I have a moderate sized database with many joins and lookup tables.
I am more familiar with R than with SQL, and I am using MySQL.
At what point is it beneficial to stop increasing the complexity of an SQL statement in favor of the data subsetting functionality in R (e.g.,
dlply, etc.)in R.
On one hand, SQL's join is easier than selecting all contents of each table and using the R
merge function to join them. Also, doing the conditional selects in SQL would reduce the amount of data that has to be imported to R; but the speed difference is not significant.
On the other hand, a big join with a complex where clause becomes less easy to understand than the R syntax.
Below I have some untested code for illustrative purposes: I am asking this question at before having working code, and the answer to my question doesn't require working code (although this is always appreciated) - the "most elegant approach", "fewest lines", or "amazing implementation of X" are always appreciated, but what I am particularly interested in is the "most sensible / practical / canonical / based on first principles" rationale.
I am interested in the general answer of which steps should use a SQL
where clause and which steps would be easier to accomplish using R.
there are three tables:
b each have a primary key
id. They have a many-many relationship that is represented by a lookup table,
ab, which contains fields
ab.b_id that join to
b.id, respectively. Both tables have a
time field, and a has a
Here is a minimal example of the join and subsetting that I want to do;
(MySQL naming of elements, e.g.
a.id is equivalent to
a$id in R)
ab, appending multiple values of
b.timeassociated with each
a.idas a new column;
select a_time, b.time, a.id, b.id from a join ab on a.id = ab.a_id join b on b.id = ab.b_id and then append b.time for distinct values of b.id;
I don't need repeated values of b.time, I only need a value of
b.max: for repeated values of
b.timejoined to each
b.maxis the value of
b.timeclosest to but not greater than
b.max <- max(b.time[b.time < a.time))
- append the value
dt <- a.time - b.maxto the table, for example, in R,
for each distinct value in
a.group, select which(min(x.dt)))
x.dt <- a.time - b.max