I know about the existance of question such as this one and this one. Let me explain.
Afet reading Joel's article Back to Basics and seeing many similar questions on SO, I've begun to wonder what are specific examples of situations where knowing stuff like C can make you a better high level programmer.
What I want to know is if there are many examples of this. Many times, the answer to this question is something like "Knowing C gives you a better feel of what's happening under the covers" or "You need a solid foundation for your program", and these answers don't have much meaning. I want to understand the different specific ways in which you will benefit from knowing low level concepts,
Joel gave a couple of examples: Binary databases vs XML, and strings. But two examples don't really justify learning C and/or Assembly. So my question is this: What specific examples are there of knowing C making you a better high level programmer?
My experience with teaching students and working with people who only studied high-level languages is that they tend to think at a certain high level of abstraction, and they assume that "everything comes for free". They can become very competent programmers, but eventually they have to deal with some code that has performance issues and then it comes to bite them.
When you work a lot with C, you do think about memory allocation. You often think about memory layout (and cache locality if that's an issue). You understand how and why certain graphics operations just cost a lot. How efficient or inefficient certain socket behaviors are. How buffers work, etc. I feel that using the abstractions in a higher level language when you do know how it is implemented below the covers sometimes gives you "that extra secret sauce" when thinking about performance.
For example, Java has a garbage collector and you can't directly assign things to memory directly. And yet, you can make certain design choices (e.g., with custom data structures) that affect performance because of the same reasons this would be an issue in C.
Also, and more generally, I feel that it is important for a power programmer to not only know big-O notation (which most schools teach), but that in real-life applications the constant is also important (which schools try to ignore). My anecdotal experience is that people with skills in both language levels tend to have a better understanding of the constant, perhaps because of what I described above.
In addition, many higher level systems that I have seen interface with lower level libraries and infrastructures. For instance, some communications, databases or graphics libraries. Some drivers for certain devices, etc. If you are a power programmer, you may eventially have to venture out there and it helps to at least have an idea of what is going on.
Knowing low level stuff can help a lot.
To become a racing driver, you have to learn and understand the basic physics of how tyres grip the road. Anyone can learn to drive pretty fast, but you need a good understanding of the "low level" stuff (forces and friction, racing lines, fine throttle and brake control, etc) to get those last few percent of performance that will allow you to win the race.
For example, if you understand how the CPU architecture works in your computer, you can write code that works better with it (e.g. if you know you have a certain CPU cache size or a certain number of bytes in each CPU cache line, you can arrange your data structures and the way that you access them to make the best use of the cache - for example, processing many elements of an array in order is often faster than processing random elements, due to the CPU cache). If you have a multi-core computer, then understanding how low level techniques like threading work can gave huge benefits (just as not understanding the low level can lead to disaster in threading).
If you understand how Disk I/O and caching works, you can modify file operations to work well with it (e.g. if you read from one file and write to another, working on large batches of data in RAM can help reduce I/O contention between the reading and writing phases of your code, and vastly improve throughput)
If you understand how virtual functions work, you can design high-level code that uses virtual functions well. If used incorrectly they can severely hamper performance.
If you understand how drawing is handled, you can use clever tricks to improve drawing speed. e.g. You can draw a chessboard by alternately drawing 64 white and black squares. But it is often faster to draw 32 white sqares and then 32 black ones (because you only have to change the drawing colour twice instead of 64 times). But you can actually draw the whole board black, then XOR 4 stripes across the board and 4 stripes down the board in white, and this can be much faster still (2 colour changes, and only 9 rectangles to draw instead of 64). This chessboard trick teaches you a very important programming skill: Lateral thinking. By designing your algorithm well, you can often make a big difference to how well your program operates.
Understanding C, or for that matter, any low level programming language, gives you an opportunity to understand things like memory usage (i.e. why is it a bad thing to create several million heavy objects), how pointers/object references work, etc.
The problem is that as we've created ever increasing levels of abstraction, we find ourselves doing a lot of 'lego block' programming, without understanding how the legos actually function. And by having almost infinite resources, we start treating memory and resources like water, and tend to solve problems by throwing more iron at the situation.
While not limited to C, there's a tremendous benefit to working at a low level with much smaller, memory constrained systems like the Arduino or old-school 8-bit processors. It lets you experience close to the metal coding in a much more approachable package, and after spending time squeezing apps into 512K, you will find yourself applying these skills at a larger level within your day to day programming.
So the language itself is not important, but having a deeper appreciation for how all of the bits come together, and how to work effectively at a level closer to the hardware is a set of skills beneficial to any software developer.
For one, knowing C helps you understand how memory works in the OS and in other high level languages. When your C# or Java program balloons on memory usage, understanding that references (which are basically just pointers) take memory too, and understand how many of the data structures are implemented (which you get from making your own in C) helps you understand that your dictionary is reserving huge amounts of memory that aren't actually used.
For another, knowing C can help you understand how to make use of lower level operating system features. You don't need this often, but sometimes you may need memory mapped files, or to use marshalling in C#, and C will greatly help understand what you're doing when that happens.
