Display list vs. VAO performance - performance

I recently implemented functionality in my rendering engine to make it able to compile models into either display lists or VAOs based on a runtime setting, so that I can compare the two to each other.
I'd generally prefer to use VAOs, since I can make multiple VAOs sharing actual vertex data buffers (and also since they aren't deprecated), but I find them to actually perform worse than display lists on my nVidia (GTX 560) hardware. (I want to keep supporting display lists anyway to support older hardware/drivers, however, so there's no real loss in keeping the code for handling them.)
The difference is not huge, but it is certainly measurable. As an example, at a point in the engine state where I can consistently measure my drawing loop using VAOs to take, on a rather consistent average, about 10.0 ms to complete a cycle, I can switch to display lists and observe that cycle time decrease to about 9.1 ms on a similarly consistent average. Consistent, here, means that a cycle normally deviates less than ±0.2 ms, far less than the difference.
The only thing that changes between these settings is the drawing code of a normal mesh. It changes from the VAO code whose OpenGL calls look simply thusly...
glBindVertexArray(id);
glDrawElements(GL_TRIANGLES, num, GL_UNSIGNED_SHORT, NULL); // Using an index array in the VAO
... to the display-list code which looks as follows:
glCallList(id);
Both code paths apply other states as well for various models, of course, but that happens in the exact same manner, so those should be the only differences. I've made explicitly sure to not unbind the VAO unnecessarily between draw calls, as that, too, turned out to perform measurably worse.
Is this behavior to be expected? I had expected VAOs to perform better or at least equally to display lists, since they are more modern and not deprecated. On the other hand, I've been reading on the webs that nVidia's implementation has particularly well optimized display lists and all, so I'm thinking perhaps their VAO implementation might still be lagging behind. Has anyone else got findings that match (or contradict) mine?
Otherwise, could I be doing something wrong? Are there any known circumstances that make VAOs perform worse than they should, on nVidia hardware or in general?
For reference, I've tried the same differences on an Intel HD Graphics (Ironlake) as well, and there it turned out that using VAOs performed just as well as simply rendering directly from memory, while display lists were much worse than either. I wish I had AMD hardware to try on, but I don't.

Related

Detect whether a Quartz Composition in a QCView will be rendered through software or hardware

I have a feeling there are combinations of Cocoa Quartz Compositions and GPUs which can't be handled by the GPU and which fall back on the software renderer, even if Core Image is "accelerated" normally. How would I detect such a situation?
Or more generally, how do I detect that a machine is too underpowered to handle a certain composition of a certain size, without actually playing the composition and measuring the FPS?
(Measuring the FPS through playing the composition in a hidden window is unlikely to work, since the QCView might detect that situation and optimise away the whole operation, or parts thereof. And even if it didn't do that today it might start doing that with the next update from Apple - it'd be an unreliable solution.)
Update: to be thorough I did write some code to test render the composition at full resolution in an ordered out but properly sized window, trying to force the render to happen with [self startRendering];[self snapshotImage];[self stopRendering];. This took an amount of time which looked reasonable at first, until it turned out the slow machine was faster at running this test than the fast one. ;) In reality the slow machine renders the composition at a measly 2.24 FPS vs 27 FPS on the fast machine.
I'm guessing you're asking so that you can make a simpler fallback animation for weaker systems?
One option may be to check the user's hardware string as is mentioned here:
GPU Chipset Detection.
glGetString can return GL_VENDOR, GL_RENDERER, GL_VERSION, or GL_EXTENSIONS. You could theoretically use GL_VENDOR to identify Intel GMA's as too slow, or compare GL_RENDERER to a list of known poor-performing GPUs. If you're writing code for 10.6+ only, you only have to compare to GPUs used in Intel Macs, so the list shouldn't be too long.
This might not be quite the elegant solution you're looking for, but it should do the trick. I would also provide the user with an override to choose the higher or lower quality graphics if they wish.

Why not use GDI to repeatedly fill a window with RGB data from an array?

This is a follow-up to this question. I'm currently writing a simple game and am looking for the fastest way to (repeatedly) display an array of RGB data in a Win32 window, without flickering or other artifacts.
Several different approaches were recommended in the answers to the previous question, but there was no consensus on which would be the fastest. So, I threw together a test program. The code simply displays a framebuffer on the screen repeatedly, as fast as possible.
These are the results I obtained, for 32-bit data running in a 32-bit video mode - they may surprise some people:
- Direct3D (1): 500 fps
- Direct3D (2): 650 fps
- DirectDraw (3): 1100 fps
- DirectDraw (4): 800 fps
- GDI (SetDIBitsToDevice): 2000 fps
Given these figures:
Why are many people adamant that GDI is simply too slow for this operation?
Is there any reason to prefer DirectDraw or Direct3D over SetDIBitsToDevice?
Here is a brief summary of the calls made by each of the Direct* codepaths. If anyone knows a more efficient way to use DirectDraw/Direct3D, please comment.
1. CreateTexture(D3DUSAGE_DYNAMIC, D3DPOOL_DEFAULT);
LockRect(); memcpy(); UnlockRect(); DrawPrimitive()
2. CreateTexture(0, D3DPOOL_SYSTEMMEM); CreateTexture(0, D3DPOOL_DEFAULT);
LockRect(); memcpy(); UnlockRect(); UpdateTexture(); DrawPrimitive()
3. CreateSurface(); SetSurfaceDesc(lpSurface = &frameBuffer[0]);
memcpy(); primarySurface->Blt();
4. CreateSurface();
Lock(); memcpy(); Unlock(); primarySurface->Blt();
There are a couple of things to keep in mind here. First of all, a lot of "common knowledge" is based on some facts that no longer really apply.
In the days of AGP, when the CPU talked directly to the GPU, it always used the base PCI protocol, which happened at the "1x" rate (always and inevitably). AGX 2x/4x/8x only applied when the GPU was taking to the memory controller directly. In other words, depending on when you looked, it was up to 8 times as fast to have the GPU load a texture from memory as it was for the CPU to send the same data directly to the GPU. Of course, the CPU also had a great deal more bandwidth to memory than the PCI bus supported.
