Suppose we want to compute some Fibonacci numbers, modulo 997.

For n=500 in C++ we can run

#include <iostream>
#include <array>

std::array<int, 2> fib(unsigned n) {
    if (!n)
        return {1, 1};
    auto x = fib(n - 1);
    return {(x[0] + x[1]) % 997, (x[0] + 2 * x[1]) % 997};

int main() {
    std::cout << fib(500)[0];

and in Python

def fib(n):
    if n==1:
        return (1, 2)
    return ((x[0]+x[1]) % 997, (x[0]+2*x[1]) % 997)

if __name__=='__main__':

Both will find the answer 996 without issues. We are taking modulos to keep the output size reasonable and using pairs to avoid exponential branching.

For n=5000, the C++ code outputs 783, but Python will complain

RecursionError: maximum recursion depth exceeded in comparison

If we add a couple of lines

import sys

def fib(n):
    if n==1:
        return (1, 2)
    return ((x[0]+x[1]) % 997, (x[0]+2*x[1]) % 997)

if __name__=='__main__':

then Python too will give the right answer.

For n=50000 C++ finds the answer 151 within milliseconds while Python crashes (at least on my machine).

Why are recursive calls so much cheaper in C++? Can we somehow modify the Python compiler to make it more receptive to recursion?

Of course, one solution is to replace recursion with iteration. For Fibonacci numbers, this is easy to do. However, this will swap the initial and the terminal conditions, and the latter is tricky for many problems (e.g. alpha–beta pruning). So generally, this will require a lot of hard work on the part of the programmer.

  • 6
    @TedKleinBergman this isn't a tail recursive. it looks like gcc can unroll this somewhat to use much less stack per call than CPython (intentionally) does
    – Caleth
    Jun 15, 2021 at 15:31
  • 17
    @Jarod42 Languages aren't compiled or interpreted; language implementations are. The standard Python distribution (known as CPython) compiles Python source to bytecode representation, similar to how Java or C# do. Jun 16, 2021 at 2:12
  • 13
    BTW, you can dramatically reduce the number of recursive calls by using a cache, eg the cache or lru_cache decorators from functools. And you can optimize that code slightly by assigning the result of the call to two names, eg u, v = fib(n-1), rather than assigning to x and then indexing x 4 times. Also, you might like my fast Fibonacci code: stackoverflow.com/a/40683466/4014959 ;)
    – PM 2Ring
    Jun 16, 2021 at 2:37
  • 10
    I'm a bit confused why you're taking about fibonacci numbers, when the functions you show clearly don't compute the fibonacci series. Jun 16, 2021 at 17:24
  • 9
    Why the modulo-997 arithmetic?
    – dan04
    Jun 16, 2021 at 19:48

7 Answers 7


The issue is that Python has an internal limit on number of recursive function calls.

That limit is configurable as shown in Quentin Coumes' answer. However, too deep a function chain will result in a stack overflow. This underlying limitation¹ applies to both C++ and Python. This limitation also applies to all function calls, not just recursive ones.

In general: You should not write² algorithms that have recursion depth growth with linear complexity or worse. Logarithmically growing recursion is typically fine. Tail-recursive functions are trivial to re-write as iterations. Other recursions may be converted to iteration using external data structures (usually, a dynamic stack).

A related rule of thumb is that you shouldn't have large objects with automatic storage. This is C++-specific since Python doesn't have the concept of automatic storage.

¹ The underlying limitation is the execution stack size. The default size differs between systems, and different function calls consume different amounts of memory, so the limit isn't specified as a number of calls but in bytes instead. This too is configurable on some systems. I wouldn't typically recommend touching that limit due to portability concerns.

² Exceptions to this rule of thumb are certain functional languages that guarantee tail-recursion elimination - such as Haskell - where that rule can be relaxed in case of recursions that are guaranteed to be eliminated. Python is not such a language, and the function in question isn't tail-recursive. While C++ compilers can perform the elimination as an optimization, it isn't guaranteed, and is typically not optimized in debug builds. Hence, the exception doesn't generally apply to C++ either.

Disclaimer: The following is my hypothesis; I don't actually know their rationale: The Python limit is probably a feature that detects potentially infinite recursions, preventing likely unsafe stack overflow crashes and substituting a more controlled RecursionError.

Why are recursive calls so much cheaper in C++?

C++ is a compiled language. Python is interpreted. (Nearly) everything is cheaper in C++, except the translation from source code to an executable program.

