The problem seems to originate from the way PHP returns results. The values are not returned as the corresponding data type, but rather formatted as a string using PostgreSQL default formatting. This formatting, is different for
double precision types hence you are seeing different results when you convert the column types of your table. The reason you are seeing this specific result is that PostgreSQL guarantees 6 decimal places for
real types and 15 decimal places for
The manual states
extra_float_digits setting controls the number of extra significant digits included when a floating point value is converted to text for output. With the default value of
0, the output is the same on every platform supported by PostgreSQL. Increasing it will produce output that more accurately represents the stored value, but may be unportable.
Therefore, a simple solution to your problem is to increase
extra_float_digits before issuing your
pg_query($connection, "set extra_float_digits = 3");
Alternatively, you can also specify this change when connecting to your database by adding
options to your connection string as follows:
$connection = pg_connect("host=localhost port=5432 dbname=test user=php password=pass connect_timeout=5 options='-c extra_float_digits=3'");
Another option would be to set this flag in the
postgresql.conf configuration file of the PostgreSQL server if you have access to the server and want to change the option globally.
Casting the values
A different solution would be to have PostgreSQL return a different string to the PHP backend. This can be achieved by casting your columns to types with different default formatting which avoids cutting off some of the digits. In your case you could either cast to
double precision, i.e. instead of using
select cultivated_land from table
you could use
select cultivated_land::integer from table
select cultivated_land::double precision from table
Changing data types
Looking at the data you specified, I noticed that all numerical values except those columns specifying percentages contain integers, hence the usage of the
integer data type is more suitable in this case. It can fit all the integer values of this table (the maximum being 149,000,000, therefore
bigint is not required), requires the same storage size as
real (4 bytes) and implies the default formatting of integers that you are looking for.
Update: Background on PostgreSQL-PHP interface and floating point representation
As mentioned above the way the PostgreSQL-PHP interface works is that all values sent from PostgreSQL to PHP are formatted as a string in some type-dependent way. Neither any of the
pg_fetch_* functions nor
pg_copy_to will provide raw values and all of these functions convert the values to strings in the same manner. As far as I am aware the current PHP interface will not provide you with anything different from a string (which, in my opinion, is not the best interface design).
18.22 is returned as
18.2199993 can be found in how PostgreSQL converts
float4 to strings. You can check the code of how PostgreSQL is internally using
float4out and find this relevant line that does the string-conversion:
snprintf(ascii, MAXFLOATWIDTH + 1, "%.*g", ndig, num);
num is the
float4-number to be printed as a string. Note however that C will promote the
float-variable to a
double-variable when calling
snprintf. This conversion to double precision results in the value
18.219999313354492 which is why you end up seeing
18.2199993 (you can check this here and will also find some details on floating point number representation on this site).
The takeaway message is that all your
float4 values will be converted using this function and the only parameter you can influence is
ndig by varying
extra_float_digits, however no single value for this variable will suffice all your needs in representing the values as you want them. So as long as you keep using
float4 as your data type and use the current PHP-interface to obtain the data you will run into these problems.
I therefore still recommend choosing different data types for your columns. If you think you have a requirement for decimal numbers you might want to investigate
decimal data types where you can specify precision and scale as required for your application. If you would like to stick with floating point numbers I suggest rounding the values in PHP before displaying them to the user.