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将二进制COPY表FROM与psycopg2一起使用

如何解决将二进制COPY表FROM与psycopg2一起使用

这是Python 3的copY FROM的二进制等效文件

from io import BytesIO
from struct import pack
import psycopg2

# Two rows of data; "id" is not in the upstream data source
# Columns: node, ts, val1, val2
data = [(23253, 342, -15.336734, 2494627.949375),
        (23256, 348, 43.23524, 2494827.949375)]

conn = psycopg2.connect("dbname=mydb user=postgres")
curs = conn.cursor()

# Determine starting value for sequence
curs.execute("SELECT nextval('num_data_id_seq')")
id_seq = curs.fetchone()[0]

# Make a binary file object for copY FROM
cpy = BytesIO()
# 11-byte signature, no flags, no header extension
cpy.write(pack('!11sii', b'PGcopY\n\377\r\n\0', 0, 0))

# Columns: id, node, ts, val1, val2
# Zip: (column position, format, size)
row_format = list(zip(range(-1, 4),
                      ('i', 'i', 'h', 'f', 'd'),
                      ( 4,   4,   2,   4,   8 )))
for row in data:
    # Number of columns/fields (always 5)
    cpy.write(pack('!h', 5))
    for col, fmt, size in row_format:
        value = (id_seq if col == -1 else row[col])
        cpy.write(pack('!i' + fmt, size, value))
    id_seq += 1  # manually increment sequence outside of database

# File trailer
cpy.write(pack('!h', -1))

# copy data to database
cpy.seek(0)
curs.copy_expert("copY num_data FROM STDIN WITH BINARY", cpy)

# Update sequence on database
curs.execute("SELECT setval('num_data_id_seq', %s, false)", (id_seq,))
conn.commit()

更新资料

我改写了上面的方法来为copY编写文件。我在Python中的数据位于NumPy数组中,因此使用它们很有意义。这是一个data具有1M行,7列的示例:

import psycopg2
import numpy as np
from struct import pack
from io import BytesIO
from datetime import datetime

conn = psycopg2.connect("dbname=mydb user=postgres")
curs = conn.cursor()

# NumPy record array
shape = (7, 2000, 500)
print('Generating data with %i rows, %i columns' % (shape[1]*shape[2], shape[0]))

dtype = ([('id', 'i4'), ('node', 'i4'), ('ts', 'i2')] +
         [('s' + str(x), 'f4') for x in range(shape[0])])
data = np.empty(shape[1]*shape[2], dtype)
data['id'] = np.arange(shape[1]*shape[2]) + 1
data['node'] = np.tile(np.arange(shape[1]) + 1, shape[2])
data['ts'] = np.repeat(np.arange(shape[2]) + 1, shape[1])
data['s0'] = np.random.rand(shape[1]*shape[2]) * 100
prv = 's0'
for nxt in data.dtype.names[4:]:
    data[nxt] = data[prv] + np.random.rand(shape[1]*shape[2]) * 10
    prv = nxt

在我的数据库中,我有两个看起来像的表:

CREATE TABLE num_data_binary
(
  id integer PRIMARY KEY,
  node integer NOT NULL,
  ts smallint NOT NULL,
  s0 real,
  s1 real,
  s2 real,
  s3 real,
  s4 real,
  s5 real,
  s6 real
) WITH (OIDS=FALSE);

一个类似的表名为num_data_text

以下是一些简单的辅助函数,它们通过使用NumPy记录数组中的信息为copY(文本和二进制格式)准备数据:

def prepare_text(dat):
    cpy = BytesIO()
    for row in dat:
        cpy.write('\t'.join([repr(x) for x in row]) + '\n')
    return(cpy)

def prepare_binary(dat):
    pgcopy_dtype = [('num_fields','>i2')]
    for field, dtype in dat.dtype.descr:
        pgcopy_dtype += [(field + '_length', '>i4'),
                         (field, dtype.replace('<', '>'))]
    pgcopy = np.empty(dat.shape, pgcopy_dtype)
    pgcopy['num_fields'] = len(dat.dtype)
    for i in range(len(dat.dtype)):
        field = dat.dtype.names[i]
        pgcopy[field + '_length'] = dat.dtype[i].alignment
        pgcopy[field] = dat[field]
    cpy = BytesIO()
    cpy.write(pack('!11sii', b'PGcopY\n\377\r\n\0', 0, 0))
    cpy.write(pgcopy.tostring())  # all rows
    cpy.write(pack('!h', -1))  # file trailer
    return(cpy)

