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PEP: 554
Title: Multiple Interpreters in the Stdlib
Author: Eric Snow <ericsnowcurrently@gmail.com>
Status: Draft
Type: Standards Track
Content-Type: text/x-rst
Created: 2017-09-05
Python-Version: 3.7
Post-History: 07-Sep-2017, 08-Sep-2017, 13-Sep-2017
Abstract
========
CPython has supported subinterpreters, with increasing levels of
support, since version 1.5. The feature has been available via the
C-API. [c-api]_ Subinterpreters operate in
`relative isolation from one another <Interpreter Isolation_>`_, which
provides the basis for an
`alternative concurrency model <Concurrency_>`_.
This proposal introduces the stdlib ``interpreters`` module. The module
will be `provisional <Provisional Status_>`_. It exposes the basic
functionality of subinterpreters already provided by the C-API.
Proposal
========
The ``interpreters`` module will be added to the stdlib. It will
provide a high-level interface to subinterpreters and wrap the low-level
``_interpreters`` module. See the `Examples`_ section for concrete
usage and use cases.
API for interpreters
--------------------
The module provides the following functions:
``list_all()``::
Return a list of all existing interpreters.
``get_current()``::
Return the currently running interpreter.
``create()``::
Initialize a new Python interpreter and return it. The
interpreter will be created in the current thread and will remain
idle until something is run in it. The interpreter may be used
in any thread and will run in whichever thread calls
``interp.run()``.
The module also provides the following class:
``Interpreter(id)``::
id:
The interpreter's ID (read-only).
is_running():
Return whether or not the interpreter is currently executing code.
Calling this on the current interpreter will always return True.
destroy():
Finalize and destroy the interpreter.
This may not be called on an already running interpreter. Doing
so results in a RuntimeError.
run(source_str, /, **shared):
Run the provided Python source code in the interpreter. Any
keyword arguments are added to the interpreter's execution
namespace (the interpreter's "__main__" module). If any of the
values are not supported for sharing between interpreters then
ValueError gets raised. Currently only channels (see
"create_channel()" below) are supported.
This may not be called on an already running interpreter. Doing
so results in a RuntimeError.
A "run()" call is quite similar to any other function call. Once
it completes, the code that called "run()" continues executing
(in the original interpreter). Likewise, if there is any uncaught
exception, it propagates into the code where "run()" was called.
The big difference is that "run()" executes the code in an
entirely different interpreter, with entirely separate state.
The state of the current interpreter in the current OS thread
is swapped out with the state of the target interpreter (the one
that will execute the code). When the target finishes executing,
the original interpreter gets swapped back in and its execution
resumes.
So calling "run()" will effectively cause the current Python
thread to pause. Sometimes you won't want that pause, in which
case you should make the "run()" call in another thread. To do
so, add a function that calls "run()" and then run that function
in a normal "threading.Thread".
Note that interpreter's state is never reset, neither before
"run()" executes the code nor after. Thus the interpreter
state is preserved between calls to "run()". This includes
"sys.modules", the "builtins" module, and the internal state
of C extension modules.
Also note that "run()" executes in the namespace of the "__main__"
module, just like scripts, the REPL, "-m", and "-c". Just as
the interpreter's state is not ever reset, the "__main__" module
is never reset. You can imagine concatenating the code from each
"run()" call into one long script. This is the same as how the
REPL operates.
Supported code: source text.
API for sharing data
--------------------
The mechanism for passing objects between interpreters is through
channels. A channel is a simplex FIFO similar to a pipe. The main
difference is that channels can be associated with zero or more
interpreters on either end. Unlike queues, which are also many-to-many,
channels have no buffer.
``create_channel()``::
Create a new channel and return (recv, send), the RecvChannel and
SendChannel corresponding to the ends of the channel. The channel
is not closed and destroyed (i.e. garbage-collected) until the number
of associated interpreters returns to 0.
An interpreter gets associated with a channel by calling its "send()"
or "recv()" method. That association gets dropped by calling
"close()" on the channel.
