow bus (from the CPU to RAM), you have two (the other being the bus from the CPU to the GPU).
Whether you get a speed up is dependent on the relative speed of the CPU, the GPU-CPU bus, and the GPU. I suspect you won't get much of a speed up, though. GPUs are good for SIMD-type operations, or maps. The operation you describe is a reduction or fold: an inherently non-parallel operation. Since your mapped function (equality) is extremely simple, the GPU will spend most of its time on the reduction operation.
tl;dr
This is a memory-bound operation: more cores and GPUs are not going to fix that.
ignore any time cost in transferring this initial data set at
start-up
if there are only a few flase conditions in millions or billions of elements, you can try an opencl example:
// A=5 and B=arr
int id=get_global_id(0);
if(arr[id]!=5)
{
atomic_add(arr,1);
}
is as fast as it gets. arr[0] must be zero if all conditions are "true"
If you are not sure wheter there are only a few falses or millions(which makes atomic functions slow), you can have a single-pass preprocessing to decrease number of falses:
int id=get_global_id(0);
// get arr[id*128] to arr[id*128+128] into local/private mem
// check if a single false exists.
// if yes, set all cells true condition except one
// write results back to a temporary arr2 to be used
this copies whole array to another but if you can ignore time delta of transferring from host device, this should be also ignored. On top of this, only two kernels shouldn't take more than 1ms for the overhead(not including memory read writes)
If data fits in cache, the second kernel(one with the atomic function) will access it instead of global memory.
If time of transfers starts concerning, you can hide their latency using pipelined upload compute download operations if threads are separable from whole array.
A theoretical question, maybe it is obvious:
Is it possible that an algorithm, after being implemented in a parallel way with N threads, will be executed more than N times faster than the original, single-threaded algorithm? In other words, can the gain be better that linear with number of threads?
It's not common, but it most assuredly is possible.
Consider, for example, building a software pipeline where each step in the pipeline does a fairly small amount of calculation, but requires enough static data to approximately fill the entire data cache -- but each step uses different static data.
In a case like this, serial calculation on a single processor will normally be limited primarily by the bandwidth to main memory. Assuming you have (at least) as many processors/cores (each with its own data cache) as pipeline steps, you can load each data cache once, and process one packet of data after another, retaining the same static data for all of them. Now your calculation can proceed at the processor's speed instead of being limited by the bandwidth to main memory, so the speed improvement could easily be 10 times greater than the number of threads.
Theoretically, you could accomplish the same with a single processor that just had a really huge cache. From a practical viewpoint, however, the selection of processors and cache sizes is fairly limited, so if you want to use more cache you need to use more processors -- and the way most systems provide to accomplish this is with multiple threads.
Yes.
I saw an algorithm for moving a robot arm through complicated maneuvers that was basically to divide into N threads, and have each thread move more or less randomly through the solution space. (It wasn't a practical algorithm.) The statistics clearly showed a superlinear speedup over one thread. Apparently the probability of hitting a solution over time rose fairly fast and then leveled out some, so the advantage was in having a lot of initial attempts.
Amdahl's law (parallelization) tells us this is not possible for the general case. At best we can perfectly divide the work by N. The reason for this is that given no serial portion, Amdahl's formula for speedup becomes:
Speedup = 1/(1/N)
where N is the number of processors. This of course reduces to just N.
This could sound like a subjective question, but what I am looking for are specific instances, which you could have encountered related to this.
How to make code, cache effective/cache friendly (more cache hits, as few cache misses as possible)? From both perspectives, data cache & program cache (instruction cache),
i.e. what things in one's code, related to data structures and code constructs, should one take care of to make it cache effective.
Are there any particular data structures one must use/avoid, or is there a particular way of accessing the members of that structure etc... to make code cache effective.
Are there any program constructs (if, for, switch, break, goto,...), code-flow (for inside an if, if inside a for, etc ...) one should follow/avoid in this matter?
I am looking forward to hearing individual experiences related to making cache efficient code in general. It can be any programming language (C, C++, Assembly, ...), any hardware target (ARM, Intel, PowerPC, ...), any OS (Windows, Linux,S ymbian, ...), etc..
The variety will help to better to understand it deeply.
The cache is there to reduce the number of times the CPU would stall waiting for a memory request to be fulfilled (avoiding the memory latency), and as a second effect, possibly to reduce the overall amount of data that needs to be transfered (preserving memory bandwidth).