I think C has also helped my understanding of network protocols, but I can't put my finger on specific examples. I was reading another SO question the other day where someone was complaining about how C's bit-fields are 'basically useless' and I was thinking how elegantly C bit fields represent low-level network protocols. High level languages dealing with structures of bits always end up a mess!
In general, the more you know, the better programmer you will be.
However, sometimes knowing another language, such as C, can make you do the wrong thing, because there might be an assumption that is not true in a higher-level language (such as Python, or PHP). For example, one might assume that finding the length of a list might be O(N) where N is the length of the list. However, this is probably not the case in many high-level language instances. In Python, for most list-like things the cost is O(1).
Knowing more about the specifics of a language will help, but knowing more in general might lead one to make incorrect assumptions.
Just "knowing" C would not make you better.
But, if you understand the whole thing, how native binaries work, how does CPU work with it, what are architecture limitations, you may write a code which is easier for CPU.
For example, how L1/L2 caches affect your work, and how should you write your code to have more hits in L1/L2 caches. When working with C/C++ and doing heavy optimizations, you will have to go down to that kind of things.
It isn't so much knowing C as it is that C is closer to the bare metal than many other languages. You need to be more aware of how to allocate/deallocate memory because you have to do it yourself. Doing it yourself helps you understand the implications of many decisions that you make.
To me any language is acceptable as long as you understand how the compiler/interpreter (basically) maps your code onto the machine. It's a bit easier to do in a language that exposes this directly, but you should be able to, with a bit of reading, figure out how memory is allocated and organized, what sort of indexing patterns are more optimal than others, what constructs are more efficient for particular applications, etc.
More important, I think, is a good understanding of operating systems, memory architectures, and algorithms. If you understand how your algorithm works, why it would be better to choose one algorithm or data structure over another (e.g., HashSet vs. List), and how your code maps onto the machine, it shouldn't matter what language you are using.
This is my experience of how I learnt and taught myself programming, specifically, understanding C, this is going back to early 1990's so may be a bit antique, but the passion and the drive is important:
Learn to understand the low level principles of the computer, such as EGA/VGA programming, here's a link to the Simtel archive on the C programmer's guide to the PC.
Understanding how TSR's work
Download the whole archive of Bob Stout's snippets which is a big collection of C code that does one thing only - study them and understand it, not alone that, the collection of snippets strives to be portable.
Browse at the International Obfuscated C Code Contest (IOCCC) online, and see how the C code can be abused and understand the intracies of the language. The worst code abuse is the winner! Download the archives and study them.
Like myself, I loved the infamous Ponzo's C Tutorial which helped me immensely, unfortunately, the archive is very hard to find. If anyone knows of where to obtain them, please leave a comment and I will amend this answer to include the link. There is another one that I can remember - Coronado's [Generic?] C Tutorial, again, my memory on this one is hazy...
Look at Dr. Dobb's journal and C User Journal here - I do not know if you can still get them in print but they were a classic, can remember the feeling of holding a printed copy in my hand and tearing off home to type in the code to see what happens!
Grab an ancient copy of Turbo C v2 which I believe you can get from borland.com and just play with 16bit C programming to get a feel and mess with the pointers...sure it is ancient and old but playing with pointers on it is fine.
Understand and learn Pointers, link here to the legacy Simtel.net - a crucial link to achieving C Guru'ship for want of a better word, also you will find a host of downloads pertaining to the C programming language - I remember actually ordering the Simtel CD Archive and looking for the C stuff...
A couple of things that you have to deal directly with in C that other languages abstract away from you include explicit memory management (malloc) and dealing directly with pointers.
My girlfriend is one semester from graduating MIT (where they mainly use Java, Scheme, and Python) with a Computer Science degree, and she is currently working at a company whose codebase is in C++. For the first few days she had a difficult time understanding all the pointers/references/etc.
On the other hand, I found moving from C++ to Java very easy, because I was never confused about pass-references-by-value vs pass-by-reference.
Similarly, in C/C++ it is much more apparent that primitives are just the compiler treating the same sets of bits in different ways, as opposed to a language like Python or Ruby where everything is an object with its own distinct properties.
A simple (not entirely realistic) example to illustrate some of the advice above. Consider the seemingly harmless
while(true)
for(Iterator iter = foo.iterator(); iter.hasNext();)
bar.doSomething( iter.next() )
or the even higher level
while(true)
for(Baz b: foo)
bar.doSomething(b)
A possible problem here is that each time round the while loop a new object (the iterator) is created. If all you care about is programmer convenience, then the latter is definitely better. But if the loop has to be efficient or the machine is resource constrained then you are pretty much at the mercy of the designers of your high level language.
For example, a typical complaint for doing high-performance Java is having execution stop while garbage (such as all those allocated Iterator objects) is reclaimed. Not very good if your software is charged with tracking incoming missiles, auto-piloting a passenger jet, or just not leaving the user wondering why the GUI has stopped responding.
One possible solution (still in the higher-level language) would be to weaken the convenience of the iterator to something like
Iterator iter = new Iterator();
while(true)
for(foo.initAlreadyAllocatedIterator(iter); iter.hasNext();)
bar.doSomething(iter.next())
But this would only make sense if you had some idea about memory allocation...otherwise it just looks like a nasty API. Convenience always costs somewhere, and knowing lower-level stuff can help you identify and mitigate those costs.
