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sqlite_utils.py
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239 lines (168 loc) · 6.84 KB
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import sqlite3
import pandas as pd
import io
import numpy as np
import dask.dataframe as dd
# connect to a db
def connect_db(db):
conn = sqlite3.connect(db)
# conn.text_factory = convert_string
conn.text_factory = str
# conn.text_factory = bytes
# conn.text_factory = lambda x: unicode(x, 'utf-8', 'ignore')
# conn.text_factory = lambda x: x.decode('iso-8859-1')
return conn
def get_db_tables(db):
conn = connect_db(db)
tables = conn.execute("SELECT name FROM sqlite_master WHERE type='table';")
return tables
def query_db(db, query):
conn = connect_db(db)
df = pd.read_sql_query(query, conn)
return df
def update_field(db, table, where, field, type, data):
# update database column based in list of tuples
conn = connect_db(db)
c = conn.cursor()
c.execute('''PRAGMA locking_mode = EXCLUSIVE''')
c.execute('''PRAGMA synchronous = OFF''')
c.execute('''PRAGMA journal_mode = OFF''')
columns = [i[1] for i in c.execute("PRAGMA table_info(" + table + ")")]
if field not in columns:
c.execute("ALTER TABLE " + table + " ADD COLUMN " + field + " " + type )
# data tuple: (field, where)
c.execute("BEGIN TRANSACTION;")
c.executemany("UPDATE %s SET %s = ? WHERE %s = ?" % (table, field, where), data)
c.execute("COMMIT;")
print('updated %s records in %s' % (len(data), table))
# conn.commit()
def delete_rows(db, table, where, data):
conn = connect_db(db)
c = conn.cursor()
c.execute('''PRAGMA journal_mode = OFF''')
c.execute("BEGIN TRANSACTION;")
c.executemany("DELETE FROM %s WHERE %s = (?)" % (table, where), [(i,) for i in data])
c.execute("COMMIT;")
print('deleted %s records from %s' % (len(data), table))
# conn.commit()
def create_table(db, table, columns, pk='', autoincrement=False):
conn = connect_db(db)
c = conn.cursor()
columns = ', '.join(columns)
if pk and autoincrement:
c.execute("CREATE TABLE IF NOT EXISTS %s (%s INTEGER, %s, PRIMARY KEY (%s));" % (table, pk, columns, pk))
elif pk and not autoincrement:
c.execute("CREATE TABLE IF NOT EXISTS %s (%s, %s, PRIMARY KEY (%s));" % (table, pk, columns, pk))
else:
c.execute("CREATE TABLE IF NOT EXISTS %s (%s)" % (table, columns))
conn.close()
def add_column(db, table, field, type):
conn = connect_db(db)
c = conn.cursor()
c.execute("ALTER TABLE %s ADD COLUMN %s %s" % (table, field, type))
conn.close()
def insert_row(db, table, columns, values):
conn = connect_db(db)
c = conn.cursor()
# fields = []
# for field, type in zip(columns, types):
# fields.append(field + ' ' + type)
c.execute("CREATE TABLE IF NOT EXISTS %s %s" % (table, columns))
c.execute("BEGIN TRANSACTION;")
c.execute("INSERT OR IGNORE INTO %s %s VALUES %s;" % (table, columns, values)) # columns and values should be tuples
c.execute("COMMIT;")
conn.close()
def db_insert_many(db, table, wildcards, data):
conn = connect_db(db)
c = conn.cursor()
c.execute("BEGIN TRANSACTION;")
c.executemany("INSERT OR IGNORE INTO %s values(%s)" % (table, wildcards), data)
c.execute("COMMIT;")
conn.close()
def select_sql_pd_limit(db, table, fields, field, value, limit):
conn = connect_db(db)
if type(fields) == list:
fields = ", ".join(fields)
value = "'%" + value + "%'"
query = "SELECT %s FROM %s WHERE %s LIKE %s LIMIT %s;" % (fields, table, field, value, limit)
df = pd.read_sql_query(query, conn)
return df
def select_sql_df(db, table, fields, where, rows):
conn = connect_db(db)
if type(fields) == list:
fields = ", ".join(fields)
rows = tuple(rows)
query = "SELECT %s FROM %s WHERE %s IN %s;" % (fields, table, where, rows)
df = pd.read_sql_query(query, conn)
return df
def select_fields_sql_df(db, table, fields):
conn = connect_db(db)
if type(fields) == list:
fields = ", ".join(fields)
query = "SELECT %s FROM %s;" % (fields, table)
df = pd.read_sql_query(query, conn)
return df
def query_sql_pd(db, table, fields, order, direction, limit):
conn = connect_db(db)
query = "SELECT %s FROM %s ORDER BY %s %s LIMIT %s;" % (fields, table, order, direction, limit)
df = pd.read_sql_query(query, conn)
return df
def count_sql_df(db, table, fields, field):
conn = connect_db(db)
if type(fields) == list:
fields = ", ".join(fields)
query = "SELECT %s, count(*) FROM %s GROUP BY %s;" % (fields, table, field)
df = pd.read_sql_query(query, conn)
return df
def count_having_sql_df(db, table, fields, groupby, field, operator, value):
conn = connect_db(db)
if type(fields) == list:
fields = ", ".join(fields)
query = "SELECT %s, count(*) FROM %s GROUP BY %s HAVING %s%s'%s';" % (fields, table, groupby, field, operator, value)
df = pd.read_sql_query(query, conn)
return df
def groupby_sql_df(db, table, fields, group_by, order_by, order):
conn = connect_db(db)
if type(fields) == list:
fields = ", ".join(fields)
query = "SELECT %s FROM %s GROUP BY %s ORDER BY %s %s;" % (fields, table, group_by, order_by, order)
df = pd.read_sql_query(query, conn)
return df
def db_ddf_slice(db, table, columns, partitions, chunksize, offset, slice):
conn = connect_db(db)
df = pd.DataFrame()
while True:
query = "SELECT * FROM %s limit %s offset %s;" % (table, chunksize, offset)
df = pd.read_sql_query(query, conn)
ddt = dd.from_pandas(df[columns], npartitions=partitions)
if offset == 0:
final = ddt
else:
final = dd.concat([ddt, final], axis=0, interleave_partitions=True)
if len(final) >= slice:
break
offset += chunksize
if df.shape[0] < chunksize:
break
print('table ' + table + ' loaded into dask dataframe')
return final
# convert array in order to save it in sqlite db
def adapt_array(arr):
"""
http://stackoverflow.com/a/31312102/190597 (SoulNibbler)
"""
# zlib uses similar disk size that Matlab v5 .mat files
# bz2 compress 4 times zlib, but storing process is 20 times slower.
out = io.BytesIO()
np.save(out, arr)
out.seek(0)
return sqlite3.Binary(out.read()) # zlib, bz2
def convert_array(text):
if type(text) == bytes:
out = io.BytesIO(text)
out.seek(0)
out = io.BytesIO(out.read())
return np.load(out, allow_pickle=True)
else:
# print('TypeError: Argument must be an object but found a {} instead. Returning the original value.'.format(type(text).__name__))
return text