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documenting updated messaging protocol
Paul Ivanov -
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1 1 .. _messaging:
2 2
3 3 ======================
4 4 Messaging in IPython
5 5 ======================
6 6
7 7
8 8 Introduction
9 9 ============
10 10
11 11 This document explains the basic communications design and messaging
12 12 specification for how the various IPython objects interact over a network
13 13 transport. The current implementation uses the ZeroMQ_ library for messaging
14 14 within and between hosts.
15 15
16 16 .. Note::
17 17
18 18 This document should be considered the authoritative description of the
19 19 IPython messaging protocol, and all developers are strongly encouraged to
20 20 keep it updated as the implementation evolves, so that we have a single
21 21 common reference for all protocol details.
22 22
23 23 The basic design is explained in the following diagram:
24 24
25 25 .. image:: figs/frontend-kernel.png
26 26 :width: 450px
27 27 :alt: IPython kernel/frontend messaging architecture.
28 28 :align: center
29 29 :target: ../_images/frontend-kernel.png
30 30
31 31 A single kernel can be simultaneously connected to one or more frontends. The
32 32 kernel has three sockets that serve the following functions:
33 33
34 34 1. stdin: this ROUTER socket is connected to all frontends, and it allows
35 35 the kernel to request input from the active frontend when :func:`raw_input` is called.
36 36 The frontend that executed the code has a DEALER socket that acts as a 'virtual keyboard'
37 37 for the kernel while this communication is happening (illustrated in the
38 38 figure by the black outline around the central keyboard). In practice,
39 39 frontends may display such kernel requests using a special input widget or
40 40 otherwise indicating that the user is to type input for the kernel instead
41 41 of normal commands in the frontend.
42 42
43 43 2. Shell: this single ROUTER socket allows multiple incoming connections from
44 44 frontends, and this is the socket where requests for code execution, object
45 45 information, prompts, etc. are made to the kernel by any frontend. The
46 46 communication on this socket is a sequence of request/reply actions from
47 47 each frontend and the kernel.
48 48
49 49 3. IOPub: this socket is the 'broadcast channel' where the kernel publishes all
50 50 side effects (stdout, stderr, etc.) as well as the requests coming from any
51 51 client over the shell socket and its own requests on the stdin socket. There
52 52 are a number of actions in Python which generate side effects: :func:`print`
53 53 writes to ``sys.stdout``, errors generate tracebacks, etc. Additionally, in
54 54 a multi-client scenario, we want all frontends to be able to know what each
55 55 other has sent to the kernel (this can be useful in collaborative scenarios,
56 56 for example). This socket allows both side effects and the information
57 57 about communications taking place with one client over the shell channel
58 58 to be made available to all clients in a uniform manner.
59 59
60 60 All messages are tagged with enough information (details below) for clients
61 61 to know which messages come from their own interaction with the kernel and
62 62 which ones are from other clients, so they can display each type
63 63 appropriately.
64 64
65 65 The actual format of the messages allowed on each of these channels is
66 66 specified below. Messages are dicts of dicts with string keys and values that
67 67 are reasonably representable in JSON. Our current implementation uses JSON
68 68 explicitly as its message format, but this shouldn't be considered a permanent
69 69 feature. As we've discovered that JSON has non-trivial performance issues due
70 70 to excessive copying, we may in the future move to a pure pickle-based raw
71 71 message format. However, it should be possible to easily convert from the raw
72 72 objects to JSON, since we may have non-python clients (e.g. a web frontend).
73 73 As long as it's easy to make a JSON version of the objects that is a faithful
74 74 representation of all the data, we can communicate with such clients.
75 75
76 76 .. Note::
77 77
78 78 Not all of these have yet been fully fleshed out, but the key ones are, see
79 79 kernel and frontend files for actual implementation details.
80 80
81 81
82 82 Python functional API
83 83 =====================
84 84
85 85 As messages are dicts, they map naturally to a ``func(**kw)`` call form. We
86 86 should develop, at a few key points, functional forms of all the requests that
87 87 take arguments in this manner and automatically construct the necessary dict
88 88 for sending.
89 89
90 90
91 91 General Message Format
92 92 ======================
93 93
94 94 All messages send or received by any IPython process should have the following
95 95 generic structure::
96 96
97 97 {
98 98 # The message header contains a pair of unique identifiers for the
99 99 # originating session and the actual message id, in addition to the
100 100 # username for the process that generated the message. This is useful in
101 101 # collaborative settings where multiple users may be interacting with the
102 102 # same kernel simultaneously, so that frontends can label the various
103 103 # messages in a meaningful way.
