]> git.openstreetmap.org Git - nominatim.git/blobdiff - nominatim/indexer/indexer.py
Merge remote-tracking branch 'upstream/master'
[nominatim.git] / nominatim / indexer / indexer.py
index 7b826d96182eb69100b84339a6c4df75079bb5fe..233423f03c6a202ec088cfeb0fe7ac26c79db01f 100644 (file)
+# SPDX-License-Identifier: GPL-2.0-only
+#
+# This file is part of Nominatim. (https://nominatim.org)
+#
+# Copyright (C) 2022 by the Nominatim developer community.
+# For a full list of authors see the git log.
 """
 Main work horse for indexing (computing addresses) the database.
 """
 """
 Main work horse for indexing (computing addresses) the database.
 """
+from typing import Optional, Any, cast
 import logging
 import logging
-import select
+import time
 
 
-import psycopg2
+import psycopg2.extras
 
 
+from nominatim.tokenizer.base import AbstractTokenizer
 from nominatim.indexer.progress import ProgressLogger
 from nominatim.indexer import runners
 from nominatim.indexer.progress import ProgressLogger
 from nominatim.indexer import runners
-from nominatim.db.async_connection import DBConnection
+from nominatim.db.async_connection import DBConnection, WorkerPool
+from nominatim.db.connection import connect, Connection, Cursor
+from nominatim.typing import DictCursorResults
 
 LOG = logging.getLogger()
 
 
 
 LOG = logging.getLogger()
 
 
+class PlaceFetcher:
+    """ Asynchronous connection that fetches place details for processing.
+    """
+    def __init__(self, dsn: str, setup_conn: Connection) -> None:
+        self.wait_time = 0.0
+        self.current_ids: Optional[DictCursorResults] = None
+        self.conn: Optional[DBConnection] = DBConnection(dsn,
+                                               cursor_factory=psycopg2.extras.DictCursor)
+
+        with setup_conn.cursor() as cur:
+            # need to fetch those manually because register_hstore cannot
+            # fetch them on an asynchronous connection below.
+            hstore_oid = cur.scalar("SELECT 'hstore'::regtype::oid")
+            hstore_array_oid = cur.scalar("SELECT 'hstore[]'::regtype::oid")
+
+        psycopg2.extras.register_hstore(self.conn.conn, oid=hstore_oid,
+                                        array_oid=hstore_array_oid)
+
+    def close(self) -> None:
+        """ Close the underlying asynchronous connection.
+        """
+        if self.conn:
+            self.conn.close()
+            self.conn = None
+
+
+    def fetch_next_batch(self, cur: Cursor, runner: runners.Runner) -> bool:
+        """ Send a request for the next batch of places.
+            If details for the places are required, they will be fetched
+            asynchronously.
+
+            Returns true if there is still data available.
+        """
+        ids = cast(Optional[DictCursorResults], cur.fetchmany(100))
+
+        if not ids:
+            self.current_ids = None
+            return False
+
+        assert self.conn is not None
+        self.current_ids = runner.get_place_details(self.conn, ids)
+
+        return True
+
+    def get_batch(self) -> DictCursorResults:
+        """ Get the next batch of data, previously requested with
+            `fetch_next_batch`.
+        """
+        assert self.conn is not None
+        assert self.conn.cursor is not None
+
+        if self.current_ids is not None and not self.current_ids:
+            tstart = time.time()
+            self.conn.wait()
+            self.wait_time += time.time() - tstart
+            self.current_ids = cast(Optional[DictCursorResults],
+                                    self.conn.cursor.fetchall())
+
+        return self.current_ids if self.current_ids is not None else []
+
+    def __enter__(self) -> 'PlaceFetcher':
+        return self
+
+
+    def __exit__(self, exc_type: Any, exc_value: Any, traceback: Any) -> None:
+        assert self.conn is not None
+        self.conn.wait()
+        self.close()
+
+
 class Indexer:
     """ Main indexing routine.
     """
 
 class Indexer:
     """ Main indexing routine.
     """
 
-    def __init__(self, dsn, num_threads):
+    def __init__(self, dsn: str, tokenizer: AbstractTokenizer, num_threads: int):
         self.dsn = dsn
         self.dsn = dsn
+        self.tokenizer = tokenizer
         self.num_threads = num_threads
         self.num_threads = num_threads
-        self.conn = None
-        self.threads = []
-
-
-    def _setup_connections(self):
-        self.conn = psycopg2.connect(self.dsn)
-        self.threads = [DBConnection(self.dsn) for _ in range(self.num_threads)]
 
 
 