When things switched to PCI-E, however, that changed completely. While there can be differences in bandwidth depending on path, there's no general rule that memory->GPU will be faster than CPU->GPU. The one generalization that's (mostly) safe is that if you have a dedicated graphics card, then the GPU will almost always have more bandwidth to the memory on the graphics card than it does to main memory on the motherboard.
In your case, that doesn't matter much though -- you're talking about moving data from CPU space to GPU space regardless. The main speed difference with using DirectX (or OpenGL) happens when you keep all (or most) of the computation on the GPU, and avoid using the CPU (or main memory) at all. They don't (now that AGP is history) provide any substantial improvement in memory->display bandwidth.
Jerry Coffin makes some good points. The thing to bear in mind is what the DI stands for in SetDIBitsToDevice. It stands for Device Independent. Which means you were ALWAYS at the mercy of drivers. Some drivers used to be complete rubbish and it affected the performance massively. DirectDraw suffered from similar issues as well ... but you also had access to the hardware blitters so it was generally more useful. IHVs also tended to put more time in to writing proper drivers for DirectDraw because of its gaming association. Who wants to be the bottom of the performance pile when the hardware is quite capable of doing better?
These days many graphics cards can accept the bit data directly so no conversion happens. If it does need to be swizzled this is also INCREDIBLY quick in this day and age.
The reason your Direct3D performance is so terrible, by comparison, is that Direct3D, by nature of the fact it is meant to be used totally internally to the GPU, uses odd and complex formats to improve cache performance and so forth.
Couple that with the fact that you aren't testing like for like (with DDraw and D3D) by creating a texture/surface, locking it, copying, unlocking and then drawing over the back buffer (via various methods). To get best performance you'd be best off directly locking the backbuffer using a DISCARD lock then memcpy'ing directly into the returned buffer before unlocking. This will bring your performance much closer to the SetDIBitsToDevice. I still would expect D3D to be slower than DDraw, however, for the reasons outlined above.
The reason you will hear people trounce on GDI is that it used to just be old windows API calls. The newer versions of it (that were called GDI+ when I last looked at em) are actually just an API placed on top of DirectX calls. So using GDI may seem fairly simple programming wise at times, but adding a layer between things always slows things down. As mentioned in the response from Jerry Coffin, your examples are about moving the data, and that is the slow time. I am a bit surprised that DirectX is that much slower though but I can not be much more help with out digging through the DirectX documentation (which has been pretty awesome for quite some time really.. Might want to check out www.codesampler.com. I have always found good starting places from him and actually, while I may be insane for saying this, I would swear the improvements to the DirectX SDK in doc and examples were done based on this guys work!)
As for the DirectDraw vs Direct3D (and not the GDI calls) discussion. I would say go to Direct3D. I believe DirectDraw has been deprecated since 8.0 or so, and 9.0 has been around for quite a long while. And at the end of the day all of DirectX is 3D, it just varies on the levels of helpful 2D apis that are around, but you may find you can do some very interesting things in a 2D environment when you are actually using 3D space. (I had a pretty neat randomly generated lightning weapon for a space invaders clone at one time :))
Anywho, hope this helped!
PS: It should be noted that DirectX is not always the fastest. For keyboard input (unless this has changed in 10 or 11) it has pretty much always been recommended to use the windows events.. as DirectInput was actually just a wrapper for that system!.. XInput however is -awesome-!!

Site on OpenGL call performance

I'm searching for reliable data on OpenGL's functions performance. A site that could for example:
...answer me how much more efficient is using glInterleavedArrays compared to gl*Pointer based implementation with strides, or without them. If applicable, show the comparisions on nVidia vs. ATI cards vs. embedded systems.
...answer me how much of a boost is gained in using VBO's vs. non-buffered data in the cases of static, dynamic and stream data.
I'd like to find a site that has "no-bullshit" performance data, not just vague statements like "glInterleavedArrays are usually faster than direct gl*Pointer usage".
Is there such a dream-site? Or at least somewhere where I can get answers to the forementioned questions?
(yes, I know that nothing will beat hand-profiling, but the fact that something works faster on my machine, doesn't mean it's faster generally on all cards...)
It's more about application level benchmarking than measuring performance of individual features, but it might be possible to learn something from specviewperf, especially if it's possible to discover more about what OpenGL mode each benchmark uses to perform it's rendering. The benchmark seems to include some options to tweak usage of display lists, vertex arrays etc, but I don't think SPECs published results go into any analysis of the effects of changing these from the defaults. They don't seem to have any VBO coverage yet.

Performance optimization strategies of last resort [closed]

Closed. This question needs to be more focused. It is not currently accepting answers.
Want to improve this question? Update the question so it focuses on one problem only by editing this post.
Closed 9 years ago.
Improve this question
There are plenty of performance questions on this site already, but it occurs to me that almost all are very problem-specific and fairly narrow. And almost all repeat the advice to avoid premature optimization.
Let's assume:
the code already is working correctly
the algorithms chosen are already optimal for the circumstances of the problem
the code has been measured, and the offending routines have been isolated
all attempts to optimize will also be measured to ensure they do not make matters worse
What I am looking for here is strategies and tricks to squeeze out up to the last few percent in a critical algorithm when there is nothing else left to do but whatever it takes.
Ideally, try to make answers language agnostic, and indicate any down-sides to the suggested strategies where applicable.
I'll add a reply with my own initial suggestions, and look forward to whatever else the Stack Overflow community can think of.
OK, you're defining the problem to where it would seem there is not much room for improvement. That is fairly rare, in my experience. I tried to explain this in a Dr. Dobbs article in November 1993, by starting from a conventionally well-designed non-trivial program with no obvious waste and taking it through a series of optimizations until its wall-clock time was reduced from 48 seconds to 1.1 seconds, and the source code size was reduced by a factor of 4. My diagnostic tool was this. The sequence of changes was this:
The first problem found was use of list clusters (now called "iterators" and "container classes") accounting for over half the time. Those were replaced with fairly simple code, bringing the time down to 20 seconds.