Both ends of the channel are supported "shared" objects (i.e. may be
safely shared by different interpreters. Thus they may be passed as
keyword arguments to "Interpreter.run()".
``list_all_channels()``::
Return a list of all open (RecvChannel, SendChannel) pairs.
``RecvChannel(id)``::
The receiving end of a channel. An interpreter may use this to
receive objects from another interpreter. At first only bytes will
be supported.
id:
The channel's unique ID.
interpreters:
The list of associated interpreters: those that have called
the "recv()" or "__next__()" methods and haven't called "close()".
recv():
Return the next object from the channel. If none have been sent
then wait until the next send. This associates the current
interpreter with the channel.
If the channel is already closed (see the close() method)
then raise EOFError. If the channel isn't closed, but the current
interpreter already called the "close()" method (which drops its
association with the channel) then raise ValueError.
recv_nowait(default=None):
Return the next object from the channel. If none have been sent
then return the default. Otherwise, this is the same as the
"recv()" method.
close():
No longer associate the current interpreter with the channel (on
the receiving end) and block future association (via the "recv()"
method. If the interpreter was never associated with the channel
then still block future association. Once an interpreter is no
longer associated with the channel, subsequent (or current) send()
and recv() calls from that interpreter will raise ValueError
(or EOFError if the channel is actually marked as closed).
Once the number of associated interpreters on both ends drops
to 0, the channel is actually marked as closed. The Python
runtime will garbage collect all closed channels, though it may
not be immediately. Note that "close()" is automatically called
in behalf of the current interpreter when the channel is no longer
used (i.e. has no references) in that interpreter.
This operation is idempotent. Return True if "close()" has not
been called before by the current interpreter.
``SendChannel(id)``::
The sending end of a channel. An interpreter may use this to send
objects to another interpreter. At first only bytes will be
supported.
id:
The channel's unique ID.
interpreters:
The list of associated interpreters (those that have called
the "send()" method).
send(obj):
Send the object to the receiving end of the channel. Wait until
the object is received. If the channel does not support the
object then ValueError is raised. Currently only bytes are
supported.
If the channel is already closed (see the close() method)
then raise EOFError. If the channel isn't closed, but the current
interpreter already called the "close()" method (which drops its
association with the channel) then raise ValueError.
send_nowait(obj):
Send the object to the receiving end of the channel. If the
object is received then return True. If not then return False.
Otherwise, this is the same as the "send()" method.
close():
This is the same as "RecvChannel.close(), but applied to the
sending end of the channel.
Examples
========
Run isolated code
-----------------
::
interp = interpreters.create()
print('before')
interp.run('print("during")')
print('after')
Run in a thread
---------------
::
interp = interpreters.create()
def run():
interp.run('print("during")')
t = threading.Thread(target=run)
print('before')
t.start()
print('after')
Pre-populate an interpreter
---------------------------
::
interp = interpreters.create()
interp.run(tw.dedent("""
import some_lib
import an_expensive_module
some_lib.set_up()
"""))
wait_for_request()
interp.run(tw.dedent("""
some_lib.handle_request()
"""))
Handling an exception
---------------------
::
interp = interpreters.create()
try:
interp.run(tw.dedent("""
raise KeyError
"""))
except KeyError:
print("got the error from the subinterpreter")
Synchronize using a channel
---------------------------
::
interp = interpreters.create()
r, s = interpreters.create_channel()
def run():
interp.run(tw.dedent("""
reader.recv()
print("during")
reader.close()
"""),
reader=r))
t = threading.Thread(target=run)
print('before')
t.start()
print('after')
s.send(b'')
s.close()
Sharing a file descriptor
-------------------------
::
interp = interpreters.create()
r1, s1 = interpreters.create_channel()
r2, s2 = interpreters.create_channel()
def run():
interp.run(tw.dedent("""
fd = int.from_bytes(
reader.recv(), 'big')
for line in os.fdopen(fd):
print(line)
writer.send(b'')
"""),
reader=r1, writer=s2)
t = threading.Thread(target=run)
t.start()
with open('spamspamspam') as infile:
fd = infile.fileno().to_bytes(1, 'big')
s.send(fd)
r.recv()
Passing objects via pickle
--------------------------
::
interp = interpreters.create()
r, s = interpreters.create_channel()
interp.run(tw.dedent("""
import pickle
"""),
reader=r)
def run():
interp.run(tw.dedent("""
data = reader.recv()
while data:
obj = pickle.loads(data)
do_something(obj)
data = reader.recv()
reader.close()
"""),
reader=r)
t = threading.Thread(target=run)
t.start()
for obj in input:
data = pickle.dumps(obj)
s.send(data)
s.send(b'')
Rationale
=========
Running code in multiple interpreters provides a useful level of
isolation within the same process. This can be leveraged in number
of ways. Furthermore, subinterpreters provide a well-defined framework
in which such isolation may extended.