104 104 'header' : {
105 105 'msg_id' : uuid,
106 106 'username' : str,
107 107 'session' : uuid
108 108 # All recognized message type strings are listed below.
109 109 'msg_type' : str,
110 110 },
111 111 # The msg's unique identifier and type are stored in the header, but
112 112 # are also accessible at the top-level for convenience.
113 113 'msg_id' : uuid,
114 114 'msg_type' : str,
115 115
116 116 # In a chain of messages, the header from the parent is copied so that
117 117 # clients can track where messages come from.
118 118 'parent_header' : dict,
119 119
120 120 # The actual content of the message must be a dict, whose structure
121 121 # depends on the message type.x
122 122 'content' : dict,
123 123 }
124 124
125 125 For each message type, the actual content will differ and all existing message
126 126 types are specified in what follows of this document.
127 127
128 128
129 129 Messages on the shell ROUTER/DEALER sockets
130 130 ===========================================
131 131
132 132 .. _execute:
133 133
134 134 Execute
135 135 -------
136 136
137 137 This message type is used by frontends to ask the kernel to execute code on
138 138 behalf of the user, in a namespace reserved to the user's variables (and thus
139 139 separate from the kernel's own internal code and variables).
140 140
141 141 Message type: ``execute_request``::
142 142
143 143 content = {
144 144 # Source code to be executed by the kernel, one or more lines.
145 145 'code' : str,
146 146
147 147 # A boolean flag which, if True, signals the kernel to execute
148 148 # this code as quietly as possible. This means that the kernel
149 149 # will compile the code with 'exec' instead of 'single' (so
150 150 # sys.displayhook will not fire), and will *not*:
151 151 # - broadcast exceptions on the PUB socket
152 152 # - do any logging
153 153 # - populate any history
154 154 #
155 155 # The default is False.
156 156 'silent' : bool,
157 157
158 158 # A list of variable names from the user's namespace to be retrieved. What
159 159 # returns is a JSON string of the variable's repr(), not a python object.
160 160 'user_variables' : list,
161 161
162 162 # Similarly, a dict mapping names to expressions to be evaluated in the
163 163 # user's dict.
164 164 'user_expressions' : dict,
165 165
166 166 # Some frontends (e.g. the Notebook) do not support stdin requests. If
167 167 # raw_input is called from code executed from such a frontend, a
168 168 # StdinNotImplementedError will be raised.
169 169 'allow_stdin' : True,
170 170
171 171 }
172 172
173 173 The ``code`` field contains a single string (possibly multiline). The kernel
174 174 is responsible for splitting this into one or more independent execution blocks
175 175 and deciding whether to compile these in 'single' or 'exec' mode (see below for
176 176 detailed execution semantics).
177 177
178 178 The ``user_`` fields deserve a detailed explanation. In the past, IPython had
179 179 the notion of a prompt string that allowed arbitrary code to be evaluated, and
180 180 this was put to good use by many in creating prompts that displayed system
181 181 status, path information, and even more esoteric uses like remote instrument
182 182 status aqcuired over the network. But now that IPython has a clean separation
183 183 between the kernel and the clients, the kernel has no prompt knowledge; prompts
184 184 are a frontend-side feature, and it should be even possible for different
185 185 frontends to display different prompts while interacting with the same kernel.
186 186
187 187 The kernel now provides the ability to retrieve data from the user's namespace
188 188 after the execution of the main ``code``, thanks to two fields in the
189 189 ``execute_request`` message:
190 190
191 191 - ``user_variables``: If only variables from the user's namespace are needed, a
192 192 list of variable names can be passed and a dict with these names as keys and
193 193 their :func:`repr()` as values will be returned.
194 194
195 195 - ``user_expressions``: For more complex expressions that require function
196 196 evaluations, a dict can be provided with string keys and arbitrary python
197 197 expressions as values. The return message will contain also a dict with the
198 198 same keys and the :func:`repr()` of the evaluated expressions as value.
199 199
200 200 With this information, frontends can display any status information they wish
201 201 in the form that best suits each frontend (a status line, a popup, inline for a
202 202 terminal, etc).
203 203
204 204 .. Note::
205 205
206 206 In order to obtain the current execution counter for the purposes of
207 207 displaying input prompts, frontends simply make an execution request with an
208 208 empty code string and ``silent=True``.
209 209
210 210 Execution semantics
211 211 ~~~~~~~~~~~~~~~~~~~
212 212
213 213 When the silent flag is false, the execution of use code consists of the
214 214 following phases (in silent mode, only the ``code`` field is executed):
215 215
216 216 1. Run the ``pre_runcode_hook``.
217 217
218 218 2. Execute the ``code`` field, see below for details.
