If I were you I'd model things slightly differently.
To normalise things a little, we'll start with the cities table and make a few changes:
create table cities (
city_id integer primary key,
Note that I've used an integer to denote the ID and Primary Key of the table, and stored the name of the city separately. This gives you a nice easy to maintain lookup table. By using an integer as the primary key, we'll also use less space in the weather table when we're storing data.
Create Table weather (
Note that I'm storing the id of the city rather than the name. Also, I've renamed
date as it's not a good idea to name columns after SQL reserved words.
Ensure that we use IDs in the test data:
Insert Into weather Values (1, -5, 40, 25, '2018-01-10');
Insert Into weather Values (2, 5, 45, 15, '2018-02-10');
Insert Into cities Values (1,'A', '(12,10)');
Insert Into cities Values (2,'B', '(6,4)');
Insert Into cities Values (3,'C', '(18,13)');
Your old query:
Select * From cities, weather Where city = 'A'
The name was ambiguous because both tables have a
city column, and the database engine doesn't know which
city you mean (it doesn't automatically know if it needs to use cities.city or weather.city). The query also performs a cartesian product, as you have not joined the tables together.
Using the changes I have made above, you'd require something like:
From cities, weather
Where cities.city_id = weather.city_id
and city_name = 'A';
or, using newer join syntax:
join weather on cities.city_id = weather.city_id
Where city_name = 'A';
The two queries are functionally equivalent - these days most people prefer the 2nd query, as it can prevent mistakes (eg: forgetting to actually join in the