Nick Coghlan explained some of the benefits through a comparison with
multi-processing [benefits]_::
[I] expect that communicating between subinterpreters is going
to end up looking an awful lot like communicating between
subprocesses via shared memory.
The trade-off between the two models will then be that one still
just looks like a single process from the point of view of the
outside world, and hence doesn't place any extra demands on the
underlying OS beyond those required to run CPython with a single
interpreter, while the other gives much stricter isolation
(including isolating C globals in extension modules), but also
demands much more from the OS when it comes to its IPC
capabilities.
The security risk profiles of the two approaches will also be quite
different, since using subinterpreters won't require deliberately
poking holes in the process isolation that operating systems give
you by default.
CPython has supported subinterpreters, with increasing levels of
support, since version 1.5. While the feature has the potential
to be a powerful tool, subinterpreters have suffered from neglect
because they are not available directly from Python. Exposing the
existing functionality in the stdlib will help reverse the situation.
This proposal is focused on enabling the fundamental capability of
multiple isolated interpreters in the same Python process. This is a
new area for Python so there is relative uncertainly about the best
tools to provide as companions to subinterpreters. Thus we minimize
the functionality we add in the proposal as much as possible.
Concerns
--------
* "subinterpreters are not worth the trouble"
Some have argued that subinterpreters do not add sufficient benefit
to justify making them an official part of Python. Adding features
to the language (or stdlib) has a cost in increasing the size of
the language. So it must pay for itself. In this case, subinterpreters
provide a novel concurrency model focused on isolated threads of
execution. Furthermore, they present an opportunity for changes in
CPython that will allow simulateous use of multiple CPU cores (currently
prevented by the GIL).
Alternatives to subinterpreters include threading, async, and
multiprocessing. Threading is limited by the GIL and async isn't
the right solution for every problem (nor for every person).
Multiprocessing is likewise valuable in some but not all situations.
Direct IPC (rather than via the multiprocessing module) provides
similar benefits but with the same caveat.
Notably, subinterpreters are not intended as a replacement for any of
the above. Certainly they overlap in some areas, but the benefits of
subinterpreters include isolation and (potentially) performance. In
particular, subinterpreters provide a direct route to an alternate
concurrency model (e.g. CSP) which has found success elsewhere and
will appeal to some Python users. That is the core value that the
``interpreters`` module will provide.
* "stdlib support for subinterpreters adds extra burden
on C extension authors"
In the `Interpreter Isolation`_ section below we identify ways in
which isolation in CPython's subinterpreters is incomplete. Most
notable is extension modules that use C globals to store internal
state. PEP 3121 and PEP 489 provide a solution for most of the
problem, but one still remains. [petr-c-ext]_ Until that is resolved,
C extension authors will face extra difficulty to support
subinterpreters.
Consequently, projects that publish extension modules may face an
increased maintenance burden as their users start using subinterpreters,
where their modules may break. This situation is limited to modules
that use C globals (or use libraries that use C globals) to store
internal state. For numpy, the reported-bug rate is one every 6
months. [bug-rate]_
Ultimately this comes down to a question of how often it will be a
problem in practice: how many projects would be affected, how often
their users will be affected, what the additional maintenance burden
will be for projects, and what the overall benefit of subinterpreters
is to offset those costs. The position of this PEP is that the actual
extra maintenance burden will be small and well below the threshold at
which subinterpreters are worth it.