219 219
220 220 3. If #2 succeeds, compute ``user_variables`` and ``user_expressions`` are
221 221 computed. This ensures that any error in the latter don't harm the main
222 222 code execution.
223 223
224 224 4. Call any method registered with :meth:`register_post_execute`.
225 225
226 226 .. warning::
227 227
228 228 The API for running code before/after the main code block is likely to
229 229 change soon. Both the ``pre_runcode_hook`` and the
230 230 :meth:`register_post_execute` are susceptible to modification, as we find a
231 231 consistent model for both.
232 232
233 233 To understand how the ``code`` field is executed, one must know that Python
234 234 code can be compiled in one of three modes (controlled by the ``mode`` argument
235 235 to the :func:`compile` builtin):
236 236
237 237 *single*
238 238 Valid for a single interactive statement (though the source can contain
239 239 multiple lines, such as a for loop). When compiled in this mode, the
240 240 generated bytecode contains special instructions that trigger the calling of
241 241 :func:`sys.displayhook` for any expression in the block that returns a value.
242 242 This means that a single statement can actually produce multiple calls to
243 243 :func:`sys.displayhook`, if for example it contains a loop where each
244 244 iteration computes an unassigned expression would generate 10 calls::
245 245
246 246 for i in range(10):
247 247 i**2
248 248
249 249 *exec*
250 250 An arbitrary amount of source code, this is how modules are compiled.
251 251 :func:`sys.displayhook` is *never* implicitly called.
252 252
253 253 *eval*
254 254 A single expression that returns a value. :func:`sys.displayhook` is *never*
255 255 implicitly called.
256 256
257 257
258 258 The ``code`` field is split into individual blocks each of which is valid for
259 259 execution in 'single' mode, and then:
260 260
261 261 - If there is only a single block: it is executed in 'single' mode.
262 262
263 263 - If there is more than one block:
264 264
265 265 * if the last one is a single line long, run all but the last in 'exec' mode
266 266 and the very last one in 'single' mode. This makes it easy to type simple
267 267 expressions at the end to see computed values.
268 268
269 269 * if the last one is no more than two lines long, run all but the last in
270 270 'exec' mode and the very last one in 'single' mode. This makes it easy to
271 271 type simple expressions at the end to see computed values. - otherwise
272 272 (last one is also multiline), run all in 'exec' mode
273 273
274 274 * otherwise (last one is also multiline), run all in 'exec' mode as a single
275 275 unit.
276 276
277 277 Any error in retrieving the ``user_variables`` or evaluating the
278 278 ``user_expressions`` will result in a simple error message in the return fields
279 279 of the form::
280 280
281 281 [ERROR] ExceptionType: Exception message
282 282
283 283 The user can simply send the same variable name or expression for evaluation to
284 284 see a regular traceback.
285 285
286 286 Errors in any registered post_execute functions are also reported similarly,
287 287 and the failing function is removed from the post_execution set so that it does
288 288 not continue triggering failures.
289 289
290 290 Upon completion of the execution request, the kernel *always* sends a reply,
291 291 with a status code indicating what happened and additional data depending on
292 292 the outcome. See :ref:`below <execution_results>` for the possible return
293 293 codes and associated data.
294 294
295 295
296 296 Execution counter (old prompt number)
297 297 ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
298 298
299 299 The kernel has a single, monotonically increasing counter of all execution
300 300 requests that are made with ``silent=False``. This counter is used to populate
301 301 the ``In[n]``, ``Out[n]`` and ``_n`` variables, so clients will likely want to
302 302 display it in some form to the user, which will typically (but not necessarily)
303 303 be done in the prompts. The value of this counter will be returned as the
304 304 ``execution_count`` field of all ``execute_reply`` messages.
305 305
306 306 .. _execution_results:
307 307
308 308 Execution results
309 309 ~~~~~~~~~~~~~~~~~
310 310
311 311 Message type: ``execute_reply``::
312 312
313 313 content = {
314 314 # One of: 'ok' OR 'error' OR 'abort'
315 315 'status' : str,
316 316
317 317 # The global kernel counter that increases by one with each non-silent
318 318 # executed request. This will typically be used by clients to display
319 319 # prompt numbers to the user. If the request was a silent one, this will
320 320 # be the current value of the counter in the kernel.
321 321 'execution_count' : int,
322 322 }
323 323
324 324 When status is 'ok', the following extra fields are present::
325 325
326 326 {
327 327 # The execution payload is a dict with string keys that may have been
328 328 # produced by the code being executed. It is retrieved by the kernel at
329 329 # the end of the execution and sent back to the front end, which can take
330 330 # action on it as needed. See main text for further details.