  • 21
    Languages aren't compiled or interpreted; language implementations are. The standard Python distribution (known as CPython) compiles Python source to bytecode representation, similar to how Java or C# do. C++ is faster for many operations because of the semantics of the language, not because of compiling versus interpreting. Jun 16, 2021 at 2:13
  • 46
    @RussellBorogove That's mostly philosophical pedantry in my opinion. There exists only compiled implementations of C++ (I don't count "mostly conforming"), and in this context there is no practical difference between purely interpreted and just-in-time-byte-compiler or whatever CPython's definition is. Neither have the opportunity to spend the time to optimise that AOT compiler has. I do agree that language semantics help as well... although I would suspect that the fact that whether language is designed to be AOT or JIT has an effect on what semantics the languages are designed to have.
    – eerorika
    Jun 16, 2021 at 2:32
  • 13
    It's correctness, not pedantry, and not a matter of opinion. An interpreted Python would be vastly slower than CPython. Jun 16, 2021 at 2:37
  • 7
    eeroika, the CPython compiler is not JIT. The Python source is compiled to bytecode. That bytecode is then executed on a virtual machine. That is, the bytecode is the machine language of the virtual machine.
    – PM 2Ring
    Jun 16, 2021 at 2:42
  • 9
    @eerorika JIT compiling involves compilation during execution, and generally involves dynamic analysis to determine what parts of the code could benefit from being compiled. In contrast, CPython code is compiled immediately before execution commences, if necessary (the interpreter can use existing compiled images if their timestamp is later than that of the source code, if the system saves such images to disk).
    – PM 2Ring
    Jun 16, 2021 at 2:58

Let me first answer your direct questions:

Why are recursive calls so much cheaper in C++?

Because C++ has no limitation on recursive call depth, except the size of the stack. And being a fully compiled language, loops (including recursion) are much faster in C++ than in Python (the reason why special Python modules like numpy/scipy directly use C routines). Additionally, most C++ implementations use a special feature called tail recursion elimination (see later in this post) and optimize some recursive code into iterative equivalents. This is nice here but not guaranteed by the standard, so other compilations could result in a program crashing miserably - but tail recursion is probably not involved here.

If the recursion is too deep and exhausts the available stack, you will invoke the well-known Undefined Behaviour where anything can happen, from an immediate crash to a program giving wrong results (IMHO the latter is much worse and cannot be detected...)

Can we somehow modify the Python compiler to make it more receptive to recursion?

No. Python implementation explicitly never uses tail recursion elimination. You could increase the recursion limit, but this is almost always a bad idea (see later in this post why).

Now for the true explanation of the underlying rationale.

Deep recursion is evil, full stop. You should never use it. Recursion is a handy tool when you can make sure that the depth will stay in sane limits. Python uses a soft limit to warn the programmer that something is going wrong before crashing the system. On the other hand, optimizing C and C++ compilers often internally change tail recursion into an iterative loop. But relying on it is highly dangerous because a slight change could prevent that optimization and cause an application crash.

As found in this other SO post, common Python implementations do not implement that tail recursion elimination. So you should not use recursion at a 5000 depth but instead use an iterative algorithm.

As your underlying computation will need all Fibonacci numbers up to the specified one, it is not hard to iteratively compute them. Furthermore, it will be much more efficient!

  • 34
    "Deep recursion is evil, full stop." -- This seems like a strong statement when some languages (e.g. pure PF langs) have no iteration at all but are still quite usable
    – Quelklef
    Jun 16, 2021 at 4:22
  • 7
    As you know that you will need all Fibonacci numbers below the searched one. No, you don't. The nth Fibonacci number is equal to the nearest integer to φ^n/√5, where φ is the golden ratio ((1 - √5)/2). Neither recursion nor iteration is needed to calculate Fibonacci numbers. (But calculating those numbers isn't the issue in the question)
    – Abigail
    Jun 16, 2021 at 11:42
  • 5
    @Abigail: You are perfectly right on a mathematical point of view. And plain wrong when we come to large numbers in Python. The direct mathematical formula will use floating point numbers which are IEEE 754 64 bits binary numbers. With a precision of at most 15 or 16 decimal digits. While Python integers are multiprecision numbers, with an arbitrary precision. Jun 16, 2021 at 12:04
  • 13
    The C++ code isn’t tail recursive, and neither GCC nor clang transform it into a tail recursive implementation. Consequently, neither perform TCO here (at -O2). And the C++ code does crash for larger n. This answer is completely unrelated to the actual reason why the code works in C++ but not in Python. Jun 16, 2021 at 23:03
  • 8
    For a less academic argument that not all the Fibonacci numbers are needed, consider the following standard-ish algorithm: compute the matrix power [[1,1],[1,0]]^n by repeated squaring, and then return the top left element of the result. This only computes O(log(n)) Fibonacci numbers below the searched one. Jun 17, 2021 at 2:52

