`psycopg2.extras` -- Miscellaneous goodies for Psycopg 2 ============================================================= .. sectionauthor:: Daniele Varrazzo .. module:: psycopg2.extras .. testsetup:: import psycopg2.extras from psycopg2.extras import Inet create_test_table() This module is a generic place used to hold little helper functions and classes until a better place in the distribution is found. .. _cursor-subclasses: Connection and cursor subclasses -------------------------------- A few objects that change the way the results are returned by the cursor or modify the object behavior in some other way. Typically `!cursor` subclasses are passed as *cursor_factory* argument to `~psycopg2.connect()` so that the connection's `~connection.cursor()` method will generate objects of this class. Alternatively a `!cursor` subclass can be used one-off by passing it as the *cursor_factory* argument to the `!cursor()` method. If you want to use a `!connection` subclass you can pass it as the *connection_factory* argument of the `!connect()` function. .. index:: pair: Cursor; Dictionary .. _dict-cursor: Dictionary-like cursor ^^^^^^^^^^^^^^^^^^^^^^ The dict cursors allow to access to the retrieved records using an interface similar to the Python dictionaries instead of the tuples. >>> dict_cur = conn.cursor(cursor_factory=psycopg2.extras.DictCursor) >>> dict_cur.execute("INSERT INTO test (num, data) VALUES(%s, %s)", ... (100, "abc'def")) >>> dict_cur.execute("SELECT * FROM test") >>> rec = dict_cur.fetchone() >>> rec['id'] 1 >>> rec['num'] 100 >>> rec['data'] "abc'def" The records still support indexing as the original tuple: >>> rec[2] "abc'def" .. autoclass:: DictCursor .. autoclass:: DictConnection .. note:: Not very useful since Psycopg 2.5: you can use `psycopg2.connect`\ ``(dsn, cursor_factory=DictCursor)`` instead of `!DictConnection`. .. autoclass:: DictRow Real dictionary cursor ^^^^^^^^^^^^^^^^^^^^^^ .. autoclass:: RealDictCursor .. autoclass:: RealDictConnection .. note:: Not very useful since Psycopg 2.5: you can use `psycopg2.connect`\ ``(dsn, cursor_factory=RealDictCursor)`` instead of `!RealDictConnection`. .. autoclass:: RealDictRow .. index:: pair: Cursor; namedtuple `namedtuple` cursor ^^^^^^^^^^^^^^^^^^^^ .. versionadded:: 2.3 These objects require :py:func:`collections.namedtuple` to be found, so it is available out-of-the-box only from Python 2.6. Anyway, the namedtuple implementation is compatible with previous Python versions, so all you have to do is to `download it`__ and make it available where we expect it to be... :: from somewhere import namedtuple import collections collections.namedtuple = namedtuple from psycopg.extras import NamedTupleConnection # ... .. __: http://code.activestate.com/recipes/500261-named-tuples/ .. autoclass:: NamedTupleCursor .. autoclass:: NamedTupleConnection .. note:: Not very useful since Psycopg 2.5: you can use `psycopg2.connect`\ ``(dsn, cursor_factory=NamedTupleCursor)`` instead of `!NamedTupleConnection`. .. index:: pair: Cursor; Logging Logging cursor ^^^^^^^^^^^^^^ .. autoclass:: LoggingConnection :members: initialize,filter .. autoclass:: LoggingCursor .. autoclass:: MinTimeLoggingConnection :members: initialize,filter .. autoclass:: MinTimeLoggingCursor .. _replication-objects: Replication connection and cursor classes ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ See :ref:`replication-support` for an introduction to the topic. The following replication types are defined: .. data:: REPLICATION_LOGICAL .. data:: REPLICATION_PHYSICAL .. index:: pair: Connection; replication .. autoclass:: LogicalReplicationConnection This connection factory class can be used to open a special type of connection that is used for logical replication. Example:: from psycopg2.extras import LogicalReplicationConnection log_conn = psycopg2.connect(dsn, connection_factory=LogicalReplicationConnection) log_cur = log_conn.cursor() .. autoclass:: PhysicalReplicationConnection This connection factory class can be used to open a special type of connection that is used for physical replication. Example:: from psycopg2.extras import PhysicalReplicationConnection phys_conn = psycopg2.connect(dsn, connection_factory=PhysicalReplicationConnection) phys_cur = phys_conn.cursor() Both `LogicalReplicationConnection` and `PhysicalReplicationConnection` use `ReplicationCursor` for actual communication with the server. .. index:: pair: Message; replication