331 331 'payload' : dict,
332 332
333 333 # Results for the user_variables and user_expressions.
334 334 'user_variables' : dict,
335 335 'user_expressions' : dict,
336 336
337 337 # The kernel will often transform the input provided to it. If the
338 338 # '---->' transform had been applied, this is filled, otherwise it's the
339 339 # empty string. So transformations like magics don't appear here, only
340 340 # autocall ones.
341 341 'transformed_code' : str,
342 342 }
343 343
344 344 .. admonition:: Execution payloads
345 345
346 346 The notion of an 'execution payload' is different from a return value of a
347 347 given set of code, which normally is just displayed on the pyout stream
348 348 through the PUB socket. The idea of a payload is to allow special types of
349 349 code, typically magics, to populate a data container in the IPython kernel
350 350 that will be shipped back to the caller via this channel. The kernel will
351 351 have an API for this, probably something along the lines of::
352 352
353 353 ip.exec_payload_add(key, value)
354 354
355 355 though this API is still in the design stages. The data returned in this
356 356 payload will allow frontends to present special views of what just happened.
357 357
358 358
359 359 When status is 'error', the following extra fields are present::
360 360
361 361 {
362 362 'exc_name' : str, # Exception name, as a string
363 363 'exc_value' : str, # Exception value, as a string
364 364
365 365 # The traceback will contain a list of frames, represented each as a
366 366 # string. For now we'll stick to the existing design of ultraTB, which
367 367 # controls exception level of detail statefully. But eventually we'll
368 368 # want to grow into a model where more information is collected and
369 369 # packed into the traceback object, with clients deciding how little or
370 370 # how much of it to unpack. But for now, let's start with a simple list
371 371 # of strings, since that requires only minimal changes to ultratb as
372 372 # written.
373 373 'traceback' : list,
374 374 }
375 375
376 376
377 377 When status is 'abort', there are for now no additional data fields. This
378 378 happens when the kernel was interrupted by a signal.
379 379
380 380 Kernel attribute access
381 381 -----------------------
382 382
383 383 .. warning::
384 384
385 385 This part of the messaging spec is not actually implemented in the kernel
386 386 yet.
387 387
388 388 While this protocol does not specify full RPC access to arbitrary methods of
389 389 the kernel object, the kernel does allow read (and in some cases write) access
390 390 to certain attributes.
391 391
392 392 The policy for which attributes can be read is: any attribute of the kernel, or
393 393 its sub-objects, that belongs to a :class:`Configurable` object and has been
394 394 declared at the class-level with Traits validation, is in principle accessible
395 395 as long as its name does not begin with a leading underscore. The attribute
396 396 itself will have metadata indicating whether it allows remote read and/or write
397 397 access. The message spec follows for attribute read and write requests.
398 398
399 399 Message type: ``getattr_request``::
400 400
401 401 content = {
402 402 # The (possibly dotted) name of the attribute
403 403 'name' : str,
404 404 }
405 405
406 406 When a ``getattr_request`` fails, there are two possible error types:
407 407
408 408 - AttributeError: this type of error was raised when trying to access the
409 409 given name by the kernel itself. This means that the attribute likely
410 410 doesn't exist.
411 411
412 412 - AccessError: the attribute exists but its value is not readable remotely.
413 413
414 414
415 415 Message type: ``getattr_reply``::
416 416
417 417 content = {
418 418 # One of ['ok', 'AttributeError', 'AccessError'].
419 419 'status' : str,
420 420 # If status is 'ok', a JSON object.
421 421 'value' : object,
422 422 }
423 423
424 424 Message type: ``setattr_request``::
425 425
426 426 content = {
427 427 # The (possibly dotted) name of the attribute
428 428 'name' : str,
429 429
430 430 # A JSON-encoded object, that will be validated by the Traits
431 431 # information in the kernel
432 432 'value' : object,
433 433 }
434 434
435 435 When a ``setattr_request`` fails, there are also two possible error types with
436 436 similar meanings as those of the ``getattr_request`` case, but for writing.
437 437
438 438 Message type: ``setattr_reply``::
439 439
440 440 content = {
441 441 # One of ['ok', 'AttributeError', 'AccessError'].
442 442 'status' : str,
443 443 }
444 444
445 445
446 446
447 447 Object information
448 448 ------------------
449 449
450 450 One of IPython's most used capabilities is the introspection of Python objects
451 451 in the user's namespace, typically invoked via the ``?`` and ``??`` characters
452 452 (which in reality are shorthands for the ``%pinfo`` magic). This is used often
453 453 enough that it warrants an explicit message type, especially because frontends
454 454 may want to get object information in response to user keystrokes (like Tab or
455 455 F1) besides from the user explicitly typing code like ``x??``.