A solution is a trampoline: the recursive function, instead of calling another function, returns a function that makes that call with the appropriate arguments. There's a loop one level higher that calls all those functions in a loop until we have the final result. I'm probably not explaining it very well; you can find resources online that do a better job.

The point is that this converts recursion to iteration. I don't think this is faster, maybe it's even slower, but the recursion depth stays low.

An implementation could look like below. I split the pair x into a and b for clarity. I then converted the recursive function to a version that keeps track of a and b as arguments, making it tail recursive.

def fib_acc(n, a, b):
    if n == 1:
        return (a, b)
    return lambda: fib_acc(n - 1, (a+b) % 997, (a+2*b) % 997)

def fib(n):
    x = fib_acc(n, 1, 2)
    while callable(x):
        x = x()
    return x

if __name__=='__main__':
  • 4
    heres one python implementation pypi.org/project/trampoline
    – jk.
    Jun 16, 2021 at 9:37
  • 1
    Beauitful. This would also be an excellent answer to stackoverflow.com/questions/189725/… , simpler and clearer than most of the examples there. Jun 16, 2021 at 22:04
  • 1
    This seems to just re-invent generators. How does it address the difference between C++ and Python? Jun 17, 2021 at 5:26
  • 1
    @MisterMiyagi It addresses the "what can we do about it?" part of the question. Jun 17, 2021 at 9:02
  • 2
    @glaba Recursion (as typically implemented) involves a global name lookup, because the recursive call is just a free variable, not a direct reference to the current function. It could be sped up using various closure tricks to make the recursive reference a local variable, but that does nothing about the cost of calling any function in Python.
    – chepner
    Jun 18, 2021 at 20:28

"Both will find the answer 996 without issues"

I do see at least one issue : the answer should be 836, not 996.

It seems that both your functions calculate Fibonacci(2*n) % p, and not Fibonacci(n) % p.

996 is the result of Fibonacci(1000) % 997.

Pick a more efficient algorithm

An inefficient algorithm stays an inefficient algorithm, regardless if it's written in C++ or Python.

In order to compute large Fibonacci numbers, there are much faster methods than simple recursion with O(n) calls (see related article).

For large n, this recursive O(log n) Python function should run in circles around your above C++ code:

from functools import lru_cache

def fibonacci(n, p):
    "Calculate Fibonacci(n) modulo p"
    if n < 3:
        return [0, 1, 1][n]
    if n % 2 == 0:
        m = n // 2
        v1 = fibonacci(m - 1, p)
        v2 = fibonacci(m, p)
        return (2*v1 + v2) * v2 % p
        m = (n + 1) // 2
        v1 = fibonacci(m, p) ** 2
        v2 = fibonacci(m - 1, p) ** 2
        return (v1 + v2) % p

print(fibonacci(500, 997))
#=> 836
print(fibonacci(1000, 997))
#=> 996

Try it online!

It will happily calculate fibonacci(10_000_000_000_000_000, 997).

It's possible to add recursion level as parameter, in order to see how deep the recursion needs to go, and display it with indentation. Here's an example for n=500:

# Recursion tree:

Try it online!

Your examples would simply look like very long diagonals:

  • 1
    The question doesn't even compute actual fibonacci numbers. Even if all the other parts about comparing Python to C++ and the explicit request on making Python handle the existing recursion better were not there, this answer would still be missing the question. Jun 17, 2021 at 11:55
  • 1
    Thanks for taking the comment gracefully. FWIW, I think it is the proper approach, just not for the question asked. It certainly doesn't seem worse than the other answers. I'm afraid this answer just missed the upvote rush hour. Jun 17, 2021 at 13:27
  • @MisterMiyagi: I'm here to learn new stuff and have interesting discussions, not (only) get upvotes. :D I just wasted half an hour trying to get the same result as OP. In vain, because both the functions are somehow broken, and don't return F(n) % 997. It should be 836, not 996. Jun 17, 2021 at 13:37
  • 1
    @MisterMiyagi: I've found the problem and updated my answer. Jun 17, 2021 at 14:03
  • 1
    @PM2Ring: I didn't notice your comment. You're right, it's not too clever to calculate F(n), F(n-1) and F(n+1) separately. Jun 23, 2021 at 8:07

For Windows executables, the stack size is specified in the header of the executable. For the Windows version of Python 3.7 x64, that size is 0x1E8480 or exactly 2.000.000 bytes.