这就是我使用帮助程序函数对两种copY格式方法进行基准测试的方式:

def time_pgcopy(dat, table, binary):
    print('Processing copy object for ' + table)
    tstart = datetime.Now()
    if binary:
        cpy = prepare_binary(dat)
    else:  # text
        cpy = prepare_text(dat)
    tendw = datetime.Now()
    print('copy object prepared in ' + str(tendw - tstart) + '; ' +
          str(cpy.tell()) + ' bytes; transfering to database')
    cpy.seek(0)
    if binary:
        curs.copy_expert('copY ' + table + ' FROM STDIN WITH BINARY', cpy)
    else:  # text
        curs.copy_from(cpy, table)
    conn.commit()
    tend = datetime.Now()
    print('Database copy time: ' + str(tend - tendw))
    print('        Total time: ' + str(tend - tstart))
    return

time_pgcopy(data, 'num_data_text', binary=False)
time_pgcopy(data, 'num_data_binary', binary=True)

这是最后两个time_pgcopy命令的输出

Processing copy object for num_data_text
copy object prepared in 0:01:15.288695; 84355016 bytes; transfering to database
Database copy time: 0:00:37.929166
        Total time: 0:01:53.217861
Processing copy object for num_data_binary
copy object prepared in 0:00:01.296143; 80000021 bytes; transfering to database
Database copy time: 0:00:23.325952
        Total time: 0:00:24.622095

因此,使用二进制方法,NumPy→文件和File→数据库步骤都更快。明显的区别是Python如何准备copY文件,这对于文本来说确实很慢。通常,二进制格式会以这种格式的文本格式在2/3的时间内将其加载到数据库中。

最后,我比较了数据库中两个表中的值,以查看数字是否不同。大约1.46%的行的column值不同s0,并且该比例的值增加到6.17%s6(可能与我使用的随机方法有关)。所有70M 32位浮点值之间的非零绝对差值介于9.3132257e-010和7.6293945e-006之间。文本和二进制加载方法间的这些细微差别是由于文本格式方法所需的float→text→float转换而导致精度损失。

解决方法

我有数千万行要从多维数组文件传输到PostgreSQL数据库。我的工具是Python和psycopg2。批量插入数据的最有效方法是使用copy_from。但是,我的数据主要是32位浮点数(实数或float4),所以我宁愿不从实数→文本→实数转换。这是一个示例数据库DDL:

CREATE TABLE num_data
(
  id serial PRIMARY KEY NOT NULL,node integer NOT NULL,ts smallint NOT NULL,val1 real,val2 double precision
);

这是我在Python中使用字符串(文本)的地方:

# Just one row of data
num_row = [23253,342,-15.336734,2494627.949375]

import psycopg2
# Python3:
from io import StringIO
# Python2,use: from cStringIO import StringIO

conn = psycopg2.connect("dbname=mydb user=postgres")
curs = conn.cursor()

# Convert floating point numbers to text,write to COPY input
cpy = StringIO()
cpy.write('\t'.join([repr(x) for x in num_row]) + '\n')

# Insert data; database converts text back to floating point numbers
cpy.seek(0)
curs.copy_from(cpy,'num_data',columns=('node','ts','val1','val2'))
conn.commit()

是否存在可以使用二进制模式运行的等效项?即,将浮点数保留为二进制?这样不仅可以保持浮点精度,而且可以更快。

(注意:要查看与示例相同的精度,请使用SET extra_float_digits='2'

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