About Subinterpreters
=====================
Shared data
-----------
Subinterpreters are inherently isolated (with caveats explained below),
in contrast to threads. This enables `a different concurrency model
<Concurrency_>`_ than is currently readily available in Python.
`Communicating Sequential Processes`_ (CSP) is the prime example.
A key component of this approach to concurrency is message passing. So
providing a message/object passing mechanism alongside ``Interpreter``
is a fundamental requirement. This proposal includes a basic mechanism
upon which more complex machinery may be built. That basic mechanism
draws inspiration from pipes, queues, and CSP's channels. [fifo]_
The key challenge here is that sharing objects between interpreters
faces complexity due in part to CPython's current memory model.
Furthermore, in this class of concurrency, the ideal is that objects
only exist in one interpreter at a time. However, this is not practical
for Python so we initially constrain supported objects to ``bytes``.
There are a number of strategies we may pursue in the future to expand
supported objects and object sharing strategies.
Note that the complexity of object sharing increases as subinterpreters
become more isolated, e.g. after GIL removal. So the mechanism for
message passing needs to be carefully considered. Keeping the API
minimal and initially restricting the supported types helps us avoid
further exposing any underlying complexity to Python users.
To make this work, the mutable shared state will be managed by the
Python runtime, not by any of the interpreters. Initially we will
support only one type of objects for shared state: the channels provided
by ``create_channel()``. Channels, in turn, will carefully manage
passing objects between interpreters.
Interpreter Isolation
---------------------
CPython's interpreters are intended to be strictly isolated from each
other. Each interpreter has its own copy of all modules, classes,
functions, and variables. The same applies to state in C, including in
extension modules. The CPython C-API docs explain more. [caveats]_
However, there are ways in which interpreters share some state. First
of all, some process-global state remains shared:
* file descriptors
* builtin types (e.g. dict, bytes)
* singletons (e.g. None)
* underlying static module data (e.g. functions) for
builtin/extension/frozen modules
There are no plans to change this.
Second, some isolation is faulty due to bugs or implementations that did
not take subinterpreters into account. This includes things like
extension modules that rely on C globals. [cryptography]_ In these
cases bugs should be opened (some are already):
* readline module hook functions (http://bugs.python.org/issue4202)
* memory leaks on re-init (http://bugs.python.org/issue21387)
Finally, some potential isolation is missing due to the current design
of CPython. Improvements are currently going on to address gaps in this
area:
* interpreters share the GIL
* interpreters share memory management (e.g. allocators, gc)
* GC is not run per-interpreter [global-gc]_
* at-exit handlers are not run per-interpreter [global-atexit]_
* extensions using the ``PyGILState_*`` API are incompatible [gilstate]_
Concurrency
-----------
Concurrency is a challenging area of software development. Decades of
research and practice have led to a wide variety of concurrency models,
each with different goals. Most center on correctness and usability.
One class of concurrency models focuses on isolated threads of
execution that interoperate through some message passing scheme. A
notable example is `Communicating Sequential Processes`_ (CSP), upon
which Go's concurrency is based. The isolation inherent to
subinterpreters makes them well-suited to this approach.
Existing Usage
--------------
Subinterpreters are not a widely used feature. In fact, the only
documented cases of wide-spread usage are
`mod_wsgi <https://github.com/GrahamDumpleton/mod_wsgi>`_and
`JEP <https://github.com/ninia/jep>`_. On the one hand, this case
provides confidence that existing subinterpreter support is relatively
stable. On the other hand, there isn't much of a sample size from which
to judge the utility of the feature.
Provisional Status
==================
The new ``interpreters`` module will be added with "provisional" status
(see PEP 411). This allows Python users to experiment with the feature
and provide feedback while still allowing us to adjust to that feedback.