Now the largest time-taker is more list-building. As a percentage, it was not so big before, but now it is because the bigger problem was removed. I find a way to speed it up, and the time drops to 17 seconds.
Now it is harder to find obvious culprits, but there are a few smaller ones that I can do something about, and the time drops to 13 sec.
Now I seem to have hit a wall. The samples are telling me exactly what it is doing, but I can't seem to find anything that I can improve. Then I reflect on the basic design of the program, on its transaction-driven structure, and ask if all the list-searching that it is doing is actually mandated by the requirements of the problem.
Then I hit upon a re-design, where the program code is actually generated (via preprocessor macros) from a smaller set of source, and in which the program is not constantly figuring out things that the programmer knows are fairly predictable. In other words, don't "interpret" the sequence of things to do, "compile" it.
That redesign is done, shrinking the source code by a factor of 4, and the time is reduced to 10 seconds.
Now, because it's getting so quick, it's hard to sample, so I give it 10 times as much work to do, but the following times are based on the original workload.
More diagnosis reveals that it is spending time in queue-management. In-lining these reduces the time to 7 seconds.
Now a big time-taker is the diagnostic printing I had been doing. Flush that - 4 seconds.
Now the biggest time-takers are calls to malloc and free. Recycle objects - 2.6 seconds.
Continuing to sample, I still find operations that are not strictly necessary - 1.1 seconds.
Total speedup factor: 43.6
Now no two programs are alike, but in non-toy software I've always seen a progression like this. First you get the easy stuff, and then the more difficult, until you get to a point of diminishing returns. Then the insight you gain may well lead to a redesign, starting a new round of speedups, until you again hit diminishing returns. Now this is the point at which it might make sense to wonder whether ++i or i++ or for(;;) or while(1) are faster: the kinds of questions I see so often on Stack Overflow.
P.S. It may be wondered why I didn't use a profiler. The answer is that almost every one of these "problems" was a function call site, which stack samples pinpoint. Profilers, even today, are just barely coming around to the idea that statements and call instructions are more important to locate, and easier to fix, than whole functions.
I actually built a profiler to do this, but for a real down-and-dirty intimacy with what the code is doing, there's no substitute for getting your fingers right in it. It is not an issue that the number of samples is small, because none of the problems being found are so tiny that they are easily missed.
ADDED: jerryjvl requested some examples. Here is the first problem. It consists of a small number of separate lines of code, together taking over half the time:
/* IF ALL TASKS DONE, SEND ITC_ACKOP, AND DELETE OP */
if (ptop->current_task >= ILST_LENGTH(ptop->tasklist){
. . .
/* FOR EACH OPERATION REQUEST */
for ( ptop = ILST_FIRST(oplist); ptop != NULL; ptop = ILST_NEXT(oplist, ptop)){
. . .
/* GET CURRENT TASK */
ptask = ILST_NTH(ptop->tasklist, ptop->current_task)
These were using the list cluster ILST (similar to a list class). They are implemented in the usual way, with "information hiding" meaning that the users of the class were not supposed to have to care how they were implemented. When these lines were written (out of roughly 800 lines of code) thought was not given to the idea that these could be a "bottleneck" (I hate that word). They are simply the recommended way to do things. It is easy to say in hindsight that these should have been avoided, but in my experience all performance problems are like that. In general, it is good to try to avoid creating performance problems. It is even better to find and fix the ones that are created, even though they "should have been avoided" (in hindsight). I hope that gives a bit of the flavor.
Here is the second problem, in two separate lines:
/* ADD TASK TO TASK LIST */
ILST_APPEND(ptop->tasklist, ptask)
. . .
/* ADD TRANSACTION TO TRANSACTION QUEUE */
ILST_APPEND(trnque, ptrn)
These are building lists by appending items to their ends. (The fix was to collect the items in arrays, and build the lists all at once.) The interesting thing is that these statements only cost (i.e. were on the call stack) 3/48 of the original time, so they were not in fact a big problem at the beginning. However, after removing the first problem, they cost 3/20 of the time and so were now a "bigger fish". In general, that's how it goes.
I might add that this project was distilled from a real project I helped on. In that project, the performance problems were far more dramatic (as were the speedups), such as calling a database-access routine within an inner loop to see if a task was finished.
REFERENCE ADDED:
The source code, both original and redesigned, can be found in www.ddj.com, for 1993, in file 9311.zip, files slug.asc and slug.zip.
EDIT 2011/11/26:
There is now a SourceForge project containing source code in Visual C++ and a blow-by-blow description of how it was tuned. It only goes through the first half of the scenario described above, and it doesn't follow exactly the same sequence, but still gets a 2-3 order of magnitude speedup.
Suggestions:
Pre-compute rather than re-calculate: any loops or repeated calls that contain calculations that have a relatively limited range of inputs, consider making a lookup (array or dictionary) that contains the result of that calculation for all values in the valid range of inputs. Then use a simple lookup inside the algorithm instead.
Down-sides: if few of the pre-computed values are actually used this may make matters worse, also the lookup may take significant memory.
Don't use library methods: most libraries need to be written to operate correctly under a broad range of scenarios, and perform null checks on parameters, etc. By re-implementing a method you may be able to strip out a lot of logic that does not apply in the exact circumstance you are using it.
Down-sides: writing additional code means more surface area for bugs.
Do use library methods: to contradict myself, language libraries get written by people that are a lot smarter than you or me; odds are they did it better and faster. Do not implement it yourself unless you can actually make it faster (i.e.: always measure!)
Cheat: in some cases although an exact calculation may exist for your problem, you may not need 'exact', sometimes an approximation may be 'good enough' and a lot faster in the deal. Ask yourself, does it really matter if the answer is out by 1%? 5%? even 10%?
