forked from goodboy/tractor
				
			Initial readme documenting most features
There is a slew of tests to match to verify everything documented thus far. Hopefully it's a decent little start :)init_docs
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| tractor | ||||
| ======= | ||||
| A minimalist `actor model`_ built on multiprocessing_ and trio_. | ||||
| 
 | ||||
| ``tractor`` is an attempt to take trionic_ concurrency concepts and apply | ||||
| them to distributed-multicore Python. | ||||
| 
 | ||||
| ``tractor`` lets you run or spawn Python processes which each internally | ||||
| run a single ``trio`` task tree (also known as an `async sandwich`_) and | ||||
| which can communicate with each other over channels_ using a transparent | ||||
| async function calling API called *portals* (a name also borrowed_ | ||||
| from ``trio``). | ||||
| 
 | ||||
| ``tractor``'s tenets non-comprehensively include: | ||||
| 
 | ||||
| - no spawning of processes *willy-nilly*; causality_ is paramount! | ||||
| - `shared nothing architecture`_ | ||||
| - remote errors `always propagate`_ back to the caller | ||||
| - verbatim support for ``trio``'s cancellation_ system | ||||
| - no use of *proxy* objects to wrap RPC calls | ||||
| - an immersive debugging experience | ||||
| - be simple, be small | ||||
| 
 | ||||
| .. warning:: ``tractor`` is in alpha-alpha and is expected to change rapidly! | ||||
|     Expect nothing to be set in stone and your ideas about where it should go | ||||
|     to be greatly appreciated! | ||||
| 
 | ||||
| .. _trionic: https://trio.readthedocs.io/en/latest/design.html#high-level-design-principles | ||||
| .. _async sandwich: https://trio.readthedocs.io/en/latest/tutorial.html#async-sandwich | ||||
| .. _actor model: https://en.wikipedia.org/wiki/Actor_model | ||||
| .. _always propagate: https://trio.readthedocs.io/en/latest/design.html#exceptions-always-propagate | ||||
| .. _cancellation: https://trio.readthedocs.io/en/latest/reference-core.html#cancellation-and-timeouts | ||||
| .. _multiprocessing: https://docs.python.org/3/library/multiprocessing.html | ||||
| .. _trio: https://github.com/python-trio/trio | ||||
| .. _channels: https://en.wikipedia.org/wiki/Channel_(programming) | ||||
| .. _borrowed: | ||||
|     https://trio.readthedocs.io/en/latest/reference-core.html#getting-back-into-the-trio-thread-from-another-thread | ||||
| .. _causality: https://vorpus.org/blog/some-thoughts-on-asynchronous-api-design-in-a-post-asyncawait-world/#c-c-c-c-causality-breaker | ||||
| .. _shared nothing architecture: https://en.wikipedia.org/wiki/Shared-nothing_architecture | ||||
| 
 | ||||
| 
 | ||||
| What's this? Spawning event loops in subprocesses? | ||||
| -------------------------------------------------- | ||||
| Close, but not quite. | ||||
| 
 | ||||
| The first step to grok ``tractor`` is to get the basics of ``trio`` | ||||
| down. A great place to start is the `trio docs`_ and this `blog post`_ | ||||
| by njsmith_. | ||||
| 
 | ||||
| ``tractor`` takes much inspiration from pulsar_ and execnet_ but attempts to be much more | ||||
| minimal, focus on sophistication of the lower level distributed architecture, | ||||
| and of course does **not** use ``asyncio``, hence **no** event loops. | ||||
| 
 | ||||
| .. _trio docs: https://trio.readthedocs.io/en/latest/ | ||||
| .. _pulsar: http://quantmind.github.io/pulsar/design.html | ||||
| .. _execnet: https://codespeak.net/execnet/ | ||||
| .. _blog post: https://vorpus.org/blog/notes-on-structured-concurrency-or-go-statement-considered-harmful/ | ||||
| .. _njsmith: https://github.com/njsmith/ | ||||
| 
 | ||||
| 
 | ||||
| A trynamic first scene | ||||
| ---------------------- | ||||
| As a first example let's spawn a couple actors (in separate processes) | ||||
| and have them run their lines: | ||||
| 
 | ||||
| .. code:: python | ||||
| 
 | ||||
|     import tractor | ||||
|     from functools import partial | ||||
| 
 | ||||
|     _this_module = __name__ | ||||
|     the_line = 'Hi my name is {}' | ||||
| 
 | ||||
| 
 | ||||
|     async def hi(): | ||||
|         return the_line.format(tractor.current_actor().name) | ||||
| 
 | ||||
| 
 | ||||
|     async def say_hello(other_actor): | ||||
|         await trio.sleep(0.4)  # wait for other actor to spawn | ||||