456 456
457 457 Message type: ``object_info_request``::
458 458
459 459 content = {
460 460 # The (possibly dotted) name of the object to be searched in all
461 461 # relevant namespaces
462 462 'name' : str,
463 463
464 464 # The level of detail desired. The default (0) is equivalent to typing
465 465 # 'x?' at the prompt, 1 is equivalent to 'x??'.
466 466 'detail_level' : int,
467 467 }
468 468
469 469 The returned information will be a dictionary with keys very similar to the
470 470 field names that IPython prints at the terminal.
471 471
472 472 Message type: ``object_info_reply``::
473 473
474 474 content = {
475 475 # The name the object was requested under
476 476 'name' : str,
477 477
478 478 # Boolean flag indicating whether the named object was found or not. If
479 479 # it's false, all other fields will be empty.
480 480 'found' : bool,
481 481
482 482 # Flags for magics and system aliases
483 483 'ismagic' : bool,
484 484 'isalias' : bool,
485 485
486 486 # The name of the namespace where the object was found ('builtin',
487 487 # 'magics', 'alias', 'interactive', etc.)
488 488 'namespace' : str,
489 489
490 490 # The type name will be type.__name__ for normal Python objects, but it
491 491 # can also be a string like 'Magic function' or 'System alias'
492 492 'type_name' : str,
493 493
494 494 # The string form of the object, possibly truncated for length if
495 495 # detail_level is 0
496 496 'string_form' : str,
497 497
498 498 # For objects with a __class__ attribute this will be set
499 499 'base_class' : str,
500 500
501 501 # For objects with a __len__ attribute this will be set
502 502 'length' : int,
503 503
504 504 # If the object is a function, class or method whose file we can find,
505 505 # we give its full path
506 506 'file' : str,
507 507
508 508 # For pure Python callable objects, we can reconstruct the object
509 509 # definition line which provides its call signature. For convenience this
510 510 # is returned as a single 'definition' field, but below the raw parts that
511 511 # compose it are also returned as the argspec field.
512 512 'definition' : str,
513 513
514 514 # The individual parts that together form the definition string. Clients
515 515 # with rich display capabilities may use this to provide a richer and more
516 516 # precise representation of the definition line (e.g. by highlighting
517 517 # arguments based on the user's cursor position). For non-callable
518 518 # objects, this field is empty.
519 519 'argspec' : { # The names of all the arguments
520 520 args : list,
521 521 # The name of the varargs (*args), if any
522 522 varargs : str,
523 523 # The name of the varkw (**kw), if any
524 524 varkw : str,
525 525 # The values (as strings) of all default arguments. Note
526 526 # that these must be matched *in reverse* with the 'args'
527 527 # list above, since the first positional args have no default
528 528 # value at all.
529 529 defaults : list,
530 530 },
531 531
532 532 # For instances, provide the constructor signature (the definition of
533 533 # the __init__ method):
534 534 'init_definition' : str,
535 535
536 536 # Docstrings: for any object (function, method, module, package) with a
537 537 # docstring, we show it. But in addition, we may provide additional
538 538 # docstrings. For example, for instances we will show the constructor
539 539 # and class docstrings as well, if available.
540 540 'docstring' : str,
541 541
542 542 # For instances, provide the constructor and class docstrings
543 543 'init_docstring' : str,
544 544 'class_docstring' : str,
545 545
546 546 # If it's a callable object whose call method has a separate docstring and
547 547 # definition line:
548 548 'call_def' : str,
549 549 'call_docstring' : str,
550 550
551 551 # If detail_level was 1, we also try to find the source code that
552 552 # defines the object, if possible. The string 'None' will indicate
553 553 # that no source was found.
554 554 'source' : str,
555 555 }
556 556 '
557 557
558 558 Complete
559 559 --------
560 560
561 561 Message type: ``complete_request``::
562 562
563 563 content = {
564 564 # The text to be completed, such as 'a.is'
565 565 'text' : str,
566 566
567 567 # The full line, such as 'print a.is'. This allows completers to
568 568 # make decisions that may require information about more than just the
569 569 # current word.
570 570 'line' : str,
571 571
572 572 # The entire block of text where the line is. This may be useful in the
573 573 # case of multiline completions where more context may be needed. Note: if
574 574 # in practice this field proves unnecessary, remove it to lighten the
575 575 # messages.
576 576
577 577 'block' : str,
578 578
579 579 # The position of the cursor where the user hit 'TAB' on the line.