The module will be provisional in Python 3.7 and we will make a decision
before the 3.8 release whether to keep it provisional, graduate it, or
remove it.
Alternate Python Implementations
================================
I'll be soliciting feedback from the different Python implementors about
subinterpreter support.
Multiple-interpter support in the major Python implementations:
TBD
* jython: yes [jython]_
* ironpython: yes?
* pypy: maybe not? [pypy]_
* micropython: ???
Open Questions
==============
Leaking exceptions across interpreters
--------------------------------------
As currently proposed, uncaught exceptions from ``run()`` propagate
to the frame that called it. However, this means that exception
objects are leaking across the inter-interpreter boundary. Likewise,
the frames in the traceback potentially leak.
While that might not be a problem currently, it would be a problem once
interpreters get better isolation relative to memory management (which
is necessary to stop sharing the GIL between interpreters). So the
semantics of how the exceptions propagate needs to be resolved.
Possible solutions:
* convert at the boundary (e.g. ``subprocess.CalledProcessError``)
* wrap in a proxy at the boundary (including with support for
something like ``err.raise()`` to propagate the traceback).
* return the exception (or its proxy) from ``run()`` instead of
raising it
* return a result object (like ``subprocess`` does) [result-object]_
* throw the exception away and expect users to deal with unhandled
exceptions explicitly in the script they pass to ``run()``
(they can pass error info out via channels); with threads you have
to do something similar
Initial support for buffers in channels
---------------------------------------
An alternative to support for bytes in channels in support for
read-only buffers (the PEP 3118 kind). Then ``recv()`` would return
a memoryview to expose the buffer in a zero-copy way. This is similar
to what ``multiprocessing.Connection`` supports. [mp-conn]
Switching to such an approach would help resolve questions of how
passing bytes through channels will work once we isolate memory
management in interpreters.
Does every interpreter think that their thread is the "main" thread?
--------------------------------------------------------------------
CPython's interpreter implementation identifies the OS thread in which
it was started as the "main" thread. The interpreter the has slightly
different behavior depending on if the current thread is the main one
or not. This presents a problem in cases where "main thread" is meant
to imply "main thread in the main interpreter" [main-thread]_, where
the main interpreter is the initial one.
Disallow subinterpreters in the main thread?
--------------------------------------------
This is a specific case of the above issue. Currently in CPython,
"we need a main \*thread\* in order to sensibly manage the way signal
handling works across different platforms". [main-thread]_
Since signal handlers are part of the interpreter state, running a
subinterpreter in the main thread means that the main interpreter
can no longer properly handle signals (since it's effectively paused).
Furthermore, running a subinterpreter in the main thread would
conceivably allow setting signal handlers on that interpreter, which
would likewise impact signal handling when that interpreter isn't
running or is running in a different thread.
Ultimately, running subinterpreters in the main OS thread introduces
complications to the signal handling implementation. So it may make
the most sense to disallow running subinterpreters in the main thread.
Support for it could be considered later. The downside is that folks
wanting to try out subinterpreters would be required to take the extra
step of using threads. This could slow adoption and experimentation,
whereas without the restriction there's less of an obstacle.
Pass channels explicitly to run()?
----------------------------------
Nick Coghlan suggested [explicit-channels]_ that we may want something more explicit than
the keyword args of ``run()`` (``**shared``)::
The subprocess.run() comparison does make me wonder whether this
might be a more future-proof signature for Interpreter.run() though:
def run(source_str, /, *, channels=None):
...
That way channels can be a namespace *specifically* for passing in
channels, and can be reported as such on RunResult. If we decide
to allow arbitrary shared objects in the future, or add flag options
like "reraise=True" to reraise exceptions from the subinterpreter
in the current interpreter, we'd have that ability, rather than
having the entire potential keyword namespace taken up for passing
shared objects.
and::
It does occur to me that if we wanted to align with the way the
`runpy` module spells that concept, we'd call the option
`init_globals`, but I'm thinking it will be better to only allow
channels to be passed through directly, and require that everything
else be sent through a channel.