|         async with tractor.find_actor(other_actor) as portal: | ||||
|             return await portal.run(_this_module, 'hi') | ||||
| 
 | ||||
| 
 | ||||
|     async def main(): | ||||
|         """Main tractor entry point, the "master" process (for now | ||||
|         acts as the "director"). | ||||
|         """ | ||||
|         async with tractor.open_nursery() as n: | ||||
|             print("Alright... Action!") | ||||
| 
 | ||||
|             donny = await n.start_actor( | ||||
|                 'donny', | ||||
|                 main=partial(say_hello, 'gretchen'), | ||||
|                 rpc_module_paths=[_this_module], | ||||
|                 outlive_main=True | ||||
|             ) | ||||
|             gretchen = await n.start_actor( | ||||
|                 'gretchen', | ||||
|                 main=partial(say_hello, 'donny'), | ||||
|                 rpc_module_paths=[_this_module], | ||||
|             ) | ||||
|             print(await gretchen.result()) | ||||
|             print(await donny.result()) | ||||
|             await donny.cancel_actor() | ||||
|             print("CUTTTT CUUTT CUT!!?! Donny!! You're supposed to say...") | ||||
| 
 | ||||
| 
 | ||||
|     tractor.run(main) | ||||
| 
 | ||||
| 
 | ||||
| Here, we've spawned two actors, *donny* and *gretchen* in separate | ||||
| processes. Each starts up and begins executing their *main task* | ||||
| defined by an async function, ``say_hello()``.  The function instructs | ||||
| each actor to find their partner and say hello by calling their | ||||
| partner's ``hi()`` function using a something called a *portal*. Each | ||||
| actor receives a response and relays that back to the parent actor (in | ||||
| this case our "director"). | ||||
| 
 | ||||
| To gain more insight as to how ``tractor`` accomplishes all this please | ||||
| read on! | ||||
| 
 | ||||
| 
 | ||||
| Actor spawning and causality | ||||
| ---------------------------- | ||||
| ``tractor`` tries to take ``trio``'s concept of causal task lifetimes | ||||
| to multi-process land. Accordingly ``tractor``'s actor nursery behaves | ||||
| similar to the nursery_ in ``trio``. That is, an ``ActorNursery`` | ||||
| created with ``tractor.open_nursery()`` waits on spawned sub-actors to | ||||
| complete (or error) in the same causal_ way ``trio`` waits on spawned | ||||
| subtasks. This includes errors from any one sub-actor causing all other | ||||
| actors spawned by the nursery to be cancelled_. Eventually ``tractor`` | ||||
| plans to support different `supervision strategies`_ like ``erlang``. | ||||
| 
 | ||||
| To spawn an actor open a *nursery block* and use the ``start_actor()`` | ||||
| method: | ||||
| 
 | ||||
| .. code:: python | ||||
| 
 | ||||
|     def movie_theatre_question(): | ||||
|         """A question asked in a dark theatre, in a tangent | ||||
|         (errr, I mean different) process. | ||||
|         """ | ||||
|         return 'have you ever seen a portal?' | ||||
| 
 | ||||
| 
 | ||||
|     async def main(): | ||||
|         """The main ``tractor`` routine. | ||||
|         """ | ||||
|         async with tractor.open_nursery() as n: | ||||
|             portal = await n.start_actor( | ||||
|                 'frank', | ||||
|                 # enable the actor to run funcs from this current module | ||||
|                 rpc_module_paths=[__name__], | ||||
|                 outlive_main=True, | ||||
|             ) | ||||
| 
 | ||||
|             print(await portal.run(__name__, 'movie_theatre_question')) | ||||
|             # calls the subactor a 2nd time | ||||
|             print(await portal.run(__name__, 'movie_theatre_question')) | ||||
| 
 | ||||
|             # the async with will block here indefinitely waiting | ||||
|             # for our actor "frank" to complete, but since it's an | ||||
|             # "outlive_main" actor it will never end until cancelled | ||||
|             await portal.cancel_actor() | ||||
| 
 | ||||
| Notice the ``rpc_module_paths`` `kwarg` here, it's a list of module path | ||||
| strings that will be loaded and made accessible for execution in the | ||||
| remote actor. For now this is a simple mechanism to restrict the | ||||
| functionality of the remote actor and uses Python's module system to | ||||
| define the allowed remote function namespace(s). | ||||
| 
 | ||||