Closed. This question is opinion-based. It is not currently accepting answers.
Want to improve this question? Update the question so it can be answered with facts and citations by editing this post.
Closed 2 years ago.
Improve this question
In listening to the Stack Overflow podcast, the jab keeps coming up that "real programmers" write in C, and that C is so much faster because it's "close to the machine." Leaving the former assertion for another post, what is special about C that allows it to be faster than other languages?
Or put another way: what's to stop other languages from being able to compile down to binary that runs every bit as fast as C?
There isn't much that's special about C. That's one of the reasons why it's fast.
Newer languages which have support for garbage collection, dynamic typing and other facilities which make it easier for the programmer to write programs.
The catch is, there is additional processing overhead which will degrade the performance of the application. C doesn't have any of that, which means that there is no overhead, but that means that the programmer needs to be able to allocate memory and free them to prevent memory leaks, and must deal with static typing of variables.
That said, many languages and platforms, such as Java (with its Java Virtual Machine) and .NET (with its Common Language Runtime) have improved performance over the years with advents such as just-in-time compilation which produces native machine code from bytecode to achieve higher performance.
There is a trade-off the C designers have made. That's to say, they made the decision to put speed above safety. C won't
Check array index bounds
Check for uninitialized variable values
Check for memory leaks
Check for null pointer dereference
When you index into an array, in Java it takes some method call in the virtual machine, bound checking and other sanity checks. That is valid and absolutely fine, because it adds safety where it's due. But in C, even pretty trivial things are not put in safety. For example, C doesn't require memcpy to check whether the regions to copy overlap. It's not designed as a language to program a big business application.
But these design decisions are not bugs in the C language. They are by design, as it allows compilers and library writers to get every bit of performance out of the computer. Here is the spirit of C how the C Rationale document explains it:
C code can be non-portable. Although it strove to give programmers the opportunity to write truly portable programs, the Committee did not want to force programmers into writing portably, to preclude the use of C as a ``high-level assembler'': the ability to write machine-specific code is one of the strengths of C.
Keep the spirit of C. The Committee kept as a major goal to preserve the traditional spirit of C. There are many facets of the spirit of C, but the essence is a community sentiment of the underlying principles upon which the C language is based. Some of the facets of the spirit of C can be summarized in phrases like
Trust the programmer.
Don't prevent the programmer from doing what needs to be done.
Keep the language small and simple.
Provide only one way to do an operation.
Make it fast, even if it is not guaranteed to be portable.
The last proverb needs a little explanation. The potential for efficient code generation is one of the most important strengths of C. To help ensure that no code explosion occurs for what appears to be a very simple operation, many operations are defined to be how the target machine's hardware does it rather than by a general abstract rule. An example of this willingness to live with what the machine does can be seen in the rules that govern the widening of char objects for use in expressions: whether the values of char objects widen to signed or unsigned quantities typically depends on which byte operation is more efficient on the target machine.
If you spend a month to build something in C that runs in 0.05 seconds, and I spend a day writing the same thing in Java, and it runs in 0.10 seconds, then is C really faster?
But to answer your question, well-written C code will generally run faster than well-written code in other languages because part of writing C code "well" includes doing manual optimizations at a near-machine level.
Although compilers are very clever indeed, they are not yet able to creatively come up with code that competes with hand-massaged algorithms (assuming the "hands" belong to a good C programmer).
Edit:
A lot of comments are along the lines of "I write in C and I don't think about optimizations."
But to take a specific example from this post:
In Delphi I could write this:
function RemoveAllAFromB(a, b: string): string;
var
before, after :string;
begin
Result := b;
if 0 < Pos(a,b) then begin
before := Copy(b,1,Pos(a,b)-Length(a));
after := Copy(b,Pos(a,b)+Length(a),Length(b));
Result := before + after;
Result := RemoveAllAFromB(a,Result); //recursive
end;
end;
and in C I write this:
char *s1, *s2, *result; /* original strings and the result string */
int len1, len2; /* lengths of the strings */
for (i = 0; i < len1; i++) {
for (j = 0; j < len2; j++) {
if (s1[i] == s2[j]) {
break;
}
}
if (j == len2) { /* s1[i] is not found in s2 */
*result = s1[i];
result++; /* assuming your result array is long enough */
}
}
But how many optimizations are there in the C version? We make lots of decisions about implementation that I don't think about in the Delphi version. How is a string implemented? In Delphi I don't see it. In C, I've decided it will be a pointer to an array of ASCII integers, which we call chars. In C, we test for character existence one at a time. In Delphi, I use Pos.
And this is just a small example. In a large program, a C programmer has to make these kinds of low-level decisions with every few lines of code. It adds up to a hand-crafted, hand-optimized executable.
I didn't see it already, so I'll say it: C tends to be faster because almost everything else is written in C.