Deferred Functionality
======================
In the interest of keeping this proposal minimal, the following
functionality has been left out for future consideration. Note that
this is not a judgement against any of said capability, but rather a
deferment. That said, each is arguably valid.
Interpreter.call()
------------------
It would be convenient to run existing functions in subinterpreters
directly. ``Interpreter.run()`` could be adjusted to support this or
a ``call()`` method could be added::
Interpreter.call(f, *args, **kwargs)
This suffers from the same problem as sharing objects between
interpreters via queues. The minimal solution (running a source string)
is sufficient for us to get the feature out where it can be explored.
timeout arg to recv() and send()
--------------------------------
Typically functions that have a ``block`` argument also have a
``timeout`` argument. It sometimes makes sense to do likewise for
functions that otherwise block, like the channel ``recv()`` and
``send()`` methods. We can add it later if needed.
get_main()
----------
CPython has a concept of a "main" interpreter. This is the initial
interpreter created during CPython's runtime initialization. It may
be useful to identify the main interpreter. For instance, the main
interpreter should not be destroyed. However, for the basic
functionality of a high-level API a ``get_main()`` function is not
necessary. Furthermore, there is no requirement that a Python
implementation have a concept of a main interpreter. So until there's
a clear need we'll leave ``get_main()`` out.
Interpreter.run_in_thread()
---------------------------
This method would make a ``run()`` call for you in a thread. Doing this
using only ``threading.Thread`` and ``run()`` is relatively trivial so
we've left it out.
Synchronization Primitives
--------------------------
The ``threading`` module provides a number of synchronization primitives
for coordinating concurrent operations. This is especially necessary
due to the shared-state nature of threading. In contrast,
subinterpreters do not share state. Data sharing is restricted to
channels, which do away with the need for explicit synchronization. If
any sort of opt-in shared state support is added to subinterpreters in
the future, that same effort can introduce synchronization primitives
to meet that need.
CSP Library
-----------
A ``csp`` module would not be a large step away from the functionality
provided by this PEP. However, adding such a module is outside the
minimalist goals of this proposal.
Syntactic Support
-----------------
The ``Go`` language provides a concurrency model based on CSP, so
it's similar to the concurrency model that subinterpreters support.
``Go`` provides syntactic support, as well several builtin concurrency
primitives, to make concurrency a first-class feature. Conceivably,
similar syntactic (and builtin) support could be added to Python using
subinterpreters. However, that is *way* outside the scope of this PEP!
Multiprocessing
---------------
The ``multiprocessing`` module could support subinterpreters in the same
way it supports threads and processes. In fact, the module's
maintainer, Davin Potts, has indicated this is a reasonable feature
request. However, it is outside the narrow scope of this PEP.
C-extension opt-in/opt-out
--------------------------
By using the ``PyModuleDef_Slot`` introduced by PEP 489, we could easily
add a mechanism by which C-extension modules could opt out of support
for subinterpreters. Then the import machinery, when operating in
a subinterpreter, would need to check the module for support. It would
raise an ImportError if unsupported.
Alternately we could support opting in to subinterpreter support.
However, that would probably exclude many more modules (unnecessarily)
than the opt-out approach.
The scope of adding the ModuleDef slot and fixing up the import
machinery is non-trivial, but could be worth it. It all depends on
how many extension modules break under subinterpreters. Given the
relatively few cases we know of through mod_wsgi, we can leave this
for later.
Poisoning channels
------------------
CSP has the concept of poisoning a channel. Once a channel has been
poisoned, and ``send()`` or ``recv()`` call on it will raise a special
exception, effectively ending execution in the interpreter that tried
to use the poisoned channel.
This could be accomplished by adding a ``poison()`` method to both ends
of the channel. The ``close()`` method could work if it had a ``force``
option to force the channel closed. Regardless, these semantics are
relatively specialized and can wait.