The individual messages in the replication stream are represented by `ReplicationMessage` objects (both logical and physical type): .. autoclass:: ReplicationMessage .. attribute:: payload The actual data received from the server. An instance of either `bytes()` or `unicode()`, depending on the value of `decode` option passed to `~ReplicationCursor.start_replication()` on the connection. See `~ReplicationCursor.read_message()` for details. .. attribute:: data_size The raw size of the message payload (before possible unicode conversion). .. attribute:: data_start LSN position of the start of the message. .. attribute:: wal_end LSN position of the current end of WAL on the server. .. attribute:: send_time A `~datetime` object representing the server timestamp at the moment when the message was sent. .. attribute:: cursor A reference to the corresponding `ReplicationCursor` object. .. index:: pair: Cursor; replication .. autoclass:: ReplicationCursor .. method:: create_replication_slot(slot_name, slot_type=None, output_plugin=None) Create streaming replication slot. :param slot_name: name of the replication slot to be created :param slot_type: type of replication: should be either `REPLICATION_LOGICAL` or `REPLICATION_PHYSICAL` :param output_plugin: name of the logical decoding output plugin to be used by the slot; required for logical replication connections, disallowed for physical Example:: log_cur.create_replication_slot("logical1", "test_decoding") phys_cur.create_replication_slot("physical1") # either logical or physical replication connection cur.create_replication_slot("slot1", slot_type=REPLICATION_LOGICAL) When creating a slot on a logical replication connection, a logical replication slot is created by default. Logical replication requires name of the logical decoding output plugin to be specified. When creating a slot on a physical replication connection, a physical replication slot is created by default. No output plugin parameter is required or allowed when creating a physical replication slot. In either case the type of slot being created can be specified explicitly using *slot_type* parameter. Replication slots are a feature of PostgreSQL server starting with version 9.4. .. method:: drop_replication_slot(slot_name) Drop streaming replication slot. :param slot_name: name of the replication slot to drop Example:: # either logical or physical replication connection cur.drop_replication_slot("slot1") Replication slots are a feature of PostgreSQL server starting with version 9.4. .. method:: start_replication(slot_name=None, slot_type=None, start_lsn=0, timeline=0, options=None, decode=False) Start replication on the connection. :param slot_name: name of the replication slot to use; required for logical replication, physical replication can work with or without a slot :param slot_type: type of replication: should be either `REPLICATION_LOGICAL` or `REPLICATION_PHYSICAL` :param start_lsn: the optional LSN position to start replicating from, can be an integer or a string of hexadecimal digits in the form ``XXX/XXX`` :param timeline: WAL history timeline to start streaming from (optional, can only be used with physical replication) :param options: a dictionary of options to pass to logical replication slot (not allowed with physical replication) :param decode: a flag indicating that unicode conversion should be performed on messages received from the server If a *slot_name* is specified, the slot must exist on the server and its type must match the replication type used. If not specified using *slot_type* parameter, the type of replication is defined by the type of replication connection. Logical replication is only allowed on logical replication connection, but physical replication can be used with both types of connection. On the other hand, physical replication doesn't require a named replication slot to be used, only logical replication does. In any case logical replication and replication slots are a feature of PostgreSQL server starting with version 9.4. Physical replication can be used starting with 9.0. If *start_lsn* is specified, the requested stream will start from that LSN. The default is `!None` which passes the LSN ``0/0`` causing replay to begin at the last point for which the server got flush confirmation from the client, or the oldest available point for a new slot. The server might produce an error if a WAL file for the given LSN has already been