 
-    def _close_connections(self):
-        if self.conn:
-            self.conn.close()
-            self.conn = None
-
-        for thread in self.threads:
-            thread.close()
-        self.threads = []
+    def has_pending(self) -> bool:
+        """ Check if any data still needs indexing.
+            This function must only be used after the import has finished.
+            Otherwise it will be very expensive.
+        """
+        with connect(self.dsn) as conn:
+            with conn.cursor() as cur:
+                cur.execute("SELECT 'a' FROM placex WHERE indexed_status > 0 LIMIT 1")
+                return cur.rowcount > 0
 
 
 
 
-    def index_full(self, analyse=True):
-        """ Index the complete database. This will first index boudnaries
+    def index_full(self, analyse: bool = True) -> None:
+        """ Index the complete database. This will first index boundaries
             followed by all other objects. When `analyse` is True, then the
             database will be analysed at the appropriate places to
             ensure that database statistics are updated.
         """
             followed by all other objects. When `analyse` is True, then the
             database will be analysed at the appropriate places to
             ensure that database statistics are updated.
         """
-        with psycopg2.connect(self.dsn) as conn:
+        with connect(self.dsn) as conn:
             conn.autocommit = True
 
             conn.autocommit = True
 
-            if analyse:
-                def _analyse():
+            def _analyze() -> None:
+                if analyse:
                     with conn.cursor() as cur:
                     with conn.cursor() as cur:
-                        cur.execute('ANALYSE')
-            else:
-                def _analyse():
-                    pass
+                        cur.execute('ANALYZE')
 
 
-            self.index_by_rank(0, 4)
-            _analyse()
+            if self.index_by_rank(0, 4) > 0:
+                _analyze()
 
 
-            self.index_boundaries(0, 30)
-            _analyse()
+            if self.index_boundaries(0, 30) > 100:
+                _analyze()
 
 
-            self.index_by_rank(5, 25)
-            _analyse()
+            if self.index_by_rank(5, 25) > 100:
+                _analyze()
 
 
-            self.index_by_rank(26, 30)
-            _analyse()
+            if self.index_by_rank(26, 30) > 1000:
+                _analyze()
 
 
-            self.index_postcodes()
-            _analyse()
+            if self.index_postcodes() > 100:
+                _analyze()
 
 
 
 
-    def index_boundaries(self, minrank, maxrank):
+    def index_boundaries(self, minrank: int, maxrank: int) -> int:
         """ Index only administrative boundaries within the given rank range.
         """
         """ Index only administrative boundaries within the given rank range.
         """
+        total = 0
         LOG.warning("Starting indexing boundaries using %s threads",
                     self.num_threads)
 
         LOG.warning("Starting indexing boundaries using %s threads",
                     self.num_threads)
 
-        self._setup_connections()
-
-        try:
+        with self.tokenizer.name_analyzer() as analyzer:
             for rank in range(max(minrank, 4), min(maxrank, 26)):
             for rank in range(max(minrank, 4), min(maxrank, 26)):
-                self._index(runners.BoundaryRunner(rank))
-        finally:
-            self._close_connections()
+                total += self._index(runners.BoundaryRunner(rank, analyzer))
 
 
-    def index_by_rank(self, minrank, maxrank):
+        return total
+
+    def index_by_rank(self, minrank: int, maxrank: int) -> int:
         """ Index all entries of placex in the given rank range (inclusive)
             in order of their address rank.
 
             When rank 30 is requested then also interpolations and
             places with address rank 0 will be indexed.
         """
         """ Index all entries of placex in the given rank range (inclusive)
             in order of their address rank.
 
             When rank 30 is requested then also interpolations and
             places with address rank 0 will be indexed.
         """
+        total = 0
         maxrank = min(maxrank, 30)
         LOG.warning("Starting indexing rank (%i to %i) using %i threads",
                     minrank, maxrank, self.num_threads)
 
         maxrank = min(maxrank, 30)
         LOG.warning("Starting indexing rank (%i to %i) using %i threads",
                     minrank, maxrank, self.num_threads)
 
-        self._setup_connections()
-
-        try:
-            for rank in range(max(1, minrank), maxrank):
-                self._index(runners.RankRunner(rank))
+        with self.tokenizer.name_analyzer() as analyzer:
+            for rank in range(max(1, minrank), maxrank + 1):
+                total += self._index(runners.RankRunner(rank, analyzer), 20 if rank == 30 else 1)
 
             if maxrank == 30:
 
             if maxrank == 30:
-                self._index(runners.RankRunner(0))
-                self._index(runners.InterpolationRunner(), 20)
-                self._index(runners.RankRunner(30), 20)
-            else:
-                self._index(runners.RankRunner(maxrank))
-        finally:
-            self._close_connections()
+                total += self._index(runners.RankRunner(0, analyzer))
+                total += self._index(runners.InterpolationRunner(analyzer), 20)
+
+        return total
 
 
 