580 580 'cursor_pos' : int,
581 581 }
582 582
583 583 Message type: ``complete_reply``::
584 584
585 585 content = {
586 586 # The list of all matches to the completion request, such as
587 587 # ['a.isalnum', 'a.isalpha'] for the above example.
588 588 'matches' : list
589 589 }
590 590
591 591
592 592 History
593 593 -------
594 594
595 595 For clients to explicitly request history from a kernel. The kernel has all
596 596 the actual execution history stored in a single location, so clients can
597 597 request it from the kernel when needed.
598 598
599 599 Message type: ``history_request``::
600 600
601 601 content = {
602 602
603 603 # If True, also return output history in the resulting dict.
604 604 'output' : bool,
605 605
606 606 # If True, return the raw input history, else the transformed input.
607 607 'raw' : bool,
608 608
609 609 # So far, this can be 'range', 'tail' or 'search'.
610 610 'hist_access_type' : str,
611 611
612 612 # If hist_access_type is 'range', get a range of input cells. session can
613 613 # be a positive session number, or a negative number to count back from
614 614 # the current session.
615 615 'session' : int,
616 616 # start and stop are line numbers within that session.
617 617 'start' : int,
618 618 'stop' : int,
619 619
620 620 # If hist_access_type is 'tail', get the last n cells.
621 621 'n' : int,
622 622
623 623 # If hist_access_type is 'search', get cells matching the specified glob
624 624 # pattern (with * and ? as wildcards).
625 625 'pattern' : str,
626 626
627 627 }
628 628
629 629 Message type: ``history_reply``::
630 630
631 631 content = {
632 632 # A list of 3 tuples, either:
633 633 # (session, line_number, input) or
634 634 # (session, line_number, (input, output)),
635 635 # depending on whether output was False or True, respectively.
636 636 'history' : list,
637 637 }
638 638
639 639
640 640 Connect
641 641 -------
642 642
643 643 When a client connects to the request/reply socket of the kernel, it can issue
644 644 a connect request to get basic information about the kernel, such as the ports
645 645 the other ZeroMQ sockets are listening on. This allows clients to only have
646 646 to know about a single port (the shell channel) to connect to a kernel.
647 647
648 648 Message type: ``connect_request``::
649 649
650 650 content = {
651 651 }
652 652
653 653 Message type: ``connect_reply``::
654 654
655 655 content = {
656 656 'shell_port' : int # The port the shell ROUTER socket is listening on.
657 657 'iopub_port' : int # The port the PUB socket is listening on.
658 658 'stdin_port' : int # The port the stdin ROUTER socket is listening on.
659 659 'hb_port' : int # The port the heartbeat socket is listening on.
660 660 }
661 661
662 662
663 663
664 664 Kernel shutdown
665 665 ---------------
666 666
667 667 The clients can request the kernel to shut itself down; this is used in
668 668 multiple cases:
669 669
670 670 - when the user chooses to close the client application via a menu or window
671 671 control.
672 672 - when the user types 'exit' or 'quit' (or their uppercase magic equivalents).
673 673 - when the user chooses a GUI method (like the 'Ctrl-C' shortcut in the
674 674 IPythonQt client) to force a kernel restart to get a clean kernel without
675 675 losing client-side state like history or inlined figures.
676 676
677 677 The client sends a shutdown request to the kernel, and once it receives the
678 678 reply message (which is otherwise empty), it can assume that the kernel has
679 679 completed shutdown safely.
680 680
681 681 Upon their own shutdown, client applications will typically execute a last
682 682 minute sanity check and forcefully terminate any kernel that is still alive, to
683 683 avoid leaving stray processes in the user's machine.
684 684
685 685 For both shutdown request and reply, there is no actual content that needs to
686 686 be sent, so the content dict is empty.
687 687
688 688 Message type: ``shutdown_request``::
689 689
690 690 content = {
691 691 'restart' : bool # whether the shutdown is final, or precedes a restart
692 692 }
693 693
694 694 Message type: ``shutdown_reply``::
695 695
696 696 content = {
697 697 'restart' : bool # whether the shutdown is final, or precedes a restart
698 698 }
699 699
700 700 .. Note::
701 701
702 702 When the clients detect a dead kernel thanks to inactivity on the heartbeat
703 703 socket, they simply send a forceful process termination signal, since a dead
704 704 process is unlikely to respond in any useful way to messages.