recycled or it may silently start streaming from a later position: the client can verify the actual position using information provided by the `ReplicationMessage` attributes. The exact server behavior depends on the type of replication and use of slots. The *timeline* parameter can only be specified with physical replication and only starting with server version 9.3. A dictionary of *options* may be passed to the logical decoding plugin on a logical replication slot. The set of supported options depends on the output plugin that was used to create the slot. Must be `!None` for physical replication. If *decode* is set to `!True` the messages received from the server would be converted according to the connection `~connection.encoding`. *This parameter should not be set with physical replication or with logical replication plugins that produce binary output.* This function constructs a ``START_REPLICATION`` command and calls `start_replication_expert()` internally. After starting the replication, to actually consume the incoming server messages use `consume_stream()` or implement a loop around `read_message()` in case of :ref:`asynchronous connection `. .. method:: start_replication_expert(command, decode=False) Start replication on the connection using provided ``START_REPLICATION`` command. See `start_replication()` for description of *decode* parameter. .. method:: consume_stream(consume, keepalive_interval=10) :param consume: a callable object with signature :samp:`consume({msg})` :param keepalive_interval: interval (in seconds) to send keepalive messages to the server This method can only be used with synchronous connection. For asynchronous connections see `read_message()`. Before using this method to consume the stream call `start_replication()` first. This method enters an endless loop reading messages from the server and passing them to ``consume()`` one at a time, then waiting for more messages from the server. In order to make this method break out of the loop and return, ``consume()`` can throw a `StopReplication` exception. Any unhandled exception will make it break out of the loop as well. The *msg* object passed to ``consume()`` is an instance of `ReplicationMessage` class. See `read_message()` for details about message decoding. This method also sends keepalive messages to the server in case there were no new data from the server for the duration of *keepalive_interval* (in seconds). The value of this parameter must be set to at least 1 second, but it can have a fractional part. After processing certain amount of messages the client should send a confirmation message to the server. This should be done by calling `send_feedback()` method on the corresponding replication cursor. A reference to the cursor is provided in the `ReplicationMessage` as an attribute. The following example is a sketch implementation of ``consume()`` callable for logical replication:: class LogicalStreamConsumer(object): ... def __call__(self, msg): self.process_message(msg.payload) if self.should_send_feedback(msg): msg.cursor.send_feedback(flush_lsn=msg.data_start) consumer = LogicalStreamConsumer() cur.consume_stream(consumer) .. warning:: When using replication with slots, failure to constantly consume *and* report success to the server appropriately can eventually lead to "disk full" condition on the server, because the server retains all the WAL segments that might be needed to stream the changes via all of the currently open replication slots. On the other hand, it is not recommended to send confirmation after *every* processed message, since that will put an unnecessary load on network and the server. A possible strategy is to confirm after every COMMIT message. .. method:: send_feedback(write_lsn=0, flush_lsn=0, apply_lsn=0, reply=False) :param write_lsn: a LSN position up to which the client has written the data locally :param flush_lsn: a LSN position up to which the client has processed the data reliably (the server is allowed to discard all and every data that predates this LSN) :param apply_lsn: a LSN position up to which the warm standby server has applied the changes (physical replication master-slave protocol only) :param reply: request the server to send back a keepalive message immediately Use this method to report to the server that all messages up to a certain LSN position have been processed on the client and may be discarded on the server. This method can also