That version crashes with

Process finished with exit code -1073741571 (0xC00000FD)

and if we look that up we find that it's a Stack Overflow.

What we can see on the (native) stack with a native debugger like WinDbg (enable child process debugging) is

fa 000000e9`6da1b680 00007fff`fb698a6e     python37!PyArg_UnpackStack+0x371
fb 000000e9`6da1b740 00007fff`fb68b841     python37!PyEval_EvalFrameDefault+0x73e
fc 000000e9`6da1b980 00007fff`fb698a6e     python37!PyArg_UnpackStack+0x371
fd 000000e9`6da1ba40 00007fff`fb68b841     python37!PyEval_EvalFrameDefault+0x73e
fe 000000e9`6da1bc80 00007fff`fb698a6e     python37!PyArg_UnpackStack+0x371
ff 000000e9`6da1bd40 00007fff`fb68b841     python37!PyEval_EvalFrameDefault+0x73e

2:011> ? 000000e9`6da1bd40 - 000000e9`6da1ba40 
Evaluate expression: 768 = 00000000`00000300

So Python will use 2 Stack frames per method call and there's an enormous 768 bytes difference in the stack positions.

If you modify that value inside the EXE (make a backup copy) with a hex editor to, let's say 256 MB

Python.exe edited in 010 Editor

you can run the following code

if __name__=='__main__':

and it will give 151 as the answer.

In C++, we can also force a Stack Overflow, e.g. by passing 500.000 as the parameter. While debugging, we get

0:000> .exr -1
ExceptionAddress: 00961015 (RecursionCpp!fib+0x00000015)
ExceptionCode: c00000fd (Stack overflow)
0:000> k
fc 00604f90 00961045     RecursionCpp!fib+0x45 [C:\...\RecursionCpp.cpp @ 7] 
fd 00604fb0 00961045     RecursionCpp!fib+0x45 [C:\...\RecursionCpp.cpp @ 7] 
fe 00604fd0 00961045     RecursionCpp!fib+0x45 [C:\...\RecursionCpp.cpp @ 7] 
ff 00604ff0 00961045     RecursionCpp!fib+0x45 [C:\...\RecursionCpp.cpp @ 7] 

0:000> ? 00604ff0 - 00604fd0
Evaluate expression: 32 = 00000020

which is just 1 stack frame per method call and only 32 bytes difference on the stack. Compared to Python, C++ can do 768/32 = 24x more recursions for the same stack size.

My Microsoft compiler created the executable with the default stack size of 1 MB (Release build, 32 Bit):

010 Editor for C++ executable

The 64 bit version has a stack difference of 64 bit (also Release build).

Tools used:


You can increase the recursion limit using:

import sys


But note that this limit exists for a reason and that pure Python is not optimized for recursion (and compute-intensive tasks in general).

  • 15
    This just turns a clean Python stack overflow into a messy C stack overflow once you run out of C-level stack space. Jun 16, 2021 at 7:40
  • 6
    This isn't a solution, it just pushes the inevitable stack overflow due to infinite recursion further out. The OP's underlying unasked questions are "a) Why doesn't Python do tail recursion on function calls?" and *"b) Why is cPython's stackframe size(/recursionlimit) so low?
    – smci
    Jun 17, 2021 at 4:43

An alternative to a trampoline is to use reduce. if you can change the recursive function to be tail-recursive, you can implement it with reduce, here's a possible implementation.

reduce is internally implemented iteratively, so you get to use your recursive function without blowing up the stack.

def inner_fib(acc, num):
    # acc is a list of two values 
    return [(acc[0]+acc[1]) % 997, (acc[0]+2*acc[1]) % 997]

def fib(n):
  return reduce(inner_fib, 
                range(2, n+1), # start from 2 since n=1 is covered in the base case
                [1,2])        # [1,2] is the base case

  • 2
    Be aware the question is not about plain Fibonacci numbers, but modulo 997. Jul 15, 2021 at 16:24
  • thanks for pointing that out. is this better? Jul 16, 2021 at 4:23

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