Down-sides: Well... the answer won't be exact.
When you can't improve the performance any more - see if you can improve the perceived performance instead.
You may not be able to make your fooCalc algorithm faster, but often there are ways to make your application seem more responsive to the user.
A few examples:
anticipating what the user is going
to request and start working on that
before then
displaying results as
they come in, instead of all at once
at the end
Accurate progress meter
These won't make your program faster, but it might make your users happier with the speed you have.
I spend most of my life in just this place. The broad strokes are to run your profiler and get it to record:
Cache misses. Data cache is the #1 source of stalls in most programs. Improve cache hit rate by reorganizing offending data structures to have better locality; pack structures and numerical types down to eliminate wasted bytes (and therefore wasted cache fetches); prefetch data wherever possible to reduce stalls.
Load-hit-stores. Compiler assumptions about pointer aliasing, and cases where data is moved between disconnected register sets via memory, can cause a certain pathological behavior that causes the entire CPU pipeline to clear on a load op. Find places where floats, vectors, and ints are being cast to one another and eliminate them. Use __restrict liberally to promise the compiler about aliasing.
Microcoded operations. Most processors have some operations that cannot be pipelined, but instead run a tiny subroutine stored in ROM. Examples on the PowerPC are integer multiply, divide, and shift-by-variable-amount. The problem is that the entire pipeline stops dead while this operation is executing. Try to eliminate use of these operations or at least break them down into their constituent pipelined ops so you can get the benefit of superscalar dispatch on whatever the rest of your program is doing.
Branch mispredicts. These too empty the pipeline. Find cases where the CPU is spending a lot of time refilling the pipe after a branch, and use branch hinting if available to get it to predict correctly more often. Or better yet, replace branches with conditional-moves wherever possible, especially after floating point operations because their pipe is usually deeper and reading the condition flags after fcmp can cause a stall.
Sequential floating-point ops. Make these SIMD.
And one more thing I like to do:
Set your compiler to output assembly listings and look at what it emits for the hotspot functions in your code. All those clever optimizations that "a good compiler should be able to do for you automatically"? Chances are your actual compiler doesn't do them. I've seen GCC emit truly WTF code.
Throw more hardware at it!
More suggestions:
Avoid I/O: Any I/O (disk, network, ports, etc.) is
always going to be far slower than any code that is
performing calculations, so get rid of any I/O that you do
not strictly need.
Move I/O up-front: Load up all the data you are going
to need for a calculation up-front, so that you do not
have repeated I/O waits within the core of a critical
algorithm (and maybe as a result repeated disk seeks, when
loading all the data in one hit may avoid seeking).
Delay I/O: Do not write out your results until the
calculation is over, store them in a data structure and
then dump that out in one go at the end when the hard work
is done.
Threaded I/O: For those daring enough, combine 'I/O
up-front' or 'Delay I/O' with the actual calculation by
moving the loading into a parallel thread, so that while
you are loading more data you can work on a calculation on
the data you already have, or while you calculate the next
batch of data you can simultaneously write out the results
from the last batch.
Since many of the performance problems involve database issues, I'll give you some specific things to look at when tuning queries and stored procedures.
Avoid cursors in most databases. Avoid looping as well. Most of the time, data access should be set-based, not record by record processing. This includes not reusing a single record stored procedure when you want to insert 1,000,000 records at once.
Never use select *, only return the fields you actually need. This is especially true if there are any joins as the join fields will be repeated and thus cause unnecesary load on both the server and the network.
Avoid the use of correlated subqueries. Use joins (including joins to derived tables where possible) (I know this is true for Microsoft SQL Server, but test the advice when using a differnt backend).
Index, index, index. And get those stats updated if applicable to your database.
Make the query sargable. Meaning avoid things which make it impossible to use the indexes such as using a wildcard in the first character of a like clause or a function in the join or as the left part of a where statement.
Use correct data types. It is faster to do date math on a date field than to have to try to convert a string datatype to a date datatype, then do the calculation.
Never put a loop of any kind into a trigger!
Most databases have a way to check how the query execution will be done. In Microsoft SQL Server this is called an execution plan. Check those first to see where problem areas lie.
Consider how often the query runs as well as how long it takes to run when determining what needs to be optimized. Sometimes you can gain more perfomance from a slight tweak to a query that runs millions of times a day than you can from wiping time off a long_running query that only runs once a month.
Use some sort of profiler tool to find out what is really being sent to and from the database. I can remember one time in the past where we couldn't figure out why the page was so slow to load when the stored procedure was fast and found out through profiling that the webpage was asking for the query many many times instead of once.
The profiler will also help you to find who are blocking who. Some queries that execute quickly while running alone may become really slow due to locks from other queries.
The single most important limiting factor today is the limited memory bandwitdh. Multicores are just making this worse, as the bandwidth is shared betwen cores. Also, the limited chip area devoted to implementing caches is also divided among the cores and threads, worsening this problem even more. Finally, the inter-chip signalling needed to keep the different caches coherent also increase with an increased number of cores. This also adds a penalty.
These are the effects that you need to manage. Sometimes through micro managing your code, but sometimes through careful consideration and refactoring.
A lot of comments already mention cache friendly code. There are at least two distinct flavors of this:
Avoid memory fetch latencies.
Lower memory bus pressure (bandwidth).
The first problem specifically has to do with making your data access patterns more regular, allowing the hardware prefetcher to work efficiently. Avoid dynamic memory allocation which spreads your data objects around in memory. Use linear containers instead of linked lists, hashes and trees.
The second problem has to do with improving data reuse. Alter your algorithms to work on subsets of your data that do fit in available cache, and reuse that data as much as possible while it is still in the cache.
Packing data tighter and making sure you use all data in cache lines in the hot loops, will help avoid these other effects, and allow fitting more useful data in the cache.
What hardware are you running on? Can you use platform-specific optimizations (like vectorization)?
Can you get a better compiler? E.g. switch from GCC to Intel?
Can you make your algorithm run in parallel?