| Spawned actor lifetimes can be configured in one of two ways: | ||||
| 
 | ||||
| - the actor terminates when its *main* task completes (the default if | ||||
|   the ``main`` kwarg is provided) | ||||
| - the actor can be told to ``outlive_main=True`` and thus act like an RPC | ||||
|   daemon where it runs indefinitely until cancelled | ||||
| 
 | ||||
| Had we wanted the former in our example it would have been much simpler: | ||||
| 
 | ||||
| .. code:: python | ||||
| 
 | ||||
|     def cellar_door(): | ||||
|         return "Dang that's beautiful" | ||||
| 
 | ||||
| 
 | ||||
|     async def main(): | ||||
|         """The main ``tractor`` routine. | ||||
|         """ | ||||
|         async with tractor.open_nursery() as n: | ||||
|             portal = await n.start_actor('some_linguist', main=cellar_door) | ||||
| 
 | ||||
|         # The ``async with`` will unblock here since the 'some_linguist' | ||||
|         # actor has completed its main task ``cellar_door``. | ||||
| 
 | ||||
|         print(await portal.result()) | ||||
| 
 | ||||
| 
 | ||||
| Note that the main task's *final result(s)* is **always** accessed using | ||||
| ``Portal.result()``. | ||||
| 
 | ||||
| .. _nursery: https://trio.readthedocs.io/en/latest/reference-core.html#nurseries-and-spawning | ||||
| .. _supervision strategies: http://erlang.org/doc/man/supervisor.html#sup_flags | ||||
| .. _causal: https://vorpus.org/blog/some-thoughts-on-asynchronous-api-design-in-a-post-asyncawait-world/#causality | ||||
| .. _cancelled: https://trio.readthedocs.io/en/latest/reference-core.html#child-tasks-and-cancellation | ||||
| 
 | ||||
| 
 | ||||
| Transparent function calling using *portals* | ||||
| -------------------------------------------- | ||||
| ``tractor`` currently is experimenting with an *async-native* | ||||
| IPC API where routines that are invoked in remote *actors* are treated | ||||
| as though they were invoked locally in the calling actor. So when you | ||||
| see a call to ``await portal.run()`` what you get back is what you'd expect | ||||
| to if you'd called the function directly in-process. This approach avoids | ||||
| the need to add any special RPC *proxy* objects to the library by instead just | ||||
| relying on the built-in (async) function calling semantics and protocols of Python. | ||||
| 
 | ||||
| Depending on the function type ``Portal.run()`` tries to | ||||
| correctly interface exactly like a local version of the remote | ||||
| built-in Python function type. Currently async functions, generators, | ||||
| and regular functions are supported. Inspiration for this API comes | ||||
| from the way execnet_ does `remote function execution`_ but without | ||||
| the client code (necessarily) having to worry about the underlying | ||||
| *channel* API. | ||||
| 
 | ||||
| This *portal* approach turns out to be paricularly exciting with the | ||||
| introduction of `asynchronous generators`_ in Python 3.6! It means that | ||||
| actors can compose nicely in a data processing pipeline. | ||||
| 
 | ||||
| Say you wanted to spawn two actors which each pulled data feeds from | ||||
| two different sources (and wanted this work spread across 2 cpus). | ||||
| You also want to aggregate these feeds, do some processing on them and then | ||||
| deliver the final result stream to a client (or in this case parent) | ||||
| actor and print the results to your screen: | ||||
| 
 | ||||
| .. code:: python | ||||
| 
 | ||||
|     import time | ||||
|     import trio | ||||
|     import tractor | ||||
| 
 | ||||
| 
 | ||||
|     async def stream_data(seed): | ||||
|         for i in range(seed): | ||||
|             yield i | ||||
|             await trio.sleep(0)  # trigger scheduler | ||||
| 
 | ||||
| 
 | ||||
|     async def aggregate(seed): | ||||
|         """Ensure that the two streams we receive match but only stream | ||||
|         a single set of values to the parent. | ||||
|         """ | ||||
|         async with tractor.open_nursery() as nursery: | ||||
|             portals = [] | ||||
|             for i in range(1, 3): | ||||
|                 # fork point | ||||
|                 portal = await nursery.start_actor( | ||||
|                     name=f'streamer_{i}', | ||||
|                     rpc_module_paths=[__name__], | ||||