Java is built on C, Python is built on C (or Java, or .NET, etc.), Perl is, etc. The OS is written in C, the virtual machines are written in C, the compilers are written in C, the interpreters are written in C. Some things are still written in Assembly language, which tends to be even faster. More and more things are being written in something else, which is itself written in C.
Each statement that you write in other languages (not Assembly) is typically implemented underneath as several statements in C, which are compiled down to native machine code. Since those other languages tend to exist in order to obtain a higher level of abstraction than C, those extra statements required in C tend to be focused on adding safety, adding complexity, and providing error handling. Those are often good things, but they have a cost, and its names are speed and size.
Personally, I have written in literally dozens of languages spanning most of the available spectrum, and I personally have sought the magic that you hint at:
How can I have my cake and eat it, too? How can I play with high-level abstractions in my favorite language, then drop down to the nitty gritty of C for speed?
After a couple of years of research, my answer is Python (on C). You might want to give it a look. By the way, you can also drop down to Assembly from Python, too (with some minor help from a special library).
On the other hand, bad code can be written in any language. Therefore, C (or Assembly) code is not automatically faster. Likewise, some optimization tricks can bring portions of higher-level language code close to the performance level of raw C. But, for most applications, your program spends most of its time waiting on people or hardware, so the difference really does not matter.
Enjoy.
There are a lot of questions in there - mostly ones I am not qualified to answer. But for this last one:
what's to stop other languages from being able to compile down to binary that runs every bit as fast as C?
In a word, abstraction.
C is only one or two levels of abstraction away from machine language. Java and the .NET languages are at a minimum three levels of abstraction away from assembler. I'm not sure about Python and Ruby.
Typically, the more programmer toys (complex data types, etc.), the further you are from machine language and the more translation has to be done.
I'm off here and there, but that's the basic gist.
There are some good comments on this post with more details.
It is not so much that C is fast as that C's cost model is transparent. If a C program is slow, it is slow in an obvious way: by executing a lot of statements. Compared with the cost of operations in C, high-level operations on objects (especially reflection) or strings can have costs that are not obvious.
Two languages that generally compile to binaries which are just as fast as C are Standard ML (using the MLton compiler) and Objective Caml. If you check out the benchmarks game you'll find that for some benchmarks, like binary trees, the OCaml version is faster than C. (I didn't find any MLton entries.) But don't take the shootout too seriously; it is, as it says, a game, the the results often reflect how much effort people have put in tuning the code.
C is not always faster.
C is slower than, for example, Modern Fortran.
C is often slower than Java for some things (especially after the JIT compiler has had a go at your code).
C lets pointer aliasing happen, which means some good optimizations are not possible. Particularly when you have multiple execution units, this causes data fetch stalls. Ow.
The assumption that pointer arithmetic works really causes slow bloated performance on some CPU families (PIC particularly!) It used to suck the big one on segmented x86.
Basically, when you get a vector unit, or a parallelizing compiler, C stinks and modern Fortran runs faster.
C programmer tricks, like thunking (modifying the executable on the fly), cause CPU prefetch stalls.
Do you get the drift?
And our good friend, the x86, executes an instruction set that these days bears little relationship to the actual CPU architecture. Shadow registers, load-store optimizers, all in the CPU. So C is then close to the virtual metal. The real metal, Intel don't let you see. (Historically VLIW CPU's were a bit of a bust so, maybe that's no so bad.)
If you program in C on a high-performance DSP (maybe a TI DSP?), the compiler has to do some tricky stuff to unroll the C across the multiple parallel execution units. So in that case, C isn't close to the metal, but it is close to the compiler, which will do whole program optimization. Weird.
And finally, some CPUs (www.ajile.com) run Java bytecodes in hardware. C would a PITA to use on that CPU.
what's to stop other languages from
being able to compile down to binary
that runs every bit as fast as C?
Nothing. Modern languages like Java or .NET languages are oriented more toward programmer productivity rather than performance. Hardware is cheap nowadays. Also compilation to intermediate representation gives a lot of bonuses such as security, portability, etc. The .NET CLR can take advantage of different hardware. For example, you don't need to manually optimize/recompile program to use the SSE instructions set.
I guess you forgot that Assembly language is also a language :)
But seriously, C programs are faster only when the programmer knows what he's doing. You can easily write a C program that runs slower than programs written in other languages that do the same job.
The reason why C is faster is because it is designed in this way. It lets you do a lot of "lower level" stuff that helps the compiler to optimize the code. Or, shall we say, you the programmer are responsible for optimizing the code. But it's often quite tricky and error prone.
Other languages, like others already mentioned, focus more on productivity of the programmer. It is commonly believed that programmer time is much more expensive than machine time (even in the old days). So it makes a lot of sense to minimize the time programmers spend on writing and debugging programs instead of the running time of the programs. To do that, you will sacrifice a bit on what you can do to make the program faster because a lot of things are automated.
The main factors are that it's a statically-typed language and that's compiled to machine code. Also, since it's a low-level language, it generally doesn't do anything you don't tell it to.
These are some other factors that come to mind.