Can you reduce cache misses by reorganizing data?
Can you disable asserts?
Micro-optimize for your compiler and platform. In the style of, "at an if/else, put the most common statement first"
Although I like Mike Dunlavey's answer, in fact it is a great answer indeed with supporting example, I think it could be expressed very simply thus:
Find out what takes the largest amounts of time first, and understand why.
It is the identification process of the time hogs that helps you understand where you must refine your algorithm. This is the only all-encompassing language agnostic answer I can find to a problem that's already supposed to be fully optimised. Also presuming you want to be architecture independent in your quest for speed.
So while the algorithm may be optimised, the implementation of it may not be. The identification allows you to know which part is which: algorithm or implementation. So whichever hogs the time the most is your prime candidate for review. But since you say you want to squeeze the last few % out, you might want to also examine the lesser parts, the parts that you have not examined that closely at first.
Lastly a bit of trial and error with performance figures on different ways to implement the same solution, or potentially different algorithms, can bring insights that help identify time wasters and time savers.
HPH,
asoudmove.
You should probably consider the "Google perspective", i.e. determine how your application can become largely parallelized and concurrent, which will inevitably also mean at some point to look into distributing your application across different machines and networks, so that it can ideally scale almost linearly with the hardware that you throw at it.
On the other hand, the Google folks are also known for throwing lots of manpower and resources at solving some of the issues in projects, tools and infrastructure they are using, such as for example whole program optimization for gcc by having a dedicated team of engineers hacking gcc internals in order to prepare it for Google-typical use case scenarios.
Similarly, profiling an application no longer means to simply profile the program code, but also all its surrounding systems and infrastructure (think networks, switches, server, RAID arrays) in order to identify redundancies and optimization potential from a system's point of view.
Inline routines (eliminate call/return and parameter pushing)
Try eliminating tests/switches with table look ups (if they're faster)
Unroll loops (Duff's device) to the point where they just fit in the CPU cache
Localize memory access so as not to blow your cache
Localize related calculations if the optimizer isn't already doing that
Eliminate loop invariants if the optimizer isn't already doing that
When you get to the point that you're using efficient algorithms its a question of what you need more speed or memory. Use caching to "pay" in memory for more speed or use calculations to reduce the memory footprint.
If possible (and more cost effective) throw hardware at the problem - faster CPU, more memory or HD could solve the problem faster then trying to code it.
Use parallelization if possible - run part of the code on multiple threads.
Use the right tool for the job. some programing languages create more efficient code, using managed code (i.e. Java/.NET) speed up development but native programing languages creates faster running code.
Micro optimize. Only were applicable you can use optimized assembly to speed small pieces of code, using SSE/vector optimizations in the right places can greatly increase performance.
Divide and conquer
If the dataset being processed is too large, loop over chunks of it. If you've done your code right, implementation should be easy. If you have a monolithic program, now you know better.
First of all, as mentioned in several prior answers, learn what bites your performance - is it memory or processor or network or database or something else. Depending on that...
...if it's memory - find one of the books written long time ago by Knuth, one of "The Art of Computer Programming" series. Most likely it's one about sorting and search - if my memory is wrong then you'll have to find out in which he talks about how to deal with slow tape data storage. Mentally transform his memory/tape pair into your pair of cache/main memory (or in pair of L1/L2 cache) respectively. Study all the tricks he describes - if you don's find something that solves your problem, then hire professional computer scientist to conduct a professional research. If your memory issue is by chance with FFT (cache misses at bit-reversed indexes when doing radix-2 butterflies) then don't hire a scientist - instead, manually optimize passes one-by-one until you're either win or get to dead end. You mentioned squeeze out up to the last few percent right? If it's few indeed you'll most likely win.
...if it's processor - switch to assembly language. Study processor specification - what takes ticks, VLIW, SIMD. Function calls are most likely replaceable tick-eaters. Learn loop transformations - pipeline, unroll. Multiplies and divisions might be replaceable / interpolated with bit shifts (multiplies by small integers might be replaceable with additions). Try tricks with shorter data - if you're lucky one instruction with 64 bits might turn out replaceable with two on 32 or even 4 on 16 or 8 on 8 bits go figure. Try also longer data - eg your float calculations might turn out slower than double ones at particular processor. If you have trigonometric stuff, fight it with pre-calculated tables; also keep in mind that sine of small value might be replaced with that value if loss of precision is within allowed limits.
...if it's network - think of compressing data you pass over it. Replace XML transfer with binary. Study protocols. Try UDP instead of TCP if you can somehow handle data loss.
...if it's database, well, go to any database forum and ask for advice. In-memory data-grid, optimizing query plan etc etc etc.
HTH :)
Caching! A cheap way (in programmer effort) to make almost anything faster is to add a caching abstraction layer to any data movement area of your program. Be it I/O or just passing/creation of objects or structures. Often it's easy to add caches to factory classes and reader/writers.
Sometimes the cache will not gain you much, but it's an easy method to just add caching all over and then disable it where it doesn't help. I've often found this to gain huge performance without having to micro-analyse the code.
I think this has already been said in a different way. But when you're dealing with a processor intensive algorithm, you should simplify everything inside the most inner loop at the expense of everything else.
That may seem obvious to some, but it's something I try to focus on regardless of the language I'm working with. If you're dealing with nested loops, for example, and you find an opportunity to take some code down a level, you can in some cases drastically speed up your code. As another example, there are the little things to think about like working with integers instead of floating point variables whenever you can, and using multiplication instead of division whenever you can. Again, these are things that should be considered for your most inner loop.
Sometimes you may find benefit of performing your math operations on an integer inside the inner loop, and then scaling it down to a floating point variable you can work with afterwards. That's an example of sacrificing speed in one section to improve the speed in another, but in some cases the pay off can be well worth it.
I've spent some time working on optimising client/server business systems operating over low-bandwidth and long-latency networks (e.g. satellite, remote, offshore), and been able to achieve some dramatic performance improvements with a fairly repeatable process.
