Implementing GroupBy and count in SQLAlchemy
Writing a groupby function has a slightly different procedure than that of a conventional SQL query which is shown below
sqlalchemy.select([
Tablename.c.column_name,
sqlalchemy.func.count(Tablename.c.column_name)
]).group_by(Tablename.c.column_name).filter(Tablename.c.column_name value)
Get the books table from the Metadata object initialized while connecting to the database. Pass the SQL query to the execute() function and get all the results using fetchall() function. Use a for loop to iterate through the results.
The below query returns the count of books in different genres whose prices are greater than Rs. 50.
Python3
# Get the `books` table from the Metadata object BOOKS = meta.tables[ 'books' ] # SQLAlchemy Query to GROUP BY and filter function query = sqlalchemy.select([ BOOKS.c.genre, sqlalchemy.func.count(BOOKS.c.genre) ]).group_by(BOOKS.c.genre). filter (BOOKS.c.book_price > 50.0 ) # Fetch all the records result = engine.execute(query).fetchall() # View the records for record in result: print ( "\n" , record) |
Output:
Python SQLAlchemy – func.count with filter
In this article, we are going to see how to perform filter operation with count function in SQLAlchemy against a PostgreSQL database in python
Count with filter operations is performed in different methods using different functions. Such kinds of mathematical operations are database-dependent. In PostgreSQL, the count is performed using a function called count(), and filter operation is performed using filter(). In SQLAlchemy, generic functions like SUM, MIN, MAX are invoked like conventional SQL functions using the func attribute.
Some common functions used in SQLAlchemy are count, cube, current_date, current_time, max, min, mode etc.
Usage: func.count(). func.group_by(), func.max()
Contact Us