be called with all default parameters' values to just send a keepalive message to the server. Low-level replication cursor methods for :ref:`asynchronous connection ` operation. With the synchronous connection a call to `consume_stream()` handles all the complexity of handling the incoming messages and sending keepalive replies, but at times it might be beneficial to use low-level interface for better control, in particular to `~select` on multiple sockets. The following methods are provided for asynchronous operation: .. method:: read_message() Try to read the next message from the server without blocking and return an instance of `ReplicationMessage` or `!None`, in case there are no more data messages from the server at the moment. This method should be used in a loop with asynchronous connections (after calling `start_replication()` once). For synchronous connections see `consume_stream()`. The returned message's `~ReplicationMessage.payload` is an instance of `!unicode` decoded according to connection `~connection.encoding` *iff* *decode* was set to `!True` in the initial call to `start_replication()` on this connection, otherwise it is an instance of `!bytes` with no decoding. It is expected that the calling code will call this method repeatedly in order to consume all of the messages that might have been buffered until `!None` is returned. After receiving `!None` from this method the caller should use `~select.select()` or `~select.poll()` on the corresponding connection to block the process until there is more data from the server. The server can send keepalive messages to the client periodically. Such messages are silently consumed by this method and are never reported to the caller. .. method:: fileno() Call the corresponding connection's `~connection.fileno()` method and return the result. This is a convenience method which allows replication cursor to be used directly in `~select.select()` or `~select.poll()` calls. .. attribute:: io_timestamp A `~datetime` object representing the timestamp at the moment of last communication with the server (a data or keepalive message in either direction). An actual example of asynchronous operation might look like this:: from select import select from datetime import datetime def consume(msg): ... keepalive_interval = 10.0 while True: msg = cur.read_message() if msg: consume(msg) else: now = datetime.now() timeout = keepalive_interval - (now - cur.io_timestamp).total_seconds() try: sel = select([cur], [], [], max(0, timeout)) if not any(sel): cur.send_feedback() # timed out, send keepalive message except InterruptedError: pass # recalculate timeout and continue .. index:: pair: Cursor; Replication .. autoclass:: StopReplication .. index:: single: Data types; Additional Additional data types --------------------- .. index:: pair: JSON; Data types pair: JSON; Adaptation .. _adapt-json: JSON_ adaptation ^^^^^^^^^^^^^^^^ .. versionadded:: 2.5 .. versionchanged:: 2.5.4 added |jsonb| support. In previous versions |jsonb| values are returned as strings. See :ref:`the FAQ ` for a workaround. Psycopg can adapt Python objects to and from the PostgreSQL |pgjson|_ and |jsonb| types. With PostgreSQL 9.2 and following versions adaptation is available out-of-the-box. To use JSON data with previous database versions (either with the `9.1 json extension`__, but even if you want to convert text fields to JSON) you can use the `register_json()` function. .. __: http://people.planetpostgresql.org/andrew/index.php?/archives/255-JSON-for-PG-9.2-...-and-now-for-9.1!.html The Python library used by default to convert Python objects to JSON and to parse data from the database depends on the language version: with Python 2.6 and following the :py:mod:`json` module from the standard library is used; with previous versions the `simplejson`_ module is used if available. Note that the last `!simplejson` version supporting Python 2.4 is the 2.0.9. .. _JSON: http://www.json.org/ .. |pgjson| replace:: :sql:`json` .. |jsonb| replace:: :sql:`jsonb` .. _pgjson: http://www.postgresql.org/docs/current/static/datatype-json.html .. _simplejson: http://pypi.python.org/pypi/simplejson/ In order to pass a Python object to the database as query argument you can use the `Json` adapter:: curs.execute("insert into mytable (jsondata) values (%s)", [Json({'a': 100})]) Reading from the database, |pgjson| and |jsonb| values will be automatically converted to Python objects. .. note:: If