Measure: Start by understanding the network's underlying capacity and topology. Talking to the relevant networking people in the business, and make use of basic tools such as ping and traceroute to establish (at a minimum) the network latency from each client location, during typical operational periods. Next, take accurate time measurements of specific end user functions that display the problematic symptoms. Record all of these measurements, along with their locations, dates and times. Consider building end-user "network performance testing" functionality into your client application, allowing your power users to participate in the process of improvement; empowering them like this can have a huge psychological impact when you're dealing with users frustrated by a poorly performing system.
Analyze: Using any and all logging methods available to establish exactly what data is being transmitted and received during the execution of the affected operations. Ideally, your application can capture data transmitted and received by both the client and the server. If these include timestamps as well, even better. If sufficient logging isn't available (e.g. closed system, or inability to deploy modifications into a production environment), use a network sniffer and make sure you really understand what's going on at the network level.
Cache: Look for cases where static or infrequently changed data is being transmitted repetitively and consider an appropriate caching strategy. Typical examples include "pick list" values or other "reference entities", which can be surprisingly large in some business applications. In many cases, users can accept that they must restart or refresh the application to update infrequently updated data, especially if it can shave significant time from the display of commonly used user interface elements. Make sure you understand the real behaviour of the caching elements already deployed - many common caching methods (e.g. HTTP ETag) still require a network round-trip to ensure consistency, and where network latency is expensive, you may be able to avoid it altogether with a different caching approach.
Parallelise: Look for sequential transactions that don't logically need to be issued strictly sequentially, and rework the system to issue them in parallel. I dealt with one case where an end-to-end request had an inherent network delay of ~2s, which was not a problem for a single transaction, but when 6 sequential 2s round trips were required before the user regained control of the client application, it became a huge source of frustration. Discovering that these transactions were in fact independent allowed them to be executed in parallel, reducing the end-user delay to very close to the cost of a single round trip.
Combine: Where sequential requests must be executed sequentially, look for opportunities to combine them into a single more comprehensive request. Typical examples include creation of new entities, followed by requests to relate those entities to other existing entities.
Compress: Look for opportunities to leverage compression of the payload, either by replacing a textual form with a binary one, or using actual compression technology. Many modern (i.e. within a decade) technology stacks support this almost transparently, so make sure it's configured. I have often been surprised by the significant impact of compression where it seemed clear that the problem was fundamentally latency rather than bandwidth, discovering after the fact that it allowed the transaction to fit within a single packet or otherwise avoid packet loss and therefore have an outsize impact on performance.
Repeat: Go back to the beginning and re-measure your operations (at the same locations and times) with the improvements in place, record and report your results. As with all optimisation, some problems may have been solved exposing others that now dominate.
In the steps above, I focus on the application related optimisation process, but of course you must ensure the underlying network itself is configured in the most efficient manner to support your application too. Engage the networking specialists in the business and determine if they're able to apply capacity improvements, QoS, network compression, or other techniques to address the problem. Usually, they will not understand your application's needs, so it's important that you're equipped (after the Analyse step) to discuss it with them, and also to make the business case for any costs you're going to be asking them to incur. I've encountered cases where erroneous network configuration caused the applications data to be transmitted over a slow satellite link rather than an overland link, simply because it was using a TCP port that was not "well known" by the networking specialists; obviously rectifying a problem like this can have a dramatic impact on performance, with no software code or configuration changes necessary at all.
Very difficult to give a generic answer to this question. It really depends on your problem domain and technical implementation. A general technique that is fairly language neutral: Identify code hotspots that cannot be eliminated, and hand-optimize assembler code.
Last few % is a very CPU and application dependent thing....
cache architectures differ, some chips have on-chip RAM
you can map directly, ARM's (sometimes) have a vector
unit, SH4's a useful matrix opcode. Is there a GPU -
maybe a shader is the way to go. TMS320's are very
sensitive to branches within loops (so separate loops and
move conditions outside if possible).
The list goes on.... But these sorts of things really are
the last resort...
Build for x86, and run Valgrind/Cachegrind against the code
for proper performance profiling. Or Texas Instruments'
CCStudio has a sweet profiler. Then you'll really know where
to focus...
Not nearly as in depth or complex as previous answers, but here goes:
(these are more beginner/intermediate level)
obvious: dry
run loops backwards so you're always comparing to 0 rather than a variable
use bitwise operators whenever you can
break repetitive code into modules/functions
cache objects
local variables have slight performance advantage
limit string manipulation as much as possible
Did you know that a CAT6 cable is capable of 10x better shielding off external inteferences than a default Cat5e UTP cable?
For any non-offline projects, while having best software and best hardware, if your throughoutput is weak, then that thin line is going to squeeze data and give you delays, albeit in milliseconds...
Also the maximum throughput is higher on CAT6 cables because there is a higher chance that you will actually receive a cable whose strands exist of cupper cores, instead of CCA, Cupper Cladded Aluminium, which is often fount in all your standard CAT5e cables.
I if you are facing lost packets, packet drops, then an increase in throughput reliability for 24/7 operation can make the difference that you may be looking for.
For those who seek the ultimate in home/office connection reliability, (and are willing to say NO to this years fastfood restaurants, at the end of the year you can there you can) gift yourself the pinnacle of LAN connectivity in the form of CAT7 cable from a reputable brand.
Impossible to say. It depends on what the code looks like. If we can assume that the code already exists, then we can simply look at it and figure out from that, how to optimize it.
Better cache locality, loop unrolling, Try to eliminate long dependency chains, to get better instruction-level parallelism. Prefer conditional moves over branches when possible. Exploit SIMD instructions when possible.
Understand what your code is doing, and understand the hardware it's running on. Then it becomes fairly simple to determine what you need to do to improve performance of your code. That's really the only truly general piece of advice I can think of.
Well, that, and "Show the code on SO and ask for optimization advice for that specific piece of code".
If better hardware is an option then definitely go for that. Otherwise
Check you are using the best compiler and linker options.