Sending channels over channels
------------------------------
Some advanced usage of subinterpreters could take advantage of the
ability to send channels over channels, in addition to bytes. Given
that channels will already be multi-interpreter safe, supporting then
in ``RecvChannel.recv()`` wouldn't be a big change. However, this can
wait until the basic functionality has been ironed out.
Reseting __main__
-----------------
As proposed, every call to ``Interpreter.run()`` will execute in the
namespace of the interpreter's existing ``__main__`` module. This means
that data persists there between ``run()`` calls. Sometimes this isn't
desireable and you want to execute in a fresh ``__main__``. Also,
you don't necessarily want to leak objects there that you aren't using
any more.
Note that the following won't work right because it will clear too much
(e.g. ``__name__`` and the other "__dunder__" attributes::
interp.run('globals().clear()')
Possible solutions include:
* a ``create()`` arg to indicate resetting ``__main__`` after each
``run`` call
* an ``Interpreter.reset_main`` flag to support opting in or out
after the fact
* an ``Interpreter.reset_main()`` method to opt in when desired
* ``importlib.util.reset_globals()`` [reset_globals]_
Also note that reseting ``__main__`` does nothing about state stored
in other modules. So any solution would have to be clear about the
scope of what is being reset. Conceivably we could invent a mechanism
by which any (or every) module could be reset, unlike ``reload()``
which does not clear the module before loading into it. Regardless,
since ``__main__`` is the execution namespace of the interpreter,
resetting it has a much more direct correlation to interpreters and
their dynamic state than does resetting other modules. So a more
generic module reset mechanism may prove unnecessary.
This isn't a critical feature initially. It can wait until later
if desirable.
Support passing ints in channels
--------------------------------
Passing ints around should be fine and ultimately is probably
desirable. However, we can get by with serializing them as bytes
for now. The goal is a minimal API for the sake of basic
functionality at first.
File descriptors and sockets in channels
----------------------------------------
Given that file descriptors and sockets are process-global resources,
support for passing them through channels is a reasonable idea. They
would be a good candidate for the first effort at expanding the types
that channels support. They aren't strictly necessary for the initial
API.
Integration with async
----------------------
Per Antoine Pitrou [async]_::
Has any thought been given to how FIFOs could integrate with async
code driven by an event loop (e.g. asyncio)? I think the model of
executing several asyncio (or Tornado) applications each in their
own subinterpreter may prove quite interesting to reconcile multi-
core concurrency with ease of programming. That would require the
FIFOs to be able to synchronize on something an event loop can wait
on (probably a file descriptor?).
A possible solution is to provide async implementations of the blocking
channel methods (``__next__()``, ``recv()``, and ``send()``). However,
the basic functionality of subinterpreters does not depend on async and
can be added later.
Support for iteration
---------------------
Supporting iteration on ``RecvChannel`` (via ``__iter__()`` or
``_next__()``) may be useful. A trivial implementation would use the
``recv()`` method, similar to how files do iteration. Since this isn't
a fundamental capability and has a simple analog, adding iteration
support can wait until later.
Channel context managers
------------------------
Context manager support on ``RecvChannel`` and ``SendChannel`` may be
helpful. The implementation would be simple, wrapping a call to
``close()`` like files do. As with iteration, this can wait.
Pipes and Queues
----------------
With the proposed object passing machanism of "channels", other similar
basic types aren't required to achieve the minimal useful functionality
of subinterpreters. Such types include pipes (like channels, but
one-to-one) and queues (like channels, but buffered). See below in
`Rejected Ideas` for more information.
Even though these types aren't part of this proposal, they may still
be useful in the context of concurrency. Adding them later is entirely
reasonable. The could be trivially implemented as wrappers around
channels. Alternatively they could be implemented for efficiency at the
same low level as channels.
interpreters.RunFailedError
---------------------------
As currently proposed, ``Interpreter.run()`` offers you no way to
distinguish an error coming from sub-interpreter from any other
error in the current interpreter. Your only option would be to
explicitly wrap your ``run()`` call in a ``try: ... except Exception:``.
If this is a problem in practice then would could add something like
``interpreters.RunFailedError`` and raise that in ``run()``, chaining
the actual error.