 
-    def index_postcodes(self):
-        """Index the entries ofthe location_postcode table.
+    def index_postcodes(self) -> int:
+        """Index the entries of the location_postcode table.
         """
         LOG.warning("Starting indexing postcodes using %s threads", self.num_threads)
 
         """
         LOG.warning("Starting indexing postcodes using %s threads", self.num_threads)
 
-        self._setup_connections()
+        return self._index(runners.PostcodeRunner(), 20)
 
 
-        try:
-            self._index(runners.PostcodeRunner(), 20)
-        finally:
-            self._close_connections()
 
 
-    def update_status_table(self):
+    def update_status_table(self) -> None:
         """ Update the status in the status table to 'indexed'.
         """
         """ Update the status in the status table to 'indexed'.
         """
-        conn = psycopg2.connect(self.dsn)
-
-        try:
+        with connect(self.dsn) as conn:
             with conn.cursor() as cur:
                 cur.execute('UPDATE import_status SET indexed = true')
 
             conn.commit()
             with conn.cursor() as cur:
                 cur.execute('UPDATE import_status SET indexed = true')
 
             conn.commit()
-        finally:
-            conn.close()
 
 
-    def _index(self, runner, batch=1):
+    def _index(self, runner: runners.Runner, batch: int = 1) -> int:
         """ Index a single rank or table. `runner` describes the SQL to use
             for indexing. `batch` describes the number of objects that
             should be processed with a single SQL statement
         """
         LOG.warning("Starting %s (using batch size %s)", runner.name(), batch)
 
         """ Index a single rank or table. `runner` describes the SQL to use
             for indexing. `batch` describes the number of objects that
             should be processed with a single SQL statement
         """
         LOG.warning("Starting %s (using batch size %s)", runner.name(), batch)
 
-        cur = self.conn.cursor()
-        cur.execute(runner.sql_count_objects())
-
-        total_tuples = cur.fetchone()[0]
-        LOG.debug("Total number of rows: %i", total_tuples)
-
-        cur.close()
+        with connect(self.dsn) as conn:
+            psycopg2.extras.register_hstore(conn)
+            with conn.cursor() as cur:
+                total_tuples = cur.scalar(runner.sql_count_objects())
+                LOG.debug("Total number of rows: %i", total_tuples)
 
 
-        progress = ProgressLogger(runner.name(), total_tuples)
+            conn.commit()
 
 
-        if total_tuples > 0:
-            cur = self.conn.cursor(name='places')
-            cur.execute(runner.sql_get_objects())
+            progress = ProgressLogger(runner.name(), total_tuples)
 
 
-            next_thread = self.find_free_thread()
-            while True:
-                places = [p[0] for p in cur.fetchmany(batch)]
-                if not places:
-                    break
+            if total_tuples > 0:
+                with conn.cursor(name='places') as cur:
+                    cur.execute(runner.sql_get_objects())
 
 
-                LOG.debug("Processing places: %s", str(places))
-                thread = next(next_thread)
+                    with PlaceFetcher(self.dsn, conn) as fetcher:
+                        with WorkerPool(self.dsn, self.num_threads) as pool:
+                            has_more = fetcher.fetch_next_batch(cur, runner)
+                            while has_more:
+                                places = fetcher.get_batch()
 
 
-                thread.perform(runner.sql_index_place(places))
-                progress.add(len(places))
+                                # asynchronously get the next batch
+                                has_more = fetcher.fetch_next_batch(cur, runner)
 
 
-            cur.close()
+                                # And insert the current batch
+                                for idx in range(0, len(places), batch):
+                                    part = places[idx:idx + batch]
+                                    LOG.debug("Processing places: %s", str(part))
+                                    runner.index_places(pool.next_free_worker(), part)
+                                    progress.add(len(part))
 
 
-            for thread in self.threads:
-                thread.wait()
+                            LOG.info("Wait time: fetcher: %.2fs,  pool: %.2fs",
+                                     fetcher.wait_time, pool.wait_time)
 
 
-        progress.done()
+                conn.commit()
 
 
-    def find_free_thread(self):
-        """ Generator that returns the next connection that is free for
-            sending a query.
-        """
-        ready = self.threads
-        command_stat = 0
-
-        while True:
-            for thread in ready:
-                if thread.is_done():
-                    command_stat += 1
-                    yield thread
-
-            # refresh the connections occasionaly to avoid potential
-            # memory leaks in Postgresql.
-            if command_stat > 100000:
-                for thread in self.threads:
-                    while not thread.is_done():
-                        thread.wait()
-                    thread.connect()
-                command_stat = 0
-                ready = self.threads
-            else:
-                ready, _, _ = select.select(self.threads, [], [])
-
-        assert False, "Unreachable code"
+        return progress.done()