6

I've scraped some data from web sources and stored it all in a pandas DataFrame. Now, in order harness the powerful db tools afforded by SQLAlchemy, I want to convert said DataFrame into a Table() object and eventually upsert all data into a PostgreSQL table. If this is practical, what is a workable method of going about accomplishing this task?

0
11

If you are using PostgreSQL 9.5 or later you can perform the UPSERT using a temporary table and an INSERT ... ON CONFLICT statement:

import sqlalchemy as sa

# …

with engine.begin() as conn:
    # step 0.0 - create test environment
    conn.execute(sa.text("DROP TABLE IF EXISTS main_table"))
    conn.execute(
        sa.text(
            "CREATE TABLE main_table (id int primary key, txt varchar(50))"
        )
    )
    conn.execute(
        sa.text(
            "INSERT INTO main_table (id, txt) VALUES (1, 'row 1 old text')"
        )
    )
    # step 0.1 - create DataFrame to UPSERT
    df = pd.DataFrame(
        [(2, "new row 2 text"), (1, "row 1 new text")], columns=["id", "txt"]
    )
    
    # step 1 - create temporary table and upload DataFrame
    conn.execute(
        sa.text(
            "CREATE TEMPORARY TABLE temp_table (id int primary key, txt varchar(50))"
        )
    )
    df.to_sql("temp_table", conn, index=False, if_exists="append")

    # step 2 - merge temp_table into main_table
    conn.execute(
        sa.text("""\
            INSERT INTO main_table (id, txt) 
            SELECT id, txt FROM temp_table
            ON CONFLICT (id) DO
                UPDATE SET txt = EXCLUDED.txt
            """
        )
    )

    # step 3 - confirm results
    result = conn.execute(sa.text("SELECT * FROM main_table ORDER BY id")).fetchall()
    print(result)  # [(1, 'row 1 new text'), (2, 'new row 2 text')]
0
1

If you already have a pandas dataframe you could use df.to_sql to push the data directly through SQLAlchemy

from sqlalchemy import create_engine
#create a connection from Postgre URI
cnxn = create_engine("postgresql+psycopg2://username:password@host:port/database")
#write dataframe to database
df.to_sql("my_table", con=cnxn, schema="myschema")
3
  • 1
    Indeed, that is certainly a viable options, and thank you for your input! However, I am looking to upsert data - not just insert or replace a table. That's where I think sqlalchemy could be a better option. Apr 22 '20 at 14:06
  • 1
    stackoverflow.com/questions/25955200/… Maybe you could use this wrapper for SqlAlchemy Insert that implements upsert using the on commit clause dynamically? Apr 22 '20 at 15:37
  • Yes, this works only if one has a Table() sqlalchemy object. In order to do this, I first need to convert the pandas df to a Table() object. - which is the main and first thing I want to do Apr 22 '20 at 18:46
1

Here is my code for bulk insert & insert on conflict update query for postgresql from pandas dataframe:

Lets say id is unique key for both postgresql table and pandas df and you want to insert and update based on this id.

import pandas as pd
from sqlalchemy import create_engine, text

engine = create_engine(postgresql://username:pass@host:port/dbname)
query = text(f""" 
                INSERT INTO schema.table(name, title, id)
                VALUES {','.join([str(i) for i in list(df.to_records(index=False))])}
                ON CONFLICT (id)
                DO  UPDATE SET name= excluded.name,
                               title= excluded.title
         """)
engine.execute(query)

Make sure that your df columns must be same order with your table.

EDIT 1:

Thanks to Gord Thompson's comment, I realized that this query won't work if there is single quote in columns. Therefore here is a fix if there is single quote in columns:

import pandas as pd
from sqlalchemy import create_engine, text

df.name = df.name.str.replace("'", "''")
df.title = df.title.str.replace("'", "''")
engine = create_engine(postgresql://username:pass@host:port/dbname)
query = text(""" 
            INSERT INTO author(name, title, id)
            VALUES %s
            ON CONFLICT (id)
            DO  UPDATE SET name= excluded.name,
                           title= excluded.title
     """ % ','.join([str(i) for i in list(df.to_records(index=False))]).replace('"', "'"))
engine.execute(query)
4
  • SQL Injection issue: The above code will fail if either name or title contains a single quote. Example here. Dec 4 '20 at 13:54
  • @GordThompson thank you for your comment. I've edited my solution above Dec 5 '20 at 11:27
  • Now the code fails if either name or title contains double quotes. :( Dec 5 '20 at 12:27
  • Is there a version of this that uses sql parameters instead of % string interpolation? NULL values in your df will break string interpolation, as is the case here. Aug 9 at 20:05
1

Consider this function if your DataFrame and SQL Table contain the same column names and types already. Advantages:

  • Good if you have a long dataframe to insert. (Batching)
  • Avoid writing long sql statement in your code.
  • Fast

.

from sqlalchemy import Table
from sqlalchemy.engine.base import Engine as sql_engine
from sqlalchemy.dialects.postgresql import insert
from sqlalchemy.ext.automap import automap_base
import pandas as pd


def upsert_database(list_input: pd.DataFrame, engine: sql_engine, table: str, schema: str) -> None:
    if len(list_input) == 0:
        return None
    flattened_input = list_input.to_dict('records')
    with engine.connect() as conn:
        base = automap_base()
        base.prepare(engine, reflect=True, schema=schema)
        target_table = Table(table, base.metadata,
                             autoload=True, autoload_with=engine, schema=schema)
        chunks = [flattened_input[i:i + 1000] for i in range(0, len(flattened_input), 1000)]
        for chunk in chunks:
            stmt = insert(target_table).values(chunk)
            update_dict = {c.name: c for c in stmt.excluded if not c.primary_key}
            conn.execute(stmt.on_conflict_do_update(
                constraint=f'{table}_pkey',
                set_=update_dict)
            )
1
  • I want to use this, but am a bit intimidated by all of the functions that are new to me from sqlalchemy. If you ever get a chance to explain or comment this answer, I think it could be a great one for those of us who need to upsert from dataframes.
    – autonopy
    Jul 22 at 18:07

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