you are using the PostgreSQL :sql:`json` data type but you want to read it as string in Python instead of having it parsed, your can either cast the column to :sql:`text` in the query (it is an efficient operation, that doesn't involve a copy):: cur.execute("select jsondata::text from mytable") or you can register a no-op `!loads()` function with `register_default_json()`:: psycopg2.extras.register_default_json(loads=lambda x: x) .. note:: You can use `~psycopg2.extensions.register_adapter()` to adapt any Python dictionary to JSON, either registering `Json` or any subclass or factory creating a compatible adapter:: psycopg2.extensions.register_adapter(dict, psycopg2.extras.Json) This setting is global though, so it is not compatible with similar adapters such as the one registered by `register_hstore()`. Any other object supported by JSON can be registered the same way, but this will clobber the default adaptation rule, so be careful to unwanted side effects. If you want to customize the adaptation from Python to PostgreSQL you can either provide a custom `!dumps()` function to `Json`:: curs.execute("insert into mytable (jsondata) values (%s)", [Json({'a': 100}, dumps=simplejson.dumps)]) or you can subclass it overriding the `~Json.dumps()` method:: class MyJson(Json): def dumps(self, obj): return simplejson.dumps(obj) curs.execute("insert into mytable (jsondata) values (%s)", [MyJson({'a': 100})]) Customizing the conversion from PostgreSQL to Python can be done passing a custom `!loads()` function to `register_json()`. For the builtin data types (|pgjson| from PostgreSQL 9.2, |jsonb| from PostgreSQL 9.4) use `register_default_json()` and `register_default_jsonb()`. For example, if you want to convert the float values from :sql:`json` into :py:class:`~decimal.Decimal` you can use:: loads = lambda x: json.loads(x, parse_float=Decimal) psycopg2.extras.register_json(conn, loads=loads) .. autoclass:: Json .. automethod:: dumps .. autofunction:: register_json .. versionchanged:: 2.5.4 added the *name* parameter to enable :sql:`jsonb` support. .. autofunction:: register_default_json .. autofunction:: register_default_jsonb .. versionadded:: 2.5.4 .. index:: pair: hstore; Data types pair: dict; Adaptation .. _adapt-hstore: Hstore data type ^^^^^^^^^^^^^^^^ .. versionadded:: 2.3 The |hstore|_ data type is a key-value store embedded in PostgreSQL. It has been available for several server versions but with the release 9.0 it has been greatly improved in capacity and usefulness with the addition of many functions. It supports GiST or GIN indexes allowing search by keys or key/value pairs as well as regular BTree indexes for equality, uniqueness etc. Psycopg can convert Python `!dict` objects to and from |hstore| structures. Only dictionaries with string/unicode keys and values are supported. `!None` is also allowed as value but not as a key. Psycopg uses a more efficient |hstore| representation when dealing with PostgreSQL 9.0 but previous server versions are supported as well. By default the adapter/typecaster are disabled: they can be enabled using the `register_hstore()` function. .. autofunction:: register_hstore .. versionchanged:: 2.4 added the *oid* parameter. If not specified, the typecaster is installed also if |hstore| is not installed in the :sql:`public` schema. .. versionchanged:: 2.4.3 added support for |hstore| array. .. |hstore| replace:: :sql:`hstore` .. _hstore: http://www.postgresql.org/docs/current/static/hstore.html .. index:: pair: Composite types; Data types pair: tuple; Adaptation pair: namedtuple; Adaptation .. _adapt-composite: Composite types casting ^^^^^^^^^^^^^^^^^^^^^^^ .. versionadded:: 2.4 Using `register_composite()` it is possible to cast a PostgreSQL composite type (either created with the |CREATE TYPE|_ command or implicitly defined after a table row type) into a Python named tuple, or into a regular tuple if :py:func:`collections.namedtuple` is not found. .. |CREATE TYPE| replace:: :sql:`CREATE TYPE` .. _CREATE TYPE: http://www.postgresql.org/docs/current/static/sql-createtype.html .. doctest:: >>> cur.execute("CREATE TYPE card AS (value int, suit text);") >>> psycopg2.extras.register_composite('card', cur) >>> cur.execute("select (8, 'hearts')::card") >>> cur.fetchone()[0] card(value=8, suit='hearts') Nested composite types are handled as expected, provided that the type of the composite components are registered as