Techniques for avoiding suffering from memory fetch latency is typically the first thing to consider, and sometimes helps a long way. The limited memory bandwidth is also a limiting factor, particularly for multicores and multithreaded applications where many threads wants to use the memory bus. A different set of techniques help addressing the latter issue.
Improving spatial locality means that you ensure that each cache line is used in full once it has been mapped to a cache. When we have looked at various standard benchmarks, we have seen that a surprising large fraction of those fail to use 100% of the fetched cache lines before the cache lines are evicted.
Improving cache line utilization helps in three respects:
It tends to fit more useful data in the cache, essentially increasing the effective cache size.
It tends to fit more useful data in the same cache line, increasing the likelyhood that requested data can be found in the cache.
It reduces the memory bandwidth requirements, as there will be fewer fetches.
Common techniques are:
Use smaller data types
Organize your data to avoid alignment holes (sorting your struct members by decreasing size is one way)
Beware of the standard dynamic memory allocator, which may introduce holes and spread your data around in memory as it warms up.
Make sure all adjacent data is actually used in the hot loops. Otherwise, consider breaking up data structures into hot and cold components, so that the hot loops use hot data.
avoid algorithms and datastructures that exhibit irregular access patterns, and favor linear datastructures.
We should also note that there are other ways to hide memory latency than using caches.
Modern CPU:s often have one or more hardware prefetchers. They train on the misses in a cache and try to spot regularities. For instance, after a few misses to subsequent cache lines, the hw prefetcher will start fetching cache lines into the cache, anticipating the application's needs. If you have a regular access pattern, the hardware prefetcher is usually doing a very good job. And if your program doesn't display regular access patterns, you may improve things by adding prefetch instructions yourself.
Regrouping instructions in such a way that those that always miss in the cache occur close to each other, the CPU can sometimes overlap these fetches so that the application only sustain one latency hit (Memory level parallelism).
To reduce the overall memory bus pressure, you have to start addressing what is called temporal locality. This means that you have to reuse data while it still hasn't been evicted from the cache.
Merging loops that touch the same data (loop fusion), and employing rewriting techniques known as tiling or blocking all strive to avoid those extra memory fetches.
While there are some rules of thumb for this rewrite exercise, you typically have to carefully consider loop carried data dependencies, to ensure that you don't affect the semantics of the program.
These things are what really pays off in the multicore world, where you typically wont see much of throughput improvements after adding the second thread.
I can't believe there aren't more answers to this. Anyway, one classic example is to iterate a multidimensional array "inside out":
pseudocode
for (i = 0 to size)
for (j = 0 to size)
do something with ary[j][i]
The reason this is cache inefficient is because modern CPUs will load the cache line with "near" memory addresses from main memory when you access a single memory address. We are iterating through the "j" (outer) rows in the array in the inner loop, so for each trip through the inner loop, the cache line will cause to be flushed and loaded with a line of addresses that are near to the [j][i] entry. If this is changed to the equivalent:
for (i = 0 to size)
for (j = 0 to size)
do something with ary[i][j]
It will run much faster.
The basic rules are actually fairly simple. Where it gets tricky is in how they apply to your code.
The cache works on two principles: Temporal locality and spatial locality.
The former is the idea that if you recently used a certain chunk of data, you'll probably need it again soon. The latter means that if you recently used the data at address X, you'll probably soon need address X+1.
The cache tries to accomodate this by remembering the most recently used chunks of data. It operates with cache lines, typically sized 128 byte or so, so even if you only need a single byte, the entire cache line that contains it gets pulled into the cache. So if you need the following byte afterwards, it'll already be in the cache.
And this means that you'll always want your own code to exploit these two forms of locality as much as possible. Don't jump all over memory. Do as much work as you can on one small area, and then move on to the next, and do as much work there as you can.
A simple example is the 2D array traversal that 1800's answer showed. If you traverse it a row at a time, you're reading the memory sequentially. If you do it column-wise, you'll read one entry, then jump to a completely different location (the start of the next row), read one entry, and jump again. And when you finally get back to the first row, it will no longer be in the cache.
The same applies to code. Jumps or branches mean less efficient cache usage (because you're not reading the instructions sequentially, but jumping to a different address). Of course, small if-statements probably won't change anything (you're only skipping a few bytes, so you'll still end up inside the cached region), but function calls typically imply that you're jumping to a completely different address that may not be cached. Unless it was called recently.