|                     outlive_main=True,  # daemonize these actors | ||||
|                 ) | ||||
| 
 | ||||
|                 portals.append(portal) | ||||
| 
 | ||||
|             q = trio.Queue(500) | ||||
| 
 | ||||
|             async def push_to_q(portal): | ||||
|                 async for value in await portal.run( | ||||
|                     __name__, 'stream_data', seed=seed | ||||
|                 ): | ||||
|                     # leverage trio's built-in backpressure | ||||
|                     await q.put(value) | ||||
| 
 | ||||
|                 await q.put(None) | ||||
|                 print(f"FINISHED ITERATING {portal.channel.uid}") | ||||
| 
 | ||||
|             # spawn 2 trio tasks to collect streams and push to a local queue | ||||
|             async with trio.open_nursery() as n: | ||||
|                 for portal in portals: | ||||
|                     n.start_soon(push_to_q, portal) | ||||
| 
 | ||||
|                 unique_vals = set() | ||||
|                 async for value in q: | ||||
|                     if value not in unique_vals: | ||||
|                         unique_vals.add(value) | ||||
|                         # yield upwards to the spawning parent actor | ||||
|                         yield value | ||||
| 
 | ||||
|                         if value is None: | ||||
|                             break | ||||
| 
 | ||||
|                     assert value in unique_vals | ||||
| 
 | ||||
|                 print("FINISHED ITERATING in aggregator") | ||||
| 
 | ||||
|             await nursery.cancel() | ||||
|             print("WAITING on `ActorNursery` to finish") | ||||
|         print("AGGREGATOR COMPLETE!") | ||||
| 
 | ||||
| 
 | ||||
|     async def main(): | ||||
|         # a nursery which spawns "actors" | ||||
|         async with tractor.open_nursery() as nursery: | ||||
| 
 | ||||
|             seed = int(1e3) | ||||
|             import time | ||||
|             pre_start = time.time() | ||||
| 
 | ||||
|             portal = await nursery.start_actor( | ||||
|                 name='aggregator', | ||||
|                 # executed in the actor's "main task" immediately | ||||
|                 main=partial(aggregate, seed), | ||||
|             ) | ||||
| 
 | ||||
|             start = time.time() | ||||
|             # the portal call returns exactly what you'd expect | ||||
|             # as if the remote "main" function was called locally | ||||
|             result_stream = [] | ||||
|             async for value in await portal.result(): | ||||
|                 result_stream.append(value) | ||||
| 
 | ||||
|             print(f"STREAM TIME = {time.time() - start}") | ||||
|             print(f"STREAM + SPAWN TIME = {time.time() - pre_start}") | ||||
|             assert result_stream == list(range(seed)) + [None] | ||||
|             return result_stream | ||||
| 
 | ||||
| 
 | ||||
|     final_stream = tractor.run(main, arbiter_addr=('127.0.0.1', 1616)) | ||||
| 
 | ||||
| 
 | ||||
| Here there's four actors running in separate processes (using all the | ||||
| cores on you machine). Two are streaming in ``stream_data()``, one is | ||||
| aggregating values from those two in ``aggregate()`` and shipping the | ||||
| single stream of unique values up the parent actor (the ``'MainProcess'`` | ||||
| as ``multiprocessing`` calls it) which is running ``main()``.  | ||||
| 
 | ||||
| 
 | ||||
| There has also been some discussion about adding support for reactive | ||||
| programming primitives and native support for asyncitertools_ like libs - | ||||
| so keep an eye out for that! | ||||
| 
 | ||||
| .. _asynchronous generators: https://www.python.org/dev/peps/pep-0525/ | ||||
| .. _remote function execution: https://codespeak.net/execnet/example/test_info.html#remote-exec-a-function-avoiding-inlined-source-part-i | ||||
| .. _asyncitertools: https://github.com/vodik/asyncitertools | ||||
| 
 | ||||
| 
 | ||||
| Cancellation | ||||
| ------------ | ||||
| ``tractor`` supports ``trio``'s cancellation_ system verbatim: | ||||
| 
 | ||||
| .. code:: python | ||||
| 
 | ||||
|     import trio | ||||
|     import tractor | ||||
|     from itertools import repeat | ||||
| 
 | ||||
| 
 | ||||
|     async def stream_forever(): | ||||
|         for i in repeat("I can see these little future bubble things"): | ||||
|             yield i | ||||