well. .. doctest:: >>> cur.execute("CREATE TYPE card_back AS (face card, back text);") >>> psycopg2.extras.register_composite('card_back', cur) >>> cur.execute("select ((8, 'hearts'), 'blue')::card_back") >>> cur.fetchone()[0] card_back(face=card(value=8, suit='hearts'), back='blue') Adaptation from Python tuples to composite types is automatic instead and requires no adapter registration. .. _custom-composite: .. Note:: If you want to convert PostgreSQL composite types into something different than a `!namedtuple` you can subclass the `CompositeCaster` overriding `~CompositeCaster.make()`. For example, if you want to convert your type into a Python dictionary you can use:: >>> class DictComposite(psycopg2.extras.CompositeCaster): ... def make(self, values): ... return dict(zip(self.attnames, values)) >>> psycopg2.extras.register_composite('card', cur, ... factory=DictComposite) >>> cur.execute("select (8, 'hearts')::card") >>> cur.fetchone()[0] {'suit': 'hearts', 'value': 8} .. autofunction:: register_composite .. versionchanged:: 2.4.3 added support for array of composite types .. versionchanged:: 2.5 added the *factory* parameter .. autoclass:: CompositeCaster .. automethod:: make .. versionadded:: 2.5 Object attributes: .. attribute:: name The name of the PostgreSQL type. .. attribute:: schema The schema where the type is defined. .. versionadded:: 2.5 .. attribute:: oid The oid of the PostgreSQL type. .. attribute:: array_oid The oid of the PostgreSQL array type, if available. .. attribute:: type The type of the Python objects returned. If :py:func:`collections.namedtuple()` is available, it is a named tuple with attributes equal to the type components. Otherwise it is just the `!tuple` object. .. attribute:: attnames List of component names of the type to be casted. .. attribute:: atttypes List of component type oids of the type to be casted. .. index:: pair: range; Data types .. _adapt-range: Range data types ^^^^^^^^^^^^^^^^ .. versionadded:: 2.5 Psycopg offers a `Range` Python type and supports adaptation between them and PostgreSQL |range|_ types. Builtin |range| types are supported out-of-the-box; user-defined |range| types can be adapted using `register_range()`. .. |range| replace:: :sql:`range` .. _range: http://www.postgresql.org/docs/current/static/rangetypes.html .. autoclass:: Range This Python type is only used to pass and retrieve range values to and from PostgreSQL and doesn't attempt to replicate the PostgreSQL range features: it doesn't perform normalization and doesn't implement all the operators__ supported by the database. .. __: http://www.postgresql.org/docs/current/static/functions-range.html#RANGE-OPERATORS-TABLE `!Range` objects are immutable, hashable, and support the ``in`` operator (checking if an element is within the range). They can be tested for equivalence. Empty ranges evaluate to `!False` in boolean context, nonempty evaluate to `!True`. .. versionchanged:: 2.5.3 `!Range` objects can be sorted although, as on the server-side, this ordering is not particularly meangingful. It is only meant to be used by programs assuming objects using `!Range` as primary key can be sorted on them. In previous versions comparing `!Range`\s raises `!TypeError`. Although it is possible to instantiate `!Range` objects, the class doesn't have an adapter registered, so you cannot normally pass these instances as query arguments. To use range objects as query arguments you can either use one of the provided subclasses, such as `NumericRange` or create a custom subclass using `register_range()`. Object attributes: .. autoattribute:: isempty .. autoattribute:: lower .. autoattribute:: upper .. autoattribute:: lower_inc .. autoattribute:: upper_inc .. autoattribute:: lower_inf .. autoattribute:: upper_inf The following `Range` subclasses map builtin PostgreSQL |range| types to Python objects: they have an adapter registered so their instances can be passed as query arguments. |range| values read from database queries are automatically casted into instances of these classes. .. autoclass:: NumericRange .. autoclass:: DateRange .. autoclass:: DateTimeRange .. autoclass:: DateTimeTZRange .. note:: Python lacks a representation for :sql:`infinity` date so Psycopg converts the value to `date.max` and such. When written into the database these dates will assume their literal value (e.g. :sql:`9999-12-31` instead of :sql:`infinity`). Check :ref:`infinite-dates-handling` for an example of