705 705
706 706
707 707 Messages on the PUB/SUB socket
708 708 ==============================
709 709
710 710 Streams (stdout, stderr, etc)
711 711 ------------------------------
712 712
713 713 Message type: ``stream``::
714 714
715 715 content = {
716 716 # The name of the stream is one of 'stdin', 'stdout', 'stderr'
717 717 'name' : str,
718 718
719 719 # The data is an arbitrary string to be written to that stream
720 720 'data' : str,
721 721 }
722 722
723 723 When a kernel receives a raw_input call, it should also broadcast it on the pub
724 724 socket with the names 'stdin' and 'stdin_reply'. This will allow other clients
725 725 to monitor/display kernel interactions and possibly replay them to their user
726 726 or otherwise expose them.
727 727
728 728 Display Data
729 729 ------------
730 730
731 731 This type of message is used to bring back data that should be diplayed (text,
732 732 html, svg, etc.) in the frontends. This data is published to all frontends.
733 733 Each message can have multiple representations of the data; it is up to the
734 734 frontend to decide which to use and how. A single message should contain all
735 735 possible representations of the same information. Each representation should
736 736 be a JSON'able data structure, and should be a valid MIME type.
737 737
738 738 Some questions remain about this design:
739 739
740 740 * Do we use this message type for pyout/displayhook? Probably not, because
741 741 the displayhook also has to handle the Out prompt display. On the other hand
742 742 we could put that information into the metadata secion.
743 743
744 744 Message type: ``display_data``::
745 745
746 746 content = {
747 747
748 748 # Who create the data
749 749 'source' : str,
750 750
751 751 # The data dict contains key/value pairs, where the kids are MIME
752 752 # types and the values are the raw data of the representation in that
753 753 # format. The data dict must minimally contain the ``text/plain``
754 754 # MIME type which is used as a backup representation.
755 755 'data' : dict,
756 756
757 757 # Any metadata that describes the data
758 758 'metadata' : dict
759 759 }
760 760
761 761 Python inputs
762 762 -------------
763 763
764 764 These messages are the re-broadcast of the ``execute_request``.
765 765
766 766 Message type: ``pyin``::
767 767
768 768 content = {
769 'code' : str # Source code to be executed, one or more lines
769 'code' : str, # Source code to be executed, one or more lines
770
771 # The counter for this execution is also provided so that clients can
772 # display it, since IPython automatically creates variables called _iN
773 # (for input prompt In[N]).
774 'execution_count' : int
770 775 }
771 776
772 777 Python outputs
773 778 --------------
774 779
775 780 When Python produces output from code that has been compiled in with the
776 781 'single' flag to :func:`compile`, any expression that produces a value (such as
777 782 ``1+1``) is passed to ``sys.displayhook``, which is a callable that can do with
778 783 this value whatever it wants. The default behavior of ``sys.displayhook`` in
779 784 the Python interactive prompt is to print to ``sys.stdout`` the :func:`repr` of
780 785 the value as long as it is not ``None`` (which isn't printed at all). In our
781 786 case, the kernel instantiates as ``sys.displayhook`` an object which has
782 787 similar behavior, but which instead of printing to stdout, broadcasts these
783 788 values as ``pyout`` messages for clients to display appropriately.
784 789
785 790 IPython's displayhook can handle multiple simultaneous formats depending on its
786 791 configuration. The default pretty-printed repr text is always given with the
787 792 ``data`` entry in this message. Any other formats are provided in the
788 793 ``extra_formats`` list. Frontends are free to display any or all of these
789 794 according to its capabilities. ``extra_formats`` list contains 3-tuples of an ID
790 795 string, a type string, and the data. The ID is unique to the formatter
791 796 implementation that created the data. Frontends will typically ignore the ID
792 797 unless if it has requested a particular formatter. The type string tells the
793 798 frontend how to interpret the data. It is often, but not always a MIME type.
794 799 Frontends should ignore types that it does not understand. The data itself is
795 800 any JSON object and depends on the format. It is often, but not always a string.
796 801
797 802 Message type: ``pyout``::
798 803
799 804 content = {
800 805
801 806 # The counter for this execution is also provided so that clients can
802 807 # display it, since IPython automatically creates variables called _N
803 808 # (for prompt N).
804 809 'execution_count' : int,
805 810
806 811 # The data dict contains key/value pairs, where the kids are MIME
807 812 # types and the values are the raw data of the representation in that
808 813 # format. The data dict must minimally contain the ``text/plain``
809 814 # MIME type which is used as a backup representation.
810 815 'data' : dict,
811 816
812 817 }
813 818
814 819 Python errors
815 820 -------------
816 821
817 822 When an error occurs during code execution
818 823
819 824 Message type: ``pyerr``::
820 825
821 826 content = {
822 827 # Similar content to the execute_reply messages for the 'error' case,
823 828 # except the 'status' field is omitted.
824 829 }
825 830
826 831 Kernel status
827 832 -------------
828 833
829 834 This message type is used by frontends to monitor the status of the kernel.