Variables are not automatically initialized
No bounds checking on arrays
Unchecked pointer manipulation
No integer overflow checking
Statically-typed variables
Function calls are static (unless you use function pointers)
Compiler writers have had lots of time to improve the optimizing code. Also, people program in C for the purpose of getting the best performance, so there's pressure to optimize the code.
Parts of the language specification are implementation-defined, so compilers are free to do things in the most optimal way
Most static-typed languages could be compiled just as fast or faster than C though, especially if they can make assumptions that C can't because of pointer aliasing, etc.
C++ is faster on average (as it was initially, largely a superset of C, though there are some differences). However, for specific benchmarks, there is often another language which is faster.
From The Computer Language Benchmarks Game:
fannjuch-redux was fastest in Scala
n-body and fasta were faster in Ada.
spectral-norm was fastest in Fortran.
reverse-complement, mandelbrot and pidigits were fastest in ATS.
regex-dna was fastest in JavaScript.
chameneou-redux was fastest is Java 7.
thread-ring was fastest in Haskell.
The rest of the benchmarks were fastest in C or C++.
For the most part, every C instruction corresponds to a very few assembler instructions. You are essentially writing higher level machine code, so you have control over almost everything the processor does. Many other compiled languages, such as C++, have a lot of simple looking instructions that can turn into much more code than you think it does (virtual functions, copy constructors, etc..) And interpreted languages like Java or Ruby have another layer of instructions that you never see - the Virtual Machine or Interpreter.
I know plenty of people have said it in a long winded way, but:
C is faster because it does less (for you).
Many of these answers give valid reasons for why C is, or is not, faster (either in general or in specific scenarios). It's undeniable that:
Many other languages provide automatic features that we take for granted. Bounds checking, run-time type checking, and automatic memory management, for example, don't come for free. There is at least some cost associated with these features, which we may not think about—or even realize—while writing code that uses these features.
The step from source to machine is often not as direct in other languages as it is in C.
OTOH, to say that compiled C code executes faster than other code written in other languages is a generalization that isn't always true. Counter-examples are easy to find (or contrive).
All of this notwithstanding, there is something else I have noticed that, I think, affects the comparative performance of C vs. many other languages more greatly than any other factor. To wit:
Other languages often make it easier to write code that executes more slowly. Often, it's even encouraged by the design philosophies of the language. Corollary: a C programmer is more likely to write code that doesn't perform unnecessary operations.
As an example, consider a simple Windows program in which a single main window is created. A C version would populate a WNDCLASS[EX] structure which would be passed to RegisterClass[Ex], then call CreateWindow[Ex] and enter a message loop. Highly simplified and abbreviated code follows:
WNDCLASS wc;
MSG msg;
wc.style = 0;
wc.lpfnWndProc = &WndProc;
wc.cbClsExtra = 0;
wc.cbWndExtra = 0;
wc.hInstance = hInstance;
wc.hIcon = NULL;
wc.hCursor = LoadCursor(NULL, IDC_ARROW);
wc.hbrBackground = (HBRUSH)(COLOR_BTNFACE + 1);
wc.lpszMenuName = NULL;
wc.lpszClassName = "MainWndCls";
RegisterClass(&wc);
CreateWindow("MainWndCls", "", WS_OVERLAPPEDWINDOW | WS_VISIBLE,
CW_USEDEFAULT, 0, CW_USEDEFAULT, 0, NULL, NULL, hInstance, NULL);
while(GetMessage(&msg, NULL, 0, 0)){
TranslateMessage(&msg);
DispatchMessage(&msg);
}
An equivalent program in C# could be just one line of code:
Application.Run(new Form());
This one line of code provides all of the functionality that nearly 20 lines of C code did, and adds some things we left out, such as error checking. The richer, fuller library (compared to those used in a typical C project) did a lot of work for us, freeing our time to write many more snippets of code that look short to us but involve many steps behind the scenes.
But a rich library enabling easy and quick code bloat isn't really my point. My point is more apparent when you start examining what actually happens when our little one-liner actually executes. For fun sometime, enable .NET source access in Visual Studio 2008 or higher, and step into the simple one-linef above. One of the fun little gems you'll come across is this comment in the getter for Control.CreateParams:
// In a typical control this is accessed ten times to create and show a control.
// It is a net memory savings, then, to maintain a copy on control.
//
if (createParams == null) {
createParams = new CreateParams();
}
Ten times. The information roughly equivalent to the sum of what's stored in a WNDCLASSEX structure and what's passed to CreateWindowEx is retrieved from the Control class ten times before it's stored in a WNDCLASSEX structure and passed on to RegisterClassEx and CreateWindowEx.
All in all, the number of instructions executed to perform this very basic task is 2–3 orders of magnitude more in C# than in C. Part of this is due to the use of a feature-rich library, which is necessarily generalized, versus our simple C code which does exactly what we need and nothing more. But part of it is due to the fact that the modularized, object-oriented nature of .NET framework, lends itself to a lot of repetition of execution that often is avoided by a procedural approach.
I'm not trying to pick on C# or the .NET framework. Nor am I saying that modularization, generalization, library/language features, OOP, etc. are bad things. I used to do most of my development in C, later in C++, and most lately in C#. Similarly, before C, I used mostly assembly. And with each step "higher" my language goes, I write better, more maintainable, more robust programs in less time. They do, however, tend to execute a little more slowly.