an alternative adapter to map `date.max` to :sql:`infinity`. An alternative dates adapter will be used automatically by the `DateRange` adapter and so on. Custom |range| types (created with |CREATE TYPE|_ :sql:`... AS RANGE`) can be adapted to a custom `Range` subclass: .. autofunction:: register_range .. autoclass:: RangeCaster Object attributes: .. attribute:: range The `!Range` subclass adapted. .. attribute:: adapter The `~psycopg2.extensions.ISQLQuote` responsible to adapt `!range`. .. attribute:: typecaster The object responsible for casting. .. attribute:: array_typecaster The object responsible to cast arrays, if available, else `!None`. .. index:: pair: UUID; Data types .. _adapt-uuid: UUID data type ^^^^^^^^^^^^^^ .. versionadded:: 2.0.9 .. versionchanged:: 2.0.13 added UUID array support. .. doctest:: >>> psycopg2.extras.register_uuid() >>> # Python UUID can be used in SQL queries >>> import uuid >>> my_uuid = uuid.UUID('{12345678-1234-5678-1234-567812345678}') >>> psycopg2.extensions.adapt(my_uuid).getquoted() "'12345678-1234-5678-1234-567812345678'::uuid" >>> # PostgreSQL UUID are transformed into Python UUID objects. >>> cur.execute("SELECT 'a0eebc99-9c0b-4ef8-bb6d-6bb9bd380a11'::uuid") >>> cur.fetchone()[0] UUID('a0eebc99-9c0b-4ef8-bb6d-6bb9bd380a11') .. autofunction:: register_uuid .. autoclass:: UUID_adapter .. index:: pair: INET; Data types pair: CIDR; Data types pair: MACADDR; Data types .. _adapt-network: Networking data types ^^^^^^^^^^^^^^^^^^^^^ By default Psycopg casts the PostgreSQL networking data types (:sql:`inet`, :sql:`cidr`, :sql:`macaddr`) into ordinary strings; array of such types are converted into lists of strings. .. versionchanged:: 2.7 in previous version array of networking types were not treated as arrays. .. autofunction:: register_ipaddress .. autofunction:: register_inet .. deprecated:: 2.7 this function will not receive further development and may disappear in future versions. .. doctest:: >>> psycopg2.extras.register_inet() >>> cur.mogrify("SELECT %s", (Inet('127.0.0.1/32'),)) "SELECT E'127.0.0.1/32'::inet" >>> cur.execute("SELECT '192.168.0.1/24'::inet") >>> cur.fetchone()[0].addr '192.168.0.1/24' .. autoclass:: Inet .. deprecated:: 2.7 this object will not receive further development and may disappear in future versions. .. _fast-exec: Fast execution helpers ---------------------- The current implementation of `~cursor.executemany()` is (using an extremely charitable understatement) not particularly performing. These functions can be used to speed up the repeated execution of a statement againts a set of parameters. By reducing the number of server roundtrips the performance can be `orders of magnitude better`__ than using `!executemany()`. .. __: https://github.com/psycopg/psycopg2/issues/491#issuecomment-276551038 .. autofunction:: execute_batch .. versionadded:: 2.7 .. note:: `!execute_batch()` can be also used in conjunction with PostgreSQL prepared statements using |PREPARE|_, |EXECUTE|_, |DEALLOCATE|_. Instead of executing:: execute_batch(cur, "big and complex SQL with %s %s params", params_list) it is possible to execute something like:: cur.execute("PREPARE stmt AS big and complex SQL with $1 $2 params") execute_batch(cur, "EXECUTE stmt (%s, %s)", params_list) cur.execute("DEALLOCATE stmt") which may bring further performance benefits: if the operation to perform is complex, every single execution will be faster as the query plan is already cached; furthermore the amount of data to send on the server will be lesser (one |EXECUTE| per param set instead of the whole, likely longer, statement). .. |PREPARE| replace:: :sql:`PREPARE` .. _PREPARE: https://www.postgresql.org/docs/current/static/sql-prepare.html .. |EXECUTE| replace:: :sql:`EXECUTE` .. _EXECUTE: https://www.postgresql.org/docs/current/static/sql-execute.html .. |DEALLOCATE| replace:: :sql:`DEALLOCATE` .. _DEALLOCATE: https://www.postgresql.org/docs/current/static/sql-deallocate.html .. autofunction:: execute_values .. versionadded:: 2.7 .. index:: single: Time zones; Fractional Fractional time zones --------------------- .. autofunction:: register_tstz_w_secs .. versionadded:: 2.0.9 .. versionchanged:: 2.2.2 function is no-op: see :ref:`tz-handling`. .. index:: pair: Example; Coroutine; Coroutine support ----------------- .. autofunction:: wait_select(conn) .. versionchanged:: 2.6.2 allow to cancel a query using :kbd:`Ctrl-C`, see :ref:`the FAQ ` for an example.