Hi Folks I am trying to import a very large file that has moisture data recorded daily per minute for 20 cities in the US.
I have 1 table that I named "cityname" and this table has 2 columns:
-city_ID <- INT and is the primary key which increments automatically -city_name <- character
I have created another table named "citymoisture" and this table has 7 columns:
-city_ID <- INT and is the primary key but does NOT increment automatically -date_holding VARCHAR(30) -time_holding VARCHAR(30) -open -high -low -close
The date_holding is meant to house the date data but because the format isnt what mysql expects (i.e. it is m/d/y) I want to initially store it in this column and then convert it later (unless there is a way to convert it while the data is being imported???). Similarly the time_holding column holds the time which appears as hh:mm:ss AM (or PM). I want to only import the hh:mm:ss and leave out whether it is AM or (PM).
In any case the file that I want to import has SIX columns:
date, time, open, high, low, close.
I want to ensure that the data being imported has the correct city_ID set to match the city_ID in the 'cityname' table. So for example:
city_ID city_name 20 Boston 19 Atlanta
So when the moisture data for Boston is imported into the citymoisture table the city_ID column is set to 20. Similarly when the data for Atlanta is imported into the citymoisture table the city_ID column is set to 19. The citymoisture table will be very large and will store the 1 minute moisture data for 20 cities going forward.
So my questions are:
1) is there a way to import the contents of the files into column 2-7 and manually specify the the value of the first column (city_ID)?
2) any way to convert dates on the fly while I import or do I have to first store the data and then convert and store to what would then be a final table.
3) same question as #2 but for the time column.
I greatly appreciate your help.
THe sample of the moisture data file appears below:
1/4/1999,9:31:00 AM,0.36,0.43,0.23,0.39 1/4/1999,9:32:00 AM,0.39,0.49,0.39,0.43 . . .
I'm not sure how the city_ID in the citymoisture table is going to get set. But if there was a way to do that then I can run join queries based on both tables i.e. there is one record per city per date/time.