If hotspot routine in different library to frequent caller, consider moving or cloning it to the callers module. Eliminates some of the call overhead and may improve cache hits (cf how AIX links strcpy() statically into separately linked shared objects). This could of course decrease cache hits also, which is why one measure.
See if there is any possibility of using a specialized version of the hotspot routine. Downside is more than one version to maintain.
Look at the assembler. If you think it could be better, consider why the compiler did not figure this out, and how you could help the compiler.
Consider: are you really using the best algorithm? Is it the best algorithm for your input size?
The google way is one option "Cache it.. Whenever possible don't touch the disk"
Here are some quick and dirty optimization techniques I use. I consider this to be a 'first pass' optimization.
Learn where the time is spent Find out exactly what is taking the time. Is it file IO? Is it CPU time? Is it the network? Is it the Database? It's useless to optimize for IO if that's not the bottleneck.
Know Your Environment Knowing where to optimize typically depends on the development environment. In VB6, for example, passing by reference is slower than passing by value, but in C and C++, by reference is vastly faster. In C, it is reasonable to try something and do something different if a return code indicates a failure, while in Dot Net, catching exceptions are much slower than checking for a valid condition before attempting.
Indexes Build indexes on frequently queried database fields. You can almost always trade space for speed.
Avoid lookups Inside of the loop to be optimized, I avoid having to do any lookups. Find the offset and/or index outside of the loop and reuse the data inside.
Minimize IO try to design in a manner that reduces the number of times you have to read or write especially over a networked connection
Reduce Abstractions The more layers of abstraction the code has to work through, the slower it is. Inside the critical loop, reduce abstractions (e.g. reveal lower-level methods that avoid extra code)
Spawn Threads for projects with a user interface, spawning a new thread to preform slower tasks makes the application feel more responsive, although isn't.
Pre-process You can generally trade space for speed. If there are calculations or other intense operations, see if you can precompute some of the information before you're in the critical loop.
If you have a lot of highly parallel floating point math-especially single-precision-try offloading it to a graphics processor (if one is present) using OpenCL or (for NVidia chips) CUDA. GPUs have immense floating point computing power in their shaders, which is much greater than that of a CPU.
Adding this answer since I didnt see it included in all the others.
Minimize implicit conversion between types and sign:
This applies to C/C++ at least, Even if you already think you're free of conversions - sometimes its good to test adding compiler warnings around functions that require performance, especially watch-out for conversions within loops.
GCC spesific: You can test this by adding some verbose pragmas around your code,
#ifdef __GNUC__
# pragma GCC diagnostic push
# pragma GCC diagnostic error "-Wsign-conversion"
# pragma GCC diagnostic error "-Wdouble-promotion"
# pragma GCC diagnostic error "-Wsign-compare"
# pragma GCC diagnostic error "-Wconversion"
#endif
/* your code */
#ifdef __GNUC__
# pragma GCC diagnostic pop
#endif
I've seen cases where you can get a few percent speedup by reducing conversions raised by warnings like this.
In some cases I have a header with strict warnings that I keep included to prevent accidental conversions, however this is a trade-off since you may end up adding a lot of casts to quiet intentional conversions which may just make the code more cluttered for minimal gains.
Sometimes changing the layout of your data can help. In C, you might switch from an array or structures to a structure of arrays, or vice versa.
Tweak the OS and framework.
It may sound an overkill but think about it like this: Operating Systems and Frameworks are designed to do many things. Your application only does very specific things. If you could get the OS do to exactly what your application needs and have your application understand how the the framework (php,.net,java) works, you could get much better out of your hardware.
Facebook, for example, changed some kernel level thingys in Linux, changed how memcached works (for example they wrote a memcached proxy, and used udp instead of tcp).
Another example for this is Window2008. Win2K8 has a version were you can install just the basic OS needed to run X applicaions (e.g. Web-Apps, Server Apps). This reduces much of the overhead that the OS have on running processes and gives you better performance.
Of course, you should always throw in more hardware as the first step...

Why is GUI code so computationally expensive?

All you Stackoverflowers,
I was wondering why GUI code is responsible for sucking away many, many cpu cycles. In principle, the graphical rendering is far less complex than Doom (although most corporate GUIs will introduce lots of window dressing). The event handling layer is also seemingly a heavy cost, however, it seems that a well-written implementation should switch between contexts efficiently on modern processors with a lot of memory/cache.
If anybody has run a profiler on their big GUI application, or a common API itself, I'm interested in where the bottlenecks lie.
Possible explanations (that I imagine) may be:
High levels of abstraction between hardware and application interface
Lots of levels of indirection to the correct code to execute
Low priority (compared to other processes)
Misbehaving applications flooding API with calls
Excessive object orientation?
Complete poor design choices in API (not just issues, but design philosophy)
Some GUI frameworks are much better than others, so I'd like to hear varied perspectives. For example, the Unix/X11 system is much different than Windows and even than WinForms.
Edit: Now a community wiki - go for it. I have one more thing to add -- I'm an algorithms guy in school and would be interested if there are inefficient algorithms in GUI code and which they are. Then again, it's probably just the implementation overhead.
I've no idea generally, but I'd like to add another item to your list - font rendering and calculations. Finding vector glyphs in a font and converting them to bitmap representations with anti-aliasing is no small task. And often it needs to be done twice - first to calculate the width/height of the text for positioning, and then actually drawing the text at the right coordinates.
Also, most drawing code today relies on clipping mechanisms to update just a part of the GUI. So, if just one part needs to be redrawn, the code actually redraws the whole window behind the scenes, and then takes just the needed part to actually update.
Added:
In the comments I found this:
I'm also very interested in this. It can't be that the gui is rendered using only the cpu because if you don't have proper drivers for your gfx-card, desktop graphics render incredibly slow. If you have gfx-drivers however desktop-gfx go kinda fast but never as fast as a directx/opengl app.
