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.. _parallel_db:
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=======================
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IPython's Task Database
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=======================
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Enabling a DB Backend
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=====================
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The IPython Hub can store all task requests and results in a database.
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Currently supported backends are: MongoDB, SQLite, and an in-memory DictDB.
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This database behavior is optional due to its potential :ref:`db_cost`,
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so you must enable one, either at the command-line::
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$> ipcontroller --dictb # or --mongodb or --sqlitedb
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or in your :file:`ipcontroller_config.py`:
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.. sourcecode:: python
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c.HubFactory.db_class = "DictDB"
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c.HubFactory.db_class = "MongoDB"
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c.HubFactory.db_class = "SQLiteDB"
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Using the Task Database
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=======================
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The most common use case for this is clients requesting results for tasks they did not submit, via:
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.. sourcecode:: ipython
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In [1]: rc.get_result(task_id)
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However, since we have this DB backend, we provide a direct query method in the :class:`~.Client`
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for users who want deeper introspection into their task history. The :meth:`db_query` method of
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the Client is modeled after MongoDB queries, so if you have used MongoDB it should look
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familiar. In fact, when the MongoDB backend is in use, the query is relayed directly.
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When using other backends, the interface is emulated and only a subset of queries is possible.
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.. seealso::
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MongoDB query docs: http://www.mongodb.org/display/DOCS/Querying
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:meth:`Client.db_query` takes a dictionary query object, with keys from the TaskRecord key list,
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and values of either exact values to test, or MongoDB queries, which are dicts of The form:
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``{'operator' : 'argument(s)'}``. There is also an optional `keys` argument, that specifies
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which subset of keys should be retrieved. The default is to retrieve all keys excluding the
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request and result buffers. :meth:`db_query` returns a list of TaskRecord dicts. Also like
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MongoDB, the `msg_id` key will always be included, whether requested or not.
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TaskRecord keys:
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=============== =============== =============
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Key Type Description
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=============== =============== =============
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msg_id uuid(ascii) The msg ID
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header dict The request header
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content dict The request content (likely empty)
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buffers list(bytes) buffers containing serialized request objects
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submitted datetime timestamp for time of submission (set by client)
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client_uuid uuid(ascii) IDENT of client's socket
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engine_uuid uuid(ascii) IDENT of engine's socket
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started datetime time task began execution on engine
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completed datetime time task finished execution (success or failure) on engine
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resubmitted uuid(ascii) msg_id of resubmitted task (if applicable)
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result_header dict header for result
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result_content dict content for result
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result_buffers list(bytes) buffers containing serialized request objects
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queue str The name of the queue for the task ('mux' or 'task')
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pyin str Python input source
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pyout dict Python output (pyout message content)
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pyerr dict Python traceback (pyerr message content)
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stdout str Stream of stdout data
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stderr str Stream of stderr data
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=============== =============== =============
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MongoDB operators we emulate on all backends:
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========== =================
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Operator Python equivalent
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========== =================
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'$in' in
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'$nin' not in
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'$eq' ==
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'$ne' !=
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'$ge' >
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'$gte' >=
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'$le' <
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'$lte' <=
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========== =================
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The DB Query is useful for two primary cases:
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1. deep polling of task status or metadata
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2. selecting a subset of tasks, on which to perform a later operation (e.g. wait on result, purge records, resubmit,...)
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Example Queries
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===============
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To get all msg_ids that are not completed, only retrieving their ID and start time:
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.. sourcecode:: ipython
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In [1]: incomplete = rc.db_query({'completed' : None}, keys=['msg_id', 'started'])
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All jobs started in the last hour by me:
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.. sourcecode:: ipython
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In [1]: from datetime import datetime, timedelta
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In [2]: hourago = datetime.now() - timedelta(1./24)
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In [3]: recent = rc.db_query({'started' : {'$gte' : hourago },
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'client_uuid' : rc.session.session})
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All jobs started more than an hour ago, by clients *other than me*:
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.. sourcecode:: ipython
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In [3]: recent = rc.db_query({'started' : {'$le' : hourago },
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'client_uuid' : {'$ne' : rc.session.session}})
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Result headers for all jobs on engine 3 or 4:
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.. sourcecode:: ipython
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In [1]: uuids = map(rc._engines.get, (3,4))
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In [2]: hist34 = rc.db_query({'engine_uuid' : {'$in' : uuids }, keys='result_header')
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.. _db_cost:
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Cost
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====
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The advantage of the database backends is, of course, that large amounts of
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data can be stored that won't fit in memory. The basic DictDB 'backend' is actually
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to just store all of this information in a Python dictionary. This is very fast,
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but will run out of memory quickly if you move a lot of data around, or your
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cluster is to run for a long time.
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Unfortunately, the DB backends (SQLite and MongoDB) right now are rather slow,
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and can still consume large amounts of resources, particularly if large tasks
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or results are being created at a high frequency.
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For this reason, we have added :class:`~.NoDB`,a dummy backend that doesn't
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actually store any information. When you use this database, nothing is stored,
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and any request for results will result in a KeyError. This obviously prevents
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later requests for results and task resubmission from functioning, but
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sometimes those nice features are not as useful as keeping Hub memory under
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control.
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