Of course, this depends on how we resolve `Leaking exceptions across
interpreters`_.
Rejected Ideas
==============
Explicit channel association
----------------------------
Interpreters are implicitly associated with channels upon ``recv()`` and
``send()`` calls. They are de-associated with ``close()`` calls. The
alternative would be explicit methods. It would be either
``add_channel()`` and ``remove_channel()`` methods on ``Interpreter``
objects or something similar on channel objects.
In practice, this level of management shouldn't be necessary for users.
So adding more explicit support would only add clutter to the API.
Use pipes instead of channels
-----------------------------
A pipe would be a simplex FIFO between exactly two interpreters. For
most use cases this would be sufficient. It could potentially simplify
the implementation as well. However, it isn't a big step to supporting
a many-to-many simplex FIFO via channels. Also, with pipes the API
ends up being slightly more complicated, requiring naming the pipes.
Use queues instead of channels
------------------------------
The main difference between queues and channels is that queues support
buffering. This would complicate the blocking semantics of ``recv()``
and ``send()``. Also, queues can be built on top of channels.
"enumerate"
-----------
The ``list_all()`` function provides the list of all interpreters.
In the threading module, which partly inspired the proposed API, the
function is called ``enumerate()``. The name is different here to
avoid confusing Python users that are not already familiar with the
threading API. For them "enumerate" is rather unclear, whereas
"list_all" is clear.
References
==========
.. [c-api]
https://docs.python.org/3/c-api/init.html#sub-interpreter-support
.. _Communicating Sequential Processes:
.. [CSP]
https://en.wikipedia.org/wiki/Communicating_sequential_processes
https://github.com/futurecore/python-csp
.. [fifo]
https://docs.python.org/3/library/multiprocessing.html#multiprocessing.Pipe
https://docs.python.org/3/library/multiprocessing.html#multiprocessing.Queue
https://docs.python.org/3/library/queue.html#module-queue
http://stackless.readthedocs.io/en/2.7-slp/library/stackless/channels.html
https://golang.org/doc/effective_go.html#sharing
http://www.jtolds.com/writing/2016/03/go-channels-are-bad-and-you-should-feel-bad/
.. [caveats]
https://docs.python.org/3/c-api/init.html#bugs-and-caveats
.. [petr-c-ext]
https://mail.python.org/pipermail/import-sig/2016-June/001062.html
https://mail.python.org/pipermail/python-ideas/2016-April/039748.html
.. [cryptography]
https://github.com/pyca/cryptography/issues/2299
.. [global-gc]
http://bugs.python.org/issue24554
.. [gilstate]
https://bugs.python.org/issue10915
http://bugs.python.org/issue15751
.. [global-atexit]
https://bugs.python.org/issue6531
.. [mp-conn]
https://docs.python.org/3/library/multiprocessing.html#multiprocessing.Connection
.. [bug-rate]
https://mail.python.org/pipermail/python-ideas/2017-September/047094.html
.. [benefits]
https://mail.python.org/pipermail/python-ideas/2017-September/047122.html
.. [main-thread]
https://mail.python.org/pipermail/python-ideas/2017-September/047144.html
https://mail.python.org/pipermail/python-dev/2017-September/149566.html
.. [explicit-channels]
https://mail.python.org/pipermail/python-dev/2017-September/149562.html
https://mail.python.org/pipermail/python-dev/2017-September/149565.html
.. [reset_globals]
https://mail.python.org/pipermail/python-dev/2017-September/149545.html
.. [async]
https://mail.python.org/pipermail/python-dev/2017-September/149420.html
https://mail.python.org/pipermail/python-dev/2017-September/149585.html
.. [result-object]
https://mail.python.org/pipermail/python-dev/2017-September/149562.html
.. [jython]
https://mail.python.org/pipermail/python-ideas/2017-May/045771.html
.. [pypy]
https://mail.python.org/pipermail/python-ideas/2017-September/046973.html
Copyright
=========
This document has been placed in the public domain.
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