I don't think anyone has mentioned the fact that much more effort has been put into C compilers than any other compiler, with perhaps the exception of Java.
C is extremely optimizable for many of the reasons already stated - more than almost any other language. So if the same amount of effort is put into other language compilers, C will probably still come out on top.
I think there is at least one candidate language that, with effort, could be optimized better than C and thus we could see implementations that produce faster binaries. I'm thinking of Digital Mars' D, because the creator took care to build a language that could potentially be better optimized than C. There may be other languages that have this possibility. However, I cannot imagine that any language will have compilers more than just a few percent faster than the best C compilers. I would love to be wrong.
I think the real "low hanging fruit" will be in languages that are designed to be easy for humans to optimize. A skilled programmer can make any language go faster, but sometimes you have to do ridiculous things or use unnatural constructs to make this happen. Although it will always take effort, a good language should produce relatively fast code without having to obsess over exactly how the program is written.
It's also important (at least to me) that the worst case code tends to be fast. There are numerous "proofs" on the web that Java is as fast or faster than C, but that is based on cherry picking examples.
I'm not big fan of C, but I know that anything I write in C is going to run well. With Java, it will "probably" run within 15% of the speed, usually within 25%, but in some cases it can be far worse. Any cases where it's just as fast or within a couple of percent are usually due to most of the time being spent in the library code which is heavily optimized C code anyway.
This is actually a bit of a perpetuated falsehood. While it is true that C programs are frequently faster, this is not always the case, especially if the C programmer isn't very good at it.
One big glaring hole that people tend to forget about is when the program has to block for some sort of I/O, such as user input in any GUI program. In these cases, it doesn't really matter what language you use since you are limited by the rate at which data can come in rather than how fast you can process it. In this case, it doesn't matter much if you are using C, Java, C# or even Perl; you just cannot go any faster than the data can come in.
The other major thing is that using garbage collection (GC) and not using proper pointers allows the virtual machine to make a number of optimizations not available in other languages. For instance, the JVM is capable of moving objects around on the heap to defragment it. This makes future allocations much faster since the next index can simply be used rather than looking it up in a table. Modern JVMs also don't have to actually deallocate memory; instead, they just move the live objects around when they GC and the spent memory from the dead objects is recovered essentially for free.
This also brings up an interesting point about C and even more so in C++. There is something of a design philosophy of "If you don't need it, you don't pay for it." The problem is that if you do want it, you end up paying through the nose for it. For instance, the vtable implementation in Java tends to be a lot better than C++ implementations, so virtual function calls are a lot faster. On the other hand, you have no choice but to use virtual functions in Java and they still cost something, but in programs that use a lot of virtual functions, the reduced cost adds up.
It's not so much about the language as the tools and libraries. The available libraries and compilers for C are much older than for newer languages. You might think this would make them slower, but au contraire.
These libraries were written at a time when processing power and memory were at a premium. They had to be written very efficiently in order to work at all. Developers of C compilers have also had a long time to work in all sorts of clever optimizations for different processors. C's maturity and wide adoption makes for a signficant advantage over other languages of the same age. It also gives C a speed advantage over newer tools that don't emphasize raw performance as much as C had to.
Amazing to see the old "C/C++ must be faster than Java because Java is interpreted" myth is still alive and kicking. There are articles going back a few years, as well as more recent ones, that explain with concepts or measurements why this simply isn't always the case.
Current virtual machine implementations (and not just the JVM, by the way) can take advantage of information gathered during program execution to dynamically tune the code as it runs, using a variety of techniques:
rendering frequent methods to machine code,
inlining small methods,
adjustment of locking
and a variety of other adjustments based on knowing what the code is actually doing, and on the actual characteristics of the environment in which it's running.
The lack of abstraction is what makes C faster. If you write an output statement you know exactly what is happening. If you write an output statement in Java it is getting compiled to a class file which then gets run on a virtual machine, introducing a layer of abstraction.
The lack of object-oriented features as a part of the language also increases its speed do to less code being generated. If you use C as an object-oriented language, then you are doing all the coding for things such as classes, inheritance, etc. This means rather than make something generalized enough for everyone with the amount of code and the performance penalty that requires you only write what you need to get the job done.
The fastest running code would be carefully handcrafted machine code. Assembler will be almost as good. Both are very low level and it takes a lot of writing code to do things. C is a little above assembler. You still have the ability to control things at a very low level in the actual machine, but there is enough abstraction, make writing it faster and easier then assembler.
Other languages, such as C# and Java, are even more abstract. While Assembler and machine code are called low-level languages, C# and JAVA (and many others) are called high-level languages. C is sometimes called a midlevel language.
Don't take someone’s word for it; look at the disassembly for both C and your language-of-choice in any performance critical part of your code. I think you can just look in the disassembly window at runtime in Visual Studio to see disassembled .NET code. It should be possible, if tricky, for Java using WinDbg, though if you do it with .NET, many of the issues would be the same.