|             await trio.sleep(0.01) | ||||
| 
 | ||||
| 
 | ||||
|     async def main(): | ||||
|         # stream for at most 1 second | ||||
|         with trio.move_on_after(1) as cancel_scope: | ||||
|             async with tractor.open_nursery() as n: | ||||
|                 portal = await n.start_actor( | ||||
|                     f'donny', | ||||
|                     rpc_module_paths=[__name__], | ||||
|                     outlive_main=True | ||||
|                 ) | ||||
|                 async for letter in await portal.run(__name__, 'stream_forever'): | ||||
|                     print(letter) | ||||
| 
 | ||||
|         assert cancel_scope.cancelled_caught | ||||
|         assert n.cancelled | ||||
| 
 | ||||
|     tractor.run(main) | ||||
| 
 | ||||
| 
 | ||||
| Remote error propagation | ||||
| ------------------------ | ||||
| Any task invoked in a remote actor should ship any error(s) back to the calling | ||||
| actor where it is raised and expected to be dealt with. This way remote actor's | ||||
| are never cancelled unless explicitly asked or there's a bug in ``tractor`` itself. | ||||
| 
 | ||||
| .. code:: python | ||||
| 
 | ||||
|     async def assert_err(): | ||||
|         assert 0 | ||||
| 
 | ||||
|     async def main(): | ||||
|         async with tractor.open_nursery() as n: | ||||
|             real_actors = [] | ||||
|             for i in range(3): | ||||
|                 real_actors.append(await n.start_actor( | ||||
|                     f'actor_{i}', | ||||
|                     rpc_module_paths=[__name__], | ||||
|                     outlive_main=True | ||||
|                 )) | ||||
| 
 | ||||
|             # start one actor that will fail immediately | ||||
|             await n.start_actor('extra', main=assert_err) | ||||
| 
 | ||||
|         # should error here with a ``RemoteActorError`` containing | ||||
|         # an ``AssertionError`` and all the other actors have been cancelled | ||||
| 
 | ||||
|     try: | ||||
|         # also raises | ||||
|         tractor.run(main) | ||||
|     except tractor.RemoteActorError: | ||||
|         print("Look Maa that actor failed hard, hehhh!") | ||||
| 
 | ||||
| 
 | ||||
| You'll notice the nursery cancellation conducts a *one-cancels-all* | ||||
| supervisory strategy `exactly like trio`_. The plan is to add more | ||||
| `erlang strategies`_ in the near future by allowing nurseries to accept | ||||
| a ``Supervisor`` type. | ||||
| 
 | ||||
| .. _exactly like trio: https://trio.readthedocs.io/en/latest/reference-core.html#cancellation-semantics | ||||
| .. _erlang strategies: http://learnyousomeerlang.com/supervisors | ||||
| 
 | ||||
| 
 | ||||
| Shared task state | ||||
| ----------------- | ||||
| Although ``tractor`` uses a *shared-nothing* architecture between processes | ||||
| you can of course share state within an actor.  ``trio`` tasks spawned via | ||||
| multiple RPC calls to an actor can access global data using the per actor | ||||
| ``statespace`` dictionary: | ||||
| 
 | ||||
| .. code:: python | ||||
| 
 | ||||
| 
 | ||||
|         statespace = {'doggy': 10} | ||||
| 
 | ||||
| 
 | ||||
|         def check_statespace(): | ||||
|             # Remember this runs in a new process so no changes | ||||
|             # will propagate back to the parent actor | ||||
|             assert tractor.current_actor().statespace == statespace | ||||
| 
 | ||||
| 
 | ||||
|         async def main(): | ||||
|             async with tractor.open_nursery() as n: | ||||
|                 await n.start_actor( | ||||
|                     'checker', main=check_statespace, | ||||
|                     statespace=statespace | ||||
|                 ) | ||||
| 
 | ||||
| 
 | ||||
| How do actors find each other (a poor man's *service discovery*)? | ||||
| ----------------------------------------------------------------- | ||||
| Though it will be built out much more in the near future, ``tractor`` | ||||
| currently keeps track of actors by ``(name: str, id: str)`` using a | ||||
| special actor called the *arbiter*. Currently the *arbiter* must exist | ||||
| on a host (or it will be created if one can't be found) and keeps a | ||||
| simple ``dict`` of actor names to sockets for discovery by other actors. | ||||
| Obviously this can be made more sophisticated (help me with it!) but for | ||||
