PEP 342 (Coroutines via Enhanced Generators) added a throw() method to generator objects, which allows the caller to raise an exception inside the generator (as if it was thrown by the yield expression).

I am wondering what the use cases for this feature are.

  • 2
    Context: I'm currently working on a generator/coroutine implementation in PHP and I'm wondering whether or not I should include the throw() functionality.
    – NikiC
    Jul 14, 2012 at 16:51
  • 4
    Do you want generators, or coroutines? While Python conflates the two, and you can build the former from the latter, they are different (as in, an entirely different league).
    – user395760
    Jul 14, 2012 at 17:43
  • 2
    Among other things, this allows to implement @contextmanager decorator.
    – Alexey
    Jul 30, 2020 at 15:11

4 Answers 4


Let's say I use a generator to handle adding information to a database; I use this to store network-received information, and by using a generator I can do this efficiently whenever I actually receive data, and do other things otherwise.

So, my generator first opens a database connection, and every time you send it something, it'll add a row:

def add_to_database(connection_string):
    db = mydatabaselibrary.connect(connection_string)
    cursor = db.cursor()
    while True:
        row = yield
        cursor.execute('INSERT INTO mytable VALUES(?, ?, ?)', row)

That is all fine and well; every time I .send() my data it'll insert a row.

But what if my database is transactional? How do I signal this generator when to commit the data to the database? And when to abort the transaction? Moreover, it is holding an open connection to the database, maybe I sometimes want it to close that connection to reclaim resources.

This is where the .throw() method comes in; with .throw() I can raise exceptions in that method to signal certain circumstances:

def add_to_database(connection_string):
    db = mydatabaselibrary.connect(connection_string)
    cursor = db.cursor()
        while True:
                row = yield
                cursor.execute('INSERT INTO mytable VALUES(?, ?, ?)', row)
            except CommitException:
            except AbortException:

The .close() method on a generator does essentially the same thing; it uses the GeneratorExit exception combined with .throw() to close a running generator.

All this is an important underpinning of how coroutines work; coroutines are essentially generators, together with some additional syntax to make writing a coroutine easier and clearer. But under the hood they are still built on the same yielding, and sending. And when you are running multiple coroutines in parallel, you need a way to cleanly exit those coroutines if one of them has failed, just to name an example.

  • 10
    Thanks for your answer. This is definitely an interesting use case. But I'm wondering whether this could be classified as exception-abuse. Commit and abort aren't exceptional conditions, but rather part of the usual behavior. So here exceptions are basically used as a means to change the control-flow.
    – NikiC
    Jul 14, 2012 at 21:06
  • 2
    @NikiC Your point is valid for synchronous programming but you need to view this in the world of asynch programming. Imagine the above try block was much larger (call the code inside try, the general use case) and maybe even throw in a few more yield statements so the generator is entering and exitting during its general use case. The .throw() method allows us to "break out" to handle special exceptions. If you are familiar with interrupt handlers you can think of it like that. This way, no matter where in the use case, we can interrupt the flow to perform special (if not critical) operations
    – Paul Seeb
    Jul 18, 2012 at 22:58
  • 4
    @NikiC There is nothing wrong with using exceptions for control flow.
    – Marcin
    Jul 19, 2012 at 17:18
  • 6
    @NikiC: Python uses exceptions for control flow all the time: see the aforementioned GeneratorExit exception. While languages like C++ and Java encourage people to limit their use of exceptions to truly exceptional cases, Python does use them a lot more -- but usually across a defined interface. Jul 20, 2012 at 17:25
  • I assume throw() or close() happens in cursor.execute()? This will result in ValueError: Generator not running instead of Generator Exit regarldess of what error you put in. Why not just raise an error directly?
    – astralwolf
    Sep 27, 2021 at 1:34

In my opinion the throw() method is useful for many reasons.

  1. Symmetry: there is no strong reason for which an exceptional condition should be handled only in the caller and not also in the generator function. (Suppose that a generator reading values from a database returns a bad value, and suppose that only the caller knows that the value is bad. With the throw() method the caller can signal to the generator that there is an abnormal situation that has to be corrected.) If the generator can raise an exception, intercepted by the caller, the reverse should also be possible.

  2. Flexibility: a generator function may have more than one yield statement, and the caller may not be aware of the internal state of the generator. By throwing exceptions it is possible to reset the generator to a known state, or to implement more sophisticated flow control which would be way more cumbersome with next(), send(), close() alone.

An example of resetting the internal state:

def gen():
        yield 10
        yield 20
        yield 30
        #Reset back to State1!
        yield gen()

g = gen()
g = g.throw(ValueError) #state of g has been reset


Asking for use cases may be misleading: for every use case you could produce a counter example without the need for a throw() method, and the discussion would continue forever...

  • can an example be given where throw is used to reset the generator to a known state?
    – astralwolf
    Sep 27, 2021 at 0:14

One use case is to include information about the internal state of a generator in the stack trace when an exception occurs -- information that would not otherwise be visible to the caller.

For example, say we have a generator like the following where the internal state we want is the current index number of the generator:

def gen_items():
    for i, item in enumerate(["", "foo", "", "foo", "bad"]):
        if not item:
            yield item
        except Exception:
            raise Exception("error during index: %d" % i)

The following code is not sufficient to trigger the additional exception handling:

# Stack trace includes only: "ValueError: bad value"
for item in gen_items():
    if item == "bad":
        raise ValueError("bad value")

However, the following code does provide the internal state:

# Stack trace also includes: "Exception: error during index: 4"
gen = item_generator()
for item in gen:
    if item == "bad":
        gen.throw(ValueError, "bad value")

This "answer" is more like a trivia.

We can (ab)use the generator's throw() to raise Exception inside a lambda, which does not otherwise support the raise statement.

foo = lambda: (_ for _ in ()).throw(Exception('foobar'))

Quoted from https://stackoverflow.com/a/8294654/728675

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