Instruction cache usage is usually far less of an issue though. What you usually need to worry about is the data cache.
In a struct or class, all members are laid out contiguously, which is good. In an array, all entries are laid out contiguously as well. In linked lists, each node is allocated at a completely different location, which is bad. Pointers in general tend to point to unrelated addresses, which will probably result in a cache miss if you dereference it.
And if you want to exploit multiple cores, it can get really interesting, as usually, only one CPU may have any given address in its L1 cache at a time. So if both cores constantly access the same address, it will result in constant cache misses, as they're fighting over the address.
I recommend reading the 9-part article What every programmer should know about memory by Ulrich Drepper if you're interested in how memory and software interact. It's also available as a 104-page PDF.
Sections especially relevant to this question might be Part 2 (CPU caches) and Part 5 (What programmers can do - cache optimization).
Apart from data access patterns, a major factor in cache-friendly code is data size. Less data means more of it fits into the cache.
This is mainly a factor with memory-aligned data structures. "Conventional" wisdom says data structures must be aligned at word boundaries because the CPU can only access entire words, and if a word contains more than one value, you have to do extra work (read-modify-write instead of a simple write). But caches can completely invalidate this argument.
Similarly, a Java boolean array uses an entire byte for each value in order to allow operating on individual values directly. You can reduce the data size by a factor of 8 if you use actual bits, but then access to individual values becomes much more complex, requiring bit shift and mask operations (the BitSet class does this for you). However, due to cache effects, this can still be considerably faster than using a boolean[] when the array is large. IIRC I once achieved a speedup by a factor of 2 or 3 this way.
The most effective data structure for a cache is an array. Caches work best, if your data structure is laid out sequentially as CPUs read entire cache lines (usually 32 bytes or more) at once from main memory.
Any algorithm which accesses memory in random order trashes the caches because it always needs new cache lines to accomodate the randomly accessed memory. On the other hand an algorithm, which runs sequentially through an array is best because:
It gives the CPU a chance to read-ahead, e.g. speculatively put more memory into the cache, which will be accessed later. This read-ahead gives a huge performance boost.
Running a tight loop over a large array also allows the CPU to cache the code executing in the loop and in most cases allows you to execute an algorithm entirely from cache memory without having to block for external memory access.
One example I saw used in a game engine was to move data out of objects and into their own arrays. A game object that was subject to physics might have a lot of other data attached to it as well. But during the physics update loop all the engine cared about was data about position, speed, mass, bounding box, etc. So all of that was placed into its own arrays and optimized as much as possible for SSE.
So during the physics loop the physics data was processed in array order using vector math. The game objects used their object ID as the index into the various arrays. It was not a pointer because pointers could become invalidated if the arrays had to be relocated.
In many ways this violated object-oriented design patterns but it made the code a lot faster by placing data close together that needed to be operated on in the same loops.
This example is probably out of date because I expect most modern games use a prebuilt physics engine like Havok.
A remark to the "classic example" by user 1800 INFORMATION (too long for a comment)
I wanted to check the time differences for two iteration orders ( "outter" and "inner"), so I made a simple experiment with a large 2D array:
measure::start();
for ( int y = 0; y < N; ++y )
for ( int x = 0; x < N; ++x )
sum += A[ x + y*N ];
measure::stop();
and the second case with the for loops swapped.
The slower version ("x first") was 0.88sec and the faster one, was 0.06sec. That's the power of caching :)
I used gcc -O2 and still the loops were not optimized out. The comment by Ricardo that "most of the modern compilers can figure this out by itselves" does not hold
Only one post touched on it, but a big issue comes up when sharing data between processes. You want to avoid having multiple processes attempting to modify the same cache line simultaneously. Something to look out for here is "false" sharing, where two adjacent data structures share a cache line and modifications to one invalidates the cache line for the other. This can cause cache lines to unnecessarily move back and forth between processor caches sharing the data on a multiprocessor system. A way to avoid it is to align and pad data structures to put them on different lines.
I can answer (2) by saying that in the C++ world, linked lists can easily kill the CPU cache. Arrays are a better solution where possible. No experience on whether the same applies to other languages, but it's easy to imagine the same issues would arise.