| now it does the trick. | ||||
| 
 | ||||
| To find the arbiter from the current actor use the ``get_arbiter()`` function and to | ||||
| find an actor's socket address by name use the ``find_actor()`` function: | ||||
| 
 | ||||
| .. code:: python | ||||
| 
 | ||||
|     import tractor | ||||
| 
 | ||||
| 
 | ||||
|     async def main(service_name): | ||||
| 
 | ||||
|         async with tractor.get_arbiter() as portal: | ||||
|             print(f"Arbiter is listening on {portal.channel}") | ||||
| 
 | ||||
|         async with tractor.find_actor(service_name) as sockaddr: | ||||
|             print(f"my_service is found at {my_service}") | ||||
| 
 | ||||
| 
 | ||||
|     tractor.run(main, service_name) | ||||
| 
 | ||||
| 
 | ||||
| The ``name`` value you should pass to ``find_actor()`` is the one you passed as the | ||||
| *first* argument to either ``tractor.run()`` or ``ActorNursery.start_actor()``. | ||||
| 
 | ||||
| 
 | ||||
| Using ``Channel`` directly (undocumented) | ||||
| ----------------------------------------- | ||||
| You can use the ``Channel`` api if necessary by simply defining a | ||||
| ``chan`` and ``cid`` *kwarg* in your async function definition. | ||||
| ``tractor`` will treat such async functions like async generators on | ||||
| the calling side (for now anyway) such that you can push stream values | ||||
| a little more granularly if you find *yielding* values to be restrictive. | ||||
| I am purposely not documenting this feature with code because I'm not yet | ||||
| sure yet how it should be used correctly. If you'd like more details | ||||
| please feel free to ask me on the `trio gitter channel`_. | ||||
| 
 | ||||
| 
 | ||||
| Running actors standalone (without spawning) | ||||
| -------------------------------------------- | ||||
| You don't have to spawn any actors using ``open_nursery()`` if you just | ||||
| want to run a single actor that connects to an existing cluster. | ||||
| All the comms and arbiter registration stuff still works. This can | ||||
| somtimes turn out being handy when debugging mult-process apps when you | ||||
| need to hop into a debugger. You just need to pass the existing | ||||
| *arbiter*'s socket address you'd like to connect to: | ||||
| 
 | ||||
| .. code:: python | ||||
| 
 | ||||
|     tractor.run(main, arbiter_addr=('192.168.0.10', 1616)) | ||||
| 
 | ||||
| 
 | ||||
| Enabling logging | ||||
| ---------------- | ||||
| Considering how complicated distributed software can become it helps to know | ||||
| what exactly it's doing (even at the lowest levels). Luckily ``tractor`` has | ||||
| tons of logging throughout the core. ``tractor`` isn't opinionated on | ||||
| how you use this information and users are expected to consume log messages in | ||||
| whichever way is appropriate for the system at hand. That being said, when hacking | ||||
| on ``tractor`` there is a prettified console formatted which you can enable to | ||||
| see what the heck is going on. Just put the following somewhere in your code: | ||||
| 
 | ||||
| .. code:: python | ||||
| 
 | ||||
|     from tractor.log import get_console_log | ||||
|     log = get_console_log('trace') | ||||
| 
 | ||||
| 
 | ||||
| What the future holds | ||||
| --------------------- | ||||
| Stuff I'd like to see ``tractor`` do one day: | ||||
| 
 | ||||
| - erlang-like supervisors_ | ||||
| - native support for zeromq_ as a channel transport | ||||
| - native `gossip protocol`_ support for service discovery and arbiter election | ||||
| - a distributed log ledger for tracking cluster behaviour | ||||
| - a slick multi-process aware debugger much like in celery_ | ||||
|   but with better `pdb++`_ support | ||||
| 
 | ||||
| If you're interested in tackling any of these please do shout about it on the | ||||
| `trio gitter channel`_! | ||||
| 
 | ||||
| .. _supervisors: http://learnyousomeerlang.com/supervisors | ||||
| .. _zeromq: https://en.wikipedia.org/wiki/ZeroMQ | ||||
| .. _gossip protocol: https://en.wikipedia.org/wiki/Gossip_protocol | ||||
| .. _trio gitter channel: https://gitter.im/python-trio/general | ||||
| .. _celery: http://docs.celeryproject.org/en/latest/userguide/debugging.html | ||||
| .. _pdb++: https://github.com/antocuni/pdb | ||||
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