830 835
831 836 Message type: ``status``::
832 837
833 838 content = {
834 839 # When the kernel starts to execute code, it will enter the 'busy'
835 840 # state and when it finishes, it will enter the 'idle' state.
836 841 execution_state : ('busy', 'idle')
837 842 }
838 843
839 844 Kernel crashes
840 845 --------------
841 846
842 847 When the kernel has an unexpected exception, caught by the last-resort
843 848 sys.excepthook, we should broadcast the crash handler's output before exiting.
844 849 This will allow clients to notice that a kernel died, inform the user and
845 850 propose further actions.
846 851
847 852 Message type: ``crash``::
848 853
849 854 content = {
850 855 # Similarly to the 'error' case for execute_reply messages, this will
851 856 # contain exc_name, exc_type and traceback fields.
852 857
853 858 # An additional field with supplementary information such as where to
854 859 # send the crash message
855 860 'info' : str,
856 861 }
857 862
858 863
859 864 Future ideas
860 865 ------------
861 866
862 867 Other potential message types, currently unimplemented, listed below as ideas.
863 868
864 869 Message type: ``file``::
865 870
866 871 content = {
867 872 'path' : 'cool.jpg',
868 873 'mimetype' : str,
869 874 'data' : str,
870 875 }
871 876
872 877
873 878 Messages on the stdin ROUTER/DEALER sockets
874 879 ===========================================
875 880
876 881 This is a socket where the request/reply pattern goes in the opposite direction:
877 882 from the kernel to a *single* frontend, and its purpose is to allow
878 883 ``raw_input`` and similar operations that read from ``sys.stdin`` on the kernel
879 884 to be fulfilled by the client. The request should be made to the frontend that
880 885 made the execution request that prompted ``raw_input`` to be called. For now we
881 886 will keep these messages as simple as possible, since they only mean to convey
882 887 the ``raw_input(prompt)`` call.
883 888
884 889 Message type: ``input_request``::
885 890
886 891 content = { 'prompt' : str }
887 892
888 893 Message type: ``input_reply``::
889 894
890 895 content = { 'value' : str }
891 896
892 897 .. Note::
893 898
894 899 We do not explicitly try to forward the raw ``sys.stdin`` object, because in
895 900 practice the kernel should behave like an interactive program. When a
896 901 program is opened on the console, the keyboard effectively takes over the
897 902 ``stdin`` file descriptor, and it can't be used for raw reading anymore.
898 903 Since the IPython kernel effectively behaves like a console program (albeit
899 904 one whose "keyboard" is actually living in a separate process and
900 905 transported over the zmq connection), raw ``stdin`` isn't expected to be
901 906 available.
902 907
903 908
904 909 Heartbeat for kernels
905 910 =====================
906 911
907 912 Initially we had considered using messages like those above over ZMQ for a
908 913 kernel 'heartbeat' (a way to detect quickly and reliably whether a kernel is
909 914 alive at all, even if it may be busy executing user code). But this has the
910 915 problem that if the kernel is locked inside extension code, it wouldn't execute
911 916 the python heartbeat code. But it turns out that we can implement a basic
912 917 heartbeat with pure ZMQ, without using any Python messaging at all.
913 918
914 919 The monitor sends out a single zmq message (right now, it is a str of the
915 920 monitor's lifetime in seconds), and gets the same message right back, prefixed
916 921 with the zmq identity of the DEALER socket in the heartbeat process. This can be
917 922 a uuid, or even a full message, but there doesn't seem to be a need for packing
918 923 up a message when the sender and receiver are the exact same Python object.
919 924
920 925 The model is this::
921 926
922 927 monitor.send(str(self.lifetime)) # '1.2345678910'
923 928
924 929 and the monitor receives some number of messages of the form::
925 930
926 931 ['uuid-abcd-dead-beef', '1.2345678910']
927 932
928 933 where the first part is the zmq.IDENTITY of the heart's DEALER on the engine, and
929 934 the rest is the message sent by the monitor. No Python code ever has any
930 935 access to the message between the monitor's send, and the monitor's recv.
931 936
932 937
933 938 ToDo
934 939 ====
935 940
936 941 Missing things include:
937 942
938 943 * Important: finish thinking through the payload concept and API.
939 944
940 945 * Important: ensure that we have a good solution for magics like %edit. It's
941 946 likely that with the payload concept we can build a full solution, but not
942 947 100% clear yet.
943 948
944 949 * Finishing the details of the heartbeat protocol.
945 950
946 951 * Signal handling: specify what kind of information kernel should broadcast (or
947 952 not) when it receives signals.
948 953
949 954 .. include:: ../links.rst
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