Here's the deal as I understand it: every graphic card out there today supports a generic interface for drawing. I'm not sure if it's called "VESA", "SVGA", or if those are just old names from the past. Anyway, this interface involves doing everything through interrupts. For every pixel there is an interrupt call. Or something like that. The proper VGA driver however is able to take advantage of DMA and other enhancements that make the whole process WAY less CPU-intensive.
Added 2: Ah, and for OpenGL/DirectX - that's another feature of today's graphics cards. They are optimized for 3D operations in exclusive mode. That's why the speed. The normal GUI just utilizes basic 2D drawing procedures. So it gets to send the contents of the whole screen every time it wants an update. 3D applications however send a bunch of textures and triangle definitions to the VRAM (video-RAM) and then just reuse them for drawing. They just say something like "take the triangle set #38 with the texture set #25 and draw them". All these things are cached in the VRAM so this is again way faster.
I'm not sure, but I would suspect that the modern 3D-accelerated GUIs (Vista Aero, compiz on Linux, etc.) also might take advantage of this. They could send common bitmaps to the VGA up front and then just reuse them directly from the VRAM. Any application-drawn surfaces however would still need to be sent directly every time for updates.
Added 3: More ideas. :) The modern GUI's for Windows, Linux, etc. are widget-oriented (that's control-oriented for Windows speakers). The problem with this is that each widget has its own drawing code and associated drawing surface (more or less). When the window needs to get redrawn, it calls the drawing code for all its child-widgets, who in turn call the drawing code for their child-widgets, etc.. Every widget redraws its whole surface, even though some of it is obscured by other widgets. With above mentioned clipping techniques some of this drawn information is immediately discarded to reduce flickering and other artifacts. But still it's lots of manual drawing code that includes bitmap blitting, stretching, skewing, drawing lines, text, flood-filling, etc.. And all this gets translated to a series of putpixel calls that get filtered through clipping filters/masks and other stuff. Ah, yes, and alpha blending has also become popular today for nice effects which means even more work. So... yes, you could say this is because of lots of abstraction and indirection. But... could you really do it any better? I don't think so. Only 3D techniques might help, because they take advantage of GPU for alpha-calculations and clipping.
Let's begin by saying that writing libraries is much harder than writing a stand-alone code. The requirement that your abstraction be reusable in as many contexts as possible, including contexts which you haven't though of yet, makes the task challenging even for experienced programmers.
Amongst libraries, writing a GUI toolkit library is a famously difficult problem. This is because the programs which use GUI libraries range over a very wide variety of domains with very different needs. Mr Why and Martin DeMollo discussed the requirements placed of GUI libraries a little while ago.
Writing GUI widgets themselves is difficult because computer users are very sensitive minute details of the behavior of the interface. Non-native widget never feel right, don't they? In order to get non-native widget right -- in order to get any widget right, in fact -- you need to spend an inordinate amount of time tweaking the details of the behavior.
So, GUI are slow because of the inefficiencies introduced by the abstraction mechanisms used to create highly-reusable components, that added to shortness of time available to optimize the code once so much time has been spent just getting the behavior right.
Uhm, that's quite a lot.
The most simple but probably obvious answer is that the programmers behind these GUI apps, are really bad programmers. You can go along way in writing code which does the most bizarre things and it will be faster but few people seem to care how to do this or they deem it to be an expensive non-profitable time wasted effort.
To set things straight off-loading computations to the GPU won't necessarily fix any problems. The GPU is just like the CPU except it's less general purpose and more a data paralleled processor. It can do graphics computations exceptionally well. Whatever graphics API/OS and driver combination you have doesn't really matter that much... well OK, with Vista as an example, they changed the desktop composition engine. This engine is far better composting only that which has changed, and since the number one bottle neck for GUI apps is redrawing is a neat optimization strategy. This idea of virtualizing your computational needs and only update the smallest change every time.
Win32 sends WM_PAINT messages to windows when they need to be redrawn, this can be a result of windows occluding each other. However it's up to the window itself to figure out whats actually changed. More than so nothing did change or the change that was made was trivial enough so that it could have been just preformed on top of what ever top most surface you had.
This kind of graphics handling doesn't necessarily exist today. I would say that people have refrained from writing really efficient and virtualizing rendering solutions because the benefit/cost ration is rather low/high (bad).
Something Windows Presentation Foundation (WPF) does, which I think is far superior to most other GUI API is that it splits layout updates and rendering updates into two separate passes. And while WPF is managed code the rendering engine is not. What happens with rendering is that the managed WPF rendering engine builds a command queue (this is what DirectX and OpenGL does) which is then handed of to the native rendering engine. What's a bit more elegant here is that WPF will then try to retain any computation which didn't change the visual state. A trick if you may, where you avoid costly rendering calls for things that doesn't have to be rendered (virtualizing).
In contrast to WM_PAINT which tells a Win32 window to repaint itself a WPF app would check what parts of that window requires repainting and only repaint the smallest change.
Now WPF is not supreme, it's a solid effort from Microsoft but it's not the holy grail yet... the code which runs the pipeline could still be improved and the memory footprint of any managed app is still more than I would want. But I hope this is the kind of answer you are looking for.
WPF is able to do some things asynchronously rather decent, which is a huge deal if you wanna make a really responsive low-latency/low-cpu UI. Asynchronous operations is more than off-loading work on a different thread.
To summarize things slow and expensive GUI means too much repainting and the kind of repainting which is very expensive i.e. the entire surface area.
I does to some degree depend on the language. You might have noticed that Java and RealBasic applications are a fair bit slower than their C-based (C++, C#, Objective-C) counterparts.
However GUI applications are much more complex than command line apps. The Terminal window needs only to draw a simple window that doesn't support buttons.
There are also multiple loops for extra inputs and features.
I think that you can find some interesting thoughts on this topic in "Window System Design: If I had it to do over again in 2002" by James Gosling (the Java guy, also known for his work on pre-X11 windowing systems). Available online here[pdf].
The article focuses on the positive side (how to make it fast), not on the negative side (what's making it slow), but it is still a good read on the topic.

Resources