I don't like to write in C if I don't need to, but I think many of the claims made in these answers that tout the speed of languages other than C can be put aside by simply disassembling the same routine in C and in your higher level language of choice, especially if lots of data is involved as is common in performance critical applications. Fortran may be an exception in its area of expertise; I don't know. Is it higher level than C?
The first time I did compare JITed code with native code resolved any and all questions whether .NET code could run comparably to C code. The extra level of abstraction and all the safety checks come with a significant cost. The same costs would probably apply to Java, but don't take my word for it; try it on something where performance is critical. (Does anyone know enough about JITed Java to locate a compiled procedure in memory? It should certainly be possible.)
Setting aside advanced optimization techniques such as hot-spot optimization, pre-compiled meta-algorithms, and various forms of parallelism, the fundamental speed of a language correlates strongly with the implicit behind-the-scenes complexity required to support the operations that would commonly be specified within inner loops.
Perhaps the most obvious is validity checking on indirect memory references—such as checking pointers for null and checking indexes against array boundaries. Most high-level languages perform these checks implicitly, but C does not. However, this is not necessarily a fundamental limitation of these other languages—a sufficiently clever compiler may be capable of removing these checks from the inner loops of an algorithm through some form of loop-invariant code motion.
The more fundamental advantage of C (and to a similar extent the closely related C++) is a heavy reliance on stack-based memory allocation, which is inherently fast for allocation, deallocation, and access. In C (and C++) the primary call stack can be used for allocation of primitives, arrays, and aggregates (struct/class).
While C does offer the capability to dynamically allocate memory of arbitrary size and lifetime (using the so called 'heap'), doing so is avoided by default (the stack is used instead).
Tantalizingly, it is sometimes possible to replicate the C memory allocation strategy within the runtime environments of other programming languages. This has been demonstrated by asm.js, which allows code written in C or C++ to be translated into a subset of JavaScript and run safely in a web browser environment—with near-native speed.
As somewhat of an aside, another area where C and C++ outshine most other languages for speed is the ability to seamlessly integrate with native machine instruction sets. A notable example of this is the (compiler and platform dependent) availability of SIMD intrinsics which support the construction of custom algorithms that take advantage of the now nearly ubiquitous parallel processing hardware—while still utilizing the data allocation abstractions provided by the language (lower-level register allocation is managed by the compiler).
1) As others have said, C does less for you. No initializing variables, no array bounds checking, no memory management, etc. Those features in other languages cost memory and CPU cycles that C doesn't spend.
2) Answers saying that C is less abstracted and therefore faster are only half correct I think. Technically speaking, if you had a "sufficiently advanced compiler" for language X, then language X could approach or equal the speed of C. The difference with C is that since it maps so obviously (if you've taken an architecture course) and directly to assembly language that even a naive compiler can do a decent job. For something like Python, you need a very advanced compiler to predict the probable types of objects and generate machine code on the fly -- C's semantics are simple enough that a simple compiler can do well.
Back in the good ole days, there were just two types of languages: compiled and interpreted.
Compiled languages utilized a "compiler" to read the language syntax and convert it into identical assembly language code, which could than just directly on the CPU. Interpreted languages used a couple of different schemes, but essentially the language syntax was converted into an intermediate form, and then run in a "interpreter", an environment for executing the code.
Thus, in a sense, there was another "layer" -- the interpreter -- between the code and the machine. And, as always the case in a computer, more means more resources get used. Interpreters were slower, because they had to perform more operations.
More recently, we've seen more hybrid languages like Java, that employ both a compiler and an interpreter to make them work. It's complicated, but a JVM is faster, more sophisticated and way more optimized than the old interpreters, so it stands a much better change of performing (over time) closer to just straight compiled code. Of course, the newer compilers also have more fancy optimizing tricks so they tend to generate way better code than they used to as well. But most optimizations, most often (although not always) make some type of trade-off such that they are not always faster in all circumstances. Like everything else, nothing comes for free, so the optimizers must get their boast from somewhere (although often times it using compile-time CPU to save runtime CPU).
Getting back to C, it is a simple language, that can be compiled into fairly optimized assembly and then run directly on the target machine. In C, if you increment an integer, it's more than likely that it is only one assembler step in the CPU, in Java however, it could end up being a lot more than that (and could include a bit of garbage collection as well :-) C offers you an abstraction that is way closer to the machine (assembler is the closest), but you end up having to do way more work to get it going and it is not as protected, easy to use or error friendly. Most other languages give you a higher abstraction and take care of more of the underlying details for you, but in exchange for their advanced functionality they require more resources to run. As you generalize some solutions, you have to handle a broader range of computing, which often requires more resources.
I have found an answer on a link about why some languages are faster and some are slower, I hope this will clear more about why C or C++ is faster than others, There are some other languages also that is faster than C, but we can not use all of them. Some explanation -
One of the big reasons that Fortran remains important is because it's fast: number crunching routines written in Fortran tend to be quicker than equivalent routines written in most other languages. The languages that are competing with Fortran in this space—C and C++—are used because they're competitive with this performance.
This raises the question: why? What is it about C++ and Fortran that make them fast, and why do they outperform other popular languages, such as Java or Python?