Cache is arranged in "cache lines" and (real) memory is read from and written to in chunks of this size.
Data structures that are contained within a single cache-line are therefore more efficient.
Similarly, algorithms which access contiguous memory blocks will be more efficient than algorithms which jump through memory in a random order.
Unfortunately the cache line size varies dramatically between processors, so there's no way to guarantee that a data structure that's optimal on one processor will be efficient on any other.
To ask how to make a code, cache effective-cache friendly and most of the other questions , is usually to ask how to Optimize a program, that's because the cache has such a huge impact on performances that any optimized program is one that is cache effective-cache friendly.
I suggest reading about Optimization, there are some good answers on this site.
In terms of books, I recommend on Computer Systems: A Programmer's Perspective which has some fine text about the proper usage of the cache.
(b.t.w - as bad as a cache-miss can be, there is worse - if a program is paging from the hard-drive...)
There has been a lot of answers on general advices like data structure selection, access pattern, etc. Here I would like to add another code design pattern called software pipeline that makes use of active cache management.
The idea is borrow from other pipelining techniques, e.g. CPU instruction pipelining.
This type of pattern best applies to procedures that
could be broken down to reasonable multiple sub-steps, S[1], S[2], S[3], ... whose execution time is roughly comparable with RAM access time (~60-70ns).
takes a batch of input and do aforementioned multiple steps on them to get result.
Let's take a simple case where there is only one sub-procedure.
Normally the code would like:
def proc(input):
return sub-step(input))
To have better performance, you might want to pass multiple inputs to the function in a batch so you amortize function call overhead and also increases code cache locality.
def batch_proc(inputs):
results = []
for i in inputs:
// avoids code cache miss, but still suffer data(inputs) miss
results.append(sub-step(i))
return res
However, as said earlier, if the execution of the step is roughly the same as RAM access time you can further improve the code to something like this:
def batch_pipelined_proc(inputs):
for i in range(0, len(inputs)-1):
prefetch(inputs[i+1])
# work on current item while [i+1] is flying back from RAM
results.append(sub-step(inputs[i-1]))
results.append(sub-step(inputs[-1]))
The execution flow would look like:
prefetch(1) ask CPU to prefetch input[1] into cache, where prefetch instruction takes P cycles itself and return, and in the background input[1] would arrive in cache after R cycles.
works_on(0) cold miss on 0 and works on it, which takes M
prefetch(2) issue another fetch
works_on(1) if P + R <= M, then inputs[1] should be in the cache already before this step, thus avoid a data cache miss
works_on(2) ...
There could be more steps involved, then you can design a multi-stage pipeline as long as the timing of the steps and memory access latency matches, you would suffer little code/data cache miss. However, this process needs to be tuned with many experiments to find out right grouping of steps and prefetch time. Due to its required effort, it sees more adoption in high performance data/packet stream processing. A good production code example could be found in DPDK QoS Enqueue pipeline design:
http://dpdk.org/doc/guides/prog_guide/qos_framework.html Chapter 21.2.4.3. Enqueue Pipeline.
More information could be found:
https://software.intel.com/en-us/articles/memory-management-for-optimal-performance-on-intel-xeon-phi-coprocessor-alignment-and
http://infolab.stanford.edu/~ullman/dragon/w06/lectures/cs243-lec13-wei.pdf
Besides aligning your structure and fields, if your structure if heap allocated you may want to use allocators that support aligned allocations; like _aligned_malloc(sizeof(DATA), SYSTEM_CACHE_LINE_SIZE); otherwise you may have random false sharing; remember that in Windows, the default heap has a 16 bytes alignment.
Write your program to take a minimal size. That is why it is not always a good idea to use -O3 optimisations for GCC. It takes up a larger size. Often, -Os is just as good as -O2. It all depends on the processor used though. YMMV.
Work with small chunks of data at a time. That is why a less efficient sorting algorithms can run faster than quicksort if the data set is large. Find ways to break up your larger data sets into smaller ones. Others have suggested this.
In order to help you better exploit instruction temporal/spatial locality, you may want to study how your code gets converted in to assembly. For example:
for(i = 0; i < MAX; ++i)
for(i = MAX; i > 0; --i)
The two loops produce different codes even though they are merely parsing through an array. In any case, your question is very architecture specific. So, your only way to tightly control cache use is by understanding how the hardware works and optimising your code for it.