Interpreting versus compiling
There are many ways to categorize and define programming languages, according to the style of programming they encourage and features they offer. When looking at performance, the biggest single distinction is between interpreted languages and compiled ones.
The divide is not hard; rather, there's a spectrum. At one end, we have traditional compiled languages, a group that includes Fortran, C, and C++. In these languages, there is a discrete compilation stage that translates the source code of a program into an executable form that the processor can use.
This compilation process has several steps. The source code is analyzed and parsed. Basic coding mistakes such as typos and spelling errors can be detected at this point. The parsed code is used to generate an in-memory representation, which too can be used to detect mistakes—this time, semantic mistakes, such as calling functions that don't exist, or trying to perform arithmetic operations on strings of text.
This in-memory representation is then used to drive a code generator, the part that produces executable code. Code optimization, to improve the performance of the generated code, is performed at various times within this process: high-level optimizations can be performed on the code representation, and lower-level optimizations are used on the output of the code generator.
Actually executing the code happens later. The entire compilation process is simply used to create something that can be executed.
At the opposite end, we have interpreters. The interpreters will include a parsing stage similar to that of the compiler, but this is then used to drive direct execution, with the program being run immediately.
The simplest interpreter has within it executable code corresponding to the various features the language supports—so it will have functions for adding numbers, joining strings, whatever else a given language has. As it parses the code, it will look up the corresponding function and execute it. Variables created in the program will be kept in some kind of lookup table that maps their names to their data.
The most extreme example of the interpreter style is something like a batch file or shell script. In these languages, the executable code is often not even built into the interpreter itself, but rather separate, standalone programs.
So why does this make a difference to performance? In general, each layer of indirection reduces performance. For example, the fastest way to add two numbers is to have both of those numbers in registers in the processor, and to use the processor's add instruction. That's what compiled programs can do; they can put variables into registers and take advantage of processor instructions. But in interpreted programs, that same addition might require two lookups in a table of variables to fetch the values to add, then calling a function to perform the addition. That function may very well use the same processor instruction as the compiled program uses to perform the actual addition, but all the extra work before the instruction can actually be used makes things slower.
If you want to know more please check the source.
Some C++ algorithms are faster than C, and some implementations of algorithms or design patterns in other languages can be faster than C.
When people say that C is fast, and then move on to talking about some other language, they are generally using C's performance as a benchmark.
Just step through the machine code in your IDE, and you'll see why it's faster (if it's faster). It leaves out a lot of hand-holding. Chances are your Cxx can also be told to leave it out too, in which case it should be about the same.
Compiler optimizations are overrated, as are almost all perceptions about language speed.
Optimization of generated code only makes a difference in hotspot code, that is, tight algorithms devoid of function calls (explicit or implicit). Anywhere else, it achieves very little.
With modern optimizing compilers, it's highly unlikely that a pure C program is going to be all that much faster than compiled .NET code, if at all. With the productivity enhancement that frameworks like .NET provide the developer, you can do things in a day that used to take weeks or months in regular C. Coupled with the cheap cost of hardware compared to a developer's salary, it's just way cheaper to write the stuff in a high-level language and throw hardware at any slowness.
The reason Jeff and Joel talk about C being the "real programmer" language is because there isn't any hand-holding in C. You must allocate your own memory, deallocate that memory, do your own bounds-checking, etc. There isn't any such thing as new object(); There isn't any garbage collection, classes, OOP, entity frameworks, LINQ, properties, attributes, fields, or anything like that.
You have to know things like pointer arithmetic and how to dereference a pointer. And, for that matter, know and understand what a pointer is. You have to know what a stack frame is and what the instruction pointer is. You have to know the memory model of the CPU architecture you're working on. There is a lot of implicit understanding of the architecture of a microcomputer (usually the microcomputer you're working on) when programming in C that simply is not present nor necessary when programming in something like C# or Java. All of that information has been off-loaded to the compiler (or VM) programmer.
It's the difference between automatic and manual. Higher-level languages are abstractions, thus automated. C/C++ are manually controlled and handled; even error checking code is sometimes a manual labor.
C and C++ are also compiled languages which means none of that run-everywhere business. These languages have to be fine-tuned for the hardware you work with, thus adding an extra layer of gotcha. Though this is slightly phasing out now as C/C++ compilers are becoming more common across all platforms. You can do cross compilations between platforms. It's still not a run everywhere situation, and you’re basically instructing compiler A to compile against compiler B the same code on a different architecture.
Bottom line, C languages are not meant to be easy to understand or reason. This is also why they’re referred to as systems languages. They came out before all this high-level abstraction nonsense. This is also why they are not used for front end web programming. They’re just not suited to the task; they’re meant to solve complex problems that can't be resolved with conventional language tooling.
This is why you get crazy stuff, like micro-architectures, drivers, quantum physics, AAA games, and operating systems. There are things C and C++ are just well suited for. Speed and number crunching being the chief areas.
C is fast because it is natively compiled, low-level language. But C is not the fastest. The Recursive Fibonacci Benchmark shows that Rust, Crystal, and Nim can be faster.